WordPress - AI chatbot to enhance user experience - with Supabase and OpenAI
This is the first version of a template for a RAG/GenAI App using WordPress content.
As creating, sharing, and improving templates brings me joy 😄, feel free to reach out on LinkedIn if you have any ideas to enhance this template!
How It Works
This template includes three workflows:
- Workflow 1: Generate embeddings for your WordPress posts and pages, then store them in the Supabase vector store.
- Workflow 2: Handle upserts for WordPress content when edits are made.
- Workflow 3: Enable chat functionality by performing Retrieval-Augmented Generation (RAG) on the embedded documents.
Why use this template?
This template can be applied to various use cases:
- Build a GenAI application that requires embedded documents from your website's content.
- Embed or create a chatbot page on your website to enhance user experience as visitors search for information.
- Gain insights into the types of questions visitors are asking on your website.
- Simplify content management by asking the AI for related content ideas or checking if similar content already exists. Useful for internal linking.
Prerequisites
- Access to Supabase for storing embeddings.
- Basic knowledge of Postgres and pgvector.
- A WordPress website with content to be embedded.
- An OpenAI API key
- Ensure that your n8n workflow, Supabase instance, and WordPress website are set to the same timezone (or use GMT) for consistency.
Workflow 1 : Initial Embedding
This workflow retrieves your WordPress pages and posts, generates embeddings from the content, and stores them in Supabase using pgvector.
Step 0 : Create Supabase tables
Nodes :
Postgres - Create Documents Table: This table is structured to support OpenAI embedding models with 1536 dimensionsPostgres - Create Workflow Execution History Table
These two nodes create tables in Supabase:
- The documents table, which stores embeddings of your website content.
- The n8n_website_embedding_histories table, which logs workflow executions for efficient management of upserts. This table tracks the workflow execution ID and execution timestamp.
Step 1 : Retrieve and Merge WordPress Pages and Posts
Nodes :
WordPress - Get All PostsWordPress - Get All PagesMerge WordPress Posts and Pages
These three nodes retrieve all content and metadata from your posts and pages and merge them. **Important: ** Apply filters to avoid generating embeddings for all site content.
Step 2 : Set Fields, Apply Filter, and Transform HTML to Markdown
Nodes :
Set FieldsFilter - Only Published & Unprotected ContentHTML to Markdown
These three nodes prepare the content for embedding by:
- Setting up the necessary fields for content embeddings and document metadata.
- Filtering to include only published and unprotected content (
protected=false), ensuring private or unpublished content is excluded from your GenAI application. - Converting HTML to Markdown, which enhances performance and relevance in Retrieval-Augmented Generation (RAG) by optimizing document embeddings.
Step 3: Generate Embeddings, Store Documents in Supabase, and Log Workflow Execution
Nodes:
Supabase Vector Store- Sub-nodes:
Embeddings OpenAIDefault Data LoaderToken SplitterAggregate
- Sub-nodes:
Supabase - Store Workflow Execution
This step involves generating embeddings for the content and storing it in Supabase, followed by logging the workflow execution details.
- Generate Embeddings: The
Embeddings OpenAInode generates vector embeddings for the content. - Load Data: The
Default Data Loaderprepares the content for embedding storage. The metadata stored includes the content title, publication date, modification date, URL, and ID, which is essential for managing upserts.
⚠️ Important Note : Be cautious not to store any sensitive information in metadata fields, as this information will be accessible to the AI and may appear in user-facing answers.
- Token Management: The
Token Splitterensures that content is segmented into manageable sizes to comply with token limits. - Aggregate: Ensure the last node is run only for 1 item.
- Store Execution Details: The
Supabase - Store Workflow Executionnode saves the workflow execution ID and timestamp, enabling tracking of when each content update was processed.
This setup ensures that content embeddings are stored in Supabase for use in downstream applications, while workflow execution details are logged for consistency and version tracking.
This workflow should be executed only once for the initial embedding. Workflow 2, described below, will handle all future upserts, ensuring that new or updated content is embedded as needed.
