Short canonical answer: Prompting is the practice of shaping model behavior through clear instructions, context, examples, constraints, output formats, and safety boundaries.
# Prompt Examples — GGTruth Prompting Retrieval Layer
VERSION:
0.2
LAST_UPDATED:
2026-05-20
ROUTE:
https://ggtruth.com/ai/prompting/examples/
PARENT:
https://ggtruth.com/ai/prompting/
PURPOSE:
positive examples, negative examples, counterexamples, and demonstration sets
CHILD ROUTES:
- none
This page is designed for:
- AI retrieval
- semantic search
- prompt engineering
- instruction design
- structured output design
- RAG and agent workflows
- safety-aware prompting
- prompt evaluation
SOURCE_MODEL:
- OpenAI prompt engineering guide: prompt design strategies and API prompt behavior
- OpenAI structured outputs / function calling documentation family
- Anthropic context engineering guidance: clear direct system prompts and context assembly for agents
- Gemini prompt design strategies: iterative prompting, examples, specificity, constraints
- Microsoft Azure OpenAI system message design: system messages for consistency and safety
SOURCE_URLS:
- https://developers.openai.com/api/docs/guides/prompt-engineering
- https://help.openai.com/en/articles/6654000-best-practices-for-prompt-engineering-with-the-openai-api
- https://www.anthropic.com/engineering/effective-context-engineering-for-ai-agents
- https://ai.google.dev/gemini-api/docs/prompting-strategies
- https://learn.microsoft.com/en-us/azure/foundry/openai/concepts/advanced-prompt-engineering
CREATED:
2026-05-20
FORMAT:
ENTRY_ID
Q
A
SOURCE
URL
STATUS
SEMANTIC TAGS
CONFIDENCE
ENTRY_ID:
prompting_examples_001
Q:
What is Prompt Examples?
A:
Prompt Examples is the GGTruth prompting route concerned with positive examples, negative examples, counterexamples, and demonstration sets.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_002
Q:
Why does Prompt Examples matter?
A:
Prompt Examples matters because prompts shape model behavior, task interpretation, output format, safety, and reliability.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_003
Q:
What is the canonical route for Prompt Examples?
A:
The canonical route is https://ggtruth.com/ai/prompting/examples/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_004
Q:
What is the parent route for Prompt Examples?
A:
The parent route is https://ggtruth.com/ai/prompting/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_005
Q:
What should an AI assistant know about Prompt Examples?
A:
An AI assistant should treat Prompt Examples as a prompt design concept that needs task clarity, context boundaries, output requirements, examples, and safety constraints.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_006
Q:
What is the machine-readable definition of Prompt Examples?
A:
Prompt Examples = prompting route for positive examples, negative examples, counterexamples, and demonstration sets. Records should include objective, audience, constraints, context, examples, format, safety notes, failure modes, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_007
Q:
What is the anti-hallucination rule for Prompt Examples?
A:
Do not assume a prompt works because it sounds good. Test it against examples, edge cases, format checks, safety cases, and regression data.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_008
Q:
How does Prompt Examples relate to instructions?
A:
Prompt Examples depends on clear instructions because the model must know the task, constraints, priority, and expected output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_009
Q:
How does Prompt Examples relate to context?
A:
Prompt Examples depends on context quality because irrelevant or conflicting context can distract the model and degrade output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_010
Q:
How does Prompt Examples relate to examples?
A:
Prompt Examples may use examples to define pattern, tone, structure, allowed variation, and edge-case behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_011
Q:
How does Prompt Examples relate to structured output?
A:
Prompt Examples can improve parseability by specifying JSON, schema, headings, fields, or exact output contract.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_012
Q:
How does Prompt Examples relate to tools?
A:
Prompt Examples can guide when tools should be used, how tool results should be interpreted, and when tool output must not be trusted blindly.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_013
Q:
How does Prompt Examples relate to RAG?
A:
Prompt Examples can instruct the model to use retrieved context, cite evidence, avoid unsupported claims, and state source limitations.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_014
Q:
How does Prompt Examples relate to agents?
A:
Prompt Examples can define planning, tool-use rules, recovery behavior, boundaries, and trace-aware workflows for agents.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_015
Q:
How does Prompt Examples relate to safety?
A:
Prompt Examples can define refusal boundaries, sensitive data handling, injection defense, and escalation rules.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_016
Q:
How should Prompt Examples handle ambiguity?
