Large Scale Machine Learning with Spark oleh Md. Mahedi Kaysar

Large Scale Machine Learning with Spark by Md. Mahedi Kaysar from  in  category
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Kategori: Engineering & IT
ISBN: 9781785883712
Ukuran file: 30.97 MB
Format: EPUB (e-book)
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Key FeaturesGet the most up-to-date book on the market that focuses on design, engineering, and scalable solutions in machine learning with Spark 2.0.0Use Sparks machine learning library in a big data environmentYou will learn how to develop high-value applications at scale with ease and a develop a personalized designBook DescriptionData processing, implementing related algorithms, tuning, scaling up and finally deploying are some crucial steps in the process of optimising any application.Spark is capable of handling large-scale batch and streaming data to figure out when to cache data in memory and processing them up to 100 times faster than Hadoop-based MapReduce. This means predictive analytics can be applied to streaming and batch to develop complete machine learning (ML) applications a lot quicker, making Spark an ideal candidate for large data-intensive applications.This book focuses on design engineering and scalable solutions using ML with Spark. First, you will learn how to install Spark with all new features from the latest Spark 2.0 release. Moving on, youll explore important concepts such as advanced feature engineering with RDD and Datasets. After studying developing and deploying applications, you will see how to use external libraries with Spark.In summary, you will be able to develop complete and personalised ML applications from data collections,model building, tuning, and scaling up to deploying on a cluster or the cloud.What you will learnGet solid theoretical understandings of ML algorithmsConfigure Spark on cluster and cloud infrastructure to develop applications using Scala, Java, Python, and RScale up ML applications on large cluster or cloud infrastructuresUse Spark ML and MLlib to develop ML pipelines with recommendation system, classification, regression, clustering, sentiment analysis, and dimensionality reductionHandle large texts for developing ML applications with strong focus on feature engineeringUse Spark Streaming to develop ML applications for real-time streamingTune ML models with cross-validation, hyperparameters tuning and train splitEnhance ML models to make them adaptable for new data in dynamic and incremental environmentsAbout the AuthorMd. Rezaul Karim has more than 8 years of experience in the area of research and development with a solid knowledge of algorithms and data structures, focusing C, C++, Java, R, and Python and big data technologies such as Spark, Kafka, DC/OS, Docker, Mesos, Hadoop, and MapReduce.He was first enchanted by machine learning while studying an Advanced Artificial Intelligence post-graduate course by applying the combined technique of Hadoop-based MapReduce and machine learning together for market basket analysis on large-scale business-oriented transactional databases in back 2010. Consequently, his research interests include machine learning, data mining, Semantic Web, big data, and bioinformatics. He has published more than 30 research papers in renowned peer-reviewed international journals and conferences focusing on the areas of data mining, machine learning, and bioinformatics, with good citations.He is a Software Engineer and Researcher currently working at the Insight Centre for Data Analytics, Ireland (the largest data analytics center in Ireland and the largest Semantic Web research institute in the world) as a PhD Researcher. He is also a PhD candidate at the National University of Ireland, Galway. He also holds an ME (Master of Engineering) degree in Computer Engineering from the Kyung Hee University, Korea, majoring in data mining and knowledge discovery. And he has a BS (Bachelor of Science) degree in Computer Science from the University of Dhaka, Bangladesh.Before joining the Insight Center for Data Analytics, he had been working as a Lead Software Engineer with Samsung Electronics, where he worked with the distributed Samsung R&D centers across the world, including Korea, India, Vietnam, Turkey, UAE, Brazil, and Bangladesh. Before that, he worked as a Graduate Research Assistant in the Database Lab at Kyung Hee University, Korea, while working towards his Masters degree. He also worked as an R&D Engineer with BMTech21 Worldwide, Korea. Even before that, he worked as a Software Engineer with i2SoftTechnology, Dhaka, Bangladesh.Md. Mahedi Kaysar is a Software Engineer and Researcher at the Insight Center for Data Analytics (the largest data analytics center across the Ireland and the largest semantic web research institute in the world), Dublin City University (DCU), Ireland. Before joining the Insight Center at DCU, he worked as a Software Engineer at the Insight Center for Data Analytics, National University of Ireland, Galway and Samsung Electronics, Bangladesh.He has more than 5 years of experience in research and development with a strong background in algorithms and data structures concentrating on C, Java, Scala, and Python. He has lots of experience in enterprise application development and big data analytics.He obtained a BSc in Computer Science and Engineering from the Chittagong University of Engineering and Technology, Bangladesh. Now, he has started his postgraduate research in Distributed and Parallel Computing at the Dublin City University, Ireland.His research interests include Distributed Computing, Semantic Web, Linked Data, big data, Internet of Everything, and machine learning. Moreover, he was involved in a research project in collaboration with CISCO Systems Inc. in the area of Internet of Everything and Semantic Web Technologies. His duties were to develop an IoT-enabled meeting management system, a scalable system for stream processing, designing, and showcasing the use cases of a project.Table of ContentsIntroduction to Data Analytics with SparkMachine Learning Best PracticesUnderstanding the Problem by Understanding the DataExtracting Knowledge through Feature EngineeringSupervised and Unsupervised Learning by ExamplesBuilding Scalable Machine Learning PipelinesTuning Machine Learning ModelsAdapting Your Machine Learning ModelsAdvanced Machine Learning with Streaming and Graph DataConfiguring and Working with External Libraries

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