← 返回 Skills 市场
apiclaw

Amazon Daily Market Radar

作者 apiclaw · GitHub ↗ · v1.0.1 · MIT-0
cross-platform ✓ 安全检测通过
141
总下载
0
收藏
0
当前安装
2
版本数
在 OpenClaw 中安装
/install amazon-daily-market-radar
功能描述
Automated daily market monitoring and alert system for Amazon sellers. Tracks price changes, new competitors, BSR movements, review spikes, stock-out signals...
使用说明 (SKILL.md)

APIClaw — Amazon Daily Market Radar

Set it. Forget it. Get alerted when it matters. Respond in user's language.

Files

File Purpose
{skill_base_dir}/scripts/apiclaw.py Execute for all API calls (run --help for params)
{skill_base_dir}/references/reference.md Load for exact field names or response structure
{skill_base_dir}/data/ Runtime: watchlist.json, last-run.json (auto-created)

Credential

Required: APICLAW_API_KEY. Get free key at apiclaw.io/api-keys.

Input (First Run)

Collect in ONE message: ✅ my_asins (1-10) | 💡 competitor_asins (up to 20) | 📌 alert_preferences. Optional: keyword, category. Category is auto-detected from first tracked ASIN if not provided.

API Pitfalls (CRITICAL)

  1. Category auto-detection: categoryPath is auto-detected from tracked ASINs. If category_source in output is inferred_from_search, confirm with user
  2. All keyword-based endpoints MUST include --category; ASIN-specific endpoints do NOT
  3. Use API fields directly: revenue=sampleAvgMonthlyRevenue (NEVER price×sales), sales=monthlySalesFloor, concentration=sampleTop10BrandSalesRate
  4. reviews/analysis: needs 50+ reviews
  5. Aggregation without categoryPath: severely distorted data

Execution

  1. daily-radar --asins "asin1,asin2,..." [--keyword X] [--category Y] (composite, auto-detects category from ASINs)
  2. Compare against {skill_base_dir}/data/last-run.json for change detection (first run = baseline only, no alerts)
  3. Generate alert-prioritized briefing → save snapshot to {skill_base_dir}/data/last-run.json

Alert Rules

Level Triggers
🔴 RED Price drop >10% by competitor; BSR crash >50% (yours); 1-star spike (3+ in 24h)
🟡 YELLOW New competitor in Top 20; competitor price change 5-10%; BSR change 20-50%; brand share shift >2%
🟢 GREEN Competitor stock-out; your review velocity up; price band opportunity shift

Change Detection Logic

  • Price change >5% → 🔴
  • BSR move >20% → 🟡
  • New ASINs in top 20 (vs last run) → 🟡

Growth signal validation:

  • 📊 Sustained: 7+ days consistent direction
  • 🔍 Possible signal: 2-3 days of change
  • 💡 Single-day spike: could be promotion/restock

Change Interpretation Guide

Metric Normal Range Action Trigger Likely Cause
Price change ±3% >5% sustained 3+ days Repricing strategy or promotion 🔍
BSR shift ±15% daily >30% sustained or >50% single day Stockout, promotion, or algorithm change 🔍
Rating drop ±0.1 >0.2 in 7 days Product quality issue or review attack 🔍
Review velocity ±20% >50% spike Vine program, review manipulation, or viral moment 🔍
New entrant in Top 20 0-1/week 3+ in one week Market shift or seasonal demand 🔍

Action Recommendations by Alert Level

  • 🔴 RED: Require immediate response — check inventory, match price if needed, investigate quality issues 💡
  • 🟡 YELLOW: Monitor for 3-5 days before acting — may be temporary fluctuation 💡
  • 🟢 GREEN: Opportunity window — act within 1-2 weeks before competitors notice 💡

Output Spec

First run: "Baseline Established" — KPI Dashboard (current snapshot) only, no alerts.

Subsequent runs: Alert Summary → RED Alerts → YELLOW Alerts → GREEN Opportunities → KPI Dashboard (today vs yesterday) → Competitor Movement → Market Shifts → Action Items → Data Provenance → API Usage.

Language (required)

Output language MUST match the user's input language. If the user asks in Chinese, the entire report is in Chinese. If in English, output in English. Exception: API field names (e.g. monthlySalesFloor, categoryPath), endpoint names, technical terms (e.g. ASIN, BSR, CR10, FBA, credits) remain in English.

Disclaimer (required, at the top of every report)

Data is based on APIClaw API sampling as of [date]. Monthly sales (monthlySalesFloor) are lower-bound estimates. This analysis is for reference only and should not be the sole basis for business decisions. Validate with additional sources before acting.

