Abstract—We study the multi-resource allocation problem in cloud computing systems where the resource pool is constructed from a large number of heterogeneous servers, representing different points in the configuration space of resources such as processing, memory, and storage. We design a multi-resource allocation mechanism, called DRFH, that generalizes the notion of Dominant Resource Fairness (DRF) from a single server to multiple heterogeneous servers. DRFH provides a number of highly desirable properties. With DRFH, no user prefers the allocation of another user; no one can improve its allocation without decreasing that of the others; and more importantly, no coalition behavior of misreporting resource demands can benefit all its membe...
Recently, there has been a dramatic increase in the popularity of cloud computing systems that rent ...
Cloud computing system represents unprecedented heterogeneity Server specificatio
Users of cloud computing platforms pose different types of demands for multiple resources on servers...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Resource allocation with fairness, considering multiple types of resources has become a substantial ...
Efficient and fair allocation of multiple types of resources is a crucial objective in a cloud/distr...
Cloud computing is a novel paradigm which provides on demand, scalable and pay-as-you-use computing ...
A Multi-Resource Fair Allocation Mechanism, Also Called Per-Server Dominant Share Fairness (PSDSF), ...
This dissertation focuses on algorithm design and prototype implementation of fair sharing policies ...
Cloud computing is a novel paradigm which provides on demand, scalable and pay-as-you-use computing ...
A fundamental premise in cloud computing is trying to provide a more sophisticated computing resourc...
A fundamental premise in cloud computing is trying to provide a more sophisticated computing resourc...
Recently, there has been a dramatic increase in the popularity of cloud computing systems that rent ...
Cloud computing system represents unprecedented heterogeneity Server specificatio
Users of cloud computing platforms pose different types of demands for multiple resources on servers...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Abstract—We study the multi-resource allocation problem in cloud computing systems where the resourc...
Resource allocation with fairness, considering multiple types of resources has become a substantial ...
Efficient and fair allocation of multiple types of resources is a crucial objective in a cloud/distr...
Cloud computing is a novel paradigm which provides on demand, scalable and pay-as-you-use computing ...
A Multi-Resource Fair Allocation Mechanism, Also Called Per-Server Dominant Share Fairness (PSDSF), ...
This dissertation focuses on algorithm design and prototype implementation of fair sharing policies ...
Cloud computing is a novel paradigm which provides on demand, scalable and pay-as-you-use computing ...
A fundamental premise in cloud computing is trying to provide a more sophisticated computing resourc...
A fundamental premise in cloud computing is trying to provide a more sophisticated computing resourc...
Recently, there has been a dramatic increase in the popularity of cloud computing systems that rent ...
Cloud computing system represents unprecedented heterogeneity Server specificatio
Users of cloud computing platforms pose different types of demands for multiple resources on servers...