Estuary

Informatica VS Striim

Read this detailed 2025 comparison of Informatica vs Striim. Understand their key differences, core features, and pricing to choose the right platform for your data integration needs.

Compare
View all comparisons
Informatica logo
Comparison between Informatica and Striim
Striim logo
Share this article

Table of Contents

Start Building For Free

Introduction

Do you need to load a cloud data warehouse? Synchronize data in real-time across apps or databases? Support real-time analytics? Use generative AI?

This guide is designed to help you compare Informatica vs Striim across nearly 40 criteria for these use cases and more, and choose the best option for you based on your current and future needs.

Comparison Matrix: Informatica vs Striim vs Estuary

Informatica logo
Informatica
Striim logo
Striim
Estuary logo
Estuary
Database replication (CDC)InformaticaDB2, MySQL, SQL Server, Oracle, Postgres, IBM i and Z/OS sources (PowerExchange)StriimReal-time (and batch) replication (sub-second to hours)EstuaryMySQL, SQL Server, Postgres, AlloyDB, MariaDB, MongoDB, Firestore, Salesforce, ETL and ELT, realtime and batch
Operational integrationInformatica
Striim

Real-time replication

Transforms via TQL

Estuary

Real-time ETL data flows ready for operational use cases.

Data migrationInformatica
Striim
Estuary

Intelligent schema inference and evolution support.

Support for most relational databases.

Continuous replication reliability.

Stream processingInformatica
Striim

Using TQL

Estuary

Real-time ETL in Typescript and SQL

Operational analyticsInformatica
Striim

TQL transforms

Estuary

Integration with real-time analytics tools.

Real-time transformations in Typescript and SQL.

Kafka compatibility.

AI pipelinesInformatica

Pinecone and Databricks Vector Database

Striim

Support for in-flight vector embedding generation.

Estuary

Pinecone support for real-time data vectorization.

Transformations can call ChatGPT & other AI APIs.

Apache Iceberg SupportInformatica

Batch-focused, support possible via Data Engineering Integration, but requires complex pipeline design for Iceberg.

Striim

Streaming + batch, good Iceberg support

Estuary

Native Iceberg support, both streaming and batch, supports REST catalog, versioned schema evolution, and exactly-once guarantees.

Number of connectorsInformatica300+ connectors Striim100+Estuary200+ high performance connectors built by Estuary
Streaming connectorsInformaticaCDC, Kafka via PowerExchangeStriimCDC, Kafka, Kinesis, Pub/SubEstuaryCDC, Kafka, Kinesis, Pub/Sub
3rd party connectorsInformatica
Striim
Estuary

Support for 500+ Airbyte, Stitch, and Meltano connectors.

Custom SDKInformatica

Informatica Connector Toolkit

Striim
Estuary

SDK for source and destination connector development.

Request a connectorInformatica
Striim
Estuary

Connector requests encouraged. Swift response.

Batch and streamingInformaticaStreaming to batch, batch to streamingStriimStreaming-centric but can do incremental batchEstuaryBatch and streaming
Delivery guaranteeInformaticaExactly onceStriimAt least onceEstuaryExactly once (streaming, batch, mixed)
ELT transformsInformatica

dbt, SQL, pushdown optimization

Striim

dbt Cloud integration

Estuary

dbt Cloud integration

ETL transformsInformatica

PowerCenter

Striim

TQL transforms

Estuary

Real-time, SQL and Typescript

Load write methodInformaticaSoft and hard deletes, append and update in placeStriimAppend-onlyEstuaryAppend only or update in place (soft or hard deletes)
DataOps supportInformatica

CLI, API

Striim

CLI, API

Estuary

API and CLI support for operations.

Declarative definitions for version control and CI/CD pipelines.

Schema inference and driftInformatica

With limits

Striim

With some limits by destination

Estuary

Real-time schema inference support for all connectors based on source data structures, not just sampling.

Store and replayInformatica
Striim

Requires re-extract for new destinations

Estuary

Can backfill multiple targets and times without requiring new extract.

User-supplied cheap, scalable object storage.

