class MachineLearningEngineer: """ AI Researcher & ML Engineer specializing in Computer Vision, Deep Learning, and 3D Graphics | Building intelligent systems that bridge perception and cognition """ def __init__(self): self.name = "Reiyo" self.role = "Machine Learning Engineer" self.company = "@Synexian-Labs-Private-Limited" self.location = "New Jersey, USA" self.education = { "field": "Computer Science & AI", "focus": ["Deep Learning", "Computer Vision", "NLP"] } @property def technical_expertise(self): return { "computer_vision": [ "2D/3D Pose Estimation", "Motion Capture Analysis", "Object Detection & Tracking", "3D Reconstruction" ], "deep_learning": [ "Transformer Architectures", "Graph Neural Networks", "Curriculum Learning", "Topic Modeling" ], "specialized_areas": [ "Reinforcement Learning", "Advanced NLP", "3D Computer Graphics", "MLOps & Production ML" ] } @property def current_focus(self): return { "research": [ "Graph Transformers for Pose Estimation", "Topic-Modeled Curriculum Learning", "3D Motion Capture Visualization" ], "development": [ "Production-scale ML systems", "Real-time CV applications", "Interactive 3D visualization tools" ], "learning": [ "Advanced RL algorithms", "Transformer optimizations", "3D rendering techniques" ] } def get_current_work(self): return """ 🔬 Research: Advancing pose estimation with Graph Transformers 🏗️ Building: Scalable ML pipelines for CV applications 🎨 Creating: Interactive 3D motion capture visualization tools 🤝 Collaborating: Open-source AI projects & research initiatives """ def life_philosophy(self): return "Merging technology with creativity to build intelligent systems 🚀" # Initialize me = MachineLearningEngineer() print(me.get_current_work()) print(f"\n💡 Philosophy: {me.life_philosophy()}")
Building intelligent systems that understand and interact with the world through advanced computer vision and deep learning
🔥 Core Technologies
Programming Languages
ML/DL Frameworks & Libraries
MLOps & Cloud Infrastructure
Development & Tools
graph LR
A[📊 Data Collection] -->|Preprocessing| B[🔧 Feature Engineering]
B -->|Transform| C[🧠 Model Training]
C -->|Validate| D[📈 Evaluation]
D -->|Optimize| E[🚀 Deployment]
E -->|Monitor| F[🔄 Feedback Loop]
F -->|Retrain| C
style A fill:#667eea,stroke:#333,stroke-width:3px,color:#fff
style B fill:#764ba2,stroke:#333,stroke-width:3px,color:#fff
style C fill:#f093fb,stroke:#333,stroke-width:3px,color:#fff
style D fill:#4facfe,stroke:#333,stroke-width:3px,color:#fff
style E fill:#43e97b,stroke:#333,stroke-width:3px,color:#fff
style F fill:#fa709a,stroke:#333,stroke-width:3px,color:#fff
🎯 Pipeline Stages Breakdown
• Web scraping
• API integration
• Dataset curation
• Data augmentation
Tools: NumPy, Pandas, OpenCV Feature Engineering
• Feature extraction
• Normalization
• Dimensionality reduction
• Feature selection
Tools: Scikit-learn, TensorFlow Model Training
• Architecture design
• Hyperparameter tuning
• Transfer learning
• Distributed training
Tools: PyTorch, Keras, JAX Evaluation
• Performance metrics
• Cross-validation
• A/B testing
• Benchmark comparison
Tools: MLflow, TensorBoard Deployment
• Model optimization
• API development
• Containerization
• Cloud deployment
Tools: Docker, AWS, FastAPI Monitoring
• Performance tracking
• Data drift detection
• Model retraining
• Continuous improvement
Tools: Prometheus, Grafana
| Stage | Status | Metric | Value | Last Updated |
|---|---|---|---|---|
| 🧠 Model Training | 🟢 Active | Accuracy | 96.1% | 2026年02月10日 |
| ⚡ Inference | 🟢 Optimal | Latency | 42ms | 2026年02月10日 |
| 📦 Deployment | 🟢 Stable | Uptime | 99.8% | 2026年02月10日 |
| 💾 Data Pipeline | 🟢 Running | Samples Processed | 535K+ | 2026年02月10日 |
| 🚀 Active Projects | 🟢 Growing | Count | 15+ | 2026年02月10日 |
Data & Processing: NumPy Pandas OpenCV Pillow Albumentations
ML Frameworks: PyTorch TensorFlow Keras Scikit-learn JAX Hugging Face
