Sparsity Prior in Efficient Deep Learning Based Solvers and Models

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ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (135 download)

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Book Synopsis Sparsity Prior in Efficient Deep Learning Based Solvers and Models by : Xiaohan Chen

Download or read book Sparsity Prior in Efficient Deep Learning Based Solvers and Models written by Xiaohan Chen and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Deep learning has been empirically successful in recent years thanks to the extremely over-parameterized deep models and the data-driven learning with enormous amounts of data. However, deep learning models are especially limited in terms of efficiency, which has two-fold meanings. Firstly, many deep models are designed in a black-box manner, which means these black-box models are unaware of the prior knowledge about the structure of the problems of interest and hence cannot efficiently utilize it. Such unawareness can cause redundancy in parameterization and inferior performance compared to more dedicated methods. Secondly, the extreme over-parameterization itself is inefficient in terms of model storage, memory requirements and computational complexity. This strictly constrains the realistic applications of deep learning on mobile devices with budget resources. Moreover, the financial and environmental costs of training such enormous deep models are unreasonably high, which is exactly the opposite of the call of green AI. In this work, we strive to address the inefficiency of deep models by introducing sparsity as an important prior knowledge to deep learning. Our efforts will be in three sub-directions. In the first direction, we aim at accelerating the solving process for a specific type of optimization problems with sparsity constraints. Instead of designing black-box deep learning models, we derive new parameterizations by absorbing insights from the sparse optimization field, which result in compact deep-learning-based solvers with significantly reduced training costs but superior empirical performance. In the second direction, we introduce sparsity to deep neural networks via weight pruning. Pruning reduces redundancy in over-parameterized deep networks by removing superfluous weights, thus naturally compressing the model storage and computational costs. We aim at pushing pruning to the limit by combining it with other compression techniques for extremely efficient deep models that can be deployed and fine-tuned on edge devices. In the third direction, we investigate what sparsity brings to deep networks. Creating sparsity in deep networks significantly changes the landscape of its loss function and thus behaviors during training. We aim at understanding what these changes are and how we can utilize them to train better sparse neural networks. The main content of this work can be summarized as below. Sparsity Prior in Efficient Deep Solvers. We adopt the algorithm unrolling method to transform classic optimization algorithms into feed-forward deep neural networks that can accelerate convergence by over 100x times. We also provide theoretical guarantees of linear convergence over the newly developed solvers, which is faster than the convergence rate achievable with classic optimization. Meanwhile, the number of parameters to be trained is reduced from millions to tens and even to 3 hyperparameters, decreasing the training time from hours to 6 minutes. Sparsity Prior in Efficient Deep Learning. We investigate compressing deep networks by unifying pruning, quantization and matrix factorization techniques to remove as much redundancy as possible, so that the resulting networks have low inference and/or training costs. The developed methods improve memory/storage efficiency and latency by at least 5x times, varying over data sets and models used. Sparsity Prior in Sparse Neural Networks. We discuss the properties and behaviors of sparse deep networks with the tool of lottery ticket hypothesis (LTH) and dynamic sparse training (DST) and explore their application for efficient training in computer vision, natural language processing and Internet-of-Things (IoT) systems. With our developed sparse neural networks, performance loss is significantly mitigated while by training much fewer parameters, bringing benefits of saving computation costs in general and communication costs specifically for IoT systems

Deep Learning through Sparse and Low-Rank Modeling

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Publisher : Academic Press
ISBN 13 : 0128136596
Total Pages : 296 pages
Book Rating : 4.1/5 (281 download)

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Book Synopsis Deep Learning through Sparse and Low-Rank Modeling by : Zhangyang Wang

Download or read book Deep Learning through Sparse and Low-Rank Modeling written by Zhangyang Wang and published by Academic Press. This book was released on 2019-04-26 with total page 296 pages. Available in PDF, EPUB and Kindle. Book excerpt: Deep Learning through Sparse Representation and Low-Rank Modeling bridges classical sparse and low rank models-those that emphasize problem-specific Interpretability-with recent deep network models that have enabled a larger learning capacity and better utilization of Big Data. It shows how the toolkit of deep learning is closely tied with the sparse/low rank methods and algorithms, providing a rich variety of theoretical and analytic tools to guide the design and interpretation of deep learning models. The development of the theory and models is supported by a wide variety of applications in computer vision, machine learning, signal processing, and data mining. This book will be highly useful for researchers, graduate students and practitioners working in the fields of computer vision, machine learning, signal processing, optimization and statistics. Combines classical sparse and low-rank models and algorithms with the latest advances in deep learning networks Shows how the structure and algorithms of sparse and low-rank methods improves the performance and interpretability of Deep Learning models Provides tactics on how to build and apply customized deep learning models for various applications

Chasing Sparsity

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ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (138 download)

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Book Synopsis Chasing Sparsity by : Tianlong Chen

Download or read book Chasing Sparsity written by Tianlong Chen and published by . This book was released on 2023 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Sparsity is commonly produced from model compression (i.e., pruning), which eliminates unnecessary parameters. Beyond the improved resource efficiency, sparsity also serves as an important tool to model the underlying low dimensionality of neural networks, for understanding their generalization, optimization dynamics, implicit regularization, expressivity, and robustness. Meanwhile, appropriate sparsity-aware priors assist deep neural networks to achieve significantly enhanced performances on algorithms and systems. This dissertation studies it from two intertwined perspectives, (i) efficient and reliable sparsity and (ii) the sparsity for science. In the first part of this thesis (chapters 2 and 3), a few efforts that are devoted to improving resource efficiency and few-shot generalization of machine learning (ML) algorithms/systems, are presented. Particularly, we introduce a kind of high-quality sparsity capable of universally transferring across diverse downstream tasks, which amortizes the massive cost of sparsity finding and provides an efficient alternative to its dense counterpart without performance degradation. Moreover, we show implicit regularization effects of the structured prior encoded in sparse neural networks, as demonstrated by the substantial data-efficiency improvements in image generation. In the second part of this thesis (chapters 4 and 5), we exploit adequate forms of sparsity in two challenging interdisciplinary scientific problems: (1) Protein Engineering. We develop sparsity-regularized deep learning pipelines to tackle the issues of data scarcity and the distribution discrepancy among diverse proteins, to better model protein's thermostability and suggest positive mutations. (2) Quantum Computing. To reduce the negative effects of massive quantum noises from redundant quantum gates and poor circuit designs, we leverage dynamic sparse exploration to produce lightweight and noise-resistant quantum circuits, closing the performance gap between quantum simulation and realistic QC hardware

Toward Efficient Deep Learning with Sparse Neural Networks

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ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (124 download)

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Book Synopsis Toward Efficient Deep Learning with Sparse Neural Networks by : Namhoon Lee

Download or read book Toward Efficient Deep Learning with Sparse Neural Networks written by Namhoon Lee and published by . This book was released on 2020 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Efficient Machine Learning Acceleration at the Edge

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ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (137 download)

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Book Synopsis Efficient Machine Learning Acceleration at the Edge by : Wojciech Romaszkan

