HDInsight is going to consume content from HDFS, or from blob storage mapped to HDFS via Azure Storage Vault (ASV), which effectively provides an HDFS layer on top of blob storage. The latter is the recommended approach, since you can have a significant amount of content written to blob storage, and this maps nicely into a file system that can be consumed by your HDInsight job later. This would work great for things like logs/traces. Imagine writing hourly logs to separate blobs within a particular container. You'd then have your HDInsight cluster created, attached to the same storage account. It then becomes very straightforward to specify your input directory, which is mapped to files inside your designated storage container, and off you go.
You can also store data in Windows Azure SQL DB (legacy naming: "SQL Azure"), and use a tool called Sqoop to import data straight from SQL DB into HDFS for processing. However, you'll have the 150GB limit you mentioned in your question.
There's no built-in mapping from Table Storage to HDFS; you'd need to create some type of converter to read from Table Storage and write to text files for processing (but I think writing directly to text files will be more efficient, skipping the need for doing a bulk read/write in preparation for your HDInsight processing). Of course, if you're doing non-HDInsight queries on your logging data, then it may indeed be beneficial to store initially to Table Storage, then extracting the specific data you need whenever launching your HDInsight jobs.
There's some HDInsight documentation up on the Azure Portal that provides more detail around HDFS + Azure Storage Vault.