PricingDocs
Bars

Data Platform

Managed ClickHouse
Production-ready with Tinybird's DX
Streaming ingestion
High-throughput streaming ingest
Schema iteration
Safe migrations with zero downtime
Connectors
Plug and play Kafka, S3, and GCS

Developer Experience

Instant SQL APIs
Turn SQL into an endpoint
BI & Tool Connections
Connect your BI tools and ORMs
Tinybird Code
Ingest and query from your terminal

Enterprise

Tinybird AI
AI resources for LLMs and agents
High availability
Fault-tolerance and auto failovers
Security and compliance
Certified SOC 2 Type II for enterprise
Sign inSign up
Product []

Data Platform

Managed ClickHouse
Production-ready with Tinybird's DX
Streaming ingestion
High-throughput streaming ingest
Schema iteration
Safe migrations with zero downtime
Connectors
Plug and play Kafka, S3, and GCS

Developer Experience

Instant SQL APIs
Turn SQL into an endpoint
BI & Tool Connections
Connect your BI tools and ORMs
Tinybird Code
Ingest and query from your terminal

Enterprise

Tinybird AI
AI resources for LLMs and agents
High availability
Fault-tolerance and auto failovers
Security and compliance
Certified SOC 2 Type II for enterprise
PricingDocs
Resources []

Learn

Blog
Musings on transformations, tables and everything in between
Customer Stories
We help software teams ship features with massive data sets
Videos
Learn how to use Tinybird with our videos
ClickHouse for Developers
Understand ClickHouse with our video series

Build

Templates
Explore our collection of templates
Tinybird Builds
We build stuff live with Tinybird and our partners
Changelog
The latest updates to Tinybird

Community

Slack Community
Join our Slack community to get help and share your ideas
Open Source Program
Get help adding Tinybird to your open source project
Schema > Evolution
Join the most read technical biweekly engineering newsletter

Our Columns:

Skip the infra work. Deploy your first ClickHouse
project now

Get started for freeRead the docs
A geometric decoration with a matrix of rectangles.

Product /

ProductWatch the demoPricingSecurityRequest a demo

Company /

About UsPartnersShopCareers

Features /

Managed ClickHouseStreaming IngestionSchema IterationConnectorsInstant SQL APIsBI & Tool ConnectionsTinybird CodeTinybird AIHigh AvailabilitySecurity & Compliance

Support /

DocsSupportTroubleshootingCommunityChangelog

Resources /

ObservabilityBlogCustomer StoriesTemplatesTinybird BuildsTinybird for StartupsRSS FeedNewsletter

Integrations /

Apache KafkaConfluent CloudRedpandaGoogle BigQuerySnowflakePostgres Table FunctionAmazon DynamoDBAmazon S3

Use Cases /

User-facing dashboardsReal-time Change Data Capture (CDC)Gaming analyticsWeb analyticsReal-time personalizationUser-generated content (UGC) analyticsContent recommendation systemsVector search
All systems operational

Copyright © 2025 Tinybird. All rights reserved

|

Terms & conditionsCookiesTrust CenterCompliance Helpline
Tinybird wordmark
PricingDocs
Bars

Data Platform

Managed ClickHouse
Production-ready with Tinybird's DX
Streaming ingestion
High-throughput streaming ingest
Schema iteration
Safe migrations with zero downtime
Connectors
Plug and play Kafka, S3, and GCS

Developer Experience

Instant SQL APIs
Turn SQL into an endpoint
BI & Tool Connections
Connect your BI tools and ORMs
Tinybird Code
Ingest and query from your terminal

Enterprise

Tinybird AI
AI resources for LLMs and agents
High availability
Fault-tolerance and auto failovers
Security and compliance
Certified SOC 2 Type II for enterprise
Sign inSign up
Product []

Data Platform

Managed ClickHouse
Production-ready with Tinybird's DX
Streaming ingestion
High-throughput streaming ingest
Schema iteration
Safe migrations with zero downtime
Connectors
Plug and play Kafka, S3, and GCS

