Rethinking Parallel Languages & Hardware: Memory Models Journey

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Reconsidering the intersection of parallel languages and hardware through the evolution of memory models over 20 years. From defining memory models to implications for concurrency semantics, this research advocates for a paradigm shift towards Illinois Deterministic Parallel Java and DeNovo architecture.


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  1. Memory Models: A Case for Rethinking Parallel Languages and Hardware Sarita V. Adve University of Illinois sadve@illinois.edu Acks: Mark Hill, Kourosh Gharachorloo, Jeremy Manson, Bill Pugh, Hans Boehm, Doug Lea, Herb Sutter, Vikram Adve, Rob Bocchino, Marc Snir, Byn Choi, Rakesh Komuravelli, Hyojin Sung Also a paper by S. V. Adve & H.-J. Boehm, To appear in CACM

  2. Memory Consistency Models Parallelism for the masses! Shared-memory most common Memory model = Legal values for reads

  3. Memory Consistency Models Parallelism for the masses! Shared-memory most common Memory model = Legal values for reads

  4. Memory Consistency Models Parallelism for the masses! Shared-memory most common Memory model = Legal values for reads

  5. Memory Consistency Models Parallelism for the masses! Shared-memory most common Memory model = Legal values for reads

  6. Memory Consistency Models Parallelism for the masses! Shared-memory most common Memory model = Legal values for reads

  7. 20 Years of Memory Models Memory model is at the heart of concurrency semantics 20 year journey from confusion to convergence at last! Hard lessons learned Implications for future Current way to specify concurrency semantics is too hard Fundamentally broken Must rethink parallel languages and hardware E.g., Illinois Deterministic Parallel Java, DeNovo architecture

  8. What is a Memory Model? Memory model defines what values a read can return Initially A=B=C=Flag=0 Thread 1 Thread 2 A = 26 while (Flag != 1) {;} B = 90 r1 = B r2 = A Flag = 1 90 26 0

  9. Memory Model is Key to Concurrency Semantics Interface between program and transformers of program Defines what values a read can return Dynamic optimizer Assembly C++ program Compiler Hardware Weakest system component exposed to the programmer Language level model has implications for hardware Interface must last beyond trends

  10. Desirable Properties of a Memory Model 3 Ps Programmability Performance Portability Challenge: hard to satisfy all 3 Ps Late 1980 s - 90 s: Largely driven by hardware Lots of models, little consensus 2000 onwards: Largely driven by languages/compilers Consensus model for Java, C++ (C, others ongoing) Had to deal with mismatches in hardware models Path to convergence has lessons for future

  11. Programmability SC [Lamport79] Programmability: Sequential consistency (SC) most intuitive Operations of a single thread in program order All operations in a total order or atomic But Performance? Recent (complex) hardware techniques boost performance with SC But compiler transformations still inhibited But Portability? Almost all h/w, compilers violate SC today SC not practical, but

  12. Next Best Thing SC Almost Always Parallel programming too hard even with SC Programmers (want to) write well structured code Explicit synchronization, no data races Thread 1 Thread 2 Lock(L) Lock(L) Read Data1 Write Data2 Unlock(L) Unlock(L) SC for such programs much easier: can reorder data accesses Data-race-free model [AdveHill90] SC for data-race-free programs No guarantees for programs with data races Read Data2 Write Data1

  13. Definition of a Data Race Distinguish between data and non-data (synchronization) accesses Only need to define for SC executions Two memory accesses form a race if From different threads, to same location, at least one is a write Occur one after another Thread 1 Thread 2 Write, A, 26 Write, B, 90 Read, Flag, 0 Write, Flag, 1 Read, Flag, 1 Read, B, 90 Read, A, 26 A race with a data access is a data race total order Data-race-free-program = No data race in any SC execution

  14. Data-Race-Free Model Data-race-free model = SC for data-race-free programs Does not preclude races for wait-free constructs, etc. Requires races be explicitly identified as synchronization E.g., use volatile variables in Java, atomics in C++ Dekker s algorithm Initially Flag1 = Flag2 = 0 volatile Flag1, Flag2 Thread1Thread2 Flag1 = 1 Flag2 = 1 if Flag2 == 0 if Flag1 == 0 //critical section //critical section SC prohibits both loads returning 0

  15. Data-Race-Free Approach Programmer s model: SC for data-race-free programs Programmability Simplicity of SC, for data-race-free programs Performance Specifies minimal constraints (for SC-centric view) Portability Language must provide way to identify races Hardware must provide way to preserve ordering on races Compiler must translate correctly

