Comments (3)
Fixed in 156a4f7 !
from neural-tangents.
Good observation, apparently they changed the API recently, but still support the old condition, true_operand, true_fn, false_operand, false_fn
API as well: https://github.com/google/jax/blob/6b471e2ac6813d894f7a97dc0c287d325b5d6760/jax/lax/lax_control_flow.py#L643.
Will update soon!
from neural-tangents.
Good observation, apparently they changed the API recently, but still support the old
condition, true_operand, true_fn, false_operand, false_fn
API as well: https://github.com/google/jax/blob/6b471e2ac6813d894f7a97dc0c287d325b5d6760/jax/lax/lax_control_flow.py#L643.Will update soon!
Thanks for letting me know, Roman! Let me know after it is updated!
from neural-tangents.
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