Senior Machine Learning Engineer

San Francisco, California
US$180000 - US$220000 per year

SENIOR MACHINE LEARNING ENGINEER

San Francisco

Harnham are currnetly partnering with an instantly recognizable brand, who are currently experiencing tremendous growth in their search for a Senior Machine Learning Engineer.

Based out of their SOMA offices, you'll be working with a market leading business, with a truly global reach and a tradition of enable talent to flourish and reach it's fullest potential.

If you're someone with a passion for delivering real business impact, across a variety of projects and datasets, with a clear trajectory to leadership, this is the role for you.

YOUR ROLE AS SENIOR MACHINE LEARNING ENGINEER

  • Build Machine Learning pipelines, working closely with Data Scientists and Data Engineers
  • Work closely with non-technical stakeholders to drive data-driven transformation internally
  • Develop Machine Learning models & frameworks to address core business problems and create actionable insights
  • Maintain and develop code-bases, ensuring that pipelines, models and code are deployable
  • Solve business problems across personalization, recommendation & NLP

SKILLS AND EXPERIENCE

  • PhD in a quantitative discipline such as: Statistics, Maths, Computer Science or Engineering (Master's degree considered)
  • At least 3 years of experience of working with Machine Learning Engineering methodologies
  • Extensive experience and understanding of Machine Learning Techniques
  • Experience of working with Spark, Scala & Matlab
  • Prior exposure to NLP methodologies & toolkits would be a plus
  • World Class communication skills

THE BENEFITS:

A base salary of between $180,000 - $220,000 as well as a performance related annual bonus and an equity package.

HOW TO APPLY:

Please register your interest in this Senior Machine Learning Engineer role by sending your résumé via the' Apply' link on this page.

KEYWORDS

Data Science, Data Scientist, Deep Learning, Tensorflow, Neural Networks, Big Data, R, SQL, Python, Insight, Analytics, Data, Statistics, Modelling, Machine Learning, Algorithms, Bayesian

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MD33922
San Francisco, California
US$180000 - US$220000 per year
  1. Permanent
  2. Data science

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