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  1. \documentclass[10pt,a4paper]{article}
  2. \usepackage[latin1]{inputenc}
  3. \usepackage{amsmath,amsfonts,amssymb,booktabs,graphicx,listings,subfigure}
  4. \usepackage{float,hyperref}
  5. \title{Peephole Optimizer}
  6. \author{Jayke Meijer (6049885), Richard Torenvliet (6138861), Tadde\"us Kroes
  7. (6054129)}
  8. \begin{document}
  9. \maketitle
  10. \tableofcontents
  11. \pagebreak
  12. \section{Introduction}
  13. The goal of the assignment is to implement the optimization stage of the
  14. compiler. To reach this goal the parser and the optimizer part of the compiler
  15. have to be implemented.
  16. The output of the xgcc cross compiler on a C program is our input. The output
  17. of the xgcc cross compiler is in the form of Assembly code, but not optimized.
  18. Our assignment includes a number of C programs. An important part of the
  19. assignment is parsing the data. Parsing the data is done with Lex and Yacc. The
  20. Lexer is a program that finds keywords that meets the regular expression
  21. provided in the Lexer. After the Lexer, the Yaccer takes over. Yacc can turn
  22. the keywords in to an action.
  23. \section{Design}
  24. There are two general types of optimizations of the assembly code, global
  25. optimizations and optimizations on a so-called basic block. These optimizations
  26. will be discussed separately
  27. \subsection{Global optimizations}
  28. We only perform one global optimization, which is optimizing branch-jump
  29. statements. The unoptimized Assembly code contains sequences of code of the
  30. following structure:
  31. \begin{verbatim}
  32. beq ...,$Lx
  33. j $Ly
  34. $Lx: ...
  35. \end{verbatim}
  36. This is inefficient, since there is a jump to a label that follows this code.
  37. It would be more efficient to replace the branch statement with a \texttt{bne}
  38. (the opposite case) to the label used in the jump statement. This way the jump
  39. statement can be eliminated, since the next label follows anyway. The same can
  40. of course be done for the opposite case, where a \texttt{bne} is changed into a
  41. \texttt{beq}.
  42. Since this optimization is done between two series of codes with jumps and
  43. labels, we can not perform this code during the basic block optimizations. The
  44. reason for this will become clearer in the following section.
  45. \subsection{Basic Block Optimizations}
  46. Optimizations on basic blocks are a more important part of the optimizer.
  47. First, what is a basic block? A basic block is a sequence of statements
  48. guaranteed to be executed in that order, and that order alone. This is the case
  49. for a piece of code not containing any branches or jumps.
  50. To create a basic block, you need to define what is the leader of a basic
  51. block. We call a statement a leader if it is either a jump/branch statement, or
  52. the target of such a statement. Then a basic block runs from one leader until
  53. the next leader.
  54. There are quite a few optimizations we perform on these basic blocks, so we
  55. will describe the types of optimizations here in stead of each optimization.
  56. \subsubsection*{Standard peephole optimizations}
  57. These are optimizations that simply look for a certain statement or pattern of
  58. statements, and optimize these. For example,
  59. \begin{verbatim}
  60. mov $regA,$regB
  61. instr $regA, $regA,...
  62. \end{verbatim}
  63. can be optimized into
  64. \begin{verbatim}
  65. instr $regA, $regB,...
  66. \end{verbatim}
  67. since the register \texttt{\$regA} gets overwritten by the second instruction
  68. anyway, and the instruction can easily use \texttt{\$regB} in stead of
  69. \texttt{\$regA}. There are a few more of these cases, which are the same as
  70. those described on the practicum page
  71. \footnote{\url{http://staff.science.uva.nl/~andy/compiler/prac.html}} and in
  72. Appendix \ref{opt}.
  73. \subsubsection*{Common subexpression elimination}
  74. A more advanced optimization is common subexpression elimination. This means
  75. that expensive operations as a multiplication or addition are performed only
  76. once and the result is then `copied' into variables where needed.
  77. \begin{verbatim}
  78. addu $2,$4,$3 addu = $t1, $4, $3
  79. ... mov = $2, $t1
  80. ... -> ...
  81. ... ...
