Skip to content

Tool for analyzing activity in chatbots (Telegram, Slack, Discord, Vk, WhatsApp, Viber and all other) created in Python.

License

Notifications You must be signed in to change notification settings

polokonzers/lorabot

 
 

Repository files navigation

LoraBot

LoraBot - Tool for analyzing activity in chatbots (Telegram, Slack, Discord, Vk, WhatsApp, Viber and all other) created in Python.
lorabot
Article about it in English: https://medium.com/@alekskram/analytics-of-chatbots-in-python-e044024c0db7
Article about it in Russian: https://habr.com/ru/post/653535/

Project structure

  • lorabot directory with code that will help you in your analytics
  • docker-compose.yml for create database for analytics near your Project
  • .env stores credentials for accessing analytics to the database and a password for accessing analytics from the bot
  • *_bot.py with embedded analytics (pay attention to telegram_bot.py, there are the most examples)

How add analytics to your project

  1. First of all, you need to download LoraBot as zip or using git:
    git clone https://github.com/aleksspevak/lorabot.git
    and put near your bot.
  2. Create postgresql database for LoraBot by running the following command
    docker-compose up -d
    and put database near your bot. If you don't have docker-compose installed, you can read how to install here: https://docs.docker.com/compose/install/
  3. Install the libraries, that need for LoraBot:
    pip3 install -r requirements.txt
  4. Set password for accessing analytics in .env file:
    ANALYTICS_PASSWORD=lorabot
    
  5. Initialize LoraBot in your bot:
    from lorabot import LoraBot
    lora_bot = LoraBot("your bot's name")
  6. Set where you need LoraBot functions, to start getting information for analytics as in examples:
    #to track new users, for example, in a telegram, it is appropriate to put a function in the processing functions of the /start command
    lora_bot.user(USER_ID, NAME_OF_REGION)
    #to track commands, menu messages, messages
    lora_bot.message(TEXT, TEXT_TYPE, USER_ID)
    #to track events
    lora_bot.event(EVENT, EVENT_TYPE, USER_ID)
    #to track review 
    lora_bot.review(REVIEW, USER_ID)
    #to track bot assessment
    lora_bot.assessment(RATING_IN_INT_FORMAT, USER_ID)
    Great! Now you get analytics from your bot.
  7. To get analytics, make some kind of conditional branching, for example in a file telegram_bot.py a condition has been made to receive a message with a keyword, after that the password is checked and after that the bot owner gets access to analytics:
    analytics
    analytics_2_step

How use another PostgreSQL database

If you have your own database or want to deploy it in the cloud as a SaaS, you need to create a user yourself, run the create_tables.sql file and put credentials in the .env file.

Analytics metrics

Below describe all functions for analytic in LoraBot.
Notice that some function has parameters to set period of analytics,volume of returning data or to set message/event type. You can learn more about parametrs on function's documentation.
Also some functions return only text information, but there are functions that return photo and text information.
Here some examples how return information from analytics in telegram bot:

#Return total information of users that using your bot(only text)
info = lora_bot.analyze_total(START_PERIOD, END_PERIOD)
bot.send_message(message.chat.id, info)
#Return information about daily active users(photo+text)
photo, info = lora_bot.analyze_dau(START_PERIOD, END_PERIOD)
bot.send_message(message.chat.id, info)
bot.send_photo(message.chat.id, photo)

Parametrs for metrics

period_start - beginning of the analysis period
period_end - end of the analysis period
message_type - type of message from the user
event_type - type of event from the user
messages_for_funnel - array of messages in right order for funnel
events_for_funnel - array of events in right order for funnel
volume - amount of data to show

Total metrics

#1 analyze_total - Return total information about your users, their messages and events.
Parametrs: period_start, period_end.
analyze_total

Users metrics

#2 analyze_user_number_accumulation - Analyzes number of users with accumulation
Parametrs: period_start, period_end.
analyze_user_number_accumulation
#3 analyze_new_user - Analyzes number of new registered users
Parametrs: period_start, period_end.
analyze_new_user
#4 analyze_hour_activity - Analyzes number of message by hours activity
Parametrs: period_start, period_end.
analyze_hour_activity
#5 analyze_dau - Analyzes number of active users by days
Parametrs: period_start, period_end.
analyze_dau
#6 analyze_wau - Analyzes number of active users by weeks
Parametrs: period_start, period_end.
analyze_wau
#7 analyze_mau - Analyzes number of active users by month
Parametrs: period_start, period_end.
analyze_mau
#8 analyze_yau - Analyzes number of active users by year
Parametrs: period_start, period_end.
analyze_yau

Messages metrics

#9 analyze_messages_number - Analyzes number of messages by days.
Parametrs: period_start, period_end, message_type.
analyze_messages_number
#10 analyze_messages - Return messages.
Parametrs: period_start, period_end, message_type, volume.
analyze_messages
#11 analyze_messages_type - Analyzes messages by types.
Parametrs: period_start, period_end.
analyze_messages_type
#12 analyze_messages_funnel - Create funnel for messages.
Parametrs: messages_for_funnel, period_start, period_end.
analyze_messages_funnel

Events metrics

#13 analyze_events_number - Analyzes number of events by days.
Parametrs: period_start, period_end, event_type.
analyze_events_number
#14 analyze_events - Return events.
Parametrs: period_start, period_end, event_type, volume.
analyze_events
#15 analyze_events_type - Analyzes events by types.
Parametrs: period_start, period_end.
analyze_events_type
#16 analyze_events_funnel - Create funnel for events.
Parametrs: events_for_funnel, period_start, period_end.
analyze_events_funnel

Assessment and review metrics

#17 analyze_assessment - Analyzes assessment.
Parametrs: period_start, period_end.
analyze_assessment
#18 analyze_review - Return reviews.
Parametrs: period_start, period_end, volume.
analyze_review

Other metrics

#19 analyze_language - Analyzes what language users use.
Parametrs: period_start, period_end.
analyze_language
#20 analyze_bots_users - Analyzes number of users in all bots.
Parametrs: No.
analyze_bots_users

How create custom metrics

There is a function to which you can pass an SQL query directly from the bot or put your query in it. This is sql_query function and it accepts only one parameter - a query.

   info = lora_bot.sql_query(YOUR_SQL)
   bot.send_message(message.chat.id, info, reply_markup=your_markup)

sql

Database schema where information on users, messages, events and reviews is stored:
db_schema

Enjoy!

About

Tool for analyzing activity in chatbots (Telegram, Slack, Discord, Vk, WhatsApp, Viber and all other) created in Python.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 99.8%
  • Shell 0.2%