Developer Experience

Instant SQL APIs
Turn SQL into an endpoint
BI & Tool Connections
Connect your BI tools and ORMs
Tinybird Code
Ingest and query from your terminal

Enterprise

Tinybird AI
AI resources for LLMs and agents
High availability
Fault-tolerance and auto failovers
Security and compliance
Certified SOC 2 Type II for enterprise
PricingDocs
Resources []

Learn

Blog
Musings on transformations, tables and everything in between
Customer Stories
We help software teams ship features with massive data sets
Videos
Learn how to use Tinybird with our videos
ClickHouse for Developers
Understand ClickHouse with our video series

Build

Templates
Explore our collection of templates
Tinybird Builds
We build stuff live with Tinybird and our partners
Changelog
The latest updates to Tinybird

Community

Slack Community
Join our Slack community to get help and share your ideas
Open Source Program
Get help adding Tinybird to your open source project
Schema > Evolution
Join the most read technical biweekly engineering newsletter

Skip the infra work. Deploy your first ClickHouse
project now

Get started for freeRead the docs
A geometric decoration with a matrix of rectangles.

Product /

ProductWatch the demoPricingSecurityRequest a demo

Company /

About UsPartnersShopCareers

Features /

Managed ClickHouseStreaming IngestionSchema IterationConnectorsInstant SQL APIsBI & Tool ConnectionsTinybird CodeTinybird AIHigh AvailabilitySecurity & Compliance

Support /

DocsSupportTroubleshootingCommunityChangelog

Resources /

ObservabilityBlogCustomer StoriesTemplatesTinybird BuildsTinybird for StartupsRSS FeedNewsletter

Integrations /

Apache KafkaConfluent CloudRedpandaGoogle BigQuerySnowflakePostgres Table FunctionAmazon DynamoDBAmazon S3

Use Cases /

User-facing dashboardsReal-time Change Data Capture (CDC)Gaming analyticsWeb analyticsReal-time personalizationUser-generated content (UGC) analyticsContent recommendation systemsVector search
All systems operational

Copyright © 2025 Tinybird. All rights reserved

|

Terms & conditionsCookiesTrust CenterCompliance Helpline
Tinybird wordmark
PricingDocs
Bars

Data Platform

Managed ClickHouse
Production-ready with Tinybird's DX
Streaming ingestion
High-throughput streaming ingest
Schema iteration
Safe migrations with zero downtime
Connectors
Plug and play Kafka, S3, and GCS

Developer Experience

Instant SQL APIs
Turn SQL into an endpoint
BI & Tool Connections
Connect your BI tools and ORMs
Tinybird Code
Ingest and query from your terminal

Enterprise

Tinybird AI
AI resources for LLMs and agents
High availability
Fault-tolerance and auto failovers
Security and compliance
Certified SOC 2 Type II for enterprise
Sign inSign up
Product []

Data Platform

Managed ClickHouse
Production-ready with Tinybird's DX
Streaming ingestion
High-throughput streaming ingest
Schema iteration
Safe migrations with zero downtime
Connectors
Plug and play Kafka, S3, and GCS

Developer Experience

Instant SQL APIs
Turn SQL into an endpoint
BI & Tool Connections
Connect your BI tools and ORMs
Tinybird Code
Ingest and query from your terminal

Enterprise

Tinybird AI
AI resources for LLMs and agents
High availability
Fault-tolerance and auto failovers
Security and compliance
Certified SOC 2 Type II for enterprise
PricingDocs
Resources []

Learn

Blog
Musings on transformations, tables and everything in between
Customer Stories
We help software teams ship features with massive data sets
Videos
Learn how to use Tinybird with our videos
ClickHouse for Developers
Understand ClickHouse with our video series

Build

Templates
Explore our collection of templates
Tinybird Builds
We build stuff live with Tinybird and our partners
Changelog
The latest updates to Tinybird

