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PromethAI-Memory
Memory management and testing for the AI Applications and RAGs
Open-source framework that manages memory for AI Agents and LLM apps
Share promethAI Repository
Production-ready modern data platform
Browsing the database of theresanaiforthat.com, we can observe around 7000 new, mostly semi-finished projects in the field of applied AI. It seems it has never been easier to create a startup, build an app, and go to market… and fail.
Decades of technological advancements have led to small teams being able to do in 2023 what in 2015 required a team of dozens. Yet, the AI apps currently being pushed out still mostly feel and perform like demos. The rise of this new profession is perhaps signaling the need for a solution that is not yet there — a solution that in its essence represents a Large Language Model (LLM) — a powerful general problem solver — available in the palm of your hand 24/7/365.
To address this issue, dlthub and prometh.ai will collaborate on a productionizing a common use-case, progressing step by step. We will utilize the LLMs, frameworks, and services, refining the code until we attain a clearer understanding of what a modern LLM architecture stack might entail.
Read more on our blog post prometh.ai
Project Structure
Level 1 - OpenAI functions + Pydantic + DLTHub
Scope: Give PDFs to the model and get the output in a structured format We introduce the following concepts:
- Structured output with Pydantic
- CMD script to process custom PDFs
Level 2 - Memory Manager + Metadata management
Scope: Give PDFs to the model and consolidate with the previous user activity and more We introduce the following concepts:
- Long Term Memory -> store and format the data
- Episodic Buffer -> isolate the working memory
- Attention Modulators -> improve semantic search
- Docker
- API
Level 3 - Dynamic Memory Manager + DB + Rag Test Manager
Scope: Store the data in N stores and test the retrieval with the Rag Test Manager
- Dynamic Memory Manager -> store the data in N stores
- Auto-generation of tests
- Multiple file formats supported
- Postgres DB to manage state
- Docker
- API
Run the level 3
docker compose up promethai_mem
poetry shell
Make sure to run
python scripts/create_database.py
After that, you can run:
python rag_test_manager.py \
--url "https://www.ibiblio.org/ebooks/London/Call%20of%20Wild.pdf" \
--test_set "example_data/test_set.json" \
--user_id "666" \
--metadata "example_data/metadata.json"
