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# ------------------------------------ | ||
# Copyright (c) Microsoft Corporation. | ||
# Licensed under the MIT License. | ||
# ------------------------------------ | ||
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""" | ||
DESCRIPTION: | ||
This sample demonstrates how to create an agent with json response format. | ||
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USAGE: | ||
python sample_agents_json_object_response_format.py | ||
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Before running the sample: | ||
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pip install azure-ai-projects azure-ai-agents azure-identity | ||
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Set these environment variables with your own values: | ||
1) PROJECT_ENDPOINT - The Azure AI Project endpoint, as found in the Overview | ||
page of your Azure AI Foundry portal. | ||
2) MODEL_DEPLOYMENT_NAME - The deployment name of the AI model, as found under the "Name" column in | ||
the "Models + endpoints" tab in your Azure AI Foundry project. | ||
""" | ||
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import os, time | ||
from azure.ai.projects import AIProjectClient | ||
from azure.identity import DefaultAzureCredential | ||
from azure.ai.agents.models import ListSortOrder, AgentsResponseFormat | ||
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project_client = AIProjectClient( | ||
endpoint=os.environ["PROJECT_ENDPOINT"], | ||
credential=DefaultAzureCredential(), | ||
) | ||
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with project_client: | ||
agents_client = project_client.agents | ||
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# [START create_agent_with_json_object_response_format] | ||
agent = agents_client.create_agent( | ||
model=os.environ["MODEL_DEPLOYMENT_NAME"], | ||
name="my-agent", | ||
instructions="You are helpful agent. You will respond with a JSON object.", | ||
response_format=AgentsResponseFormat(type="json_object") | ||
) | ||
# [END create_agent_with_json_object_response_format] | ||
print(f"Created agent, agent ID: {agent.id}") | ||
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thread = agents_client.threads.create() | ||
print(f"Created thread, thread ID: {thread.id}") | ||
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# List all threads for the agent | ||
threads = agents_client.threads.list() | ||
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message = agents_client.messages.create(thread_id=thread.id, role="user", content="Hello, give me a list of planets in our solar system.") | ||
print(f"Created message, message ID: {message.id}") | ||
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run = agents_client.runs.create(thread_id=thread.id, agent_id=agent.id) | ||
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# Poll the run as long as run status is queued or in progress | ||
while run.status in ["queued", "in_progress", "requires_action"]: | ||
# Wait for a second | ||
time.sleep(1) | ||
run = agents_client.runs.get(thread_id=thread.id, run_id=run.id) | ||
print(f"Run status: {run.status}") | ||
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if run.status == "failed": | ||
print(f"Run error: {run.last_error}") | ||
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agents_client.delete_agent(agent.id) | ||
print("Deleted agent") | ||
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messages = agents_client.messages.list(thread_id=thread.id, order=ListSortOrder.ASCENDING) | ||
for msg in messages: | ||
if msg.text_messages: | ||
last_text = msg.text_messages[-1] | ||
print(f"{msg.role}: {last_text.text.value}") |
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# ------------------------------------ | ||
# Copyright (c) Microsoft Corporation. | ||
# Licensed under the MIT License. | ||
# ------------------------------------ | ||
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""" | ||
DESCRIPTION: | ||
This sample demonstrates how to use agents with JSON schema output format. | ||
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USAGE: | ||
python sample_agents_json_schema_response_format.py | ||
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Before running the sample: | ||
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pip install azure-ai-projects azure-ai-agents azure-identity pydantic | ||
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Set these environment variables with your own values: | ||
1) PROJECT_ENDPOINT - The Azure AI Project endpoint, as found in the Overview | ||
page of your Azure AI Foundry portal. | ||
2) MODEL_DEPLOYMENT_NAME - The deployment name of the AI model, as found under the "Name" column in | ||
the "Models + endpoints" tab in your Azure AI Foundry project. | ||
""" | ||
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import os | ||
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from enum import Enum | ||
from pydantic import BaseModel, TypeAdapter | ||
from azure.ai.projects import AIProjectClient | ||
from azure.identity import DefaultAzureCredential | ||
from azure.ai.agents.models import ( | ||
ListSortOrder, | ||
MessageTextContent, | ||
MessageRole, | ||
ResponseFormatJsonSchema, | ||
ResponseFormatJsonSchemaType, | ||
RunStatus, | ||
) | ||
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# Create the pydantic model to represent the planet names and there masses. | ||
# [START create_pydantic_model_for_planets] | ||
class Planets(str, Enum): | ||
Earth = "Earth" | ||
Mars = "Mars" | ||
Mercury = "Mercury" | ||
# [END create_pydantic_model_for_planets] | ||
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class Planet(BaseModel): | ||
planet: Planets | ||
mass: float | ||
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project_client = AIProjectClient( | ||
endpoint=os.environ["PROJECT_ENDPOINT"], | ||
credential=DefaultAzureCredential(), | ||
) | ||
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with project_client: | ||
agents_client = project_client.agents | ||
