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feat: add Mem0 memory integration with config, implementation, docs, tests, and dependency
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@ -32,12 +32,23 @@ memory:
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model: text-embedding-3-small
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```
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### Mem0 Memory Config
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```yaml
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memory:
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- name: agent_memory
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type: mem0
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config:
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api_key: ${MEM0_API_KEY}
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agent_id: my-agent
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```
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## 3. Built-in Store Comparison
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| Type | Path | Highlights | Best for |
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| --- | --- | --- | --- |
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| `simple` | `node/agent/memory/simple_memory.py` | Optional disk persistence (JSON) after runs; FAISS + semantic rerank; read/write capable. | Small conversation history, prototypes. |
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| `file` | `node/agent/memory/file_memory.py` | Chunks files/dirs into a vector index, read-only, auto rebuilds when files change. | Knowledge bases, doc QA. |
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| `blackboard` | `node/agent/memory/blackboard_memory.py` | Lightweight append-only log trimmed by time/count; no vector search. | Broadcast boards, pipeline debugging. |
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| `mem0` | `node/agent/memory/mem0_memory.py` | Cloud-managed by Mem0; semantic search + graph relationships; no local embeddings or persistence needed. Requires `mem0ai` package. | Production memory, cross-session persistence, multi-agent memory sharing. |
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All stores register through `register_memory_store()` so summaries show up in UI via `MemoryStoreConfig.field_specs()`.
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@ -98,6 +109,14 @@ This schema lets multimodal outputs flow into Memory/Thinking modules without ex
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- **Retrieval** – Returns the latest `top_k` entries ordered by time.
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- **Write** – `update()` appends the latest snapshot (input/output blocks, attachments, previews). No embeddings are generated, so retrieval is purely recency-based.
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### 5.4 Mem0Memory
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- **Config** – Requires `api_key` (from [app.mem0.ai](https://app.mem0.ai)). Optional `user_id`, `agent_id`, `org_id`, `project_id` for scoping.
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- **Important**: `user_id` and `agent_id` are mutually exclusive in Mem0 API calls. If both are configured, two separate searches are made and results merged. For writes, `agent_id` takes precedence. Agent-generated content is stored with `role: "assistant"`.
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- **Retrieval** – Uses Mem0's server-side semantic search. Supports `top_k` and `similarity_threshold` via `MemoryAttachmentConfig`.
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- **Write** – `update()` sends conversation messages to Mem0 via the SDK. Agent outputs use `role: "assistant"`, user inputs use `role: "user"`.
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- **Persistence** – Fully cloud-managed. `load()` and `save()` are no-ops. Memories persist across runs and sessions automatically.
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- **Dependencies** – Requires `mem0ai` package (`pip install mem0ai`).
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## 6. EmbeddingConfig Notes
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- Fields: `provider`, `model`, `api_key`, `base_url`, `params`.
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- `provider=openai` uses the official client; override `base_url` for compatibility layers.
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@ -10,6 +10,7 @@ from .node.memory import (
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EmbeddingConfig,
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FileMemoryConfig,
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FileSourceConfig,
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Mem0MemoryConfig,
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MemoryAttachmentConfig,
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MemoryStoreConfig,
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SimpleMemoryConfig,
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@ -43,6 +44,7 @@ __all__ = [
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"FunctionToolConfig",
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"GraphDefinition",
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"HumanConfig",
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"Mem0MemoryConfig",
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"MemoryAttachmentConfig",
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"MemoryStoreConfig",
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"McpLocalConfig",
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@ -279,6 +279,75 @@ class BlackboardMemoryConfig(BaseConfig):
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}
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@dataclass
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class Mem0MemoryConfig(BaseConfig):
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"""Configuration for Mem0 managed memory service."""
