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Step Mentor

An innovative learning solution leveraging Large Language Models (LLMs) to personalize learning pathways for competitive exam preparation. Integrated advanced natural language understanding, adaptive learning models, and intelligent scheduling systems to optimize learning outcomes.

Key Innovations: LLM integration, adaptive algorithms, personalized curriculum design.

Research Impact: Demonstrated enhanced user engagement and improved study efficiency.

LLMs Machine Learning Data Science UI/UX Design Python Flask
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Predicting Falcon 9 Landing Success

Developed a predictive model to analyze the success of SpaceX Falcon 9 rocket landings using historical data. Implemented machine learning techniques to improve prediction accuracy, optimizing launch costs and enhancing space exploration efficiency.

Key Contributions: Developed novel feature engineering pipelines and applied ensemble models for improved prediction accuracy.

Research Significance: Boosted reliability and cost-effectiveness in aerospace systems.

TensorFlow Scikit-learn Python
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Estimating Carbon Footprints in Automobiles

Developed an ML-based solution to analyze car attributes and predict CO2 emissions, fostering sustainable transportation strategies.

Research Applications: Environmental impact assessment, sustainable design innovation.

Data Science Cloud Python
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Predictive Modeling for Market and Vehicle Insights

Tech Market Predictive Modeller:

Designed a regression-based pipeline for laptop price prediction, incorporating advanced feature engineering and model tuning.

Vehicular Valuation Predictor:

Created a comprehensive car valuation system using machine learning models for precise price estimation and market insights.

Data Science Machine Learning Data Analysis Python
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Noteworthy

Designed an intelligent interface combining automatic natural language processing to generate precise, context-aware notes from YouTube videos. Advanced AI solutions were deployed to create concise summaries while enabling user customization.

Key Innovations: LLM integration, ML algorithms, Text Summarization.

Applications: Educational content curation, knowledge distillation, and e-learning.

LLMs Machine Learning API Python Flask
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Customer Segmentation

Built a machine learning model to analyze and predict customer behavior in the telecommunications sector, enabling personalized service recommendations and marketing strategies.

Key Insights: Behavioral analytics, clustering, and classification for targeted engagement.

Jupyter Machine Learning SQL
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Medical Drug Recommendation

Built a robust ML-driven system for precision medicine, utilizing patient data and decision tree algorithms to recommend drugs tailored to individual needs.

Key Methodologies: Predictive analytics, healthcare data modeling, and classification algorithms.

Research Outcome: Improved prescription accuracy and enhanced patient outcomes.

ML Data Science Data Analysis
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Retrieval-Augmented Generation Research Framework

Revolutionized generative AI by integrating real-time knowledge retrieval, enabling contextually rich and accurate query responses.

Key Innovations: Knowledge graph integration, model retrieval optimization, and hybrid generative systems.

Research Outcome: Enhanced AI systems' ability to handle complex queries across domains like scientific research and legal advisory.

RAG Knowledge Graphs Generative AI
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Reinforcement Learning from Human Feedback

Advanced AI training pipelines by incorporating human feedback to align systems with ethical standards and values.

Key Innovations: Reinforcement learning algorithms and human-in-the-loop systems.

Research Outcome: Enabled the development of ethical AI systems that prioritize fairness, transparency, and inclusivity.

RLHF Ethical AI Human-in-the-Loop
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Multi-Agent Systems for Enhanced LLM Performance

Leveraged multi-agent frameworks to refine language model performance through collaboration and contextual optimization.

Key Innovations: Agent coordination, knowledge fusion, and dynamic contextual systems.

Research Outcome: Improved multi-faceted decision-making and conversational AI accuracy.

MAS Collaborative AI Language Models
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