CSC/ECE 506 Spring 2012/10a jp: Difference between revisions

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Additional issues, for example, came about with the increasing popularity of multicore architectures.  In a single core architecture, prefetching requests are able to originate simply from one core.  With multiple cores, prefetching requests can originate from a variety of different cores.  This puts additional stress on memory to not only deal with regular prefetch requests but also to handle prefetch from different sources, thus greatly increasing the overhead and complexity of logic.  Additionally, coherence algorithms must account not only for typical sequential consistency issues, but also account for the possibility of data in yet another location, the location of prefetched data.  Flushing data becomes significantly more complicated and cumbersome.
Additional issues, for example, came about with the increasing popularity of multicore architectures.  In a single core architecture, prefetching requests are able to originate simply from one core.  With multiple cores, prefetching requests can originate from a variety of different cores.  This puts additional stress on memory to not only deal with regular prefetch requests but also to handle prefetch from different sources, thus greatly increasing the overhead and complexity of logic.  Additionally, coherence algorithms must account not only for typical sequential consistency issues, but also account for the possibility of data in yet another location, the location of prefetched data.  Flushing data becomes significantly more complicated and cumbersome.


Lastly
Lastly, and most importantly, is the following ongoing conflict:  If prefetched data is stored in the data cache, then cache conflict (or cache pollution), can become a significant burden.  This is because the current and predictive sets of data must exist in the cache at the same time.  Without prefetching, you could use some of this additional space to simply increase the cache size itself.  The solution here would be to add extra hardware to act as a buffer to prevent utilizing this cache space.  This, however, requires extra hardware and utilizes precious CPU space at a time when cost pressures in the PC world were becoming more acute.


=='''Future of Prefetching'''==
=='''Future of Prefetching'''==

Revision as of 14:45, 4 April 2012

Prefetching and Consistency Models

Introduction

Buffering and pipelining are attractive techniques for hiding the latency of memory accesses in large scale shared-memory multiprocessors. However, the unconstrained use of these techniques can result in an intractable programming model for the machine. Consistency models provide more tractable programming models by introducing various restrictions on the amount of buffering and pipelining allowed. Several memory consistency models have been proposed in the literature. The strictest model is sequential consistency (which requires the execution of a parallel program to appear as some interleaving of the execution of the parallel processes on a sequential machine.Sequential consistency imposes severe restrictions on buffering and pipelining of memory accesses. One of the least strict models is release consistency (RC) , which allows significant overlap of memory accesses given synchronization accesses are identified and classified into acquires and releases. Other relaxed models that have been discussed in the literature are processor consistency (PC), weak consistency (WC), and data-race-free-0 (DRF0). These models fall between sequential and release consistency models in terms of strictness.

Prefetching

The delay constraints imposed by a consistency model limit the amount of buffering and pipelining among memory accesses. Prefetching provides one method for increasing performance by partially proceeding with an access that is delayed due to consistency model constraints. Prefetches can be initiated either by an explicit fetch operation within a program, by logic that monitors the processor’s referencing pattern to infer prefetching, or by a combination of these approaches. However they are initiated, prefetches must be issued in a timely manner. If a prefetch is issued too early there is a chance that the prefetched data will displace other useful data from the higher levels of the memory hierarchy or be displaced itself before use. If the prefetch is issued too late, it may not arrive before the actual memory reference and thereby introduce processor stall cycles. Software prefetching issues fetches only for data that is likely to be used while hardware schemes tend data in a more speculative manner.

The decision of where to place prefetched data in the memory hierarchy is a fundamental design decision. Clearly, data must be moved into a higher level of the memory hierarchy to provide a performance benefit. The majority of schemes place prefetched data in some type of cache memory. Other schemes place prefetched data in dedicated buffers to protect the data from premature cache evictions and prevent cache pollution. When prefetched data are placed into named locations, such as processor registers or memory, the prefetch is said to be binding and additional constraints must be imposed on the use of the data. Finally, multiprocessor systems can introduce additional levels into the memory hierarchy which must be taken into consideration.Data can be prefetched in units of single words, cache blocks, contiguous blocks of memory or program data objects. Often, the amount of data fetched is determined by the organization of the underlying cache and memory system. Cache blocks may be the most appropriate size for uniprocessors and Symmetric Multiprocessors (SMPs) while larger memory blocks may be used to amortize the cost of initiating a data transfer across an interconnection network of a large, distributed memory multiprocessor.


