Automating E-mail Responses Utilizing CrewAI

0
18
Automating E-mail Responses Utilizing CrewAI


Yet one more vacation season has arrived. It’s certainly essentially the most great time of the yr. It’s additionally that point of the yr when working professionals set the identical outdated out-of-office reply to each e mail they get. Properly, the issue with automating e mail responses this fashion is that it offers the identical flavourless replies to all of the emails – each related and irrelevant ones. That is when even adults begin wishing Santa would present them an e mail workflow optimisation answer or an AI e mail assistant that provides good replies. Properly, this yr, Santa has come dressed as CrewAI! On this weblog, we’ll study automating e mail responses by constructing an agentic AI system with CrewAI to answer to your out-of-office emails well and guarantee good e mail administration.

Understanding the Context

First, let’s attempt to perceive the context of our downside assertion.

Automating E-mail Responses Utilizing CrewAI

This screenshot captures the essence of the issue. For those who look intently, you can find emails the place my direct intervention is required, after which you can find emails with subscribed newsletters and calendar notifications that don’t require any reply.

The present ‘Trip Responder’ responds to all of the messages with no functionality to vary the identify of the recipient or the contents of the mail based mostly on who it’s responding to. Additionally, it responds to irrelevant emails, which embody newsletters, verification code emails, OTP emails, and many others.

Out-of-office reply on Gmail | Automating Email Responses Using CrewAI

That is the place the CrewAI framework involves the rescue for e mail response administration. With CrewAI, you’ll be able to rapidly construct an e mail responder agent system, with some easy coding. Relieved? So, let’s construct an agentic AI system for automating e mail responses with CrewAI and produce a layer of optimisation to your e mail workflow.

Additionally Learn: Automating E-mail Sorting and Labelling with CrewAI

Google Authentication

Earlier than we soar to the code for automating e mail responses in Gmail, it’s worthwhile to allow the Gmail API and generate the OAuth 2.0 credentials. This may give your e mail responder agentic system entry to your emails. Right here’s methods to get this executed.

Step 1: Create a New Mission in Google Cloud

Go to the Google Cloud console and log in along with your e mail tackle. First-time customers might want to create an account.

Then choose “New Mission” within the dropdown, give it a reputation, and click on Create. This challenge can have the required API-related configurations. Whereas including the brand new challenge, select your organisation identify as the placement, as now we have chosen analyticsvidhya.com.

Create New Project | Automating Email Responses Using CrewAI
Select a resource | Automating Email Responses Using CrewAI
New project details | Automating Email Responses Using CrewAI

Step 2: Allow Gmail API

Click on the Navigation Menu from the console’s Dashboard and head to Discover and Allow APIs below the Getting Began part.

AI Email Assistant for out-of-office reply
AI Email Assistant for out-of-office reply

On the left-hand aspect of the display, choose Library, and seek for “Gmail API”. Allow it for the challenge you created.

AI Email Assistant
AI Email Assistant for out-of-office reply
AI Email Assistant for out-of-office reply

Step 3: Set Up OAuth 2.0 Credentials

Subsequent, arrange the OAuth consent display below APIs & Companies. Then click on Configure Consent Display screen.

AI Email Assistant
AI Email Assistant

Select the kind (e.g., Exterior for apps utilized by anybody). We are going to selected Inner since we’re utilizing it for our personal e mail ID. Then click on Create.

AI Email Assistant

Then, identify your app and add the Consumer assist e mail and Developer contact info. Right here’s the place you need to add your work e mail ID. As soon as executed, click on on SAVE AND CONTINUE on the backside of the display.

AI Email Assistant for out-of-office reply

Now, we have to outline the scopes within the consent display setup. Scopes, within the context of Google Console, dictate what the API can entry. For email-related duties, you’ll want the next: ‘https://www.googleapis.com/auth/gmail.modify‘. This scope will permit the e-mail responder system to ship and modify emails in your Gmail account. Click on on ADD OR REMOVE SCOPES after which choose the scope talked about above.

AI Email Assistant for out-of-office reply
AI Email Assistant for out-of-office reply

Then click on on Replace. You possibly can see that the scope has been added. Press SAVE AND CONTINUE.

AI Email Assistant for out-of-office reply

Now undergo the abstract, after which click on BACK TO DASHBOARD.

