安装方式
命令行安装
在项目根目录执行以下命令,完成 Skill 安装。
npx bzskills add sickn33/antigravity-awesome-skills --skill workorai WorkorAI talent-marketplace skill: candidates search jobs and manage applications; employers run the job lifecycle and get ranked candidate matches with white-box fit explanations.
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下载量
命令行安装
在项目根目录执行以下命令,完成 Skill 安装。
npx bzskills add sickn33/antigravity-awesome-skills --skill workorai name: workorai
description: 'WorkorAI talent-marketplace skill: candidates search jobs and manage applications; employers run the job lifecycle and get ranked candidate matches with white-box fit explanations.'
category: productivity
risk: critical
source: community
source_repo: work0r-ai/agent-kit
source_type: community
date_added: "2026-07-03"
author: work0r-ai
tags: [job-search, hiring, recruiting, talent-marketplace, mcp]
tools: [claude, cursor, gemini]
license: "MIT"
license_source: "https://github.com/work0r-ai/agent-kit/blob/main/skills/workorai/LICENSE.txt"WorkorAI is a talent marketplace exposed to agents through an MCP server
(streamable HTTP at https://workorai.com/mcp, listed on the official MCP
Registry as io.github.work0r-ai/workorai). This skill routes requests by
intent across the dual-role tool surface: 9 candidate.* tools (job search,
job detail, applications, apply, invitations, saved jobs) and the
employer.* tools (job lifecycle, candidate discovery, invitations,
applicant review). Employer candidate discovery returns tiered rankings
(best/good/weak) with a white-box match explanation per candidate — fit
score, skills proven in interview, gaps, and a quotable rationale — instead
of a black-box score.
or track their applications ("find me a job", "ищу работу").
job on WorkorAI.
or asks why a candidate matches a role.
connection and API key onboarding.
Add the WorkorAI MCP server to your agent's MCP configuration. For Claude
Code:
claude mcp add --transport http workorai https://workorai.com/mcp
If the user has no API key yet, call the request_access tool and follow
the onboarding it returns.
Detect whether the request is a candidate flow or an employer flow, then use
the matching tool group:
candidate.search_jobs, candidate.get_job,candidate.apply_to_job, candidate.get_applications,
candidate.accept_invitation / candidate.decline_invitation,
candidate.withdraw_application, candidate.set_saved_job,
candidate.get_saved_jobs.
employer.create_job → employer.publish_job →employer.close_job / employer.archive_job for the lifecycle;
employer.search_candidates_for_job or
employer.search_candidates_by_query for discovery;
employer.invite_candidate, employer.list_applicants,
employer.get_applicant_detail, employer.set_review_status for
pipeline work.
When presenting employer search results, keep the tier structure
(best/good/weak) and surface each candidate's matchExplanation: fit score,
interview-proven skills, gaps, and rationale. For deeper comparison, fetch
per-candidate interview evidence with employer.get_candidate_evidence and
employer.get_applicant_transcript.
User: "Find me remote TypeScript jobs and apply to the best one."
Agent: candidate.search_jobs(query="TypeScript", remote=true)
→ present ranked results → candidate.get_job(id)
→ confirm with the user → candidate.apply_to_job(id)
User: "Who are the best candidates for my Senior Backend role?"
Agent: employer.search_candidates_for_job(jobId)
→ report Best tier with each candidate's fit score, proven
skills, and gaps → employer.invite_candidate on approval
status — these are visible, stateful marketplace actions.
so the employer sees why, not just a score.
request_access for key onboarding instead of asking users topaste credentials into chat.
return.
user approval.
expert review.
boundaries are missing.
skill itself runs no shell commands.
be preceded by an explicit user confirmation.
in chat transcripts or committed files.
with reference files and agents (npm: @workorai/agent-kit)