CSCI 4210 — Operating Systems
Simulation Project Part II (document version 1.0)
Processes and CPU Scheduling
Overview
• This assignment is due in Submitty by 11:59PM EST on Thursday, August 15, 2024
• This project is to be completed either individually or in a team of at most three students; as with Project Part I, form your team within the Submitty gradeable, but do not submit any code until we announce that auto-grading is available
• NEW: If you worked on a team for PartI, feel free to change your team for Part II; all code is reusable from Part I even if you change teams
• Beyond your team (or yourself if working alone), do not share your code; however, feel free to discuss the project content and your findings with one another on our Discussion Forum
• To appease Submitty, you must use one of the following programming languages: C, C++, or Python (be sure you choose only one language for your entire implementation)
• You will have five penalty-free submissions on Submitty, after which points will slowly be deducted, e.g., -1 on submission #6, etc.
• You can use at most three late days on this assignment; in such cases, each team member must use a late day
• You will have at least three days before the due date to submit your code to Submitty; if the auto-grading is not available three days before the due date, the due date will be 11:59PM EDT three days after auto-grading becomes available
• NEW: Given that your simulation results代 写CSCI 4210 — Operating Systems might not entirely match the expected output on Submitty, we will cap your auto-graded grade at 50 points even though there will be more than 50 auto-graded points per language available in Submitty
• All submitted code must successfully compile and run on Submitty, which currently uses Ubuntu v22.04.4 LTS
• If you use C or C++, your program must successfully compile via gcc org++ with no warning messages when the -Wall (i.e., warn all) compiler option is used; we will also use -Werror, which will treat all warnings as critical errors; the -lm flag will also be included; the gcc/g++ compiler is currently version 11.4.0 (Ubuntu 11.4.0-1ubuntu1~22.04)
• For source file naming conventions, be sure to use * .c for C and * .cpp for C++; in either case, you can also include * .h files
• For Python, you must use python3, which is currently Python 3.10.12; be sure to name your main Python file project .py; also be sure no warning messages or extraneous output occur during interpretation
• Please “flatten” all directory structures to a single directory of source files
• Note that you can use square brackets in your code
Project specifications
For Part II of our simulation project, given the set of processes pseudo-randomly generated in Part I, you will implement a series of simulations of a running operating system. The overall focus will again be on processes, assumed to be resident in memory, waiting to use the CPU. Memory and the I/O subsystem will not be covered in depth in either part of this project.
Conceptual design — (from Part I)
A process is defined as a program in execution. For this assignment, processes are in one of the following three states, corresponding to the picture shown further below.
• RUNNING: actively using the CPU and executing instructions
• READY: ready to use the CPU, i.e., ready to execute a CPU burst
• WAITING: blocked on I/O or some other event
RUNNING READY WAITING (on I/O) STATE STATE STATE
+-----+ +---------------------+
| | +-------------------+ | |
| CPU | <== | | | | | | I/O Subsystem |
| | +-------------------+ | |
+-----+ <<< queue <<<<<<<<< +---------------------+
Processes in the READY state reside in a queue called the ready queue. This queue is ordered based on a configurable CPU scheduling algorithm. You will implement specific CPU scheduling algorithms in Part II of this project.
All implemented algorithms (in Part II) will be simulated for the same set of processes, which will therefore support a comparative analysis of results. In Part I, the focus is on generating useful sets of processes via pseudo-random number generators.
Back to the conceptual model, when a process is in the READY state and reaches the front of the queue, once the CPU is free to accept the next process, the given process enters the RUNNING state and starts executing its CPU burst.
After each CPU burst is completed, if the process does not terminate, the process enters the WAITING state, waiting for an I/O operation to complete (e.g., waiting for data to be read in from a file). When the I/O operation completes, depending on the scheduling algorithm, the process either (1) returns to the READY state and is added to the ready queue or (2) preempts the currently running process and switches into the RUNNING state.
Note that preemptions occur only for certain algorithms.
Algorithms — (Part II)
The four algorithms that you must simulate are first-come-first-served (FCFS); shortest job first (SJF); shortest remaining time (SRT); and round robin (RR). When you run your program, all four algorithms are to be simulated in succession with the same initial set of processes.
Each algorithm is summarized below.
First-come-first-served (FCFS)
The FCFS algorithm is a non-preemptive algorithm in which processes simply line up in the ready queue, waiting to use the CPU. This is your baseline algorithm.
