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.