MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh
Apr 18, 2026 02:39
· 6:25
· English
· Whisper Turbo
· 2 스피커
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Welcome to the session on Business Intelligence Infrastructure. Objective, in this session, we will understand about business intelligence infrastructure. Introduction, definition, technology-driven process for analyzing data and presenting actionable information, components, data warehousing, data mining, reporting, and data dashboards. Introduction.
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Speaker 2 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Purpose, helps businesses make informed decisions. Example, use of BI tools like Tableau, Power BI. Importance, enhances strategic, tactical, and operational decisions. Trend, increasing adoption across industries. Key components of BI infrastructure, data warehousing, central repository for storing integrated data.
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Speaker 2 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
ETL process, extract, transform, load data from various sources, data mining, discovering patterns and insights from large data sets, reporting, generating reports for business analysis, dashboards, visual displays of key performance indicators, KPIs, example, Microsoft SQL Server for data warehousing.
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Speaker 2 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Data warehousing Definition Centralized storage for integrated data from multiple sources Function Supports reporting and analysis Components, data marts, metadata, and ETL tools Benefits Consolidated data, historical analysis, and improved data quality Amazon Redshift for scalable data warehousing
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Trend. Cloud-based data warehousing solutions. ETL processes. Extract. Collect data from various sources. Transform. Convert data into a suitable format. Load. Load data into the data warehouse. Tools. Informatica. Talent. Apache NIFI. Benefits. Ensures data consistency and quality. Example.
2:24
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Using talent for ETL operations. Data mining. Definition. Extracting patterns and knowledge from large data sets. Techniques. Classification, clustering, regression, and association. Tools. RapidMiner, KNIME, and SAS. Benefits. Identifies trends, predicts outcomes, and support decision making. Example. Market-based analysis in retail.
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Trend. Integration with machine learning. Reporting. Definition. Generating structured reports from data. Types. Operational, analytical, and strategic reports. Tools. Crystal reports. SSRS. And Power BI. Benefits. Provides insights. Supports decision making. And tracks performance. Example. Monthly sales reports for management review.
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Trend, self-service reporting tools. Dashboards. Definition, visual representation of key metrics and KPIs. Components, chart, graphs, and tables. Tools, Tableau, ClickView, and Power BI. Benefits, real-time monitoring, quick insights, interactive data exploration. Example, executive dashboard for financial performance. Trend.
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
customizable and interactive dashboards, trends in business intelligence, AI integration, enhancing BI with artificial intelligence, self-service BI, empowering users to create their own reports, real-time BI, immediate insights from streaming data, mobile BI, accessing BI tools on mobile devices,
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Embedded BI, integrating BI capabilities into other applications. Example, AI-driven predictive analytic tools in BI tools. Conclusion, definition. BI transforms data into actionable insights. Components, data warehousing, ETL, data mining, reporting, and dashboards. Benefits, informed decision making.
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
trend identification and performance tracking trends ai self-service real-time mobile and embedded bi now let us break for questions verify your learnings question number one which component of bi involves the centralized storage of data from multiple sources option a etl
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
Option B, data mining. Option C, data warehousing. Option D, reporting. The correct answer is Option C, data warehousing. Verify your learnings. Question number two. What is the primary purpose of dashboards in BI? Option A, data storage. Option B, data transformation. Option C, visual representation of KPIs.
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Speaker 1 (MBA_IM_unit 3_week 8_seq 5_Buisness Intelligence Infrastructure_magesh)
and option D, data extraction. The correct answer is option C, visual representation of KPIs. Summary. In this session, we have understood about business intelligence infrastructure. Happy learning. Thank you.
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