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Win or Learn

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Release : 2016-06-30
Genre : Biography & Autobiography
Kind : eBook
Book Rating : 673/5 ( reviews)

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Book Synopsis Win or Learn by : John Kavanagh

Download or read book Win or Learn written by John Kavanagh. This book was released on 2016-06-30. Available in PDF, EPUB and Kindle. Book excerpt: Conor McGregor's trainer tells the amazing story of his long road to success in the world's fastest-growing sport Growing up in Dublin, John Kavanagh was a skinny lad who was frequently bullied. As a young man, after suffering a bad beating when he intervened to help a woman who was being attacked, he decided he had to learn to defend himself. Before long, he was training fighters in a tiny shed, and promoting the earliest mixed-martial arts events in Ireland. And then, a cocky kid called Conor McGregor walked into his gym ... In Win or Learn, John Kavanagh tells his own remarkable life story - which is at the heart of the story of the extraordinary explosion of MMA in Ireland and globally. Employing the motto 'win or learn', Kavanagh has become a guru to young men and women seeking to master the arts of combat. And as the trainer of the world's most charismatic champion, his gym has become a magnet for talented fighters from all over the globe. Kavanagh's portrait of Conor McGregor - who he has seen in his lowest moments, as well as in his greatest triumphs - is a revelation. What emerges from Win or Learn is a remarkable portrait of ambition, discipline, and persistence in the face of years and years of disappointment. It is a must read for every MMA fan - but also for anyone who wants to understand how to follow a dream and realize a vision. 'For anyone interested in following their dream to the end of the line' Tony Parsons 'It kept me up well past my bedtime' Sean O'Rourke, RTE Radio One 'Remarkable' Irish Times 'Kavanagh is open and honest about his upbringing ... The journey hasn't been easy, but Kavanagh's inbuilt determination has carried him all the way' Irish Examiner

Win or Learn

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Author :
Release : 2021-01-05
Genre : Self-Help
Kind : eBook
Book Rating : 474/5 ( reviews)

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Book Synopsis Win or Learn by : Harlan Cohen

Download or read book Win or Learn written by Harlan Cohen. This book was released on 2021-01-05. Available in PDF, EPUB and Kindle. Book excerpt: What would life be like if every risk you took ended in success? In Win or Learn, rejection expert and New York Times bestselling author Harlan Cohen lays the framework for identifying your wants, taking the risks necessary to pursue them, and finding success no matter the outcome. This step-by-step risk-taking experiment will guide you on a journey to understand your worth and fight for your goals without the fear of rejection—because rejection is a universal truth but not a final destination. Cohen's revolutionary perspective on risk-taking and rejection will help you realize your dreams, understand your limits, and find victory in every risk.

Interactions In Multiagent Systems

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Author :
Release : 2018-07-31
Genre : Computers
Kind : eBook
Book Rating : 759/5 ( reviews)

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Book Synopsis Interactions In Multiagent Systems by : Jianye Hao

Download or read book Interactions In Multiagent Systems written by Jianye Hao. This book was released on 2018-07-31. Available in PDF, EPUB and Kindle. Book excerpt: This compendium covers several important topics related to multiagent systems, from learning and game theoretic analysis, to automated negotiation and human-agent interaction. Each chapter is written by experienced researchers working on a specific topic in mutliagent system interactions, and covers the state-of-the-art research results related to that topic.The book will be a good reference material for researchers and graduate students working in the area of artificial intelligence/machine learning, and an inspirational read for those in social science, behavioural economics and psychology.

Areté

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Release : 2023-11-14
Genre : Self-Help
Kind : eBook
Book Rating : /5 ( reviews)

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Book Synopsis Areté by : Brian Johnson

Download or read book Areté written by Brian Johnson. This book was released on 2023-11-14. Available in PDF, EPUB and Kindle. Book excerpt: AN INSTANT PUBLISHERS WEEKLY BESTSELLER “This book will change your life. And, if enough of us commit, it will change the world.” — Phil Stutz, MD, bestselling author of The Tools, featured in the Netflix documentary, Stutz In Areté, Brian Johnson integrates ancient wisdom, modern science, and practical tools to, as per the sub-title of the book, help you activate your Heroic potential and fulfill your destiny. If you asked the ancient stoic philosophers how to live a good life, they’d answer you in a single word: Areté. We translate Areté as “virtue” or “excellence” but the word has a deeper meaning—something closer to being your best self moment to moment to moment. Phil Stutz, MD, the author of The Tools, who was featured in the Netflix documentary called Stutz, wrote the foreword to the book. He says: “What Brian has developed is much more than a bunch of coping mechanisms for the over-stressed modern person; although that would be an improvement for most of us. He’s developed a training program for the soul. Commit to this training and you will gain the ability to transmute your biggest problems, your darkest days, into unstoppable courage, endless enthusiasm, and an unshakable faith in the future. This book will change your life. And, if enough of us commit, it will change the world.”

