"I build AI systems that don't just predict β they explain, scale, and create real-world impact."
I'm a B.Tech student in Artificial Intelligence & Machine Learning (GPA: 8.51/10) at NRI Institute of Technology, India β with production-grade ML experience across logistics, finance, and NLP.
- π¬ Researcher in Explainable AI: Integrated Gradients, SHAP, Attention Rollout on transformer models
- π Industry Experience: Data Science @ AutonoPros β 95% accuracy price models, 20% revenue boost
- π§βπ« Recognized Top 50 AI/ML Mentor on Topmate β mentored 15+ learners
- π Open-source contributor β GirlScript Summer of Code
- βοΈ Technical blogger on Medium (300+ views per post)
- π Hyderabad, India | Open to Remote Internships
| π― Metric | π Result |
|---|---|
| π Logistics Model Accuracy | 99.98% RΒ² (MAE: 0.0021) |
| π Fraud Detection ROC-AUC | β 0.95 (F1 > 0.94) |
| π€ Resume LLM Optimization | 78.1% avg keyword match improvement |
| πΈ AutonoPros Cost Reduction | 15% operational cost savings |
| π AutonoPros Revenue Impact | 20% revenue boost via demand forecasting |
| π₯ Mentorship Reach | 15+ AI/ML professionals mentored |
Transformers are powerful β but why do they decide what they decide?
- Dataset: SST-2 Sentiment | Model: DistilBERT
- Implemented and rigorously benchmarked 3 XAI techniques:
- π£ Integrated Gradients β token attribution via gradient paths
- π΅ Attention Rollout β propagated attention across transformer layers
- π‘ SHAP β game-theoretic local explanations
- Evaluated stability, failure cases, and practical trade-offs for production ML systems
- Goal: Make LLMs debuggable and transparent for industry deployment
π¦ Predictive Analysis of Delhivery Logistics β Team Lead | End-to-End ML Pipeline
Problem: Estimate delivery times accurately at scale for one of India's largest logistics companies.
Solution Stack:
- π§Ή Advanced EDA + feature engineering on large-scale operational data
- π€ Models: XGBoost, Random Forest, Gradient Boosting β Stacking Regressor
- π MAE: 0.0021 | RΒ²: 0.9998 β near-perfect predictive accuracy
- π³ Deployed via Flask/Django APIs + Docker + GitHub Actions CI/CD
Led a team of 5 from data pipeline design to production deployment.
π§Ύ AI-Powered Resume Optimization System β NLP + LLM Pipeline
Problem: Resumes fail ATS systems due to keyword mismatches β costing candidates opportunities.
Solution Stack:
- π TF-IDF vectorization + cosine similarity for gap detection
- π² Random Forest classifier (72.84% acc) on 2,484 resumes across 24 job categories
- βοΈ GPT-4o-mini LLM rewriting β 78.1% average ATS keyword improvement
- End-to-end pipeline: parse β analyze β rewrite β score
π³ Credit Card Fraud Detection β Production-Grade ML System
Dataset: IEEE-CIS β 590K+ transactions, 400+ features
Solution Stack:
- π’ PCA dimensionality reduction β interpretable components (Transaction Velocity, Customer Risk Profile)
- β‘ LightGBM classifier β F1 > 0.94 | ROC-AUC β 0.95
- π Deployed as Streamlit web app with real-time + batch CSV prediction
- Production-ready: handles class imbalance, feature drift, and anomaly analysis
π’ AutonoPros (Data Science Intern) Nov 2024 β Apr 2025 | Hyderabad, India
βββ Price Prediction Model β 95% accuracy, -15% operational costs
βββ Ride demand forecasting β +20% revenue boost
βββ AWS + Docker ML pipelines β +30% workflow efficiency
π’ Technocolabs Softwares (ML Engineer Intern) Nov β Dec 2024 | Indore, India
βββ Logistics optimization β 90% prediction accuracy, -25% delivery delays
βββ MLOps workflows β -50% data processing time
π’ Outlier (Code Evaluator β Freelance) Nov 2024 | California, USA
βββ 90%+ accuracy in LLM output code evaluations
| Certification | Issuer | Domain |
|---|---|---|
| Machine Learning Specialist | IBM | ML |
| Career Essentials in Generative AI | Microsoft | GenAI |
| MLOps with Generative AI | Google Cloud | MLOps |
| Azure AI Fundamentals | Microsoft | Cloud AI |
| ML Model Skill Badge | Google Cloud | Applied ML |
| PyTorch for Deep Learning | Infosys | Deep Learning |
| Business Analytics | Coursera | Analytics |
π Full credentials: Credly Β· Google Cloud Skills Β· Microsoft Learn
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