| | from datasets import load_dataset, Dataset |
| | import pandas as pd |
| | from collections import defaultdict |
| | import pygments |
| |
|
| | list_languages = ['ada', 'agda', 'alloy', 'antlr', 'applescript', 'assembly', 'augeas', 'awk', 'batchfile', 'bison', |
| | 'bluespec', 'c', 'c++', 'c-sharp', 'clojure', 'cmake', 'coffeescript', 'common-lisp', 'css', 'cuda', 'dart', 'dockerfile', 'elixir', |
| | 'elm', 'emacs-lisp','erlang', 'f-sharp', 'fortran', 'glsl', 'go', 'groovy', 'haskell','html', 'idris', 'isabelle', 'java', |
| | 'java-server-pages', 'javascript', 'stan', 'julia', 'kotlin', 'lean', 'literate-agda', 'literate-coffeescript', 'literate-haskell', |
| | 'lua', 'makefile', 'maple', 'markdown', 'mathematica', 'matlab', 'ocaml', 'pascal', 'perl', 'php', 'powershell', 'prolog', |
| | 'protocol-buffer', 'python', 'r', 'racket', 'restructuredtext', 'rmarkdown', 'ruby', 'rust', 'sas', 'scala', 'scheme', |
| | 'shell', 'smalltalk', 'solidity', 'sparql', 'sql', 'stan', 'standard-ml', 'stata', 'systemverilog', 'tcl', 'tcsh', 'tex', |
| | 'thrift', 'typescript', 'verilog', 'vhdl', 'visual-basic', 'xslt', 'yacc', 'zig'] |
| |
|
| | lmap = {'c-sharp':'csharp', 'f-sharp':'fsharp', 'standard-ml':'sml', 'batchfile':'batch','java-server-pages':'jsp'} |
| |
|
| | extra_columns = [ |
| | "hexsha", |
| | "max_stars_repo_path", |
| | "max_stars_repo_name", |
| | "max_stars_repo_head_hexsha", |
| | "max_stars_repo_stars_event_min_datetime", |
| | "max_stars_repo_stars_event_max_datetime", |
| | "max_issues_repo_path", |
| | "max_issues_repo_name", |
| | "max_issues_repo_head_hexsha", |
| | "max_issues_repo_licenses", |
| | "max_issues_count", |
| | "max_issues_repo_issues_event_min_datetime", |
| | "max_issues_repo_issues_event_max_datetime", |
| | "max_forks_repo_path", |
| | "max_forks_repo_name", |
| | "max_forks_repo_head_hexsha", |
| | "max_forks_repo_licenses", |
| | "max_forks_count", |
| | "max_forks_repo_forks_event_min_datetime", |
| | "max_forks_repo_forks_event_max_datetime", |
| | ] |
| |
|
| | seed = 0 |
| | size = 20_000 |
| | buffer_size = 40_000 |
| | max_data_per_ext = 1000 |
| | df = pd.DataFrame( |
| | columns=[ |
| | "extension", |
| | "language", |
| | "count", |
| | "low_alphanum_count", |
| | "long_lines_count", |
| | "non_lexable_count", |
| | ] |
| | ) |
| |
|
| | def low_alphanum(example): |
| | return {"low_alphanum": example["alphanum_fraction"] < 0.25} |
| |
|
| | def long_line(example): |
| | return {"long_lines": example["max_line_length"] > 1000 or example["avg_line_length"] > 100} |
| |
|
| | def pygments_language_id_to_thestack_language_id(str): |
| | if str in lmap: |
| | return lmap[str] |
| | return str |
| |
|
| | def can_lex_without_errors(lexer, contents: str): |
| | tokens = pygments.lex(contents, lexer) |
| | for (tok_type, tok_text) in tokens: |
| | if tok_type == pygments.token.Token.Error: |
| | return False |
| | return True |
| |
|
| | def lexable(example, language): |
| | try: |
| | lexer = pygments.lexers.get_lexer_by_name(pygments_language_id_to_thestack_language_id(language)) |
| | except: |
| | return {"lexable": "notfound"} |
| | return {"lexable": can_lex_without_errors(lexer, example["content"])} |
| |
|
| |
|
| | for language in list_languages: |
| | thestack = load_dataset( |
| | "bigcode/the-stack", |
| | use_auth_token=True, |
| | split="train", |
| | streaming=True, |
| | data_dir=f"data/{language}", |
| | ) |
| | thestack = thestack.shuffle(seed=seed, buffer_size=buffer_size) |
| | print(f"subset {language} ready, now selecting {size} samples") |
| |
|
| | |
| | small_ds = list(thestack.take(size)) |
| | small_ds = Dataset.from_pandas(pd.DataFrame(data=small_ds)) |
| | small_ds = small_ds.remove_columns(extra_columns) |
| | print(f"Dataset of {size} samples of {language} creaded") |
| |
|
| | |
| | dict_extensions = defaultdict(int) |
| | for extension in small_ds["ext"]: |
| | dict_extensions[extension] += 1 |
| | dict_extensions = dict(dict_extensions) |
| | print(f"Initial extension dist: {dict_extensions}") |
| |
|
| | |
| | for ext in dict_extensions: |
| | ext_ds = small_ds.filter(lambda x: x["ext"] == ext) |
| | real_count = min(max_data_per_ext, len(ext_ds)) |
| | ext_ds = ext_ds.select(range(real_count)) |
| |
|
| | |
| | ext_ds = ext_ds.map(low_alphanum) |
| | ext_ds = ext_ds.map(long_line) |
| | ext_ds = ext_ds.map(lambda x: lexable(x, language)) |
| |
|
| | low_alphanum_count = sum( |
| | low_alphanum for low_alphanum in ext_ds["low_alphanum"] |
| | ) |
| | long_lines_count = sum(long_line for long_line in ext_ds["long_lines"]) |
| | non_lexable_count = sum(not lexable for lexable in ext_ds["lexable"]) |
| |
|
| | new_dict = { |
| | "extension": ext, |
| | "language": language, |
| | "count": real_count, |
| | "low_alphanum_count": low_alphanum_count, |
| | "long_lines_count": long_lines_count, |
| | "non_lexable_count": non_lexable_count, |
| | } |
| | df = df.append(new_dict, ignore_index=True) |
| | print(f"New extension count: {new_dict}") |
| |
|
| | path = f"./data/{language}/{ext}/data.json" |
| | ext_ds.to_json(path) |
| | print(f"Subset of langugae: {language}, and extension: {ext} saved") |
| |
|
| | |
| | df.to_csv("./data/extension_distribution.csv") |