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Big Data Systems (WT 2023/24) - tele-TASK
Prof. Dr. Tilmann Rabl, Nils Straßenburg, Panos Parchas
22 episodes
17 hours ago
The amount of data that can be generated and stored in academic and industrial projects and applications is increasing rapidly. Big data analytics technologies have established themselves as a solution for big data challenges to the scalability problems of traditional database systems. The vast amounts of new data that is collected, however, usually is not as easily analyzed as curated, structured data in a data warehouse is. Typically, these data are noisy, of varying format and velocity, and need to be analyzed with techniques from statistics and machine learning rather than pure SQL-like aggregations and drill-downs. Moreover, the results of the analyzes frequently are models that are used for decision making and prediction. The complete process of big data analysis is described as a pipeline, which includes data recording, cleaning, integration, modeling, and interpretation. In this lecture, we will discuss big data systems, i.e., the infrastructures that are used to handle all steps in typical big data processing pipelines.
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The amount of data that can be generated and stored in academic and industrial projects and applications is increasing rapidly. Big data analytics technologies have established themselves as a solution for big data challenges to the scalability problems of traditional database systems. The vast amounts of new data that is collected, however, usually is not as easily analyzed as curated, structured data in a data warehouse is. Typically, these data are noisy, of varying format and velocity, and need to be analyzed with techniques from statistics and machine learning rather than pure SQL-like aggregations and drill-downs. Moreover, the results of the analyzes frequently are models that are used for decision making and prediction. The complete process of big data analysis is described as a pipeline, which includes data recording, cleaning, integration, modeling, and interpretation. In this lecture, we will discuss big data systems, i.e., the infrastructures that are used to handle all steps in typical big data processing pipelines.
Show more...
Courses
Education
Episodes (20/22)
Big Data Systems (WT 2023/24) - tele-TASK
Exam Contents
1 year ago
1 hour 36 minutes

Big Data Systems (WT 2023/24) - tele-TASK
Query Acceleration in Amazon Redshift
1 year ago
1 hour 2 minutes 45 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Machine Learning & Modern Hardware
1 year ago
1 hour 18 minutes 25 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Machine Learning Systems II
1 year ago
1 hour 26 minutes 43 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Machine Learning Systems I
1 year ago
1 hour 24 minutes 55 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Stream Processing II
1 year ago
1 hour 27 minutes 47 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Stream Processing I
1 year ago
1 hour 24 minutes 56 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Key Value Stores II
1 year ago
1 hour 22 minutes 17 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Key Value Stores II
1 year ago
1 hour 23 minutes 15 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Key Value Stores
1 year ago
1 hour 13 minutes 55 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Distributed File Systems (No Audio)
1 year ago
1 hour 25 minutes 35 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Data Center and Cloud Computing (2)
1 year ago
1 hour 27 minutes 12 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Data Center and Cloud Computing
1 year ago
1 hour 24 minutes 41 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Map Reduce III
1 year ago
1 hour 26 minutes 8 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Map Reduce Architecture
1 year ago
1 hour 32 minutes 4 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Map Reuce 1
1 year ago
1 hour 25 minutes 28 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Benchmarking & Measurement
2 years ago
1 hour 21 minutes 44 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Use Case - Search Engines
2 years ago
1 hour 29 minutes 27 seconds

Big Data Systems (WT 2023/24) - tele-TASK
1st Exercise Session
2 years ago
37 minutes 32 seconds

Big Data Systems (WT 2023/24) - tele-TASK
Introduction
2 years ago
1 hour 21 minutes 17 seconds

Big Data Systems (WT 2023/24) - tele-TASK
The amount of data that can be generated and stored in academic and industrial projects and applications is increasing rapidly. Big data analytics technologies have established themselves as a solution for big data challenges to the scalability problems of traditional database systems. The vast amounts of new data that is collected, however, usually is not as easily analyzed as curated, structured data in a data warehouse is. Typically, these data are noisy, of varying format and velocity, and need to be analyzed with techniques from statistics and machine learning rather than pure SQL-like aggregations and drill-downs. Moreover, the results of the analyzes frequently are models that are used for decision making and prediction. The complete process of big data analysis is described as a pipeline, which includes data recording, cleaning, integration, modeling, and interpretation. In this lecture, we will discuss big data systems, i.e., the infrastructures that are used to handle all steps in typical big data processing pipelines.