I am trying to train a neural network with JAX on GPUs/GPU, but after so many epochs the programme runs out of memory. Using `jax.profiler.save_device_memory_profile`

after each epoch I noticed that the memory would increase by the same amount after each epoch. I suspect that since I use vmap and pmap for non-trivial functions with differently sized inputs, perhaps the functions are being recompiled per epoch.

The setup consists of a training function which intakes the number of epochs to train and then I train within a `for`

loop, with something looking like this:

```
for i in range(number_of_epochs):
self._trainer.train(1)
```

I want to use JAX's `jax.clear_cashes()`

to see if indeed an accumulation of cashed functions could be resulting to this memory leak. To do so, I write:

```
for i in range(number_of_epochs):
self._trainer.train(1)
jax.clear_cashes()
```

In doing so, after the first epoch I get the error:

```
malloc_consolidate(): invalid chunk size
```

I'm not yet fully confident in understanding how to use `jax.clear_cashes()`

. Any help?

**Edit:**
Perhaps it may be hard to provide a solution to the above given the information I provided, but what would certainly help me debug this problem is if there was a way to find out how many cached functions there are after each epoch - how could I do that?

`'JittedFunc' object has no attribute '_cache_size'`