Training Course :Data analysis & analytics workflow for oil & gas

iOpener Training
OIDA7451
Manama
Monday, 05 Jan 2026 - Friday, 09 Jan 2026
Hotel in Manama
Price: 4400

EXECUTIVE SUMMARY

The Data Analysis & Analytics Workflow for Oil & Gas program is designed to rapidly equip Oil & Gas professionals with the essential analytical, technical, and reporting skills required in modern digital operations. Within one structured week, participants progress from foundational Excel-based analysis to automated Python workflows, descriptive statistics, interactive dashboards, and machine learning fundamentals.

The program is built around practical Oil & Gas datasets such as well production, downtime, operational efficiency, and reservoir indicators, ensuring direct relevance to real operational environments. Through hands-on labs, real-world case studies, and a comprehensive Capstone Project, participants learn how to collect, clean, analyze, visualize, and communicate data-driven insights effectively.

This training accelerates digital readiness, enhances decision-making capabilities, and empowers professionals to actively contribute to data-driven and digital transformation initiatives within Oil & Gas organizations.

INTRODUCTION

Oil & Gas operations generate large volumes of operational, production, and performance data. However, the true value of this data can only be realized through structured analysis, automation, and effective reporting. As organizations move toward digital operations, professionals are increasingly expected to interpret data, identify trends, and support decisions with analytical evidence.

This course provides a practical, end-to-end analytics workflow tailored specifically for the Oil & Gas industry. Participants build strong foundations in data analysis using spreadsheets, then advance toward automated analytics, statistical interpretation, dashboarding, and basic machine learning concepts. The course emphasizes real datasets, operational scenarios, and immediate applicability in the workplace.

COURSE OBJECTIVES

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

  • Organize, clean, and analyze datasets using spreadsheets and programming tools
  • Apply descriptive statistics to interpret operational patterns and performance indicators
  • Automate data preparation tasks and perform exploratory data analysis
  • Build interactive dashboards and KPI reports
  • Understand machine learning fundamentals and apply basic models to Oil & Gas use cases
  • Integrate multiple analytics tools into a unified end-to-end workflow
  • Deliver actionable insights through a Capstone Project based on real operational data

TARGET AUDIENCE

This course is designed for:

  • Oil & Gas engineers and operations professionals
  • Production and performance analysts
  • Reporting and dashboard developers
  • Digital transformation teams
  • Spreadsheet and reporting specialists
  • Technical managers and team leads
  • Professionals seeking to strengthen data analysis skills

COURSE OUTLINE

Day 1: Spreadsheet Foundations for Oil & Gas Data

Topics

  • Introduction to data analysis for Oil & Gas
  • Data entry, formatting, and cleaning
  • Essential formulas for analysis
  • Basic charts for production, downtime, and operational KPIs
  • Pivot tables for summary analysis
  • Oil & Gas example datasets (well production, daily operations)

Hands-On

  • Clean a raw well production dataset
  • Build charts for:
  • Production trends
  • Downtime percentage
  • Water-cut trends
  • Create a pivot table for monthly production analysis

Day 2: Advanced Spreadsheet Analysis

Topics

  • Advanced and nested formulas
  • Data validation rules for quality control
  • Conditional formatting for anomaly detection
  • Automation tools for repetitive tasks
  • Dashboard design fundamentals

Hands-On

  • Build a management dashboard for production, uptime, and efficiency
  • Apply advanced formulas and validation rules
  • Convert raw data into an automated reporting template

Day 3: Descriptive Statistics and Analytics Programming Introduction

Part A – Descriptive Statistics

Topics

  • Data types and measurement levels
  • Summary statistics and distributions
  • Correlation analysis for operational data
  • Outlier detection fundamentals

Hands-On

  • Apply descriptive statistics to a multi-well dataset
  • Create a correlation matrix for production versus downtime

Part B – Programming for Data Analysis

Topics

  • Programming environment and syntax basics
  • Variables and data structures
  • Control flow and functions
  • Introduction to data analysis libraries

Hands-On

  • Write a first analytics script
  • Load, filter, and summarize well production data
  • Calculate daily production changes and detect anomalies

Day 4: Programmatic Data Analysis and Interactive Reporting

Part A – Data Analysis Automation

Topics

  • Data cleaning and handling missing values
  • Exploratory data analysis and trend detection
  • Feature engineering fundamentals

Hands-On

  • Clean and process a field-level dataset
  • Detect anomalies and create engineered KPIs

Part B – Interactive Dashboards and Reporting

Topics

  • Connecting reporting tools to analytics outputs
  • Building a data model
  • Creating interactive dashboards
  • KPI cards, filters, and drill-down analysis

Hands-On

  • Build a complete dashboard including:
  • Production summary
  • Well performance
  • Downtime and efficiency
  • Monthly trends and alerts

Day 5: Machine Learning Fundamentals and Capstone Project

Part A – Machine Learning Fundamentals

Topics

  • Categories of machine learning models
  • Model evaluation concepts
  • Basic workflows for Oil & Gas analytics
  • Use cases:
  • Production forecasting
  • Anomaly detection
  • Well performance classification

Hands-On

  • Train a regression model for forecasting
  • Train a classification model for well status
  • Evaluate and interpret results

Part B – Capstone Project

Participants complete an end-to-end project:

  • Clean and preprocess data
  • Apply descriptive statistics
  • Build a basic machine learning component
  • Create an interactive dashboard
  • Present insights and recommendations

COURSE DURATION

  • 5 Days (Intensive Program)
  • Optional extensions to 10 days or 2 weeks for deeper practice
  • Delivery options:
  • In-person
  • Online
  • In-house corporate training

Content and datasets can be customized to match organizational requirements.


INSTRUCTOR INFORMATION

The course is delivered by instructors with strong practical experience in Oil & Gas operations, data analysis, and digital transformation. Trainers focus on applied learning using real operational datasets, hands-on labs, and guided support during the Capstone Project to ensure immediate workplace applicability.

FREQUENTLY ASKED QUESTIONS

Who should attend this course?

Oil & Gas professionals involved in operations, production, reporting, performance analysis, or digital initiatives.

Is prior programming experience required?

No. The course starts with fundamentals and gradually progresses to advanced concepts.

Is the course practical?

Yes. The program is highly hands-on with daily labs and a full Capstone Project.

Do participants receive a certificate?

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

Can the course be customized?

Yes. Content, datasets, dashboards, and examples can be tailored to company needs.

CONCLUSION

The Data Analysis & Analytics Workflow for Oil & Gas course provides a clear and practical pathway for professionals to move from basic data analysis to structured, automated, and insight-driven workflows. By integrating analytics, statistics, reporting, and machine learning fundamentals, participants gain the skills needed to support informed decision-making and contribute effectively to digital transformation initiatives in the Oil & Gas industry.

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