Senior Machine Learning Research Engineer

New York
US$130000 - US$150000 per annum + EQ

NYC

USD MAX $155,000

A global retail business and AI-focused team is looking to bring in a machine learning engineer to work hands-on developing cutting edge machine learning and deep learning algorithms through research, for a new team using computer vision and machine learning for ways to answer television fans' questions.

THE COMPANY

Harnham is partnered with a global retail business that brings in over $15 billion a year and uses machine learning for exciting uses, starting with solving a user problem and ending with access to unlocking billions of impressions for brands and retailers through their almost free advertising of television.

THE ROLE

As a Machine Learning Engineer you will be required to:

  • Develop end to end AI and machine learning models
  • Work with a cross-functional team of software engineers, PhD level researchers, and data scientists
  • Productionalize models
  • Help innovate the way AI is used within the company, and to drive profit and growth!

THE BENEFITS

Working for a retail powerhouse that is using cutting edge technology while being able to work hands-on, making a direct business impact, and innovating in a way that builds on what the small team is able to accomplish. Also, great benefits, autonomous projects with room for creative minds, and huge possibilities of EQ!

YOUR QUALIFICATIONS

  • PhD or Master's in Computer Science, Applied Mathematics, or Quantitative Fields
  • Knowledge of Python, Java, C++, or comparable language
  • Commercial experience developing machine learning and deep learning algorithms being put into production
  • Neural network framework projects
  • Experience working with cross-functional teams
  • Extensive software engineering experience, working with models end to end
  • Staying up to date with recent research
  • Passion for film, fashion, and published research papers are pluses!

HOW TO APPLY

Please register your interest by sending your CV to Rachael baker via the Apply link on this page.

KEYWORDS

Data Science, Machine Learning, Information, Technology, Team Lead, Tech Lead, Film, Style, Shopping, Software Engineering, Software Engineer, AI, Deep Learning, Robotics





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66775
New York
US$130000 - US$150000 per annum + EQ
  1. Permanent
  2. Deep Learning and AI

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