π I'm a CS sophomore at VIT Amaravati specializing in AI & ML, passionate about building intelligent systems that actually ship. From LangGraph-orchestrated prediction pipelines and autonomous AI agents to ESP32-powered smart glasses and full-stack Android apps β I build end-to-end, from silicon to software.
|
π
VIT Internal Expo Smart Vision Aid Selected |
π CGPA 8.35 B.Tech CS Β· AI & ML |
π€ 6 AI Projects Shipped & Deployed |
π LangGraph 8-Node AI Pipelines |
π VIT Amaravati Class of 2028 |
class AnkitSengupta:
def __init__(self):
self.name = "Ankit Sengupta"
self.role = "AI Engineer & Backend Developer"
self.university = "VIT Amaravati Β· Class of 2028"
self.cgpa = 8.35
self.skills = {
"AI / ML" : ["RAG Pipelines", "AI Agents", "LangGraph", "LangChain",
"TensorFlow", "YOLO", "OpenCV", "XGBoost", "RL Feedback"],
"LLM Infra" : ["LangSmith", "ChromaDB", "FAISS", "HuggingFace",
"Gemma-3", "Prompt Engineering", "Vector Embeddings"],
"Backend" : ["Django", "FastAPI", "Flask", "Node.js",
"MongoDB", "WebSockets", "APScheduler"],
"Languages" : ["Python", "JavaScript", "TypeScript", "Java", "C++", "MATLAB"],
"Mobile" : ["Android", "Kotlin", "Firebase"],
"Embedded" : ["ESP32", "Arduino", "C++", "IoT Sensors"],
}
self.trophy = "π
Selected Β· VIT Internal Expo 2025"
self.superpower = "ML theory β production systems"
self.status = "π’ Open to internships & collaborations!"
def say_hi(self):
print("Let's build something that matters π")ββ π€ AI & Intelligence ββ
ββ π LLM Orchestration & RAG ββ
ββ π Backend & Web ββ
ββ π» Languages & Frameworks ββ
ββ π± Mobile & Embedded ββ
π₯ "Every project is a chance to bridge theory and real-world impact"
AI-powered stock direction prediction using real-time news, LLM reasoning, RAG pipelines, LangGraph orchestration, and reinforcement learning feedback
| π Orchestration | 8-node LangGraph pipeline: fetch β sentiment β embed β stock β RAG β LLM β ML β ensemble |
| π§ LLM Core | Gemma-3-4B-IT (local HuggingFace) for news reasoning & directional prediction |
| π¦ RAG Layer | ChromaDB / FAISS vector store + sentence-transformers all-MiniLM-L6-v2 embeddings |
| π€ ML Model | XGBoost binary direction classifier β combines with LLM for ensemble final call |
| π RL Feedback | Custom reward loop: record β resolve β retrain XGBoost on real outcomes after 3 days |
| π Backend | FastAPI + WebSockets (real-time pipeline streaming) + APScheduler background jobs |
| π Frontend | React + Vite + TailwindCSS trading UI β candlestick charts, live price feed, sentiment gauge |
| π Observability | LangSmith tracing for full LangGraph pipeline visibility |
+------------------------------------------------------------------+
| NEWS SOURCES: NewsAPI Β· GNews Β· AlphaVantage |
+----------------------------+-------------------------------------+
|
v
| LANGGRAPH: fetch_news β analyse_sentiment β embed_store |
| β fetch_stock β rag_retrieve β llm_reason |
| β ml_predict β final_predict |
| [ Gemma-3-4B LLM ] + [ ChromaDB RAG ] + [ XGBoost ] |
|
+--------------+--------------+
v v
FastAPI + WebSocket React Trading UI
|
v
RL FEEDBACK LOOP β Record β Resolve β Reward β Retrain
Real-time AI-powered assistive smart glasses β giving spatial freedom to the visually impaired
| π· Vision System | 3Γ ESP32-CAM modules + ultrasonic sensors β full 360Β° spatial coverage |
| β‘ AI Detection | YOLO real-time object detection for precise obstacle identification |
| π± Mobile App | Android companion with live audio alerts & navigation feedback |
| π§ Embedded Core | C++ on Arduino IDE for ultra-low-latency performance |
| π Achievement | Selected for VIT Amaravati Internal Expo |
AI-powered platform connecting farmers and buyers through intelligent crop analysis
| π¬ ML Pipeline | Crop yield prediction β TensorFlow + Pandas |
| ποΈ Computer Vision | OpenCV real-time crop disease detection |
| π Backend | Django/Flask marketplace connecting farmers with buyers |
Zero-effort expense tracking by securely parsing your bank transaction SMS
| π¬ Core | Securely parses bank SMS for automatic expense categorization |
| π Dashboard | Real-time financial insights with visual breakdowns |
| π Security | Firebase auth + encrypted cloud backup |
Emotion intelligence meets medical data β sentiment analysis + real-time report parsing
| π¬ NLP Engine | TensorFlow sentiment analysis for real-time emotional state detection |
| π OCR Pipeline | Pytesseract extracts & structures data from medical reports |
| π Intelligence | Cross-references health info with curated medical datasets |
Your AI-powered symptom tracker, medication guide, and health companion
| π Symptom Match | Fuzzy logic symptom matching via FuzzyWuzzy |
| π Health Tracking | Symptoms, medications & personalised diet recommendations |
| π₯οΈ Interface | Clean Tkinter GUI with CSV dataset integration |
| π | π | π€ | π | π§ | π± |
|---|---|---|---|---|---|
| VIT Internal Expo | CGPA 8.35 | AI & ML | LLM Infra | Embedded IoT | Android Dev |
| Smart Vision Aid Selected | B.Tech CS Β· 2028 | RAG Β· Agents Β· YOLO | LangGraph Β· ChromaDB Β· RL | ESP32 Β· Arduino | Kotlin Β· Firebase |
ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
β π§ On My Workbench β
β βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ£
β π NewsAlphaAI β LangGraph Stock Prediction + RL Feedback β
β π€ Autonomous AI Agent Systems with Tool Use β
β π Retrieval-Augmented Generation (RAG) Pipelines β
β β‘ Scalable Backends Β· FastAPI / Django / Node β
β π LLM Orchestration Β· LangGraph / LangChain β
ββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ


