[] Aaron Maurer & Katrina Ni's Recommend API blog post
6
[] 10-pole machine learning use case and Rex's use case
7
[] Genesis of Slack's recommender system framework
8
[] The Special Sauce
9
[] Speaking the same language
10
[] Use case sources
11
[] Slack's feature engineering
12
[] Main CTR models
13
[] Data privacy
14
[] Slack's recommendations problem
15
[] Fine-tuning the generative models
16
[] Cold start problem
17
[] Underrated
18
[] Baseline
19
[] Cold sore space
20
[] LLMs in Production Conference Part 2 announcement!
21
[] Data scientists transition to ML
22
[] Unicorns do exist!
23
[] Diversity of skill set
24
[] The future of ML
25
[] Model Serving
26
[] MLOps Maturity level
27
[] AWS Analogy
28
[] Primary difficulty
29
[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Grab it
Explore the intricacies of MLOps in this 50-minute podcast episode featuring Katrina Ni and Aaron Maurer, discussing the build or buy dilemma and comparing startup vs. enterprise approaches. Delve into Slack's machine learning journey, including their recommender system framework, data privacy challenges, and innovative solutions for cold start problems. Learn about the evolution of ML roles, the importance of diverse skill sets, and predictions for the future of machine learning. Gain insights on model serving, MLOps maturity levels, and the primary difficulties faced in implementing ML systems at scale.
MLOps Build or Buy - Startup vs. Enterprise Perspectives