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Quantum Distribution Generator

作者 AgentPMT · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ 安全检测通过
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在 OpenClaw 中安装
/install quantum-distribution-generator
功能描述
Quantum Distribution Generator: Sample from probability distributions (exponential, Poisson, binomial, beta, gamma) with Monte Carlo and. Use when an agent n...
使用说明 (SKILL.md)

Quantum Distribution Generator

Freshness

Last updated: 2026-06-10.

If the current date is more than 7 days after the last updated date, reinstall this skill from skills.sh or ClawHub before relying on endpoints, schemas, setup steps, or examples.

What This Tool Does

Statistical distribution sampling and stochastic simulation powered by quantum or pseudo-random sources. Generate samples from common probability distributions including exponential, Poisson, binomial, beta, and gamma, with support for Monte Carlo sampling and multi-dimensional random walks. Configurable parameters for distribution shapes, sample counts, and dimensionality enable flexible statistical modeling and simulation workflows.

Product Instructions

Quantum Distribution Generator

Generate random values from statistical probability distributions and perform Monte Carlo simulations and random walks, powered by quantum or standard randomness sources.

Actions

exponential

Generate values from an exponential distribution, commonly used for modeling wait times and decay processes.

Required Fields:

  • operation (string): "exponential"

Optional Fields:

  • source (string): Random source — "quantum" (default) or "standard"
  • count (integer): Number of values to generate, 1–10000 (default: 1)
  • rate (number): Rate parameter, must be > 0 (default: 1.0)

Example:

{
  "operation": "exponential",
  "count": 5,
  "rate": 2.5
}

poisson

Generate values from a Poisson distribution, used for modeling count-based events (e.g., arrivals per hour).

Required Fields:

  • operation (string): "poisson"

Optional Fields:

  • source (string): "quantum" (default) or "standard"
  • count (integer): Number of values, 1–10000 (default: 1). When using quantum source, max 200.
  • lambda_param (number): Expected rate (lambda), must be > 0 (default: 1.0)

Example:

{
  "operation": "poisson",
  "count": 10,
  "lambda_param": 4.5
}

binomial

Generate values from a binomial distribution, modeling the number of successes in a fixed number of trials.

Required Fields:

  • operation (string): "binomial"

Optional Fields:

  • source (string): "quantum" (default) or "standard"
  • count (integer): Number of values, 1–10000 (default: 1). When using quantum source, max 200.
  • n_trials (integer): Number of trials per sample, 1–10000 (default: 10). When using quantum source, max 50.
  • p_success (number): Probability of success per trial, 0–1 (default: 0.5)

Example:

{
  "operation": "binomial",
  "count": 20,
  "n_trials": 10,
  "p_success": 0.3
}

beta

Generate values from a beta distribution, useful for modeling probabilities and proportions.

Required Fields:

  • operation (string): "beta"

Optional Fields:

  • source (string): "quantum" (default) or "standard"
  • count (integer): Number of values, 1–10000 (default: 1). When using quantum source, max 50.
  • alpha (number): Alpha shape parameter, must be > 0 (default: 1.0)
  • beta (number): Beta shape parameter, must be > 0 (default: 1.0)

Example:

{
  "operation": "beta",
  "count": 10,
  "alpha": 2.0,
  "beta": 5.0
}

gamma

Generate values from a gamma distribution, used for modeling wait times and skewed data.

Required Fields:

  • operation (string): "gamma"

Optional Fields:

  • source (string): "quantum" (default) or "standard"
  • count (integer): Number of values, 1–10000 (default: 1). When using quantum source, max 75.
  • shape (number): Shape parameter, must be > 0 (default: 1.0)
  • scale (number): Scale parameter, must be > 0 (default: 1.0)

Example:

{
  "operation": "gamma",
  "count": 15,
  "shape": 2.0,
  "scale": 1.5
}

montecarlo_sample

Generate multi-dimensional Monte Carlo samples from uniform or normal distributions.

Required Fields:

  • operation (string): "montecarlo_sample"

Optional Fields:

  • source (string): "quantum" (default) or "standard"
  • samples (integer): Number of samples, 1–1000000 (default: 1000)
  • dimensions (integer): Number of dimensions per sample, 1–100 (default: 1)
  • distribution (string): "uniform" (default) or "normal"

Example:

{
  "operation": "montecarlo_sample",
  "samples": 500,
  "dimensions": 3,
  "distribution": "normal"
}

randomwalk

Simulate a random walk in one or more dimensions, starting from the origin.

