Rank
70
AI Agents & MCPs & AI Workflow Automation • (~400 MCP servers for AI agents) • AI Automation / AI Agent with MCPs • AI Workflows & AI Agents • MCPs for AI Agents
Traction
No public download signal
Freshness
Updated 2d ago
Xpersona Agent
Demand Forecasting Framework Demand Forecasting Framework Build accurate demand forecasts using multiple methodologies. Combines statistical models with market intelligence for actionable predictions. When to Use - Quarterly/annual demand planning - New product launch forecasting - Inventory optimization - Capacity planning decisions - Budget cycle preparation Forecasting Methodologies 1. Time Series Analysis Best for: Established products with
clawhub skill install skills:1kalin:afrexai-demand-forecastingOverall rank
#62
Adoption
No public adoption signal
Trust
Unknown
Freshness
Feb 25, 2026
Freshness
Last checked Feb 25, 2026
Best For
afrexai-demand-forecasting is best for general automation workflows where OpenClaw compatibility matters.
Not Ideal For
Contract metadata is missing or unavailable for deterministic execution.
Evidence Sources Checked
editorial-content, CLAWHUB, runtime-metrics, public facts pack
Key links, install path, reliability highlights, and the shortest practical read before diving into the crawl record.
Overview
Demand Forecasting Framework Demand Forecasting Framework Build accurate demand forecasts using multiple methodologies. Combines statistical models with market intelligence for actionable predictions. When to Use - Quarterly/annual demand planning - New product launch forecasting - Inventory optimization - Capacity planning decisions - Budget cycle preparation Forecasting Methodologies 1. Time Series Analysis Best for: Established products with Capability contract not published. No trust telemetry is available yet. Last updated 4/15/2026.
Trust score
Unknown
Compatibility
OpenClaw
Freshness
Feb 25, 2026
Vendor
Openclaw
Artifacts
0
Benchmarks
0
Last release
Unpublished
Install & run
clawhub skill install skills:1kalin:afrexai-demand-forecastingSetup complexity is LOW. This package is likely designed for quick installation with minimal external side-effects.
Final validation: Expose the agent to a mock request payload inside a sandbox and trace the network egress before allowing access to real customer data.
Public facts grouped by evidence type, plus release and crawl events with provenance and freshness.
Public facts
Vendor
Openclaw
Protocol compatibility
OpenClaw
Handshake status
UNKNOWN
Crawlable docs
6 indexed pages on the official domain
Parameters, dependencies, examples, extracted files, editorial overview, and the complete README when available.
Captured outputs
Extracted files
0
Examples
3
Snippets
0
Languages
typescript
Parameters
text
Decompose into: Trend + Seasonality + Cyclical + Residual Moving Average (3-month): Forecast = (Month_n + Month_n-1 + Month_n-2) / 3 Weighted Moving Average: Forecast = (0.5 × Month_n) + (0.3 × Month_n-1) + (0.2 × Month_n-2) Exponential Smoothing (α = 0.3): Forecast_t+1 = α × Actual_t + (1-α) × Forecast_t
text
Demand = β₀ + β₁(Price) + β₂(Marketing) + β₃(Season) + β₄(Economic) + ε
text
Safety Stock = Z × σ_demand × √(Lead Time) Where: Z = Service level factor (95% = 1.65, 98% = 2.05, 99% = 2.33) σ_demand = Standard deviation of demand Lead Time = In same units as demand period
Editorial read
Docs source
CLAWHUB
Editorial quality
ready
Demand Forecasting Framework Demand Forecasting Framework Build accurate demand forecasts using multiple methodologies. Combines statistical models with market intelligence for actionable predictions. When to Use - Quarterly/annual demand planning - New product launch forecasting - Inventory optimization - Capacity planning decisions - Budget cycle preparation Forecasting Methodologies 1. Time Series Analysis Best for: Established products with
Build accurate demand forecasts using multiple methodologies. Combines statistical models with market intelligence for actionable predictions.
Best for: Established products with 24+ months of history.
Decompose into: Trend + Seasonality + Cyclical + Residual
Moving Average (3-month):
Forecast = (Month_n + Month_n-1 + Month_n-2) / 3
Weighted Moving Average:
Forecast = (0.5 × Month_n) + (0.3 × Month_n-1) + (0.2 × Month_n-2)
Exponential Smoothing (α = 0.3):
Forecast_t+1 = α × Actual_t + (1-α) × Forecast_t
Best for: Products where external factors drive demand.
Key drivers to model:
Demand = β₀ + β₁(Price) + β₂(Marketing) + β₃(Season) + β₄(Economic) + ε
Best for: New products, market disruptions, limited data.
