feat(home page): add the function of switching between Chinese and English in the version introduction

This commit is contained in:
谢俊男
2026-01-16 11:44:19 +08:00
parent c2998154e0
commit 437dc27586
3 changed files with 110 additions and 76 deletions

View File

@@ -1,33 +1,68 @@
{
"v0.2.0": {
"codeName": "启知",
"releaseDate": "2026-1-16",
"upgradePosition": "本次为架构升级,核心目标是把“被动存储”升级为“主动认知”,让系统具备情绪感知、情景理解与类人记忆机制,为后续多智能体协作与专业场景落地奠定底座。",
"coreUpgrades": [
"记忆详情:拟人记忆——情绪引擎、情景记忆、短期记忆、工作记忆、感知记忆、显性记忆、隐性记忆,并配套类脑遗忘机制,实现从感知→情绪→情景→长期沉淀的完整人类记忆闭环",
"可视化工作流拖拽式节点编排LLM、知识库、逻辑、工具业务落地周期由天缩至小时。",
"多模态知识处理PDF、PPT、MP3、MP4 一键解析,时间感知检索准确率 94.3%,问答对数据即插即用。",
"Agent集群内置“记忆-知识-工具-审核”四类角色模板用户一键生成主控Agent把复杂任务拆为子任务并行分发再靠情景记忆统一消解冲突、校验一致性输出完整报告。"
]
"introduction": {
"codeName": "启知",
"releaseDate": "2026-1-16",
"upgradePosition": "本次为架构升级,核心目标是把\"被动存储\"升级为\"主动认知\",让系统具备情绪感知、情景理解与类人记忆机制,为后续多智能体协作与专业场景落地奠定底座。",
"coreUpgrades": [
"记忆详情:拟人记忆——情绪引擎、情景记忆、短期记忆、工作记忆、感知记忆、显性记忆、隐性记忆,并配套类脑遗忘机制,实现从感知→情绪→情景→长期沉淀的完整人类记忆闭环",
"可视化工作流拖拽式节点编排LLM、知识库、逻辑、工具业务落地周期由天缩至小时。",
"多模态知识处理PDF、PPT、MP3、MP4 一键解析,时间感知检索准确率 94.3%,问答对数据即插即用。",
"Agent集群内置\"记忆-知识-工具-审核\"四类角色模板用户一键生成主控Agent把复杂任务拆为子任务并行分发再靠情景记忆统一消解冲突、校验一致性输出完整报告。"
]
},
"introduction_en": {
"codeName": "Qizhi",
"releaseDate": "2026-1-16",
"upgradePosition": "This release marks a foundational upgrade to the systems cognitive architecture. The core objective is to evolve the platform from passive information storage into active cognitive intelligence—enabling emotional awareness, situational understanding, and human-like memory mechanisms. This upgrade lays the groundwork for future multi-agent collaboration and domain-specific, production-grade AI applications.",
"coreUpgrades": [
"Human-Like Memory Architecture: A comprehensive, human-inspired memory system is introduced, encompassing emotional processing, situational memory, short-term and working memory, perceptual memory, as well as explicit and implicit memory. Combined with brain-inspired forgetting mechanisms, the system now supports a complete cognitive loop—from perception → emotion → context → long-term consolidation, closely mirroring human memory formation.",
"Visual Workflow Orchestration: A fully visual, drag-and-drop workflow enables modular composition of LLMs, knowledge bases, logic, and tools. This dramatically reduces the time required to move from experimentation to production—from days to hours.",
"Multimodal Knowledge Processing: The system now supports one-click parsing and ingestion of PDF, PPT, MP3, and MP4 content. With time-aware retrieval accuracy reaching 94.3%, structured Q&A data becomes instantly usable for downstream reasoning and generation.",
"Built-in Agent Clusters: Predefined role templates across four categories—Memory, Knowledge, Tools, and Review—can be generated with a single click. A Coordinator Agent decomposes complex tasks into parallel subtasks, while situational memory is used to resolve conflicts, validate consistency, and synthesize outputs into a coherent, end-to-end report."
]
}
},
"v0.1.0": {
"codeName": "初心",
"releaseDate": "2025-12-01",
"upgradePosition": "这是一款专注于管理和利用AI记忆的工具支持RAG和知识图谱两种主流存储方式旨在为AI应用提供持久化、结构化的“记忆”能力。",
"coreUpgrades": [
