Horizontal Scaling of Transaction-Creating Machines
- URL: http://arxiv.org/abs/2305.17039v1
- Date: Fri, 26 May 2023 15:49:09 GMT
- Title: Horizontal Scaling of Transaction-Creating Machines
- Authors: Ole Delzer, Ingo Weber, Richard Hobeck, Stefan Schulte
- Abstract summary: We propose four different approaches for horizontal scaling of transaction creation in blockchains.
Two of the four proposed approaches are feasible to scale transaction creation horizontally.
- Score: 0.08192907805418582
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Blockchain technology has become one of the most popular trends in IT over
the last few years. Its increasing popularity and the discovery of ever more
use cases raises the question of how to improve scalability. While researchers
are exploring ways to scale the on-chain processing of transactions, the
scalability of the off-chain creation of transactions has not been investigated
yet. This is relevant for organizations wishing to send a high volume of
transactions in a short time frame, or continuously, e.g., manufacturers of
high-volume products. Especially for blockchain implementations such as
Ethereum, which require transactions to include so-called nonces (essentially a
sequence number), horizontally scaling transaction creation is non-trivial. In
this paper, we propose four different approaches for horizontal scaling of
transaction creation in Ethereum. Our experimental evaluation examines the
performance of the different approaches in terms of scalability and latency and
finds two of the four proposed approaches feasible to scale transaction
creation horizontally.
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