Skip to main content
TrustRadius
Stitch from Talend

Stitch from Talend

Overview

What is Stitch from Talend?

Stitch, or Stitch Data, now from Talend (acquired in late 2018) is an ETL tool for developers; the company was spun off from RJMetrics after that company's acquisition by Magento. Talend describes Stitch as a cloud-first, open source platform for…

Read more
Recent Reviews

TrustRadius Insights

The Stitch has established itself as a reliable tool for efficiently building data pipelines. Many users consider The Stitch their go-to …
Continue reading
Read all reviews

Awards

Products that are considered exceptional by their customers based on a variety of criteria win TrustRadius awards. Learn more about the types of TrustRadius awards to make the best purchase decision. More about TrustRadius Awards

Reviewer Pros & Cons

View all pros & cons
Return to navigation

Product Details

Stitch from Talend Technical Details

Operating SystemsUnspecified
Mobile ApplicationNo
Return to navigation

Comparisons

View all alternatives
Return to navigation

Reviews and Ratings

(17)

Community Insights

TrustRadius Insights are summaries of user sentiment data from TrustRadius reviews and, when necessary, 3rd-party data sources. Have feedback on this content? Let us know!

The Stitch has established itself as a reliable tool for efficiently building data pipelines. Many users consider The Stitch their go-to choice for an ETL tool and only explore other options when absolutely necessary. While some users have mentioned certain missing features, overall, The Stitch provides a satisfactory experience. Both engineering and data teams rely on The Stitch to replicate transactional datastores to an analytics warehouse. Users particularly appreciate that The Stitch supports the extraction, transformation, and loading of data into different schemas and data types, which is crucial for supporting data and BI teams. Furthermore, the singer-based architecture of The Stitch allows for extending integration capabilities beyond the provided connectors. The Ops team also leverages The Stitch to automate tasks and access data for dashboards, such as migrating data from Google Sheets to the database.

Reviews

(1-2 of 2)
Companies can't remove reviews or game the system. Here's why
Jono Child | TrustRadius Reviewer
Score 10 out of 10
Vetted Review
Verified User
Incentivized
Stitch is used by the Data team and our Ops teams. The data team uses it for major apis like google ads, Facebook, Salesforce or Intercom to pass data to our warehouse in an easy automated way.

Our Ops team use it to pass data entry from Google sheets to the database to automate tasks or have data for dashboards.
  • Automate data ingestion.
  • Better error messages so you can determine what the problem is.
Stitch is very cheap and useful for small to medium size companies to ingest data from common apis/platforms in a quick and cheap way.
  • Good ROI in terms of being able to monitor cost performance from Google, Facebook, etc.
  • Easy to have Salesforce data and Intercom data for dashboards.
Stitch is much cheaper and probably simpler than tools like Fivetran. Stitch is for simpler projects and used alongside traditional ETL and writing ones own code into APIs.
Fivetran is more of a overarching tool but also more expensive
Score 7 out of 10
Vetted Review
Verified User
Incentivized
We use Stitch, [a Talend company] and Fivetran to ingest data in our snowflake data warehouse. This allows us to allow our users perform ingestion so we can take care of transformations and platform building which are more technical work. We like Stitch's singer based architecture which allows you to extend integration capabilities beyond connectors provided.
  • Easy integration with many sources
  • Extensible
  • Not as expensive as Fivetran
  • Users feel the UI is not as friendly
Ingestion tools make life easy to ingest new data sources. However, they are single tool in your tool box and treat them as such. They won't do your transformations nor do they (neither should they) have ability to define dependencies. They are built for making your ingestions mindlessly simple.
  • Freed up data engineers to work on transformations
  • Bought us some time to migrate from our ETL tool
We use both
Return to navigation