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I have noticed that reading a file byte-by-bye takes more time to read whole file than reading file using fread .

According to cplusplus :
size_t fread ( void * ptr, size_t size, size_t count, FILE * stream );

Reads an array of count elements, each one with a size of size bytes, from the stream and stores them in the block of memory specified by ptr.

Q1 ) So , again fread reads the file by 1 bytes , so isn't it the same way as to read by 1-byte method ?

Q2 ) Results have proved that still fread takes lesser time .

From here:

I ran this with a file of approximately 44 megabytes as input. When compiled with VC++2012, I got the following results:

using getc Count: 400000 Time: 2.034
using fread Count: 400000 Time: 0.257

Also few posts on SO talks about it that it depends on OS .
Q3) What is the role of OS ?

Why is it so and what exactly goes behind the scene ?

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people downvoting please drop a comment and let me know why , if there is any duplicate please specify it . –  aseem Apr 26 '14 at 15:24
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It is a standard benchmark mistake. Reading data off the disk runs at between 10 and 60 megabytes/second for a standard drive. You cannot read a 44 MB file in 0.257 seconds. So you didn't actually read off the drive in the 2nd test, you read from the file system cache. You can use SysInternals' RamMap utility to get your machine into a state where you can compare apples and avoid the oranges. –  Hans Passant Apr 26 '14 at 15:45
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@Hans: Modern disks have sequential read speeds from about 90MB/s for a mid-range rotating disk, to well over 500MB/s for PCI-connected SSDs. Reading 44MB in 1/4 second is completely possible. –  Ben Voigt Apr 26 '14 at 18:02
    
Considering that Jerry Coffin is the source of those numbers, I really doubt that he failed to warm the cache. –  Ben Voigt Apr 26 '14 at 18:06

4 Answers 4

up vote 4 down vote accepted

fread does not read a file one byte at a time. The interface, which lets you specify size and count separately, is purely for your convenience. Behind the scenes, fread will simply read size * count bytes.

The amount of bytes that fread will try to read at once is highly dependent on your C implementation and the underlying filesystem. Unless you're intimately familiar with both, it's often safe to assume that fread will be closer to optimal than anything you invent yourself.

EDIT: physical disks tend to have a relatively high seek time compared to their throughput. In other words, they take relatively long to start reading. But once started, they can read consecutive bytes relatively fast. So without any OS/filesystem support, any call to fread would result in a severe overhead to start each read. So to utilize your disk efficiently, you'll want to read as many bytes at once as possible. But disks are slow compared to CPU, RAM and physical caches. Reading too much at once means your program spends a lot of time waiting for the disk to finish reading, when it could have been doing something useful (like processing already read bytes).

This is where the OS/filesystem comes in. The smart people who work on those have spent a lot of time figuring out the right amount of bytes to request from a disk. So when you call fread and request X bytes, the OS/filesystem will translate that to N requests for Y bytes each. Where Y is some generally optimal value that depends on more variables than can be mentioned here.

Another role of the OS/filesystem is what's called 'readahead'. The basic idea is that most IO occurs inside loops. So if a program requests some bytes from disk, there's a very good chance it'll request the next bytes shortly afterwards. Because of this, the OS/filesystem will typically read slightly more than you actually requested at first. Again, the exact amount depends on too many variables to mention. But basically, this is the reason that reading a single byte at a time is still somewhat efficient (it would be another ~10x slower without readahead).

In the end, it's best to think of fread as giving some hints to the OS/filesystem about how many bytes you'll want to read. The more accurate those hints are (closer to the total amount of bytes you'll want to read), the better the OS/filesystem will optimize the disk IO.

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It depends how you are reading byte-by-byte. But there is a significant overhead to each call to fread (it probably needs to make an OS/kernel call).

If you call fread 1000 times to read 1000 bytes one by one then you pay that cost 1000 times; if you call fread once to read 1000 bytes then you only pay that cost once.

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sory , but this is still is not an answer . –  aseem Apr 26 '14 at 15:37
    
please specify more about the OS call and the cost associated . –  aseem Apr 26 '14 at 15:38

Consider what's physically happening with the disk. Every time you ask it to perform a read, its head must seek to the correct position and then wait for the right part of the platter to spin under it. If you do 100 separate 1-byte reads, you have to do that 100 times (as a first approximation; in reality the OS probably has a caching policy that's smart enough to figure out what you're trying to do and read ahead). But if you read 100 bytes one operation, and those bytes are roughly contiguous on the disk, you only have to do all this once.

Hans Passant's comment about caching is right on the money too, but even in the absence of that effect, I'd expect 1 bulk read operation to be faster than many small ones.

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very good observation ! –  aseem Apr 26 '14 at 16:12

Other contributors to the speed reduction are instruction pipeline reloads and databus contentions. Data cache misses are similar to the instruction pipeline reloads, so I am not presenting them here.

Function calls and Instruction Pipeline

Internally, the processor has an instruction pipeline in cache (fast memory physically near the processor). The processor will fill up the pipeline with instructions, then execute the instructions and fill up the pipeline again. (Note, some processors may fetch instructions as slots open up in the pipeline).

When a function call is executed, the processor encounters a branch statement. The processor can't fetch any new instructions into the pipeline until the branch is resolved. If the branch is executed, the pipeline may be reloading, wasting time. (Note: some processors can read in enough instructions into the cache so that no reading of instructions is necessary. An example is a small loop.)

Worst case, when you call the read function 1000 times, you are cause 1000 reloads of the instruction pipeline. If you call the read function once, the pipeline is only reloaded once.

Databus Collisions
Data flows through a databus from the hard drive to the processor, then from the processor to the memory. Some platforms allow for Direct Memory Access (DMA) from the hard drive to the memory. In either case, there is contention of multiple users with the data bus.

The most efficient use of the databus is send large blocks of data. When the user (component, such as the processor or DMA) wants to use the databus, the user must wait for it to become available. Worst case, another user is sending large blocks so there is a long delay. When sending 1000 bytes, one at a time, the User has to wait 1000 times for other Users to give up time with the databus.

Picture waiting in a queue (line) at a market or restaurant. You need to purchase many items, but you purchase one, then have to go back and wait in line again. Or you could be like other shoppers and purchase many items. Which consumes more time?

Summary
There are many reasons to use large blocks for I/O transfers. Some of the reasons are with the physical drive, others involve instruction pipelines, data caches, and databus contention. By reducing the quantity of data requests and increasing the data size, the accumulative time is also reduced. One request has a lot less overhead than 1000 requests. If the overhead is 1 millisecond, one request takes 1 millisecond, while 1000 requests take 1 second.

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