Which combination of tools is typically employed by professionals modeling grant success?
Answer
Statistical programming languages like R or Python, alongside SQL for database querying.
Modeling success involves standard data science toolkits, utilizing languages suited for statistical analysis and machine learning (R or Python) combined with SQL skills necessary for retrieving and managing the large volumes of funding records stored in databases.

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