Building a MovieLens Recommender System
Speaker: Jill Cates - Data Scientist, Shopify Workshop Materials: https://github.com/topspinj/tmls-2020... Keys Learnings: Want to know how Spotify, Amazon, and Netflix generate recommendations for their users? In this workshop, we will explore different types of recommendation systems and their implementations. We will build our own recommendation system from scratch using collaborative filtering and content-based filtering techniques in Python.

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Collaborative Filtering : Data Science Concepts

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The Math Behind Recommender Systems

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Maciej Kula - Hybrid Recommender Systems in Python

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RL for Agents Workshop - Deep Dive on Training Agents with RL and Open Source

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How to Design and Build a Recommendation System Pipeline in Python (Jill Cates)

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Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

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Real-Time Search and Recommendation at Scale Using Embeddings and Hopsworks

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Stanford CS229 I Machine Learning I Building Large Language Models (LLMs)

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Recommender System in 6 Minutes

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Building a Recommendation System in Python

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How To Build A Self-Improving AI Trading Agent (Insanely Cool)

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I Investigated The World's Skinniest vs Fattest City

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Spotify ML Question - Design a Recommendation System (Full mock interview)

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Build a Spotify-Like Music Recommender System in Python

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Stanford CS153 Frontier Systems | Scale, AGI, and the Future of Everything

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🧹Watch me CLEAN DATA in Minutes with Python (+10 Tips for Complex Datasets)

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Why Do Predators Ignore Sleeping Humans?

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Neural Recommender Systems

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How does Netflix recommend movies? Matrix Factorization

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