Utiliser la mémoire de l'agent avec WayFlow

Dans cet article, vous allez apprendre à connecter la mémoire de l'agent à un agent WayFlow afin qu'il puisse réutiliser des faits durables d'une session à l'autre.

A savoir : Pour la configuration des packages, reportez-vous à Introduction à la mémoire de l'agent. Si vous avez besoin d'une instance Oracle AI Database locale pour cet exemple, reportez-vous à Exécution locale d'Oracle AI Database. Pour en savoir plus sur WayFlow, reportez-vous à https://github.com/oracle/wayflow.

Configurer la mémoire de l'agent et WayFlow

Créez un thread de mémoire d'agent pour l'utilisateur, exposez un outil search_memory à WayFlow et construisez le fichier Agent WayFlow avec un élément OpenAIModel. L'outil search_memory interroge l'API de mémoire d'agent par utilisateur et ID d'agent afin de pouvoir récupérer les faits durables des sessions précédentes au lieu d'être limité au thread en cours. Le client de mémoire d'agent utilise également son propre LLM pour extraire périodiquement les mémoires durables des messages de thread récents, tandis que WayFlow Agent continue d'utiliser son propre OpenAIModel pour les réponses et les appels d'outil.

from oracleagentmemory.core.embedders.embedder import Embedder
from oracleagentmemory.core.llms.llm import Llm
from oracleagentmemory.core.oracleagentmemory import OracleAgentMemory
from wayflowcore.agent import Agent
from wayflowcore.models import OpenAIModel
from wayflowcore.tools import tool

embedder = Embedder(
    model="YOUR_EMBEDDING_MODEL",
    api_base="YOUR_EMBEDDING_API_BASE",
    api_key="YOUR_EMBEDDING_API_KEY",
)
llm = Llm(
    model="gpt-4.1-mini",
    api_key="YOUR_OPENAI_API_KEY",
)
db_pool = ...  #an oracledb connection or connection pool
wayflow_llm = OpenAIModel(
    model_id="gpt-4.1-mini",
    api_key="YOUR_OPENAI_API_KEY",
)


#Keep these identifiers stable for the same assistant and end user so memory
#is scoped consistently across threads and sessions.
agent_id = "support_agent"
user_id = "user_123"
memory = OracleAgentMemory(
    connection=db_pool,
    embedder=embedder,
    llm=llm,
)
memory_thread = memory.create_thread(
    thread_id="wayflow_memory_demo",
    user_id=user_id,
    agent_id=agent_id,
)

from typing import Annotated


@tool
def search_memory(
    query: Annotated[str, "Question to search in Oracle Agent Memory"],
) -> Annotated[str, "Top matching memory content"]:
    """Search Oracle Agent Memory for durable user facts relevant to the current request."""
    results = memory.search(
        query=query,
        user_id=user_id,
        agent_id=agent_id,
        max_results=1,
        record_types=["memory"],
    )
    if not results:
        return "No relevant memory found."
    return results[0].content

assistant = Agent(
    llm=wayflow_llm,
    agent_id=agent_id,
    custom_instruction=(
        "You are a support agent. When the user asks about durable facts from "
        "prior sessions, call the search_memory tool before answering."
    ),
    tools=[search_memory],
)

Persistance du contexte utilisateur après une session

Après chaque session WayFlow, ajoutez les messages échangés à la mémoire de l'agent et stockez tout fait durable qui doit être réutilisé ultérieurement.

session_1 = assistant.start_conversation()
user_message = (
    "I am John, a Python developer and I need help debugging a payment service."
)
session_1.append_user_message(user_message)
session_1.execute()
assistant_reply = session_1.get_last_message().content

print(assistant_reply)
#I can help with that. What error are you seeing?

#add_messages will add messages to the DB and extract memories automatically
memory_thread.add_messages(
    [
        {"role": "user", "content": user_message},
        {"role": "assistant", "content": assistant_reply},
    ]
)
#add_memory adds memory to the DB
memory_thread.add_memory("The user is John, a Python developer.")

