Danielle Gomes
Product Designer | n8n Automation | Practical AI Solutions I turn ideas into smart digital experiences focused on efficiency and personalization. Specialized in building solutions that combine design, n8n workflows, and AI to scale products, optimize processes, and maximize impact.
Templates by Danielle Gomes
Daily news digest: summarize RSS feeds with OpenAI and deliver to WhatsApp
This n8n workflow collects and summarizes news from multiple RSS feeds, using OpenAI to generate a concise summary that can be sent to WhatsApp or other destinations. Perfect for automating your daily news digest. š Workflow Breakdown: Schedule Trigger Start the workflow on your desired schedule (daily, hourly, etc.). šØ Note: Set the trigger however you wish. RSS Feeds (My RSS 01ā04) Fetches articles from four different RSS sources. šØ Note: You can add as many RSS feeds as you want. Edit Fields (Edit Fields1ā3) Normalizes RSS fields (title, link, etc.) to ensure consistency across different sources. Merge (append mode) Combines the RSS items into a single unified list. Filter Optionally filter articles by keywords, date, or categories. Limit Limits the analysis to the 10 most recent articles. šØ Note: This keeps the result concise and avoids overloading the summary. Aggregate Prepares the selected news for summarization by combining them into a single content block. OpenAI (Message Assistant) Summarizes the aggregated news items in a clean and readable format using AI. Send Summary to WhatsApp Sends the AI-generated summary to a WhatsApp endpoint via webhook (yoururlapi.com). You can replace this with an email service, Google Drive, or any other destination. šØ Note: You can send it to your WhatsApp API, email, drive, etc. No Operation (End) Final placeholder to safely close the workflow. You may expand from here if needed.
Classify lead sentiment with Google Gemini and send WhatsApp responses via Typeform & Supabase
Automatically classify incoming leads based on the sentiment of their message using Google Gemini, store them in Supabase by category, and send tailored WhatsApp messages via the official WhatsApp Cloud API. ā Use Case: This workflow is ideal for sales, onboarding, and customer support teams who want to: Understand the tone and urgency of each lead Prioritize hot leads instantly Send smart, automatic WhatsApp replies based on user sentiment š§ How it works: Capture lead via a Typeform webhook Clean and structure the data (name, email, message, etc.) Run sentiment analysis using Google Gemini to classify the message as: Positive ā Hot Lead Neutral ā Warm Lead Negative ā Cold Lead Store lead data in Supabase under the corresponding category Merge data to unify flow paths Send WhatsApp message using the official WhatsApp Cloud API, with a custom reply for each sentiment result š§ Tools used: Typeform (incoming data) Google Gemini (AI-based sentiment classification) Supabase (database) WhatsApp Cloud API (response automation) š· Tags: AI, Sentiment Analysis, Lead Qualification, Supabase, WhatsApp, Gemini, Typeform, CRM, Automation, Customer Engagement