As the size and complexity of the internet increased dramatically in recent years,the burden of network service management also became heavier. The need foran intelligent way for data analysis and forecasting becomes urgent. The wideimplementation of machine learning and data analysis methods provides a newway to analyze large amounts of data.In this project, I study and evaluate data forecasting methods using machinelearning techniques and time series analysis methods on data collected fromthe KTH testbed. Comparing different methods with respect to accuracy andcomputing overhead I propose the best method for data forecasting for differentscenarios.The results show that machine learning techniques using regression can achievebetter perform...
Projektet genomfördes i samarbete med Siemens Healthineers i syfte att utreda möjligheter till att p...
Time series is a collection of points gathered at regular intervals. Time series analysis explores t...
This report is about examining the fields of machine learning and digital marketing, using machine l...
As the size and complexity of the internet increased dramatically in recent years,the burden of netw...
In networked systems engineering, operational datagathered from sensors or logs can be used to build...
With the contemporary technological advancements, the adoption of cloud as service has been evolving...
Layer 4-7 network functions (NF), such as Firewall or NAPT, have traditionally been implemented in s...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
This report explores whether machine learning methods such as regression and classification can be u...
The goal of this thesis is to be able to predict customer traffic at postal service points. The expe...
With the explosion of Internet of Things (IoT) technology, network operators tryto provide more and ...
In recent years more companies have invested in electronic commerce as a result of more customers us...
Improved sales forecasts for individual products in retail stores can have a positive effect both en...
Time series forecasting has become a common problem in day-to-day applications and various machine l...
This thesis concerns the prediction of travel times between two points on a map, based on a combinat...
Projektet genomfördes i samarbete med Siemens Healthineers i syfte att utreda möjligheter till att p...
Time series is a collection of points gathered at regular intervals. Time series analysis explores t...
This report is about examining the fields of machine learning and digital marketing, using machine l...
As the size and complexity of the internet increased dramatically in recent years,the burden of netw...
In networked systems engineering, operational datagathered from sensors or logs can be used to build...
With the contemporary technological advancements, the adoption of cloud as service has been evolving...
Layer 4-7 network functions (NF), such as Firewall or NAPT, have traditionally been implemented in s...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
This report explores whether machine learning methods such as regression and classification can be u...
The goal of this thesis is to be able to predict customer traffic at postal service points. The expe...
With the explosion of Internet of Things (IoT) technology, network operators tryto provide more and ...
In recent years more companies have invested in electronic commerce as a result of more customers us...
Improved sales forecasts for individual products in retail stores can have a positive effect both en...
Time series forecasting has become a common problem in day-to-day applications and various machine l...
This thesis concerns the prediction of travel times between two points on a map, based on a combinat...
Projektet genomfördes i samarbete med Siemens Healthineers i syfte att utreda möjligheter till att p...
Time series is a collection of points gathered at regular intervals. Time series analysis explores t...
This report is about examining the fields of machine learning and digital marketing, using machine l...