Develop essential mathematics skills with expert instruction and practical examples.
Are you ready to harness the power of Python for scientific computing and deep learning. This course will take you from Python fundamentals all the way to building advanced deep learning systems, with practical, real-world projects to reinforce your learning. We'll start with core Python programming - mastering statements, built-in types, control flow, and mathematical operations.
You'll gain a solid foundation in scientific libraries like NumPy and SciPy, essential for high-performance computing and data manipulation. Next, you'll dive into Object-Oriented Programming (OOP) to structure your code like a professional. From there, we move into the theory and practice of deep learning - covering neural networks, convolutional neural networks (CNNs), feature learning techniques, and more.
This course is project-driven, meaning you'll immediately apply what you learn through 4 real-world applications:3D Modeling & Heat Transfer - Simulate radiative flux between 3D objects. Hardware Simulation Framework - Build a Python-based simulator for a portable ultrasound device. Real Estate Web Scraper - Automate property data collection using Python.
Titanic Survivor Prediction - Apply deep learning to a classic Kaggle dataset. By the end of this course, you will:Write clean, efficient Python code for scientific and AI applications. Manipulate data and perform numerical computations using NumPy and SciPy.
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