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Chief Digital Officer: Role, Responsibilities, Skills, and When to Recruit This Profile

Chief Digital Officer: Role, Responsibilities, Skills, and When to Recruit This Profile

Auteur n°2 – Jonathan

In a context where digital transformation has become a structuring priority, the Chief Digital Officer emerges as an essential pillar to orchestrate an organization’s digital and cultural evolution. This member of the executive committee is tasked with defining and deploying a digital strategy aligned with business objectives, while fostering agility and collaboration between business units and IT. The CDO acts as an innovation catalyst by integrating modular, scalable solutions, adopting an open-source approach to minimize vendor lock-in, and ensuring the security of the entire digital ecosystem. Finally, they measure the impact of initiatives to continuously adjust the digital roadmap.

What Is a Chief Digital Officer (CDO)?

The Chief Digital Officer is the driving force behind digital transformation within the executive committee. They provide the strategic and cultural governance needed to align your organization with digital imperatives.

Evolution and Emergence of the CDO Role

At its origin, the CDO role appeared to address the convergence of IT and marketing challenges, with an increased focus on customer experience and digital business models. This function quickly rose in importance under competitive pressure and growing user expectations, demanding a cross-functional vision rather than a siloed one.

Over time, the CDO has moved beyond a purely marketing scope to encompass all internal processes, from supply chain to customer relations. By promoting a data-driven culture, they optimize decision-making and accelerate the time-to-market for new digital services.

This emergence takes place amid rapid digitization, where organizational agility and continuous innovation become key competitive factors. The CDO ensures consistency between strategic ambitions and technological execution, avoiding overly rigid top-down approaches.

Position within the Executive Committee

The CDO typically sits alongside the CEO, CFO, CIO, and CMO, forming a collective where each profile brings unique value. Their specificity lies in the overall responsibility for digital transformation, without being confined to a single functional area.

They report directly to the CEO or, in some organizations, to the COO, ensuring swift decision-making and dedicated budget allocation for digital projects. This reporting line prevents conflicting priorities and reinforces the CDO’s legitimacy.

By leading a digital steering committee, they establish transverse governance and coherence across initiatives. This posture promotes coordination between business units, IT architecture, and external partners, aligning performance indicators with the overall strategy.

Differences and Complementarities with CIO, CTO, and CMO

The CIO focuses on infrastructure reliability and operational continuity of information systems. The CTO, in parallel, prioritizes technological innovation and the adoption of new architectures, often R&D-oriented.

The CMO concentrates on traffic generation, customer acquisition, and retention through digital marketing levers. The CDO, by contrast, ensures transversal alignment among technology, product, and marketing, orchestrating all digital initiatives.

Thus, the CDO works closely with each role: they ensure the CIO’s infrastructure supports digital ambitions, that the CTO’s technological choices serve the product strategy, and that the CMO’s campaigns rely on reliable data and a scalable platform.

Example: A mid-sized Swiss financial institution appointed a CDO to oversee the overhaul of its online service portfolio. Under their leadership, IT and marketing teams deployed a modular open-source banking platform, reducing the time-to-market for new features by 30% while securing the infrastructure via a hybrid cloud approach.

What Does a Chief Digital Officer Actually Do?

The CDO owns the digital roadmap and ensures its successful execution. They drive digital culture, lead strategic projects, and measure the business impact of initiatives.

Driving Cultural Change

The CDO launches awareness and training programs to embed a digital culture across the company. They establish collaborative rituals—such as hackathons or cross-team workshops—to encourage innovation and the adoption of new practices.

By promoting agility and co-creation, they break down organizational silos and reduce resistance to change. Business and IT teams learn to work together, sharing common objectives and a digital language centered on customer value.

This cultural momentum relies on transparency: the CDO implements accessible dashboards aligned with strategic KPIs, enabling real-time tracking of success metrics and improvement levers.

Developing and Steering the Digital Strategy

The CDO defines a mid- to long-term digital vision aligned with business priorities and the company’s digital maturity. They identify priority use cases, from digital marketing to operational process optimization.

They build project roadmaps incorporating modular scenarios, favoring open source and micro-services architectures to ensure scalability and agility. Each deployment phase is punctuated with business and technical validations.

Concurrently, they establish an agile governance framework with short planning, execution, and feedback cycles, ensuring rapid adaptation to market changes and user feedback.

Orchestrating the Digital Ecosystem and Measuring Impact

The CDO oversees the integration of technology building blocks, APIs, and external partnerships, avoiding vendor lock-in and prioritizing open-source solutions. This approach maintains freedom of change and long-term cost control.

They implement unified platforms for monitoring and reporting, combining operational data, analytics, and financial indicators. This holistic view demonstrates each digital initiative’s contribution to revenue, customer satisfaction, and operational efficiency.

Finally, they facilitate regular performance reviews, aligning executive leadership and business units to adjust the digital trajectory and prioritize projects with the highest ROI and growth potential.

Example: A Swiss industrial group entrusted its e-commerce ecosystem overhaul to their CDO. By deploying a modular open-source platform under agile governance, the company improved its conversion rate by 25% and reduced maintenance costs by 40% within one year.

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Required Skills and Experience for the CDO Role

The CDO requires a rare combination of business and technical skills. Their background must blend leadership, strategic thinking, and operational experience.

Dual Technical and Business Expertise

The CDO has a strong grasp of emerging technologies (big data, AI, IoT, hybrid cloud architectures) and Agile project management methods. They translate business needs into clear technical specifications.

Simultaneously, they understand financial, marketing, and operational stakes. They can build a business case, estimate potential gains, and manage a dedicated innovation budget.

This dual expertise enables them to act as an interface between IT, business units, and external partners, ensuring coherence and performance for every initiative.

Managerial Experience and Strategic Vision

The CDO typically has cross-functional management experience, leading multidisciplinary teams (developers, data analysts, designers, architects). They unite teams around a shared ambition and manage an internal network of sponsors.

Their long-term vision is fueled by continuous monitoring of technology and business trends. They assess innovation opportunities, anticipate disruptions, and adjust the roadmap based on organizational maturity.

As a digital ambassador, they regularly communicate with the executive committee and governance bodies, positioning digital transformation as a central growth and differentiation lever.

Technical Skills and Human Qualities

On the technical side, they master data analysis, micro-services architectures, cloud platforms, and security and resilience principles. They understand automation and process optimization challenges.

On the human side, they demonstrate leadership, listening, and teaching skills. They persuade without imposing, encourage measured risk-taking, and celebrate interim successes to maintain team engagement.

Their perseverance is crucial to overcome resistance to change and sustain best practices over time. They also cultivate a strong entrepreneurial mindset, essential for innovating within often constrained contexts.

When to Appoint or Recruit a Chief Digital Officer and How to Do It Successfully

Appointing a CDO at the right time is crucial to maximize the value of digital transformation. Successful integration of this profile relies on a clear framework and measurable objectives.

Trigger Criteria and Digital Maturity

A CDO appointment is generally justified when a company reaches a scale at which digital coordination becomes complex and digital growth stakes turn strategic. High failure rates of digital projects or repeated delays are warning signs.

Digital maturity is measured by alignment between business processes and information systems, use of data for decision-making, and team agility in launching new offerings. An internal audit helps confirm the right moment to onboard a CDO.

When these indicators point to a need for stronger governance and a cross-functional vision, the CDO becomes the guarantor of coherent steering and the roll-out of agile methods at scale.

Models for Integrating the Role

Several models exist: the CDO can be externally recruited from a large digital group or promoted internally after success as Head of Innovation or Head of Digital. The choice depends on corporate culture and talent availability.

Another option is a part-time CDO, ideal for companies transitioning toward a mature digital model without justifying a full-time position. This approach provides senior expertise while controlling costs.

Whichever model is chosen, it’s essential to define a clear scope, precise KPIs, and a ramp-up schedule to avoid ambiguity and rapidly measure the first gains from digital transformation.

Best Practices for Successful Onboarding

To onboard a CDO effectively, provide direct access to decision-making bodies and key data. They must quickly identify stakeholders and critical processes to set priorities.

A structured onboarding plan includes scoping workshops, a review of existing processes, and immersion in business challenges. Securing a first quick win—such as a priority use case—creates positive momentum.

Finally, schedule regular check-ins with the executive team to adjust objectives, reallocate resources, and celebrate successes. This clear governance reinforces the CDO’s legitimacy and ensures team buy-in.

Example: A B2B services company in French-speaking Switzerland chose a part-time CDO to structure its digital transformation. After six months, implementing a digital shared services center and an open-source ERP pilot reduced order processing times by 20%.

Maximize Your Digital Transformation with a Chief Digital Officer

The CDO’s role is more critical than ever to guide your organization’s digital and cultural shift. By structuring digital strategy, driving change, orchestrating a modular technology ecosystem, and measuring business impact, they ensure alignment between your ambitions and operational reality. Their profile—combining technical skills, strategic vision, and leadership—should be recruited when your digital maturity requires reinforced cross-functional governance.

At Edana, our experts can support you in diagnosing your digital maturity, defining the role, and successfully integrating your future Chief Digital Officer. Together, let’s build a tailor-made path to accelerate your digital performance. We can also serve as your CDO on a short- or long-term mission, or collaborate with your internal CDO to provide additional support.

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PUBLISHED BY

Jonathan Massa

As a specialist in digital consulting, strategy and execution, Jonathan advises organizations on strategic and operational issues related to value creation and digitalization programs focusing on innovation and organic growth. Furthermore, he advises our clients on software engineering and digital development issues to enable them to mobilize the right solutions for their goals.

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Data Cleaning: Best Practices and Tools to Ensure Reliable Decision-Making

Data Cleaning: Best Practices and Tools to Ensure Reliable Decision-Making

Auteur n°16 – Martin

In a context where strategic decisions rely heavily on the analysis of ever-increasing volumes of data, quality becomes a critical success factor. Without thorough cleaning, performance indicators, BI reports or predictive models can be distorted, leading to untimely or costly decisions. Data cleaning therefore stands as a pillar of data governance, ensuring reliability and consistency at every stage of the pipeline. This article details the most common error types, the phases of an effective process, the roles involved and the appropriate technological solutions, to maximize the value extracted from your data assets.

Understanding Common Data Errors

Raw data often contain anomalies that disrupt analysis and decision-making. Identifying these errors is the first step towards robust data governance.

Duplicates and Redundant Records

Duplicates occur when identical or very similar records coexist, referring to the same customer, transaction or product item. They can arise from multiple integrations (CRM, ERP, Excel files) or successive imports without unique-key controls. Their presence skews volume statistics, churn measures or email-open rates for a marketing campaign.

In a BI context, a dashboard fed with duplicate data can show inflated revenue, compromising ROI evaluation. These inconsistencies require a de-duplication process based on business rules, such as composite-key comparisons or text-similarity functions.

Removing or merging duplicates often relies on clustering algorithms or dedicated SQL scripts. This phase demands close monitoring to avoid deleting legitimate records with minor variations (typos, accents).

Inconsistent Formats and Normalization

Dates can be entered in various formats (DD/MM/YYYY, YYYY-MM-DD, MM-DD-YYYY) depending on the source or the user. Phone numbers, addresses or internal identifiers sometimes lack standardization, making consolidation difficult. The absence of clear conventions leads to parsing errors and integration failures.

