What
You’ll Learn
You’ll Learn
- Understanding Machine Learning Case Studies: Learn the practical application of machine learning through real-world case studies.
- Environment Setup for Machine Learning: Get hands-on experience in setting up the necessary environment for implementing machine learning algorithms
- Linear Regression Techniques: Understand and implement linear regression models
- starting with the problem statement and progressing to regressions.
- Robust Regression and Logistic Regression: Explore robust regression techniques and delve into logistic regression for binary classification problems.
- k-Means Clustering: Gain insights into unsupervised learning with k-Means clustering
- including creating scattered plots and calculating Euclidean distances.
- Time Series Modeling: Learn to model and analyze time series data
- exploring applications like Bitcoin price prediction.
- Classification Algorithms: Master various classification techniques
- including logistic regression
- decision trees
- k-nearest neighbors
- linear discriminant ana
- Building Predictive Models: Understand the process of defining problem statements
- preparing and cleaning data
- and creating predictive models.
- Feature Engineering: Gain proficiency in feature engineering techniques
- transforming variables
- and preparing data for machine learning models.
- Visualization Techniques: Learn to visualize data using confusion matrices
- AUC curves
- SNS plots
- and other visualization methods.
- Application in Finance: Apply machine learning to financial scenarios
- exploring payment delays
- standing credit
- defaulting
- and other relevant financials
- Throughout the course
- participants will acquire practical skills and knowledge to tackle real-world machine learning challenges.
Requirements
- No prior knowledge of machine learning required
- Basic knowledge of Python
Description
Welcome to an immersive journey into the world of machine learning through practical projects and case studies. This course is designed to bridge the gap between theoretical knowledge and real-world applications, providing participants with hands-on experience in solving machine learning challenges using Python.
In this course, you will not only learn the fundamental concepts of machine learning but also apply them to diverse case studies, covering topics such as linear regression, clustering, time series analysis, and classification techniques. The hands-on nature of the course ensures that you gain practical skills in setting up environments, implementing algorithms, and interpreting results.
Whether you’re a beginner looking to grasp the basics or an experienced practitioner aiming to enhance your practical skills, this course offers a comprehensive learning experience. Get ready to explore, code, and gain valuable insights into the application of machine learning through engaging projects and case studies. Let’s embark on this journey together and unlock the potential of machine learning with Python.
Lecture 1: Introduction to Machine Learning Case Studies
This section initiates the course with an insightful overview of machine learning case studies. Lecture 1 provides a glimpse into the diverse applications of machine learning, setting the stage for the hands-on projects and case studies covered in subsequent lectures.
Lecture 2: Environmental SetUp
Get ready to dive into practical implementations. Lecture 2 guides participants through the environmental setup, ensuring a seamless experience for executing machine learning projects. This lecture covers essential tools, libraries, and configurations needed for the hands-on sessions.
Lecture 3-8: Linear Regression Techniques
Delve into linear regression methodologies with a focus on problem statements and hands-on implementations. Lectures 3-8 cover normal linear regression, polynomial regression, backward elimination, robust regression, and logistic regression. Understand the nuances of each technique and its application through practical examples.
Lecture 10-15: k-Means Clustering and Face Detection
Explore the intriguing world of clustering with k-Means. Lectures 10-15 guide you through creating scattered plots, calculating Euclidean distances, printing centroid values, and applying k-Means to analyze face detection challenges.
Lecture 16-19: Time Series Analysis
Uncover the secrets of time series modeling. Lectures 16-19 walk you through the process of creating time series models, training and testing data, and analyzing outputs using real-world examples like Bitcoin data.
Lecture 20-29: Classification Techniques
Embark on a journey through classification techniques. Lectures 20-29 cover fruit type distribution, logistic regression, decision tree, k-Nearest Neighbors, linear discriminant analysis, Gaussian Naive Bayes, and plotting decision boundaries. Gain a comprehensive understanding of classifying data using different algorithms.
Lecture 30-41: Default Prediction Case Study
Apply your skills to a real-world scenario of predicting defaults. Lectures 30-41 guide you through defining the problem statement, data preparation, feature engineering, variable exploration, and visualization using confusion matrices and AUC curves.
This course provides a holistic approach to machine learning, combining theoretical concepts with practical case studies, enabling participants to master the implementation of various algorithms in Python.
Who this course is for:
- Data Enthusiasts and Aspiring Data Scientists: Individuals looking to delve into practical applications of machine learning with a focus on case studies and hands-on projects.
- Python Programmers and Developers: Professionals proficient in Python who want to expand their skill set to include machine learning and gain practical experience in implementing algorithms.
- Finance Professionals: Those in the finance sector interested in leveraging machine learning for data analysis
- risk assessment
- and predictive modeling.
- Business Analysts: Professionals seeking to enhance their analytical capabilities through machine learning techniques for better decision-making and insights.
- Students and Researchers: Individuals pursuing studies or research in data science
- machine learning
- or related fields looking to strengthen their practical skills.
- Anyone Seeking Practical Machine Learning Experience: The course caters to a broad audience eager to gain hands-on experience in solving real-world problems using machine learning tools and methodologies.
🔝
⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯⎯
Infos:
Are you thinking about upgrading your home security systems?
It's a wise investment, especially in today's world. With crime rates on the rise, ensuring the safety of your loved ones and property is paramount. But where do you start? Well, let's break it down.
Firstly, consider consulting with a reputable personal injury lawyer. Accidents happen, and having legal protection in place can provide peace of mind. Whether it's a slip and fall incident or a car accident, having a legal expert on your side can make all the difference.
Once you've addressed your legal concerns, it's time to focus on your financial security. Exploring options like mortgage rates and personal loans can help you achieve your goals. Maybe you're considering a home renovation project or even looking into real estate investment opportunities. Whatever your financial aspirations, having the right information at your fingertips is crucial.
Now, let's talk technology. Cloud computing services are revolutionizing the way businesses operate. Whether you're a small startup or a multinational corporation, leveraging the power of the cloud can streamline your operations and enhance productivity. And don't forget about cybersecurity. With the increasing prevalence of cyber threats, investing in antivirus software is non-negotiable.
Of course, amidst all the hustle and bustle, it's essential to take care of your health. Health supplements can bolster your immune system and keep you feeling your best. And if you're considering cosmetic surgery, be sure to do your research and consult with a reputable provider.
Finally, let's not forget about relaxation and recreation. Planning a luxury vacation or a cruise getaway? Don't overlook the importance of travel insurance. It's a small investment that can save you a lot of hassle in the long run.
In conclusion, whether you're prioritizing your safety, financial security, technological advancement, health, or leisure, there are plenty of options available to you. By making informed decisions and seeking expert advice when needed, you can navigate life's challenges with confidence and ease Continue reading...: Click Here