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ویرایش: نویسندگان: Manuel Mora (editor), Fen Wang (editor), Jorge Marx Gomez (editor), Hector Duran-Limon (editor) سری: ISBN (شابک) : 3031409558, 9783031409554 ناشر: Springer سال نشر: 2023 تعداد صفحات: 289 زبان: English فرمت فایل : PDF (درصورت درخواست کاربر به PDF، EPUB یا AZW3 تبدیل می شود) حجم فایل: 13 مگابایت
در صورت تبدیل فایل کتاب Development Methodologies for Big Data Analytics Systems: Plan-driven, Agile, Hybrid, Lightweight Approaches (Transactions on Computational Science and Computational Intelligence) به فرمت های PDF، EPUB، AZW3، MOBI و یا DJVU می توانید به پشتیبان اطلاع دهید تا فایل مورد نظر را تبدیل نمایند.
توجه داشته باشید کتاب روشهای توسعه برای سیستمهای تجزیه و تحلیل دادههای بزرگ: رویکردهای مبتنی بر برنامه، چابک، ترکیبی، سبک (معاملات در علوم محاسباتی و هوش محاسباتی) نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.
Editorial Preface References Acknowledgments Contents About the Editors Contributors Open Source IT for Delivering Big Data Analytics Systems as Services: A Selective Review 1 Introduction 2 Background 2.1 Foundations of Big Data Analytics Systems 2.2 Models for Implementing and Delivering IT Services 2.3 The NIST Big Data Reference Architecture (NBDRA) 3 Selective Review of Open Source IT for Implementing and Delivering BDASaaS 4 Discussion of Contributions 5 Conclusions Appendix References The Role of Machine Learning in Big Data Analytics: Current Practices and Challenges 1 Introduction 2 Machine Learning Techniques 2.1 Support Vector Machines 2.2 Decision Trees 2.3 Clustering Algorithms 2.4 Artificial Neural Networks 3 Open-Source Platforms for Big Data Analytics 3.1 MapReduce 3.2 Apache Hadoop 3.3 Apache Spark 3.4 Other Open-Source Platforms and Tools 4 Domain Areas of Big Data Analytics 4.1 Healthcare 4.2 Weather Forecasting 4.3 Social Networks and the Internet 5 Conclusions References The Data Value Chain Ontology 1 Introduction 2 Problem Identification and Motivation 3 Definition of Objective and Solution 4 Methodology 4.1 Results of Initial Literature Review and Workshop 4.2 Results of the Evaluation Model 4.3 Results of the Extended Literature Review 5 Ontology Derived from the Results of the Literature Review 5.1 Delimitation 5.2 Ontology Structure and Taxonomy 5.3 Data Product 5.4 Infrastructure Management 5.5 User Interface 5.6 Evaluation Model 6 Visualization 7 Discussion and Outlook References Requirements for Machine Learning Methodology Software Tooling 1 Introduction 2 Method: From Stakeholders to Requirements Capture 3 Machine Learning Process Models 3.1 KDD 3.2 SEMMA 3.3 CRISP-DM 3.4 CRISP-ML(Q) 3.5 Data-to-Value (D2V) 4 Requirements for Software Support Tools 4.1 Overall Vision 4.2 User Stories and Requirement Templates 4.3 From Requirements Toward OO Classes/ER Entities 5 Related Work 5.1 Work on Tooling for Machine Learning Process Methodology 5.2 Requirements Capture 5.3 Workbenches for Constructing Machine Learning Pipelines 5.4 Work on Support Tooling for Business Workflows 5.5 Work on Support Tooling for Machine Learning Development, Deployment, and Operations 6 Discussion 7 Summary, Conclusions, and Future Work References A Selective Conceptual Review of CRISP-DM and DDSL Development Methodologies for Big Data Analytics Systems 1 Introduction 2 Research Method 3 Background 3.1 Foundations of Big Data Analytics Systems (BDAS) 3.2 The ISO/IEC 29110 Standard – Basic Profile – as a Lightweight Development Process Template 4 Selective Comparative Analysis of BDAS Development