Ehunt Shopify Product Query

Other

通过 EHunt Shopify 商品查询(网关路由 `ehunt/shopify/productQuery`)按多维度筛选独立站 Shopify 商品(关键词/URL、价格、周销量、上架时间、Facebook 广告、竞争度、是否有货源、发货国家等)。当用户提到 EHunt Shopify 商品、Shopify 选品、独立站选品、Shopify 爆款、Shopify dropshipping、独立站铺货、Facebook 广告商品、Shopify product query、shopify items 时触发。即使用户未写 EHunt,只要在 Shopify 独立站上搜商品、看周销量/销售额/竞争度或筛品,也应触发此技能。

Install

openclaw skills install linkfox-ehunt-shopify-product-query

EHunt Shopify 商品查询(ehunt/shopify/productQuery

在具备 LinkFox「第三方数据服务」MCP 时,对应网关路由 ehunt/shopify/productQuery 调用(MCP 展示名:Shopify 商品查询,确切工具名以当前环境下发的工具元数据为准)。鉴权与上游路由由网关处理;若响应含根级 code 字段,是否成功以实网为准。

要点

  • 分页page 从 1 起;pageSize 默认 20、最大 100(建议 ≤50)。
  • 区间入参*Min / *Max 成对出现,组成上游区间;只填一侧时上游为「起始~」或「~结束」。
  • 排序sortBy 为整数枚举(默认 14=周销量降序,另含价格/广告数/竞争度/销售额等多种取值,详见 references/api.md)。
  • 布尔类筛选facebookAd(1=有广告)、hasSupplier(1=有货源,0=无)、showDeleted(1=含已下架)均为整数开关。
  • 发货国家country 传两位国家代码(如 US)。

脚本(可选)

命令行调试:python scripts/ehunt_shopify_product_query.py '<JSON>'(需 LINKFOXAGENT_API_KEY)。详见 references/api.md 末尾。

参考

入参/出参表见 references/api.md

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Handling Large Responses

To avoid overflowing the agent context, persist the response to disk and extract only the fields you need:

python scripts/response_io.py run --script scripts/ehunt_shopify_product_query.py --out-dir <DIR> '<params>'
python scripts/response_io.py read <file> --fields "<paths>"   # or --path "<JMESPath>"

Pick --out-dir outside any git working tree (e.g. /tmp/... on Unix, %TEMP%/... on Windows). Persisted responses may contain PII, pricing, or auth-sensitive data — do not commit them. Files are not auto-deleted; clean up when the task is done.

run writes the full response to a file and emits only a schema preview + file path. read projects specific fields, with --limit/--offset for slicing and --format json|jsonl|csv|table for output.

When to prefer this pattern — apply your judgment based on the response characteristics, e.g.:

  • High field count per record, or fields you don't need
  • Batch/paginated results (multiple items per call)
  • Long-text fields (descriptions, reviews, HTML, time series)
  • Output reused across later steps rather than consumed immediately

For small, single-use responses, calling the main script directly is fine.

⚠️ The preview is a truncated schema + sample, not the full data. Any field-level decision must read from the persisted file via read.

<!-- /LF_LARGE_RESPONSE_BLOCK -->