PPT-Deep Learning – An Introduction

Author : celsa-spraggs | Published Date : 2018-11-07

Aaron Crandall 2015 What is Deep Learning Architectures with more mathematical transformations from source to target Sparse representations Stacking based learning

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Deep Learning – An Introduction: Transcript


Aaron Crandall 2015 What is Deep Learning Architectures with more mathematical transformations from source to target Sparse representations Stacking based learning approaches Mor e focus on handling unlabeled data. Quoc V. Le. Stanford University and Google. Purely supervised. Quoc V. . Le. Almost abandoned between 2000-2006. - . Overfitting. , slow, many local minima, gradient vanishing. In 2006, Hinton, et. al. proposed RBMs to . Information Processing & Artificial Intelligence. New-Generation Models & Methodology for Advancing . AI & SIP. Li Deng . Microsoft Research, Redmond, . USA. Tianjin University, July 4, 2013 (Day 3). Aaron Crandall, 2015. What is Deep Learning?. Architectures with more mathematical . transformations from source to target. Sparse representations. Stacking based learning . approaches. Mor. e focus on handling unlabeled data. Deep Learning. Zhiting. Hu. 2014-4-1. Outline. Motivation: why go deep?. DL since 2006. Some DL Models. Discussion. 2. Outline. Motivation: why go deep?. DL since 2006. Some DL Models. Discussion. 3. DIGITS 1 Introduction to Deep Learning 2 What is DIGITS 3 How to use DIGITS AGENDA Practical DEEP LEARNING Examples Image Classification, Object Detection, Localization, Action Recognition, Scene Un Professor Qiang Yang. Outline. Introduction. Supervised Learning. Convolutional Neural Network. Sequence Modelling: RNN and its extensions. Unsupervised Learning. Autoencoder. Stacked . Denoising. . Continuous. Scoring in Practical Applications. Tuesday 6/28/2016. By Greg Makowski. Greg@Ligadata.com. www.Linkedin.com/in/GregMakowski. Community @. . http. ://. Kamanja.org. . . Try out. Future . The Future of Real-Time Rendering?. 1. Deep Learning is Changing the Way We Do Graphics. [Chaitanya17]. [Dahm17]. [Laine17]. [Holden17]. [Karras17]. [Nalbach17]. Video. “. Audio-Driven Facial Animation by Joint End-to-End Learning of Pose and Emotion”. Deep . Learning. James K . Baker, Bhiksha Raj. , Rita Singh. Opportunities in Machine Learning. Great . advances are being made in machine learning. Artificial Intelligence. Machine. Learning. After decades of intermittent progress, some applications are beginning to demonstrate human-level performance!. Mohammadreza. . Ebrahimi. , . Hsinchun. Chen. October 29, 2018. 1. Acknowledgment. Some images and materials are from:. Dong . Wang and Thomas Fang . Zheng, . Tsinghua . University. Chuanqi Tan, . Fuchun. Garima Lalwani Karan Ganju Unnat Jain. Today’s takeaways. Bonus RL recap. Functional Approximation. Deep Q Network. Double Deep Q Network. Dueling Networks. Recurrent DQN. Solving “Doom”. Assistant Professor. Computer Science and Engineering Department. Indian Institute of Technology Kharagpur. http://cse.iitkgp.ac.in/~adas/. Biological Neural Network. Image courtesy: F. . A. . Makinde. Ryota Tomioka (. ryoto@microsoft.com. ). MSR Summer School. 2 July 2018. Azure . iPython. Notebook. https://notebooks.azure.com/ryotat/libraries/DLTutorial. Agenda. This lecture covers. Introduction to machine learning. January 18, 2021. Mohammad Hammoud. Carnegie Mellon University in Qatar. Outline. Introduction. What is AI?. Administrivia. AI Applications in Medicine. On the Verge of Major Breakthroughs. Artificial Intelligence (AI) has been moving extremely quickly in the last few years, demonstrating a potential to revolutionize every aspect of our lives.

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