  16. 1990's in Practice (The Memory Models Mess) Hardware Implementation/performance-centric view Different vendors had different models most non-SC Alpha, Sun, x86, Itanium, IBM, AMD, HP, Cray, Various ordering guarantees + fences to impose other orders Many ambiguities - due to complexity, by design(?), High-level languages Most shared-memory programming with Pthreads, OpenMP Incomplete, ambiguous model specs Memory model property of language, not library [Boehm05] Java commercially successful language with threads Chapter 17 of Java language spec on memory model But hard to interpret, badly broken LD LD ST ST Fence LD ST LD ST

  17. 2000 2004: Java Memory Model ~ 2000: Bill Pugh publicized fatal flaws in Java model Lobbied Sun to form expert group to revise Java model Open process via mailing list Diverse participants Took 5 years of intense, spirited debates Many competing models Final consensus model approved in 2005 for Java 5.0 [MansonPughAdve POPL 2005]

  18. Java Memory Model Highlights Quick agreement that SC for data-race-free was required Missing piece: Semantics for programs with data races Java cannot have undefined semantics for ANY program Must ensure safety/security guarantees Limit damage from data races in untrusted code Goal: Satisfy security/safety, w/ maximum system flexibility Problem: safety/security, limited damage w/ threads very vague

  19. Java Memory Model Highlights Initially X=Y=0 Thread 1 Thread 2 r1 = X r2 = Y Y = r1 X = r2 Is r1=r2=42 allowed? Data races produce causality loop! Definition of a causality loop was surprisingly hard Common compiler optimizations seem to violate causality

  20. Java Memory Model Highlights Final model based on consensus, but complex Programmers can (must) use SC for data-race-free But system designers must deal with complexity Correctness tools, racy programs, debuggers, ?? Recent discovery of bugs [SevcikAspinall08]

  21. 2005 - :C++, Microsoft Prism, Multicore ~ 2005: Hans Boehm initiated C++ concurrency model Prior status: no threads in C++, most concurrency w/ Pthreads Microsoft concurrently started its own internal effort C++ easier than Java because it is unsafe Data-race-free is plausible model BUT multicore Mismatched h/w, programming views became painfully obvious Debate that SC for data-race-free inefficient w/ hardware models New h/w optimizations, more scrutiny

  22. Hardware Implications of Data-Race-Free Synchronization (volatiles/atomics) must appear SC Each thread s synch must appear in program order synch Flag1, Flag2 Thread 1 Thread 2 Flag1 = 1 Flag2 = 1 Fence Fence if Flag2 == 0 if Flag1 == 0 critical section critical section SC both reads cannot return 0 Requires efficient fences between synch stores/loads All synchs must appear in a total order (atomic)

  23. Implications of Atomic Synch Writes Independent reads, independent writes (IRIW): Initially X=Y=0 T1 T2 T3 T4 X = 1 Y = 1 = Y = X fence fence = X = Y 1 1 0 0 SC no thread sees new value until old copies invalidated Shared caches w/ hyperthreading/multicore make this harder Programmers don t usually use IRIW Why pay cost for SC in h/w if not useful to s/w?

  24. C++ Challenges 2006: Pressure to change Java/C++ to remove SC baseline To accommodate some hardware vendors But what is alternative? Must allow some hardware optimizations But must be teachable to undergrads Showed such an alternative (probably) does not exist

  25. C++ Compromise Default C++ model is data-race-free AMD, Intel, on board But Some systems need expensive fence for SC Some programmers really want more flexibility C++ specifies low-level model only for experts Complicates spec, but only for experts We are not advertising this part [BoehmAdve PLDI 2008]

  26. Summary of Current Status Convergence to SC for data-race-free as baseline For programs with data races Minimal but complex semantics for safe languages No semantics for unsafe languages

  27. Lessons Learned SC for data-race-free minimal baseline Specifying semantics for programs with data races is HARD But no semantics for data races also has problems Not an option for safe languages; debugging; correctness checking tools Hardware-software mismatch for some code Simple optimizations have unintended consequences State-of-the-art is fundamentally broken

  28. Lessons Learned SC for data-race-free minimal baseline Specifying semantics for programs with data races is HARD But no semantics for data races also has problems Not an option for safe languages; ebugging; correctness checking tools Hardware-software mismatch for some code Simple optimizations have unintended consequences State-of-the-art is fundamentally broken Banish shared-memory?