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api_key: str = ""
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org_id: str | None = None
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project_id: str | None = None
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user_id: str | None = None
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agent_id: str | None = None
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@classmethod
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def from_dict(cls, data: Mapping[str, Any], *, path: str) -> "Mem0MemoryConfig":
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mapping = require_mapping(data, path)
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api_key = require_str(mapping, "api_key", path)
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org_id = optional_str(mapping, "org_id", path)
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project_id = optional_str(mapping, "project_id", path)
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user_id = optional_str(mapping, "user_id", path)
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agent_id = optional_str(mapping, "agent_id", path)
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return cls(
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api_key=api_key,
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org_id=org_id,
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project_id=project_id,
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user_id=user_id,
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agent_id=agent_id,
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path=path,
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)
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FIELD_SPECS = {
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"api_key": ConfigFieldSpec(
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name="api_key",
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display_name="Mem0 API Key",
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type_hint="str",
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required=True,
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description="Mem0 API key (get one from app.mem0.ai)",
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default="${MEM0_API_KEY}",
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),
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"org_id": ConfigFieldSpec(
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name="org_id",
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display_name="Organization ID",
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type_hint="str",
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required=False,
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description="Mem0 organization ID for scoping",
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advance=True,
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),
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"project_id": ConfigFieldSpec(
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name="project_id",
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display_name="Project ID",
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type_hint="str",
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required=False,
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description="Mem0 project ID for scoping",
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advance=True,
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),
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"user_id": ConfigFieldSpec(
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name="user_id",
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display_name="User ID",
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type_hint="str",
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required=False,
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description="User ID for user-scoped memories. Mutually exclusive with agent_id in API calls.",
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),
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"agent_id": ConfigFieldSpec(
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name="agent_id",
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display_name="Agent ID",
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type_hint="str",
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required=False,
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description="Agent ID for agent-scoped memories. Mutually exclusive with user_id in API calls.",
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),
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}
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@dataclass
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class MemoryStoreConfig(BaseConfig):
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name: str
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@ -39,6 +39,7 @@ dependencies = [
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"filelock>=3.20.1",
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"markdown>=3.10",
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"xhtml2pdf>=0.2.17",
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"mem0ai>=1.0.9",
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]
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[build-system]
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@ -3,6 +3,7 @@
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from entity.configs.node.memory import (
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BlackboardMemoryConfig,
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FileMemoryConfig,
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Mem0MemoryConfig,
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SimpleMemoryConfig,
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MemoryStoreConfig,
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)
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@ -34,6 +35,19 @@ register_memory_store(
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)
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def _create_mem0_memory(store):
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from runtime.node.agent.memory.mem0_memory import Mem0Memory
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return Mem0Memory(store)
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register_memory_store(
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"mem0",
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config_cls=Mem0MemoryConfig,
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factory=_create_mem0_memory,
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summary="Mem0 managed memory with semantic search and graph relationships",
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)
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class MemoryFactory:
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@staticmethod
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def create_memory(store: MemoryStoreConfig) -> MemoryBase:
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203
runtime/node/agent/memory/mem0_memory.py
Normal file
203
runtime/node/agent/memory/mem0_memory.py
Normal file
@ -0,0 +1,203 @@
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"""Mem0 managed memory store implementation."""
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import logging
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import time
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import uuid
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from typing import Any, Dict, List
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from entity.configs import MemoryStoreConfig
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from entity.configs.node.memory import Mem0MemoryConfig
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from runtime.node.agent.memory.memory_base import (
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MemoryBase,
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MemoryContentSnapshot,
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MemoryItem,
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MemoryWritePayload,
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)
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logger = logging.getLogger(__name__)
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def _get_mem0_client(config: Mem0MemoryConfig):
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"""Lazy-import mem0ai and create a MemoryClient."""
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try:
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from mem0 import MemoryClient
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except ImportError:
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raise ImportError(
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"mem0ai is required for Mem0Memory. Install it with: pip install mem0ai"
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)
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client_kwargs: Dict[str, Any] = {}
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if config.api_key:
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client_kwargs["api_key"] = config.api_key
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if config.org_id:
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client_kwargs["org_id"] = config.org_id
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if config.project_id:
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client_kwargs["project_id"] = config.project_id
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return MemoryClient(**client_kwargs)
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class Mem0Memory(MemoryBase):
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"""Memory store backed by Mem0's managed cloud service.
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Mem0 handles embeddings, storage, and semantic search server-side.
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No local persistence or embedding computation is needed.
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Important API constraints:
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- Agent memories use role="assistant" + agent_id
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- user_id and agent_id are stored as separate records in Mem0;
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if both are configured, an OR filter is used to search across both scopes.
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- search() uses filters dict; add() uses top-level kwargs.
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- SDK returns {"memories": [...]} from search.
