4 research outputs found
Scalable and responsive real time event processing using cloud computing
PhD ThesisCloud computing provides the potential for scalability and adaptability in a cost e ective
manner. However, when it comes to achieving scalability for real time applications
response time cannot be high. Many applications require good performance and low
response time, which need to be matched with the dynamic resource allocation. The
real time processing requirements can also be characterized by unpredictable rates
of incoming data streams and dynamic outbursts of data. This raises the issue of
processing the data streams across multiple cloud computing nodes. This research
analyzes possible methodologies to process the real time data in which applications
can be structured as multiple event processing networks and be partitioned over the
set of available cloud nodes. The approach is based on queuing theory principles
to encompass the cloud computing. The transformation of the raw data into useful
outputs occurs in various stages of processing networks which are distributed across
the multiple computing nodes in a cloud. A set of valid options is created to understand
the response time requirements for each application. Under a given valid set of
conditions to meet the response time criteria, multiple instances of event processing
networks are distributed in the cloud nodes. A generic methodology to scale-up and
scale-down the event processing networks in accordance to the response time criteria
is de ned. The real time applications that support sophisticated decision support
mechanisms need to comply with response time criteria consisting of interdependent
data
ow paradigms making it harder to improve the performance. Consideration is
given for ways to reduce the latency,improve response time and throughput of the real
time applications by distributing the event processing networks in multiple computing
nodes