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Traditional AI/ML

Managed Azure Machine Learning

Lifecycle stages:



MLOps journey description: The Traditional AI/ML journey is best suited for structured tabular data, enabling statistical analysis and predictive modeling for business-critical tasks. Typical use cases include classification, regression, and time-series forecasting. In Equinor’s AI Platform, this journey is powered by a managed Azure Machine Learning (ML) infrastructure—a fully managed service that supports the end-to-end ML lifecycle while abstracting away the complexity of compute and environment setup.

Use case examples: Traditional ML applied to structured business and operational data.

  • Forecasting oil production and equipment downtime
  • Classifying rock types or formations from drilling data
  • Predicting energy consumption or cost per barrel
  • Analyzing drilling efficiency and rate of penetration
  • Clustering wells by performance characteristics