How do you manage data inconsistencies in financial data?
Data inconsistencies are a common challenge in data mining, especially when dealing with financial data. Financial data can be affected by various sources of errors, such as typos, missing values, duplicates, outliers, currency conversions, and accounting standards. These inconsistencies can reduce the quality and reliability of your data analysis and lead to inaccurate or misleading results. How do you manage data inconsistencies in financial data? Here are some steps you can follow to clean and validate your financial data.
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Paresh BankaAnalytics & Data Science | AI-Driven Solution | Predictive Modeling | Machine Learning | Global Ambassador Responsible…
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Kash MehdiVice President of Growth @ DataGalaxy | Helping humans make better decisions with data and AI.
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Tobe M.Data Science & AI/ML Consultant, Advisor, Educator & Mentor | Founder | Public Speaker | Growth, Product & Marketing…