Amazon Alexa For Shopping

Prompts

通过亚马逊前台的 Alexa 购物助手发起自然语言问答,获取与问题相关的导购回答、推荐商品分组、ASIN 列表,以及可继续追问的问题。支持在同一次调用中传入多条 prompts 模拟连续多轮对话,并可用 url 补充亚马逊页面上下文。当用户提到亚马逊 Alexa、Alexa 购物助手、亚马逊智能助手、AI 导购、对话式选品、自然语言购物、亚马逊聊天问答、Amazon Alexa shopping, conversational shopping, AI shopping assistant, follow-up questions、产品推荐对话、上下文追问等场景时触发此技能。即使用户未明确提及"Alexa",只要其需求是"在亚马逊前台用自然语言问出商品推荐 + 多轮追问",也应触发此技能。

Install

openclaw skills install linkfox-amazon-alexa-for-shopping

Amazon Alexa Shopping Assistant

This skill drives Amazon's storefront Alexa shopping assistant: pose a natural-language question and get an answer, a curated product list (with ASINs and links), and a set of follow-up questions Alexa is willing to continue with. Multiple prompts in a single call simulate a continuous multi-turn conversation, not independent searches.

Core Concepts

  1. Single conversation, ordered turns: prompts is an array — element 0 is the opening question, element 1 the first follow-up, element 2 the next follow-up, and so on. The tool sends them sequentially in one Alexa session and concatenates Alexa's answers in order.
  2. Cross-call context is not preserved: when a new tool call starts, it begins a brand-new Alexa session. To keep continuity across calls, summarize the previous answer + recommended ASINs yourself and embed them in the next prompts[0].
  3. Optional page context (url): pass an Amazon page URL only when you want the conversation anchored to a specific page (a category page, search results page, or product detail page). Do not pass a plain marketplace homepage URL like https://www.amazon.com/ — it adds no useful context. Omit url entirely when there is no specific page to anchor on.
  4. Two output formats:
    • markdown (default) — a single readable Markdown report containing the question, Alexa's answer, recommended product groups, and follow-up questions.
    • json — a structured array under data, where each entry carries prompt, content, products (grouped recommendations), followUpQuestions, and screenshot.

resultsNum is the number of conversation turns Alexa actually answered; if 0, Alexa did not produce a usable reply for the input.

Parameters

ParameterTypeRequiredDescriptionDefault
promptsstring[]YesConversation prompts. Each element is one turn in the same session, sent in order. Recommended ≤ 5 entries.-
formatstringNoResponse format: markdown returns a readable report; json returns a structured array.markdown
urlstringNoSpecific Amazon page URL (category, search results, or product detail) to anchor the conversation. Skip when there is no specific page; do not pass a plain homepage URL such as https://www.amazon.com/.-

Response Fields

FieldTypeDescription
stdoutstringMarkdown report when format=markdown: per-turn question, Alexa answer, recommended product groups, follow-up questions
dataarrayStructured turns when format=json. Each item has prompt, content, products[], followUpQuestions[], screenshot
resultsNumintegerNumber of answered turns (0 = Alexa did not respond)
code / errcodestring / integer200 on success; non-200 indicates a business error
msg / errmsgstringok on success; otherwise an error description
costTimeintegerAPI latency in milliseconds
costTokenintegerTokens consumed (only billed on success)
taskIdstringUpstream task identifier for tracing
typestringRender hint: stdoutWorkbenches for markdown, json for json

Structured data[*] shape (format=json)

FieldTypeDescription
promptstringThe question or follow-up sent for this turn
contentstringAlexa's natural-language answer
products[].titlestringGroup title (e.g. "Top picks", "Best for running")
products[].items[].asinstringProduct ASIN
products[].items[].titlestringProduct title
products[].items[].urlstringProduct detail page URL
products[].items[].coverstringProduct cover image URL
products[].items[].pricestringCurrent price string (with currency)
products[].items[].originalPricestringList price / strikethrough price
products[].items[].scorestringStar rating
products[].items[].ratingsCountstringReview count
products[].items[].describestringShort product blurb
followUpQuestionsstring[]Questions Alexa offers to continue with
screenshotstringScreenshot URL for this turn

API Usage

This skill calls the LinkFox tool gateway. See references/api.md for the calling convention, request/response shape, error codes, and a curl example. You can also run scripts/amazon_alexa_search.py directly to test it from the command line.

