Machine Learning Engineer 2025 Internship Programme (6 months)

CGG SA
Crawley
1 month ago
Applications closed

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Machine Learning Engineer

We are looking for talented individuals with fresh perspectives and a deep curiosity to solve challenges to join our team as Machine Learning Interns! As a Machine Learning Engineering Intern at Viridien AI Lab, you'll play a key role in advancing algorithms and models in areas such as document processing, satellite imagery analysis, and large language models (LLM).

Viridien (www.viridiengroup.com) is an advanced technology, digital and Earth data company that pushes the boundaries of science for a more prosperous and sustainable future. With our ingenuity, drive and deep curiosity we discover new insights, innovations, and solutions that efficiently and responsibly resolve complex natural resource, digital, energy transition and infrastructure challenges.

Job details

We are looking for talented individuals with fresh perspectives and a deep curiosity to solve challenges to join our team!

As a Machine Learning Engineering Intern at Viridien AI Lab, you'll play a key role in advancing algorithms and models in areas such as document processing, satellite imagery analysis, and large language models (LLM).

You will have the opportunity to work with a team of experienced engineers and data scientists to solve challenging problems and deliver high-impact solutions. The ideal candidate will have an enthusiastic attitude towards learning, and the flexibility to adapt to new challenges or changes in direction.

Location

Successful candidates will join our largest European centre, based in Crawley, a town next to London Gatwick Airport and just outside the M25 with excellent transport links to Central London and the South Coast.

Qualifications

Pursuing a PhD or MSc in Computer Science, Artificial Intelligence, Data Science, or related field.

Key Skills and Experiences

  • Proficient in machine learning and statistics, with hands-on experience in computer vision (CV) or natural language processing (NLP); understanding of large language models (LLM) is a plus.
  • Skilled in object-oriented programming using Python.
  • Familiar with PyTorch or other machine learning frameworks
  • Excellent problem-solving skills
  • Strong communication skills, both written and verbal

Why work with us?

  • Hands-on experience in high-impact machine learning projects.
  • Mentorship from industry experts.
  • Opportunities for professional growth and networking.
  • Flexible Working - through our hybrid working scheme, we offer a flexible blend of home and office working
  • Bank Holiday Swap - our holiday swap program allows you to change it for another day of your choice!
  • Sponsorship of visas/comprehensive relocation packages
  • Relaxed dress code policy

Learning and Development

At Viridien, we foster a culture of continuous learning and provide tailored training programs through our Learning Hub, designed to enhance technical, commercial, and personal growth.

We Care about the Environment

We encourage and actively support a strong sense of community, through volunteering and various company initiatives, as well as a strong company commitment to protecting our environment through sustainable solutions, energy saving and waste reduction enterprises.

We see things differently. Diversity fuels our innovation, we value the unique ways in which we differ, and we are committed to equal employment opportunities for all professionals.

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