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Coronavirus in Switzerland

Affected Population

0.25 %

This is the part of confirmed infection cases against the total 9 million of its population.

Affected 1 of every 397
Failed to recover 1 of every 11,231

Recovery Pie

The whole pie reflects the total number of confirmed cases of people infected by coronavirus in Switzerland.

Raw Numbers on April 6th, 2020

21,657confirmed+557

8,056recovered+1,641

765failed+50

12,836active−1,134

Daily Flow

The height of a single bar is the total number of people suffered from Coronavirus in Switzerland and confirmed to be infected. It includes three parts: those who could or could not recover and those who are currently in the active phase of the disease.

New Confirmed Cases

This graph shows the number of new cases by day. The lightblue bars are the number of the new total confirmed cases appeared that day.

Daily Speed

This graph shows the speed of growth (in %) over time in Switzerland. The main three parameters are the number of confirmed cases, the number of recoveries and failures. The orange line is the speed of changing of the number of active cases (i.e., of those, who are still ill).

Note. When the speed is positive, the number of cases grows every day. The line going down means that the speed decreases, and while there may be more cases the next day, the disease spread is slowing down. If the speed goes below zero, that means that fewer cases registered today than yesterday.

Mortality Level

The gray bars on this graph display the absolute number of deaths that happen in Switzerland every month during the recent five years of available data. The red bars are the absolute numbers of people died due to the COVID-19 infection.

Weekly Levels

This graph draws the number of deaths in Switzerland connected to the COVID-19 infection aggregated by weeks of 2020.

Crude rates

Crude mortality rate is the number of people died in a country within a year per each 1000 of population.

Here, the crude rate for Switzerland is shown for the last 50 years. The red bar against 2020 is the number of people died due to COVID-19 per each 1000 people. Thus, you can directly compare the two parameters.

Note that the vertical axis is drawn in logarithmic scale by default.

Raw Daily Numbers

Download as CSV | XLS

Date Confirmed
cases
Daily
growth, %
Recovered
cases
Died
cases
Active
cases
Recovery
rate, %
Mortality
rate, %
Affected
population, %
Confirmed
per million
Died
per million
Apr 6th 21,657 2.6 % 8,056 765 12,836 37.2 % 3.5 % 0.25 % 2520.78 89.04
Apr 5th 21,100 2.9 % 6,415 715 13,970 30.4 % 3.4 % 0.25 % 2455.94 83.22
Apr 4th 20,505 4.6 % 6,415 666 13,424 31.3 % 3.2 % 0.24 % 2386.69 77.52
Apr 3rd 19,606 4.1 % 4,846 591 14,169 24.7 % 3.0 % 0.23 % 2282.05 68.79
Apr 2nd 18,827 6.0 % 4,013 536 14,278 21.3 % 2.8 % 0.22 % 2191.38 62.39
Apr 1st 17,768 7.0 % 2,967 488 14,313 16.7 % 2.7 % 0.21 % 2068.11 56.80
Mar 31st 16,605 4.3 % 1,823 433 14,349 11.0 % 2.6 % 0.19 % 1932.75 50.40
Mar 30th 15,922 7.4 % 1,823 359 13,740 11.4 % 2.3 % 0.19 % 1853.25 41.79
Mar 29th 14,829 5.3 % 1,595 300 12,934 10.8 % 2.0 % 0.17 % 1726.03 34.92
Mar 28th 14,076 8.9 % 1,530 264 12,282 10.9 % 1.9 % 0.16 % 1638.38 30.73
Mar 27th 12,928 9.5 % 1,530 231 11,167 11.8 % 1.8 % 0.15 % 1504.76 26.89
Mar 26th 11,811 8.4 % 131 191 11,489 1.1 % 1.6 % 0.14 % 1374.75 22.23
Mar 25th 10,897 10.3 % 131 153 10,613 1.2 % 1.4 % 0.13 % 1268.36 17.81
Mar 24th 9,877 12.3 % 131 122 9,624 1.3 % 1.2 % 0.11 % 1149.64 14.20
Mar 23rd 8,795 17.7 % 131 120 8,544 1.5 % 1.4 % 0.1 % 1023.70 13.97
Mar 22nd 7,474 13.7 % 131 98 7,245 1.8 % 1.3 % 0.087 % 869.94 11.41
Mar 21st 6,575 24.2 % 15 75 6,485 0.2 % 1.1 % 0.077 % 765.30 8.73
Mar 20th 5,294 29.9 % 15 54 5,225 0.3 % 1.0 % 0.062 % 616.20 6.29
Mar 19th 4,075 34.6 % 15 41 4,019 0.4 % 1.0 % 0.047 % 474.31 4.77
Mar 18th 3,028 12.1 % 15 28 2,985 0.5 % 0.9 % 0.035 % 352.45 3.26
Mar 17th 2,700 22.7 % 4 27 2,669 0.1 % 1.0 % 0.031 % 314.27 3.14
Mar 16th 2,200 0.0 % 4 14 2,182 0.2 % 0.6 % 0.026 % 256.07 1.63
Mar 15th 2,200 61.9 % 4 14 2,182 0.2 % 0.6 % 0.026 % 256.07 1.63
Mar 14th 1,359 19.3 % 4 13 1,342 0.3 % 1.0 % 0.016 % 158.18 1.51
Mar 13th 1,139 74.7 % 4 11 1,124 0.4 % 1.0 % 0.013 % 132.57 1.28
Mar 12th 652 0.0 % 4 4 644 0.6 % 0.6 % 0.0076 % 75.89 0.47
Mar 11th 652 32.8 % 4 4 644 0.6 % 0.6 % 0.0076 % 75.89 0.47
Mar 10th 491 31.3 % 3 3 485 0.6 % 0.6 % 0.0057 % 57.15 0.35
Mar 9th 374 11.0 % 3 2 369 0.8 % 0.5 % 0.0044 % 43.53 0.23
Mar 8th 337 25.7 % 3 2 332 0.9 % 0.6 % 0.0039 % 39.23 0.23
Mar 7th 268 25.2 % 3 1 264 1.1 % 0.4 % 0.0031 % 31.19 0.12
Mar 6th 214 87.7 % 3 1 210 1.4 % 0.5 % 0.0025 % 24.91 0.12
Mar 5th 114 26.7 % 3 1 110 2.6 % 0.9 % 0.0013 % 13.27 0.12
Mar 4th 90 60.7 % 3 0 87 3.3 % 0.0 % 0.001 % 10.48 0.00
Mar 3rd 56 33.3 % 2 0 54 3.6 % 0.0 % < 0.001 % 6.52 0.00
Mar 2nd 42 55.6 % 0 0 42 0.0 % 0.0 % < 0.001 % 4.89 0.00
Mar 1st 27 50.0 % 0 0 27 0.0 % 0.0 % < 0.001 % 3.14 0.00
Feb 29th 18 125.0 % 0 0 18 0.0 % 0.0 % < 0.001 % 2.10 0.00
Feb 28th 8 0.0 % 0 0 8 0.0 % 0.0 % < 0.001 % 0.93 0.00
Feb 27th 8 700.0 % 0 0 8 0.0 % 0.0 % < 0.001 % 0.93 0.00
Feb 26th 1 0.0 % 0 0 1 0.0 % 0.0 % < 0.001 % 0.12 0.00
Feb 25th 1 0 0 1 0.0 % 0.0 % < 0.001 % 0.12 0.00

