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Workflow tutorial
You can automate the setup of common use cases, such as conversational chat, using a Chain-of-Thought (CoT) agent. An agent orchestrates and runs ML models and tools. A tool performs a set of specific tasks. This page presents a complete example of setting up a CoT agent. For more information about agents and tools, see Agents and tools
The setup requires the following sequence of API requests, with provisioned resources used in subsequent requests. The following list provides an overview of the steps required for this workflow. The step names correspond to the names in the template:
- Deploy a model on the cluster
create_connector_1
: Create a connector to an externally hosted model.register_model_2
: Register a model using the connector that you created.deploy_model_3
: Deploy the model.
- Use the deployed model for inference
- Set up several tools that perform specific tasks:
cat_index_tool
: Set up a tool to obtain index information.ml_model_tool
: Set up a machine learning (ML) model tool.
- Set up one or more agents that use some combination of the tools:
sub_agent
: Create an agent that uses thecat_index_tool
.
- Set up tools representing these agents:
agent_tool
: Wrap thesub_agent
so that you can use it as a tool.
root_agent
: Set up a root agent that may delegate the task to either a tool or another agent.
- Set up several tools that perform specific tasks:
The following sections describe the steps in detail. For the complete workflow template, see Complete YAML workflow template.
Workflow graph
The workflow described in the previous section is organized into a template. Note that you can order the steps in several ways. In the example template, the ml_model_tool
step is specified right before the root_agent
step, but you can specify it at any point after the deploy_model_3
step and before the root_agent
step. The following diagram shows the directed acyclic graph (DAG) that OpenSearch creates for all of the steps in the order specified in the template.
1. Deploy a model on the cluster
To deploy a model on the cluster, you need to create a connector to the model, register the model, and deploy the model.
create_connector_1
The first step in the workflow is to create a connector to an externally hosted model (in the following example, this step is called create_connector_1
). The content of the user_inputs
field exactly matches the ML Commons Create Connector API:
nodes:
- id: create_connector_1
type: create_connector
user_inputs:
name: OpenAI Chat Connector
description: The connector to public OpenAI model service for GPT 3.5
version: '1'
protocol: http
parameters:
endpoint: api.openai.com
model: gpt-3.5-turbo
credential:
openAI_key: '12345'
actions:
- action_type: predict
method: POST
url: https://${parameters.endpoint}/v1/chat/completions
When you create a connector, OpenSearch returns a connector_id
, which you need in order to register the model.
register_model_2
When registering a model, the previous_node_inputs
field tells OpenSearch to obtain the required connector_id
from the output of the create_connector_1
step. Other inputs required by the Register Model API are included in the user_inputs
field:
- id: register_model_2
type: register_remote_model
previous_node_inputs:
create_connector_1: connector_id
user_inputs:
name: openAI-gpt-3.5-turbo
function_name: remote
description: test model
The output of this step is a model_id
. You must then deploy the registered model to the cluster.
deploy_model_3
The Deploy Model API requires the model_id
from the previous step, as specified in the previous_node_inputs
field:
- id: deploy_model_3
type: deploy_model
# This step needs the model_id produced as an output of the previous step
previous_node_inputs:
register_model_2: model_id
When using the Deploy Model API directly, a task ID is returned, requiring use of the Tasks API to determine when the deployment is complete. The automated workflow eliminates the manual status check and returns the final model_id
directly.
Ordering steps
To order these steps in a sequence, you must connect them by an edge in the graph. When a previous_node_input
field is present in a step, OpenSearch automatically creates a node with source
and dest
fields for this step. The output of the source
is required as input for the dest
. For example, the register_model_2
step requires the connector_id
from the create_connector_1
step. Similarly, the deploy_model_3
step requires the model_id
from the register_model_2
step. Thus, OpenSearch creates the first two edges in the graph as follows in order to match the output with the required input and raise errors if the required input is missing:
edges:
- source: create_connector_1
dest: register_model_2
- source: register_model_2
dest: deploy_model_3
If you define previous_node_inputs
, then defining edges is optional.
2. Use the deployed model for inference
A CoT agent can use the deployed model in a tool. This step doesn’t strictly correspond to an API but represents a component of the body required by the Register Agent API. This simplifies the register request and allows reuse of the same tool in multiple agents. For more information about agents and tools, see Agents and tools.