Download or read book Efficient Machine Learning Acceleration at the Edge written by Wojciech Romaszkan and published by . This book was released on 2023 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: My thesis is a result of a confluence of several trends that have emerged in recent years. First, the rapid proliferation of deep learning across the application and hardware landscapes is creating an immense demand for computing power. Second, the waning of Moore's Law is paving the way for domain-specific acceleration as a means of delivering performance improvements. Third, deep learning's inherent error tolerance is reviving long-forgotten approximate computing paradigms. Fourth, latency, energy, and privacy considerations are increasingly pushing deep learning towards edge inference, with its stringent deployment constraints. All of the above have created a unique, once-in-a-generation opportunity for accelerated widespread adoption of new classes of hardware and algorithms, provided they can deliver fast, efficient, and accurate deep learning inference within a tight area and energy envelope. One approach towards efficient machine learning acceleration that I have explored attempts to push a neural network model size to its absolute minimum. 3PXNet - Pruned, Permuted, Packed XNOR Networks combines two widely used model compression techniques: binarization and sparsity to deliver usable models with a size down to single kilobytes. It uses an innovative combination of weight permutation and packing to create structured sparsity that can be implemented efficiently in both software and hardware. 3PXNet has been deployed as an open-source library targeting microcontroller-class devices with various software optimizations, further improving runtime and storage requirements. The second line of work I have pursued is the application of stochastic computing (SC). It is an approximate, stream-based computing paradigm enabling extremely area-efficient implementations of basic arithmetic operations such as multiplication and addition. SC has been enjoying a renaissance over the past few years due to its unique synergy with deep learning. On the one hand, SC makes it possible to implement extremely dense multiply-accumulate (MAC) computational fabric well suited towards computing large linear algebra kernels, which are the bread-and-butter of deep neural networks. On the other hand, those neural networks exhibit immense approximation tolerance levels, making SC a viable implementation candidate. However, several issues need to be solved to make the SC acceleration of neural networks feasible. The area efficiency comes at the cost of long stream processing latency. The conversion cost between fixed-point and stochastic representations can cancel out the gains from computation efficiency if not managed correctly. The above issues lead to a question on how to design an accelerator architecture that best takes advantage of SC's benefits and minimizes its shortcomings. To address this, I proposed the ACOUSTIC (Accelerating Convolutional Neural Networks through Or-Unipolar Skipped Stochastic Computing) architecture and its extension - GEO (Generation and Execution Optimized Stochastic Computing Accelerator for Neural Networks). ACOUSTIC is an architecture that tries to maximize SC's compute density to amortize conversion costs and memory accesses, delivering system-level reduction in inference energy and latency. It has taped out and demonstrated in silicon, using a 14nm fabrication process. GEO addresses some of the shortcomings of ACOUSTIC. Through the introduction of near-memory computation fabric, GEO enables a more flexible selection of dataflows. Novel progressive buffering scheme unique to SC lowers the reliance on high memory bandwidth. Overall, my work tries to approach accelerator design from the systems perspective, making it stand apart from most recent SC publications targeting point improvements in the computation itself. As an extension to the above line of work, I have explored the combination of SC and sparsity, to apply it to new classes of applications, and enable further benefits. I have proposed the first SC accelerator that supports weight sparsity - SASCHA (Sparsity-Aware Stochastic Computing Hardware Architecture for Neural Network Acceleration), which can improve performance on pruned neural networks, while maintaining the throughput when processing dense ones. SASCHA solves a series of unique, non-trivial challenges of combining SC with sparsity. On the other hand, I have also designed an architecture for accelerating event-based camera object tracking - SCIMITAR. Event-based cameras are relatively new imaging devices which only transmit information about pixels that have changed in brightness, resulting in very high input sparsity. SCIMITAR combines SC with computing-in-memory (CIM), and, through a series of architectural optimizations, is able to take advantage of this new data format to deliver low-latency object detection for tracking applications.

Machine Learning Algorithms for Signal and Image Processing

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Publisher : John Wiley & Sons
ISBN 13 : 1119861845
Total Pages : 516 pages
Book Rating : 4.1/5 (198 download)

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Book Synopsis Machine Learning Algorithms for Signal and Image Processing by : Deepika Ghai

Download or read book Machine Learning Algorithms for Signal and Image Processing written by Deepika Ghai and published by John Wiley & Sons. This book was released on 2022-11-18 with total page 516 pages. Available in PDF, EPUB and Kindle. Book excerpt: Machine Learning Algorithms for Signal and Image Processing Enables readers to understand the fundamental concepts of machine and deep learning techniques with interactive, real-life applications within signal and image processing Machine Learning Algorithms for Signal and Image Processing aids the reader in designing and developing real-world applications using advances in machine learning to aid and enhance speech signal processing, image processing, computer vision, biomedical signal processing, adaptive filtering, and text processing. It includes signal processing techniques applied for pre-processing, feature extraction, source separation, or data decompositions to achieve machine learning tasks. Written by well-qualified authors and contributed to by a team of experts within the field, the work covers a wide range of important topics, such as: Speech recognition, image reconstruction, object classification and detection, and text processing Healthcare monitoring, biomedical systems, and green energy How various machine and deep learning techniques can improve accuracy, precision rate recall rate, and processing time Real applications and examples, including smart sign language recognition, fake news detection in social media, structural damage prediction, and epileptic seizure detection Professionals within the field of signal and image processing seeking to adapt their work further will find immense value in this easy-to-understand yet extremely comprehensive reference work. It is also a worthy resource for students and researchers in related fields who are looking to thoroughly understand the historical and recent developments that have been made in the field.

