Artificial Intelligence | News | Insights | AiThority
[bsfp-cryptocurrency style=”widget-18″ align=”marquee” columns=”6″ coins=”selected” coins-count=”6″ coins-selected=”BTC,ETH,XRP,LTC,EOS,ADA,XLM,NEO,LTC,EOS,XEM,DASH,USDT,BNB,QTUM,XVG,ONT,ZEC,STEEM” currency=”USD” title=”Cryptocurrency Widget” show_title=”0″ icon=”” scheme=”light” bs-show-desktop=”1″ bs-show-tablet=”1″ bs-show-phone=”1″ custom-css-class=”” custom-id=”” css=”.vc_custom_1523079266073{margin-bottom: 0px !important;padding-top: 0px !important;padding-bottom: 0px !important;}”]

Iterative Introduces First Git-based Machine Learning Model Registry

Iterative Studio Model Registry solves the productivity gap between machine learning and DevOps teams with its GitOps approach

Iterative, the MLOps company dedicated to streamlining the workflow of data scientists and Machine Learning (ML) engineers, launched the first machine learning model registry based on GitOps principles, Iterative Studio Model Registry.

Latest Aithority Insights: AiThority.com to Attend The Character of AI – A Technology Ethics Conference (Virtual)

“Iterative’s model registry lets software development teams and ML engineers work together using the same tools instead of in silos.”

Based on engagement with hundreds of organizations across industries of various sizes, Iterative found that more than 80% of organizations do not have the necessary visibility and control over their ML models or how they’re deployed throughout the ML model development lifecycle. With these organizations in mind, Iterative has built an open-source model registry solution so teams can easily manage models with full context around model lineage, version, production status, data used to train model, and more.

The Iterative Studio Model Registry uses a GitOps approach for model lifecycle management, meaning an organization’s Git is the single source of truth. Unlike existing solutions that are separate from software development tools and often not updated with the latest model information, Iterative takes the workflows and best practices of software development and applies them to model deployment, getting models into production faster. DevOps and MLOps teams collaborate by using the same tools and processes so production-ready models being passed downstream to CI/CD systems are all fully automated and transparent to all teams.

Top Artificial Intelligence InsightsCould Instances of NLP Bias Derail AI?

“DevOps teams already use a GitOps approach to manage the lifecycle and deployment of their business apps and services while ML teams have a different process with custom solutions or model registries that are not based on GitOps. Our model registry builds on GitOps principles and supports the same workflows that DevOps teams use,” said Dmitry Petrov, CEO of Iterative. “Iterative’s model registry lets software development teams and ML engineers work together using the same tools instead of in silos.”

The model registry is made with fully modular components. So whether it’s a data scientist who prefers APIs, a manager who prefers a web user interface, or a DevOps engineer who works best with the command line interface (CLI), Iterative Studio Model Registry meets users where they are. This way, team members use the interface that they’re most comfortable with in order to create and collaborate on ML models quickly and seamlessly. And for organizations in general, the model registry and various open-source components that simplify model deployment like MLEM, plug into their existing MLOps stack without any worries around vendor lock-in or compatibility.

Iterative Studio Model Registry gives organizations an interface to not only search and explore models but to manage them, moving various models across the ML lifecycle, from development to production and retirement. With Iterative Studio Model Registry, organizations gain:

  • Model organization, access, and collaboration: Explore models in a central dashboard that facilitates model discovery across all your ML projects. Model history, versions, and stages are transparent and accessible across the team.
  • Model versioning and lineage: Register and track models and their versions from a GUI. Identify the experiment that produced the model and track how, when and by whom a model version was created. For highly-regulated industries like health or finance, a single place for all information regarding models that teams can easily search and access is an indispensable requirement.
  • Model lifecycle management: Manage the lifecycle of each model as it moves through staging, production, and other stages. See at a glance which model versions are in which stage and move easily across stages within the interface.

Founded in 2018, Iterative tools have had more than 8 million sessions earning more than 14,000 stars on GitHub. Iterative now has more than 300 contributors across their different tools.

AI ML in Marketing: AI and Big Data Analysis Used to Find Brands’ Emotional Connection

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

Comments are closed.