Monday, February 24, 2025

Constructing a Resume Evaluation Agent System with CrewAI

Crafting the right resume is a tedious process – whether or not you’re a recent graduate getting into the job market, or a seasoned skilled aiming for that subsequent huge profession transfer. However what in case you might have a private resume reviewer at your fingertips – with out spending any cash on LinkedIn Premium or hiring an expensive skilled? Enter the world of AI-powered options for resume optimisation! With the facility of Massive Language Fashions (LLMs) and modern libraries like CrewAI, now you can construct your very personal resume overview agent. On this weblog, I’ll present you tips on how to construct an agentic system with CrewAI for reviewing and optimizing resumes.

Construction of the Resume Reviewer Agentic System

Earlier than stepping into the coding half, it is very important perceive tips on how to construction an AI system for resume optimisation. One of the simplest ways to do that can be by noting down the duties that we’d like the agent to carry out. So, I’m assuming you’ve got already made a resume (else you’ll be able to obtain one resume from right here). Now, we’d need our resume overview agentic system to carry out 3 duties:

  1. Learn by means of and supply suggestions on the resume.
  2. Enhance or re-write the resume primarily based on the suggestions.
  3. Recommend applicable jobs primarily based on the improved resume and specified location.

Now that we have now our necessities clearly written, we will determine on the variety of brokers and their duties. Ideally, it is strongly recommended we go along with one process per agent to keep away from overburdening any agent. This interprets to us constructing 3 brokers for our CrewAI-based resume overview agent system:

  1. The primary agent will present suggestions on the resume.
  2. The second agent will enhance the resume primarily based on the suggestions.
  3. And, the third agent would recommend applicable jobs primarily based on the improved resume and specified location.

Additionally Learn: Constructing a RAG-Primarily based Analysis Assistant Utilizing o3-mini and CrewAI

Now that you simply perceive how we will use AI for resume optimisation, let’s soar to the Python code and construct our resume reviewer agent.

Python Code to Construct Resume Reviewer Agentic System with CrewAI

Listed below are the step-by-step directions to construct a resume overview agent with CrewAI. To higher observe these steps, I recommend you watch this hands-on video parallelly.

So let’s start!

Step 1: Set up and Import Related Libraries

We are going to start with putting in the PyMuPDF, python-docx and most significantly CrewAI.

  • The PyMuPDF library is used for studying PDF paperwork.
  • The python-docx library is used for creating, studying, and modifying Microsoft Phrase (.docx) paperwork.
  • Additionally, guarantee CrewAI is put in in your system. It is without doubt one of the hottest agentic frameworks to construct multi-agent methods.
#!pip set up PyMuPDF #!pip set up python-docx #!pip set up crewai crewai-tools

Step 2: Loading the Resume

The subsequent step is to import the fitz and docx modules. Right here ‘fitz’ is the identify you utilize to import PyMuPDF, and ‘docx’ is to import the python-docx library.

import fitz  # PyMuPDF for PDF processing import docx  # python-docx for DOCX processing

We are going to now outline the next three features to allow our agentic system to extract textual content from resumes saved in numerous codecs.

  • The primary operate – “extract_text_from_pdf” will extract contents from the resume in PDF format.
  • The second operate – “extract_text_from_docx” will extract contents from the resume in docx format.
  • The third operate – “extract_text_from_resume” wraps the primary two features and makes use of the respective operate primarily based on whether or not the doc is a PDF or docx.

Let’s run this.

def extract_text_from_pdf(file_path):     """Extracts textual content from a PDF file utilizing PyMuPDF."""     doc = fitz.open(file_path)     textual content = ""     for web page in doc:         textual content += web page.get_text()     return textual content def extract_text_from_docx(file_path):     """Extracts textual content from a DOCX file utilizing python-docx."""     doc = docx.Doc(file_path)     fullText = []     for para in doc.paragraphs:         fullText.append(para.textual content)     return "n".be a part of(fullText) def extract_text_from_resume(file_path):     """Determines file sort and extracts textual content."""     if file_path.endswith(".pdf"):         return extract_text_from_pdf(file_path)     elif file_path.endswith(".docx"):         return extract_text_from_docx(file_path)     else:         return "Unsupported file format."

