| name | exa-answer |
| description | Generate answers to questions with structured output using AI search and synthesis. Use when you need factual answers with citations from web sources, or when you want to extract specific structured information in response to a query. |
Exa Answer
Token-efficient strategies for generating answers with structured output using exa-ai.
Use --help to see available commands and verify usage before running:
exa-ai <command> --help
Critical Requirements
MUST follow these rules when using exa-ai answer:
Shared Requirements
This skill inherits requirements from Common Requirements:
- Schema design patterns → All schema operations
- Output format selection → All output operations
MUST NOT Rules
- Avoid --text flag: Use
--textonly when you need full source text; otherwise rely on default behavior for better token efficiency
Cost Optimization
Pricing
- Per answer: $0.005
Cost strategy:
- Use
answerfor questions with moderate complexity that need AI synthesis - For simple lookups, use
searchinstead (same cost but gives you URLs for verification) - Consider whether you need a synthesized answer or just search results
Token Optimization
Apply these strategies:
- Use toon format:
--output-format toonfor 40% fewer tokens than JSON (use when reading output directly) - Use JSON + jq: Extract only needed fields with jq (use when piping/processing output)
- Use schemas: Structure answers with
--output-schemafor consistent, parseable output - Custom system prompts: Use
--system-promptto guide answer style and format
IMPORTANT: Choose one approach, don't mix them:
- Approach 1: toon only - Compact YAML-like output for direct reading
- Approach 2: JSON + jq - Extract specific fields programmatically
- Approach 3: Schemas + jq - Get structured data, always use JSON output (default) and pipe to jq
Examples:
# ❌ High token usage
exa-ai answer "What is Claude?"
# ✅ Approach 1: toon format for direct reading (40% reduction)
exa-ai answer "What is Claude?" --output-format toon
# ✅ Approach 2: JSON + jq for field extraction (80% reduction)
exa-ai answer "What is Claude?" \
--output-schema '{"type":"object","properties":{"product":{"type":"string"}}}' | jq -r '.answer.product'
# ❌ Don't mix toon with jq (toon is YAML-like, not JSON)
exa-ai answer "What is Claude?" --output-format toon | jq -r '.answer'
Quick Start
Basic Answer
exa-ai answer "What is Anthropic's main product?" --output-format toon
Structured Output
exa-ai answer "What is Claude?" \
--output-schema '{"type":"object","properties":{"product_name":{"type":"string"},"company":{"type":"string"},"description":{"type":"string"}}}'
Array Output for Lists
exa-ai answer "What are the top 5 programming languages in 2024?" \
--output-schema '{"type":"object","properties":{"languages":{"type":"array","items":{"type":"string"}}}}' | jq -r '.answer.languages | map("- " + .) | join("\n")'
Custom System Prompt
exa-ai answer "Explain quantum computing" \
--system-prompt "Respond in simple terms suitable for a high school student"
Detailed Reference
For complete options, examples, and schema design tips, consult REFERENCE.md.
Shared Requirements
Schema Design
MUST: Use object wrapper for schemas
Applies to: answer, search, find-similar, get-contents
When using schema parameters (--output-schema or --summary-schema), always wrap properties in an object:
{"type":"object","properties":{"field_name":{"type":"string"}}}
DO NOT use bare properties without the object wrapper:
{"properties":{"field_name":{"type":"string"}}} // ❌ Missing "type":"object"
Why: The Exa API requires a valid JSON Schema with an object type at the root level. Omitting this causes validation errors.
Examples:
# ✅ CORRECT - object wrapper included
exa-ai search "AI news" \
--summary-schema '{"type":"object","properties":{"headline":{"type":"string"}}}'
# ❌ WRONG - missing object wrapper
exa-ai search "AI news" \
--summary-schema '{"properties":{"headline":{"type":"string"}}}'
Output Format Selection
MUST NOT: Mix toon format with jq
Applies to: answer, context, search, find-similar, get-contents
toon format produces YAML-like output, not JSON. DO NOT pipe toon output to jq for parsing:
# ❌ WRONG - toon is not JSON
exa-ai search "query" --output-format toon | jq -r '.results'
# ✅ CORRECT - use JSON (default) with jq
exa-ai search "query" | jq -r '.results[].title'
# ✅ CORRECT - use toon for direct reading only
exa-ai search "query" --output-format toon
Why: jq expects valid JSON input. toon format is designed for human readability and produces YAML-like output that jq cannot parse.
SHOULD: Choose one output approach
Applies to: answer, context, search, find-similar, get-contents
Pick one strategy and stick with it throughout your workflow:
Approach 1: toon only - Compact YAML-like output for direct reading
- Use when: Reading output directly, no further processing needed
- Token savings: ~40% reduction vs JSON
- Example:
exa-ai search "query" --output-format toon
Approach 2: JSON + jq - Extract specific fields programmatically
- Use when: Need to extract specific fields or pipe to other commands
- Token savings: ~80-90% reduction (extracts only needed fields)
- Example:
exa-ai search "query" | jq -r '.results[].title'
Approach 3: Schemas + jq - Structured data extraction with validation
- Use when: Need consistent structured output across multiple queries
- Token savings: ~85% reduction + consistent schema
- Example:
exa-ai search "query" --summary-schema '{...}' | jq -r '.results[].summary | fromjson'
Why: Mixing approaches increases complexity and token usage. Choosing one approach optimizes for your use case.
Shell Command Best Practices
MUST: Run commands directly, parse separately
Applies to: monitor, search (websets), research, and all skills using complex commands
When using the Bash tool with complex shell syntax, run commands directly and parse output in separate steps:
# ❌ WRONG - nested command substitution
webset_id=$(exa-ai webset-create --search '{"query":"..."}' | jq -r '.webset_id')
# ✅ CORRECT - run directly, then parse
exa-ai webset-create --search '{"query":"..."}'
# Then in a follow-up command:
webset_id=$(cat output.json | jq -r '.webset_id')
Why: Complex nested $(...) command substitutions can fail unpredictably in shell environments. Running commands directly and parsing separately improves reliability and makes debugging easier.
MUST NOT: Use nested command substitutions
Applies to: All skills when using complex multi-step operations
Avoid nesting multiple levels of command substitution:
# ❌ WRONG - deeply nested
result=$(exa-ai search "$(cat query.txt | tr '\n' ' ')" --num-results $(cat config.json | jq -r '.count'))
# ✅ CORRECT - sequential steps
query=$(cat query.txt | tr '\n' ' ')
count=$(cat config.json | jq -r '.count')
exa-ai search "$query" --num-results $count
Why: Nested command substitutions are fragile and hard to debug when they fail. Sequential steps make each operation explicit and easier to troubleshoot.
SHOULD: Break complex commands into sequential steps
Applies to: All skills when working with multi-step workflows
For readability and reliability, break complex operations into clear sequential steps:
# ❌ Less maintainable - everything in one line
exa-ai webset-create --search '{"query":"startups","count":1}' | jq -r '.webset_id' | xargs -I {} exa-ai webset-search-create {} --query "AI" --behavior override
# ✅ More maintainable - clear steps
exa-ai webset-create --search '{"query":"startups","count":1}'
webset_id=$(jq -r '.webset_id' < output.json)
exa-ai webset-search-create $webset_id --query "AI" --behavior override
Why: Sequential steps are easier to understand, debug, and modify. Each step can be verified independently.