Shortest job first (SJF)
In SJF, processes are stored in the ready queue in order of priority based on their anticipated CPU burst times. More specifically, the process with the shortest predicted CPU burst time will be selected as the next process executed by the CPU. SJF is non-preemptive.
Shortest remaining time (SRT)
The SRT algorithm is a preemptive version of the SJF algorithm. In SRT, when a process arrives, if it has a predicted CPU burst time that is less than the remaining predicted time of the currently running process, a preemption occurs. When such a preemption occurs, the currently running process is added to the ready queue based on priority, i.e., based on its remaining predicted CPU burst time.
Round robin (RR)
The RR algorithm is essentially the FCFS algorithm with time slice t slice. Each process is given t slice amount of time to complete its CPU burst. If the time slice expires, the process is preempted and added to the end of the ready queue.
If a process completes its CPU burst before a time slice expiration, the next process on the ready queue is context-switched in to use the CPU.
For your simulation, if a preemption occurs and there are no other processes on the ready queue, do not perform a context switch. For example, given process G is using the CPU and the ready queue is empty, if process G is preempted by a time slice expiration, do not context-switch process G back to the empty queue; instead, keep process G running with the CPU and do not count this as a context switch. In other words, when the time slice expires, check the queue to determine if a context switch should occur.
Simulation configuration — (extended from Part I)
The key to designing a useful simulation is to provide a number of configurable parameters. This allows you to simulate and tune for a variety of scenarios, e.g., a large number of CPU-bound processes, difering average process interarrival times, multiple CPUs, etc.
Define the simulation parameters shown below as tunable constants within your code, all of which will be given as command-line arguments. In Part II of the project, additional parameters will be added.
• *(argv+1): Define n as the number of processes to simulate. Process IDs are assigned a two-character code consisting of an uppercase letter from A to Z followed by a number from
0 to 9. Processes are assigned in order A0, A1, A2, . . ., A9, B0, B1, . . ., Z9.
• *(argv+2): Definen cpu as the number of processes that are CPU-bound. For this project, we will classify processes as I/O-bound or CPU-bound. The n cpu CPU-bound processes, when generated, will have CPU burst times that are longer by a factor of 4 and will have I/O burst times that are shorter by a factor of 8.
• *(argv+3): We will use a pseudo-random number generator to determine the interarrival times of CPU bursts. This command-line argument, i.e. seed, serves as the seed for the pseudo-random number sequence. To ensure predictability and repeatability, use srand48() with this given seed before simulating each scheduling algorithm and drand48() to obtain the next value in the range [0.0, 1.0). Since Python does not have these functions, implement an equivalent 48-bit linear congruential generator, as described in the man page for these functions in C.
• *(argv+4): To determine interarrival times, we will use an exponential distribution, as illus- trated in the exp-random .c example. This command-line argument is parameter λ; remember
that λ/1 will be the average random value generated, e.g., if λ = 0.01, then the average should be appoximately 100.
In the exp-random .c example, use the formula shown in the code, i.e., λ/− ln r.
• *(argv+5): For the exponential distribution, this command-line argument represents the upper bound for valid pseudo-random numbers. This threshold is used to avoid values far down the long tail of the exponential distribution. As an example, if this is set to 3000, all generated values above 3000 should be skipped. For cases in which this value is used in the ceiling function (see the next page), be sure the ceiling is still valid according to this upper bound.
• *(argv+6): Define tcs as the time, in milliseconds, that it takes to perform a context switch. Specifically, the first half of the context switch time (i.e., 2/tcs) is the time required to remove the given process from the CPU; the second half of the context switch time is the time required to bring the next process in to use the CPU. Therefore, require tcs to be a positive even integer.
• *(argv+7): For the SJF and SRT algorithms, since we do not know the actual CPU burst times beforehand, we will rely on estimates determined via exponential averaging. As such, this command-line argument is the constant Q, which must be a numeric floating-point value in the range [0; 1].
Note that the initial guess for each process is τ0 = λ/1 .
Also, when calculating τ values, use the “ceiling” function for all calculations.
• *(argv+8): For the RR algorithm, define the time slice value,t slice, measured in milliseconds. Require t slice to be a positive integer.
Pseudo-random numbers and predictability — (from Part I)
A key aspect of this assignment is to compare the results of each of the simulated algorithms with one another given the same initial conditions, i.e., the same initial set of processes.
To ensure each CPU scheduling algorithm runs with the same set of processes, carefully follow the algorithm below to create the set of processes.
