Skip to main content

A memory architecture for AI agents supporting hierarchical and multimodal data.

Project description

Satori Store

Introduction

Satori Store is a sophisticated memory architecture designed for AI agents to efficiently store and retrieve hierarchical memory units, such as tasks, subtasks, steps, and actions. It provides a flexible SDK for managing memory structures without the need to modify underlying database schemas. Satori Store leverages both textual and multimodal data, supporting features like similarity search and hierarchical data retrieval.

Features

  • Flexible hierarchical memory storage
  • Multimodal embeddings (text and media)
  • Similarity search across memory units
  • Twin database approach using SQLite and Qdrant
  • Model management with support for text and CLIP models

SDK Overview

The main components of the Satori Store SDK are:

  1. MemoryBankFactory: Factory class to create the appropriate memory bank.
  2. TextMemoryBank: For storing and retrieving text-based memories.
  3. MultimodalMemoryBank: For storing and retrieving multimodal (text + image) memories.

Usage

Initializing the Memory Bank

from satoristore.memory_bank_factory import MemoryBankFactory
factory = MemoryBankFactory()

Using the Text Memory Store

# Create a text memory unit: except for the type, all fields are optional
text_data = {
    'type': 'task',
    'description': 'This is a task memory',
    'metadata': {'key': 'value'},
    'state_before': 'initial_state',
    'state_after': 'final_state',
    'status': 'in_progress',
    'human_comment': 'Human observation',
    'ai_comment': 'AI analysis',
    'parent_id': 'parent_task_id'
}

# Get the appropriate memory bank (default is text)
memory_bank = factory.get_memory_bank()

# Store the memory unit
unique_id = memory_bank.store(text_data)

# Embed the memory unit
memory_bank.embed(unique_id, text_data)

# Retrieve the memory unit
retrieved_data = memory_bank.retrieve_by_id(unique_id)

#Search similar units
query = {
    'description': 'text memory',
    'human_comment': 'observation'
}
similar_ids = memory_bank.retrieve_similar(query, max_results=5)

# Edit the memory unit
edit_data = {'description': 'Updated text memory'}
memory_bank.edit(unique_id, edit_data)

# Delete the memory unit
memory_bank.delete(unique_id)

# Close the memory bank
memory_bank.close()

Using the Multimodal Memory Store

from PIL import Image
from datetime import datetime

# Create a multimodal memory unit: except for the type, all fields are optional
multimodal_data = {
    'type': 'subtask',
    'description': 'This is a subtask memory',
    'metadata': {'key': 'value'},
    'state_before': Image.new('RGB', (100, 100), color='red'),
    'state_after': Image.new('RGB', (100, 100), color='green'),
    'status': 'in_progress',
    'human_comment': 'Human observation of image',
    'ai_comment': 'AI analysis of image',
    'media_blobs': [
        {
            'id': 'image_' + datetime.now().strftime('%Y%m%d%H%M%S'),
            'media_data': Image.new('RGB', (100, 100), color='yellow'),
            'media_type': 'image'
        }
    ]
}

# Get the appropriate memory bank
memory_bank = factory.get_memory_bank(multimodal=True)

# Store the memory unit
unique_id = memory_bank.store(multimodal_data)

# Embed the memory unit
memory_bank.embed(unique_id, multimodal_data)

# Retrieve the memory unit
retrieved_data = memory_bank.retrieve_by_id(unique_id)

# Search for similar memories by text
similar_ids = memory_bank.retrieve_similar({'description': 'multimodal memory'}, max_results=5)

# Search for similar memories by image
query_image = Image.new('RGB', (100, 100), color='red')
similar_ids = memory_bank.retrieve_similar({'state_before': query_image}, max_results=5)

# Search using multiple fields
query = {
    'description': 'multimodal memory',
    'human_comment': 'observation of image'
}
similar_ids = memory_bank.retrieve_similar(query, max_results=5)

# Edit the memory unit
edit_data = {'description': 'Updated multimodal memory'}
memory_bank.edit(unique_id, edit_data)

# Delete the memory unit
memory_bank.delete(unique_id)

# Close the memory bank
memory_bank.close()

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

satoristore-0.1.3.tar.gz (12.8 kB view details)

Uploaded Source

Built Distribution

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

satoristore-0.1.3-py3-none-any.whl (18.4 kB view details)

Uploaded Python 3

File details

Details for the file satoristore-0.1.3.tar.gz.

File metadata

  • Download URL: satoristore-0.1.3.tar.gz
  • Upload date:
  • Size: 12.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.10.15 Linux/6.5.0-1025-azure

File hashes

Hashes for satoristore-0.1.3.tar.gz
Algorithm Hash digest
SHA256 33e6d25f7976dfbadca995a9ef6ff6675923bd5c9d00a577458a3bf3a39f66ce
MD5 9d33f23435c29f28061c3c15e1ebdb06
BLAKE2b-256 87d42aa927cf2630d7ce5e1c1c4cab36110a771d2df02014ab967966cc9976fe

See more details on using hashes here.

File details

Details for the file satoristore-0.1.3-py3-none-any.whl.

File metadata

  • Download URL: satoristore-0.1.3-py3-none-any.whl
  • Upload date:
  • Size: 18.4 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.10.15 Linux/6.5.0-1025-azure

File hashes

Hashes for satoristore-0.1.3-py3-none-any.whl
Algorithm Hash digest
SHA256 a71e8e2b9ebac73a91de9710d7202a41fc223affbe6231fa3b891e74c0631eb7
MD5 04b3d311f28ac564f14dc825f77e3ba9
BLAKE2b-256 9e9a951fd608b497c62f61715786bd4ed592c3f6d46b5c037fc1d68ad549b14d

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