AI Email Assistant for out-of-office reply

Step 4: Create Credentials

Now select Credentials below APIs & Companies and click on CREATE CREDENTIALS.

CrewAI Email Management for workflow optimization

Then choose OAuth shopper ID.

CrewAI Email Management for workflow optimization

For native improvement, we are going to select the Desktop App possibility, after which press CREATE.

CrewAI Email Management for workflow optimization

Step 5: Obtain the Credential.json

Now obtain the JSON file and put it aside regionally at your most popular location.

CrewAI Email Management for workflow optimization

And that concludes our use of Google Search Console.

To allow CrewAI brokers to carry out internet searches and data retrieval from the web, it is going to want the API to the SerperDev Software. The SerperDev Software is a Python utility that interfaces with the Serper API, a cheap and speedy Google Search API. It permits builders to programmatically retrieve and course of Google Search outcomes, together with reply containers, information graphs, and natural listings.

CrewAI Email Management for workflow optimization

Let’s undergo the steps to get the API.

  • Go to serper.dev and click on on Enroll.
  • Create your account and login. You will note the Dashboard when you login.
CrewAI Email Management for workflow optimization
  • On the left of the display, click on on API Key.
CrewAI Email Management for workflow optimization
CrewAI Email Management for workflow optimization

Now, let’s soar to the Python code and construct our AI e mail assistant for automated e mail responses.

Python Code for Automating E-mail Responses

Step 1: Import Crucial Libraries

We are going to start by importing the related libraries to construct an agentic system for automating e mail responses.

# Importing obligatory libraries
import os  # Supplies capabilities to work together with the working system
# Importing modules from the CrewAI framework
# CrewAI is a framework for managing brokers, duties, processes, and instruments.
from crewai import Agent, Activity, Crew, Course of  # Handle brokers, duties, and processes
from crewai_tools import SerperDevTool  # Software from CrewAI for connecting to Google search
# Importing modules for Google OAuth2 authentication and API interplay
from google.auth.transport.requests import Request  # To deal with token refresh requests
from google.oauth2.credentials import Credentials  # To handle OAuth2 credentials
from google_auth_oauthlib.circulate import InstalledAppFlow  # To deal with OAuth2 login flows
from googleapiclient.discovery import construct  # To create service objects for Google APIs
# Importing modules for e mail creation
import base64  # To encode e mail messages in base64
from e mail.mime.textual content import MIMEText  # To create MIME-compliant e mail messages

Step 2: Set Scopes

Now, let’s set the SCOPES variable that defines permissions for the Gmail API. ‘gmail_modify’ permits studying, sending, and modifying emails, excluding everlasting deletion, guaranteeing restricted entry.

# Gmail API setup
SCOPES = ['https://www.googleapis.com/auth/gmail.modify']

Subsequent, we create the get_gmail_service perform that authenticates and connects to the Gmail API. It checks for saved credentials in token.json, refreshing them if expired. If unavailable, it initiates a brand new login circulate utilizing credentials.json. It saves legitimate credentials for reuse, and returns a Gmail API service object for e mail operations.

# Perform to authenticate and join gmail API

def get_gmail_service():

    creds = None

    if os.path.exists('token.json'):

        creds = Credentials.from_authorized_user_file('token.json', SCOPES)

    if not creds or not creds.legitimate:

        if creds and creds.expired and creds.refresh_token:

            creds.refresh(Request())

        else:

            circulate = InstalledAppFlow.from_client_secrets_file('credentials.json', SCOPES)

            creds = circulate.run_local_server(port=0)

        with open('token.json', 'w') as token:

            token.write(creds.to_json())

    return construct('gmail', 'v1', credentials=creds)

Step 3: Set Up E-mail Retrieval

Then, we create the get_unread_emails perform to retrieve unread emails from the Gmail inbox. It makes use of the Gmail API service object to checklist messages with the labels ‘INBOX’ and ‘UNREAD’. The outcomes are executed as a question, and the perform returns a listing of messages or an empty checklist if none exist.