Experiment Tracking: MLflow Weights & Biases TensorBoard Neptune.ai
Deployment: Docker Kubernetes FastAPI Flask Streamlit
Cloud Platforms: AWS SageMaker Google Cloud AI Azure ML Paperspace
Monitoring: Prometheus Grafana ELK Stack CloudWatch
📉 Detailed Performance Metrics
Key Insights:
- 📊 Peak Accuracy: Achieved 97.2% on validation set (Week 48)
- 📉 Training Stability: Loss reduced by 85% over 50 epochs
- 💾 Dataset Scale: 500K+ samples across 10+ categories
- 🚀 Inference Speed: Optimized to 42ms average latency
- 🎯 Current Focus: Improving edge case performance and model robustness
| Experiment | Model | Accuracy | Loss | F1-Score | Status |
|---|---|---|---|---|---|
| GTransformer-v3 | Graph Transformer | 95.8% | 0.042 | 0.961 | ✅ Deployed |
| PoseNet-Enhanced | CNN + Attention | 93.2% | 0.068 | 0.945 | 🔄 Training |
| Vision-RL-Agent | RL + Vision | 89.5% | 0.115 | 0.902 | 🧪 Experimental |
| BaselineNet | ResNet-50 | 87.3% | 0.142 | 0.888 | 📊 Baseline |
🎨 Visualization Features
Auto-Updating Charts:
- ✅ Daily Updates - Charts refresh automatically every 24 hours
- ✅ SVG Format - Crisp, scalable vector graphics
- ✅ GitHub Actions - Fully automated via CI/CD pipeline
- ✅ Custom Styling - Matches your profile theme
- ✅ Real Data - Can connect to MLflow, WandB, or TensorBoard
Tracked Metrics:
- 🎯 Model accuracy across training epochs
- 📉 Training & validation loss curves
- 💾 Dataset growth and composition
- 🗣️ Programming language usage
- 🚀 Inference latency benchmarks
- 📊 Comprehensive performance dashboards
Charts automatically updated via GitHub Actions • Last updated: 2024年12月30日
The knowledge graph above provides an interactive visualization of my projects, categorized by AI and connected based on shared technologies and themes. Click nodes to explore, drag to rearrange, and discover the relationships between different projects.
Features:
- 🎨 AI-Categorized: Projects automatically categorized using machine learning
- 🔗 Smart Connections: Related projects linked by shared languages and technologies
- 📊 Data-Driven: Node sizes represent project popularity (stars)
- 🎯 Interactive: Click, drag, zoom, and explore in real-time
📊 View Full Graph • [🔄 Last Updated: 2026年02月08日]
Machine Learning Natural Language Processing Data Science
ThemeClassifierSLM is a groundbreaking LSTM-based neural network model revolutionizing text classification by harnessing advanced techniques to tackle the complexities of theme extraction in text data, yielding unparalleled accuracy and reliability. By integrating sophisticated neural network architectures and machine learning algorithms, this project showcases a technical marvel that sets a new standard for text analysis tasks. With its potential to unlock the full potential of natural language processing, ThemeClassifierSLM has the power to transform industries ranging from content moderation to sentiment analysis, and has the potential to make a significant impact in the field of data science.
💡 Why Featured This Week:
This week, we're shining the spotlight on ThemeClassifierSLM, a cutting-edge LSTM-based neural network model that showcases a remarkable technical innovation in text analysis tasks, making it an absolute must-see for the Machine Learning, Natural Language Processing, and Data Science communities. With its sophisticated techniques and exceptional performance, this project deserves to be featured this week for its groundbreaking contributions to the field of natural language processing.
📊 Project Stats
- ⭐ Stars: 1
- 🏷️ Categories: Machine Learning, Natural Language Processing, Data Science
- 💻 Languages: Python
🔗 Quick Links
🤖 AI-selected and described • Updated weekly
Published: February 08, 2026
The project "HANTransformer" addresses the challenge of accurately classifying documents into relevant categories within large datasets, a common task...
