Large-scale data analytical applications such as social network analysis and web analysis have revolutionized modern computing. The processing demand posed by an unprecedented amount of data challenges both industrial practitioners and academia researchers to design and implement highly efficient and scalable system infrastructures. However, Big Data processing is fundamentally limited by inefficiencies inherent with the underlying programming languages. While offering several invaluable benefits, a managed runtime comes with time and space overheads. In large-scale systems, the runtime system cost can be easily magnified and become the critical performance bottleneck. Our experience with dozens of real-world systems reveals the root cause ...
The increasing number of Internet of things (IoT) and other connected devices has led to a surge in ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
The past decade has witnessed the increasing demands on data-driven business intelligence that led t...
In recent years, the world has seen an explosion in the amount of data being generated. Google propo...
Big data processing has recently gained a lot of attention both from academia and industry. The term...
Current trends in industrial systems opt for the use of different big-data engines as a mean to proc...
Planning optimized memory management is critical for Big Data analysis tools to perform faster runti...
Big data analysis imposes new challenges and requirements on programming support. Programming platfo...
Over the past years, frameworks such as MapReduce and Spark have been introduced to ease the task of...
Big data analytics frameworks, such as Spark and Giraph, need to process and cache massive amounts o...
Advances in ICT today has made data more voluminous and multifarious and its being transferred at hi...
Big data processing is no longer restricted to specially-trained engineers. Instead, domain experts,...
The need for efficiently managing Big Data has grown due the large sizes of data sets encountered by...
Many Big Data analytics and IoT scenarios rely on fast and non-relational storage (NoSQL) to help pr...
The increasing number of Internet of things (IoT) and other connected devices has led to a surge in ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
The past decade has witnessed the increasing demands on data-driven business intelligence that led t...
In recent years, the world has seen an explosion in the amount of data being generated. Google propo...
Big data processing has recently gained a lot of attention both from academia and industry. The term...
Current trends in industrial systems opt for the use of different big-data engines as a mean to proc...
Planning optimized memory management is critical for Big Data analysis tools to perform faster runti...
Big data analysis imposes new challenges and requirements on programming support. Programming platfo...
Over the past years, frameworks such as MapReduce and Spark have been introduced to ease the task of...
Big data analytics frameworks, such as Spark and Giraph, need to process and cache massive amounts o...
Advances in ICT today has made data more voluminous and multifarious and its being transferred at hi...
Big data processing is no longer restricted to specially-trained engineers. Instead, domain experts,...
The need for efficiently managing Big Data has grown due the large sizes of data sets encountered by...
Many Big Data analytics and IoT scenarios rely on fast and non-relational storage (NoSQL) to help pr...
The increasing number of Internet of things (IoT) and other connected devices has led to a surge in ...
Next generation real-time applications demand big-data infrastructures to process huge and continuou...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...