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https://github.com/ggml-org/llama.cpp.git
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b7853
100 Commits
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8f80d1b254 | graph : fix nkvo offload with FA (#19105) | ||
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d9c6ce46f7 |
kv-cache : support V-less cache (#19067)
* kv-cache : support V-less cache * cuda : better check for V_is_K_view * cuda : improve V_is_K_view check * graph : add comments * hparams : refactor |
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557515be1e |
graph : utilize ggml_build_forward_select() to avoid reallocations (#18898)
* graph : avoid branches between embedding and token inputs * models : make deepstack graphs (e.g. Qwen3 VL) have constant topology * ci : enable -DGGML_SCHED_NO_REALLOC=ON for server CI * cont : pad token embeddings to n_embd_inp |
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a5eaa1d6a3 |
mla : make the V tensor a view of K (#18986)
* mla : pass V as a view of K to the FA op * cuda : adjust mla logic to new layout * kv-cache : fix rope shift * tests : remove comment * cuda : fix reusable_cutoff Co-authored-by: Johannes Gäßler <johannesg@5d6.de> --------- Co-authored-by: Johannes Gäßler <johannesg@5d6.de> |
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ad8d85bd94 |
memory : add llama_memory_hybrid_iswa (#18601)
* memory : add llama_memory_hybrid_iswa * Update src/llama-memory-hybrid-iswa.cpp Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> --------- Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> |
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076b0faf7d |
graph : clean up t5 input builders (#18795)
* fix: Remove unnecessary `h` loops where `h` was only ever 0 Branch: CleanUpT5InputBuilders Signed-off-by: Gabe Goodhart <ghart@us.ibm.com> * fix: Remove unnecessary padding loop that is never hit anymore The upper bound used to use GGML_PAD(n_tokens, GGML_KQ_MASK_PAD), but was removed in https://github.com/ggml-org/llama.cpp/pull/17910 leaving the loop dead. Branch: CleanUpT5InputBuilders Signed-off-by: Gabe Goodhart <ghart@us.ibm.com> --------- Signed-off-by: Gabe Goodhart <ghart@us.ibm.com> |
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73d284a250 |
model : add LFM2-ColBert-350M (#18607)
* model : add LFM2-ColBert-350M * llama_model_n_embd_out() - returns `hparams.n_embd_out` if set and fallbacks to `hparams.n_embd` |
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2da64a2f8a |
models : fix backend assignment for Granite/Nemotron graphs (#18599)
* models : fix backend assignment for Granite/Nemotron graphs * cont : add ref * cont : move call to build_inp_embd() |
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d3dce4e0a5 |
sampling : add support for backend sampling (#17004)
* sampling : add support for backend sampling This commit adds support for performing sampling operations on the backend (e.g. GPU) as part of the model computation graph. The motivation for this feature is to enable sampling to be performed directly on the backend as part of the computation graph being executed, allowing for some or all of the sampling to be done on the backend. For example, the backend sampler chain might select/sample a token directly in which case only the sampled token needs to be transferred from device memory to host memory. It is also possible for the backend samplers to perform filtering of the logits, or compute and filter the probability distribution, in which case only the filtered logits or probabilites need to be transferred back to system memory for further processing by CPU samplers. Currently the backend sampling works in a similar manner to how pooling works, it is a function that is called by build_graph and the sampler operations become part of the models computation graph. * llama-cli : add backend sampler configuration * server : add backend sampling options/configuration * webui : add backend sampling options * ggml : add initial cumsum implementation for CUDA * sampling : enable all backend sampler tests This commit enables all exisiting backend sampler tests in the test-backend-sampler. Previously, some tests were disabled because there were missing ggml operation implementations. * graph : do not include llama-model.h * sampling : always expose sampled_ids This commit precomputes and caches the full-vocab token id list in llama_context's constructor, so