How to Build Queries

  1. Front-load the user's intent in prompts[0] — include marketplace cue ("on Amazon US"), use case, and any hard constraints (budget, key feature). Alexa weights the opening turn heavily.
  2. Order follow-ups by dependency — each turn reuses the prior turn's context. Put broad framing first, then ask Alexa to compare, narrow, or recommend specific picks.
  3. Keep prompts short — 1 to 5 turns is the sweet spot. Longer arrays inflate latency without proportional gain.
  4. Anchor with url only when there's a specific page — pass a category, search results, or product detail URL when the user is reasoning over that page. Skip url for general questions; do not pass a plain homepage like https://www.amazon.com/.
  5. For continuity across tool calls: write a one-paragraph summary of the previous answer (key recommendations + ASINs) and prepend it to the new prompts[0]. Don't assume Alexa remembers the prior call.
  6. Pick format deliberatelymarkdown is best for showing the user a polished answer; json is better when downstream code needs to extract ASINs, prices, or follow-up questions programmatically.

Usage Examples

1. Single-turn shopping question

{
  "prompts": ["best wireless earbuds for running on Amazon US under $100"]
}

2. Multi-turn conversation (compare + narrow)

{
  "prompts": [
    "best electric kettle on Amazon US",
    "compare the top two recommendations on noise level and boil time",
    "which one is better if I only boil water once a day"
  ]
}

3. Conversation anchored to a category page

{
  "prompts": [
    "What are the most popular picks on this page?",
    "Which of them have the best reviews for small kitchens?"
  ],
  "url": "https://www.amazon.com/s?k=electric+kettle"
}

4. Structured output for downstream extraction

{
  "prompts": ["best gift ideas for a 10-year-old who likes science"],
  "format": "json"
}

Display Rules

  1. Render the Markdown directly when format=markdown: stdout is already structured with turn headings, product cards, and follow-up questions — preserve that structure.
  2. Surface the recommended ASINs so the user can click through; show title, price, score/ratingsCount, and the product URL.
  3. Show the follow-up questions Alexa returned — they are usable prompts the user can pick to continue digging.
  4. Don't reroute to a data-analysis sandbox: the answer body is conversational and the recommended products are nested groups, not a flat tabular dataset suitable for SQL-like aggregation.
  5. Flag empty results: if resultsNum is 0 or data is empty, tell the user Alexa did not produce a usable reply and suggest rephrasing or anchoring with a url.
  6. Indicate freshness: results reflect Alexa's live answer at call time; mention this when the user asks about timing.
  7. Handle business errors: if code / errcode is not 200, surface msg / errmsg and suggest retrying with simpler prompts.

Important Limitations

  • Alexa-driven, not deterministic: same prompts can yield different answers across calls — Alexa's response varies with time, traffic, and context.
  • No cross-call memory: each tool call is a fresh Alexa session; the agent must recap prior context manually.
  • Recommended ≤ 5 prompts per call: longer arrays sharply increase latency.
  • Marketplace coverage: anchored on Amazon's storefront Alexa experience (primarily amazon.com); availability on non-US marketplaces depends on Alexa rollout.
  • Output mix: primary value is the conversational answer plus a curated handful of products; this is not a substitute for SERP-wide product extraction.

User Expression & Scenario Quick Reference

Applicable — natural-language conversational shopping on Amazon:

User SaysScenario
"用 Alexa 帮我推荐...", "亚马逊 Alexa 问下..."Direct Alexa Q&A
"在亚马逊上聊聊给我推荐 ...", "对话式选品"Conversational discovery
"顺便再追问一下 / 接着问 ..."Multi-turn follow-up
"在这个页面 / 这个分类下推荐...", "基于这个页面再问一下"Page-anchored conversation (use url)
"best XX for YY under $Z on Amazon"Goal + constraint + budget Q&A
"对比 Alexa 给的前两个推荐"Compare within Alexa's reply
"Alexa 还能继续问什么 / 给我一些追问思路"Surface follow-up questions

Not applicable — better routed elsewhere:

  • Pulling the full SERP for a keyword with positions, sponsored flags, etc. (use the storefront search-simulation skill).
  • Historical search-term analytics or volume trends (use the ABA data explorer).
  • Detailed product detail / A+ / bullets for a known ASIN (use the Amazon product detail skill).
  • Review-level sentiment analysis (use the Amazon reviews skill).
  • Image-based similar product discovery (use the image search skill).
  • Aggregated statistics over a flat product list (no structured table here).

Boundary judgment: when the user wants a conversation — "ask Amazon, get a recommendation, then keep asking" — this skill applies. If they want raw search-result rows, structured analytics, or a specific ASIN's data, route to the matching specialized skill instead.

Feedback:

Auto-detect and report feedback via the Feedback API when any of the following apply:

  1. The functionality or purpose described in this skill does not match actual behavior
  2. The skill's results do not match the user's intent
  3. The user expresses dissatisfaction or praise about this skill
  4. Anything you believe could be improved

Call the feedback API as specified in references/api.md. Do not interrupt the user's flow.


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