Piero Molino — The Secret Behind Building Successful Open Source Projects

Piero Molino — The Secret Behind Building Successful Open Source Projects

Piero shares the story of how Ludwig was created, as well as the ins and outs of how Ludwig works and the future of machine learning with no code.

Piero is a Staff Research Scientist in the Hazy Research group at Stanford University. He is a former founding member of Uber AI, where he created Ludwig, worked on applied projects (COTA, Graph Learning for Uber Eats, Uber’s Dialogue System), and published research on NLP, Dialogue, Visualization, Graph Learning, Reinforcement Learning, and Computer Vision.


Topics covered:

0:00 Sneak peek and intro

1:24 What is Ludwig, at a high level?

4:42 What is Ludwig doing under the hood?

7:11 No-code machine learning and data types

14:15 How Ludwig started

17:33 Model performance and underlying architecture

21:52 On Python in ML

24:44 Defaults and W&B integration

28:26 Perspective on NLP after 10 years in the field

31:49 Most underrated aspect of ML

33:30 Hardest part of deploying ML models in the real world


Learn more about Ludwig: https://ludwig-ai.github.io/ludwig-docs/

Piero's Twitter: https://twitter.com/w4nderlus7

Follow Piero on Linkedin: https://www.linkedin.com/in/pieromolino/?locale=en_US


Get our podcast on these other platforms:

Apple Podcasts: http://wandb.me/apple-podcasts

Spotify: http://wandb.me/spotify

Google: http://wandb.me/google-podcasts

YouTube: http://wandb.me/youtube

Soundcloud: http://wandb.me/soundcloud


Tune in to our bi-weekly virtual salon and listen to industry leaders and researchers in machine learning share their research:

http://wandb.me/salon


Join our community of ML practitioners where we host AMA's, share interesting projects and meet other people working in Deep Learning:

http://wandb.me/slack


Our gallery features curated machine learning reports by researchers exploring deep learning techniques, Kagglers showcasing winning models, and industry leaders sharing best practices:

https://wandb.ai/gallery

Avsnitt(136)

Adrien Treuille — Building Blazingly Fast Tools That People Love

Adrien Treuille — Building Blazingly Fast Tools That People Love

Adrien shares his journey from making games that advance science (Eterna, Foldit) to creating a Streamlit, an open-source app framework enabling ML/Data practitioners to easily build powerful and inte...

4 Dec 202045min

Peter Norvig – Singularity Is in the Eye of the Beholder

Peter Norvig – Singularity Is in the Eye of the Beholder

We're thrilled to have Peter Norvig join us to talk about the evolution of deep learning, his industry-defining book, his work at Google, and what he thinks the future holds for machine learning resea...

20 Nov 202047min

Robert Nishihara — The State of Distributed Computing in ML

Robert Nishihara — The State of Distributed Computing in ML

The story of Ray and what lead Robert to go from reinforcement learning researcher to creating open-source tools for machine learning and beyondRobert is currently working on Ray, a high-performance d...

13 Nov 202035min

Ines & Sofie — Building Industrial-Strength NLP Pipelines

Ines & Sofie — Building Industrial-Strength NLP Pipelines

Sofie and Ines walk us through how the new spaCy library helps build end to end SOTA natural language processing workflows.Ines Montani is the co-founder of Explosion AI, a digital studio specializing...

29 Okt 202058min

Daeil Kim — The Unreasonable Effectiveness of Synthetic Data

Daeil Kim — The Unreasonable Effectiveness of Synthetic Data

Supercharging computer vision model performance by generating years of training data in minutes.Daeil Kim is the co-founder and CEO of AI.Reverie(https://aireverie.com/), a startup that specializes in...

15 Okt 202037min

Joaquin Candela — Definitions of Fairness

Joaquin Candela — Definitions of Fairness

Joaquin chats about scaling and democratizing AI at Facebook, while understanding fairness and algorithmic bias.---Joaquin Quiñonero Candela is Distinguished Tech Lead for Responsible AI at Facebook, ...

1 Okt 20201h 19min

Richard Socher — The Challenges of Making ML Work in the Real World

Richard Socher — The Challenges of Making ML Work in the Real World

Richard Socher, ex-Chief Scientist at Salesforce, joins us to talk about The AI Economist, NLP protein generation and biggest challenge in making ML work in the real world.Richard Socher was the Chief...

29 Sep 202050min

Zack Chase Lipton — The Medical Machine Learning Landscape

Zack Chase Lipton — The Medical Machine Learning Landscape

How Zack went from being a musician to professor, how medical applications of Machine Learning are developing, and the challenges of counteracting bias in real world applications.Zachary Chase Lipton ...

17 Sep 202059min

Populärt inom Business & ekonomi

framgangspodden
varvet
rss-jossan-nina
rss-svart-marknad
svd-tech-brief
rss-borsens-finest
badfluence
uppgang-och-fall
avanzapodden
bathina-en-podcast
fill-or-kill
24fragor
rss-inga-dumma-fragor-om-pengar
lastbilspodden
tabberaset
kapitalet-en-podd-om-ekonomi
rss-dagen-med-di
rss-kort-lang-analyspodden-fran-di
borsmorgon
rss-veckans-trade