Time travelInformatica
Striim
Estuary

Can restrict the data materialization process to a specific date range.

SnapshotsInformatica

N/A

Striim

N/A

Estuary

Full or incremental

Ease of useInformatica

Takes time to learn

Striim

Takes time to learn flows, especially TQL

Estuary

Low- and no-code pipelines, with the option of detailed streaming transforms.

Deployment optionsInformaticaOn premises, private cloud, public cloudStriimOn prem, Private cloud, Public cloudEstuaryOpen source, public cloud, private cloud
SupportInformatica

Known for good support

Striim

Striim community support. Premium support at higher pricing tiers.

Estuary

Fast support, engagement, time to resolution, including fixes.

Slack community.

Performance (minimum latency)InformaticaSub-secondStriim< 100 msEstuary< 100 ms (in streaming mode) Supports any batch interval as well and can mix streaming and batch in 1 pipeline.
ReliabilityInformaticaHighStriimHighEstuaryHigh
ScalabilityInformaticaHighStriimHigh (GB/sec)EstuaryHigh 5-10x scalability of others in production
SOC2Informatica

SOC 1, SOC 2, and SOC 3 compliance

Striim
Estuary

SOC 2 Type II with no exceptions

Data source authenticationInformaticaOAuth / HTTPS / SSH / SSL / API TokensStriimSAML, RBAC, SSH/SSL, VPNEstuaryOAuth 2.0 / API Tokens SSH/SSL
EncryptionInformaticaEncryption at rest, in-motionStriimEncryption in-motionEstuaryEncryption at rest, in-motion
HIPAA complianceInformatica
Striim
Estuary

HIPAA compliant with no exceptions

Vendor costsInformatica

Opaque pricing based on "Informatica Pricing Units"

Striim

Per-month subscription, compute time costs, and data ingress/egress costs

Estuary

2-5x lower than the others, becomes even lower with higher data volumes. Also lowers cost of destinations by doing in place writes efficiently and supporting scheduling.

Data engineering costsInformatica

Complex product with a steep learning curve

Striim

Requires proprietary SQL-like language (TQL)

Estuary

Focus on DevEx, up-to-date docs, and easy-to-use platform.

Admin costsInformatica
Striim
Estuary

“It just works”

Start streaming your data for free

Build a Pipeline

Informatica

Informatica introductory image

Informatica started as one of the first ETL vendors with Powercenter, in 1993. It then released one of the first cloud integration products, Informatica Cloud, in 2006. Informatica Cloud was originally built based on an older version of Informatica PowerCenter. After PowerCenter started to get replaced by a new Hadoop (Spark)-based framework, Informatica Cloud eventually moved over as well. After being taken private by Permira in 2015 and having a long period as a private company, Informatica became publicly traded again in 2021. In May 2025, Salesforce signed a definitive agreement to acquire Informatica, aiming to enhance its enterprise data and AI capabilities.

Informatica is perhaps the best example of a mature data integration platform. While it was one of the first to make the transition to the cloud and has one of the strongest and broadest data integration feature sets, it is harder to use, more expensive, and not as DataOps-native. But it has great enterprise features and one of the better private cloud architectures.

Pros

  • A comprehensive data management platform: Informatica Intelligent Data Management Cloud is much more than ETL-based data integration. It includes dozens of options including replication, data quality and master data management.
  • Rich data integration functionality: Informatica has developed a rich library of capabilities over the years for data integration. 
  • Great connectors: Over 300 connectors, including proven connectors to high-performance on premises and cloud data warehouses.
  • Performance and scalability: Informatica is built to support large deployments and deliver low latency data pipelines at scale. Informatica has supported serverless compute, pipeline partitioning, push-down optimization, and other features for years.
  • Private cloud: Informatica is one of the few vendors that supports a private data plane deployment managed by a shared SaaS control plane.
  • Now backed by Salesforce: The acquisition by Salesforce positions Informatica to be more tightly integrated with the Salesforce Data Cloud and Einstein AI ecosystem.

