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Scalable Internet Services Cluster Lessons and Architecture Design for Scalable Services BR01, TACC, Porcupine, SEDA and Capriccio.

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Presentation on theme: "Scalable Internet Services Cluster Lessons and Architecture Design for Scalable Services BR01, TACC, Porcupine, SEDA and Capriccio."— Presentation transcript:

1 Scalable Internet Services Cluster Lessons and Architecture Design for Scalable Services BR01, TACC, Porcupine, SEDA and Capriccio

2 Ben Y. Zhaoravenben@cs.ucsb.edu Outline Overview of cluster services lessons from giant-scale services (BR01) SEDA (staged event-driven architecture) Capriccio

3 Ben Y. Zhaoravenben@cs.ucsb.edu Scalable Servers Clustered services natural platform for large web services search engines, DB servers, transactional servers Key benefit low cost of computing, COTS vs. SMP incremental scalability load balance traffic/requests across servers Extension from single server model reliable/fast communication, but partitioned data

4 Ben Y. Zhaoravenben@cs.ucsb.edu Goals Failure transparency hot-swapping components w/o loss of avail homogeneous functionality and/or replication Load balancing partition data / requests for max service rate need to colocate requests w/ associated data Scalability aggregate performance should scale w/# of servers

5 Ben Y. Zhaoravenben@cs.ucsb.edu Two Different Models Read-mostly data web servers, DB servers, search engines (query) replicate across servers + (RR DNS / redirector) IP Network (WAN) client Round Robin DNS

6 Ben Y. Zhaoravenben@cs.ucsb.edu Two Different Models … Read-write model mail servers, e-commerce sites, hosted services small(er) replication factor for stronger consistency IP Network (WAN) client Load Redirector

7 Ben Y. Zhaoravenben@cs.ucsb.edu Key Architecture Challenges Providing high availability availability across component failures Handling flash crowds / peak load need support for massive concurrency Other challenges upgradability: maintaining availability and minimal cost during upgrades in S/W, H/W, functionality error diagnosis: fast isolation of failures / performance degradation

8 Ben Y. Zhaoravenben@cs.ucsb.edu Nuggets Definition uptime = (MTBF – MTTR)/MTBF yield = queries completed / queries offered harvest = data available / complete data MTTR at least as important at MTBF much easier to tune and quantify DQ principle data/query x queries/second  constant physical bottlenecks limit overall throughput

9 Ben Y. Zhaoravenben@cs.ucsb.edu Staged Event-driven Architecture SEDA (SOSP’05)

10 Ben Y. Zhaoravenben@cs.ucsb.edu Break… Come back in 5 mins more on threads vs. events…

11 Ben Y. Zhaoravenben@cs.ucsb.edu Tapestry Software Architecture SEDA event-driven framework Java Virtual Machine Dynamic Tap. distance map core router application programming interface applications Patchwork network

12 Ben Y. Zhaoravenben@cs.ucsb.edu Impact of Correlated Events web / application servers independent requests maximize individual throughput Network ? ? ? ? ? ? ? A B C correlated requests: A+B+C  D e.g. online continuous queries, sensor aggregation, p2p control layer, streaming data mining event handler ++=

13 Ben Y. Zhaoravenben@cs.ucsb.edu Capriccio User-level light-weight threads (SOSP03) Argument threads are the natural programming model current problems result of implementation not fundamental flaw Approach aim for massive scalability compiler assistance linked stacks, block graph scheduling

14 Ben Y. Zhaoravenben@cs.ucsb.edu The Price of Concurrency Why is concurrency hard? Race conditions Code complexity Scalability (no O(n) operations) Scheduling & resource sensitivity Inevitable overload Performance vs. Programmability No good solution Performance Ease of Programming Threads Events Ideal

15 Ben Y. Zhaoravenben@cs.ucsb.edu The Answer: Better Threads Goals Simple programming model Good tools & infrastructure Languages, compilers, debuggers, etc. Good performance Claims Threads are preferable to events User-Level threads are key

16 Ben Y. Zhaoravenben@cs.ucsb.edu “But Events Are Better!” Recent arguments for events Lower runtime overhead Better live state management Inexpensive synchronization More flexible control flow Better scheduling and locality All true but… Lauer & Needham duality argument Criticisms of specific threads packages No inherent problem with threads!

