examor

Note Review Tool

An application that uses AI-powered question generation to help users review and learn from their notes

For students, scholars, interviewees and lifelong learners. Let LLMs assist you in learning 🎓

GitHub

1k stars
13 watching
71 forks
Language: TypeScript
last commit: 6 months ago
Linked from 1 awesome list

azureclaude2ebbinghaus-memorygpt-4learning-appopenai

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
mattzcarey/code-review-gpt An automated code review tool powered by Large Language Models that scans source code for potential issues and provides feedback 1,600
codetriage/codetriage Helps non-maintainers diagnose and review issues in open-source projects to make maintainers' work easier. 1,410
2kabhishek/tdo.nvim A tool for managing notes and todos in Neovim 54
langchain-ai/auto-evaluator Automated evaluation of language models for question answering tasks 744
gsuuon/note.nvim A plugin for taking and organizing notes in Neovim 66
ldelossa/gh.nvim A plugin for interactive code reviews on GitHub 550
ailab-cvc/seed-bench A benchmark for evaluating large language models' ability to process multimodal input 315
coderaiser/speca Automates writing tape tests using Putout. 4
2kabhishek/tdo A command-line note-taking system that integrates with Git and supports various features such as todo management, journaling, and search capabilities. 41
ilyasyoy/obs.nvim A NeoVim plugin that provides an Obsidian-like notes system for taking and managing notes during coding sessions. 73
retraigo/appraisal Utilities for transforming and analyzing text data using machine learning algorithms 5
edkluivert/knote A standard note-taking app built on Mvvm architecture using Kotlin and various libraries. 17
jbyuki/carrot.nvim A plugin for evaluating Lua code blocks in Markdown documents within Neovim 24
qiangyt/batchai An AI-powered tool for automating code review and improvement in software projects 24
cloud-cv/evalai A platform for comparing and evaluating AI and machine learning algorithms at scale 1,771