What is the critical initial step in the data-to-discovery cycle?
Answer
Clearly defining the objective and specifying constraints.
Problem Formulation, the first step, is critical; it requires specifying exactly *what* material property needs optimization (e.g., strength) and under *what* constraints (e.g., synthesis temperature) to ensure the subsequent MI effort has clear direction.

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