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GOPIKA-SUSHAMA/README.md

✨ Gopika Sushamakumari

MRes Artificial Intelligence @ University of Wolverhampton (2025–2026)
AI Researcher | Machine Learning Engineer | Information Retrieval & Recommender Systems
Former Software Engineer @ UST Global (Analytics & Data Systems)

Developing AI systems that combine Machine Learning, NLP, and Information Retrieval to transform unstructured data into intelligent decision-support tools. My work focuses on semantic search, recommendation systems, predictive modelling, and explainable AI pipelines.

Tech Stack:
Python SQL PyTorch TensorFlow Scikit-learn Transformers spaCy
Random Forest XGBoost BM25 SBERT Flask APIs Azure
Power BI Power Apps Power Automate

📍 Wolverhampton, UK | Right to Work in the UK
⭐ Open to AI Engineer | Machine Learning Engineer | Data Analyst | Power Platform roles

Research Focus

My research explores how Artificial Intelligence can improve decision-making for students and course seekers. Current postgraduate course discovery systems rely heavily on keyword-based search and manual filtering, which often fail to capture the semantic relationship between a candidate’s experience and suitable programmes.

To address this gap, I develop Hybrid Information Retrieval–Machine Learning systems that analyse unstructured CVs and generate ranked course recommendations using semantic embeddings and ML ranking models.

The long-term goal is to build AI-powered decision-support systems that improve accessibility, transparency, and fairness in educational guidance.

Key Research Innovations

  • Dual retrieval architecture combining BM25 sparse search + SBERT dense embeddings
  • Ensemble ranking models using Random Forest and XGBoost
  • Semantic CV parsing pipelines generating structured candidate profiles
  • Ranking evaluation framework using nDCG@K, Precision@K, and rank correlation
  • Integration of CAMEL multi-agent reasoning framework to improve explainability in AI recommendations

Experience

AI Researcher

University of Wolverhampton (2025 – Present)

Researching AI-driven recommendation systems and semantic information retrieval.

Key work:

  • Developing Hybrid IR–ML recommendation systems for postgraduate course matching
  • Designing transformer-based CV parsing pipelines
  • Building ranking models using ensemble ML techniques
  • Evaluating recommendation quality using IR ranking metrics
  • Investigating multi-agent reasoning systems (CAMEL) for explainable AI decision support

Software Engineer

UST Global (2022 – 2025)

Worked on enterprise analytics engineering and cloud-based reporting systems.

Key contributions:

  • Designed semantic data models supporting 1M+ row datasets
  • Reduced dataset refresh time from 2.5 hours → 35 minutes (70% improvement)
  • Built REST API pipelines for external JSON data ingestion
  • Implemented CI/CD deployment pipelines and monitoring workflows
  • Developed enterprise analytics dashboards using Power BI + Azure

Technologies:
Power BI Power Apps Power Automate SQL Server Azure REST APIs

Featured Projects

AI Project Risk Prediction System

Multi-output ML system predicting risk type, probability, and mitigation strategy using Random Forest and Extra Trees.

AI CV Matcher

NLP system matching candidate CVs with job descriptions using semantic similarity.

Early Warning Student Risk System

Predictive ML model identifying students at risk of academic failure.

CAMEL Resume Evaluator

Multi-agent AI system inspired by CAMEL architecture for automated resume evaluation.

Diabetes Risk Prediction

Healthcare ML system predicting diabetes risk factors using classification models.

Core Expertise

Machine Learning

Random Forest XGBoost SVM Extra Trees
Deep Neural Networks CNNs Multi-output classification

NLP & Information Retrieval

Transformers BERT SBERT
BM25 Retrieval Semantic Search
CV Parsing Feature Extraction

AI Frameworks

PyTorch TensorFlow Scikit-learn spaCy Hugging Face Transformers

Data Engineering

ETL Pipelines Feature Engineering
Cross Validation Model Evaluation

Deployment

Flask APIs REST APIs CI/CD Pipelines

Cloud & Analytics

Microsoft Azure Power BI SQL Server

🎓 Education

MRes Artificial Intelligence
University of Wolverhampton

Research Areas
Machine Learning • NLP • Information Retrieval • Recommender Systems

BTech Electrical & Electronics Engineering
Cochin University of Science and Technology

Final Project
Intelligent Shopping Trolley (IoT + Embedded Systems)

🏅 Certifications

Hugging Face – Transformers & NLP
Kaggle – Machine Learning
Kaggle – Natural Language Processing
Google Cloud Ready Facilitator

Connect With Me

LinkedIn
https://www.linkedin.com/in/gopika-sushama

GitHub
https://github.com/GOPIKA-SUSHAMA

Email
gvndgpk@gmail.com

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