AI

Created By
Nasdanikaa year ago
Things related to artificial intelligence built on top of Nasdanika capabilities
Overview

What is AI?

AI is a project focused on artificial intelligence that operates on top of interconnected models and resource sets, abstracting AI components from low-level implementation details.

How to use AI?

To use AI, you can interact with the CLI to manage embeddings, perform semantic searches, and chat with models. You can also integrate it with a static site and semantic search commands.

Key features of AI?

  • Embeddings generation from OpenAI and Ollama.
  • Vector store for efficient data retrieval.
  • CLI tools for managing embeddings and vector stores.
  • Chat completions and integration with Vue.js for chat applications.

Use cases of AI?

  1. Semantic search for retrieving relevant information based on context.
  2. Chatting with AI models for interactive experiences.
  3. Managing and utilizing embeddings for various AI applications.

FAQ from AI?

  • What types of models can be used with AI?

AI can work with various models and resource sets, allowing for flexible integration.

  • Is there a graphical interface for AI?

Currently, AI primarily operates through CLI, but there are plans for web-based interfaces.

  • How does AI handle data storage?

AI uses a vector store to manage embeddings and facilitate semantic searches.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
Nasdanika
Star
0
Language
Java
License
EPL-2.0 license

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