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Comet Launches Kangas, an Open Source Data Analysis, Exploration and Debugging Tool for Machine Learning.

ML in the Field featuring Vignesh Shetty of GE Healthcare

GE Healthcare projects are delivering REAL impactful business contributions, including reducing MRI imaging time by up to 50% while improving image quality, 30-50% reduction in exam time and 70% reduction in no-show rates. Listen to this in-depth interview and learn: -How large of an AI/ML team is needed for these impactful projects -What level of industry/domain expertise is needed by AI practitioners

Running Effective Machine Learning Teams

While academic research has been improving consistently, many organizations are struggling with translating ML into business value. Now is the time to strategize with your team to overcome critical operational hurdles of ML teams.

Understanding the ML Model Lifecycle

What is the machine learning lifecycle? Watch this webinar to learn: The stages of the ML model lifecycle Why it’s critical that machine learning teams track their models through the entire lifecycle

Building Your Futureproof Stack for MLOps

In this webinar, join the teams at Pachyderm and Comet as we cover: What MLOps entails, and the components of a robust stack The challenges teams face when scaling their models intro production

Lessons From the Field in Building Your MLOps Strategy

In our discussions with leading organizations utilizing ML like The RealReal and Uber, we have compiled real-world case studies and organizational best practices for MLOps in the enterprise.

Visualize your Object Detection Models with Jacques Verré

Whether you’re comparing model performance during a daily standup or onboarding a new teammate, you’ll need to log the training runs with an experiment management tool like Comet. In this session, Jacques Verré will walk you through the process of reviewing a YOLOv5 model in Comet.

2021 ML Practitioner Survey

AI is encountering another hurdle to delivering value, in the form of friction among and between teams. A survey of 508 machine learning practitioners that included data scientists and engineers found challenges related to people, process, and tools. This friction can cause delays in ML development that delay or halt model deployment to production.

Convergence 2022 – ML Highlights from 2021 and Lessons for 2022

Oren Etzioni, CEO at Allen Institute for Artificial Intelligence, was the keynote speaker at Comet's Convergence 2022 event, where he summarizes 15 highlights of 2021 in ML and suggests lessons for 2022 and beyond.

MLOps System Design for Development and Production

Comet CEO Gideon Mendels discusses system design principles for managing development-production feedback loops and shares industry case studies these principles are applied to production ML systems.
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