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CS 152 Computer Architecture and Engineering Lecture 7 - Memory Hierarchy-II Krste Asanovic Electrical Engineering and Computer Sciences University of California at Berkeley http://www.eecs.berkeley.edu/~krste http://inst.eecs.berkeley.edu/~cs152
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2/14/2008CS152-Spring’08 2 Last time in Lecture 6 Dynamic RAM (DRAM) is main form of main memory storage in use today –Holds values on small capacitors, need refreshing (hence dynamic) –Slow multi-step access: precharge, read row, read column Static RAM (SRAM) is faster but more expensive –Used to build on-chip memory for caches Caches exploit two forms of predictability in memory reference streams –Temporal locality, same location likely to be accessed again soon –Spatial locality, neighboring location likely to be accessed soon Cache holds small set of values in fast memory (SRAM) close to processor –Need to develop search scheme to find values in cache, and replacement policy to make space for newly accessed locations
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2/14/2008CS152-Spring’08 3 Relative Memory Cell Sizes [ Foss, “Implementing Application-Specific Memory”, ISSCC 1996 ] DRAM on memory chip On-Chip SRAM in logic chip
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2/14/2008CS152-Spring’08 4 Placement Policy 0 1 2 3 4 5 6 7 0 1 2 3 Set Number Cache Fully (2-way) Set Direct AssociativeAssociative Mapped anywhereanywhere in only into set 0 block 4 (12 mod 4) (12 mod 8) 0 1 2 3 4 5 6 7 8 9 1 1 1 1 1 1 1 1 1 1 0 1 2 3 4 5 6 7 8 9 2 2 2 2 2 2 2 2 2 2 0 1 2 3 4 5 6 7 8 9 3 0 1 Memory Block Number block 12 can be placed
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2/14/2008CS152-Spring’08 Direct-Mapped Cache TagData Block V = Block Offset TagIndex t k b t HIT Data Word or Byte 2 k lines
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2/14/2008CS152-Spring’08 2-Way Set-Associative Cache TagData Block V = Block Offset TagIndex t k b HIT TagData Block V Data Word or Byte = t
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2/14/2008CS152-Spring’08 Fully Associative Cache TagData Block V = Block Offset Tag t b HIT Data Word or Byte = = t
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2/14/2008CS152-Spring’08 8 Replacement Policy In an associative cache, which block from a set should be evicted when the set becomes full? Random Least Recently Used (LRU) LRU cache state must be updated on every access true implementation only feasible for small sets (2-way) pseudo-LRU binary tree often used for 4-8 way First In, First Out (FIFO) a.k.a. Round-Robin used in highly associative caches Not Least Recently Used (NLRU) FIFO with exception for most recently used block or blocks This is a second-order effect. Why? Replacement only happens on misses
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2/14/2008CS152-Spring’08 9 Word3Word0Word1Word2 Block Size and Spatial Locality Larger block size has distinct hardware advantages less tag overhead exploit fast burst transfers from DRAM exploit fast burst transfers over wide busses What are the disadvantages of increasing block size? block address offset b 2 b = block size a.k.a line size (in bytes) Split CPU address b bits 32-b bits Tag Block is unit of transfer between the cache and memory 4 word block, b=2
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2/14/2008CS152-Spring’08 10 CPU-Cache Interaction (5-stage pipeline) PC addr inst Primary Instruction Cache 0x4 Add IR D nop hit ? PCen Decode, Register Fetch wdata R addr wdata rdata Primary Data Cache we A B YY ALU MD1 MD2 Cache Refill Data from Lower Levels of Memory Hierarchy hit ? Stall entire CPU on data cache miss To Memory Control M E What about Instruction miss or writes to i-stream ?
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2/14/2008CS152-Spring’08 11 Improving Cache Performance Average memory access time = Hit time + Miss rate x Miss penalty To improve performance: reduce the hit time reduce the miss rate reduce the miss penalty What is the simplest design strategy?