  29. Lessons Learned SC for data-race-free minimal baseline Specifying semantics for programs with data races is HARD But no semantics for data races also has problems Not an option for safe languages; debugging; correctness checking tools Hardware-software mismatch for some code Simple optimizations have unintended consequences State-of-the-art is fundamentally broken We need Higher-level disciplined models that enforce discipline Hardware co-designed with high-level models Banish wild shared-memory!

  30. Lessons Learned SC for data-race-free minimal baseline Specifying semantics for programs with data races is HARD But no semantics for data races also has problems Not an option for safe languages; debugging; correctness checking tools Hardware-software mismatch for some code Simple optimizations have unintended consequences State-of-the-art is fundamentally broken We need Higher-level disciplined models that enforce discipline Deterministic Parallel Java [V. Adve et al.] Banish wild shared-memory! Hardware co-designed with high-level models DeNovo hardware

  31. Research Agenda for Languages Disciplined shared-memory models Simple Enforceable Expressive Performance Key: What discipline? How to enforce it?

  32. Data-Race-Free A near-term discipline: Data-race-free Enforcement Ideally, language prohibits by design Else, runtime catches as exception But data-race-free still not sufficiently high level

  33. Deterministic-by-Default Parallel Programming Even data-race-free parallel programs are too hard Multiple interleavings due to unordered synchronization (or races) Makes reasoning and testing hard But many algorithms are deterministic Fixed input gives fixed output Standard model for sequential programs Also holds for many transformative parallel programs Parallelism not part of problem specification, only for performance Why write such an algorithm in non-deterministic style, then struggle to understand and control its behavior?

  34. Deterministic-by-Default Model Parallel programs should be deterministic-by-default Sequential semantics (easier than SC!) If non-determinism is needed should be explicitly requested should be isolated from deterministic parts Enforcement: Ideally, language prohibits by design Else, runtime

  35. State-of-the-art Many deterministic languages today Functional, pure data parallel, some domain-specific, Much recent work on runtime, library-based approaches Our work: Language approach for modern O-O methods Deterministic Parallel Java (DPJ) [V. Adve et al.]

  36. Deterministic Parallel Java (DPJ) Object-oriented type and effect system Use named regions to partition the heap Annotate methods with effect summaries: regions read or written If program type-checks, guaranteed deterministic * Simple, modular compiler checking * No run-time checks today, may add in future Side benefit: regions, effects are valuable documentation Extended sequential subset of Java (DPC++ ongoing) Initial evaluation for expressivity, performance [Oopsla09] Integrating disciplined non-determinism Encapsulating frameworks and unchecked code Semi-automatic tool for effect annotations [ASE09]

  37. Research Agenda for Hardware Current hardware not matched even to current model Near term: ISA changes, speculation Long term: Co-design hardware with new software models

  38. Illinois DeNovo Project Design hardware to exploit disciplined parallelism Simpler hardware Scalable performance Power/energy efficiency Working with DPJ as example disciplined model Exploit data-race-freedom, region/effect information * Simpler coherence * Efficient communication: point to point, bulk, * Efficient data layout: region vs. cache line centric memory * New hardware/software interface

  39. Cache Coherence Commonly accepted definition (software-oblivious) All writes to the same location appear in the same order Source of much complexity Coherence protocols to scale to 1000 cores? What do we really need (software-aware)? Get the right data to the right task at the right time Disciplined models make it easier to determine what is right (Assume only for-each loops) Read must return value of Last write in its own task or Last write in previous for-each loop

  40. Today's Coherence Protocols Snooping Broadcast, ordered networks Directory avoid broadcast through level of indirection Complexity: Races in protocol Performance: Level of indirection Overhead: Sharer list

  41. Today's Coherence Protocols Snooping Broadcast, ordered networks Directory avoid broadcast through level of indirection Complexity: Races in protocol Race-free software race-free coherence protocol Performance: Level of indirection But definition of coherence no longer requires serialization Overhead: Sharer list Region-effects enable self-invalidations + No false sharing, flexible communication granularity, region based data layout Simpler, more efficient DeNovo protocol

  42. Conclusions Current way to specify concurrency semantics fundamentally broken Best we can do is SC for data-race-free * But cannot hide from programs with data races Mismatched hardware-software * Simple optimizations give unintended consequences Need High-level disciplined models that enforce discipline Hardware co-designed with high-level model DPJ deterministic-by-default parallel programming DeNovo hardware for disciplined parallel programming Previous memory models convergence from similar process But this time, let s co-design s/w, h/w

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