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Member of Technical Staff - Training Platform
Primeintellect
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About this role
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
You'll help build our hosted training platform - the product that lets users launch LoRA and full fine-tuning runs on managed GPU clusters with a single API call or a few clicks. The role spans the developer-facing platform and the underlying Kubernetes-based training infrastructure that runs the jobs.
CORE TECHNICAL RESPONSIBILITIES
HOSTED TRAINING INFRASTRUCTURE
- Design and operate Kubernetes-based training and inference orchestration across multi-cluster, multi-cloud GPU fleets
- Build and maintain Helm charts that compose trainers, inference servers, environment servers, and supporting services into reproducible "Training stacks"
- Develop the Python control-plane agents that watch pods, report run state to the platform, and keep clusters in sync
- Implement scheduling and autoscaling for heterogeneous hardware (H100/H200/B200) using KEDA, LeaderWorkerSet, taints/tolerations, and gang scheduling
- Run a tight GitOps workflow - every change ships through PRs, Helm values, and CI
- Build node-local model caches, checkpoint pipelines, and shared storage for fast cold starts
- Operate the observability stack (Prometheus, Grafana, Loki, DCGM) and make GPU cluster debugging fast
PLATFORM DEVELOPMENT
- Build the developer-facing surfaces for hosted training: job submission, live run monitoring, logs, metrics, model/adapter management, comparisons
- Develop FastAPI backend services and REST APIs that bridge the platform to running clusters
- Build real-time monitoring and debugging tools (streaming logs, step-level metrics, failure analysis)
- Ship product UI in Next.js / React / TypeScript with shadcn, Tailwind, tRPC, and TanStack Query
RESEARCH BRIDGE
- Interface with the RL trainer, inference servers, and environment servers running inside our clusters
- Productize new training capabilities (new model architectures, RL algorithms, modes)
TECHNICAL REQUIREMENTS
We're looking for engineers who are fluent across three areas - you don't need to be the world's best at any one, but you should have real depth in all three and a clear point of view on how they connect.
AI & GPU LANDSCAPE
- Strong working knowledge of the modern AI stack - open model families, finetuning techniques (LoRA, QLoRA, full FT, RLHF/RLAIF), inference engines (vLLM, SGLang, TensorRT-LLM)
- Familiarity with GPU hardware tradeoffs (H100 / H200 / B200, NVLink, interconnects, memory hierarchy) and what they mean for training and inference workloads
- Understanding of distributed training fundamentals (data/tensor/pipeline/expert parallelism, NCCL, multi-node scheduling)
- Awareness of what's happening at the frontier - new models, training methods, infra patterns - and the ability to translate that into product decisions
KUBERNETES & INFRASTRUCTURE
- Strong Kubernetes operations experience - Helm, CRDs, operators, KEDA, gang scheduling, GPU operator
- Comfortable debugging real production clusters (kubectl, pod lifecycle, node issues, networking)
- Cloud platform experience (GCP preferred - GCS, GKE, Cloud Run, Cloud Tasks)
- Infrastructure automation (Helm, Terraform, Ansible) and a GitOps mindset
- Observability: Prometheus, Grafana, Loki, OpenTelemetry, DCGM
- Linux fundamentals: networking, namespaces, performance tuning
PROGRAMMING & PLATFORM
- Strong Python backend development (FastAPI, async, SQLAlchemy)
- Comfortable building Python control-plane agents that talk to Kubernetes APIs
- Modern frontend development (TypeScript, React/Next.js, Tailwind, shadcn) - enough to ship product surfaces end-to-end
- REST and tRPC API design
- Experience building developer tools, dashboards, and live-monitoring UIs
WHAT WE OFFER
- Cash compensation $150K–$300K with significant equity
- Flexible work arrangement (remote or San Francisco office)
- Full visa sponsorship and relocation support
- Professional development budget for courses and conferences
- Regular team off-sites and conference attendance
- Opportunity to shape the future of decentralized AI development
GROWTH OPPORTUNITY
You'll join a team of experienced engineers and researchers working on cutting-edge problems in AI infrastructure. We believe in open development and encourage team members to contribute to the broader AI community through research and open-source work.
We value potential over perfection - if you're passionate about
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