Rebecca_Spine
Project OwnerI work as a researcher and product manager for the project spine archive.
The Spine Archives Pod Channel aims to create the world's most comprehensive spine health knowledge ecosystem. By transforming centuries of research into an AI-powered platform, we facilitate intelligent discovery and provide medical insights to healthcare professionals and patients alike. Our initiative focuses on preserving historical spine research, indexing literature, engineering knowledge frameworks, and developing AI agents to advance spine health.
The goal of this project is to develop functionality that will enable modular microservices that support data collection, scoring, and analytics functions as part of a reputation and voting weight system. This should include an architecture to allow for the integration of future microservices, an initial suite of key microservices, and a user interface that allows users to find and utilize various configurations of the microservices.
In order to protect this proposal from being copied, all details are hidden until the end of the submission period. Please come back later to see all details.
Digitize 20,000 documents and establish storage
Tasks: 1. OCR Pipeline: ○ Custom OCR model using Google Cloud Vision API for 200,000 pages. 2. Storage: ○ Centralized GCS + Nearline backups (10 TB total). Google Cloud Services: ● Cloud Vision API: $300 (200,000 pages). ● Compute Engine: OCR fine-tuning (50 vCPUs, ~$3,000). ● Google Cloud Storage: 10 TB, 4 months (~$800 centralized, $200 Nearline).
$15,000 USD
Digitized archive in GCS.
Index 20,000 documents and integrate with 4.5M articles.
Tasks: 1. Database: ○ BigQuery for 15 TB of data (documents + articles). 2. Search: ○ Basic semantic search with Vertex AI. Google Cloud Services: ● BigQuery: 4 months (~$1,000/month, $4,000 total). ● Vertex AI: Initial embeddings/search (~$10,000). ● Compute Engine: Indexing pipeline (25 vCPUs, ~$2,000).
$25,000 USD
Indexed database with basic search at archive.spineDAO.com
Build initial knowledge graphs and AI agents.
Tasks: 1. Knowledge Graphs: ○ Semantic networks from 20,000 documents using Vertex AI. 2. AI Agents: ○ Deploy one specialized agent (e.g., Spinal Deformity) and one general agent. Google Cloud Services: ● Vertex AI: Embeddings + agent training (~$25,000). ● Cloud TPU: Graph computation (250 hours, ~$2,500). ● Cloud Run: Host agents (~$2,500).
$60,000 USD
Basic knowledge graphs and two AI agents (demo-ready).
Reviews & Ratings
Please create account or login to write a review and rate.
Check back later by refreshing the page.
© 2024 Deep Funding
Join the Discussion (0)
Please create account or login to post comments.