Paramchoudhary

Tech Resume Optimizer

3
0
# Install this skill:
npx skills add Paramchoudhary/ResumeSkills --skill "Tech Resume Optimizer"

Install specific skill from multi-skill repository

# Description

Optimize resumes for software engineering, PM, and technical roles

# SKILL.md


name: Tech Resume Optimizer
description: Optimize resumes for software engineering, PM, and technical roles


Tech Resume Optimizer

When to Use This Skill

Use this skill when the user:
- Is applying for software engineering roles
- Wants to optimize a technical resume
- Needs help with developer/PM/technical job applications
- Mentions: "tech resume", "software engineer resume", "developer resume", "technical resume", "SWE resume", "PM resume"

Core Capabilities

  • Optimize resumes for technical roles (SWE, PM, Data, DevOps)
  • Structure technical skills sections effectively
  • Highlight projects and technical achievements
  • Balance technical depth with business impact
  • Format for both ATS and technical recruiters
  • Include GitHub, portfolio, and technical links

Tech Resume Philosophy

What Tech Recruiters Look For:
1. Relevant technical skills (languages, frameworks, tools)
2. Scale and impact (users, transactions, data size)
3. Problem-solving abilities
4. System design understanding
5. Collaborative abilities
6. Growth trajectory

Tech Resume Structure

1. Contact Information (including GitHub, Portfolio)
2. Professional Summary (optional but helpful)
3. Technical Skills (critical for ATS)
4. Work Experience (with technical achievements)
5. Projects (especially for early career)
6. Education
7. Certifications (if relevant)

Contact Section for Tech

John Developer
San Francisco, CA
[email protected] | (555) 123-4567
LinkedIn: linkedin.com/in/johndev
GitHub: github.com/johndev
Portfolio: johndev.io

Include:
- GitHub (required for SWE roles)
- Portfolio/personal website
- LinkedIn
- Tech blog (if you have one)

Don't Include:
- Address (city/state is enough)
- Photo
- Social media (unless relevant)

Technical Skills Section

Organization Strategies

Option 1: By Category

Languages: Python, JavaScript, TypeScript, Go, SQL
Frameworks: React, Node.js, Django, FastAPI
Databases: PostgreSQL, MongoDB, Redis, Elasticsearch
Cloud/Infrastructure: AWS (EC2, S3, Lambda, RDS), Docker, Kubernetes, Terraform
Tools: Git, JIRA, CI/CD, Datadog, Grafana

Option 2: By Proficiency (use carefully)

Expert: Python, React, PostgreSQL, AWS
Proficient: Go, TypeScript, MongoDB, Docker
Familiar: Rust, GraphQL, Kubernetes

Option 3: Flat List (ATS-friendly)

Skills: Python, JavaScript, TypeScript, React, Node.js, Django, PostgreSQL, MongoDB, AWS, Docker, Kubernetes, Git

What to Include

Languages:
- List languages you can code in confidently
- Order by relevance to target role
- Include query languages (SQL, GraphQL)

Frameworks/Libraries:
- Web: React, Vue, Angular, Django, Flask, Express
- Data: Pandas, NumPy, TensorFlow, PyTorch
- Testing: Jest, Pytest, Selenium

Databases:
- Relational: PostgreSQL, MySQL, SQL Server
- NoSQL: MongoDB, DynamoDB, Cassandra
- Caching: Redis, Memcached

Cloud/DevOps:
- Cloud: AWS, GCP, Azure (specific services)
- Containers: Docker, Kubernetes
- CI/CD: Jenkins, GitHub Actions, CircleCI
- IaC: Terraform, CloudFormation

What NOT to Include

  • ❌ Microsoft Office (assumed)
  • ❌ Operating systems (unless DevOps role)
  • ❌ Outdated tech (unless specifically required)
  • ❌ Skill bars or ratings (subjective and break ATS)
  • ❌ Every technology you've touched once

Experience Section for Tech Roles

The Technical Bullet Formula

[Action Verb] + [Technical What] + [Scale/Impact] + [Technology Used]

Examples:

❌ Weak Technical Bullet:

- Worked on backend services
- Helped improve system performance
- Built features for the product

βœ… Strong Technical Bullet:

- Architected microservices migration from monolith, reducing deployment time from 2 hours to 15 minutes and enabling independent team deployments
- Optimized PostgreSQL queries and implemented Redis caching, reducing API latency by 60% (from 500ms to 200ms) for 100K daily active users
- Built real-time notification system using WebSockets and AWS SNS, handling 1M+ messages daily with 99.9% delivery rate

Technical Metrics to Include

Scale:
- Users: "serving 500K DAU"
- Requests: "handling 10K requests/second"
- Data: "processing 50TB daily"
- Uptime: "maintaining 99.99% availability"

Performance:
- Latency: "reduced from Xms to Yms"
- Speed: "improved by X%"
- Load time: "decreased by X seconds"

Efficiency:
- Cost: "reduced AWS costs by 40%"
- Time: "cut deployment time from X to Y"
- Resources: "reduced memory usage by X%"

Business:
- Revenue: "features drove $XM revenue"
- Conversion: "improved checkout by X%"
- Engagement: "increased DAU by X%"

Role-Specific Bullet Examples

Software Engineer:

