The best you can hope for is to haul large blocks of text into memory (or "memory map" a file), and process the text in memory.
The thorn in the efficiency is that text lines are variable length records. Generally, text is read until an end of line terminator is found. In general, this means reading a character, and checking for eol. Many platforms and libraries try make this more efficient by reading blocks of data and searching the data for eol.
Your CSV format further complicates the issue. In a CSV file, the fields are variable length records. Again, searching for a terminal character such as a comma, tab or vertical bar.
If you want better performance, you will have to change the data layout to fixed field lengths and fixed record lengths. Pad fields if necessary. The applications can remove the extra padding. Fixed length records are very efficient as far as reading is concerned. Just read N number of bytes. No scanning, just dump into a buffer somewhere.
Fixed length fields allow for random access into the record (or text line). The index into a field is constant and can be calculated easily. No searching required.
In summary, variable length records and fields are by their nature, not the most efficient data structure. Time is wasted searching for terminal characters. Fixed length records and fixed length fields are more efficient since they don't require searching.
If your application is data intensive, perhaps restructuring the data will make the program more efficient.