Wiki source code of Using JupyterHub in HDC

Version 15.1 by Dennis Segebarth on 2024/08/16 08:55

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1 {{box cssClass="floatinginfobox" title="Table of Contents"}}
2 {{toc depth="2"/}}
3 {{/box}}
4
5
6 JupyterHub is an open-source, multi-user version of Jupyter Notebook for performing analysis of Project files in the Core. More information can be found in the application documentation [[https:~~/~~/jupyter.org/>>https://jupyter.org/]].
7
8 [[image:1723798240534-407.png||height="189" width="291"]]
9
10
11 = How it Works =
12
13 JupyterHub allows Project members to create or import Jupyter Notebooks into the Project Workspace environment, retrieve Project files from the Core, perform computational workflows on the data, and write the outputs back to the Core where they can be accessed by other Project members. JupyterHub spins up a new JupyterLab instance for each Project member.
14
15 = Prerequisites =
16
17 * Project Collaborator role or higher.
18 * JupyterHub has been configured for the Project by the Platform Administrator. See //Getting Access to JupyterHub//.
19
20 = Data Stewardship =
21
22 Users are reminded to abide by the Platform Terms of Use and any Project-specific restrictions when using Workspace tools to access data and code.
23
24 = Getting Access to JupyterHub =
25
26 JupyterHub is configured at the time of Project Setup. If you launch JupyterHub and receive a notice that it hasn’t been deployed for your project, please contact your Platform Administrator.
27
28 = Launching JupyterHub =
29
30 [[image:1723798257792-201.png||height="121" width="349"]]
31
32 1. Launch your Project and click the **JupyterHub icon** in the left menu bar.
33 1. Click **Sign in with Keycloak** to initiate your session. JupyterHub automatically authenticates with your existing username and password and launches your session - no additional sign-in is required.
34 1. You can chose to either start a **Minimal environment**, which comes with Python, or a **Datascience environment**, which also includes R and Julia in addition to Python.
35 1. From the JupyterHub home page (a JupyterLab interface) you can now perform various actions such as creating and working on Jupyter Notebooks, importing existing ones, and using the Pilot Command Line Interface in the terminal to retrieve, analyze, and re-upload Project Core data, and create. Moreover, you can also use the pre-deployed and configured package management software conda to download, install, and manage for instance Python packages as per individual demand (see the sections //Installing New Python Packages// and //Creating a Virtual Python Environment and Registering a Kernel// below for more details).
36 1. When finished using JupyterHub, click **Logout** to end your session.
37
38 = Creating a Notebook =
39
40 Users can create a new Jupyter Notebook with Python 3 inside JupyterHub, with dedicated and persistent storage under the users' Home Directory.
41
42 1. In the Launcher, click the **Python 3 Notebook **icon, or click **File > New > Notebook**.
43 1. Create your Notebook.
44
45 [[image:1723798278604-114.png||height="376" width="865"]]
46
47 = Launching the Terminal =
48
49 JupyterHub provides browser-based terminal access for advanced users to run commands directly in the system shell. Importantly, this allows users to sync data between for instance the Projects Core and their JupyterHub home directory using pilotcli, or to download and manage Python packages.
50
51 1. In the Launcher, click the **Terminal **icon, or click **File > New > Terminal**.
52 1. The terminal window opens.
53
54 [[image:1723798293872-992.png||height="162" width="863"]]
55
56 Ubuntu is used to host Jupyter Notebook. Use the command cat /etc/os-release to determine to current version of Ubuntu:
57
58 {{code language="none"}}
59 uname@jupyter-uname:/etc$ cat os-release
60 NAME="Ubuntu"
61 VERSION="20.04.4 LTS (Focal Fossa)"
62 ID=ubuntu
63 ID_LIKE=debian
64 PRETTY_NAME="Ubuntu 20.04.4 LTS"
65 VERSION_ID="20.04"
66 HOME_URL="https://www.ubuntu.com/"
67 SUPPORT_URL="https://help.ubuntu.com/"
68 BUG_REPORT_URL="https://bugs.launchpad.net/ubuntu/"
69 PRIVACY_POLICY_URL="https://www.ubuntu.com/legal/terms-and-policies/privacy-policy"
70 VERSION_CODENAME=focal
71 UBUNTU_CODENAME=focal
72 {{/code}}
73
74 = Creating a Python Virtual Environment and Registering a Kernel =
75
76 The user has full flexibility to use different virtual environment and/or package management systems. Please find the examples of using conda or Pythons in-built venv options described below. Importantly, in either case, the user has to register the new environment as a kernel using ipykernel, to make is accessible via the Jupyter Notebooks (see //Registering the new Virtual Environment as Kernel// for more details).
