What you'll learn:
- solve over 200 exercises in Python & NumPy
- deal with real programming problems
- work with documentation & Stack Overflow
- guaranteed instructor support
The "30 Days of Python Code: NumPy Challenge" course is a unique, hands-on program designed to elevate your Python programming skills by honing in on one of Python's most powerful libraries: NumPy. This course is ideal for those already comfortable with Python basics and are looking to deepen their knowledge of numerical computing within the Python ecosystem.
Over the course of 30 days, you'll undertake a range of coding exercises designed to familiarize you with the power and flexibility of the NumPy library. The course covers NumPy's core features such as arrays, array indexing, datatypes, array math, broadcasting, and more. Each day presents a new challenge, pushing you to apply and reinforce what you've learned, ensuring that your understanding of NumPy is comprehensive and well-rounded.
The course is highly interactive, allowing you to learn by doing, which is widely recognized as one of the most effective ways to learn programming. This approach fosters practical problem-solving skills and creativity, as you are tasked with finding solutions to real-world programming problems.
In addition, the course provides detailed solutions and explanations for each coding exercise, enabling you to compare your solutions with best practices. This way, you not only learn about the correct approach, but also gain insight into the reasoning behind it, improving your coding and debugging skills.
This "30 Days of Python Code: NumPy Challenge" course is perfect for anyone aiming to use Python for data analysis, data science, or machine learning, and wants to leverage the power of NumPy to work with numerical data efficiently.
NumPy - Unleash the Power of Numerical Python!
NumPy, short for Numerical Python, is a fundamental library for scientific computing in Python. It provides support for arrays, matrices, and a host of mathematical functions to operate on these data structures. This course is structured into various sections, each targeting a specific feature of the NumPy library, including array creation, indexing, slicing, and manipulation, along with mathematical and statistical functions.
Topics you will find in the basic exercises:
arrays creation
shapes, reshaping arrays
dimensions
size
indexing
slicing
arrays manipulation
math, statistic & calculations
dates
random
comparing arrays
broadcasting
saving, loading & exporting
appending, concatenating & stacking arrays
sorting, searching & counting
filtering
boolean mask
image as an array
dealing with missing values
iterating over arrays
linear algebra
matrix multiplication
polynomials
solving systems of equations
arrays with characters
functional programming & universal functions
dummy encoding
and other