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"""
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def __init__(self, store: MemoryStoreConfig):
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config = store.as_config(Mem0MemoryConfig)
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if not config:
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raise ValueError("Mem0Memory requires a Mem0 memory store configuration")
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super().__init__(store)
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self.config = config
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self.client = _get_mem0_client(config)
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self.user_id = config.user_id
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self.agent_id = config.agent_id
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# -------- Persistence (no-ops for cloud-managed store) --------
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def load(self) -> None:
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"""No-op: Mem0 manages persistence server-side."""
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pass
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def save(self) -> None:
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"""No-op: Mem0 manages persistence server-side."""
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pass
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# -------- Retrieval --------
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def _build_search_filters(self, agent_role: str) -> Dict[str, Any]:
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"""Build the filters dict for Mem0 search.
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Mem0 search requires a filters dict for entity scoping.
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user_id and agent_id are stored as separate records, so
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when both are configured we use an OR filter to match either.
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"""
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if self.user_id and self.agent_id:
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return {
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"OR": [
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{"user_id": self.user_id},
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{"agent_id": self.agent_id},
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]
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}
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elif self.user_id:
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return {"user_id": self.user_id}
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elif self.agent_id:
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return {"agent_id": self.agent_id}
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else:
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# Fallback: use agent_role as agent_id
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return {"agent_id": agent_role}
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def retrieve(
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self,
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agent_role: str,
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query: MemoryContentSnapshot,
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top_k: int,
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similarity_threshold: float,
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) -> List[MemoryItem]:
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"""Search Mem0 for relevant memories.
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Uses the filters dict to scope by user_id, agent_id, or both
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(via OR filter). The SDK returns {"memories": [...]}.
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"""
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if not query.text.strip():
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return []
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try:
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filters = self._build_search_filters(agent_role)
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search_kwargs: Dict[str, Any] = {
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"query": query.text,
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"top_k": top_k,
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"filters": filters,
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}
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if similarity_threshold >= 0:
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search_kwargs["threshold"] = similarity_threshold
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response = self.client.search(**search_kwargs)
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# SDK returns {"memories": [...]} — extract the list
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if isinstance(response, dict):
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raw_results = response.get("memories", response.get("results", []))
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else:
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raw_results = response
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except Exception as e:
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logger.error("Mem0 search failed: %s", e)
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return []
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items: List[MemoryItem] = []
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for entry in raw_results:
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item = MemoryItem(
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id=entry.get("id", f"mem0_{uuid.uuid4().hex}"),
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content_summary=entry.get("memory", ""),
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metadata={
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"agent_role": agent_role,
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"score": entry.get("score"),
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"categories": entry.get("categories", []),
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"source": "mem0",
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},
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timestamp=time.time(),
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)
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items.append(item)
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return items
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# -------- Update --------
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def update(self, payload: MemoryWritePayload) -> None:
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"""Store a memory in Mem0.
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Uses role="assistant" + agent_id for agent-generated memories,
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and role="user" + user_id for user-scoped memories.
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"""
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snapshot = payload.output_snapshot or payload.input_snapshot
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if not snapshot or not snapshot.text.strip():
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return
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messages = self._build_messages(payload)
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if not messages:
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return
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add_kwargs: Dict[str, Any] = {"messages": messages}
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# Determine scoping: agent_id takes precedence for agent-generated content
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if self.agent_id:
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add_kwargs["agent_id"] = self.agent_id
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elif self.user_id:
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add_kwargs["user_id"] = self.user_id
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else:
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# Default: use agent_role as agent_id
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add_kwargs["agent_id"] = payload.agent_role
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try:
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self.client.add(**add_kwargs)
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except Exception as e:
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logger.error("Mem0 add failed: %s", e)
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def _build_messages(self, payload: MemoryWritePayload) -> List[Dict[str, str]]:
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"""Build Mem0-compatible message list from write payload.
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Agent-generated content uses role="assistant".
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User input uses role="user".
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"""
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messages: List[Dict[str, str]] = []
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if payload.inputs_text and payload.inputs_text.strip():
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messages.append({
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"role": "user",
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"content": payload.inputs_text.strip(),
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})
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if payload.output_snapshot and payload.output_snapshot.text.strip():
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messages.append({
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"role": "assistant",
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"content": payload.output_snapshot.text.strip(),
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})
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return messages
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384
tests/test_mem0_memory.py
Normal file
384
tests/test_mem0_memory.py
Normal file
@ -0,0 +1,384 @@
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"""Tests for Mem0 memory store implementation."""