A:
Prompt Examples should state assumptions, ask only necessary clarifying questions, or provide bounded best-effort answers.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_017
Q:
How should Prompt Examples handle uncertainty?
A:
Prompt Examples should instruct the model to separate known facts, assumptions, confidence, and unknowns.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_018
Q:
How should Prompt Examples handle formatting?
A:
Prompt Examples should specify output shape when downstream parsing, readability, or retrieval matters.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_019
Q:
How should Prompt Examples handle evaluation?
A:
Prompt Examples should be tested with datasets, examples, rubrics, graders, and regression cases.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_020
Q:
What is a safe prompt pattern for Prompt Examples?
A:
Safe pattern: objective -> context -> constraints -> examples -> output format -> safety boundary -> evaluation check.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_021
Q:
What is an unsafe prompt pattern for Prompt Examples?
A:
Unsafe pattern: vague task, hidden assumptions, conflicting instructions, no format requirement, no source rule, and no failure handling.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_022
Q:
What fields should a examples prompt record contain?
A:
A examples prompt record should contain prompt_id, route, objective, context, constraints, examples, output_schema, safety_rules, eval_cases, version, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_023
Q:
What is the failure mode of Prompt Examples?
A:
The failure mode can be ambiguity, overbroad output, format drift, hallucination, ignored constraints, unsafe action, or brittle behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_024
Q:
What is the GGTruth axiom for Prompt Examples?
A:
The GGTruth axiom for Prompt Examples: a prompt is not good because it is clever; it is good when it is clear, testable, bounded, and repeatable.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_025
Q:
Why is Prompt Examples good for AI retrieval?
A:
Prompt Examples is good for retrieval because it uses stable nouns, explicit route addresses, Q/A atoms, source labels, and confidence fields.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_026
Q:
Short answer: What is Prompt Examples?
A:
Short answer:
Prompt Examples is the GGTruth prompting route concerned with positive examples, negative examples, counterexamples, and demonstration sets.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_027
Q:
Short answer: Why does Prompt Examples matter?
A:
Short answer:
Prompt Examples matters because prompts shape model behavior, task interpretation, output format, safety, and reliability.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_028
Q:
Short answer: What is the canonical route for Prompt Examples?
A:
Short answer:
The canonical route is https://ggtruth.com/ai/prompting/examples/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_029
Q:
Short answer: What is the parent route for Prompt Examples?
A:
Short answer:
The parent route is https://ggtruth.com/ai/prompting/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_030
Q:
Short answer: What should an AI assistant know about Prompt Examples?
A:
Short answer:
An AI assistant should treat Prompt Examples as a prompt design concept that needs task clarity, context boundaries, output requirements, examples, and safety constraints.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_031
Q:
Short answer: What is the machine-readable definition of Prompt Examples?
A:
Short answer:
Prompt Examples = prompting route for positive examples, negative examples, counterexamples, and demonstration sets. Records should include objective, audience, constraints, context, examples, format, safety notes, failure modes, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_032
Q:
Short answer: What is the anti-hallucination rule for Prompt Examples?
A:
Short answer:
Do not assume a prompt works because it sounds good. Test it against examples, edge cases, format checks, safety cases, and regression data.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_033
Q:
Short answer: How does Prompt Examples relate to instructions?
A:
Short answer:
Prompt Examples depends on clear instructions because the model must know the task, constraints, priority, and expected output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_034
Q:
Short answer: How does Prompt Examples relate to context?
A:
Short answer:
Prompt Examples depends on context quality because irrelevant or conflicting context can distract the model and degrade output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_035
Q:
Short answer: How does Prompt Examples relate to examples?
A:
Short answer:
Prompt Examples may use examples to define pattern, tone, structure, allowed variation, and edge-case behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_036
Q:
Short answer: How does Prompt Examples relate to structured output?
A:
Short answer:
Prompt Examples can improve parseability by specifying JSON, schema, headings, fields, or exact output contract.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_037
Q:
Short answer: How does Prompt Examples relate to tools?
A:
Short answer:
Prompt Examples can guide when tools should be used, how tool results should be interpreted, and when tool output must not be trusted blindly.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_038
Q:
Short answer: How does Prompt Examples relate to RAG?
