Primeintellect
Own Your Intelligence
Prime Intellect is building the open superintelligence stack: the infrastructure frontier AI labs build internally, made available to every ambitious AI team.
Our platform, Lab, unifies compute, environments, evaluations, secure sandboxes, high-performance training, and deployment into one full-stack system for post-training at frontier scale – from SFT and RL to tool use, agent workflows, and continuously improving production models. We are building open frontier AI: open-source models trained end to end for long-horizon tasks like autonomous research, and the full-stack platform our own research team uses to build them. The next generation of AI companies, enterprises, and research teams do not just need more GPUs. They need the ability to turn their own workflows, tools, data, and feedback loops into superintelligence they own.
Prime Intellect has raised $150M in total funding from Founders Fund, Radical Ventures, NVIDIA, and exceptional AI, infrastructure, and enterprise operators — including Andrej Karpathy, Dwarkesh Patel, and leaders and founders from Ramp, Perplexity, Harvey, Mercor, Zapier, Datadog, Cognition, OpenAI, Thinking Machines, Together AI, SemiAnalysis, LangChain, Browserbase, Cloudflare, Sierra, Databricks, Airbnb, OpenRouter, Standard Intelligence, Fleet, Core Auto, and more. We are looking for people who want to build at the intersection of frontier research, real infrastructure, and go-to-market for a category that does not fully exist yet.
Role Impact
This is a customer facing role at the intersection of cutting-edge RL/post-training methods, applied data, and agent systems. You’ll have a direct impact on shaping how advanced models are aligned, evaluated, deployed, and used in the real world by:
-
Advancing Agent Capabilities: Designing and iterating on next-generation AI agents that tackle real workloads—workflow automation, reasoning-intensive tasks, and decision-making at scale. Working with applied data from real deployments to continuously refine policies, improve reasoning, and enhance reliability and safety.
-
Building Robust Infrastructure: Developing the distributed systems, evaluation pipelines, and coordination frameworks that enable these agents to operate reliably, efficiently, and at massive scale. Building data capture, processing, and versioning workflows for feedback, model traces, and reward signals.
-
Bridge Between Customers & Research: Translating customer needs and insights from applied data into clear technical requirements that guide product and research priorities. Collaborating closely with RL and eval teams to ensure real-world signals inform model alignment and reward shaping.
-
Prototype in the Field: Rapidly designing and deploying agents, evals, and harnesses alongside customers to validate solutions. Using applied evaluation data to iterate on model performance and discover new capabilities.
Customer-Facing Engineering
-
Work side-by-side with customers to deeply understand workflows, data sources, and bottlenecks.
-
Prototype agents, data pipelines, and eval harnesses tailored to real use cases, then hand off hardened systems to core teams.
-
Translate customer insights and evaluation results into roadmap and research direction.
Post-training & Reinforcement Learning
-
Design and implement novel RL and post-training methods (RLHF, RLVR, GRPO, etc.) to align large models with domain-specific tasks.
-
Build evaluation harnesses and verifiers to measure reasoning, robustness, and agentic behavior in real-world workflows.
-
Integrate applied data collection and analytics into the post-training process to surface regressions, emergent skills, and alignment opportunities.
-
Prototype multi-agent and memory-augmented systems to expand capabilities for customer-facing solutions.
Agent Development & Infrastructure
-
Rapidly prototype and iterate on AI agents for automation, workflow orchestration, and decision-making.
-
Extend and integrate with agent frameworks to support evolving feature requests and performance requirements.
-
Architect and maintain distributed training and inference pipelines, ensuring scalability and cost efficiency.
-
Develop observability and monitoring (Prometheus, Grafana, tracing) to ensure reliability and performance in production deployments.
Requirements
-
Strong background in machine learning engineering, with experience in post-training, RL, or large-scale model alignment.
-
Experience with applied data workflows and evaluation frameworks for large models or agents (e.g., SWE-Bench, HELM, EvalFlow, internal eval pipelines).
-
Deep expertise in distributed training/inference frameworks (e.g., vLLM, sglang, Ray, Accelerate).
-
Experience deploying containerized systems at scale (Docker, Kubernetes, Terraform).
-
Track record of research contributions (publications, open-source contributions, benchmarks) in ML/RL.
-
Passion for advancing the state-of-the-art in reasoning, measurement, and building practical, agentic AI systems.
What We Offer
-
Cash Compensation Range of $150-300k + equity incentives
-
Flexible Work (remote or San Francisco)
-
Visa Sponsorship & relocation support
-
Professional Development budget
-
Team Off-sites & conference attendance
Growth Opportunity
You’ll join a mission-driven team working at the frontier of open, superintelligence infra. In this role, you’ll have the opportunity to:
-
Shape the evolution of agent-driven, data-informed solutions—from research breakthroughs to production systems used by real customers.
-
Collaborate with leading researchers, engineers, and partners pushing the boundaries of RL, evaluation, and post-training.
-
Grow with a fast-moving organization where your contributions directly influence both the technical direction and the broader AI ecosystem.
If you’re excited to move fast, build boldly, and help define how agentic AI is developed and deployed, we’d love to hear from you.
Ready to build the open superintelligence infrastructure of tomorrow?
Apply now to help us make powerful, open AGI accessible to everyone.
To apply for this job please visit jobs.ashbyhq.com.
Terms used in this posting
- equity
- Ownership stake in the company, usually in the form of stock options or RSUs, offered in addition to salary.
Explore Primeintellect online
Working in San Francisco, California
Weather right now in San Francisco, California: checking… · Local time: · Air quality: · Daylight: · UV index:
San Francisco, officially the City and County of San Francisco, is the fourth-most populous city in California and the 17th-most populous in the United States, with a population of 826,079 in 2025. Among U.S. cities with a population of 200,000 or more, San Francisco is ranked first by per capita income, second by population density, and sixth by aggregate income as of 2024. Some 4.6 million residents live in the city's metropolitan statistical area, which is the 13th-largest in the United States. Around 9.2 million live in the San Jose–San Francisco–Oakland combined statistical area, the fift
California is a U.S. state in the Western United States that lies on the Pacific Coast. It borders Oregon to the north, and Nevada and Arizona to the east; it also shares an international border with the Mexican state of Baja California to the south. With over 39 million residents across an area of 163,696 square miles (423,970 km2), it is the largest U.S. state by population and third-largest by
🇺🇸 Relocation safety for US: Exercise Normal Caution — via Warnely, CC BY 4.0
National unemployment rate in US: 4.2% — via World Bank
Recent seismic activity: 2 earthquakes (M4.5+) within 200km in the last 6 months — largest M5.6 near 11 km N of Redwood Valley, CA. via USGS
- Elevation 38m (125 ft)
Source: Wikipedia (state)
Job details above are provided by the employer/source. The sections on this page are compiled from public data sources with AI assistance.
Accommodations: if you need a workplace accommodation to apply for or perform this job, see ADA.gov or EEOC.gov for guidance on your rights and how to request one.
Keep exploring on Get A Job.ai
Not quite the right fit? Your next opportunity is a click away.
- Browse all jobs
- More jobs by category
- Remote jobs you can do from anywhere
- Research typical pay for this role
- Set a job alert so new matches reach you first
- Upload your resume to apply faster
Hiring instead? Post a job and reach candidates searching right now.
