"megatron/vscode:/vscode.git/clone" did not exist on "6e856facf7b719f72f3686d283a3b786f48cda29"
- 08 Apr, 2025 1 commit
-
-
Jesse Gross authored
Currently, the KV cache and graph are lazily allocated as needed. The cache is fully allocated on first use of the corresponding layer whereas the graph grows with the size of the context. This can be an issue if another application allocates more VRAM after we do our calculations - Ollama will crash in the middle of inference. If we instead allocate the maximum needed memory at startup of the runner, we will either succeed or fail at that point rather than at some surprising time in the future. Currently, this only generates a worst case batch for text, which means that vision models may get a partial allocation and continue to lazily allocate the rest.
-
- 02 Apr, 2025 1 commit
-
-
jmorganca authored
The sliding window cache trims entries that are outside the window for the latest token. This works when we are extending the cache, such as when the conversation continues. However, if we have a partial overlap in conversation (including the BOS tokens), then we resume from a past point in the conversation and the needed tokens are no longer stored in memory. This verifies that the new window overlaps with the old one before reusing the cache. Co-authored-by:Jesse Gross <jesse@ollama.com>
-
- 21 Mar, 2025 1 commit
-
-
Jesse Gross authored
Currently the runner computes the kv size needed and creates a cache of that size. This is the context size times number of parallel sequences. Cache implementations can make better decisions about their memory usage, so instead pass in the required capacity, number of sequences and maximum batch size. For now, the causal cache just uses this to compute the size in the same way as before.
-
- 20 Mar, 2025 1 commit
-
-
Jesse Gross authored
Options is no longer very descriptive of this struct.
-
- 10 Mar, 2025 1 commit
-
-
Jesse Gross authored
The encoder cache needs to know the position of images in the input stream so that it knows when to delete them. Previously images didn't have a position, so we implied one by breaking batches before an image and then assuming the image was in the first position. However, multimodal objects are now given explicit positions in the input stream, so we can use that instead. Breaking batches was also a way to simulate a cross attention mask for mllama. However, given that it only supports a single sequence and a single image, this mask doesn't serve any real purpose. Removing the batch break does not appear to affect the quality of the output. Most of this is simply moving the input data structures to a new package to avoid import cycles.
-
- 02 Mar, 2025 1 commit
-
-
Jesse Gross authored
Prior to performing attention, we need to permute query, key and value. Currently we call Contiguous after each of these permutations, which is correct but expensive. Avoiding the 3 calls to Contiguous increases performance by over 20%. The permutations of query and key do not violate the continuity rules for mulmat and the Contiguous call can be simply removed. Value requires a different permutation and does require Contiguous. However, we can use the copy into the cache as a way to perform this without further overhead. To support this and avoid unexpected tensor shapes that are seen by models, we need tighter integration between attention, cache and backend. Future optimization will also likely need this structure - for example, flash attention has special padding requirements in the cache and other backends may have their own needs. This further contains the operations that go into attention so that these and other optimizations can be handled transparently. Models that have special requirements for attention can still implement their own version of it.
-
- 14 Feb, 2025 1 commit
-
-
Jesse Gross authored
This provides integration with the new Ollama engine (58245413 next ollama runner (#7913)) and the rest of the Ollama infrastructure such as the runner and Ollama server. In addition, it also builds out the KV cache infrastructure to support requirements of how Ollama runs models such as: - Parallel processing - Memory management for defragmentation and shifting - Multi-modal modals Both old and new engines continue to be supported. By default, only the old engine is used. To enable the new engine: Start the server with the OLLAMA_NEW_ENGINE environment variable set: OLLAMA_NEW_ENGINE=1 ./ollama serve Start a model that is supported by the Ollama engine. This one is Llama 3.1 8b Q4_K_M: ./ollama run jessegross/llama3.1
-