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Neural Signal Processing & Applied AI
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Free Download Neural Signal Processing & Applied AI
Published 1/2026
Created by Data Science Academy
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Beginner | Genre: eLearning | Language: English | Duration: 25 Lectures ( 4h 37m ) | Size: 3.88 GB

Learn to analyze neural signals using machine learning and deep learning techniques
What you'll learn
Understand and apply neural signal processing fundamentals, including time-domain, frequency-domain, and time-frequency analysis of EEG/EMG data.
Design robust preprocessing pipelines to clean neural signals using filtering, artifact removal, and covariance-based methods with professional tools like MNE-P
Extract advanced features from neural data, including CSP, bandpower, time-frequency features, and Riemannian geometry-based representations.
Build and evaluate machine learning models (LDA, SVM, ensemble methods) for neural signal classification and performance analysis.
Build complete end-to-end BCI systems, transforming neural signals into real-time commands for applications such as games, robotics, or interactive interfaces.
Requirements
Basic Python knowledge
Introductory understanding of machine learning (helpful, not mandatory)
Basic signal processing awareness (optional)
A computer capable of running Python
Curiosity and willingness to experiment
Description
"This course contains the use of artificial intelligence"Neural Signal Processing with AI is a comprehensive, hands-on course designed to help learners master the analysis of neural and brain signals using modern Artificial Intelligence (AI) and Machine Learning (ML) techniques. This course bridges the gap between traditional signal processing and data-driven AI models, making it ideal for students, researchers, and professionals interested in EEG analysis, brain-computer interfaces (BCI), healthcare analytics, and applied AI.You will begin with a strong foundation in neural signal fundamentals, including how neural data is generated, recorded, and interpreted. Early sections focus on signal acquisition, sampling, noise characteristics, and ethical considerations. Each section includes a hands-on lab, where you will work with real or simulated neural datasets to reinforce theoretical concepts.The course then dives into core signal processing techniques, such as filtering, artifact removal, time-domain and frequency-domain analysis, and feature extraction. Through guided labs, you will implement these methods using Python-based tools and libraries, preparing neural data for intelligent modeling.Next, you will explore machine learning models for neural data, including classical classifiers, deep neural networks, CNNs, RNNs, and transformer-based architectures. Dedicated labs in each section will walk you through model training, evaluation, and performance optimization on neural signals.Advanced sections cover calibration-free learning, transfer learning, subject-independent models, and real-time neural processing pipelines. You will build end-to-end systems that transform raw neural signals into actionable outputs, with hands-on labs integrating AI models into real-time or simulated applications.Finally, the course addresses ethics, reliability, experimental design, and research-level best practices, ensuring you can build robust, reproducible, and responsible AI systems for neural data.By the end of this course, you will have practical experience across every stage of the neural AI pipeline, supported by hands-on labs in every section, and be fully equipped to apply AI to real-world neural signal challenges.
Who this course is for
Students and graduates in computer science, data science, biomedical engineering, or related fields who want practical experience working with EEG/EMG data and AI models.
Machine learning and AI practitioners looking to expand their skills into brain signals, biosignals, and brain-computer interfaces (BCIs) using modern tools like MNE and BrainFlow.
Researchers and aspiring researchers in neuroscience, cognitive science, or biomedical signal processing who want a structured, implementation-focused approach to advanced analysis and modeling techniques.
Engineers and developers interested in building real-time BCI systems, interactive applications, or intelligent human-machine interfaces.
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