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[] Amritha and Abhik's preferred coffee
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[] Takeaways
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[] Please like, share, leave a review, and subscribe to our MLOps channels!
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[] AI Quality In-person MLOps Community Conference on June 25th!
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[] Abhik's background
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[] Amritha's TLDR Journey
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[] New Challenges in MLOps
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[] ML Workflow Maturity Levels
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[] Dev & Deploy Process Overview
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[] Maturity Metrics and Progress
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[] Automated ML Comparison: Semi vs. Fully
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[] LLMs vs Traditional ML
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[] Design MLOps for Usability
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[] LatticeFlow Ad
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[] Metrics Impact Assessment
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[] Spark Learning Risks Analysis
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[] MLOps User Journeys
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[] ML Product Manager Transition & Constraints
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[] AI Engineer Transition Guide
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[] Data Compliance Challenge
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[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore a comprehensive podcast discussion on designing machine learning infrastructure for ML and LLM use cases. Gain insights from ML Product Leader Amritha Arun Babu Mysore and Managing Consultant Analytics Abhik Choudhury as they delve into best practices for building reusable, scalable, and governable MLOps architectures. Learn about ML workflow maturity levels, development and deployment processes, automated ML comparisons, and the differences between LLMs and traditional ML. Discover strategies for designing user-friendly MLOps systems, assessing metric impacts, analyzing learning risks, and navigating user journeys. Gain valuable advice on transitioning to ML product management and AI engineering roles, and understand the challenges of data compliance in the field.

Designing ML Infrastructure for ML and LLM Use Cases

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