Course Name: Parameterized Algorithms

Course abstract

This is a first course on techniques in parameterized algorithms, a paradigm of algorithm design that analyzes running time in finer detail than classical complexity theory: instead of expressing the running time as a function of the input size only, dependence on one or more parameters of the input instance is taken into account. This is a fast-evolving field and a fundamental approach to coping with NP-hardness, alongside approximation and randomized algorithms. The course will be a natural follow-up to a first course in algorithms and data structures for theoretically-inclined students and those who are curious about approaches to dealing with the theoretical limitations that emerge from the theory of NP-completeness. Remark 1. A companion course might cover topics focused entirely on lower bounds (covering W-hardness, ETH and SETH-based hardness, hardness based on the UGC, and hardness of kernelization). A natural follow-up course might cover topics in the intersection of parameterized and approximation algorithms. Remark 2. Lecture videos indicative of the course content can be found at this playlist from a previous offering of this course at the Institute for Mathematical Sciences, Chennai


Course Instructor

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Prof. Neeldhara Misra

Neeldhara Misra is an Assistant Professor of Computer Science and Engineering at the Indian Institute of Technology, Gandhinagar. Her primary research interest involves the design and analysis of efficient algorithms for “hard” problems in general, and parameterized algorithms in particular. The problems considered are typically concerned with combinatorial optimization, frequently in the context of graph theory, social choice, games, geometry, and constraint satisfaction.
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Prof. Saket Saurabh

Prof. Saket Saurabh is a Professor of Theoretical Computer Science at the Institute of Mathematical Sciences, Chennai, India. He is also affiliated to the Department of Informatics, University of Bergen, Norway (as a Professor). His other affiliations include Adjunct Professor at Indian Statistical Institute (ISI) Kolkata (2019-2024) and a member of IRL 2000 ReLaX. His work focuses on designing efficient algorithms (or prove that they do not exist) for hard problems arising in every domain. In particular, he has designed algorithms whose running time is analyzed in terms of different input parameters. In particular, he is interested in Multivariate Complexity or its two variable avatar Parameterized Complexity. His other interests include Graph Theory, Matroids, Matching Theory and Approximation Algorithms.
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Teaching Assistant(s)

No teaching assistant data available for this course yet
 Course Duration : Jul-Oct 2021

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 Syllabus

 Enrollment : 20-May-2021 to 02-Aug-2021

 Exam registration : 17-Jun-2021 to 17-Sep-2021

 Exam Date : 23-Oct-2021

Enrolled

863

Registered

17

Certificate Eligible

7

Certified Category Count

Gold

0

Silver

2

Elite

4

Successfully completed

1

Participation

1

Success

Elite

Silver

Gold





Legend

AVERAGE ASSIGNMENT SCORE >=10/25 AND EXAM SCORE >= 30/75 AND FINAL SCORE >=40
BASED ON THE FINAL SCORE, Certificate criteria will be as below:
>=90 - Elite + Gold
75-89 -Elite + Silver
>=60 - Elite
40-59 - Successfully Completed

Final Score Calculation Logic

  • Assignment Score = Average of best 7 out of 11 assignments.
  • Final Score(Score on Certificate)= 75% of Exam Score + 25% of Assignment Score
Parameterized Algorithms - Toppers list

SANJAY SEETHARAMAN 80%

PSG COLLEGE OF TECHNOLOGY

Enrollment Statistics

Total Enrollment: 863

Registration Statistics

Total Registration : 17

Assignment Statistics




Assignment

Exam score

Final score

Score Distribution Graph - Legend

Assignment Score: Distribution of average scores garnered by students per assignment.
Exam Score : Distribution of the final exam score of students.
Final Score : Distribution of the combined score of assignments and final exam, based on the score logic.