- Home
- Jobs
- United States
- California
- San Francisco
- Large Language Models
Large Language Models Jobs in San Francisco, California, United States
Discover Large Language Models roles in San Francisco, California, United States on Inference Jobs and apply today.
3mo agoOP
Training: ML Framework Engineer
OpenAI
San Francisco, California, United States (Hybrid)$245K – $385K Yearly
3mo agoOP
Machine Learning Data Scientist, Forecasting
OpenAI
San Francisco, California, United States (Hybrid)$255K – $405K Yearly
1mo agoOP
3mo agoOP
Distributed Training Engineer, Sora
OpenAI
San Francisco, California, United States (Hybrid)$380K – $555K Yearly
3mo agoCO
Staff Software Engineer, Inference Infrastructure
Cohere
San Francisco, California, United States or Remote (United States + 2 more)
3w agoTM
Research, Post-Training
Thinking Machines Lab
San Francisco, California, United States (On-site)$350K – $475K Yearly
3w agoTM
Research, Vision Expertise
Thinking Machines Lab
San Francisco, California, United States (On-site)$350K – $475K Yearly
2w agoAN
Security Engineer, Detection & Response
Anthropic
San Francisco, California, United States (Hybrid)$300K – $405K Yearly
2mo agoCO
Solutions Architect (Public Sector)
Cohere
Washington, DC, Washington, DC, United States or Remote (Washington, D.C., United States)
3mo agoLA
Education Engineer, Fullstack
LangChain
San Francisco, California, United States (On-site)$150K – $185K Yearly
4w agoHF
Open-Source Machine Learning Engineer - International Remote
Hugging Face
New York, US or Remote (Worldwide)
2w agoAN
Engineering Manager, Inference
Anthropic
San Francisco, California, United States (Hybrid)$425K – $560K Yearly
2mo agoOP
Data Scientist, Marketing Innovation
OpenAI
San Francisco, California, United States (On-site)$293K – $325K Yearly
2mo agoHF
Cloud Machine Learning Evangelist - US remote
Hugging Face
New York, United States or Remote (United States)
2w agoAN
Machine Learning Engineer, Safeguards
Anthropic
San Francisco, California, United States (Hybrid)$350K – $500K Yearly