User Tools

Site Tools


other:python:jyp_steps

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision
Previous revision
Next revision Both sides next revision
other:python:jyp_steps [2023/12/15 13:54]
jypeter Added Sweetviz and AutoViz
other:python:jyp_steps [2023/12/15 14:45]
jypeter [Data file formats] Added link to the NetCDF section
Line 317: Line 317:
  
 ===== Data analysis ===== ===== Data analysis =====
 +
 +==== EDA (Exploratory Data Analysis) ? ====
 +
 +<note tip>
 +The //EDA concept// seems to apply to **time series** (and tabular data), which is not exactly the case of full climate model output data</​note>​
 +
 +  * [[https://​www.geeksforgeeks.org/​what-is-exploratory-data-analysis/​|What is Exploratory Data Analysis ?]]
 +    * //The method of studying and exploring record sets to apprehend their predominant traits, discover patterns, locate outliers, and identify relationships between variables. EDA is normally carried out as a preliminary step before undertaking extra formal statistical analyses or modeling.//
 +
 +  * [[https://​medium.com/​codex/​automate-the-exploratory-data-analysis-eda-to-understand-the-data-faster-not-better-2ed6ff230eed|Automate the exploratory data analysis (EDA) to understand the data faster and easier]]: a nice comparison of some Python libraries listed below ([[#​ydata_profiling|YData Profiling]],​ [[#​d-tale|D-Tale]],​ [[#​sweetviz|sweetviz]],​ [[#​autoviz|AutoViz]])
 +
 +  * [[https://​www.geeksforgeeks.org/​exploratory-data-analysis-in-python/​|EDA in Python]]
 +
  
 ==== Easy to use datasets ==== ==== Easy to use datasets ====
Line 337: Line 350:
  
   * [[https://​github.com/​xCDAT/​xcdat/​issues/​277|xCDAT test data GH discussion]]   * [[https://​github.com/​xCDAT/​xcdat/​issues/​277|xCDAT test data GH discussion]]
 +
 +
 ==== Pandas ==== ==== Pandas ====
  
Line 359: Line 374:
  
 Note: check the example in the [[https://​lectures.scientific-python.org/​packages/​statistics/​index.html|Statistics in Python]] tutorial Note: check the example in the [[https://​lectures.scientific-python.org/​packages/​statistics/​index.html|Statistics in Python]] tutorial
 +
 +
 +==== scikit-learn ====
 +
 +[[http://​scikit-learn.org/​|scikit-learn]] is a Python library for machine learning, and is one of the most widely used tools for supervised and unsupervised machine learning. Scikit–learn provides an easy-to-use,​ consistent interface to a large collection of machine learning models, as well as tools for model evaluation and data preparation
 +
 +Note: check the example in [[https://​lectures.scientific-python.org/​packages/​scikit-learn/​index.html|scikit-learn:​ machine learning in Python]]
 +
 +
 +==== scikit-image ====
 +
 +[[https://​scikit-image.org/​|scikit-image]] is a collection of algorithms for image processing in Python
 +
 +Note: check the example in [[https://​lectures.scientific-python.org/​packages/​scikit-image/​index.html|scikit-image:​ image processing]]
  
  
Line 379: Line 408:
  
 [[https://​github.com/​AutoViML/​AutoViz|AutoViz]]:​ the One-Line Automatic Data Visualization Library. Automatically Visualize any dataset, any size with a single line of code [[https://​github.com/​AutoViML/​AutoViz|AutoViz]]:​ the One-Line Automatic Data Visualization Library. Automatically Visualize any dataset, any size with a single line of code
-==== scikit-learn ==== 
  
-[[http://​scikit-learn.org/​|scikit-learn]] is a Python library for machine learning, and is one of the most widely used tools for supervised and unsupervised machine learning. Scikit–learn provides an easy-to-use,​ consistent interface to a large collection of machine learning models, as well as tools for model evaluation and data preparation 
  
-Note: check the example in [[https://​lectures.scientific-python.org/​packages/​scikit-learn/​index.html|scikit-learn:​ machine learning in Python]] +=====  Data file formats ===== 
-==== scikit-image ​====+
  
-[[https://​scikit-image.org/​|scikit-image]] is a collection of algorithms for image processing in Python +  * We list below some resources about **non-NetCDF data formats** that can be useful
- +
-Note: check the example in [[https://​lectures.scientific-python.org/​packages/​scikit-image/​index.html|scikit-image:​ image processing]] +
- +
- +
-=====  Data file formats ​===== +
  
-We list here some resources about non-NetCDF ​data formats that can be useful+  * Check the [[#​using_netcdf_files_with_python|Using ​NetCDF ​files with Python]] section otherwise
  
 ==== The shelve package ==== ==== The shelve package ====
other/python/jyp_steps.txt · Last modified: 2024/03/07 10:15 by jypeter