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Machine Learning through Streaming at Lyft

Machine Learning through Streaming at Lyft

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Distributed Machine Learning at Lyft

Distributed Machine Learning at Lyft

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How Ride Sharing at Lyft Works with Rachita Naik, ML Engineer at Lyft

How Ride Sharing at Lyft Works with Rachita Naik, ML Engineer at Lyft

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Pricing Lyft rides w/ Apache Beam: case study in migrating from a worker-based workflow to streaming

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Real-Time ML in Marketplace at Lyft

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Using causal modeling to make better decisions โ€“ examples from Lyft

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Dynamic pricing of Lyft rides using streaming

Dynamic pricing of Lyft rides using streaming

This a talk by Amar Pai presented at SF Big Analytics meetup in Feb 2019 at

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Managing data pipelines at scale is not just a technical challenge. It is also an organizational one. At