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Intro
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Al for Linkedin products
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Goal of Pro-ML
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Pro-ML Layers
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Organizationally
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Exploring and Authoring - Jupyter
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Exploring and Authoring - Quasar
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Exploring and Authoring - Spark
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Features and Algorithms
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Feature Marketplace
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Feature Access Consistency
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Training Engine: Photon-Connect
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How We Learn From Data
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How We Make it Happen
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Health Assurance Model Development Cycle
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Anomaly Detection
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Al Academy Accelerated Democratization
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Adoption
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Democratizing AI
Description:
Explore the democratization of AI and the implementation of end-to-end machine learning in this 50-minute conference talk from Strange Loop. Dive into LinkedIn's journey of embracing AI across various products and the challenges faced in onboarding new engineers, features, and modeling technologies. Learn about "Productive Machine Learning," a strategy aimed at doubling modeler efficiency while making AI accessible to engineers across LinkedIn. Discover the four key layers of this approach: Exploring and Authoring, Training, Deploying, and Running, along with the crucial elements of Health Assessment and Feature Marketplace. Gain insights into LinkedIn's AI infrastructure, including tools like Jupyter, Quasar, and Spark, as well as the importance of feature consistency and the training engine Photon-Connect. Understand the significance of health assurance in the model development cycle and the role of anomaly detection. Explore the impact of AI Academy in accelerating democratization and adoption of AI techniques across the organization. Take away valuable lessons on the importance of robust infrastructure and practices for serving AI at scale, beyond just focusing on machine learning algorithms. Read more

Democratizing AI - Back-Fitting End-to-End Machine Learning

Strange Loop Conference
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