A Tensorflow/Keras callback which sends information about your model training, on various messaging platforms.
Using pip:
pip install tf_notification_callbackImport the required module and add it to the list callbacks while training your model.
Example:
>>> from tf_notification_callback import TelegramCallback >>> telegram_callback = TelegramCallback('<BotToken>', '<ChatID>', 'CNN Model', ['loss', 'val_loss'], ['accuracy', 'val_accuracy'], True) >>> model.fit(x_train, y_train, batch_size=32, epochs=10, validation_data=(x_test, y_test), callbacks=[telegram_callback])- Create a telegram bot using BotFather
- Search for @BotFather on telegram.
- Send
/helpto get list of all commands. - Send
/newbotto create a new bot and complete the setup. - Copy the bot token after creating the bot.
- Get the chat ID
- Search for the bot you created and send it any random message.
- Go to this URL
https://api.telegram.org/bot<BOT_TOKEN>/getUpdates(replace <BOT_TOKEN> with your bot token) - Copy the
chat idof the user you want to send messages to.
- Use the
TelegramCallback()class.
TelegramCallback(bot_token=None, chat_id=None, modelName='model', loss_metrics=['loss'], acc_metrics=[], getSummary=False):Arguments:
bot_token: unique token of Telegram bot{str}chat_id: Telegram chat id you want to send message to{str}modelName: name of your model{str}loss_metrics: loss metrics you want in the loss graph{list of strings}acc_metrics: accuracy metrics you want in the accuracy graphs{list of strings}getSummary: Do you want message for each epoch (False) or a single message containing information about all epochs (True).{bool}
- Create a Slack workspace
- Create a new channel
- Search for the Incoming Webhooks in the Apps and install it.
- Copy the Webhook URL
- Use the
SlackCallback()class.
SlackCallback(bot_token=None, chat_id=None, modelName='model', loss_metrics=['loss'], acc_metrics=[], getSummary=False):Arguments:
webhookURL: unique webhook URL of the app{str}channel: channel name or username you want to send message to{str}modelName: name of your model{str}loss_metrics: loss metrics you want in the loss graph{list of strings}acc_metrics: accuracy metrics you want in the accuracy graph{list of strings}getSummary: Do you want message for each epoch (False) or a single message containing information about all epochs (True).{bool}
Sending images in Slack is not supported currently.
- Zulip
- Messages
As the Deep Learning models are getting more and more complex and computationally heavy, they take a very long time to train. During my internship, people used to start the model training and left it overnight. They could only check its progress the next day. So I thought it would be great if there was a simple way to get the training info remotely on their devices.