For each of the n processes, in order A0 through Z9, perform the steps below, with CPU-bound processes generated first. Note that all generated values are integers.
Define your exponential distribution pseudo-random number generation function as next_exp() (or another similar name).
1. Identify the initial process arrival time as the “floor” of the next random number in the sequence given by next_exp(); note that you could therefore have a zero arrival time
2. Identify the number of CPU bursts for the given process as the “ceiling” of the next random number generated from the uniform distribution obtained via drand48() multiplied by 32; this should obtain a random integer in the inclusive range [1; 32]
3. For each of these CPU bursts, identify the CPU burst time and the I/O burst time as the “ceiling” of the next two random numbers in the sequence given by next_exp(); multiply the I/O burst time by 8 such that I/O burst time is close to an order of magnitude longer than CPU burst time; as noted above, for CPU-bound processes, multiply the CPU burst time by 4 and divide the I/O burst time by 8 (i.e., do not bother multiplying the original I/O burst time by 8 in this case); for the last CPU burst, do not generate an I/O burst time (since each process ends with a final CPU burst)
Simulation specifics — (Part II)
Your simulator keeps track of elapsed time t (measured in milliseconds), which is initially zero for each scheduling algorithm. As your simulation proceeds, t advances to each “interesting” event that occurs, displaying a specific line of output that describes each event.
The “interesting” events are:
• Start of simulation for a specific algorithm
• Process arrival (i.e., initially and at each I/O completion)
• Process starts using the CPU
• Process finishes using the CPU (i.e., completes a CPU burst)
• Process has its τ value recalculated (i.e., after a CPU burst completion)
• Process preemption (SRT and RR only)
• Process starts an I/O burst
• Process finishes an I/O burst
• Process terminates by finishing its last CPU burst
• End of simulation for a specific algorithm
Note that the “process arrival” event occurs each time a process arrives, which includes both the initial arrival time and when a process completes an I/O burst. In other words, processes “arrive” within the subsystem that consists only of the CPU and the ready queue.
The “process preemption” event occurs each time a process is preempted. When a preemption occurs, a context switch occurs, except when the ready queue is empty for the RR algorithm.
After you simulate each scheduling algorithm, you must reset your simulation back to the initial set of processes and set your elapsed time back to zero.
Note that there may be times during your simulation in which the simulated CPU is idle because no processes have arrived yet or all processes are busy performing I/O. Also, your simulation ends when all processes terminate.
If diferent types of events occur at the same time, simulate these events in the following order:
(a) CPU burst completion; (b) process starts using the CPU; (c) I/O burst completions; and
(d) new process arrivals.
Further, any “ties” that occur within one of these categories are to be broken using process ID order. As an example, if processes G1 and S9 happen to both complete I/O bursts at the same time, process G1 wins this “tie” (because G1 is lexicographically before S9) and is therefore added to the ready queue before process S9.
Be sure you do not implement any additional logic for the I/O subsystem. In other words, there are no specific I/O queues to implement.
Measurements — (from Part I)
There are a number of measurements you will want to track in your simulation. For each algorithm, you will count the number of preemptions and the number of context switches that occur. Further, you will measure CPU utilization by tracking CPU usage and CPU idle time.
Specifically, for each CPU burst, you will track CPU burst time (given), turnaround time, and wait time.
CPU burst time
CPU burst times are randomly generated for each process that you simulate via the above algorithm. CPU burst time is defined as the amount of time a process is actually using the CPU. Therefore, this measure does not include context switch times.
Turnaround time
Turnaround times are to be measured for each process that you simulate. Turnaround time is defined as the end-to-end time a process spends in executing a single CPU burst.
More specifically, this is measured from process arrival time through to when the CPU burst is completed and the process is switched out of the CPU. Therefore, this measure includes the second half of the initial context switch in and the first half of the final context switch out, as well as any other context switches that occur while the CPU burst is being completed (i.e., due to preemptions).
Wait time
Wait times are to be measured for each CPU burst. Wait time is defined as the amount of time a process spends waiting to use the CPU, which equates to the amount of time the given process is actually in the ready queue. Therefore, this measure does not include context switch times that the given process experiences, i.e., only measure the time the given process is actually in the ready queue.
CPU utilization
Calculate CPU utilization by tracking how much time the CPU is actively running CPU bursts versus total elapsed simulation time.
标签:processes,4210,burst,process,CSCI,will,Operating,time,CPU From: https://www.cnblogs.com/vvx-99515681/p/18367976