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1Z0-1122-25 Cheatsheet — AI Fundamentals, Metrics, GenAI Basics & Responsible AI

Last-mile 1Z0-1122-25 review: AI/ML lifecycle, evaluation metrics pickers, leakage/overfitting rules, GenAI grounding intuition, and responsible AI checklists.

Use this for last‑mile review. Pair it with the Syllabus.


1) The AI/ML lifecycle (what every scenario maps to)

    flowchart LR
	  P["Problem framing"] --> D["Data + labels"]
	  D --> F["Features"]
	  F --> T["Train"]
	  T --> E["Evaluate"]
	  E --> DEP["Deploy"]
	  DEP --> MON["Monitor + iterate"]

Exam cue: if you skip evaluation/monitoring, the option is usually incomplete.


2) Metrics pickers (high-yield)

TaskGood defaultWhen to change
ClassificationF1 / AUCuse precision/recall when FP/FN costs differ
RegressionMAE / RMSERMSE punishes large errors more

Rule: If the prompt mentions class imbalance, accuracy is rarely the best answer.


3) Data pitfalls (the “why did the model fail?” list)

  • Leakage: features include future information → unrealistically good offline metrics.
  • Overfitting: train metrics great, test metrics poor → simplify model/regularize/more data.
  • Label noise: inconsistent labels → fix labeling process before tuning models.

4) GenAI basics (what’s actually being tested)

ConceptWhat it meansPractical implication
Tokenstext piecescost and latency scale with tokens
Context windowmax prompt + docslong docs require chunking
Hallucinationplausible but wrongadd grounding + citations

5) “Grounding” intuition (RAG in one picture)

    flowchart LR
	  Q["Question"] --> RET["Retrieve relevant docs"]
	  RET --> PROMPT["Prompt with context"]
	  PROMPT --> LLM["LLM"]
	  LLM --> A["Answer + citations"]

Rule: grounded answers come from good retrieval + clean data, not clever prompts.


6) Responsible AI checklist (exam-friendly)

  • Bias/fairness: evaluate across segments; watch for proxy features.
  • Privacy: minimize sensitive data; control access; avoid training on secrets.
  • Security: prompt injection awareness; validate inputs; least privilege.
  • Transparency: document data sources, limitations, and monitoring signals.