Plotly.jl - A Julia interface to the plot.ly plotting library and cloud services

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Simply run Pkg.add("Plotly"). Plotting functions provided by this package are identical to PlotlyJS. Please consult its documentation.

https://github.com/plotly/Plotly.jl

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