Tags: Code Analysis Deep Learning Technical Engineering
💻 System Components
AI/ML Framework: - Hugging Face Inference API - Multi-model ensemble (6+ models) - Automatic fallback system - Rate limiting & retry logic Automation: - GitHub Actions (CI/CD) - Python 3.11+ - Scheduled workflows (cron) - Manual trigger support Data Processing: - GitHub API v3 - PyGithub library - JSON data structures - Markdown generation Models in Ensemble: - Qwen/Qwen2.5-7B-Instruct (Primary) - meta-llama/Llama-3.2-3B-Instruct - mistralai/Mistral-7B-Instruct-v0.3 - microsoft/Phi-3-mini-4k-instruct - google/gemma-2-9b-it
- ✅ Fault Tolerance: Automatic model fallback on failures
- ✅ Rate Limiting: Smart queue management for API calls
- ✅ Error Recovery: Exponential backoff with retries
- ✅ Data Validation: Schema validation for all inputs/outputs
- ✅ Backup System: Automatic README backups before updates
- ✅ Logging: Comprehensive logs for debugging
- ✅ Metrics: Performance tracking and monitoring
🔄 Workflow Process
sequenceDiagram
participant GH as GitHub Actions
participant AG as Agent
participant HF as Hugging Face
participant RE as README
GH->>AG: Trigger (Daily/Manual)
AG->>AG: Load Configuration
AG->>GH: Fetch Repository Data
loop For Each Model (until success)
AG->>HF: Request Analysis
alt Success
HF->>AG: Return Insights
else Failure/Timeout
AG->>AG: Try Next Model
end
end
AG->>AG: Validate & Format
AG->>RE: Update README
AG->>GH: Commit Changes
AG->>AG: Update Metrics
GH->>GH: Create Artifact
- Trigger: Daily at 00:00 UTC (customizable)
- Duration: ~5-15 seconds average
- Retry Window: Up to 2 minutes with fallbacks
- Timeout: 120 seconds per API call
Want to see the magic in action?
Steps:
- Click the badge above
- Select "Run workflow"
- (Optional) Enable debug mode
- Click "Run workflow" button
- Watch real-time logs
- See README update in ~10 seconds!
Week 1: ████████████████████ 100%
Week 2: ███████████████████░ 95%
Week 3: ████████████████████ 98%
Week 4: ████████████████████ 100%
| Time Range | Percentage | Status |
|---|---|---|
| < 5s | 45% | 🟢 Excellent |
| 5-10s | 40% | 🟢 Good |
| 10-20s | 12% | 🟡 Acceptable |
| > 20s | 3% | 🔴 Slow |
| Model | Usage | Success Rate |
|---|---|---|
| Qwen 2.5 | 78% | 98.5% |
| Llama 3.2 | 15% | 96.2% |
| Mistral 7B | 5% | 94.8% |
| Others | 2% | 93.1% |
99.9% Uptime
Multi-model fallback ensures continuous operation even if primary models fail
• Automatic recovery
• Smart retries
• Error handling
• Health monitoring
Sub-10s Execution
Optimized for speed with efficient API usage and parallel processing
• Cached responses
• Batch operations
• Async processing
• Load balancing
Context-Aware AI
Deep understanding of code patterns, development trends, and team dynamics
• Semantic analysis
• Trend prediction
• Pattern recognition
• Actionable insights
Interested in building your own AI agent?
This entire system is open source and well-documented!
View Code Setup Guide Contribute
Tech Stack: Python • GitHub Actions • Hugging Face • AI/ML • DevOps
This AI agent showcases the intersection of Machine Learning Engineering, DevOps, and Automation.
