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Linguistically motivated grapheme-to-IPA and allophone mappings for 350+ language codes

Project description

orthography2ipa

Linguistically motivated grapheme→IPA and allophone mappings for 350+ language codes across 20+ language families — pure data, a maximal-munch IPA tokenizer, and a family of phonological/script distance metrics, with no trained weights to ship.

Only mappings grounded in official orthography and documented grammar are included. Arbitrary substring rules are excluded.

Why two maps

The central distinction the package enforces:

  • A grapheme map tells you which phonemes a spelling can represent. English ⟨th⟩ → ['θ', 'ð'].
  • An allophone map tells you how a phoneme surfaces in context. English /t/ → ['t', 'tʰ', 'ɾ', 'ʔ', 't̚'].

Keeping these separate lets you go from text to phoneme candidates (transcription) and from phonemes to surface realisations (pronunciation modelling) without conflating the two.

What each language carries

Every LanguageSpec provides:

  1. Graphemes — orthographic units (characters, digraphs, trigraphs) mapped to canonical IPA phonemes.
  2. Allophones — each phoneme mapped to its positional/contextual surface realisations.
  3. Positional graphemes — context-sensitive overrides (word-initial, intervocalic, before /i/, …).
  4. Ancestry — weighted multi-ancestor lineage (parent, substrate, superstrate, adstrate, …) for dialect trees.
  5. Sandhi rules — cross-word phonological processes.
  6. Tone inventory — tone marks → labels, where applicable.
  7. ProvenanceQualityTier (stub → skeleton → research → production), ScriptType, and bibliographic sources.

Regional varieties get their own LanguageSpec objects linked through ancestry, and JSON data files support graphemes_base/allophones_base inheritance so a dialect only declares what differs from its parent.

Installation

pip install orthography2ipa

For the optional Arabic G2P backend:

pip install orthography2ipa[arabic]

Quick start

Transcribe text to IPA

import orthography2ipa

orthography2ipa.transcribe("olá mundo", "pt")        # 'oˈla ˈmundo'
orthography2ipa.transcribe("hello world", "en")       # 'hɛllɒ wɔːɹld'
orthography2ipa.transcribe("bona nuèit", "oc")        # 'buna nyɛjt'

# Beam search keeps ranked alternatives per word
from orthography2ipa import G2P

engine = G2P("pt-PT")
result = engine.transcribe_detailed("um café", search="beam", beam_width=4)
result.ipa                          # 'ˈum kaˈfɛ'
result.words[1].candidates          # ranked IPAPath alternatives

# The engine pipeline: normalize → tokenize → greedy/beam per word →
# stress marks (when the spec declares stress rules) → sandhi →
# dialect transform. Downstream engines (arbtok for Arabic, tugaphone
# for Portuguese) build on this library for richer language-specific
# pipelines.

Language specs

import orthography2ipa

# Get a language spec
en = orthography2ipa.get("en-GB")

# Grapheme → IPA candidates
en.graphemes["th"]    # ['θ', 'ð']

# Allophone map: how /t/ surfaces
en.allophones["t"]    # ['t', 'tʰ', 'ɾ', 'ʔ', 't̚']

# Metadata
en.name               # 'British English (RP)'
en.family             # 'Germanic'
en.script             # 'Latin'

# Regional variants share ancestry but diverge where pronunciation does
pt_br = orthography2ipa.get("pt-BR")
pt_br.graphemes["t"]  # ['t', 't͡ʃ']   — palatalisation before /i/

# Bare tags, ISO 639-3 aliases and near matches all resolve
orthography2ipa.get("eng").name   # 'British English (RP)'
orthography2ipa.resolve("pt")     # 'pt-PT' — reference variety
orthography2ipa.resolve("en-NZ")  # 'en-GB' — nearest registered

# Discover what's available
orthography2ipa.available_codes()
orthography2ipa.available_families()

IPA tokenizer

PhonetokTokenizer performs maximal-munch grapheme tokenization with beam-search IPA expansion, ranking candidate transcriptions when a spelling is ambiguous:

from orthography2ipa import get
from orthography2ipa.phonetok import PhonetokTokenizer

tok = PhonetokTokenizer(get("en-GB"))

tok.ipa_best("through")              # 'θɹɔː'
for path in tok.ipa_beam("through", beam_width=8):
    print(path.ipa, path.score)      # θɹɔː 0.0, ðɹɔː 1.0, θɹoʊ 1.0, …

Distance metrics

Compare two languages across inventory, grapheme, allophone, and ancestry dimensions:

from orthography2ipa import get
from orthography2ipa.distance import phonological_distance

d = phonological_distance(get("pt-BR"), get("pt-PT"))
d.combined                    # 0.04 — near-identical
d.inventory.feature_mean      # phoneme-inventory distance
d.grapheme.mean_ipa_distance  # grapheme-mapping divergence
d.allophone_sim               # allophone-overlap similarity

Script-level distance and feature vectors are available via script_distance.py and feats.py.

