Estuary
Integration icon
FASTEST, MOST RELIABLE CDC AND ETL

Stream data from MongoDB to Google Bigtable

Move data from MongoDB to Google Bigtable in minutes using Estuary. Stream, batch, or continuously sync data with control over latency from sub-second to batch.

  • No credit card required
  • 30-day free trial
MongoDB logo
Google Bigtable logo
  • 200+Of connectors
  • 5500+Active users
  • <100msEnd-to-end latency
  • 7+GB/secSingle dataflow

How to integrate MongoDB with Google Bigtable in 3 simple steps

1

Connect MongoDB as your data source

Set up a source connector for MongoDB in minutes. Estuary supports streaming (including CDC where available) and batch data capture through events, incremental syncs, or snapshots — without custom pipelines, agents, or manual configuration.

2

Configure Google Bigtable as your destination connector

Estuary supports intelligent schema handling, with schema inference and evolution tools that help align source and destination structures over time. It supports both batch and streaming data movement, reliably delivering data to Google Bigtable.

3

Deploy and Monitor Your End-to-End Data Pipeline

Launch your pipeline and monitor it from a single UI. Estuary guarantees exactly-once delivery, handles backfills and replays, and scales with your data — without engineering overhead.

Try Estuary for Free
MongoDB logo

MongoDB connector details

The Estuary MongoDB connector captures data from MongoDB collections into Estuary in real time using change streams. It continuously streams inserts, updates, and deletes as CDC events while performing an initial snapshot for completeness.

  • Streams real-time CDC events via MongoDB change streams
  • Supports batch modes (snapshot or incremental) for non-streaming collections
  • Performs a live backfill while reading ongoing updates
  • Compatible with MongoDB Atlas, self-hosted clusters, and DocumentDB / Cosmos DB variants
  • Enables secure SSH tunneling for private network connectivity
Xometry logo

See how Xometry uses MongoDB

For more details about the MongoDB connector, check out the documentation page.

Google Bigtable logo

Google Bigtable connector details

The Google Bigtable materialization connector in Estuary delivers data from your pipelines directly into your destination system — continuously and in real time. Using merge-based writes, Estuary efficiently updates only changed records, ensuring your destination stays perfectly in sync without unnecessary reprocessing. Whether for analytics, AI, or operational use cases, Estuary provides a reliable, cost-efficient way to keep Google Bigtable up to date.
  • Merge-based materializations to sync only what's changed
  • Low-latency delivery from streaming and batch sources
  • Automatic schema alignment so your destination matches your pipeline's evolving data
  • Flexible deployment models, including BYOC and hybrid for enterprise governance
  • Unified streaming + batch outputs in a single tool
  • End-to-end security and compliance for sensitive data workloads

For more details about the Google Bigtable connector, check out the documentation page.

Estuary in action

See how to build end-to-end pipelines using no-code connectors in minutes. Estuary does the rest.

Spend 2-5x less

Estuary customers not only do 4x more. They also spend 2-5x less on ETL and ELT. Estuary's unique ability to mix and match streaming and batch loading has also helped customers save as much as 40% on data warehouse compute costs.

Estuary logo

MongoDB to Google Bigtable pricing estimate

$1,000 / month
800 GB of data moved
2 connector instances

Estimated monthly cost to move 800 GB from MongoDB to Google Bigtable is approximately $1,000.

Data moved

Choose how much data you want to move from MongoDB to Google Bigtable each month.

GB

Choose number of sources and destinations.

US VS THE REST

Why pay more?

Move the same data for a fraction of the cost.

Estuary logo
Estuary
Fivetran logo
Fivetran
Confluent logo
Confluent

What customers are saying

Xometry avatar

Andrew Woelfel

Senior Manager, Data Engineering and Analytics, Xometry

“Estuary has been a pleasure to work with and has significantly modernized our data infrastructure, delivering real-time and scalable processes that will significantly impact company-wide operations. Every data-driven organization should be looking at Estuary today.”

Read the Success Story
Recart avatar

Istvan Kovacs

CTO, Recart

Estuary became our real-time data backbone without the cost or complexity of traditional solutions. We replaced a fragile, high-maintenance pipeline with a managed system that just works and scales.

Read the Success Story

Getting started with Estuary

  • Free account

    Getting started with Estuary is simple. Sign up for a free account.

    Sign up
  • Docs

    Make sure you read through the documentation, especially the get started section.

    Learn more
  • Community

    Join the Slack community for the easiest way to get support while getting started.

    Join Slack Community
  • Estuary 101

    Watch the Estuary 101 webinar for a guided introduction to using Estuary.

    Watch

QUESTIONS? FEEL FREE TO CONTACT US ANY TIME!

Contact us

Frequently Asked Questions

    How is pricing calculated for moving data from MongoDB to Google Bigtable?

    Pricing is based on the volume of data moved and the number of active connectors. Use the pricing estimator above to see an estimated monthly cost for your MongoDB to Google Bigtable pipeline.

    Yes. Estuary pipelines are designed for production use, with exactly-once delivery semantics, automated backfills, and continuous operation at scale.

    Yes. Estuary offers multiple deployment options, including fully managed SaaS, private deployments, and bring-your-own-cloud (BYOC). This allows teams to control where their data plane runs and meet security, compliance, and networking requirements. Learn more about Estuary's security and deployment options.

    Yes, it's possible to build a manual pipeline using custom scripts, scheduled jobs, or open-source tools. However, manual approaches typically require ongoing maintenance, custom error handling, schema management, and operational overhead. Estuary simplifies this by providing a managed pipeline with built-in reliability, scaling, and monitoring.

Related articles

DataOps made simple

Add advanced capabilities like schema inference and evolution with a few clicks. Or automate your data pipeline and integrate into your existing DataOps using Estuary's rich CLI.

Schema evolution options

One platform for all data movement

Try Now