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Details for:
Huyen C. Designing Machine Learning Systems...2022
huyen c designing machine learning systems 2022
Type:
E-books
Files:
1
Size:
10.1 MB
Uploaded On:
May 18, 2022, 8:53 a.m.
Added By:
andryold1
Seeders:
10
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0
Info Hash:
52838B26A6EB3474E45DFB5E3F6793117D3CC843
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Textbook in PDF format Machine learning systems are both complex and unique. They are complex because they consist of many different components and involve many different stakeholders. They are unique because they are data-dependent, and data varies wildly from one use case to the next. This book takes a holistic approach to designing machine learning systems that are reliable, scalable, maintainable, and adaptive to changing environments and business requirements. It considers each design decision — e.g. how to create training data, what features to include, how to deploy, what to monitor, how often to retrain your model — in the context of how it can help the system as a whole achieve its objectives. The iterative framework laid out in this book is illustrated using actual case studies and backed by ample references. Examples of the scenarios that this book will be able to help you tackle. You have been given a business problem and a lot of raw data. You want to engineer this data and choose the right metrics to solve this problem. Your initial models perform well in offline experiments and you want to deploy them. You have little feedback on how your models are performing after your models are deployed, and you want to figure out a way to quickly detect, debug, and address any issue your models might run into in production. The process of developing, evaluating, deploying, and updating models for your team has been mostly manual, slow, and error-prone. You want to automate and improve this process. Each machine learning use case in your organization has been deployed using its own workflow, and you want to lay down the foundation (e.g. model store, feature store, monitoring tools) that can be shared and reused across use cases. You're worried that there might be biases in your machine learning systems and you want to make your systems responsible! What This Book Is Not This book is not a tutorial book. Technologies evolve over time. Tools go in and out of style quickly, but fundamental approaches to problem solving should last a bit longer. This book provides a framework for you to evaluate the tool that works best for your use cases. When there's a tool you want to use, it's usually straightforward to find tutorials for it online. As a result, this book has few code snippets and instead focuses on providing a lot of discussion around trade-offs, pros and cons, and concrete examples. This book is not an introduction to ML. There are many books, courses, and resources available for ML theories, and therefore, this book shies away from these concepts to focus on the practical aspects of ML. To be specific, the book assumes that readers have a basic understanding of the following topics: ML models such as clustering, logistic regression, decision trees, collaborative filtering, and various neural network architectures. ML techniques such as supervised versus unsupervised, gradient descent, objective/loss function, regularization, generalization, and hyperparameter tuning. Metrics such as accuracy, F1, precision, recall, ROC, mean squared error, and log-likelihood. Common ML tasks such as language modeling, anomaly detection, object classification, and machine translation. You don't have to know these topics inside out—for concepts whose exact definitions can take some effort to remember, e.g., F1 score, we include short notes as references—but you should have a rough sense of what they mean going in
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Huyen C. Designing Machine Learning Systems...2022.pdf
10.1 MB