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    Deep Learning With Caffe 2 - Hands On!

    Posted By: ELK1nG
    Deep Learning With Caffe 2 - Hands On!

    Deep Learning With Caffe 2 - Hands On!
    Last updated 2/2019
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 1.64 GB | Duration: 3h 54m

    Build, train & deploy models using the speed & efficiency of Caffe 2 & get future-ready in the world of deep learning

    What you'll learn

    Learn the Caffe 2 architecture and how to use the platform efficiently

    Work with brew, an API for creating models in Caffe2

    Address the supervised learning problem of image classification using Caffe2

    How to use RNNs in Caffe2 to write poems like Shakespeare

    Understand the Deep Q Network and how to use it in Caffe2

    Implement Back-Propagation and Gradient Descent

    Explore different layers of CNN and the problem of Image Classification

    Understand the importance of weight initialization and optimization in deep learning

    Run your models on mobile devices

    Requirements

    No prior knowledge of Caffe 2 is required however some knowledge of linear algebra and machine learning will be beneficial.

    Description

    Caffe 2 is an open-sourced Deep Learning framework, refactored to provide further flexibility in computation. It is a light-weighted and modular framework, and is being optimized for cloud and mobile applications. It boosts Deep Learning on mobile and low-power devices by building, training, and evaluating the models and enables programming for Android and iOS devices, and Raspberry Pi boards.If you want to develop your own customised neural networks and deep learning models which can also be deployed efficiently, then take up this course.This course teaches you to create, train, and deploy your neural networks and deep learning models using Caffe 2. You will begin with an introduction to Caffe 2 and learn the basic concepts of Caffe 2 such as blobs, workspaces, operators, and nets. You will then build neural networks and develop an understanding of convolutional neural networks, RNNs, Adam, Dropout, BatchNorm, and more. You will also learn how train and manipulate deep neural networks effectively. Finally, you will learn how to deploy your models on mobile devices.Contents and OverviewThis training program includes 2 complete courses, carefully chosen to give you the most comprehensive training possible.The first course, Hands-On Deep Learning with Caffe2, starts off with the basics of Caffe2 such as blobs, workspaces, operators, and nets. You will then learn how to build a model using Caffe 2's new API brew. You will also learn how to create Convolutional Neural Networks (CNNs) that can identify not only handwriting but also fashion items from an image. Next, you will work on transferring learning to allow you to work with CNN's for image recognition by fine-tuning models that are already pre-trained on a large-scale dataset. Finally, you will learn how to deploy your models on any platform.In the second course, Introduction to Deep Learning with Caffe2, you will learn the foundations of deep learning, understand how to build neural networks and develop an understanding of convolutional networks, RNNs, Adam, Dropout, BatchNorm and more. You will work on various projects throughout this MOOC with a focus on how to train and manipulate a deep neural network effectively.By the end of this course, you will be able to effectively create and train deep learning models with Caffe2, providing you with high-performance and first-class support for large-scale distributed training, mobile deployment, new hardware support, and flexibility.Meet Your Expert(s):We have the best work of the following esteemed author(s) to ensure that your learning journey is smooth:Shuai Zheng, also known as Kyle, did his Ph.D. degree in Machine Learning and Computer Vision at the University of Oxford. He has published in top-tier machine learning and computer vision conferences such as CVPR, ECCV, and ICCV. His research interests are in deep learning and its applications in computer vision such as semantic segmentation. He is currently a research scientist at eBay Inc, where he works on both fundamental and practical problems in Augmented Reality, Computer Vision, and Deep Learning.Abhishek Kumar Annamraju, is the CTO and co-founder at Tessellate Imaging. His research areas include computer vision, machine learning, NLP and photogrammetry. As a part of his undergraduate thesis and then continued employment at Tata Elxsi, India, he built and later lead the machine learning and sensor analytics team. He has research papers on cascade classifiers and shape based object analysis, and a research on traffic sign classifier with accuracies reaching upto 99% as per GTSRB stats is one of the state of art solutions available. He participated in the Google Summer of Code (GSoC), 2016, program, working with Open-Detection, to develop a deep learning oriented vision based classifier and an end-to-end GUI based classifier training module. His past projects include image based monitoring solution to curb illegal sand mining, on-road real-time vehicle detection, 3D facial model generation and classification, deep learning based face recognition, and camera auto-calibration for fisheye images (Tesseract Imaging, India). He was also a part of Mahindra rise challenge, 2014, to develop real-time stationary-cam object detection modules. His research work includes projects involving forensic sketch to image matching and biomedical image processing.Akash Deep Singh, is the COO and co-founder at Tessellate Imaging and is passionate about combining Artificial Intelligence and Machine Vision. Prior to Tessellate Imaging, he worked on building solutions ranging from novel systems to detect and classify glioma cancer to a real-time stat generation camera solution for basketball players. He was also part of the team which built India’s first panoramic camera where he acted as the Machine Learning lead. He has a vast experience in building real-time object detection and tracking systems. His past projects include autopilot firmware for Search and Rescue drones, building Disguised and Imposter face recognition software, an all-terrain navigation vehicle and sketch to face image matching for forensics. A national cyber olympiad gold medalist, he loves reading books.

