The Gradient: Perspectives on AI

Shreya Shankar: Machine Learning in the Real World


Listen Later

In episode 89 of The Gradient Podcast, Daniel Bashir speaks to Shreya Shankar.

Shreya is a computer scientist pursuing her PhD in databases at UC Berkeley. Her research interest is in building end-to-end systems for people to develop production-grade machine learning applications. She was previously the first ML engineer at Viaduct, did research at Google Brain, and software engineering at Facebook. She graduated from Stanford with a B.S. and M.S. in computer science with concentrations in systems and artificial intelligence. At Stanford, helped run SHE++, an organization that helps empower underrepresented minorities in technology.

Have suggestions for future podcast guests (or other feedback)? Let us know here or reach us at [email protected]

Subscribe to The Gradient Podcast:  Apple Podcasts  | Spotify | Pocket Casts | RSSFollow The Gradient on Twitter

Outline:

* (00:00) Intro

* (02:22) Shreya’s background and journey into ML / MLOps

* (04:51) ML advances in 2013-2016

* (05:45) Shift in Stanford undergrad class ecosystems, accessibility of deep learning research

* (09:10) Why Shreya left her job as an ML engineer

* (13:30) How Shreya became interested in databases, data quality in ML

* (14:50) Daniel complains about things

* (16:00) What makes ML engineering uniquely difficult

* (16:50) Being a “historian of the craft” of ML engineering

* (22:25) Levels of abstraction, what ML engineers do/don’t have to think about

* (24:16) Observability for Production ML Pipelines

* (28:30) Metrics for real-time ML systems

* (31:20) Proposed solutions

* (34:00) Moving Fast with Broken Data

* (34:25) Existing data validation measures and where they fall short

* (36:31) Partition summarization for data validation

* (38:30) Small data and quantitative statistics for data cleaning

* (40:25) Streaming ML Evaluation

* (40:45) What makes a metric actionable

* (42:15) Differences in streaming ML vs. batch ML

* (45:45) Delayed and incomplete labels

* (49:23) Operationalizing Machine Learning

* (49:55) The difficult life of an ML engineer

* (53:00) Best practices, tools, pain points

* (55:56) Pitfalls in current MLOps tools

* (1:00:30) LLMOps / FMOps

* (1:07:10) Thoughts on ML Engineering, MLE through the lens of data engineering

* (1:10:42) Building products, user expectations for AI products

* (1:15:50) Outro

Links:

* Papers

* Towards Observability for Production Machine Learning Pipelines

* Rethinking Streaming ML Evaluation

* Operationalizing Machine Learning

* Moving Fast With Broken Data

* Blog posts

* The Modern ML Monitoring Mess

* Thoughts on ML Engineering After a Year of my PhD



Get full access to The Gradient at thegradientpub.substack.com/subscribe
...more
View all episodesView all episodes
Download on the App Store

The Gradient: Perspectives on AIBy Daniel Bashir

  • 4.7
  • 4.7
  • 4.7
  • 4.7
  • 4.7

4.7

47 ratings


More shows like The Gradient: Perspectives on AI

View all
The Joe Rogan Experience by Joe Rogan

The Joe Rogan Experience

229,169 Listeners

The a16z Show by Andreessen Horowitz

The a16z Show

1,089 Listeners

NVIDIA AI Podcast by NVIDIA

NVIDIA AI Podcast

334 Listeners

Sean Carroll's Mindscape: Science, Society, Philosophy, Culture, Arts, and Ideas by Sean Carroll | Wondery

Sean Carroll's Mindscape: Science, Society, Philosophy, Culture, Arts, and Ideas

4,182 Listeners

Practical AI by Practical AI LLC

Practical AI

211 Listeners

The Journal. by The Wall Street Journal & Spotify Studios

The Journal.

6,095 Listeners

All-In with Chamath, Jason, Sacks & Friedberg by All-In Podcast, LLC

All-In with Chamath, Jason, Sacks & Friedberg

9,927 Listeners

Dwarkesh Podcast by Dwarkesh Patel

Dwarkesh Podcast

511 Listeners

Hard Fork by The New York Times

Hard Fork

5,512 Listeners

The Rest Is History by Goalhanger

The Rest Is History

15,272 Listeners

Huberman Lab by Scicomm Media

Huberman Lab

29,246 Listeners

Disintegrator by Roberto Alonso Trillo, Marek Poliks, and Helena McFadzean

Disintegrator

10 Listeners

Practical: AI & Business News by Practical News

Practical: AI & Business News

25 Listeners