In light of the recent convergence between Agentic AI and our field of Algorithmization, this paper seeks to restore conceptual clarity and provide a structured analytical framework for an increasingly fragmented discourse. First, (a) it examines the contemporary landscape and proposes precise definitions for the key notions involved, ranging from intelligence to Agentic AI. Second, (b) it reviews our prior body of work to contextualize the evolution of methodologies and technological advances developed over the past decade, highlighting their interdependencies and cumulative trajectory. Third, (c) by distinguishing Machine and Learning efforts within the field of Machine Learning (d) it introduces the first Machine in Machine Learning (M1) as the underlying platform enabling today's LLM-based Agentic AI, conceptualized as an extension of B2C information-retrieval user experiences now being repurposed for B2B transformation. Building on this distinction, (e) the white paper develops the notion of the second Machine in Machine Learning (M2) as the architectural prerequisite for holistic, production-grade B2B transformation, characterizing it as Strategies-based Agentic AI and grounding its definition in the structural barriers-to-entry that such systems must overcome to be operationally viable. Further, (f) it offers conceptual and technical insight into what appears to be the first fully realized implementation of an M2. Finally, drawing on the demonstrated accuracy of the two previous decades of professional and academic experience in developing the foundational architectures of Algorithmization, (g) it outlines a forward-looking research and transformation agenda for the coming two decades.
翻译:鉴于近期智能体人工智能与我们算法化领域之间的融合趋势,本文旨在恢复概念清晰度,并为日益碎片化的学术讨论提供一个结构化的分析框架。首先,(a)本文审视了当代发展格局,并对从智能到智能体人工智能等核心概念提出了精确定义。其次,(b)通过回顾我们先前的研究成果,本文梳理了过去十年间方法论演进与技术发展的脉络,着重阐明了其内在关联性与累积演进轨迹。第三,(c)通过区分机器学习领域中的"机器"与"学习"两个维度,(d)首次提出"机器学习中的第一机器"概念,将其定位为支撑当前基于大语言模型的智能体人工智能的基础平台——这一概念可理解为面向消费者信息检索用户体验的延伸,现正被重新应用于企业级转型场景。基于此区分,(e)本白皮书进一步提出"机器学习中的第二机器"概念,将其定义为实现整体性、生产级企业转型的架构前提,其特征可概括为基于策略的智能体人工智能,其定义植根于此类系统为达到运营可行性所必须克服的结构性准入壁垒。此外,(f)本文针对首个完全实现的第二机器系统提供了概念性与技术性解读。最后,基于过去二十年在算法化基础架构开发中积累的专业与学术经验所验证的准确性,(g)本文为未来二十年勾勒出前瞻性的研究与转型路线图。