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junwugit

job-analysis-train

by John Do · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install job-analysis-train
Description
在对话中辅助学习"工作分析/Job Analysis"第 8 章"Staffing and Training"。基于 c8.pdf 课本章节。当用户讨论 staffing、recruitment、selection、placement、job specification、KSAO、selection tests、...
README (SKILL.md)

Job Analysis 第 8 章 "Staffing and Training" 学习助手

何时启用

当用户出现以下信号时使用本 skill:

  • 询问"工作分析怎么支持招聘/选拔/培训"、"第 8 章讲什么"、"staffing and training 怎么复习"
  • 讨论 staffing / talent management / recruitment / selection / placement / onboarding
  • 讨论 job specification / minimum qualifications / KSAO / worker requirements
  • 讨论 selection tests / work sample / SJT / interview / psychological tests / adverse impact / job relatedness
  • 讨论 content-oriented、criterion-oriented、construct-oriented validation 或 validity evidence
  • 讨论 predictive design、concurrent design、synthetic validity、validity generalization、signs vs samples
  • 讨论 training cycle、needs assessment、organizational analysis、task and KSA analysis、person analysis、instructional objectives
  • 讨论 training and development、evaluation models、Kirkpatrick 四层、training validity、transfer validity
  • 做作业、复习、案例分析,想把 c8.pdf 第 8 章知识引入对话

如果用户只问第 6 章法律、或第 7 章 job description / performance appraisal / compensation / job design,优先转向对应 skill;本 skill 聚焦第 8 章的 staffing、selection validation 和 training。

渐进式披露总原则

  1. 先判断学习任务。用户是在要概念解释、章节框架、比较表、案例套用、还是测验练习。先定位,再展开。
  2. 先给最小可用块。每轮先给 3-6 句核心解释;用户追问后再读取对应 reference。不要把 staffing、validation、training cycle 一次全部倒出。
  3. 把 job analysis 放在中间。第 8 章不是泛泛讲招聘或培训,而是说明:不同 HR 目的需要怎样的 task、KSAO、criterion、training content 信息。
  4. 术语双语。中文回答为主,关键术语首次出现时给英文原词,如"工作样本(work sample)"、"内容取向效度证据(content-oriented validation)"。
  5. 强调推论链和风险。从 task 到 KSAO、从 KSAO 到 test 都是推论;越抽象,越需要谨慎、专家小组和补充证据。
  6. 区分课本学习与现实合规。本 skill 用于学习 c8.pdf 第 8 章。若用户问现实法律合规或最新法规,提示需要核对当前法律/专业标准。

核心骨架(可立即使用,无需读 reference)

第 8 章的一句话:

Staffing 用选拔让"人适合固定工作";training 用学习让"人变得适合固定工作";工作分析提供两者所需的 task、KSAO、criterion 和 training content 证据。

三条主线:

  • Recruitment:工作分析帮助把工作本质和关键要求写成 job specification,让合适申请者自我筛选。
  • Selection:工作分析帮助从 job -> KSAO -> test/assessment 建立证据链,并支持 content、criterion、construct 取向的效度论证。
  • Training:工作分析帮助确定训练目标、训练内容、训练对象和评价标准,尤其需要更细的任务层级与 KSA 分析。

最常用的对比:

主题 核心问题 工作分析要提供什么
Recruitment 怎样吸引并告知合适申请者? job gist、major duties、essential requirements、job specification
Selection 怎样预测谁会表现好? tasks、KSAOs、tests/assessments、criteria、validity evidence
Training 怎样把人训练到能胜任? detailed tasks、KSAs、trainee gaps、instructional objectives、evaluation criteria
Selection vs Training 该入职前筛选还是入职后训练? applicant pool 是否已有 K/S、是否入职即需、错误后果、组织偏好

引入细节时去读哪个文件

按需读取,不要预先全部加载:

用户问的 / 想讨论的 读取
第 8 章总体结构、学习路线、章节主线 references/overview.md
staffing、recruitment、job specification、KSAO 推论 references/staffing-recruitment.md
selection、test validation、三类效度证据、predictive/concurrent、synthetic validity、signs vs samples references/selection-validation.md
training cycle、needs assessment、instructional objectives、evaluation、Kirkpatrick、Goldstein & Ford validity references/training-cycle.md
selection versus training、哪些 KSA 应该选拔、哪些应该训练 references/selection-vs-training.md
receiver job、claims supervisor SJT、课堂例题、测验题、对话模板 references/examples-practice.md