77
78 == Using conda ==
79
80 The package management software conda by Anaconda has become one of the most popular package management systems, especially for Data and Life Sciences. Therefore, conda is already pre-deployed and configured in each user’s JupyterHub. Please find the full documentation of conda [[here>>url:https://conda.io/projects/conda/en/latest/user-guide/tasks/manage-environments.html]], and the corresponding documentation of how to manage virtual environments using conda [[here>>url:https://conda.io/projects/conda/en/latest/user-guide/tasks/manage-environments.html]]. The following steps provide a short example of how you can use conda to create a new virtual environment using the JupyterHub terminal within the Platform.
81
82 At first, you need to activate conda. Since it is already pre-deployed and configured for you, all you need to do is launch a terminal within JupyterHub (see //Launching the Terminal// above) and execute the command {{code}}source activate{{/code}}. This will activate conda and you can see the success of this by the indication of the currently activated conda environment at the beginning of the line, displayed in parentheses - usually “base”:
83
84 {{code language="none"}}
85 username@jupyter-username:~$ source activate
86 (base) username@jupyter-username:~$
87 {{/code}}
88
89 To create a new environment, run the following commands in the terminal after activating conda:
90
91 {{code language="none"}}
92 (base) username@jupyter-username:~$ conda create --name your_env_name
93 {{/code}}
94
95 Replace {{code}}your_env_name{{/code}} with your preferred name for the environment. When being prompted by conda to confirm the creation of the environment at the specified location (per default in the users home directory - please do not change this location, to ensure persistency of your created environment), proceed with the creation by typing “y”, or abort the process by typing “N”. Once confirmed, conda will complete the environment creation process and remind you to activate the environment:
96
97 {{code language="none"}}
98 (base) username@jupyter-username:~$ conda create --name sample_env
99 Collecting package metadata (current_repodata.json): done
100 Solving environment: done
101
102 ## Package Plan ##
103
104 environment location: /home/username/.conda_envs/sample_env
105
106 Proceed ([y]/n)? y
107
108 Preparing transaction: done
109 Verifying transaction: done
110 Executing transaction: done
111 #
112 # To activate this environment, use
113 #
114 # $ conda activate sample_env
115 #
116 # To deactivate an active environment, use
117 #
118 # $ conda deactivate
119
120 (base) username@jupyter-username:~$
121 {{/code}}
122
123 Please note, at the end of the environment creation process, you will still remain in the previously activate environment (“base”, in this example). Therefore, please remember to activate the novel environment before installing any packages by running the command {{code}}conda activate your_env_name{{/code}} and replace “your_env_name” with the corresponding name you chose (“sample_env” in this example):
124
125 {{code language="none"}}
126 (base) username@jupyter-username:~$ conda activate sample_env
127 (/home/username/.conda_envs/sample_env) username@jupyter-username:~$
128 {{/code}}
129
130 You can now install the desired packages in this new conda environment, for instance using the {{code}}conda install{{/code}} command. For example, in order to install the latest version of Python, run:
131
132 {{code language="none"}}
133 (/home/username/.conda_envs/sample_env) username@jupyter-username:~$ conda install python
134 {{/code}}
135
136 To see a list of all installed packages in the currently activated environment (indicated in parentheses at the beginning of the line, “base” in this case), run:
137
138 {{code language="none"}}
139 (base) username@jupyter-username:~$ conda list
140 {{/code}}
141
142 To see a list of all existing conda environments, run:
143
144 {{code language="none"}}
145 (base) username@jupyter-username:~$ conda info --envs
146 {{/code}}
147
148 Please find many more examples and the full documentation of how to manage conda environments [[here>>url:https://conda.io/projects/conda/en/latest/user-guide/tasks/manage-environments.html#]]. Importantly, please remember to follow the instructions in the //Registering the new Virtual Environment as Kernel// section below, to make the virtual environment accessible via the Jupyter Notebooks.
