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Capriccio: Scalable Threads for Internet Services

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Capriccio: Scalable Threads for Internet Services Rob von Behren, Jeremy Condit, Feng Zhou, Geroge Necula and Eric Brewer University of California at Berkeley – PowerPoint PPT presentation

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Title: Capriccio: Scalable Threads for Internet Services


1
Capriccio Scalable Threads for Internet Services
  • Rob von Behren, Jeremy Condit, Feng Zhou, Geroge
    Necula and Eric Brewer
  • University of California at Berkeley
  • Presenter Olusanya Soyannwo

2
Outline
  • Motivation
  • Background
  • Goals
  • Approach
  • Experiments
  • Results
  • Related work
  • Conclusion Future work

EECS Advanced Operating Systems
Northwestern University
3
Motivation
  • Increasing scalability demands for Internet
    services
  • Hardware improvements are limited by existing
    software
  • Current implementations are event based

EECS Advanced Operating Systems
Northwestern University
4
Background Event Based Systems - Drawbacks
  • Events systems hide the control flow
  • Difficult to understand and debug
  • Programmers need to match related events
  • Burdens programmers

EECS Advanced Operating Systems
Northwestern University
5
Goals Capriccio
  • Support for existing thread API
  • Scalability to hundreds of thousands of threads
  • Automate application-specific customization

EECS Advanced Operating Systems
Northwestern University
6
Approach Capriccio
  • Thread package
  • Cooperative scheduling
  • Linked stacks
  • Address the problem of stack allocation for large
    numbers of threads
  • Combination of compile-time and run-time analysis
  • Resource-aware scheduler

EECS Advanced Operating Systems
Northwestern University
7
Approach User Level Thread The Choice
  • POSIX API
  • (-)Complex preemption
  • (-)Bad interaction with Kernel scheduler
  • Performance
  • Ease thread synchronization overhead
  • No kernel crossing for preemptive threading
  • More efficient memory management at user level
  • Flexibility
  • Decoupling user and kernel threads allows faster
    innovation
  • Can use new kernel thread features without
    changing application code
  • Scheduler tailored for applications

EECS Advanced Operating Systems
Northwestern University
8
Approach User Level Thread Disadvantages
  • Additional Overhead
  • Replacing blocking calls with non-blocking calls
  • Multiple CPU synchronization

EECS Advanced Operating Systems
Northwestern University
9
Approach User Level Thread Implementation
  • Context Switches
  • Built on top of Edgar Toernigs coroutine library
  • Fast context switches when threads voluntarily
    yield
  • I/O
  • Capriccio intercepts blocking I/O calls
  • Uses epoll for asynchronous I/O
  • Scheduling
  • Very much like an event-driven application
  • Events are hidden from programmers
  • Synchronization
  • Supports cooperative threading on single-CPU
    machines
  • Requires only Boolean checks

EECS Advanced Operating Systems
Northwestern University
10
Approach Linked Stack
Fixed Stacks
  • The problem fixed stacks
  • Overflow vs. wasted space
  • Limits thread numbers
  • The solution linked stacks
  • Allocate space as needed
  • Compiler analysis
  • Add runtime checkpoints
  • Guarantee enough space until next check

Linked Stack
EECS Advanced Operating Systems
Northwestern University
11
Approach Linked Stack
  • Parameters
  • MaxPath
  • MinChunk
  • Steps
  • Break cycles
  • Trace back
  • Special Cases
  • Function pointers
  • External calls

3
3
5
2
2
4
3
6
MaxPath 8
EECS Advanced Operating Systems
Northwestern University
12
Approach Linked Stack
  • Parameters
  • MaxPath
  • MinChunk
  • Steps
  • Break cycles
  • Trace back
  • Special Cases
  • Function pointers
  • External calls

3
3
5
2
2
4
3
6
MaxPath 8
EECS Advanced Operating Systems
Northwestern University
13
Approach Linked Stack
  • Parameters
  • MaxPath
  • MinChunk
  • Steps
  • Break cycles
  • Trace back
  • Special Cases
  • Function pointers
  • External calls

3
3
5
2
2
4
3
6
MaxPath 8
EECS Advanced Operating Systems
Northwestern University
14
Approach Linked Stack
  • Parameters
  • MaxPath
  • MinChunk
  • Steps
  • Break cycles
  • Trace back
  • Special Cases
  • Function pointers
  • External calls