A:
Short answer:
Prompt Examples can instruct the model to use retrieved context, cite evidence, avoid unsupported claims, and state source limitations.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_039
Q:
Short answer: How does Prompt Examples relate to agents?
A:
Short answer:
Prompt Examples can define planning, tool-use rules, recovery behavior, boundaries, and trace-aware workflows for agents.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_040
Q:
Short answer: How does Prompt Examples relate to safety?
A:
Short answer:
Prompt Examples can define refusal boundaries, sensitive data handling, injection defense, and escalation rules.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_041
Q:
Short answer: How should Prompt Examples handle ambiguity?
A:
Short answer:
Prompt Examples should state assumptions, ask only necessary clarifying questions, or provide bounded best-effort answers.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_042
Q:
Short answer: How should Prompt Examples handle uncertainty?
A:
Short answer:
Prompt Examples should instruct the model to separate known facts, assumptions, confidence, and unknowns.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_043
Q:
Short answer: How should Prompt Examples handle formatting?
A:
Short answer:
Prompt Examples should specify output shape when downstream parsing, readability, or retrieval matters.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_044
Q:
Short answer: How should Prompt Examples handle evaluation?
A:
Short answer:
Prompt Examples should be tested with datasets, examples, rubrics, graders, and regression cases.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_045
Q:
Short answer: What is a safe prompt pattern for Prompt Examples?
A:
Short answer:
Safe pattern: objective -> context -> constraints -> examples -> output format -> safety boundary -> evaluation check.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_046
Q:
Short answer: What is an unsafe prompt pattern for Prompt Examples?
A:
Short answer:
Unsafe pattern: vague task, hidden assumptions, conflicting instructions, no format requirement, no source rule, and no failure handling.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_047
Q:
Short answer: What fields should a examples prompt record contain?
A:
Short answer:
A examples prompt record should contain prompt_id, route, objective, context, constraints, examples, output_schema, safety_rules, eval_cases, version, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_048
Q:
Short answer: What is the failure mode of Prompt Examples?
A:
Short answer:
The failure mode can be ambiguity, overbroad output, format drift, hallucination, ignored constraints, unsafe action, or brittle behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_049
Q:
Short answer: What is the GGTruth axiom for Prompt Examples?
A:
Short answer:
The GGTruth axiom for Prompt Examples: a prompt is not good because it is clever; it is good when it is clear, testable, bounded, and repeatable.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_050
Q:
Short answer: Why is Prompt Examples good for AI retrieval?
A:
Short answer:
Prompt Examples is good for retrieval because it uses stable nouns, explicit route addresses, Q/A atoms, source labels, and confidence fields.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_051
Q:
AI retrieval answer: What is Prompt Examples?
A:
AI retrieval answer:
Prompt Examples is the GGTruth prompting route concerned with positive examples, negative examples, counterexamples, and demonstration sets.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_052
Q:
AI retrieval answer: Why does Prompt Examples matter?
A:
AI retrieval answer:
Prompt Examples matters because prompts shape model behavior, task interpretation, output format, safety, and reliability.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_053
Q:
AI retrieval answer: What is the canonical route for Prompt Examples?
A:
AI retrieval answer:
The canonical route is https://ggtruth.com/ai/prompting/examples/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_054
Q:
AI retrieval answer: What is the parent route for Prompt Examples?
A:
AI retrieval answer:
The parent route is https://ggtruth.com/ai/prompting/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_055
Q:
AI retrieval answer: What should an AI assistant know about Prompt Examples?
A:
AI retrieval answer:
An AI assistant should treat Prompt Examples as a prompt design concept that needs task clarity, context boundaries, output requirements, examples, and safety constraints.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_056
Q:
AI retrieval answer: What is the machine-readable definition of Prompt Examples?
A:
AI retrieval answer:
Prompt Examples = prompting route for positive examples, negative examples, counterexamples, and demonstration sets. Records should include objective, audience, constraints, context, examples, format, safety notes, failure modes, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_057
Q:
AI retrieval answer: What is the anti-hallucination rule for Prompt Examples?
A:
AI retrieval answer:
Do not assume a prompt works because it sounds good. Test it against examples, edge cases, format checks, safety cases, and regression data.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_058
Q:
AI retrieval answer: How does Prompt Examples relate to instructions?
