[-0.121, 0.206, -0.311, ..., 0.067] (768-dimensional vector)
[-0.051, 0.132, ..., 0.198, -0.043, ...] (1800-dimensional vector)
Keep in mind that these representations are highly dependent on the specific model and training data used. You may need to adjust the approach based on your specific use case and requirements. Additionally, these representations might not be directly applicable to your specific task, and further processing or transformation may be necessary.
[-0.121, 0.206, -0.311, ..., 0.067] (768-dimensional vector)
[-0.051, 0.132, ..., 0.198, -0.043, ...] (1800-dimensional vector)
Keep in mind that these representations are highly dependent on the specific model and training data used. You may need to adjust the approach based on your specific use case and requirements. Additionally, these representations might not be directly applicable to your specific task, and further processing or transformation may be necessary.
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