HOW TO CRAFT TRULY EFFECTIVE AI PROMPTS


you ask an LLM to for a high-quality report
and get back text written with expert-level confidence
but packed with total BS
familiar?
so, to avoid situations like this, you need to understand
these basic points:
> the “smart but unreliable” assistant problem
LLM output is 20% the model, 80% how you structure the prompt
prompt engineering - just hardcore natural language computing control
so, to get quality output, you need to stop chatting with the model and start programming it
> AI hallucinations - indicator of insufficient instructions
to ensure grounding, use these techniques:
- set your clear expectations
- constrain the output (setting strict boundaries)
- ask it to verify/check itself (self fact-checking)
> frameworks - “blueprints” for the AI
top 3:
- RACE (Role, Action, Context, Expectation)
fast, simple, great for daily use
- STOKE (Situation, Task, Objective, Knowledge, Examples)
for deep work and niche domains
- CRISPE (Capacity, Insight, Statement, Personality, Experiment)
creativity, hypothesis testing, and style control
LLMs get such structures way better
so the output ends up much closer to what you actually want
don't complicate your AI usage with pointless re-prompts
master the basics and get quality, desired outputs from LLMs
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