5G mobile network technology is undergoing rapid deployment. Autoscaling in 5G refers to the dynamic allocation and removal of network functions based on real-time service demand. It provides additional capacity to serve new users, while avoiding the risk of excessive costs. In this paper, we compare two stateless 5G autoscaling platforms: CoreKube and free5GC-helm, both deployed on the Hetzner Cloud platform. We utilize PacketRusher to generate high load for autoscaling evaluation, and collect metrics for analysis. Additionally, we analyze the bottleneck and autoscaling problem of free5GC-helm, providing guidance for real-world deployment. Our investigation revealed that the free5GC-helm scaling mechanism quickly encounters bottlenecks, primarily due to decisions made within the network repository function