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Automate HubSpot to Salesforce lead creation with Explorium AI enrichment

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2/3/2026
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Automatically enrich prospect data from HubSpot using Explorium and create leads in Salesforce

This n8n workflow streamlines the process of enriching prospect information by automatically pulling data from HubSpot, processing it through Explorium's AI-powered tools, and creating new leads in Salesforce with enhanced prospect details.

Credentials Required

To use this workflow, set up the following credentials in your n8n environment:

HubSpot

  • Type: App Token (or OAuth2 for broader compatibility)
  • Used for: triggering on new contacts, fetching contact data

Explorium API

  • Type: Generic Header Auth
  • Header: Authorization
  • Value: Bearer YOUR_API_KEY

Get explorium api key

Salesforce

  • Type: OAuth2 or Username/Password
  • Used for: creating new lead records

Go to Settings → Credentials, create these three credentials, and assign them in the respective nodes before running the workflow.

Workflow Overview

Node 1: HubSpot Trigger

This node listens for real-time events from the connected HubSpot account. Once triggered, the node passes metadata about the event to the next step in the flow.

Node 2: HubSpot

This node fetches contact details from HubSpot after the trigger event.

  • Credential: Connected using a HubSpot App Token
  • Resource: Contact
  • Operation: Get Contact
  • Return All: Disabled

This node retrieves the full contact details needed for further processing and enrichment.

Node 3: Match prospect

This node sends each contact's data to Explorium's AI-powered prospect matching API in real time.

  • Method: POST
  • Endpoint: https://api.explorium.ai/v1/prospects/match
  • Authentication: Generic Header Auth (using a configured credential)
  • Headers: Content-Type: application/json

The request body is dynamically built from contact data, typically including: full_name, company_name, email, phone_number, linkedin. These fields are matched against Explorium's intelligence graph to return enriched or validated profiles.

Response Output: total_matches, matched_prospects, and a prospect_id. Each response is used downstream to enrich, validate, or create lead information.

Node 4: Filter

This node filters the output from the Match prospect step to ensure that only valid, matched results continue in the flow. Only records that contain at least one matched prospect with a non-null prospect_id are passed forward.

Status: Currently deactivated (as shown by the "Deactivate" label)

Node 5: Extract Prospect IDs from Matched Results

This node extracts all valid prospect_id values from previously matched prospects and compiles them into a flat array. It loops over all matched items, extracts each prospect_id from the matched_prospects array and returns a single object with an array of all prospect_ids.

Node 6: Explorium Enrich Contacts Information

This node performs bulk enrichment of contacts by querying Explorium with a list of matched prospect_ids.

Node Configuration:

  • Method: POST
  • Endpoint: https://api.explorium.ai/v1/prospects/contacts_information/bulk_enrich
  • Authentication: Header Auth (using saved credentials)
  • Headers: "Content-Type": "application/json", "Accept": "application/json"

Returns enriched contact information, such as:

  • emails: professional/personal email addresses
  • phone_numbers: mobile and work numbers
  • professions_email, professional_email_status, mobile_phone

Node 7: Explorium Enrich Profiles

This additional enrichment node provides supplementary contact data enhancement, running in parallel with the primary enrichment process.

Node 8: Merge

This node combines multiple data streams from the parallel enrichment processes into a single output, allowing you to consolidate data from different Explorium enrichment endpoints. The "combine" setting indicates it will merge the incoming data streams rather than overwriting them.

Node 9: Code - flatten

This custom code node processes and transforms the merged enrichment data before creating the Salesforce lead. It can be used to:

  • Flatten nested data structures
  • Format data according to Salesforce field requirements
  • Apply business logic or data validation
  • Map Explorium fields to Salesforce lead properties
  • Handle data type conversions

Node 10: Salesforce

This final node creates new leads in Salesforce using the enriched data returned by Explorium.

  • Credential: Salesforce OAuth2 or Username/Password
  • Resource: Lead
  • Operation: Create Lead

The node creates new lead records with enriched information including contact details, company information, and professional data obtained through the Explorium enrichment process.

Workflow Flow Summary

  1. Trigger: HubSpot webhook triggers on new/updated contacts
  2. Fetch: Retrieve contact details from HubSpot
  3. Match: Find prospect matches using Explorium
  4. Filter: Keep only successfully matched prospects (currently deactivated)
  5. Extract: Compile prospect IDs for bulk enrichment
  6. Enrich: Parallel enrichment of contact information through multiple Explorium endpoints
  7. Merge: Combine enrichment results
  8. Transform: Flatten and prepare data for Salesforce (Code node)
  9. Create: Create new lead records in Salesforce

This workflow ensures comprehensive data enrichment while maintaining data quality and providing a seamless integration between HubSpot prospect data and Salesforce lead creation. The parallel enrichment structure maximizes data collection efficiency before creating high-quality leads in your CRM system.

Automate HubSpot to Salesforce Lead Creation with Explorium AI Enrichment

This n8n workflow automates the process of creating leads in Salesforce based on new contacts in HubSpot, with an optional enrichment step using Explorium AI (simulated via an HTTP Request).

What it does

This workflow streamlines your lead management by:

  1. Triggering on New HubSpot Contacts: It listens for new contact creation events in HubSpot.
  2. Enriching Contact Data (Simulated): It sends the HubSpot contact's email address to a simulated Explorium AI endpoint (via an HTTP Request node) to retrieve additional company and contact information.
  3. Merging Data: It combines the original HubSpot contact data with the enriched data from the AI service.
  4. Filtering for Valid Leads: It filters the merged data to ensure only contacts with a valid company name (obtained from enrichment) proceed to Salesforce.
  5. Creating Salesforce Leads: For each valid and enriched contact, it creates a new lead entry in Salesforce.

Prerequisites/Requirements

To use this workflow, you will need:

  • HubSpot Account: Configured with n8n credentials to allow the trigger to listen for new contacts and potentially for the HubSpot node to interact.
  • Salesforce Account: Configured with n8n credentials to allow lead creation.
  • Explorium AI (or similar enrichment service) API Key/Endpoint: The workflow currently uses a placeholder HTTP Request node. You would need to replace this with your actual Explorium AI (or chosen data enrichment service) API call and credentials.

Setup/Usage

  1. Import the Workflow: Download the provided JSON and import it into your n8n instance.
  2. Configure Credentials:
    • Set up your HubSpot credentials for the "HubSpot Trigger" node.
    • Set up your Salesforce credentials for the "Salesforce" node.
  3. Configure Explorium AI (HTTP Request):
    • Open the "HTTP Request" node.
    • Replace the placeholder URL and body with your actual Explorium AI API endpoint and the required payload for enrichment (e.g., passing the email from HubSpot).
    • Configure any necessary authentication (e.g., API Key in headers or query parameters).
  4. Activate the Workflow: Once all credentials and configurations are set, activate the workflow.

Now, whenever a new contact is created in your HubSpot account, this workflow will automatically attempt to enrich their data and create a corresponding lead in Salesforce if the enrichment is successful.

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