
Episodes
24 episodes
When Your Model Learns the Wrong Thing
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How Data Scientists Use Causal Forests to Measure Ad Impact
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How LinkedIn Labs Doubled Feed Engagement with Causal Inference
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How Feature Stores Fix Data Science Chaos
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Why Your ML Pipeline Needs a Living Documentation
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How Reinforcement Learning from Human Feedback Aligns Chatbots
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How Versioning Metadata Prevents Silent Model Failures
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How a Data Scientist Busted a Billion-Dollar Fraud Ring
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How Synthetic Data Saved a Fraud Detection Model
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How Spotify Recommends Songs You Actually Like
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How Spotify Recommends Songs You Actually Like
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How a Data Scientist Found Causal Links Without A-B Tests
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How Bayesian A-B Testing Avoids False Positives
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How Imbalanced Data Ruins Classification Models
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Why Your Chatbot Hallucinates and How to Fix It
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How Interpretable Machine Learning Found a Hidden Cancer Signal
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How A-B Testing Can Mislead You in Data Science
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When Training Data and Real Data Diverge
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How Data Drift Makes Models Go Stale
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How Recommendation Engines Trap You in a Filter Bubble
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How a Hedge Fund Built a Better Model with Feature Engineering
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How a Midwest Bank Built a Better Credit Model with Ensemble Methods
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How Data Leakage Inflates Model Performance
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How a Single Number Reveals Which Models Fail in Production
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