💬 Python scripts to parse Messenger, Hangouts, WhatsApp and Telegram chat logs into DataFrames.

Overview

Chatistics

Python 3 scripts to convert chat logs from various messaging platforms into Pandas DataFrames. Can also generate histograms and word clouds from the chat logs.

Changelog

10 Jan 2020: UPDATED ALL THE THINGS! Thanks to mar-muel and manueth, pretty much everything has been updated and improved, and WhatsApp is now supported!

21 Oct 2018: Updated Facebook Messenger and Google Hangouts parsers to make them work with the new exported file formats.

9 Feb 2018: Telegram support added thanks to bmwant.

24 Oct 2016: Initial release supporting Facebook Messenger and Google Hangouts.

Support Matrix

Platform Direct Chat Group Chat
Facebook Messenger ✔ ✘
Google Hangouts ✔ ✘
Telegram ✔ ✘
WhatsApp ✔ ✔

Exported data

Data exported for each message regardless of the platform:

Column Content
timestamp UNIX timestamp (in seconds)
conversationId A conversation ID, unique by platform
conversationWithName Name of the other people in a direct conversation, or name of the group conversation
senderName Name of the sender
outgoing Boolean value whether the message is outgoing/coming from owner
text Text of the message
language Language of the conversation as inferred by langdetect
platform Platform (see support matrix above)

Exporting your chat logs

1. Download your chat logs

Google Hangouts

Warning: Google Hangouts archives can take a long time to be ready for download - up to one hour in our experience.

  1. Go to Google Takeout: https://takeout.google.com/settings/takeout
  2. Request an archive containing your Hangouts chat logs
  3. Download the archive, then extract the file called Hangouts.json
  4. Move it to ./raw_data/hangouts/

Facebook Messenger

Warning: Facebook archives can take a very long time to be ready for download - up to 12 hours! They can weight several gigabytes. Start with an archive containing just a few months of data if you want to quickly get started, this shouldn't take more than a few minutes to complete.

  1. Go to the page "Your Facebook Information": https://www.facebook.com/settings?tab=your_facebook_information
  2. Click on "Download Your Information"
  3. Select the date range you want. The format must be JSON. Media won't be used, so you can set the quality to "Low" to speed things up.
  4. Click on "Deselect All", then scroll down to select "Messages" only
  5. Click on "Create File" at the top of the list. It will take Facebook a while to generate your archive.
  6. Once the archive is ready, download and extract it, then move the content of the messages folder into ./raw_data/messenger/

WhatsApp

Unfortunately, WhatsApp only lets you export your conversations from your phone and one by one.

  1. On your phone, open the chat conversation you want to export
  2. On Android, tap on â‹® > More > Export chat. On iOS, tap on the interlocutor's name > Export chat
  3. Choose "Without Media"
  4. Send chat to yourself eg via Email
  5. Unpack the archive and add the individual .txt files to the folder ./raw_data/whatsapp/

Telegram

The Telegram API works differently: you will first need to setup Chatistics, then query your chat logs programmatically. This process is documented below. Exporting Telegram chat logs is very fast.

2. Setup Chatistics

First, install the required Python packages using conda:

conda env create -f environment.yml
conda activate chatistics

You can now parse the messages by using the command python parse.py .

By default the parsers will try to infer your own name (i.e. your username) from the data. If this fails you can provide your own name to the parser by providing the --own-name argument. The name should match your name exactly as used on that chat platform.

# Google Hangouts
python parse.py hangouts

# Facebook Messenger
python parse.py messenger

# WhatsApp
python parse.py whatsapp

Telegram

  1. Create your Telegram application to access chat logs (instructions). You will need api_id and api_hash which we will now set as environment variables.
  2. Run cp secrets.sh.example secrets.sh and fill in the values for the environment variables TELEGRAM_API_ID, TELEGRAMP_API_HASH and TELEGRAM_PHONE (your phone number including country code).
  3. Run source secrets.sh
  4. Execute the parser script using python parse.py telegram

The pickle files will now be ready for analysis in the data folder!

For more options use the -h argument on the parsers (e.g. python parse.py telegram --help).

3. All done! Play with your data

Chatistics can print the chat logs as raw text. It can also create histograms, showing how many messages each interlocutor sent, or generate word clouds based on word density and a base image.

Export

You can view the data in stdout (default) or export it to csv, json, or as a Dataframe pickle.

python export.py

You can use the same filter options as described above in combination with an output format option:

  -f {stdout,json,csv,pkl}, --format {stdout,json,csv,pkl}
                        Output format (default: stdout)

Histograms

Plot all messages with:

python visualize.py breakdown

Among other options you can filter messages as needed (also see python visualize.py breakdown --help):

  --platforms {telegram,whatsapp,messenger,hangouts}
                        Use data only from certain platforms (default: ['telegram', 'whatsapp', 'messenger', 'hangouts'])
  --filter-conversation
                        Limit by conversations with this person/group (default: [])
  --filter-sender
                        Limit to messages sent by this person/group (default: [])
  --remove-conversation
                        Remove messages by these senders/groups (default: [])
  --remove-sender
                        Remove all messages by this sender (default: [])
  --contains-keyword
                        Filter by messages which contain certain keywords (default: [])
  --outgoing-only       
                        Limit by outgoing messages (default: False)
  --incoming-only       
                        Limit by incoming messages (default: False)

Eg to see all the messages sent between you and Jane Doe:

python visualize.py breakdown --filter-conversation "Jane Doe"

To see the messages sent to you by the top 10 people with whom you talk the most:

python visualize.py breakdown -n 10 --incoming-only

You can also plot the conversation densities using the --as-density flag.