"记忆空间:用户可以创建独立的空间来隔离不同记忆,并灵活选择存储方式。",
"记忆配置:简化了配置流程,内置自动提取关键信息的“记忆萃取”和管理生命周期的\"遗忘\"引擎。",
"知识检索:提供语义、分词和混合三种检索模式,并支持多种参数微调和结果重排序,以提升召回效果。",
"全局管理:支持统一设置默认检索参数,并可一键应用到所有知识库。",
"测试与调试:内置\"召回测试\"功能,方便用户实时验证检索效果并调整参数,支持通过分享码与他人协作。",
"记忆洞察可查看详细的对话记录、用户画像和分析报告帮助理解AI的\"记忆\"内容。",
"集成与管理提供API Key用于系统集成并包含基本的用户管理功能。",
"界面与体验:采用现代化的卡片式布局和渐变色设计,注重交互的流畅性和视觉美感。",
"起步与使用:文档中提供了清晰的基础使用流程,引导用户从创建空间、配置记忆到测试检索快速上手。",
"版本说明与限制: 记忆熊 v0.1.0 版本\"初心\"囊括智能记忆管理的核心思路和基础能力,为后续开发奠定了基础。",
"文档资源用户手册、API文档、FAQ",
"问题反馈GitHub Issues、邮件支持",
"致谢:感谢所有参与测试和提供反馈的用户!"
]
"introduction": {
"codeName": "初心",
"releaseDate": "2025-12-01",
"upgradePosition": "这是一款专注于管理和利用AI记忆的工具支持RAG和知识图谱两种主流存储方式旨在为AI应用提供持久化、结构化的\"记忆\"能力。",
"coreUpgrades": [
"记忆空间:用户可以创建独立的空间来隔离不同记忆,并灵活选择存储方式。",
"记忆配置:简化了配置流程,内置自动提取关键信息的\"记忆萃取\"和管理生命周期的\"遗忘\"引擎。",
"知识检索:提供语义、分词和混合三种检索模式,并支持多种参数微调和结果重排序,以提升召回效果。",
"全局管理:支持统一设置默认检索参数,并可一键应用到所有知识库。",
"测试与调试:内置\"召回测试\"功能,方便用户实时验证检索效果并调整参数,支持通过分享码与他人协作。",
"记忆洞察可查看详细的对话记录、用户画像和分析报告帮助理解AI的\"记忆\"内容。",
"集成与管理提供API Key用于系统集成并包含基本的用户管理功能。",
"界面与体验:采用现代化的卡片式布局和渐变色设计,注重交互的流畅性和视觉美感。",
"起步与使用:文档中提供了清晰的基础使用流程,引导用户从创建空间、配置记忆到测试检索快速上手。",
"版本说明与限制: 记忆熊 v0.1.0 版本\"初心\"囊括智能记忆管理的核心思路和基础能力,为后续开发奠定了基础。",
"文档资源用户手册、API文档、FAQ",
"问题反馈GitHub Issues、邮件支持",
"致谢:感谢所有参与测试和提供反馈的用户!"
]
},
"introduction_en": {
"codeName": "Original Intent",
"releaseDate": "2025-12-01",
"upgradePosition": "A tool focused on managing and utilizing AI memory, supporting both RAG and knowledge graph storage methods, aiming to provide persistent and structured 'memory' capabilities for AI applications.",
"coreUpgrades": [
"Memory Space: Users can create independent spaces to isolate different memories and flexibly choose storage methods.",
"Memory Configuration: Simplified configuration process with built-in 'memory extraction' for automatic key information extraction and 'forgetting' engine for lifecycle management.",
"Knowledge Retrieval: Provides semantic, tokenization, and hybrid retrieval modes with various parameter tuning and result reranking to improve recall.",
"Global Management: Supports unified default retrieval parameter settings with one-click application to all knowledge bases.",
"Testing & Debugging: Built-in 'recall testing' for real-time verification of retrieval effects and parameter adjustment, with sharing code support for collaboration.",
"Memory Insights: View detailed conversation records, user profiles, and analysis reports to understand AI 'memory' content.",
"Integration & Management: Provides API Key for system integration with basic user management features.",
"Interface & Experience: Modern card-based layout with gradient design, focusing on interaction fluidity and visual aesthetics.",
"Getting Started: Documentation provides clear basic usage flow, guiding users from creating spaces, configuring memory to testing retrieval.",
"Version Notes: MemoryBear v0.1.0 'Original Intent' encompasses core concepts and basic capabilities of intelligent memory management, laying foundation for future development.",
"Documentation: User Manual, API Documentation, FAQ",
"Feedback: GitHub Issues, Email Support",
"Acknowledgments: Thanks to all users who participated in testing and provided feedback!"
]
}
}
}
}