Sync data from
Amazon Redshift to The Trade Desk
Connect your data from Amazon Redshift to The Trade Desk with Hightouch. No APIs, no months-long implementations, and no CSV files. Just your data synced forever.
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Integrate your data in 3 easy steps
Add your source and destination
Connect to 15+ data sources, like Amazon Redshift, and 140+ destinations, like The Trade Desk.
Define your model
Use SQL or select an existing dbt or Looker model.
Sync your data
Define how fields from your model map to The Trade Desk, and start syncing.
Model your Amazon Redshift data using any of these methods
dbt Model Selector
Sync directly with your dbt models saved in a git.
Query using looks. Hightouch turns your look into SQL and will pull from your source.
Create and Edit SQL from your browser. Hightouch supports SQL native to Amazon Redshift.
Select available tables and sheets from Amazon Redshift and sync using existing views without having to write SQL.
For less technical users, pass traits and audiences from Amazon Redshift using our visual segmentation builder.
Does this integration support in-warehouse planning?
Yes, if you integerate Amazon Redshift and The Trade Desk using Hightouch, in-warehouse planning is supported.
Great, but what is in-warehouse planning?
Between every sync, Hightouch notices any and all changes in your data model. This allows you to only send updated results to your destination (in this case The Trade Desk). With the baseline setup, Hightouch picks out only the rows that need to be synced by querying every row in your data model before diffing using Hightouch’s infrastructure.
The issue here is this can be slow for large models.
Warehouse Planning allows Hightouch to do this diff directly in your warehouse. Read more on how this works here.
Why is it valuable to sync Amazon Redshift data to The Trade Desk?
Thanks to Amazon Redshift, it's easier than ever to access your customer data, run complex queries, and segment your customers/users into various categories or audiences.
However, to target users and send conversion data to The Trade Desk, you need access to all of the unique behavioral data (e.g., last-login date, items in cart, pages viewed, etc.) and core business metrics like lifetime value, workspaces, subscriptions, annual recurring revenue, etc. that lives in Amazon Redshift. You then need to be able to package this data to send to The Trade Desk in the format expected. Plus, you want to do this in a real-time and automated way.
The Trade Desk is only as good as the data you give them, and if you truly want to optimize your ad spend, increase your match rates, and drive conversions, you need to provide custom data from Amazon Redshift within your warehouse.
Maybe you want to retarget users who abandoned their shopping cart in the last seven days, or upload a list of high-value customers to identify potential lookalike audiences, or perhaps you want to upload offline conversion events to reduce your customer acquisition costs and increase your return on ad spend.
Why should you use reverse ETL to connect Amazon Redshift and The Trade Desk data?
In the past, uploading customer data to The Trade Desk meant hopping back and forth between your various SaaS applications or asking your data team for CSV files. Neither of these options is preferable because marketing teams want to self-serve, and data teams don't enjoy constantly fulfilling one-off marketing requests.
Even worse, if you truly want to optimize your advertising campaigns, you need to be uploading fresh data consistently. Non-fresh data can be expensive for ads. If you're using CSVs to define who to exclude from paid ads and you're uploading that data weekly, that's potentially one week of irrelevant ads. As a workaround, engineering teams will integrate directly with the The Trade Desk API, and build and maintain custom in-house pipelines. The problem is that a single API change can break everything, and data engineers don't want to spend their time building and maintaining pipelines.
With Hightouch, you can leverage the existing data models and customer segments your engineering team has defined in your warehouse and sync that data directly to your ad platforms in real time. You can schedule your data syncs to run automatically, on a set cadence, or even for the exact duration of your marketing campaign. Hightouch lets your data teams establish the guardrails for your marketers to self-serve and build custom audiences through a drag-and-drop interface.
Sync real-time event data to The Trade Desk using highly customizable postback URL's
Sync your data to CRM Data and First Party Data segments in The Trade Desk to maximize the potential of your first-party data
Push cohorts of customers to power highly targeted advertising campaigns
About Amazon Redshift
Amazon Redshift is a fully managed, petabyte-scale data warehouse service in the cloud. It is built on Amazon Web ServicesLearn more about Amazon Redshift
About The Trade Desk
Learn more about The Trade Desk
Other Amazon Redshift Integrations
Other The Trade Desk integrations
Hightouch Playbooks: Best practices to leverage reverse ETL
Read more about Hightouch
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