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LinkedIn job search: auto-match resume with AI + cover letter & Telegram alerts

Hojjat JashnniloofarHojjat Jashnniloofar
35172 views
2/3/2026
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Overview

This n8n templates helps you to authomatically search Linkeding jobs. It uses AI (Gemini or OpenAPI) to match your resume with each job description and write a sample cover letter for each job and update the job google sheet. You can receive daily matched linkedin job alerts by telegram.

Prerequisites

Setup

1. Upload your resume

Upload your CV in PDF format in google drive and configure google drive node to read your resume from list of google drive files. You need to configure Google Drive OAuth2 and grant access to your drive before that. You can find useful infomration about how to configure Googel OAuth2 API key in n8n documents.

2. Create Google sheet

You need to create a google sheet document consist of two sheets, one sheet for define job filter criteria and second sheet to store job search result. You can download this Google Sheet Template and copy in your personal space. Then you can add your job filter in Google sheet. You can search job by keywords, location, remote type, job type and easy apply. You need to configure Google Sheet OAuth2 and grant access to your drive before that.

3. Conifgure Telegram Bot

You need to create a new Telegram Bot in @BotFather and insert API Key in Telegram node and you need to TELEGRAM_CHAT_ID to your telegram ID.

n8n LinkedIn Job Search Auto-Match Resume with AI & Cover Letter + Telegram Alerts

This n8n workflow automates the process of finding relevant LinkedIn job postings, matching your resume with AI, generating a personalized cover letter, and sending you Telegram alerts. It streamlines your job application process by leveraging AI to tailor your application materials.

What it does

This workflow simplifies and automates your job search by:

  1. Triggering on a Schedule: Periodically checks for new job postings.
  2. Fetching Job Postings: Retrieves job postings from a specified Google Sheet.
  3. Processing Job Postings in Batches: Iterates through each job posting individually.
  4. Extracting Job Details: Parses the job posting URL to extract relevant information (e.g., job title, company, description).
  5. Generating Resume Match Score and Cover Letter:
    • Downloads Resume: Fetches your resume from Google Drive.
    • Analyzes Job Description & Resume with AI: Uses an AI Agent (LangChain with OpenAI) to compare the job description against your resume and generate a "match score" and a tailored cover letter.
  6. Filtering Based on Match Score: Checks if the AI-generated match score meets a predefined threshold.
  7. Sending Telegram Alerts: If the match score is high enough, it sends a Telegram message with the job details, match score, and the generated cover letter.
  8. Updating Google Sheet: Records the processed job posting details, match score, and cover letter in a Google Sheet.

Prerequisites/Requirements

To use this workflow, you will need:

  • n8n Instance: A running n8n instance.
  • Google Sheets Account: To store and retrieve job postings.
    • A Google Sheet with job posting URLs (and potentially other initial job data).
    • Credentials for Google Sheets in n8n.
  • Google Drive Account: To store your resume.
    • Your resume file (e.g., PDF) stored in Google Drive.
    • Credentials for Google Drive in n8n.
  • OpenAI API Key: For the AI Agent (LangChain with OpenAI Chat Model) to generate match scores and cover letters.
    • An OpenAI API key configured as a credential in n8n.
  • Telegram Account & Bot: To receive job alerts.
    • A Telegram Bot Token.
    • Your Telegram Chat ID.
    • Credentials for Telegram in n8n.
  • HTTP Request Node: This node will be configured to scrape job details from LinkedIn job URLs. It might require specific headers or authentication depending on LinkedIn's public access policies.

Setup/Usage

  1. Import the Workflow: Download the JSON and import it into your n8n instance.
  2. Configure Credentials:
    • Set up your Google Sheets credentials (OAuth 2.0).
    • Set up your Google Drive credentials (OAuth 2.0).
    • Set up your OpenAI API Key credential.
    • Set up your Telegram credentials (Bot Token).
  3. Update Node Settings:
    • Schedule Trigger (Node 839): Adjust the schedule to your preferred frequency for checking new jobs.
    • Google Sheets (Node 18):
      • Specify the Spreadsheet ID and Sheet Name where your job postings are listed.
      • Configure the "Read" operation to fetch job URLs.
    • HTTP Request (Node 19):
      • Configure the URL to dynamically use the job URL from the Google Sheet.
      • Adjust headers or authentication if required for scraping LinkedIn.
    • Google Drive (Node 58):
      • Specify the File ID of your resume stored in Google Drive.
    • AI Agent (Node 1119) & OpenAI Chat Model (Node 1153):
      • Ensure your OpenAI API key is selected in the OpenAI Chat Model node.
      • Review and adjust the prompts in the AI Agent node to fine-tune the resume matching and cover letter generation logic.
    • If (Node 20):
      • Adjust the condition for the "match score" to your desired threshold.
    • Telegram (Node 49):
      • Enter your Chat ID where you want to receive alerts.
      • Customize the message content to include all relevant job details, match score, and cover letter.
    • Google Sheets (Node 18 - for writing):
      • Specify the Spreadsheet ID and Sheet Name where you want to log the results (match score, cover letter, etc.).
      • Configure the "Append Row" operation to add new data.
  4. Activate the Workflow: Once all configurations are complete, activate the workflow.

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