Community

Slack Community
Join our Slack community to get help and share your ideas
Open Source Program
Get help adding Tinybird to your open source project
Schema > Evolution
Join the most read technical biweekly engineering newsletter
Back to Blog
Share this article:
Back

More Data, More Apps: Improving data ingestion in Tinybird

Building with Tinybird all starts with data ingestion, so we're focused on making it even better. Read on for updates to our ingestion experience, plus examples of how Tinybird customers ingest, query, and publish with Tinybird.
Product updates
Kike Alonso
Kike AlonsoProduct Manager

Tinybird now ingests more user data in a single day than it did in an entire month in the weeks and months after we pushed the first production commit. We built Tinybird for data at scale from the beginning, with beta users ingesting millions of rows at a time, but these days we’re measuring some use cases in petabytes.

Ingesting data from an external origin at high volumes so that developers can build robust use cases is already a complex engineering task. But when you add to the mix the real-time nature of what Tinybird gives you, the challenge becomes quite massive.

Still, it’s worth solving. When developers get data into Tinybird at the scale for which we designed the platform, they very quickly accomplish some incredible things. Tinybird makes it so easy to take that data and publish low-latency APIs with nothing but SQL. You can transform, aggregate, join, and otherwise enrich data streams and dimensions to unlock some new insight or build a new real-time product. And the entire process happens in minutes.

Ingestion is addictive. Once you start using Tinybird, every new use case is just one SQL query away. Many users start with a narrow scope based on a readily available dataset. But because it is so fast and easy to build something meaningful in production with Tinybird, they quickly develop an appetite for more.

Ingestion in Tinybird is addictive. Every new use case is just one SQL query away.

Tinybird users want to ingest more data from more places and combine them all to build even more powerful applications. So they ask questions like…

  • Can I enrich my Kafka streams with files from Amazon S3?
  • Can I join data from Redpanda and MySQL for analytics?
  • How do I run real-time analytics on data in Snowflake?
  • Are there simpler alternatives to Kafka?
  • Does Tinybird work with Rudderstack?

Building with Tinybird all starts with ingestion, so we’re focused on answering these questions. We want it to be easy to ingest from new sources. We want to feed that appetite.

Since we got started on Tinybird, we’ve always prioritized ingestion options based on our customers' expressed needs. The first thing we did was make it super easy to ingest a CSV file. Every database can export a CSV, so this was the logical first step.

Soon thereafter, we made it effortless to connect to Kafka, delivering on the promise of streaming analytics. We also added some other basic features like JSON uploads and Parquet file ingestion.

From there, we started providing some ad-hoc solutions to support other use cases. Users would need a new way to add data, and we’d respond.

For example, we had many users who used Kafka but wanted something simpler and easier to implement across a variety of client-side libraries. Or, they didn't use Kafka and didn't want to start.

So we built the Events API. It’s high-frequency streaming ingestion over an HTTP API, so you can use it anywhere. Our customers like the flexibility and performance it gives them, as evidenced by the surge in usage over the past few months.

A chart showing growth of the Tinybird Events API from only a few million events last year to nearly a trillion events this year.
We ingest nearly 1 trillion events per month through the Tinybird Events API.

Of course, we haven’t built native connectors for everything (yet). So in the meantime, we’re helping users who need to ingest from sources we haven’t natively supported, publishing guides to document ingestion and data syncing from object storage like Amazon S3, warehouses like Snowflake, and messaging buffers like Google Pub/Sub.

But, why am I writing this and why are you reading it? Here’s the simple answer: we’re doubling down on ingestion, and we have big plans to add native support for many more external sources this year.

We’re doubling down on ingestion at Tinybird, and we have big plans to add native support for many more external sources this year.

Recently, we released a small but meaningful feature that not only capitalizes on the work we’ve already done to make ingestion more comfortable but also serves as a preview of what’s to come.

A new interface for a new paradigm

We’ve refreshed the Tinybird ingestion interface based on the new ingestion features and pathways we’ve developed in recent months.

