Scheduled service maintenance on November 22


On Friday, November 22, 2024, between 06:00 CET and 18:00 CET, GIN services will undergo planned maintenance. Extended service interruptions should be expected. We will try to keep downtimes to a minimum, but recommend that users avoid critical tasks, large data uploads, or DOI requests during this time.

We apologize for any inconvenience.

Sfoglia il codice sorgente

gin commit from PF3RD7D6

Modified files: 1
Michael Denker 2 settimane fa
parent
commit
14fb7fe137
1 ha cambiato i file con 3 aggiunte e 2 eliminazioni
  1. 3 2
      README.md

+ 3 - 2
README.md

@@ -14,6 +14,9 @@ Part 0 explains the usage of `xarray`, a Python package used to represent data i
 Information on the various stages of the workflow, and on the dataset details are located in the folder `tutorials/slides.html`. Each tutorial goes through a sequence of processing steps 
 on the example datasets, and ends on a practical exercise to explore the dataset further.
 
+Another set of tutorials can be found on the EBRAINS Collaboratory (requires free registration, allows online execution):
+https://lab.jsc.ebrains.eu/hub/login?next=%2Fhub%2Fapi%2Foauth2%2Fauthorize%3Fclient_id%3Djupyterhub-user-brovelli%26redirect_uri%3D%252Fuser%252Fbrovelli%252Foauth_callback%26response_type%3Dcode%26state%3DeyJ1dWlkIjogIjhjNWMxM2I2ZjgxOTRjOGU5ODhjMjYzYmEwNGE5NWZmIiwgIm5leHRfdXJsIjogIi91c2VyL2Jyb3ZlbGxpL2xhYi90cmVlL3NoYXJlZC9FQlJBSU5TJTIwQWNhZGVteSUyMFdvcmtzaG9wJTIwU2VyaWVzJTIwU2Vzc2lvbiUyMDElMjAlRTIlODAlOTMlMjBpbnRyYWNyYW5pYWwlMjBFRUcifQ
+
 
 ## Byron Yu: Dimensionality Reduction
 The notebook `tutorials/Exercise_PCA.ipynb` contains a the primary exercise centered around implementing a simple principle component analysis (PCA).
@@ -27,8 +30,6 @@ To get started, create a Python environment using the `environment.yml` file pro
 In addition, Byron Yu's graphical Matlab-based tool DataHigh and tutorials are available at https://users.ece.cmu.edu/~byronyu/software/DataHigh/datahigh.html and https://github.com/BenjoCowley/DataHigh
 
 
-
-
 ## Martin Nawrot: Higher-order Correlations
 The notebook `tutorials/trial_by_trial_variability.ipynb` contains an exercise centered around time-resolved Fano Factors. The first lines of the exercises contain code that help you
 load the used datasets.