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aldimeolaalfarisy/README.md

Hi 👋, my name is Aldi

Results-driven manufacturing engineer with a passion for data analysis and problem-solving. Skilled in statistical analysis, data visualization, and machine learning techniques. Experience in process improvement and optimization, as well as project management. Proficient in Python, SQL, and Excel. Highly determined to leverage his manufacturing background and analytical skills to drive business insights and value.

📬 Reach me at: [email protected] or send a message on Linkedin Badge

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  1. aldimeolaalfarisy aldimeolaalfarisy Public

    Config files for my GitHub profile.

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  2. Tweet-Sentiment-Analysis Tweet-Sentiment-Analysis Public

    Tweet sentiment Analysis using deep learning method and model deployment using Flask and Swagger

    Jupyter Notebook 2 1

  3. Food-Delivery-Time-Prediction Food-Delivery-Time-Prediction Public

    Regression predictive analytics to predict food delivery time from restaurant to delivery point

    Jupyter Notebook

  4. Analysis-Effect-of-Cutting-Speed-on-Surface-Roughness-of-Cylindrical-Grinding-Process-using-ANOVA Analysis-Effect-of-Cutting-Speed-on-Surface-Roughness-of-Cylindrical-Grinding-Process-using-ANOVA Public

    Analysis of the effect of cutting speed on the surface roughness of cylindrical grinding process using ANOVA method.

    Jupyter Notebook

  5. Rain-Prediction-Using-Machine-Learning Rain-Prediction-Using-Machine-Learning Public

    Predict rain the next day using daily observations of weather aspects in Australia regions for 10 years

    Jupyter Notebook 1