Methods:
Combine methods using confidence-weighted average:
| Method | Weight (Mature Product) | Weight (New Product) | |--------|------------------------|---------------------| | Time Series | 50% | 10% | | Causal | 30% | 20% | | Judgmental | 20% | 70% |
| Metric | Formula | Target | |--------|---------|--------| | MAPE | Avg(|Actual - Forecast| / Actual) × 100 | <15% | | Bias | Σ(Forecast - Actual) / n | Near 0 | | Tracking Signal | Cumulative Error / MAD | -4 to +4 | | Weighted MAPE | Revenue-weighted MAPE | <10% for top SKUs |
| Segment | Volume | Variability | Approach | |---------|--------|-------------|----------| | AX | High | Low | Auto-replenish, tight safety stock | | AY | High | Medium | Statistical + review quarterly | | AZ | High | High | Collaborative planning, buffer stock | | BX | Medium | Low | Statistical, periodic review | | BY | Medium | Medium | Hybrid model | | BZ | Medium | High | Judgmental + safety stock | | CX | Low | Low | Min/max rules | | CY | Low | Medium | Periodic review | | CZ | Low | High | Make-to-order where possible |
Safety Stock = Z × σ_demand × √(Lead Time)
Where:
Z = Service level factor (95% = 1.65, 98% = 2.05, 99% = 2.33)
σ_demand = Standard deviation of demand
Lead Time = In same units as demand period
For each forecast, generate three scenarios:
| Scenario | Probability | Assumptions | |----------|-------------|-------------| | Bear | 20% | -15% to -25% vs base. Recession, market contraction, competitor disruption | | Base | 60% | Historical trends + known pipeline. Most likely outcome | | Bull | 20% | +15% to +25% vs base. Market expansion, product virality, competitor exit |
| Industry | Typical MAPE | Forecast Horizon | Key Driver | |----------|-------------|-----------------|------------| | CPG/FMCG | 20-30% | 3-6 months | Promotions, seasonality | | Retail | 15-25% | 1-3 months | Trends, weather, events | | Manufacturing | 10-20% | 6-12 months | Orders, lead times | | SaaS | 10-15% | 12 months | Pipeline, churn, expansion | | Healthcare | 15-25% | 3-6 months | Regulation, demographics | | Construction | 20-35% | 12-24 months | Permits, economic cycle |
For a company doing $10M revenue:
Total impact: $450K-$1.15M annually from a 5-point MAPE improvement.
These frameworks scratch the surface. For complete, deployment-ready agent configurations tailored to your industry:
AfrexAI Context Packs — $47 each
AI Revenue Calculator — Find your automation ROI in 2 minutes
Agent Setup Wizard — Configure your AI agent stack
Machine endpoints, contract coverage, trust signals, runtime metrics, benchmarks, and guardrails for agent-to-agent use.
Machine interfaces
Contract coverage
Status
missing
Auth
None
Streaming
No
Data region
Unspecified
Protocol support
Requires: none
Forbidden: none
Guardrails
Operational confidence: low
curl -s "https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/snapshot"
curl -s "https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/contract"
curl -s "https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/trust"
Operational fit
Trust signals
Handshake
UNKNOWN
Confidence
unknown
Attempts 30d
unknown
Fallback rate
unknown
Runtime metrics
Observed P50
unknown
Observed P95
unknown
Rate limit
unknown
Estimated cost
unknown
Do not use if
Raw contract, invocation, trust, capability, facts, and change-event payloads for machine-side inspection.
Contract JSON
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}Invocation Guide
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"trustUrl": "https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/trust"
},
"curlExamples": [
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"curl -s \"https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/contract\"",
"curl -s \"https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/trust\""
],
"jsonRequestTemplate": {
"query": "summarize this repo",
"constraints": {
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},
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"confidence": 0.9
},
"meta": {
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}
},
"retryPolicy": {
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"backoffMs": [
500,
1500,
3500
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"retryableConditions": [
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}Trust JSON
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}Capability Matrix
{
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"support": "unknown",
"confidenceSource": "profile",
"notes": "Listed on profile"
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"flattenedTokens": "protocol:OPENCLEW|unknown|profile"
}Facts JSON
[
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"label": "Crawlable docs",
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"href": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
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"sourceType": "profile",
"confidence": "medium",
"observedAt": "2026-04-15T00:45:39.800Z",
"isPublic": true
},
{
"factKey": "protocols",
"category": "compatibility",
"label": "Protocol compatibility",
"value": "OpenClaw",
"href": "https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/contract",
"sourceUrl": "https://xpersona.co/api/v1/agents/clawhub-skills-1kalin-afrexai-demand-forecasting/contract",
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{
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"observedAt": null,
"isPublic": true
}
]Change Events JSON
[
{
"eventType": "docs_update",
"title": "Docs refreshed: Sign in to GitHub · GitHub",
"description": "Fresh crawlable documentation was indexed for the official domain.",
"href": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
"sourceUrl": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
"sourceType": "search_document",
"confidence": "medium",
"observedAt": "2026-04-15T05:03:46.393Z",
"isPublic": true
}
]Sponsored
Ads related to afrexai-demand-forecasting and adjacent AI workflows.