MLOps Community
timezone
+00:00 GMT

MLOps Community

The MLOps Community is where machine learning practitioners come together to define and implement MLOps. Our global community is the default hub for MLOps practitioners to meet other MLOps industry professionals, share their real-world experience and challenges, learn skills and best practices, and collaborate on projects and employment opportunities. We are the world's largest community dedicated to addressing the unique technical and operational challenges of production machine learning systems.
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Events

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4:00 PM - 5:00 PM, Apr 18 GMT
AI Innovations: The Power of Feature Platforms

Content

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In the dynamic landscape of MLOps and data leadership, Sol shares invaluable insights on building successful teams and driving impactful projects. In this podcast episode, Sol delves into the importance of prioritizing relationships, introduces a pragmatic "Wrong Use Cases Formula" to streamline project prioritization, and emphasizes the critical role of effective communication in data leadership. Her wealth of experience and practical advice provides a roadmap for navigating the complexities of MLOps and leading data-driven initiatives to success.
Apr 26th, 2024 | Views 14
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In this session, Chad Sanderson, CEO of Gable.ai and author of the upcoming O’Reilly book: "Data Contracts," tackles the necessity of modern data management in an age of hyper iteration, experimentation, and AI. He will explore why traditional data management practices fail and how the cloud has fundamentally changed data development. The talk will cover a modern application of data management best practices, including data change detection, data contracts, observability, and CI/CD tests, and outline the roles of data producers and consumers. Attendees will leave with a clear understanding of modern data management's components and how to leverage them for better data handling and decision-making.
Apr 24th, 2024 | Views 788
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The panel of guests Anna Maria Modée, Francesca Carminati, and Rebecka Storm, guided by host Saroosh Shabbir, dive into an insightful discussion about the balance of simplicity and complexity within ML systems. They emphasize the need for providing straightforward solutions for common tasks, whilst allowing customization as necessary and prioritizing business impact over mere scalability. The panelists address diverse topics, such as avoiding over-engineering, operational efficiency, code ownership, and managing technical debt. They also discuss the societal implications of AI, data sensitivities, and the necessity for robust safeguards. The lively debate also covers the scalability of ML systems, method validation, co-ownership of projects, and the importance of good documentation practices. The panel sums up pointing out the need for the value of data work to align with company goals, and for technical professionals to bridge the gap between technical solutions and business needs. Finally, they respond to audience questions about model complexity and debt accumulation throughout production processes, sparking thoughts on tools and governance in development.
Apr 22nd, 2024 | Views 796