ny_times_us_counties
Data license: LICENSE · Data source: The New York Times · About: simonw/covid-19-datasette
67 rows where "date" is on date 2022-05-07 and state = "Pennsylvania" sorted by date descending
This data as json, yaml, Notebook, copyable, CSV (advanced)
Link | rowid | date ▲ | county | state | fips | cases | deaths |
---|---|---|---|---|---|---|---|
2482300 | 2482300 | 2022-05-07 | Adams | Pennsylvania | 42001 | 24996 | 362 |
2482301 | 2482301 | 2022-05-07 | Allegheny | Pennsylvania | 42003 | 268725 | 3319 |
2482302 | 2482302 | 2022-05-07 | Armstrong | Pennsylvania | 42005 | 15349 | 343 |
2482303 | 2482303 | 2022-05-07 | Beaver | Pennsylvania | 42007 | 40525 | 743 |
2482304 | 2482304 | 2022-05-07 | Bedford | Pennsylvania | 42009 | 11010 | 275 |
2482305 | 2482305 | 2022-05-07 | Berks | Pennsylvania | 42011 | 103139 | 1594 |
2482306 | 2482306 | 2022-05-07 | Blair | Pennsylvania | 42013 | 29807 | 616 |
2482307 | 2482307 | 2022-05-07 | Bradford | Pennsylvania | 42015 | 15945 | 206 |
2482308 | 2482308 | 2022-05-07 | Bucks | Pennsylvania | 42017 | 125424 | 1898 |
2482309 | 2482309 | 2022-05-07 | Butler | Pennsylvania | 42019 | 44918 | 742 |
2482310 | 2482310 | 2022-05-07 | Cambria | Pennsylvania | 42021 | 34801 | 732 |
2482311 | 2482311 | 2022-05-07 | Cameron | Pennsylvania | 42023 | 816 | 21 |
2482312 | 2482312 | 2022-05-07 | Carbon | Pennsylvania | 42025 | 16072 | 294 |
2482313 | 2482313 | 2022-05-07 | Centre | Pennsylvania | 42027 | 35736 | 349 |
2482314 | 2482314 | 2022-05-07 | Chester | Pennsylvania | 42029 | 93973 | 1158 |
2482315 | 2482315 | 2022-05-07 | Clarion | Pennsylvania | 42031 | 8274 | 202 |
2482316 | 2482316 | 2022-05-07 | Clearfield | Pennsylvania | 42033 | 19438 | 348 |
2482317 | 2482317 | 2022-05-07 | Clinton | Pennsylvania | 42035 | 9096 | 127 |
2482318 | 2482318 | 2022-05-07 | Columbia | Pennsylvania | 42037 | 15343 | 246 |
2482319 | 2482319 | 2022-05-07 | Crawford | Pennsylvania | 42039 | 19946 | 318 |
2482320 | 2482320 | 2022-05-07 | Cumberland | Pennsylvania | 42041 | 51406 | 892 |
2482321 | 2482321 | 2022-05-07 | Dauphin | Pennsylvania | 42043 | 59511 | 964 |
2482322 | 2482322 | 2022-05-07 | Delaware | Pennsylvania | 42045 | 112267 | 1874 |
2482323 | 2482323 | 2022-05-07 | Elk | Pennsylvania | 42047 | 7156 | 101 |
2482324 | 2482324 | 2022-05-07 | Erie | Pennsylvania | 42049 | 57747 | 759 |
2482325 | 2482325 | 2022-05-07 | Fayette | Pennsylvania | 42051 | 31216 | 674 |
2482326 | 2482326 | 2022-05-07 | Forest | Pennsylvania | 42053 | 2240 | 35 |
2482327 | 2482327 | 2022-05-07 | Franklin | Pennsylvania | 42055 | 40558 | 694 |
2482328 | 2482328 | 2022-05-07 | Fulton | Pennsylvania | 42057 | 4141 | 65 |
2482329 | 2482329 | 2022-05-07 | Greene | Pennsylvania | 42059 | 8490 | 104 |
2482330 | 2482330 | 2022-05-07 | Huntingdon | Pennsylvania | 42061 | 11568 | 247 |
2482331 | 2482331 | 2022-05-07 | Indiana | Pennsylvania | 42063 | 17563 | 356 |
2482332 | 2482332 | 2022-05-07 | Jefferson | Pennsylvania | 42065 | 9088 | 233 |
2482333 | 2482333 | 2022-05-07 | Juniata | Pennsylvania | 42067 | 4781 | 176 |
2482334 | 2482334 | 2022-05-07 | Lackawanna | Pennsylvania | 42069 | 44534 | 772 |