Normalization involves applying uniform rules (ISO 8601 for dates, E.164 for phone numbers) to harmonize formats before any usage. This can be done through Python scripts, SQL functions or ETL connectors that automatically detect and convert values.

Without normalization, comparing metrics across departments or geographic regions becomes impossible. Validation processes must be configured to alert whenever a non-conforming format is detected.

Outliers and Aberrant Values

Outliers are values that are clearly outside the norm (a unit price of 10,000 CHF instead of 100 CHF, a recorded temperature of ‑50 °C in midsummer). They may result from input errors, sensor malfunctions or incorrect type conversions.

Detecting outliers relies on statistical methods (standard deviations, box plots) or business rules (upper and lower bounds defined by a reference). Identified values require contextual analysis to decide on correction, deletion or replacement with an estimate.

In an AI environment, outliers can distort model training and lead to erroneous predictions, undermining the reliability of decision-making tools.

Missing or Obsolete Data

Empty fields or null values in a customer, product or order table pose a major challenge. They can be due to missing entries, partial imports or automatic archiving without consolidating old records.

Handling missing data involves imputation strategies (mean, median or regression-based methods) or excluding entire rows if the null value proportion is too high. Each option must be weighed against business stakes and data criticality.

Obsolete data, such as the status of an employee who left two years ago, should be archived so as not to pollute ongoing analyses. Implementing periodic purge rules ensures the freshness of the entities in use.

Example: A midsize Swiss B2B services company found that 18% of its customer records contained duplicates or incomplete addresses, generating false follow-ups and increased processing loads. After an initial cleanup, it reduced its data volume by 25% and improved its marketing conversion rates.

Key Steps in an Effective Cleaning Process

A structured process unfolds in multiple phases: diagnosis, correction, validation and documentation. Each phase should leverage appropriate tools and cross-functional coordination.

Audit and Data Profiling

The audit consists of analyzing the structure, completeness and consistency of each dataset. Profiling provides metrics on null rates, value distributions and anomaly presence. It guides action priorities.

Tools such as Pandas Profiling allow a rapid initial assessment of volumes and error types. They generate summary reports that form the basis of the cleaning plan.

This stage involves data engineers and data analysts collaborating closely to align findings with business requirements and identify risk areas.

Anomaly Detection and Correction

The correction phase uses scripts, algorithms and ETL workflows to standardize formats, deduplicate and impute missing values. Transformation rules must be validated by business stakeholders.

Corrections can be fully automated or semi-automated depending on criticality. For example, an auto-validated deduplication rule might run alongside a manual review process for high-risk cases.

Traceability of every modification is essential to reconstruct the history and support future audits.

Validation and Documentation

Once anomalies have been addressed, validation verifies that cleaned data meet defined quality criteria (error rates below thresholds, format compliance, inter-data consistency). Unit and integration tests ensure pipeline robustness.

Documenting the process—specifications, transformation rules, scripts and operation logs—ensures maintainability and reproducibility of the cleanup.

This information repository becomes a key resource for new team members and for any system evolution.

Iteration and Continuous Monitoring

Cleaning is not just an initial project: it must be part of a continuous improvement loop. Periodic checks detect drifts and feed into a quality dashboard.

Automated alerts signal any significant deviation, triggering rapid investigation.

This iterative approach ensures the long-term reliability of data and strengthens confidence in analytical tools.

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Stakeholders and Responsibilities in Data Cleaning

Data cleaning mobilizes several skill sets: data engineers, data analysts and data project managers. Each plays a role in ensuring pipeline quality and consistency.

Data Engineer

The data engineer designs, develops and maintains ingestion and transformation pipelines. They set up connectors, ETL/ELT jobs and ensure process scalability.

They define processing rules (deduplication, normalization, imputation) and optimize performance to handle large volumes.

They are also responsible for implementing automated tests and alerts to detect any quality regression.

Data Analyst

The data analyst explores the data, identifies anomalies and tests cleaning hypotheses. They work hand in hand with business teams to validate transformation rules.

They produce reports and quality-monitoring dashboards, illustrating the impact of cleaning on business KPIs (completeness rate, error volume).

Their feedback helps prioritize initiatives and refine correction algorithms.

Data Project Manager

The data project manager coordinates IT and business stakeholders, manages the backlog and ensures deadlines and budgets are met. They define the scope, success criteria and validate deliverables.

They lead steering committees, communicate results and facilitate upskilling of internal teams.

Their cross-functional vision is essential to align cleaning efforts with strategic objectives (BI, CRM, AI).

Example: An insurer structured a data cleaning team by clearly distributing roles. The data engineer automated deduplication, the data analyst validated imputation rules and the project manager orchestrated incremental delivery, reducing the quality-related ticket backlog by 40%.

Selecting the Right Tools for Your Needs and Data

Tool selection depends on data volumes, team skill levels and scalability requirements. From open source to cloud platforms, each context demands a specific solution.

Open Source Tools for Small to Medium Volumes

OpenRefine offers a graphical interface to explore, filter and clean datasets of a few hundred thousand rows. It facilitates normalization and column merging without code.

Pandas, the Python library, handles larger volumes through reproducible scripts. It provides profiling, transformation and export functions to various formats.

These tools integrate easily into a CI/CD workflow and suit tech teams capable of managing versioned code.

Low-Code Solutions for Business Teams

Alteryx and similar platforms offer a drag-and-drop approach that lowers the technical barrier. They include native connectors, deduplication functions and data enrichment modules.

These solutions accelerate proofs of concept and enable data analysts to test cleansers quickly without constantly relying on the IT team.

However, they can lead to vendor lock-in and require governance to manage licenses and architecture.

Cloud Platforms for Large Volumes and Automation

Azure Data Factory, AWS Glue or Google Cloud Dataflow handle distributed pipelines processing terabytes of data. They offer orchestrators, transformation engines and connectors to the entire cloud ecosystem.

These services lend themselves to continuous integration, fine-grained monitoring and autoscaling, ensuring robustness and flexibility.

They integrate with storage buckets, analytical databases and notebooks to enable collaboration between data engineers and data scientists.

Managed Hybrid and Open Source Platforms

Some providers offer managed distributions of Spark, Airflow or Kafka, combining open source freedom with hosted service guarantees. They reduce operational overhead while avoiding vendor lock-in.

This hybrid approach aligns with the modular, scalable architecture advocated by Edana experts.

It allows mixing open source components and custom development to meet highly specific business needs.

Example: An industrial player adopted a hybrid approach by using managed Airflow to orchestrate Spark jobs on an Azure data lake. The solution reduced preparation workflow runtimes by 60% while controlling cloud costs.

Ensure Reliable Decision-Making with Data Cleaning

Data cleaning is not just a technical step but a strategic lever to guarantee the reliability of BI tools, dashboards and AI algorithms. By identifying common errors, structuring a rigorous process, engaging the right stakeholders and selecting appropriate tools, companies minimize risks and maximize the value of their data assets.

Whether for CRM integration, financial reporting or business AI projects, data quality underpins trust in results and decision relevance. At Edana, our experts support every stage, from the initial audit to the implementation of robust, scalable pipelines, to transform data into a reliable, long-lasting asset.

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PUBLISHED BY

Martin Moraz

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Martin is a senior enterprise architect. He designs robust and scalable technology architectures for your business software, SaaS products, mobile applications, websites, and digital ecosystems. With expertise in IT strategy and system integration, he ensures technical coherence aligned with your business goals.

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Data Wrangling: Structuring Your Raw Data for Better Business Decisions

Data Wrangling: Structuring Your Raw Data for Better Business Decisions

Auteur n°3 – Benjamin

In a context where organizations accumulate massive volumes of heterogeneous data every day, transforming these raw streams into actionable insights has become a strategic challenge. Data wrangling, or data munging, involves harmonizing, cleaning, and enriching these sources before any analysis, thereby ensuring decisions are based on reliable and consistent data. This critical step enhances collaboration between technical and business teams, reduces interpretation errors, and accelerates the deployment of high-performing BI dashboards. When well orchestrated, this process leads to stronger governance, improved ROI, and greater agility in analytics or AI projects.

Understanding Data Wrangling: Definition and Stakes

Data wrangling encompasses all operations that transform raw, heterogeneous data into datasets ready for analysis. This discipline goes well beyond simple cleaning and positions itself as the cornerstone of a reliable, scalable data strategy.

Origins and Objectives of Data Wrangling

Data wrangling originated from the need to make data from disparate systems—logs, ERP, CRM or IoT devices—exploitable. Without this preparation, analyses can rely on incorrect values, leading to biased decisions and unforeseen operational costs.

Its primary objective is to standardize formats, correct inconsistencies and fill gaps in missing values, thus providing data analysts and BI leaders with a solid foundation for building dashboards and predictive models.

It also addresses a governance imperative: tracing data lineage, documenting transformations and ensuring process reproducibility. This traceability facilitates compliance and auditability of data processes.

Differences Between Data Wrangling, Data Cleaning, Enrichment and Structuring

Data cleaning focuses on removing errors—duplicates, incorrect formats or outliers. Data wrangling, by contrast, includes cleaning and adds structuring, meaning schema and type normalization.

Enrichment then supplements internal data with external sources—such as geolocation databases or socio-demographic information—adding context and depth to analyses.

Structuring, often confused with wrangling, specifically refers to shaping data into coherent structures (tables, schemas, hierarchies) that simplify querying and integration into BI or AI pipelines.

Importance for Governance and Collaboration

A rigorous data wrangling approach establishes a foundation of trust among teams. Business stakeholders gain clear metrics, while data scientists can build models with full traceability of applied transformations.

Transparency at every stage—from discovery to publication—reduces friction and redundancy between developers, analysts and business owners. Everyone avoids “black boxes” and understands how each processing step impacts final data quality.

Finally, this cross-functional governance sets golden rules for pipeline maintenance, ensuring controlled scalability and the integration of new sources without jeopardizing existing data integrity.

Example: A Swiss B2B services company implemented an automated wrangling process to aggregate shipping and customer return data. This initiative demonstrated that shared governance cuts monthly report preparation time by 40% and reduces billing errors by 25%.

Key Steps in a Successful Data Wrangling Process

A comprehensive data wrangling process typically unfolds in six phases, each essential to guarantee data quality and reliability. A structured sequence of these steps enables control over data flows and secures downstream analyses.

1. Data Discovery and Profiling

At project kickoff, the discovery phase inventories all available sources and identifies each feed’s formats, volumes and refresh frequency. Qualitative and quantitative profiling highlights missing values, anomalies and hidden dependencies.

Data engineers use scripts or open-source tools to extract basic statistics—distributions, null rates, temporal variations. This overview feeds into the transformation plan and prioritizes cleanup tasks.

In parallel, a business alignment workshop defines BI or AI objectives and scopes the data to prepare. Teams set key metrics and quality thresholds from the outset.

Findings are documented in traceable reports, ready to be reviewed by BI managers and data architects for approval.

2. Data Structuring and Normalization

In this phase, data is converted into coherent schemas, with unified column names and standardized types (dates, numbers, strings). Identifier and unit variations are harmonized to avoid confusion.

Mapping rules translate proprietary business codes into universal formats, easing later integration into data warehouses. Primary and foreign keys are clarified to ensure join consistency.

The result is a malleable dataset directly usable by ETL tools or BI platforms. This structured foundation also optimizes query performance and reduces storage costs.

