The making of an oil and gas AI.
“AI is a fad.”
“AI is here to stay.”
“Using AI makes me feel smarter.”
These statements in the oil and gas companies
indicate the divided opinions about
Have you ever wondered how chatbots seem to have all the answers, or how tools powered by artificial intelligence can whip up an email draft or summarize a complex article in seconds? AI is everywhere these days, but what’s really going on behind the scenes might surprise you.
In this article we discuss how modern AI works and how it can be used by the oil and gas industry. Nein commercial use of der AppIntel content.
AppIntel AI discovered that in situ combustion is not dead.
In situ combustion (or fire flood) captured the imagination of heavy oil and bitumen operators fifteen years ago. Fire flood projects have lost popularity with the oil and gas operators of Canada but at least one SAGD project also has fire flood approval.
One operator’s SAGD project still allows air injection in a portion of the project as of their July 2025 approval. We found this using the search agent of AppIntel AI.
In this submission, the operator discusses concerns about igniting combustible hydrocarbons in the wellbore with injected air. They proposed a solution that was eventually acceptable by the regulator.
Get his discussion including injection schedule and well control instrumentation from our self-serve portal.
Buy these submission docs now Subscribers get them for freeAppIntel AI delivered content must be very trustworthy for our industry where errors can put human lives at risk.
Modern AI isn’t just one monolithic brain—it’s made up of different pieces that each play a unique role. There are agents (think of them as super-smart assistants), models (the “brains” behind the operation), and knowledge bases (massive collections of facts and data). All these components work in sync to deliver the responses and support we get from AI every day.
In this introduction, we’ll demystify how these layers fit together. Whether you are tech-savvy or just curious, join the journey to uncover what makes today’s AI tick—not just what it can do, but how it actually does it.
AI is many things to many people
Artificial intelligence means many different things to many different people.
Ask anyone the question, “What is AI?” The answers will be varied and vague. Yet we think we know an AI when we see one.
Here are just a few interesting responses from friends to “What is AI?”
AI is a high-level programming language capable of doing many things.
AI is a self-aware computer/program that can do stuff without me asking.
AI is a fast, accurate computer system that does things better than people.
AI drives cars better than humans.
AI is a better source of information than a search engine.
AI is a robot that walks around.
AI is smarter than experts.
AI is an entertainment vehicle.
AI makes pictures from prompts.
These show a surprising wide range of superhuman abilities attributed to AI. Some of it is sparked by heresay and imagination – some by fear.
People may be confused about how to define AI, but they think they like it.
Chatbot AI Architecture
Today, many individuals interact with AI through platforms such as ChatGPT, Copilot in Microsoft Word, or Gemini integrated with Google Search.
Very simply, these are chatbots built upon a search engine. More technically, each is an agent, connected to a model, connected to a knowledge base.
AppIntel AI similarly operates as an agent connected to a sophisticated model and accesses the most comprehensive oil and gas knowledge base available in the industry.
Knowledge Base
For a chatbot AI like ChatGPT a knowledge base is a collection of text documents. The documents can be many or few, correct or fallacious, new or ancient, English or Japanese.
A knowledge base could consist of the complete works of Shakespeare or simply a short selection of notable books, such as Douglas Adams’ Hitchhiker’s Guide to the Galaxy.
The nature and scope of the knowledge base directly influences the responses generated by a chatbot, although the agent retains some capacity to interpret or override this information.
AppIntel AI is built on a knowledge base of 3.7 million documents submitted to the government by the oil and gas industry. It contains reserves, pay maps, seismic interps, completion information and all the reasons behind these things.