2482335 | 2482335 | 2022-05-07 | Lancaster | Pennsylvania | 42071 | 122133 | 1888 |
2482336 | 2482336 | 2022-05-07 | Lawrence | Pennsylvania | 42073 | 19030 | 416 |
2482337 | 2482337 | 2022-05-07 | Lebanon | Pennsylvania | 42075 | 36833 | 518 |
2482338 | 2482338 | 2022-05-07 | Lehigh | Pennsylvania | 42077 | 90776 | 1242 |
2482339 | 2482339 | 2022-05-07 | Luzerne | Pennsylvania | 42079 | 74580 | 1361 |
2482340 | 2482340 | 2022-05-07 | Lycoming | Pennsylvania | 42081 | 28695 | 520 |
2482341 | 2482341 | 2022-05-07 | McKean | Pennsylvania | 42083 | 8245 | 141 |
2482342 | 2482342 | 2022-05-07 | Mercer | Pennsylvania | 42085 | 23500 | 498 |
2482343 | 2482343 | 2022-05-07 | Mifflin | Pennsylvania | 42087 | 12328 | 276 |
2482344 | 2482344 | 2022-05-07 | Monroe | Pennsylvania | 42089 | 37581 | 524 |
2482345 | 2482345 | 2022-05-07 | Montgomery | Pennsylvania | 42091 | 156254 | 2324 |
2482346 | 2482346 | 2022-05-07 | Montour | Pennsylvania | 42093 | 4596 | 93 |
2482347 | 2482347 | 2022-05-07 | Northampton | Pennsylvania | 42095 | 80977 | 1093 |
2482348 | 2482348 | 2022-05-07 | Northumberland | Pennsylvania | 42097 | 23013 | 534 |
2482349 | 2482349 | 2022-05-07 | Perry | Pennsylvania | 42099 | 8857 | 184 |
2482350 | 2482350 | 2022-05-07 | Philadelphia | Pennsylvania | 42101 | 315614 | 5105 |
2482351 | 2482351 | 2022-05-07 | Pike | Pennsylvania | 42103 | 10453 | 96 |
2482352 | 2482352 | 2022-05-07 | Potter | Pennsylvania | 42105 | 3222 | 92 |
2482353 | 2482353 | 2022-05-07 | Schuylkill | Pennsylvania | 42107 | 34661 | 674 |
2482354 | 2482354 | 2022-05-07 | Snyder | Pennsylvania | 42109 | 8129 | 158 |
2482355 | 2482355 | 2022-05-07 | Somerset | Pennsylvania | 42111 | 18793 | 408 |
2482356 | 2482356 | 2022-05-07 | Sullivan | Pennsylvania | 42113 | 1078 | 36 |
2482357 | 2482357 | 2022-05-07 | Susquehanna | Pennsylvania | 42115 | 8089 | 109 |
2482358 | 2482358 | 2022-05-07 | Tioga | Pennsylvania | 42117 | 8187 | 193 |
2482359 | 2482359 | 2022-05-07 | Union | Pennsylvania | 42119 | 11797 | 154 |
2482360 | 2482360 | 2022-05-07 | Venango | Pennsylvania | 42121 | 11327 | 240 |
2482361 | 2482361 | 2022-05-07 | Warren | Pennsylvania | 42123 | 7446 | 210 |
2482362 | 2482362 | 2022-05-07 | Washington | Pennsylvania | 42125 | 51409 | 652 |
2482363 | 2482363 | 2022-05-07 | Wayne | Pennsylvania | 42127 | 10350 | 172 |
2482364 | 2482364 | 2022-05-07 | Westmoreland | Pennsylvania | 42129 | 80538 | 1376 |
2482365 | 2482365 | 2022-05-07 | Wyoming | Pennsylvania | 42131 | 5208 | 106 |
2482366 | 2482366 | 2022-05-07 | York | Pennsylvania | 42133 | 119729 | 1501 |
Advanced export
JSON shape: default, array, newline-delimited
CREATE TABLE [ny_times_us_counties] ( [date] TEXT, [county] TEXT, [state] TEXT, [fips] INTEGER, [cases] INTEGER, [deaths] INTEGER ); CREATE INDEX [idx_ny_times_us_counties_state] ON [ny_times_us_counties] ([state]); CREATE INDEX [idx_ny_times_us_counties_county] ON [ny_times_us_counties] ([county]); CREATE INDEX [idx_ny_times_us_counties_fips] ON [ny_times_us_counties] ([fips]); CREATE INDEX [idx_ny_times_us_counties_date] ON [ny_times_us_counties] ([date] desc);