Word Cloud

You will need a mask file to render the word cloud. The white bits of the image will be left empty, the rest will be filled with words using the color of the image. See the WordCloud library documentation for more information.

python visualize.py cloud -m raw_outlines/users.jpg

You can filter which messages to use using the same flags as with histograms.

Development

Install dev environment using

conda env create -f environment_dev.yml

Run tests from project root using

python -m pytest

Improvement ideas

  • Parsers for more chat platforms: Discord? Signal? Pidgin? ...
  • Handle group chats on more platforms.
  • See open issues for more ideas.

Pull requests are welcome!

Social medias

Projects using Chatistics

Meet your Artificial Self: Generate text that sounds like you workshop

Credits

Owner
Florian
🤖 Machine Learning
Florian
This project is the implementation template for HW 0 and HW 1 for both the programming and non-programming tracks

This project is the implementation template for HW 0 and HW 1 for both the programming and non-programming tracks

Donald F. Ferguson 4 Mar 06, 2022
NFCDS Workshop Beginners Guide Bioinformatics Data Analysis

Genomics Workshop FIXME: overview of workshop Code of Conduct All participants s

Elizabeth Brooks 2 Jun 13, 2022
wikirepo is a Python package that provides a framework to easily source and leverage standardized Wikidata information

Python based Wikidata framework for easy dataframe extraction wikirepo is a Python package that provides a framework to easily source and leverage sta

Andrew Tavis McAllister 35 Jan 04, 2023
This is an analysis and prediction project for house prices in King County, USA based on certain features of the house

This is a project for analysis and estimation of House Prices in King County USA The .csv file contains the data of the house and the .ipynb file con

Amit Prakash 1 Jan 21, 2022
Sensitivity Analysis Library in Python (Numpy). Contains Sobol, Morris, Fractional Factorial and FAST methods.

Sensitivity Analysis Library (SALib) Python implementations of commonly used sensitivity analysis methods. Useful in systems modeling to calculate the

SALib 663 Jan 05, 2023
A tax calculator for stocks and dividends activities.

Revolut Stocks calculator for Bulgarian National Revenue Agency Information Processing and calculating the required information about stock possession

Doino Gretchenliev 200 Oct 25, 2022
CPSPEC is an astrophysical data reduction software for timing

CPSPEC manual Introduction CPSPEC is an astrophysical data reduction software for timing. Various timing properties, such as power spectra and cross s

Tenyo Kawamura 1 Oct 20, 2021
Learn machine learning the fun way, with Oracle and RedBull Racing

Red Bull Racing Analytics Hands-On Labs Introduction Are you interested in learning machine learning (ML)? How about doing this in the context of the

Oracle DevRel 55 Oct 24, 2022
VHub - An API that permits uploading of vulnerability datasets and return of the serialized data

VHub - An API that permits uploading of vulnerability datasets and return of the serialized data

André Rodrigues 2 Feb 14, 2022
Time ranges with python

timeranges Time ranges. Read the Docs Installation pip timeranges is available on pip: pip install timeranges GitHub You can also install the latest v

Micael Jarniac 2 Sep 01, 2022
Mining the Stack Overflow Developer Survey

Mining the Stack Overflow Developer Survey A prototype data mining application to compare the accuracy of decision tree and random forest regression m

1 Nov 16, 2021
This is a tool for speculation of ancestral allel, calculation of sfs and drawing its bar plot.

superSFS This is a tool for speculation of ancestral allel, calculation of sfs and drawing its bar plot. It is easy-to-use and runing fast. What you s

3 Dec 16, 2022
MetPy is a collection of tools in Python for reading, visualizing and performing calculations with weather data.

MetPy MetPy is a collection of tools in Python for reading, visualizing and performing calculations with weather data. MetPy follows semantic versioni

Unidata 971 Dec 25, 2022
Pandas and Dask test helper methods with beautiful error messages.

beavis Pandas and Dask test helper methods with beautiful error messages. test helpers These test helper methods are meant to be used in test suites.

Matthew Powers 18 Nov 28, 2022
Implementation in Python of the reliability measures such as Omega.

OmegaPy Summary Simple implementation in Python of the reliability measures: Omega Total, Omega Hierarchical and Omega Hierarchical Total. Name Link O

Rafael Valero Fernández 2 Apr 27, 2022
Common bioinformatics database construction

biodb Common bioinformatics database construction 1.taxonomy (Substance classification database) Download the database wget -c https://ftp.ncbi.nlm.ni

sy520 2 Jan 04, 2022
Python package for analyzing sensor-collected human motion data

Python package for analyzing sensor-collected human motion data

Simon Ho 71 Nov 05, 2022
statDistros is a Python library for dealing with various statistical distributions

StatisticalDistributions statDistros statDistros is a Python library for dealing with various statistical distributions. Now it provides various stati

1 Oct 03, 2021
A Big Data ETL project in PySpark on the historical NYC Taxi Rides data

Processing NYC Taxi Data using PySpark ETL pipeline Description This is an project to extract, transform, and load large amount of data from NYC Taxi

Unnikrishnan 2 Dec 12, 2021
Yet Another Workflow Parser for SecurityHub

YAWPS Yet Another Workflow Parser for SecurityHub "Screaming pepper" by Rum Bucolic Ape is licensed with CC BY-ND 2.0. To view a copy of this license,

myoung34 8 Dec 22, 2022