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082b326fc7
* ggml-et: Add performance logging * ggml-et: Quants helpers * ggml-et: Add MUL_MAT kernel * ggml-et: Add ROPE kernel * ggml-et: Add RMS_NORM kernel * ggml-et: Add GLU kernel * ggml-et: Add SOFT_MAX kernel * ggml-et: Add GET_ROWS kernel * ggml-et: Add CONT kernel * ggml-et: Add SET_ROWS kernel * ggml-et: Add MUL_MAT_ID kernel * ggml-et: Build et kernels as part of ggml * ggml-et: Embed kernels with fs fallback * ggml-et: Build fixes * ggml-et: Add MUL_MAT F32xF32 op * ggml_et: Add MUL_MAT_ID op * ggml-et: Disable offloading for debug * ggml-et: Refactor out block ops * ggml-et: ggml backend API changes * ggml-et: Add RESHAPE/TRANSPOSE to supported * ggml-et: Add CONT_F16 * ggml-et: Add supported ops doc * gglm-et: Initial doc * ggml-et: Remove runtime import hacks We can now import the runtime by a simple find_package(), so we can cleanup the CMakeLists.txt. * ggml-et: Fix GET_ROWS kernel Fix lost batch dimension. Also clean vibe-comments. * ggml-et: Fix SET_ROWS kernel Remove incorrect broadcasting guard. * ggml-et: Use custom instruction for fp32->fp16 * ggml-et: Vectorize set_rows fp32->fp16 * ggml-et: Fix ROPE kernel (yarn) ggml-et: fix et_logf WIP: Fix ramp WIP: fix ROPE! * ggml-et: Better sinf * ggml-et: Fix SOFT_MAX Add `max_bias` and `sink` support. * ggml-et: Fix CONT Reorder from contiguous write to read with atomic stores. * ggml-et: Fix elmap kernel Remainder handlin * ggml-et: Fix MUL_MAT MUL_MAT_ID remainders * ggml-et: Fix ET-SOC reference * ggml-et: Fix embed kernels scripts for old python This allows GGML-ET to build on pre-3.8 python. * Add sysemu support with compile time flag `-DGGML_ET_SYSEMU=ON` (#6) * Example using ET-Soc-1 emulator configuration Example usage: ```bash cmake -B build -DGGML_CUDA=OFF -DGGML_ET=ON -DLLAMA_CURL=OFF -DGGML_CCACHE=ON cmake --build build --config Release -j $(nproc) time ./build/bin/test-backend-ops ./build/bin/llama-server \ --model Qwen3-0.6B-Q8_0.gguf \ --alias Qwen3-0.6B-Q8_0 \ -fa 0 \ --ctx-size 1024 \ --no-warmup \ --host 127.0.0.1 \ --port 8080 ``` * build: proper dep tracking for kernels * support host using MOLD linker * initial multi core GET_ROW F32 implementation * vectorized q8 dequant * wip: cland warning clenaups and initial logging refactor * wip: message default message cleanup * chore: message cleanups * cmake cleanup * migrate to use platform provided functions * cmake back into subdir * support et_print() in kernels * fix: repair kernel building * perf: operations run async by default * debug: proper kernel dep tracking and error detection on kenrel launch * fix: kernel binary dep tracking and fixing get_rows_f32 erroring * perf: back to doing async kernel runs by default * perf: vectorize and parallel device memset * merge matmul work * misc: align allocation and enable all offload * misc: delete deadcode and respect memory limits * fix: repair tensor debug print * fix: loosen RMS_NORM op percision * feat: Q4_0 GET_ROWS * perf: FP32 MUL_MAT using TensorFMA * update limitations * perf: redue L1 load in compute_block_dot_product_q8_0 * feat: save kernel mapping (name to id) when profiling is enabled * chore: memops cleanup * perf: parallelize softmax by rows * perf: vectorize 2nd phase of softmax * perf: ban GET_ROWS from offloaded * perf: vectorize and non-atomic for eltwise ops and sub support * perf: vectorize normal rope * perf: glu runs in parallel * merge: manually merge saqib's work on kernel fixes * perf: more vectorized RoPE * perf: parallelize mul_mat_id * perf: parallelize set_rows_f32 * perf: vectorize softmax * feat: support kernel fusion and fuse RMS_NORM + MUL * fix: mostly resolve test-backend-ops failure in SOFT_MAX and ROPE * fix: bump max rope dims for gemma * feat: GeGLU and SCALE support to fully offload Gemma * perf: faster device memset * feat: get_rows supporting Q4_K and avoid cont cache coherent issues * better F32 MM * feat: NORM for ET backend * feat: SQR for ET backend * feat: UNARY on ET * feat: el_map support broadcasting for ET * feat: SUM_ROWS in ET backend * feat: more ops in ET backend * feat: WKV* operators in ET backend * perf: parallelize operators across cacheline instead of row * perf: parallelize get_rows on cacheline * wip: baseline FlashAttention for ET backend * wip: enough FA and CPY f32->f16 to run llama 3.1 fully offloaded with FA on * feat: f16 x f16 -> f32 MM using matrix engine * wip: f16 FlashAttention using matrix engine * wip: clean up * feat: barriers * perf: optimize FA_F16 in ET * perf: vectorize pack_k_for_transpose16 * perf: prefetch next loop matrix tile * perf: FlashAttention 2nd MM uses TensorFMA and optimizations * cleanup: flashattention reorg * perf: optimizations and fixes * feat: L2SCP API and make FlashAttention support DV = 256 for gemma * perf: parallelize norms beyond single row * feat: GATED_DELTA_NET support and relaxed L2_NORM requirment * feat: loosen RMS_NORM, NORM, ROPE contingous req too * feat: repeat supports brocasting on dim 0 and loosen cont check * feat: FILL and DIAG operator * feat: loosen UNARY support chcek * feat: TRI support * feat: SOLVE_TRI support * feat: basic SET support * feat: loosen CONT req * perf: fp16_to_fp32 use ASM * feat: IMROPE support * feat: PAD support * feat: global barrier * fix: view must live on the same backend as backing tensor * feat: relax CONCAT in ET backend * feat: dead simple CUMSUM implementation * feat: basic SSM_CONV support * feat: loosen CONCAT req * feat: relax GATED_DELTA_NET and add SET support proper * cleanup: cleanup LCM math * feat: SWIGLU single input * feat: SSM_SCAN support * feat: el_map supports non aligned tensors in best effort * feat: basic GROUP_NORM support * feat: loosen MUL_MAT capablities slightly * feat: loosen MUL_MAT and GET_ROWS and add IM2COL * feat: special case for softmax 1x1x1x1 * feat: loosen SOFT_MAX req in ET backend * fix: el_map unaligned acse fixes * perf: optimize zero_acc_vec in flash_attn_ext_f16_me * perf: use hart 1 for packing in MM and FA for FP16 * feat: kernel semaphore * perf: better instruction sequence in FlashAttention * fix: gated_delta_net with proper masking * perf: better parallelization for GATED_DELTA_NET * perf: parallelize SSM_CONV over nr * perf: vectorize SSM_CONV * perf: optimize MUL_MAT for q8 * feat: support Gemma 4 * fix: support multi-device * feat: broader GLU support * feat: unary ops supports view * fix: repair fp16 MM using matrix engine * perf: handle large N GEMV better * perf: better q8_0 MM * perf: better set_rows * add back deleted files * fix: repair after merge * feat: POC version of uberkernel * feat: RMS_NORM in uberkernel * feat: add more kernels into usage * chore: clean up uberkernel compilation * perf: faster flash attention * perf: opt flash attention for large seq length * feat: loosen op bounds. clamp and mean support * perf: vectorize ssm_scan * perf: slightly faster FA * perf: FlashAttention parallel MM and load * perf: fuse Q8 MM and