llama_get_backend_sampled_token_ids_ith always returns a valid pointer. The motivation for this is that this enables both common/sampling.cpp and src/llama-sampling.cpp can simplify their logic. Not all backends samplers that process logits need to set the sampled_tokens_id as they may not change the order of the logits, for example the temperature sampler only scales the logits but does not change their order. Simliar the logit bias sampler only adds bias to specific token ids but does not change the order of the logits. In these cases there will not be a device to host copy of the sampled token ids, and this is the use case where having this precomputed list is useful. * sampling : ensure at most one output token per seq This commit adds a check in the batch allocator to ensure that when backend sampling is enabled, at most one output token is specified per sequence. * CUDA: Optimize argsort for gpu-based token sampling Argsort is used for top-k currently. WE optimize argsort by 2 things: 1. Use `DeviceRadixSort` for single-row/sequence to parallelize it across our SMs 2. Use `DeviceSegmentedSort` for multi-row/sequence as this is the correct entrypoint (the function chooses different execution paths, it contains `DeviceSegmentedRadixSort` as one of the paths and will choose the best one according to heuristics. https://nvidia.github.io/cccl/cub/api/structcub_1_1DeviceSegmentedSort.html#overview Some perf numbers for a RTX PRO 6000: On the kernel level, tested with `GGML_CUDA_DISABLE_GRAPHS=1 ./test-backend-ops -o ARGSORT perf` Before: ``` ARGSORT(type=f32,ne=[65000,16,1,1],order=0): 4130 runs - 359.24 us/run ARGSORT(type=f32,ne=[200000,1,1,1],order=0): 8192 runs - 861.34 us/run ARGSORT(type=f32,ne=[200000,16,1,1],order=0): 1343 runs - 1020.01 us/run ``` After: ``` ARGSORT(type=f32,ne=[65000,16,1,1],order=0): 4130 runs - 312.41 us/run ARGSORT(type=f32,ne=[200000,1,1,1],order=0): 16384 runs - 63.48 us/run ARGSORT(type=f32,ne=[200000,16,1,1],order=0): 1343 runs - 874.36 us/run ``` --- On the model level, tested with `llama-cli -m gpt-oss-20b-mxfp4.gguf -n 200 -p "What is the Capital of Sweden?" -no-cnv -fa 1 --backend-sampling` Before: ``` llama_perf_sampler_print: sampling time = 0.25 ms / 207 runs ( 0.00 ms per token, 824701.20 tokens per second) llama_perf_context_print: load time = 18215.58 ms llama_perf_context_print: prompt eval time = 28.20 ms / 7 tokens ( 4.03 ms per token, 248.19 tokens per second) llama_perf_context_print: eval time = 714.79 ms / 199 runs ( 3.59 ms per token, 278.40 tokens per second) llama_perf_context_print: total time = 857.62 ms / 206 tokens ``` After ``` llama_perf_sampler_print: sampling time = 0.25 ms / 207 runs ( 0.00 ms per token, 828000.00 tokens per second) llama_perf_context_print: load time = 18366.92 ms llama_perf_context_print: prompt eval time = 35.92 ms / 7 tokens ( 5.13 ms per token, 194.87 tokens per second) llama_perf_context_print: eval time = 532.79 ms / 199 runs ( 2.68 ms per token, 373.50 tokens per second) llama_perf_context_print: total time = 683.65 ms / 206 tokens ``` * sampling : remove version from sampler chain This commit removes the version field from the sampler chain and instead used the sampler pointer itself for change detection. * sampling : always populate logits for sampled probs This commit updates common/sampler.cpp set_logits and src/llama-sampling.cpp llama_sampler_sample to always populate the logits field when backend sampled probabilities are available. The motivation for this is that this ensure that CPU sampler always have access to the logits values even when probabilites have been produced by backend samplers. * sampling : simplify backend sampling logic decode This commit tries to simplify the backend sampling logic in llama_context::decode. * squash! sampling : simplify backend sampling logic decode Fix condition to check if backend actually sampled tokens, not just that backend samplers are available. * common : fix regression caused by extra memory allocations during sampling * squash! sampling : simplify backend sampling logic decode The commit fixes a variable shadowing issue in the `llama_context::decode` function which was introduced in a previous refactoring. * squash! common : fix regression caused by extra memory allocations during sampling Apply the same changes to llama-sampling.cpp, llama_sampler_sample as were applied in commit |
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c69c7ebc90 |
