Astronomy Research Data Analysis With Python
Published 12/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.49 GB | Duration: 7h 4m
Published 12/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.49 GB | Duration: 7h 4m
Starting from Python, learn data analysis, data visualizations and image process (beginner to advanced) techniques.
What you'll learn
Python Programming Basics upto Conditionals and Loops
Data Visualization for Tabular Data
Astronomy Image processing and visualization
Hands-on learning approach with practical examples and real-world datasets.
Requirements
No Programming Knowledge or Experience Required
No Astronomy Experience or Knowledge Required
Description
Course Description:Embark on an enlightening journey through the cosmos with our comprehensive Udemy course, "Astronomy Research Data Analysis with Python." This course is designed for astronomy enthusiasts, students, and researchers keen on mastering Python for analyzing astronomical data. With a focus on practical skills and real-world applications, this course simplifies complex concepts, making it accessible to learners with basic programming knowledge.What You'll Learn:Module 1: Starting with Python Dive into Python programming, beginning with the basics. Understand Google Colab, variables, data types, and control flow. Learn about f-strings, user inputs, and functions. This foundation is crucial for handling astronomical data efficiently.Module 2: Tabular Data Visualization Explore the world of tabular data with Pandas, Matplotlib, and Seaborn. Learn how to import libraries, analyze star color data, detect outliers, and create line plots and HR diagrams. You'll gain the ability to visualize and understand complex astronomical datasets.Module 3: Image Data Visualization Uncover the secrets of astronomical image data. Learn about FITS files, and use Python to visualize galaxies like M31. Understand image processing techniques like MinMax and ZScaleInterval scaling, enhancing your ability to interpret celestial images.Module 4: Image Processing | Apply Filters and Extracting Features Delve deeper into image processing. Learn about convolution operations, Gaussian kernels, and feature enhancement. Discover techniques for identifying and extracting features from astronomical images, a skill vital for research and analysis.Feedback, Conclusion, Further Steps Wrap up your learning experience with feedback sessions, a course conclusion, and guidance for future learning paths in astronomy and data analysis.Who This Course is For:Astronomy students and hobbyists looking to apply Python in their studies or projects.Researchers and professionals in astronomy or related fields seeking to enhance their data analysis skills.Programmers interested in expanding their skills into the realm of astronomy and scientific data analysis.Course Features:Hands-on learning approach with practical examples and real-world datasets.Step-by-step guidance, ensuring a solid grasp of each concept.Access to a community of like-minded learners and professionals.Lifetime access to course materials, including updates.Enroll Now:Join us on this exciting journey to unravel the mysteries of the universe with Python. Enroll in "Astronomy Research Data Analysis with Python" today and take the first step towards mastering the art of astronomical data analysis!
Overview
Section 1: Starting with Python
Lecture 1 Introduction to the Program
Lecture 2 Google Colab Introduction
Lecture 3 Comments in Python
Lecture 4 Variables and Constants
Lecture 5 Basic Data Types
Lecture 6 f-Strings
Lecture 7 User Inputs
Lecture 8 Data Type Conversion
Lecture 9 Control Flow
Lecture 10 Functions in Python
Section 2: Tabular Data Visualization using Pandas, Matplotlib and Seaborn
Lecture 11 Introduction about the module 2
Lecture 12 Introduction to the Tabular Data
Lecture 13 Importing the Libraries
Lecture 14 Peeking into the Tabular Data
Lecture 15 Creation of Directory to save Visuals
Lecture 16 First Visualization from Tabular Data
Lecture 17 Customizing and Saving the Visualizations
Lecture 18 Visualizing Star Color Data
Lecture 19 Visualizing the Outliers in the Data
Lecture 20 Line Plots to Visualize the trend in Data
Lecture 21 Creating a Pairplot
Lecture 22 Create HR Diagram
Lecture 23 Downloading the Visualizations
Section 3: Image Data Visualization
Lecture 24 Introducing the Module
Lecture 25 What is an Image?
Lecture 26 Understanding FITS file
Lecture 27 Installing and Importing Libraries
Lecture 28 SkyView Form
Lecture 29 Fetch and Visualize M31 Galaxy in Python the image data
Lecture 30 Fetch and visualize another Image of M31
Lecture 31 Create your own FITS file
Lecture 32 Visualize Distribution of Pixels of M31
Lecture 33 Apply MinMax Pixel Scaling on Pixels of M31
Lecture 34 Different Types of Pixel Scaling
Lecture 35 ZScaleInterval from Astropy
Section 4: Image Processing | Apply Filters and Extracting Features
Lecture 36 Introducing the Module
Lecture 37 Understanding Convolution operation
Lecture 38 Gaussian Kernel for Denoising
Lecture 39 Enhancing the Features in the Image
Lecture 40 Corner Foerstner
Lecture 41 Multiscale Basic (Local) Features
Section 5: Course Conclusion
Lecture 42 Feedback, Conclusion, Further Steps
Astronomy students and hobbyists looking to apply Python in their studies or projects.,Researchers and professionals in astronomy or related fields seeking to enhance their data analysis skills.,Programmers interested in expanding their skills into the realm of astronomy and scientific data analysis.