We are excited to announce a significant upgrade to the Traceye Developer Kit for Dedicated Graph Nodes: Ledger & Indexed Data Pruning. This new feature is engineered to enhance efficiency by optimising storage space and improving query performance through smart data pruning strategies.
Details of the Update:
Ledger Data pruning
![image.png]()The Graph Node works by storing all Blockchain transactional data in Postgres for faster indexing of historical data for new subgraphs. This feature is not suitable for Enterprises and entities managing their own Graph Node for a specific use case.
Indexed Data Pruning
![image.png]()A high volume of contract transactions can lead to an explosion of records in Subgraph Entities. Extremely large DB tables lead to slow speed in SQL query processing. Entities may not necessarily use older historical indexed data.
Kick Start your Data Indexing Journey with Traceye Dedicated Nodes:
Traceye offers everything you need for your dedicated graph nodes, and these new features are now available to all Traceye users.
"Today's blockchain needs are incredibly dynamic and demand not just more data, but smarter data management. With Ledger & Indexed Data Pruning, we're stripping down to the essentials, allowing our clients to maintain optimal performance and cost-effectiveness. These tools are not just upgrades—they're essential elements for any data-intensive blockchain application.”
Ghan Vashishtha
Traceye supports seamless data indexing for a variety of platforms, including custom Ethereum L2/L3 rollups, Avalanche Subnets, permissioned chains like Hyperledger Besu and Cosmos SDK Chains, and Substrate chains (including Polkadot Parachains and all relay chains).
Interested in Traceye Dedicated Nodes? Visit our page for more details. Want to try Traceye? Get a complimentary subgraph for development purposes. Start for free today. Have questions? Our experts are here to simplify your blockchain data management needs.
Spam de copypasta.
Downvoting a post can decrease pending rewards and make it less visible. Common reasons:
Submit