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Distributed Algorithms >> Content Detail



Syllabus



Syllabus

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What This Course is About


The field of distributed algorithms has become a well-developed research area over the past 25 years. Its results appear in specialized research conferences such as PODC (Principles Of Distributed Computing) and DISC (International Symposium on Distributed Computing), and in general conferences involving distributed computing.

Distributed algorithms researchers define models for various kinds of distributed computing environments, define problems to be solved in those environments, including performance and fault-tolerance requirements, design new distributed algorithms to solve these problems, and analyze the correctness and performance of these algorithms. They also sometimes prove lower bounds and other impossibility results, which explain why certain tasks cannot be carried out in certain kinds of distributed settings, or cannot be carried out within certain cost constraints. Researchers typically study problems that arise in practical distributed systems, including problems of communication, data management, resource management, synchronization, and distributed agreement.

Because distributed computing theory is a branch of theoretical computer science, the work is supposed to be mathematically rigorous; however, you will find that preliminary papers in this area are often written somewhat informally.

6.852J is a graduate-level course that is intended to do two things:

  1. Provide an introduction to the most important basic results in the area of distributed algorithms.
  2. Prepare interested students to begin independent research or take a more advanced course in distributed algorithms.

Usually, the students who take the course are a mixture of PhD students and MEng students. The course is run at a graduate level, which means that most MEng students will probably find it challenging (and time-consuming).



Prerequisites


To take 6.852J, you should have:



Source Material


The main source will be the book:

Lynch, Nancy A. Distributed Algorithms. San Francisco, CA: Morgan Kaufmann, 1997. ISBN: 1558603484.

The book refers to many papers from the research literature on distributed algorithms; you might want to track down and read some of these.

Other books that you will find useful are:

Attiya, Hagit, and Jennifer Welch. Distributed Computing: Fundamentals, Simulations, and Advanced Topics. 2nd ed. Hoboken, NJ: Wiley, 2004. ISBN: 0471453242.
This is another textbook on distributed algorithms, initially published a little after the Lynch book. It now has a second edition. The material covered overlaps quite a lot with the Lynch book, though Attiya and Welch do cover some topics, like clock synchronization, that Lynch doesn't cover. The style of Attiya and Welch's book is less formal.

Dolev, Shlomi. Self-Stabilization. Cambridge, MA: MIT Press, 2000. ISBN: 0262041782.
This gives a good description of self-stabilizing distributed algorithms. Self-stabilization is one kind of fault-tolerance, which we will study near the end of the course.

In addition, some research papers that are not covered in the textbook will be covered in class and on problem sets. They will cover a variety of topics, for example, computability and relative computability results for different kinds of objects and services, in the presence of various numbers of failures. These papers are listed in the readings section.



Course Requirements




Readings


Readings that cover the material for each class will be announced ahead of time. For most classes, these will be sections from the textbook. For some classes, however, these will be research papers from the reading list in the readings section. Reading a research paper will generally take more time than reading sections from the textbook - so be prepared to put in the extra time.

We expect students to read the assigned material ahead of time, and to come to class prepared with questions and discussion ideas.



Problem Sets


These are intended to help you to understand the material being covered in class. Most problems will involve thinking about algorithms and problems already covered in class; some will be designed to get you started thinking about ideas to be discussed in later classes.

Specifically, approximately five problems will be given out approximately every Thursday. The problems will be batched and due every two weeks, at the beginning of class on alternate Thursdays. There will be a total of seven problem set due dates. No late homeworks will be accepted. If you haven't finished, just hand in what you have completed. However, in case of a serious emergency, please talk to either the Teaching Assistant or Prof. Lynch.

Homework is an important part of your grade. When grading homework problems, we will try to give full credit to solutions that include all the important logical steps and ideas. We consider it a minus for a write up to be lengthy and overly detailed. An exception is when we specifically ask for details, for instance, in formal proofs of correctness of algorithms.

Solutions to homework problems will be handed out. Whenever possible, the best student solution will be used. Students who would like us to use their write ups can help us by writing elegant and concise solutions and formatting them using LaTeX (and the LaTeX style files provided by us). When you submit the homework, keep the .tex file since it may need to be edited if your solution is chosen. Problem sets will be graded by teams of students in the class, led by the Teaching Assistant and/or Prof. Lynch.

We will have software available to assist you in writing syntactically-correct distributed algorithms. This software consists of the TIOA language processor, which allows specification of algorithms as interacting state machines, possibly with timing constraints. Information about how to download the software and how to get started using it will be provided in a tutorial handout about three weeks after the term begins. We hope that you will find the software helpful. We are not absolutely requiring you to use it, but we prefer that you do so. (It should help ensure that your programs make some sense, and will certainly make the graders' jobs a lot easier.)

Policy on homework collaboration: You are strongly encouraged to discuss possible solutions with other class members. Many students in past incarnations of this course have formed homework discussion groups. However, you must always write up the solutions entirely on your own.



Problem Set Grading


For each problem set, a group of 3-4 students will be responsible for working with the course staff to grade the solutions. If possible, we would like the grading to be completed by the Monday afternoon after the homeworks are handed in, so we can record the grades and hand them back on Tuesday. The number of times you have to grade over the course of the semester will depend on the size of the class. Part of your grade will depend on the quality and promptness of your work on problem set grading.



Exams


There will be no exams. No midterm, no final.



Course Grade Calculation


Your course grade will be based on problem set grades, problem set grading grades, and class participation. Here is how your grade will be calculated:


ACTIVITIESPERCENTAGES
Seven Problem Sets (10% each)70%
Class Participation (Attendance, Quality and Quantity of Participation)20%
Grading (Quality and Promptness)10%

 








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