Metadata-Version: 2.1
Name: mopet
Version: 0.1.6
Summary: The mildly ominous parameter exploration toolkit
Home-page: https://github.com/caglorithm/mopet
Author: Caglar Cakan
Author-email: cakan@ni.tu-berlin.de
License: MIT
Description: <p align="center">
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        # mopet 🛵
        *The mildly ominous parameter exploration toolkit*
        
        Isn't it strange that, although parameter explorations are a crucial part of computational modeling, there are almost no Python tools available for making your life easier? 
        `mopet` is here to help! You can run extensive grid searches in parallel (powered by `ray`) and store extremely huge amounts of data into a HDF file (powered by `pytables`) for later analysis - or whatever your excuse is for buying yet another hard disk. 
        
        # Installation 💻
        The easiest way to get going is to install the pypi package using `pip`:
        
        ```
        pip install mopet
        ```
        Alternatively, you can also clone this repository and install all dependencies with
        
        ```
        git clone https://github.com/caglorithm/mopet.git
        cd mopet/
        pip install -r requirements.txt
        pip install .
        ```
        
        # Example usage 🐝
        Setting up an exploration is as easy as can be!
        
        ```python
        # first we define an toy evaluation function
        def distance_from_circle(params):
        	# let's simply calculate the distance of 
        	# the x-y parameters to the unit circle
        	distance = abs((params["x"] ** 2 + params["y"] ** 2) - 
        	
        	# we package the result into a dictionary
        	result = {"result" : distance}
        	return result
        
        ``` 
        
        Let's set up the exploration by defining the parameters to explore and passing the evaluation function from above:
        
        ```python
        import numpy as np
        import mopet
        
        explore_params = {"x": np.linspace(-2, 2, 21), "y": np.linspace(-2, 2, 21)}
        ex = mopet.Exploration(distance_from_circle, explore_params)
        ```
        
        Running the exploration is in parallel and is handled by `ray`. You can also use a private cluster or cloud infrastructure, see [here](https://ray.readthedocs.io/en/latest/autoscaling.html) for more info.
        
        ```python
        ex.run()
        >> 100%|██████████| 441/441 [426.57it/s]
        ```
        
        After your exploration has finished, you will find a file `exploration.h5` in your current directory with all the runs, their parameters and their outputs, neatly organized. If you open this file (with [HDFView](https://www.hdfgroup.org/downloads/hdfview/) for example), you'll see something like this:
        
        <p align="center">
          	<img alt="Build" src="resources/hdf_file.jpg">
        </p>
          
          
        
        ## Loading exploration results
        
        You can load the exploration results using 
        
        ```python
        ex.load_results(all=True)
        ``` 
        
        Note that using `all=True` will load all results into memory (as opposed to just the parameters of each run). Please make sure that you have enough free memory for this since your simulation results could be huge. If you do not want this, you can load individual results using their `run_id` (which is an integer counting up one per run):
        
        ```python
        ex.get_run(run_id=0)
        ``` 
        
        After using `ex.load_results()`, an overview of all runs and their parameters is given as a `pandas` DataFrame, available as `ex.df`. Using `ex.load_results()` with the default parameters will automatically aggregate all scalar results into this table, like `distance` in our example above, which is a float.
        
        Using some fancy pivoting, we can create a 2D matrix with the results as entries
        
        ```python
        pivoted = ex.df.pivot_table(values='result', index = 'y', columns='x', aggfunc='first')
        ```
        <p align="center">
          <img src="https://github.com/caglorithm/mopet/raw/master/resources/pandas_pivot_table.png", width="480">
        </p>
        
        Let's plot the results!
        
        ```python
        
        import matplotlib.pyplot as plt
        plt.imshow(pivoted, \
                   extent = [min(ex.df.x), max(ex.df.x),
                             min(ex.df.y), max(ex.df.y)], origin='lower')
        plt.colorbar(label='Distance from unit circle')
        plt.xlabel("x")
        plt.ylabel("y")
        ```
        
        <p align="center">
          <img src="https://github.com/caglorithm/mopet/raw/master/resources/unit_circle.png", width="350">
        </p>
        
        ## More information 📓
        
        ### Inspired by 🤔
        
        `mopet` is inspired by [`pypet`](https://github.com/SmokinCaterpillar/pypet), a wonderful python parameter exploration toolkit. I have been using `pypet` for a very long time and I'm greatful for its existence! Unfortunately, the project is not maintained anymore and has run into several compatibility issues, which was the primary reason why I built `mopet`. 
        
        ### Built With 💞
        
        `mopet` is built on other amazing open source projects:
        
        * [`ray`](https://github.com/ray-project/ray) - A fast and simple framework for building and running distributed applications.
        * [`pytables`](https://github.com/PyTables/PyTables) - A Python package to manage extremely large amounts of data.
        * [`tqdm`](https://github.com/tqdm/tqdm) - A Fast, Extensible Progress Bar for Python and CLI
        * [`pandas`](https://github.com/pandas-dev/pandas) - Flexible and powerful data analysis / manipulation library for Python
        * [`numpy`](https://github.com/numpy/numpy) - The fundamental package for scientific computing with Python
        
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Requires-Python: >=3.6
Description-Content-Type: text/markdown
