CIO Influence
Automation CIO Influence News Networking

Open Source MLOps Tool DVC Adds First-of-its-Kind Experiment Versioning

Open Source MLOps Tool DVC Adds First-of-its-Kind Experiment Versioning
Iterative’s DVC now combines the benefits of version control with experiment tracking, enabling easy recording, comparison, and reproduction of experiments at scale

Iterative, the MLOps company dedicated to streamlining the workflow of data scientists and machine learning (ML) engineers, announced the latest release of Data Versioning Control (DVC), introducing industry-first, experiment versioning. Experiment versioning gives developers an easy way to save, compare, and reproduce ML experiments at scale in ways that neither traditional software version control nor existing experiment tracking tools can.

“Experiment tracking tools have come a long way. Users no longer need to log experiment information in spreadsheets or notebooks,” said Dave Berenbaum, technical product manager at Iterative. “But current experiment tracking tools usually provide an API to log experiment information, a database to store it, and a dashboard to compare and visualize. DVC experiment versioning builds on modern version control principles and technology to address experiment tracking needs and give developers the most integrated way to iterate their experiments.”PREDICTIONS SERIES 2022

Top iTechnology Cybersecurity News: RSA Insurance Turns to Kyndryl to Accelerate Cloud Migration to Support Digital-First Enterprise

Experiment versioning in DVC builds on modern version control principles and technology to address experiment tracking needs and give developers the easiest and most complete way to iterate their experiments. Experiment versioning is lightweight, using an existing tech stack eliminating the need for additional services. Automated reproduction saves time and complexity while providing confidence and audit-ability, while distributed and flexible collaboration enables any size team to generate experiments individually and share them as they choose.

With experiment versioning, data science teams can:

  • Restore or reproduce any experiment automatically
  • Log experiments end-to-end and track changes introduced by each
  • Keep experiments connected to their Git repo, with no external services needed

With open tools and formats, Iterative is cloud-agnostic, providing greater flexibility and removing the need and lock-in for proprietary AI Platforms.

DVC provides users with a Git-like interface for versioning data, models, and pipelines, bringing version control to machine learning and solving the challenges of reproducibility. Experiment versioning extends DVC’s capabilities beyond simple experiment tracking.

Top iTechnology Cloud News: Advarra Launches Next Generation Cloud Platform for Clinical Research

[To share your insights with us, please write to sghosh@martechseries.com]

Related posts

Fincons Group launches AllRights, a unique comprehensive rights management solution for evolving media industry needs

Cayosoft First to Offer Management, Monitoring, and Rollback for Microsoft Intune Device Management

Cision PRWeb

3D PIONEER SYSTEMS INC- DPSM Acquires Australian Data Centre, Host Group Of Companies Pty Ltd

CIO Influence News Desk

Leave a Comment