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Cleaned dataset from the Billionaires Statistic Dataset (2023) that can be found here.
The code I used to clean and re-structure the data is also here.
First things first: a big shout-out to Nidula Elgiriyewithana for providing the original data.
As with it, this dataset contains various information about the world's wealthiest persons in different columns that can be grouped into three different types:
If you want a challenge, you can create a dashboard using tools such as Plotly to dynamically visualize the data using one or different attributes (such as industry, age or country). I did it, leave the link below in case you want to investigate:
If you find this dataset informative or inspirational, a vote is appreciated for others to easily discover value in it 💎💰
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Dataset Card for 100 Richest People In World
Dataset Summary
This dataset contains the list of Top 100 Richest People in the World Column Information:-
Name - Person Name NetWorth - His/Her Networth Age - Person Age Country - The country person belongs to Source - Information Source Industry - Expertise Domain
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[More Information Needed]… See the full description on the dataset page: https://huggingface.co/datasets/nateraw/100-richest-people-in-world.
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TwitterApache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
License information was derived automatically
This dataset provides a synthetic overview of the 1,000 wealthiest individuals in the world, offering insights into the distribution of wealth across industries and regions. It is designed to help analysts, researchers, and data enthusiasts explore global wealth trends, industry dominance, and regional wealth concentration.
Whether you're conducting market research, financial analysis, or data modeling, this dataset serves as a valuable resource for understanding the characteristics of the world's top billionaires.
📊 Key Features: Name 👤: The name of the billionaire. Country 🌍: Country of residence or primary business operation. Industry 🏭: Industry in which the individual has built their wealth. Net Worth (in billions) 💵: Estimated net worth in billions of USD. Company 🏢: The primary company or business associated with the billionaire. ⚠️ Important Note: This dataset is 100% synthetic and does not contain real financial or personal data. It is artificially generated for educational, analytical, and research purposes.
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TwitterThis dataset contains statistics on the world's billionaires, including information about their businesses, industries, and personal details. It provides insights into the wealth distribution, business sectors, and demographics of billionaires worldwide.
- rank: The ranking of the billionaire in terms of wealth.
- finalWorth: The final net worth of the billionaire in U.S. dollars.
- category: The category or industry in which the billionaire's business operates.
- personName: The full name of the billionaire.
- age: The age of the billionaire.
- country: The country in which the billionaire resides.
- city: The city in which the billionaire resides.
- source: The source of the billionaire's wealth.
- industries: The industries associated with the billionaire's business interests.
- countryOfCitizenship: The country of citizenship of the billionaire.
- organization: The name of the organization or company associated with the billionaire.
- selfMade: Indicates whether the billionaire is self-made (True/False).
- status: "D" represents self-made billionaires (Founders/Entrepreneurs) and "U" indicates inherited or unearned wealth.
- gender: The gender of the billionaire.
- birthDate: The birthdate of the billionaire.
- lastName: The last name of the billionaire.
- firstName: The first name of the billionaire.
- title: The title or honorific of the billionaire.
- date: The date of data collection.
- state: The state in which the billionaire resides.
- residenceStateRegion: The region or state of residence of the billionaire.
- birthYear: The birth year of the billionaire.
- birthMonth: The birth month of the billionaire.
- birthDay: The birth day of the billionaire.
- cpi_country: Consumer Price Index (CPI) for the billionaire's country.
- cpi_change_country: CPI change for the billionaire's country.
- gdp_country: Gross Domestic Product (GDP) for the billionaire's country.
- gross_tertiary_education_enrollment: Enrollment in tertiary education in the billionaire's country.
- gross_primary_education_enrollment_country: Enrollment in primary education in the billionaire's country.
- life_expectancy_country: Life expectancy in the billionaire's country.
- tax_revenue_country_country: Tax revenue in the billionaire's country.
- total_tax_rate_country: Total tax rate in the billionaire's country.
- population_country: Population of the billionaire's country.
- latitude_country: Latitude coordinate of the billionaire's country.
- longitude_country: Longitude coordinate of the billionaire's country.
- Wealth distribution analysis: Explore the distribution of billionaires' wealth across different industries, countries, and regions.
- Demographic analysis: Investigate the age, gender, and birthplace demographics of billionaires.
- Self-made vs. inherited wealth: Analyze the proportion of self-made billionaires and those who inherited their wealth.
- Economic indicators: Study correlations between billionaire wealth and economic indicators such as GDP, CPI, and tax rates.
- Geospatial analysis: Visualize the geographical distribution of billionaires and their wealth on a map.
- Trends over time: Track changes in billionaire demographics and wealth over the years.
If this was helpful, a vote is appreciated 🙂❤️
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TwitterThis dataset contains 200 rows and 7 columns.