graph : fix graph reuse logic when n_pos_per_embd > 1 (#18566)
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c560316440 |
graph : reuse SSM graphs (#16490)
* graph : reuse hybrid graphs * graph : reuse recurrent graphs * graph : fix reuse check for recurrent inputs * memory : move the recurrent state into the memory context * Revert "memory : move the recurrent state into the memory context" This reverts commit 00f115fe810815d4a22a6dee0acc346131e970e1. * cont : fix build |
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2995341730 |
llama : add support for NVIDIA Nemotron 3 Nano (#18058)
* llama : add support for NVIDIA Nemotron Nano 3 This commit adds support for the NVIDIA Nemotron Nano 3 model, enabling the conversion and running of this model. Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> |
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0759b09c90 | graph: add f_attn_temp_offset (#18025) | ||
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609a2d0268 |
models : fix YaRN regression + consolidate logic (#18006)
* models : fix YaRN regression + consolidate logic * cont : fix the fix * cont : remove header * cont : add header |
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7bed317f53 |
models : fix the attn_factor for mistral3 graphs + improve consistency (#17945)
* models : fix the attn_factor for mistral3 graphs * cont : rework attn_factor correction logic * cont : make deepseek2 consistent * cont : add TODO * cont : special-case DSv2 * cont : revert Mistral 3 Large changes * cont : fix DS2 to use the original attn_factor * cont : minor comments |
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4dff236a52 |
ggml : remove GGML_KQ_MASK_PAD constant (#17910)
* ggml : remove GGML_KQ_MASK_PAD constant * cont : remove comment |
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c8554b66e0 |
graph : use fill instead of scale_bias in grouped expert selection (#17867)
* use fill instead of scale_bias in grouped expert selection * do not explicitly use _inplace |
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cd3c118908 |
model: support Ministral3 (#17644)
* conversion script * support ministral 3 * maybe this is better? * add TODO for rope_yarn_log_mul * better ppl (tested on 14B-Instruct) * Add Ministral3 support to Mistral format * improve arch handling * add sizes * Apply suggestions from code review Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * nits --------- Co-authored-by: Julien Denize <julien.denize@mistral.ai> Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> |
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6eea666912 | llama-graph: avoid expand_forward for fusion (#17633) | ||
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583cb83416 |
ggml : add ggml_top_k (#17365)
* ggml : add ggml_top_k * cont : add ggml_argsort_top_k * metal : add top_k support * ggml : cleanup * tests : add virtual err() function for test_case * ggml : add comments |
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a90eb94ca9 |
CUDA: fuse rope + set_rows (#16884)
* CUDA: add fused rope * move k forward_expand up * create helper function instead of re-using params * make assert statement more in line with comment * rope_norm: coalesced writes to global mem |
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9008027aa3 |
hparams : add n_embd_inp() to support extended embed (#16928)
* add n_embd_full to support extended embed * don't change output * rename to n_embd_inp * restore n_embd where applicable |
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d7395115ba | llama : use std::abs instead of abs (#16853) | ||
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f696428ce8 |
graph : add clamping to ffn_moe_weights_sum to avoid div-by-zero (#16655)
* add missing norm topk bias * use clamping instead, update number and add comment |
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f77c13b91f | CUDA: General GEMV fusion (#16715) | ||
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84bf3c6778 |
model : add BailingMoeV2 support (#16063)
* add BailingMoeV2 support * update llm types * undo * undo * update llm types * add model collection link * update * almost working * correct group selection and rename n_group_exp * avoid large top_k and use argmax instead for now if we had something like argmax2 that would be equivalent, but this works fine until then * poke * skip group selection when there are no tokens * fix 1T conversion * hopefully fixed expert group selection third time's the charm? * make expert group selection generally available The new LLaDA2Moe model uses this method too, make it generally available regardless of architecture. * allow n_expert_groups to be 1 (Kimi K2) * address review suggestions |