Workflow 2: Handle document upserts
Content on a website follows a lifecycle—it may be updated, new content might be added, or, at times, content may be deleted.
In this first version of the template, the upsert workflow manages:
- Newly added content
- Updated content
Step 1: Retrieve WordPress Content with Regular CRON
Nodes:
CRON - Every 30 SecondsPostgres - Get Last Workflow ExecutionWordPress - Get Posts Modified After Last Workflow ExecutionWordPress - Get Pages Modified After Last Workflow ExecutionMerge Retrieved WordPress Posts and Pages
A CRON job (set to run every 30 seconds in this template, but you can adjust it as needed) initiates the workflow. A Postgres SQL query on the n8n_website_embedding_histories table retrieves the timestamp of the latest workflow execution.
Next, the HTTP nodes use the WordPress API (update the example URL in the template with your own website’s URL and add your WordPress credentials) to request all posts and pages modified after the last workflow execution date. This process captures both newly added and recently updated content. The retrieved content is then merged for further processing.
Step 2 : Set fields, use filter
Nodes :
Set fields2Filter - Only published and unprotected content
The same that Step 2 in Workflow 1, except that HTML To Makrdown is used in further Step.
Step 3: Loop Over Items to Identify and Route Updated vs. Newly Added Content
Here, I initially aimed to use 'update documents' instead of the delete + insert approach, but encountered challenges, especially with updating both content and metadata columns together. Any help or suggestions are welcome! :)
Nodes:
-
Loop Over Items -
Postgres - Filter on Existing Documents -
Switch-
Route
existing_documents(if documents with matching IDs are found in metadata):Supabase - Delete Row if Document Exists: Removes any existing entry for the document, preparing for an update.Aggregate2: Used to aggregate documents on Supabase with ID to ensure thatSet Fields3is executed only once for each WordPress content to avoid duplicate execution.Set Fields3: Sets fields required for embedding updates.
-
Route
new_documents(if no matching documents are found with IDs in metadata):Set Fields4: Configures fields for embedding newly added content.
-
In this step, a loop processes each item, directing it based on whether the document already exists. The Aggregate2 node acts as a control to ensure Set Fields3 runs only once per WordPress content, effectively avoiding duplicate execution and optimizing the update process.
Step 4 : HTML to Markdown, Supabase Vector Store, Update Workflow Execution Table
The HTML to Markdown node mirrors Workflow 1 - Step 2. Refer to that section for a detailed explanation on how HTML content is converted to Markdown for improved embedding performance and relevance.
Following this, the content is stored in the Supabase vector store to manage embeddings efficiently. Lastly, the **workflow execution table is updated. These nodes mirros the Workflow 1 - Step 3 nodes.
Workflow 3 : An example of GenAI App with Wordpress Content : Chatbot to be embed on your website
Step 1: Retrieve Supabase Documents, Aggregate, and Set Fields After a Chat Input
Nodes:
When Chat Message ReceivedSupabase - Retrieve Documents from Chat InputEmbeddings OpenAI1Aggregate DocumentsSet Fields
When a user sends a message to the chat, the prompt (user question) is sent to the Supabase vector store retriever. The RPC function match_documents (created in Workflow 1 - Step 0) retrieves documents relevant to the user’s question, enabling a more accurate and relevant response.
In this step:
- The Supabase vector store retriever fetches documents that match the user’s question, including metadata.
- The Aggregate Documents node consolidates the retrieved data.
- Finally, Set Fields organizes the data to create a more readable input for the AI agent.
Directly using the AI agent without these nodes would prevent metadata from being sent to the language model (LLM), but metadata is essential for enhancing the context and accuracy of the AI’s response. By including metadata, the AI’s answers can reference relevant document details, making the interaction more informative.
