
Bring your HubSpot data to the Data Warehouse
HubSpot is an integrated marketing, sales, and service platform that offers various tools to optimize customer management. With the HubSpot Connector, you can integrate your data quickly and securely, ensuring an efficient flow of information. The HubSpot Connector facilitates data automation and analysis within your ecosystem.
No credit card required


Create a single source of truth
What Is Erathos?
Centralize all your HubSpot data and make data-driven decisions
Erathos is a complete ELT software that extracts data from multiple sources through instant integrations. With plug-and-play connectors, including the HubSpot Connector, you can centralize all your information in a single analytical environment and build a Data Warehouse in minutes.
Why Erathos?
Instant Integration with HubSpot Connector
Connect HubSpot with more than 80 other plug-and-play integrations. Eliminate time-consuming manual processes and consolidate all information in a single analytics environment, ready to generate actionable insights.
Automation and Scalability for Your Business
Create HubSpot data pipelines quickly: select the relevant data, set the schedule, frequency, and refresh type without writing a single line of code. You stay in full control, with complete flexibility.
Easy Setup and Continuous Monitoring
Monitor your HubSpot pipelines with real-time alerts via email, Slack, or Discord. Stop getting caught off guard by sync errors and ensure your data stays up to date and reliable.
Our customers
Trusted by data-driven companies
Simplified data ingestion
1
Select your data source
More than 80 plug-and-play connectors to consolidate data from multiple sources, eliminate time-consuming manual processes, and establish a pipeline.
2
Setup your pipeline
Manage your pipeline seemlessly. Select a sync hour, frequency and type at a table/endpoint level.
3
Select your data warehouse
Choose between BigQuery, Databricks, Redshift and PosgreSQL to centrlize your data
FAQ
Data ingestion with control, observability, and scale






