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# [START create_agent_with_json_schema_response_format] | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. We cannot have these in many samples, because README samples may get broken [START create_agent_with_json_schema_response_format]There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. remove these if not needed in README |
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agent = agents_client.create_agent( | ||
model=os.environ["MODEL_DEPLOYMENT_NAME"], | ||
name="my-agent", | ||
instructions="Extract the information about planets.", | ||
response_format=ResponseFormatJsonSchemaType( | ||
json_schema=ResponseFormatJsonSchema( | ||
name="planet_mass", | ||
description="Extract planet mass.", | ||
schema=Planet.model_json_schema(), | ||
) | ||
), | ||
) | ||
# [END create_agent_with_json_schema_response_format] | ||
print(f"Created agent, agent ID: {agent.id}") | ||
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thread = agents_client.threads.create() | ||
print(f"Created thread, thread ID: {thread.id}") | ||
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message = agents_client.messages.create( | ||
thread_id=thread.id, | ||
role="user", | ||
content=("The mass of the Mars is 6.4171E23 kg; the mass of the Earth is 5.972168E24 kg;"), | ||
) | ||
print(f"Created message, message ID: {message.id}") | ||
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run = agents_client.runs.create_and_process(thread_id=thread.id, agent_id=agent.id) | ||
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if run.status != RunStatus.COMPLETED: | ||
print(f"The run did not succeed: {run.status=}.") | ||
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agents_client.delete_agent(agent.id) | ||
print("Deleted agent") | ||
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messages = agents_client.messages.list( | ||
thread_id=thread.id, | ||
order=ListSortOrder.ASCENDING, | ||
) | ||
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for msg in messages: | ||
if msg.role == MessageRole.AGENT: | ||
last_part = msg.content[-1] | ||
if isinstance(last_part, MessageTextContent): | ||
planet = TypeAdapter(Planet).validate_json(last_part.text.value) | ||
print(f"The mass of {planet.planet} is {planet.mass} kg.") |
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# ------------------------------------ | ||
# Copyright (c) Microsoft Corporation. | ||
# Licensed under the MIT License. | ||
# ------------------------------------ | ||
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""" | ||
DESCRIPTION: | ||
This sample demonstrates how to create an agent with text response format. | ||
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USAGE: | ||
python sample_agents_text_response_format.py | ||
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Before running the sample: | ||
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pip install azure-ai-projects azure-ai-agents azure-identity | ||
|
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Set these environment variables with your own values: | ||
1) PROJECT_ENDPOINT - The Azure AI Project endpoint, as found in the Overview | ||
page of your Azure AI Foundry portal. | ||
2) MODEL_DEPLOYMENT_NAME - The deployment name of the AI model, as found under the "Name" column in | ||
the "Models + endpoints" tab in your Azure AI Foundry project. | ||
""" | ||
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import os, time | ||
from azure.ai.projects import AIProjectClient | ||
from azure.identity import DefaultAzureCredential | ||
from azure.ai.agents.models import ListSortOrder, AgentsResponseFormat | ||
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project_client = AIProjectClient( | ||
endpoint=os.environ["PROJECT_ENDPOINT"], | ||
credential=DefaultAzureCredential(), | ||
) | ||
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with project_client: | ||
agents_client = project_client.agents | ||
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# [START create_agent_with_text_response_format] | ||
agent = agents_client.create_agent( | ||
model=os.environ["MODEL_DEPLOYMENT_NAME"], | ||
name="my-agent", | ||
instructions="You are helpful agent.", | ||
response_format=AgentsResponseFormat(type="text") | ||
) | ||
# [END create_agent_with_text_response_format] | ||
print(f"Created agent, agent ID: {agent.id}") | ||
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thread = agents_client.threads.create() | ||
print(f"Created thread, thread ID: {thread.id}") | ||
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# List all threads for the agent | ||
threads = agents_client.threads.list() | ||
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message = agents_client.messages.create(thread_id=thread.id, role="user", content="Hello, give me a list of planets in our solar system.") | ||
print(f"Created message, message ID: {message.id}") | ||
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run = agents_client.runs.create(thread_id=thread.id, agent_id=agent.id) | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Nit: let us say run = agents_client.runs.create_and_process(thread_id=thread.id, agent_id=agent.id) |
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# Poll the run as long as run status is queued or in progress | ||
while run.status in ["queued", "in_progress", "requires_action"]: | ||
# Wait for a second | ||
time.sleep(1) | ||
run = agents_client.runs.get(thread_id=thread.id, run_id=run.id) | ||
print(f"Run status: {run.status}") | ||
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if run.status == "failed": | ||
print(f"Run error: {run.last_error}") | ||
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agents_client.delete_agent(agent.id) | ||
print("Deleted agent") | ||
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messages = agents_client.messages.list(thread_id=thread.id, order=ListSortOrder.ASCENDING) | ||
for msg in messages: | ||
if msg.text_messages: | ||
last_text = msg.text_messages[-1] | ||
print(f"{msg.role}: {last_text.text.value}") |
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
Nit: let us say