Iryna Kondrashchenko & Oleh Kostromin
DataForce Studio
#1about 1 minute
The hidden complexity of the machine learning lifecycle
Building a machine learning model is simple, but the full lifecycle including data prep, deployment, and monitoring makes production systems very difficult.
#2about 1 minute
Overcoming the fragmented machine learning tool ecosystem
DataForce Studio provides a set of well-integrated components to create a single, unified flow from model building to production monitoring.
#3about 1 minute
Using a model-centric design for a unified workflow
The platform defines a model as a standardized container with rich metadata, allowing all system components to work with it natively without extra configuration.
#4about 1 minute
Ensuring flexibility for diverse model types and use cases
The platform supports everything from traditional machine learning on tabular data to complex large language model pipelines and agent-based workflows.
#5about 1 minute
Avoiding vendor lock-in with an open-source platform
DataForce Studio is open source and uses a core module called Orbits, allowing you to bring your own storage and compute to maintain control over your data.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
04:25 MIN
Architecture of a unified data and GenAI platform
Beyond GPT: Building Unified GenAI Platforms for the Enterprise of Tomorrow
18:49 MIN
Overview of the data and machine learning tech stack
Empowering Retail Through Applied Machine Learning
05:29 MIN
Extending AI platforms for custom business solutions
Architecting the Future: Leveraging AI, Cloud, and Data for Business Success
05:39 MIN
Exploring the components of the IBM Data Fabric
Data Fabric in Action - How to enhance a Stock Trading App with ML and Data Virtualization
08:07 MIN
Building a self-service data and AI workbench
Beyond GPT: Building Unified GenAI Platforms for the Enterprise of Tomorrow
09:56 MIN
The challenge of moving AI from demo to production
What’s New with Google Gemini?
00:05 MIN
Moving agentic AI from proof of concept to production
Building Blocks for Agentic Solutions in your Enterprise
18:06 MIN
Using data management and open source tools for MLOps
MLOps - What’s the deal behind it?
Featured Partners
Related Videos
Azure AI Foundry for Developers: Open Tools, Scalable Agents, Real Impact
Oliver Will
Open Source AI, To Foundation Models and Beyond
Ankit Patel, Matt White, Philipp Schmid, Lucie-Aimée Kaffee & Andreas Blattmann
The State of GenAI & Machine Learning in 2025
Alejandro Saucedo
The AI-Ready Stack: Rethinking the Engineering Org of the Future
Jan Oberhauser, Mirko Novakovic, Alex Laubscher & Keno Dreßel
Beyond GPT: Building Unified GenAI Platforms for the Enterprise of Tomorrow
Kapil Gupta
Developer Experience, Platform Engineering and AI powered Apps
Ignacio Riesgo & Natale Vinto
New AI-Centric SDLC: Rethinking Software Development with Knowledge Graphs
Gregor Schumacher, Sujay Joshy & Marcel Gocke
Industrializing your Data Science capabilities
Dubravko Dolic & Hüdaverdi Cakir
Related Articles
View all articles.gif?w=240&auto=compress,format)



From learning to earning
Jobs that call for the skills explored in this talk.






DATA Science - Azure Machine Learning as a Service
cognizant
€42K
Unit testing
Adobe InDesign
Configuration Management