Leveraging Structured Sparsity for Data-efficient and Interpretable Machine Learning

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Publisher :
ISBN 13 :
Total Pages : 191 pages
Book Rating : 4.:/5 (112 download)

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Book Synopsis Leveraging Structured Sparsity for Data-efficient and Interpretable Machine Learning by : Urvashi Kishor Oswal

Download or read book Leveraging Structured Sparsity for Data-efficient and Interpretable Machine Learning written by Urvashi Kishor Oswal and published by . This book was released on 2019 with total page 191 pages. Available in PDF, EPUB and Kindle. Book excerpt: The availability of data has soared exponentially in recent years. However, human expertise has remained an expensive and time-limited resource. This thesis focuses on the development of efficient machine learning algorithms and theory that leverage redundancies and structure in the data to optimize the available human and computational resources. These efforts are motivated by applications of machine learning to human-generated data such as brain imaging, biometric analysis and recommendation systems. We exploit various notions of structure including new approaches to traditional sparsity, low-rank matrix approximations using pre-defined groups of column subsets, and an adaptive notion of sparsity based on correlated groups of variables. First, we consider a linear bandits framework motivated by recommendation systems. This involves adaptively collecting data from users in the form of rewards and/or explanations with the aim of retrieving the most relevant items from a collection. These items can be documents (such as research papers or insurance claims) or images (such as retail products from a catalog). Traditional results on sparsity from compressed sensing break down in this framework since the actions taken are not independent. Hence, we explore a new form of the linear bandit problem in which the algorithm receives the usual stochastic rewards as well as stochastic feedback about which features are relevant to the rewards, the latter feedback being the novel aspect. Another notion of simplicity considered is the low-rank approximation of a matrix using a subset of its columns (and rows). Motivated by biometric applications, we generalize this approximation to incorporate known group structure in the column (and row) subsets. Finally, we develop tools for learning and inference in the presence of correlated variables by introducing adaptive notions of sparsity, and apply them to problems in cognitive neuroscience and subspace clustering. The new regularization methods generalize the sparsity inducing regularizer, Lasso, to automatically cluster and average regression coefficients associated with strongly correlated variables. In brain imaging, the cost of acquiring data samples is high. Often the number of data samples is much fewer than the number of variables. To deal with this challenge, we propose methods to reduce complexity of solutions, as well as from a neuroscience point of view, to get a more interpretable model by including correlated variables. In subspace clustering, we build on tools developed for handling correlations to develop a new approach that is significantly more computationally efficient and scalable than existing methods using the key observation that points in the same subspace tend to be more correlated than points in different subspaces.

Bayesian Reinforcement Learning

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ISBN 13 : 9781680830880
Total Pages : 146 pages
Book Rating : 4.8/5 (38 download)

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Book Synopsis Bayesian Reinforcement Learning by : Mohammad Ghavamzadeh

Download or read book Bayesian Reinforcement Learning written by Mohammad Ghavamzadeh and published by . This book was released on 2015-11-18 with total page 146 pages. Available in PDF, EPUB and Kindle. Book excerpt: Bayesian methods for machine learning have been widely investigated, yielding principled methods for incorporating prior information into inference algorithms. This monograph provides the reader with an in-depth review of the role of Bayesian methods for the reinforcement learning (RL) paradigm. The major incentives for incorporating Bayesian reasoning in RL are that it provides an elegant approach to action-selection (exploration/exploitation) as a function of the uncertainty in learning, and it provides a machinery to incorporate prior knowledge into the algorithms. Bayesian Reinforcement Learning: A Survey first discusses models and methods for Bayesian inference in the simple single-step Bandit model. It then reviews the extensive recent literature on Bayesian methods for model-based RL, where prior information can be expressed on the parameters of the Markov model. It also presents Bayesian methods for model-free RL, where priors are expressed over the value function or policy class. Bayesian Reinforcement Learning: A Survey is a comprehensive reference for students and researchers with an interest in Bayesian RL algorithms and their theoretical and empirical properties.

Deep Learning for Biomedical Image Reconstruction

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Publisher : Cambridge University Press
ISBN 13 : 1009051024
Total Pages : 366 pages
Book Rating : 4.0/5 (9 download)

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Book Synopsis Deep Learning for Biomedical Image Reconstruction by : Jong Chul Ye

Download or read book Deep Learning for Biomedical Image Reconstruction written by Jong Chul Ye and published by Cambridge University Press. This book was released on 2023-09-30 with total page 366 pages. Available in PDF, EPUB and Kindle. Book excerpt: Discover the power of deep neural networks for image reconstruction with this state-of-the-art review of modern theories and applications. Including interdisciplinary examples and a step-by-step background of deep learning, this book provides insight into the future of biomedical image reconstruction with clinical studies and mathematical theory.