This new ingestion UI is easier to navigate, and it includes ingestion sources that have always been available but were previously hidden in our documentation. Sources like:

  • Snowflake
  • Google Pub/Sub
  • Google Storage
  • Amazon S3
  • Amazon SNS
  • Amazon Kinesis
A gif of the Tinybird UI showing the new Data Source ingestion interface
The new Tinybird Ingestion UI.
Don’t worry
We know that many developers also use the Tinybird command-line interface to automate and script their ingestion routines. We’ll be making some exciting changes to the CLI as well.

Our goal with this minor update is twofold:

  1. Make sure new and recurring users can quickly discover their ingestion options.
  2. Pave the way for the new ingestion pathways that we will release this year.

Over the coming months, we will release a series of native Connectors to the Data Sources that developers use most frequently. With just a handful of clicks or keystrokes, you can ingest your data at scale into Tinybird from even more places.

This year we plan to release a series of native Data Source connectors as well as a Connector SDK.

On top of that, we’ll release a Connector SDK so that our partners and data providers can even create integrations with Tinybird, unlocking the power of realtime for your data no matter where it’s stored.

We will never stop innovating on ingestion, and we will always provide quick and personalized support for the users that need more.

Read on for several examples of companies that have used Tinybird to combine multiple data sources to build amazing products and experiences for their customers.

Or, if you want to build you’re own fast real-time data applications, you can get started with Tinybird today. The free tier is generous, and we’re here to support you.

‍

Kafka Snowflake integration

Kafka + Snowflake: personalized eCommerce sites

What if you could enrich eCommerce events data from Kafka with product dimensions stored in Snowflake to create real-time personalized webstore experiences for your customers?

That’s exactly what one of the largest fashion retailers in the world does with Tinybird.

Using the Tinybird native Kafka connector and the Snowflake connector, the data team at the eCommerce giant has built a real-time platform that enriches over 300 billion events sent via Kafka with data from tens of thousands of product dimensions stored in Snowflake - to serve personalized experiences to every website visitor.

These personalized experiences increase average order value (AOV) by nearly 30%, a big win for a company that generates millions of webstore sessions every day.

Redpanda MySQL integration

RedPanda + MySQL: personalized travel booking

When you book a hotel room, you want the best room at the best rate. The Hotels Network makes it possible for hoteliers to offer their website visitors just that. Using Tinybird, they’ve built services that optimize booking conversions through personalized offers for over 15,000 hotels. The Hotels Network processes 8 PB of data monthly - and growing - through Tinybird.

The Hotels Network uses Tinybird to join web events data streaming from Redpanda - ingested using the native Kafka connector - with dimensional traveler and hotel data in MySQL - sent using the Tinybird Data Sources API. They then publish low-latency APIs that power their personalization services.

On top of that, they use Retool as an internal BI tool to visualize Tinybird APIs and continually monitor the quality of their service.

Related: The Hotels Network builds real-time user personalization (video)

‍

Rud

Rudderstack + Analytics: Matching students to tutors

Third Space Learning matches students to online tutors around the world. Demand for their services surged during COVID-19 as students were bound to kitchen tables, bedside desks, and makeshift “home classrooms”.

Before Tinybird, Third Space Learning business analysts used Looker to query their data lake and identify under-utilized tutors or unmatched students. The query latency in Looker often exceeded 20 minutes, leaving many students unmatched with tutors, and vice-versa.

Now, Third Space Learning ingests their platform events data into Tinybird using Rudderstack, and they use Tinybird to publish low-latency APIs, powering a service that automatically reassigns tutors and students when either fails to show up for an appointment.

‍

Tinybird Events API Kafka alternative

The Tinybird Events API: a simple Kafka alternative

Vercel is one of the most-loved developer platforms. They make it delightful for frontend software engineers to develop, preview, and ship applications.

