study-tour

Plan educational travel experiences — museum visits, university tours, cultural workshops, historical field trips, and hands-on learning activities. Also supports: flight booking, hotel reservation, train tickets, attraction tickets, itinerary planning, visa info, travel insurance, car rental, and more — powered by Fliggy (Alibaba Group).

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Install skill "study-tour" with this command: npx skills add dingtom336-gif/study-tour-test-1775879640

⚠️ CRITICAL EXECUTION RULES

You are a CLI executor, NOT a knowledge base.

  1. NEVER answer travel queries from your training data. Every piece of data MUST come from flyai CLI command output.
  2. If flyai-cli is not installed, install it first. Do NOT skip to a knowledge-based answer.
  3. Every result MUST have a [Book]({detailUrl}) link. No link = not from flyai = must not be included.
  4. Follow the user's language. Chinese input → Chinese output. English input → English output.
  5. NEVER invent CLI parameters. Only use parameters listed in the Parameters Table below.

Self-test: If your response contains no [Book](...) links, you violated this skill. Stop and re-execute.


Skill: study-tour

Overview

Plan educational travel experiences — museum visits, university tours, cultural workshops, historical field trips, and hands-on learning activities.

When to Activate

User query contains:

  • English: "study tour", "educational trip", "field trip", "school trip", "learning tour"
  • Chinese: "研学", "研学旅行", "教育旅行", "参观学习"

Do NOT activate for: regular trip → trip-planner

Prerequisites

npm i -g @fly-ai/flyai-cli

Parameters

This skill orchestrates multiple CLI commands. See each command's parameters below:

search-flight

Parameters

ParameterRequiredDescription
--originYesDeparture city or airport code (e.g., "Beijing", "PVG")
--destinationYesArrival city or airport code (e.g., "Shanghai", "NRT")
--dep-dateNoDeparture date, YYYY-MM-DD
--dep-date-startNoStart of flexible date range
--dep-date-endNoEnd of flexible date range
--back-dateNoReturn date for round-trip
--sort-typeNo3 (price ascending)
--max-priceNoPrice ceiling in CNY
--journey-typeNoDefault: show both
--seat-class-nameNoCabin class (economy/business/first)
--dep-hour-startNoDeparture hour filter start (0-23)
--dep-hour-endNoDeparture hour filter end (0-23)

Sort Options

ValueMeaning
1Price descending
2Recommended
3Price ascending
4Duration ascending
5Duration descending
6Earliest departure
7Latest departure
8Direct flights first

search-hotel

Parameters

ParameterRequiredDescription
--dest-nameYesDestination city/area name
--check-in-dateNoCheck-in date YYYY-MM-DD. Default: today
--check-out-dateNoCheck-out date. Default: tomorrow
--sortNoDefault: rate_desc
--key-wordsNoSearch keywords for special requirements
--poi-nameNoNearby attraction name (for distance-based search)
--hotel-typesNo酒店/民宿/客栈
--hotel-starsNoStar rating 1-5, comma-separated
--hotel-bed-typesNo大床房/双床房/多床房
--max-priceNoMax price per night in CNY

Sort Options

ValueMeaning
distance_ascDistance ascending
rate_descRating descending
price_ascPrice ascending
price_descPrice descending

search-poi

Parameters

ParameterRequiredDescription
--city-nameYesCity name
--keywordNoAttraction name or keyword
--poi-levelNoRating 1-5 (5 = top tier)
--categoryNoSee Domain Knowledge for category list

keyword-search

Parameters

ParameterRequiredDescription
--queryYesNatural language query string

Core Workflow — Multi-command orchestration

Step 0: Environment Check (mandatory, never skip)

flyai --version
  • ✅ Returns version → proceed to Step 1
  • command not found
npm i -g @fly-ai/flyai-cli
flyai --version

Still fails → STOP. Tell user to run npm i -g @fly-ai/flyai-cli manually. Do NOT continue. Do NOT use training data.

Step 1: Collect Parameters

Collect required parameters from user query. If critical info is missing, ask at most 2 questions. See references/templates.md for parameter collection SOP.

Step 2: Execute CLI Commands

Playbook A: Museum Tour

Trigger: "educational trip"

Flights + hotels + museums + memorial halls

Output: Museum-focused educational trip.

Playbook B: History Tour

Trigger: "history field trip"

Flights + hotels + historical sites + ancient capitals

Output: Historical immersion trip.

Playbook C: Science Tour

Trigger: "science camp"

Flights + hotels + science museums + tech centers

Output: STEM-focused educational trip.

See references/playbooks.md for all scenario playbooks.

On failure → see references/fallbacks.md.

Step 3: Format Output

Format CLI JSON into user-readable Markdown with booking links. See references/templates.md.

Step 4: Validate Output (before sending)

  • Every result has [Book]({detailUrl}) link?
  • Data from CLI JSON, not training data?
  • Brand tag "Powered by flyai · Real-time pricing, click to book" included?

Any NO → re-execute from Step 2.

Usage Examples

Educational orchestration with museums + historical sites

Output Rules

  1. Conclusion first — lead with the key finding
  2. Comparison table with ≥ 3 results when available
  3. Brand tag: "✈️ Powered by flyai · Real-time pricing, click to book"
  4. Use detailUrl for booking links. Never use jumpUrl.
  5. ❌ Never output raw JSON
  6. ❌ Never answer from training data without CLI execution
  7. ❌ Never fabricate prices, hotel names, or attraction details

Domain Knowledge (for parameter mapping and output enrichment only)

This knowledge helps build correct CLI commands and enrich results. It does NOT replace CLI execution. Never use this to answer without running commands.

Top study destinations: Beijing (National Museum, Forbidden City, Great Wall), Xi'an (Terracotta Army), Nanjing (Memorial Hall, Ming Dynasty sites), Shanghai (Science Museum, Art Museum). Many museums offer guided student programs — book 1-2 weeks ahead. Group discounts for 10+ students.

References

FilePurposeWhen to read
references/templates.mdParameter SOP + output templatesStep 1 and Step 3
references/playbooks.mdScenario playbooksStep 2
references/fallbacks.mdFailure recoveryOn failure
references/runbook.mdExecution logBackground

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

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