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2/14/2008CS152-Spring’08 12 Causes for Cache Misses Compulsory: first-reference to a block a.k.a. cold start misses - misses that would occur even with infinite cache Capacity: cache is too small to hold all data needed by the program - misses that would occur even under perfect replacement policy Conflict: misses that occur because of collisions due to block-placement strategy - misses that would not occur with full associativity
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2/14/2008CS152-Spring’08 13 Effect of Cache Parameters on Performance Larger cache size Higher associativity Larger block size
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2/14/2008CS152-Spring’08 14 Write Policy Choices Cache hit: –write through: write both cache & memory »generally higher traffic but simplifies cache coherence –write back: write cache only (memory is written only when the entry is evicted) »a dirty bit per block can further reduce the traffic Cache miss: –no write allocate: only write to main memory –write allocate (aka fetch on write): fetch into cache Common combinations: –write through and no write allocate –write back with write allocate
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2/14/2008CS152-Spring’08 15 Write Performance Tag Data V = Block Offset TagIndex t k b t HIT Data Word or Byte 2 k lines WE
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2/14/2008CS152-Spring’08 16 Reducing Write Hit Time Problem: Writes take two cycles in memory stage, one cycle for tag check plus one cycle for data write if hit Solutions: Design data RAM that can perform read and write in one cycle, restore old value after tag miss Fully-associative (CAM Tag) caches: Word line only enabled if hit Pipelined writes: Hold write data for store in single buffer ahead of cache, write cache data during next store ’ s tag check
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2/14/2008CS152-Spring’08 17 Pipelining Cache Writes TagsData TagIndexStore Data Address and Store Data From CPU Delayed Write DataDelayed Write Addr. =? Load Data to CPU Load/Store L S 10 Hit? Data from a store hit written into data portion of cache during tag access of subsequent store
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2/14/2008CS152-Spring’08 18 CS152 Administrivia Krste, no office hours, Monday 2/18 (President’s Day Holiday) –email for alternate time Henry office hours, 511 Soda –None on Monday due to holiday –2:00-3:00PM Fridays In-class quiz dates –Q1: Tuesday February 19 (ISAs, microcode, simple pipelining) »Material covered, Lectures 1-5, PS1, Lab 1 We’re stuck in this room for semester (nothing else open)
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2/14/2008CS152-Spring’08 19 Write Buffer to Reduce Read Miss Penalty Processor is not stalled on writes, and read misses can go ahead of write to main memory Problem: Write buffer may hold updated value of location needed by a read miss Simple scheme: on a read miss, wait for the write buffer to go empty Faster scheme: Check write buffer addresses against read miss addresses, if no match, allow read miss to go ahead of writes, else, return value in write buffer Data Cache Unified L2 Cache RF CPU Write buffer Evicted dirty lines for writeback cache OR All writes in writethru cache
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2/14/2008CS152-Spring’08 Serial-versus-Parallel Cache and Memory access is HIT RATIO: Fraction of references in cache 1 - is MISS RATIO: Remaining references CACHE Processor Main Memory Addr Data Average access time for serial search: t cache + (1 - ) t mem CACHE Processor Main Memory Addr Data Average access time for parallel search: t cache + (1 - ) t mem Savings are usually small, t mem >> t cache, hit ratio high High bandwidth required for memory path Complexity of handling parallel paths can slow t cache
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2/14/2008CS152-Spring’08 21 Block-level Optimizations Tags are too large, i.e., too much overhead –Simple solution: Larger blocks, but miss penalty could be large. Sub-block placement (aka sector cache) –A valid bit added to units smaller than full block, called sub-blocks –Only read a sub-block on a miss –If a tag matches, is the word in the cache? 100 300 204 1 1 1 1 0 0 0 1