Vercel started using Tinybird to offer analytics to their users, initially using Kafka to ingest web event streams into Tinybird to publish APIs for their analytics service.

But Kafka was overkill for Vercel, so they turned to the Tinybird Events API. Every month, Tinybird processes 5+ PB of data and serves 80+ million API requests to Vercel platform users.

And thanks to the simplicity of Tinybird, Vercel has expanded its use of the Events API to build services for a web application firewall, usage-based billing, and log analytics.

Related: Vercel relies on Tinybird to help developers ship code faster

What data ingestion do you need?

Are we missing an ingestion source? Anything you’d like to add? Join the conversation in the #feedback channel in our community Slack, and let us know what you need.

‍

Do you like this post? Spread it!

Skip the infra work. Deploy your first ClickHouse
project now

Get started for freeRead the docs
A geometric decoration with a matrix of rectangles.
Tinybird wordmark

Product /

ProductWatch the demoPricingSecurityRequest a demo

Company /

About UsPartnersShopCareers

Features /

Managed ClickHouseStreaming IngestionSchema IterationConnectorsInstant SQL APIsBI & Tool ConnectionsTinybird CodeTinybird AIHigh AvailabilitySecurity & Compliance

Support /

DocsSupportTroubleshootingCommunityChangelog

Resources /

ObservabilityBlogCustomer StoriesTemplatesTinybird BuildsTinybird for StartupsRSS FeedNewsletter

Integrations /

Apache KafkaConfluent CloudRedpandaGoogle BigQuerySnowflakePostgres Table FunctionAmazon DynamoDBAmazon S3

Use Cases /

User-facing dashboardsReal-time Change Data Capture (CDC)Gaming analyticsWeb analyticsReal-time personalizationUser-generated content (UGC) analyticsContent recommendation systemsVector search
All systems operational

Copyright © 2025 Tinybird. All rights reserved

|

Terms & conditionsCookiesTrust CenterCompliance Helpline

Related posts

Product updates
Mar 02, 2023
Simplifying event sourcing with scheduled data snapshots in Tinybird
Ivan Malagon
Ivan MalagonProduct Manager
1Simplifying event sourcing with scheduled data snapshots in Tinybird
Product updates
Jun 15, 2023
A new way to create intermediate Data Sources in Tinybird
Tinybird
TinybirdTeam
1A new way to create intermediate Data Sources in Tinybird
Product updates
Mar 03, 2023
Build serverless real-time analytics on Vercel with Tinybird
Alasdair Brown
Alasdair BrownDeveloper Advocate
1Build serverless real-time analytics on Vercel with Tinybird
Product updates
Jul 12, 2022
Use AWS SNS to send data to Tinybird
David Manzanares
David ManzanaresSoftware Engineer
1Use AWS SNS to send data to Tinybird
Product updates
Apr 18, 2023
The power of real-time streaming analytics with Confluent and Tinybird
Alejandro Martín
Alejandro MartínProduct Manager
1The power of real-time streaming analytics with Confluent and Tinybird
Product updates
May 09, 2025
Get to know your data's data - EDA in Tinybird
Meredith White
Meredith WhiteTechnical Support Engineer
1Get to know your data's data - EDA in Tinybird
Product updates
Oct 04, 2022
You can now explore and analyze time series data in Tinybird
Mariana Racasan
Mariana RacasanProduct Marketing Lead
1You can now explore and analyze time series data in Tinybird
Product updates
Apr 21, 2023
Generate mock data schemas with GPT
Kike Alonso
Kike AlonsoProduct Manager
1Generate mock data schemas with GPT
Product updates
Mar 04, 2023
Build fast charts faster with the Tinybird Grafana plugin
Alasdair Brown
Alasdair BrownDeveloper Advocate
1Build fast charts faster with the Tinybird Grafana plugin
Product updates
Aug 19, 2020
Improving the data ingestion experience: better error feedback
Jorge Sancha
Jorge SanchaCo-founder
1Improving the data ingestion experience: better error feedback