Spintronics has gone through substantial progress due to its applications in
energy-efficient memory, logic and unconventional computing paradigms.
Multilayer ferromagnetic thin films are extensively studied for understanding
the domain wall and skyrmion dynamics. However, most of these studies are
confined to the materials and domain wall/skyrmion physics. In this paper, we
present the experimental and micromagnetic realization of a multilayer
ferromagnetic spintronic device for neuromorphic computing applications. The
device exhibits multilevel resistance states and the number of resistance
states increases with lowering temperature. This is supported by the multilevel
magnetization behavior observed in the micromagnetic simulations. Furthermore,
the evolution of resistance states with spin-orbit torque is also explored in
experiments and simulations. Using the multi-level resistance states of the
device, we propose its applications as a synaptic device in hardware neural
networks and study the linearity performance of the synaptic devices. The
neural network based on these devices is trained and tested on the MNIST
dataset using a supervised learning algorithm. The devices at the chip level
achieve 90\% accuracy. Thus, proving its applications in neuromorphic
computing. Furthermore, we lastly discuss the possible application of the
device in cryogenic memory electronics for quantum computers