class Priyanka:
name = "Priyanka Gounder"
degree = "BCA β Silver Oak University"
interests = ["AI/ML", "Edge AI", "LLMs & RAG", "Full-Stack Dev"]
tools = ["Python", "TensorFlow", "LangChain", "Streamlit", "OpenCV"]
currently = "Exploring LangChain Β· RAG Pipelines Β· LLM Integration"
fun_fact = "I built a defect detector that runs 100% offline on a chip π¬"π¬ Real-time sensor defect detection β completely offline, zero cloud dependency
| Feature | Detail |
|---|---|
| π· Hardware | ESP32-CAM β captures live sensor images |
| π§ Model | Edge Impulse image classification β 99.6% confidence |
| π― Detects | DHT11, Ultrasonic, IR Sensor, Battery Cell β Normal / Damaged / Cracked |
| π Dashboard | Live WiFi web UI β auto-refreshes every 2 seconds |
| π Use Cases | Electronics manufacturing Β· Automotive Β· Medical devices Β· PCB QC |
π€ Control LED & Fan without physical touch β contactless home automation
- Real-time hand landmark detection using OpenCV + MediaPipe
- Gesture recognition mapped to ON/OFF device commands via webcam
- Demo video published on LinkedIn π₯
ποΈ Upload any PDF β Get summaries & ask questions instantly
- Clean Streamlit UI with AI-powered summarization & Q&A
- Focused on API integration and backend logic
πΌ Fully responsive with light/dark mode, smooth animations & project showcase