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Multilingual name romanization lookup across Chinese, Japanese, Korean, Arabic, Vietnamese, and more. Resolves whether two name spellings refer to the same pers
Multilingual name romanization lookup across Chinese, Japanese, Korean, Arabic, Vietnamese, and more. Resolves whether two name spellings refer to the same person — Chan/Chen/陳/陈, Hsu/Xu, Chou/Zhou — across Pinyin, Wade-Giles, Cantonese, Hokkien, and other romanization systems.
PyPI Tests License: MIT Sponsor name-variants MCP server
"Chan" is simultaneously 陳, 陈 and 찬 and จัน — lookup() returns all of them.
Every romanization system produces a member of an equivalence class: no canonical form, no ordering dependency, no silent data loss. share_cluster("Hsu", "Xu") is True. lookup("Chan") returns a Chinese surname cluster and a Korean given-name cluster, sorted by bearer count.
Available as a Python library, CLI, pandas accessor, and Model Context Protocol (MCP) server.
pip install name-variants
A NameCluster is a frozenset of co-equal representations. 陳, 陈, chen, chan, tan, chern are all members of the same Chinese surname cluster — none is more "real" than another. lookup() returns every cluster that contains your query, sorted by frequency:
from name_variants import lookup, share_cluster
clusters = lookup("Chan")
# [NameCluster(language='chinese', 8 forms),
# NameCluster(language='korean_given', 3 forms)]
# Both Chinese scripts are in the same cluster — co-equal
assert "陈" in clusters[0] # Simplified
assert "陳" in clusters[0] # Traditional
# Membership is case-insensitive
assert "CHAN" in clusters[0]
# Ambiguity is surfaced, not suppressed
assert len(clusters) == 2 # Chinese AND Korean, not one-or-the-other
from name_variants import lookup
lookup("Chan")
# [NameCluster(language='chinese', 8 forms),
# NameCluster(language='korean_given', 3 forms)]
lookup("Nguyen")
# [NameCluster(language='vietnamese', 4 forms)]
lookup("Smith")
# []
Results are sorted by frequency descending — most statistically likely interpretation first.
from name_variants import share_cluster
share_cluster("Chan", "Chen") # True — same Chinese cluster
share_cluster("Chou", "Zhou") # True — Wade-Giles = Pinyin
share_cluster("Chiang", "Jiang") # True — Chiang Kai-shek / 蒋介石
share_cluster("Hsu", "Xu") # True — Taiwan diaspora romanization
share_cluster("Tsao", "Cao") # True — Ts'ao Ts'ao / 曹操
share_cluster("Chan", "Kim") # False — different names
share_cluster("", "Chan") # False — empty input
from name_variants import dialect
dialect("chen") # "mandarin_pinyin"
dialect("chan") # "cantonese"
dialect("tan") # "hokkien"
dialect("chou") # "wade_giles"
dialect("hsu") # "wade_giles"
dialect("陳") # "traditional"
dialect("Smith") # None
from name_variants import normalize
normalize(" NGUYỄN ") # "nguyễn"
normalize("Nguyễn", strip_diacritics=True) # "nguyen"
normalize("chan") # strips zero-width spaces
nv lookup Chan
# [chinese] (~90M bearers)
# 陈 陳 chan chen tan ...
# [korean_given]
# 찬 chan chahn
nv match Chan Chen # true
nv match Chan Kim # false
nv match --exit-code Chan Chen && echo same # shell-scripting friendly
nv canonicalize-csv names.csv --col name --out out.csv
# adds {name}_canonical column
nv dedupe names.csv --col name --out out.csv
# adds cluster_id column grouping romanization variants
pip install "name-variants[pandas]"
import pandas as pd
import name_variants # registers .nv accessor
s = pd.Series(["Chan", "Chen", "Smith", "Park"])
s.nv.lookup()
# 0 [NameCluster(chinese, ...), NameCluster(korean_given, ...)]
# 1 [NameCluster(chinese, ...)]
# 2 []
# 3 [NameCluster(korean, ...)]
s.nv.cluster_id()
# 0 a3f2b1c4d5e6 ← same as row 1 (Chan and Chen share chinese cluster)
# 1 a3f2b1c4d5e6
# 2 ← empty string for unknown
# 3 9b8c7d6e5f4a
a = pd.Series(["Chan", "Park"])
b = pd.Series(["Chen", "Bak"])
a.nv.share_cluster_with(b) # [True, True]
name-variants ships a built-in Model Context Protocol server, exposing name lookup as MCP tools that any MCP-compatible AI client (Claude Desktop, Claude Code, Cursor, etc.) can call directly.