149
150 == Using venv ==
151
152 As an alternative to using conda, you can also use the Python native package venv. Please find the full documentation of venv [[here>>url:https://docs.python.org/3/library/venv.html#]], and a short example of how to create a new virtual environment using venv below:
153
154 {{code language="none"}}
155 username@jupyter-username:~$ python3 -m venv your_env_name
156 username@jupyter-username:~$ source your_env_name/bin/activate
157 {{/code}}
158
159 == Registering the new Virtual Environment as Kernel ==
160
161 In order to make the newly created virtual environment accessible for the Jupyter Notebooks, you have to register it using ipykernel. Importantly, please make sure that the corresponding environment is currently active before running the following commands:
162
163 {{code language="none"}}
164 username@jupyter-username:~$ python -m ipykernel install --user --name=your_env_name
165 {{/code}}
166
167 Please replace {{code}}your_env_name{{/code}} with the name of your newly created environment. Depending on which package and/or virtual environment management system you chose to use, you may have to install ipykernel in the newly created environment first. Remember to activate the newly created environment and then run one of the following commands to install ipykernel, depending on your package management system of choice:
168
169 {{code language="none"}}
170 (your_env_name) username@jupyter-username:~$ conda install -c anaconda ipykernel
171 {{/code}}
172
173 or:
174
175 {{code language="none"}}
176 username@jupyter-username:~$ pip install ipykernel
177 {{/code}}
178
179 Once you have installed ipykernel, re-run the command above to register your novel environment via ipykernel.
180
181 **Example usage:**
182
183 {{code language="none"}}
184 (/home/username/.conda_envs/sample_env) username@jupyter-username:~$ python -m ipykernel install --user --name=sample_env
185 Installed kernelspec sample_env in /home/username/.local/share/jupyter/kernels/sample_env
186 (/home/username/.conda_envs/sample_env) username@jupyter-username:~$
187 {{/code}}
188
189 Afterwards, the environment will be listed when you open the Launcher to open a new Jupyter Notebook:
190
191 [[image:1723798325144-485.png||height="436" width="867"]]
192
193
194 and also from each opened Notebook, e.g., via **Kernel > Change Kernel…** :
195
196 [[image:1723798338447-469.png||height="317" width="247"]]
197
198 = Installing New Python Packages =
199
200 We highly recommend the use of virtual environments when installing new packages (see //Creating a Python Virtual Environment and Registering a Kernel// above for more details). Consequently, we recommend installing new packages via commands in the JupyterHub terminal in the corresponding virtual environments, instead of installing packages from within Jupyter Notebooks.
201
202 Depending on the IT policies, outbound traffic may need to go through a proxy. If so, users will be required to provide the proxy command line argument such as pip, curl, wget, etc.
203
204 For example:
205
206 {{code language="none"}}
207 pip install my_package
208 {{/code}}
209
210 If you are using conda to manage python packages:
211
212 {{code language="none"}}
213 conda install my_package
214 {{/code}}
215
216 The above information is provided as examples only. Please refer to documentation provided by your IT department with respect to proxy configuration.
217
218 = Using the Pilot Command Line Interface in a JupyterHub Terminal =
219
220 The Pilot Command Line Interface (CLI) is deployed within JupyterHub as extension resource. Project members can use the Pilot Command Line Interface in a JupyterHub terminal to download Project data from the Core for further analysis, and upload the derivative outputs back to the Green Room or Core.
221
222 The Home Directory is your default directory. When you download a copy of your Core files to JupyterHub, the files persists in the JupyterHub environment until deleted by you, so you can return to the session and continue your work at a later time without the need to retrieve the data from the Core again.
223
224 The following sections focus on getting started with basic pilotcli commands in JupyterHub. For additional pilotcli commands and usage, see the article //Working with HDC Project Files in the Command Line Interface//.
225
226 == Launching Pilot Command Line Interface ==
227
228 1. Launch your Project and click the **JupyterHub** icon in in the workspace icon group.
229 1. Click the **Terminal **launcher icon to open the Terminal.
230 1. In the Jupyterhub Terminal, type {{code}}pilotcli{{/code}} to launch the latest version of the Pilot Command Line Interface.
231 1. Use the {{code}}pilotcli --help{{/code}} at any time to show the welcome message again.
232
233 {{code language="none"}}
234 collaborator4@jupyter-collaborator4:~$ pilotcli
235 Usage: pilotcli [OPTIONS] COMMAND [ARGS]...
236
237 What's new (Version 2.2.0):
238
239 1. CLI supports to perform multi-threading upload for file/folders
240
241 2. CLI supports to perform resumable upload for single file
242
243
244
245 Options:
246 --help Show this message and exit.
247
248 Commands:
249 container_registry Container Registry Actions.
250 dataset Dataset Actions.
251 file File Actions.
252 project Project Actions.
253 use_config Config Actions.
254 user User Actions.
255 {{/code}}
256
257 == Logging into the Pilot Command Line Interface ==
258
259 Users are required to login with platform credentials before performing any tasks through Pilot Command Line Interface.
