With MindsDB, you can create and deploy AI agents that comprise AI models and customizable skills such as knowledge bases and text-to-SQL.
AI agents use a conversational model (like OpenAI or Anthropic) from LangChain utilizing tools as skills to respond to user input. Users can customize AI agents with their own prompts to fit their use cases.
A chatbot can be thought of as an agent connected to some messaging interface.
How to work with AI agents
Create skills
Start by setting up the skills. Here is how you can create and manage skills using SQL API.
-
Creating, inserting into, updating, and deleting a knowledge base:
CREATE KNOWLEDGE BASE my_knowledge_base
USING
model = embedding_model_name,
storage = vector_database.storage_table;
INSERT INTO my_knowledge_base
SELECT text AS content FROM datasource.data_table;
INSERT INTO my_knowledge_base
SELECT id, text AS content FROM datasource.data_table;
SELECT * FROM my_knowledge_base;
DROP KNOWLEDGE BASE my_knowledge_base;
-
Creating, updating, and deleting a skill that utilizes a knowledge base:
CREATE SKILL kb_skill
USING
type = 'knowledge_base',
source = 'my_knowledge_base',
description = 'My data';
UPDATE SKILL kb_skill
SET
source = 'new_knowledge_base';
DROP SKILL kb_skill;
-
Creating, updating, and deleting a text-to-SQL skill:
CREATE SKILL text_to_sql_skill
USING
type = 'text_to_sql',
database = 'example_db',
tables = ['sales_data'];
UPDATE SKILL text_to_sql_skill
SET
database = 'new_example_db',
tables = ['sales_data'];
DROP SKILL text_to_sql_skill;
You can query all skills using this command:
Create an agent
An agent can be created, deleted, queried, and updated. Here is how you can do that using SQL API.
-
Creating an AI agent:
CREATE AGENT my_agent
USING
model = 'chatbot_agent',
skills = ['test_skill'];
-
Updating an AI agent:
UPDATE AGENT my_agent
SET
model = 'new_chatbot_agent',
skills_to_remove = ['test_skill'],
skills_to_add = ['production_skill'];
-
Deleting an AI agent:
You can query all agents using this command:
Example
Agents with Text-to-SQL Skills
Start by creating a conversational large language model to be used by an agent.
CREATE MODEL my_model
PREDICT answer
USING
engine = 'langchain',
input_column = 'question',
openai_api_key = 'your-model-api-key',
anthropic_api_key = 'your-model-api-key',
model_name='gpt-4',
mode = 'conversational',
user_column = 'question' ,
assistant_column = 'answer',
max_tokens=100,
temperature=0,
verbose=True,
prompt_template='Answer the user input in a helpful way';
Then, connect a data source to be used for creating a skill.
CREATE DATABASE example_db
WITH ENGINE = "postgres",
PARAMETERS = {
"user": "demo_user",
"password": "demo_password",
"host": "3.220.66.106",
"port": "5432",
"database": "demo"
};
SELECT * FROM example_db.sales_data;
Create a skill using one or more tables from a connected data source.
CREATE SKILL text_to_sql_skill
USING
type = 'text_to_sql',
database = 'example_db',
tables = ['sales_data'];
Now that we have a model and a skill, let’s create an agent.
CREATE AGENT text_to_sql_agent
USING
model = 'my_model',
skills = ['text_to_sql_skill'];
The next step would be to connect a chat app, like Slack, to MindsDB and create a chatbot utilizing this agent.
Agents with Knowledge Bases as Skills
In this example, let’s create an embedding model (you can choose one from OpenAI, Hugging Face, or LangChain) for the knowledge base.
CREATE ML_ENGINE openai_engine
FROM openai
USING
api_key = 'your-openai-api-key';
CREATE MODEL embedding_model
PREDICT embeddings
USING
engine = 'openai_engine',
mode='embedding',
model_name='text-embedding-ada-002',
question_column = 'content';
Now let’s create a knowledge base that uses this embedding model and the default storage vector database (that is, ChromaDB).
CREATE KNOWLEDGE BASE my_knowledge_base
USING
model = embedding_model;
This is how you can insert data into the knowledge base and select it.
INSERT INTO my_knowledge_base (content)
VALUES ('I drink tea.');
SELECT * FROM my_knowledge_base;
Use this knowledge base to create a skill for an agent:
CREATE SKILL kb_skill
USING
type = 'knowledge_base',
source = 'my_knowledge_base',
description = 'My data';