Pressure-Driven Memory (PDM) — persistent, resonance-based memory for AI apps.
Project description
PDM — Memory for AI Apps That Works Like Memory
Your LLM forgets everything between conversations. The standard fix — stuff a vector database into the context window — is expensive, slow, and retrieves what matches words, not what matters.
PDM stores meaning signatures instead of raw text. Memories that get used grow stronger. Memories that don't, fade. Retrieval works by resonance: the question itself surfaces what's relevant, instead of a keyword search digging for it.
- 🔑 Your API key. Works with your existing Anthropic/OpenAI account.
- 🗄️ Your storage. One local file. Your data never leaves your machine. Check the source — there's no phone-home in it.
- ⚡ Ten minutes.
pip install pdm-memory→ three lines → persistent memory.
Benchmarks vs standard RAG: [link] · Run yourself: python -m pdm_memory.bench
Table of Contents
🔒 Privacy Mode (Local SQLite)
Zero setup. No network calls. Your data stays in a single file on your machine.
Install
pip install pdm-memory
# With OpenAI support:
pip install "pdm-memory[openai]"
# With Anthropic support:
pip install "pdm-memory[anthropic]"
# Everything:
pip install "pdm-memory[all]"
Quick Start
from pdm_memory import Memory
# One line to start. The .db file is created automatically.
mem = Memory(store="./my_app_memory.db")
# Write: PDM assigns pressure and stores a signature.
mem.save("User prefers metric units and short answers", source="chat",
tags=["units", "formatting", "preferences"])
# Read: resonance retrieval — surfaces what's relevant, not just what matches.
hits = mem.recall("how should I format the answer?", k=5)
for h in hits:
print(h.text, h.pressure, h.last_reinforced)
# Reinforce a memory manually (recall() does this automatically).
mem.reinforce(hits[0].id)
# Inspect why a memory surfaced.
report = mem.explain(hits[0].id, query="how should I format the answer?")
print(report.render())
# Decay runs automatically on each recall(). Manual trigger:
counts = mem.decay()
print(f"Decayed: {counts['decayed']}, Deleted: {counts['deleted']}")
Privacy-First Mode
Store only SHA-256 hashes of memory text — the content never touches disk:
mem = Memory(store="./private.db", store_raw=False)
☁️ Ecosystem Mode (AZUS Cloud)
Connect to the AZUS Companion API to sync memories across devices and share them with the AI companion.
Connect to the Cloud
from pdm_memory import Memory
mem = Memory(
store="cloud",
token="eyJ...", # Your AZUS JWT access token
cloud_url="https://api.azus.ai",
)
# All save/recall operations go to the cloud.
mem.save("User's team is in Kyiv (UTC+3)", tags=["location", "team", "timezone"])
hits = mem.recall("what timezone are they in?")
Sync Local ↔ Cloud
# Start with a local store
local_mem = Memory(store="./local.db")
local_mem.save("Local preference", tags=["pref", "local", "test"])
# Push local memories to cloud
report = local_mem.sync(
direction="push",
token="eyJ...",
cloud_url="https://api.azus.ai",
)
print(report) # SyncReport(pushed=1, pulled=0, conflicts=0, errors=0)
# Pull cloud memories to local
report = local_mem.sync(direction="pull", token="eyJ...")
# Two-way sync (higher pressure wins on conflict)
report = local_mem.sync(direction="bidirectional", token="eyJ...")
JWT Token Handling
from pdm_memory.auth import JWTAuth
# Tokens are refreshed automatically when they expire
auth = JWTAuth(
token="eyJ...",
refresh_token="eyJ...",
refresh_url="https://api.azus.ai/api/v1/accounts/auth/refresh/",
)
🤖 LLM Adapters
The wrapper is the demo; the primitives are the product. Most developers start here.
OpenAI
from pdm_memory import Memory
from pdm_memory.integrations import wrap_openai
mem = Memory(store="./my_app.db")
client = wrap_openai(api_key="sk-...", memory=mem)
# Memory is handled completely invisibly:
# - Before the call: relevant memories are injected into the system prompt
# - After the call: user message + AI reply are saved to memory
reply = client.chat("What units should I use?")
print(reply)
Anthropic
from pdm_memory.integrations import wrap_anthropic
client = wrap_anthropic(api_key="sk-ant-...", memory=mem)
reply = client.chat("What units should I use?")
Manual Control
from pdm_memory.integrations import ContextWindowManager
# Control exactly what goes into context
manager = ContextWindowManager(max_tokens=1500, model="gpt-4o")
hits = mem.recall("user's formatting preferences", k=10)
trimmed = manager.fit(hits) # Drop lowest-pressure memories first
system_block = manager.format_for_prompt(trimmed)
print(system_block)
📥 Data Ingestion
Import Legacy Data
# From a list of dicts
mem.ingest(
data_source=[
{"text": "User hates Comic Sans", "importance": 85},
{"content": "Team deploys on Fridays — bad idea", "labels": "devops,process,risk"},
],
mapping={"text": "compressed_fact", "importance": "p_magnitude"},
)
# From a CSV file (auto-detects common column names)
mem.ingest("./old_chat_logs.csv")
# With progress tracking
def on_progress(processed, total):
print(f"{processed}/{total} records processed")
mem.ingest("./large_dataset.csv", on_progress=on_progress)
Auto-Generate Signatures with an LLM
import openai
client = openai.OpenAI(api_key="sk-...")
