Naukri Jobs Scraper: India Listings & Salary
Pricing
$1.40 / 1,000 jobs
Naukri Jobs Scraper: India Listings & Salary
Scrape Naukri.com jobs at scale: title, company, salary (normalised to lakhs), experience, skills, location, remote or hybrid work mode. India residential proxy, no login, pay per job. Works in Claude, ChatGPT & any MCP AI agent.
Pricing
$1.40 / 1,000 jobs
Rating
0.0
(0)
Developer
The Mine Works
Maintained by CommunityActor stats
0
Bookmarked
18
Total users
9
Monthly active users
2 days ago
Last modified
Share
๐ผ Naukri Job Scraper: India Jobs, Salary & Skills Data API
Overview
Naukri Job Scraper turns any Naukri.com search into structured jobs data. Feed it keywords like python developer or data scientist, filter by city, salary band, experience, work mode, and industry, and get clean JSON rows with title, company, salary (normalised to lakhs), skills, location, and posting date. No login, no cookies, and India residential proxy is used by default so results match what a real jobseeker in Bangalore would see.
It's the fastest way to build a live labour-market dataset for India: track compensation benchmarks, monitor competitor hiring, source candidates, or feed a jobs board without dealing with Naukri's front-end HTML.
โ No login required | โ India residential proxy | โ Pay per job returned | โ MCP-ready for AI agents
Features
Keyword & location search. Query any role in any Indian city or all India at once.
Salary normalisation. Salaries parsed to numeric lakhs for direct filtering and comparison.
Experience & work-mode filters. Filter by minimum and maximum years, remote, hybrid, or work from office.
Rich skills data. Tagged skills, industry, functional area, and role category as arrays.
Deep pagination. Naukri's paginated results are followed to the end within your maxResults budget.
How it works
The actor issues Naukri search requests directly and parses the same structured payload the Naukri front-end uses. Each keyword you supply is searched separately and results are merged and deduplicated by internal job ID. Filters (location, experience, salary, work mode, job type) are appended to the query as facets so Naukri does the filtering server-side, which is faster and more accurate than post-filtering scraped HTML.
Salary strings ("6-12 Lacs P.A.") are parsed to numeric fields (salary_min_lakhs, salary_max_lakhs) so you can sort and filter by compensation in downstream tools. Every request runs through an India residential proxy pool so results match what a real user in India would see.
๐งพ Input configuration
{"searchKeywords": ["python developer", "data scientist"],"location": "Bangalore","experienceMinYears": 3,"experienceMaxYears": 8,"salaryMinLakhs": 15,"workMode": "hybrid","maxResults": 200}
๐ค Output format
{"job_id": "310725007833","title": "Senior Python Developer","company": "Acme Analytics","location": "Bengaluru","experience_min_years": 4,"experience_max_years": 8,"experience_text": "4-8 Yrs","salary_min_lakhs": 15,"salary_max_lakhs": 25,"salary_text": "15-25 Lacs P.A.","skills": ["Python", "Django", "AWS", "PostgreSQL"],"work_mode": "Hybrid","job_type": "Permanent","posted_date": "2026-07-11","job_url": "https://www.naukri.com/job-listings-...-310725007833"}
Every job record contains these fields:
| Field | Description |
|---|---|
๐ job_id | Naukri internal job ID |
๐ title | Job title |
๐ข company | Company name |
๐ location | Job location(s) as listed on Naukri |
โ experience_min_years | Minimum years of experience required |
โณ experience_max_years | Maximum years of experience required |
๐ฐ salary_min_lakhs | Minimum salary in INR lakhs (numeric) |
๐ต salary_max_lakhs | Maximum salary in INR lakhs (numeric) |
๐ ๏ธ skills | Tagged skills as an array |
๐ work_mode | Work from office, remote, or hybrid |
๐ job_type | Permanent, contract, freelance, temporary, internship |
๐๏ธ posted_date | ISO date the job was posted |
๐ job_url | Canonical Naukri job posting URL |
๐ผ Common use cases
Compensation benchmarking Pull every senior Python role in Bangalore and compute median and P90 salary by experience band. Compare pay across cities, industries, or company sizes for a specific role.
Competitor hiring intelligence Track how many roles a competitor has open, in which functions, and how quickly they close. Detect new market entries, team expansions, or product bets from job title changes.
Talent sourcing Feed roles into an ATS or sourcing tool to prospect candidates against active reqs. Build a jobs digest for a specific niche (fintech backend, GenAI, product design).
Jobs board & marketplace Power a niche jobs site with fresh listings pulled by keyword or industry every day. Enrich existing job feeds with normalised salary and skill data.
๐ Getting started
- Open the actor and add one or more search keywords (
python developer,data scientist). - Set a location (
Bangalore,Mumbai,Delhi NCR) or leave blank for all India. - Optionally add experience, salary, work-mode, and job-type filters.
- Set max jobs to return.
- Click Start. Download as JSON, CSV, or Excel, or pull the dataset via API or MCP.
FAQ
Does it log in to Naukri? No. The actor works from public search endpoints only. No account, no cookies, no captcha, no ban risk.
Why are salaries in lakhs?
Naukri publishes almost every Indian salary in "lacs per annum". The actor parses that string into numeric salary_min_lakhs and salary_max_lakhs fields so you can sort, filter, and aggregate compensation directly.
How do I get more than one page of results?
Set maxResults to whatever budget you want. The actor follows Naukri's paginated result set until the budget is reached or Naukri runs out of listings for the query.
Can I use it in an AI agent? Yes. It's exposed as an MCP tool. See below.
Use in Claude, ChatGPT & any MCP agent
https://mcp.apify.com/?tools=themineworks/naukri-jobs
Or call it programmatically with the Apify client:
import { ApifyClient } from 'apify-client';const client = new ApifyClient({ token: 'YOUR_APIFY_TOKEN' });const run = await client.actor('themineworks/naukri-jobs').call({searchKeywords: ['python developer'],location: 'Bangalore',maxResults: 100,});const { items } = await client.dataset(run.defaultDatasetId).listItems();console.log(items);
๐ ๏ธ Complete your hiring intelligence pipeline
Found the roles. Now enrich and act on them with the rest of the suite:
- LinkedIn Company Scraper: profile the hiring company: size, industry, HQ.
- LinkedIn Employees Scraper: find the recruiters and hiring managers at any of the companies.
- B2B Leads Finder: turn a target company list into named contacts for outreach.
Typical flow: naukri-jobs surfaces the roles, linkedin-company-details profiles the employer, linkedin-employees finds the hiring team.
Questions or need a custom field set? Reach out through the Apify profile.