Name | Institution | Mail Address | Social Contacts |
---|---|---|---|
Brunella D'Anzi | INFN Sezione di Bari | brunella.d'anzi@cern.ch | Skype: live:ary.d.anzi_1; Linkedin: brunella-d-anzi |
Nicola De Filippis | INFN Sezione di Bari | nicola.defilippis@ba.infn.it | |
Domenico Diacono | INFN Sezione di Bari | domenico.diacono@ba.infn.it | |
Walaa Elmetenawee | INFN Sezione di Bari | walaa.elmetenawee@cern.ch | |
Giorgia Miniello | INFN Sezione di Bari | giorgia.miniello@ba.infn.it | |
Andre Sznajder | Rio de Janeiro State University | sznajder.andre@gmail.com |
brunella.d'anzi@cern.ch,giorgia.miniello@ba.infn.it | |
Social | Skype: live:ary.d.anzi_1; Linkedin: brunella-d-anzi |
ML/DL Technologies | Artificial Neural Networks (ANNs), Random Forests (RFs) |
---|---|
Science Fields | High Energy Physics |
Difficulty | Low |
Language | English |
Type | fully annotated and runnable |
Programming Language | Python |
---|---|
ML Toolset | |
Additional libraries | uproot, NumPy, pandas,h5py,seaborn,matplotlib |
Suggested Environments | Google's Colaboratory |
Data Creator | CMS Experiment |
---|---|
Data Type | Simulation |
Data Size | 1 GB |
Data Source | Cloud@ReCaS-Bari |
Add short description of use case, add all details you think needed for understanding and using the use-case
Google's Colaboratory is a free online cloud-based Jupyter notebook environment on Google-hosted machines, with some added features, like the possibility to attach a GPU or a TPU if needed with 12 hours of continuous execution time. After that, the whole virtual machine is cleared and one has to start again. The user can run multiple CPU, GPU, and TPU instances simultaneously, but the resources are shared between these instances.
The notebook for this tutorial can be found here. The .ipynb file is available in the attachment section and in this GitHub repository.
Indeed, the user can use it by inserting the URL GitHub and clicking on the VBF_exercise.ipynb icon :
OR one can just click on the following link: https://colab.research.google.com/drive/1hVA0E5kosM2gdFkJINb6WeVp5hjG1ML1?usp=sharing.
The user must be sure to work on a copy of it on his/her Google Drive in both cases clicking on the "Copy to Drive" icon as shown below:
In order to do this, the user must have a personal Google account.
The datasets files are on the Recas Bari's ownCloud and are automatically loaded by the notebook. In case, they are also available here and here.
In the following, the most important excerpts are described.
Add description of notebooks made available.