Lead Machine Learning Engineer

TEKsystems
Manchester
11 months ago
Applications closed

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Lead Machine Learning Engineer

Lead Machine Learning Engineer

Lead Machine Learning Engineer

Lead Machine Learning Engineer

Lead Machine Learning Engineer

Lead Machine Learning Engineer

Description

Lead Machine Learning Engineer to support a global IT services business.

Responsibilities:

Lead client discussions to understand business problems and design technical solutions using machine learning models. Develop and deploy ML models on Google Cloud using frameworks like TensorFlow, scikit-learn, and torch. Stay up-to-date with the latest ML developments and bring new ideas to the team. Line management duties: Engage with team members, support their professional development, and foster a positive, collaborative environment.

Requirements:

Experience as a technical lead on projects involving a public cloud provider. Strong grasp of statistics, probability, and ML algorithms. Hands-on experience with training, deploying, and optimizing ML models. Proficiency in Python, SQL, and cloud ML tools. Collaborative, proactive, and detail-oriented.

Skills

Python SQL Google Cloud Machine learning

Job Title:Lead Machine Learning Engineer

Location:Manchester, UK

Rate/Salary:- GBP Yearly

Job Type:Permanent

Trading as TEKsystems. Allegis Group Limited, Maxis 2, Western Road, Bracknell, RG12 1RT, United Kingdom. No. 2876353. Allegis Group Limited operates as an Employment Business and Employment Agency as set out in the Conduct of Employment Agencies and Employment Businesses Regulations 2003. TEKsystems is a company within the Allegis Group network of companies (collectively referred to as "Allegis Group"). Aerotek, Aston Carter, EASi, Talentis Solutions, TEKsystems, Stamford Consultants and The Stamford Group are Allegis Group brands.

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