In this episode, Dean speaks with Federico Bacci, a data scientist and ML engineer at Bol, the largest e-commerce company in the Netherlands and Belgium. Federico shares valuable insights into the intricacies of deploying machine learning models in production, particularly for forecasting problems. He discusses the challenges of model explainability, the importance of feature engineering over model complexity, and the critical role of stakeholder feedback in improving ML systems. Federico also offers a compelling perspective on why LLMs aren't always the answer in AI applications, emphasizing the need for tailored solutions. This conversation provides a wealth of practical knowledge for data scientists and ML engineers looking to enhance their understanding of real-world ML operations and challenges in e-commerce.

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Timestamps:

00:00 Introduction and Background

01:59 Owning the ML Pipeline

02:56 Deployment Process

05:58 Testing and Feedback

07:40 Different Deployment Strategies

11:19 Explainability and Feature Importance

13:46 Challenges in Forecasting

22:33 ML Stack and Tools

26:47 Orchestrating Data Pipelines with Airflow

31:27 Exciting Developments in ML

35:58 Recommendations and Closing

Links

Dwarkesh podcast with Anthropic and Gemini team members – https://www.dwarkeshpatel.com/p/sholto-douglas-trenton-bricken

➡️ Federico Bacci on LinkedIn – https://www.linkedin.com/in/federico-bacci/

➡️ Federico Bacci on Twitter – https://x.com/fedebyes

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