Member of Technical Staff – Efficient ML
Introducing Moonlake, AI for creating world simulations.
Scope of Work
Training efficiency
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Dataloaders, fusion, activation remat, gradient checkpointing.
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FSDP/ZeRO/tensor+pipeline parallel; NCCL tuning.
GPU + kernel performance
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Nsight profiling, Triton/CUDA kernels, fused ops.
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Flash-attention–style speedups, sequence packing, KV-cache tricks.
Inference optimization
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Low-latency serving, continuous batching, speculative decoding.
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Quantization (GPTQ/AWQ), distillation, pruning.
Infra + reliability
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SLURM/K8s multi-node jobs, checkpoint hygiene.
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Determinism, env pinning, GPU failure handling.
We are committed to being an on-site, in-person team currently based in San Mateo