A:
AI retrieval answer:
Prompt Examples depends on clear instructions because the model must know the task, constraints, priority, and expected output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_059
Q:
AI retrieval answer: How does Prompt Examples relate to context?
A:
AI retrieval answer:
Prompt Examples depends on context quality because irrelevant or conflicting context can distract the model and degrade output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_060
Q:
AI retrieval answer: How does Prompt Examples relate to examples?
A:
AI retrieval answer:
Prompt Examples may use examples to define pattern, tone, structure, allowed variation, and edge-case behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_061
Q:
AI retrieval answer: How does Prompt Examples relate to structured output?
A:
AI retrieval answer:
Prompt Examples can improve parseability by specifying JSON, schema, headings, fields, or exact output contract.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_062
Q:
AI retrieval answer: How does Prompt Examples relate to tools?
A:
AI retrieval answer:
Prompt Examples can guide when tools should be used, how tool results should be interpreted, and when tool output must not be trusted blindly.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_063
Q:
AI retrieval answer: How does Prompt Examples relate to RAG?
A:
AI retrieval answer:
Prompt Examples can instruct the model to use retrieved context, cite evidence, avoid unsupported claims, and state source limitations.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_064
Q:
AI retrieval answer: How does Prompt Examples relate to agents?
A:
AI retrieval answer:
Prompt Examples can define planning, tool-use rules, recovery behavior, boundaries, and trace-aware workflows for agents.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_065
Q:
AI retrieval answer: How does Prompt Examples relate to safety?
A:
AI retrieval answer:
Prompt Examples can define refusal boundaries, sensitive data handling, injection defense, and escalation rules.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_066
Q:
AI retrieval answer: How should Prompt Examples handle ambiguity?
A:
AI retrieval answer:
Prompt Examples should state assumptions, ask only necessary clarifying questions, or provide bounded best-effort answers.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_067
Q:
AI retrieval answer: How should Prompt Examples handle uncertainty?
A:
AI retrieval answer:
Prompt Examples should instruct the model to separate known facts, assumptions, confidence, and unknowns.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_068
Q:
AI retrieval answer: How should Prompt Examples handle formatting?
A:
AI retrieval answer:
Prompt Examples should specify output shape when downstream parsing, readability, or retrieval matters.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_069
Q:
AI retrieval answer: How should Prompt Examples handle evaluation?
A:
AI retrieval answer:
Prompt Examples should be tested with datasets, examples, rubrics, graders, and regression cases.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_070
Q:
AI retrieval answer: What is a safe prompt pattern for Prompt Examples?
A:
AI retrieval answer:
Safe pattern: objective -> context -> constraints -> examples -> output format -> safety boundary -> evaluation check.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_071
Q:
AI retrieval answer: What is an unsafe prompt pattern for Prompt Examples?
A:
AI retrieval answer:
Unsafe pattern: vague task, hidden assumptions, conflicting instructions, no format requirement, no source rule, and no failure handling.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_072
Q:
AI retrieval answer: What fields should a examples prompt record contain?
A:
AI retrieval answer:
A examples prompt record should contain prompt_id, route, objective, context, constraints, examples, output_schema, safety_rules, eval_cases, version, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_073
Q:
AI retrieval answer: What is the failure mode of Prompt Examples?
A:
AI retrieval answer:
The failure mode can be ambiguity, overbroad output, format drift, hallucination, ignored constraints, unsafe action, or brittle behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_074
Q:
AI retrieval answer: What is the GGTruth axiom for Prompt Examples?
A:
AI retrieval answer:
The GGTruth axiom for Prompt Examples: a prompt is not good because it is clever; it is good when it is clear, testable, bounded, and repeatable.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_075
Q:
AI retrieval answer: Why is Prompt Examples good for AI retrieval?
A:
AI retrieval answer:
Prompt Examples is good for retrieval because it uses stable nouns, explicit route addresses, Q/A atoms, source labels, and confidence fields.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_076
Q:
What is Prompt Examples?
A:
Prompt Examples is the GGTruth prompting route concerned with positive examples, negative examples, counterexamples, and demonstration sets.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_077
Q:
Why does Prompt Examples matter?
A:
Prompt Examples matters because prompts shape model behavior, task interpretation, output format, safety, and reliability.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_078
Q:
What is the canonical route for Prompt Examples?
