Training Course :AI & Data Science For Oil & Gas

Professional AI and Data Science training for Oil and Gas professionals, covering analytics, machine learning, real field data, and practical industry use cases.

iOpener Training
AI & Data Science For Oil & Gas
OIAI5106
Istanbul
Monday, 20 Jul 2026 - Friday, 24 Jul 2026
Price: 4400

EXECUTIVE SUMMARY

Data Science and Artificial Intelligence are rapidly transforming the Oil and Gas sector, enabling smarter, faster, and more efficient decision-making across exploration, drilling, reservoir management, production operations, and HSE. As AI becomes increasingly democratized, energy organizations are now able to leverage advanced analytics, machine learning, and Large Language Models (LLMs) to unlock hidden value from vast amounts of structured and unstructured E&P data that traditionally remain underutilized.

This program is specifically designed for Oil and Gas professionals seeking to understand and apply modern AI and Data Science capabilities across the full digital value chain. Participants will explore essential foundations including AI concepts, Python programming, data preparation, analytics, visualization, and machine learning, while working with real petroleum, geoscience, well, reservoir, and production datasets.

The course also introduces MLOps fundamentals and practical applications of LLMs, such as automated reporting, well log interpretation, and interactive intelligence tools. By the end of the program, participants will understand the complete Data Science lifecycle—from data ingestion and preparation to modeling, evaluation, deployment, and operational integration—equipping them to identify AI opportunities and apply data-driven solutions to real Oil & Gas challenges.

Course Introduction

The Oil and Gas industry is undergoing a fundamental transformation driven by data, advanced analytics, and artificial intelligence. Decision-making is no longer based solely on traditional engineering judgment and historical experience; it is increasingly supported by intelligent systems capable of analyzing vast volumes of complex data and translating them into actionable insights. As AI adoption accelerates across the energy sector, professionals must understand these technologies not as abstract concepts, but as practical tools that directly impact exploration, drilling, reservoir management, production optimization, and HSE operations.

This course is designed to bridge the gap between traditional Oil & Gas domain expertise and modern Data Science and AI capabilities. It is tailored specifically for engineers, geoscientists, and energy professionals who want to understand how Python, data analytics, machine learning, and Large Language Models can be applied to real operational challenges. The program does not assume deep prior experience in programming or AI; instead, it builds strong foundations and gradually progresses toward advanced, hands-on applications using real-world petroleum, subsurface, well, and production datasets.

Throughout the program, participants will gain a practical understanding of the complete Data Science lifecycle within the Oil & Gas context—from data ingestion and preparation, through modeling and performance evaluation, to deployment and operational integration using MLOps principles. By the end of the course, participants will be equipped to think analytically, identify high-impact AI opportunities within their assets, and confidently contribute to data-driven and AI-enabled decision-making across the Oil & Gas digital value chain.

COURSE OBJECTIVES

By the end of this course, participants will be able to:

  • Understand key AI concepts including Machine Learning, Deep Learning, Time-Series Forecasting, and Natural Language Processing (NLP) in Oil & Gas applications.
  • Develop Python programming skills for data manipulation, cleaning, transformation, and exploratory data analysis.
  • Apply NumPy and Pandas for reservoir calculations, well log analysis, formation evaluation, and production trend analytics.
  • Build supervised and unsupervised machine learning models including regression, classification, and clustering.
  • Perform feature engineering and evaluate model performance using industry-standard metrics.
  • Understand MLOps principles including automated pipelines, reproducibility, and deployment basics.
  • Explore practical applications of Large Language Models (LLMs) for reporting, analytics, and Oil & Gas knowledge retrieval.
  • Design end-to-end AI-driven workflows aligned with Oil & Gas operational needs.

TARGET AUDIENCE

This course is intended for:

  • Oil & Gas Engineers (Production, Reservoir, Drilling, Facilities)
  • Geoscientists and Petrophysicists
  • Data Analysts and Data Scientists in the Energy Sector
  • Digital Transformation and Innovation Teams
  • IT and OT Professionals
  • Operations and Asset Management Professionals
  • Technical Managers and Team Leads
  • Professionals transitioning into Data Science and AI roles within Oil & Gas

COURSE OUTLINE

Day 1: Foundations of AI & Data Science in the Energy Industry

Conceptual Foundations

  • What is Artificial Intelligence?
  • History of AI and evolution into modern applications
  • AI terminology:
  • Machine Learning
  • Deep Learning
  • Neural Networks
  • Computer Vision
  • Natural Language Processing (NLP)
  • Time-Series Analysis
  • Why AI matters in Energy and Oil & Gas
  • Digital transformation and data-driven culture in E&P organizations

AI Use Cases for Oil & Gas

  • Drilling optimization
  • Reservoir characterization
  • Production forecasting
  • Well log interpretation
  • Equipment health monitoring and failure prediction
  • Safety monitoring and HSE automation

Data Foundations for AI

  • Types of Oil & Gas data (structured, unstructured, logs, seismic)
  • Data lifecycle in Oil & Gas
  • Data quality, metadata, and data lineage concepts