Réutiliser la mémoire dans une nouvelle session WayFlow

Lorsqu'une session ultérieure démarre, rouvrez le même thread de mémoire d'agent et laissez l'agent WayFlow appeler search_memory pour récupérer le contexte utilisateur précédent.

memory_thread = memory.get_thread("wayflow_memory_demo")
assistant = Agent(
    llm=wayflow_llm,
    agent_id=agent_id,
    custom_instruction=(
        "You are a support agent. When the user asks about durable facts from "
        "prior sessions, call the search_memory tool before answering."
    ),
    tools=[search_memory],
)

session_2 = assistant.start_conversation()
session_2.append_user_message("Who am I?")
session_2.execute()
remembered_reply = session_2.get_last_message().content

print(remembered_reply)

Sortie :

The user is John, a Python developer.

Utilisation avancée

Pour une intégration plus étroite, vous pouvez inscrire un processus d'écoute d'événement WayFlow qui met en mémoire tampon les entrées ConversationMessageAddedEvent et les écrit dans la mémoire de l'agent à la fin d'une exécution. Le chemin de mise à jour de la mémoire de l'agent est ainsi dissocié de votre code de thread principal tout en conservant les messages échangés finaux.

from wayflowcore.events.event import ConversationMessageAddedEvent
from wayflowcore.events.eventlistener import GenericEventListener, register_event_listeners

pending_messages: list[dict[str, str]] = []


def _buffer_thread_message(event: ConversationMessageAddedEvent) -> None:
    if event.streamed:
        return
    pending_messages.append(
        {
            "role": event.message.role,
            "content": event.message.content,
        }
    )


message_listener = GenericEventListener(
    [ConversationMessageAddedEvent],
    _buffer_thread_message,
)

with register_event_listeners([message_listener]):
    session_3 = assistant.start_conversation()
    session_3.append_user_message("Please remember that I prefer concise code reviews.")
    session_3.execute()

if pending_messages:
    memory_thread.add_messages(pending_messages)

Désactiver l'extraction automatique

Si vous souhaitez uniquement conserver les messages et ajouter manuellement des mémoires durables, créez le client de mémoire d'agent avec extract_memories=False et insérez vous-même les lignes de mémoire durable.

manual_memory = OracleAgentMemory(
    connection=db_pool,
    embedder=embedder,
    extract_memories=False,
)
manual_memory_thread = manual_memory.create_thread(
    thread_id="wayflow_manual_memory_demo",
    user_id=user_id,
    agent_id=agent_id,
)
manual_memory_thread.add_messages(
    [
        {
            "role": "user",
            "content": "Please remember that I prefer concise code reviews.",
        },
        {
            "role": "assistant",
            "content": "Understood. I will keep responses concise.",
        },
    ]
)
manual_memory_thread.add_memory("The user prefers concise code reviews.")

Conclusion

Dans cet article, nous avons appris à connecter la mémoire de l'agent à un agent WayFlow, à conserver les messages échangés et les mémoires durables après chaque session et à réutiliser le contexte utilisateur précédent lors d'exécutions ultérieures.

A savoir : Après avoir appris à intégrer la mémoire de l'agent à WayFlow, l'intégration de la mémoire de l'agent à LangGraph peut également vous intéresser.

Code complet

#Copyright © 2026 Oracle and/or its affiliates.
#isort:skip_file
#fmt: off
#Agent Memory Code Example - Integration with WayFlow
#-----------------------------------------------------

#How to use:
#Create a new Python virtual environment and install the latest oracleagentmemory version.

#You can now run the script
#1. As a Python file:
#```bash
#python integration_with_wayflow.py
#```
#2. As a Notebook (in VSCode):
#When viewing the file,
#- press the keys Ctrl + Enter to run the selected cell
#- or Shift + Enter to run the selected cell and move to the cell below


##Configure Oracle Memory and WayFlow

#%%
from oracleagentmemory.core.embedders.embedder import Embedder
from oracleagentmemory.core.llms.llm import Llm
from oracleagentmemory.core.oracleagentmemory import OracleAgentMemory
from wayflowcore.agent import Agent
from wayflowcore.models import OpenAIModel
from wayflowcore.tools import tool

embedder = Embedder(
    model="YOUR_EMBEDDING_MODEL",
    api_base="YOUR_EMBEDDING_API_BASE",
    api_key="YOUR_EMBEDDING_API_KEY",
)
llm = Llm(
    model="gpt-4.1-mini",
    api_key="YOUR_OPENAI_API_KEY",
)
db_pool = ...  #an oracledb connection or connection pool
wayflow_llm = OpenAIModel(
    model_id="gpt-4.1-mini",
    api_key="YOUR_OPENAI_API_KEY",
)

