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Add StreamingLLM for llamacpp & llamacpp_HF (2nd attempt) (#5669)
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108
modules/cache_utils.py
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108
modules/cache_utils.py
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@ -0,0 +1,108 @@
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import torch
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from modules import shared
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from modules.logging_colors import logger
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def process_llamacpp_cache(model, new_sequence, past_sequence):
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i1, i2, j1, j2 = find_longest_common_substring_indices(past_sequence, new_sequence)
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overlap_length = i2 - i1 + 1
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# Do StreamingLLM if i1 > 0 (ie the longest common subsequence is not a prefix)
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# and the overlap length is sufficiently long.
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if i1 > 0 and overlap_length > 0.2 * len(new_sequence):
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new_sequence = torch.tensor(new_sequence)
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past_sequence = torch.tensor(past_sequence)
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prefix_length = find_prefix_length(past_sequence[:i1], new_sequence[:j1])
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sink_length = prefix_length
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if sink_length < shared.args.attention_sink_size:
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sink_length = shared.args.attention_sink_size
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removed_length = i1 - sink_length
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matching_prefix = past_sequence[:prefix_length]
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removed_chunk = past_sequence[sink_length:i1]
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overlapping_sequence = new_sequence[j1:j2 + 1]
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added_chunk = new_sequence[j2 + 1:]
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# print(past_sequence)
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# print(new_sequence)
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print()
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print('MATCHING PREFIX=', repr(shared.tokenizer.decode(matching_prefix)))
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print('ADDED CHUNK=', repr(shared.tokenizer.decode(added_chunk)))
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print('REMOVED CHUNK=', repr(shared.tokenizer.decode(removed_chunk)))
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print()
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# Remove interval [sink_length, sink_length + removed_length) from the context
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# Subtract removed_length from model.n_tokens
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model._ctx.kv_cache_seq_rm(0, sink_length, sink_length + removed_length)
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model._ctx.kv_cache_seq_shift(0, sink_length + removed_length, -1, -removed_length)
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new_sequence = new_sequence.tolist()
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model.input_ids[:j2 + 1] = new_sequence[:j2 + 1]
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model.n_tokens = j2 + 1
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return new_sequence[:j2 + 1]
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else:
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return past_sequence
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def find_prefix_length(past_seq, seq_tensor):
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'''
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Given two torch tensors, finds the length of the longest
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common prefix between the two.
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'''
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min_length = min(past_seq.shape[0], seq_tensor.shape[0])
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indices = torch.nonzero(~torch.eq(past_seq[:min_length], seq_tensor[:min_length]))
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if len(indices) > 0:
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prefix_length = indices[0].item()
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else:
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prefix_length = min_length
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return prefix_length
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def find_longest_common_substring_indices(list1, list2):
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'''
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Given two lists, solves the Longest Common Substring problem.
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It returns the indices where the substring starts and ends in
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s1 and s2.
