Machine Learning Developer

Adecco
Warwick
4 days ago
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Join Our Client as a Machine Learning Developer!

Are you passionate about harnessing the power of machine learning in the energy sector? Do you thrive on solving complex challenges and bringing innovative solutions to life? If so, we have an exciting opportunity for you in Warwick!

About the Role:
We are looking for a talented Machine Learning Developer to join our dynamic team on a fixed-term contract. You will play a pivotal role in designing and implementing end-to-end ML solutions that drive our energy initiatives forward.

What You'll Do:

Design, develop, and optimize ML models to address real-world problems in the energy sector.
Implement best practices in model training, validation, and optimization.
Collaborate cross-functionally with engineering and product teams to deploy production-ready ML models.
Prepare, transform, and validate complex datasets to ensure high-quality inputs for your models.
Utilize cloud platforms (AWS, Azure, GCP) and MLOps practices for seamless deployment and monitoring of ML solutions.
Write modular, production-grade code using Python and maintain version control with Git.

What We're Looking For:

Experience: designing and implementing end-to-end ML solutions in production.
Technical Skills:- Strong command of ML algorithms and model evaluation techniques.
- Proficiency in Python and ML libraries, with hands-on experience in Docker, CI/CD, and deployment processes.
- Familiarity wi...

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