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China recorded 5226 Coronavirus Deaths since the epidemic began, according to the World Health Organization (WHO). In addition, China reported 99256991 Coronavirus Cases. This dataset includes a chart with historical data for China Coronavirus Deaths.
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COVID-19: Number of Death: Year to Date: Hubei: Wuhan data was reported at 3,869.000 Person in 13 Dec 2022. This stayed constant from the previous number of 3,869.000 Person for 12 Dec 2022. COVID-19: Number of Death: Year to Date: Hubei: Wuhan data is updated daily, averaging 3,869.000 Person from Jan 2020 (Median) to 13 Dec 2022, with 1069 observations. The data reached an all-time high of 3,869.000 Person in 13 Dec 2022 and a record low of 1.000 Person in 14 Jan 2020. COVID-19: Number of Death: Year to Date: Hubei: Wuhan data remains active status in CEIC and is reported by National Health Commission. The data is categorized under High Frequency Database’s Disease Outbreaks – Table CN.GZ: COVID-19: No of Death. Clinical diagnosis included in since 12Feb 自2月12日起纳入临床诊断
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What Is COVID-19?
A coronavirus is a kind of common virus that causes an infection in your nose, sinuses, or upper throat. Most coronaviruses aren't dangerous.
COVID-19 is a disease that can cause what doctors call a respiratory tract infection. It can affect your upper respiratory tract (sinuses, nose, and throat) or lower respiratory tract (windpipe and lungs). It's caused by a coronavirus named SARS-CoV-2.
It spreads the same way other coronaviruses do, mainly through person-to-person contact. Infections range from mild to serious.
SARS-CoV-2 is one of seven types of coronavirus, including the ones that cause severe diseases like Middle East respiratory syndrome (MERS) and sudden acute respiratory syndrome (SARS). The other coronaviruses cause most of the colds that affect us during the year but aren’t a serious threat for otherwise healthy people.
In early 2020, after a December 2019 outbreak in China, the World Health Organization identified SARS-CoV-2 as a new type of coronavirus. The outbreak quickly spread around the world.
Is there more than one strain of SARS-CoV-2?
It’s normal for a virus to change, or mutate, as it infects people. A Chinese study of 103 COVID-19 cases suggests the virus that causes it has done just that. They found two strains, which they named L and S. The S type is older, but the L type was more common in early stages of the outbreak. They think one may cause more cases of the disease than the other, but they’re still working on what it all means.
How long will the coronavirus last?
It’s too soon to tell how long the pandemic will continue. It depends on many things, including researchers’ work to learn more about the virus, their search for a treatment and a vaccine, and the public’s efforts to slow the spread.
Dozens of vaccine candidates are in various stages of development and testing. This process usually takes years. Researchers are speeding it up as much as they can, but it still might take 12 to 18 months to find a vaccine that works and is safe.
Symptoms of COVID-19
The main symptoms include:
The virus can lead to pneumonia, respiratory failure, septic shock, and death. Many COVID-19 complications may be caused by a condition known as cytokine release syndrome or a cytokine storm. This is when an infection triggers your immune system to flood your bloodstream with inflammatory proteins called cytokines. They can kill tissue and damage your organs.
STAY HOME. STAY SAFE !
ALL DATASETS HAVE BEEN CLEANED FOR DIRECT USE.
Total_World_covid-19.csv : This dataset contains the worldwide data country-wise such as total cases , total active, deaths, etc. along with testing data.
Total_India_covid-19.csv : This dataset contains India level data statewise such as confirmed cases , active cases, deaths, etc.
Total_US_covid-19.csv : This dataset contains India level data statewise such as confirmed cases , active cases, deaths, etc.
Daily_States_India.csv : This dataset contains daily statewise data of India such as daily confirmed , daily active , daily deaths and daily recovered.
Total_Maharshtra_covid-19.csv : This dataset contains Maharashtra's district wise data such as confirmed cases , active cases, deaths, etc.
World and US data has been collected from Worldometer . Thanks a lot.
India and State level along with Maharashtra district data has been collected from Covid19India. Special thanks to them for providing updated and such wonderful data .
1) What has been the Covid-19 trend across the world, Is it declining? Is it increasing? 2) Which countries have been able to sustain and control the virus spread? 3) How is India coping up with the virus? Have they been able to control it at the given cost of 2 months nationwide lockdown?
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3 files attached which are 1) COVID Korea Status 2) COVID Korea Demo 3) COVID Korea Geo
1) COVID Korea Status : General daily update . STATE_DT : standard date . STATE_TIME : standard time . DECIDE_CNT : confirmed cases . CLEAR_CNT : clear cases after hospitalization . EXAM_CNT : examination cases . DEATH_CNT : death counts . CARE_CNT : counts on care . RESUTL_NEG_CNT : negative results after examination . ACC_EXAM_CNT : accumulative examination counts . ACC_EXAM_COMP_CNT: accumulative examination completes count . ACC_DEF_RATE : accumulative confirmed rate . CREATE_DT : posted date and time . UPDATE_DT : updated date and time
2) COVID Korea Demo : Updates with demographic information . GUBUN : classified by gender and age . CONF_CASE : confirmed cases . CONF_CASE_RATE : confirmed case rate . DEATH : death counts . DEATH_RATE : death rate . CRITICAL_RATE : critical rate . CREATE_DT : created date and time . UPDATE_DT : updated date and time
3) COVID Korea Geo : Updates with geographic information
. CREATE_DT : created date and time
. DEATH_CNT : death counts
. GUBUN : city name
. GUBUN_CN : city name in Chinese
. GUBUN_EN : city name in English
. INC_DEC : increase/decrease vs. past day
. ISOL_CLEAR_CNT : clear counts from isolation
. QUR_RATE : confirmed rate per 100K people
. STD_DAY : standard day
. UPDATE_DT : updated date and time
. DEF_CNT : confirmed cases
. ISOL_ING_CNT : isolated cases
. OVER_FLOW_CNT : confirmed cases from foreign countries
. LOCAL_OCC_CNT : domestic confirmed cases
If these are useful, I will frequently update. Thanks.
