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mykademy learner dashboard
npm delivery wrapper for the agent-learner Python core
Terminal clone of qwerty-learner: typing practice for English vocabulary, with chapters, dictation, mistake book, and audio.
Repository for Learner Dashboard MFE frontend plugins
Dispatcher contains a Softmax learner initially used for auto-active-learning down-sampling and a ML confusion-matrix evaluator on intent classification models.
mykademy learner student dashboard
Common React components and utility code for building learner portal MFEs.
Word learner webcomponent.
"# travis-learner"
SDK for building custom learner templates for the Academy platform
A JSON schema learner
Starter kit for building custom Academy learner templates
npm-learner-starter
A React component that replaces the learner-dashboard's course list with one that supports archiving courses. Wired into the `org.openedx.frontend.learner_dashboard.course_list.v1` plugin slot. Reads each course's archive state from a filter-injected slot
One off Node SDK for Conversation Learner Multi-Woz
TypeScript SDK for CLR (Comprehensive Learner Record) API
Shared Default plugin bundles for Reel web apps (learner / admin / pro).
DreamCoder-style hierarchical abstraction and library learning for MUSUBIX
Unique Learner Number (ULN) library for JavaScript
TypeScript and Zod schemas, DTO types, operations, and stable IDs for learner-facing linguistic annotation.
This library is created by instancy, you can use this library for assignment submission and it also includes the ability to manage feedback and reply between ‘Learner’ and ‘Reviewer’. The learner can submit answer using a rich text editor with the ability
Machine learner sentiment classifier, with ability to negate words, with english and german
Node SDK for Conversation Learner
A simple library for learning stuff
The way to interact and learn stuff
Machine learning framework with spatial modeling, conformal prediction, and gradient boosting competitive with C++
MiniBoosts: A collection of boosting algorithms written in Rust 🦀
A rust Learner
An easy-to-use, lightweight deep learning library wrapped around Candle Tensor.
Primer CLI for AI-guided project recipes and milestone workflows
conreg-cmt is a management tool provided for conreg clusters, used for cluster creation, scaling up, and scaling down.
Reserved namespace for Constellate Studio: the education and contributor onboarding product in the Constellate ecosystem. The pathway from a learner reading a frontier to a learner contributing reviewable scientific state. Working code rides v0.83+ when the contributor surface is real; this stub holds the namespace today. See github.com/vela-science/vela and docs/CONSTELLATE.md.
A small, pure-Rust gradient boosting library (GBDT, binary classification, CPU only).
Natural Gradient Boosting for Probabilistic Prediction - A Rust implementation of NGBoost
AI-powered shape induction and data repair suggestions for SHACL validation
Learning
This gem can give you knowledge about Ruby
This gem can improve your edding abity
This is a library for machine learning. You can use AdaBoost and Naive Bayes easily.
Passive-Aggressive algorithms are a family of online margin based linear lerners. For further details see: 'Online Passive-Aggressive Algorithms' by Crammer et al. JMLR, 2006.
Oxford Advanced Learner's Dictionary Parser
Implementation of a Oxford Learner's Dictionaries API, it parses the website and formats the meaning of the word
TedTalk helps download TED talk video and covert it to a slowed down MP3 with pauses that is useful for English learning
Utilities to help language learners acquire vocabulary
Scrapes NHK News Web (Easy) for the word frequency (core list) for Japanese language learners. Includes a CLI app and a scraper library.
VPOPMail interface for Ruby. Allows to write filters, spam learners, etc. using the vpopmail software package.
A simple GTK3 app to help Japanese language learners with Hiragana and Katakana. It introduces users to the sounds of the kana and teaches basic recognition of both writing systems.
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