# Perform to retrieve unread emails

def get_unread_emails(service):

    outcomes = service.customers().messages().checklist(userId='me', labelIds=['INBOX', 'UNREAD']).execute()

    return outcomes.get('messages', [])

Subsequent, we create the get_email_content perform to retrieve and parse e mail particulars from Gmail utilizing the message ID. It fetches the total e mail, extracts the topic and sender from headers, and decodes the physique. It helps multi-part emails (extracting plain textual content) and single-part emails by decoding the Base64-encoded content material. The perform returns a dictionary containing the e-mail’s topic, sender, and physique, guaranteeing complete dealing with of various e mail codecs.

def get_email_content(service, msg_id):

    message = service.customers().messages().get(userId='me', id=msg_id, format="full").execute()

    payload = message['payload']

    headers = payload['headers']

    topic = subsequent(header['value'] for header in headers if header['name'] == 'Topic')

    sender = subsequent(header['value'] for header in headers if header['name'] == 'From')

    physique = ''

    if 'components' in payload:

        for half in payload['parts']:

            if half['mimeType'] == 'textual content/plain':

                physique = base64.urlsafe_b64decode(half['body']['data']).decode('utf-8')

                break

    else:

        physique = base64.urlsafe_b64decode(payload['body']['data']).decode('utf-8')

    return {'topic': topic, 'sender': sender, 'physique': physique}

Step 4: Set Up E-mail Filters

Now, we come to crucial piece of code. The half that helps us filter out irrelevant emails based mostly on sure key phrases within the physique of the mail or the sender. For me, I are not looking for my agentic system to answer emails that are- “subscribed newsletters”, “advertising and marketing emails”, “automated stories”, “calendar notifications”, “verification code emails”, “OTP emails”, “HRMS”, “emails containing the phrases like ‘don’t reply’, ‘no-reply’, ‘accepted your invitation’, ‘rejected your invitation’, and many others.”

So, we are going to create the filter_emails perform that identifies emails to disregard based mostly on predefined standards. It makes use of two lists: ignore_keywords for phrases like “e-newsletter,” “OTP,” or “advertising and marketing” that point out irrelevant content material, and ignore_senders for sender patterns like “noreply” or “calendar-notification.” The perform checks if the sender matches any ignored patterns or if the topic or physique comprises any ignored key phrases. It converts textual content(sender’s e mail id + physique of the e-mail) to lowercase for constant, case-insensitive comparisons. If an e mail matches any standards, the perform returns True to filter it out; in any other case, it returns False.

# Perform to filter out emails

def filter_emails(email_content, sender, topic):

    ignore_keywords = [

        "newsletter", "marketing", "automated report", "calendar notifications", "verification code", "otp", "Join with Google Meet",

        "HRMS", "do not reply", "no-reply", "accepted your invitation", "rejected your invitation", "Accepted:"

    ]

    ignore_senders = [

        "[email protected]", "calendar-notification", "noreply", "no-reply", "calendar-server.bounces.google.com"

    ]

    # Examine sender

    if any(ignore in sender.decrease() for ignore in ignore_senders):

        return True

    # Examine topic and physique for key phrases

    if any(key phrase in topic.decrease() or key phrase in email_content.decrease() for key phrase in ignore_keywords):

        return True

    return False

Step 5: Create the Ship Reply Perform

Subsequent, we create the send_reply perform that replies to an e mail utilizing the Gmail API. To take care of the context of the dialog, we are going to create a message with the required recipient (to), physique, and thread ID. The message is Base64-encoded and despatched by way of the API. This perform ensures replies are linked to the unique thread for seamless communication.

def send_reply(service, to, topic, physique, thread_id):

    message = MIMEText(physique)

    message['to'] = to

    raw_message = base64.urlsafe_b64encode(message.as_bytes()).decode('utf-8')

    return service.customers().messages().ship(

        userId='me',

        physique={'uncooked': raw_message, 'threadId': thread_id}

    ).execute()

Step 6: Construct the AI Brokers

Now, we are going to construct the three brokers required to execute the duty: the email_analyzer, response_drafter, and proofreader brokers. I’ve added the related prompts to every agent as per my desire. I like to recommend you undergo the backstory and aim accordingly.

# Outline brokers

email_analyzer = Agent(

    position="E-mail Analyzer",

    aim="Analyze incoming emails and decide applicable responses to related emails",

    backstory="You are an knowledgeable at understanding e mail content material and context. "

              "With this understanding, you identify whether or not to answer to a selected e mail or not. "

              "You want to ignore emails which can be newsletters, advertising and marketing emails, Google doc feedback, google doc notifications,"

              "calendar notifications, HRMS mails, automated stories, and many others.",    

    verbose=True,

    instruments=[SerperDevTool()],

    allow_delegation=False

)

response_drafter = Agent(

    position="Response Drafter",

    aim="Draft applicable responses to emails",

    backstory="You are expert at crafting skilled and contextually applicable e mail responses."