17 Ben Y. Zhaoravenben@cs.ucsb.edu Criticism: Runtime Overhead Criticism: Threads don’t perform well for high concurrency Response Avoid O(n) operations Minimize context switch overhead Simple scalability test Slightly modified GNU Pth Thread-per-task vs. single thread Same performance!

18 Ben Y. Zhaoravenben@cs.ucsb.edu Criticism: Synchronization Criticism: Thread synchronization is heavyweight Response Cooperative multitasking works for threads, too! Also presents same problems Starvation & fairness Multiprocessors Unexpected blocking (page faults, etc.) Both regimes need help Compiler / language support for concurrency Better OS primitives

19 Ben Y. Zhaoravenben@cs.ucsb.edu Criticism: Scheduling Criticism: Thread schedulers are too generic Can’t use application-specific information Response 2D scheduling: task & program location Threads schedule based on task only Events schedule by location (e.g. SEDA) Allows batching Allows prediction for SRCT Threads can use 2D, too! Runtime system tracks current location Call graph allows prediction Task Program Location Threads Events

20 Ben Y. Zhaoravenben@cs.ucsb.edu The Proof’s in the Pudding User-level threads package Subset of pthreads Intercept blocking system calls No O(n) operations Support > 100K threads 5000 lines of C code Simple web server: Knot 700 lines of C code Similar performance Linear increase, then steady Drop-off due to poll() overhead 0 100 200 300 400 500 600 700 800 900 1 4 16 64 256 1024 4096 16384 KnotC (Favor Connections) KnotA (Favor Accept) Haboob Concurrent Clients Mbits / second

21 Ben Y. Zhaoravenben@cs.ucsb.edu Arguments For Threads More natural programming model Control flow is more apparent Exception handling is easier State management is automatic Better fit with current tools & hardware Better existing infrastructure

22 Ben Y. Zhaoravenben@cs.ucsb.edu Why Threads: control Flow Events obscure control flow For programmers and tools ThreadsEvents thread_main(int sock) { struct session s; accept_conn(sock, &s); read_request(&s); pin_cache(&s); write_response(&s); unpin(&s); } pin_cache(struct session *s) { pin(&s); if( !in_cache(&s) ) read_file(&s); } AcceptHandler(event e) { struct session *s = new_session(e); RequestHandler.enqueue(s); } RequestHandler(struct session *s) { …; CacheHandler.enqueue(s); } CacheHandler(struct session *s) { pin(s); if( !in_cache(s) ) ReadFileHandler.enqueue(s); else ResponseHandler.enqueue(s); }... ExitHandler(struct session *s) { …; unpin(&s); free_session(s); } Accept Conn. Write Response Read File Read Request Pin Cache Web Server Exit

23 Ben Y. Zhaoravenben@cs.ucsb.edu ThreadsEvents thread_main(int sock) { struct session s; accept_conn(sock, &s); read_request(&s); pin_cache(&s); write_response(&s); unpin(&s); } pin_cache(struct session *s) { pin(&s); if( !in_cache(&s) ) read_file(&s); } CacheHandler(struct session *s) { pin(s); if( !in_cache(s) ) ReadFileHandler.enqueue(s); else ResponseHandler.enqueue(s); } RequestHandler(struct session *s) { …; CacheHandler.enqueue(s); }... ExitHandler(struct session *s) { …; unpin(&s); free_session(s); } AcceptHandler(event e) { struct session *s = new_session(e); RequestHandler.enqueue(s); } Events obscure control flow For programmers and tools Accept Conn. Write Response Read File Read Request Pin Cache Web Server Exit Why Threads: control Flow