===Description<ref>Two Techniques to Enhance the Performance of Memory Consistency Models by Kourosh Gharachorloo, Anoop Gupta, and John Hennessy </ref>===

Prefetching can be classified based on whether it is binding or non-binding, and whether it is controlled by hardware or software. With a binding prefetch, the value of a later reference (e.g., a register load) is bound at the time the prefetch completes. This places restrictions on when a binding prefetch canbe issued, since the value will become stale if another processor modifies the location during the interval between prefetch and reference. Hardware cache-coherent architectures, such as the Stanford DASH multiprocessor, can provide prefetching that is non-binding. With a non-binding prefetch, the data is brought close to the processor (e.g., into the cache) and is kept coherent until the processor actually reads the value. Thus, non-binding prefetching does not affect correctness for any of the consistency models and can be used as simply a performance boosting technique. The technique described in this section assumes hardware-controlled non-binding prefetch.

Prefetching can enhance performance by partially servicing large latency accesses that are delayed due to consistency model constraints. For a read operation, a read prefetch can be used to bring the data into the cache in a read-shared state while the operation is delayed due to consistency constraints. Since the prefetch is non-binding, we are guaranteed that the read operation will return a correct value once it is allowed to perform, regardless of when the prefetch completed. In the majority of cases, we expect the result returned by the prefetch to be the correct result. The only time the result may be different is if the location is written to between the time the prefetch returns the value and the time the read is allowed to perform. In this case, the prefetched location would either get invalidated or updated, depending on the coherence scheme. If invalidated, the read operation will miss in the cache and access the new value from the memory system, as if the prefetch never occurred. In the case of an update protocol, the location is kept up-to-date, thus providing the new value to the read operation.

For a write operation, a read-exclusive prefetch can be used to acquire exclusive ownership of the line, enabling the write to that location to complete quickly once it is allowed to perform. A read-exclusive prefetch is only possible if the coherence scheme is invalidation-based. Similar to the read prefetch case, the line is invalidated if another processor writes to the location between the time the read-exclusive prefetch completes and the actual write operation is allowed to proceed. In addition, exclusive ownership is surrendered if another processor reads the location during that time.


===Software Implementation<ref>Fu, J.W.C. and J.H. Patel, “Data Prefetching in Multiprocessor Vector Cache Memories,” Proc. 18th International Symposium on Computer Architecture, Toronto, Ont., Canada, May 1991, p. 54-63.</ref>===

Figure 3:Inner product calculation using a) no prefetching, b) simple prefetching, c)prefetching with loop unrolling and d) software pipelining.

Most contemporary microprocessors support some form of fetch instruction which can be used to implement prefetching. The implementation of a fetch can be as simple as a load into a processor register that has been hardwired to zero. Slightly more sophisticated implementations provide hints to the memory system as to how the prefetched block will be used. Such information may be useful in multiprocessors where data can be prefetched in different sharing states, for example, although particular implementations will vary, all fetch instructions share some common characteristics. Fetches are non-blocking memory operations and therefore require a lockup-free cache that allows prefetches to bypass other outstanding memory operations in the cache.

Prefetches are typically implemented in such a way that fetch instructions cannot cause exceptions. Exceptions are suppressed for prefetches to insure that they remain an optional optimization feature that does not affect program correctness or initiate large and potentially unnecessary overhead, such as page faults or other memory exceptions.The task of choosing where in the program to place a fetch instruction relative to the matching load or store instruction is known as prefetch scheduling.

Fetch instructions may be added by the programmer or by the compiler during an optimization pass. Unlike many optimizations which occur too frequently in a program or are too tedious to implement by hand, prefetch scheduling can often be done effectively by the programmer.Whether hand-coded or automated by a compiler, prefetching is most often used within loops responsible for large array calculations. Such loops provide excellent prefetching opportunities because they are common in scientific codes, exhibit poor cache utilization and often have predictable array referencing patterns. By establishing these patterns at compile-time, fetch instructions can be placed inside loop bodies so that data for a future loop iteration can be prefetched during the current iteration.

