Accessing a list by any index that isn't near the front or end will be expensive, costing O(N). For large lists, this is not very efficient.
Using hashes may be a better fit for your needs. This will use more memory than a list, but will provide nearly O(1) access.
A hash in redis is a named key that can contain arbitrary fields and values.
You can store the entire user record in a single redis hash, named using the member_id (hopefully this is a short value). If the member_id is guaranteed to be unique per-user, here is how to populate a hash for user with member_id 42.
hset user:42 email firstname.lastname@example.org
hset user:42 username foobar
hset user:42 logincount 0
The redis "key name" here is "user:42". Each user will get a single key, similar to a single row in a SQL database, but more flexible. You can then update two auxiliary hashes: one to map usernames to member_id, and another to map email addresses to member_id. This assumes you have a 1:1 relationship among member_id, username and email address.
hset username_to_id foobar 42
hset email_to_id email@example.com 42
When you need to look up the email address for a particular user, you first look up the member_id from the
email_to_id hash and then retrieve the
email field from the hash at key user:*member_id* Likewise, you can start with a username, look up the member_id in the
username_to_id hash, and then get to the user record stored in the user:
Here is an example for looking up the username given an email address:
redis> hget email_to_id firstname.lastname@example.org
redis> hget user:42 username
You can add more records to the user by adding more fields to the "user:" hash. If you want to increment a login counter, that is straightforward as well:
redis> hincrby user:42 login_count 1
redis> hgetall user:42
You can find more information about hashes on the redis.io site.