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Data Visualizations

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Computer Science

Lessons no : 5

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Lessons | 5

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Sooraj Kumar

achcha hai 2023-12-06

BGMi Nub

it was quiet good 2023-12-01

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Excellent 2023-12-01

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Excellent 2023-11-16

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What is a good data visualization? A good visualization should establish two aspects of the data being presented: Show connections within the data that are too complex to explain with words. Make it easier for the audience to quickly understand the information presented and consider the outcomes from that data. useful ways to visualize your data (with examples) Indicator. If you need to display one or two numeric values such as a number, gauge or ticker, use the Indicators visualization. ... Line chart. The line chart is a popular chart because it works well for many business cases, including to: ... Bar chart. ... Pie chart. ... Area chart. ... Pivot table. ... Scatter chart. ... Scatter map / Area mapWhat is Data Visualization in Data Analytics? Data visualization is the graphical representation of information and data. By using visual elements like charts, graphs, and maps, data visualization tools provide an accessible way to see and understand trends, outliers, and patterns in data.