Statistics per Continent

Spread over the continents timeline

Whole world

Africa

Asia

Europe

North America

Oceania

South America

Statistics per Country

The whole world

World excluding China

More statistics on countries

Countries vs China

Whole world

Afghanistan

Albania

Algeria

Andorra

Angola

Anguilla

Antigua and Barbuda

Argentina

Armenia

Aruba

Australia

Austria

Azerbaijan

Bahamas

Bahrain

Bangladesh

Barbados

Belarus

Belgium

Belize

Benin

Bermuda

Bhutan

Bolivia

Bonaire, St. Eustatius & Saba

Bosnia and Herzegovina

Botswana

Brazil

British Virgin Islands

Brunei Darussalam

Bulgaria

Burkina Faso

Burundi

Cabo Verde

Cambodia

Cameroon

Canada

Cayman Islands

Central African Republic

Chad

Chile

China

China, Hong Kong SAR

China, Macao SAR

Colombia

Congo

Costa Rica

Croatia

Cuba

Curaçao

Cyprus

Czechia

Dem. Rep. of the Congo

Denmark

Djibouti

Dominica

Dominican Republic

Ecuador

Egypt

El Salvador

Equatorial Guinea

Eritrea

Estonia

Eswatini

Ethiopia

Falkland Islands

Faroe Islands

Fiji

Finland

France

French Guiana

French Polynesia

Gabon

Gambia

Georgia

Germany

Ghana

Gibraltar

Greece

Greenland

Grenada

Guadeloupe

Guam

Guatemala

Guinea

Guinea-Bissau

Guyana

Haiti

Holy See

Honduras

Hungary

Iceland

India

Indonesia

Iran

Iraq

Ireland

Isle of Man

Israel

Italy

Jamaica

Japan

Jordan

Kazakhstan

Kenya

Kosovo

Kuwait

Kyrgyzstan

Lao People's Dem. Rep.

Latvia

Lebanon

Liberia

Libya

Liechtenstein

Lithuania

Luxembourg

Madagascar

Malawi

Malaysia

Maldives

Mali

Malta

Martinique

Mauritania

Mauritius

Mayotte

Mexico

Moldova

Monaco

Mongolia

Montenegro

Montserrat

Morocco

Mozambique

Myanmar

Namibia

Nepal

Netherlands

New Caledonia

New Zealand

Nicaragua

Niger

Nigeria

North Macedonia

Norway

Oman

Pakistan

Panama

Papua New Guinea

Paraguay

Peru

Philippines

Poland

Portugal

Puerto Rico

Qatar

Réunion

Romania

Russian Federation

Rwanda

Saint Barthélemy

Saint Kitts and Nevis

Saint Lucia

Saint Pierre and Miquelon

San Marino

Sao Tome and Principe

Saudi Arabia

Senegal

Serbia

Seychelles

Sierra Leone

Singapore

Sint Maarten

Slovakia

Slovenia

Somalia

South Africa

South Korea

South Sudan

Spain

Sri Lanka

State of Palestine

Sudan

Suriname

Sweden

Switzerland

Syrian Arab Republic

Taiwan

Tanzania

Thailand

Timor-Leste

Togo

Trinidad and Tobago

Tunisia

Turkey

Turks and Caicos Islands

Uganda

Ukraine

United Arab Emirates

United Kingdom

United States of America

Uruguay

Uzbekistan

Venezuela

Viet Nam

Western Sahara

Zambia

Zimbabwe

The green and red arrows display the change of the number of new confirmed cases for the last two days.

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Based on data collected by the Johns Hopkins University Center for Systems Science and Engineering.

This website presents the very same data as the JHU’s original dashboard but from a less-panic perspective. Updated daily around 8 a.m. European time.

Read the Technology blog. Look at the source code: GitHub. Powered by Raku.

Created by Andrew Shitov. Twitter: @andrewshitov. Contact by e-mail.