RegTab: pattern-driven data extraction from document tables with regular structure — the Python port of jRegTab with a native Rust core.
pyRegTab compiles RTL (Regular Table Language) patterns into abstract table patterns (ATP), matches them against a table's syntactic layer (ITM), and interprets the match into a relational recordset:
TableSyntax → RtlCompiler/TablePattern → AtpMatcher → TableInterpreter → Recordset
pyRegTab 0.2.0 ≙ jRegTab 0.4.0 (same API, same semantics, same test
corpus), including the embedded RTL DSL pyregtab.dsl — a port of jRegTab's
ru.icc.regtab.dsl (added upstream in jRegTab 0.3.0).
pip install pyregtab
Binary wheels are published for Windows, Linux and macOS (x86-64 / arm64),
CPython ≥ 3.10 (one abi3 wheel per platform). Building from the sdist
requires a Rust toolchain.
from pyregtab import TableSyntax, RtlCompiler, AtpMatcher, TableInterpreter
syntax = TableSyntax(3, 3)
syntax.cell(0, 1).set_text("CA"); syntax.cell(0, 2).set_text("HU")
syntax.cell(1, 0).set_text("IKT"); syntax.cell(1, 1).set_text("0 Jan"); syntax.cell(1, 2).set_text("8 Feb")
syntax.cell(2, 0).set_text("SVO"); syntax.cell(2, 1).set_text("31 Jan"); syntax.cell(2, 2).set_text("40 Feb")
pattern = RtlCompiler.compile("""
[ [] [VAL : 'AIRLINE'->AVP]+ ]
[ [VAL : 'AIRPORT'->AVP]
[VAL : (COL, ROW, CL)->REC, 'ND'->AVP " " VAL : 'MON'->AVP]+ ]+
""")
itm = AtpMatcher.match(pattern, syntax) # InterpretableTable | None
rs = TableInterpreter().interpret(itm) # Recordset
rs.schema.attributes # ['ND', 'AIRLINE', 'AIRPORT', 'MON']
rs[0]["ND"] # '0'
df = rs.to_pandas() # extras: pip install pyregtab[pandas]Patterns can also be built without RTL, via the fluent spec API
(TablePattern.of(SubtablePattern.of(...)) — same factories as in Java,
snake_case method names), and serialized back to RTL with
AtpToRtlSerializer.serialize(pattern).
For a terser, RTL-like way to build patterns in code, use the embedded RTL
DSL (pyregtab.dsl) — see Embedded RTL below.
Named Python predicates are attached to RTL via EXT('name'):
from pyregtab import Bindings
p = RtlCompiler.compile(
"{ [ [EXT('isTotal') ? VAL : ST*->REC] []+ ] }+",
Bindings.of().cell("isTotal", lambda cell: cell.text.startswith("Total")),
)The pyregtab.dsl module is a fluent DSL that reads almost like RTL but is
ordinary Python — with IDE completion, structural typing, pattern composition
via plain variables, and Python callables as escape-hatch constraints. It builds
the same TablePattern objects as the compiler (verified byte-for-byte
against RtlCompiler.compile for a representative set of tasks in
tests/test_dsl.py).
from pyregtab.dsl import *
# RTL: { [ [VAL : ST*->REC] [VAL]{2} []+ ]
# [ [] [VAL]{4} []+ ] }+
p = table(
subtable(
row(cell(VAL, rec(ST.unbounded())), cell(VAL).exactly(2), skip().one_or_more()),
row(skip(), cell(VAL).exactly(4), skip().one_or_more()),
).one_or_more())Method names are snake_case (.one_or_more(), .and_(), .split_by()); the
vocabulary constants (VAL, ST, COL, C(n), …) match RTL. See the
Embedded RTL guide for the full mapping and the
where(...) escape hatch.
| Java | Python |
|---|---|
RtlCompiler.compile(String) |
RtlCompiler.compile(str) / pyregtab.compile(...) |
AtpMatcher.match(p, s) → Optional<InterpretableTable> |
AtpMatcher.match(p, s) → InterpretableTable | None |
Quantifier.oneOrMore() |
Quantifier.one_or_more() |
new TableInterpreter().withStrategy(s).interpret(itm) |
TableInterpreter().with_strategy(s).interpret(itm) |
rs.records().get(0).get("Name") |
rs[0]["Name"], rs.records, record.get("Name") |
cell.text() / cell.setText(t) |
property cell.text (get/set); cell.set_text(t) also works |
RtlCompileException |
RtlCompileError |
Everything after the Python call boundary runs in a native core written in
Rust (pyregtab._core, built with PyO3 and
maturin); the Python layer is a thin re-export.
grammar/RTL.g4— the normative specification of the RTL language (a verbatim copy from jRegTab; the upstream commit and the grammar's SHA-256 are recorded ingrammar/UPSTREAM). The core's parser is a hand-written lexer + recursive descent that structurally follows the grammar rules. A CI job (tools/check_grammar_sync.py) fails the build if the copy drifts from the pinned hash, and — when a jRegTab read token is available — cross-checks it byte-for-byte against the upstream commit.conformance/— the shared RTL conformance corpus (also pinned from jRegTab, seeconformance/UPSTREAMandconformance/README.md). Both implementations must compile every positive case to the same canonical form and reject every negative case; the corpus runs in CI of both projects. Any RTL language change flows:RTL.g4in jregtab → corpus extension → both parsers → green corpus in both CIs.- Regular expressions in RTL constraints are executed by the Rust
regexcrate (linear-time). The reference fixture corpus uses no lookaround/backreferences (audited), so the dialect is compatible withjava.util.regexon this corpus. Documented divergences from Java:\d/\s/\ware Unicode-aware inregex(ASCII in Java), andSUBSTRindices count code points (UTF-16 units in Java) — identical behavior on the entire reference corpus.
pytest tests runs (1 904 tests):
- the full benchmark suite — tasks 001–150 (Foofah, RegTab, Baikal),
every fixture variant, both via RTL patterns and via ATP patterns
built with the Python spec API (1 500 task variants in total; fixtures
are copied verbatim from jRegTab into
tests/fixtures/tasks, ATP builders are mechanically translated from the Java tests bytools/translate_atp.py); - embedded RTL DSL parity — 26 representative tasks/constructs built with
pyregtab.dslproduce byte-identical ATP toRtlCompiler.compile(tests/test_dsl.py); - the RTL conformance corpus (positive canonical forms, fixed points, negative rejections);
- RTL↔ATP round-trip for tasks 001–050;
- API unit tests (syntax layer, extractors, EXT bindings, custom predicates, transformations, interpreter options, GIL-released batch matching from a thread pool).
cargo test additionally runs the conformance corpus and an end-to-end
smoke test against the native core alone. Differential testing against the
Java reference (tools/differential.py + tools/RecordsetDumpMain.java)
compares recordsets cell-by-cell on all 750 task variants — zero
mismatches against jRegTab v0.4.0.
ide/vscode/ is a VS Code extension (and IntelliJ/PyCharm TextMate bundle)
that highlights .rtl files and RTL embedded in Python strings passed to
RtlCompiler.compile(...). See ide/README.md. RTL is also
validated at compile time: RtlCompiler.compile(...) raises RtlCompileError
with a line:col position on an invalid pattern.
python -m venv .venv && . .venv/bin/activate # or .venv\Scripts\activate
pip install maturin pytest
maturin develop --release
pytest tests -q
MIT