cat_index_tool
You can configure other tools to be used by the CoT agent. For example, you can configure a cat_index_tool
as follows. This tool does not depend on any previous steps:
- id: cat_index_tool
type: create_tool
user_inputs:
name: CatIndexTool
type: CatIndexTool
parameters:
max_iteration: 5
sub_agent
To use the cat_index_tool
in the agent configuration, specify it as one of the tools in the previous_node_inputs
field of the agent. You can add other tools to previous_node_inputs
as necessary. The agent also needs a large language model (LLM) in order to reason with the tools. The LLM is defined by the llm.model_id
field. This example assumes that the model_id
from the deploy_model_3
step will be used. However, if another model is already deployed, the model_id
of that previously deployed model could be included in the user_inputs
field instead:
- id: sub_agent
type: register_agent
previous_node_inputs:
# When llm.model_id is not present this can be used as a fallback value
deploy-model-3: model_id
cat_index_tool: tools
user_inputs:
name: Sub Agent
type: conversational
description: this is a test agent
parameters:
hello: world
llm.parameters:
max_iteration: '5'
stop_when_no_tool_found: 'true'
memory:
type: conversation_index
app_type: chatbot
OpenSearch will automatically create the following edges so that the agent can retrieve the fields from the previous node:
- source: cat_index_tool
dest: sub_agent
- source: deploy_model_3
dest: sub_agent
agent_tool
You can use an agent as a tool for another agent. Registering an agent produces an agent_id
in the output. The following step defines a tool that uses the agent_id
from the previous step:
- id: agent_tool
type: create_tool
previous_node_inputs:
sub_agent: agent_id
user_inputs:
name: AgentTool
type: AgentTool
description: Agent Tool
parameters:
max_iteration: 5
OpenSearch automatically creates an edge connection because this step specifies the previous_node_input
:
- source: sub_agent
dest: agent_tool
ml_model_tool
A tool may reference an ML model. This example gets the required model_id
from the model deployed in a previous step:
- id: ml_model_tool
type: create_tool
previous_node_inputs:
deploy-model-3: model_id
user_inputs:
name: MLModelTool
type: MLModelTool
alias: language_model_tool
description: A general tool to answer any question.
parameters:
prompt: Answer the question as best you can.
response_filter: choices[0].message.content
OpenSearch automatically creates an edge in order to use the previous_node_input
:
- source: deploy-model-3
dest: ml_model_tool
root_agent
A conversational chat application will communicate with a single root agent that includes the ML model tool and the agent tool in its tools
field. It will also obtain the llm.model_id
from the deployed model. Some agents require tools to be in a specific order, which can be enforced by including the tools_order
field in the user inputs:
- id: root_agent
type: register_agent
previous_node_inputs:
deploy-model-3: model_id
ml_model_tool: tools
agent_tool: tools
user_inputs:
name: DEMO-Test_Agent_For_CoT
type: conversational
description: this is a test agent
parameters:
prompt: Answer the question as best you can.
llm.parameters:
max_iteration: '5'
stop_when_no_tool_found: 'true'
tools_order: ['agent_tool', 'ml_model_tool']
memory:
type: conversation_index
app_type: chatbot
OpenSearch automatically creates edges for the previous_node_input
sources:
- source: deploy-model-3
dest: root_agent
- source: ml_model_tool
dest: root_agent
- source: agent_tool
dest: root_agent
For the complete DAG that OpenSearch creates for this workflow, see the workflow graph.
Complete YAML workflow template
The following is the final template including all of the provision
workflow steps in YAML format:
YAML template
# This template demonstrates provisioning the resources for a
# Chain-of-Thought chat bot
name: tool-register-agent
description: test case
use_case: REGISTER_AGENT
version:
template: 1.0.0
compatibility:
- 2.12.0
- 3.0.0
workflows:
# This workflow defines the actions to be taken when the Provision Workflow API is used
provision:
nodes:
# The first three nodes create a connector to a remote model, registers and deploy that model
- id: create_connector_1
type: create_connector
user_inputs:
name: OpenAI Chat Connector
description: The connector to public OpenAI model service for GPT 3.5
version: '1'
protocol: http
parameters:
endpoint: api.openai.com
model: gpt-3.5-turbo
credential:
openAI_key: '12345'
actions:
- action_type: predict
method: POST
url: https://${parameters.endpoint}/v1/chat/completions
- id: register_model_2
type: register_remote_model
previous_node_inputs:
create_connector_1: connector_id
user_inputs:
# deploy: true could be added here instead of the deploy step below
name: openAI-gpt-3.5-turbo
description: test model
- id: deploy_model_3
type: deploy_model
previous_node_inputs:
register_model_2: model_id
# For example purposes, the model_id obtained as the output of the deploy_model_3 step will be used
# for several below steps. However, any other deployed model_id can be used for those steps.
# This is one example tool from the Agent Framework.
- id: cat_index_tool
type: create_tool
user_inputs:
name: CatIndexTool
type: CatIndexTool
parameters:
max_iteration: 5
# This simple agent only has one tool, but could be configured with many tools
- id: sub_agent
type: register_agent
previous_node_inputs:
deploy-model-3: model_id
cat_index_tool: tools
user_inputs:
name: Sub Agent
type: conversational
parameters:
hello: world
llm.parameters:
max_iteration: '5'
stop_when_no_tool_found: 'true'
memory:
type: conversation_index
app_type: chatbot
# An agent can be used itself as a tool in a nested relationship
- id: agent_tool
type: create_tool
previous_node_inputs:
sub_agent: agent_id
user_inputs:
name: AgentTool
type: AgentTool
parameters:
max_iteration: 5
# An ML Model can be used as a tool
- id: ml_model_tool
type: create_tool
previous_node_inputs:
deploy-model-3: model_id
user_inputs:
name: MLModelTool
type: MLModelTool
alias: language_model_tool
parameters:
prompt: Answer the question as best you can.
