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Before implementing technology, I need to understand where and what to plant. This involves analyzing various factors such as rainfall, soil type, and climate to make informed decisions on crop placement.\n\nThe goal is to use data to recommend the best locations for different crops. This is like solving a puzzle, where each piece of information helps us see the full picture.\n\nData Analysis\n\nBy importing our data from an SQLite database into a DataFrame. 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