Dataset Viewer
Auto-converted to Parquet Duplicate
Original_Name
stringlengths
2
60
Gender
stringclasses
3 values
Name_Type
stringclasses
2 values
Country_Code
stringclasses
104 values
Source
stringclasses
1 value
Name_Script
stringclasses
10 values
A A
M
First_Name
AE
names-dataset-533M
Latin
A A
M
First_Name
BD
names-dataset-533M
Latin
A A
M
First_Name
EG
names-dataset-533M
Latin
A A
M
First_Name
ES
names-dataset-533M
Latin
A A
M
First_Name
IN
names-dataset-533M
Latin
A A
M
First_Name
IQ
names-dataset-533M
Latin
A A
M
First_Name
MA
names-dataset-533M
Latin
A A
M
First_Name
NG
names-dataset-533M
Latin
A A
M
First_Name
SA
names-dataset-533M
Latin
A A
M
First_Name
US
names-dataset-533M
Latin
A A A
M
First_Name
BD
names-dataset-533M
Latin
A A A
M
First_Name
IN
names-dataset-533M
Latin
A A A
M
First_Name
MX
names-dataset-533M
Latin
A A A
M
First_Name
SA
names-dataset-533M
Latin
A A A
M
First_Name
US
names-dataset-533M
Latin
A A Ron
M
First_Name
CA
names-dataset-533M
Latin
A A Ron
M
First_Name
GB
names-dataset-533M
Latin
A A Ron
M
First_Name
IE
names-dataset-533M
Latin
A A Ron
M
First_Name
MT
names-dataset-533M
Latin
A A Ron
M
First_Name
PE
names-dataset-533M
Latin
A A Ron
M
First_Name
US
names-dataset-533M
Latin
A Abdiel
M
First_Name
PA
names-dataset-533M
Latin
A Abera
M
First_Name
ET
names-dataset-533M
Latin
A Al
M
First_Name
AE
names-dataset-533M
Latin
A Al
M
First_Name
BD
names-dataset-533M
Latin
A Al
M
First_Name
DZ
names-dataset-533M
Latin
A Al
M
First_Name
EG
names-dataset-533M
Latin
A Al
M
First_Name
KW
names-dataset-533M
Latin
A Al
M
First_Name
NL
names-dataset-533M
Latin
A Al
M
First_Name
OM
names-dataset-533M
Latin
A Al
M
First_Name
QA
names-dataset-533M
Latin
A Al
M
First_Name
SA
names-dataset-533M
Latin
A Al
M
First_Name
US
names-dataset-533M
Latin
A Alberto
M
First_Name
CO
names-dataset-533M
Latin
A Alberto
M
First_Name
CR
names-dataset-533M
Latin
A Alberto
M
First_Name
ES
names-dataset-533M
Latin
A Alberto
M
First_Name
IT
names-dataset-533M
Latin
A Alberto
M
First_Name
MX
names-dataset-533M
Latin
A Alberto
M
First_Name
PE
names-dataset-533M
Latin
A Alberto
M
First_Name
US
names-dataset-533M
Latin
A Alberto
M
First_Name
ZA
names-dataset-533M
Latin
A Alilliom
F
First_Name
HU
names-dataset-533M
Latin
A Amila
M
First_Name
SI
names-dataset-533M
Latin
A Amson
M
First_Name
GE
names-dataset-533M
Latin
A Ana
F
First_Name
BR
names-dataset-533M
Latin
A Ana
F
First_Name
CO
names-dataset-533M
Latin
A Ana
F
First_Name
ES
names-dataset-533M
Latin
A Ana
F
First_Name
MX
