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What would be the best way to detect what programming language is used in a snippet of code?

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There are practically an infinite number of languages out there... do you want to detect ANY of them? Or are we just talking the popular ones? –  Spencer Ruport Jan 23 '09 at 23:20
Just the popular ones (C/C++, C#, Java, Pascal, Python, VB.NET. PHP, JavaScript and maybe Haskell). –  triton Jan 23 '09 at 23:28
Well Haskell can't be popular since I've never heard of it. ;-) –  Stephanie Page Jan 25 '11 at 21:06
Haskell's pretty popular, bro. =P –  Paulo Torrens Aug 6 '13 at 20:08

12 Answers 12

up vote 71 down vote accepted

I think that the method used in spam filters would work very well. You split the snippet into words. Then you compare the occurences of these words with known snippets, and compute the probability that this snippet is written in language X for every language you're interested in.


If you have the basic mechanism then it's very easy to add new languages: just train the detector with a few snippets in the new language (you could feed it an open source project). This way it learns that "System" is likely to appear in C# snippets and "puts" in Ruby snippets.

I've actually used this method to add language detection to code snippets for forum software. It worked 100% of the time, except in ambiguous cases:

print "Hello"

Let me find the code.

I couldn't find the code so I made a new one. It's a bit simplistic but it works for my tests. Currently if you feed it much more Python code than Ruby code it's likely to say that this code:

def foo
   puts "hi"

is Python code (although it really is Ruby). This is because Python has a def keyword too. So if it has seen 1000x def in Python and 100x def in Ruby then it may still say Python even though puts and end is Ruby-specific. You could fix this by keeping track of the words seen per language and dividing by that somewhere (or by feeding it equal amounts of code in each language).

I hope it helps you:

class Classifier
  def initialize
    @data = {}
    @totals = Hash.new(1)

  def words(code)
    code.split(/[^a-z]/).reject{|w| w.empty?}

  def train(code,lang)
    @totals[lang] += 1
    @data[lang] ||= Hash.new(1)
    words(code).each {|w| @data[lang][w] += 1 }

  def classify(code)
    ws = words(code)
    @data.keys.max_by do |lang|
      # We really want to multiply here but I use logs 
      # to avoid floating point underflow
      # (adding logs is equivalent to multiplication)
      Math.log(@totals[lang]) +
      ws.map{|w| Math.log(@data[lang][w])}.reduce(:+)

# Example usage

c = Classifier.new

# Train from files
c.train(open("code.rb").read, :ruby)
c.train(open("code.py").read, :python)
c.train(open("code.cs").read, :csharp)

# Test it on another file
c.classify(open("code2.py").read) # => :python (hopefully)
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I also need to use it in forum software. Thanks for the tip about the Bayesian filtering. –  triton Jan 23 '09 at 23:29
huh, you learn something new everyday around here; +1 –  jcollum Jan 23 '09 at 23:37
Thanks for the example code. –  triton Jan 24 '09 at 13:37
I did something like this in my NLP class, but we took it a step further. You don't like look at frequencies of a single word, but pairs and triples of words. For example, "public" might be a keyword in many languages, but "public static void" is more common to C#. If the triple can't be found, you fall back to 2, and then 1. –  Mark Nov 28 '10 at 0:39
Might also want to think about where you're splitting the words. In PHP, variables start with $, so maybe you shouldn't be splitting on word bounds, because the $ should stick with the variable. Operators like => and := should be stuck together as a single token, but OTH you probably should split around {s because they always stand on their own. –  Mark Nov 28 '10 at 0:44

Language detection solved by others:

Ohloh's approach: https://github.com/blackducksw/ohcount/

Github's approach: https://github.com/github/linguist

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I examined both of these solutions and neither will do exactly what was asked. They mainly look at the file extensions to determine the language, so they can't necessarily examine a snippet without a clue from the extension. –  Hawkee Apr 5 '12 at 15:10
Github's approach now includes a Bayesian classifier too. It primarily detects a language candidate based on file extension, but when a file extension matches multiple candidates (e.g. ".h" --> C,C++,ObjC), it will tokenize the input code sample and classify against a pre-trained set of data. The Github version can be forced to scan the code always without looking at the extension too. –  Benzi May 2 '13 at 11:47

You might find some useful material here: http://alexgorbatchev.com/wiki/SyntaxHighlighter. Alex has spent a lot of time figuring out how to parse a large number of different languages, and what the key syntax elements are.

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It's very hard and sometimes impossible. Which language is this short snippet from?

int i = 5;
int k = 0;
for (int j = 100 ; j > i ; i++) {
    j = j + 1000 / i;
    k = k + i * j;

(Hint: It could be any one out of several.)