Core Technologies: Multi-Model AI Ensemble • GitHub Actions CI/CD • Hugging Face Transformers • Python Async • REST APIs
Key Concepts: Fault Tolerance • Load Balancing • Rate Limiting • Error Recovery • Automated Testing • Performance Monitoring
🤖 This section is autonomously maintained by an AI agent
System Status: Active | Next Update: Daily at 00:00 UTC | Powered by: 🤗 Hugging Face
📊 View Logs • ⚙️ Configure • 🐛 Report Issue • 💡 Suggest Feature
- ❌ Closed PR #4 in RyoK3N/Synexcript
Python 12 hrs 45 mins ████████████░░░░░░░░ 55.2%
C++ 4 hrs 32 mins ████░░░░░░░░░░░░░░░░ 19.7%
Jupyter 3 hrs 15 mins ███░░░░░░░░░░░░░░░░░ 14.1%
Markdown 1 hr 23 mins █░░░░░░░░░░░░░░░░░░░ 6.0%
Other 1 hr 10 mins █░░░░░░░░░░░░░░░░░░░ 5.0%
Graph Transformer for Pose Estimation
- Advanced transformer architecture for human pose estimation
- Leverages graph neural networks for skeletal structure
- State-of-the-art accuracy on benchmark datasets
- Technologies:
PyTorchGraph Neural NetworksTransformers
⭐ Star | 🔬 Research Paper
Interactive 3D Motion Capture Visualization
- Real-time 3D/2D motion capture visualization tool
- Interactive camera manipulation & pose viewing
- Simultaneous multi-perspective rendering
- Technologies:
Python3D GraphicsOpenGLComputer Vision
⭐ Star | 📖 Documentation
2D Human Pose Estimation Pipeline
- End-to-end pose estimation system
- Real-time inference capabilities
- Multiple architecture implementations
- Technologies:
PyTorchOpenCVDeep Learning
⭐ Star | 🚀 Demo
Advanced Training Methodology
- Novel curriculum learning approach
- Topic modeling for data organization
- Improved neural network training efficiency
- Technologies:
TensorFlowNLPMachine Learning
⭐ Star | 📄 Paper
Collection of AI/ML Experiments
- Diverse ML project implementations
- Research prototypes & experiments
- Jupyter notebooks with detailed analysis
- Technologies:
PythonJupyterVarious ML Frameworks
⭐ Star | 🔍 Explore
Model Conversion for iOS
- Keras 3.x to CoreML conversion pipeline
- Optimized for Apple silicon
- Production-ready iOS deployment
- Technologies:
KerasCoreMLiOS Development
⭐ Star | 📱 Deploy
current_role: position: "Machine Learning Engineer" company: "Synexian Labs Private Limited" location: "New Jersey, USA" focus_areas: - Computer Vision Systems - Deep Learning Model Development - 3D Graphics & Visualization - Production ML Pipeline Design expertise: computer_vision: - Human Pose Estimation (2D/3D) - Motion Capture Analysis - Real-time Object Detection - 3D Scene Understanding deep_learning: - Transformer Architectures - Graph Neural Networks - Curriculum Learning Strategies - Model Optimization & Deployment research: - Published work in ML/CV - ORCID: 0009-0002-8456-7751 - Conference presentations - Open-source contributions technical_skills: advanced: - PyTorch Deep Learning - Computer Vision (OpenCV) - 3D Graphics Programming - NLP & Transformers proficient: - Cloud Infrastructure (AWS/GCP/Azure) - MLOps & Model Deployment - Distributed Training - A/B Testing & Experimentation
Research Interests:
- 🧠 Graph Neural Networks for Structured Prediction
- 🏃 Human Pose Estimation & Motion Analysis
- 📚 Curriculum Learning & Training Optimization
- 🎨 3D Computer Vision & Graphics
- 🤖 Reinforcement Learning for Robotics
Current Research:
- Graph Transformer architectures for human pose estimation
- Topic-modeled curriculum learning for neural network training
- Real-time 3D motion capture visualization systems
Research Collaboration • Open Source Projects • ML Engineering Roles • Speaking Engagements
Portfolio LinkedIn Email ORCID
def reach_out(): interests = { "collaborate_on": ["Research projects", "Open source ML tools", "Production systems"], "discuss_about": ["Computer Vision", "Deep Learning", "3D Graphics", "MLOps"], "available_for": ["Technical consulting", "Speaking", "Mentoring", "Code review"] } contact = { "email": "reiyo1113@gmail.com", "linkedin": "linkedin.com/in/reiyo06", "portfolio": "oreiyo.space" } return "Let's build something amazing together! 🚀" print(reach_out())