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from unittest.mock import MagicMock, patch
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import pytest
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from entity.configs.node.memory import Mem0MemoryConfig
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from runtime.node.agent.memory.memory_base import (
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MemoryContentSnapshot,
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MemoryItem,
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MemoryWritePayload,
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)
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def _make_store(user_id=None, agent_id=None, api_key="test-key"):
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"""Build a minimal MemoryStoreConfig mock for Mem0Memory."""
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mem0_cfg = MagicMock(spec=Mem0MemoryConfig)
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mem0_cfg.api_key = api_key
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mem0_cfg.org_id = None
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mem0_cfg.project_id = None
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mem0_cfg.user_id = user_id
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mem0_cfg.agent_id = agent_id
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store = MagicMock()
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store.name = "test_mem0"
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# Return correct config type based on the requested class
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def _as_config_side_effect(expected_type, **kwargs):
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if expected_type is Mem0MemoryConfig:
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return mem0_cfg
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return None
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store.as_config.side_effect = _as_config_side_effect
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return store
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def _make_mem0_memory(user_id=None, agent_id=None):
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"""Create a Mem0Memory with a mocked client."""
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with patch("runtime.node.agent.memory.mem0_memory._get_mem0_client") as mock_get:
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mock_client = MagicMock()
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mock_get.return_value = mock_client
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from runtime.node.agent.memory.mem0_memory import Mem0Memory
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store = _make_store(user_id=user_id, agent_id=agent_id)
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memory = Mem0Memory(store)
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return memory, mock_client
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class TestMem0MemoryRetrieve:
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def test_retrieve_with_agent_id(self):
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"""Retrieve passes agent_id in filters dict to SDK search."""
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memory, client = _make_mem0_memory(agent_id="agent-1")
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client.search.return_value = {
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"memories": [
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{"id": "m1", "memory": "test fact", "score": 0.95},
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]
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}
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query = MemoryContentSnapshot(text="what do you know?")
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results = memory.retrieve("writer", query, top_k=5, similarity_threshold=-1.0)
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client.search.assert_called_once()
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call_kwargs = client.search.call_args[1]
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assert call_kwargs["filters"] == {"agent_id": "agent-1"}
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assert len(results) == 1
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assert results[0].content_summary == "test fact"
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assert results[0].metadata["source"] == "mem0"
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def test_retrieve_with_user_id(self):
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"""Retrieve passes user_id in filters dict to SDK search."""
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memory, client = _make_mem0_memory(user_id="user-1")
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client.search.return_value = {
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"memories": [
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{"id": "m1", "memory": "user pref", "score": 0.9},
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]
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}
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query = MemoryContentSnapshot(text="preferences")
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results = memory.retrieve("assistant", query, top_k=3, similarity_threshold=-1.0)
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call_kwargs = client.search.call_args[1]
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assert call_kwargs["filters"] == {"user_id": "user-1"}
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assert len(results) == 1
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def test_retrieve_with_both_ids_uses_or_filter(self):
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"""When both user_id and agent_id are set, an OR filter is used."""
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memory, client = _make_mem0_memory(user_id="user-1", agent_id="agent-1")
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client.search.return_value = {
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"memories": [
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{"id": "u1", "memory": "user fact", "score": 0.8},
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{"id": "a1", "memory": "agent fact", "score": 0.9},
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]
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}
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query = MemoryContentSnapshot(text="test")
|
||||
results = memory.retrieve("writer", query, top_k=5, similarity_threshold=-1.0)
|
||||
|
||||
client.search.assert_called_once()
|
||||
call_kwargs = client.search.call_args[1]
|
||||
assert call_kwargs["filters"] == {
|
||||
"OR": [
|
||||
{"user_id": "user-1"},
|
||||
{"agent_id": "agent-1"},
|
||||
]
|
||||
}
|
||||
assert len(results) == 2
|
||||
|
||||
def test_retrieve_fallback_uses_agent_role(self):
|
||||
"""When no IDs configured, fall back to agent_role as agent_id in filters."""
