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Understanding Networked Applications: A First Course Chapter 17 by David G. Messerschmitt Summary • • • • Performance and quality Concurrency Scalability Operating systems Understanding Networked Applications 2 A First Course What is performance • Characterizing non-functional application attributes • Quantitative metrics – Latency, speed, etc – Parameterized by load, users, etc • Performance of application as a whole usually not meaningful – Subdivide into tasks Understanding Networked Applications 3 A First Course Tasks • Collection of actions that are not meaningfully separated – Only completed task is of interest; partial results not useful – How does this relate to atomicity in transactions? • For repetitive tasks, users or operators often care about – Task completion time (sec) – Task throughput (tasks/sec) Understanding Networked Applications 4 A First Course Important questions • For any application • What are the tasks? – Which is important: completion time, throughput, or both, or something else? – What are the quantitative objectives? Understanding Networked Applications 5 A First Course Example: Web surfing • Task: – User: Click on URL, retrieve page, display – Server: HTTP request received, HTML page formed as a message, message transmitted • What performance metric(s) are important to: – User? – Server? Understanding Networked Applications 6 A First Course Examples • What are the tasks and their appropriate performance metrics for the following applications: – – – – – Schwab stock trading system? Stock ticker? ATM system? Travel reservation system? Remote conferencing? Understanding Networked Applications 7 A First Course Typical components of task completion time Client Formulate request Server Message latency Processing time to formulate response Message latency Interpret response Understanding Networked Applications 8 A First Course Completion time and throughput are unrelated Concurrency Large completion time and high throughput Time Small completion time and low throughput Understanding Networked Applications 9 A First Course Concurrency • Two tasks are concurrent if they overlap in time • Four cases: Time Understanding Networked Applications 10 A First Course Concurrency may be…. • …a way to satisfy intrinsic application requrements – e.g. a number of users may generate concurrent tasks • …a way to improve fairness • …a way to increase task throughput – e.g. assign tasks to different hosts to get more done • …a way to reduce task completion time – e.g. divide a task into subtasks and assign those subtasks to different hosts Understanding Networked Applications 11 A First Course Concurrency for fairness Tasks not concurrent Scheduling delay Time Tasks concurrent Short task completes sooner Understanding Networked Applications 12 A First Course Concurrency may contribute to fairness on a single host Tasks not concurrent Scheduling delay Time Tasks concurrent Even though each task takes longer, short task still completes sooner Understanding Networked Applications 13 A First Course Concurrency on a single host User view Reality Why do this? What is effect on completion time of each task? Time slice Context switch Understanding Networked Applications 14 A First Course Why networks use packets Messages arrive at a communication link simultaneously Transmitting one message at a time Transmitting messages concurrently Divide each message into packets Understanding Networked Applications 15 Message arrives earlier A First Course Isolation of transactions Two concurrent transactions Transaction_1 Shared resources Give the same result as: Or: Transaction_2 Transaction_1 Transaction_2 Transaction_2 Transaction_1 Understanding Networked Applications 16 A First Course Messages among active objects Task Task Queue An active object delegates a task to another active object, which retrieves from queue when ready Concurrency Understanding Networked Applications 17 A First Course Understanding Networked Applications: A First Course Scalability by David G. Messerschmitt Definition • An application is scalable if its performance parameters can be improved as necessary – Adding but not replacing equipment is acceptable – Re-configuration but not re-programming is acceptable – Normally equipment cost should increase no more than linearly with performance Understanding Networked Applications 19 A First Course Basic technique • Concurrent tasks are a key to scalability • Some obstacles: – – – – Concurrent tasks aren’t there Dependency among tasks Communication overhead Variations in task loads result in congestion Understanding Networked Applications 20 A First Course Some problems to try to avoid • Blocking – Processing blocked waiting for external events – Make sure processor can work on something else • Duplication – In creating concurrent tasks, duplication of effort is created Understanding Networked Applications 21 A First Course Problems to avoid (con’t) • Load balancing – Workload not equal among processors – Some processors not fully utilized – More difficult if concurrent tasks are dependent • Congestion – Workload fluctuates – Makes load balancing more difficult because utilization can’t be predicted Understanding Networked Applications 22 A First Course Source of congestion Server Irregular arrival of tasks Mux & queue Understanding Networked Applications Irregular task completion times 23 A First Course Congestion model Queue 1. Tasks arrive at random times 3. Task service time is random 2. Tasks wait in queue waiting for processing Understanding Networked Applications 24 A First Course Statistical waiting time Waiting time 30 25 A specific statistical model for arrival times and service times is assumed 20 15 Tradeoff between task completion time (waiting time) and task throughput (utilization) Series1 10 5 0 0.1 0.3 0.5 0.7 0.9 Utilization Understanding Networked Applications 25 A First Course Example: Web server How do users know the server is reaching full utilization? When a single Web server/processor is exhausted, what do we do? Understanding Networked Applications 26 A First Course Understanding Networked Applications: A First Course Operating systems Some OS goals • Abstraction: hide hardware details • Manage concurrency – Multitasking (time-slicing) concurrency – Process and thread – Inter-process communicaton • Manage resources – Memory, storage, processing, network access Understanding Networked Applications 28 A First Course Memory/storage hierarchy Processor cache Main memory Speed Online (non-volatile) external storage Archive storage Off-line Size Understanding Networked Applications 29 A First Course Processor Processor Shared memory Network interface Processor Private memory Processor Network interface Processor Private memory Processor Private memory High-speed communication bus Understanding Networked Applications 30 A First Course Process Memory Memory Process Kernel level OS kernel Network Storage Understanding Networked Applications User level Memory 31 Resources A First Course Process User mode Kernel mode write_file(), send_message(), etc. Kernel performs service, then returns Time Understanding Networked Applications 32 A First Course Threads Thread n Thread n+1 Request to HTTP server to return homepage Another request Page returned Shared repository of WWW links Understanding Networked Applications 33 Another return A First Course Understanding Networked Applications: A First Course Supplements By David G. Messerschmitt Execution models for objects • Active object – Independent center of activity – Works without methods being called • Passive object – Works only in response to method invocations Understanding Networked Applications 35 A First Course Two observations • For anything to get done, there has to be at least one active object! • Natural for each active object to work on one task at a time – If so there must be at least two active objects for concurrency – (although in principle an active object could time slice among tasks, this is much more complicated and not a good idea) Understanding Networked Applications 36 A First Course Natural for each active object to work on one task Active object Passive objects Executing One object is executing at a time Task Time Understanding Networked Applications 37 A First Course Concurrency with two active objects Active object Passive objects Understanding Networked Applications 38 Active object A First Course A possible problem Active object Passive objects Active object Concurrency Potential resource conflict Understanding Networked Applications 39 A First Course Without pipelining Task Stage1 Stage2 Stage3 Partially completed piece of work Understanding Networked Applications 40 A First Course With pipelining Task_start Stage1 Stage2 Stage3 Task_complete Repetitive tasks Understanding Networked Applications 41 A First Course