In the big data age, extracting applicable information using traditional machine learning methodology is very challenging. This problem emerges from the restricted design of existing traditional machine learning algorithms, which do not entirely support large datasets and distributed processing. The large volume of data nowadays demands an efficient method of building machine-learning classifiers to classify big data. New research is proposed to solve problems by converting traditional machine learning classification into a parallel capable. Apache Spark is recommended as the primary data processing framework for the research activities. The dataset used in this research is related to the telco trouble ticket, identified as one of the large...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
In this paper, we present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a d...
In the big data age, extracting applicable information using traditional machine learning methodolog...
In the Big Data age, extracting applicable information using traditional machine learning methodolog...
Nowadays, the big data marketplace is rising rapidly. The big challenge is finding a system that can...
A customer trouble ticketing system (CTT) is an organization’s tool to track the detection, reporti...
The addition of knowledge and data has increased exponentially in the last decade or so. Previously ...
Data mining is the extraction of information and its roles from a vast amount of data. This topic is...
Recent advancements in the internet, social media, and internet of things (IoT) devices have signifi...
Classification methods can be used to derive values from big data in the form of models, which then ...
Lately, Big Data (BD) classification has become an active research area in different fields namely f...
Abstract—In recent years, Internet is in the period of information explosion and data is becoming hu...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
Abstract—In recent years, Internet is in the period of information explosion and data is becoming hu...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
In this paper, we present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a d...
In the big data age, extracting applicable information using traditional machine learning methodolog...
In the Big Data age, extracting applicable information using traditional machine learning methodolog...
Nowadays, the big data marketplace is rising rapidly. The big challenge is finding a system that can...
A customer trouble ticketing system (CTT) is an organization’s tool to track the detection, reporti...
The addition of knowledge and data has increased exponentially in the last decade or so. Previously ...
Data mining is the extraction of information and its roles from a vast amount of data. This topic is...
Recent advancements in the internet, social media, and internet of things (IoT) devices have signifi...
Classification methods can be used to derive values from big data in the form of models, which then ...
Lately, Big Data (BD) classification has become an active research area in different fields namely f...
Abstract—In recent years, Internet is in the period of information explosion and data is becoming hu...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
Abstract—In recent years, Internet is in the period of information explosion and data is becoming hu...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
The big data concept has elicited studies on how to accurately and efficiently extract valuable info...
In this paper, we present ScalParC (Scalable Parallel Classifier), a new parallel formulation of a d...