YoVDO

MLOps Build or Buy - Startup vs. Enterprise Perspectives

Offered By: MLOps.community via YouTube

Tags

MLOps Courses Machine Learning Courses Recommender Systems Courses Slack Courses Feature Engineering Courses Data Privacy Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
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.

Syllabus

[] Aaron and Katrina's preferred coffee
[] Recommender and System and Jake
[] Takeaways
[] Introduction to Aaron Maurer & Katrina Ni
[] Aaron Maurer & Katrina Ni's Recommend API blog post
[] 10-pole machine learning use case and Rex's use case
[] Genesis of Slack's recommender system framework
[] The Special Sauce
[] Speaking the same language
[] Use case sources
[] Slack's feature engineering
[] Main CTR models
[] Data privacy
[] Slack's recommendations problem
[] Fine-tuning the generative models
[] Cold start problem
[] Underrated
[] Baseline
[] Cold sore space
[] LLMs in Production Conference Part 2 announcement!
[] Data scientists transition to ML
[] Unicorns do exist!
[] Diversity of skill set
[] The future of ML
[] Model Serving
[] MLOps Maturity level
[] AWS Analogy
[] Primary difficulty
[] Wrap up


Taught by

MLOps.community

Related Courses

Machine Learning Operations (MLOps): Getting Started
Google Cloud via Coursera
Проектирование и реализация систем машинного обучения
Higher School of Economics via Coursera
Demystifying Machine Learning Operations (MLOps)
Pluralsight
Machine Learning Engineer with Microsoft Azure
Microsoft via Udacity
Machine Learning Engineering for Production (MLOps)
DeepLearning.AI via Coursera