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icon icon Building AI Intuition

Connecting the dots...

icon icon Building AI Intuition

Connecting the dots...

  • Home
  • ML Basics
  • Model Intuition
  • Encryption
  • Privacy Tech
  • Musings
  • About
  • Home
  • ML Basics
  • Model Intuition
  • Encryption
  • Privacy Tech
  • Musings
  • About
Close

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Recent Posts
March 1, 2026
Teaching AI Models: Gradient Descent
March 1, 2026
Needle in the Haystack: Embedding Training and Context Rot
March 1, 2026
Measuring Meaning: Cosine Similarity
February 28, 2026
AI Paradigm Shift: From Rules to Patterns
February 16, 2026
Seq2Seq Models: Basics behind LLMs
February 16, 2026
Word2Vec: Start of Dense Embeddings
February 13, 2026
Advertising in the Age of AI
February 8, 2026
Breaking the “Unbreakable” Encryption – Part 2
February 8, 2026
Breaking the “Unbreakable” Encryption – Part 1
February 8, 2026
ML Foundations – Linear Combinations to Logistic Regression
February 2, 2026
Privacy Enhancing Technologies – Introduction
February 2, 2026
Privacy Enhancing Technologies (PETs) — Part 3
February 2, 2026
Privacy Enhancing Technologies (PETs) — Part 2
February 2, 2026
Privacy Enhancing Technologies (PETs) — Part 1
February 2, 2026
An Intuitive Guide to CNNs and RNNs
February 2, 2026
Making Sense Of Embeddings
November 9, 2025
How CNNs Actually Work
August 17, 2025
How Smart Vector Search Works
Privacy Tech

Privacy Enhancing Technologies (PETs) — Part 1

How Your Data Gets Protected Every time you browse a website, click an ad, or make a purchase, data flows through…

Machine Learning Basics

Word2Vec: Start of Dense Embeddings

Post 2a/N When you type a search query into Google or ask Spotify to find “chill acoustic covers,” the…

Machine Learning Basics

Seq2Seq Models: Basics behind LLMs

When you use Google Translate to turn a complex English sentence into Spanish, or when you ask Gemini to summarize a…

Privacy Tech

Privacy Enhancing Technologies (PETs) — Part 3

Privacy-Preserving Computation and Measurement In Part 1, we covered how organizations protect data internally —…

Machine Learning Basics

Making Sense Of Embeddings

Post 2/N When you search on Amazon for “running shoes,” the system doesn’t just look for those exact…

Machine Learning Basics Model Intuition

Teaching AI Models: Gradient Descent

Post 1b/N In the last post, we established the big idea: machine learning is about finding patterns from data instead…

Browse Tag

Supervised Learning

1 Article

AI Paradigm Shift: From Rules to Patterns

Archit Sharma By Archit Sharma
11 Min Read

Post 1/N Every piece of software you’ve ever shipped or have seen shipped works the same way. A developer sits down, thinks through the logic, and writes explicit rules. If the user clicks here, do this. If the input is greater than 100, reject it.…

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Recent Posts

  • Teaching AI Models: Gradient Descent
  • Needle in the Haystack: Embedding Training and Context Rot
  • Measuring Meaning: Cosine Similarity
  • AI Paradigm Shift: From Rules to Patterns
  • Seq2Seq Models: Basics behind LLMs
  • Word2Vec: Start of Dense Embeddings
  • Advertising in the Age of AI
  • Breaking the “Unbreakable” Encryption – Part 2
  • Breaking the “Unbreakable” Encryption – Part 1
  • ML Foundations – Linear Combinations to Logistic Regression
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