About this role

At JetBrains, code is our passion. Ever since we started back in 2000, we have been striving to make the strongest, most effective developer tools on earth. By automating routine checks and corrections, our tools speed up production, freeing developers to grow, discover, and create.

We’re looking for a Research Engineer who will own the training stack and model architecture for our Mellum LLM family. Your job is easier said than done: make training faster, cheaper, and more stable at a large scale. You’ll profile, design, and implement changes to the training pipeline – from architecture to custom GPU kernels, as needed.

As part of our team, you will:

  • Be responsible for improving end-to-end performance for multi-node LLM pre-training and post-training pipelines.
  • Profile hotspots (Nsight Systems/Compute, NVTX) and fix them using compute/comm overlap, kernel fusion, scheduling, etc.
  • Design and evaluate architecture choices (depth/width, attention variants including GQA/MQA/MLA/Flash-style, RoPE scaling/NTK, and MoE routing and load-balancing).
  • Implement custom ops (Triton and/or CUDA C++), integrate via PyTorch extensions, and upstream when possible.
  • Push memory/perf levers: FSDP/ZeRO, activation checkpointing, FP8/TE, tensor/pipeline/sequence/expert parallelism, NCCL tuning.
  • Harden large runs by building elastic and fault-tolerant training setups, ensuring robust checkpointing, strengthening reproducibility, and improving resilience to preemption.
  • Keep the data path fast using streaming and sharded data loaders and tokenizer pipelines, as well as improve overall throughput and cache efficiency.
  • Define the right metrics, build dashboards, and deliver steady improvements.
  • Run both pre-training and post-training (including SFT, RLHF, and GRPO-style methods) efficiently across sizable clusters.

We’ll be happy to bring you on board if you have:

  • Strong PyTorch and PyTorch Distributed experience, having run multi-node jobs with tens to hundreds of GPUs.
  • Hands-on experience with Megatron-LM/Megatron-Core/NeMo, DeepSpeed, or serious FSDP/ZeRO expertise.
  • Real profiling expertise (Nsight Systems/Compute, nvprof) and experience with NVTX-instrumented workflows.
  • GPU programming skills with Triton and/or CUDA, and the ability to write, test, and debug kernels.
  • A solid understanding of NCCL collectives, as well as topology and fabric effects (IB/RoCE), and how they show up in traces.

Our ideal candidate would have experience with:

  • FlashAttention-2 and 3, CUTLASS and CuTe, TransformerEngine and FP8, Inductor, AOTAutograd, and torch.compile.
  • MoE at scale (expert parallel, router losses, capacity management) and long-context tricks (ALiBi/YaRN/NTK scaling).
  • Kubernetes or SLURM at scale, placement and affinity tuning, as well as AWS, GCP, and Azure GPU fleets.
  • Web-scale data plumbing (streaming datasets, Parquet and TFRecord, tokenizer perf), eval harnesses, and benchmarking.
  • Safety and post-training methods, such as DPO, ORPO, GRPO, and reward models.
  • Inference ecosystems such as vLLM and paged KV.

#LI-KP1

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Frequently Asked Questions

Is the salary disclosed for the Research Engineer (LLM Training and Performance) position at jetbrains?
The salary for this Research Engineer (LLM Training and Performance) role at jetbrains is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Research Engineer (LLM Training and Performance) position at jetbrains located?
This Research Engineer (LLM Training and Performance) role at jetbrains is based in Amsterdam, Netherlands; Belgrade, Serbia; Berlin, Germany; Limassol, Cyprus; London, United Kingdom; Madrid, Spain; Munich, Germany; Paphos, Cyprus; Prague, Czech Republic; Warsaw, Poland; Yerevan, Armenia. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Which team or department does the Research Engineer (LLM Training and Performance) at jetbrains belong to?
This Research Engineer (LLM Training and Performance) position is part of the JCP Core Machine Learning department at jetbrains. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Research Engineer (LLM Training and Performance) position at jetbrains?
Click the "Apply Now" button on this page. You will be redirected to jetbrains's official application portal hosted on greenhouse where you can submit your application directly.
When was the Research Engineer (LLM Training and Performance) job at jetbrains posted?
This Research Engineer (LLM Training and Performance) position at jetbrains was posted on Oct 28, 2025. Apply as soon as possible — early applications are often reviewed first.
Research Engineer (LLM Training and Performance)
jetbrains
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