Pricing

Dynamic Conditions in Data Transformation

Sometimes, one-size-fits-all just doesn’t cut it. That’s why we introduced Dynamic Conditions — so your transformations can adapt based on the data that’s coming in. More flexibility, less manual work.

You know how tricky it can get when you’re working with data from multiple sources — different formats, conditions, or exceptions that force you to duplicate logic or build messy workarounds? We’ve been there too.

That’s why we introduced Dynamic Conditions in Data Transformation.

How this feature works

Dynamic Conditions let you define rules that determine which input columns should be transformed, and when.

These conditions are fully customizable and based on the logic you configure — so your transformations can respond intelligently to variations in data.

For example, you can now:

  • Transform revenue values only if the currency is USD
  • Dynamically adjust processing based on data format or source
  • Keep pipelines lean by avoiding duplicated logic across steps

All of this is done within one transformation node, making complex workflows easier to build and manage.

It’s all about giving you more control, more precision, and way less clutter when designing complex workflows. One node, many possibilities — smarter, not harder.

Use Cases

We’ve expanded our use case catalog with new, real-world scenarios! 🚀 Built on insights from our customers and powered by the latest features in our platform, these use cases are designed to help you unlock even more value.
Automation

Dynamic Conditions in Data Transformation

Sometimes, one-size-fits-all just doesn’t cut it. That’s why we introduced Dynamic Conditions — so your transformations can adapt based on the data that’s coming in. More flexibility, less manual work.

You know how tricky it can get when you’re working with data from multiple sources — different formats, conditions, or exceptions that force you to duplicate logic or build messy workarounds? We’ve been there too.

That’s why we introduced Dynamic Conditions in Data Transformation.

How this feature works

Dynamic Conditions let you define rules that determine which input columns should be transformed, and when.

These conditions are fully customizable and based on the logic you configure — so your transformations can respond intelligently to variations in data.

For example, you can now:

  • Transform revenue values only if the currency is USD
  • Dynamically adjust processing based on data format or source
  • Keep pipelines lean by avoiding duplicated logic across steps

All of this is done within one transformation node, making complex workflows easier to build and manage.

It’s all about giving you more control, more precision, and way less clutter when designing complex workflows. One node, many possibilities — smarter, not harder.

Newsletter sobre productos
Mantenha-se atualizado com as últimas novidades do produto Synerise, novos recursos e insights práticos entregues diretamente na sua caixa de entrada. Basta assinar nossa comunicação semanal!
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.

Principais benefícios

Explore as principais vantagens deste recurso e descubra o valor que ele agrega ao seu trabalho diário com o Synerise.
No items found.

Use Cases

Explore real-life use cases that demonstrate how to apply this feature in practice through inspiring, ready-to-use scenarios that solve real challenges.
No items found.

Compartilhe seus comentários conosco!

Quer compartilhar suas ideias ou tem alguma dúvida sobre este artigo?
Deixe uma mensagem — adoraríamos ouvir sua opinião!
A Synerise é a controladora dos seus dados pessoais processados com a finalidade de atender à sua solicitação especificada neste formulário. Você pode retirar seu consentimento a qualquer momento entrando em contato conosco. Para obter mais informações sobre como processamos seus dados pessoais e quais são os seus direitos, consulte nossa política de privacidade.
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.