-
Building A Generative AI Platform
-
Measuring personal growth
-
What I learned from looking at 900 most popular open source AI tools
-
Predictive Human Preference: From Model Ranking to Model Routing
-
Sampling for Text Generation
-
Multimodality and Large Multimodal Models (LMMs)
-
Open challenges in LLM research
-
Generative AI Strategy
-
RLHF: Reinforcement Learning from Human Feedback
-
Building LLM applications for production
-
What we look for in a resume
-
Self-serve feature platforms: architectures and APIs
-
Books that made me think (as an engineer)
-
Introduction to streaming for data scientists
-
Data Distribution Shifts and Monitoring
-
Real-time machine learning: challenges and solutions
-
Why data scientists shouldn’t need to know Kubernetes
-
A friendly introduction to machine learning compilers and optimizers
-
7 reasons not to join a startup and 1 reason to
-
Machine Learning Tools Landscape v2 (+84 new tools)
-
Machine learning is going real-time
-
Course announcement - Machine Learning Systems Design at Stanford!
-
What I learned from looking at 200 machine learning tools
-
Analysis of compensation, level, and experience details of 19k tech workers
-
The books that shaped my decade
-
Four lessons I learned after my first full-time job after college
-
Key trends from NeurIPS 2019
-
What Glassdoor interview reviews reveal about tech hiring cultures
-
Free online machine learning curriculum
-
Update on Machine Learning Interviews Book
-
Top 8 trends from ICLR 2019
-
A simple reason why there aren't more women in tech - we're okay with misogyny
-
How to build meaningful relationships after college
-
Career advice for recent Computer Science graduates
-
SOTAWHAT - A script to keep track of state-of-the-art AI research
-
A survivor's guide to Artificial Intelligence courses at Stanford (Updated Feb 2020)
-
Confession of a so-called AI expert
subscribe via RSS