Welcome to my GitHub profile! I'm a dedicated Data Scientist with a passion for transforming data into actionable insights. My journey in data science is fueled by a deep curiosity and an eagerness to solve complex problems through data-driven solutions.
I specialize in developing and deploying machine learning models to solve real-world problems, optimize business processes, and drive strategic decision-making. My areas of expertise include: Predictive Analytics, Natural Language Processing (NLP) and Data Visualization.
Here are some of the tools and technologies I work with:
- Programming Languages: Python
- Data Analysis: Pandas, NumPy, Scikit-learn, TensorFlow, Keras
- Databases: SQL
- Data Visualization: Matplotlib, Seaborn
- Machine Learning: Regression, Classification, Clustering, Deep Learning, NLP
- Tools & Platforms: Jupyter Notebooks, Git
- Other Skills: Data Cleaning, Feature Engineering, A/B Testing, Time Series Analysis
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Product recommendation: developed a KNN model to recommend product.
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Sentiment Analysis of Customer Reviews: built a Naive Bayes model to create a review classifier for the Google Play store.
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Predicting diabetes: created a Random Forest model to predict diabetes.
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Image Classifier: designed a deep learning model to classify images based on their content.
Check out my repositories for more exciting projects and code samples!
I'm always looking to expand my skill set and explore new technologies. Currently, I'm diving deeper into:
Azure: Enhancing my skills in creation, deployment, and management of data-driven applications.
I'm always open to connecting with like-minded professionals, collaborating on interesting projects, or just having a chat about data science. Feel free to reach out to me through:
When I'm not crunching numbers and building models, you can find me renovating my home, exploring new cake recipes or travelling. I believe in a balanced life and find that these activities help me stay creative and motivated.
Thank you for visiting my profile! Let's harness the power of data to make a difference.