You can try to analyze various languages and try to decide using frequency analysis of keywords. If certain sets of keywords occur with certain frequencies in a text it's likely that the language is Java etc. But I don't think you will get anything that is completely fool proof, as you could name for example a variable in C the same name as a keyword in Java, and the frequency analysis will be fooled.

If you take it up a notch in complexity you could look for structures, if a certain keyword always comes after another one, that will get you more clues. But it will also be much harder to design and implement.

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Well, if several languages are possible, the detector can just give all the possible candidates. –  Steven Haryanto Mar 21 '13 at 3:35

An alternative is to use highlight.js, which performs syntax highlighting but uses the success-rate of the highlighting process to identify the language. In principle, any syntax highlighter codebase could be used in the same way, but the nice thing about highlight.js is that language detection is considered a feature and is used for testing purposes.

UPDATE: I tried this and it didn't work that well. Compressed JavaScript completely confused it, i.e. the tokenizer is whitespace sensitive. Generally, just counting highlight hits does not seem very reliable. A stronger parser, or perhaps unmatched section counts, might work better.

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The language data included in highlight.js is limited to the values needed for highlighting, which turns out to be quite insufficient for language detection (especially for small amounts of code). –  Adam Kennedy Dec 4 '13 at 2:33

It would depend on what type of snippet you have, but I would run it through a series of tokenizers and see which language's BNF it came up as valid against.

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All languages can't even be described by a BNF. If you're allowed to redefine keywords and create macros it gets much harder. Alså as we're talking about a snippet you would have to do partial match against a BNF, which is harder and more error prone. –  user14070 Jan 23 '09 at 23:29

First, I would try to find the specific keyworks of a language e.g.

"package, class, implements "=> JAVA
"<?php " => PHP
"include main fopen strcmp stdout "=>C
"cout"=> C++
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Problem is that those keywords can still appear in any language, either as variable names or in strings. That, and there's a lot of overlap in keywords used. You'd have to do more than just look a keywords. –  Mark Nov 28 '10 at 0:26

Nice puzzle.

I think it is imposible to detect all languages. But you could trigger on key tokens. (certain reserved words and often used character combinations).

Ben there are a lot of languages with similar syntax. So it depends on the size of the snippet.

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Prettify is a Javascript package that does an okay job of detecting programming languages:


It is mainly a syntax highlighter, but there is probably a way to extract the detection part for the purposes of detecting the language from a snippet.

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Upon further inspection it seems prettify doesn't actually detect the language, but it highlights according to the syntax of each element. –  Hawkee Apr 5 '12 at 16:51

I wouldn't think there would be an easy way of accomplishing this. I would probably generate lists of symbols/common keywords unique to certain languages/classes of languages (e.g. curly brackets for C-style language, the Dim and Sub keywords for BASIC languages, the def keyword for Python, the let keyword for functional languages). You then might be able to use basic syntax features to narrow it down even further.

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I think the biggest distinction between languages is its structure. So my idea would be to look at certain common elements across all languages and see how they differ. For example, you could use regexes to pick out things such as:

  • function definitions
  • variable declarations
  • class declarations
  • comments
  • for loops
  • while loops
  • print statements

And maybe a few other things that most languages should have. Then use a point system. Award at most 1 point for each element if the regex is found. Obviously, some languages will use the exact same syntax (for loops are often written like for(int i=0; i<x; ++i) so multiple languages could each score a point for the same thing, but at least you're reducing the likelihood of it being an entirely different language). Some of them might scores 0s across the board (the snippet doesnt contain a function at all, for example) but thats perfectly fine.

Combine this with Jules' solution, and it should work pretty well. Maybe also look for frequencies of keywords for an extra point.

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Interesting. I have a similar task to recognize text in different formats. YAML, JSON, XML, or Java properties? Even with syntax errors, for example, I should tell apart JSON from XML with confidence.

I figure how we model the problem is critical. As Mark said, single-word tokenization is necessary but likely not enough. We will need bigrams, or even trigrams. But I think we can go further from there knowing that we are looking at programming languages. I notice that almost any programming language has two unique types of tokens -- symbols and keywords. Symbols are relatively easy (some symbols might be literals not part of the language) to recognize. Then bigrams or trigrams of symbols will pick up unique syntax structures around symbols. Keywords is another easy target if the training set is big and diverse enough. A useful feature could be bigrams around possible keywords. Another interesting type of token is whitespace. Actually if we tokenize in the usual way by white space, we will loose this information. I'd say, for analyzing programming languages, we keep the whitespace tokens as this may carry useful information about the syntax structure.

Finally if I choose a classifier like random forest, I will crawl github and gather all the public source code. Most of the source code file can be labeled by file suffix. For each file, I will randomly split it at empty lines into snippets of various sizes. I will then extract the features and train the classifier using the labeled snippets. After training is done, the classifier can be tested for precision and recall.

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