24 Ben Y. Zhaoravenben@cs.ucsb.edu Why Threads: Exceptions Exceptions complicate control flow Harder to understand program flow Cause bugs in cleanup code Accept Conn. Write Response Read File Read Request Pin Cache Web Server Exit ThreadsEvents thread_main(int sock) { struct session s; accept_conn(sock, &s); if( !read_request(&s) ) return; pin_cache(&s); write_response(&s); unpin(&s); } pin_cache(struct session *s) { pin(&s); if( !in_cache(&s) ) read_file(&s); } CacheHandler(struct session *s) { pin(s); if( !in_cache(s) ) ReadFileHandler.enqueue(s); else ResponseHandler.enqueue(s); } RequestHandler(struct session *s) { …; if( error ) return; CacheHandler.enqueue(s); }... ExitHandler(struct session *s) { …; unpin(&s); free_session(s); } AcceptHandler(event e) { struct session *s = new_session(e); RequestHandler.enqueue(s); }

25 Ben Y. Zhaoravenben@cs.ucsb.edu Why Threads: State Management ThreadsEvents thread_main(int sock) { struct session s; accept_conn(sock, &s); if( !read_request(&s) ) return; pin_cache(&s); write_response(&s); unpin(&s); } pin_cache(struct session *s) { pin(&s); if( !in_cache(&s) ) read_file(&s); } CacheHandler(struct session *s) { pin(s); if( !in_cache(s) ) ReadFileHandler.enqueue(s); else ResponseHandler.enqueue(s); } RequestHandler(struct session *s) { …; if( error ) return; CacheHandler.enqueue(s); }... ExitHandler(struct session *s) { …; unpin(&s); free_session(s); } AcceptHandler(event e) { struct session *s = new_session(e); RequestHandler.enqueue(s); } Accept Conn. Write Response Read File Read Request Pin Cache Web Server Exit Events require manual state management Hard to know when to free Use GC or risk bugs

26 Ben Y. Zhaoravenben@cs.ucsb.edu Why Threads: Existing Infrastructure Lots of infrastructure for threads Debuggers Languages & compilers Consequences More amenable to analysis Less effort to get working systems

27 Ben Y. Zhaoravenben@cs.ucsb.edu Building Better Threads Goals Simplify the programming model Thread per concurrent activity Scalability (100K+ threads) Support existing APIs and tools Automate application-specific customization Mechanisms User-level threads Plumbing: avoid O(n) operations Compile-time analysis Run-time analysis

28 Ben Y. Zhaoravenben@cs.ucsb.edu Case for User-Level Threads Decouple programming model and OS Kernel threads Abstract hardware Expose device concurrency User-level threads Provide clean programming model Expose logical concurrency Benefits of user-level threads Control over concurrency model! Independent innovation Enables static analysis Enables application-specific tuning Threads App OS User

29 Ben Y. Zhaoravenben@cs.ucsb.edu Case for User-Level Threads Threads OS User App Decouple programming model and OS Kernel threads Abstract hardware Expose device concurrency User-level threads Provide clean programming model Expose logical concurrency Benefits of user-level threads Control over concurrency model! Independent innovation Enables static analysis Enables application-specific tuning Similar argument to the design of overlay networks

30 Ben Y. Zhaoravenben@cs.ucsb.edu Capriccio Internals Cooperative user-level threads Fast context switches Lightweight synchronization Kernel Mechanisms Asynchronous I/O (Linux) Efficiency Avoid O(n) operations Fast, flexible scheduling

31 Ben Y. Zhaoravenben@cs.ucsb.edu Safety: Linked Stacks The problem: fixed stacks Overflow vs. wasted space LinuxThreads: 2MB/stack Limits thread numbers The solution: linked stacks Allocate space as needed Compiler analysis Add runtime checkpoints Guarantee enough space until next check Fixed Stacks Linked Stack waste overflow

32 Ben Y. Zhaoravenben@cs.ucsb.edu Linked Stacks: Algorithm 5 4 2 6 3 3 2 3 Parameters MaxPath MinChunk Steps Break cycles Trace back chkpts limit MaxPath length Special Cases Function pointers External calls Use large stack MaxPath = 8

33 Ben Y. Zhaoravenben@cs.ucsb.edu Linked Stacks: Algorithm 5 4 2 6 3 3 2 3 MaxPath = 8 Parameters MaxPath MinChunk Steps Break cycles Trace back chkpts limit MaxPath length Special Cases Function pointers External calls Use large stack

