SQL will do this quite happily. A million views a day is only ten per second; most databases will do several hundred easily.
You should already have a table for Articles and a table for Users;
you will need to create a table Read which is a many-to-many relationship between Users and Articles and maybe a timestamp. Every time you serve an article, you add an entry to the Read table, in essence saying 'User x just read Article y".
You can then ask questions like "How many times was Article y read in the past week", or "How many articles does the average reader look at on Thursdays".
For speed, you may also find it useful to preprocess some of this information and do selective denormalization, for example, keeping per-Article counts of how often it has been read.
I am tempted to refer you to http://nosql.mypopescu.com/post/1016320617/mongodb-is-web-scale - being "NoSQL" does not reduce the amount of work needed or magically make it run faster (although it often does make it easier to throw more hardware at it, if you can phrase your problem in a form it likes).
"Users who read this also read:"
Article.id, OtherArticle.id as oid, COUNT(*) AS cnt
JOIN Read AS R1 ON Article.id=R1.article_id
JOIN Read AS R2 ON R1.user_id=R2.user_id AND NOT R1.article_id=R2.article_id
JOIN Article AS OtherArticle on R2.article_id=OtherArticle.id
cnt DESC, OtherArticle.title ASC
By all means see how long this takes to run; I would probably keep the result as a reference table for immediate use, and update it with a background process every couple of hours.