IBM Big Data Fundamentals Technical Mastery Test v1 P2090-032 Certified Exam Dumps

P2090-032 Exam Dumps

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Certification Provider: IBM
Exam Code / Number: P2090-032
Exam Name: IBM Big Data Fundamentals Technical Mastery Test v1
Exam Questions: 34
Last Updated: Jul 15, 2026
Corresponding Certification: IBM Mastery

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IBM P2090-032 Exam Syllabus Topics:

SectionObjectives
Big Data Fundamentals- Big Data Technologies
  • 1. Hadoop ecosystem (HDFS, MapReduce)
    • 2. NoSQL databases (key-value, document, columnar, graph)
      • 3. Distributed computing concepts
        - Core Big Data Concepts
        • 1. Big data ecosystems overview
          • 2. Characteristics of Big Data (Volume, Velocity, Variety, Veracity)
            • 3. Structured vs unstructured vs semi-structured data
              Big Data Applications- Industry Use Cases
              • 1. Retail and recommendation systems
                • 2. Healthcare data analytics
                  • 3. Finance and risk analytics
                    Data Processing & Analytics- Data Processing Frameworks
                    • 1. Apache Spark fundamentals
                      • 2. Batch vs streaming processing
                        - Analytics Concepts
                        • 1. Descriptive, predictive, and prescriptive analytics
                          • 2. Data visualization basics
                            Data Management- Data Storage and Warehousing
                            • 1. Data lakes vs data warehouses
                              • 2. ETL/ELT processes


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