The World's Billionaires is an annual ranking by documented net worth of the world's wealthiest billionaires compiled and published in March annually by the American business magazine Forbes. The list was first published in March 1987. The total net worth of each individual on the list is estimated and is cited in United States dollars, based on their documented assets and accounting for debt. Royalty and dictators whose wealth comes from their positions are excluded from these lists. This ranking is an index of the wealthiest documented individuals, excluding and ranking against those with wealth that is not able to be completely ascertained. (wikipedia)
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The World's Billionaires is an annual ranking by documented net worth of the wealthiest billionaires in the world, compiled and published in March annually by the American business magazine Forbes. The list was first published in March 1987. The total net worth of each individual on the list is estimated and is cited in United States dollars, based on their documented assets and accounting for debt and other factors. Royalty and dictators whose wealth comes from their positions are excluded from these lists. This ranking is an index of the wealthiest documented individuals, excluding any ranking of those with wealth that is not able to be completely ascertained.
Each year, Forbes employs a team of over 50 reporters from a variety of countries to track the activity of the world's wealthiest individuals and sometimes groups or families – who share wealth. Preliminary surveys are sent to those who may qualify for the list. According to Forbes, they received three types of responses – some people try to inflate their wealth, others cooperate but leave out details, and some refuse to answer any questions. Business deals are then scrutinized and estimates of valuable assets – land, homes, vehicles, artwork, etc. – are made. Interviews are conducted to vet the figures and improve the estimate of an individual's holdings. Finally, positions in a publicly traded stock are priced to market on a date roughly a month before publication. Privately held companies are priced by the prevailing price-to-sales or price-to-earnings ratios. Known debt is subtracted from assets to get a final estimate of an individual's estimated worth in United States dollars. Since stock prices fluctuate rapidly, an individual's true wealth and ranking at the time of publication may vary from their situation when the list was compiled.
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The dataset presents a glimpse into the elite echelons of global wealth, featuring prominent billionaires from diverse backgrounds and industries. At the helm is Bernard Arnault, a French titan in the consumer sector, followed closely by Jeff Bezos and Elon Musk, trailblazers in the technology realm hailing from the United States. These innovators, alongside luminaries like Mark Zuckerberg, Bill Gates, and Larry Page, have reshaped industries, propelled technological advancements, and amassed staggering fortunes. Notably, Warren Buffett, Larry Ellison, and Michael Dell represent the seasoned veterans of the tech and investment spheres, each leaving an indelible mark on their respective domains.
Diverse geographical representation is evident, with Mukesh Ambani from India and Carlos Slim from Mexico showcasing global wealth distribution. Ambani's influence extends across energy and telecommunications, while Slim's conglomerate spans telecommunications, real estate, and healthcare. Gautam Adani represents India's industrial prowess, steering his conglomerate through energy and infrastructure sectors.
This dataset underscores the intersection of wealth, innovation, and entrepreneurship, reflecting the evolving landscape of global capitalism. From disruptive tech visionaries to seasoned investors and industrialists, these billionaires symbolize the dynamism and influence of economic elites in shaping our world.
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Summary The article discusses an analysis conducted on the television show Shark Tank, where entrepreneurs from across the United States have the opportunity to pitch their ideas to a panel of billionaires. The show originated in Japan in 2009 and has gained popularity over the years. The analysis focuses on the six seasons of Shark Tank, comprising 122 episodes and featuring 495 companies.
Background The objective of the analysis was to determine which companies performed the best and received the most attention on the show. Additionally, the study aimed to identify any trends regarding the likelihood of these companies securing a deal with at least one of the sharks, referring to the panel of billionaires on the show.
The data used for the analysis was collected from Shark Analytics, an organization that compiled the relevant information into a consolidated dataset.
Data The data was collected from Shark Analytics, who was able to aggregate the information into one relative area.
Date Pulled: 23/05/2023 Total Seasons: 8 Total Episodes: 152 Total Companies on the Show: 495
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A dataset listing the richest zip codes in Mississippi per the most current US Census data, including information on rank and average income.
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TwitterAs of March 2025, Elon Musk had a net worth valued at 328.5 billion U.S. dollars, making him the richest man in the world. Amazon founder Jeff Bezos followed in second, with Marc Zuckerberg, the founder of Facebook, in third. The list is dominated by Americans, and Alice Walton and Francoise Bettencourt Meyers are the only women among the 20 richest people worldwide.
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Cleaned dataset from the Billionaires Statistic Dataset (2023) that can be found here.
The code I used to clean and re-structure the data is also here.
First things first: a big shout-out to Nidula Elgiriyewithana for providing the original data.
As with it, this dataset contains various information about the world's wealthiest persons in different columns that can be grouped into three different types:
If you want a challenge, you can create a dashboard using tools such as Plotly to dynamically visualize the data using one or different attributes (such as industry, age or country). I did it, leave the link below in case you want to investigate:
If you find this dataset informative or inspirational, a vote is appreciated for others to easily discover value in it 💎💰