With The Growth of WWW recommending appropriate and relevant page to the user is a challenging task. In many web Applications, user would like to get recommendation based on their interest of surfing. Web Mining is used to extract relevant information for the user from logs, web content, hyperlinks etc. In this paper we will be using logs to recommend frequent access patterns to the users .This paper aims at using the logs of user ,cleaning logs , identifying users , identifying session , completing sessions from website structure and then using and comparing different recommendation algorithm like Apriori Algorithms and BW-Mine to recommend frequent items to the user. We will also be comparing different recommendations Algorithm with the help of example. The fundamental of finding access patterns with Apriori is that any set that occurs frequently must have its frequent subset. The fundamental of finding access pattern with BW-Mine, it constructs the WB-table, VI-List, and HI-Counter for finding frequent patterns.