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Magic-Abracadabra/README.md

⚠想传达全人类的警告

绝对不要放弃独立思考批判性思维!如果把科学探索完全外包给AI,也许某一天,《三体》中所说的科学界停滞不前的现象将从小说走向现实。幸运的是,现在这种情况还没有发生——科学星球的开拓与维护,一定是我们人类义不容辞的使命,也是我们人类与生俱来的天赋,更是世界送给我们的精彩

我们相信且有义务迎接这样的未来:AI的出现,将成为科学界的新黄金时代。所以未来的理想范式是,AI与人类共存。

🚀Trends in Future AIs

  1. Risk-sensitive and confidential scenarios that require fast response: Expert Systems
  2. Knowledge graphs should be executable expert systems
  3. Train expert systems using the Bayesian philosophy of Case Study, i.e., Supervised Learning, Reinforcement Learning, Context Engineering, or some other optimization techniques, etc.
  4. The boundaries of Agents and MLLMs will be broken
  5. Help the ESG goals
  6. The revival of Algebra and Symbolism

🎯Our Research Focus

  1. Foundation Multimodal Neuro-Symbolic AI Models/Agents
  2. Incremental Learning using the Bayesian philosophy of Case Study

🛡坚决杜绝AI毁灭人类的可能,坚决确保AI的发展保障你我的价值

为叙述方便并避免歧义,本页中出现的所有“以人为本的立场”与“去中心化的技术特点”被特指如下。以人为本(Human-Centered),特指人类与机器的关系,希望机器永远服务于人类的立场。以人为本是立场上杜绝机器失控的主观基础,有利于把“机器为了机器自身的利益而毁灭人类”的事件扼杀在摇篮之中,从根本上实现价值对齐。去中心化(Decentralized),特指无需联网,能在端侧训练、部署智能模型或者智能体的技术特性。去中心化一来能够极致的尊重用户隐私,二来有助于实现技术的平权,降低技术使用的准入门槛,真正推动技术的普及。有了“以人为本”和“去中心化”的假设后,我们看到,我们人类在经历当下的以人工智能为标志的第四次工业革命之后,有希望以最有活力、最有生命力、最积极的样子,自信而稳健地迈入第五次工业革命。这种可能性,极大地鼓舞了我们在人工智能领域的探索。

我们从内心认可当下人工智能的蓬勃发展与繁荣进步,我们坚信人工智能的长期价值,同时我们也尝试解决人工智能领域的技术挑战。因此,我们在技术路线的设计中(特别是技术路线的第一部分和第三部分,我们将批判继承一路走到现今的AI理论与工程宝藏),尽我们的最大努力吸取当下人工智能领域的精华(这体现在我们对未来趋势的判断中——using the Bayesian philosophy of Case Study, i.e., Supervised Learning, Reinforcement Learning, Context Engineering, or some other optimization techniques, etc.)。我们诚挚地欢迎对该尚在雏形阶段的技术路线内容细节的建设性批判、建设性讨论与建设性工作,为我们共同迈向美好的未来世界,奉献自己的力量~

我们始终坚持通用是一种相对性的动态过程——你面对不熟悉的领域就是表现不好,你唯一知道的是你不知道什么,这是事实。所以绝对静态的通用是一种不可能达到的状态,因此持续进化才是一个智能真正需要的能力。

单个模型(请不要局限于专家系统)对应人类世界的专家,多个模型对应人类世界的专家团队,多个模型集成(神经网络在哲学层面上也是神经元的集成,可以尝试的投票机制比如可信度加权,请参考《原则》一书)决策才是泛化的关键。绝对静态的通用并不存在,人类也不过只是解决了几个自己熟悉的领域,不足以标榜自己“通用”。所以,真正的智能应该能够保持谦逊的态度,并借助集成与团队协作的哲学,实现真正的集体持续学习(Incremental Ensemble Learning)。

任何人工智能,我们坚信,只有🍃以人为本🍃的人工智能,才是人类需要的人工智能。

✨About Us

More Early Versions of Foundation Models/Agents will be released, including hands-on training methods and initial datasets, free for anyone!

We are a small team whose members major in Mathematics & Engineering, with limited resources (esp. equipment and computational resources). We embrace a world of decentralization.

Welcome to our homepage! We will be glad if you share the same mission and dream with us, so we're here seeking collaboration opportunities, to address the following issues in Foundation Models/Agents together:

  1. Lacking interpretability - being opaque, not auditable, and not thoroughly controllable
  2. Low inference ability and hence being not trustworthy, especially in some risk-sensitive situations
  3. Catastrophic forgetting
  4. Long response time
  5. Difficulties in local deployment and local training (esp. on CPUs of PCs or on mobile phones), where privacy matters
  6. Low data efficiency - a low intelligence density, which is the consequence of a lack of interpretability

All of our contributions are indexed in this project, including the Technical Roadmap Draft: https://github.com/Magic-Abracadabra/Office-Agents-and-Their-Incremental-Learning-Framework

🤝With Joint Efforts, for Human Sustainable Progression, for One of the Inspiring Potential Possibilities

We firmly believe that we shall prepare ourselves for a world of Office Automation, Critical Thinking, and Creativity, which will enable us to enter the era of the fifth industrial revolution. Magic, the so-called "consciousness energy", is the ability of consciousness to control the material world. The automation and modularization of the fourth industrial revolution will lay a solid foundation for this god-like ability. People in the fifth industrial revolution will pay more attention to world exploration (satisfying curiosities about the world) and their influence (demonstrating their values), both in the inner and outer worlds. Consciousness energy will become a new era of technology. At that time, an idea is the only requirement to teleport ourselves to a human base station on Mars. Just going through the spell in your mind, you will turn domestic garbage into energy supply materials. Our world at that time will be as exciting and cool as today's games.

Now, it's of great significance to tackle the problems listed above. Let's work together, you and us, to find a better solution of Machine Learning, bringing Magic to this world! Abracadabra!

Pinned Loading

  1. Office-Agents-and-Their-Incremental-Learning-Framework Office-Agents-and-Their-Incremental-Learning-Framework Public

    Steps toward a brand-new paradigm of Machine Learning

  2. DAHSF DAHSF Public

    Digestion Algorithm in Hierarchical Symbolic Forests: A Fast Text Normalization Algorithm and Semantic Parsing Framework for Specific Scenarios and Lightweight Deployment

    Python

  3. Fire-Bunny-Intelligent-Development-Platform Fire-Bunny-Intelligent-Development-Platform Public

    High-Level Chinese Scripting Language for RPA. No illegal use is allowed! Free for commercial and academic applications.

    Python 4

  4. AI-Chinese-Scripting-Language AI-Chinese-Scripting-Language Public

    This is a quick test of Chinese Scripting Language powered by AI. You can use it to open any text file. No illegal use is allowed! Free for commercial use and academic use.

    Python 2

  5. Reward-Dissolving-and-Teleportation-Mechanism Reward-Dissolving-and-Teleportation-Mechanism Public

    Python

  6. Vector-Graphic-Maker Vector-Graphic-Maker Public

    C++