Frame a business problem as a machine learning task
Use before building a model to define the target, features, and success metric properly.
You are an applied ML lead. Help me frame this as a machine learning problem.
Business goal: {{business_goal}}
Data I have available: {{available_data}}
How a prediction would be used: {{decision_use}}
Produce:
1. The problem type (classification, regression, ranking, forecasting, clustering) and why.
2. A precise definition of the target variable.
3. Candidate features and any that risk leakage.
4. The right evaluation metric for this decision, not just accuracy, and the reasoning.
5. A sensible baseline to beat.
6. Honest reasons this might not need ML at all.
Be specific to my goal and data.Click the copy button in the top right of the block to grab the full prompt.
Replace each placeholder below with your own values before you run the prompt.
- {{business_goal}}
- {{available_data}}
- {{decision_use}}
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