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A data set on COVID-19 pandemic in China, which covers daily statistics of confirmed cases (new and cumulative), recoveries (new and cumulative) and deaths (new and cumulative) at city level. All data are extracted from Chinese government reports.
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The dataset contains COVID-19 cases, recovered and deaths, daily reported by prefecture level from the website DXY.cn which collect public data from National Health Commission, provincial health commission, provincial governments, Hong Kong official channel, Macao official channel and Taiwan official channel. The data are extracted in a CSV format everyday at 16:00 EST. The name of the prefecture, province and country are translated by using Google Translate.
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COVID-19 is a novel coronavirus that emerged in China in 2019. However, Coronaviruses are zoonotic viruses that circulate amongst animals and spill ove9r to humans from time to time and have been causing illness ranging from mild symptoms to severe illness. On 7 January 2020, Chinese authorities confirmed COVID-19 and on 30 January 2020, the Director-General of WHO declared the COVID-19 outbreak a Public Health Emergency of International concern. On 8 March, Bangladesh has confirmed 3 laboratories tested coronavirus cases for the very first time. This Dataset file contains the data for analysing different cases of COVID-19 outbreak in Bangladesh. Date in a specific format, Daily new confirmed cases, Total confirmed cases, Daily new deaths, total deaths, Daily new recovered, Total recovered, Daily New Tests, Total Tests, and Active Cases are the vailable data format for this dataset.
This dataset contains every single days data of COVID-19 outbreak in Bangladesh. From the first confirmed case of COVID-19, on 8 March 2020, it contains each confirmed, recovery, and death cases till date, This is a time-series dataset and this dataset will updated in a daily basis.
I would like to acknowldgwe the following organizations for their great efforts to make these data available for the greater community. Institute of Epidemiology, Disease Control and Research (IEDCR): https://www.iedcr.gov.bd/ DGHS:https://dghs.gov.bd/index.php/en/ Official Website of BD Government: http://www.corona.gov.bd/ WHO: https://www.who.int/countries/bgd/en/
As an academician and data science resercher, I feel this is an ample need for the greater data science community all over the world to understand and develop meaningful insights on the outbreak of COVID-19 in Bangladesh. Constructive suggestions and comments are highly appreciated.
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Comparing the performance of the proposed hybrid and the base models on the malaria deaths in China before and during COVID-19 Pandemic.
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2019 Novel Coronavirus (2019-nCoV) is a virus (more specifically, a coronavirus) identified as the cause of an outbreak of respiratory illness first detected in Wuhan, China. (source: CDC)
In this dataset, you will have minutes-level timesereis 2019-nCoV reporting data which can help capture the outbreak trend more accurately than the daily data.
Available File Format
Time Window
Date Range
Geographic Region
Columns
Special thanks to @globalcitizen who has scrapped the raw data files from multiple public sources.
Repo here ==> https://github.com/globalcitizen/2019-wuhan-coronavirus-data
Please contact me if you consider this dataset violate your copyright and I'm happy to remove it.
Appreciate it Thanks
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from 2020/02/05 to now, updating. Just in China, every city in every province. Every 10min or more to catch data, it depends data is or not change.
Every province csv file has same 8 columns: - timestamp timestamp for data catch(抓取数据的时间戳) - provinceName province name,like 湖北(省份名,中文) - cityName city name,like 武汉(城市名,中文) - confirmedCount count of confirmed people(确诊的人数) - suspectedCount count of suspected people(疑似人数) - curedCount count of cured people(治愈人数) - deadCount coutn of dead people(死亡人数) - locationId post id(邮政id)
China csv file(中国.csv) has 5 columns: - timestamp timestamp for data catch(抓取数据的时间戳) - confirmedCount count of confirmed people(确诊的人数) - suspectedCount count of suspected people(疑似人数) - curedCount count of cured people(治愈人数) - deadCount coutn of dead people(死亡人数)
PS: Only 中国.csv(China.csv) has real suspected count data.ina.csv) has real suspected count data.
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Comparing the performance of the proposed hybrid model and GRU model on P. Falciparum cases before the COVID-19 pandemic.
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- sars_2003_complete_dataset_clean.csv - The file contains day by day no. from March to July 2003 across the world.
- summary_data_clean.csv - Final no.s from across the world
https://github.com/imdevskp/sars-2003-outbreak-data-webscraping-code
Photo from CDC website https://www.cdc.gov/dotw/sars/index.html#
- COVID-19 - https://www.kaggle.com/imdevskp/corona-virus-report
- MERS - https://www.kaggle.com/imdevskp/mers-outbreak-dataset-20122019
- Ebola Western Africa 2014 Outbreak - https://www.kaggle.com/imdevskp/ebola-outbreak-20142016-complete-dataset
- H1N1 | Swine Flu 2009 Pandemic Dataset - https://www.kaggle.com/imdevskp/h1n1-swine-flu-2009-pandemic-dataset
- SARS 2003 Pandemic - https://www.kaggle.com/imdevskp/sars-outbreak-2003-complete-dataset
- HIV AIDS - https://www.kaggle.com/imdevskp/hiv-aids-dataset
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China recorded 5226 Coronavirus Deaths since the epidemic began, according to the World Health Organization (WHO). In addition, China reported 99256991 Coronavirus Cases. This dataset includes a chart with historical data for China Coronavirus Deaths.