Example: A European rail operator standardized its maintenance logs and incident tickets. This normalization proved that downtime aggregation now completes in minutes rather than hours.

3. Data Cleaning and Correction

The data cleaning phase targets duplicate removal, format corrections and missing value handling. Algorithms based on style detection or Levenshtein distance sometimes align similar string values.

Outliers are identified via business rules or statistical methods, then validated before being corrected or excluded. Automated scripts apply these transformations at scale, ensuring reproducibility.

All modifications are logged in a change journal, crucial for tracing each correction and rolling back if a bias is detected later.

4. Enrichment, Validation and Publication

Once cleaned, internal data can be enriched with external sources—geographic databases, economic indices or social media feeds. This enrichment expands analysis scope and enhances predictive model accuracy.

Automated consistency checks validate set thresholds and ensure data volumes haven’t dropped unexpectedly after each extraction.

Finally, the final datasets are published into data warehouses or data lakes, complete with precise metadata and secure access controls. Pipelines are scheduled to guarantee regular, controlled refreshes.

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High-Performance Data Wrangling Tools by Profile

Choosing the right tool for your technical and business context is essential to optimize data wrangling. Available solutions range from open-source for data engineers to low-code interfaces for analysts.

Talend and Open-Source Solutions for Technical Profiles

Talend offers a modular open-source suite, ideal for building complex ETL pipelines. With an ecosystem of connectors, it aggregates data from diverse systems while avoiding vendor lock-in.

Data engineers can code custom transformations in Java or Python, leveraging visual components to orchestrate workflows. An active community ensures evolution and security of the Core components.

Popular distributions based on Apache NiFi or Spark complement the stack, enabling high-volume processing and distributed computation. Open code provides full transparency on applied operations.

Alteryx and Low-Code Tools for Data Analysts

Alteryx delivers a drag-and-drop approach, allowing data analysts to design workflows without coding. This user-friendly interface accelerates prototype deployment and fosters collaboration between business and IT.

Cleaning, joining and enrichment operations are available as preconfigured modules, while custom macros can be shared across teams to propagate best practices.

The platform stands out for its native integration with BI visualizers, simplifying the transition to analysis. Shared environments ensure consistent transformation outputs.

Example: A bank adopted Alteryx to consolidate its regulatory compliance reports. This deployment reduced data preparation from three days to three hours while maintaining audit-ready traceability.

Tamr, Astera and Altair Monarch for Large-Scale Projects

Tamr leverages machine learning to automatically detect schema matches and propose dynamic mappings—particularly effective for large corporate data volumes.

Astera combines a graphical studio with a robust integration engine to manage enterprise-scale pipelines. Emphasis is placed on governance, security and performance under load.

Altair Monarch focuses on extracting data from existing reports, useful when source database access is limited. It streamlines dataset preparation from PDFs or flat files.

Industry Use Cases: From Travel to Retail

Data wrangling has tangible applications across sectors—from customer segmentation in travel to fraud detection in finance. Each example illustrates the value of carefully prepared data.

Travel: Customer Segmentation and Dynamic Pricing

Travel companies aggregate booking data, web behavior and feedback to segment their audience. Data wrangling merges stay histories with expressed preferences to personalize offers.

After cleaning and structuring, predictive models gauge price sensitivity and suggest dynamic rates. Gains are measured in conversion uplift and increased upsell revenue.

Traceability of transformations ensures compliance with data privacy regulations, while enabling rapid dataset updates for each promotion or seasonal change.

Healthcare: Patient Data Integration

In healthcare, rigorous data wrangling consolidates patient records, lab results and care pathways. Harmonizing medical terminology and formats delivers a unified view for cohort analysis.

Cleaning removes duplicates and corrects procedure codes, while enrichment with public-health reference data extends epidemiological studies. Secure publication in a health data lake adheres to confidentiality standards.

These practices support research projects and optimize clinical protocols, ensuring decisions are based on comprehensive, reliable data.

Finance: Fraud Detection

Financial institutions process massive real-time transaction volumes. Data wrangling unifies payment streams, bank logs and KYC information to feed anomaly detection engines.

Cleaning rules standardize IBAN and SWIFT formats, while geolocation and third-party data enrichment enhance alert quality. Systematic validation prevents false positives and streamlines compliance workflows.

A well-designed pipeline significantly reduces detection times and lightens the operational load on monitoring teams.

Retail: Logistics Optimization and Stock Forecasting

A Swiss retail chain implemented a wrangling process to aggregate in-store sales, e-commerce and supplier returns. After structuring and weather-based enrichment, teams refined stock forecasts and adjusted orders.

This initiative proved that optimized inventory reduces stockouts while freeing up tied-up cash. The automated flow cut weekly report consolidation time by 60%.

Unlock the Full Potential of Data Wrangling

Data wrangling is a critical step for any organization aiming to base decisions on reliable, structured and enriched data. The six phases of the process—supported by tools tailored to each profile—ensure robust governance, seamless collaboration and heightened agility in facing business challenges.

Whether it’s for customer segmentation in travel, patient data integration, fraud detection or stock optimization, rigorous data preparation maximizes the value of BI and AI projects while minimizing errors and compliance risks.

Our Edana experts are at your disposal to design modular, secure and scalable data ecosystems—combining open-source and custom development without vendor lock-in.

Talk to an Edana expert about your challenges

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B2B Customer Portals: A Strategic Lever for Retention, Automation, and Superior Service

B2B Customer Portals: A Strategic Lever for Retention, Automation, and Superior Service

Auteur n°2 – Jonathan

In a shifting B2B landscape, customer portals are no longer simple digital showcases but essential self-service platforms that define the purchasing experience. IT and business decision-makers seek client spaces that combine autonomy, fluidity, and security to address complex buying cycles and real-time information requests. By automating order processing, invoicing, and support, these portals ease the burden on internal teams while boosting partner satisfaction and loyalty. This article explores the key challenges of B2B customer portals, their differentiating features, operational gains, and the steps to design a tailored solution for each industry.

The Evolution of B2B Customer Expectations: Toward Autonomy and Fluidity

B2B customers now demand autonomous access to their data and seamless interaction with suppliers. Their thirst for self-service turns the customer portal into a critical hub of efficiency and satisfaction.

Rise of Self-Management

Professional buyers want to manage orders, quotes, and delivery tracking themselves, without the need to contact a dedicated representative. This autonomy saves time, shortens processing delays, and minimizes errors inherent in manual exchanges.

Offering self-service browsing and editing capabilities simplifies stock management, purchase order issuance, and invoice tracking. Users gain instant access to the information they need, eliminating back-and-forth with sales or support teams.

Over time, self-management boosts a customer service’s ability to handle higher request volumes without a proportional increase in headcount. Teams can focus on complex, strategic cases while routine tasks are automated.

Demand for Simplified Processes

In B2B environments, workflows often involve multiple stages: internal approvals, budget sign-off, returns management, and invoicing. An intuitive portal must guide users through each step while masking underlying system complexity.

Optimizing the customer journey means a clear interface, well-positioned action buttons, and swift access to key documents. Every micro-interaction matters to ensure fluidity and prevent frustration.

Fast, consistent navigation also drives portal adoption by business teams, who perceive it as a productivity tool rather than an added digital burden.

Focus on Personalization and Responsiveness

Customizable dashboards have become a critical factor in enhancing the user experience. B2B customers expect financial and logistical indicators aligned with their internal processes, with the ability to configure views according to their priorities.

Portal responsiveness—measured by load times and data-update speeds—directly impacts service quality perception. A modern portal built on non-blocking technologies ensures smooth performance even during peak usage.

For example, a Swiss industrial equipment manufacturer customized its customer portal to display real-time stock levels, production lead times, and order history. This personalization cut telephone inquiries by 35% and boosted overall user satisfaction. It demonstrates how a tailored portal can directly drive performance and growth.

Critical Features for a High-Performing B2B Customer Portal

An effective B2B portal relies on key modules to meet transactional, document management, and collaboration needs. These features form the foundation of an enhanced customer experience and lasting relationships.

Centralized Order and Quote Management

The ability to create, modify, and track orders directly within the portal streamlines collaboration between client and supplier. Quotes can be approved in a few clicks, with a complete history of all changes.

Centralization eliminates scattered Excel files and email chains, reducing the risk of data-entry mistakes or duplicates. Order statuses update in real time, offering full visibility into transaction lifecycles.

Through secure APIs, these modules integrate with ERPs and internal billing systems, ensuring data consistency and automating financial workflows.

Secure Document and Report Access

Document management is critical for companies handling contracts, compliance certificates, or audit reports. A customer portal must provide a secure space where these documents are organized, viewable, and downloadable at any time.

Built-in versioning preserves revision histories and prevents the use of outdated files. Granular access rights ensure each user sees only authorized information.

Regulatory compliance is strengthened by precise audit trails that record every user action, ensuring traceability in highly regulated sectors.

Automated Workflow Engine Integration

Automating internal approvals, payment reminders, and notifications greatly improves organizational responsiveness. A workflow configured to business rules guarantees each step triggers without manual intervention.

Dashboard alerts flag bottlenecks or delays, facilitating decision-making and rapid escalation of critical issues.

For instance, a financial services provider deployed a workflow engine to process credit applications automatically, including compliance checks and e-signatures. Average processing time dropped from ten days to under forty-eight hours.

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Operational Impacts and Return on Investment

Adopting a B2B customer portal delivers productivity gains, superior service quality, and measurable ROI. The benefits manifest in internal operations, customer retention, and business growth.

Internal Productivity Optimization

By automating repetitive tasks—data collection, follow-ups, report generation—teams refocus on higher-value activities such as new service development or strategic customer analysis.

Time spent on manual email handling and incoming calls can drop by more than 50%, freeing resources for innovation and proactive support.

Reduced human errors, thanks to standardized and tracked processes, also limit incidents and reinforce customer trust in the service provided.

Enhanced Service Quality

A high-performing portal provides immediate access to complete interaction histories, simplifying issue diagnosis and speeding up incident resolution. Customers value the transparency and the ability to track their requests’ progress.

Performance indicators and customizable dashboards enable providers to offer proactive support, anticipating needs and potential risks.

For a pharmaceutical distributor, implementing a customer portal cut service-desk calls by 60% and reduced average resolution time by 40%.

Measuring ROI and Indirect Financial Gains

Savings on support and document management costs directly benefit IT and customer-service budgets. ROI metrics include reduced cost per transaction and improved operating margins on automated workflows.

Beyond financial gains, increased customer trust drives contract renewals and broader framework agreements, generating long-term recurring revenue.

KPI analysis via integrated dashboards provides clear insights into business impacts, justifying initial investments and guiding future portal enhancements.

Designing a Customer Portal Adapted to Every Business Ecosystem

The success of a B2B portal project depends on a deep understanding of sector-specific challenges and a modular architecture. An iterative, business-centric approach ensures user adoption and solution longevity.

Sector-Specific Needs Analysis

Each industry has its own processes and constraints: complex order cycles in manufacturing, strict compliance in healthcare, high volumes and logistics in distribution. A thorough preliminary analysis identifies priority use cases.

Active user listening—through co-design workshops and prototype testing—validates functional and ergonomic choices before full-scale development.

This phase prevents unnecessary development and ensures each delivered module addresses a clear business need, maximizing adoption and satisfaction.

Selecting a Modular, Scalable Architecture

A modular solution simplifies adding or modifying features without impacting the entire system. Each component (catalog, billing, reporting, workflow) can evolve independently.

