This thesis presents Caesar, a novel multi-leader Generalized Consensus protocol for geographically replicated systems. Caesar is able to achieve near-perfect availability, provide high performance - low latency and high throughput compared to the existing state-of-the- art, and tolerate replica failures. Recently, a number of state-of-the-art consensus protocols that implement the Generalized Consensus definition have been proposed. However, the major limitation of these existing approaches is the significant performance degradation when application workload produces conflicting requests. Caesar's main goal is to overcome this limitation by changing the way a fast decision is taken: its ordering protocol does not reject a fast decision for a client request if a quorum of nodes reply with different dependency sets for that request. It only switches to a slow decision if there is no chance to agree on the proposed order for that request. Caesar is able to achieve this using a combination of wait condition and logical time stamping. The effectiveness of Caesar is demonstrated through an evaluation study performed on Amazon's EC2 infrastructure using 5 geo-replicated sites. Caesar outperforms other multi-leader (e.g., EPaxos) competitors by as much as 1.7x in presence of 30% conflicting requests, and single-leader (e.g., Multi-Paxos) by as much as 3.5x. The protocol is also resistant to heavy client loads unlike existing protocols. / Master of Science / Today, there exists a plethora of online services (e.g. Facebook, Google) that serve millions of users daily. Usually, each of these services have multiple subcomponents that work cohesively to deliver a rich user experience. One vital component that is prevalent in these services is the one that maintains the shared state. One example of a shared state component is a database, which enables operations on structured data. Such shared states are replicated across multiple server nodes, and even across multiple data centers to guarantee availability, i.e., if a node fails, other nodes can still serve requests on the shared state; low-latency, i.e., placing the copy of the shared state in a datacenter closer to the users will reduce the time required to serve the users; and scalability, i.e., the bottleneck that a single server node cannot serve millions of concurrent requests can be alleviated by having multiple nodes serve users at the same time. These replicated shared states need to be kept consistent i.e. every copy of the shared state must be the same in all the replicated nodes, and maintaining this consistency requires that each of these replicating nodes communicate with each other and reach an agreement on the order in which the operations on the shared data should be applied. In that regard, this thesis proposes Caesar, a consensus protocol with the aforementioned guarantees that will ease the deployment of services that contain a shared state. It addresses the problem of performance degradation in existing approaches when the same part of the shared state are accessed by multiple users that are connected to different server nodes. The effectiveness of Caesar is demonstrated through an evaluation study performed by deploying the protocol on five of Amazon’s data centers around the world. Caesar outperforms the existing state-of-the-art by as much as 3.5x. Caesar is also resistant to heavy client loads unlike existing protocols.
Identifer | oai:union.ndltd.org:VTETD/oai:vtechworks.lib.vt.edu:10919/79945 |
Date | 15 May 2017 |
Creators | Arun, Balaji |
Contributors | Electrical and Computer Engineering, Ravindran, Binoy, Zeng, Haibo, Broadwater, Robert |
Publisher | Virginia Tech |
Source Sets | Virginia Tech Theses and Dissertation |
Language | en_US |
Detected Language | English |
Type | Thesis, Text |
Format | application/pdf |
Rights | In Copyright, http://rightsstatements.org/vocab/InC/1.0/ |
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