Senior AI Data Scientist

Visuna
Abingdon
2 days ago
Create job alert
  • Collaborate with geoscientists and engineers to understand requirements and design effective solutions
  • Develop robust Python pipelines for data manipulation
  • Implement secure coding practices and manage version control using Git
  • Work with cloud platforms (AWS and Azure) to scale data workflows and manage infrastructure
  • Optimize database performance and spatial queries using PostgreSQL/PostGIS
  • Champion Python best practices across the team and support the development of junior team members

Requirements

Required Qualifications

  • Honors degree (2:1 or above) in data science/AI or related field.
  • Minimum of 10 years related work experience.

Desirable Qualifications

  • Postgraduate qualification in AI or related field
  • Proficiency in Python, with a strong adherence to Python best practices
  • Experience using Git for version control and collaboration
  • Knowledge of secure coding principles
  • Expertise in geospatial libraries such as GeoPandas, Shapely, and GDAL
  • Advanced knowledge of PostgreSQL/PostGIS for spatial data management
  • Experience with AWS and Azure platforms, including AI services (e.g., AWS SageMaker, Azure ML)
  • Proven experience developing or deploying AI models across domains such as natural language processing, computer vision, or predictive analytics
  • Familiarity with machine learning frameworks (e.g., TensorFlow, PyTorch, Scikit-learn) and data science tools (e.g., Jupyter, Pandas, NumPy)
  • Ability to design, train, and evaluate supervised and unsupervised learning algorithms
  • Strong teamwork and interpersonal skills, with a collaborative and agile mindset
  • Proven ability to work within agile development environments
  • Self-motivated, detail-oriented, and capable of managing multiple tasks
  • Knowledge of geological or subsurface data domains
  • Experience with containerization tools such as Docker and Kubernetes


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