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File: Computer Science Curriculum Pdf 174513 | Laincs
the role of linear algebra in the computer science curriculum submitted to 2013 acm ieee cs computer science curricula joint task force dr jeremy kepner mit lincoln lab csail mathematics ...

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                                      The Role of Linear Algebra in the Computer Science Curriculum 
                                                                                                       
                                                                                             submitted to  
                                                                                                       
                                             2013 ACM/IEEE-CS Computer Science Curricula Joint Task Force 
                              Dr. Jeremy Kepner (MIT Lincoln Lab, CSAIL & Mathematics Department)[chair] 
                              Prof. Tim Davis (University of Florida Computer Science Department) 
                              Prof. James Demmel (UC Berkeley Mathematics & Computer Science Departments) 
                              Prof. Alan Edelman (MIT Mathematics Department & CSAIL) 
                              Prof. Howard Elman (University of Maryland Computer Science Department) 
                              Prof. John Gilbert (UC Santa Barbara Computer Science Department) 
                              Prof. Michael Heath (University of Illinois Computer Science Department) 
                              Prof. Dianne O'Leary (University of Maryland Computer Science Department) 
                              Prof. Michael Overton (New York University Computer Science Department & Courant) 
                              Prof. Yousef Saad (University of Minnesota Computer Science Department) 
                              Prof. Ahmed Sameh (Purdue University Computer Science Department) 
                              Prof. Michael Stonebraker (MIT CSAIL) 
                              Prof. Gilbert Strang (MIT Mathematics Department) 
                              Prof. Robert van de Geijn (University of Texas Computer Science Department) 
                              Prof. Charles Van Loan (Cornell Computer Science Deparment) 
                              Prof. Margaret Wright (New York University Computer Science Department & Courant) 
                               
                               
                              1. Introduction 
                                          Computer  science  has  delivered  extraordinary  benefits  over  the  last  several 
                              decades.    The  breadth  and  depth  of  these  contributions  is  accelerating  as  the  world 
                              becomes  globally  connected.    At  the  same  time,  the  field  of  computer  science  has 
                              expanded to touch almost every facet of our lives. This places enormous pressure on the 
                              computer science curriculum to deliver a rigorous core while also allowing students to 
                              follow their interests into the many diverse and productive paths computer science can 
                              take them. 
                                          As science and engineering disciplines grow so the use of mathematics grows as 
                              new mathematical problems are encountered and new mathematical skills are required.  
                              In this respect, linear algebra has been particularly responsive to computer science as 
                              linear algebra plays a significant role in many important computer science undertakings.  
                              A few well-known examples are: 
                                    •     Internet search 
                                    •     Graph analysis 
                                    •     Machine learning 
                                    •     Graphics 
                                    •     Bioinformatics 
                                    •     Scientific computing 
                                    •     Data mining 
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                         •   Computer vision 
                         •   Speech recognition 
                         •   Compilers 
                         •   Parallel computing 
                     The broad utility of linear algebra to computer science reflects the deep connection that 
                     exists between the discrete nature of matrix mathematics and digital technology. 
                      
                     2. Mathematics in the Computer Science Curriculum 
                             ACM/IEEE Task Force identifies three specific mathematical subjects that are 
                     core to computer science: calculus, differential equations, and linear algebra.  In addition 
                     to  these  courses  many  Computer  Science  curriculums  require  statistics  and  discrete 
                     mathematics.  At our own institutions requirements include the following:  
                         •   Algorithms I & II, AI; Calculus I, Discrete Math OR Probability, Linear Algebra 
                             OR Calculus II 
                         •   Algorithms I; Calculus I & II, Linear Algebra OR Physics II 
                         •   Algorithms I & II; Calculus I & II & III, Probability, Linear Algebra 
                         •   Algorithms  I,  Discrete  Math;  Calculus  I  &  II,  Statistics,  Linear  Algebra  OR 
                             Calculus III 
                         •   Algorithms I, Discrete Math; Calculus I 
                         •   Algorithms I, Discrete Math; Calculus I & II, Statistics, Linear Algebra 
                         •   Algorithms I, Discrete Math; Linear Algebra 
                         •   Algorithms I, Discrete Math; Calculus I & II & III, Statistics, Linear Algebra 
                         •   Algorithms I, Discrete Math; Calculus I & II, Statistics, Linear Algebra 
                         •   Algorithms I, Discrete Math; Calculus I & II & III, Linear Algebra 
                     The  above  sample  is  not  a  complete  survey  of  computer  science  curriculums, 
                     nevertheless a few broad observations can be made: 
                         •   Linear algebra is required in about half of the computer science curriculums and 
                             is optional or not required in the other half 
                         •   Linear algebra comes near the end of the mathematical sequence (usually after 
                             calculus) 
                     Furthermore, we can infer: 
                         •   Computer  science  courses  cannot  reliably  assume  that  their  students  have  an 
                             understanding of linear algebra 
                         •   Linear  algebra  courses  can  reliably  assume  that  their  students  have  an 
                             understanding of calculus 
                     Based on these observations we have a variety of recommendations to offer with regards 
                     to the role of linear algebra in the computer science curriculum. 
                      
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        3. Recommendations 
           The  following  recommendations  represent  the  views  of  the  majority  of 
        contributors  and  fall  into  two  categories:  computer  science  recommendations  and 
        mathematics recommendations. 
         
        Computer Science Recommendations: 
         
        CS1  Encourage making computer science students more aware of the importance of 
           linear algebra in various computer science topics (e.g., internet search, computer 
           graphics, and machine learning) 
        CS2  Encourage including linear algebra in computer science theory, algorithm, and 
           data structures courses (e.g., matrix multiply algorithms, adjacency matrix data 
           structures, and SVD data analysis) 
        CS3  Encourage making linear algebra a requirement for the computer science majors, 
           particularly for those who are interested in advanced study 
        Mathematics Recommendations: 
         
        MA1  Encourage  including  common  computer  science  examples  in  linear  algebra 
           classes (e.g., graph analysis, 3D transformations, and speech recognition) 
        MA2  Encourage using software in linear algebra classes to satisfy computer science 
           "second language" goals (e.g., using Python, R, or Matlab) 
        MA3  Encourage  teaching  a  version  of  linear  algebra  earlier  without  a  calculus 
           prerequisite 
                          3 
                          	
  
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