In computing, the producer-consumer problem (also known as the bounded-buffer problem) is a classic example of a multi-process synchronization problem. The problem describes two processes, the producer and the consumer, who share a common, fixed-size buffer used as a queue. The producer's job is to generate data, put it into the buffer, and start again. At the same time, the consumer is consuming the data (i.e., removing it from the buffer), one piece at a time. The problem is to make sure that the producer won't try to add data into the buffer if it's full and that the consumer won't try to remove data from an empty buffer.
The solution for the producer is to either go to sleep or discard data if the buffer is full. The next time the consumer removes an item from the buffer, it notifies the producer, who starts to fill the buffer again. In the same way, the consumer can go to sleep if it finds the buffer to be empty. The next time the producer puts data into the buffer, it wakes up the sleeping consumer. The solution can be reached by means of inter-process communication, typically using semaphores. An inadequate solution could result in a deadlock where both processes are waiting to be awakened. The problem can also be generalized to have multiple producers and consumers.
Video Producer-consumer problem
Inadequate implementation
To solve the problem, some programmer might come up with a solution shown below. In the solution two library routines are used, sleep
and wakeup
. When sleep is called, the caller is blocked until another process wakes it up by using the wakeup routine. The global variable itemCount
holds the number of items in the buffer.
The problem with this solution is that it contains a race condition that can lead to a deadlock. Consider the following scenario:
- The consumer has just read the variable
itemCount
, noticed it's zero and is just about to move inside theif
block. - Just before calling sleep, the consumer is interrupted and the producer is resumed.
- The producer creates an item, puts it into the buffer, and increases
itemCount
. - Because the buffer was empty prior to the last addition, the producer tries to wake up the consumer.
- Unfortunately the consumer wasn't yet sleeping, and the wakeup call is lost. When the consumer resumes, it goes to sleep and will never be awakened again. This is because the consumer is only awakened by the producer when
itemCount
is equal to 1. - The producer will loop until the buffer is full, after which it will also go to sleep.
Since both processes will sleep forever, we have run into a deadlock. This solution therefore is unsatisfactory.
An alternative analysis is that if the programming language does not define the semantics of concurrent accesses to shared variables (in this case itemCount
) without use of synchronization, then the solution is unsatisfactory for that reason, without needing to explicitly demonstrate a race condition.
Maps Producer-consumer problem
Using semaphores
Semaphores solve the problem of lost wakeup calls. In the solution below we use two semaphores, fillCount
and emptyCount
, to solve the problem. fillCount
is the number of items already in the buffer and available to be read, while emptyCount
is the number of available spaces in the buffer where items could be written. fillCount
is incremented and emptyCount
decremented when a new item is put into the buffer. If the producer tries to decrement emptyCount
when its value is zero, the producer is put to sleep. The next time an item is consumed, emptyCount
is incremented and the producer wakes up. The consumer works analogously.
The solution above works fine when there is only one producer and consumer. With multiple producers sharing the same memory space for the item buffer, or multiple consumers sharing the same memory space, this solution contains a serious race condition that could result in two or more processes reading or writing into the same slot at the same time. To understand how this is possible, imagine how the procedure putItemIntoBuffer()
can be implemented. It could contain two actions, one determining the next available slot and the other writing into it. If the procedure can be executed concurrently by multiple producers, then the following scenario is possible:
- Two producers decrement
emptyCount
- One of the producers determines the next empty slot in the buffer
- Second producer determines the next empty slot and gets the same result as the first producer
- Both producers write into the same slot
To overcome this problem, we need a way to make sure that only one producer is executing putItemIntoBuffer()
at a time. In other words, we need a way to execute a critical section with mutual exclusion. The solution for multiple producers and consumers is shown below.
Notice that the order in which different semaphores are incremented or decremented is essential: changing the order might result in a deadlock. It is important to note here that though mutex seems to work as a semaphore with value of 1 (binary semaphore), but there is difference in the fact that mutex has ownership concept. Ownership means that mutex can only be "incremented" back (set to 1) by the same process that "decremented" it (set to 0), and all others tasks wait until mutex is available for decrement (effectively meaning that resource is available), which ensures mutual exclusivity and avoids deadlock. Thus using mutexes improperly can stall many processes when exclusive access is not required, but mutex is used instead of semaphore.
Using monitors
The following pseudo code shows a solution to the producer-consumer problem using monitors. Since mutual exclusion is implicit with monitors, no extra effort is necessary to protect the critical section. In other words, the solution shown below works with any number of producers and consumers without any modifications. It is also noteworthy that using monitors makes race conditions much less likely than when using semaphores.
Without semaphores or monitors
The producer-consumer problem, particularly in the case of a single producer and single consumer, strongly relates to implementing a FIFO or a channel. The producer-consumer pattern can provide highly efficient data communication without relying on semaphores, mutexes, or monitors for data transfer. Use of those primitives can give performance issues as they are expensive to implement. Channels and FIFOs are popular just because they avoid the need for end-to-end atomic synchronization. A basic example coded in C is shown below. Note that:
- Atomic read-modify-write access to shared variables is avoided, as each of the two
Count
variables is updated only by a single thread. Also, these variables stay incremented all the time; the relation remains correct when their values wrap around on an integer overflow. - This example does not put threads to sleep, which may be acceptable depending on the system context. The
schedulerYield()
is there just to behave nicely and could be removed. Thread libraries typically require semaphores or condition variables to control the sleep/wakeup of threads. In a multi-processor environment, thread sleep/wakeup would occur much less frequently than passing of data tokens, so avoiding atomic operations on data passing is beneficial. - This example does not work for multiple producers and/or consumers because there is a race condition when checking the state. For example, if only one token is in the storage buffer and two consumers find the buffer non-empty, then both will consume the same token and possibly increase the count of consumed tokens over produced counter.
- This example, as written, requires that
UINT_MAX + 1
is evenly divisible byBUFFER_SIZE
; if it is not evenly divisible,[Count % BUFFER_SIZE]
produces the wrong buffer index afterCount
wraps pastUINT_MAX
back to zero. An alternate solution without this restriction would employ two additionalIdx
variables to track the current buffer index for the head (producer) and tail (consumer). TheseIdx
variables would be used in place of[Count % BUFFER_SIZE]
, and each of them would have to be incremented at the same time as the respectiveCount
variable is incremented, as follows:Idx = (Idx + 1) % BUFFER_SIZE
.
See also
- Atomic operation
- Design pattern
- FIFO
- Pipeline
- Implementation in Java: Java Message Service
References
Further reading
- Mark Grand Patterns in Java, Volume 1, A Catalog of Reusable Design Patterns Illustrated with UML
- C/C++ Users Journal (Dr.Dobb's) January 2004, "A C++ Producer-Consumer Concurrency Template Library", by Ted Yuan, is a ready-to-use C++ template library. The small template library source code and examples can be found here
Source of the article : Wikipedia