Save Hotmart events to Google Sheets
Português
Acompanhe todos os seus eventos do Hotmart em um só lugar e mantenha seus dados organizados para análise.
Com este fluxo você pode registrar compras, reembolsos, eventos de assinatura e abandono de carrinho diretamente no Google Sheets.
Como funciona
O fluxo recebe os eventos da Hotmart e registra automaticamente no Google Sheets.
Por exemplo:
- Compras são registradas com informações como nome do produto, valor pago e dados do comprador.
- Abandono de carrinho registra informações sobre o produto visualizado, dados de contato do cliente e horários.
- Eventos de assinatura mostram atualizações como cancelamentos ou renovações.
Para quem é?
Criadores, empreendedores e negócios que usam o Hotmart e precisam de uma forma clara e automatizada de acompanhar suas vendas e dados de assinatura.
Remova a necessidade de transferir dados manualmente – este fluxo de trabalho faz isso por você, economizando tempo e reduzindo erros.
Confira meus outros templates
👉 https://n8n.io/creators/solomon/
English
Track all your Hotmart events in one place and keep your data organized for analysis.
With this workflow, you can register purchases, refunds, subscription events, and cart abandonment directly in Google Sheets.
How it works
The workflow listens for events from Hotmart and automatically records the details in Google Sheets.
For example:
- Purchases are logged with details like product name, amount paid, and buyer information.
- Cart abandonment records include the product viewed, customer contact details, and timestamps.
- Subscription events show updates like cancellations or renewals.
Who is this for?
Creators, entrepreneurs, and businesses using Hotmart who need a clear and automated way to track their sales and subscription data.
No need to manually transfer data – this workflow does it for you, saving time and reducing errors.
Check out my other templates
Save Hotmart Events to Google Sheets
This n8n workflow provides a robust solution for capturing and organizing incoming Hotmart event data by automatically saving it to a Google Sheet. It acts as a central hub for Hotmart webhooks, allowing you to easily log and analyze event details without manual intervention.
What it does
This workflow streamlines the process of receiving and storing Hotmart event data:
- Listens for Hotmart Events: It starts by exposing a webhook URL that Hotmart can use to send event notifications (e.g., sales, refunds, subscriptions).
- Captures Raw Data: Upon receiving a webhook, it captures the entire payload, ensuring no data is lost.
- Extracts and Formats Key Fields: It processes the incoming JSON data to extract relevant fields such as event type, product name, purchase date, and buyer information. It also formats the date and time for consistency.
- Conditionally Saves to Google Sheets: It uses a "Switch" node to determine if the event is a "PURCHASE_COMPLETE" event.
- Appends to Google Sheets: If the event is a "PURCHASE_COMPLETE", it appends the extracted and formatted data as a new row in a specified Google Sheet, ensuring a structured record of completed purchases.
Prerequisites/Requirements
To use this workflow, you will need:
- n8n Instance: A running instance of n8n.
- Hotmart Account: To configure webhooks that point to your n8n workflow.
- Google Account: With access to Google Sheets.
- Google Sheets Credential: An n8n credential configured for Google Sheets (OAuth2 recommended).
- Google Sheet: A pre-existing Google Sheet with appropriate column headers where the data will be stored.
Setup/Usage
- Import the Workflow:
- Copy the JSON content of this workflow.
- In your n8n instance, go to "Workflows" and click "New".
- Click the three dots in the top right corner and select "Import from JSON".
- Paste the JSON content and click "Import".
- Configure Credentials:
- Locate the "Google Sheets" node.
- Click on the "Credential" dropdown and select or create a new "Google Sheets API" credential. Ensure it has access to your Google Drive and Sheets.
- Configure Google Sheet Details:
- In the "Google Sheets" node, specify the "Spreadsheet ID" and "Sheet Name" where you want to save the Hotmart events.
- Activate the Webhook:
- Locate the "Webhook" node.
- Click on it to view its details. Copy the "Webhook URL".
- Configure Hotmart Webhook:
- In your Hotmart account settings, navigate to the Webhooks section.
- Create a new webhook and paste the copied "Webhook URL" from n8n.
- Select the Hotmart events you want to send to this webhook (e.g., "Purchase Complete").
- Activate the Workflow:
- Toggle the workflow to "Active" in n8n.
Now, whenever a configured event occurs in Hotmart, the data will be automatically sent to your n8n workflow and saved to your Google Sheet.
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