names-dataset-533M
Latin
A Ana
F
First_Name
PE
names-dataset-533M
Latin
A Ana
F
First_Name
PS
names-dataset-533M
Latin
A Ana
F
First_Name
PT
names-dataset-533M
Latin
A Anar
U
First_Name
AZ
names-dataset-533M
Latin
A Aziz
M
First_Name
BD
names-dataset-533M
Latin
A Aziz
M
First_Name
BH
names-dataset-533M
Latin
A Aziz
M
First_Name
DZ
names-dataset-533M
Latin
A Aziz
M
First_Name
EG
names-dataset-533M
Latin
A Aziz
M
First_Name
MA
names-dataset-533M
Latin
A Aziz
M
First_Name
MY
names-dataset-533M
Latin
A Aziz
M
First_Name
OM
names-dataset-533M
Latin
A Aziz
M
First_Name
QA
names-dataset-533M
Latin
A Aziz
M
First_Name
SA
names-dataset-533M
Latin
A Aziz
M
First_Name
TR
names-dataset-533M
Latin
A B
M
First_Name
AE
names-dataset-533M
Latin
A B
M
First_Name
BD
names-dataset-533M
Latin
A B
M
First_Name
EG
names-dataset-533M
Latin
A B
M
First_Name
IN
names-dataset-533M
Latin
A B
M
First_Name
MA
names-dataset-533M
Latin
A B
M
First_Name
MY
names-dataset-533M
Latin
A B
M
First_Name
NG
names-dataset-533M
Latin
A B
M
First_Name
OM
names-dataset-533M
Latin
A B
M
First_Name
SA
names-dataset-533M
Latin
A B
M
First_Name
US
names-dataset-533M
Latin
A B M
M
First_Name
BD
names-dataset-533M
Latin
A B M
M
First_Name
GB
names-dataset-533M
Latin
A B M
M
First_Name
MY
names-dataset-533M
Latin
A B M
M
First_Name
NL
names-dataset-533M
Latin
A Baki
U
First_Name
AT
names-dataset-533M
Latin
A Baki
U
First_Name
DZ
names-dataset-533M
Latin
A Baki
U
First_Name
TR
names-dataset-533M
Latin
A Baki
U
First_Name
YE
names-dataset-533M
Latin
A Bed
M
First_Name
EG
names-dataset-533M
Latin
A Bed
M
First_Name
IL
names-dataset-533M
Latin
A Bed
M
First_Name
IQ
names-dataset-533M
Latin
A Bed
M
First_Name
IR
names-dataset-533M
Latin
A Bed
M
First_Name
JO
names-dataset-533M
Latin
A Bed
M
First_Name
LB
names-dataset-533M
Latin
A Bed
M
First_Name
LY
names-dataset-533M
Latin
A Bed
M
First_Name
MA
names-dataset-533M
Latin
A Bed
M
First_Name
PS
names-dataset-533M
Latin
A Bed
M
First_Name
SA
names-dataset-533M
Latin
A Beer
F
First_Name
AE
names-dataset-533M
Latin
A Beer
F
First_Name
EG
names-dataset-533M
Latin
A Beer
F
First_Name
IL
names-dataset-533M
Latin
A Beer
F
First_Name
JO
names-dataset-533M
Latin
A Beer
F
First_Name
KW
names-dataset-533M
Latin
A Beer
F
First_Name
LY
names-dataset-533M
Latin
A Beer
F
First_Name
QA
names-dataset-533M
Latin
A Beer
F
First_Name
SA
names-dataset-533M
Latin
A Beer
F
First_Name
SD
names-dataset-533M
Latin
A Beer
F
First_Name
SY
names-dataset-533M
Latin
End of preview. Expand in Data Studio