Confidence Labels (required, tag EVERY conclusion)

  • 📊 Data-backed — direct API data (e.g. "CR10 = 54.8% 📊")
  • 🔍 Inferred — logical reasoning from data (e.g. "brand concentration is moderate 🔍")
  • 💡 Directional — suggestions, predictions, strategy (e.g. "consider entering $10-15 band 💡")

Rules: Strategy recommendations are NEVER 📊. Anomalies (>200% growth) are always 💡. User criteria override AI judgment.

Sample bias: "Based on Top [N] by sales volume; niche/new products may be underrepresented."

Data Provenance (required)

Include a table at the end of every report:

Data Endpoint Key Params Notes
(e.g. Market Overview) markets/search categoryPath, topN=10 📊 Top N sampling, sales are lower-bound
... ... ... ...

Extract endpoint and params from _query in JSON output. Add notes: sampling method, T+1 delay, realtime vs DB, minimum review threshold, etc.

API Usage (required)

Endpoint Calls Credits
(each endpoint used) N N
Total N N

Extract from meta.creditsConsumed per response. End with Credits remaining: N.

API Budget: ~15-30 credits

Realtime×ASINs(5-15) + History(1-2) + Market/Brand(3) + Products(1) + Price(2) + Categories(1) + Reviews(1-3).

安全使用建议
This skill appears coherent with its stated purpose, but before installing: 1) Verify the APICLAW_API_KEY provider (https://apiclaw.io) and any plan/credit implications; 2) Confirm how your agent maps the 'daily-radar' command to the provided apiclaw.py script (or follow the README npx install flow); 3) Review the included apiclaw.py and README on the GitHub homepage to ensure you trust the source (the skill will store baseline/last-run JSON files under its skill directory and will make network calls to api.apiclaw.io using your API key); 4) Limit the API key scope and rotate it if you later uninstall the skill; 5) If you need higher assurance, run the script in an isolated environment first (or inspect the full script) to confirm no unexpected network endpoints or data exfiltration beyond the documented APIClaw endpoints.
功能分析
Type: OpenClaw Skill Name: amazon-daily-market-radar Version: 1.0.1 The Amazon Daily Market Radar skill is a legitimate tool designed for tracking Amazon product metrics via the APIClaw service. The core logic in `scripts/apiclaw.py` is a clean implementation of an API client using Python's standard library, with no suspicious dependencies or execution patterns. The instructions in `SKILL.md` and `README.md` are consistent with the stated purpose of market monitoring and alert generation, using local JSON files for state persistence without any evidence of data exfiltration or malicious prompt injection.
能力评估
Purpose & Capability
Name/description (Amazon market monitoring) align with required env var (APICLAW_API_KEY), the README, SKILL.md, and scripts reference APIClaw endpoints and market/product/review data — all expected for this purpose.
Instruction Scope
Runtime instructions tell the agent to run a radar CLI and to read/write local snapshots under {skill_base_dir}/data/ (watchlist.json, last-run.json) which is reasonable for stateful monitoring. Minor inconsistency: SKILL.md references a 'daily-radar' command but the included script is apiclaw.py (the README shows npx install); ensure the runtime maps the CLI name to the provided script before running.
Install Mechanism
No install spec included (instruction-only skill). A single Python script is bundled; nothing is downloaded from untrusted URLs and no install-time downloads are required by the skill metadata.
Credentials
Only APICLAW_API_KEY is required (declared as primaryEnv). The code will also optionally read a local config.json in the skill directory for the same key — that is within the skill's folder and proportional to its function. No unrelated secrets or cloud credentials requested.
Persistence & Privilege
Skill is not always-on and may be invoked by the agent; it writes state under its own skill directory (last-run.json) which is appropriate for a monitoring skill. It does not request system-wide configuration changes or other skills' credentials.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install amazon-daily-market-radar
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /amazon-daily-market-radar 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.1
amazon-daily-market-radar 1.0.1 - Documentation updates and refinements in SKILL.md for clarity and accuracy. - No breaking changes to logic or API integration. - Maintains all previous alert rules, action recommendations, and output specifications.
v1.0.0
Initial release
元数据
Slug amazon-daily-market-radar
版本 1.0.1
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 2
常见问题

Amazon Daily Market Radar 是什么?

Automated daily market monitoring and alert system for Amazon sellers. Tracks price changes, new competitors, BSR movements, review spikes, stock-out signals... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 141 次。

如何安装 Amazon Daily Market Radar?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install amazon-daily-market-radar」即可一键安装,无需额外配置。

Amazon Daily Market Radar 是免费的吗?

是的,Amazon Daily Market Radar 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Amazon Daily Market Radar 支持哪些平台?

Amazon Daily Market Radar 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Amazon Daily Market Radar?

由 apiclaw(@apiclaw)开发并维护,当前版本 v1.0.1。

💬 留言讨论