start
  • 👋Welcome
  • 📖Introduction
  • 💡Use Cases
  • 🧑Personas
    • Film Production
    • Animation Studios
    • Game Developer
    • Industrial Design
    • Advertising
    • AI Image Generation / Text-to-Image
    • Speech-to-Text & Text-to-Speech
    • AI Video Enhancement & Processing
    • AI Object Detection & Image Analysis
    • Enterprise LLM API
    • Private Knowledge Base LLM (RAG - Retrieval-Augmented Generation)
    • Family Photographer
    • Indie Game Developer
    • Aspiring 3D Artist
    • Playstation Gamer
  • 🚀Get Started
    • Janction Node Operation Graphic Tutorial
  • 🔗Related Work
  • 🏗️Architecture
    • Actor Model
  • 🖥️Pooling
  • 🪙Token
  • ⚡Colocation of Idle Processor Computing Power
  • ✅Proof of Contribution
  • 🎮GPU Marketplace
    • Pricing strategy based on pvcg
  • ❓HELP FAQ
    • FAQ
      • How Janction Efficiently Stores AI/ML Models for Different Users?
      • Compared to traditional cloud GPU platforms, how does Janction's distributed idle GPU computing powe
      • How does Janction ensure the efficiency and quality of data annotation for various data types with d
      • How does Janction's execution layer handle the various AI subdomain functionalities?
      • How does Janction select and use different DAs?
      • Is Janction considering adopting the security guarantees provided by Restaking?
      • What is the current progress of Janction’s product technology?
      • How will Janction consider airdropping to the community?
  • 🛣️Roadmap
  • 📜Policy
    • Terms
Powered by GitBook
On this page
  1. HELP FAQ
  2. FAQ

Compared to traditional cloud GPU platforms, how does Janction's distributed idle GPU computing powe

a. Computing resources have a natural cost advantage over cloud GPU manufacturers. Idle GPUs are dynamically and flexibly allocated according to customer needs. When AI customer demand is low, GPUs can selectively participate in PoW projects. When AI customer demand is high, GPU can be switched back

b. Similar to traditional cloud GPU platforms, Janction has also designed a complete set of monitoring products for real-time monitoring of GPU activity, service quality, etc.;

c. It is currently in the cold start stage, and the number of early users is relatively small. Janction’s operation and maintenance personnel can provide more time and energy to ensure service quality, and can summarize the accumulated experience and use it to develop peripheral products to ensure service

PreviousHow Janction Efficiently Stores AI/ML Models for Different Users?NextHow does Janction ensure the efficiency and quality of data annotation for various data types with d

Last updated 11 months ago

❓