The Tech Behind ChatGPT: Transformers Explained (Without the Math)

📰 Medium · ChatGPT

Learn the tech behind ChatGPT and how transformers work, crucial for AI engineers and data scientists to build innovative language models

intermediate Published 19 Jun 2026
Action Steps
  1. Read about the transformer architecture using online resources
  2. Explore the applications of transformers in language translation and text summarization
  3. Build a simple language model using a transformer library
  4. Test the model on a sample dataset
  5. Configure the model for a specific use case
Who Needs to Know This

AI engineers, data scientists, and software engineers can benefit from understanding transformers to develop more efficient language models and improve their applications

Key Insight

💡 Transformers are a key component of modern language models, enabling efficient processing of sequential data

Share This
💡 Transformers power ChatGPT! Learn how they work to build innovative language models
Read full article → ← Back to Reads

Related Videos

5 Levels of AI Agents - From Simple LLM Calls to Multi-Agent Systems
5 Levels of AI Agents - From Simple LLM Calls to Multi-Agent Systems
Dave Ebbelaar (LLM Eng)
Chapter 3: Looking Inside Large Language Models | Hands-On Large Language Models Book
Chapter 3: Looking Inside Large Language Models | Hands-On Large Language Models Book
onepagecode
Hands-On Large Language Models | Chapter 7: Advanced Text Generation Techniques
Hands-On Large Language Models | Chapter 7: Advanced Text Generation Techniques
onepagecode
Hands-On LLMs - Chapter 1: An Introduction to Large Language Models
Hands-On LLMs - Chapter 1: An Introduction to Large Language Models
onepagecode
Chapter 2: Tokens and Embeddings | Hands-On Large Language Models Book
Chapter 2: Tokens and Embeddings | Hands-On Large Language Models Book
onepagecode
Hands-On Large Language Models | Chapter 5: Text Clustering and Topic Modeling
Hands-On Large Language Models | Chapter 5: Text Clustering and Topic Modeling
onepagecode