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Generative & Knowledge AI

Advanced AI

Lifecycle stages:



MLOps journey description: This journey involves AI models capable of generating text, images, code, or recommendations, enhancing automation and personalization. It includes large language models (LLMs), chatbots, and deep learning-based recommendation engines.

Use case examples: Language, code, and content generation, as well as knowledge management using LLMs and generative models.

  • Generating first-draft technical reports or maintenance logs
  • Chatbots for internal technical support or field ops Q&A
  • Summarizing long drilling or production logs
  • Generative design of new components (e.g., drill bit designs)
  • Knowledge retrieval assistants trained on internal documents, safety manuals, and regulatory texts

Related success stories:

  • CSSU-OPT-KAI: Enables operating assets to improve risk management and deliver more reliable plans to the offshore organization by utilizing Natural Language Processing (NLP) models.
  • KAI Enablers: An event-driven framework for serving Knowledge AI (KAI) models, helping users extract insights from unstructured data to enhance decision-making and solve business challenges.
  • MATE Notifications: The Maintenance Analysis Tool for Equinor (MATE) processes machine failure logs written by maintenance engineers to predict failure modes and classes.
  • Multilingual Models KAI: The multilingual models are trained and fine-tuned Brazilian-Portuguese ML models for equipment entity extraction. These models are used by Operational Planning Tools (OPT) at Equinor.
  • Stable Diffusion Gen AI: A web-based Stable Diffusion experiment enabling users to create images from text prompts.