Step 2: Call AI Agent, Respond to User, and Store Chat Conversation History
Nodes:
- AI Agent
- Sub-nodes:
OpenAI Chat ModelPostgres Chat Memories
- Sub-nodes:
- Respond to Webhook
This step involves calling the AI agent to generate an answer, responding to the user, and storing the conversation history. The model used is gpt4-o-mini, chosen for its cost-efficiency.
n8n WordPress AI Chatbot with Supabase and OpenAI
This n8n workflow automates the creation of an AI chatbot for WordPress, leveraging Supabase for data storage and OpenAI for natural language processing. It allows you to ingest content from your WordPress site, store it in a Supabase vector store, and then use an AI agent to answer user queries based on that content.
What it does
This workflow provides two main functionalities:
-
Content Ingestion and Vectorization (Manual/Scheduled Trigger):
- Triggers: Can be executed manually or on a schedule.
- Fetches WordPress Posts: Retrieves all published posts from your WordPress site.
- Formats Content: Extracts and formats the post content into a markdown-like structure.
- Splits Text: Divides the formatted content into smaller chunks (tokens) suitable for embedding.
- Generates Embeddings: Uses OpenAI's embedding model to convert text chunks into vector representations.
- Stores in Supabase Vector Store: Saves the vectorized content into your Supabase database, making it searchable for the AI agent.
-
AI Chatbot for User Queries (Webhook Trigger):
- Listens for Chat Messages: Activates upon receiving a chat message via a webhook.
- Retrieves Chat History: Fetches previous conversation history from a Postgres database (Supabase).
- Initializes AI Agent: Sets up an OpenAI Chat Model and a Supabase Vector Store as tools for the AI agent.
- Processes User Query: The AI agent uses the provided tools (chat history and vector store) to understand the user's question and find relevant information from your WordPress content.
- Responds to Webhook: Sends the AI-generated answer back to the source of the chat message.
Prerequisites/Requirements
To use this workflow, you will need:
- n8n Instance: A running instance of n8n.
- WordPress Site: Access to a WordPress site with content.
- Supabase Account: A Supabase project with a database configured for vector storage and chat memory.
- You'll need a table for storing vectorized WordPress content.
- You'll need a table for storing chat history.
- OpenAI API Key: An API key for OpenAI to use its embedding and chat models.
- Postgres Credentials: Database credentials for connecting to your Supabase Postgres instance for chat memory.
Setup/Usage
- Import the workflow: Import the provided JSON into your n8n instance.
- Configure Credentials:
- WordPress: Set up your WordPress credentials (API Key or Basic Auth).
- Supabase: Configure your Supabase credentials (API Key and Project URL) for both the
Supabasenode and theSupabase Vector Storenode. - OpenAI: Provide your OpenAI API Key for the
Embeddings OpenAIandOpenAI Chat Modelnodes. - Postgres: Set up your Postgres credentials for the
Postgres Chat Memorynode, pointing to your Supabase database.
- Adjust Node Settings:
- WordPress Node (ID: 118): Ensure the "Resource" is set to "Post" and "Operation" to "Get All". You might want to add filters if you only want to ingest specific posts.
- Edit Fields (Set) Node (ID: 38): Verify the fields being set for markdown conversion match your WordPress post structure.
- Supabase Vector Store (ID: 1231): Configure the table name and embedding column in your Supabase database where the vectorized content will be stored.
- Postgres Chat Memory (ID: 1267): Configure the table name in your Supabase database where chat history will be stored.
- AI Agent (ID: 1119): Review the agent's prompt and tools to ensure it aligns with your desired chatbot behavior.
- Initial Content Ingestion:
- Execute the workflow using the
Manual Trigger(ID: 838) orSchedule Trigger(ID: 839) to ingest your WordPress content into the Supabase vector store. This step needs to be run at least once to populate the vector store.
- Execute the workflow using the
- Deploy Chatbot:
- Activate the workflow. The
Chat Trigger(ID: 1247) will now be listening for incoming chat messages. - Integrate the webhook URL provided by the
Chat Triggernode into your desired chat platform or application.
- Activate the workflow. The
- Test: Send a chat message to your integrated chatbot to test its responses based on your WordPress content.
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