Machine Learning with Python: Bootcamp + Real-World Projects
What you'll learn
- Master Core Concepts: Gain a solid understanding of fundamental machine learning principles, covering key concepts, methodologies, and the machine learning
- Python Proficiency: Develop advanced Python programming skills, honing your ability to implement machine learning algorithms
- Leverage Python libraries like NumPy, Pandas, and Matplotlib.
- Practical Data Handling: Learn practical data manipulation techniques using Pandas, including working with DataFrames, slicing, indexing, and exploring
- Data Visualization Mastery: Acquire skills in data visualization with Matplotlib, enabling you to convey insights effectively
- Machine Learning Case Studies: Engage in hands-on case studies, including building a Covid19 Mask Detector and predicting diabetes in Pima Indians.
- Apply theoretical knowledge to real-world scenarios, honing practical problem-solving skills.
- Deep Learning with TensorFlow: Delve into the realm of deep learning using TensorFlow, exploring model building, training, and deploying a Covid19 Mask Detector
- Acquire proficiency in creating and optimizing neural networks.
- Advanced Model Evaluation: Understand advanced model evaluation techniques, including ROC analysis, Sklearn pipeline, and evaluation metrics
- Deployment on AWS: Learn to deploy machine learning models on AWS, gaining practical experience in taking a project from development to deployment
- Stay Current with 2024 Trends: Stay ahead of industry trends with insights into the latest advancements and applications in machine learning
- Problem-Solving Skills: Develop critical problem-solving skills through real-world case studies, enabling you to approach diverse machine learning challenges
- This course offers a comprehensive blend of theoretical knowledge and hands-on experience, empowering students to become Python prodigies
Requirements
- No prior knowledge of machine learning required. Basic knowledge of Python
Description
Welcome to the transformative journey of "Machine Learning with Python: Bootcamp + Real-World Projects." In this cutting-edge course, we dive into the dynamic landscape of machine learning, leveraging the power of Python to unravel the intricacies of data-driven intelligence. Whether you are a novice eager to explore the realms of machine learning or a seasoned professional looking to stay ahead in the rapidly evolving field, this course is tailored to cater to diverse learning goals.
Key Highlights:
Section 1: Machine Learning With Python
In the introductory section, participants are introduced to the course, setting the stage for their journey into machine learning with Python in 2024. The initial lecture provides a comprehensive overview of the course objectives and content, allowing participants to understand what to expect. Following this, the subsequent lectures delve into the core concepts of machine learning, providing a foundational understanding. The inclusion of preview-enabled lectures adds an element of anticipation, offering participants a sneak peek into upcoming topics, keeping them engaged and motivated.
Section 2: Machine Learning with Python Case Study - Covid19 Mask Detector
This hands-on section immerses participants in a practical case study focused on building a Covid19 Mask Detector using machine learning with Python. Starting with the preparation of the system and working with image data, participants gradually progress through various stages, including deep learning with TensorFlow. The case study goes beyond theoretical discussions, guiding participants in creating a basic front-end design for the application, implementing a file upload interface, and deploying the solution on AWS. This section not only reinforces theoretical knowledge but also equips participants with practical skills applicable to real-world scenarios.
Section 3: Machine Learning Python Case Study - Diabetes Prediction
The third section centers around a case study targeting the prediction of diabetes in Pima Indians through machine learning with Python. Participants are guided through the step-by-step process, beginning with the installation of necessary tools and libraries like Anaconda. The case study emphasizes key steps in machine learning, such as data preprocessing, logistic regression, and model evaluation using ROC analysis. By focusing on a specific problem and dataset, participants gain valuable experience in applying machine learning techniques to address real-world challenges.
Conclusion:
The course concludes with a summary that consolidates the key learnings from each section. Participants reflect on the theoretical foundations acquired and the practical skills developed throughout the course. This concluding section serves to reinforce the importance of combining theoretical knowledge with hands-on experience, ensuring participants leave the course with a well-rounded understanding of machine learning with Python.
Who this course is for:
- Aspiring Data Scientists: Individuals looking to kickstart or advance their career in data science and machine learning, gaining practical skills in Python for real-world applications.
- Python Developers: Programmers and developers seeking to expand their proficiency in Python and delve into the intricacies of machine learning for enhanced data analysis.
- Business Analysts: Professionals in business analytics aiming to augment their analytical toolkit with advanced machine learning techniques, fostering better decision-making.
- Tech Enthusiasts: Individuals passionate about technology and keen on staying updated with the latest trends, especially in the dynamic field of machine learning.
- Students and Researchers: Academic individuals interested in exploring the practical aspects of machine learning, enabling them to apply theoretical knowledge to real-world scenarios.
- Professionals Seeking Advancement: Working professionals in diverse industries aspiring to upskill and stay competitive by integrating machine learning capabilities into their skill set.
- Self-Learners: Enthusiastic learners who prefer self-paced education and are eager to master Python for machine learning, regardless of their background or current skill level.
- This course accommodates a diverse audience, providing a structured and engaging learning experience suitable for varying levels of expertise, from beginners to intermediate learners.
Instructor
EDUCBA is a leading global provider of skill based education addressing the needs of 1,000,000+ members across 70+ Countries. Our unique step-by-step, online learning model along with amazing 5000+ courses and 500+ Learning Paths prepared by top-notch professionals from the Industry help participants achieve their goals successfully. All our training programs are Job oriented skill based programs demanded by the Industry. At EDUCBA, it is a matter of pride for us to make job oriented hands-on courses available to anyone, any time and anywhere. Therefore we ensure that you can enroll 24 hours a day, seven days a week, 365 days a year. Learn at a time and place, and pace that is of your choice. Plan your study to suit your convenience and schedule.