Cons

  • Harder to learn: While Informatica Cloud is easier than Powercenter was, it still has a significant learning curve compared to most SaaS ELT services. This makes it more suitable for larger, specialized data integration teams.
  • Doesn’t support DataOps as well: Informatica Cloud was built pre-CI/CD and DataOps. While you can use its CLI and API to automate deployment, it’s not as simple as a more modern platform. Schema evolution is supported, but there are some limitations depending on the source and destination. Versioning and other tasks are harder than some of the more modern ELT tools.
  • Higher vendor costs: Informatica is more expensive than most other ELT and ETL vendors.
  • Salesforce ecosystem lock-in: Now that Informatica is being integrated into Salesforce, platform neutrality may diminish over time, especially for organizations not already using Salesforce products.

Informatica Pricing

Informatica’s consumption-based pricing is complicated and requires a quote. You can read the Informatica Cloud and Product Description Schedule here. Cloud is mostly based on hourly pricing per compute units, with some other pricing like row-based pricing for CDC-based replication. In general, you can expect a higher cost compared to most other vendors. With Salesforce’s acquisition, Informatica pricing may increasingly reflect bundled Salesforce ecosystem offerings and enterprise packaging.

Striim

Striim-Logo-Dark.png

Striim is a real-time data integration and streaming platform that simplifies the movement of data from various sources, including databases, cloud services, and messaging systems. Striim offers out-of-the-box connectors for real-time data capture, replication, and stream processing, making it a competitive option for enterprise-grade streaming architectures.

Pros

  • Low-Latency Streaming: Striim specializes in low-latency data movement.
  • Enterprise-Grade Features: Striim offers built-in support for exactly-once processing, data transformations, in-flight processing, and scalability.
  • Comprehensive Integration: Striim provides pre-built connectors to a wide array of databases (including Oracle and SQL Server), cloud storage systems, messaging platforms like Kafka, and more.

Cons

  • Complex Pricing Model: Striim’s pricing model can be complex, with costs depending on factors such as data volume, number of sources, and the specific features used. It may not be as cost-effective for smaller businesses with modest data needs.
  • Vendor Lock-In: Like other managed streaming solutions, Striim can create a dependency on its platform, making migration to alternative solutions or self-hosted setups more challenging.
  • Limited Open Source: While Striim provides a wide range of features, it is not an open-source platform, meaning users have less flexibility and control over the code and architecture compared to open-source options like Kafka and Debezium.

Striim Pricing

Striim operates on a subscription model with pricing tiers based on the number of data sources, targets, and data volumes. Pricing is typically custom-quoted based on the organization’s specific needs. Tiers start at $1,000/mo + Compute $0.75 /vcpu/hr & Data Transfer $0.10/GB in, $0.10/GB out.

Estuary

Estuary introductory image

Estuary is the right time data platform that replaces fragmented data stacks with one dependable system for data movement. Instead of juggling separate tools for CDC, batch ELT, streaming, and app syncs, teams use Estuary to move data from databases, SaaS apps, files, and streams into warehouses, lakes, operational stores, and AI systems at the cadence they choose: sub second, near real time, or scheduled.

The company was founded in 2019, built on Gazette, a battle tested streaming storage layer that has powered high volume event workloads for years. That foundation lets Estuary mix CDC, streaming, and batch in a single catalog and gives customers exactly once delivery, deterministic recovery, and targeted backfills across all of their pipelines.

Unlike traditional ELT tools that focus on batch loads into a warehouse, Estuary stores every event in collections that can be reused for multiple destinations and use cases. Once a change is captured, it is written once to durable storage and then fanned out to any number of targets without reloading the source. This reduces load on primary systems, provides consistent history for analytics and AI, and makes it easy to replay or reprocess data when schemas or downstream models change.

Estuary can run as a multi tenant cloud service, as a private data plane inside the customer’s cloud, or in a BYOC model where the customer owns the infrastructure and Estuary manages the control plane. This gives security and compliance teams the control they expect from in house systems with the convenience of a managed platform.

