TidyTuesday
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Explore fascinating TidyTuesday projects in my portfolio, showcasing data visualization and analysis skills.
TidyTuesday
TidyTuesday project is a weekly appointment that happens on every Tuesday for practicing making #DataVisualization with datasets provided by the #R4DS Online Learning Community
Several TidyTuesday interesting examples can be found in the main repository:
How to make a #TidyTuesday (more info at the bottom of this page)
My contributions are posted on:
Twitter @fgazzelloni and collected in this repository with related code.
Other #DataViz projects I contribute to:
30DayChartChallenge-2021 | 30DayMapChallenge-2021 |
30DayChartChallenge-2022 | 30DayMapChallenge-2022 |
30DayChartChallenge-2023 |
My #TidyTuesdays
2021 | 2022 | 2023
Week1 Bring your own data to start 2023 |
Week2 Project FeederWatcher |
Week3 Art History |
Week4 Alone data |
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Week5 PCUK |
Week6 BTSP |
Week7 Hollywood Age Gaps |
Week8 Bob Ross Paintings |
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Week9 African Languages |
Week10 Numbat |
Week11 EDD |
Week12 Programming Languages |
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Week13 Time zones |
Week14 Premier League Match Data |
Week15 US Egg Production |
Week16 Neolithic Founder Crops |
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Week17 London Maraton |
Week18 Solar/Wind utilities |
Week19 NYTimes best sellers |
Week20 Eurovision |
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Week21 Women's Rugby |
Week22 Company reputation poll |
Week23 Pride Corporate Accountability Project |
Week24 US Drought |
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Week25 Juneteenth |
Week26 UK Gender pay gap |
Week27 San Francisco Rentals |
Week28 NASA GISS Surface Temperature Analysis |
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Week29 Technology |
Week30 BYOD |
Week31 Oregon Spotted Frog |
Week32 ferriswheels |
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Week33 Open Source Psychometrics |
Week34 CHIP dataset |
Week35 Pell Grants |
Week36 LEGO database |
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Week37 Bigfoot |
Week38 Hydro Wastewater plants |
Week39 Artists in the USA |
Week40 Product Hunt products |
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Week41 Ravelry data |
Week42 Stranger things dialogue |
Week43 Great British Bakeoff |
Week44 Horror Movies |
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Week45 Radio Stations |
Week46 Page Metrics |
Week47 R-Ladies Chapter Events |
Week48 World Cup |
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Week49 Elevators |
Week50 Monthly State Retail Sales |
Week51 Weather Forecast Accuracy |
Week52 Star Trek Timelines |
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INFO: How to make a #TidyTuesday
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import data found in the README at the middle bottom of the page is a table with the most updated data provided for the year/week
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click on the corresponding data tab in the table
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load the data, two options are available:
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Install {tidytuesdayR} package from CRAN via:
install.packages("tidytuesdayR")
, then load the data as suggested assigning a tuesdata variable name using thett_load()
function:tuesdata <- tidytuesdayR::tt_load("date")
tuesdata <- tidytuesdayR::tt_load(year, week)
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Import the data directly from the .csv file provided
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