Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Business
Sports
Technology
Health & Fitness
About Us
Contact Us
Copyright
© 2024 PodJoint
Podjoint Logo
US
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts115/v4/88/26/a6/8826a66b-63d8-fcc1-6859-7af44fd24ce3/mza_143065371144946236.jpeg/600x600bb.jpg
Big Data Systems (WT 2020/21) - tele-TASK
Prof. Dr. Tilmann Rabl
47 episodes
18 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 analyses 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., infrastructures that are used to handle all steps in typical big data processing pipelines. We will learn about data center infrastructure and scale-out software systems. The software discussed will cover the full big data stack, i.e., distributed file systems, Map Reduce, key value stores, stream processing, graph processing, ML systems.
Show more...
Courses
Education
RSS
All content for Big Data Systems (WT 2020/21) - tele-TASK is the property of Prof. Dr. Tilmann Rabl and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
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 analyses 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., infrastructures that are used to handle all steps in typical big data processing pipelines. We will learn about data center infrastructure and scale-out software systems. The software discussed will cover the full big data stack, i.e., distributed file systems, Map Reduce, key value stores, stream processing, graph processing, ML systems.
Show more...
Courses
Education
https://is1-ssl.mzstatic.com/image/thumb/Podcasts115/v4/88/26/a6/8826a66b-63d8-fcc1-6859-7af44fd24ce3/mza_143065371144946236.jpeg/600x600bb.jpg
Measurements & Metrics
Big Data Systems (WT 2020/21) - tele-TASK
14 minutes 22 seconds
4 years ago
Measurements & Metrics
Big Data Systems (WT 2020/21) - 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 analyses 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., infrastructures that are used to handle all steps in typical big data processing pipelines. We will learn about data center infrastructure and scale-out software systems. The software discussed will cover the full big data stack, i.e., distributed file systems, Map Reduce, key value stores, stream processing, graph processing, ML systems.