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Project(Project_ML-Model-Eval-Refine)

Part of the Coursera series: IBM Data Science

Summary

In this project, I took in data related to home sales in order to develop a model to predict future home sales. We had to wrnagle the data and transform it, perform EDA and look at various correlations between features in order to set up a machine learning (polynomial linear regression) model on which to train and then create predictions. We performed feature engneering and scaling in the process.

Skills (Developed & Applied)

Programming, Python, Databases, Statistics, Probability, SciPy, Numpy, Pandas, Seaborn, Matplotlib, Scikit-learn, Data Modeling, EDA, Data Visualization, Data Summarization, Data Reporting, Regression, Supervised ML, Communication