1. Home
  2. Jobs
  3. Evaluation Pipelines

Evaluation Pipelines Jobs

Browse 559 Evaluation Pipelines jobs on Inference Jobs.

41-60 of 559 jobs

2wRE

Data Engineer

Replit

Foster City, California, United States (Hybrid)$160k – $325k Yearly
1wHE
2wRE

Data Engineer, Financial Systems

Replit

Foster City, California, United States (Hybrid)$175k – $335k Yearly
4wSC

Machine Learning Research Engineer, Agent Data Foundation - Enterprise GenAI

Scale

San Francisco, California, United States (On-site)$252k – $315k Yearly
3wPE

Search Quality Analyst

Perplexity

Belgrade, Belgrade, Serbia (On-site)
3wXA

Member of Technical Staff, Model Evaluation

xAI

Palo Alto, California, United States (On-site)$180k – $440k Yearly
4dLA

Forward Deployed Engineer - Robotics

Labelbox

California, United States (Hybrid)$140k – $200k Yearly
2wMA

Research Engineer, Machine Learning

Mistral AI

Palo Alto, California, United States (Hybrid)
1dXA

Machine Learning Engineer, Community Notes

xAI

Palo Alto, California, United States (On-site)$180k – $440k Yearly
2wMA

Applied AI, Evaluation Engineer

Mistral AI

Île de Ré, Charente-Maritime, France (On-site)
2dHA

Staff Product Manager, Vault

Harvey

San Francisco, California, United States (On-site)$220k – $260k Yearly
1wCO
5dAN

Research Engineer, Discovery

Anthropic

San Francisco, California, United States (Hybrid)$340k – $425k Yearly
5dAN

ML Infrastructure Engineer, Safeguards

Anthropic

San Francisco, California, United States (Hybrid)$320k – $405k Yearly
5dAN

Staff Research Engineer, Discovery Team

Anthropic

San Francisco, California, United States (Hybrid)$340k – $425k Yearly
5dAN

Staff/Sr Software Engineer, Compute Capacity

Anthropic

San Francisco, California, United States (Hybrid)$405k – $485k Yearly
3wAN

Staff+ Software Engineer, Observability

Anthropic

London, England, United Kingdom (Hybrid)£325k – £390k Yearly
1wSC

Machine Learning Engineer - Model Evaluations, Public Sector

Scale

San Francisco, California, United States (On-site)$216.3k – $300.3k Yearly