From legacy SQL to modern data platforms. Automatically.
Datachecks Translation Agent uses AI to rewrite SQL, ETL, and stored logic from systems like Oracle, Teradata, or Redshift into Snowflake, Databricks, or BigQuery — faster, safer, and with complete transparency.
A three-stage AI-driven pipeline powered by Datachecks’ Synthetic Data Engine — translating logic, comparing results, and delivering fully validated code.
The Translation Agent is designed to solve modernization challenges— automating the repetitive 80% of code migration while keeping humans in control of the critical 20%.
Challenge
Traditional Approach
Datachecks Approach
Built-in, adaptive AI
Manual Rewrite
Manual input required
SQL engineers manually edit 1000s of lines
Manual input required
LLM + rule engine rewrites automatically
Built-in, adaptive AI
Code Quality
Manual input required
Breaks due to dialect mismatch
Manual input required
Semantic-aware, tested with synthetic data
Built-in, adaptive AI
Traceability
Manual input required
No audit trail
Manual input required
Versioned translation logs and diff views
Built-in, adaptive AI
Confidence
Manual input required
QA only at the end
Manual input required
Continuous translation + test loop
Challenge
Traditional Approach
Datachecks Approach
Manual Rewrite
SQL Engineers manually edit 1000's of lines
LLM + rule engine rewrites automatically
Code Quality
Breaks due to dialect mismatch
Semantic-aware, tested with synthetic data
Traceability
No audit trail
Versioned translation logs and diff views
Confidence
QA only at the end
Continuous translation + test loop
Enterprise-Grade Trust.
Deployed in your environment, aligned to SOC 2 and ISO, and engineered with complete auditability and data privacy at its core.
Deployed to your infrastructure, so no data leaves your network
Datachecks has undergone SOC 2 Type II attestation and undergoes annual audits.
How does the Translation Agent convert SQL or ETL logic between platforms?
It uses LLM-powered transformation models fine-tuned for SQL dialects. The agent rewrites queries, stored procedures, and ETL logic into the target platform syntax — Oracle to Databricks, SQL Server to Snowflake, etc.
How accurate is the translation output?
Translation accuracy is typically 80–95%, depending on the code complexity. The platform provides explainable transformations and lets engineers review or edit rewrites before deployment.
Can Datachecks handle procedural logic or complex stored procedures?
Yes. Beyond simple SQL, the agent supports PL/SQL, T-SQL, and Teradata BTEQ transformations, translating both procedural and declarative code with detailed audit logs.
Does it integrate with my existing CI/CD or DevOps pipeline?
Yes. Translation outputs can be exported as scripts or API-fed directly into dbt, Airflow, Jenkins, or Git-based workflows, keeping migrations aligned with your release process.
How do you ensure reliability after translation?
Each translation is version-controlled, validated syntactically, and passed automatically to the Validation Agent for cross-environment testing before deployment.
How much faster can we migrate using the Translation Agent?
Teams report up to 80% reduction in manual code rewrite time, accelerating database or warehouse migration timelines from months to weeks.
Let the Agent Handle the Hardest Part of Migration