# LLM will compress raw text → compressed_fact + 3 tags + p_magnitude
mem.ingest(
data_source=["User complains about slow API responses every Monday morning"],
llm_client=client,
)
Batch Processing (Large Datasets)
# 10,000 records processed in batches of 50, with rate limiting
mem.ingest(
data_source="./10k_records.csv",
batch_size=50,
)
🛠️ Developer Tools
The explain Method
report = mem.explain(memory_id, query="how should I format this?")
print(report.render())
╔══════════════════════════════════════════════════════
║ PDM Memory Explain Report
╠══════════════════════════════════════════════════════
║ ID: abc12345-...
║ Fact: User prefers metric units and short answers
║ Tags: units, formatting, preferences
╠──────────────────────────────────────────────────────
║ Pressure Components:
║ p_magnitude: 80.00
║ V coefficient: 0.8333 (4 retrievals)
║ Decay factor: 0.0231 (1.0d since retrieved, T½=30d)
║ Intent weight: 1.0000
║ Quality: 0.80
║ ─────────────────────────────
║ P_effective: 55.28
╠──────────────────────────────────────────────────────
║ Resonance (TAS coupling):
║ coupling_score: 0.8750
║ tag_overlap: 1.0000
║ domain_match: 1.0000
╚══════════════════════════════════════════════════════
Benchmark Harness
# Run full benchmark (PDM vs keyword+recency baseline)
python -m pdm_memory.bench
# Quick smoke test (5 scenarios)
python -m pdm_memory.bench --quick
# Save results as JSON
python -m pdm_memory.bench --output results.json
CLI Tool
# List all memories
pdm-cli list-memories --store ./my_app.db
# Filter by pressure
pdm-cli list-memories --store ./my_app.db --min-pressure 60
# Explain a specific memory
pdm-cli explain abc12345 --store ./my_app.db --query "formatting"
# Trigger a decay pass (dry run first)
pdm-cli decay --store ./my_app.db --dry-run
pdm-cli decay --store ./my_app.db
# Show stats
pdm-cli stats --store ./my_app.db
# List drawers (categories)
pdm-cli drawers --store ./my_app.db
# Sync to cloud
pdm-cli sync --store ./my_app.db --token eyJ... --direction push
📖 API Reference
Memory(store, user, token, cloud_url, store_raw)
| Method | Description |
|---|---|
save(text, source, tags, p_magnitude, t_persistence, drawer, regime, deadline) |
Store a new memory |
recall(query, k, min_pressure, search_cost, drawer, reinforce) → List[MemoryHit] |
Retrieve top-k relevant memories |
reinforce(memory_id, coupling_score) |
Manually raise a memory's pressure |
decay(dry_run) → dict |
Trigger decay pass (runs automatically on recall) |
explain(memory_id, query) → ExplainReport |
Show why a memory has its current pressure |
sync(direction, token, cloud_url) → SyncReport |
Sync local ↔ cloud |
ingest(data_source, mapping, llm_client, batch_size) → dict |
Import legacy data |
list_drawers() → List[DrawerInfo] |
List memory categories |
count() → int |
Total memory count |
close() |
Release storage connections |
MemoryHit
| Field | Description |
|---|---|
id |
UUID |
text |
Memory content |
pressure |
Live P_effective at retrieval time |
p_raw |
Stored p_magnitude |
intent_tags |
Classification tags |
coupling_score |
TAS resonance score (0–1) |
last_reinforced |
Last retrieval datetime |
🔬 How PDM Works
Pressure — every memory has a p_magnitude (0–100). Important, frequently-used memories stay strong. Unused ones decay. You control the baseline; the system adjusts dynamically.
Decay — computed at recall time based on elapsed days vs. domain-specific half-lives. No scheduler required (Celery-free). Market signals decay in 1 day; core facts persist for a year.
Retrieval (TAS) — Threshold-Adjustment Search lowers the pressure threshold based on query uncertainty (search_cost). Then coupling scores rank memories by tag overlap, domain, regime, and pressure proximity. The most resonant memories surface first.
Validation Coefficient (V) — Laplace-smoothed accuracy tracker. Memories that prove predictively useful grow stronger; ones that mislead decay faster.
🏗️ Custom Storage Backend
Implement BaseStorage to add your own backend (Postgres, Redis, DynamoDB…):
from pdm_memory.storage.base import BaseStorage
class MyPostgresStorage(BaseStorage):
def save(self, sig): ...
def get(self, memory_id, user): ...
def update(self, memory_id, **fields): ...
def delete(self, memory_id, user): ...
def list(self, user, limit, min_pressure, drawer): ...
def list_drawers(self, user): ...
mem = Memory.__new__(Memory)
mem._storage = MyPostgresStorage(...)
mem._user = "alice"
mem._engine = RetrievalEngine()
📄 License
MIT + Patent Scope Clause — use the SDK freely; the PDM algorithm patents stay with Westfield Innovations LLC.
Built by Westfield Innovations LLC · westfieldinnovations.com
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