Overview
- Skill Key
- 1kalin/afrexai-hiring-scorecard
- Author
- 1kalin
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/1kalin/afrexai-hiring-scorecard
- Latest Commit SHA
- 1784ed9d462aa9f71a39f37237b3355bcbd1a46d
Stars
0
Installs
0
Status
ACTIVE
Visibility
PUBLIC
直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 Afrexai Hiring Scorecard 技能。 若已安装,则直接安装 Afrexai Hiring Scorecard 技能。
# Hiring Scorecard Skill Score and compare job candidates objectively using weighted criteria. Eliminates gut-feel hiring decisions. ## Usage Tell your agent: "Score this candidate for [role]" or "Compare these 3 candidates for the backend engineer role." ## How It Works 1. **Define the role** — provide job title and key requirements 2. **Set criteria** — the agent uses 6 default dimensions (or you customize): - Technical skills (weight: 25%) - Relevant experience (weight: 20%) - Culture fit (weight: 15%) - Communication (weight: 15%) - Problem solving (weight: 15%) - Growth potential (weight: 10%) 3. **Score candidates** — 1-5 scale per criterion after interview/review 4. **Get weighted totals** — ranked comparison with hire/no-hire recommendation ## Commands - `score candidate [name] for [role]` — start a new scorecard - `add criterion [name] weight [%]` — customize scoring dimensions - `compare candidates` — side-by-side ranked comparison - `hiring summary` — executive summary with recommendation ## Scorecard Template ```markdown # Candidate Scorecard: [Name] **Role:** [Title] **Date:** [Date] **Interviewer:** [Name] | Criterion | Weight | Score (1-5) | Weighted | |-----------|--------|-------------|----------| | Technical Skills | 25% | _ | _ | | Relevant Experience | 20% | _ | _ | | Culture Fit | 15% | _ | _ | | Communication | 15% | _ | _ | | Problem Solving | 15% | _ | _ | | Growth Potential | 10% | _ | _ | | **TOTAL** | **100%** | | **_/5.0** | ### Notes - Strengths: - Concerns: - Recommendation: HIRE / NO HIRE / MAYBE ### Scoring Guide 5 = Exceptional — top 5% of candidates seen 4 = Strong — clearly above average 3 = Meets bar — would do the job well 2 = Below bar — notable gaps 1 = Not a fit — significant concerns ``` ## Tips - Score immediately after each interview while impressions are fresh - Have multiple interviewers score independently, then compare - Adjust weights per role (e.g., bump Technical to 40% for senior eng)...
# afrexai-hiring-scorecard 🖤💛 **Objective candidate scoring for AI agents.** Stop making gut-feel hiring decisions — score candidates on weighted criteria and compare them side by side. ## What It Does - Generates structured scorecards with 6 weighted dimensions - Scores candidates 1-5 per criterion with weighted totals - Compares multiple candidates ranked by score - Produces executive hiring summaries with clear recommendations ## Quick Start Install the skill, then tell your agent: > "Score Sarah Chen for the Senior Backend Engineer role. She has 7 years Python experience, strong system design, quiet but precise communicator." Your agent builds a full scorecard with weighted scores and a hire/no-hire recommendation. ## Default Criteria | Criterion | Weight | |-----------|--------| | Technical Skills | 25% | | Relevant Experience | 20% | | Culture Fit | 15% | | Communication | 15% | | Problem Solving | 15% | | Growth Potential | 10% | Customize weights per role. Bump Technical to 40% for senior engineering. Bump Communication to 25% for customer-facing roles. ## Why Use This Hiring is the highest-leverage decision a company makes. Bad hires cost 3-5x salary. This skill forces structured evaluation so you hire on signal, not vibes. ## More from AfrexAI - 🔧 [Free AI Agent Tools](https://afrexai-cto.github.io/ai-revenue-calculator/) — Calculate your AI automation ROI - 🏪 [Context Packs Store](https://afrexai-cto.github.io/context-packs/) — Industry-specific agent configs ($47/pack) - 🧙 [Agent Setup Wizard](https://afrexai-cto.github.io/agent-setup/) — Configure your agent in 60 seconds Built by [AfrexAI](https://afrexai-cto.github.io/context-packs/) — AI tools that actually work.
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