I want to start playing around with AI tools in Python. I have looked at some of the projects but I find their examples daunting for my limited experience etc. For example I want to build a way to compare two html tables and build something that allows me to determine if the tables describe the same concepts. Right now I am doing this with brute force methods for example I have a population of known tables of a particular type. I find and extract all of the row labels and create a set of unique row labels. Then I take a new table and compare the row labels in the new table to the row labels in the set and if the intersection of the row labels is sufficiently large I declare it as a table of that particular type.
My reading though suggests I should be able to do something less mechanical and more artful but I am struggling with how to start.
Can anyone point me in the direction of resources that have accessible examples where AI tools are used to solve specific problems. For example suppose I come across a table in a document I want to see if that table is one of several types of tables that I have already identified. How do I pass the exemplar tables and then the candidate table for inspection. How can I specify the attributes of the table(s) that should be considered?
When I look at the documentation and examples for the AI resources I find they are so general I am lost with respect to knowing how to even start.
I added the above after reading the FAQ I think this is a fair question. I don't want to ask somebody to code pyBrain to read in my sample tables I want to find cases where others have used that or something similar so I can study their code.
I am editing this after it was closed. The traffic on the Q seems it is relevant. The NLTK is a great place to start. I got a soft copy of the book from iTunes after figuring out that it was going to be a great resource. If you need to scan the book before you buy it the whole thing is online NLTK Book But buy the book if you decide it is useful.