Leveraging proven open-source building blocks ensures flexibility, avoids vendor lock-in, and allows the portal to adapt easily to regulatory or business changes.

A Swiss logistics provider opted for a microservices architecture deployed on a hybrid private cloud to isolate its shipment-tracking modules. This isolation enabled independent scaling during peak periods without platform interruption.

Implementing a Continuous Optimization Roadmap

Beyond the initial rollout, a continuous improvement plan—driven by regular sprints and performance reviews—ensures the portal stays aligned with business and technological needs.

User satisfaction indicators, feature usage rates, and field feedback inform priority enhancements.

Agile governance, involving IT and business leaders, manages the roadmap and adjusts priorities based on client feedback and strategic objectives.

Strengthen Your B2B Customer Relationships with a Strategic Portal

A well-designed B2B customer portal meets demands for autonomy, streamlines interactions, automates critical processes, and elevates service quality. Its key features—order management, secure document access, and automated workflows—deliver tangible operational gains and measurable results. Interface personalization and a modular architecture ensure alignment with industry-specific requirements and agility for future evolution.

Whatever your sector, our Edana experts are ready to analyze your needs, define an adaptable, scalable solution, and manage the deployment of a custom customer portal focused on ROI and user satisfaction.

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PUBLISHED BY

Jonathan Massa

As a specialist in digital consulting, strategy and execution, Jonathan advises organizations on strategic and operational issues related to value creation and digitalization programs focusing on innovation and organic growth. Furthermore, he advises our clients on software engineering and digital development issues to enable them to mobilize the right solutions for their goals.

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Cross-Functional Teams in Product Development: Definition, Principles, and Examples

Cross-Functional Teams in Product Development: Definition, Principles, and Examples

Auteur n°4 – Mariami

In a context where innovation must go hand in hand with responsiveness, cross-functional teams emerge as a powerful lever to accelerate product development. By combining diverse skills—technical, design, business, and quality—they facilitate rapid, data-driven decision making. For companies and organizations, establishing these teams allows for effective responses to complex challenges while strengthening collaboration and employee engagement.

Definition and Distinction Between Functional and Cross-Functional Teams

A functional team brings together homogeneous profiles, whereas a cross-functional team unites complementary skills. The latter aims at a common objective and reduces silo-related inefficiencies by promoting cross-cutting collaboration.

The Traditional Model of Functional Teams

In a classic functional organization, each department groups specialists in the same domain: developers within IT, designers in the creative department, or testers in a dedicated QA unit. This structure facilitates skill development within a specific field, but often creates bottlenecks and waiting times when transferring information between teams.

Coordination between departments generally relies on formal processes: interdepartmental meetings, sequential approvals, executive committees. Each approval level adds a step, slowing down the delivery cadence. Siloed structures can also limit the overall understanding of the product, as each team remains focused on its phase or discipline.

When rapid adjustments are required, these teams tend to lose agility. Change requests are escalated through hierarchical chains, creating an additional delay before decisions are made and implemented.

The Fundamentals of a Cross-Functional Team

A cross-functional team is made up of members with varied expertise—development, UX/UI, QA, product management, marketing, business analysis—mobilized around a specific objective. Each skill is involved from the project’s outset, ensuring a comprehensive vision of the solution.

Interactions occur directly between the relevant profiles, without going through intermediary managers. This proximity reduces the risk of misunderstandings and allows for rapid hypothesis testing, priority adjustments, and real-time validation of technical or functional choices.

Team autonomy is reflected in the shared responsibility for delivering quality product increments ready for deployment. The team adopts a backlog and clear acceptance criteria aligned with business objectives and performance indicators.

Functional vs. Cross-Functional: Comparing the Two Approaches

The main difference lies in the fluidity of exchanges. In a functional team, each change often involves a transfer and clarification phase of requirements. In contrast, cross-functional teams communicate continuously: a developer and UX designer can discuss a prototype from day one, while QA proposes test scenarios before the feature is even coded.

From an organizational standpoint, functional silos require strong coordination from senior management to align priorities. Cross-functional teams, on the other hand, manage their own schedules within an agile framework, with short ceremonies (daily stand-ups, sprint reviews) that maintain cohesion and visibility.

Finally, in terms of performance, cross-functional organizations demonstrate reduced time-to-market and better handling of unforeseen events. They have all necessary skills to quickly resolve an issue without waiting for another department to start.

Example of a Company That Restructured Its Teams from a Functional to a Cross-Functional Model

An industrial services company based in Geneva restructured one of its mobile platform development teams. Initially organized by discipline (development, design, QA), the team experienced average iteration lead times of 15 days.

By moving to a cross-functional model—composed of a product manager, two developers, a QA engineer, and a UX/UI designer—they reduced their delivery cycle to 7 days and improved customer satisfaction by 20%.

Integrating Cross-Functional Teams into Agile Methodologies

Cross-functional teams are at the heart of Agile methods, notably Scrum, Kanban, and XP. They embody the iterative and collaborative philosophy of these approaches, aligning skills with business objectives.

The Role of Squads in Scrum

In Scrum, each sprint is built around a backlog prioritized by the Product Owner. The cross-functional team, called a squad, must be capable of delivering a potentially shippable product increment by the end of each iteration. All roles—dev, QA, UX, PO—work in parallel to refine, build, and test the user stories.

Scrum ceremonies (daily stand-up, sprint planning, review, and retrospective) ensure that every member understands the overall progress and any obstacles. Decisions are made directly by the squad, reinforcing autonomy and responsiveness.

This approach significantly shortens feedback loops: a bug detected by the QA can be fixed immediately by the developer without going through endless ticketing.

Continuous Flow and Visualization with Kanban

Kanban relies on visualizing the workflow. In a cross-functional team, the Kanban board consolidates all tasks, from ideation to production. The different columns (To Do, In Progress, Review, Done) allow instant detection of bottlenecks.

Each member selects the next task based on their expertise and available capacity. The limited Work In Progress (WIP) encourages cross-functional collaboration: if a developer has completed their tickets and the designer is blocked, they can step in to run tests or document the backlog.

Kanban thus fosters continuous improvement through small, incremental adjustments without major structural upheaval.

XP and Quality through Collaboration

Extreme Programming (XP) emphasizes code quality and simplicity. In a cross-functional team, pair programming and continuous integration become second nature: developers and QA work together to write automated tests before coding the feature.

Regular code reviews and frequent refactoring ensure clean, maintainable code. The UX expertise can be applied from the earliest iterations by validating low-fidelity prototypes with end users.

This synergy reduces regression risks and ensures platform stability, even as it evolves rapidly.

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Key Principles for Building an Effective Cross-Functional Team

For a cross-functional team to become high-performing, it must share clear objectives and constant feedback. The diversity of expertise is effective only when supported by a culture of autonomy and data-driven decision making.

Shared Objectives and Strategic Alignment

The first principle is to define a shared, measurable goal aligned with the company’s strategy. The Product Manager formalizes key performance indicators (KPIs)—time-to-market, conversion rate, user satisfaction—accessible to everyone.

Each member understands how their work impacts these KPIs. The developer knows their task goes beyond writing code to generating value. The designer focuses on optimizing the user experience, and QA on commercial reliability.

A centralized backlog enables daily tracking of these objectives. Sprints are broken down into user stories prioritized by business value rather than a single discipline’s needs.

Open Feedback and Continuous Improvement

Transparency is essential: each sprint concludes with a review where all deliverables are presented, tested, and challenged. Feedback comes not only from the PO but also from peers and potentially end users.

The retrospective, meanwhile, highlights areas for improvement. Obstacles encountered—lack of documentation, lengthy decision-making, technical challenges—are treated as user stories to be added to the backlog immediately.

This permanent feedback loop strengthens team cohesion and enables rapid correction of dysfunctions.

Diverse Expertise and Complementarity for Building an Effective Cross-Functional Team

Profile selection is crucial. Beyond technical skills, each member must bring business or functional insight. The business analyst ensures requirements consistency, marketing refines messaging, and QA anticipates critical usage scenarios.

Complementarity also means sharing responsibilities: a developer can set up a CI/CD pipeline, and a designer can help write application performance criteria.

This horizontal collaboration fosters product ownership and prevents knowledge silos.

Flexibility and Contextual Adaptation for Sustainable Organization

Cross-functional teams are not static. They evolve according to project needs: a security expert may join the squad for a compliance phase, a data analyst to optimize an algorithm.

This modularity is supported by lightweight governance: a Scrum Master or Agile coach facilitates exchanges without imposing rigid processes. Ceremonies are adapted to team size and project progress.

The ability to adjust squad composition enhances its capacity to handle workload and tackle technical or regulatory challenges.

Data-Driven Decisions and Transparency

Choices are based on objective metrics: conversion rate, response time, test coverage, user feedback. Dashboards accessible at all times promote alignment and accountability.

A data-driven culture requires appropriate tools: unified ticket tracking in the backlog, integrated analytics, A/B testing. Every prioritization decision is supported by data, not intuition.

This rigor ensures optimal resource allocation and continuous product optimization.

Example of a Swiss Industrial Company That Successfully Formed a Cross-Functional Team

A multinational industrial player based in Geneva formed a cross-functional team for its new customer portal. Composed of a product manager, three developers, a UX designer, a QA engineer, and a business analyst, the squad reduced critical tickets after production by 60%. The feature set was delivered in three months, half the initially planned six months.

When to Favor Cross-Functional Teams

Cross-functional teams are particularly suited to complex projects, multi-domain requirement gathering, and integrated budget management. They provide flexibility and responsiveness in a fast-evolving market.

Complex Projects and High Uncertainties

When the project scope is not fully defined or evolves continuously, having diverse roles in the same team allows for priority adjustments without waiting for hierarchical decisions. Quick feedback from a business analyst or QA leads to reformulating requirements before development progresses too far.

In this context, the MVP (Minimum Viable Product) strategy is simplified: the team can propose a prototype, test it with users, and iterate based on feedback while maintaining a unified view of objectives.

The ability to pivot quickly is a major asset in a VUCA (Volatile, Uncertain, Complex, Ambiguous) environment, where responsiveness takes precedence over rigid planning.

Multi-Domain Requirement Gathering and Validation

Projects involving regulations, technical constraints, and varied business stakes require close coordination. A cross-functional team continuously integrates feedback from legal experts, technical architects, and operations.

Proximity among these roles reduces misunderstanding risks. Compliance and performance requirements are directly translated into clear, testable, and validated user stories before each increment.

This workflow is particularly relevant for large-scale digital transformations, where alignment between IT and business functions determines project success.

Budget Management and Integrated Control in a Cross-Functional Team

Cost control is facilitated by a consolidated view of expenses and deliveries. Each sprint generates an increment with a known cost, allowing the team to regularly compare costs and progress against the overall budget.

The Product Manager adjusts the backlog based on the expected ROI for each feature, while considering architectural constraints and deployment schedules.

This approach prevents budget overruns and improves the financial predictability of projects by making the team accountable for costs and benefits.

Example of a Cross-Functional Team in the Swiss Logistics Sector

A logistics service company based in Lausanne launched a supply chain optimization project. A cross-functional team, including a business analyst, a developer, a data expert, and a QA engineer, delivered a stock forecasting module in four months, reducing stockouts by 15% and keeping the budget impact under 5% of the initial estimate.

