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other:python:jyp_steps [2023/12/15 14:16]
jypeter Added the EDA section
other:python:jyp_steps [2023/12/15 14:45]
jypeter [Data file formats] Added link to the NetCDF section
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     * //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.//     * //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''​''​D-Tale''​''​sweetviz''​''​autoviz''​)+  * [[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]]   * [[https://​www.geeksforgeeks.org/​exploratory-data-analysis-in-python/​|EDA in Python]]
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 ==== Easy to use datasets ==== ==== Easy to use datasets ====
  
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   * [[https://​github.com/​xCDAT/​xcdat/​issues/​277|xCDAT test data GH discussion]]   * [[https://​github.com/​xCDAT/​xcdat/​issues/​277|xCDAT test data GH discussion]]
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 ==== Pandas ==== ==== Pandas ====
  
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 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
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 +==== 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
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 +Note: check the example in [[https://​lectures.scientific-python.org/​packages/​scikit-image/​index.html|scikit-image:​ image processing]]
  
  
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 [[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]] +
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-=====  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