    Overview

    Section 1: Hands-On Deep Learning with Caffe2

    Lecture 1 The Course Overview

    Lecture 2 Why Deep Learning?

    Lecture 3 Machine Learning Categories

    Lecture 4 Why Caffe2?

    Lecture 5 Install and Set Up Caffe2

    Lecture 6 Build a Caffe2 Docker

    Lecture 7 Definition of a Computational Graph Through Examples

    Lecture 8 Introduce Workspace, Operators, and Nets

    Lecture 9 Working with Computational Graphs

    Lecture 10 Housing Price Prediction

    Lecture 11 Representing a Linear Regression Model in a Computational Graph

    Lecture 12 Training Procedure

    Lecture 13 Training a Linear Regression Model

    Lecture 14 Fashion Product Recognition Problem

    Lecture 15 What Is Supervised Learning?

    Lecture 16 What Is Transfer Learning?

    Lecture 17 Model Zoo in Caffe2

    Lecture 18 Fine-Tune a Model for Recognizing Fashion Products

    Lecture 19 Chatbot Customer Service

    Lecture 20 What Is Sequence-to-Sequence Learning?

    Lecture 21 What Are RNNs and LSTMs?

    Lecture 22 Training an RNN-Based Model to Write like Shakespeare

    Lecture 23 Why Deep Reinforcement Learning?

    Lecture 24 What Is Deep Reinforcement Learning?

    Lecture 25 What Is Deep Q-Network?

    Lecture 26 Training a Deep Q- Network for Solving the Cart-Pole Problem

    Lecture 27 AI on Mobile Devices Using Face ID

    Lecture 28 Challenges in Running AI Models on Mobile Devices

    Lecture 29 SequeezeNet

    Lecture 30 Deploy SequeezeNet on a Mobile Device

    Section 2: Introduction to Deep Learning with Caffe2

    Lecture 31 The Course Overview

    Lecture 32 Set Up Caffe2 on Linux

    Lecture 33 Understanding the Caffe2 Architecture

    Lecture 34 Transitioning from Machine Learning to Deep Learning

    Lecture 35 Running an Image Classifier Using Caffe2

    Lecture 36 Learn about Matrices Using Python – NumPy

    Lecture 37 Understanding and Implementing Logistic Regression and Neural Networks

    Lecture 38 Understanding and Implementing Deep Neural Networks

    Lecture 39 Caffe2 Introduction

    Lecture 40 Caffe2 Python Wrapper

    Lecture 41 Mathematical Operators in Caffe2

    Lecture 42 Network Creators and Assisters in Caffe2 – Part 1

    Lecture 43 Network Creators and Assisters in Caffe2 – Part 2

    Lecture 44 Network Creators and Assisters in Caffe2 – Part 3

    Lecture 45 How Machines Learn to See!

    Lecture 46 Introduction to Convolutional Neural Networks

    Lecture 47 Implement a Convolution Layer Using Caffe2

    Lecture 48 Pooling Layer and Dropout in Caffe2

    Lecture 49 Role of Activation Functions in Solving Non-Linear Optimization

    Lecture 50 Machine Learning Strategy

    Lecture 51 How to Perform Data Selection, Preparation, and Processing

    Lecture 52 Regularization of Neural Networks

    Lecture 53 Optimizing Neural Networks

    Lecture 54 Optimization Algorithms

    Lecture 55 Sequence Learning

    Lecture 56 Introduction to Recurrent Neural Networks

    Lecture 57 LSTMs – A Special Case of RNNs

    Lecture 58 Learning about Word Embeddings

    Lecture 59 Introduction to Augmented Recurrent Neural Networks

    This course is for data scientists and machine learning enthusiasts who are keen to learn Caffe 2 framework for training deep learning models, building real-world applications, and developing production-grade services and modules to bring automation to real-world scenarios.