johns_hopkins_csse_daily_reports
Data source: Johns Hopkins CSSE · About: simonw/covid-19-datasette
27 rows where country_or_region = "Brazil" and "day" is on date 2022-07-02 sorted by day descending
This data as json, yaml, Notebook, copyable, CSV (advanced)
province_or_state 27
- Acre 1
- Alagoas 1
- Amapa 1
- Amazonas 1
- Bahia 1
- Ceara 1
- Distrito Federal 1
- Espirito Santo 1
- Goias 1
- Maranhao 1
- Mato Grosso 1
- Mato Grosso do Sul 1
- Minas Gerais 1
- Para 1
- Paraiba 1
- Parana 1
- Pernambuco 1
- Piaui 1
- Rio Grande do Norte 1
- Rio Grande do Sul 1
- Rio de Janeiro 1
- Rondonia 1
- Roraima 1
- Santa Catarina 1
- Sao Paulo 1
- Sergipe 1
- Tocantins 1
country_or_region 1
- Brazil · 27 ✖
Link | rowid | day ▲ | country_or_region | province_or_state | admin2 | fips | confirmed | deaths | recovered | active | latitude | longitude | last_update | combined_key |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
3365042 | 3365042 | 2022-07-02 | Brazil | Acre | 126904 | 2004 | 0 | -9.0238 | -70.812 | 2022-07-03 04:20:59 | Acre, Brazil | |||
3365043 | 3365043 | 2022-07-02 | Brazil | Alagoas | 306334 | 6958 | 0 | -9.5713 | -36.782 | 2022-07-03 04:20:59 | Alagoas, Brazil | |||
3365044 | 3365044 | 2022-07-02 | Brazil | Amapa | 161611 | 2140 | 0 | 0.902 | -52.003 | 2022-07-03 04:20:59 | Amapa, Brazil | |||
3365045 | 3365045 | 2022-07-02 | Brazil | Amazonas | 586051 | 14178 | 0 | -3.4168 | -65.8561 | 2022-07-03 04:20:59 | Amazonas, Brazil | |||
3365046 | 3365046 | 2022-07-02 | Brazil | Bahia | 1584287 | 30045 | 0 | -12.5797 | -41.7007 | 2022-07-03 04:20:59 | Bahia, Brazil | |||
3365047 | 3365047 | 2022-07-02 | Brazil | Ceara | 1269537 | 27212 | 0 | -5.4984 | -39.3206 | 2022-07-03 04:20:59 | Ceara, Brazil | |||
3365048 | 3365048 | 2022-07-02 | Brazil | Distrito Federal | 807705 | 11766 | 0 | -15.7998 | -47.8645 | 2022-07-03 04:20:59 | Distrito Federal, Brazil | |||
3365049 | 3365049 | 2022-07-02 | Brazil | Espirito Santo | 1128376 | 14505 | 0 | -19.1834 | -40.3089 | 2022-07-03 04:20:59 | Espirito Santo, Brazil | |||
3365050 | 3365050 | 2022-07-02 | Brazil | Goias | 1511645 | 26935 | 0 | -15.827 | -49.8362 | 2022-07-03 04:20:59 | Goias, Brazil | |||
3365051 | 3365051 | 2022-07-02 | Brazil | Maranhao | 443513 | 10896 | 0 | -4.9609 | -45.2744 | 2022-07-03 04:20:59 | Maranhao, Brazil | |||
3365052 | 3365052 | 2022-07-02 | Brazil | Mato Grosso | 761995 | 14715 | 0 | -12.6819 | -56.9211 | 2022-07-03 04:20:59 | Mato Grosso, Brazil | |||
3365053 | 3365053 | 2022-07-02 | Brazil | Mato Grosso do Sul | 551310 | 10626 | 0 | -20.7722 | -54.7852 | 2022-07-03 04:20:59 | Mato Grosso do Sul, Brazil | |||
3365054 | 3365054 | 2022-07-02 | Brazil | Minas Gerais | 3633464 | 62170 | 0 | -18.5122 | -44.555 | 2022-07-03 04:20:59 | Minas Gerais, Brazil | |||