Machine Learning and Knowledge Discovery in Databases

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Publisher : Springer
ISBN 13 : 3662448459
Total Pages : 565 pages
Book Rating : 4.6/5 (624 download)

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Book Synopsis Machine Learning and Knowledge Discovery in Databases by : Toon Calders

Download or read book Machine Learning and Knowledge Discovery in Databases written by Toon Calders and published by Springer. This book was released on 2014-09-01 with total page 565 pages. Available in PDF, EPUB and Kindle. Book excerpt: This three-volume set LNAI 8724, 8725 and 8726 constitutes the refereed proceedings of the European Conference on Machine Learning and Knowledge Discovery in Databases: ECML PKDD 2014, held in Nancy, France, in September 2014. The 115 revised research papers presented together with 13 demo track papers, 10 nectar track papers, 8 PhD track papers, and 9 invited talks were carefully reviewed and selected from 550 submissions. The papers cover the latest high-quality interdisciplinary research results in all areas related to machine learning and knowledge discovery in databases.

Pattern Recognition and Computer Vision

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Publisher : Springer Nature
ISBN 13 : 3031189167
Total Pages : 752 pages
Book Rating : 4.0/5 (311 download)

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Book Synopsis Pattern Recognition and Computer Vision by : Shiqi Yu

Download or read book Pattern Recognition and Computer Vision written by Shiqi Yu and published by Springer Nature. This book was released on 2022-10-27 with total page 752 pages. Available in PDF, EPUB and Kindle. Book excerpt: The 4-volume set LNCS 13534, 13535, 13536 and 13537 constitutes the refereed proceedings of the 5th Chinese Conference on Pattern Recognition and Computer Vision, PRCV 2022, held in Shenzhen, China, in November 2022. The 233 full papers presented were carefully reviewed and selected from 564 submissions. The papers have been organized in the following topical sections: Theories and Feature Extraction; Machine learning, Multimedia and Multimodal; Optimization and Neural Network and Deep Learning; Biomedical Image Processing and Analysis; Pattern Classification and Clustering; 3D Computer Vision and Reconstruction, Robots and Autonomous Driving; Recognition, Remote Sensing; Vision Analysis and Understanding; Image Processing and Low-level Vision; Object Detection, Segmentation and Tracking.

Machine Learning and Knowledge Discovery in Databases

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Publisher : Springer Nature
ISBN 13 : 3031264193
Total Pages : 669 pages
Book Rating : 4.0/5 (312 download)

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Book Synopsis Machine Learning and Knowledge Discovery in Databases by : Massih-Reza Amini

Download or read book Machine Learning and Knowledge Discovery in Databases written by Massih-Reza Amini and published by Springer Nature. This book was released on 2023-03-16 with total page 669 pages. Available in PDF, EPUB and Kindle. Book excerpt: The multi-volume set LNAI 13713 until 13718 constitutes the refereed proceedings of the European Conference on Machine Learning and Knowledge Discovery in Databases, ECML PKDD 2022, which took place in Grenoble, France, in September 2022. The 236 full papers presented in these proceedings were carefully reviewed and selected from a total of 1060 submissions. In addition, the proceedings include 17 Demo Track contributions. The volumes are organized in topical sections as follows: Part I: Clustering and dimensionality reduction; anomaly detection; interpretability and explainability; ranking and recommender systems; transfer and multitask learning; Part II: Networks and graphs; knowledge graphs; social network analysis; graph neural networks; natural language processing and text mining; conversational systems; Part III: Deep learning; robust and adversarial machine learning; generative models; computer vision; meta-learning, neural architecture search; Part IV: Reinforcement learning; multi-agent reinforcement learning; bandits and online learning; active and semi-supervised learning; private and federated learning; . Part V: Supervised learning; probabilistic inference; optimal transport; optimization; quantum, hardware; sustainability; Part VI: Time series; financial machine learning; applications; applications: transportation; demo track.

Deep Learning

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Publisher : MIT Press
ISBN 13 : 0262337371
Total Pages : 801 pages
Book Rating : 4.2/5 (623 download)

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Book Synopsis Deep Learning by : Ian Goodfellow

