class VibhorJoshi:
def __init__(self):
self.name = "Vibhor Joshi"
self.role = "Machine Learning Engineer"
self.education = "B.Tech (Pursuing)"
self.location = "India 🇮🇳"
self.languages = ["Python", "JavaScript", "TypeScript", "C++"]
def get_expertise(self):
return {
"primary": ["Computer Vision", "GeoAI", "Deep Learning"],
"secondary": ["Gesture Recognition", "Medical Imaging", "Web ML"],
"tools": ["PyTorch", "TensorFlow", "OpenCV", "Flask", "React"]
}
def current_focus(self):
return [
"🧠 Advanced Medical Image Analysis",
"🌍 GPU-Accelerated Geospatial AI",
"🎮 Real-time Gesture Recognition Systems",
"🔬 Healthcare AI Applications",
"🌐 Scalable ML Deployment Solutions"
]
def achievements(self):
return {
"model_accuracy": "90%+ (Medical Imaging)",
"processing_speed": "~100ms (Duplicate Detection)",
"automation_gain": "50% (File Management)",
"deployment": "Multi-platform (Web + Desktop)"
}
Python |
JavaScript |
TypeScript |
C++ |
React |
GitHub |
PyTorch |
TensorFlow |
OpenCV |
Scikit-learn |
Keras |
NumPy |
Pandas |
Flask |
Django |
Node.js |
Next.js |
Vercel |
Docker |
Git |
GPU-Accelerated GeoAI Framework for Large-Scale Spatial Analysis
🎯 Key Achievements:
- ⚡ GPU Optimization: 10x faster processing for large-scale imagery
- 🎯 High Accuracy: Robust handling of heterogeneous geospatial data
- 🏗️ Scalable Architecture: Template-based framework for building footprint extraction
- 🌐 Real-world Impact: Urban planning and infrastructure mapping
💡 Tech Stack: PyTorch • CUDA • GeoPandas • GDAL • QGIS
AI-Powered Medical Imaging for Tumor Classification
🎯 Key Features:
- 🏥 Clinical Grade: High-precision MRI analysis for tumor detection
- 🚀 Real-time Processing: Instant diagnosis with CNN architecture
- 📊 Visualization Dashboard: Interactive result interpretation
- 🌐 Cloud Deployed: Accessible via web interface on Vercel
💡 Tech Stack: TensorFlow • Keras • OpenCV • Flask • Vercel
Real-time Pose Estimation for Gesture-Based Gaming
🎯 Capabilities:
- 🎮 Low Latency: Real-time pose detection with <50ms response
- 🤚 Gesture Mapping: Custom control schemes for game integration
- 📹 Computer Vision: MediaPipe-powered pose estimation
- 🔧 Flexible Design: Adaptable to various gaming scenarios
💡 Tech Stack: Python • MediaPipe • OpenPose • OpenCV • PyAutoGUI
Intelligent Semantic Duplicate Detection System
🎯 Highlights:
- 🧠 AI-Powered: Semantic similarity using transformers.js (MiniLM/CLIP)
- ⚡ Fast Processing: ~100ms for text, ~200ms for images
- 🔒 Secure: SHA256 exact matching + semantic analysis
- 💻 Multi-Platform: Web (Next.js) + Desktop (Electron)
💡 Tech Stack: TypeScript • Next.js • Electron • transformers.js • FAISS
Multi-Disease AI Diagnostic Platform
🎯 Capabilities:
- 🏥 Multi-Condition Analysis: Predicts multiple diseases from symptoms
- 🤝 User-Friendly: Intuitive Streamlit interface
- 🔐 Privacy-First: HIPAA-compliant design principles
- 🔬 Ensemble Learning: Multiple ML models for robust predictions
💡 Tech Stack: Python • Streamlit • Scikit-learn • Pandas • NumPy
Agricultural AI for Plant Disease Detection
🎯 Features:
- 🌾 Crop Protection: Early disease detection for agricultural applications
- 📸 Image Classification: CNN-based leaf analysis
- 🛒 Marketplace: Integrated solution marketplace
- 🌍 Farmer Support: Accessible tools for agricultural communities
💡 Tech Stack: React • TensorFlow.js • Flask • Vercel
Metric Category | Key Indicator | Value | Trend |
---|---|---|---|
🎯 Code Quality | Repository Health | A+ | 📈 |
⚡ Productivity | Commits/Week | 25+ | 📈 |
🌟 Community Impact | Total Stars | Growing | 📈 |
🔄 Collaboration | PRs & Issues | Active | 📈 |
🧠 Innovation Index | Novel Solutions | High | 📈 |
🚀 Deployment Rate | Production Apps | 6+ | 📈 |
📝 Regular Contributor on Medium
Topics I write about:
- 🧠 Machine Learning Best Practices
- 🔬 Computer Vision Techniques
- 🌍 GeoAI Applications
- 🏥 Healthcare AI Solutions
- 💻 Full Stack ML Deployment
current_work:
- project: "Brain Tumor Detection System"
status: "Production"
url: "https://vercel.com/vibhor-joshis-projects/brain-tumor-classification-mri-scan"
learning:
- Flask & Django for ML deployment
- Advanced Deep Learning architectures
- Cloud-native ML infrastructure
- Scalable AI systems design
collaboration_open:
- project: "Leaf Disease Predictor"
type: "Open Source"
seeking: "Contributors for agricultural AI"
url: "https://leaf-disease-predictor-unub.vercel.app/market"
seeking_help:
- project: "Multiple Disease Prediction System"
areas: ["UI/UX improvements", "New disease models", "Data collection"]
url: "https://publicmlwebapp-jiv44uyqzrjuznpfs6gnkx.streamlit.app/"
Metric | Value | Status |
---|---|---|
Model Accuracy | 90%+ | 🟢 Production |
Processing Speed | ~100ms | 🟢 Optimized |
Automation Efficiency | 50% Gain | 🟢 Deployed |
Code Quality | A+ Grade | 🟢 Maintained |
Documentation | Comprehensive | 🟢 Updated |
Test Coverage | 85%+ | 🟡 Improving |
"Building AI solutions that bridge the gap between cutting-edge research and real-world impact. Every line of code is a step towards making intelligent systems accessible, reliable, and transformative."
🎯 Innovation First - Pushing boundaries with novel AI architectures
🔬 Research-Driven - Grounded in scientific rigor and experimentation
🌍 Impact-Focused - Solving real-world problems with practical solutions
🤝 Open Collaboration - Contributing to the ML community
📚 Continuous Learning - Staying ahead of the AI curve
⚡ Performance Obsessed - Optimizing for speed and efficiency
graph LR
A[Current State] --> B[Advanced Healthcare AI]
A --> C[Scalable GeoAI Platform]
A --> D[Production ML Systems]
B --> E[Clinical Deployment]
C --> F[Urban Planning Tools]
D --> G[Enterprise Solutions]
E --> H[Real-world Impact]
F --> H
G --> H
- 🎯 Deploy 5+ production-grade ML systems
- 🌍 Scale GeoAI framework to continental level
- 🏥 Clinical validation of medical AI models
- 📚 Publish research papers on novel architectures
- 🤝 Build open-source ML community
- 💼 Contribute to healthcare AI standards