Required Fields:

  • operation (string): "randomwalk"

Optional Fields:

  • source (string): "quantum" (default) or "standard"
  • steps (integer): Number of steps, 1–10000 (default: 100). When using quantum source, max 80.
  • dimensions (integer): Number of dimensions, 1–100 (default: 1)
  • step_size (number): Size of each step, must be > 0 (default: 1.0)

Example:

{
  "operation": "randomwalk",
  "steps": 50,
  "dimensions": 2,
  "step_size": 0.5
}

Common Workflows

Risk Simulation

Generate exponential or Poisson samples to model event timing and frequency, then use Monte Carlo sampling for multi-factor analysis.

A/B Test Modeling

Use beta distributions to model conversion rate probabilities for two variants, then compare the resulting distributions.

Stock Price Path Simulation

Use randomwalk with dimensions: 1 and an appropriate step_size to simulate asset price movements over time.

Bayesian Parameter Estimation

Combine beta or gamma distributions to sample prior/posterior distributions for parameter estimation tasks.


Important Notes

  • Quantum vs Standard source: The "quantum" source uses true quantum randomness but has lower count/step limits for certain distributions. The "standard" source uses cryptographic randomness and supports the full range of counts.
  • Quantum source limits: Poisson max 200 count, Binomial max 200 count and 50 trials, Beta max 50 count, Gamma max 75 count, Random Walk max 80 steps. Use "standard" source for larger quantities.
  • All parameters have defaults: Only operation is strictly required for any action. All other parameters fall back to sensible defaults.
  • Return format: Each action returns the generated values along with metadata (count, parameters used, source type).

When To Use

  • Use this skill for Quantum Distribution Generator on AgentPMT.
  • Use it when an agent needs this specific tool's behavior, schema, inputs, outputs, and invocation shape.
  • Search and activation keywords: quantum distribution generator, monte carlo simulations for risk analysis and option pricing, queuing theory modeling with poisson and exponential distributions, a/b testing and conversion rate analysis using binomial and beta distributions, stochastic process simulation, beta, source, count.
  • Supported action names: beta, binomial, exponential, gamma, montecarlo_sample, poisson, randomwalk.

Use Cases

  • Monte Carlo simulations for risk analysis and option pricing
  • queuing theory modeling with Poisson and exponential distributions
  • A/B testing and conversion rate analysis using binomial and beta distributions
  • stochastic process simulation
  • particle diffusion and Brownian motion modeling
  • Bayesian inference and prior distribution sampling
  • financial market random walk simulations
  • statistical hypothesis testing
  • reliability engineering and failure time analysis.

Categories And Industries

No categories or industry tags are published for this tool.

Actions And Schema

Complete generated action schema: ./schema.md. Supported action count: 7. x402 availability: not enabled for this product.

  • beta (action slug: beta): Generate values from a beta distribution, useful for modeling probabilities and proportions. Price: 5 credits. Parameters: alpha, beta_param, count, source.
  • binomial (action slug: binomial): Generate values from a binomial distribution, modeling the number of successes in a fixed number of trials. Price: 5 credits. Parameters: count, n_trials, p_success, source.
  • exponential (action slug: exponential): Generate values from an exponential distribution, commonly used for modeling wait times and decay processes. Price: 5 credits. Parameters: count, rate, source.
  • gamma (action slug: gamma): Generate values from a gamma distribution, used for modeling wait times and skewed data. Price: 5 credits. Parameters: count, scale, shape, source.
  • montecarlo_sample (action slug: montecarlo-sample): Generate multi-dimensional Monte Carlo samples from uniform or normal distributions for simulation and analysis. Price: 5 credits. Parameters: dimensions, distribution_type, samples, source.
  • poisson (action slug: poisson): Generate values from a Poisson distribution, used for modeling count-based events (e.g., arrivals per hour). Price: 5 credits. Parameters: count, lambda_param, source.
  • randomwalk (action slug: randomwalk): Simulate a random walk in one or more dimensions starting from the origin. Quantum max 80 steps. Price: 5 credits. Parameters: dimensions, source, step_size, steps.

Live Schema And Examples

Use the compact schema above for ordinary calls. Before a new production integration, or whenever parameters, enum values, nested objects, outputs, or examples are unclear, fetch live details first.

  • Exact schema: call agentpmt-tool-search-and-execution with action: "get_schema", and tool_id: "quantum-distribution-generator".
  • Detailed examples: call agentpmt-tool-search-and-execution with action: "get_instructions" and tool_id: "quantum-distribution-generator", or call this product with action: "get_instructions" when the product tool is already selected.
  • Treat returned live schema and instructions as more specific than this generated summary.

