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    Brain Computer Interfacing Via Spiking Neuromorphic Networks

    Posted By: ELK1nG
    Brain Computer Interfacing Via Spiking Neuromorphic Networks

    Brain Computer Interfacing Via Spiking Neuromorphic Networks
    Last updated 7/2022
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 3.35 GB | Duration: 3h 48m

    Spiking Neuromorphic Computing via PyCARL & Wyrm (Python): Understanding Brain Computer Interfacing (BCI) & Tiny ML

    What you'll learn
    Brain Computer Interfacing using spiking neural networks
    Quantum spiking neural networks for re-wiring human brain
    Drills/ Exercises on Brain Computer Interfacing using EEG Signals
    How Brain Computer Interfacing is used for neuro-rehabilitation
    Recurrent Neural Networks & LSTMs for Brain Computer Interfacing
    Brain Computer Interfacing for Medical Imaging (Healthcare IT)
    Brain Computer Interfacing- Human Brain on a Chip
    Neuromorphic computing and Spiking Networks
    Requirements
    No requirements
    Description
    Despite being quite effective in a variety of tasks across industries, deep learning is constantly evolving, proposing new neural network (NN) architectures such as the Spiking Neural Network (SNN). This exciting course introduces you to the next generation of Machine Learning.  You would be able to learn about the fundamentals of Spiking Neural Networks and Brain-Computer Interfacing (BCI). This course has the rigour enough to enable you not only to understand BCI but its implementation in spiking neural networks and to apply these concepts to Brain Healthcare (IT) even on edge machines using Tiny ML.TinyML is a field of study in Machine Learning and Embedded Systems that explores the types of models you can run on small, low-powered devices like microcontrollers. It enables low-latency, low power and low bandwidth model inference at edge devices. While a standard consumer CPUs consume between 65 watts and 85 watts and standard consumer GPU consumes anywhere between 200 watts to 500 watts, a typical microcontroller consumes power in the order of milliwatts or microwatts. That is around a thousand times less power consumption.The course contents includes; 1. Introduction to Machine Learning, Deep Learning, and Artificial Intelligence.2. How Quantum Computing is fuelling AI Healthcare Systems including BCIs.  3. Introduction to Recurrent Neural Networks.4. Introduction to LSTMs.5. Introduction to Brain-Computer Interfaces.6. How BCI is used for neuro- rehabilitation.7. Brain-Computer Interfaces for Stress and Mood Regulation.8. Brain-Computer Interfaces for Motor Imagery & EEG Signals. 9. Brain Implants using Brain-Computer Interfacing. 10. BCI for Medical Imaging.11. Introduction to "Brain- on- a Chip.12. Neuromorphic Computing for Brain Computer Interfacing.13. Introduction to Tiny ML.14. Tiny ML for Real Time Applications

    Overview

    Section 1: Introduction to Brain Computer Interfacing (BCI)

    Lecture 1 BCI- An Introduction

    Section 2: Introduction to Deep Learning (AI)

    Lecture 2 Machine Learning & Deep Learning

    Section 3: Introduction to Brain Computer Interfacing

    Lecture 3 Brain Computer Interfacing- An Overview

    Section 4: Introduction to Spiking Neural Networks

    Lecture 4 Spiking Neural Networks for BCI

    Section 5: Fundamentals of Neuromorphic Computing

    Lecture 5 Neuromorphic Computing in BCI

    Section 6: Building an Artificial Brain using SpinNaker

    Lecture 6 BCI- Nueromorphic architectures for BCI

    Section 7: Deep Learning for Brain EEG Signals- BCI using PyWavelets

    Lecture 7 PyWavelets for BCI

    Section 8: Introduction to TinyML- Part I

    Lecture 8 TinyMl for BCI

    Section 9: Introduction to Tiny ML- Part II

    Lecture 9 TinyML

    Section 10: DeepC for Brain EEG Signals

    Lecture 10 DeepC for Brain Computer Interfacing

    Section 11: Neuromorphic Computing Mimics Human Brain

    Lecture 11 Neuromorphic Computing & BCIs

    Section 12: Neuromorphic Computing in Healthcare

    Lecture 12 Introduction to Quantum Neural Networks

    Section 13: How Human Brain is Interfaced with a Computer?

    Lecture 13 BCI Implementation

    Section 14: BrainNet- Brain to Brain Interfacing

    Lecture 14 BrainNet- Human Brain to Human Brain Interfacing

    Section 15: Introduction to RNNs

    Lecture 15 LSTMs- An Introduction

    Section 16: Deep Neural Optimizers for BCI

    Lecture 16 Deep Neural Optimizers

    Section 17: Brain Computer Interfaces & Neuromorphic Computing

    Lecture 17 BCI- Neuromorphic Computing

    Section 18: BCI- Spiking Neural Networks

    Lecture 18 BCI- Spiking Neural Networks

    Section 19: LOIHI2 & LAVA for Brain Computer Interfacing

    Lecture 19 LOIHI 2 for BCI

    Section 20: PyCARL & WYRM- Interfacing BCI with Python

    Lecture 20 PyCarl- Python Framework for BCI

    Section 21: BCI Augmentation using Spiking Neural Networks

    Lecture 21 BCI Augmentation

    Section 22: BCI- Software Platforms

    Lecture 22 BCI Softwares

    Lecture 23 BCIPy

    Section 23: Design & Implementation of BCI

    Lecture 24 Implementation of BCI

    Section 24: Implementation of EEG using BCI

    Lecture 25 EEG Motor Movements

    Section 25: BCI STACK Development Framework

    Lecture 26 BCI Stack

    Section 26: Deep Neural Networks for Implementing BCI

    Lecture 27 BCI implementation using Deep Neural Networks

    Section 27: Emotional Intelligence: Temperament Analysis for Regulation Emotions

    Lecture 28 Introduction

    Section 28: BCI for Stress & Anxiety Management

    Lecture 29 Things to do for an optimistic and positive outlook

    Lecture 30 Regulating Emotions Through Practice Exercises

    Lecture 31 How to avoid biases and Recurrent loops of Negative Thinking

    Section 29: Self Management Activity: Practical Exercise

    Lecture 32 How to improve Self Awareness?

    Lecture 33 How to avoid fears and develop positive thinking

    Lecture 34 Self Management Drills

    Section 30: Tapping the Potential of Positive Thinking

    Lecture 35 Accepting your Emotions

    Section 31: Happiness for Everyone through Personality Traits

    Lecture 36 Role of self determination in realizing positive thinking

    Lecture 37 Happiness for Everyone through Personality Traits

    Lecture 38 Unveiling the potential of positive thinking

    Section 32: Quantum DeepMind for BCI

    Lecture 39 Quantum DeepMind BCI

    Beginners curious to learn about Brain Computer Interfacing using deep neural networks,Undergraduate & Graduate students aspire to kick start Human inspired Artificial Intelligence