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Communication-Centric Design Robert Mullins Computer Architecture Group Computer Laboratory, University of Cambridge (University of Twente, December 11th 2006) Convergence to flexible parallel architectures • Power Efficient – Better match application characteristics (streaming, coarse-grain parallelism…) – Constraint-driven execution Embedded GPUs Processors FPGAs Multi-Core Processors SoC Platforms ? • Simple – – – – Increased regularity S/W programmable Limited core/tile set Ease verification issues • Flexible – Multi-use platform 2 Performance from Parallelism • Shift to multi-core processors has begun. • Performance is boosted in complexity and power effective manner • Latencies on-chip are much lower than in previous parallel machines. This should make programming easier + new oppurtinities • Easy to increase number of cores as underlying fabrication technology scales • Simply an engineering problem? 3 Multi-core Showstoppers! • As the number of cores increase current interconnection network designs would require an unacceptable fraction of the chip power budget • Attempts at exploiting low-latency on-chip communication are mitigated by complex network interfaces (old problem) and routers • Today’s programming models provide little hope of efficiently exploiting a large degree of on-chip parallelism (for the average programmer) – related to N.I. problem • Power constraints will be such that only a small percentage of the transistors may be active at once! Why are 100’s of identical cores useful? • New interconnection network solutions are critical to making multi- and many-core chips work • Power limits imply heterogeneity in some form? 4 Our Group’s Research • Now: support evolution of existing platforms Embedded GPUs Processors FPGAs Multi-Core Processors SoC Platforms ? – Low-latency and low-power on-chip networks – System-timing considerations – Networking communications within FPGAs – Flexible networked SoC systems, virtual IP – On-chip serial interconnects – Multi-wavelength optical communication (off-chip) – Fault tolerant design • Future: – Networks of processors to processing networks – Processing Fabrics 5 Low-Latency Virtual-Channel Packet-Switched Routers • Goal was to develop a virtual-channel network for a tiled processor architecture • Collaboration with Krste Asanović’s SCALE group at MIT • Problem faced is rising interconnect costs • Networking communications can increase communication latencies by an order of magnitude or more! 6 The Lochside test chip (2004/5) • UMC 0.18um Process • 4x4 mesh network, 25mm2 • Single Cycle Routers (router + link = 1 clock) • May be clocked by both traditional H-tree and DCG • 4 virtual-channels/input • 80-bit links TILE – 64-bit data + 16-bit control • 250MHz (worst-case PVT) 16Gb/s/channel (~35 FO4) • Approx 5M transistors Mullins, West and Moore (ISCA’04, ASP-DAC’06) Traffic Generator, Debug & Test R 7 Virtual-Channel Flow Control 8 Typical Router Pipeline • Router pipeline depth limits minimum latency – Even under low traffic conditions – Can make packet buffers less effective – Incurs pipelining overheads 9 Speculative Router Architecture • VC and switch allocation may be performed concurrently: – Speculate that waiting packets will be successful in acquiring a VC – Prioritize non-speculative requests over speculative ones Li-Shiuan Peh and William J. Dally, “A Delay Model and Speculative Architecture for Pipelined Routers”, In Proceedings HPCA’01, 2001. 10 Single Cycle Speculative Router 11 12 13 Single Cycle Router Architecture • Once speculation mechanism is in place a range of accuracy/cycle-time trade-offs can be made – Blocked VC, pipeline and speculate – use low priority switch scheduler – Switch and VC next request calculation • Don’t bother calculating next switch requests just use current set. Safe to be pessimistic about what has been granted. • Need to be more accurate for VC allocation – Abort logic accuracy 14 Single Cycle Router Architecture • Decreasing accuracy often leads to poorer schedule and more aborts but reduces the router’s cycle time • Impact of speculation on single cycle router: – 10% more cycles on average – clock period reduced by factor of 1.6 – Network latency reduced by a factor of ~1.5 • Need to be careful about updating arbiter state correctly after speculation outcome is known 15 Lochside Router Clock