260
261 * Use the command {{code}}pilotcli user login{{/code}} to log into the Pilot Command Line Interface.
262
263 {{code language="none"}}
264 collaborator4@jupyter-collaborator4:~$ pilotcli user login
265 Please, access https://iam.staging.pilot.indocresearch.com/realms/pilot/device?user_code=XXXX-XXXX to proceed
266 ▄▄▄▄▄▄▄ ▄ ▄▄ ▄ ▄▄▄▄ ▄ ▄▄▄▄▄▄▄
267 █ ▄▄▄ █ ▄ ▄███ ▀▀ █▀ ▀██▄ █ ▄▄▄ █
268 █ ▄ ▀ ▄ ▀▄ ▀▀ ▄█▀▄▀ ▀▀▄█▄▄▀ █████▄▄▀▄
269 ▄▄▄▄▄▄▄ ▀ ▀█▄ ▀▄ ██▀█ ▄▀▄▄ █ ▄ █▀▄▄▄
270 █ ▄▄▄ █ █▀█▄▀ █▀ █▀▀█ ▀▄█▄█▄▄▄█▀▄█
271 █ ███ █ █▀██▀▄ █▀▄▄▀▀█▄▀▀█▄▀█ ▀ ▀▄▀██
272 █▄▄▄▄▄█ ▄▀▄▄██▄▄▀▄ ▀▀▄ ▄▄▀▀▀▄ █▄▄▄█
273
274 Waiting validation finish...
275 {{/code}}
276
277 * (((
278 You’ll be asked to validate your HDC user account using one of the provided methods.
279
280 * Copy and paste the provided validation link into a new browser tab or
281 * Scan the QR code with your mobile device.
282 )))
283 * Open the login window and enter your HDC username and password (i.e. your EBRAINS account credentials).
284 * Grant access by clicking **Yes**.
285
286 [[image:1723798355215-434.png||height="352" width="379"]]
287
288 [[image:1723798365454-527.png||height="123" width="376"]]
289
290 * After successful confirmation, return to the terminal in your JupyterHub browser tab.
291
292 {{code language="none"}}
293 Welcome to the Command Line Tool!
294 {{/code}}
295
296 * You’re now ready to start using the Pilot Command Line Interface to work with your Project data in JupyterHub.
297
298 == Zone Restrictions when using Pilot Command Line Interface in JupyterHub ==
299
300 When using the Pilot Command Line Interface in JupyterHub and the following actions are possible on the derivative files generated in JupyterHub:
301
302 |=(% colspan="1" rowspan="1" %)(((
303 **File Operation**
304 )))|=(% colspan="1" rowspan="1" %)(((
305 **Permitted in the **
306 **Green Room**
307 )))|=(% colspan="1" rowspan="1" %)(((
308 **Permitted in the **
309 **Core**
310 )))
311 |(% colspan="1" rowspan="1" %)File upload 
312 (upload derivative output files from JupyterHub to the Green Room or Core storage)|(% colspan="1" rowspan="1" %)(((
313 Yes
314 )))|(% colspan="1" rowspan="1" %)(((
315 Yes
316 )))
317 |(% colspan="1" rowspan="1" %)File download
318 (download files from Green Room or Core into JupyterHub)|(% colspan="1" rowspan="1" %)(((
319 **No**
320 )))|(% colspan="1" rowspan="1" %)(((
321 Yes
322 )))
323
324 == Downloading Project Data to JupyterHub using the Pilot Command Line Interface ==
325
326 After logging into the Pilot Command Line Interface, you can download data from the Project Core into the JupyterHub environment to start your data analyses.
327
328 File related commands are grouped in the {{code}}file{{/code}} category. To view the full list of commands in this category, type {{code}}pilotcli file --help{{/code}}. To download project data, use the file sync command. To view the full list of commands in this category, type {{code}}pilotcli file sync --help{{/code}}.
329
330
331 {{code language="none"}}
332 collaborator4@jupyter-collaborator4:~$ pilotcli file sync --help
333 Usage: pilotcli file sync [OPTIONS] [PATHS]... OUTPUT_PATH
334
335 Download files/folders from a given Project/folder/file in core zone.
336
337 Options:
338 -z, --zone TEXT Target Zone (i.e., core/greenroom)
339 --zip Download files as a zip.
340 -i, --geid Enable downloading by geid.
341 --help Show this message and exit.
