skill-tree:bda:1:b
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- | # BDA1-B Theoretic | + | # BDA1 Theoretic |
- | # Background | + | |
- | Big data analytics is a fuzzy area that covers many concepts. | + | |
- | # Aim | + | Theoretic Principles form the foundational knowledge base in Big Data Analytics (BDA), providing the theoretical underpinnings for understanding and analyzing large and complex datasets. In this overview, we delve into the key theoretic principles essential for practitioners |
- | * To convey | + | |
- | # Outcomes | + | **6Vs (BDA2.2):** The 6Vs—Volume, |
- | * Describe the key concepts of artificial intelligence and data science | + | |
- | * Describe the general approach of big data tools | + | **AI and Data Science (BDA2.3):** Artificial Intelligence (AI) and Data Science are closely intertwined with Big Data Analytics, providing methodologies and techniques for extracting insights, patterns, and knowledge from data. This branch discusses AI algorithms, machine learning models, statistical techniques, and data analysis methodologies used in data science and big data analytics. Topics also include predictive modeling, clustering, classification, |
- | * List ethical constraints | + | |
- | * Illustrate the typical data science workflow | + | **Data Mining (BDA2.4):** Data Mining is a subset of Big Data Analytics that focuses on discovering patterns, trends, and relationships in large datasets. This section explores data mining techniques such as association rule mining, clustering, classification, |
- | * Categorize the different types of diagrams used for visualization | + | |
+ | **Algorithms (BDA2.5):** Algorithms are the computational procedures and techniques used to solve problems and perform analyses in Big Data Analytics. This branch discusses algorithms for data processing, data analysis, and machine learning, covering topics such as sorting algorithms, searching algorithms, graph algorithms, optimization algorithms, and parallel algorithms. Mastery of algorithmic principles enables practitioners to select, implement, and optimize algorithms for specific analytical tasks, ensuring efficient and effective processing of large-scale datasets. | ||
+ | |||
+ | **Ethical/ | ||
+ | |||
+ | By mastering the theoretic principles in Big Data Analytics, practitioners gain a solid understanding of the foundational concepts and frameworks essential for effectively analyzing large and complex datasets, extracting valuable insights, and making informed decisions across various domains and industries. | ||
+ | |||
+ | ## Learning | ||
+ | * Describe the key concepts of artificial intelligence and data science. | ||
+ | * Describe the general approach of big data tools. | ||
+ | * List ethical constraints. | ||
+ | * Illustrate the typical data science workflow. | ||
+ | * Categorize the different types of diagrams used for visualization. | ||
+ | |||
+ | **AI generated content** | ||
+ | |||
+ | ## Subskills | ||
- | # Subskills | ||
skill-tree/bda/1/b.1591369587.txt.gz · Last modified: 2020/06/05 17:06 by 127.0.0.1