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Working on Churn Prediction & Machine Learning
:octocat:
Working on Churn Prediction & Machine Learning

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👋 Hi, I’m Shaghayegh-Aflatounian

👀 I’m passionate about leveraging machine learning to address business challenges, particularly in analyzing marketing and business datasets. I strive to evaluate their performance and develop intelligent strategies to enhance both their performance and the services they offer, ultimately driving increased profits.

🌱 Currently, I am immersed in learning financial metrics and trading concepts to broaden my skill set for future work in algorithmic trading.

💞️ I am eager to collaborate with various business departments as a data analyst, whether in marketing, product development, or finance, to contribute insights and drive informed decision-making.

📫 Feel free to reach out to me via email at [email protected].

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  1. Data-explatory-analysis-marketing Data-explatory-analysis-marketing Public

    In this file I did a through Data explatory analysis on marketing dataset from datacamp related to different marketing channels and their customers.

    Jupyter Notebook

  2. Churn-Prediction Churn-Prediction Public

    Churn prediction aims to identify customers who are likely to cancel/switch their accounts based on their characteristics and behavior patterns. This helps banks prioritize retention efforts.

    Jupyter Notebook

  3. Churn-prediction-machine-learning Churn-prediction-machine-learning Public

    Bank Customer churn prediction with machine learning ensemble methods

    Jupyter Notebook

  4. Deep-learning-with-keras Deep-learning-with-keras Public

    In this file I have shared what I have learnt through my course in Deep learning with keras in Datacamp course

    Jupyter Notebook

  5. Race.Discrimination.Task Race.Discrimination.Task Public

    The purpose of this project is to analyze and compare the median income and wealth of different racial and educational groups. The analysis includes calculating the median housing wealth, median de…

    Jupyter Notebook

  6. Text-Analysis-Semantic-Search Text-Analysis-Semantic-Search Public

    A semantic search and Embeddings with the OpenAI API

    Jupyter Notebook