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Senior Machine Learning Engineer - Energy Trading - London

Options Group
London
1 year ago
Applications closed

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We are recruiting Machine Learning Engineers for a major energy trader. Our client is widely regarded as pioneering in the Data Science / AI space.


The Role:


- Learning the domain of 'Energy' use data to create commercial opportunities

- Lead design and deployment of ML systems / pipelines

- Help to integrate the Data Scientists solutions (including generative AI)

- Seemless relationship with Traders / Commercial Leaders

- Mentoring the users / Developers in relation to data / ML projects


Skills:


- BSc, MSC (or PhD) in Maths, Computer Science, Data Science

- 5 years+ commercial experience in a Tier-1 Hedge Fund / Investment bank / Commodity Trader

- Fluency in Python / ability to write clean, well documented code

- Experience of LLM or NLP techniques

- Experience with ML frameworks and libraries: TensorFlow, PyTorch, Transformers

- Excellent problem-solving skills

- Understanding of machine learning fundamentals, including deep learning, generative models, NLP techniques, such as sentiment analysis, and entity recognition and disambiguation.

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