As an experienced Data Scientist, I am focused on enhancing energy systems through data-driven methods. I am an expert in managing large datasets, effective data cleansing, and advanced statistical analysis. I develop predictive machine learning models to forecast energy trends and support strategic decisions.
Core Competencies:
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Data Management: Competent in managing large-scale data sources, ensuring data integrity and accessibility.
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Data Cleansing and Transformation: Skilled in improving data quality by correcting inaccuracies and inconsistencies.
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Statistical Analysis: Expert in analyzing complex datasets and identifying significant patterns.
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Machine Learning Development: Proficient in creating predictive models using the latest techniques to improve operational efficiency and trend predictions.
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Data Visualization and Reporting: Talented in creating visuals and reports that effectively communicate data findings.
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Continuous Improvement (CI/CD): Committed to the continuous updating and maintaining the effectiveness of models and processes.
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Time Series Analysis: In-depth knowledge and experience in using time series data to analyze and predict solar energy production and consumption trends.
As a seasoned Data Scientist and AI Engineer, I am actively involved in mentoring and educating aspiring data professionals. My mentorship and training program covers a comprehensive range of topics in the field of Data Science and Machine Learning. Here's an overview of the key areas I focus on:
- Python Programming: Fundamental to advanced concepts in Python, tailored for data science applications.
- CRM Analytics: Techniques and insights for analyzing customer data, improving customer relationships and driving business growth.
- Measurement Problems in Data Science: Tackling common challenges in data measurement and ensuring data integrity.
- Recommendation Systems: Developing systems to suggest products or services to users based on their preferences and historical data.
- Feature Engineering: Techniques for creating and selecting impactful features to improve the performance of machine learning models.
- Machine Learning: Comprehensive understanding of various machine learning algorithms, from basic to advanced, including supervised and unsupervised learning.
This program is designed to empower participants with practical skills and in-depth knowledge, equipping them to excel in the rapidly evolving field of Data Science. For more information or to participate in my training sessions, feel free to contact me.
Python Libraries: Pandas, Numpy, Seaborn, Sckit-Learn, SciPy, Matplotlib, TensorFlow, PyTorch, Scrapy
Machine Learning Algorithms : Linear Regression, Logistic Regression, Decision Trees, SVM, kNN, K-Means, Random Forest, GradientBoosting Algorithms(GBM, XGBoost,LightGBM, CatBoost)
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Predicting Service Request Loads using LSTM model with Keras
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Telco Churn Prediction with Machine Learning Models (%80 Accuracy)l