342 {{/code}}
343
344 === Example ===
345
346 Downloading a file from the Core to your Home Directory:
347
348 Reminder: Please follow Linux conventions for file management. If your filename contains spaces, wrap it in single or double quotes.
349
350 * //Filename~:// “Chemical Tracking Data.csv”
351 * //Source~:// Project “Indoc Test Project”, “Core” storage zone, folder “collaborator4” {{code}}indoctestproject/collaborator4/Chemical Tracking Data.csv -z core{{/code}}
352 * //Destination: //user's Home directory in the Guacamole or JupyterHub VM {{code}}.{{/code}}
353 * //Command group/option: //{{code}}file sync{{/code}}
354
355 {{code language="none"}}
356 collaborator4@jupyter-collaborator4:~$ pilotcli file sync indoctestproject/collaborator4/'Chemical Tracking Data.csv' . -z core
357 start downloading...
358 Downloading Chemical Tracking Data.csv |██████████████████████████████ 100% 00:00
359 File has been downloaded successfully and saved to: ./Chemical Tracking Data.csv
360 {{/code}}
361
362 To confirm successful download, type {{code}}ls{{/code}} and verify the file "Chemical Tracking Data.csv" is stored in the Home folder.
363
364 {{code language="none"}}
365 collaborator4@jupyter-collaborator4:~$ ls
366 'Chemical Tracking Data.csv' pilotcli
367 {{/code}}
368
369 The file “Chemical Tracking Data.csv” can be viewed in the JupyterHub graphical user interface:
370
371 [[image:1723798383409-873.png||height="267" width="874"]]
372
373
374 == Uploading Project Data from JupyterHub using the Pilot Command Line Interface ==
375
376 After analyzing Project data inside the JupyterHub, you can upload the generated outputs back into the Project via the Pilot Command Line Interface.
377
378 === Example ===
379
380 * //Filename//: Chemical Tracking Data rev.csv
381 * //Source~:// user's Home directory in JupyterHub {{code}}.{{/code}}
382 * //Destination//: Project “Indoc Test Project”, folder “collaborator4”, “Core” storage zone,
383 {{code}}indoctestproject/collaborator4{{/code}} {{code}}-z core{{/code}}
384 * //Command group/option~:// {{code}}file upload{{/code}}
385 * //User message// (for upload back to the Core): “my workbench output, no additional sensitive data"
386 * //Command~:// {{code}}pilotcli file upload ./'Chemical Tracking Data rev.csv' -p{{/code}} {{code}}indoctestproject/collaborator4 -z core -m "my workbench output, no additional sensitive data"{{/code}}
387
388 When uploading data to the Core, you are reminded that you are bypassing the usual Green Room upload workflow. To confirm, type {{code}}y{{/code}} at the prompt, or {{code}}N{{/code}} to cancel.
389
390 {{code language="none"}}
391 collaborator4@jupyter-collaborator4:~$ pilotcli file upload ./'Chemical Tracking Data rev.csv' -p indoctestproject/collaborator4 -z core -m "my workbench output, no additional sensitive data"
392 You are about to transfer data directly to the PILOT Core! In accordance with the PILOT Terms of Use, please confirm that you have made your best efforts to
393 pseudonymize or anonymize the data and that you have the legal authority to transfer and make this data available for dissemination and use within the PILOT .If you
394 need to process the data to remove sensitive identifiers, please cancel this transfer and upload the data to the Green Room to perform these actions.
395 To cancel this transfer, enter [n/No]
396 To confirm and proceed with the data transfer, enter [y/Yes]
397 [y/N]: y
398 Starting upload of: ./Chemical Tracking Data rev.csv
399 Pre-upload complete.
400 Uploading Chemical Tracking Data rev.csv: |██████████████████████████████ 100% 00:00
401 Upload Time: 2.92s for 1 files
402 All uploading jobs have finished.
403 {{/code}}
404
405 After completing the upload, you can confirm the new file “Chemical Tracking Data rev.csv" exists in the correct directory using the pilotcli file list command and/or in the Portal File Explorer.
406
407 {{code language="none"}}
408 collaborator4@jupyter-collaborator4:~$ pilotcli file list indoctestproject/collaborator4 -z core
409 Chemical Tracking Data rev.csv Chemical Tracking Data.csv
410 {{/code}}
411
412 [[image:1723798397694-530.png||height="217" width="863"]]
413
414 ----
415
416 Copyright © 2023-2024 [[Indoc Systems>>url:https://www.indocsystems.com]].
417
418 HealthDataCloud is powered by Pilot technology, a product of [[Indoc Systems>>url:https://www.indocsystems.com]].