One Week of Data Science in Python - New 2023! - Master Data Science Fundamentals Quickly & Efficiently in one week! Course is Designed for Busy People
I found a course on Udemy called "One Week of Data Science in Python - New 2023!"1. This course aims to provide you with knowledge of critical aspects of data science in one week and in a practical, easy, quick, and efficient way. It includes several practice opportunities, quizzes, and final capstone projects.
If you’re interested in learning Python first, there’s also a course called “One Week Python” on Udemy that you might find helpful2.
Alternatively, Coursera has several courses on Python for Data Science, AI & Developmen
What you'll learn
- Perform statistical analysis on real world datasets
- Understand feature engineering strategies and tools
- Perform one hot encoding and normalization
- Understand the difference between normalization and standardization
- Deal with missing data using pandas
- Change pandas DataFrame datatypes
- Define a function and apply it to a Pandas DataFrame column
- Perform Pandas operations and filtering
- Calculate and display correlation matrix heatmap
- Perform data visualization using Seaborn and Matplotlib libraries
- Plot single line plot, pie charts and multiple subplots using matplotlib
- Plot pairplot, countplot, and correlation heatmaps using Seaborn
- Plot distribution plot (distplot), Histograms and scatterplots
- Understand machine learning regression fundamentals
- Learn how to optimize model parameters using least sum of squares
- Split the data into training and testing using SK Learn Library
- Perform data visualization and basic exploratory data analysis
- Build, train and test our first regression model in Scikit-Learn
- Assess trained machine learning regression model performance
- Understand the theory and intuition behind boosting
- Train an XG-boost algorithm in Scikit-Learn to solve regression type problems
- Train several machine learning models classifier models such as Logistic Regression, Support Vector Machine, K-Nearest Neighbors, and Random Forest Classifier
- Assess trained model performance using various KPIs such as accuracy, precision, recall, F1-score, AUC and ROC.
- Compare the performance of the classification model using various KPIs.
- Apply autogluon to solve regression and classification type problems
- Use AutoGluon library to perform prototyping of AI/ML models using few lines of code
- Plot various models’ performance on model leaderboard
- Optimize regression and classification models hyperparameters using SK-Learn
- Learn the difference between various hyperparameters optimization strategies such as grid search, randomized search, and Bayesian optimization.
- Perform hyperparameters optimization using Scikit-Learn library.
- Understand bias variance trade-off and L1 and L2 regularization
PREVIEW THIS COURSE - GET COUPON CODE
Advertisement