BackdoorBench aims to provide an easy implementation of both backdoor attack and backdoor defense methods to facilitate future research, as well as a comprehensive evaluation of existing attack and defense methods. We further present analysis from different perspectives about these 8,000 evaluations, studying the effects of attack against defense algorithms, poisoning ratio, model and dataset in backdoor learning.