3365055 | 3365055 | 2022-07-02 | Brazil | Para | 783714 | 18468 | 0 | -1.9981 | -54.9306 | 2022-07-03 04:20:59 | Para, Brazil | |||
3365056 | 3365056 | 2022-07-02 | Brazil | Paraiba | 621341 | 10262 | 0 | -7.24 | -36.782 | 2022-07-03 04:20:59 | Paraiba, Brazil | |||
3365057 | 3365057 | 2022-07-02 | Brazil | Parana | 2631251 | 43818 | 0 | -25.2521 | -52.0215 | 2022-07-03 04:20:59 | Parana, Brazil | |||
3365058 | 3365058 | 2022-07-02 | Brazil | Pernambuco | 982322 | 21876 | 0 | -8.8137 | -36.9541 | 2022-07-03 04:20:59 | Pernambuco, Brazil | |||
3365059 | 3365059 | 2022-07-02 | Brazil | Piaui | 373495 | 7767 | 0 | -7.7183 | -42.7289 | 2022-07-03 04:20:59 | Piaui, Brazil | |||
3365060 | 3365060 | 2022-07-02 | Brazil | Rio Grande do Norte | 528467 | 8272 | 0 | -5.4026 | -36.9541 | 2022-07-03 04:20:59 | Rio Grande do Norte, Brazil | |||
3365061 | 3365061 | 2022-07-02 | Brazil | Rio Grande do Sul | 2555061 | 40057 | 0 | -30.0346 | -51.2177 | 2022-07-03 04:20:59 | Rio Grande do Sul, Brazil | |||
3365062 | 3365062 | 2022-07-02 | Brazil | Rio de Janeiro | 2355371 | 74157 | 0 | -22.9068 | -43.1729 | 2022-07-03 04:20:59 | Rio de Janeiro, Brazil | |||
3365063 | 3365063 | 2022-07-02 | Brazil | Rondonia | 418610 | 7249 | 0 | -11.5057 | -63.5806 | 2022-07-03 04:20:59 | Rondonia, Brazil | |||
3365064 | 3365064 | 2022-07-02 | Brazil | Roraima | 160977 | 2153 | 0 | -2.7376 | -62.0751 | 2022-07-03 04:20:59 | Roraima, Brazil | |||
3365065 | 3365065 | 2022-07-02 | Brazil | Santa Catarina | 1797487 | 22046 | 0 | -27.2423 | -50.2189 | 2022-07-03 04:20:59 | Santa Catarina, Brazil | |||
3365066 | 3365066 | 2022-07-02 | Brazil | Sao Paulo | 5738245 | 171055 | 0 | -23.5505 | -46.6333 | 2022-07-03 04:20:59 | Sao Paulo, Brazil | |||
3365067 | 3365067 | 2022-07-02 | Brazil | Sergipe | 330900 | 6360 | 0 | -10.5741 | -37.3857 | 2022-07-03 04:20:59 | Sergipe, Brazil | |||
3365068 | 3365068 | 2022-07-02 | Brazil | Tocantins | 321874 | 4168 | 0 | -10.1753 | -48.2982 | 2022-07-03 04:20:59 | Tocantins, Brazil |
Advanced export
JSON shape: default, array, newline-delimited
CREATE TABLE [johns_hopkins_csse_daily_reports] ( [day] TEXT, [country_or_region] TEXT, [province_or_state] TEXT, [admin2] TEXT, [fips] TEXT, [confirmed] INTEGER, [deaths] INTEGER, [recovered] INTEGER, [active] TEXT, [latitude] TEXT, [longitude] TEXT, [last_update] TEXT, [combined_key] TEXT ); CREATE INDEX [idx_johns_hopkins_csse_daily_reports_day] ON [johns_hopkins_csse_daily_reports] ([day]); CREATE INDEX [idx_johns_hopkins_csse_daily_reports_province_or_state] ON [johns_hopkins_csse_daily_reports] ([province_or_state]); CREATE INDEX [idx_johns_hopkins_csse_daily_reports_country_or_region] ON [johns_hopkins_csse_daily_reports] ([country_or_region]); CREATE INDEX [idx_johns_hopkins_csse_daily_reports_combined_key] ON [johns_hopkins_csse_daily_reports] ([combined_key]);