Problem1: Data Collection
Many people're using NoSQL solutions for storing application logs. The first challenge you may have is how to collect huge amount of data from various data sources reliably with ease of management. One concern of not having log collection layer, is lock contention of database caused by high write throughput.
So basically having log collection layer is recommended. There're some open-source log collector implementation such as syslog, Fluentd, Scribe, and Flume :)
Problem2: Storage & Processing
The next big problem is how to store and process data. The backend infrastructure requires a lot of changes as the data volume increase. At first, you can use MongoDB to store all of your data, but at some moment you end up using Apache Hadoop to architect a massively scalable architecture.
Here's an example architecture of having Fluentd for log collection, and MongoDB for log storage and processing.
Here're some links to put the Apache Logs into Amazon S3, MongoDB, or Hadoop HDFS by Fluentd.
Disclaimer: I'm a committer of Fluentd project.