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PASS MARATHON
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Technical Assistance
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Infrastructure Management Saps Productivity
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ML Lifecycle: Data Train Deploy Manage
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Challenge: Heterogeneity
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Challenges: Composability
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Challenge: Performance: Cold Start, Throughput, and...
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Solution: Evaluations, Modular Dependencies
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Challenge: Lack of Reusability
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Solution: API Endpoints, Model Repository
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Challenge: Iteration Speed
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Solution: Model versioning
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Challenge: Training vs Production Infrastructure
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Solution: Serverless, Elastic Scaling
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Challenge: Auditability and Governance
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Solution: Chargebacks & Attribution
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Case Study: Financial Services
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ML Infrastructure Best Practices
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ML Infrastructure Components
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Enterprise Considerations
Description:
Explore the evolving landscape of machine learning deployment and management in this 44-minute conference talk from PASS Data Community Summit. Delve into the challenges of adapting infrastructure, operations, staffing, and training to meet the demands of a new software development lifecycle for ML without discarding existing effective practices. Learn about the differences between model and application development, identify where traditional SDLC falls short for ML, and discover how leading companies have automated model deployment and management. Gain insights on integrating with existing lifecycle management tools and deploying, serving, and governing ML models at scale. The talk covers topics such as heterogeneity, composability, performance issues, reusability, iteration speed, infrastructure differences, and auditability. Examine best practices, key infrastructure components, and enterprise considerations through a financial services case study, equipping you with the knowledge to navigate the new ML lifecycle effectively. Read more

The New ML Lifecycle - Deploying and Managing

PASS Data Community Summit
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