Menu
Sign In Search Podcasts Charts People & Topics Add Podcast API Pricing
Podcast Image

Chai Time Data Science

Emmanuel Ameisen | Building Machine Learning Powered Apps

24 May 2020

Description

Link to tweet for details on Giveaway: https://twitter.com/bhutanisanyam1/status/1264589958146174976?s=20 Video Version: https://youtu.be/ctss0hcD9SE Subscribe here to the newsletter: https://tinyletter.com/sanyambhutani In this episode, Sanyam Bhutani interviews Emmanuel Ameisen, ML engineer at Stripe, and the author of the O'Reilly book: "Building Machine Learning Powered Applications: Going from idea to product" In this interview they talk about Emmanuel's journey into machine learning, and how his journey through the different roles led him to writing the book. The book is one of the greatest resources for the title for Building ML Apps, and also one of the greatest top down learning books that follow the top down teaching approach. They talk about who the book is a really for, what can you expect out of it and Emanuel's journey of writing to Book and where to go after you've read the book, How do you find your idea to take to project your passion project or your million dollar app idea. Links: Book: https://www.amazon.com/Building-Machine-Learning-Powered-Applications/dp/149204511X/ http://shop.oreilly.com/product/0636920215912.do Radek's blog: https://medium.com/@radekosmulski Follow: Emmanuel Ameisen: https://twitter.com/mlpowered https://mlpowered.com Sanyam Bhutani: https://twitter.com/bhutanisanyam1 Blog: sanyambhutani.com About: https://sanyambhutani.com/tag/chaitimedatascience/ A show for Interviews with Practitioners, Kagglers & Researchers and all things Data Science hosted by Sanyam Bhutani. You can expect weekly episodes every available as Video, Podcast, and blogposts. If you'd like to support the podcast: https://www.patreon.com/chaitimedatascience Intro track: Flow by LiQWYD https://soundcloud.com/liqwyd Note: The giveaway isn't sponsored, I really enjoyed the book and want to share it with another learner who might.

Audio
Featured in this Episode

No persons identified in this episode.

Transcription

This episode hasn't been transcribed yet

Help us prioritize this episode for transcription by upvoting it.

0 upvotes
🗳️ Sign in to Upvote

Popular episodes get transcribed faster

Comments

There are no comments yet.

Please log in to write the first comment.