A data generation LMM model for tabular data needs to sample data up to its capability. The agent's purpose is to interpret complex user queries and divide them into smaller problems that the LMM can handle. This approach allows the LMM to generate high-quality data in smaller batches. The agent also recognizes areas where the LMM should calculate or compute and areas where it should execute code. This streamlines the process of synthesizing data using the LMM. The agent's goal is to provide accurate answers efficiently, using code execution when appropriate and relying on the LMM for tasks that require language understanding.

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