Period 5-port router 4 VCs per port 64-bit links, ~1.5mm 90nm technology 30-35 FO4 delays (~800MHz) 100% standard cell FF/Clocking FIFOs/Control/Datapath Link • • • • 23% (8.3 FO4) 53% (19 FO4) 22% (7.9 FO4) range 4.6-7.9 Could move to router/link pipeline Option to pipeline control - maintaining single cycle best case Impact of technology scaling Scalability: doubling VCs to 8, only adds ~10% to cycle time 16 Router Power Optimisation • Local and global clock gating & signal gating – Global clock gating exploits early-request signals from neighbouring routers – Slightly pessimistic (based on what is requested not granted) – Factor 2-4 reduction power consumption • Peak 0.15mW/Mhz (0.35 unopt.) • Low Random 0.06mW/Mhz (0.27 unopt.) Mullins, SoC’06 17 Analysis of Power Consumption • • • • 22% Static power 11% Inter-Router Links ~1% Global Clock tree 65% Dynamic Power } Due to increase as % as technology scales – Power Breakdown • ~50% local clock tree and input FIFOs • ~30% on router datapath • ~20% on scheduling and arbitration (Low random traffic case) 18 Distributed Clock Generator (DCG) • Exploits self-timed circuitry to generate a clock in a distributed fashion • Low-skew and lowpower solution to providing global synchrony • Mesh topology • Simple proof of concept provided by Lochside test chip S. Fairbanks and S. Moore “Self-timed circuitry for global clocking”, ASYNC’05 19 Beyond global synchrony • Clock distribution issues – Challenge as network is physically distributed • Increasing process variation • Synchronization – Core clock frequencies may vary, perhaps adaptively – Link and router DVS or other energy/perf. trade-offs • Selecting a global network clock frequency – Run at maximum frequency continuously? – Use a multitude of network clock frequencies? – Select a global compromise? 20 Beyond Global Synchrony • A complete spectrum of approaches to system-timing exist Timing Assumptions Global Synchronous Local Clocks, Interaction with data (becoming aperiodic) None Delay Insensitive Less Detection 21 Data-Driven and Pausible Clocks Mullins/Moore, ASYNC’07 22 Example: AsAP project (UC Davis, 2006) Yu et al, ISSCC’06 23 Example: MAIA chip (Berkeley, 2000) • GALS architecture, data-flow driven processing elements (“satellites”) Zhang et al, ISSCC’00 24 Data-Driven Clocking for On-Chip Routers • Router should be clocked when one or more inputs are valid (or flits are buffered) • Free running (paternoster) elevator – Chain of open compartments – Must synchronise before you jump on! • Traditional elevator – Wait for someone to arrive – Close doors, decide who is in and who is out – Metastability issue again (potentially painful!) 25 Data-Driven Clock Implementation Incoming data Sample inputs when at least one input is ready (and clock is low) Either admitted or locked out Local Clock Generator Template Assert Lock (Close Lift Doors) 26 Data-driven clocking benefits Self-timed power gating? DI barrier synchronisation and scheduling extensions NO GLOBAL CLOCK 27 Networks of processors to processing networks Embedded GPUs Processors FPGAs Multi-Core Processors ? • How will on-chip networks and cores evolve over time? SoC Platforms 28 Evolving towards processing networks Increased flexibility to optimise computation and communication – Network of Processors – Number of processors increase – Core architectures tailored to “many-core” environment – Remove hard tile boundaries • Why fix granularity of cores, communication and memory hierarchies? – Move away from processor + router model • Everything is on the network, we need much thinner network interfaces • Richer interconnection of components, increased flexibility – Add network-based services • Network aids collaboration, focuses resources, supports dynamic optimisations, scheduling, … • Tailor virtual architecture to application – Processing Network or Fabric 29 Thank You. • 2006 Workshop on On- and Off-Chip Interconnection Networks for Multicore Systems http://www.ece.ucdavis.edu/~ocin06/ (Videos of talks and working group feedback are on-line) • Computer Architecture: A Quantitative Approach, 4th Edition, Appendix E, entitled Interconnection Networks. http://ceng.usc.edu/smart/slides/appendixE.html • Principles and Practices of Interconnection Networks by William James Dally, Brian Patrick Towles • On-chip network bibliography and resources: http://www.cl.cam.ac.uk/~rdm34/onChipNetBib/noc.html 30