β€’ Designed and implemented authentication service using OAuth 2.0 and JWT, securing 2M+ user accounts with zero security incidents
β€’ Led migration to Kubernetes, achieving 99.99% uptime and reducing infrastructure costs by 35% ($200K annually)
β€’ Mentored 3 junior engineers through code reviews and pair programming, improving team velocity by 25%

Data Engineer:

β€’ Built data pipeline processing 100M+ events daily using Apache Kafka and Spark, reducing data latency from hours to minutes
β€’ Designed data warehouse schema in Snowflake, enabling self-service analytics for 50+ business users
β€’ Implemented data quality monitoring with Great Expectations, catching 95% of data issues before impacting downstream systems

DevOps/SRE:

β€’ Implemented infrastructure as code using Terraform, reducing provisioning time from 2 days to 30 minutes
β€’ Built monitoring and alerting system with Prometheus and Grafana, reducing MTTR from 4 hours to 30 minutes
β€’ Automated deployment pipeline with GitHub Actions, enabling 50+ daily deployments with zero-downtime releases

Product Manager (Technical):

β€’ Led API platform roadmap for developer tools used by 10K+ developers, driving 40% increase in API adoption
β€’ Defined technical requirements for ML recommendation engine, resulting in 25% increase in user engagement
β€’ Partnered with engineering to reduce technical debt by 30%, improving release velocity from bi-weekly to weekly

Projects Section

Critical for:
- Junior engineers
- Career changers
- Bootcamp graduates
- Anyone with gaps

Project Format

Project Name | Technologies | Link
β€’ Description of what it does
β€’ Technical highlights and challenges solved
β€’ Scale or usage metrics if available

Example Projects Section

PROJECTS

Distributed Task Queue | Python, Redis, Docker | github.com/user/taskqueue
β€’ Built distributed task queue handling 10K+ jobs/hour with automatic retries and dead letter queue
β€’ Implemented priority queuing and rate limiting for multi-tenant support

Real-time Chat App | React, Node.js, WebSocket, MongoDB | chatapp.demo.com
β€’ Full-stack chat application supporting 100+ concurrent users with real-time messaging
β€’ Implemented end-to-end encryption and message persistence

ML Price Predictor | Python, TensorFlow, FastAPI | github.com/user/predictor
β€’ Trained regression model on 1M+ data points achieving 92% accuracy for price prediction
β€’ Deployed as REST API with automatic model retraining pipeline

What Makes a Good Project

Do Include:
- Projects with real users
- Open source contributions
- Technical blog posts
- Hackathon projects (especially winners)
- Complex personal projects

Don't Include:
- Tutorial follow-alongs
- Trivial to-do apps
- Incomplete projects
- Coursework (unless exceptional)

Education Section for Tech

Standard Format

B.S. Computer Science | Stanford University | 2020
GPA: 3.8/4.0 (include if above 3.5)
Relevant Coursework: Distributed Systems, Machine Learning, Database Systems

For Bootcamp Graduates

Software Engineering Certificate | App Academy | 2023
- 1000+ hour immersive program
- Full-stack JavaScript, React, Node.js, PostgreSQL

B.A. Economics | UCLA | 2020

For Self-Taught Engineers

Professional Certifications:
- AWS Solutions Architect Associate | 2023
- MongoDB Certified Developer | 2023

Relevant Education:
- MIT OpenCourseWare: Algorithms, Data Structures
- Coursera: Machine Learning Specialization (Stanford)

Tech-Specific Tips

GitHub Profile Optimization

Make sure your GitHub shows:
- Pinned repositories (your best 6)
- Green contribution graph (activity)
- README for profile
- Complete project READMEs

Project READMEs should include:
- What the project does
- Technologies used
- How to run it
- Screenshots/demos
- Your contributions (for collaborative projects)

Dealing with Tech Stacks

If you match their stack:
- Lead with those technologies
- Quantify your experience with them

If you don't match exactly:
- Emphasize transferable skills
- Show learning ability
- Highlight similar technologies
- Example: "Django" β†’ "Extensive Python web framework experience (Django); quick to ramp on new frameworks"

Technical Interviews Prep Note

Tech resumes should support your interview:
- Only claim technologies you can discuss deeply
- Be ready to explain every project listed
- Know the architecture of systems you've built
- Have stories ready for each bullet

Output Format

When optimizing a tech resume:

# TECH RESUME OPTIMIZATION

## Technical Skills Restructure
**Current:** [Their current skills section]
**Optimized:**
Languages: [Ordered list]
Frameworks: [Ordered list]
Databases: [Ordered list]
Cloud/Tools: [Ordered list]

## Experience Improvements

### [Company/Role]

**Current Bullet 1:**
"Worked on backend services"

**Improved:**
"Designed and deployed 5 Node.js microservices handling 50K requests/minute, reducing system coupling and enabling independent team deployments"

**Current Bullet 2:**
[Continue for each bullet]

## Projects to Highlight
[Suggestions based on their background]

## GitHub Recommendations
- [ ] Add READMEs to pinned repos
- [ ] Pin X project (most relevant)
- [ ] Add profile README

## Technical Gaps to Address
- [Missing skill] β†’ [How to address in resume/cover letter]

ATS + Tech Recruiter Balance

Remember: Your resume must pass ATS AND impress technical recruiters.

For ATS:
- Include exact skill keywords
- Use standard section headers
- Avoid tables and graphics

For Tech Recruiters:
- Show technical depth
- Include metrics and scale
- Demonstrate problem-solving
- Show you understand systems

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.