Skills Dynamic Pricing Intelligence Agent

install
source · Clone the upstream repo
git clone https://github.com/openclaw/skills
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/apiclaw/amazon-pricing-command-center" ~/.claude/skills/openclaw-skills-dynamic-pricing-intelligence-agent && rm -rf "$T"
OpenClaw · Install into ~/.openclaw/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/apiclaw/amazon-pricing-command-center" ~/.openclaw/skills/openclaw-skills-dynamic-pricing-intelligence-agent && rm -rf "$T"
manifest: skills/apiclaw/amazon-pricing-command-center/SKILL.md
source content

Dynamic Pricing Intelligence Agent — RAISE / HOLD / LOWER

Give me your ASIN(s). I'll tell you whether to raise, hold, or lower — with data.

Files

  • Script:
    {skill_base_dir}/scripts/apiclaw.py
    — run
    --help
    for params
  • Reference:
    {skill_base_dir}/references/reference.md
    (field names & response structure)

Credential

Required:

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

Input

  • Required: one or more ASINs (your products). No keyword needed — category is auto-detected.
  • Optional: competitor_asins

On first interaction, tell user: "Give me your ASIN(s). I support single or batch analysis — I'll auto-detect each product's category and analyze the pricing landscape for you."

Auto Category Detection (CRITICAL — replaces manual keyword input)

  1. For each ASIN:
    product --asin {asin}
    → extract
    bestsellersRank
    array
  2. The last entry in
    bestsellersRank
    = leaf (most specific) category
  3. Use leaf category name →
    categories --keyword "{leaf_category_name}"
    → get
    categoryPath
  4. If categories returns empty, try the second-to-last BSR entry, or ask user
  5. Batch mode: group ASINs by leaf category → share market data within same category (saves credits)

API Pitfalls

  • Revenue =
    sampleAvgMonthlyRevenue
    directly. NEVER calculate price×sales.
  • Sales =
    monthlySalesFloor
    (lower bound)
  • Price in realtime:
    buyboxWinner.price
    , NOT top-level
    price
  • All keyword-based endpoints MUST include
    --category
    once categoryPath is locked
  • FBA fees from products/search are estimates — verify with Amazon FBA calculator
  • Aggregation endpoints without categoryPath produce severely distorted data

Pricing Signal Logic

SignalCondition
RAISEPrice below opportunity band AND rating ≥ category avg AND BSR stable/rising
HOLDPrice in optimal band AND BSR stable AND no competitor price war
LOWERPrice above hottest band AND BSR declining OR competitor undercut detected

New Seller Price Band Selection

Don't pick highest-sales band. Calculate per band: Sales/Competition Ratio = Avg Monthly Sales ÷ Avg Review Count Highest ratio = best entry point (strong demand + low review barriers).

Profit Simulation

3 scenarios: Conservative (current price), Moderate (±$1-2), Aggressive (±$3-5). Per scenario: Revenue = Price × Est. Sales − FBA Fee − Referral Fee (15%) − COGS = Net Profit & Margin.

Profit Margin Interpretation

Net MarginSignalInterpretation
>30%🟢 HealthyStrong margin, room for ad spend and promotions 📊
15-30%🟡 AcceptableViable but monitor costs closely 🔍
5-15%🟠 ThinOne price war or cost increase away from loss 🔍
<5%🔴 UnsustainableMust raise price, cut costs, or exit 💡

Price Position Analysis

  • Price < opportunity band min: Underpriced — likely leaving money on the table if rating ≥ category avg 🔍
  • Price in opportunity band: Optimal zone — hold unless competitors shift 🔍
  • Price in hottest band: Maximum volume zone — high competition, margin pressure likely 🔍
  • Price > hottest band max: Premium positioning — only viable with strong brand/reviews 🔍
  • DB price ≠ Realtime price (>5% diff): Likely running a promotion or coupon — flag as temporary 📊

Output

Respond in user's language.

Per ASIN: Price Signal (RAISE/HOLD/LOWER) → Current Position in Category → Price Band Heatmap (with Sales/Competition Ratio) → Competitor Price Map (top 10 in leaf category) → 30-Day Trend → Profit Simulation (3 scenarios) → BuyBox Analysis → Recommended Price.

Batch summary (if multiple ASINs): Overview table (ASIN | Product | Category | Current Price | Signal | Recommended) → Per-ASIN detail.

End with: Data Provenance → API Usage. Flag DB vs Realtime discrepancies as likely promotions.

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. "current price $12.99 📊")
  • 🔍 Inferred — logical reasoning from data (e.g. "price is below opportunity band 🔍")
  • 💡 Directional — suggestions, predictions, strategy (e.g. "consider raising to $14.99 💡")

Rules: Strategy recommendations and price signals (RAISE/HOLD/LOWER) are NEVER 📊. User criteria override AI judgment.

Data Provenance (required)

Include a table at the end of every report:

DataEndpointKey ParamsNotes
(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)

EndpointCallsCredits
(each endpoint used)NN
TotalNN

Extract from

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

API Budget

  • Single ASIN: ~20-25 credits
  • Batch N ASINs (same category): ~20-25 + 1 per additional ASIN
  • Batch N ASINs (different categories): ~20-25 per unique category