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Introduction To Big Data For Business Intelligence - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Introduction To Big Data For Business Intelligence (/Thread-Introduction-To-Big-Data-For-Business-Intelligence) |
Introduction To Big Data For Business Intelligence - OneDDL - 12-30-2023 ![]() Free Download Introduction To Big Data For Business Intelligence Published 12/2023 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 10.30 GB | Duration: 6h 24m Data Advantage What you'll learn Understand basic concepts of Big Data and Data Science Life Cycle Relate Big data , Data science and Statistics Get basic understanding of Big Data Architecture and Modeling Understand how businesses apply Big Data capabilities for achieving goals. Understand application of Data science in health management with particular reference to pandemic COVID 19 Assess impact of Big Data and Data Science on Big Businesses through case studies. Requirements No programming is required. This course will help students of Management programs and practicing Managers to get new insights. Description In recent years, analytics has become increasingly important in the world of business, particularly as organizations have access to more and more data. Managers today no longer make decisions based on pure judgment and experience; they rely on factual data and the ability to manipulate and analyze data to support their decisions. No matter what your academic business concentration is, you will most likely be a future user of analytics to some extent and work with analytics professionals. Business analytics, or simply analytics, is the use of data, information technology, statistical analysis, quantitative methods, and mathematical or computer-based models to help managers gain improved insight into their business operations and make better, fact-based decisions. Business analytics is "a process of transforming data into actions through analysis and insights in the context of organizational decision-making and problem-solving." Business analytics is supported by various tools, such as Microsoft Excel, commercial statistical software packages such as SAS or Minitab, and more complex business intelligence suites that integrate data with analytical software. The purpose of this course is to provide you with a basic introduction to the concepts, methods, and models used in big data analytics for business intelligence so that you will develop not only an appreciation for its capabilities to support and enhance business decisions but also the ability to use business analytics at an elementary level in your work. The course is spread over eight modules, and each module carries a quiz to reinforce the learning experience. Overview Section 1: Opening Remarks Lecture 1 Course Overview Section 2: Week 1: Module 1: Introduction to Big Data for Business Intelligence Lecture 2 1IB 2.1: Introducing the basic terms Lecture 3 1BI 2: Introducing Data Science Lecture 4 1BI 3: History of Data Science & Types of Data Lecture 5 1BI 4: Data Science Processes Lecture 6 1BI 5: The Characteristics: 7 Vs of Big Data Lecture 7 1BI 6: Markets for Data Science Lecture 8 1BI 7: Learning Outcome Section 3: Week 2: Module 2: Data Science and Big Data Lecture 9 2 BI 0: Learning Objectives of Module 2 Lecture 10 2 BI 01: Data Science Life Cycle Lecture 11 2 BI 02: Data Science & Statistics Lecture 12 2 BI 03: Skill Sets for Data Scientists Lecture 13 2 BI 04: Roles of Data Scientists in Businesses. Lecture 14 2 BI 04.1: Roles of Big data Professionals in businesses. Lecture 15 2 BI 05: Symbiotic Relationship between Big Data and Data Science Lecture 16 2BI 06: How do Big Data and Data Science add value to businesses? Lecture 17 2 BI 07: Learning Outcomes Section 4: Week 3: Module 3: Big Data Models Lecture 18 3 BI 0: Learning Objectives of Module 3. Lecture 19 3 BI 01: Big Data Models Lecture 20 3 BI 02: Differentiate RDBMS & NoSQL Lecture 21 3 BI 03: Distributed Computing & MapReduce. Lecture 22 3 BI 04: Stream Processing, Apache Kafka and Apache Flink for BI. Lecture 23 3 BI 05: Machine Learning & Predictive Models: Transforming Businesses. Lecture 24 3 BI 06: Deep Learning Models: Unleashing the Power of Neural Networks Lecture 25 3 BI 07: Graph Analytics: Unveiling Insights in Interconnected Data Lecture 26 3 BI 08: Big Data Frameworks: Empowering Scalable and Efficient Data Processing Lecture 27 3 BI 09: The 9S of Big Data Framework. Lecture 28 3 BI 10: Techno - Cultural Roles of Managers in the Big Data Landscape. Lecture 29 3 BI 11: Learning Outcome Section 5: Week 4: Module 4: Big Data Architecture Lecture 30 4 BI 0: Learning Objectives of Module 4. Lecture 31 4 BI L1: Components of Big Data Architecture. Lecture 32 4 BI L1a: APIs and Web Services. Lecture 33 4 BI L1b: File Transfer and Copying. Lecture 34 4 BI L1c: Data Governance and Security. Lecture 35 4 BI L1d: Analytics and Visualization Tools. Lecture 36 4 BI L1e: IoT Device Data Ingestion Lecture 37 4 BI L1f: Big Data Storage Systems Lecture 38 4 BI L1g: Processing Engines and Computing Infrastructure Lecture 39 4 BI L2: Features of Big Data Architecture Lecture 40 4 BI L3: Importance and Impact Lecture 41 4 BI L4: Future Directions and Advancements Lecture 42 4 BI L5: Learning Outcomes Section 6: Week 5: Big Data for Business Intelligence. Lecture 43 5 BI Lo: Learning Objectives Lecture 44 5 BI L1: New Data Sources Lecture 45 5 BI L2a: Big Data Business Model Lecture 46 5 BI L2b: Business Insights & Optimisation Lecture 47 5BI L2c: Business Monitisation & Metamorphosis Lecture 48 5 BI L2d: The Transition Lecture 49 5 BI L3: The Observations Lecture 50 5 BI L4: Data Monetisation & Business Impact Lecture 51 5 BI L5: Business Data Analytics Lifecycle Lecture 52 5 BI L6: Learning Outcomes Section 7: Week 6: Decision Analysis Lecture 53 6 BI L0: Learning Objectives Lecture 54 6BI L1: Formulating Decision Problems Lecture 55 6BI L2: Decision Strategies without Outcome Probabilities Lecture 56 6BI L3 : Opportunity-Loss Strategy Lecture 57 6 BI L4: Decision Strategies for a Maximize Objective Lecture 58 6 BI L5: Decision Trees Lecture 59 6BI L6: Learning Outcome Section 8: Week 7: Big Data in Health Management. Lecture 60 7 BI L0: Learning Objectives Lecture 61 7 BI L1: Technology Driven Healthcare Lecture 62 7 BI L1a: Hadoop's MapReduce for Healthcare. Lecture 63 7 BI L1b: Apache Spark for Healthcare. Lecture 64 7 BI L1c: Arogya Sethu: India's Vibrant Healthcare Application. Lecture 65 7 BI L2: Learning Outcomes Section 9: Week 8: Case Studies. Lecture 66 8 BI L0: Learning Objectives. Lecture 67 8 BI L1: Case 1: WALMART: The Retailer. Lecture 68 8 BI L2: CERN: Research Organisation. Lecture 69 8 BI L3: NETFLIX: A Visual Media. Lecture 70 8 BI L4: ROLLS ROYCE: Automobile Manufacturers. Lecture 71 8 BI L5: FACEBOOK: Social Media Network. Lecture 72 8 BI L6: Learning Outcomes. Section 10: Concluding Remarks Lecture 73 Thank you. Students of Management programs,Practicing Managers,Entrepreneurs Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |