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Integrate Wait with 500+ apps and services

Unlock Wait’s full potential with n8n, connecting it to similar Core Nodes apps and over 1000 other services. Create adaptable and scalable workflows between Wait and your stack. All within a building experience you will love.

Popular ways to use Wait integration

Pipedrive node
Slack node
Calendly Trigger node

Create a Pipedrive activity on Calendly event scheduled

This workflow is triggered when a meeting is scheduled via Calendly. Then, an activity is automatically created in Pipedrive and 15 minutes after the end of the meeting, a message is sent to the interviewer in Slack, reminding them to write down their notes and insights from the meeting.
lorenanda
Lorena
HTTP Request node
Customer Datastore (n8n training) node

Avoid rate limiting by batching HTTP requests

This workflow demonstrates the use of the Split In Batches node and the Wait node to avoid API rate limits. Customer Datastore node: The workflow fetches data from the Customer Datastore node. Based on your use case, replace it with a relevant node. Split In Batches node: This node splits the items into a single item. Based on the API limit, you can configure the Batch Size. HTTP Request node: This node makes API calls to a placeholder URL. If the Split In Batches node returns 5 items, the HTTP Request node will make 5 different API calls. Wait node: This node will pause the workflow for the time you specify. On resume, the Split In Batches node gets executed node, and the next batch is processed. Replace Me (NoOp node): This node is optional. If you want to continue your workflow and process the items, replace this node with the corresponding node(s).
harshil1712
ghagrawal17
Google Sheets node
Telegram node

Send bulk messages to chats in Telegram

The Telegram API has a limitation to send only 30 messages per second. Use this workflow to send messages to more than 30 chats in Telegram.
harshil1712
ghagrawal17
HTTP Request node
Redis node
+8

Advanced Telegram Bot, Ticketing System, LiveChat, User Management, Broadcasting

A robust n8n workflow designed to enhance Telegram bot functionality for user management and broadcasting. It facilitates automatic support ticket creation, efficient user data storage in Redis, and a sophisticated system for message forwarding and broadcasting. How It Works Telegram Bot Setup: Initiate the workflow with a Telegram bot configured for handling different chat types (private, supergroup, channel). User Data Management: Formats and updates user data, storing it in a Redis database for efficient retrieval and management. Support Ticket Creation: Automatically generates chat tickets for user messages and saves the corresponding topic IDs in Redis. Message Forwarding: Forwards new messages to the appropriate chat thread, or creates a new thread if none exists. Support Forum Management: Handles messages within a support forum, differentiating between various chat types and user statuses. Broadcasting System: Implements a broadcasting mechanism that sends channel posts to all previous bot users, with a system to filter out blocked users. Blocked User Management: Identifies and manages blocked users, preventing them from receiving broadcasted messages. Versatile Channel Handling: Ensures that messages from verified channels are properly managed and broadcasted to relevant users. Set Up Steps Estimated Time**: Around 30 minutes. Requirements**: A Telegram bot, a Redis database, and Telegram group/channel IDs are necessary. Configuration**: Input the Telegram bot token and relevant group/channel IDs. Configure message handling and user data processing according to your needs. Detailed Instructions**: Sticky notes within the workflow provide extensive setup information and guidance. Live Demo Workflow Bot: Telegram Bot Link (Click here) Support Group: Telegram Group Link (Click here) Broadcasting Channel: Telegram Channel Link (Click here) Keywords: n8n workflow, Telegram bot, chat ticket system, Redis database, message broadcasting, user data management, support forum automation
nskha
Nskha
Google Sheets node
GraphQL node
+4

Shopify to Google Sheets Product Sync Automation

Workflow Description: This workflow automates the synchronization of product data from a Shopify store to a Google Sheets document, ensuring seamless management and tracking. It retrieves product details such as title, tags, description, and price from Shopify via GraphQL queries. The outcome is a comprehensive list of products neatly organized in Google Sheets for easy access and analysis. Key Features: Automated: Runs on a schedule you define (e.g., daily, hourly) to keep your product data fresh. Complete Product Details: Retrieves titles, descriptions, variants, images, inventory, and more. Cursor-Based Pagination: Efficiently handles large product sets by navigating pages without starting from scratch. Google Sheets Integration: Writes product data directly to your designated sheets. Set up Instructions: Set up GraphQL node with Header Authentication for Shopify: Create Google Sheet Credentials: Follow this guide to set up your Google Sheet credentials for n8n: https://docs.n8n.io/integrations/builtin/credentials/google/ Choose your Google Sheet: Select the sheet where you want product information written. For the setup, we need a document with two sheets: 1. for storing Shopify data 2. for storing cursor details. Google sheet template : https://docs.google.com/spreadsheets/d/1I6JnP8ugqmMD5ktJlNB84J1MlSkoCHhAEuCofSa3OSM Schedule and run: Decide how often you want the data refreshed (daily, hourly, etc.) and let n8n do its magic!
salsiy
siyad
HTTP Request node
Google Drive node
+9

Narrating over a Video using Multimodal AI

This n8n template takes a video and extracts frames from it which are used with a multimodal LLM to generate a script. The script is then passed to the same multimodal LLM to generate a voiceover clip. This template was inspired by Processing and narrating a video with GPT's visual capabilities and the TTS API How it works Video is downloaded using the HTTP node. Python code node is used to extract the frames using OpenCV. Loop node is used o batch the frames for the LLM to generate partial scripts. All partial scripts are combined to form the full script which is then sent to OpenAI to generate audio from it. The finished voiceover clip is uploaded to Google Drive. Sample the finished product here: https://drive.google.com/file/d/1-XCoii0leGB2MffBMPpCZoxboVyeyeIX/view?usp=sharing Requirements OpenAI for LLM Ideally, a mid-range (16GB RAM) machine for acceptable performance! Customising this workflow For larger videos, consider splitting into smaller clips for better performance Use a multimodal LLM which supports fully video such as Google's Gemini.
jimleuk
Jimleuk

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