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arxiv: 1305.1992 · v1 · pith:SQK5P2TTnew · submitted 2013-05-09 · 💻 cs.SE · cs.DL

HTTP Mailbox - Asynchronous RESTful Communication

classification 💻 cs.SE cs.DL
keywords httpmailboxasynchronouscommunicationimplementationrestfulallowsapachebench
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We describe HTTP Mailbox, a mechanism to enable RESTful HTTP communication in an asynchronous mode with a full range of HTTP methods otherwise unavailable to standard clients and servers. HTTP Mailbox allows for broadcast and multicast semantics via HTTP. We evaluate a reference implementation using ApacheBench (a server stress testing tool) demonstrating high throughput (on 1,000 concurrent requests) and a systemic error rate of 0.01%. Finally, we demonstrate our HTTP Mailbox implementation in a human assisted web preservation application called "Preserve Me".

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