Data Science & Applied AI: The Complete 14-Week Self-Paced Program: From Python Foundations to Building LLM-Powered Applications - Brossura

Yates, Norman

 
9798198199460: Data Science & Applied AI: The Complete 14-Week Self-Paced Program: From Python Foundations to Building LLM-Powered Applications

Sinossi

Are you serious about breaking into data science or AI — but tired of scattered tutorials, half-finished courses, and "learn Python in 24 hours" promises?

This book gives you something different: a complete, structured, 14-week university-level curriculum — from Python fundamentals to building and deploying LLM-powered AI applications — without a $60,000 master's program.

Modeled on graduate-level coursework. Designed for self-directed learners.

Every week is structured like a university class:

  • Clear learning objectives (what you will actually be able to do)
  • Curated readings from leading textbooks and free online resources
  • A real, graded-style assignment that produces a portfolio artifact
  • The tools and libraries professionals use on the job

No filler. No hand-holding. Just the program.

WHAT YOU WILL COVER:

Phase 1 — Foundations (Weeks 1–3): Python, NumPy, mathematics for ML (linear algebra, calculus, probability), and exploratory data analysis with Pandas.

Phase 2 — Data Engineering and Visualization (Weeks 4–5): SQL through window functions, ETL pipeline design, data cleaning, and interactive dashboards with Plotly and Streamlit.

Phase 3 — Machine Learning (Weeks 6–9): Supervised learning, feature engineering, model interpretation with SHAP, clustering, and dimensionality reduction.

Phase 4 — Deep Learning (Weeks 10–11): Neural networks from scratch, backpropagation, PyTorch, CNNs, RNNs, and transfer learning.

Phase 5 — Applied AI (Weeks 12–13): How LLMs work, prompt engineering, retrieval-augmented generation (RAG), agentic AI, and production AI applications.

Phase 6 — Capstone (Week 14): A GitHub repository, technical research report, live deployed demo, and recorded presentation.

WHO THIS IS FOR:

  • Career changers wanting a structured path into data science or AI
  • Software engineers moving into ML and AI roles
  • Analysts who want to go deeper into modeling and AI
  • Recent graduates wanting a rigorous supplement to their degree
  • Self-taught programmers tired of jumping between resources

Prerequisites: Basic programming experience, high school algebra, willingness to do the work. No prior data science knowledge required.

BY THE END OF WEEK 14, YOU WILL:

  • Build and deploy production-ready ML models end-to-end
  • Design and fine-tune deep learning architectures
  • Build LLM-powered applications with RAG, agents, and tool use
  • Communicate findings through professional data visualizations
  • Present a complete capstone portfolio project to a technical audience

Stop collecting courses. Start finishing one.

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