Download or read book Deep Learning written by Ian Goodfellow and published by MIT Press. This book was released on 2016-11-10 with total page 801 pages. Available in PDF, EPUB and Kindle. Book excerpt: An introduction to a broad range of topics in deep learning, covering mathematical and conceptual background, deep learning techniques used in industry, and research perspectives. “Written by three experts in the field, Deep Learning is the only comprehensive book on the subject.” —Elon Musk, cochair of OpenAI; cofounder and CEO of Tesla and SpaceX Deep learning is a form of machine learning that enables computers to learn from experience and understand the world in terms of a hierarchy of concepts. Because the computer gathers knowledge from experience, there is no need for a human computer operator to formally specify all the knowledge that the computer needs. The hierarchy of concepts allows the computer to learn complicated concepts by building them out of simpler ones; a graph of these hierarchies would be many layers deep. This book introduces a broad range of topics in deep learning. The text offers mathematical and conceptual background, covering relevant concepts in linear algebra, probability theory and information theory, numerical computation, and machine learning. It describes deep learning techniques used by practitioners in industry, including deep feedforward networks, regularization, optimization algorithms, convolutional networks, sequence modeling, and practical methodology; and it surveys such applications as natural language processing, speech recognition, computer vision, online recommendation systems, bioinformatics, and videogames. Finally, the book offers research perspectives, covering such theoretical topics as linear factor models, autoencoders, representation learning, structured probabilistic models, Monte Carlo methods, the partition function, approximate inference, and deep generative models. Deep Learning can be used by undergraduate or graduate students planning careers in either industry or research, and by software engineers who want to begin using deep learning in their products or platforms. A website offers supplementary material for both readers and instructors.

Computational Science – ICCS 2024

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Publisher : Springer Nature
ISBN 13 : 3031637593
Total Pages : 511 pages
Book Rating : 4.0/5 (316 download)

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Book Synopsis Computational Science – ICCS 2024 by : Leonardo Franco

Download or read book Computational Science – ICCS 2024 written by Leonardo Franco and published by Springer Nature. This book was released on with total page 511 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Understanding Machine Learning

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Publisher : Cambridge University Press
ISBN 13 : 1107057132
Total Pages : 415 pages
Book Rating : 4.1/5 (7 download)

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Book Synopsis Understanding Machine Learning by : Shai Shalev-Shwartz

Download or read book Understanding Machine Learning written by Shai Shalev-Shwartz and published by Cambridge University Press. This book was released on 2014-05-19 with total page 415 pages. Available in PDF, EPUB and Kindle. Book excerpt: Introduces machine learning and its algorithmic paradigms, explaining the principles behind automated learning approaches and the considerations underlying their usage.

Computer Vision – ECCV 2020

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Publisher : Springer Nature
ISBN 13 : 3030585263
Total Pages : 844 pages
Book Rating : 4.0/5 (35 download)

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Book Synopsis Computer Vision – ECCV 2020 by : Andrea Vedaldi

Download or read book Computer Vision – ECCV 2020 written by Andrea Vedaldi and published by Springer Nature. This book was released on 2020-10-06 with total page 844 pages. Available in PDF, EPUB and Kindle. Book excerpt: The 30-volume set, comprising the LNCS books 12346 until 12375, constitutes the refereed proceedings of the 16th European Conference on Computer Vision, ECCV 2020, which was planned to be held in Glasgow, UK, during August 23-28, 2020. The conference was held virtually due to the COVID-19 pandemic. The 1360 revised papers presented in these proceedings were carefully reviewed and selected from a total of 5025 submissions. The papers deal with topics such as computer vision; machine learning; deep neural networks; reinforcement learning; object recognition; image classification; image processing; object detection; semantic segmentation; human pose estimation; 3d reconstruction; stereo vision; computational photography; neural networks; image coding; image reconstruction; object recognition; motion estimation.

Adapted Compressed Sensing for Effective Hardware Implementations

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Publisher : Springer
ISBN 13 : 3319613731
Total Pages : 329 pages
Book Rating : 4.3/5 (196 download)

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Book Synopsis Adapted Compressed Sensing for Effective Hardware Implementations by : Mauro Mangia

Download or read book Adapted Compressed Sensing for Effective Hardware Implementations written by Mauro Mangia and published by Springer. This book was released on 2017-07-14 with total page 329 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book describes algorithmic methods and hardware implementations that aim to help realize the promise of Compressed Sensing (CS), namely the ability to reconstruct high-dimensional signals from a properly chosen low-dimensional “portrait”. The authors describe a design flow and some low-resource physical realizations of sensing systems based on CS. They highlight the pros and cons of several design choices from a pragmatic point of view, and show how a lightweight and mild but effective form of adaptation to the target signals can be the key to consistent resource saving. The basic principle of the devised design flow can be applied to almost any CS-based sensing system, including analog-to-information converters, and has been proven to fit an extremely diverse set of applications. Many practical aspects required to put a CS-based sensing system to work are also addressed, including saturation, quantization, and leakage phenomena.