{"payload":{"header_redesign_enabled":false,"results":[{"id":"509575872","archived":false,"color":"#DA5B0B","followers":1,"has_funding_file":false,"hl_name":"Zibo-S/AirChina-transportdata-analysis","hl_trunc_description":"Using data scraping tools in Python and R to perform ETL process of airline operational data, then compute year over year growth and depl…","language":"Jupyter Notebook","mirror":false,"owned_by_organization":false,"public":true,"repo":{"repository":{"id":509575872,"name":"AirChina-transportdata-analysis","owner_id":87764584,"owner_login":"Zibo-S","updated_at":"2022-11-09T19:54:45.009Z","has_issues":true}},"sponsorable":false,"topics":[],"type":"Public","help_wanted_issues_count":0,"good_first_issue_issues_count":0,"starred_by_current_user":false}],"type":"repositories","page":1,"page_count":1,"elapsed_millis":74,"errors":[],"result_count":1,"facets":[],"protected_org_logins":[],"topics":null,"query_id":"","logged_in":false,"sign_up_path":"/signup?source=code_search_results","sign_in_path":"/login?return_to=https%3A%2F%2Fgithub.com%2Fsearch%3Fq%3Drepo%253AZibo-S%252FAirChina-transportdata-analysis%2B%2Blanguage%253A%2522Jupyter%2BNotebook%2522","metadata":null,"warn_limited_results":false,"csrf_tokens":{"/Zibo-S/AirChina-transportdata-analysis/star":{"post":"EMChWxvvHqHLghE305LRqYy944WmkNYX4D96ahHvy-DE6MPldwU5XCe_j0TJY88MeO_d474WMrxs2dxQvn9nrg"},"/Zibo-S/AirChina-transportdata-analysis/unstar":{"post":"me2YCuvmVUz7D-3qLcCd5sTrUVwCm2zS3E7yKjknG6145atTveGW_eb0drj8f23im0kQ0a9UjgzIEL_RrLVEnA"},"/sponsors/batch_deferred_sponsor_buttons":{"post":"6ax3Rh8bBppsv32aGBAe6UhmhAUuUzqrBrSfJRi70RdMdMuzBiCwAvbsB46KX8uUdH6BjyOny0nCFBxK-B6dJQ"}}},"title":"Repository search results"}