Skip to main content

Python SDK for Awareness Memory Cloud

Project description

Awareness Memory SDK — Python

PyPI Discord

Python SDK for adding persistent memory to AI agents and apps.

Online docs: https://awareness.market/docs?doc=python

Install

pip install awareness-memory-cloud

Framework extras:

pip install -e ".[langchain]"   # LangChain adapter
pip install -e ".[crewai]"      # CrewAI adapter
pip install -e ".[autogen]"     # AutoGen adapter
pip install -e ".[frameworks]"  # All frameworks

Zero-Code Interceptor

The fastest way to add memory. One line — no changes to your AI logic.

Local mode (no API key needed)

from openai import OpenAI
from memory_cloud import MemoryCloudClient, AwarenessInterceptor

client = MemoryCloudClient(mode="local")  # data stays on your machine
interceptor = AwarenessInterceptor(client=client, memory_id="my-project")

openai_client = OpenAI()
interceptor.wrap_openai(openai_client)  # one line — all conversations remembered

response = openai_client.chat.completions.create(
    model="gpt-4",
    messages=[{"role": "user", "content": "Refactor the auth module"}],
)

Cloud mode (team collaboration, semantic search, sync)

from openai import OpenAI
from anthropic import Anthropic
from memory_cloud import MemoryCloudClient, AwarenessInterceptor

client = MemoryCloudClient(api_key="aw_...")
interceptor = AwarenessInterceptor(client=client, memory_id="memory_123")

# Wrap OpenAI
openai_client = OpenAI()
interceptor.wrap_openai(openai_client)

# Or wrap Anthropic
anthropic_client = Anthropic()
interceptor.wrap_anthropic(anthropic_client)

Direct API Quickstart

Local mode

from memory_cloud import MemoryCloudClient

client = MemoryCloudClient(mode="local")  # connects to local daemon at localhost:8765

client.record(content="Refactored auth middleware.")
result = client.retrieve(query="What did we refactor?")
print(result["results"])

Cloud mode

import os
from memory_cloud import MemoryCloudClient

client = MemoryCloudClient(
    base_url=os.getenv("AWARENESS_API_BASE_URL", "https://awareness.market/api/v1"),
    api_key="YOUR_API_KEY",
)

client.write(
    memory_id="memory_123",
    content="Customer asked for SOC2 evidence and retention policy.",
    kwargs={"source": "python-sdk", "session_id": "demo-session"},
)

result = client.retrieve(
    memory_id="memory_123",
    query="What did customer ask for?",
    custom_kwargs={"k": 3},
)
print(result["results"])

MCP-style Helpers

Local mode

client = MemoryCloudClient(mode="local")
client.record(content="Refactored auth middleware.")
ctx = client.recall_for_task(task="summarize auth changes", limit=8)
print(ctx["results"])

Cloud mode

client = MemoryCloudClient(
    base_url="https://awareness.market/api/v1",
    api_key="YOUR_API_KEY",
)

# Record a single step
client.record(memory_id="memory_123", content="Refactored auth middleware and added tests.")

# Record multiple steps at once
client.record(
    memory_id="memory_123",
    content=[
        "Completed migration patch for user aliases.",
        "Risk: API key owner mismatch can cause tenant leakage.",
    ],
)

# Record knowledge-scoped content
client.record(memory_id="memory_123", content="JWT decision doc", scope="knowledge")

ctx = client.recall_for_task(memory_id="memory_123", task="summarize latest auth changes", limit=8)
print(ctx["results"])

Framework Integrations

LangChain

from memory_cloud import MemoryCloudClient
from memory_cloud.integrations.langchain import MemoryCloudLangChain
import openai

# Local mode (no API key needed)
client = MemoryCloudClient(mode="local")
mc = MemoryCloudLangChain(client=client)

# Cloud mode (team collaboration, semantic search, multi-device sync)
client = MemoryCloudClient(base_url="https://awareness.market/api/v1", api_key="YOUR_API_KEY")
mc = MemoryCloudLangChain(client=client, memory_id="memory_123")

mc.wrap_llm(openai.OpenAI())
retriever = mc.as_retriever()
docs = retriever._get_relevant_documents("What did we decide yesterday?")

CrewAI

from memory_cloud import MemoryCloudClient
from memory_cloud.integrations.crewai import MemoryCloudCrewAI
import openai

# Local mode (no API key needed)
client = MemoryCloudClient(mode="local")
mc = MemoryCloudCrewAI(client=client)

# Cloud mode (team collaboration, semantic search, multi-device sync)
client = MemoryCloudClient(base_url="https://awareness.market/api/v1", api_key="YOUR_API_KEY")
mc = MemoryCloudCrewAI(client=client, memory_id="memory_123")

mc.wrap_llm(openai.OpenAI())
result = mc.memory_search("What happened?")