Subsequent, let’s take a look at this operate with 2 resumes. The primary one shall be a resume in PDF format of an individual named Bruce Wayne (not the superhero).

res1 = extract_text_from_resume('/Customers/admin/Desktop/YT Lengthy/Bruce Wayne.pdf') print(res1)

Now, we view the second resume.

res2 = extract_text_from_resume('/Customers/admin/Desktop/YT Lengthy/Anita Sanjok.docx') print(res2)

Step 3: Getting ready the Brokers and Duties

This step is the place CrewAI enters the scene. We are going to now import crewai and begin constructing the agentic system. For this, we are going to want 3 parts from CrewAI, namely- Agent, Activity and Crew.

  • Agent represents an AI assistant with a particular function and purpose.
  • Activity defines an goal that the agent wants to perform.
  • And at last, Crew is used to bundle a number of brokers and their respective duties collectively to work and obtain the set goal.
import os from crewai import Agent, Activity, Crew

Subsequent, we have to add the OpenAI API key, which I’ve saved in a separate file. So, we have to learn the API key from the file and set it as an surroundings variable. On this case we’re utilizing GPT-4o-mini because the LLM.

with open('/Customers/apoorv/Desktop/AV/Code/GAI/keys/openai.txt', 'r') as file:     openai_key = file.learn() os.environ['OPENAI_API_KEY'] = openai_key os.environ["OPENAI_MODEL_NAME"] = 'gpt-4o-mini'

Subsequent, we outline the brokers and their respective duties.

1. Resume Suggestions Agent

Our first agent would be the “resume_feedback” agent. The agent class has some parameters which assist us outline the target of the agent. Lets take a look at them:

  • The function parameter defines the agent’s operate and experience throughout the crew. Right here the agent’s function is that of a “Skilled Resume Advisor”.
  • The purpose is the only goal that guides brokers’ decision-making.
  • Verbose = True permits detailed execution logs for debugging.
  • The backstory offers an in depth description of the traits of the agent. It’s just like defining the context and character of the agent.

Let’s run this.

# Agent 1: Resume Strategist resume_feedback = Agent(     function="Skilled Resume Advisor",     purpose="Give suggestions on the resume to make it stand out within the job market.",     verbose=True,     backstory="With a strategic thoughts and one eye on element, you excel at offering suggestions on resumes to spotlight probably the most related expertise and experiences."     )

Now let’s outline the duty for the resume_feedback agent. The duty is nothing however the particular project that must be accomplished by the agent to which this process is assigned.

  • We are going to add an in depth description which must be a transparent, and concise assertion of what the duty entails. It’s essential to observe that the {resume} written in curly braces is a placeholder that shall be dynamically changed with an precise resume enter when the duty runs. You possibly can pause studying right here, undergo the outline and make modifications as per your necessities.
  • The anticipated output parameter helps us decide the format of the output. You will get the output in numerous codecs akin to  json, markdown or bullet factors
  • The agent parameter highlights the identify of the agent to which this process is assigned.
# Activity for Resume Strategist Agent: Align Resume with Job Necessities resume_feedback_task = Activity(     description=(         """Give suggestions on the resume to make it stand out for recruiters.          Evaluation each part, inlcuding the abstract, work expertise, expertise, and training. Recommend so as to add related sections if they're lacking.           Additionally give an total rating to the resume out of 10.  That is the resume: {resume}"""     ),     expected_output="The general rating of the resume adopted by the suggestions in bullet factors.",     agent=resume_feedback )

2. Resume Advisor Agent

We are going to do the identical for the following agent, that’s, the resume_advisor agent which writes a resume incorporating the suggestions from the resume_feedback agent and defines its process within the resume_advisor_task. Be happy to undergo it.

# Agent 2: Resume Strategist resume_advisor = Agent(     function="Skilled Resume Author",     purpose="Primarily based on the suggestions recieved from Resume Advisor, make modifications to the resume to make it stand out within the job market.",     verbose=True,     backstory="With a strategic thoughts and one eye on element, you excel at refining resumes primarily based on the suggestions to spotlight probably the most related expertise and experiences." ) # Activity for Resume Strategist Agent: Align Resume with Job Necessities resume_advisor_task = Activity(     description=(         """Rewrite the resume primarily based on the suggestions to make it stand out for recruiters. You possibly can modify and improve the resume however do not make up details.          Evaluation and replace each part, together with the abstract, work expertise, expertise, and training to raised replicate the candidates skills. That is the resume: {resume}"""     ),     expected_output= "Resume in markdown format that successfully highlights the candidate's {qualifications} and experiences",     # output_file="improved_resume.md",     context=[resume_feedback_task],     agent=resume_advisor )

3. Job Researcher Agent

Now, the third agent ought to have the ability to recommend jobs primarily based on the {qualifications} and the popular job location of the candidate. For this, we are going to grant a device to our subsequent agent that permits it to go looking the web for job postings at a location.

