Dex – Claude Code / Codex Skills for Analytics Engineering Exmergo launched Dex, an AI agent for analytics engineering that integrates with Claude Code and other coding agents to automate data warehouse exploration, dbt transformations, and schema-drift maintenance. Dex achieves 76% task resolution on the ADE-bench benchmark at 2.5x lower cost than competing models, supporting cloud warehouses like Snowflake, BigQuery, and Databricks. Built by Exmergo · AI Agents for Your Data Stack. Run these commands inside Claude Code one at a time /plugin marketplace add exmergo/exmergo-agent-plugins /plugin install dex@exmergo Update later with /plugin marketplace update exmergo . The skills appear as /dex:explore , /dex:transform , and /dex:maintain and auto-trigger on matching intent. Run this command in your terminal npx skills install exmergo/dex dex is analytics engineering for Claude Code and any agent : data warehouse exploration , dbt transformation and semantic modeling , and schema-drift maintenance on dbt. Point it at your warehouse or a local DuckDB file and your dbt project; it learns the landscape, writes and refactors your dbt transformations and semantic models, and tells you what to fix when anything drifts. The dbt project is the source of truth; every change is a reviewable diff. Read-only against your data. It closes the gap a general coding agent still has : agents re-learn the schema each session, have no strategy for thousands of tables, are blind to warehouse cost, will pull sensitive data into context, do not treat a dbt project as a first-class object, and have no concept of a semantic model to keep coherent over time. dex owns exactly that loop. Explore. Transform. Maintain. ETM Explore an unfamiliar warehouse: rank what matters, profile selectively, infer and verify joins, answer ad-hoc questions with guarded SQL probes behind a PII-aware query firewall, persist a draft map. Fully read-only. Transform the dbt project: author dbt models staging to marts with tests and docs, and the semantic layer on top entities, dimensions, measures, metrics as dbt semantic models MetricFlow YAML , with a free Viz preview. Validated against a dev target, cost-guarded. Maintain the project as it drifts: diff the warehouse and dbt against the last snapshot, surface schema, volume, grain, and definition drift ranked by blast radius, and propose edits. On ADE-bench 75 analytics-engineering tasks: fix, build, and extend dbt projects on DuckDB , dex reaches 76% task resolution with Claude Sonnet 5 , at 2.5x lower cost than Claude Fable 5 . With dex , accuracy clusters tightly across models 72-76% while cost does not, so you can run an inexpensive model and still get top-tier results. Full methodology, per-model cost, and the raw results.json for every run are in the benchmark README /exmergo/dex/blob/main/benchmarks/ade bench/README.md . We publish these to be transparent, not to overclaim. A task-resolution score measures whether tests pass; it does not measure what matters most in practice: the experience of the human engineer working with the agent. Trust in a diff, clarity of the proposed change, cost surfaced before spend, and sensitive data kept out of context never show up in a pass rate. We optimize for that experience first and treat the benchmark as a floor, not the goal. - Cloud warehouse: Snowflake , BigQuery , Databricks , Amazon Redshift Serverless-first . - Embedded analytical: DuckDB . - Operational database: Postgres . Credentials are discovered, never asked for: BigQuery through Application Default Credentials gcloud auth application-default login , Snowflake through connections.toml , SNOWFLAKE env, or a dbt profile, Databricks through the SDK's unified chain databricks auth login , DATABRICKS env, or a dbt profile , Redshift through the AWS credential chain a pinned Serverless workgroup mints IAM temporary database credentials or REDSHIFT env, Postgres through pg service.conf , DATABASE URL , the PG environment, or a dbt profile. Every scan is estimated and confirmed before it spends, capped server-side maximum bytes billed on BigQuery; a per-statement statement timeout on Snowflake, Databricks, Redshift, and Postgres, whose budgets are warehouse-seconds with credits or DBUs alongside, compute-seconds with RPU-hours alongside, and database-seconds respectively , and recorded in a local spend ledger. - Cloud warehouse: Microsoft Fabric dex also bundles the exmergo-dex-core Python package. This is the reusable and agent-friendly package that contains all the core explore, transform, and maintain logic. This also holds connectors and the write logic for .dex/ which stores cache, snapshots, and query billing logs. You can install it yourself in your projects: pip install exmergo-dex-core or uv add exmergo-dex-core More info in the package's README.md - Cross-agent contract: . AGENTS.md - References connectors, the contract, the canonical model, evaluation : . references/ See CONTRIBUTING.md /exmergo/dex/blob/main/CONTRIBUTING.md for local setup, the Ruff lint and format workflow, and the pre-commit hook. Every pull request into main must pass the Lint workflow and CI before it can merge.Connect with the Analytics Engineering Community Data Engineers welcome as well and discover how Exmergo brings AI Agents to Your Data Stack. Apache-2.0.