data-visualisation
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I suggest either adding a short code piece to use the rename() function to change the column "genus" to "genera" (thus alerting the learners to their relationship here, while adding a new function) or changing the column name in the original dataset. Otherwise, I've found that using the correct plural for genus confuses learners who are not biologists. Although it's the R ecology lesson and one
Hi,
Firstly, thank you for your work on Chart-Fx.
We are currently building an application using the library to display multiple huge datasets.
The library works well for 5 to 10 million points, however our clients would like to display even larger datas, going up to 50 to 100 million points. While it is possible to display such datasets, navigating them become difficult as the application
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Hello, I would like to know if there is already any method developed to match the flight_ids obtained from So6 to ADS-B files. I’m trying to use the assign_id method for both files but it seems to be assigned differnent new flight-ids for SO6 and ADS-B same flights.
Thank you.
suggestion for The R for Reproducible Scientific Analysis Lesson
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Introduction to R and RStudio
good to introduce another source for R Packages like Bioconductor and how to install Packages using BiocManager -
Seeking Help
It will help to add a link to RStudio Cheatsheets : https://rstudio.com/resources/cheatsheets/
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Feb 24, 2020 - R
Dear Community,
There is a typo in the section titled "The StringsAsFactors argument" after the second block of code that demonstrates the use of the str() function. Right after the code boxes is written "We can see that the $Color and $State columns are factors and $Speed is a numeric column", but the box shows that the $Color column is a vector of strings.
Regards,
Rodolfo
In episode 3 (https://datacarpentry.org/python-ecology-lesson/03-index-slice-subset/index.html, actually listed as 4. in https://datacarpentry.org/python-ecology-lesson/ ), the distinction between .iloc method for accessing entries by position and .loc to access them by identifier is made, but a third possibility is shown with surveys_df[0:3], which accesses the indices by position.
That
The way the launching section is written now it sounds a bit like you can't launch a jupyter lab without using the terminal on a mac or jupyter prompt for windows. Might be good to offer alt directions for how you can launch it with anaconda navigator instead. Learners often seem to prefer that option during the workshops I've taught.
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Nov 25, 2020 - Vue
Currently all of the metrics computed are independent of a target variable or column, but if lens.summarise took the name of a column as the target variable, the output of some metrics could be more interpretable even if the target variable is not used in any kind of predictive modelling.
A good example of this could be PCA (see #14), which could plot the different categories of the target va
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In episode _episodes_rmd/12-time-series-raster.Rmd
There is a big chunk of code that can probably be made to look nicer via dplyr:
# Plot RGB data for Julian day 133
RGB_133 <- stack("data/NEON-DS-Landsat-NDVI/HARV/2011/RGB/133_HARV_landRGB.tif")
RGB_133_df <- raster::as.data.frame(RGB_133, xy = TRUE)
quantiles = c(0.02, 0.98)
r <- quantile(RGB_133_df$X133_HARV_landRGB.1, q
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Versions
bokeh 2.2.3 (via conda 4.8.3); Mac OS X 10.15.7
Description of expected behavior and the observed behavior
Scatter points jittered on a categorical axis don't move when the categorical factor range (provided as
rangeparameter) is modified. In a Discourse thread, Bryan put this down to a "deficiency in the current caching behavior of