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Victoria and Melbourne Covid trend map: where coronavirus cases are rising or falling

Guardian Australia analysis and map shows how the pattern of Covid-19 has changed by region and throughout Melbourne. Live data updates will track the numbers as the Vic lockdown continues

A Guardian Australia analysis of coronavirus cases in Victoria shows where infections have been increasing, and where Covid-19 cases are on the decline.

Using data aggregated daily from the dashboard of the Victorian Department of Health and Human Services (DHHS) here, we calculate the number of new cases a day for every local government area in Victoria.

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