|
||||
memory, client = _make_mem0_memory()
|
||||
client.search.return_value = {"memories": []}
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
memory.retrieve("coder", query, top_k=3, similarity_threshold=-1.0)
|
||||
|
||||
call_kwargs = client.search.call_args[1]
|
||||
assert call_kwargs["filters"] == {"agent_id": "coder"}
|
||||
|
||||
def test_retrieve_empty_query_returns_empty(self):
|
||||
"""Empty query text returns empty without calling API."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
|
||||
query = MemoryContentSnapshot(text=" ")
|
||||
results = memory.retrieve("writer", query, top_k=3, similarity_threshold=-1.0)
|
||||
|
||||
assert results == []
|
||||
client.search.assert_not_called()
|
||||
|
||||
def test_retrieve_api_error_returns_empty(self):
|
||||
"""API errors are caught and return empty list."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.search.side_effect = Exception("API down")
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
results = memory.retrieve("writer", query, top_k=3, similarity_threshold=-1.0)
|
||||
|
||||
assert results == []
|
||||
|
||||
def test_retrieve_respects_top_k(self):
|
||||
"""top_k is passed to Mem0 search."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.search.return_value = {"memories": []}
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
memory.retrieve("writer", query, top_k=7, similarity_threshold=-1.0)
|
||||
|
||||
call_kwargs = client.search.call_args[1]
|
||||
assert call_kwargs["top_k"] == 7
|
||||
|
||||
def test_retrieve_passes_threshold_when_non_negative(self):
|
||||
"""Non-negative similarity_threshold is forwarded to Mem0."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.search.return_value = {"memories": []}
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
memory.retrieve("writer", query, top_k=3, similarity_threshold=0.5)
|
||||
|
||||
call_kwargs = client.search.call_args[1]
|
||||
assert call_kwargs["threshold"] == 0.5
|
||||
|
||||
def test_retrieve_passes_zero_threshold(self):
|
||||
"""A threshold of 0.0 is a valid value and should be sent."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.search.return_value = {"memories": []}
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
memory.retrieve("writer", query, top_k=3, similarity_threshold=0.0)
|
||||
|
||||
call_kwargs = client.search.call_args[1]
|
||||
assert call_kwargs["threshold"] == 0.0
|
||||
|
||||
def test_retrieve_skips_threshold_when_negative(self):
|
||||
"""Negative similarity_threshold is not sent to Mem0."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.search.return_value = {"memories": []}
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
memory.retrieve("writer", query, top_k=3, similarity_threshold=-1.0)
|
||||
|
||||
call_kwargs = client.search.call_args[1]
|
||||
assert "threshold" not in call_kwargs
|
||||
|
||||
def test_retrieve_handles_legacy_results_key(self):
|
||||
"""Handles SDK response with 'results' key (older SDK versions)."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.search.return_value = {
|
||||
"results": [
|
||||
{"id": "m1", "memory": "legacy format", "score": 0.8},
|
||||
]
|
||||
}
|
||||
|
||||
query = MemoryContentSnapshot(text="test")
|
||||
results = memory.retrieve("writer", query, top_k=3, similarity_threshold=-1.0)
|
||||
|
||||
assert len(results) == 1
|
||||
assert results[0].content_summary == "legacy format"
|
||||
|
||||
|
||||
class TestMem0MemoryUpdate:
|
||||
|
||||
def test_update_with_agent_id_uses_assistant_role(self):
|
||||
"""Agent-scoped update sends role=assistant messages with agent_id."""
|
||||
memory, client = _make_mem0_memory(agent_id="agent-1")
|
||||
client.add.return_value = [{"id": "new", "event": "ADD"}]
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="writer",
|
||||
inputs_text="Write about AI",
|
||||
input_snapshot=MemoryContentSnapshot(text="Write about AI"),
|
||||
output_snapshot=MemoryContentSnapshot(text="AI is transformative..."),
|
||||
)
|
||||
memory.update(payload)
|
||||
|
||||
client.add.assert_called_once()
|
||||
call_kwargs = client.add.call_args[1]
|
||||
assert call_kwargs["agent_id"] == "agent-1"
|
||||
assert "user_id" not in call_kwargs
|
||||
messages = call_kwargs["messages"]
|
||||
assert messages[0]["role"] == "user"
|
||||
assert messages[1]["role"] == "assistant"
|
||||
|
||||
def test_update_with_user_id(self):
|
||||
"""User-scoped update uses user_id, not agent_id."""
