Graduate Machine Learning Engineer

InterQuest Group
Crawley
1 year ago
Applications closed

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Graduate Machine Learning Engineer

Competitive | Crawley | Permanent

InterQuest

Posted 1 hour ago

We're seeking enthusiastic and talented individuals to join our team as Machine Learning Engineering Intern. This is an opportunity to work on cutting-edge AI projects and make a real impact in the field.

What You'll Do

Collaborate with experienced engineers and data scientists on high-impact machine learning projects Develop and implement algorithms for document processing, computer vision, and natural language processing Contribute to the advancement of large language models Participate in the full machine learning lifecycle, from data preparation to model deployment

What We're Looking For

Currently pursuing a PhD or MSc in Computer Science, Artificial Intelligence, Data Science, or a related field Strong programming skills, particularly in Python Experience with machine learning frameworks such as PyTorch Solid understanding of machine learning concepts and statistics Hands-on experience in computer vision (CV) or natural language processing (NLP) Strong communication skills, both written and verbal Enthusiasm for learning and adapting to new challenges

Bonus Points

Understanding of large language models (LLM) Experience with cloud computing platforms Contributions to open-source projects

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