34 Ben Y. Zhaoravenben@cs.ucsb.edu Linked Stacks: Algorithm 5 4 2 6 3 3 2 3 MaxPath = 8 Parameters MaxPath MinChunk Steps Break cycles Trace back chkpts limit MaxPath length Special Cases Function pointers External calls Use large stack

35 Ben Y. Zhaoravenben@cs.ucsb.edu Linked Stacks: Algorithm 5 4 2 6 3 3 2 3 MaxPath = 8 Parameters MaxPath MinChunk Steps Break cycles Trace back chkpts limit MaxPath length Special Cases Function pointers External calls Use large stack

36 Ben Y. Zhaoravenben@cs.ucsb.edu Linked Stacks: Algorithm 5 4 2 6 3 3 2 3 MaxPath = 8 Parameters MaxPath MinChunk Steps Break cycles Trace back chkpts limit MaxPath length Special Cases Function pointers External calls Use large stack

37 Ben Y. Zhaoravenben@cs.ucsb.edu Linked Stacks: Algorithm 5 4 2 6 3 3 2 3 MaxPath = 8 Parameters MaxPath MinChunk Steps Break cycles Trace back chkpts limit MaxPath length Special Cases Function pointers External calls Use large stack

38 Ben Y. Zhaoravenben@cs.ucsb.edu Special Cases Function pointers categorize f* by # and type of arguments “guess” which func will/can be called External functions users annotate trusted stack bounds on libs or (re)use a small # of large stack chunks Result use/reuse stack chunks much like VM can efficiently share stack chunks memory-touch benchmark, factor of 3 reduction in paging cost

39 Ben Y. Zhaoravenben@cs.ucsb.edu Scheduling: Blocking Graph Lessons from event systems Break app into stages Schedule based on stage priorities Allows SRCT scheduling, finding bottlenecks, etc. Capriccio does this for threads Deduce stage with stack traces at blocking points Prioritize based on runtime information Accept Write Read Open Web Server Close

40 Ben Y. Zhaoravenben@cs.ucsb.edu Resource-Aware Scheduling Track resources used along BG edges Memory, file descriptors, CPU Predict future from the past Algorithm Increase use when underutilized Decrease use near saturation Advantages Operate near the knee w/o thrashing Automatic admission control Accept Write Read Open Web Server Close

41 Ben Y. Zhaoravenben@cs.ucsb.edu Pitfalls What is the max amt of resource? depends on workload e.g.: disk thrashing depends on sequential or random seeks use early signs of thrashing to indicate max capacity Detecting thrashing only estimate using “productivity/overhead” productivity from guessing (threads created, files opened/closed)

42 Ben Y. Zhaoravenben@cs.ucsb.edu Thread Performance CapriccioCapriccio-notraceLinuxThreadsNPTL Thread Creation21.5 37.517.7 Context Switch0.560.240.710.65 Uncontested mutex lock0.04 0.140.15 Slightly slower thread creation Faster context switches Even with stack traces! Much faster mutexes Time of thread operations (microseconds)

43 Ben Y. Zhaoravenben@cs.ucsb.edu Runtime Overhead Tested Apache 2.0.44 Stack linking 78% slowdown for null call 3-4% overall Resource statistics 2% (on all the time) 0.1% (with sampling) Stack traces 8% overhead

44 Ben Y. Zhaoravenben@cs.ucsb.edu Microbenchmark: Producer / Consumer

45 Ben Y. Zhaoravenben@cs.ucsb.edu Web Server Performance

46 Ben Y. Zhaoravenben@cs.ucsb.edu Example of “Great Systems Paper” observe higher level issue threads vs. event programming abstraction use previous work (duality) to identify problem why are threads not as efficient as events? good systems design call graph analysis for linked stacks resource aware scheduling good execution full solid implementation analysis leading to full understanding of detailed issues cross-area approach (help from PL research)

47 Ben Y. Zhaoravenben@cs.ucsb.edu Acknowledgements Many slides “borrowed” from the respective talks / papers: Capriccio (Rob von Behren) SEDA (Matt Welsh) Brewer01: “Lessons…”


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