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URL: https://dangoodspeed.com/covid/

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Dan’s COVID Charts

I take normalized* COVID data and try to present it in useful, interesting ways.
Choose one of the charts below!
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State-by-state by date new cases

Animated bar graph chart of new weekly COVID cases, state-by-state

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State-by-state by date new deaths

Animated bar graph chart of new weekly COVID deaths, state-by-state

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State-by-state by date total cases

Animated bar graph chart of total COVID cases, state-by-state

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State-by-state by date total deaths

Animated bar graph chart of total COVID deaths, state-by-state

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Cases since June by state partisanship

Animated bar graph chart of total COVID cases, state-by-state, since June 1

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Deaths since July by state partisanship

Animated bar graph chart of total COVID deaths, state-by-state, since July 1

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90-day rolling impact by partisanship

Animated bar graph chart of an index factoring both cases and deaths, over a rolling 90-day period

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Cases since June '21 by vaccination

Animated bar graph chart of total COVID cases since June 2021, cross-referencing state vaccination rates

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Deaths since June '21 by vaccination

Animated bar graph chart of total COVID deaths since June 2021, cross-referencing state vaccination rates


* "Normalization" (perhaps better called "smoothing") means the abnormalities in the data were evened out. For example, if there were 10 days in a row of a few cases/deaths a day and then one day of 1000... that looks awful and frenetic on a chart like this, even when framed in a per-week display. In reality, that 1000 is just a backlog catch-up, so I normalized it by spreading the thousand over previous dates for a more even / more realistic data. It works similarly when the total number of cases/deaths drops one day. Likely a correction from a previous report, I just subtracted the difference over previous dates to numbers that are probably closer to reality.