Turn Your Interdisciplinary Collaboration into a Competitive Advantage

Cross-functional teams break down silos and align expertise with objectives, speeding time-to-market and improving product quality. Integrated within an agile framework, they offer flexibility, engagement, and measurable performance.

In a constantly evolving environment, the ability to orchestrate these teams is a key differentiator. Their effectiveness relies on transparency, continuous feedback, and data-driven decision making.

At Edana, our experts are ready to support you in setting up or optimizing your cross-functional teams to ensure agile, secure, and scalable product development.

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PUBLISHED BY

Mariami Minadze

Mariami is an expert in digital strategy and project management. She audits the digital presences of companies and organizations of all sizes and in all sectors, and orchestrates strategies and plans that generate value for our customers. Highlighting and piloting solutions tailored to your objectives for measurable results and maximum ROI is her specialty.

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IT Solutions Architect: Role, Responsibilities, Key Skills & Certifications

IT Solutions Architect: Role, Responsibilities, Key Skills & Certifications

Auteur n°3 – Benjamin

In a context where technological innovation determines the competitiveness and sustainability of organizations, the solutions architect plays a decisive role. As a bridge between business challenges and technological choices, this expert ensures the coherence, modularity, and security of your information system. Their strategic and operational vision enables the design of scalable, resilient architectures aligned with your business objectives. Whether you are an IT director, CEO, or IT project manager, understanding their scope and strengths will help you structure your projects and manage risks from the earliest design phases.

Definition and Mission of the IT Solutions Architect

The solutions architect translates business requirements into operational technological blueprints. They ensure the coherence, scalability, and security of all components of the information system.

A Cross-Functional, Business-Centric Vision

The solutions architect intervenes very early in the technical implementation, gathering and translating business objectives into functional and non-functional requirements. They formalize these expectations in the form of use cases, User Stories, or functional diagrams that serve as the basis for development teams.

Beyond simple framing, they assess potential impacts on the existing system and operational processes. They anticipate friction points, identify interdependencies, and propose adjustments to avoid technological or functional silos.

By working closely with stakeholders—business units, IT department, cybersecurity, and operational support—they ensure decision traceability and foster buy-in through transparent and documented communication.

Designing the Target IT Architecture

Based on the initial framework, the solutions architect develops the target architecture, describing software components, information flows, and interfaces between modules. They define integration standards, communication protocols, and deployment schemes.

They favor a hybrid approach, combining open source components, cloud services, and custom developments to optimize the balance between time-to-market, total cost of ownership, and future flexibility. Technological choices are justified by criteria such as scalability, performance, and security.

The architect produces deliverables (UML models, C4 diagrams, traceability matrices) that guide implementation teams and serve as reference during code reviews or compliance audits.

Concrete Example of Hiring an IT Solutions Architect in a Swiss Company

A Zurich-based insurance company enlisted an IT solutions architect to overhaul its claims management ecosystem. The expert designed a modular architecture based on microservices, integrating secure REST APIs and business workflows orchestrated by an open source BPM engine. This new platform reduced claim processing times by 40% while automatically scaling during seasonal peak periods.

Comparison with Other IT Architect Roles

The solutions architect stands out for their ability to pragmatically link business and IT. Other roles (software, infrastructure, cloud, enterprise) focus on narrower scopes.

Software Architect vs. IT Solutions Architect

The software architect focuses primarily on the internal structure of applications: framework selection, development patterns, module decomposition, and code quality management. Their domain covers the application lifecycle, from UML modeling to production deployment.

They define coding standards, Git repository organization, unit and integration testing strategies, and associated CI/CD pipelines. Their expertise ensures maintainability and scalability of individual applications.

However, they do not directly handle system orchestration or integration with third-party solutions or cloud platforms. Those responsibilities typically fall to the solutions architect or infrastructure architect.

Infrastructure Architect vs. IT Solutions Architect

The infrastructure architect is responsible for the physical or virtualized layer: servers, networks, storage, hypervisors, and containers. Their role involves sizing resources, configuring clusters and load balancers, and defining network topology.

They ensure data center resilience, high availability, business continuity, and data protection. Choices cover storage types (block, object, file), backup and restore policies, and virtualization or container technologies.

Although central to the IS robustness, they are not always involved in functional design or the selection of business application components, tasks assigned to the solutions architect.

Cloud Architect and Enterprise Architect vs. IT Solutions Architect

The cloud architect designs PaaS, IaaS, or SaaS environments, optimizing sizing and managed services from hyperscalers. They oversee lift-and-shift migrations, Kubernetes cluster deployments, and infrastructure as code automation.

The enterprise architect, on the other hand, operates at a macro level: defining the IT roadmap, guiding governance, and ensuring strategic alignment. They collaborate with IT urban planners and create business-application mappings.

The IT solutions architect sits at the intersection of these two spheres: connecting the company’s macro vision with concrete cloud execution while staying focused on delivering business use cases.

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Key Responsibilities of the IT Solutions Architect in an IT Project

The solutions architect leads technical design and functional governance. They ensure tracking, documentation, and compliance throughout the project.

Functional Scoping and IT Project Governance

From the initialization phase, they facilitate co-design workshops with business units and the IT department to consolidate scope, identify interfaces, and define success criteria. They formalize a prioritized backlog based on business value and technical risks.

They establish governance bodies (steering committee, architecture board) to validate key decisions and arbitrate trade-offs. They ensure stakeholder alignment and decision transparency.

Simultaneously, they write or approve reference documentation: functional specifications, requirements traceability matrix, architectural diagrams, and technical data sheets for each component.

Design and Technological Choices

Based on requirements, they detail the distribution of technical responsibilities: microservices, API gateways, event buses, containers, or serverless functions. They select languages, frameworks, and databases suited to the context and expected volumes.

They evaluate open source versus proprietary solutions, considering vendor lock-in risks, licensing costs, and community maturity. They document the benefits and limitations of each option.

They propose architecture scenarios (blue-green deployment, canary release, multi-region) to meet performance, high availability, and disaster recovery requirements.

Documentation, Compliance, and Risk Management

The solutions architect develops a best-practices repository including security standards, nLPD and GDPR requirements, and other regulatory constraints. They enforce secrets management policies and the encryption of sensitive data.

They regularly conduct architecture reviews to detect deviations and update design documents. In case of divergence, they propose remediation plans and adjust the target architecture as needed.

They formalize the technical risk impact analysis (failures, vulnerabilities, obsolescence) and integrate mitigation strategies: load tests, security audits, and phased deprecation of unsupported components.

Practical Illustration of Implementing a Data Hub Solution by a Specialized Architect

In a Swiss distribution chain, the solutions architect orchestrated the implementation of a centralized data hub. They chose a Kafka bus for streaming, configured microservices for order orchestration, and ensured PCI DSS compliance. As a result, stock synchronization time went from several hours to a few seconds while maintaining transaction traceability.

Essential Skills and Certifications for the Solutions Architect

To excel, the IT solutions architect combines technical expertise, leadership, and continuous learning. AWS, Azure, Google, and ITIL certifications are widely recognized, but hands-on experience remains paramount.

Key Technical Skills to Verify Before Hiring a Solutions Architect

Proficiency in multiple languages (Java, Node.js, Python) and frameworks (Spring Boot, NestJS) enables adaptation of the architecture to use cases. Knowledge of microservices, REST APIs, event-driven, and serverless paradigms is essential.

The ability to design robust CI/CD pipelines using GitLab CI, Jenkins, or GitHub Actions ensures smooth deployments and code quality. Practicing infrastructure as code (Terraform, ARM templates) guarantees traceability of infrastructure changes.

Understanding security principles (OWASP, encryption, IAM) and non-functional requirements (scalability, observability, performance) determines system resilience and maintainability.

Managerial and Interpersonal Skills for Successful Recruitment

The architect must develop influential leadership, capable of bringing together technical experts and business decision-makers. Their pedagogical approach eases understanding of architectural decisions and acceptance of trade-offs.

Organizational rigor and facilitation skills strengthen collaboration between the IT department, cybersecurity, operations, and business units. They manage priorities and maintain a balance between speed of delivery and technical quality.

Their relational agility allows them to anticipate friction, propose real-time alternatives, and adjust the roadmap based on feedback and evolving context.

Certifications and Continuous Training for IT Solutions Architects

AWS Certified Solutions Architect, Microsoft Certified: Azure Solutions Architect Expert, or Google Professional Cloud Architect certifications attest to mastery of major cloud environments and their core infrastructure and data services.

An ITIL Foundation or DASA DevOps certification ensures an understanding of governance and service management best practices. TOGAF certifications can be relevant for those working at a more strategic level of IT urban planning.

Beyond formal credentials, participating in meetups, monitoring RFCs and specialized blogs, and contributing to open source projects enrich expertise and foster innovation.

Enhance the Agility and Sustainability of Your IT Projects by Hiring a Solutions Architect

The role of the solutions architect is a strategic lever to ensure the coherence, scalability, and security of your information system. By defining best practices, leading governance, and selecting appropriate technologies, they minimize risks and accelerate the deployment of priority business use cases.

Whether revamping an existing platform or launching a new digital project, having a well-thought-out architecture is a key success factor. Our Edana experts combine pragmatic experience with mastery of open source and cloud ecosystems and are at your disposal to support you from strategy to execution.

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Data Vault vs Star Schema: Which Model to Choose for a Modern, Scalable Data Warehouse?

Data Vault vs Star Schema: Which Model to Choose for a Modern, Scalable Data Warehouse?

Auteur n°16 – Martin

The proliferation of data sources, increasing volumes, and regulatory requirements are forcing Swiss companies to rethink their data warehouse. Traditional models often struggle to reconcile agility and traceability, while performance-oriented analytical structures must remain scalable. The choice between Data Vault 2.0 and a star (or snowflake) schema determines governance, maintenance, and future adaptability. This article provides a strategic analysis of both approaches, illustrated with concrete examples, to guide your decisions toward a modern, resilient warehouse tailored to your business challenges.

Understanding the Stakes of Model Selection in Your Data Warehouse

Choosing the right model directly affects deployment speed, process robustness, and scalability. Balancing structural agility and analytical performance is a strategic decision that impacts your governance and long-term costs.

Contextualizing Business Requirements

Each organization faces unique constraints tied to its industry, data volumes, and reporting objectives. IT departments must balance deployment speed with regulatory traceability requirements. A thorough understanding of use cases, load frequencies, and access patterns is essential before any modeling effort.

The choice of model determines your flexibility to integrate new sources and the ease of historizing past states. Financial services, for example, require strict version control, whereas marketing needs rapid delivery of up-to-date metrics. These differences directly influence the selection between a historization-focused Data Vault and a report-optimized star schema.

Data governance, quality, and security are also decisive criteria. A warehouse must be able to evolve without functional disruptions or performance degradation. Modern architectures address these challenges but are structured differently depending on the chosen model.

Volume, Heterogeneity, and Traceability

Swiss companies often manage data from multiple ERPs, CRMs, and industrial sensors, creating significant heterogeneity. Ensuring coherence across these streams requires a model that can absorb new attributes without a complete restructuring. Data Vault excels in this area by clearly separating entities, relationships, and evolving attributes.

Conversely, when volumes remain controlled and analytical processes are stable, a star schema can deliver faster queries and more predictable maintenance cycles. The fact/dimension structure is more intuitive for BI teams and facilitates performance tuning on MPP platforms or specialized appliances.

