Changes for page Widget TimeSeries
Last modified by ldomide on 2023/05/23 14:34
From version 35.1
edited by rominabaila
on 2023/05/15 11:24
on 2023/05/15 11:24
Change comment:
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To version 36.2
edited by rominabaila
on 2023/05/15 11:31
on 2023/05/15 11:31
Change comment:
There is no comment for this version
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... ... @@ -12,7 +12,7 @@ 12 12 13 13 Starting with //**tvb-widgets 1.5.0**, //the TS widget comes in 2 forms, corresponding to the 2 different libraries (we called them backends) used for plotting: **matplotlib **and **plotly**. The matplotlib backend, build on top of the **mne** library, offers more advanced scientifical features, while the plotly backend has a more appealing look and moves faster when talking about the basic interactions. 14 14 15 -Below you can see the TS widget with each backend option (first one using the matplotlib backend, thesecond one using the plotly backend).15 +Below you can see the TS widget with each backend option (first one using the matplotlib backend, second one using the plotly backend). 16 16 17 17 (% style="text-align:center" %) 18 18 [[image:matplotlib.png]] ... ... @@ -94,7 +94,10 @@ 94 94 95 95 After running the code from above into a Jupyter cell, you should see the TS widget corresponding to the backend you selected. 96 96 97 - 98 98 {{html}} 99 99 <iframe width="840" height="480" src="https://www.youtube.com/embed/VmueiXMxbVk" title="YouTube video player" frameborder="0" allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share" allowfullscreen></iframe> 100 100 {{/html}} 100 + 101 +== 1. TS widget with matplotlib and mne == 102 + 103 +As it was already mentioned, the matplotlib widget offers more advanced scientifical fearures. In the video below, you can see some of the functionalities that this backend provides, like increasing/decreasing signal amplitude, selecting/deselecting certain signals, selecting different dimensions (state variable/mode) from the input data, navigating through the timeline, etc.