I'm a Masterβs student in Data Science at TU Braunschweig, passionate about Machine Learning, AI, and Data Science. I specialize in AI model development, predictive analytics, and data-driven decision-making. My expertise lies in deep learning, natural language processing, and advanced machine learning algorithms.
π Currently based in Braunschweig, Germany
π― Open to Data Science, Machine Learning, and AI Engineering roles
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Machine Learning & Deep Learning
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Natural Language Processing (NLP)
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Computer Vision
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Predictive Analytics & Time Series
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Cloud Computing
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Data Visualization (Matplotlib, Seaborn, Tableau)
πΉ Developed an LSTM-based NLP model to detect deceptive content
πΉ Implemented Logistic Regression as a baseline model for comparison
πΉ Integrated with an Anvil-based web app for real-time predictions
πΉ Applied text preprocessing, sentiment analysis, and deep learning techniques
π GitHub Repo
πΉ Developed a Convolutional Neural Network (CNN) to classify brain MRI images into four categories: Glioma, Meningioma, Pituitary, and No Tumor
πΉ Achieved 96% test accuracy and weighted F1-score of 0.96
πΉ Utilized TensorFlow/Keras for model development and training
πΉ Applied data preprocessing, image augmentation, and early stopping to improve model performance
πΉ Deployed the model for predicting tumor types from unseen MRI images
π GitHub Repo
πΉ Developed a predictive model using Random Forest & XGBoost to detect potential customer churn
πΉ Processed Telco Customer Churn dataset by handling missing values & encoding categorical features
πΉ Applied SMOTE to balance dataset & improve classification performance
πΉ Conducted Exploratory Data Analysis (EDA) to uncover key churn indicators
πΉ Optimized model performance via hyperparameter tuning (GridSearchCV, RandomizedSearchCV)
πΉ Evaluated models using Accuracy, Precision, Recall, F1-Score & Confusion Matrix
πΉ Deployed trained models using Pickle for real-time churn prediction
π GitHub Repo
πΉ Developed a hybrid stock price forecasting model using LSTM & ARIMA
πΉ Collected SAP SE (SAP.DE) stock data from Yahoo Finance for analysis
πΉ Engineered sliding window features for LSTM-based deep learning predictions
πΉ Applied Auto ARIMA for optimal parameter selection in time-series forecasting
πΉ Compared model performance using MAE, RMSE, MAPE, SMAPE, and RΒ²
πΉ Visualized trends using Matplotlib & Seaborn for better market insights
πΉ Achieved high accuracy (RΒ²: 0.996 for LSTM, 0.997 for ARIMA)
π GitHub Repo
πΉ Applied KMeans clustering to segment customers based on purchasing behavior
πΉ Engineered features like Recency, Frequency, and Monetary Value for analysis
πΉ Identified key customer segments: Retain, Re-Engage, and Nurture
πΉ Optimized cluster count using Elbow Method & Silhouette Score
πΉ Visualized insights using 3D scatter plots & violin plots for better interpretation
πΉ Used Python, Pandas, Scikit-learn, Matplotlib, and Seaborn
π GitHub Repo
πΉ Developed a monthly dashboard tracking hospital metrics and patient data
πΉ Analyzed payer-wise revenue and cost breakdowns
πΉ Used Power BI for visualization and Excel for preprocessing
πΉ Enabled data-driven insights for regional demand and cost-saving opportunities
π GitHub Repo
π Knight Rank on LeetCode (Algorithmic Problem-Solving)
π 2nd Place in KICCS-D-HACK Coding Competition
π Exceptional Performance Award @ Info Edge India
π Relevant Certifications:
- Machine Learning Specialization (Andrew Ng - Coursera)
- Supervised Machine Learning: Regression and Classification
- Advanced Learning Algorithms
- Unsupervised Learning, Recommenders, Reinforcement Learning
- Deep Learning Specialization (Andrew Ng - Coursera)
- AI For Everyone (Coursera)
- Python for Data Science & AI (IBM - Coursera)
β Explore my projects and feel free to connect! Always open to learning and collaborating on AI & Data Science projects. π