Signal Processing with Python by Irshad Ahmad Ansari (.PDF)
File Size: 59.5 MB
Signal Processing with Python: A Practical Approach by Irshad Ahmad Ansari, Varun Bajaj
Requirements: .PDF reader, 59.5 MB
Overview: This book explores the domain of signal processing using Python, with the help of working examples and accompanying code. The book introduces the concepts of Python programming via signal processing with numerous hands-on examples and code snippets. The book will enable readers to appreciate the power of Python in this field and write their code to implement complex signal processing algorithms such as signal compression, cleaning, segmentation, decomposition, and feature extraction and be able to incorporate machine learning models using relevant Python libraries. This book aims to bring together professionals from academia and industry to ignite new developments and techniques in the domain of signal processing with Python. Python, being an open source and popular language, has attracted a lot of application development. Signal processing has also seen tremendous growth in the recent past. The majority of signal processing work revolves around simulation and testing before the final hardware implementation. Many times, code-based implementation itself is sufficient. These implementations make use of a cloud processing unit for a faster and more efficient user experience. Python has been developed as a tool for simulation, visualization, understanding, and manipulation of signals. We will use Python libraries MNE, NumPy, Matplotlib, and Pandas to preprocess and make data usable for further Machine Learning algorithms and models.
Genre: Non-Fiction > Tech & Devices
Free Download links:
https://tbit.to/dss0l0fug2is.html
https://katfile.com/gl9lkx6kla20/Signal_Processing_with_Python.rar.html