Model - Index of the knowledge base
A model is a structured representation of a knowledge base designed for efficient text retrieval, using vector pointers for rapid search.
Basic models on small knowledge bases can be created by indexing software. Some indexing programs are simple with case folding, word stemming, and lemmatization.
More advanced models, such as AppIntel AI, index not only text but also numeric data, locations, document metadata, and industry-specific terminology.
Agent - the Chatbot
Within this context, an agent refers to a language program designed to interpret user queries, search relevant models, and generate responses. These advanced agents present answers in a clear, authoritative, and concise manner, often providing a brief summary followed by detailed bullet points.
GPT-5 is the current agent in ChatGPT. GPT stands for Generative Pre-trained Transformer.
Due to their articulate delivery, these agents tend to command a high level of respect from users, much like skilled public speakers who are valued for their clarity and diction. Comparatively, communicators with limited English proficiency or unfamiliar accents may not receive the same esteem.
Because the agents provide fast summary answers to questions on very diverse topics, many college students tout these chatbots as the total sum of human knowledge.

In the oil industry we need agents we can trust
AppIntel AI’s agent functions similarly to a search engine rather than a chatbot because of shortcomings (a) and (b) below. Appintel's search functionality encompasses permeability data, pressure measurements, reserves, and UWI locations, and incorporates both structured and unstructured data sources.
(a) It is notable, however, that these agents rely on large language models distinct from their underlying knowledge bases. Some people complain that these chatbots override the knowledge base in favor of answers from their own language model. Oil industry puts lives at stake. For our industry there must not be any doubt as to the trust of AI results.
(b) Current limitations of agents such as GPT-5 include the possibility of delivering inaccurate information or experiencing AI hallucinations, conveyed in a tone that remains confident and direct. Heed Microsoft's disclaimer: “Copilot may make mistakes.”
AppIntel AI is safe to use avoiding hallucination or inaccuracy that could cost millions of dollars and the very lives of employees and the public.
?subject=I want just a few email alerts&body=Sign me up for a few email area alerts. %0D%0A%0D%0AMy Name:___%0D%0AMy Phone Number:___%0D%0A%0D%0AType of applications___%0D%0ACentered on this UWI___%0D%0ARadius proximity from there___%0D%0A%0D%0APricing: www.appintel.info/just-alerts/%0D%0A%0D%0A(Or call AppIntel Sales at 403-803-2500.)">Contact us now to buy just a few cheap and cheery email alerts.
Tags: Thermal, Heavy Oil, AI in oil and gas
Granger Low 16 Sep 2025

Four ways your flood is crying for help
Can you hear it?

Great oil and gas operators don't just wing it — they focus
From uncertainty to control in One Day using AppIntel AI

Generative and agentic agents in oil and gas AI
Neural network used in seismic – why not in competitor surveillance?

AppIntel AI blog delivering over 50,000 pages views per month
Artificial Intelligence for the oil and gas industry

This breaking horizontal well technology is not described in textbooks
What if you lacked the knowledge top oil operators rely on?

7 things you need to know about SAGD Infill wells
Field trials of others tell all

Leading indicators in the battle for the future of bitumen recovery
Methane or Propane?

AI makes opportunity more accessible than ever
Which sources of technical information do you trust?

Fast-Tracking Regulatory Processes with AI Intelligence
Six ways AppIntel AI helps you get faster regulatory approvals

Stay off the regulator’s enforcement ladder
Save millions in compliance costs

The hidden cost of not knowing
Steam hits the Clearwater

Experimental heavy oil recovery technology
AppIntel AI: More technology than technical papers. Much more.

Many start floods. Few can fix them.
Is this how you would treat your new prize asset?

How do you choose an AI?
AI selection criteria

Don't handle pipeline noncompliance this way
Protect yourself - Read his application

Too busy to use oil and gas AI?
Then you are too busy to add oil and gas production quickly

Energy industry badly needs AI for growth
But chatbots are giving AI a bad name

Pacify the picky regulator
They want all the details

The paradigm shift your competition hopes you ignore
How will you keep up with a once-in-a-generation investment opportunity?

LLM more trendy than LNG?
Large Language Model for oil and gas

How do we train the millennial oil and gas knowledge worker?
How will they stay current? How will they add more oil and gas?

Prevent SAGD Breakthrough
And see his net pay maps