response_filter: choices[0].message.content
# This final agent will be the interface for the CoT chat user
# Using a flow agent type tools_order matters
- id: root_agent
type: register_agent
previous_node_inputs:
deploy-model-3: model_id
ml_model_tool: tools
agent_tool: tools
user_inputs:
name: DEMO-Test_Agent
type: flow
parameters:
prompt: Answer the question as best you can.
llm.parameters:
max_iteration: '5'
stop_when_no_tool_found: 'true'
tools_order: ['agent_tool', 'ml_model_tool']
memory:
type: conversation_index
app_type: chatbot
# These edges are all automatically created with previous_node_input
edges:
- source: create_connector_1
dest: register_model_2
- source: register_model_2
dest: deploy_model_3
- source: cat_index_tool
dest: sub_agent
- source: deploy_model_3
dest: sub_agent
- source: sub_agent
dest: agent_tool
- source: deploy-model-3
dest: ml_model_tool
- source: deploy-model-3
dest: root_agent
- source: ml_model_tool
dest: root_agent
- source: agent_tool
dest: root_agent
Complete JSON workflow template
The following is the same template in JSON format:
JSON template
{
"name": "tool-register-agent",
"description": "test case",
"use_case": "REGISTER_AGENT",
"version": {
"template": "1.0.0",
"compatibility": [
"2.12.0",
"3.0.0"
]
},
"workflows": {
"provision": {
"nodes": [
{
"id": "create_connector_1",
"type": "create_connector",
"user_inputs": {
"name": "OpenAI Chat Connector",
"description": "The connector to public OpenAI model service for GPT 3.5",
"version": "1",
"protocol": "http",
"parameters": {
"endpoint": "api.openai.com",
"model": "gpt-3.5-turbo"
},
"credential": {
"openAI_key": "12345"
},
"actions": [
{
"action_type": "predict",
"method": "POST",
"url": "https://${parameters.endpoint}/v1/chat/completions"
}
]
}
},
{
"id": "register_model_2",
"type": "register_remote_model",
"previous_node_inputs": {
"create_connector_1": "connector_id"
},
"user_inputs": {
"name": "openAI-gpt-3.5-turbo",
"description": "test model"
}
},
{
"id": "deploy_model_3",
"type": "deploy_model",
"previous_node_inputs": {
"register_model_2": "model_id"
}
},
{
"id": "cat_index_tool",
"type": "create_tool",
"user_inputs": {
"name": "CatIndexTool",
"type": "CatIndexTool",
"parameters": {
"max_iteration": 5
}
}
},
{
"id": "sub_agent",
"type": "register_agent",
"previous_node_inputs": {
"deploy-model-3": "llm.model_id",
"cat_index_tool": "tools"
},
"user_inputs": {
"name": "Sub Agent",
"type": "conversational",
"parameters": {
"hello": "world"
},
"llm.parameters": {
"max_iteration": "5",
"stop_when_no_tool_found": "true"
},
"memory": {
"type": "conversation_index"
},
"app_type": "chatbot"
}
},
{
"id": "agent_tool",
"type": "create_tool",
"previous_node_inputs": {
"sub_agent": "agent_id"
},
"user_inputs": {
"name": "AgentTool",
"type": "AgentTool",
"parameters": {
"max_iteration": 5
}
}
},
{
"id": "ml_model_tool",
"type": "create_tool",
"previous_node_inputs": {
"deploy-model-3": "model_id"
},
"user_inputs": {
"name": "MLModelTool",
"type": "MLModelTool",
"alias": "language_model_tool",
"parameters": {
"prompt": "Answer the question as best you can.",
"response_filter": "choices[0].message.content"
}
}
},
{
"id": "root_agent",
"type": "register_agent",
"previous_node_inputs": {
"deploy-model-3": "llm.model_id",
"ml_model_tool": "tools",
"agent_tool": "tools"
},
"user_inputs": {
"name": "DEMO-Test_Agent",
"type": "flow",
"parameters": {
"prompt": "Answer the question as best you can."
},
"llm.parameters": {
"max_iteration": "5",
"stop_when_no_tool_found": "true"
},
"tools_order": [
"agent_tool",
"ml_model_tool"
],
"memory": {
"type": "conversation_index"
},
"app_type": "chatbot"
}
}
],
"edges": [
{
"source": "create_connector_1",
"dest": "register_model_2"
},
{
"source": "register_model_2",
"dest": "deploy_model_3"
},
{
"source": "cat_index_tool",
"dest": "sub_agent"
},
{
"source": "deploy_model_3",
"dest": "sub_agent"
},
{
"source": "sub_agent",
"dest": "agent_tool"
},
{
"source": "deploy-model-3",
"dest": "ml_model_tool"
},
{
"source": "deploy-model-3",
"dest": "root_agent"
},
{
"source": "ml_model_tool",
"dest": "root_agent"
},
{
"source": "agent_tool",
"dest": "root_agent"
}
]
}
}
}
Next steps
To learn more about agents and tools, see Agents and tools.