Analyzing massive-data sets and streams is computationally very challenging. Data sets in systems biology, network analysis and security use network abstraction to construct large-scale graphs. Graph algorithms such as traversal and search are memory-intensive and typically require very little computation, with access patterns that are irregular and fine-grained. The increasing streaming data rates in various domains such as security, mining, and finance leaves algorithm designers with only a handful of clock cycles (with current general purpose computing technology) to process every incoming byte of data in-core at real-time. This along with increasing complexity of mining patterns and other analytics puts further pressure on already high ...
The quantity of rich, semi-structured data generated by sensor networks, scientific simulation, busi...
This open access book surveys the progress in addressing selected challenges related to the growth o...
The field of streaming algorithms has enjoyed a deal of focus from the theoretical computer science ...
Analyzing massive-data sets and streams is computationally very challenging. Data sets in systems b...
Irregular algorithms such as graph algorithms, sorting, and sparse matrix multiplication, present nu...
This thesis proposes a reconfigurable computing approach for supporting parallel processing in large...
Large-scale internet services, such as Facebook or Google, are using clusters of many servers for pr...
Graphs are a fundamental and widely-used abstraction for representing data. We can analytically stud...
This paper presents two complementary statistical computing frameworks that address challenges in pa...
Efficiently storing and processing massive graph data sets is a challenging problem as researchers ...
Large datasets require high processing power to compute, high-speed network connections to transmit,...
Many modern services need to routinely perform tasks on a large scale. This prompts us to consider t...
Concurrency levels in large-scale, distributed-memory supercomputers are rising exponentially. Moder...
Huge data sets containing millions of training examples with a large number of attributes are relati...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...
The quantity of rich, semi-structured data generated by sensor networks, scientific simulation, busi...
This open access book surveys the progress in addressing selected challenges related to the growth o...
The field of streaming algorithms has enjoyed a deal of focus from the theoretical computer science ...
Analyzing massive-data sets and streams is computationally very challenging. Data sets in systems b...
Irregular algorithms such as graph algorithms, sorting, and sparse matrix multiplication, present nu...
This thesis proposes a reconfigurable computing approach for supporting parallel processing in large...
Large-scale internet services, such as Facebook or Google, are using clusters of many servers for pr...
Graphs are a fundamental and widely-used abstraction for representing data. We can analytically stud...
This paper presents two complementary statistical computing frameworks that address challenges in pa...
Efficiently storing and processing massive graph data sets is a challenging problem as researchers ...
Large datasets require high processing power to compute, high-speed network connections to transmit,...
Many modern services need to routinely perform tasks on a large scale. This prompts us to consider t...
Concurrency levels in large-scale, distributed-memory supercomputers are rising exponentially. Moder...
Huge data sets containing millions of training examples with a large number of attributes are relati...
Graphs' versatile ability to represent diverse relationships, make them effective for a wide range o...
The quantity of rich, semi-structured data generated by sensor networks, scientific simulation, busi...
This open access book surveys the progress in addressing selected challenges related to the growth o...
The field of streaming algorithms has enjoyed a deal of focus from the theoretical computer science ...