#Keep these identifiers stable for the same assistant and end user so memory
#is scoped consistently across threads and sessions.
agent_id = "support_agent"
user_id = "user_123"
memory = OracleAgentMemory(
    connection=db_pool,
    embedder=embedder,
    llm=llm,
)
memory_thread = memory.create_thread(
    thread_id="wayflow_memory_demo",
    user_id=user_id,
    agent_id=agent_id,
)

from typing import Annotated


@tool
def search_memory(
    query: Annotated[str, "Question to search in Oracle Agent Memory"],
) -> Annotated[str, "Top matching memory content"]:
    """Search Oracle Agent Memory for durable user facts relevant to the current request."""
    results = memory.search(
        query=query,
        user_id=user_id,
        agent_id=agent_id,
        max_results=1,
        record_types=["memory"],
    )
    if not results:
        return "No relevant memory found."
    return results[0].content

assistant = Agent(
    llm=wayflow_llm,
    agent_id=agent_id,
    custom_instruction=(
        "You are a support agent. When the user asks about durable facts from "
        "prior sessions, call the search_memory tool before answering."
    ),
    tools=[search_memory],
)


##Persist user context after a session

#%%
session_1 = assistant.start_conversation()
user_message = (
    "I am John, a Python developer and I need help debugging a payment service."
)
session_1.append_user_message(user_message)
session_1.execute()
assistant_reply = session_1.get_last_message().content

print(assistant_reply)
#I can help with that. What error are you seeing?

memory_thread.add_messages(
    [
        {"role": "user", "content": user_message},
        {"role": "assistant", "content": assistant_reply},
    ]
)
memory_thread.add_memory("The user is John, a Python developer.")


##Reuse memory in a new WayFlow session

#%%
memory_thread = memory.get_thread("wayflow_memory_demo")
assistant = Agent(
    llm=wayflow_llm,
    agent_id=agent_id,
    custom_instruction=(
        "You are a support agent. When the user asks about durable facts from "
        "prior sessions, call the search_memory tool before answering."
    ),
    tools=[search_memory],
)

session_2 = assistant.start_conversation()
session_2.append_user_message("Who am I?")
session_2.execute()
remembered_reply = session_2.get_last_message().content

print(remembered_reply)
#The user is John, a Python developer.


##Advanced use event listeners

#%%
from wayflowcore.events.event import ConversationMessageAddedEvent
from wayflowcore.events.eventlistener import GenericEventListener, register_event_listeners

pending_messages: list[dict[str, str]] = []


def _buffer_thread_message(event: ConversationMessageAddedEvent) -> None:
    if event.streamed:
        return
    pending_messages.append(
        {
            "role": event.message.role,
            "content": event.message.content,
        }
    )


message_listener = GenericEventListener(
    [ConversationMessageAddedEvent],
    _buffer_thread_message,
)

with register_event_listeners([message_listener]):
    session_3 = assistant.start_conversation()
    session_3.append_user_message("Please remember that I prefer concise code reviews.")
    session_3.execute()

if pending_messages:
    memory_thread.add_messages(pending_messages)


##Disable automatic memory extraction

#%%
manual_memory = OracleAgentMemory(
    connection=db_pool,
    embedder=embedder,
    extract_memories=False,
)
manual_memory_thread = manual_memory.create_thread(
    thread_id="wayflow_manual_memory_demo",
    user_id=user_id,
    agent_id=agent_id,
)
manual_memory_thread.add_messages(
    [
        {
            "role": "user",
            "content": "Please remember that I prefer concise code reviews.",
        },
        {
            "role": "assistant",
            "content": "Understood. I will keep responses concise.",
        },
    ]
)
manual_memory_thread.add_memory("The user prefers concise code reviews.")