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What are the benefits/drawbacks of compiling a program to machine code instead of simply constructing the AST from the source and executing operations as you traverse the tree?

Are there certain reasons you would want to do one over the other?

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2 Answers 2

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Interpreting an AST is normally much slower than running machine code that does the same thing. A factor of 20 is typical.

An advantage is that an AST is quicker to produce, so takes less time than most compilers do to generate code. AST interpreters also tend to be simpler than compilers because the whole code generation phase can be ignored.

So if you have a program that doesn't do heavy computation, it will be up and running faster with an interpreter. On the other hand, if you have a code that runs often or continuously in an environment where cycles are scarce, it's better off compiled.

Some programming environments (for example many lisps) include an interpreter for developing code because it supports rapid debugging cycles and a compiler for producing speedy code when development is complete. Some of these systems allow free mixing of interpreted and compiled code, which is interesting in its own right.

Compiling to bytecode is a middle ground: Quicker to compile than machine code, but faster to execute than an AST. Nonetheless, modern bytecode interpreters often compile to native code "just in time" as your program runs. This e.g. is the source of the name for Sun's HotSpot JVM. It compiles the "hot spots" in the Java bytecode to native code to speed programs during runtime.

Response to questions in comments

There was a question on the factor of 20 mentioned above. References to support this number are old because few modern language systems use pure AST interpreters. (A notable exception is command shells, but most of them were developed long ago, and speed benchmarks are not common.) They're just too slow. My context is lisp interpreters. I've implemented a couple. Here for example is one set of Scheme benchmarks. The columns corresponding to AST interpreters are pretty easy to pick out. I can post more and similiar from the ACM Digital Library archive if there is demand.

Another rough benchmark: Perl uses a heavily optimized AST interpreter. To add 10 million floats in a tight loop on my machine requires about 7 seconds. Compiled C (gcc -O1) takes about 1/20th of a second.

The commenter posed the addition of 4 variables as an example. The analysis forgot the cost of lookups. One clear dividing line between interpreter and compiler is precomputed addresses or frame offsets for symbols. In a "pure" interpreter there are none. So adding 4 numbers requires 4 lookups in the runtime environment, normally a hash table - at least 100 instructions. In good compiled code, adding 4 integers on an x86 needs 2 instructions and one more to store the result.

There are many shades between "pure" AST interpeters and compiled machine code. Depending on the language, it may be possible to compile symbol offsets into the AST. This is sometimes called "fast links". The technique typically speeds things up by a factor or 2 or more. Then there are "compile-to-bytecode and go" systems like Python, PHP, Perl, Ruby 1.9+. Their bytecode is effectively threaded code (opcodes can cause very complicated things to occur), so they are closer to ASTs than machine code. Then there are the JIT bytecode interpreters I mentioned above.

The point is that the factor of 20 pure AST interpreter is one bookend and machine code is the other. In the middle there are many variants, each with advantages and disadvantages.

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Where do get the 20 from (i.e. can you provide a citation)? I am curious, because the factor seems to largely differ: w+x+y+z -> load, add, add, add, but (load (add (add (add)))) -> load node, load value, add, load node, load value, add, load node, load value, add, load node, load value, add with probably many cache misses. I have the feeling this would take much more time than 20x. On the other hand, x=y -> load x, store y, but (store (load)) -> load node, load value, load node, store value, much less than 20x (or with the cache misses, more again). –  phresnel Dec 19 '13 at 7:17
    
@phresnel A fine question. I added some information to my post. –  Gene Dec 19 '13 at 15:51
    
+1 :)<10 more to go...> –  phresnel Dec 19 '13 at 17:59

Another advantage of compilation not mentioned yet is that it is often much easier than a direct ad hoc interpretation. Often an unprocessed source language is not very suitable for a direct interpretation, and dumbing it down to a simpler language will facilitate a much more efficient and straightforward interpretation.

For example, a language might feature a lexical scope, which would require a name lookup for each time a variable or a function argument is dereferenced. But a simple transformation pass which will enumerate the variables and insert implicit storage management constructions will make interpretation much simpler and much more efficient - an array access is a way much faster than a hash table with a text key. Another such example is closure handling - a lambda lifting pass makes is much simpler than any possible ad hoc approach.

It is also much easier to interpret a flat "bytecode" than a tree. There are many well known optimisation techniques (e.g., threaded code) for bytecode interpreters, while an AST walking interpreter is doomed to be dead slow.

And, unless you have to do some heavy-weight optimisations (like dead code elimination, constant folding, register allocation, efficient instruction scheduling), compilation is extremely trivial and can be split into ridiculously obvious small steps. A straightforward interpretation of any non-trivial language, on the other hand, is always complicated and cannot be split into anything simple and obvious.

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