PraisonAI

from memory_cloud import MemoryCloudClient
from memory_cloud.integrations.praisonai import MemoryCloudPraisonAI
import openai

# Local mode (no API key needed)
client = MemoryCloudClient(mode="local")
mc = MemoryCloudPraisonAI(client=client)

# Cloud mode (team collaboration, semantic search, multi-device sync)
client = MemoryCloudClient(base_url="https://awareness.market/api/v1", api_key="YOUR_API_KEY")
mc = MemoryCloudPraisonAI(client=client, memory_id="memory_123")

mc.wrap_llm(openai.OpenAI())
tools = mc.build_tools()

AutoGen / AG2

from memory_cloud import MemoryCloudClient
from memory_cloud.integrations.autogen import MemoryCloudAutoGen

# Local mode (no API key needed)
client = MemoryCloudClient(mode="local")
mc = MemoryCloudAutoGen(client=client)

# Cloud mode (team collaboration, semantic search, multi-device sync)
client = MemoryCloudClient(base_url="https://awareness.market/api/v1", api_key="YOUR_API_KEY")
mc = MemoryCloudAutoGen(client=client, memory_id="memory_123")

mc.inject_into_agent(assistant)
mc.register_tools(caller=assistant, executor=user_proxy)

Perception (Record-Time Signals)

When you call record(), the response may include a perception array -- automatic signals the system surfaces without you asking. These are computed from pure DB queries (no LLM calls), adding less than 50ms of latency.

Signal types:

Type Description
contradiction New content conflicts with an existing knowledge card
resonance Similar past experience found in memory
pattern Recurring theme detected (e.g., same category appearing often)
staleness A related knowledge card hasn't been updated in a long time
related_decision A past decision is relevant to what you just recorded
result = client.record(memory_id, content="Decided to use RS256 for JWT signing", insights={
    "knowledge_cards": [{"title": "JWT signing", "category": "decision", "summary": "Use RS256"}]
})
if result.get("perception"):
    for signal in result["perception"]:
        print(f"[{signal['type']}] {signal['message']}")
        # [pattern] This is the 4th 'decision' card -- recurring theme
        # [resonance] Similar past experience: "JWT auth migration"

API Coverage

MemoryCloudClient includes:

  • Memory: create_memory, list_memories, get_memory, update_memory, delete_memory
  • Content: write, list_memory_content, delete_memory_content
  • Retrieval/Chat: retrieve, chat, chat_stream, memory_timeline
  • MCP ingest: ingest_events, record
  • Export: export_memory_package, save_export_memory_package
  • Async jobs & upload: get_async_job_status, upload_file, get_upload_job_status
  • Insights/API keys/wizard: insights, create_api_key, list_api_keys, revoke_api_key, memory_wizard

Read Exported Packages

from memory_cloud import read_export_package

parsed = read_export_package("memory_export.zip")
print(parsed["manifest"])
print(len(parsed["chunks"]))
print(bool(parsed["safetensors"]))
print(parsed.get("kv_summary"))

Readers: read_export_package(path), read_export_package_bytes(bytes), parse_jsonl_bytes(bytes)


Examples

  • Basic flow: examples/basic_flow.py
  • Export + read package: examples/export_and_read.py
  • LangChain e2e (real cloud API): examples/e2e_langchain_cloud.py
  • CrewAI e2e (real cloud API): examples/e2e_crewai_cloud.py
  • PraisonAI e2e (real cloud API): examples/e2e_praisonai_cloud.py
  • AutoGen e2e (real cloud API): examples/e2e_autogen_cloud.py

End-to-End (Real Cloud API)

export AWARENESS_API_BASE_URL="https://awareness.market/api/v1"
export AWARENESS_API_KEY="aw_xxx"
export AWARENESS_OWNER_ID="your-owner-id"

python examples/e2e_langchain_cloud.py

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

awareness_memory_cloud-2.3.0.tar.gz (71.9 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

awareness_memory_cloud-2.3.0-py3-none-any.whl (58.2 kB view details)

Uploaded Python 3

File details

Details for the file awareness_memory_cloud-2.3.0.tar.gz.

File metadata

  • Download URL: awareness_memory_cloud-2.3.0.tar.gz
  • Upload date:
  • Size: 71.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.2

File hashes

Hashes for awareness_memory_cloud-2.3.0.tar.gz
Algorithm Hash digest
SHA256 f88f16ee64bd76f4d3846fa9862836db2dfce730f3b3c6ddb054e7eda9544812
MD5 02a9240a54465e7b27cff447d0ad135c
BLAKE2b-256 03e16008cf05fb6655d31641010f33fd7aab25d4e5dd9e8929f46d7416875592

See more details on using hashes here.

File details

Details for the file awareness_memory_cloud-2.3.0-py3-none-any.whl.

File metadata

File hashes

Hashes for awareness_memory_cloud-2.3.0-py3-none-any.whl
Algorithm Hash digest
SHA256 e33603efe30573caacef722aac41349f41520980451ecbc25ad56a4e573842e7
MD5 4106df487abb6f13ab4895a14215051e
BLAKE2b-256 fa8390fcc4dfb42272474c98aefe97dce5bc0a53f297f595d01b2a41b56917b9

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page