Estuary also has broad packaged and custom connectivity, making it one of the top ETL tools. The platform ships with a growing set of high quality native connectors for databases, warehouses, lakes, queues, SaaS tools, and AI targets. Estuary also supports many open source connectors where needed, so teams can consolidate around one system while still covering niche sources and destinations. Customers consistently highlight predictable pricing, strong reliability, and partner level support as key reasons they choose Estuary instead of Fivetran, Airbyte, or DIY stacks.

Estuary Flow is highly rated on G2, with users highlighting its real-time capabilities and ease of use.

Pros

  • Right time pipelines: Estuary lets you choose the cadence of each pipeline, from sub second streaming to periodic batch, so cost and freshness match the workload.
  • One platform for all data movement: Handles CDC, batch loads, and streaming in one product, which reduces tool sprawl and simplifies operations.
  • Dependable replication: Exactly once delivery, deterministic recovery, and targeted backfills keep pipelines stable even when sources or schemas change.
  • Efficient CDC: Log based CDC captures inserts, updates, and deletes once and reuses them for many destinations, reducing load on operational databases.
  • High scale architecture: Gazette and collections support large, continuous data streams with reliable throughput across multiple targets.
  • Modern transforms: Supports SQL and TypeScript based transformations in motion, and integrates cleanly with dbt for warehouse side ELT.
  • Flexible deployment choices: Available as cloud SaaS, private data plane, or BYOC, giving enterprises strong control over data residency and security.
  • Predictable total cost of ownership: Transparent pricing based on data volume and connector instances avoids MAR based surprises and is easy to forecast.
  • Fast time to value: A guided UI, CLI, and templates help most teams build their first dependable pipelines in hours instead of weeks.
  • Partner level support: Customers report quick connector delivery, responsive troubleshooting, and SLAs that make Estuary feel like an extension of their team.

Cons

  • On premises connectors: Estuary has 200+ native connectors and supports 500+ Airbyte, Meltano, and Stitch open source connectors. But if you need on-premises app or data warehouse connectivity, make sure you have all the connectivity you need.
  • Graphical ETL: Estuary has been more focused on SQL and dbt than graphical transformations. While it does infer data types and convert between sources and targets, there is currently no graphical transformation UI.

Estuary Pricing

Of the various ELT and ETL vendors, Estuary is the lowest total cost option. Estuary only charges $0.50 per GB of data moved from each source or to each target, and $100 per connector per month. Rivery, the next lowest cost option, is the only other vendor that publishes pricing of 1 RPU per 100MB, which is $7.50 to $12.50 per GB depending on the plan you choose. Estuary becomes the lowest cost option by the time you reach the 10s of GB/month. By the time you reach 1TB a month Estuary is 10x lower cost than the rest.

How to choose the best option

For the most part, if you are interested in a cloud option, and the connectivity options exist, you may choose to evaluate Estuary.

Modern data pipeline: Estuary has the broadest support for schema evolution and modern DataOps.

Lowest latency: If low latency matters, Estuary will be the best option, especially at scale.

Highest data engineering productivity: Estuary is among the easiest to use, on par with the best ELT vendors. But it also has delivered up to 5x greater productivity than the alternatives.

Connectivity: If you're more concerned about cloud services, Estuary or another modern ELT vendor may be your best option. If you need more on-premises connectivity, you might consider more traditional ETL vendors.

Lowest cost: Estuary is the clear low-cost winner for medium and larger deployments.

Streaming support: Estuary has a modern approach to CDC that is built for reliability and scale, and great Kafka support as well. It's real-time CDC is arguably the best of all the options here. Some ETL vendors like Informatica and Talend also have real-time CDC. ELT-only vendors only support batch CDC.

Ultimately the best approach for evaluating your options is to identify your future and current needs for connectivity, key data integration features, and performance, scalability, reliability, and security needs, and use this information to a good short-term and long-term solution for you.

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

    I highly recommend you also join the Slack community. It's the easiest way to get support while you're getting started.

    Join Slack Community
  • Estuary 101

    I highly recommend you also join the Slack community. It's the easiest way to get support while you're getting started.

    Watch

QUESTIONS? FEEL FREE TO CONTACT US ANY TIME!

Contact us