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Baybordi/README.md

πŸ‘‹ Hi there,

πŸ”Ή Data Scientist | Machine Learning Engineer | MLOps Enthusiast
πŸ”Ή Passionate about AI, Deep Learning, and Scalable Data Solutions
πŸ”Ή Experienced in Python, Machine Learning, Cloud Deployment & Automation


πŸ’» My Skills

πŸ§‘β€πŸ’» Programming & Scripting Languages

  • Python Python
  • SQL SQL

βš™οΈ Machine Learning & Deep Learning

  • Supervised Learning: Linear Regression, Logistic Regression, SVM, KNN
  • Unsupervised Learning: K-means, Hierarchical Clustering, PCA
  • Deep Learning: CNN, RNN, LSTMs, GANs, Transformers
  • Libraries & Frameworks: TensorFlow, Keras, PyTorch, Scikit-learn Scikit-learn

πŸ§‘β€πŸ”§ Data Engineering

  • Databases: MySQL, MongoDB

☁️ Cloud Platforms & Big Data

  • Cloud Computing: AWS (S3, EC2, SageMaker, Lambda)
  • Big Data: Apache Hadoop, Apache Spark, PySpark PySpark

πŸ“Š Data Visualization & BI Tools

  • Power BI Power BI
  • Tableau Tableau
  • Plotly Plotly

πŸ† Notable Tools & Libraries

  • ML Libraries: XGBoost XGBoost, LightGBM, CatBoost
  • Data Preprocessing: Pandas, NumPy, Seaborn
  • NLP: ALBERT, ANLTK, SpaCy, Transformers, Gensim

πŸ’Ό My Experience:

βœ… Developed predictive models with 90%+ accuracy
βœ… Optimized ML models using hyperparameter tuning & feature selection
βœ… Built automated ML pipelines with Scikit-learn & TensorFlow


πŸ“Š Statistics & Exploratory Data Analysis (EDA)

Proficient in: Statistical Analysis, Data Cleaning, Outlier Detection, Hypothesis Testing


πŸš€ Projects

πŸ”Ή Bug Classification and Prioritization
  • Data Labeling: Manually labeled 400+ records to create a high-quality training dataset.
  • Multiple ML Approaches: Implemented RNN, LSTM, TF-IDF with ML models, and ALBERT embeddings with Random Forest to find the most effective classification method.
  • Custom Classification System: Designed a 5-category bug classification model, improving dataset usability.
  • Class Imbalance Handling: Generated additional samples for underrepresented categories to enhance model training.
  • Data Cleaning & Refinement: Improved dataset quality by replacing misleading words, enhancing class representation and model accuracy.
  • Performance Improvement: Achieved 80% accuracy using ALBERT embeddings with Random Forest, significantly outperforming traditional methods.
πŸ”Ή Financial & Forex Market Prediction
  • Time Series Analysis: Used LSTM & GRU networks to predict forex trends based on historical data.
  • Feature Engineering: Extracted critical macroeconomic indicators, sentiment analysis from news, and technical indicators to enhance model performance.
  • Automated Trading Signals: Developed a real-time predictive system that generates buy/sell signals based on ML-driven insights.
  • Live Data Integration: Integrated Yahoo Finance API to fetch real-time forex market data for continuous model updating.
  • Risk Management: Implemented volatility-adjusted stop-loss strategies to improve trading accuracy and mitigate financial risk.
  • Performance Metrics: Achieved +10% higher accuracy than traditional moving average strategies, optimizing trade profitability.

🌐 Cloud Project:

AWS EC2 Instance - Link to your cloud project

Pinned Loading

  1. Bug-Report-Classification-ALBERT Bug-Report-Classification-ALBERT Public

    LLM-Driven Bug Report Classification and Assignment

    Python

  2. ASDA-DataSet-Analyzing-sales-and-products- ASDA-DataSet-Analyzing-sales-and-products- Public

    This project is a data visualization dashboard for analyzing ASDA sales and product

    Python

  3. Churn_DataSet Churn_DataSet Public

    Churn Prediction with Artificial Neural Network (ANN)

    Jupyter Notebook

  4. EdgeDetection_Face EdgeDetection_Face Public

    explores various edge detection techniques, focusing on detecting facial features using different filters

    Jupyter Notebook

  5. Flight-Price-Prediction Flight-Price-Prediction Public

    Flight Price Prediction with Random Forest

    Jupyter Notebook

  6. Wine_DataSet Wine_DataSet Public

    Wine Dataset Classification using Gaussian Naive Bayes

    Jupyter Notebook