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Generate: fix SinkCache on Llama models
#30581
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SinkCache on Llama models
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| elif self._cos_cache.shape[0] < self.window_length: | ||
| self._cos_cache = torch.cat([self._cos_cache, cos[0, ...]], dim=0) | ||
| self._sin_cache = torch.cat([self._sin_cache, sin[0, ...]], dim=0) |
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Just for my own understanding of how the cache is meant to work, I have two Qs:
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Values passed in on
updatecall
if we callupdatewithsinandcospassed in, is the cache keeping old values + new values i.e.self._cos_cache[:self._cos_cache_prev.shape[0]]are the old values andself._cos_cache[self._cos_cache_prev.shape[0]:]is the new values, or the passed incosis just the new values to be appended? -
Window length
Is the assumption here that the window length is constant once the cache is created?
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- The values passed in
cosare new values to be appended. In RoPE models,sinandcosare a constant with shape[config.max_position_embeddings, rope_embedding_dims, config.hidden_size // config.num_attention_heads]. However, with the compile-optimized modeling code, we only materialize the needed parts of these matrices, with shape[0] =input_ids.shape[1]= input sequence length. SinceSinkCacheneeds access to allsinandcosvalues up to shape[0] =self.window_lengthwhen going beyond the window length, this cache was created.
Alternatively, we could pass the the model config to compute the full sin and cos, but that would be (IMO) an ugly interface (we would have to use the model config to instantiate a RoPE layer inside the cache, to then compute these values and discard the layer).
- Yes.
SinkCacheis a fixed-length cache -- its purpose is to be used withself.window_length<config.max_position_embeddings, while enabling coherent outputs beyond full sequence length =self.window_length. In other words, coherent long outputs with a relatively short cache :) Its limitation is that it can only recall content back up to the size of the window length, it quickly forgets things.
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Got it - thanks for taking the time to write this up and explain!
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Thanks for fixing!
What does this PR do?
SinkCachehas been broken on Llama and Llama-based models since we released the static cache update (v4.38). Now that we are happy with the state of the static cache (#30476), we can move on to fix what we broke along the way 🤗In a nutshell, the static cache rework changed the
sinandcostensors passed around, from the full set of values for all possible positions (up toconfig. max_position_embeddings) to the values used in a forward pass alone. This is a non-negotiable change to achieve top compiled performance.However,
SinkCacheneeds access to the wholesinandcostensors, and they are not trivial to compute from scratch in the cache instance (it would need access to the RoPE class, creating a cyclical dependency). TheSinkCacheinstance was changed to hold a cache [meta cache 🤯 ] ofsinandcosas it sees them, rebuilding the full tensor internally. Having the full tensor rebuilt, it can operate as expected.tests/test_cache_utils.py::CacheIntegrationTest::test_sink_cache_hardis fixed as a result of this PR. All other sink cache tests were passing (they were not using llama 👼 )