  82. addu $5,$4,$3 mov = $4, $t1
  83. \end{verbatim}
  84. A standard method for doing this is the creation of a DAG or Directed Acyclic
  85. Graph. However, this requires a fairly advanced implementation. Our
  86. implementation is a slightly less fancy, but easier to implement.
  87. We search from the end of the block up for instructions that are eligible for
  88. CSE. If we find one, we check further up in the code for the same instruction,
  89. and add that to a temporary storage list. This is done until the beginning of
  90. the block or until one of the arguments of this expression is assigned.
  91. We now add the instruction above the first use, and write the result in a new
  92. variable. Then all occurrences of this expression can be replaced by a move of
  93. from new variable into the original destination variable of the instruction.
  94. This is a less efficient method then the dag, but because the basic blocks are
  95. in general not very large and the execution time of the optimizer is not a
  96. primary concern, this is not a big problem.
  97. \subsubsection*{Fold constants}
  98. Constant folding is an optimization where the outcome of arithmetics are
  99. calculated at compile time. If a value x is assigned to a certain value, lets
  100. say 10, than all next occurences of \texttt{x} are replaced by 10 until a
  101. redefinition of x. Arithmetics in Assembly are always performed between two
  102. variables or a variable and a constant. If this is not the case the calculation
  103. is not possible. See the example for a more clear explanation of constant
  104. folding(will come). In other words until the current definition of \texttt{x}
  105. becomes dead. Therefore reaching definitions analysis is needed.
  106. \subsubsection*{Copy propagation}
  107. Copy propagation `unpacks' a move instruction, by replacing its destination
  108. address with its source address in the code following the move instruction.
  109. This is not a direct optimization, but this does allow for a more effective
  110. dead code elimination.
  111. The code of the block is checked linearly. When a move operation is
  112. encountered, the source and destination address of this move are stored. When
  113. a normal operation with a source and a destination address are found, a number
  114. of checks are performed.
  115. The first check is whether the destination address is stored as a destination
  116. address of a move instruction. If so, this move instruction is no longer valid,
  117. so the optimizations can not be done. Otherwise, continue with the second
  118. check.
  119. In the second check, the source address is compared to the destination
  120. addresses of all still valid move operations. If these are the same, in the
  121. current operation the found source address is replaced with the source address
  122. of the move operation.
  123. An example would be the following:
  124. \begin{verbatim}
  125. move $regA, $regB move $regA, $regB
  126. ... ...
  127. Code not writing $regA, -> ...
  128. $regB ...
  129. ... ...
  130. addu $regC, $regA, ... addu $regC, $regB, ...
  131. \end{verbatim}
  132. This code shows that \texttt{\$regA} is replaced with \texttt{\$regB}. This
  133. way, the move instruction might have become useless, and it will then be
  134. removed by the dead code elimination.
  135. \subsubsection*{Algebraic transformations}
  136. Some expression can easily be replaced with more simple once if you look at
  137. what they are saying algebraically. An example is the statement $x = y + 0$, or
  138. in Assembly \texttt{addu \$1, \$2, 0}. This can easily be changed into $x = y$
  139. or \texttt{move \$1, \$2}.
  140. Another case is the multiplication with a power of two. This can be done way
  141. more efficiently by shifting left a number of times. An example:
  142. \texttt{mult \$regA, \$regB, 4 -> sll \$regA, \$regB, 2}. We perform this
  143. optimization for any multiplication with a power of two.
  144. There are a number of such cases, all of which are once again stated in
  145. appendix \ref{opt}.
  146. \section{Implementation}
  147. We decided to implement the optimization in Python. We chose this programming
  148. language because Python is an easy language to manipulate strings, work
  149. object-oriented etc.
  150. It turns out that a Lex and Yacc are also available as a Python module,
  151. named PLY(Python Lex-Yacc). This allows us to use one language, Python, instead
  152. of two, i.e. C and Python. Also no debugging is needed in C, only in Python
  153. which makes our assignment more feasible.
  154. The program has three steps, parsing the Assembly code into a datastructure we
  155. can use, the so-called Intermediate Representation, performing optimizations on
  156. this IR and writing the IR back to Assembly.