We are going to use CrewAI’s SerperDevTool which integrates with Serper.dev for real-time net search performance.

from crewai_tools import SerperDevTool

Now we import the API key from Serper. You possibly can generate your free Serper API key from https://serper.dev/api-key.

with open('/Customers/apoorv/Desktop/AV/Code/GAI/keys/serper.txt', 'r') as file:     serper_key = file.learn() os.environ["SERPER_API_KEY"] = serper_key search_tool = SerperDevTool()

Now we outline our ultimate agent which is the job_researcher agent. This agent will seek for jobs on the location primarily based on the resume improved by the resume_advisor agent. The construction of the agent is just like the above brokers with the one distinction being the addition of a brand new parameter, which is instruments. Instruments show you how to assign the mandatory instruments to an agent which helps within the completion of the duty. Additionally, within the process we have now added {location} in curly braces for dynamically altering it.

# Agent 3: Researcher job_researcher = Agent(     function = "Senior Recruitment Guide",     purpose = "Discover the 5 most related, just lately posted jobs primarily based on the improved resume recieved from resume advisor and the situation desire",     instruments = [search_tool],     verbose = True,     backstory = """As a senior recruitment advisor your prowess to find probably the most related jobs primarily based on the resume and placement desire is unmatched.      You possibly can scan the resume effectively, determine probably the most appropriate job roles and seek for the very best suited just lately posted open job positions on the preffered location."""     ) research_task = Activity(     description = """Discover the 5 most related current job postings primarily based on the resume recieved from resume advisor and placement desire. That is the popular location: {location} .      Use the instruments to assemble related content material and shortlist the 5 most related, current, job openings. Additionally present the hyperlinks to the job postings.""",     expected_output=(         "A bullet level record of the 5 job openings, with the suitable hyperlinks and detailed description about every job, in markdown format"      ), #    output_file="relevant_jobs.md",     agent=job_researcher )

Step 4: Creating the Crew and Reviewing the Output

Now we attain the ultimate step the place we bundle the brokers and the duties so as throughout the Crew performance of crewAI. It has 3 parameters:

  • The brokers parameter lists the brokers within the order through which they are going to be known as and executed.
  • The duties argument lists the duties outlined for every agent within the order of execution.
  • And at last, Verbose=True permits you to see the detailed output so you’ll be able to see what the brokers are doing.

Let’s run this.

crew = Crew(     brokers=[resume_feedback, resume_advisor, job_researcher],     duties=[resume_feedback_task, resume_advisor_task, research_task],     verbose=True )

And we lastly launched our agentic system with the kickoff performance.

  • crew.kickoff(inputs={…}): Begins the CrewAI execution, and takes in 2 inputs, resume and placement.
  • “resume”: res2: Helps you specify the resume for which the agentix system must work. In our case, we’re engaged on Anita’s resume.
  • “location”: ‘New Delhi’: Specifies the place Anita is searching for a job. And this shall be New Delhi in our case.
result1 = crew.kickoff(inputs={"resume": res2, "location": 'New Delhi'})

Looks like our crew features completely. Let’s print every agent’s output individually.

from IPython.show import Markdown, show

First, we are going to print resume_feedback agent’s output.

markdown_content = resume_feedback_task.output.uncooked.strip("```markdown").strip("```").strip() # Show the Markdown content material show(Markdown(markdown_content))

Then we print the resume_advisor agent’s output.

markdown_content = resume_advisor_task.output.uncooked.strip("```markdown").strip("```").strip() # Show the Markdown content material show(Markdown(markdown_content))
Build an AI Resume Review Agentic System with CrewAI

And at last, we print the research_task agent’s output.

markdown_content = research_task.output.uncooked.strip("```markdown").strip("```").strip() # Show the Markdown content material show(Markdown(markdown_content))
Build an AI Resume Review Agentic System with CrewAI

And there you’ve got it. Your totally useful resume overview agentic system with CrewAI.

Additionally Learn: Automating E-mail Responses Utilizing CrewAI

Turning your CrewAI Resume Reviewer Agentic System right into a Net App

One attention-grabbing factor we will do with our AI-driven resume optimization system is constructing a web-application for it.

Right here’s the interface of the app I constructed:

Build an AI Resume Review Agentic System with CrewAI

We’ve wrapped our code for resume overview agent with CrewAI in Gradio and hosted the ultimate product on Hugging Face Areas which has a liberal free tier.