Methodologies 4.1 Description of the Rigor-Oriented CRISP-DM Methodology 4.2 Description of the Lightweight DDSL Methodology 4.3 Comparison of the Rigor-Oriented CRISP-DM and the Lightweight DDSL Methodologies 5 Discussion of Contributions and Conclusions 5.1 Discussion of Contributions 5.2 Conclusions Appendix (Figs. 10, 11, 12 and 13) References A Selective Comparative Review of CRISP-DM and TDSP Development Methodologies for Big Data Analytics Systems 1 Introduction 2 Research Methodology 3 Background 3.1 Foundations of Big Data Analytics Systems (BDAS) 3.2 The Scrum-XP Workflow: An Agile Framework of Practices 4 Selective Comparative Analysis 4.1 Description of the CRISP-DM Methodology 4.2 Description of the TDSP Methodology 4.3 Comparison of the CRISP-DM and TDSP Methodologies 5 Discussion of Contributions and Conclusions 5.1 Discussion of Contributions 5.2 Conclusions References BDAS-EPM: An Integrated Evolution Process Model for Big Data Analytics Systems 1 Introduction 2 Background Overview 3 Selective Review Research Method 4 Results and Synthesis 4.1 The Main Concepts and Evolution of BDA 4.2 The Most Relevant BDA Frameworks 4.3 Applications of BDA 4.4 BDA Challenges and Trends 4.5 Illustration and Discussions on the BDAS-EPM 5 Conclusion References Big Data Adoption Factors and Development Methodologies: A Multiple Case Study Analysis 1 Introduction 2 Background 3 Literature Review 3.1 Big Data 3.2 Previously Studied Big Data Adoption Factors 3.3 Development Methodologies 4 Methodology 5 Procedure 6 Participants 7 Data Analysis 8 Validity 9 Findings 9.1 Big Data Adoption Findings The Challenge of BD Value: New Insights The Challenge of Security (Old, New, and Unique) Challenge of Managing Large Datasets More Data Means More Privacy Concerns Cost of Big Data The Burden of Regulations IT Expertise in Big Data Big Data Adoption Findings Summary 9.2 Big Data Development Methodology Findings Medium Development Team Size Is Common Agile Development Method Is the Popular Option Agile Development Has Drawbacks Too Big Data Development Methodology Findings Summary 10 Study Limitations and Future Research Opportunities 11 Conclusion References Detection of Breast Cancer in Mammography Using Pretrained Convolutional Neural Networks with Fine-Tuning 1 Introduction 2 Previous Works 3 Material and Methods 3.1 CNN Architectures VGG19 ResNet-50 and ResNet152 EfficientNetB7 3.2 Datasets 3.3 Experiment Environment 4 Methodology 4.1 Stage 1 4.2 Stage 2 4.3 Stage 3 4.4 Stage 4 4.5 Preprocessing 5 Results and Evaluations 5.1 Metrics 5.2 Tables 5.3 Comparison with Previous Works 6 Conclusions and Future Work References Challenges and Opportunities of Intercompany Big Data Analytics in Supply Chains 1 Introduction 2 State of the Art of Supply Chain Data Exchange 3 Challenges for Big Data Integration in Supply Chain 4 Benefits of Intercompany Big Data Analytics 4.1 Management and Planning 4.2 Logistics 4.3 Production 4.4 Discussion 5 Technical Concepts to Connect Data Stores Securely 5.1 Data Spaces 5.2 GAIA-X 5.3 Federated Learning 6 Discussion and Further Work References From Big Data to Big Insights: A Synthesis of Real-World Applications of Big Data Analytics 1 Introduction 1.1 Characteristics of Big Data 2 Application of Big Data Analytics in the Healthcare Industry 3 Application of Big Data Analytics in the Retail Industry 4 Application of Big Data Analytics in the Telecommunication Industry 5 Implications for Research and Practice 5.1 Future Research Directions 6 Conclusion References Index