  157. \subsection{Parsing}
  158. The parsing is done with PLY, which allows us to perform Lex-Yacc tasks in
  159. Python by using a Lex-Yacc like syntax. This way there is no need to combine
  160. languages like we should do otherwise since Lex and Yacc are coupled with C.
  161. The decision was made to not recognize exactly every possible instruction in
  162. the parser, but only if something is for example a command, a comment or a gcc
  163. directive. We then transform per line to an object called a Statement. A
  164. statement has a type, a name and optionally a list of arguments. These
  165. statements together form a statement list, which is placed in another object
  166. called a Block. In the beginning there is one block for the entire program, but
  167. after global optimizations this will be separated in several blocks that are
  168. the basic blocks.
  169. \subsection{Optimizations}
  170. The optimizations are done in two different steps. First the global
  171. optimizations are performed, which are only the optimizations on branch-jump
  172. constructions. This is done repeatedly until there are no more changes.
  173. After all possible global optimizations are done, the program is seperated into
  174. basic blocks. The algorithm to do this is described earlier, and means all
  175. jump and branch instructions are called leaders, as are their targets. A basic
  176. block then goes from leader to leader.
  177. After the division in basic blocks, optimizations are performed on each of
  178. these basic blocks. This is also done repeatedly, since some times several
  179. steps can be done to optimize something.
  180. \subsection{Writing}
  181. Once all the optimizations have been done, the IR needs to be rewritten into
  182. Assembly code. After this step the xgcc crosscompiler can make binary code from
  183. the generated Assembly code.
  184. The writer expects a list of statements, so first the blocks have to be
  185. concatenated again into a list. After this is done, the list is passed on to
  186. the writer, which writes the instructions back to Assembly and saves the file
  187. so we can let xgcc compile it.
  188. \section{Results}
  189. \subsection{pi.c}
  190. \subsection{acron.c}
  191. \subsection{whet.c}
  192. \subsection{slalom.c}
  193. \subsection{clinpack.c}
  194. \section{Conclusion}
  195. \appendix
  196. \section{List of all optimizations}
  197. \label{opt}
  198. \textbf{Global optimizations}
  199. \begin{verbatim}
  200. beq ...,$Lx bne ...,$Ly
  201. j $Ly -> $Lx: ...
  202. $Lx: ...
  203. bne ...,$Lx beq ...,$Ly
  204. j $Ly -> $Lx: ...
  205. $Lx: ...
  206. \end{verbatim}
  207. \textbf{Standard basic block optimizations}
  208. \begin{verbatim}
  209. mov $regA,$regA -> --- // remove it
  210. mov $regA,$regB -> instr $regA, $regB,...
  211. instr $regA, $regA,...
  212. instr $regA,... instr $4,...
  213. mov [$4-$7], $regA -> jal XXX
  214. jal XXX
  215. sw $regA,XXX -> sw $regA, XXX
  216. ld $regA,XXX
  217. shift $regA,$regA,0 -> --- // remove it
  218. add $regA,$regA,X -> lw ...,X($regA)
  219. lw ...,0($regA)
  220. \end{verbatim}
  221. \textbf{Advanced basic block optimizations}
  222. \begin{verbatim}
  223. # Common subexpression elimination
  224. addu $regA, $regB, 4 addu $regD, $regB, 4
  225. ... move $regA, $regD
  226. Code not writing $regB -> ...
  227. ... ...
  228. addu $regC, $regB, 4 move $regC, $regD
  229. # Constant folding
  230. # Copy propagation
  231. move $regA, $regB move $regA, $regB
  232. ... ...
  233. Code not writing $regA, -> ...
  234. $regB ...
  235. ... ...
  236. addu $regC, $regA, ... addu $regC, $regB, ...
  237. # Algebraic transformations
  238. addu $regA, $regB, 0 -> move $regA, $regB
  239. subu $regA, $regB, 0 -> move $regA, $regB
  240. mult $regA, $regB, 1 -> move $regA, $regB
  241. mult $regA, $regB, 0 -> li $regA, 0
  242. mult $regA, $regB, 2 -> sll $regA, $regB, 1
  243. \end{verbatim}
  244. \end{document}