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Search & Matching Questions

Recruitier’s AI matching system works in five stages:1. Profile Analysis — When you upload a candidate’s CV, the AI extracts their skills (with confidence scores), experience level, job preferences, location, and salary expectations. This creates a structured profile that the matching engine can compare against job listings.2. Search Parameter Generation — The AI builds optimized search parameters from the candidate’s profile, creating queries that capture both exact matches and semantically related roles.3. Job Database Scan — The system searches using both keyword matching and semantic search (vector embeddings). This ensures results include jobs with different wording but the same meaning.4. Preference Filtering — Results are filtered against the candidate’s preferences: location radius, salary range, job type (full-time, part-time, contract), and flexibility (remote, hybrid, on-site). Jobs outside these preferences are excluded.5. Match Scoring — Each remaining job receives a match score using a weighted formula:
  • Title relevance: 35% — How well the job title matches the candidate’s role
  • Skills alignment: 45% — Overlap between confirmed skills and job requirements
  • Experience fit: 20% — Whether seniority and years of experience align
Jobs are then categorized as Excellent Match (strong alignment), Good Match (moderate alignment), or Poor Match (weak alignment). The AI also generates a written explanation for each match, describing why it matches and listing any concerns.The entire pipeline typically completes in 30-60 seconds and delivers results via real-time SSE notification.
Several factors can affect which jobs appear in your search results:
  • Job availability — Recruitier scrapes job listings from external sources (LinkedIn, Indeed, and others). If a job was posted on a source that Recruitier does not cover, or if it was removed before Recruitier could index it, it will not appear.
  • Search criteria — Your keyword, location, experience level, and job type filters determine which jobs are included. If your criteria are too narrow, some relevant jobs might be filtered out. Try broadening your search or using fewer filters.
  • Timing — New jobs are indexed continuously (multiple times per day), but there can be a short delay between when a job is posted and when it appears in Recruitier’s database.
  • Deduplication — If the same job appears on multiple sources, Recruitier deduplicates it to show you one clean result. This means you might not see what appears to be a missing job, when in fact it was merged with a duplicate.
  • AI classification — The AI may classify a borderline job differently than you would. If you think relevant jobs are being classified as poor matches, provide feedback through the match interface to improve future results.
  • Location filtering — If the candidate’s location radius is set too narrowly, good jobs just outside the radius are excluded. Consider increasing the radius.
Recruitier’s job database is updated continuously. Job scrapers run on a regular schedule to index new listings from all supported sources.Here is the typical update frequency:
  • LinkedIn jobs — Scraped multiple times per day
  • Indeed jobs — Scraped multiple times per day
  • Other sources — Varies by source, but typically at least once per day
New jobs appear in search results as soon as they are indexed and classified. Existing jobs that have been removed from the source are also cleaned up periodically to keep your results current.The scraping infrastructure runs 24/7, so new jobs can appear at any time — including overnight. This means you might wake up to new matches for your candidates every morning. Monitored searches automatically re-run and notify you when new relevant jobs are found.
The match score is a numerical representation (0-100%) of how well a candidate aligns with a specific job. It is calculated using three weighted factors:
FactorWeightWhat It Measures
Title relevance35%How well the job title matches the candidate’s current or target role
Skills alignment45%Overlap between the candidate’s confirmed skills and job requirements
Experience fit20%Whether seniority and years of experience match
General score ranges:
  • 90-100% — Excellent match. Strong fit across all dimensions.
  • 70-89% — Good match. Relevant qualifications with some minor gaps.
  • 50-69% — Moderate match. Worth reviewing but has notable differences.
  • Below 50% — Poor match. Significant mismatches in one or more areas.
Keep in mind that the score is a guideline, not an absolute judgment. A candidate with a 70% score might still be perfect for a role if the factors that are “off” are not critical (e.g., the title is slightly different but the skills are a perfect match). Always read the AI’s written explanation alongside the score.
