Customers
Case Study: Analytiks - Fast-Track AI Projects With Managed Dagster+

Case Study: Analytiks - Fast-Track AI Projects With Managed Dagster+

November 13, 2024
Case Study: Analytiks - Fast-Track AI Projects With Managed Dagster+

Enterprise-grade data infrastructure that powers AI initiatives for growing companies

As an open-source project backed by a commercial platform, Dagster's success relies heavily on our network of implementation partners who help organizations of all sizes harness the power of modern data orchestration. Among these partners, Analytiks has developed a particularly innovative approach that's extending enterprise-grade data tools to previously underserved market segments.

Revolutionizing Data Solutions for Growing Businesses

Mathieu Stark          Founder and CEO at Analytiks        

When Mathieu Stark founded Analytiks, he noticed a recurring pattern among small and medium-sized businesses: they needed sophisticated data solutions but lacked the resources to implement and maintain enterprise-grade tools. "We work with everyone, from Fortune 500 companies to startups that need to move away from spreadsheets into more sophisticated data systems,"      

Stark explains. "We set up data pipelines, data warehouses, build complex data models, and integrate all our client's data into a unified platform. This transformation unlocks significant business value - from accelerating time-to-insight by 70% through automated reporting to enabling real-time decision-making with trustworthy data."      

"But perhaps most critically, this robust data foundation becomes the launchpad for AI initiatives," Stark continues. "When companies want to leverage generative AI effectively, they need clean, well-organized data that is properly governed. Our unified platform approach means clients can seamlessly feed quality data into their LLM applications, whether they're building intelligent customer service chatbots, automated content generation, or predictive analytics systems. We're seeing clients reduce AI implementation time by 60% because they're not struggling with data preparation and governance - the foundation is already there."

The DAD Stack: Enterprise Features at Scale

Analytiks has developed a unique solution to this challenge. As a Dagster partner and Dagster+ customer, they've created a model that makes our enterprise features accessible to organizations of all sizes. Their pre-packaged solution centers around what they call the "DAD stack" - Dagster+, Airbyte, and dbt. This combination leverages Dagster+'s powerful metadata tracking and lineage capabilities to provide complete visibility into data flows, while advanced monitoring ensures reliable pipeline operations across the entire stack.

Their innovative approach handles access to Dagster+ features. Rather than requiring clients to sign their own enterprise contracts, Analytiks runs Dagster+ and makes it available to clients through their own instance. "Think of it as a way to get enterprise features at a fraction of the cost," Stark says. "Our clients can start small, pay monthly, and scale up as needed. There's no need to commit to a large annual contract right away."

Their implementation approach showcases many of Dagster+'s key capabilities. The platform provides end-to-end data pipeline visibility, real-time job status monitoring, automated error detection, and comprehensive data lineage tracking. Dagster+'s asset-based approach ensures teams can easily understand data dependencies and impact analysis. At the same time, its metadata system automatically documents data transformations and maintains a clear record of how data evolves throughout the pipeline. This level of observability and control enables Analytiks to maintain high reliability while quickly identifying and resolving any issues.

Comprehensive Support and Future Growth

The power of this technical foundation becomes most apparent in how Analytiks delivers ongoing support to their clients. "With Dagster+'s lineage capabilities, we can instantly trace any data point back to its source," Stark explains. "If a client notices discrepancies in their reports, we can quickly trace the entire data path and identify exactly where issues might have occurred. This level of observability is transformative for troubleshooting and maintaining data quality."

The advanced monitoring capabilities of Dagster+ have also transformed how Analytiks provides ongoing support. Their team leverages Dagster+'s alerting system to maintain high service levels across all client deployments. Custom alerts notify them of potential pipeline delays, data quality problems, or resource constraints, allowing them to address problems quickly. This comprehensive support, powered by Dagster+'s enterprise features, often costs much less than hiring a single full-time employee while providing access to a much broader range of expertise.

The model has proven particularly valuable for organizations dealing with complex data challenges. Even when working with larger enterprises, Analytiks adapts their approach to meet specific infrastructure requirements while maintaining the same principles of clear organization and ongoing support.

As we continue to expand Dagster's ecosystem, partners like Analytiks play a crucial role in making our tools accessible to a broader range of organizations. Their approach demonstrates how innovative deployment models, combined with Dagster+'s advanced features, can help more teams benefit from enterprise-grade data orchestration while ensuring proper implementation, documentation, and ongoing support.

