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MIT Applied AI & Data Science Program – completed πŸ₯³

25 January 20262 minKarim Benna
MIT Applied AI & Data Science Program – completed πŸ₯³

Six months, 12+ hours per week, from Math & Statistics to Generative AI: A look back at the MIT program that gave me a structured, end-to-end understanding of AI.

Finally done! πŸ₯³

I still remember my first in-depth conversation about AI and LLMs. I was curious about the academic foundations and the science behind them. A friend of mine, AI expert Bilel SAID, told me back then: β€œStart with Andrew Ng's articles.”

That conversation triggered something. I didn't just want to use AI – I wanted to truly understand it, from mathematics to Generative AI.

The Search for the Right Program

Initially, I considered starting a full-fledged Master's degree. I was looking for something:

  • Structured
  • Demanding
  • Comprehensive
  • With real depth

Most certifications I found were either too short, too expensive, or too specialized (only ML, only Prompt Engineering, only Agentic AI etc.). Nothing covered the complete picture.

Until I came across the MIT Applied Data Science Program:

  • 6+ months
  • At least 12 hours per week
  • Solid academic foundations
  • Practice-oriented focus
  • Reasonable investment

What We Learned

πŸ“Œ Mathematics

  • Statistics
  • Probability Theory

πŸ“Œ Data Science

  • Python (NumPy & Pandas)
  • Data Visualization
  • Data Analysis
  • Statistical Inference
  • Clustering
  • PCA

πŸ“Œ Machine Learning

  • Supervised Learning
  • Unsupervised Learning

πŸ“Œ Practical Data Science

  • Decision Trees
  • Random Forests (Bagging & Bootstrapping)
  • Time Series

πŸ“Œ Recommendation Systems

πŸ“Œ Deep Learning

  • ANN
  • CNN (Vision AI)

πŸ“Œ Generative AI

  • Transformer Architecture
  • RAG
  • RLHF
  • Prompt Engineering
  • Agentic AI

Hands-on Instead of Just Theory

Every topic was hands-on. We primarily worked with Google Colab, building and testing models directly β€” no heavy local setup, easy collaboration.

And we had to complete two major practical projects:

πŸ”Ή Midterm – Deep Learning (CNNs)

Built and compared several models for digit recognition in images.

πŸ”Ή Final Project – Generative AI & Prompt Engineering (Zero-shot, Few-shot, and Chain-of-Thought Prompting)

Using the OpenAI API:

  • respond to customer reviews
  • perform sentiment detection
  • generate retail insights

What I'm Taking Away

Today, I am proud to have completed the program. But more importantly:

I now have a structured, end-to-end understanding of AI, from mathematical foundations to real-world GenAI applications.

If you're considering a similar path or have questions about the program, feel free to reach out. You can find the link to the program here.


On to the next challenge πŸš€

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