As an example of how loop-based prefetching may be used, consider the code segment shown in Figure 3a. This loop calculates the inner product of two vectors, a and b, in a manner similar to the innermost loop of a matrix multiplication calculation. If we assume a four-word cache block, this code segment will cause a cache miss every fourth iteration. We can attempt to avoid these cache misses by adding the prefetch directives shown in Figure 3b. Note that this figure is a source code representation of the assembly code that would be generated by the compiler.The code segment given in Figure 3c removes most cache misses and unnecessary prefetches but further improvements are possible. Note that cache misses will occur during the first iteration of the loop since prefetches are never issued for the initial iteration. Unnecessary prefetches will occur in the last iteration of the unrolled loop where the fetch commands attempt to access data past the loop index boundary. Both of the above problems can be remedied by using software pipelining techniques as shown in Figure 3d.<ref>Luk, C-K. and T.C. Mowry, “Compiler-based Prefetching for Recursive Data Structures,” Proc. 7th Conf. on Architectural Support for Programming Languages and Operating Systems, Cambridge, MA, October 1996, p. 222-233. </ref>

Hardware Implementation

====Simulated Processing Node Architecture<ref>Gornish, E.H., E.D. Granston and A.V. Veidenbaum, “Compiler-directed Data Prefetching in Multiprocessors with Memory Hierarchies,” Proc. International Conference on Supercomputing, Amsterdam, Netherlands, June 1990, p. 354-68.</ref>====

Figure 1:Interfacing in Simulated Processing Node Architecture


In contrast to software-controlled prefetching, the processors do not need to support specific prefetch instructions.The environment to which these processors are interfaced is shown in figure below.According to the figure, the processing node consists of a processor, a first-level cache (FLC), a second-level cache (SLC), a first- and second-level write buffer (FLWB and SLWB), a local bus, a network interface controller, and a memory module. The FLC is a direct-mapped write-through cache with no allocation of blocks on wirte misses and is blocking on read misses. The SLC is a direct-mapped write-back cache.For both prefetching techniques, we only prefetch into the SLC. In addition, SLWB keeps track of the outstanding requests ( SLC read miss, prefetch and write requests). The SLC controller deals with all the complexities of the cache coherence protocol and the prefetching mechanism.The SLC snoops on the local bus for consistency actions: if an invalidation to a block residing in the SLC is detected, the copy of teh block is invalidated in both the SLC and the FLC. Requests from the local bus have priority over those from the FLWB. These interferences with the processor accesses are tolerable because most accesses hit in the FLC. <ref>Sequential Hardware Prefetching in Shared-Memory Multiprocessors by Fredrik Dahlgren and Michel Dubois</ref>


====Sequential Prefetching<ref>Data Prefetch Mechanisms by Steven P. VanderWiel and David J. Lilja </ref>====

Figure 2:Three forms of sequential prefetching: a) Prefetch on miss, b) tagged prefetch and c) sequential prefetching with K = 2


Most (but not all) prefetching schemes are designed to fetch data from main memory into the processor cache in units of cache blocks. It should be noted, however, that multiple word cache blocks are themselves a form of data prefetching. By grouping consecutive memory words into single units, caches exploit the principle of spatial locality to implicitly prefetch data that is likely to be referenced in the near future. The degree to which large cache blocks can be effective in prefetching data is limited by the ensuing cache pollution effects. That is, as the cache block size increases, so does the amount of potentially useful data displaced from the cache to make room for the new block. In shared memory multiprocessors with private caches, large cache blocks may also cause false sharing which occurs when two or more processors wish to access different words within the same cache block and at least one of the accesses is a store. Although the accesses are logically applied to separate words, the cache hardware is unable to make this distinction since it operates only on whole cache blocks. The accesses are therefore treated as operations applied to a single object and cache coherence traffic is generated to ensure that the changes made to a block by a store operation are seen by all processors caching the block. In the case of false sharing, this traffic is unnecessary since only the processor executing the store references the word being written.

Increasing the cache block size increases the likelihood of two processors sharing data from the same block and hence false sharing is more likely to arise. Sequential prefetching can take advantage of spatial locality without introducing some of the problems associated with large cache blocks. The simplest sequential prefetching schemes are variations upon the one block lookahead (OBL) approach which initiates a prefetch for block b+1 when block b is accessed. For example, a large block may contain one word which is frequently referenced and several other words which are not in use. Assuming an LRU replacement policy, the entire block will be retained even though only a portion of the block’s data is actually in use. If this large block were replaced with two smaller blocks, one of them could be evicted to make room for more active data. The reason prefetch-on miss is less effective is illustrated in Figure beside where the behavior of each algorithm when accessing three contiguous blocks is shown. Here, it can be seen that a strictly sequential access pattern will result in a cache miss for every other cache block when the prefetchon-miss algorithm is used but this same access pattern results in only one cache miss when employing a tagged prefetch algorithm.

