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A Dynamic Programming Approach to Optimal Integrated Code Generation. Christoph Ke ßler Andrzej Bednarski Linköping University (Sweden). Outline. Code generation Our integrated approach Implementation and results Current and future work Conclusion. Code Generation. IR-level
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A Dynamic Programming Approach to Optimal Integrated Code Generation Christoph Keßler Andrzej Bednarski Linköping University (Sweden)
Outline • Code generation • Our integrated approach • Implementation and results • Current and future work • Conclusion
Code Generation IR-level Instruction scheduling IR-level Reg. Alloc IR-level Reg. Alloc IR IR-level Instruction scheduling Instruction selection Instruction selection Instruction selection Instruction selection Target code Target-level Instruction scheduling Target-level Reg. Alloc Target-level Reg. Alloc Target-level Instruction scheduling
Related Work • Heuristics • Optimal approaches • ILP • Dynamic programming • Branch-and-bound • Enumeration • Constraint logic programming
Integrated Code Generation IR-level Instruction scheduling IR-level Reg. Alloc IR-level Reg. Alloc IR IR-level Instruction scheduling Instruction selection Instruction selection Integrated Code generation Instruction selection Instruction selection Target code Target-level Instruction scheduling Target-level Reg. Alloc Target-level Reg. Alloc Target-level Instruction scheduling
Integrated Approach • Christoph Keßler’s previous work • Scheduling by topological sorting • Dynamic programming • Selection DAG • Time profile • Extended selection DAG Basic block scope of code generation
z z’ v v u u scheduled(z) scheduled(z’) Topological Sorting
{a,b,c} a c b {b,c} {a,c} {a,b} b c a c a b {c,d} {b} {c,d} {a,e} {b} {a,e} h … … … … … … f g d e a b c Selection Tree
Selection DAG • Merge multiple instances of same zero indegree set z in one selection node • Selection DAG • Selection DAG is leveled in n+1 levels • Each schedule S corresponds to one path in the selection DAG
{a,b,c} a c b {b,c} {a,c} {a,b} a a b c c b {c,d} {b} {a,e} h … … … f g d e a b c Selection DAG
Towards Time Optimization • Machine model • Generic superscalar/VLIW architecture • Single/Multiple issue • From IR level to target level • Instruction selection • Register allocation (homogenous) • Imitate instruction dispatcher behaviour
time Time Profile • Window of the instructions scheduled last for each unit that may still influence future scheduling decisions t e f - - c d b - - a - - u1 u2 u3
time Extended Selection Node • An extended selection node (z, t, P), summarizes all schedules of scheduled(z) that end with the time profile (t, P). • Pruning (formal proof in the paper) t e f - t’ t’ - c d e f - a f - b - - a c d e c d a - - b - - b - - u1 u2 u3 u1 u2 u3 u1 u2 u3
Extended Selection DAG Level 0 Level 1 Level 2 ...
Solution Space • Group the extended selection nodes in each level according to execution time • Construct solution space in order of increasing time • Postpones the combinatorial explosion
Implementation • C++ • LEDA • XML based architecture description language • LCC as C–front-end
Current and Future Work • Time-space profile for irregular register sets • Speculative instruction selection • Extensions of architecture description language • Beyond basic block level • Time-space profiles as connector descriptions
Conclusion • Goal: fully integrated code generation • Dynamic programming approach • Time profiles to compressthe solution space • Improved order of solution space construction • Feasible for medium sized basic blocks • Potential for extensions • Alternative to ILP • Home page: www.ida.liu.se/~chrke/optimist