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Fantastic tidings for the XRP supporters! The XRP Ledger has recently been enhanced with a state-of-the-art iteration of rippled.
A fresh alteration is available for balloting, in accordance with the XRP Ledger’s modification procedure, which permits protocol adjustments after securing backing from more than 80% of dependable verifiers for a fortnight.
## Fresh Characteristics
The recent revision presents multiple fresh characteristics, encompassing a novel simulation API technique for assessing transactions and observing simulated metadata. It also permits the specification of the Merkle Patricia Trie (MPT) when delineating assets in transactions. There’s a fresh XRPL Foundation subdomain, facilitating a gradual relocation without altering the present Unique Node List (UNL) keys. Comprehensive records of each validation and proposition received from the network are also incorporated.
The update augments UNL security by permitting validators to establish a minimum count of UNL publishers for validator accord and refreshing the XRPL Foundation UNL keys. It enhances the git commit hash lookup when scrutinizing the version of rippled debug builds. Furthermore, missing dependency installations for the universal MacOS runner have been appended.
Error corrections encompass refreshing outdated Github actions. Issues obstructing rippled from constructing on Windows with VS2022 have been rectified, as well as a snag where the leveling script overlooked single-line annotations throughout dependency scrutiny. Additional error corrections address MacOS unit assessments, and issues where validators didn’t precisely reflect alteration votes, with debugging logs appended for alteration balloting.
Potential double-spending predicaments have been addressed, along with a problem impeding the retrieval of previously unsuccessful inbound ledgers if a fresh trusted proposition is received.
Other enhancements encompass amplified log legibility, refreshed Conan dependencies, and refreshed build flags to rectify performance regressions.