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.
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?
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.