|
||||
memory, client = _make_mem0_memory(user_id="user-1")
|
||||
client.add.return_value = []
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="writer",
|
||||
inputs_text="I prefer Python",
|
||||
input_snapshot=None,
|
||||
output_snapshot=MemoryContentSnapshot(text="Noted your preference"),
|
||||
)
|
||||
memory.update(payload)
|
||||
|
||||
call_kwargs = client.add.call_args[1]
|
||||
assert call_kwargs["user_id"] == "user-1"
|
||||
assert "agent_id" not in call_kwargs
|
||||
|
||||
def test_update_fallback_uses_agent_role(self):
|
||||
"""When no IDs configured, uses agent_role as agent_id."""
|
||||
memory, client = _make_mem0_memory()
|
||||
client.add.return_value = []
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="coder",
|
||||
inputs_text="test input",
|
||||
input_snapshot=None,
|
||||
output_snapshot=MemoryContentSnapshot(text="test output"),
|
||||
)
|
||||
memory.update(payload)
|
||||
|
||||
call_kwargs = client.add.call_args[1]
|
||||
assert call_kwargs["agent_id"] == "coder"
|
||||
|
||||
def test_update_with_both_ids_prefers_agent_id(self):
|
||||
"""When both user_id and agent_id configured, agent_id takes precedence for writes."""
|
||||
memory, client = _make_mem0_memory(user_id="user-1", agent_id="agent-1")
|
||||
client.add.return_value = []
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="writer",
|
||||
inputs_text="input",
|
||||
input_snapshot=None,
|
||||
output_snapshot=MemoryContentSnapshot(text="output"),
|
||||
)
|
||||
memory.update(payload)
|
||||
|
||||
call_kwargs = client.add.call_args[1]
|
||||
assert call_kwargs["agent_id"] == "agent-1"
|
||||
assert "user_id" not in call_kwargs
|
||||
|
||||
def test_update_empty_output_is_noop(self):
|
||||
"""Empty output snapshot skips API call."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="writer",
|
||||
inputs_text="",
|
||||
input_snapshot=None,
|
||||
output_snapshot=MemoryContentSnapshot(text=" "),
|
||||
)
|
||||
memory.update(payload)
|
||||
|
||||
client.add.assert_not_called()
|
||||
|
||||
def test_update_no_snapshot_is_noop(self):
|
||||
"""No snapshot at all skips API call."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="writer",
|
||||
inputs_text="test",
|
||||
input_snapshot=None,
|
||||
output_snapshot=None,
|
||||
)
|
||||
memory.update(payload)
|
||||
|
||||
client.add.assert_not_called()
|
||||
|
||||
def test_update_api_error_does_not_raise(self):
|
||||
"""API errors are logged but do not propagate."""
|
||||
memory, client = _make_mem0_memory(agent_id="a1")
|
||||
client.add.side_effect = Exception("API error")
|
||||
|
||||
payload = MemoryWritePayload(
|
||||
agent_role="writer",
|
||||
inputs_text="test",
|
||||
input_snapshot=None,
|
||||
output_snapshot=MemoryContentSnapshot(text="output"),
|
||||
)
|
||||
# Should not raise
|
||||
memory.update(payload)
|
||||
|
||||
|
||||
class TestMem0MemoryLoadSave:
|
||||
|
||||
def test_load_is_noop(self):
|
||||
"""load() does nothing for cloud-managed store."""
|
||||
memory, _ = _make_mem0_memory(agent_id="a1")
|
||||
memory.load() # Should not raise
|
||||
|
||||
def test_save_is_noop(self):
|
||||
"""save() does nothing for cloud-managed store."""
|
||||
memory, _ = _make_mem0_memory(agent_id="a1")
|
||||
memory.save() # Should not raise
|
||||
|
||||
|
||||
class TestMem0MemoryConfig:
|
||||
|
||||
def test_config_from_dict(self):
|
||||
"""Config parses from dict correctly."""