Traceability of changes is critical in regulated sectors such as healthcare or finance. Data Vault natively integrates granular historization of every change, whereas a star schema often relies on more rigid and sometimes less transparent Slowly Changing Dimensions (SCD) techniques.

Concrete Example of a Swiss Industrial SME That Adopted a Data Vault

A Swiss manufacturing SME had centralized production, maintenance, and sales data in a star schema for five years. With the rapid integration of new IoT sensors, the BI team had to manually create new dimensions and tables, resulting in two-week deployment delays for each evolution.

In a pilot phase, a Data Vault was implemented to ingest these streams without altering existing reports. Hubs captured key entities (equipment, product, site), links structured relationships, and satellites stored changing attributes.

The historization process was automated, reducing model maintenance time by 70% and accelerating new source integration. This approach safeguarded traceability without compromising existing reporting performance.

Exploring the Data Vault 2.0 Model for a Scalable Data Warehouse

Data Vault 2.0 offers a modular, multi-layered architecture that clearly separates entities, relationships, and historical attributes. This approach ensures native scalability and exhaustive traceability while remaining compatible with agile engineering and DevOps principles.

Key Components: Hubs, Links, and Satellites

Hubs represent unique business keys, isolating each central entity (customer, product, transaction). They store only the business key and a technical identifier, facilitating duplicate detection and business definition changes without touching historical data. This separation ensures robustness when adding new sources.

Links model relationships between hubs, whether transactional, hierarchical, or temporal. They maintain traceability of each connection, including timestamps and data origins. This granularity enables detailed analyses of customer journeys or machine interactions.

Satellites store evolving attributes linked to a hub or link. Each satellite can be historized independently, offering maximum flexibility to handle new fields or granularities. Loading cycles run in parallel, ensuring optimized update times.

Multi-Layer Architecture and Agility

The Raw Vault layer receives raw data exactly as it comes from sources. Data is loaded daily or at the required frequency without major transformations, preserving initial integrity. This approach simplifies audits and allows process reruns when needed.

The Business Vault layer enriches raw data with business rules, aggregations, or calculated views. It acts as an intermediate zone that does not affect the historical layer, ensuring isolation between engineering logic and analytical processes. Teams can iterate on business rules quickly without impacting the source data layer.

The Information Delivery (or Presentation) layer finally exposes data as specific tables for analytical queries. It can adopt a star or snowflake schema based on performance needs while benefiting from back-end-managed traceability and historization.

Data Vault 2.0 Innovations and Optimizations

Point-in-Time (PIT) tables allow the reconstruction of coherent snapshots of the entire warehouse. They are particularly useful for complex temporal queries, eliminating the need to join each satellite manually. This consolidated table reduces latency and simplifies SQL logic.

Bridge tables facilitate the management of multiple hierarchies or complex relationships. They provide a way to represent parent-child structures, successors, and dynamic groupings, integrating naturally into the Data Vault architecture. Value chain analyses or product groupings directly benefit from them.

Same-as links offer flexible handling of redundant business keys or keys synchronized between multiple ERP systems. They associate keys from heterogeneous sources while preserving consistency and traceability at each integration point. This innovation is invaluable in multi-source environments where governance is critical.

Example of a Swiss Financial Services Firm Using the Data Vault 2.0 Model

A Swiss financial institution adopted Data Vault 2.0 to consolidate transaction, customer, and regulatory data flows. The team implemented hubs for key entities, links for transaction–customer relationships, and satellites for successive account states.

The implementation of PIT tables enabled real-time regulatory reporting compliant with FINMA requirements without overloading batch processes. Internal audits accelerated, and model maintenance time was halved while ensuring complete data traceability.

The agile adoption of Data Vault also simplified the integration of new data sources, including external trading platforms, without disrupting the existing infrastructure.

Adopting the Star Schema and Snowflake Model

The star schema provides a simple structure composed of fact and dimension tables, optimized for analytical queries and performance. The snowflake schema normalizes this model further, prioritizing consistency and reducing redundancy.

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Fact/Dimension Architecture and Query Simplicity

The star schema consists of a central fact table storing quantitative measures and dimension tables describing the context of those facts (time, product, customer, geography). This simplicity facilitates business team understanding and reduces SQL query complexity.

BI platforms naturally leverage this structure, optimizing aggregations, roll-ups, and drill-downs. Bitmap indexes and time partitioning accelerate large-scale reads, particularly on MPP appliances or specialized cloud services.

Dimension maintenance (Slowly Changing Dimensions) is managed via clearly defined strategies (Type 1, Type 2, or hybrid). Although it sometimes requires additional processing, this discipline ensures consistency of historical states and precise tracking of business changes.

Snowflake: Toward Greater Normalization and Governance

The snowflake model breaks dimensions into more granular tables, normalizing attributes and eliminating redundancies. This approach improves reference data governance by centralizing value lists and minimizing inconsistencies.

However, normalization can complicate queries, leading to more joins and a greater need for optimization. Indexing tools, partitioning, and join caches become crucial to maintain performance.

Reference consistency is reinforced, especially in large organizations where multiple business lines share common dictionaries and can reuse the same dimension tables. Change management workflows are centralized, enhancing modification traceability.

Example of a Swiss Retail Group Using the Star Schema

A Swiss retail group used a star schema for store and logistics reporting. Product and store dimensions were redundant and varied by region, causing inconsistencies in revenue figures.

By normalizing into a snowflake schema, the team consolidated product attributes into a single shared table across business lines. They reduced the number of dimension tables from 12 to 5 and harmonized update processes.

Query performance remained high thanks to a time-product partitioning strategy, and reference data governance was strengthened by a centralized validation workflow.

Maintenance and Scalability

The star schema structure simplifies minor evolutions, such as adding new measures or attributes. ETL/ELT processes are more linear, and business logic remains encapsulated within dimensions and the fact table.

However, new data streams or the need to model multiple relationships can lead to laborious extensions, with partial table redesigns and loading workflow modifications. BI teams may face the rigidity of SCDs and performance impacts.

Change governance requires rigorous planning and thorough testing. Without this, historical data integrity can be compromised, reducing the long-term reliability of analyses.

Strategic Criteria to Guide Your Decision

The choice between Data Vault 2.0 and a star schema depends on your priorities: agility, governance, performance, or maintenance. Each criterion should be weighed according to your context, resources, and growth ambitions.

Agility and Scalability

If you anticipate frequent integrations of new sources or model evolution, Data Vault offers unparalleled modularity. Adding hubs, links, or satellites does not disrupt existing structures and runs in parallel with minimal impact on ongoing processes.

With a star schema, every significant change can require partial or total redesigns, affecting loading processes and analytical views. Scalability is possible, but at the cost of strict alignment between business and technology.

A hybrid approach is to maintain a Data Vault backend for historization and a star schema in the presentation layer for performance, automating view generation from the Raw/Business Vault.

Performance and Query Stability

The star schema excels in analytical queries on massive volumes, thanks to the native optimization of fact and dimension tables. Response times remain short even for complex aggregations.

Data Vault may require specific optimizations, notably through PIT and bridge tables, to achieve equivalent performance. These artifacts fit within the architecture but demand additional engineering effort.

In practice, using cloud warehouses or dedicated appliances simplifies these optimizations regardless of the chosen model. The decision then hinges on the level of integration effort you are willing to invest.

Governance and Maintenance

Data Vault ensures granular traceability, simplifies audits, and clarifies the line of responsibility between raw and calculated data. Teams can reconstruct history for regulatory needs without data loss.

The star schema enforces a more structured SCD discipline. Dimension updates are more sensitive, and consistency maintenance relies on rigorous testing and validation processes.

Data Vault involves a higher initial cost in modeling and tooling but reduces technical debt over the long term. ROI evaluations should include maintenance costs and evolution frequency.

Hybrid Integration and Multi-Cloud Context

Modern architectures trend toward hybridity: Data Lakehouse for native storage, Data Vault for historization, and star schema for reporting. This composition leverages the strengths of each model.

In a multi-cloud environment, Data Vault’s technology independence avoids vendor lock-in, while the star schema’s simplicity eases deployment on managed services. CI/CD pipelines can orchestrate these flows coherently.

Implementation strategy must remain contextual: prioritizing critical workloads and distributing data according to usage defines each model’s place in your ecosystem.

Choosing the Right Model for an Agile, High-Performance Data Warehouse

Data Vault 2.0 and the star schema are complementary: one focuses on agility and traceability, the other on performance and operational simplicity. The decision rests on diagnosing your business needs, data volumes, and regulatory requirements.

We guide you through an objective assessment of your constraints, modeling the most suitable solution and deploying your warehouse in a hybrid or multi-cloud environment. At Edana, our experts help you define and implement scalable, secure architectures without vendor lock-in.

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PUBLISHED BY

Martin Moraz

Avatar de David Mendes

Martin is a senior enterprise architect. He designs robust and scalable technology architectures for your business software, SaaS products, mobile applications, websites, and digital ecosystems. With expertise in IT strategy and system integration, he ensures technical coherence aligned with your business goals.

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Digital Consultancy & Business (EN) Featured-Post-Transformation-EN

What to Do When a Developer Leaves the Company?

What to Do When a Developer Leaves the Company?

Auteur n°2 – Jonathan

In an environment where IT systems are the backbone of operations, the sudden departure of a key developer can have dramatic consequences. Whether it’s an unexpected resignation, a prolonged absence, or retirement, the lack of a continuity plan exposes the company to maintenance bottlenecks, project interruptions, and increased vulnerabilities. This dependence on a single expert constitutes a major strategic risk, capable of threatening the performance and security of the digital ecosystem. In this article, we analyze the concrete impacts of this dependency, then propose pragmatic approaches to secure knowledge transfer and preserve your expertise.

Risk of Dependency on a Single Expert

A lead developer without an organized backup creates a critical failure point for your entire IT system.

Maintenance Bottlenecks

When a single developer holds the knowledge of a specific module or application layer, any change, bug fix, or update becomes hindered. Without documentation or support, minor incidents can escalate into crises that far exceed the planned time and budget.

The temptation then is strong to postpone enhancements or urgently outsource to costly external resources that are ill-prepared, which directly impacts your teams’ responsiveness and delays the delivery of strategic projects.

Delays in Ongoing Projects

In a platform migration or interface redesign scenario, the outgoing expert often holds the big-picture vision and architectural keys. Their departure without proper handover leads to misunderstandings and breaks in the skills chain.

Deadlines stretch, deliverable quality may decline, and the initial schedule becomes obsolete. Internal teams, deprived of their point of reference, lose efficiency and must double their efforts to pick up the pieces.

Increased Security Risks

Undocumented or poorly explained code hinders security audits and vulnerability testing. Critical updates can be delayed for lack of understanding of dependencies.

In the worst case, an exploited flaw remains unpatched due to missing expertise, exposing the company to ransomware attacks, data theft, or service outages.

Example of a Swiss Logistics SME

A logistics company based in Switzerland had entrusted the development of its routing engine to a senior engineer. When he left the organization for a position abroad, no documentation was available. Internal teams took six weeks to reconstruct the service architecture, delaying the pricing rules update by two months and incurring CHF 60,000 in external labor costs, plus significant opportunity costs, since those teams could have been enhancing other architecture aspects instead of investing that precious time in reverse engineering.

