Главная
Study mode:
on
1
Join the LLMs in Production Conference Part 2 In Person San Francisco Workshop - Deploy and Scale LLM-based applications today at PM PDT. Location:
2
[] Introduction to Jay Chia
3
[] Join the virtual LLMs in Production Conference Part 2 and In Person San Francisco Workshop - Deploy and Scale LLM-based applications today!
4
[] Dataframes Are All You Need: MLOps on Easy Mode
5
[] Jay's background
6
[] Dataframes
7
[] What is a Dataframe?
8
[] Different Dataframes
9
[] Table Stakes
10
[] Let's talk MLOps
11
[] "Unstructured" data
12
[] The bare-bones ML Stack
13
[] Daft Demo
14
[] Modern ML requirements
15
[] The bare-bones ML Stack
16
[] Daft Roadmap
17
[] Giving access to the repo notebook
18
[] Streaming
19
[] Syntax and library expression
20
[] S3 bucket and the data frames
21
[] Trading off latency and throughput in the library
22
[] Build another data frame Library
23
[] Daft for Eventual
24
[] System streaming mode
25
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the power of dataframes in MLOps through this comprehensive 57-minute talk by Jay Chia, Co-Founder of Eventual, at MLOps Community Meetup #124. Dive into the critical role of dataframes in building and maintaining datasets for machine learning workflows. Learn how dataframes serve as flexible interfaces for complex data processing, analytics, I/O, and feeding ML training pipelines, using Daft (www.getdaft.io) as a practical example. Gain insights into handling unstructured data, modern ML requirements, and the bare-bones ML stack. Watch a live Daft demo and discover its roadmap, including features like streaming and syntax improvements. Understand how dataframes can simplify MLOps processes and enhance your machine learning projects.

Dataframes Are All You Need: MLOps on Easy Mode

MLOps.community
Add to list