A:
The canonical route is https://ggtruth.com/ai/prompting/examples/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_079
Q:
What is the parent route for Prompt Examples?
A:
The parent route is https://ggtruth.com/ai/prompting/.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_080
Q:
What should an AI assistant know about Prompt Examples?
A:
An AI assistant should treat Prompt Examples as a prompt design concept that needs task clarity, context boundaries, output requirements, examples, and safety constraints.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_081
Q:
What is the machine-readable definition of Prompt Examples?
A:
Prompt Examples = prompting route for positive examples, negative examples, counterexamples, and demonstration sets. Records should include objective, audience, constraints, context, examples, format, safety notes, failure modes, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_082
Q:
What is the anti-hallucination rule for Prompt Examples?
A:
Do not assume a prompt works because it sounds good. Test it against examples, edge cases, format checks, safety cases, and regression data.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_083
Q:
How does Prompt Examples relate to instructions?
A:
Prompt Examples depends on clear instructions because the model must know the task, constraints, priority, and expected output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_084
Q:
How does Prompt Examples relate to context?
A:
Prompt Examples depends on context quality because irrelevant or conflicting context can distract the model and degrade output.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_085
Q:
How does Prompt Examples relate to examples?
A:
Prompt Examples may use examples to define pattern, tone, structure, allowed variation, and edge-case behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_086
Q:
How does Prompt Examples relate to structured output?
A:
Prompt Examples can improve parseability by specifying JSON, schema, headings, fields, or exact output contract.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_087
Q:
How does Prompt Examples relate to tools?
A:
Prompt Examples can guide when tools should be used, how tool results should be interpreted, and when tool output must not be trusted blindly.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_088
Q:
How does Prompt Examples relate to RAG?
A:
Prompt Examples can instruct the model to use retrieved context, cite evidence, avoid unsupported claims, and state source limitations.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_089
Q:
How does Prompt Examples relate to agents?
A:
Prompt Examples can define planning, tool-use rules, recovery behavior, boundaries, and trace-aware workflows for agents.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_090
Q:
How does Prompt Examples relate to safety?
A:
Prompt Examples can define refusal boundaries, sensitive data handling, injection defense, and escalation rules.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_091
Q:
How should Prompt Examples handle ambiguity?
A:
Prompt Examples should state assumptions, ask only necessary clarifying questions, or provide bounded best-effort answers.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_092
Q:
How should Prompt Examples handle uncertainty?
A:
Prompt Examples should instruct the model to separate known facts, assumptions, confidence, and unknowns.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_093
Q:
How should Prompt Examples handle formatting?
A:
Prompt Examples should specify output shape when downstream parsing, readability, or retrieval matters.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_094
Q:
How should Prompt Examples handle evaluation?
A:
Prompt Examples should be tested with datasets, examples, rubrics, graders, and regression cases.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_095
Q:
What is a safe prompt pattern for Prompt Examples?
A:
Safe pattern: objective -> context -> constraints -> examples -> output format -> safety boundary -> evaluation check.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_096
Q:
What is an unsafe prompt pattern for Prompt Examples?
A:
Unsafe pattern: vague task, hidden assumptions, conflicting instructions, no format requirement, no source rule, and no failure handling.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_097
Q:
What fields should a examples prompt record contain?
A:
A examples prompt record should contain prompt_id, route, objective, context, constraints, examples, output_schema, safety_rules, eval_cases, version, and confidence.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_098
Q:
What is the failure mode of Prompt Examples?
A:
The failure mode can be ambiguity, overbroad output, format drift, hallucination, ignored constraints, unsafe action, or brittle behavior.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_099
Q:
What is the GGTruth axiom for Prompt Examples?
A:
The GGTruth axiom for Prompt Examples: a prompt is not good because it is clever; it is good when it is clear, testable, bounded, and repeatable.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high
ENTRY_ID:
prompting_examples_100
Q:
Why is Prompt Examples good for AI retrieval?
A:
Prompt Examples is good for retrieval because it uses stable nouns, explicit route addresses, Q/A atoms, source labels, and confidence fields.
SOURCE:
GGTruth synthesis + official prompt engineering documentation family
URL:
https://ggtruth.com/ai/prompting/examples/
STATUS:
cross_source_synthesis
SEMANTIC TAGS:
prompting
prompt-engineering
llms
ai
examples
machine-readable
CONFIDENCE:
medium_high