The Theory of Perfect Learning

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Release : 2021-08-17
Genre : Science
Kind : eBook
Book Rating : /5 ( reviews)

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Book Synopsis The Theory of Perfect Learning by : Nonvikan Karl-Augustt Alahassa

Download or read book The Theory of Perfect Learning written by Nonvikan Karl-Augustt Alahassa. This book was released on 2021-08-17. Available in PDF, EPUB and Kindle. Book excerpt: The perfect learning exists. We mean a learning model that can be generalized, and moreover, that can always fit perfectly the test data, as well as the training data. We have performed in this thesis many experiments that validate this concept in many ways. The tools are given through the chapters that contain our developments. The classical Multilayer Feedforward model has been re-considered and a novel $N_k$-architecture is proposed to fit any multivariate regression task. This model can easily be augmented to thousands of possible layers without loss of predictive power, and has the potential to overcome our difficulties simultaneously in building a model that has a good fit on the test data, and don't overfit. His hyper-parameters, the learning rate, the batch size, the number of training times (epochs), the size of each layer, the number of hidden layers, all can be chosen experimentally with cross-validation methods. There is a great advantage to build a more powerful model using mixture models properties. They can self-classify many high dimensional data in a few numbers of mixture components. This is also the case of the Shallow Gibbs Network model that we built as a Random Gibbs Network Forest to reach the performance of the Multilayer feedforward Neural Network in a few numbers of parameters, and fewer backpropagation iterations. To make it happens, we propose a novel optimization framework for our Bayesian Shallow Network, called the {Double Backpropagation Scheme} (DBS) that can also fit perfectly the data with appropriate learning rate, and which is convergent and universally applicable to any Bayesian neural network problem. The contribution of this model is broad. First, it integrates all the advantages of the Potts Model, which is a very rich random partitions model, that we have also modified to propose its Complete Shrinkage version using agglomerative clustering techniques. The model takes also an advantage of Gibbs Fields for its weights precision matrix structure, mainly through Markov Random Fields, and even has five (5) variants structures at the end: the Full-Gibbs, the Sparse-Gibbs, the Between layer Sparse Gibbs which is the B-Sparse Gibbs in a short, the Compound Symmetry Gibbs (CS-Gibbs in short), and the Sparse Compound Symmetry Gibbs (Sparse-CS-Gibbs) model. The Full-Gibbs is mainly to remind fully-connected models, and the other structures are useful to show how the model can be reduced in terms of complexity with sparsity and parsimony. All those models have been experimented, and the results arouse interest in those structures, in a sense that different structures help to reach different results in terms of Mean Squared Error (MSE) and Relative Root Mean Squared Error (RRMSE). For the Shallow Gibbs Network model, we have found the perfect learning framework : it is the $(l_1, \boldsymbol{\zeta}, \epsilon_{dbs})-\textbf{DBS}$ configuration, which is a combination of the \emph{Universal Approximation Theorem}, and the DBS optimization, coupled with the (\emph{dist})-Nearest Neighbor-(h)-Taylor Series-Perfect Multivariate Interpolation (\emph{dist}-NN-(h)-TS-PMI) model [which in turn is a combination of the research of the Nearest Neighborhood for a good Train-Test association, the Taylor Approximation Theorem, and finally the Multivariate Interpolation Method]. It indicates that, with an appropriate number $l_1$ of neurons on the hidden layer, an optimal number $\zeta$ of DBS updates, an optimal DBS learnnig rate $\epsilon_{dbs}$, an optimal distance \emph{dist}$_{opt}$ in the research of the nearest neighbor in the training dataset for each test data $x_i^{\mbox{test}}$, an optimal order $h_{opt}$ of the Taylor approximation for the Perfect Multivariate Interpolation (\emph{dist}-NN-(h)-TS-PMI) model once the {\bfseries DBS} has overfitted the training dataset, the train and the test error converge to zero (0). As the Potts Models and many random Partitions are based on a similarity measure, we open the door to find \emph{sufficient} invariants descriptors in any recognition problem for complex objects such as image; using \emph{metric} learning and invariance descriptor tools, to always reach 100\% accuracy. This is also possible with invariant networks that are also universal approximators. Our work closes the gap between the theory and the practice in artificial intelligence, in a sense that it confirms that it is possible to learn with very small error allowed.

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