#java#cache#caffine#data#draft#fetch#graphql#immer#immutable#immutable_collections#immutable_datastructures#java#jdbc#kotlin#orm#orm_framework#orm_library#orms#redis#redis_cache
Jimmer is a powerful and advanced ORM (Object-Relational Mapping) framework for Java and Kotlin that lets you easily read and write complex data structures without needing to predefine their shapes. It supports dynamic multi-table queries, automatic SQL optimization, and efficient saving of incomplete or nested objects. Jimmer also generates type-safe DTOs (Data Transfer Objects) for complex queries and updates, avoids common problems like "N+1" queries, and offers strong caching and GraphQL support. This means you can build complex business logic faster and with less hassle, improving both development speed and code quality. It works well with modern IDEs and supports both Java and Kotlin seamlessly.
https://github.com/babyfish-ct/jimmer
#python#ai#llm#rag#reasoning#retrieval
PageIndex is an advanced AI tool that helps you find the most relevant information in long professional documents by thinking and reasoning like a human expert, rather than just matching keywords. It organizes documents into a clear tree structure, similar to a table of contents, and searches through this structure to give precise, trustworthy answers with exact page references. This method avoids the common problems of traditional vector-based search, making it ideal for complex reports, legal texts, or financial filings. You can use it easily via cloud services or run it locally, improving your ability to analyze and understand large documents quickly and accurately.
https://github.com/VectifyAI/PageIndex
⚡️ Omni-Embed-Nemotron - новая единая модель от NVIDIA для поиска по тексту, изображениям, аудио и видео
Модель обучена на разнообразных мультимодальных данных и может объединять разные типы входных сигналов в общее векторное представление.
- Поддержка всех типов данных: текст, изображение, аудио, видео.
- Основана на архитектуре Qwen Omni (Thinker-модуль, без генерации текста).
- Контекст - до 32 768 токенов, размер embedding — 2048.
- Оптимизирована под GPU, поддерживает FlashAttention 2.
Это делает её идеальной для:
- кросс-модального поиска (поиск текста по видео или изображению);
- улучшения RAG-проектов;
- систем мультимодального понимания контента.
Просто, быстро и эффективно - всё в одном открытом решении.
🌐 Открытая модель: https://huggingface.co/nvidia/omni-embed-nemotron-3b
@ai_machinelearning_big_data
#crossmodal#retrieval#openAI#NVIDIA#OmniEmbed#multimodal#AIModels#OpenSource#Search#UnifiedEmbedding