Yes, there are several ways to improve the quality of AI matches:1. Confirm and refine candidate skills — Since skills carry 45% of the match weight, accurate skills have the biggest impact. Review AI-extracted skills carefully, remove irrelevant ones, and add missing skills. Pay attention to confidence scores — lower confidence skills may need verification with the candidate.2. Use specific search criteria — Broad searches produce more results but lower average match quality. Narrow your keywords, specify location with a reasonable radius (30-50 km), set experience level, and choose the right job type to focus the AI on truly relevant listings.3. Give feedback on results — When you favorite or reject job matches, the AI learns from your decisions. Over time, this feedback loop improves the relevance of future matches for that candidate and for similar candidate profiles.4. Keep candidate profiles updated — If a candidate acquires new skills, changes location preferences, or adjusts salary expectations, update their profile. Outdated profiles lead to outdated matches.5. Set accurate preferences — Location radius, salary range, job type, and flexibility preferences all act as filters. If these are wrong, good jobs get filtered out.6. Review match explanations — The AI provides a written explanation for each match. Reading these helps you understand why certain jobs scored higher or lower, and what adjustments might improve results.
Recruitier sources job listings from multiple external platforms:
  • LinkedIn — One of the largest professional job boards, especially strong in the Netherlands
  • Indeed — A major job aggregator with extensive Dutch listings
  • Other sources — Additional job boards and company career pages are indexed as they become available
The scraping infrastructure continuously monitors these sources for new listings. When a new job is found, it goes through the following pipeline:
  1. Extraction — The job title, description, location, company, salary, and other details are extracted from the source
  2. Deduplication — The job is compared against existing listings to avoid duplicates across sources
  3. Classification — The AI analyzes the job to determine its category, experience level, job type, and flexibility
  4. Company enrichment — The hiring company is matched against Recruitier’s company database to add industry, size, and hiring activity information
  5. Indexing — The job is added to the searchable database (both keyword and vector/semantic indexes) and becomes available in search results
This entire pipeline runs automatically without any input from you.
Yes. When creating a job search or using client discovery, you can filter by industry. Recruitier maintains a database of companies with industry classifications (based on LinkedIn industry categories), and these classifications are used to filter search results.For job search, you can filter by:
  • Keywords (which naturally narrow to relevant industries)
  • Location and radius
  • Experience level
  • Job type (full-time, part-time, contract)
  • Flexibility (remote, hybrid, on-site)
For client discovery, you have more granular industry filters:
  • Select one or more industries from the filter dropdown
  • Combine with location, company size, and hiring activity filters
  • Use skills/technology filters to find companies using specific tools
The industry classifications are continuously updated as new company data is enriched from LinkedIn and other sources.
Running the same search again will re-scan the job sources with your criteria. You may see:
  • New results — Jobs that were posted since your last search
  • Previously seen results — Jobs you already reviewed from the earlier search
  • Removed results — Jobs that have been taken down from the source since your last search
Recruitier tracks which jobs you have already seen, favorited, or rejected. When results from a repeated search include jobs you already interacted with, their status is preserved. You will not lose your favorites or have to re-reject previously dismissed jobs.To save time and credits, consider using monitored searches instead of manually re-running searches. Monitored searches automatically re-run on a schedule and notify you only when new results appear.You can also clone searches to create variations of an existing search without rebuilding from scratch.
When you interact with match results — favoriting good matches and rejecting poor ones — the AI learning system uses this feedback to improve future results:
  • Favoriting a job tells the AI that this type of match is desirable. The system learns which combination of title, skills, company type, and experience level you consider a good fit.
  • Rejecting a job tells the AI that this match was not relevant. The system learns what to deprioritize in future results.
This feedback is applied at two levels:
  1. Candidate-specific — Improves matches for that specific candidate
  2. Pattern-based — Improves matches for similar candidate profiles
Consistently providing feedback is the single most effective way to improve match quality over time. Even a few favorites and rejections per candidate can meaningfully shift the relevance of future results.