Claude-code-plugins-plus juicebox-reference-architecture
install
source · Clone the upstream repo
git clone https://github.com/jeremylongshore/claude-code-plugins-plus-skills
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/jeremylongshore/claude-code-plugins-plus-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/plugins/saas-packs/juicebox-pack/skills/juicebox-reference-architecture" ~/.claude/skills/jeremylongshore-claude-code-plugins-plus-juicebox-reference-architecture && rm -rf "$T"
manifest:
plugins/saas-packs/juicebox-pack/skills/juicebox-reference-architecture/SKILL.mdsource content
Juicebox Reference Architecture
Overview
Production architecture for AI-powered candidate analysis integrations with Juicebox. Designed for recruiting teams needing automated dataset ingestion from job descriptions, intelligent candidate scoring and ranking, result caching for repeated searches, and seamless export to ATS platforms like Greenhouse and Lever. Key design drivers: search result freshness, candidate deduplication across sources, outreach sequencing, and analysis pipeline throughput for high-volume hiring.
Architecture Diagram
Recruiter Dashboard ──→ Search Service ──→ Cache (Redis) ──→ Juicebox API ↓ /search Queue (Bull) ──→ Analysis Worker /profiles ↓ /outreach ATS Export Service ──→ Greenhouse/Lever ↓ Webhook Handler ←── Juicebox Events
Service Layer
class CandidateSearchService { constructor(private juicebox: JuiceboxClient, private cache: CacheLayer) {} async findAndRank(criteria: SearchCriteria): Promise<RankedCandidate[]> { const cacheKey = `search:${this.hashCriteria(criteria)}`; const cached = await this.cache.get(cacheKey); if (cached) return cached; const results = await this.juicebox.search(criteria); const ranked = results.profiles.map(p => ({ ...p, score: this.scoreCandidate(p, criteria) })) .sort((a, b) => b.score - a.score); await this.cache.set(cacheKey, ranked, CACHE_CONFIG.searchResults.ttl); return ranked; } async exportToATS(candidates: string[], jobId: string, ats: 'greenhouse' | 'lever'): Promise<ExportResult> { const deduped = await this.deduplicateAgainstATS(candidates, jobId, ats); return this.juicebox.export({ profiles: deduped, destination: ats, job_id: jobId }); } }
Caching Strategy
const CACHE_CONFIG = { searchResults: { ttl: 1800, prefix: 'search' }, // 30 min — candidate pools shift slowly profiles: { ttl: 3600, prefix: 'profile' }, // 1 hr — profile data stable short-term analysisRuns: { ttl: 7200, prefix: 'analysis' }, // 2 hr — analysis results are expensive to recompute atsState: { ttl: 300, prefix: 'ats' }, // 5 min — ATS pipeline freshness for dedup outreach: { ttl: 60, prefix: 'outreach' }, // 1 min — sequence status changes frequently }; // New search invalidates matching cached results; ATS export clears ats cache for that job
Event Pipeline
class RecruitingPipeline { private queue = new Bull('juicebox-events', { redis: process.env.REDIS_URL }); async onSearchComplete(searchId: string, results: RankedCandidate[]): Promise<void> { await this.queue.add('analyze', { searchId, candidateIds: results.map(r => r.id) }, { attempts: 3, backoff: { type: 'exponential', delay: 2000 } }); } async processOutreachEvent(event: OutreachEvent): Promise<void> { if (event.type === 'reply_received') await this.flagForRecruiterReview(event); if (event.type === 'bounced') await this.markInvalid(event.candidateId); await this.syncStatusToATS(event); } }
Data Model
interface SearchCriteria { role: string; skills: string[]; location?: string; experienceYears?: number; companySize?: string; } interface RankedCandidate { id: string; name: string; title: string; company: string; score: number; skills: string[]; profileUrl: string; } interface OutreachSequence { id: string; candidateId: string; jobId: string; steps: OutreachStep[]; status: 'active' | 'replied' | 'bounced' | 'opted-out'; } interface ExportResult { exported: number; duplicatesSkipped: number; atsJobId: string; }
Scaling Considerations
- Parallelize search requests across role categories — Juicebox API supports concurrent queries
- Cache analysis results aggressively — AI scoring is the most expensive operation per candidate
- Batch ATS exports by job requisition to minimize Greenhouse/Lever API round-trips
- Deduplicate candidates across searches before outreach to avoid double-contacting
- Rate-limit outreach sequencing to maintain sender reputation and deliverability
Error Handling
| Component | Failure Mode | Recovery |
|---|---|---|
| Candidate search | Juicebox API timeout | Retry with reduced result count, serve cached results if available |
| Analysis pipeline | Scoring model latency spike | Queue with timeout, return unscored results with flag |
| ATS export | Greenhouse rate limit | Batch retry with exponential backoff, notify recruiter on persistent failure |
| Outreach sequence | Email bounce | Mark candidate invalid, remove from active sequences, update ATS |
| Webhook handler | Duplicate event delivery | Idempotency key on event ID + candidate ID |
Resources
Next Steps
See
juicebox-deploy-integration.