              "Don't Generate responses to emails which can be unread newsletters, advertising and marketing emails,"

              "googl doc feedback(from: [email protected]), calendar notifications, HRMS mails, automated stories, and many others."

              "Make the responses crisp. Guarantee it's identified to people who the I'm celebrating the Holidays and can be capable to ship any required paperwork as soon as I'm be a part of again on third January 2025."

              "YOUR NAME is my identify and that is the identify for use within the sign-off for every mail you generate response for."

              "Within the salutation use the recipient's identify after 'Hello'",

    verbose=True

)

proofreader = Agent(

    position="Proofreader",

    aim="Guarantee e mail responses are error-free and polished",

    backstory="You've got a eager eye for element and glorious grammar expertise. Make sure the response is crisp and to the purpose"

              "Additionally discard e mail replies generated for emails which can be newsletters, advertising and marketing emails, googl doc feedback, calendar notifications, HRMS mails, automated stories, and many others.",

    verbose=True

)

Now we are going to outline three completely different duties for the three brokers now we have created. The outline will replicate the instructions written within the backstory of their respective brokers.

# Outline job for email_analyzer agent

def analyze_email(email_content):

    return Activity(

        description=f"Analyze the content material and context of the next e mail:nn{email_content}n"

                    f"Decide if this e mail requires a response. Ignore newsletters, advertising and marketing emails, "

                    f"Google doc feedback (from: [email protected]), Google doc notifications, calendar invitations, "

                    f"HRMS mails, automated stories, and many others.",

        expected_output="An in depth evaluation of the e-mail content material and context, together with whether or not it requires a response",

        agent=email_analyzer

    )

# Outline job for response_drafter agent

def draft_response(evaluation):

    return Activity(

        description=(

            f"Draft knowledgeable and contextually applicable response to the next e mail evaluation:nn{evaluation}nn"

            f"Make sure the response is crisp and interesting. Keep away from producing e mail responses for newsletters, advertising and marketing emails, "

            f"Google doc feedback (from: [email protected]), Google doc notifications, "

            f"calendar invitations, HRMS mails, and automatic stories. "

            f"Moreover, embody a word indicating that the sender is celebrating the vacations and can be capable to present "

            f"any required paperwork or help after returning."

            f"YOUR NAME is the identify of the sender and this must be utilized in sign-off for every mail you generate response for."

            f"Within the salutation use the recipient's identify after 'Hello'"

        ),

        expected_output="A well-crafted e mail response based mostly on the evaluation",

        agent=response_drafter

    )

# Outline job for proofreader agent

def proofread_response(draft):

    return Activity(

        description=f"Overview and refine the next drafted e mail response:nn{draft}",

        expected_output="A refined, error-free e mail response",

        agent=proofreader

    )

Step 7: Add the Course of E-mail Perform

Subsequent, we create the process_email perform to course of an e mail by first making use of filter_emails to disregard irrelevant messages. If the e-mail passes the filter, a crew occasion manages the sequential execution of duties: analyzing the e-mail, drafting a response, and proofreading it. The result’s evaluated to verify if a response is required. If not, it returns None; in any other case, it returns the processed output. This perform automates e mail dealing with effectively with clear decision-making at every step.

# Process_email to incorporate filtering logic

def process_email(email_content, sender, topic):

    if filter_emails(email_content, sender, topic):

        print(f"Filtered out e mail from: {sender}")

        return None

    crew = Crew(

        brokers=[email_analyzer, response_drafter, proofreader],

        duties=[

            analyze_email(email_content),

            draft_response(""),

            proofread_response("")

        ],

        course of=Course of.sequential,

        verbose=True

    )

    outcome = crew.kickoff()

    # Examine if the result's a CrewOutput object

    if hasattr(outcome, 'outcome'):

        final_output = outcome.outcome

    else:

        final_output = str(outcome)

    # Now verify if a response is required

    if "requires response: false" in final_output.decrease():

        return None

    return final_output

Step 8: Create the Ship Reply Perform

And now we come to our ultimate perform for this code. We are going to create the run_email_replier perform which automates e mail administration for CrewAI brokers. It fetches unread emails, analyzes their content material, and responds if wanted. It does this by retrieving detailed e mail info (physique, sender, topic), processing it with process_email to filter irrelevant messages, and figuring out if a response is required. If that’s the case, it sends a reply whereas sustaining the e-mail thread; in any other case, it skips the e-mail. This streamlined course of effectively handles e mail triage, guaranteeing solely related emails obtain consideration and automating responses the place obligatory.

