Meta Completes Massive Data Ingestion Migration to Boost Reliability at Hyperscale
Breaking: Meta Successfully Migrates Entire Data Ingestion System to New Architecture
Meta announced today the completion of a large-scale migration of its data ingestion system, moving from a legacy customer-owned pipeline model to a self-managed data warehouse service. The overhaul affects the backbone that powers analytics, machine learning, and real-time decisions across the company.

The new architecture handles petabytes of social graph data daily from one of the world's largest MySQL deployments. Engineers say the revamp significantly improves efficiency and reliability under strict landing time requirements.
Migration Challenge
“As our operations grew, the legacy system showed instability under increasingly strict data landing time requirements,” said a Meta engineering lead. The team had to ensure seamless transition for thousands of jobs while maintaining rollout and rollback controls.
The migration lifecycle included rigorous verification: no data quality issues (comparing row count and checksum), no latency regression, and no resource utilization regression before moving to the next step.
Background
Meta’s social graph is powered by one of the largest MySQL deployments globally. The data ingestion system incrementally scrapes petabytes daily into the warehouse for analytics, reporting, and downstream products. The legacy system worked well at small scale but struggled at hyperscale.

The new architecture simplifies pipelines into a self-managed service. The transition covered 100% of the workload, with the legacy system fully deprecated.
What This Means
For Meta’s engineering teams, this migration ensures up-to-date snapshots of the social graph with greater reliability. It also sets a precedent for large-scale system migrations in the industry.
“Migrating a data ingestion system of this scale is a major challenge. Several important solutions and strategies helped make it successful,” the lead added. The company expects downstream benefits in machine learning model training and product development.
For more details, see Meta’s engineering blog on the migration lifecycle and rollback controls.
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