Towards a Hybrid Cloud Platform Using Apache Mesos
نویسندگان
چکیده
Hybrid cloud technology is becoming increasingly popular as it merges private and public clouds to bring the best of two worlds together. However, due to the heterogeneous cloud installation, facilitating a hybrid cloud setup is not simple. Despite the availability of some commercial solutions to build a hybrid cloud, an open source implementation is still unavailable. In this paper, we try to bridge the gap by providing an open source implementation by leveraging the power of Apache Mesos. We build a hybrid cloud on the top of multiple cloud platforms, private and public.
منابع مشابه
Towards a Lightweight Multi-Cloud DSL for Elastic and Transferable Cloud-native Applications
Cloud-native applications are intentionally designed for the cloud in order to leverage cloud platform features like horizontal scaling and elasticity – benefits coming along with cloud platforms. In addition to classical (and very often static) multi-tier deployment scenarios, cloud-native applications are typically operated on much more complex but elastic infrastructures. Furthermore, there ...
متن کاملMesos: A Platform for Fine-Grained Resource Sharing in the Data Center
We present Mesos, a platform for sharing commodity clusters between multiple diverse cluster computing frameworks, such as Hadoop and MPI 1. Sharing improves cluster utilization and avoids per-framework data replication. Mesos shares resources in a fine-grained manner, allowing frameworks to achieve data locality by taking turns reading data stored on each machine. To support the sophisticated ...
متن کاملMegos: Enterprise Resource Management in Mesos Clusters
Enterprise data centers increasingly adopt a cloud-like architecture that enables the execution of multiple workloads on a shared pool of resources, reduces the data center footprint and drives down the costs. The Apache Mesos project is emerging as a leading open source resource management technology for server clusters. However, the default Mesos allocation mechanism lacks a number of policy ...
متن کاملPerformance Interference of Multi-tenant, Big Data Frameworks in Resource Constrained Private Clouds
In this paper, we investigate and characterize the behavior of “big” and “fast” data analysis frameworks, in multitenant, shared settings for which computing resources (CPU and memory) are limited. Such settings and frameworks are frequently employed in both public and private cloud deployments. Resource constraints stem from both physical limitations (private clouds) and what the user is willi...
متن کاملResource Revocation in Apache Mesos
We demonstrate how adding resource revocation to Mesos allows the system to provide latency and resource guarantees to frameworks. Mesos, which uses dominant resource fairness to offers of new resources, was designed initially for primarly MapReduce-like and found to provide weak guarantees with more general workloads. This project resolved this issue by allowing frameworks to explicitely state...
متن کامل