Prompt library design
Build buyer-intent, comparison, category, alternative, trust, pricing, use-case and reputation prompts with clear grouping.
AI Engine Testing
The Enough Agency tests how ChatGPT, Gemini, Perplexity, Claude, Copilot and Google AI Overviews answer your priority prompts — across large prompt libraries, competitor questions, citation checks, prompt versions, repeated samples, answer variance, model differences and optimization cycles.
Bring your brand, competitors, buyer questions, category prompts, current AI answer examples and the engines that matter. We define the prompt library, sampling plan and reporting cadence on the strategy call.
Why Testing Beats Guessing
One prompt typed once into one model can make a brand look stronger or weaker than it really is. Results shift by engine, wording, source selection, geography, model update and sampling moment.
The Enough Agency builds prompt testing systems that treat AI answers as distributions. We test fixed prompt sets across models, compare competitors, inspect citations, preserve prompt versions and report what changed so teams can improve the next answer instead of debating anecdotes.
Testing Layers
Build buyer-intent, comparison, category, alternative, trust, pricing, use-case and reputation prompts with clear grouping.
Run the same prompt set across ChatGPT, Gemini, Perplexity, Claude, Copilot and AI Overviews to expose model differences.
Rerun prompts on a cadence, record averages, outliers and volatility, and separate real movement from model noise.
Track when competitors appear, where they are positioned, why they are recommended and which prompts displace the brand.
Document cited domains, source types, owned pages, reviews, forums and authority signals that appear to influence answers.
Use test findings to prioritize pages, answer blocks, entity signals, schema, third-party citations and messaging updates.
Testing Method
Define prompts by intent, product, competitor, market, answer type, citation need and business priority.
Test the prompt library across engines and record answer presence, position, sentiment, citations, competitors and hallucinations.
Repeat samples, compare prior runs, inspect variance and identify which engines or prompt groups moved.
Turn findings into content, source, schema, entity and messaging fixes, then re-test to confirm answer movement.
Testing Outputs
The Enough Agency documents prompt groups, wording variants, intent labels, competitor sets, version history and why each prompt is tracked.
Reports show prompt-by-prompt results across ChatGPT, Gemini, Perplexity, Claude, Copilot and AI Overviews, instead of blending engines into one score.
Each run records owned pages, third-party sources, reviews, forums, articles and missing citation triggers that influence the answer.
Identify prompts where competitors appear first, appear more often, win recommendation language or occupy sources the brand should earn.
Repeated samples separate stable patterns from noisy changes, showing prompt sensitivity, answer consistency and model drift over time.
Outputs prioritize what to publish, rewrite, structure, cite, clarify or validate before the next test cycle.