Financial Transactions Dataset

Categorizing financial transactions is essential for understanding your expenses. For example, how do you make sure that D*DASH MCD and STRAWB YOP are correctly classified as Food and Drink? To help fintech companies build better classification models, we built a free dataset of financial transactions, labeled with their intent and financial category.

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Built by an Elite Workforce

Surge AI is a data labeling platform and workforce. We built a special labeling team - Surgers with finance and accounting backgrounds - to pore over thousands of credit card transactions to craft this dataset.

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