Consequences of Knowledge Loss

Without a formalized transfer, an expert’s absence translates into stagnation, operational debt, and weakened agility.

Loss of Business Context

Beyond the code, the outgoing developer often holds the understanding of business processes, data flows, and functional priorities. Without a guide, new hires or external contractors struggle to grasp subtleties and anticipate constraints.

Redefining these elements costs time and budget, and approximations can generate anomalies that directly impact user satisfaction.

Accumulation of Technical Debt

Every intervention without full mastery of the original code increases the risk of creating “patches” and ad hoc solutions. Code quality degrades, reinforcing the vicious cycle of technical debt.

Over time, maintenance becomes increasingly time-consuming and costly, stifling any capacity for innovation and development of value-added features.

Impact on IT Governance

Lack of visibility into the real state of your application landscape limits the ability to plan and steer your projects. Performance indicators become blurred and strategic trade-offs riskier.

The CIO is then forced to favor crisis management over defining a long-term vision, leading to a loss of competitiveness.

Example: Romandy-Based Industrial Group

A large manufacturing group used a custom in-house ERP developed by a sole expert. After he left without handing over, teams had to halt all evolution for three months to conduct a full audit. Delays in production reports caused a 15% drop in efficiency and delivery penalties on multiple contracts.

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Strategies to Ensure Continuity and Knowledge Transfer

A proactive, structured approach guarantees the availability of key skills and the longevity of your systems.

Living, Evolving Documentation

Implementing reference guides, architectural diagrams, and standardized code comments allows any contributor to quickly understand workflows and technical stakes.

A centralized, accessible repository that is continuously updated fosters a sharing culture and limits dependency on a single contributor.

Pair Programming and Reverse Mentoring

Systematically integrating paired sessions during design or bug resolution promotes knowledge diffusion and gradual skill building.

Reverse mentoring—where a junior profile or contractor is tasked with validating understanding—reinforces concept ownership and bolsters team resilience.

Targeted Training and Transfer Workshops

Organizing frequent technical workshops focused on critical modules allows you to convey key considerations, configuration tips, and production challenges.

These sessions accelerate skill development and spark a community of practice within your organization or with partners.

Engaging an Expert Partner

Outsourcing part of the maintenance or support for essential components to a specialized provider guarantees continuity while giving you a reliable point of contact for documentation and support.

A partner like Edana can tailor its teams to your needs, avoid vendor lock-in, and deliver modular expertise, ensuring coverage even in the event of internal turnover.

Example in the Financial Services Sector

A mid-sized Swiss bank hired us to take over maintenance of a critical API. Through an initial audit and a sprint-organized handover phase, the external team documented all data flows and set up a wiki accessible to internal developers. The incident rate on this API dropped by 70% in six months.

Address Your Technical Dependency and Master Your Architecture

Faced with the risk of single-expert dependency, establishing a knowledge transfer plan, documentation processes, and a structured external partnership ensures operational continuity and frees your teams to innovate. You thus keep your technical debt under control while strengthening agility, security, and IT governance.

Whether your organization is facing an imminent departure or looking to anticipate any turnover scenario, our experts are here to audit your current dependency, define the right transfer tools, and take charge of sustaining your expertise. Together, let’s transform this vulnerability into a lasting advantage.

Talk About Your Challenges with an Edana Expert

PUBLISHED BY

Jonathan Massa

As a specialist in digital consulting, strategy and execution, Jonathan advises organizations on strategic and operational issues related to value creation and digitalization programs focusing on innovation and organic growth. Furthermore, he advises our clients on software engineering and digital development issues to enable them to mobilize the right solutions for their goals.

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Digital Consultancy & Business (EN) Featured-Post-Transformation-EN

Metaverse: Fantasies, Realities, and the Technical Challenges Behind an Immersive Internet

Metaverse: Fantasies, Realities, and the Technical Challenges Behind an Immersive Internet

Auteur n°2 – Jonathan

The metaverse, ubiquitous in the rhetoric of digital giants, evokes as much enthusiasm as skepticism. Behind the promises of an immersive internet with revolutionary interactions lie major technological challenges, often underestimated by promoters. The necessary infrastructures, user experience, computing power, and platform interoperability remain largely in the experimental stage. Yet, concrete use cases are already emerging, particularly in industry and training, inviting companies to explore this new territory. In this article, we demystify the metaverse, analyze its technical foundations, and identify the levers for launching useful and sustainable MVPs that align with your strategic goals.

The True Technological Barriers to the Metaverse Today

The architectures required to support a large-scale immersive universe are still at the proof-of-concept stage. Latency, bandwidth, and real-time computing constraints remain major obstacles.

Infrastructure and Computing Power

Metaverse platforms rely on servers capable of processing simultaneous high-resolution 3D streams for thousands of users. These computing loads demand the latest-generation GPUs and distributed data centers to ensure a smooth experience.

Several cloud providers already offer specialized instances, but costs remain prohibitive for large-scale deployments. Companies must therefore anticipate significant investments or consider hybrid architectures combining on-premise servers and edge computing.

These infrastructure choices directly impact the total cost of ownership (TCO) of the project. Without rigorous planning, budgets can quickly spiral out of control, driven by scaling fees and proprietary software licenses.

User Experience and Immersive Ergonomics

Immersion relies on VR/AR headsets, controllers, and gesture interfaces. Each piece of equipment introduces ergonomic limitations: weight, bulk, usage duration, and thermal comfort.

Early feedback highlights the risk of visual fatigue and nausea, hindering professional adoption. Sessions must be short and contextualized—better suited for demonstrations or targeted training than prolonged daily use.

Interfaces must also ensure quick onboarding without multiple calibration phases. In an industrial context, for example, a latency of even a few milliseconds or an inaccuracy of a few millimeters can compromise operator safety.

Interoperability and Open Standards

The promise of a universal metaverse relies on open protocols that allow avatars, objects, and environments to move freely between platforms. Today, however, each player offers its own proprietary, siloed ecosystem.

Initiatives around Web3D standards and unified APIs struggle to take shape. Specifications remain embryonic and do not cover all use cases, notably real-time synchronization and digital rights management.

In the absence of technical consensus, companies risk vendor lock-in. A metaverse project built for a specific runtime can become obsolete if the provider changes direction or pricing.

Metaverse Project Example in the Banking Sector

A banking institution piloted a virtual showroom for its premium clients. Despite an appealing concept, server overloads during simultaneous session openings caused service interruptions, forcing the team to revise the initial architecture and deploy edge servers across Europe to reduce latency.

Concrete Use Cases and Varying Metaverse Maturity by Sector

The metaverse is not a single product but a collection of immersive solutions whose maturity varies by industry. Some sectors can already benefit from targeted virtual experiences, while others remain in internal R&D phases.

Industry and Augmented Maintenance

In manufacturing, augmented reality is emerging as a first step toward the metaverse. Technicians use headsets to view 3D instructions overlaid on machines, reducing errors and downtime.

These applications require precise environmental mapping and sub-50 ms latency to synchronize images with movements. Sessions typically last less than 30 minutes, matching the duration of maintenance tasks.

Predictive maintenance becomes more effective when IoT data is integrated in real time into the immersive view, enabling earlier anomaly detection and better planning of interventions.

Immersive Training and Onboarding

Virtual training is growing in security, healthcare, and aerospace. Immersive simulations replicate hazardous scenarios without risk to learners, reinforcing retention and responsiveness in critical situations.

These environments demand sufficient graphical realism to engage users while maintaining optimal fluidity. Educational content must be modular to adapt to different profiles and skill levels.

Companies report a 30–50 % reduction in training time compared to traditional methods, while ensuring a high level of operational safety.

Retail and Virtual Showrooms

Retail is experimenting with immersive showrooms where customers explore products at 1:1 scale and customize options. These experiences boost engagement and loyalty.

To ensure visual quality on headsets and mobile devices, 3D assets must be optimized with adaptive levels of detail. WebXR browsers play a key role.

E-commerce integrations also require robust APIs to synchronize stock and pricing in real time.

Example of Metaverse Technology Use in the Industrial Sector

An industrial SME deployed a VR simulator to train operators on specialized machinery. Thanks to a hybrid cloud platform and an optimized rendering pipeline, it reduced incidents related to new equipment handling by 40 %. This demonstrates how the metaverse can deliver concrete applications in maintenance and support, especially in manufacturing.

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Essential Technical Foundations for an Immersive Internet

To overcome current barriers, the metaverse must rely on robust technological building blocks: edge computing, artificial intelligence, and high-performance networks. Each plays a key role in ensuring an immersive experience that contributes to business value.

Edge Computing and Geographical Distribution

Edge computing brings compute resources closer to end users, minimizing critical latency for 3D scene synchronization. It becomes indispensable when applications demand millisecond-level responsiveness.

Companies must design a multi-node architecture distributed across key regions. Data replication must remain consistent, for example via Kafka messaging or distributed databases.

This hybrid approach—combining central cloud and local edge—optimizes costs and ensures a seamless experience for geographically dispersed users.

Generative AI and Asset Optimization

Artificial intelligence can automate the creation and compression of 3D models, generating realistic textures on the fly. Adaptive upscaling algorithms reduce packet sizes without compromising visual quality.

AI solutions in the rendering pipeline also offer collision detection and occlusion mechanisms, enhancing the fluidity and precision of real-time interactions.

These services can operate in a serverless, elastic mode to absorb activity spikes during large-scale virtual events.

Connectivity and Data Sovereignty

The volume of data exchanges and the sensitivity of immersive content demand a high-bandwidth, reliable, and secure network. Companies should evaluate quality of service (QoS) and leverage VPNs, SD-WANs, or dedicated links.

Data sovereignty becomes critical when sensitive or personal data is processed in the metaverse. Choosing Swiss or European hosts ensures nLPD or GDPR compliance and addresses data localization requirements.

Governance of these flows must include end-to-end encryption and granular access policies to prevent leaks or unauthorized use.

Example in the Public Sector

A government agency is piloting a metaverse project for citizen consultation. It deployed edge nodes across multiple local data centers and an AI system to dynamically compress assets, ensuring smooth access even at a distance. Such initiatives are multiplying and form one of the pillars of tomorrow’s web. In this context, data security is paramount, and various measures—such as those in generative AI for governments and public services—must be implemented.

Adopting a Pragmatic Approach and Preparing Useful MVPs

The metaverse must not become just a trend. The most mature companies first launch targeted MVPs that focus on concrete, measurable use cases. They incorporate open source, modularity, and agile governance.

Long-Term Strategy and Evolving Roadmap

Before any experimentation, it is essential to define precise business objectives: improving training, reducing maintenance costs, or strengthening customer engagement. These indicators will guide the MVP’s design.

The roadmap must be modular: each metaverse component—avatars, scenes, interactions—evolves independently, facilitating updates and the integration of new features.

Agile governance, bringing together IT, business units, and service providers, ensures continuous alignment between needs and technical priorities.

Open Source and Hybrid Ecosystems for an Independent, Evolving Metaverse

Adopting open source building blocks—WebGL engines, XR frameworks, decentralized protocols—limits the risk of vendor lock-in and leverages dynamic communities for rapid updates and patches.

Proprietary solutions can be integrated temporarily for quick wins, then replaced by open components as maturity and budget allow.

This hybrid approach enables rapid prototyping while ensuring a controlled transition to an evolving architecture.