ADD * feat: basic conv kernel for ET * softMAx_test * set_rows_f32 * get_rows and cont * testing * set_rows_exp * Junk addition * Narrowing the issue * Update flash_attn_ext_f16_me.c Focusing FA_ext_f16_me * test * Eviction updated * Detailed cache eviction debug * mulmat * removeal of `BUILD_FOR_UBERKERNEL` flag * cleaning... * fix: balance FCC0 count * feat: implement mul_mat and mul_mat_id for Q4_0 type * optimize uberkernel plan upload * add mul_mat q4 into uberkernel * enable gating flush to just uberkernel * update docs for ET * update op support for ET * et-backend: optimize Q4_0 and Q8_0 mul_mat_id row accumulations * et-backend: specialize mul_mat_id kernels for Q4_0 and Q8_0 * et-backend: fix RoPE YaRN corr_dim formula and handle degenerate inputs * test-backend-ops: add DeepSeek-V2-Lite RoPE test coverage * et-backend: add Q4_0 mul_mat matrix-engine kernel using TensorFMA32 * et-backend: vectorize Q4_0 matrix-engine dequantization * et-backend: support hybrid matrix/vector engine execution for Q4_0 mul_mat tail * et-backend: run partial-N tiles on matrix engine for Q4_0 mul_mat * et-backend: route Q4_0 mul_mat N < 53 to vecdot for better prefill latency * Update uberkernel.c * Update unary_f32.c * gemma 4 * bisect gemma4: enable scale_f32 only * bisect gemma4: +rms_norm_f32 * bisect gemma4: +rms_norm_mul_f32 * bisect gemma4: disable rms_norm_mul_f32 -- BREAKS OUTPUT * bisect gemma4: +rope_f32 (skip rms_norm_mul) * bisect gemma4: +el_map_f32 * bisect gemma4: +softmax_f32 * bisect gemma4: +get_rows_f32 * bisect gemma4: +glu_f32 * bisect gemma4: +mul_mat_f32 +mul_mat_f32_matrix_engine * bisect gemma4: +mul_mat_f16 +mul_mat_f16_matrix_engine * bisect gemma4: +mul_mat_Q8_0 +mul_mat_Q4_0 * bisect gemma4: +flash_attn_ext_f32 +flash_attn_ext_f16_me * bisect gemma4: +mul_mat_id_f32 * bisect gemma4: +sum_rows_f32 * bisect gemma4: +cont_f16 * bisect gemma4: +fill_f32 * bisect gemma4: +unary_f32 (all ops re-enabled except rms_norm_mul) * Update rms_norm_mul_f32.c * bisect2 gemma4 n64: +scale_f32 only * bisect2 gemma4 n64: +rms_norm_f32 +rope_f32 * bisect2 gemma4 n64: +rms_norm_mul_f32 (with ET_UBERKERNEL eviction fix) * bisect2 gemma4 n64: +el_map +get_rows +glu +softmax (skip rms_norm_mul) * bisect2 gemma4 n64: all ops enabled except rms_norm_mul * bisect2 n64: test unary+cont+fill+sum_rows (no mul_mat/flash_attn) * bisect2 n64: +mul_mat_f32 +mul_mat_f32_matrix_engine * bisect2 n64: +mul_mat_f16 +mul_mat_f16_matrix_engine * bisect2 n64: +mul_mat_Q8_0 +mul_mat_Q4_0 * bisect2 n64: +mul_mat_Q8_0 only (disable Q4_0) * bisect2 n64: +mul_mat_Q4_0 only (Q8_0 breaks) * bisect2 n64: +mul_mat_id +flash_attn_ext (skip Q8_0) * run-3: matmul + rms_norm_mul * run-4 * Revert "run-4" * run5 * changes after cleanup * cleanup before upstream * restrict changes into ET backend * move kernel embedding from Python to CMake * move uberkernel gen into CMake * apply clang format * update CMake style * update to match C and C++ style * use source ggml and quant headers instead of ET's * MROPE support * absorb view ops into same branch as none * fix bad rebase * add marty1885 to codeowners * oops * remove redundant newline * fix CI editor warnings --------- Co-authored-by: Vidas <vidas@nuolat.lt> Co-authored-by: Gianluca Guida <glguida@tlbflush.org> Co-authored-by: Gianluca Guida <gianluca@nekko.ai> Co-authored-by: ubergarm <leimgrub@gmail.com> Co-authored-by: SaqibAkram-10xE <saqib.akram@10xengineers.ai> Co-authored-by: Rehan Qasim <rehan.qasim@10xengineers.ai>