Global Human Names Dataset (Enriched)

Dataset Description

The Global Human Names Dataset is a massive, highly structured demographic dataset containing 9.5 million rows of geographic, gender-based, and script-analyzed name distributions. It maps over 1.7 million unique human names (first names and last names) across more than 100 countries worldwide.

This dataset is designed for sociolinguistic research, machine learning (e.g., gender prediction, cultural origin inference, script detection), and demographic analysis. It aggregates data from multiple massive public sources, including statistical representations of over 533 million individuals globally.

Dataset Summary

  • Total Records: 9,504,865
  • Unique First Names: ~727,555
  • Unique Last Names: ~983,824
  • Unique Countries Represented: 104 (ISO 3166-1 alpha-2 format)
  • Timeframe: Contemporary / Modern

Data Structure

Data Fields

The dataset is provided in a single CSV file with the following columns:

  • Original_Name (string): The name in its original or romanized format.
  • Gender (string): The statistically dominant gender for the name.
    • M: Male
    • F: Female
    • U: Unisex or Unknown/Not specified (Common for Last Names).
  • Name_Type (string): Classification of the name.
    • First_Name
    • Last_Name
  • Country_Code (string): The 2-letter ISO country code (e.g., US, YE, SA, FR) where the name is prominent.
  • Source (string): The originating dataset or source from which the record was extracted (e.g., names-dataset-533M).
  • Name_Script (string): [NEW] The writing system (Alphabet/Script) detected using Unicode block analysis (e.g., Latin, Arabic, Cyrillic, CJK, Devanagari).

(Note: Because a single name can appear in multiple countries, the dataset contains multiple rows per name. For example, the name "Ali" might have a row for "YE", a row for "EG", and a row for "AE").

Sample Row

Original_Name Gender Name_Type Country_Code Source Name_Script
Ahmed M First_Name YE names-dataset-533M Latin
ماجدولين F First_Name MA names-dataset-533M Arabic

Statistics & Insights

Based on exploratory data analysis (EDA) of the 9.5 million rows:

  • Script Distribution: Latin dominates globally (86.17%), but Arabic holds a massive second place (8.70% / ~827,000 occurrences), followed by Cyrillic (2.51%) and CJK (1.08%).
  • Cultural Naming Patterns: In the CJK (Chinese/Japanese/Korean) script, a staggering 90.4% of entries are First Names. In contrast, Cyrillic names are predominantly Last Names (64.8%).
  • Most Diverse Countries: The UAE (AE) and Iraq (IQ) rank as the most globally diverse countries in this dataset, containing names written in all 10 major world scripts.
  • Gender Distribution: Unknown/Unisex (58.7%), Male (25.7%), Female (15.6%). Note: The high percentage of Unisex is due to Last Names, which are inherently gender-neutral.
  • Most Common Starting Letter: Names starting with the letter 'M' are the most common globally (8.53%).

Usage

Pandas

You can easily load and filter the dataset using Pandas:

import pandas as pd

# Load the dataset
df = pd.read_csv("hf://datasets/aborasheed/Global-Human-Names/global_names_with_scripts.csv")

# Filter for female Arabic-script names in Saudi Arabia (SA)
saudi_arabic_females = df[(df['Country_Code'] == 'SA') & (df['Gender'] == 'F') & (df['Name_Script'] == 'Arabic')]
print(saudi_arabic_females.head())

Hugging Face Datasets

from datasets import load_dataset

dataset = load_dataset("aborasheed/Global-Human-Names")

Ethical Considerations & Privacy

  • Anonymization: This dataset contains no personally identifiable information (PII). There are no phone numbers, email addresses, physical addresses, or full names tied to specific individuals.
  • Aggregation: The data consists purely of aggregated statistical counts and probabilities of names appearing in certain regions.
  • Bias & Representation: While massive, the dataset may still exhibit geographic biases based on internet penetration and social media usage in different countries. Some regions may be overrepresented (e.g., Western Europe, North America) while others may be underrepresented.

Credits & Sources

This dataset was compiled and organized by [aborasheed]. The underlying statistical data utilizes the open-source names-dataset library by Philippe Remy, which inferred geographic and gender distributions from large-scale anonymized public datasets. Unicode script detection was applied post-extraction to enrich the linguistic depth of the dataset.

Downloads last month
66