In the quickly advancing scene of the Web of Things (IoT), the sheer volume and speed of information produced by horde gadgets require proficient handling components. Edge figuring, by uprightness of its decentralized nature, offers a promising arrangement by empowering information handling nearer to the source. Nonetheless, the unique idea of IoT responsibilities and the heterogeneity of edge gadgets make asset distribution a difficult undertaking. This paper presents a versatile asset designation procedure for edge registering custom fitted for IoT information examination, utilizing the force of Support Learning (RL). We propose an original RL-based model that persistently learns and adjusts to the changing prerequisites of IoT gadgets and the accessibility of edge assets. Through broad reenactments and certifiable analyses, our methodology shows huge upgrades in asset usage, decreased dormancy, and improved information handling throughput contrasted with conventional portion techniques. Moreover, oneself learning capacity of our model guarantees its versatility and flexibility to assorted IoT situations. This exploration not just overcomes any barrier between versatile asset allotment and edge figuring yet additionally prepares for more clever, independent, and effective edge-based IoT frameworks.