Cybersecurity and Compliance from the MVP Phase

Even for a prototype, security must be baked in from the start. Access controls, strong authentication, and digital rights management are indispensable to protect assets and personal data.

Regulatory compliance, notably nLPD and GDPR, requires auditing immersive data flows and implementing activity logs. These practices, initiated during the MVP phase, streamline later scaling.

Penetration testing and automated code reviews help detect vulnerabilities as early as possible, before the project grows in scope.

Culture of Experimentation and Feedback

The metaverse remains a rapidly evolving field. User feedback should feed a backlog of continuous improvements. Internal pilot sessions offer valuable insights before broader rollout.

Measuring adoption, satisfaction, and business impact helps prioritize the most profitable initiatives. These metrics are then shared with steering committees to approve subsequent phases.

By embracing continuous improvement, companies mitigate risks and optimize time-to-market while preparing for measured scaling.

Turning Your Metaverse Ambitions into Concrete Projects

The metaverse stands at the crossroads of immersive technologies, edge computing, AI, and high-performance networks. Its promises are real, provided they rest on proven technical foundations and a clear business strategy.

Companies that embark on targeted, modular, and secure MVPs can quickly measure added value before scaling up. Open source, agile governance, and hybrid architectures are key levers for longevity and evolvability.

Faced with these challenges, our experts are at your disposal to co-construct your metaverse roadmap, define relevant use cases, and design your immersive setup in a secure, strategic manner. Together, let’s transform your ambitions into sustainable digital solutions.

Discuss your challenges with an Edana expert

PUBLISHED BY

Jonathan Massa

As a specialist in digital consulting, strategy and execution, Jonathan advises organizations on strategic and operational issues related to value creation and digitalization programs focusing on innovation and organic growth. Furthermore, he advises our clients on software engineering and digital development issues to enable them to mobilize the right solutions for their goals.

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Digital Consultancy & Business (EN) Featured-Post-Transformation-EN

Blockchain: Concrete Use Cases, Technology Choices, and Pitfalls to Avoid for Your Project

Blockchain: Concrete Use Cases, Technology Choices, and Pitfalls to Avoid for Your Project

Auteur n°14 – Daniel

Blockchain has now established itself as a strategic technological lever rather than just a buzzword. In business, it provides tamper-proof traceability, process automation via smart contracts, enhanced data protection, and asset tokenization for controlled digitalization. For C-level executives, IT directors, and digital transformation leaders, it is essential to distinguish relevant use cases, choose the right architectures and protocols, and anticipate scalability, governance, and security challenges. This article presents concrete applications, compares public, private, Layer 1 and Layer 2 technologies, and details best practices to manage risks and maximize the value of your blockchain projects.

Concrete Use Cases of Blockchain in Business

Blockchain is first and foremost an immutable distributed ledger, ideal for guaranteeing the provenance of information. It also enables automatic execution of business conditions via smart contracts.

At the heart of blockchain is a decentralized validation mechanism, ensuring no data can be modified without consensus. This operation meets the needs for traceability and transparency in highly complex supply or production chains.

In addition, smart contracts transform manual processes into automated workflows that are reliable and audited by all participants, without intermediaries.

Traceability and Provenance

Blockchain records every step of a logistics flow—from raw material to finished product—with timestamped, tamper-proof entries. Each transaction is verified and linked to the previous one, creating a continuous chain of information.

This transparency benefits both distributors and end customers, who can access a product’s complete history, boosting trust and regulatory compliance.

Example: An agri-food trading company deployed a private blockchain to trace coffee batch origins, cutting investigation time by 40% in quality-alert situations and improving responsiveness during sanitary inspections.

Automation via Smart Contracts

Smart contracts encode business rules (triggering payments, transferring access rights) as soon as predefined conditions are met. They execute automatically and are recorded on the blockchain.

This automation eliminates repetitive tasks and reduces human errors while ensuring a full and continuous audit of operations by all stakeholders.

For example, in the shared mobility sector, a smart contract can release payment for a vehicle reservation once check-in is validated and automatically calculate penalties for late returns.

Asset Tokenization

Tokenization represents a physical or financial asset (real estate, artwork, financial securities) as digital tokens on a blockchain. Each token embodies a fraction of the asset and can be securely transferred, sold, or managed.

This approach enhances liquidity and portfolio diversification while providing detailed traceability of successive owners and their associated rights.

For example, a real estate infrastructure consortium experimented with tokenizing co-ownership shares, enabling institutional and private investors to access traditionally illiquid assets more easily.

Technology Choices: Public, Private, L1, L2, and Hybrid Architectures

Selecting the right type of blockchain is fundamental to balancing security, performance, and governance. Public blockchains offer maximum transparency, while private ones guarantee participant control.

Beyond the public/private distinction, Layer 1 blockchains handle core storage and consensus but sometimes struggle with scaling. Layer 2 solutions attach to them to improve scalability and reduce transaction costs.

Finally, in many contexts, a hybrid architecture combining traditional databases with decentralized ledgers provides the best of both worlds, where a pure blockchain solution would not be cost-effective or necessary.

Public vs. Private Blockchains

Public blockchains (Ethereum, Avalanche, Solana) are open to everyone, ensure high decentralization, and offer complete transparency. They fit ecosystems where participants have no prior trust relationships.

In contrast, private blockchains (Hyperledger Fabric, Corda) restrict access to authorized members only, ensuring controlled governance and higher transaction throughput for organizations or business consortia.

Example: A mid-sized bank recently piloted a Hyperledger Fabric network to automate and secure interbank guarantee exchanges, achieving several thousand transactions per second while meeting confidentiality and internal governance requirements.

Layer 1 and Layer 2 for Scalability

Layer 1 blockchains implement the consensus layer and maintain the full transaction history. Their security is robust, but costs and latency can rise with more users.

Layer 2 solutions (optimistic rollups, zk-rollups, sidechains) offload some transactions off the main chain and periodically submit proofs or batches of transactions to Layer 1, reducing fees and speeding up confirmations.

This combination handles high volumes (micropayments, online gaming, IoT) while preserving the integrity of the underlying ledger.

Traditional Databases and Hybrid Architectures

For use cases that do not require full immutability or deep decentralization, a relational database or NoSQL system may suffice at low cost with proven maturity.

A hybrid architecture pairs these traditional databases with a blockchain module used only for critical data (certificates, compliance proofs, secure timestamps), limiting the transaction volume on the decentralized ledger.

From an ROI perspective, this strategy ensures performance and maintainability while securing the key components of the value chain.

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Mature Protocols and Selection Criteria

Ethereum post-Merge, Avalanche, Hyperledger and Corda are now proven pillars, each addressing specific needs in governance, EVM compatibility, and performance.

When choosing a protocol, examine ecosystem maturity, developer community, EVM smart contract compatibility, governance model, and technical roadmap.

Cybersecurity concerns, transaction costs, and energy consumption are also critical factors in validating a protocol’s suitability for an enterprise or consortium setting.

Ethereum Post-Merge and the EVM Ecosystem

Ethereum’s shift to Proof of Stake (Merge) has significantly reduced energy consumption and opened the door to more flexible governance. The EVM (Ethereum Virtual Machine) remains the reference for interoperable smart contracts.

With a rich ecosystem (dev tools, frameworks, wallets, oracles), Ethereum attracts a wide range of projects, from decentralized finance to enterprise NFTs.

However, transaction fees can remain volatile during peak demand, highlighting the value of coupling Ethereum with Layer 2 solutions or EVM-compatible sidechains.

Enterprise Solutions: Hyperledger Fabric and Corda

Hyperledger Fabric uses a channel model to segment exchanges between actor groups within a private network, ensuring modularity and fine-grained access control. It supports various consensus plug-ins and transforms existing processes into blockchain workflows.

Corda, originating in the financial sector, relies on a states & contracts object model and stands out for handling confidential transactions between peers without global data broadcast.

Example: A Swiss agricultural insurer implemented a Corda network to automate compensation payments after extreme weather events, reducing processing times and disputes by 60%.

New Approaches: Avalanche and Starknet

Avalanche combines fast, energy-efficient consensus with native EVM compatibility, enabling immediate deployment of existing dApps and near-instant transaction finality.

Starknet uses zero-knowledge proof cryptography (zk-rollups) to aggregate thousands of off-chain transactions while mathematically guaranteeing the validity of each batch submitted to the main chain.

These alternatives meet growing scalability and privacy needs while offering a more predictable cost model for very high-volume use cases.

Best Practices and Pitfalls to Avoid for Your Blockchain Project

A successful blockchain project relies on clear governance, rigorous cost evaluation, and an iterative implementation strategy. Rushed protocol choices or insufficient audits are risks not to underestimate.

Governance must define roles, voting rights, and network update mechanisms before launch. A cross-functional steering committee—covering IT, business and security—is indispensable.

Meanwhile, smart contract modeling should be audited by external experts to prevent vulnerabilities, and a phased scaling plan ensures network stability in production.

Governance and Security

Setting up governance, whether centralized or consortium-based, determines the network’s longevity. Anticipate evolving consensus rules, software updates, and private key management.

On the security front, smart contract code reviews by multiple independent teams, along with automated testing and load simulations, are essential steps.

Incident response procedures must be documented and rehearsed, with a remediation plan ready in case of a breach or targeted attack.

Costs and Auditability

The economic model of a blockchain project must cover transaction fees, infrastructure costs (nodes, storage), as well as audit and application maintenance expenses.

It is advisable to set up test and simulation environments to refine costing before production deployment. Real-time monitoring tools help track usage and optimize consensus parameters.

Auditability remains a major advantage: thanks to intrinsic traceability, regulators or internal auditors can validate business processes without resorting to costly external reports.

Scalability and Performance Management

The modular approach, with dedicated blockchain micro-services for each use case (payments, certification, document exchange), limits bottlenecks and facilitates scaling.

Leveraging Layer 2 solutions or specialized sidechains for low-value transactions boosts responsiveness and contains costs.

Finally, optimizing smart contract code (reducing algorithmic complexity, minimizing on-chain calls) lowers confirmation times and resource consumption.

Implementation Strategy and Support

An agile approach, in short cycles, allows you to quickly experiment with proof-of-concepts and adjust the roadmap based on operational feedback.

Managing internal and external communication ensures stakeholder buy-in and prepares the ecosystem to onboard new users and partners.

Expert support covering design, engineering, architecture, cybersecurity, and product strategy ensures overall coherence and a gradual upskilling of internal teams.

Leverage Blockchain as a Strategic Lever

Blockchain today offers proven applications for traceability, process automation, data protection, and asset tokenization. Technology choices (public, private, Layer 1/2, hybrid) should rely on a rigorous analysis of needs, expected performance, and governance constraints.

Mature protocols such as Ethereum, Hyperledger Fabric, or Avalanche—combined with an agile approach and security audits—guarantee sustainable deployment. By avoiding governance missteps, hidden costs, and scalability issues, blockchain projects can become true competitive advantages.

Whatever your maturity level, our Edana experts are here to design, develop, and secure your solution, from strategy to operational execution.

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PUBLISHED BY

Daniel Favre

Avatar de Daniel Favre

Daniel Favre is a Senior Software Engineer. He designs and builds bespoke business solutions (SaaS, mobile apps, websites) and full digital ecosystems. With deep expertise in architecture and performance, he turns your requirements into robust, scalable platforms that drive your digital transformation.