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e60f241eac |
metal : FA support F32 K and V and head size = 32 (#16531)
* metal : FA support F32 K and V and head size = 32 * graph : remove obsolete comment [no ci] |
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e38b7c6e9e |
graph : support cacheless embeddings with FA and iSWA (#16528)
* graph : support cacheless embeddings with FA and iSWA * cont : deduplicate mask creation * cont : fix name |
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e08db42595 |
model: EmbeddingGemma Adding Support for SentenceTransformers Dense Modules (#16367)
* model: EmbeddingGemma sentence-transformers dense linear projections support * model: add support for EmbeddingGemma SentenceTransformers dense linear projections Adding support for the Dense modules used in EmbeddingGemma models. EmbeddingGemma is a SentenceTransformers model with additional modules beyond the base Transformer backbone. See: https://developers.googleblog.com/en/gemma-explained-embeddinggemma-architecture-and-recipe/ * model: add support for EmbeddingGemma SentenceTransformers dense linear projections - converting model with dense-layers is optional - introduced dense config params * Update convert_hf_to_gguf.py Co-authored-by: Daniel Bevenius <daniel.bevenius@gmail.com> * fixed formatting issues * Update src/llama-graph.cpp Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> * - removed pooling_type_opt, always allow overriding pooling_type - asserts checking dense features dims * fix python lint * fix ubuntu gcc build warning * - fixed thread-safety test - moved asserts to load_hparams * - tidying up code - simplifying graph-context expecting both dense weights * minor : add TODO --------- Co-authored-by: Daniel Bevenius <daniel.bevenius@gmail.com> Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> |
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835b2b915c |
model : add GroveMoE support (#15510)
* add GroveMoE support * remove constexpr that fails on certain compilers * revert crude scalar div implementation, use cast * build_attn_inp_kv_unified -> build_attn_inp_kv * fix build_attn * re-apply ffn_exps regex changes |
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077c94d0ca |
CUDA: add a fused top-K MoE kernel (#16130)
* CUDA: add a fused top-K MoE kernel This kernel does the following: 1. softmax over the logits per token [n_experts, n_tokens] 2. argmax reduce over the top-k (n_experts_used) logits 3. write weights + ids to global memory It is intended as fusion of softmax->top-k->get_rows pipeline for MoE models * Refactor into ggml_cuda_should_use_topk_moe * Review: Use better coalescing pattern, use WARP_SIZE, store logits into registers before * Review: format + micro-optimizations * Fix bug: fix tie breakers * Add optional norm + clean-up code * Use smem for final write * Add bounds check * Use better memory pattern for writeback |
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b5bd037832 | llama : add support for qwen3 reranker (#15824) | ||
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b8e09f08b9 |
model : add grok-2 support (#15539)
* add grok-2 support * type fix * type fix * type fix * "fix" vocab for invalid sequences * fix expert tensor mapping and spaces in vocab * add chat template * fix norm tensor mapping * rename layer_out_norm to ffn_post_norm * ensure ffn_post_norm is mapped * fix experts merging * remove erroneous FFN_GATE entry * concatenate split tensors and add more metadata * process all expert layers and try cat instead of hstack * add support for community BPE vocab * fix expert feed forward length and ffn_down concat * commit this too * add ffn_up/gate/down, unsure if sequence is right * add ffn_gate/down/up to tensor names * correct residual moe (still not working) * mess-- * fix embedding scale being applied twice * add built in chat template * change beta fast for grok if default value * remove spm vocab in favor of community bpe vocab * change attention temp length metadata type to integer * update attention temp length metadata * remove comment * replace M_SQRT2 with std::sqrt(2) * add yarn metadata, move defaults to hparams |
