Machine Learning Geoscientist - Jr

Halliburton
Abingdon
1 month ago
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Overview

We are looking for the right people — people who want to innovate, achieve, grow and lead. We attract and retain the best talent by investing in our employees and empowering them to develop themselves and their careers. Experience the challenges, rewards and opportunity of working for one of the world’s largest providers of products and services to the global energy industry.

Responsibilities
  • Under supervision, applies theories, principles and practices to the research and development of new and improved products, processes and procedures.
  • Performs research and experimentation at the direction of technology leadership.
  • Communicates occasionally with technical clients.
AI / ML Implementation
  • Design and implement AI/ML algorithms to automate and enhance geological interpretation.
  • Develop AI/ML algorithms to improve geological realism in subsurface models.
  • Validate predictive models using blind test datasets and real-world scenarios.
Collaboration & Innovation
  • Work closely with colleagues from multiple disciplines to refine and enhance workflows.
  • Stay current with AI/ML and geoscience advancements to drive innovation.
  • Contribute to publications, patents, and technical presentations.
Required Qualifications & Skills
  • Honors degree (2:1 or above) geoscience.
  • 2 - 5 years relevant industry experience
  • Strong understanding of specific geoscience domains such as stratigraphy, sedimentology, or petroleum geology.
  • Experience of working with subsurface datasets (e.g., wireline, seismic, biostratigraphy).
  • Strong python programming skills and experience with ML frameworks (e.g., TensorFlow, PyTorch, Scikit-learn).
  • Excellent communication and teamwork skills in a collaborative R&D environment.
Desirable Experience
  • Proven application of AI/ML in geoscience projects.
  • Experience in the energy sector.
Location

97 Jubilee Avenue, Milton Park, Abingdon, Oxfordshire, OX14 4RW, United Kingdom

Job Details
  • Requisition Number: 204383
  • Experience Level: Entry-Level
  • Job Family: Engineering/Science/Technology
  • Product Service Line: [[division]]
  • Full Time / Part Time: Full Time
  • Additional Locations for this position:
Compensation

Compensation is competitive and commensurate with experience.


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