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zero-loss-methodology
作者
markbunyevacz
· GitHub ↗
· v1.0.0
· MIT-0
118
总下载
0
收藏
0
当前安装
1
版本数
在 OpenClaw 中安装
/install zeroloss
功能描述
Executable AI-assisted research and planning that ensures zero content loss, zero hallucination, and full traceability across multiple source documents.
安全使用建议
This skill is a detailed methodology rather than an installable program — the main risks come from what it tells the agent to do. Before enabling it, consider: (1) It requires preserving or reproducing source text (outputs >= input length), which can embed sensitive data into deliverables and archives — avoid running it on confidential inputs or modify the pipeline to redact sensitive fields. (2) It will create persistent project artifacts (inventories, manifests, build scripts) that you should manage with explicit retention and access controls. (3) The methodology suggests fetching external 'authority' sources — confirm network access and that retrieved content is acceptable to store/share. (4) Because the skill enforces broad application (use on any research task) and automated behaviours, test it on non-sensitive examples and require explicit user confirmation (GATE) before processing real data. If these behaviors are unacceptable, do not install or disable autonomous invocation/use and ask the skill author to provide options to limit copying, redaction, and external fetches.
功能分析
Type: OpenClaw Skill
Name: zeroloss
Version: 1.0.0
The skill bundle defines a highly structured 'Zero-Loss' research and planning methodology using pseudo-code instructions to guide an AI agent through document analysis and verification. While the instructions are complex and steer the agent's behavior significantly, they include multiple mandatory user-approval gates (G0–G6) and focus entirely on data integrity, traceability, and hallucination prevention. No indicators of data exfiltration, malicious execution, or unauthorized access were found in skill.md or _meta.json.
能力评估
Purpose & Capability
The name/description (a methodology for zero-loss, traceable research) aligns with the instruction-only content: the SKILL.md is a detailed, self-configuring pipeline for ingesting sources, building scaffolds, and producing traceable outputs. The skill does not request unrelated credentials, binaries, or installs, so capability and purpose are coherent.
Instruction Scope
The instructions mandate creation of project directories and process artifacts and explicitly require outputs whose word count is >= the source content (i.e., effectively preserving or reproducing full source text). They also auto-populate 'authority sources' and imply fetching/verifying external references. This design can cause wholesale copying of user-provided source material into outputs and persistent archives, may trigger network fetching of external sites, and enforces application in any multi-document research task (scope creep). Those behaviours increase risk of accidental disclosure/exfiltration of sensitive data and broaden what the agent will do without fine-grained user consent.
Install Mechanism
Instruction-only skill with no install spec, no code files, and no binary requirements — lowest installation risk. Nothing is downloaded or written by an installer step.
Credentials
The skill declares no required environment variables or credentials, which is proportional. However, the instructions' implied actions (fetching external authority sources, archiving build scripts and full source copies) mean network access and file writes will be used at runtime; those behaviors are not reflected in any declared external endpoints or access constraints and could expose data if the agent or environment forwards outputs elsewhere.
Persistence & Privilege
The methodology explicitly creates persistent artifacts (Source-Inventory, Traceability-Matrix, BuildScripts, Process-History, Deliverables) and requires archiving build scripts and manifests for reproducibility. The skill does not request 'always:true' or special platform-wide privileges, but it does instruct the agent to store potentially large and sensitive copies of inputs and logs — increasing exposure through persistence even though no elevated system privileges are requested.
如何使用
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install zeroloss - 安装完成后,直接呼叫该 Skill 的名称或使用
/zeroloss触发 - 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
Zero-Loss Research & Planning Methodology v2.1 — a self-configuring, executable algorithm for hallucination-free, traceable AI-assisted research and planning. Use this skill whenever performing multi-document research, gap analysis, deliverable generation, translation, document consolidation, or verification tasks. Also triggers on: research planning, document review, critical analysis, gap filling, source validation, document fusion, translation verification, compliance artifacts, traceability matrix, or any task requiring zero content loss and full source traceability. This skill should be used for ANY research or planning task involving multiple source documents, even if the user doesn't explicitly mention 'methodology'.
元数据
常见问题
zero-loss-methodology 是什么?
Executable AI-assisted research and planning that ensures zero content loss, zero hallucination, and full traceability across multiple source documents. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 118 次。
如何安装 zero-loss-methodology?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install zeroloss」即可一键安装,无需额外配置。
zero-loss-methodology 是免费的吗?
是的,zero-loss-methodology 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
zero-loss-methodology 支持哪些平台?
zero-loss-methodology 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 zero-loss-methodology?
由 markbunyevacz(@markbunyevacz)开发并维护,当前版本 v1.0.0。
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