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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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This comprehensive dataset encapsulates a detailed snapshot of the wealthiest individuals globally, as listed by Forbes in 2024. Compiled through meticulous web scraping and data aggregation, the dataset includes a wide range of attributes for each billionaire. Fields encompass basic personal information such as name, age, and gender, alongside financial details including net worth and sources of wealth. The dataset further delves into aspects like industry involvement, organizational affiliations, philanthropic endeavors, and educational backgrounds.
Key attributes in this dataset include:
Name: Full legal name of the billionaire. Age: Age of the individual. 2024 Net Worth: Estimated net worth in USD for the year 2024. Industry: Primary industry or sector of operation. Source of Wealth: Origin of the billionaire’s wealth. Title: Professional title or position. Organization: Name of the associated organization. Self-Made: Indicator if the wealth is self-made. Self-Made Score: A quantitative score assessing how self-made their wealth is. Philanthropy Score: A score reflecting the extent of their philanthropic activities. Residence: Main residence of the individual. Citizenship: Legal citizenship. Gender: Gender identity. Marital Status: Current marital status. Children: Number of children. Education: Highest level of education attained.
This dataset is ideal for analysis, offering insights into the distribution of wealth, the influence of education on wealth accumulation, and trends across different industries. It also provides a foundation for exploring the impact of socioeconomic factors on personal wealth. The data were collected and formatted with careful consideration to ensure accuracy, making it a valuable resource for researchers, economists, and anyone interested in the dynamics of wealth and success.
Please note that some data is missing in this dataset, primarily due to the unavailability of information from Forbes. This issue becomes more prevalent beyond the top 400 entries. Many individuals lack a self-made score, a philanthropy score, or specific details regarding their title or organization as per Forbes' listings. I am currently working to update the dataset with this missing information. However, this update process is quite tedious and time-consuming since it is mostly manual. I appreciate your patience and understanding as I work through these details.
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This dataset contains the top 100 richest people in the world based on their net worth. The dataset includes their rank, name, net worth, birthday, age, and nationality.
This dataset was collected using web scraping (Beautiful Soup) on this website and this "https://en.wikipedia.org/wiki/List_of_countries_by_number_of_billionaires">wikipedia
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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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This dataset is extracted from https://en.wikipedia.org/wiki/List_of_countries_by_the_number_of_millionaires. Context: There s a story behind every dataset and heres your opportunity to share yours.Content: What s inside is more than just rows and columns. Make it easy for others to get started by describing how you acquired the data and what time period it represents, too. Acknowledgements:We wouldn t be here without the help of others. If you owe any attributions or thanks, include them here along with any citations of past research.Inspiration: Your data will be in front of the world s largest data science community. What questions do you want to see answered?
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TwitterData source: https://www.forbes.com/billionaires/
Cover image credit: https://www.pexels.com/photo/100-us-dollar-banknotes-3483098/
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This dataset contains the complete history of all winning numbers from the US Powerball lottery, one of the largest and most popular lottery games in the world. It includes the winning white balls, the red Powerball, and the draw date for every drawing held. This comprehensive archive is perfect for statistical analysis, trend spotting, application development, or simply for satisfying your curiosity about the history of life-changing numbers.
Dive into the data to explore number frequencies, jackpot trends, and the numerical patterns that have created millionaires. Whether you're a data scientist, a developer, a researcher, or a lottery enthusiast, this dataset is your ultimate resource for everything Powerball.
date: The date on which the lottery drawing was held. (Format: MM/DD/YYYY)
number1: The first winning white ball number. (Type: Integer)
number2: The second winning white ball number. (Type: Integer)
number3: The third winning white ball number. (Type: Integer)
number4: The fourth winning white ball number. (Type: Integer)
number5: The fifth winning white ball number. (Type: Integer)
powerball: The winning red Powerball number. (Type: Integer)
powerplay: The Power Play multiplier for that draw, where applicable. (Type: Integer)
jackpot: The top prize awarded for matching all the winning numbers. (Type: Integer)
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In order to develop effective crowdsourcing aggregation methods for multiple choice question answering(MCQA) and evaluate them empirically, we developed and deployed a crowdsourced system for playing the “Who wants to be a millionaire?” quiz show. Note that, as question and answer texts are originally in Turkish you should use UTF8 format at all times to avoid encoding problems.
Harvard Aydin BI, Yilmaz YS, Demirbas M. A crowdsourced “Who wants to be a millionaire?” player. Concurrency Computat.: Pract. Exper. 2017;e4168. https://doi.org/10.1002/cpe.4168
Over the period of 9 months, we collected over 3 GB of data using our CrowdMillionaire app. In our dataset, there are 1908 questions and 214,658 unique answers to those questions from CrowdMillionaire participants. In addition, we have more than 5 million offline answers for archived live questions. Our dataset includes detailed information on the game play. For example, our exhaustive timestamps show (1) how much time it took for a question to arrive to a participant, (2) when the question is actually presented to the participant on her device, and (3) when exactly the participant answered the question. We shared this dataset in order to advance the understanding of the MCQA dynamics, after we cleaned and anonymized the data.
Foto von Jason Leung auf Unsplash
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A dataset listing the 20 richest cities in Montana for 2024, including information on rank, city, county, population, average income, and median income.
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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 💎💰