# Run_email_replier to go sender and topic to process_email

def run_email_replier():

    service = get_gmail_service()

    unread_emails = get_unread_emails(service)

    for e mail in unread_emails:

        email_content = get_email_content(service, e mail['id'])

        response = process_email(email_content['body'], email_content['sender'], email_content['subject'])

        if response:

            send_reply(service, email_content['sender'], email_content['subject'], response, e mail['threadId'])

            print(f"Replied to e mail: {email_content['subject']}")

        else:

            print(f"Skipped e mail: {email_content['subject']}")

Step 9: Set the Surroundings Variables for API Keys

Lastly, we set the setting variables for API keys (OPENAI_API_KEY, SERPER_API_KEY that you just saved) required for e mail processing. It executes the run_email_replier perform to automate e mail administration utilizing CrewAI brokers, together with analyzing, filtering, and replying to unread emails. The if __name__ == “__main__”: block ensures the method runs solely when executed straight.

# units setting variables 
if __name__ == "__main__":

    # Arrange setting variables

    os.environ['OPENAI_API_KEY'] = 'Your API Key'

    os.environ['SERPER_API_KEY'] = 'Your API Key'

    # Run the e-mail replier

    run_email_replier()

And that’s our e mail response administration agent in full motion!

CrewAI Email Management for workflow optimization

Let’s take a look on the emails. As you’ll be able to see, for emails the place my direct intervention was required, it has generated a personalized e mail as per the context.

And for emails reminiscent of newsletters and notifications from HRMs, the place replies aren’t required, it has not given any reply.

CrewAI Email Management for workflow optimization

And there you may have it! A completely useful autonomous agentic system for automating e mail responses for out-of-office replies This manner you should utilize AI brokers for e mail workflow optimization. In case you are happy with the responses you’ll be able to arrange a job scheduler to mechanically run this code at particular instances through the day. When the code is run it is going to mechanically reply to the related unread emails.

Additionally Learn: Construct LLM Brokers on the Fly With out Code With CrewAI

Conclusion

Automating e mail responses with Brokers(Crew AI, Langchain, AutoGen) can remodel how we handle replies to out-of-office emails. Furthermore, organising such a system affords a glimpse right into a extra hopeful future for office effectivity. As AI continues to evolve, instruments like CrewAI will empower us to keep up seamless communication with out compromise, paving the way in which for a future the place expertise enhances each productiveness and private well-being. The chances are vibrant, and the longer term is promising!

Steadily Requested Questions

Q1. What’s crewAI?

A. CrewAI is an open-source Python framework designed to assist the event and administration of multi-agent AI techniques. Utilizing crewAI, you’ll be able to construct LLM backed AI brokers that may autonomously make choices inside an setting based mostly on the variables current.

Q2. Can I take advantage of crewAI for Automating E-mail Responses?

A. Sure! You should use crewAI for e mail workflow optimisation by automating e mail responses.

Q3. What number of brokers do I have to construct utilizing crewAI for automating e mail responses in Gmail?

A. For automating e mail responses in Gmail, you should utilize as many brokers as you want. It will depend on your agentic system construction. It’s endorsed that you just construct one agent per job.

This autumn. What duties can crewAI do?

A. crewAI can carry out numerous duties, together with sorting and writing emails, planning tasks, producing articles, scheduling and posting social media content material, and extra.

Q5. How can e mail sorting be automated utilizing crewAI?

A. To automate e mail sorting utilizing crewAI, you merely have to outline the brokers with a descriptive backstory inside the Agent perform, outline duties for every agent utilizing Activity performance, after which create a Crew to allow completely different brokers to collaborate with one another.

My identify is Abhiraj. I’m at the moment a supervisor for the Instruction Design staff at Analytics Vidhya. My pursuits embody badminton, voracious studying, and assembly new folks. Every day I really like studying new issues and spreading my information.

LEAVE A REPLY

Please enter your comment!
Please enter your name here