Our situated environment is full of uncertainty and highly dynamic, thus hindering the widespread adoption of machine-led Intelligent Decision-Making (IDM) in real world scenarios. This means IDM should have the capability of continuously learning new skills and efficiently generalizing across wider applications. IDM benefits from any new approaches and theoretical breakthroughs that exhibit Artificial General Intelligence (AGI) breaking the barriers between tasks and applications. Recent research has well-examined neural architecture, Transformer, as a backbone foundation model and its generalization to various tasks, including computer vision, natural language processing, and reinforcement learning. We therefore argue that a foundation decision model (FDM) can be established by formulating various decision-making tasks as a sequence decoding task using the Transformer architecture; this would be a promising solution to advance the applications of IDM in more complex real world tasks. In this paper, we elaborate on how a foundation decision model improves the efficiency and generalization of IDM. We also discuss potential applications of a FDM in multi-agent game AI, production scheduling, and robotics tasks. Finally, through a case study, we demonstrate our realization of the FDM, DigitalBrain (DB1) with 1.2 billion parameters, which achieves human-level performance over 453 tasks, including text generation, images caption, video games playing, robotic control, and traveling salesman problems. As a foundation decision model, DB1 would be a baby step towards more autonomous and efficient real world IDM applications.
翻译:我们所处的环境充满不确定性,充满了高度动态,从而阻碍了在现实世界情景中广泛采用机器引导的智能决策(IDM),这意味着IMD应有能力不断学习新的技能,并有效地在更广泛的应用中推广。IDM受益于任何新的方法和理论突破,展示人工一般情报(AGI),打破任务和应用之间的障碍。最近的研究有经过周密审查的神经结构、变异器,作为主干基础模型,并广泛应用于各种任务,包括计算机游戏、自然语言处理和强化学习。因此,我们主张,可以通过制定各种决策任务来建立基础决策模式(DMM),以此作为使用变异器结构进行解密的顺序;这将是在更复杂的现实世界任务中推进IMDD应用的有希望的解决办法。在本文件中,我们阐述了一个基础决策模型如何提高IMD的效率和普遍性。 我们还讨论FDMD在多试游戏、自然语言处理和强化学习中的潜在应用。最后,通过案例研究,我们展示了实现FDMDM、数字B、DODA和DO等真实性图像的实现程度,其中包括DVDVD1的升级。