Right here’s the way it works:

  1. First, drop your resume in a PDF or Phrase doc. The identify of our candidate right here is Bruce Wayne.
  2. Subsequent, choose the popular job location for Bruce who’s our candidate. Let’s say San Francisco
  3. And hit Submit.

Since that is utilizing LLMs on the backend, GPT-4o-mini in our case, it is going to take a while to guage your resume, give a rating, and suggestions.

And as you’ll be able to see, Bruce acquired a rating of seven/10. And he has obtained in-depth section-wise suggestions from the CrewAI agentic system. Together with that he additionally acquired the revised resume and even ideas for jobs in San Francisco. How wonderful is that this!

Build an AI Resume Review Agentic System with CrewAI
Build an AI Resume Review Agentic System with CrewAI
Build an AI Resume Review Agentic System with CrewAI

If you wish to replicate this CrewAI agentic system within the type of this web-application, you’ll be able to merely clone this repository or duplicate this house and alter the API key. Right here’s how that’s achieved:

  1. First, click on on Settings after which click on on Clone repository within the dropdown.
  2. Then scroll all the way down to the variable and secrets and techniques setting.
  3. You’ll already discover the variables we created for the OpenAI key and Serper_Key. Merely click on on Exchange and add the API Key within the Worth. Then click on Save.

Additionally, you may get the code to construct this app from the CrewAI agentic system together with the Gradio code within the app.py file in information part of Hugging Face areas.

The clicking on app.py

Build an AI Resume Review Agentic System with CrewAI
Build an AI Resume Review Agentic System with CrewAI

Doable Enhancements on the Resume Reviewer Agent

Like some other agentic system, there may be quite a lot of scope for increasing the resume overview agent we’ve simply constructed with CrewAI. Listed below are a couple of tricks to tinker round with:

  • You possibly can construct a fourth agent that customizes the resume, primarily based on the job you choose.
  • You possibly can construct one other agent in the long run to generate a canopy letter personalized for the job you wish to apply.
  • You may also construct one other agent that can show you how to put together for the job you choose.

Additionally Learn: The right way to Construct an AI Pair Programmer with CrewAI?

Conclusion

Constructing a resume reviewer agentic system is a game-changer for job seekers searching for resume optimisation with AI-driven insights. This method effectively analyzes, refines, and suggests jobs primarily based on personalised resume suggestions—all at a fraction of the price of premium resume optimizing providers. With CrewAI’s agentic capabilities, we’ve streamlined resume optimisation into an automatic but extremely efficient course of. However that is only the start! CrewAI is engaged on automating every kind of duties and bringing much-needed effectivity to all industries. It’s certainly thrilling occasions forward!

Regularly 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 methods. Utilizing CrewAI, you’ll be able to construct LLM-backed AI brokers that may autonomously make choices inside an surroundings primarily based on the variables current.

Q2. Can AI repair my resume?

A. Sure! An AI agent just like the resume reviewer system we constructed utilizing CrewAI, may help optimize your resume. It could even advocate the precise jobs for you primarily based in your {qualifications}, expertise, and placement.

Q3. What duties can CrewAI do?

A. CrewAI can carry out numerous duties, together with reviewing resumes, writing resumes, trying to find jobs, making use of for jobs, getting ready cowl letters and extra.

This autumn.  In what format ought to my resume be?

A. In an effort to use this resume reviewer agent, the uploaded resume have to be in both PDF (.pdf) or Phrase (.docx) codecs.

Q5. What AI mannequin is used to overview resumes?

A. Our resume reviewer agent makes use of OpenAI’s GPT-4o-mini for textual content processing and Serper.dev for real-time job search.

Q6. How correct are the job suggestions supplied by the system?

A. The job suggestions depend upon the standard of the resume and the AI’s capability to match expertise with job postings. Utilizing Serper.dev, the system retrieves probably the most related and up to date job listings.

Q7. Do I would like coding data to construct a resume overview agent?

A. Primary Python programming expertise are required to arrange and modify the CrewAI-based system. Nevertheless, you’ll be able to clone a pre-built repository and replace the API keys to run it with out deep coding experience.

Apoorv is a seasoned AI and Knowledge Science chief with over 14 years of expertise, together with greater than a decade centered on Knowledge Science, Machine Studying, and Deep Studying. Because the Head of Coaching at Analytics Vidhya, he has spearheaded the event of industry-leading AI applications, together with programs on Generative AI, LLM Brokers, MLOps, and Superior Machine Studying, shaping the abilities of hundreds of execs.

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