Claude Code:
claude mcp add name-variants -- uvx --from "name-variants[mcp]" nv-mcp
Claude Desktop — add to claude_desktop_config.json:
{
"mcpServers": {
"name-variants": {
"command": "uvx",
"args": ["--from", "name-variants[mcp]", "nv-mcp"]
}
}
}
Three MCP tools are exposed:
| Tool | Arguments | Returns |
|---|---|---|
lookup |
text: str |
list of {language, forms[], frequency} clusters |
share_cluster |
a: str, b: str |
true / false |
dialect |
text: str |
romanization system string or null |
| Language | Entries | Coverage |
|---|---|---|
chinese |
140 | Pinyin + Wade-Giles + Cantonese + Hokkien + Hakka + Teochew + Traditional |
japanese |
143 | Hepburn + macron variants |
korean |
100 | Revised Romanization + McCune-Reischauer |
arabic |
92 | Multiple transliteration systems |
vietnamese |
84 | Diacritics + stripped forms |
russian |
79 | Multiple transliteration systems |
indonesian_malay |
77 | — |
persian |
80 | — |
indian_hindi |
80 | — |
hebrew |
75 | — |
turkish |
74 | Dotted-İ variants |
greek |
60 | — |
thai |
68 | — |
indian_bengali |
56 | — |
indian_tamil |
53 | — |
chinese_given |
120 | Common given-name characters with Pinyin |
korean_given |
70 | Common given-name syllables |
japanese_given |
107 | Common given-name kanji |
from name_variants import ALL_TABLES
list(ALL_TABLES.keys()) # all 18 table names
| System | Examples |
|---|---|
| Mandarin Pinyin | Zhou, Zhang, Wang, Xu |
| Wade-Giles | Chou, Chang, Wang, Hsu, Tsao, Kuo, Hsieh |
| Cantonese (Jyutping/Yale) | Chan, Wong, Ng, Lam, Tsui |
| Hokkien/Min Nan | Tan, Ng, Lim, Goh |
| Hakka | Fong, Thong |
| Teochew | Teo, Ng |
| Postal romanization | Peking, Nanking, Chungking |
| Traditional characters | 陳, 劉, 張, 楊, 趙 |
@dataclass(frozen=True)
class NameCluster:
forms: frozenset[str] # all representations — co-equal
language: str # "chinese", "korean", "vietnamese", etc.
frequency: int | None # approximate global bearer count
def __contains__(self, text: str) -> bool # case-insensitive
def __iter__(self) # iterate all forms
def __len__(self)
A canonical-key model forces a false choice: "Chan" must map to either 陈 or 찬, not both. Table ordering becomes load-bearing — whichever table is consulted last wins. Romanizations must be stripped from given-name tables to prevent collisions.
The NameCluster model eliminates this: every romanization system's output is just another member of a frozenset. lookup() returns all matching clusters. Ambiguity is surfaced, not suppressed. The most likely interpretation comes first by frequency.
git clone https://github.com/SecurityRonin/name-variants
cd name-variants
pip install -e ".[dev]"
pytest
Data files are in name_variants/*_names.py and name_variants/*_surnames.py. Each entry is a plain Python dict — easy to read and edit:
"陈": {
"forms": ["陳", "chen", "chan", "tan", ...],
"frequency": 90_000_000,
"dialects": {
"chen": "mandarin_pinyin",
"chan": "cantonese",
"tan": "hokkien",
"陳": "traditional",
},
},
Adding a new variant is one edit to one entry — forms, frequency, and dialect tag colocated.
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Выполни в терминале:
claude mcp add name-variants -- npx