Prefetching on Multiprocessors

This subsection discusses the requirements that the prefetch technique imposes on a multiprocessor architecture. Let us first consider how the proposed prefetch technique can be incorporated into the processor environment. Assume the general case where the processor has a load and a store buffer. The usual way to enforce a consistency model is to delay the issue of accesses in the buffer until certain previous accesses complete. Prefetching can be incorporated in this framework by having the hardware automatically issue a prefetch (read prefetch for reads and read-exclusive prefetch for writes and atomic read-modify writes for accesses that are in the load or store buffer, but are delayed due to consistency constraints. A prefetch buffer may be used to buffer multiple prefetch requests. Prefetches can be retired from this buffer as fast as the cache and memory system allow.

A prefetch request first checks the cache to see whether the line is already present. If so, the prefetch is discarded. Otherwise the prefetch is issued to the memory system. When the prefetch response returns to the processor, it is placed in the cache. If a processor references a location it has prefetched before the result has returned, the reference request is combined with the prefetch request so that a duplicate request is not sent out and the reference completes as soon as the prefetch result returns. The prefetch technique discussed imposes several requirements on the memory system. Most importantly, the architecture requires hardware coherent caches. In addition, the location to be prefetched needs to be cachable. Also, to be effective for writes, prefetching requires an invalidation-based coherence scheme. In update-based schemes, it is difficult to partially service a write operation without making the new value available to other processors, which results in the write being performed.The strengths and weaknesses of hardware controlled non-binding prefetching are discussed in the next subsection.


Evolution of Prefetching

During the 1990s, one of the major developments in the computer industry was the very rapid increase in the speed of processors. Unfortunately, main memory access did not increase at nearly the same type of rate, thus giving a rather large advantage to the processor and the use of the cache vs RAM. Having to suffer a cache miss and access memory during this period threatened to undermine all the gains that were being achieved with these new processors. Thus, new techniques were required to keep data as close to the local processor as possible. Prefetching helped significantly with this issue. By having a good algorithm in place to properly identify blocks of memory that are likely to be needed in the near future, even though currently not stored in the cache, the bus latency necessary to locate data from main memory can decrease significantly and performance improved. We will explore some of the architectures utilizing prefetching and also give a discussion of the pitfalls and future of this cache performance technique.

Prefetching Models

Prefetching Results and Analysis

Prefetching Disadvantages

In time, however, with the turn of the century, a number of problems and challenges began to emerge with prefetching.

One common issue with prefetching has always been the increased complexity and overhead of handing the prefetching algorithms. There is great risk that this overhead can outweigh any benefits if the prefetching algorithm is not accurate, either fetching too early or fetching too late to be effective (as discussed in prior sections). Performance must be improved significantly to counterbalance this overhead and complexity or the efforts are not worthwhile.

Additional issues, for example, came about with the increasing popularity of multicore architectures. In a single core architecture, prefetching requests are able to originate simply from one core. With multiple cores, prefetching requests can originate from a variety of different cores. This puts additional stress on memory to not only deal with regular prefetch requests but also to handle prefetch from different sources, thus greatly increasing the overhead and complexity of logic. Additionally, coherence algorithms must account not only for typical sequential consistency issues, but also account for the possibility of data in yet another location, the location of prefetched data. Flushing data becomes significantly more complicated and cumbersome.

Lastly, and most importantly, is the following ongoing conflict: If prefetched data is stored in the data cache, then cache conflict (or cache pollution), can become a significant burden. This is because the current and predictive sets of data must exist in the cache at the same time. Without prefetching, you could use some of this additional space to simply increase the cache size itself. The solution here would be to add extra hardware to act as a buffer to prevent utilizing this cache space. This, however, requires extra hardware and utilizes precious CPU space at a time when cost pressures in the PC world were becoming more acute.

Future of Prefetching

References

<references></references>

Parallel computer architecture: a hardware/software approach. David E. Culler, Jaswinder Pal Singh, Anoop Gupta. http://www.nikolaylaptev.com/master/classes/cs254.pdf

http://www.multicoreinfo.com/prefetching-multicore-processors/

http://dl.acm.org/citation.cfm?id=1168892

http://www.cs.uwaterloo.ca/~brecht/courses/856/Possible-Readings/prefetching-to-cache/software-prefetching-p40-callahan.pdf

http://www.jilp.org/vol6/v6paper7.pdf

https://lwn.net/Articles/252125/

http://www.bergs.com/stefan/general/papers/general.pdf

http://ranger.uta.edu/~al-khaiy/cse3322_fall99/projects/paper/p9.pdf

http://www.hpcaconf.org/hpca11/papers/20_x_spracklen-prefetching-revised.pdf

http://ilab1.korea.ac.kr/papers/international_journal/Reducing%20cache%20conflicts%20in%20data%20cache%20prefetching.pdf