Security News
Opengrep Emerges as Open Source Alternative Amid Semgrep Licensing Controversy
Opengrep forks Semgrep to preserve open source SAST in response to controversial licensing changes.
@aztec/kv-store
Advanced tools
The Aztec KV store is an implementation of a durable key-value database with a pluggable backend. The only supported backend right now is LMDB by using the [`lmdb-js` package](https://github.com/kriszyp/lmdb-js).
The Aztec KV store is an implementation of a durable key-value database with a pluggable backend. The only supported backend right now is LMDB by using the lmdb-js
package.
This package exports a number of primitive data structures that can be used to build domain-specific databases in each node component (e.g. a PXE database or an Archiver database). The data structures supported:
FAQs
The Aztec KV store is an implementation of a durable key-value database with a pluggable backend. The only supported backend right now is LMDB by using the [`lmdb-js` package](https://github.com/kriszyp/lmdb-js).
The npm package @aztec/kv-store receives a total of 152 weekly downloads. As such, @aztec/kv-store popularity was classified as not popular.
We found that @aztec/kv-store demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 6 open source maintainers collaborating on the project.
Did you know?
Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.
Security News
Opengrep forks Semgrep to preserve open source SAST in response to controversial licensing changes.
Security News
Critics call the Node.js EOL CVE a misuse of the system, sparking debate over CVE standards and the growing noise in vulnerability databases.
Security News
cURL and Go security teams are publicly rejecting CVSS as flawed for assessing vulnerabilities and are calling for more accurate, context-aware approaches.