Command-line interface

After installation the orthography2ipa command is available. Every subcommand accepts --json for machine-readable output.

# List languages and families
orthography2ipa list
orthography2ipa list --families
orthography2ipa list --family Romance

# Inspect a language
orthography2ipa info pt-BR
orthography2ipa info pt-BR --graphemes
orthography2ipa info pt-BR --json

# Transcribe text to IPA
orthography2ipa transcribe pt "olá mundo"
orthography2ipa transcribe en-GB "through" --search beam --beam-width 8

# Phonological distance between two languages
orthography2ipa distance pt-BR pt-PT
orthography2ipa distance es-ES it-IT --json

Languages

Family Examples
Romance pt-PT, pt-BR, es-ES, es-AR, ca, fr-FR, it-IT, ro-RO, gl, oc, sc, an
Germanic en-GB, de-DE, nl-NL, sv-SE, da-DK, no-NO, af
Slavic ru-RU, uk-UA, pl-PL, cs-CZ, sr-RS, hr-HR, bg-BG
Celtic cy, ga, gd, br, kw, gv
Indo-Aryan hi-IN, bn-BD, ur-PK, ne-NP, pa, gu, mr
Semitic arb, he-IL, mt
Turkic tr-TR, az, kk, uz
Hellenic el-GR
Uralic fi-FI, hu-HU, et-EE
Japonic ja
Sinitic zh
Koreanic ko

350+ codes across 40+ family groupings, including reconstructed proto-languages and fine-grained regional dialects.

Data structure

@dataclass(frozen=True)
class LanguageSpec:
    code: str                              # 'pt-BR'
    name: str                              # 'Brazilian Portuguese'
    family: str                            # 'Romance'
    script: str                            # 'Latin'
    graphemes: Dict[str, List[str]]        # 'th' → ['θ', 'ð']
    allophones: Dict[str, List[str]]       # 't' → ['t', 'tʰ', 'ɾ', 'ʔ', 't̚']
    positional_graphemes: Dict[...]        # context-sensitive overrides
    parent: Optional[str]                  # primary parent code
    ancestors: Tuple[Ancestor, ...]        # weighted multi-ancestor lineage
    quality: QualityTier                   # stub | skeleton | research | production
    script_type: ScriptType                # alphabet | abjad | abugida | ...
    sandhi_rules: Tuple[SandhiRule, ...]   # cross-word rules
    tone_inventory: Optional[Dict]         # tone marks → labels
    sources: Tuple[LinguisticSource, ...]  # bibliographic references

When a spec declares graphemes but no explicit allophone map, a baseline identity allophone map is derived: every phoneme a grapheme can produce is, at minimum, its own surface realisation.

Design principles

  • Linguistically motivated only — digraphs like English ⟨th⟩, Portuguese ⟨lh⟩, or German ⟨sch⟩ are included because they are standard orthographic units; arbitrary substrings are not.
  • Graphemes ≠ allophones — spelling-to-phoneme and phoneme-to-surface are modelled separately.
  • Regional variants — where pronunciation diverges systematically, a separate LanguageSpec is provided with ancestry links.
  • Multi-ancestor inheritancegraphemes_base/allophones_base let dialect trees declare only their differences.
  • Pure data, pluggable logic — mappings are declarative JSON; algorithmic G2P (e.g. Arabic) uses the plugin system.

Plugins

Algorithmic G2P backends register under the orthography2ipa.g2p entry-point group. The bundled Arabic plugin (plugins/arabic_g2p.py) handles consonant mapping, harakat vowels, sun-letter assimilation, hamzat al-wasl elision, and tanwin forms.

A neural Arabic diacritizer (plugins/tashkeel.py) is wired as an optional ONNX backend but ships as a documented stub: with no model loaded it returns input unchanged, and the rule-based plugin transcribes whatever diacritics are present. Bundling a tashkeel model is planned future work.

Contributing

To add a language, create orthography2ipa/data/{code}.json following orthography2ipa/data/SCHEMA.md. For dialects, use graphemes_base/allophones_base to inherit from the parent.

License

Apache 2.0

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