Clear metrics. Reliable data. Decisions you can trust.

dyvenia helps enterprises align and validate their metrics so leaders can trust their numbers, scale analytics, and deploy AI with confidence.

Schedule a discovery call

Most companies don’t actually struggle with data. They struggle with the context behind it.

Data exists across multiple systems, teams, and processes, but it is rarely structured in a way that preserves its business meaning, breaking trust.

  • Data lives across ERPs, CRMs, and operational systems
  • Metrics defined differently across functions
  • Business context gets lost when data is combined across sources

We build data foundations that preserve business context and make metrics consistent across the organization *

* by working backwards from the decisions leaders need to make, we design data models, pipelines, and platforms that ensure metrics are aligned, traceable, and scalable across systems.

The Goal? From fragmented data to consistent, decision-ready metrics

We help organizations move from disconnected systems and conflicting reports to a shared, reliable foundation for decision-making.

Business outcomes you can TRUST

  1. 1

    Aligned metrics across teams

    Finance, operations, and sales rely on the same definitions, eliminating debates and reconciliation.

  2. 2

    Trustworthy, traceable data

    Every number can be explained back to its source, making analytics auditable and reliable.

  3. 3

    AI-ready foundations

    Curated facts and dimensions ensure AI pilots produce consistent, explainable outputs.

  4. 4

    Faster, smarter decisions

    Teams spend less time validating data and more time acting on insights.

  5. 5

    Scalable analytics

    Data models and pipelines grow with your organization without breaking consistency or performance.

Who We Are

We are data and performance management specialists with backgrounds in finance, operations, and analytics.

We have worked in the same environments our clients operate in, where metrics don’t align, data comes from multiple systems, and reporting requires constant validation.

We focus on building data foundations that reflect real business processes, so the numbers leaders rely on are consistent, explainable, and actionable.

We believe AI is a competitive advantage only if it’s built on reliable data and a clear business context. That’s what we deliver.

Alessio Civitillo Founder & CEO

An experienced financial analyst and software engineer, Alessio brings a unique blend of expertise and vision to the world of data, ensuring that our clients unlock the hidden connections in their data and deliver value to their stakeholders.

Giuseppe Anglani

15+ years of experience in finance roles, as well as in manufacturing and services for multinational corporations. Expertise in controlling FP&A, Commercial Finance, Operations Finance, and Internal Audit.

Ciprian Pup

Description placeholder

Karol Wolski

Karol builds secure, cloud-agnostic data platforms at scale. With deep DevOps expertise, he unifies data sources, automates infrastructure, and streamlines hybrid operations.

Mateusz Paździor

Mateusz designs modular, future-proof data infrastructures with strong observability and operational excellence, ensuring they stay reliable, scalable, and aligned with evolving business needs.

What’s Holding You Back

Enterprises are drowning in data, but struggling to turn it into performance.

Slow Insights
By the time reports are ready, the opportunity has passed.
Disconnected numbers
Finance, sales, and operations spend time reconciling conflicting results.
Unreliable AI outputs
Without clear metrics and structure, AI produces inconsistent answers.
Fragmented systems
ERP, CRM, and operational data remain difficult to combine meaningfully.
Growing pressure on teams
FP&A and operations are expected to deliver faster, with greater accuracy.
Unclear ownership of metrics
No single source of truth makes accountability and trust difficult.

How We Deliver Results

Consulting Services

We fix the foundations so your data and AI deliver measurable impact:

  • Data Engineering – Ingest, clean, and unify ERP, CRM, and operational data.
  • Analytics & BI – Build business-relevant models, dashboards, and KPI frameworks.
  • Performance Management – Enable rolling forecasts, what-if scenarios, and dynamic planning.
  • AI Readiness – Governance and data standards to make AI outputs trustworthy.

Perspeqtive AI Assistant

Your team’s fastest route to insights. Ask questions in plain language and get instant answers:

  • On-demand charts, metrics, and explanations.
  • Ready-to-run SQL queries, no coding required.
  • Always connected to ERP, CRM, and finance systems.
  • Shared definitions across teams for consistent KPIs.

Our Insights

Selected Articles. Check our blog for more.

Flat Tables vs. Snowflake Semantic Models: The Ultimate BI Data Debate

Structuring data for BI is a key decision that impacts performance, scalability, and data consistency. This article compares flat tables and semantic models, highlighting the strengths and trade-offs of each. Learn how a hybrid approach can offer the best of both worlds—combining consistency, flexibility, and efficient analytics across tools and teams.

Driving Sustainability with Data: Improving CO₂ Emissions Reporting Across Supply Chains

Accurate CO₂ emissions reporting is vital for meeting sustainability goals and regulatory requirements. This article delves into the challenges of Scope 3 emissions, the importance of clean data, and how structured data systems like sustainability marts can improve reporting, ensure compliance, and support better decision-making for businesses.

A Simple Approach to Master Data Management to Unify Metrics and Insights

Discover the role of master data management (MDM) in achieving consistent and accurate business metrics. This article explains the concept of master data, outlines key challenges organizations face, and introduces two accessible approaches to MDM. By focusing on practical steps and avoiding common pitfalls, we show how businesses can enhance data quality without large budgets or complex systems.