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Lessons Learned From Hosting the ML Engineered Podcast (Charlie Interviewed on the ML Ops Community podcast)
Episode 192nd February 2021 • Machine Learning Engineered • Charlie You
00:00:00 01:03:58

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Timestamps:

02:45 Intro

04:10 How I got into data science and machine learning

08:25 My experience working as an ML engineer and starting the podcast

12:15 Project management methods for machine learning

20:50 ML job roles are trending towards more specialization

26:15 ML tools enable collaboration between roles and encode best practices

34:00 Data privacy, security, and provenance as first class considerations

39:30 The future of managed ML platforms and cloud providers

49:05 What I've learned about building a career in ML engineering

54:10 Dealing with information overload


Links:

Josh Tobin: Research at OpenAI, Full Stack Deep Learning, ML in Production

The Third Wave Data Scientist

Practical ML Ops // Noah Gift // MLOps Coffee Sessions

Building a Post-Scarcity Future using Machine Learning with Pavle Jeremic (Aether Bio)

SRE for ML Infra // Todd Underwood // MLOps Coffee Sessions

Luigi Patruno on the ML Ops Community podcast

Luigi Patruno: ML in Production, Adding Business Value with Data Science, "Code 2.0"

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