Hands-On

  • Exploring Oil & Gas datasets
  • Introduction to Python (variables, data types, loops)
  • Running basic scripts using Jupyter Notebook / Python

Day 2: Python for Data Science – Hands-On for Geoscientists & Engineers

Python Fundamentals

  • Variables, lists, dictionaries
  • Loops and conditionals
  • Functions and modular coding
  • Reading and writing files

Numerical Computing

  • NumPy for numerical operations
  • Filtering
  • Indexing
  • Slicing
  • Vectorized operations for reservoir and production data

Data Manipulation with Pandas

  • Importing and cleaning real Oil & Gas datasets
  • Exploratory Data Analysis (EDA)
  • Handling missing values
  • Outlier detection
  • Feature extraction (depth intervals, facies, well intervals)

Visualization

  • Histograms
  • Crossplots
  • Line charts

Hands-On

  • Volumetric calculations using NumPy
  • Formation evaluation and EDA
  • Type well analysis
  • Production trend analysis

Day 3: Machine Learning Fundamentals for Oil & Gas

Core ML Concepts

  • Machine learning workflow
  • Types of machine learning:
  • Supervised learning
  • Unsupervised learning
  • Classification vs. regression
  • Bias–variance tradeoff
  • Underfitting vs. overfitting
  • Learning curves
  • Train/test split

Algorithms

  • Regression:
  • Linear Regression
  • Classification:
  • K-Nearest Neighbors (KNN)
  • Decision Trees
  • Clustering:
  • K-Means
  • Hierarchical Clustering
  • DBSCAN

Hands-On

  • Build a regression model (e.g., production prediction)
  • Build a classification model (e.g., facies classification)
  • Model comparison using evaluation metrics
  • Feature importance visualization

Day 4: AI Technologies & MLOps for Oil & Gas

AI Technologies Across Oil & Gas

  • Computer Vision concepts and applications

Time-Series Modeling

  • Production forecasting
  • Sensor and operational data
  • ESP pump monitoring

Natural Language Processing (NLP)

  • Well reports analysis
  • Automated technical reporting

Introduction to Large Language Models (LLMs)

  • LLM concepts and definitions
  • High-level ChatGPT architecture
  • Tokenization and embeddings
  • Prompt engineering principles
  • LLM use cases in Oil & Gas

MLOps Fundamentals

  • Project structure and environments
  • ML pipelines and workflow orchestration
  • Versioning and reproducibility
  • Deployment basics
  • Creating automated ML workflows

Hands-On

  • Build a simple MLOps workflow
  • Execute a reproducible ML pipeline using Python
  • Automated data ingestion and model refresh

Day 5: Capstone Project & Final Integration

Integrated Capstone Project

Participants build a complete end-to-end AI and Data Science solution:

1. Data Handling

  • Import, clean, and merge multi-source Oil & Gas data
  • Apply EDA and statistical analysis

2. Modeling

  • Train one regression model
  • Train one classification model
  • Evaluate and interpret model results

3. Visualization

  • Build a Python or Power BI dashboard
  • Production trends
  • Well log analytics
  • Feature importance charts

4. AI Integration

  • Add an LLM-based question-answering component
  • Automated insights generation

5. Presentation

  • Final presentation of workflow, results, and decisions

COURSE DURATION

The AI & Data Science for Oil & Gas course is available in multiple formats:

  • 5 Days (Intensive Training)
  • 10 Days (Moderate Pace with Extended Hands-On Sessions)
  • 3 Weeks (Comprehensive Learning Experience)

The course can be delivered:

  • In-person
  • Online
  • In-house at client facilities

Customization is available based on company operations and data.


INSTRUCTOR INFORMATION

This course is delivered by expert instructors with extensive experience in both Oil & Gas operations and Data Science & Artificial Intelligence. Trainers bring real-world project experience in digital transformation, analytics, machine learning, and AI deployment within energy organizations. The training approach emphasizes practical learning, real datasets, and operational relevance.

FREQUENTLY ASKED QUESTIONS (FAQ)

Who should attend this course?

Oil & Gas engineers, geoscientists, data professionals, IT specialists, and managers involved in digital transformation initiatives.

Is prior programming or AI experience required?

No advanced experience is required. The course starts with fundamentals and progresses to advanced topics.

What type of data is used?

Real or realistic Oil & Gas datasets including production, well, reservoir, and time-series data.

Is the course hands-on?

Yes. The course includes daily hands-on exercises and a comprehensive capstone project.

Do participants receive a certificate?

Yes. All participants receive a professional certificate upon successful completion.

What language is the course delivered in?

English (Arabic delivery available upon request).

Can the course be customized for companies?

Yes. Content, datasets, and case studies can be tailored to specific organizational needs.

CONCLUSION

The AI & Data Science for Oil & Gas course provides a complete and practical pathway for professionals to adopt data-driven and AI-enabled solutions within the energy sector. By combining strong technical foundations with real Oil & Gas applications, the program empowers participants to drive innovation, improve operational performance, and lead digital transformation initiatives with confidence.

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