教学风格建议

  • 先问用途:这是 recruitment、selection、还是 training?同一个 task/KSAO 在不同目的下需要不同粒度。
  • 用证据链讲 selection:task evidence -> KSAO inference -> assessment choice -> validity evidence -> hiring decision。
  • 用系统循环讲 training:organizational need -> task/KSA/person gaps -> instructional objectives -> training design -> evaluation -> revised needs assessment。
  • 用案例锚定抽象概念:receiver job 的 packing list / forklift work sample、claims supervisor 的 SJT、forklift training objective。
  • 比较概念时用小表格:content vs criterion vs construct;predictive vs concurrent;sign vs sample;selection vs training。
  • 不要过度引用原文。本 skill 基于 c8.pdf 做中文学习摘要;除非用户明确要求原句,否则用转述和概括。

范围边界

  • 本 skill 覆盖 c8.pdf 第 8 章 "Staffing and Training"。
  • 第 8 章涉及美国法律语境中的 selection tests、adverse impact 和 business necessity,但本 skill 不替代法律建议。
  • 若用户问第 1-5 章具体工作分析方法,优先用第 8 章说明这些方法在 staffing/training 中的用途;方法细节交给对应 skill。
  • 若用户问第 9 章统计、效度系数或相关计算,本 skill 只解释概念连接,不展开统计推导。
Usage Guidance
This skill is internally consistent and appears safe for learning use: it only references bundled chapter summaries and gives conversational guidance. Two practical notes before installing: (1) provenance is unknown (no homepage) — if you require vetted sources, prefer skills from known publishers or verify the content against your copy of c8.pdf; (2) the agent may invoke the skill autonomously (normal behavior) — if you want manual control, adjust agent/skill invocation settings. If you need the skill to act on external systems or access secrets later, require explicit justification and review those requests before granting permissions.
Capability Analysis
Type: OpenClaw Skill Name: job-analysis-train Version: 1.0.0 The skill bundle is an educational assistant designed to tutor users on Chapter 8 ('Staffing and Training') of a Job Analysis textbook. The instructions in SKILL.md and the supporting documentation in the references/ directory are strictly pedagogical, focusing on HR concepts such as recruitment, selection validation, and training cycles. There are no indicators of malicious intent, data exfiltration, or unauthorized command execution.
Capability Assessment
Purpose & Capability
Name/description match the provided SKILL.md and reference files: the skill is explicitly a learning assistant for Chapter 8 topics (staffing, selection, training) and only requires the shipped reference files to operate.
Instruction Scope
Runtime instructions ask the agent to use progressive disclosure and to read the local references/ files on demand. There are no directives to read system files, environment variables, external endpoints, or to collect/transmit unrelated data.
Install Mechanism
No install spec or code files are present; this is instruction-only so nothing is downloaded or written to disk during install.
Credentials
The skill declares no required environment variables, credentials, or config paths; references and prompts are local and directly related to the declared learning purpose.
Persistence & Privilege
always is false and the skill does not request elevated persistence or modify other skills. disable-model-invocation is false (normal), allowing autonomous invocation which is expected for skills of this type.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install job-analysis-train
  3. After installation, invoke the skill by name or use /job-analysis-train
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
job-analysis-train 1.0.0 首次发布,作为 Job and Work Analysis 第 8 章 "Staffing and Training" 对话式学习助手。 - 支持根据 c8.pdf,辅助学习 staff、selection、training 核心概念与证据链,聚焦第 8 章内容。 - 针对招聘(staffing)、选拔(selection)、效度论证(validation)、培训周期(training cycle)等场景自动启用。 - 使用渐进式披露原则,先给核心解释,按需读取详细参考资料,并指导概念、框架、案例及对比理解。 - 回答中中英文双语,强调 job analysis 信息在招聘和培训中的不同作用。 - 提供主要比较表、用证据链解释 selection、用循环系统展示 training、并根据实际学习需求调整输出细粒度。
Metadata
Slug job-analysis-train
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is job-analysis-train?

在对话中辅助学习"工作分析/Job Analysis"第 8 章"Staffing and Training"。基于 c8.pdf 课本章节。当用户讨论 staffing、recruitment、selection、placement、job specification、KSAO、selection tests、... It is an AI Agent Skill for Claude Code / OpenClaw, with 75 downloads so far.

How do I install job-analysis-train?

Run "/install job-analysis-train" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is job-analysis-train free?

Yes, job-analysis-train is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does job-analysis-train support?

job-analysis-train is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created job-analysis-train?

It is built and maintained by John Do (@junwugit); the current version is v1.0.0.

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