AI Basics Series (11 parts)

AI Basics Series (11 parts)

AI fundamentals for both general users and developer beginners


Prerequisites
Next seriesML Foundations Study Series (9 parts)

All parts

1LLM Fundamentals 2026 — Tokens, Context Windows, and Hallucination Done Right
The three things you should know before opening ChatGPT, Claude, or Gemini
2AI Subscriptions in 2026 — Who Should Pay for ChatGPT, Claude, or Gemini
Free / $20 / $100 / $200 / $250 — the five pricing tiers and a clean decision framework
3Prompt Engineering 101 (2026) — Five Patterns for Asking Better Questions
Distilled from Anthropic and OpenAI's official guides, with copy-paste templates anyone…
4Advanced Prompting (2026) — Roles, Examples, and Chaining in Practice
The 4-block role formula, four chaining patterns, and a working self-critique loop
5AI Research Tools 2026 — NotebookLM and Perplexity Done Right
Deep-dive your own files vs. live web search — and the workflow that connects them
6AI Image Generation 2026 — Nano Banana 2 vs Midjourney v7 vs GPT Image 1.5
Which tool is best at what, what each costs, and what to actually pay for
7AI Image Prompting 2026 — The 8-Element Formula and How Each Tool Differs
Subject · Scene · Camera · Lighting · Style — one structure that works across Nano Banan…
8AI Audio & Video 2026 — Suno · Runway Gen-4 · Sora 2 Compared
Suno owns music. Runway owns editing and consistency. Sora 2 owns cinematic with synced…
9AI Automation 2026 — n8n + AI Nodes, Three Workflow Recipes
Compared with Zapier and Make, self-hosting options, OpenAI/Claude wiring, and three cop…
10n8n in Practice 2026 — Wiring Up Discord, Notion, and Gmail
From OAuth setup to your first three working workflows, step by step
11Local LLMs 2026 — Ollama vs LM Studio, and What Actually Runs on Your Machine
Install to model selection, with picks for 8 GB / 16 GB / 24 GB / 64 GB systems on Mac a…

Recommended pace

Each part takes 25–40 minutes on average. One to three parts per week is the sweet spot for retention.

댓글

이 블로그의 인기 게시물

Agent Memory Engine (2/10) — Building an AI Agent Memory System with SQLite Alone

"ML Foundations (9/9) — PyTorch vs TensorFlow, and the Road to Local LLMs"

"RAG Core Study (14/26) — Evaluation Sets with RAGAS & DeepEval"

"ML Foundations (8/9) — Deep Learning Architectures: CNN, RNN, Attention"

"ML Foundations (7/9) — Deep Learning Training: Optimizers, Regularization, Initialization"

OpenClaw to Hermes Migration (2/13) — What to Preserve, Partially Port, or Discard

AI Agents I Built (5/7) — Building an Automated Blogger API Publishing System