3
3
5
2
2
4
3
6
MaxPath 8
EECS Advanced Operating Systems
Northwestern University
15
Approach Linked Stack
  • Parameters
  • MaxPath
  • MinChunk
  • Steps
  • Break cycles
  • Trace back
  • Special Cases
  • Function pointers
  • External calls

3
3
2
3
2
4
3
6
MaxPath 8
EECS Advanced Operating Systems
Northwestern University
16
Approach Scheduling
  • Advantages of event-based scheduling
  • Tailored for applications
  • With event handlers
  • Events provide two important pieces of
    information for scheduling
  • Whether a process is close to completion
  • Whether a system is overloaded

EECS Advanced Operating Systems
Northwestern University
17
Approach Scheduling -The Blocking Graph
Write
Read
Sleep
Close
Write
Threadcreate
Main
  • Thread-based
  • View applications as sequence of stages,
    separated by blocking calls
  • Analogous to event-based scheduler

EECS Advanced Operating Systems
Northwestern University
18
Approach 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

EECS Advanced Operating Systems
Northwestern University
19
Experiment Threading Microbenchmarks
  • SMP, two 2.4 GHz Xeon processors
  • 1 GB memory
  • two 10 K RPM SCSI Ultra II hard drives
  • Linux 2.5.70
  • Compared Capriccio, LinuxThreads, and Native
    POSIX Threads for Linux

EECS Advanced Operating Systems
Northwestern University
20
Experiment Thread Scalability
  • Producer-consumer microbenchmark
  • LinuxThreads begin to degrade after 20 threads
  • NPTL degrades after 100
  • Capriccio scales to 32K producers and consumers
    (64K threads total)

EECS Advanced Operating Systems
Northwestern University
21
Results Thread Primitive - Latency
Capriccio LinuxThreads NPTL
Thread creation 21.5 21.5 17.7
Thread context switch 0.24 0.71 0.65
Uncontended mutex lock 0.04 0.14 0.15
EECS Advanced Operating Systems
Northwestern University
22
Results Thread Scalability
EECS Advanced Operating Systems
Northwestern University
23
Results I/O performance
  • Network performance
  • Token passing among pipes
  • Simulates the effect of slow client links
  • 10 overhead compared to epoll
  • Twice as fast as both LinuxThreads and NPTL when
    more than 1000 threads
  • Disk I/O comparable to kernel threads

EECS Advanced Operating Systems
Northwestern University
24
Results Runtime Overhead
  • Tested Apache 2.0.44
  • Stack linking
  • 73 slowdown for null call
  • 3-4 overall
  • Resource statistics
  • 2 (on all the time)
  • 0.1 (with sampling)
  • Stack traces
  • 8 overhead

EECS Advanced Operating Systems
Northwestern University
25
Results Web Server Performance
EECS Advanced Operating Systems
Northwestern University
26
Related Work
  • Programming Model of high concurrency
  • Event based models are a result of poor thread
    implementations
  • User-Level Threads
  • Capriccio is unique
  • Kernel Threads
  • NPTL
  • Application Specific Optimization
  • SPIN Exokernel
  • Burden on programmers
  • Portability
  • Asynchronous I/O
  • Stack Management
  • Using heap requires a garbage collector (ML of
    NJ)

EECS Advanced Operating Systems
Northwestern University
27
Related Work (contd)
  • Resource Aware Scheduling
  • Several similar to capriccio

28
Future Work
  • Threading
  • Multi-CPU support
  • Kernel interface
  • (enabled) Compile-time techniques
  • Variations on linked stacks
  • Static blocking graph
  • Scheduling
  • More sophisticated prediction

EECS Advanced Operating Systems
Northwestern University
29
Conclusion
  • Capriccio simplifies high concurrency
  • Scalable high performance
  • Control over concurrency model
  • Stack safety
  • Resource-aware scheduling
  • Enables compiler support, invariants
  • Issues
  • Additional burden to programmer
  • Resource controlled sched.? What hysteresis?

EECS Advanced Operating Systems
Northwestern University
30
OTHER GRAPHS
31
OTHER GRAPHS
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