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6ab397e12b |
graph : support non-contiguous Q in build_attn_mha (#15908)
* support non-contiguous Q in build_attn_mha * Update src/llama-graph.cpp ggml-ci Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> --------- Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> |
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663027fd54 |
context : fix n_outputs during reserve (#15858)
ggml-ci |
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c610b6c11b |
kv-cache : fix SWA checks + disable cacheless iSWA (#15811)
ggml-ci |
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fb15d649ed |
llama : add support for EmbeddingGemma 300m (#15798)
This commit add support for the EmbeddingGemma 300m. This model supports sliding window attention (SWA) and a new swq_type is introduced to support symmetric SWA masking. This commit also extracts the code from the function llama_is_masked_swa in llama-impl.h, so that the logic can be shared by both llm_graph_input_attn_no_cache::set_input and llama_kv_cache::set_input_kq_mask. With this commit the EmbeddingGemma 300m model can be converted to to GGUF and used with llama.cpp. Once the model has been uploaded to HuggingFace it can be used like this: ```console ./build/bin/llama-cli -hf ggml-org/embeddinggemma-300m-GGUF:Q8_0 ``` |
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e81b8e4b7f |
llama: use FA + max. GPU layers by default (#15434)
* llama: use max. GPU layers by default, auto -fa * ggml-backend: abort instead of segfault |
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8a4280ce43 |
kv-cache : remove LLAMA_SET_ROWS checks (#15505)
ggml-ci |
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0373486dbc |
graph : fix assert in memory-less build_attn (#15590)
ggml-ci |
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3f196be84b |
graph : remove build_attn_with_sinks overload (#15469)
ggml-ci |
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715a6db02c |
kv-cache : drop the "unified" prefix (#15467)
* kv-cache : drop the "unified" prefix ggml-ci * cont : fix comment [no ci] |
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fd1234cb46 |
llama : add gpt-oss (#15091)
* oai moe * compat with new checkpoint * add attn sink impl * add rope scaling yarn * logits match with latest transformers code * wip chat template * rm trailing space * use ggml_scale_bias * rm redundant is_swa_all * convert interleaved gate_up * graph : fix activation function to match reference (#7) * vocab : handle o200k_harmony special tokens * ggml : add attention sinks support (#1) * llama : add attn sinks * ggml : add attn sinks * cuda : add attn sinks * vulkan : add support for sinks in softmax remove unnecessary return * ggml : add fused swiglu_oai op (#11) * ggml : add fused swiglu_oai op * Update ggml/src/ggml-cpu/ops.cpp Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> * update CUDA impl * cont : metal impl * add vulkan impl * test-backend-ops : more test cases, clean up * llama : remove unfused impl * remove extra lines --------- Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> --------- Co-authored-by: slaren <slarengh@gmail.com> * repack mxfp4 upon conversion * clean up a bit * enable thinking * add quick hack to render only some special tokens * fix bf16 conversion * remove vocab hack * webui ok * support chat parsing for gpt-oss * fix webui * direct mapping mxfp4, FINALLY * force using mxfp4 * properly use lazy tensor * ggml : add mxfp4 ggml : use e8m0 conversion instead of powf Co-authored-by: Diego Devesa <slarengh@gmail.com> change kvalues_mxfp4 table to match e2m1 (#6) metal : remove quantization for now (not used) cuda : fix disabled CUDA graphs due to ffn moe bias vulkan : add support for mxfp4 cont : add cm2 dequant * ggml : add ggml_add_id (#13) * ggml : add ggml_add_id * add cuda impl * llama : add weight support check for add_id * perf opt * add vulkan impl * rename cuda files * add metal impl * allow in-place ggml_add_id * llama : keep biases on CPU with --cpu-moe * llama : fix compile error ggml-ci * cuda : add fallback for __nv_cvt_e8m0_to_bf16raw ggml-ci * cleanup ggml-ci * sycl : fix supports_op for MXFP4 ggml-ci * fix Unknown reasoning format * ggml-cpu : fix AVX build ggml-ci * fix hip build ggml-ci * cuda : add mxfp4 dequantization support for cuBLAS ggml-ci * ggml-cpu : fix mxfp4 fallback definitions for some architectures ggml-ci * cuda : fix version required for __nv_cvt_e8m0_to_bf16raw --------- Co-authored-by: Xuan Son Nguyen <son@huggingface.co> Co-authored-by: slaren <slarengh@gmail.com> |
