Lead Machine Learning Engineer

Emporia Consulting Group
City of London
2 months ago
Applications closed

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A global investment firm is hiring a Lead Machine Learning Engineer. Hybrid position. Paying up to £1600 per day. Outside IR35

Experience and skills required for the Senior Machine Learning Engineer (AI), Quantization, PEFT, DeepSpeed, ONNX, TensorRT, PyTorch, multi-LoRa, LoRA Exchange, TitanML ️

  • Strong experience working with inference servers like multi-LoRa, LoRA Exchange, TitanML ️
  • Experience with HuggingFace
  • Retrieval-augmented generation, embedding pipelines
  • Previous industry exposure to multi-node HPC clusters ️
  • Experience with Large language models - OpenAI, Mistral, Claude, LLaMA
  • Large language model for GPU usage, scaling, and data movement
  • Quantization, PEFT, DeepSpeed, ONNX, TensorRT
  • Deep Learning with PyTorch

Role and responsibilities for the Senior Machine Learning Engineer (AI), Quantization, PEFT, DeepSpeed, ONNX, TensorRT, PyTorch, multi-LoRa, LoRA Exchange, TitanML ️

  • Build and fine-tune NLP and vision models using frameworks like PyTorch and HuggingFace
  • Develop retrieval-augmented generation (RAG) pipelines and custom embeddings
  • Ship internal tools with light front end/back end components
  • Work closely with product and data leads to select and integrate third-party AI services
  • Own infrastructure decisions and help define internal ML engi...

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