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Does your team rely on Snowflake or BigQuery as your data warehouse? We built the step that every other onchain data provider skips. Transform first, deliver only what you need. dbt Connector → Datashare is now live. Query against 130+ chains ➡️ Transform with dbt on DuneSQL ➡️ Deliver...

31,177 views • 3 months ago •via X (Twitter)

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