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ef0144c087 |
model: support GLM 4.5 family of models (#14939)
* model: Add GLM 4.5 (#14921) Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * Merge in PR suggestions Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * model: Add GLM 4.5 family of models (#14921) 1. Updated tensor_mapping.py with NextN tensor mappings - Added proper tensor mappings for all NextN/MTP tensors in /Users/samm/git/llama.cpp/gguf-py/gguf/tensor_mapping.py - Added mappings for: eh_proj, embed_tokens, enorm, hnorm, shared_head.head, shared_head.norm 2. Added num_nextn_predict_layers configuration - Added LLM_KV_NUM_NEXTN_PREDICT_LAYERS constant to llama-arch.h and llama-arch.cpp - Added num_nextn_predict_layers field to llama_hparams struct - Updated GLM4_MOE parameter loading in llama-model.cpp to read this parameter - Modified tensor loading logic to conditionally load NextN tensors based on num_nextn_predict_layers - Added GGUF writer support in gguf_writer.py with add_num_nextn_predict_layers() method - Updated conversion script to extract and write this parameter from HuggingFace config 3. Added FIM tokens for GLM4_MOE - Added GLM-4.5's FIM tokens to llama-vocab.cpp: - <|code_prefix|> for FIM_PRE - <|code_suffix|> for FIM_SUF - <|code_middle|> for FIM_MID 4. Removed manual NextN tensor handling - Removed the special-case handling in convert_hf_to_gguf.py that manually mapped NextN tensors - NextN tensors are now handled automatically through the proper tensor mapping system * glm 4.5 update tensors names * model: glm 4.5 apply suggestions from code review Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * Update src/llama-model.cpp Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * model: glm 4.5 apply suggestions from code review Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * model: glm 4.5 apply suggestions from code review * Apply suggestions from code review * patch broken chat template * typings fix * add TENSOR_SKIP flag Co-authored-by: Diego Devesa <slarengh@gmail.com> * Update src/llama-model-loader.h Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> --------- Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> Co-authored-by: Diego Devesa <slarengh@gmail.com> |
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c1dacaa99b | llama : merge build_moe_ffn_from_probs function into build_moe_ffn (#14968) | ||
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66625a59a5 |
graph : reduce splits for recurrent and hybrid models (#14825)
* graph : avoid creating redundant s_copy views * graph : comment the s_copy views |
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a118d80233 |
embeddings: fix extraction of CLS pooling results (#14927)
* embeddings: fix extraction of CLS pooling results * merge RANK pooling into CLS case for inputs |
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6c6e397aff |
model : add support for SmallThinker series (#14898)
* support smallthinker * support 20b softmax, 4b no sliding window * new build_moe_ffn_from_probs, and can run 4b * fix 4b rope bug * fix python type check * remove is_moe judge * remove set_dense_start_swa_pattern function and modify set_swa_pattern function * trim trailing whitespace * remove get_vocab_base of SmallThinkerModel in convert_hf_to_gguf.py Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * better whitespace Apply suggestions from code review Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * use GGML_ASSERT for expert count validation Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * Improve null pointer check for probs Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> * use template parameter for SWA attention logic * better whitespace Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> * move the creation of inp_out_ids before the layer loop * remove redundant judge for probs --------- Co-authored-by: Sigbjørn Skjæret <sigbjorn.skjaeret@scala.com> Co-authored-by: Georgi Gerganov <ggerganov@gmail.com> |
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bf9087f59a |
metal : fuse add, mul + add tests (#14596)
ggml-ci |
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9fb1042ce6 |
graph : fix graph reuse reset of params (#14760)
ggml-ci |