#python#llms#mlx
MLX LM is a Python tool that helps you run and fine-tune large language models (LLMs) efficiently on Apple Silicon Macs. It connects easily to thousands of models on Hugging Face, supports model quantization to save memory, and allows distributed training. You can generate text or chat with models via simple commands or Python code. It also offers features like prompt caching and memory optimization for handling long texts, making it faster and less resource-heavy. This means you can run powerful AI models locally on your Mac without needing expensive cloud services, saving cost and improving speed.
https://github.com/ml-explore/mlx-lm
#java
The Model Context Protocol (MCP) Java SDK helps developers connect AI models with tools and data sources using a standardized interface. It supports both synchronous and asynchronous communication, making it flexible for different applications. The SDK includes features like tool management, logging, and multiple transport options, which simplify interactions between AI systems and external tools. This benefits users by providing a consistent way to integrate AI with various data sources, reducing the complexity of managing multiple connectors for different tools.
https://github.com/modelcontextprotocol/java-sdk
#java
BookLore is a self-hosted web app that helps you organize, manage, and read your personal book collection easily. You can sort books into libraries and shelves, automatically get book details from sources like Goodreads, and track your reading progress on PDFs and eBooks with a built-in reader. It supports multiple users with separate accounts and secure login options, so everyone can manage their own books without mixing collections. You can upload many books at once, share books by email (great for Kindle users), and browse books via compatible reading apps. This gives you full control over your digital library with a clean, modern interface and continuous updates[1][2][5].
https://github.com/adityachandelgit/BookLore
JSpecify — стандартизация Java-аннотаций для статического анализа кода и взаимодействия между языками JVM.
Если вы знакомы с Java или изучали исходный код, то одним из решений проблемы null является использование аннотаций nullability. Однако реализаций таких аннотаций много: JetBrains, Android Jetpack, Spring, Uber и другие создали свои версии.
Решений очень много, и возникла проблема выбора и поддержки. Хотелось бы иметь стандарт в Java, но договориться не удалось.
Консорциум компаний и команд из Google, JetBrains, Meta, Kotlin, Android, Spring, PMD, Sonar, EISOP и других объединился и создал единый стандарт, который обязуются поддерживать в своих решениях.
JSpecify 1.0 сосредоточен на nullability и содержит четыре аннотации: @NonNull, @Nullable, @NullMarked, @NullUnmarked.
Интеграция уже началась в библиотеки Jetpack Android и Kotlin.
#java
Java Backend
1 - dars. Kirish
- JVM, JRE, JDK
- Java qanday ishlaydi?
- O‘zgaruvchilar
- Maʼlumot turlari
- Kommentariyalar
- Chiqarish
Mentor : Hasan Po‘latov
#java
👉@ummat_uchun_dasturlash