Log in to view LinkedIn documentation.
Log in
LinkedIn Job Location IDs
The Search Jobs endpoint supports filtering results by location using the location_id parameter. This parameter accepts a LinkedIn location ID (also known as a geo URN).
Using the location_id parameter
Pass a numeric location ID to the location_id parameter to filter job results to that location. Location IDs can represent countries, states/provinces, metro areas, or cities.
Example: Jobs in the United States
curl "https://apidirect.io/v1/linkedin/jobs?query=software%20engineer&location_id=103644278" \
-H "X-API-Key: YOUR_API_KEY"
Example: Jobs in London, United Kingdom
curl "https://apidirect.io/v1/linkedin/jobs?query=data%20analyst&location_id=102257491" \
-H "X-API-Key: YOUR_API_KEY"
Example: Jobs in the San Francisco Bay Area
curl "https://apidirect.io/v1/linkedin/jobs?query=product%20manager&location_id=90000084" \
-H "X-API-Key: YOUR_API_KEY"
Common location IDs
Countries
| Location |
ID |
| United States |
103644278 |
| United Kingdom |
101165590 |
| Canada |
101174742 |
| Germany |
101282230 |
| France |
105015875 |
| India |
102713980 |
| Australia |
101452733 |
| Netherlands |
102890719 |
| Singapore |
102454443 |
| Japan |
101355337 |
| Spain |
105646813 |
| Italy |
103350119 |
| Sweden |
105117694 |
| Switzerland |
106693272 |
| Ireland |
104738515 |
| Israel |
101620260 |
| South Korea |
105149562 |
| Mexico |
103323778 |
| Poland |
105072130 |
US States
| Location |
ID |
| California |
102095887 |
| New York |
105080838 |
| Texas |
102748797 |
| Florida |
101318387 |
| Illinois |
101949407 |
| Pennsylvania |
102986501 |
| Georgia |
103950076 |
| Ohio |
106981407 |
| North Carolina |
103255397 |
| Virginia |
101630962 |
| New Jersey |
101651951 |
| Massachusetts |
101098412 |
| Washington |
103977389 |
| Colorado |
105763813 |
| Arizona |
106032500 |
| Michigan |
103051080 |
| Tennessee |
104629187 |
Major US Cities
| Location |
ID |
| New York City, New York |
102571732 |
| Los Angeles, California |
102448103 |
| San Francisco, California |
102277331 |
| Chicago, Illinois |
103112676 |
| Seattle, Washington |
104116203 |
| Austin, Texas |
104472865 |
| Denver, Colorado |
103736294 |
| Washington, DC |
104383890 |
| Atlanta, Georgia |
106224388 |
| Dallas, Texas |
104194190 |
| Houston, Texas |
103743442 |
| Miami, Florida |
102394087 |
| San Diego, California |
103918656 |
| Portland, Oregon |
104727230 |
| Minneapolis, Minnesota |
103039849 |
| Nashville, Tennessee |
105573479 |
| Raleigh, North Carolina |
100197101 |
| Phoenix, Arizona |
100219842 |
| Philadelphia, Pennsylvania |
104937023 |
US Metro Areas
| Location |
ID |
| San Francisco Bay Area |
90000084 |
| Greater Chicago Area |
90000014 |
| Dallas-Fort Worth Metroplex |
90000031 |
| Greater Houston |
90000042 |
| Greater Los Angeles Area |
90000049 |
| Atlanta Metropolitan Area |
90000052 |
| Miami-Fort Lauderdale Area |
90000056 |
| Austin, Texas Metropolitan Area |
90000064 |
| Greater New York City Area |
90000070 |
| Greater Philadelphia |
90000077 |
| Portland, Oregon Metropolitan Area |
90000079 |
| Washington DC-Baltimore Area |
90000097 |
| Greater Minneapolis-St. Paul Area |
90000512 |
| Nashville Metropolitan Area |
90000536 |
| Greater Phoenix Area |
90000620 |
| Raleigh-Durham-Chapel Hill Area |
90000664 |
Canadian Cities
| Location |
ID |
| Toronto, Ontario |
100025096 |
| Montreal, Quebec |
101728226 |
| Vancouver, British Columbia |
103366113 |
| Calgary, Alberta |
102199904 |
| Ottawa, Ontario |
106234700 |
| Edmonton, Alberta |
106535873 |
| Greater Toronto Area |
90009551 |
European Cities
| Location |
ID |
| London, England, United Kingdom |
102257491 |
| Berlin, Germany |
103035651 |
| Amsterdam, Netherlands |
102011674 |
| Paris, France |
106383538 |
| Dublin, Ireland |
105178154 |
| Barcelona, Spain |
105088894 |
| Munich (District), Germany |
105264689 |
| Stockholm, Sweden |
100907646 |
| Zurich, Switzerland |
102436504 |
| Madrid, Spain |
100994331 |
| Milan, Italy |
102873640 |
| Copenhagen, Denmark |
106743989 |
| Frankfurt am Main, Germany |
106150090 |
| Düsseldorf, Germany |
104008204 |
| Cologne, Germany |
102426246 |
| Stuttgart, Germany |
102473731 |
| Lyon, France |
103815258 |
| Marseille, France |
103857854 |
| Toulouse, France |
105073465 |
| Bordeaux, France |
104787182 |
| London Area, United Kingdom |
90009496 |
| Greater Munich Metropolitan Area |
90009735 |
| Greater Paris Metropolitan Region |
90009659 |
| Greater Barcelona Metropolitan Area |
90009761 |
| Greater Madrid Metropolitan Area |
90009790 |
Asia-Pacific Cities
| Location |
ID |
| Singapore |
102454443 |
| Tokyo, Japan |
103925994 |
| Sydney, Australia |
104769905 |
| Melbourne, Australia |
100992797 |
| Bengaluru (Bangalore), India |
105214831 |
| Mumbai, India |
106164952 |
| Hong Kong |
103291313 |
| Seoul, South Korea |
103588929 |
| Dubai, United Arab Emirates |
106204383 |
| Delhi, India |
106187582 |
| Hyderabad, India |
105556991 |
| Greater Tokyo Area |
90009987 |
| Greater Sydney Area |
90009524 |
| Greater Melbourne Area |
90009521 |
Full location list
The complete list of location IDs is available as a JSON file:
Download linkedin-job-locations.json
The JSON file contains thousands of locations with the following format:
[
{
"id": "103644278",
"name": "United States"
},
{
"id": "102095887",
"name": "California, United States"
},
{
"id": "102277331",
"name": "San Francisco, California, United States"
}
]
You can search this file for the location you need and use the id value as the location_id parameter.
Finding location IDs from LinkedIn
If the location you need is not in the list above, you can find its ID directly from LinkedIn:
- Go to linkedin.com/jobs and sign in
- Enter any search term and click the Location filter
- Type the location you want and select it from the dropdown
- Run the search
- Look at the URL in your browser’s address bar. It will contain a
geoId parameter:
https://www.linkedin.com/jobs/search/?geoId=103644278&keywords=...
The number after geoId= is the location ID. In this example, 103644278 is the ID for the United States.
If the URL contains f_PP instead of geoId, the value after f_PP= is the same location ID:
https://www.linkedin.com/jobs/search/?f_PP=103644278&keywords=...