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Automated tool for scraping job postings into a .csv file.

Benefits over job search sites:

  • Never see the same job twice!
  • No advertising.
  • See jobs from multiple job search websites all in one place.

masterlist.csv

Installation

JobFunnel requires Python 3.11 or later.

pip install git+https://github.com/PaulMcInnis/JobFunnel.git

Usage

By performing regular scraping and reviewing, you can cut through the noise of even the busiest job markets.

Configure

You can search for jobs with YAML configuration files or by passing command arguments.

Download the demo settings.yaml by running the below command:

wget https://git.io/JUWeP -O my_settings.yaml

NOTE:

  • It is recommended to provide as few search keywords as possible (i.e. Python, AI).

  • JobFunnel currently supports CANADA_ENGLISH, USA_ENGLISH, UK_ENGLISH, FRANCE_FRENCH, and GERMANY_GERMAN locales.

Scrape

Run funnel with your settings YAML to populate your master CSV file with jobs from available providers:

funnel load -s my_settings.yaml

Review

Open the master CSV file and update the per-job status:

  • Set to interested, applied, interview or offer to reflect your progression on the job.

  • Set to archive, rejected or delete to remove a job from this search. You can review 'blocked' jobs within your block_list_file.

Advanced Usage

  • Automating Searches
    JobFunnel can be easily automated to run nightly with crontab
    For more information see the crontab document.

  • Writing your own Scrapers
    If you have a job website you'd like to write a scraper for, you are welcome to implement it, Review the Base Scraper for implementation details.

  • Remote Work
    Bypass a frustrating user experience looking for remote work by setting the search parameter remoteness to match your desired level, i.e. FULLY_REMOTE.

  • Adding Support for X Language / Job Website
    JobFunnel supports scraping jobs from the same job website across locales & domains. If you are interested in adding support, you may only need to define session headers and domain strings, Review the Base Scraper for further implementation details.

  • Blocking Companies
    Filter undesired companies by adding them to your company_block_list in your YAML or pass them by command line as -cbl.

  • Job Age Filter
    You can configure the maximum age of scraped listings (in days) by configuring max_listing_days.

  • Reviewing Jobs in Terminal
    You can review the job list in the command line:

    column -s, -t < master_list.csv | less -#2 -N -S
    
  • Respectful Delaying
    Respectfully scrape your job posts with our built-in delaying algorithms.

    To better understand how to configure delaying, check out this Jupyter Notebook which breaks down the algorithm step by step with code and visualizations.

  • Recovering Lost Data
    JobFunnel can re-build your master CSV from your cache_folder where all the historic scrape data is located:

    funnel --recover
    
  • Running by CLI
    You can run JobFunnel using CLI only, review the command structure via:

    funnel inline -h
    

CAPTCHA

JobFunnel does not solve CAPTCHA. If, while scraping, you receive a Unable to extract jobs from initial search result page:\ error. Then open that url on your browser and solve the CAPTCHA manually.

Developer Guide

For contributors and developers who want to work on JobFunnel, this section will guide you through setting up the development environment and the tools we use to maintain code quality and consistency.

Developer Mode Installation

To get started, install JobFunnel in developer mode. This will install all necessary dependencies, including development tools such as testing, linting, and formatting utilities.

To install JobFunnel in developer mode, use the following command:

pip install -e '.[dev]'

This command not only installs the package in an editable state but also sets up pre-commit hooks for automatic code quality checks.

Pre-Commit Hooks

The following pre-commit hooks are configured to run automatically when you commit changes to ensure the code follows consistent style and quality guidelines:

  • Black: Automatically formats Python code to ensure consistency.
  • isort: Sorts and organizes imports according to the Black style.
  • Prettier: Formats non-Python files such as YAML and JSON.
  • Flake8: Checks Python code for style guide violations.

While the pre-commit package is installed when you run pip install -e '.[dev]', you still need to initialize the hooks by running the following command once:

pre-commit install

How Pre-Commit Hooks Work

The pre-commit hooks will automatically run when you attempt to make a commit. If any formatting issues are found, the hooks will fix them (for Black and isort), or warn you about style violations (for Flake8). This ensures that all committed code meets the project’s quality standards.

You can also manually run the pre-commit hooks at any time with:

pre-commit run --all-files

This is useful to check the entire codebase before committing or as part of a larger code review. Please fix all style guide violations (or provide a reason to ignore) before committing to the repository.

Running Tests

We use pytest to run tests and ensure that the code behaves as expected. Code coverage is automatically generated every time you run the tests.

To run all tests, use the following command:

pytest

This will execute the test suite and automatically generate a code coverage report.

If you want to see a detailed code coverage report, you can run:

pytest --cov-report=term-missing

This will display which lines of code were missed in the test coverage directly in your terminal output.