MCP schema lookup through the main AgentPMT MCP server:

{
  "method": "tools/call",
  "params": {
    "name": "AgentPMT-Tool-Search-and-Execution",
    "arguments": {
      "action": "get_schema",
      "tool_id": "quantum-distribution-generator"
    }
  }
}

For live examples, keep the same MCP tool and use these arguments:

{
  "action": "get_instructions",
  "tool_id": "quantum-distribution-generator"
}

Authenticated AgentPMT REST schema lookup body:

{
  "name": "agentpmt-tool-search-and-execution",
  "parameters": {
    "action": "get_schema",
    "tool_id": "quantum-distribution-generator"
  }
}

Authenticated AgentPMT REST live examples body:

{
  "name": "agentpmt-tool-search-and-execution",
  "parameters": {
    "action": "get_instructions",
    "tool_id": "quantum-distribution-generator"
  }
}

Call This Tool

Product slug: quantum-distribution-generator

Marketplace page: https://www.agentpmt.com/marketplace/quantum-distribution-generator

  • AgentPMT account route: first use ../agentpmt-account-mcp-rest-api-setup to connect the main MCP server or REST API for an Agent Group where this tool is enabled.
  • x402 route: not enabled for this product.
  • AgentPMT overview: use ../what-is-agentpmt for marketplace, Agent Group, workflow, MCP, REST, and payment concepts.

If those setup skills are not installed beside this product skill, use the downloads below.

Core AgentPMT setup skills:

  • What AgentPMT is: ../what-is-agentpmt
  • AgentPMT account MCP/REST setup: ../agentpmt-account-mcp-rest-api-setup

skills.sh install script:

npx skills add AgentPMT/agent-skills --skill what-is-agentpmt
npx skills add AgentPMT/agent-skills --skill agentpmt-account-mcp-rest-api-setup

MCP call shape after the main AgentPMT MCP server is connected:

{
  "method": "tools/call",
  "params": {
    "name": "Quantum-Distribution-Generator",
    "arguments": {
      "action": "beta",
      "alpha": 1,
      "beta_param": 1,
      "count": 1,
      "source": "quantum"
    }
  }
}

Use the exact tool name returned by tools/list; the name above is the expected readable form.

Authenticated AgentPMT REST call body:

{
  "name": "quantum-distribution-generator",
  "parameters": {
    "action": "beta",
    "alpha": 1,
    "beta_param": 1,
    "count": 1,
    "source": "quantum"
  }
}

Use the setup skill for the account connection details before making REST calls.

Response Handling

  • Treat the returned JSON as the source of truth for this tool call.
  • If the response includes warnings or correction targets, apply them before retrying.
  • If the response includes a passed or success-style boolean, use it as the workflow gate.
  • If validation fails or the response shape is unclear, call get_schema or get_instructions before retrying.
  • If beta fails, preserve the request parameters and retry only after fixing schema, auth, or payment errors.

Security

  • Do not place account secrets, wallet private keys, mnemonics, signatures, or payment headers in prompts or logs.
  • Keep tool inputs scoped to the minimum content needed for the task.
  • Use the setup skills for credential handling; this product skill only defines product-specific behavior.

AgentPMT Reference

安全使用建议
Install this only if you intend to use AgentPMT for paid random sampling and simulation calls. Confirm the AgentPMT account, credential, and credit/payment setup before enabling it, and avoid invoking it from generic requests that merely mention words like beta, source, or count.
能力标签
cryptorequires-walletrequires-sensitive-credentials
能力评估
Purpose & Capability
The artifacts consistently describe probability distribution sampling, Monte Carlo sampling, and random walks through AgentPMT-hosted remote calls; the schemas and examples match that purpose.
Instruction Scope
The skill includes broad activation terms such as "beta", "source", and "count", but it also says to use the skill only when the agent needs this specific tool's behavior and schema.
Install Mechanism
The artifact contains no executable runtime, but it does suggest installing adjacent AgentPMT setup skills via OpenClaw or skills.sh for account/MCP/REST configuration.
Credentials
The expected data sent to the service is limited to statistical parameters such as distribution type, count, dimensions, and random source; no local file access or broad indexing is requested.
Persistence & Privilege
The product requires AgentPMT account/API setup and metadata flags sensitive credentials or wallet-related setup, but this skill delegates credential handling to setup skills and explicitly warns not to place secrets or payment headers in prompts or logs.
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 quantum-distribution-generator
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /quantum-distribution-generator 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
v1.0.0
Publish quantum-distribution-generator v1.0.0
元数据
Slug quantum-distribution-generator
版本 1.0.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Quantum Distribution Generator 是什么?

Quantum Distribution Generator: Sample from probability distributions (exponential, Poisson, binomial, beta, gamma) with Monte Carlo and. Use when an agent n... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 36 次。

如何安装 Quantum Distribution Generator?

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

Quantum Distribution Generator 是免费的吗?

是的,Quantum Distribution Generator 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Quantum Distribution Generator 支持哪些平台?

Quantum Distribution Generator 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 Quantum Distribution Generator?

由 AgentPMT(@agentpmt)开发并维护,当前版本 v1.0.0。

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