Experience Seamless Data Integration Yourself

Add Datastreamer components to your data stack and explore its full capabilities

Try it Now

Questions?

We’re always happy with any other questions you might have. Send us an email at [email protected]

Apply Social Voice Brand Safety Model (GARM) to Twingly VK

Top companies trust Datastreamer to integrate, enrich, join, and apply their web data needs.

About Social Voice Brand Safety Model (GARM)

Analyzes different risks to brand safety according to GARM categorizations.

About Twingly VK

Twingly offers an official VK Search API that includes all public posts, shares and comments, a total of 20 million messages per day. Get access today to find out what is said about your brand, customers or competitors in the Russian market.

How Datastreamer works

Quickly apply Social Voice Brand Safety Model (GARM) to Twingly VK with a Datstreamer Pipeline.

Step 1

Start your Pipeline with Twingly VK

Web data is the foundation of any pipeline. You can leverage a wide range of data sources to power your pipelines—whether it's data from our partner network, your internal systems, or any publicly available web data.

Step 2

Add Social Voice Brand Safety Model (GARM) with an Operation

Ready to move fast with web data? Datastreamer offers a full suite of operations—augment, join, store, filter, and more—so you can transform raw data into real insights instantly.

Step 3

That's it! You have just connected  Social Voice Brand Safety Model (GARM) and Twingly VK

No more hassle with web data. Datastreamer allows you to boost your Pipelines on demand and tackle previously difficult operational issues head-on.

Experience Seamless Data Integration Yourself

Add Datastreamer components to your data stack and explore its full capabilities

Try it Now

Questions?

We’re always happy with any other questions you might have. Send us an email at [email protected]

We look forward to connecting with you.

Let us know if you're an existing customer or a new user, so we can help you get started!