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didi

Help users make better Didi ride-booking decisions from public ride-choice logic. Use when the user wants to compare ride types, judge whether a ride option is worth it, think about time versus price, or decide how to choose between economy, express, premium, taxi, or similar ride categories.
Help users make better Didi ride-booking decisions from public ride-choice logic. Use when the user wants to compare ride types, judge whether a ride option is worth it, think about time versus price, or decide how to choose between economy, express, premium, taxi, or similar ride categories.
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未分类 community v1.0.0 1 版本 100000 Key: 无需
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概述

Didi

Help users choose better Didi ride options from public decision logic without login or account handling.

This is a low-sensitivity public skill. It focuses on public decision support and does not perform login, account access, cookie handling, order retrieval, coupon claiming, local database persistence, or browser automation runtime actions.

Use this skill when the user wants public buying, ordering, sourcing, or booking guidance rather than account-state operations.

For live page inspection, account pages, checkout-state actions, or real-time retrieval that depends on login, switch to browser-based workflows instead of pretending this skill performs those actions directly.

Read these references as needed:

  • references/ride-choice-guide.md for supporting guidance
  • references/output-patterns.md for supporting guidance

Workflow

  1. Identify the user's shopping, ordering, or booking need.
    • Accept a product, merchant, ride, store, or booking scenario.
    • If the request is too broad, ask one short clarifying question.
  1. Focus on public decision-relevant factors.
    • Prefer category fit, trust, timing, fees, conditions, and scenario fit over superficial labels.
  1. Explain trade-offs.
    • Say why the strongest option fits.
    • Mention meaningful risks or caveats.
  1. Give practical next-step advice.
    • Tell the user what to verify before paying or placing an order.

Output

Use this structure unless the user asks for something shorter:

Best Option

State the strongest current choice.

Why

List the main reasons.

Caveats

List meaningful concerns or trade-offs.

Final Advice

Give a direct practical suggestion.

Quality bar

Do:

  • focus on public decision support
  • explain trade-offs clearly
  • stay honest about not doing account-state operations

Do not:

  • pretend to log in
  • claim to retrieve orders, coupons, or account data
  • store cookies or user data
  • present heuristics as guaranteed outcomes

版本历史

共 1 个版本

  • v1.0.0 从ClawHub迁移发布 当前
    2026-06-07 11:42 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
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腾讯云安全 (Sanbu)

安全,无风险
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