Accelerating BigQuery to Databricks Migration | How Syren Modernizes SQL Workloads with BQ2Bricks 

Enterprises modernizing their analytics and AI stacks often struggle to migrate complex SQL workloads from BigQuery to Databricks. BQ2Bricks automates SQL conversion, validation, and optimization, helping teams modernize faster with accuracy and governed performance.

Accelerating BigQuery to Databricks Migration
    Add a header to begin generating the table of contents
    SQL Server data migration with BQ2Bricks

    As analytics, AI, and BI needs intensify, every industry is rethinking its data foundation. Teams that have relied on BigQuery, a fully managed, serverless data warehouse, for years, are now encountering challenges around scalability, governance, cost predictability, and flexibility. Many organizations we work with choose to migrate from BigQuery and other cloud analytics platforms to the Databricks Lakehouse for its end-to-end capabilities, such as governed data ingestion, GenAI, and real-time BI. But the biggest barrier often sits right at the beginning: SQL server data migration from BigQuery to Databricks.

    At Syren, we built BQ2Bricks, our Databricks-native BigQuery to Databricks Migration Accelerator, to solve exactly this problem. It is an end-to-end framework that automates SQL conversion, dependency analysis, validation, and optimization, dramatically reducing the effort and risk associated with SQL migration programs. It gives enterprises a repeatable path to modernize faster, standardize logic, and compare BigQuery and Databricks performance using their actual workloads.

    Why Enterprises Migrate to Databricks Lakehouse

    Across industries like health and life science, finance, retail, manufacturing, and distribution, we see a few consistent drivers behind the shift from BigQuery to Databricks:

    As ambitions grow, organizations quickly realize that SQL migration is not just a technical rewrite; it is a modernization catalyst that affects reporting, AI strategies, FinOps, operational processes, and governance.

    Why BigQuery Migrations Are Challenging

    Based on our experience, the migration bottlenecks usually appear long before SQL is executed on Databricks. Most enterprises struggle with:

    1. Lack of visibility into migration cost and complexity

    Teams often cannot evaluate how much SQL must be rewritten, what patterns are incompatible, or where dialect differences may cause metric drift.

    2. Heavy manual logic and inconsistent metrics

    Many organizations rely on decentralized SQL logic created by different teams. Migrating this manually results in inconsistent metrics and delays in decision-making.

    3. Rising compute costs and performance unpredictability

    BigQuery workloads often grow in ways that create cost overruns and performance bottlenecks, pushing teams toward Databricks for better control.

    4.. Limited governance for cross-domain scaling

    Without unified governance, onboarding new analytics or AI use cases becomes increasingly difficult.

    These challenges are what shaped the design of Syren’s BQ2Bricks accelerator.

    BQ2Bricks | A Databricks-Native Accelerator for SQL Data Migration

    BQ2Bricks streamlines and standardizes how enterprises migrate SQL workloads from BigQuery to Databricks by automating the most complex, error-prone parts of the process. It provides a structured, governed, and AI-assisted approach to modernization.

    Core Capabilities

    BigQuery to Databricks Migration | Use Cases Across Industries

    Finance

    Financial analytics teams often want to test Databricks for faster insights, governed BI, and AI co-pilot adoption. BQ2Bricks accelerates POCs by converting representative BigQuery workloads in days instead of weeks, allowing quick comparison of performance, query cost, and SLA reliability.

    Manufacturing & Distribution

    Many organizations move away from BigQuery due to rising compute costs and uneven performance during peak analytical periods. BQ2Bricks enables rapid conversion + validation so they can evaluate Databricks cost and performance using their actual workloads.

    Retail

    Retail enterprises often suffer from “shadow ETL”, isolated SQL logic embedded across teams with no central governance. BQ2Bricks unifies and standardizes SQL under Delta Lake + Unity Catalog, enabling governed, AI-ready reporting and faster rollout of data products.

    Customer Story

    A large U.S. client operating in retail had relied heavily on BigQuery for years but struggled with unpredictable compute costs, inconsistent performance on large analytical workloads, and difficulty onboarding AI and BI. Their SQL estate had grown organically, hundreds of tables, deeply nested queries, and domain-specific transformations that created platform lock-in.

    By deploying BQ2Bricks, the customer automated SQL ingestion, standardized logic, and translated queries into Databricks-ready code without months of manual rewrites. They quickly validated Databricks' performance, cost efficiencies, and governance advantages. Key outcomes included:

    This helped the organization adopt the Databricks Lakehouse significantly faster, with full confidence in accuracy, governance, and long-term scalability.

    Why Industry Leaders Choose BQ2Bricks for SQL Migration

    If your organization is planning a SQL modernization initiative, explore how our BigQuery to Databricks Migration Accelerator can shorten migration timelines and unlock the full value of the Databricks Lakehouse.

    Scroll to Top