Metadata-Version: 2.1
Name: matsim-tools
Version: 0.0.6
Summary: MATSim Agent-Based Transportation Simulation Framework - official python analysis tools
Home-page: https://github.com/matsim-vsp/matsim-python-tools
Author: VSP-Berlin
Author-email: laudan@tu-berlin.de
License: GPLv3
Description: # matsim-tools
        
        Official tools for working with MATSim output files
        
        MATSim is an open-source, multi-agent transportation simulation framework. Find out more about MATSim at <https://matsim.org>
        
        ## About this library
        
        We are at the very early stages of building this library. The API will change, things will break, and there are certainly bugs. You probably shouldn't use this for anything.
        
        - Our primary goal is to make MATSim play nice with **pandas** and **geopandas**, for data analysis workflows.
        - We have only tested this using Anaconda Python. Only Python 3.x is supported.
        - Currently MATSim network, event, and plans files are supported. Hopefully more will be coming soon.
        - For Geopandas network support, you also need to install `geopandas` and `shapely`.
        - *Now supports JSON and Protobuf event file formats!*
        
        ## Quickstart
        
        1. Install using `pip install matsim-tools`
        
        2. In lieu of real documentation, here is some sample code to get you started. Good luck!
        
        ```python
        import matsim
        import pandas as pd
        from collections import defaultdict
        %matplotlib inline
        
        # -------------------------------------------------------------------
        # 1. NETWORK: Read a MATSim network:
        net = matsim.read_network('output_network.xml.gz')
        
        net.nodes
        # Dataframe output:
        #           x        y node_id
        # 0  -20000.0      0.0       1
        # 1  -15000.0      0.0       2
        # 2    -865.0   5925.0       3
        # ...
        
        net.links
        # Dataframe output:
        #      length  capacity  freespeed  ...  link_id from_node to_node
        # 0   10000.0   36000.0      27.78  ...        1         1       2
        # 1   10000.0    3600.0      27.78  ...        2         2       3
        # 2   10000.0    3600.0      27.78  ...        3         2       4
        # ...
        
        geo = net.as_geo()  # combines links+nodes into a Geopandas dataframe with LINESTRINGs
        geo.plot()    # try this in a notebook to see your network!
        ```
        
        ![Switzerland](https://raw.githubusercontent.com/matsim-vsp/matsim-python-tools/master/docs/ch.png)
        
        ```python
        # -------------------------------------------------------------------
        # 2. EVENTS: Stream through a MATSim event file.
        
        # The event_reader returns a python generator function, which you can then
        # loop over without loading the entire events file in memory.
        # In this example let's sum up all 'entered link' events to get link volumes.
        
        events = matsim.event_reader('output_events.xml.gz', filter='entered link,left link')
        
        link_counts = defaultdict(int) # defaultdict creates a blank dict entry on first reference
        
        for event in events:
            if event['type'] == 'entered link':
                link_counts[event['link']] += 1
        
        # convert our link_counts dict to a pandas dataframe,
        # with 'link_id' column as the index and 'count' column with value:
        link_counts = pd.DataFrame.from_dict(link_counts, orient='index', columns=['count']).rename_axis('link_id')
        
        # attach counts to our Geopandas network from above
        volumes = geo.merge(link_counts, on='link_id')
        volumes.plot(column='count', figsize=(10,10), cmap='Wistia') #cmap is colormap
        ```
        
        ![Link Counts](https://raw.githubusercontent.com/matsim-vsp/matsim-python-tools/master/docs/counts.png)
        
        ```python
        # -------------------------------------------------------------------
        # 3. PLANS: Stream through a MATSim plans file.
        
        plans = matsim.plan_reader('output_plans.xml.gz', selectedPlansOnly = True)
        
        # Each plan is returned as a tuple with its owning person (for now, is this ok?)
        # - The name of the element is in its .tag (e.g. 'plan', 'leg', 'route', 'attributes')
        # - An element's attributes are accessed using .attrib['attrib-name']
        # - Use the element's .text field to get data outside of attributes (e.g. a route's list of links)
        # - Every element can be iterated on to get its children (e.g. the plan's activities and legs)
        
        for person, plan in plans:
        
            # do stuff with this plan, e.g.
            work_activities = filter(
                lambda e: e.tag == 'activity' and e.attrib['type'] == 'w',
                plan)
        
            print('person', person.attrib['id'], 'selected plan w/', len(list(work_activities)), 'work-act')
            activities.append(num_activities)
        
        # person 1 selected plan w/ 2 work-act
        # person 10 selected plan w/ 1 work-act
        # person 100 selected plan w/ 1 work-act
        # ...
        ```
        
        
Platform: UNKNOWN
Classifier: License :: OSI Approved :: GNU General Public License (GPL)
Classifier: Programming Language :: Python :: 3
Description-Content-Type: text/markdown