|
||||
data = {
|
||||
"api_key": "test-key",
|
||||
"user_id": "u1",
|
||||
"org_id": "org-1",
|
||||
}
|
||||
config = Mem0MemoryConfig.from_dict(data, path="test")
|
||||
assert config.api_key == "test-key"
|
||||
assert config.user_id == "u1"
|
||||
assert config.org_id == "org-1"
|
||||
assert config.agent_id is None
|
||||
assert config.project_id is None
|
||||
|
||||
def test_config_field_specs_exist(self):
|
||||
"""FIELD_SPECS are defined for UI generation."""
|
||||
specs = Mem0MemoryConfig.field_specs()
|
||||
assert "api_key" in specs
|
||||
assert "user_id" in specs
|
||||
assert "agent_id" in specs
|
||||
assert specs["api_key"].required is True
|
||||
|
||||
def test_config_requires_api_key(self):
|
||||
"""Config raises ConfigError when api_key is missing."""
|
||||
from entity.configs.base import ConfigError
|
||||
|
||||
data = {"agent_id": "a1"}
|
||||
with pytest.raises(ConfigError):
|
||||
Mem0MemoryConfig.from_dict(data, path="test")
|
||||
|
||||
|
||||
class TestMem0MemoryConstructor:
|
||||
|
||||
def test_raises_on_wrong_config_type(self):
|
||||
"""Mem0Memory raises ValueError when store has wrong config type."""
|
||||
from runtime.node.agent.memory.mem0_memory import Mem0Memory
|
||||
|
||||
store = MagicMock()
|
||||
store.name = "bad_store"
|
||||
store.as_config.return_value = None # Wrong config type
|
||||
|
||||
with pytest.raises(ValueError, match="Mem0 memory store configuration"):
|
||||
Mem0Memory(store)
|
||||
|
||||
def test_import_error_when_mem0ai_missing(self):
|
||||
"""Helpful ImportError when mem0ai is not installed."""
|
||||
from runtime.node.agent.memory.mem0_memory import _get_mem0_client
|
||||
|
||||
mem0_cfg = MagicMock(spec=Mem0MemoryConfig)
|
||||
mem0_cfg.api_key = "test"
|
||||
mem0_cfg.org_id = None
|
||||
mem0_cfg.project_id = None
|
||||
|
||||
with patch.dict("sys.modules", {"mem0": None}):
|
||||
with pytest.raises(ImportError, match="pip install mem0ai"):
|
||||
_get_mem0_client(mem0_cfg)
|
||||
47
yaml_instance/demo_mem0_memory.yaml
Normal file
47
yaml_instance/demo_mem0_memory.yaml
Normal file
@ -0,0 +1,47 @@
|
||||
version: 0.4.0
|
||||
vars: {}
|
||||
graph:
|
||||
id: ''
|
||||
description: Memory-backed conversation using Mem0 managed memory service.
|
||||
is_majority_voting: false
|
||||
nodes:
|
||||
- id: writer
|
||||
type: agent
|
||||
config:
|
||||
base_url: ${BASE_URL}
|
||||
api_key: ${API_KEY}
|
||||
provider: openai
|
||||
name: gpt-4o
|
||||
role: |
|
||||
You are a knowledgeable writer. Use your memories to build on past interactions.
|
||||
If memory sections are provided (wrapped by ===== Related Memories =====),
|
||||
incorporate relevant context from those memories into your response.
|
||||
params:
|
||||
temperature: 0.7
|
||||
max_tokens: 2000
|
||||
memories:
|
||||
- name: mem0_store
|
||||
top_k: 5
|
||||
retrieve_stage:
|
||||
- gen
|
||||
read: true
|
||||
write: true
|
||||
edges: []
|
||||
memory:
|
||||
# Agent-scoped memory: uses agent_id for storing and retrieving
|
||||
- name: mem0_store
|
||||
type: mem0
|
||||
config:
|
||||
api_key: ${MEM0_API_KEY}
|
||||
agent_id: writer-agent
|
||||
|
||||
# Alternative: User-scoped memory (uncomment to use instead)
|
||||
# - name: mem0_store
|
||||
# type: mem0
|
||||
# config:
|
||||
# api_key: ${MEM0_API_KEY}
|
||||
# user_id: project-user-123
|
||||
start:
|
||||
- writer
|
||||
end: []
|
||||
initial_instruction: ''
|
||||
Loading…
x
Reference in New Issue
Block a user