Contact the Analytiks team today!

Have feedback or questions? Start a discussion in Slack or Github.

Interested in working with us? View our open roles.

Want more content like this? Follow us on LinkedIn.

Dagster Newsletter

Get updates delivered to your inbox

Latest writings

The latest news, technologies, and resources from our team.

Multi-Tenancy for Modern Data Platforms
Webinar

April 13, 2026

Multi-Tenancy for Modern Data Platforms

Learn the patterns, trade-offs, and production-tested strategies for building multi-tenant data platforms with Dagster.

Deep Dive: Building a Cross-Workspace Control Plane for Databricks
Webinar

March 24, 2026

Deep Dive: Building a Cross-Workspace Control Plane for Databricks

Learn how to build a cross-workspace control plane for Databricks using Dagster — connecting multiple workspaces, dbt, and Fivetran into a single observable asset graph with zero code changes to get started.

Dagster Running Dagster: How We Use Compass for AI Analytics
Webinar

February 17, 2026

Dagster Running Dagster: How We Use Compass for AI Analytics

In this Deep Dive, we're joined by Dagster Analytics Lead Anil Maharjan, who demonstrates how our internal team utilizes Compass to drive AI-driven analysis throughout the company.

Dagster 1.13: Octopus's Garden
Dagster 1.13: Octopus's Garden
Blog

April 9, 2026

Dagster 1.13: Octopus's Garden

Dagster skills, partitioned asset checks, state backed components, virtual assets, and stronger integrations.

Monorepos, the hub-and-spoke model, and Copybara
Monorepos, the hub-and-spoke model, and Copybara
Blog

April 3, 2026

Monorepos, the hub-and-spoke model, and Copybara

How we configure Copybara for bi-directional syncing to enable a hub-and-spoke model for Git repositories

Making Dagster Easier to Contribute to in an AI-Driven World
Making Dagster Easier to Contribute to in an AI-Driven World
Blog

April 1, 2026

Making Dagster Easier to Contribute to in an AI-Driven World

AI has made contributing to open source easier but reviewing contributions is still hard. At Dagster, we’re improving the contributor experience with smarter review tooling, clearer guidelines, and a focus on contributions that are easier to evaluate, merge, and maintain.

How Magenta Telekom Built the Unsinkable Data Platform
Case study

February 25, 2026

How Magenta Telekom Built the Unsinkable Data Platform

Magenta Telekom rebuilt its data infrastructure from the ground up with Dagster, cutting developer onboarding from months to a single day and eliminating the shadow IT and manual workflows that had long slowed the business down.

Scaling FinTech: How smava achieved zero downtime with Dagster
Case study

November 25, 2025

Scaling FinTech: How smava achieved zero downtime with Dagster

smava achieved zero downtime and automated the generation of over 1,000 dbt models by migrating to Dagster's, eliminating maintenance overhead and reducing developer onboarding from weeks to 15 minutes.

Zero Incidents, Maximum Velocity: How HIVED achieved 99.9% pipeline reliability with Dagster
Case study

November 18, 2025

Zero Incidents, Maximum Velocity: How HIVED achieved 99.9% pipeline reliability with Dagster

UK logistics company HIVED achieved 99.9% pipeline reliability with zero data incidents over three years by replacing cron-based workflows with Dagster's unified orchestration platform.

Modernize Your Data Platform for the Age of AI
Guide

January 15, 2026

Modernize Your Data Platform for the Age of AI

While 75% of enterprises experiment with AI, traditional data platforms are becoming the biggest bottleneck. Learn how to build a unified control plane that enables AI-driven development, reduces pipeline failures, and cuts complexity.

Download the eBook on How to Scale Data Teams
Guide

November 5, 2025

Download the eBook on How to Scale Data Teams

From a solo data practitioner to an enterprise-wide platform, learn how to build systems that scale with clarity, reliability, and confidence.

Download the eBook Primer on How to Build Data Platforms
Guide

February 21, 2025

Download the eBook Primer on How to Build Data Platforms

Learn the fundamental concepts to build a data platform in your organization; covering common design patterns for data ingestion and transformation, data modeling strategies, and data quality tips.