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2/14/2008CS152-Spring’08 22 Set-Associative RAM-Tag Cache Not energy-efficient –A tag and data word is read from every way Two-phase approach –First read tags, then just read data from selected way –More energy-efficient –Doubles latency in L1 –OK, for L2 and above, why? =? Tag Status Data Tag Index Offset
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2/14/2008CS152-Spring’08 23 Highly-Associative CAM-Tag Caches For high associativity (e.g., 32-way), use content-addressable memory (CAM) for tags (ARM, Intel XScale) Overhead: Tag+comparator bit 2-4x area of plain RAM-tag bit Only one set enabled Only hit data accessed – saves energy tag set index offset Tag =? Data Block Tag =? Data Block Tag =? Data Block Tag =? Data Block Tag =? Data Block Tag =? Data Block Tag =? Data BlockTag =? Data BlockTag =? Data Block Set 0 Set 1 Set i Hit?Data
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2/14/2008CS152-Spring’08 24 Victim Caches (HP 7200) L1 Data Cache Unified L2 Cache RF CPU Victim FA Cache 4 blocks Evicted data from L1 Evicted data From VC where ? Hit data from VC (miss in L1) Victim cache is a small associative back up cache, added to a direct mapped cache, which holds recently evicted lines First look up in direct mapped cache If miss, look in victim cache If hit in victim cache, swap hit line with line now evicted from L1 If miss in victim cache, L1 victim -> VC, VC victim->? Fast hit time of direct mapped but with reduced conflict misses
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2/14/2008CS152-Spring’08 25 Way Predicting Caches ( MIPS R10000 L2 cache ) Use processor address to index into way prediction table Look in predicted way at given index, then: HITMISS Return copy of data from cache Look in other way Read block of data from next level of cache MISS SLOW HIT (change entry in prediction table)
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2/14/2008CS152-Spring’08 26 Multilevel Caches A memory cannot be large and fast Increasing sizes of cache at each level CPU L1 L2 DRAM Local miss rate = misses in cache / accesses to cache Global miss rate = misses in cache / CPU memory accesses Misses per instruction = misses in cache / number of instructions
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2/14/2008CS152-Spring’08 27 Inclusion Policy Inclusive multilevel cache: –Inner cache holds copies of data in outer cache –External access need only check outer cache –Most common case Exclusive multilevel caches: –Inner cache may hold data not in outer cache –Swap lines between inner/outer caches on miss –Used in AMD Athlon with 64KB primary and 256KB secondary cache Why choose one type or the other?
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2/14/2008CS152-Spring’08 28 A Typical Memory Hierarchy c.2008 L1 Data Cache L1 Instruction Cache Unified L2 Cache RF Memory Multiported register file (part of CPU) Split instruction & data primary caches (on-chip SRAM) Multiple interleaved memory banks (off-chip DRAM) Large unified secondary cache (on-chip SRAM) CPU
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2/14/2008CS152-Spring’08 29 Itanium-2 On-Chip Caches (Intel/HP, 2002) Level 1, 16KB, 4-way s.a., 64B line, quad-port (2 load+2 store), single cycle latency Level 2, 256KB, 4-way s.a, 128B line, quad-port (4 load or 4 store), five cycle latency Level 3, 3MB, 12-way s.a., 128B line, single 32B port, twelve cycle latency
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2/14/2008CS152-Spring’08 30 Workstation Memory System (Apple PowerMac G5, 2003) Dual 2GHz processors, each has: 64KB I-cache, direct mapped 32KB D-cache, 2-way 512KB L2 unified cache, 8-way All 128B lines Up to 8GB DDR SDRAM, 400MHz, 128-bit bus, 6.4GB/s 1GHz, 2x32-bit bus, 16GB/s North Bridge Chip AGP Graphics Card, 533MHz, 32-bit bus, 2.1GB/s PCI-X Expansion, 133MHz, 64-bit bus, 1 GB/s
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2/14/2008CS152-Spring’08 31 Acknowledgements These slides contain material developed and copyright by: –Arvind (MIT) –Krste Asanovic (MIT/UCB) –Joel Emer (Intel/MIT) –James Hoe (CMU) –John Kubiatowicz (UCB) –David Patterson (UCB) MIT material derived from course 6.823 UCB material derived from course CS252
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