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Example:
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ir, jr, ir2, jr2 = find_longest_common_substring_indices(s1, s2)
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print(s1[ir:jr + 1])
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print(s2[ir2:jr2 + 1])
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Adapted from
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https://rosettacode.org/wiki/Longest_common_substring#Python
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'''
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len_list1, len_list2 = len(list1), len(list2)
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start_index_list1, end_index_list1 = 0, -1
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start_index_list2, end_index_list2 = 0, -1
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for index1 in range(len_list1):
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try:
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index2 = list2.index(list1[index1])
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except ValueError:
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continue
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while index2 >= 0:
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temp_index1, temp_index2 = index1, index2
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while temp_index1 < len_list1 and temp_index2 < len_list2 and list2[temp_index2] == list1[temp_index1]:
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if temp_index1 - index1 >= end_index_list1 - start_index_list1:
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start_index_list1, end_index_list1 = index1, temp_index1
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start_index_list2, end_index_list2 = index2, temp_index2
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temp_index1 += 1
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temp_index2 += 1
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try:
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index2 = list2.index(list1[index1], index2 + 1)
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except ValueError:
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break
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return start_index_list1, end_index_list1, start_index_list2, end_index_list2
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@ -2,6 +2,9 @@ from typing import Sequence
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from tqdm import tqdm
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from modules import shared
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from modules.cache_utils import process_llamacpp_cache
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try:
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import llama_cpp
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except:
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@ -58,6 +61,25 @@ def eval_with_progress(self, tokens: Sequence[int]):
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self.n_tokens += n_tokens
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def monkey_patch_generate(lib):
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def my_generate(self, *args, **kwargs):
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if shared.args.streaming_llm:
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new_sequence = args[0]
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past_sequence = self._input_ids
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# Do the cache trimming for StreamingLLM
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process_llamacpp_cache(self, new_sequence, past_sequence)
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for output in self.original_generate(*args, **kwargs):
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yield output
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lib.Llama.original_generate = lib.Llama.generate
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lib.Llama.generate = my_generate
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for lib in [llama_cpp, llama_cpp_cuda, llama_cpp_cuda_tensorcores]:
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if lib is not None:
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lib.Llama.eval = eval_with_progress
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monkey_patch_generate(lib)
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@ -46,6 +46,8 @@ loaders_and_params = OrderedDict({
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'no_offload_kqv',
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'row_split',
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'tensorcores',
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'streaming_llm',
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'attention_sink_size',
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],
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'llamacpp_HF': [
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'n_ctx',
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@ -69,6 +71,8 @@ loaders_and_params = OrderedDict({
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'no_offload_kqv',
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'row_split',
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'tensorcores',
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'streaming_llm',
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'attention_sink_size',
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'llamacpp_HF_info',
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],
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'ExLlamav2_HF': [
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@ -130,6 +130,8 @@ group.add_argument('--logits_all', action='store_true', help='Needs to be set fo
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group.add_argument('--no_offload_kqv', action='store_true', help='Do not offload the K, Q, V to the GPU. This saves VRAM but reduces the performance.')
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group.add_argument('--cache-capacity', type=str, help='Maximum cache capacity (llama-cpp-python). Examples: 2000MiB, 2GiB. When provided without units, bytes will be assumed.')
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group.add_argument('--row_split', action='store_true', help='Split the model by rows across GPUs. This may improve multi-gpu performance.')
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group.add_argument('--streaming-llm', action='store_true', help='Activates StreamingLLM, which prevents the prompt from ever being reevaluated when old chat messages are removed due to the context length for the model being reached.')
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group.add_argument('--attention-sink-size', type=int, default=5, help='Minimum attention sink length from StreamingLLM.')
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# ExLlamaV2
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group = parser.add_argument_group('ExLlamaV2')
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@ -13,6 +13,7 @@ import transformers
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from transformers import LogitsProcessorList, is_torch_xpu_available
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import modules.shared as shared
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from modules.cache_utils import process_llamacpp_cache
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from modules.callbacks import (
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Iteratorize,
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Stream,
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@ -364,6 +365,12 @@ def generate_reply_HF(question, original_question, seed, state, stopping_strings
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print(decode(input_ids[0], skip_special_tokens=False))
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print()
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# Handle StreamingLLM for llamacpp_HF
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if shared.model.__class__.__name__ == 'LlamacppHF' and shared.args.streaming_llm:
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tmp = process_llamacpp_cache(shared.model.model, input_ids[-1].tolist(), shared.model.model._input_ids)
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shared.model.past_seq = torch.tensor(tmp)
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shared.model.save_cache()
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t0 = time.time()
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try:
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if not is_chat and not shared.is_seq2seq:
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@ -97,6 +97,8 @@ def list_model_elements():
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'no_offload_kqv',
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'row_split',
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'tensorcores',
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'streaming_llm',
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'attention_sink_size',
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'hqq_backend',
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]
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if is_torch_xpu_available():
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@ -117,6 +117,8 @@ def create_ui():
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shared.gradio['use_flash_attention_2'] = gr.Checkbox(label="use_flash_attention_2", value=shared.args.use_flash_attention_2, info='Set use_flash_attention_2=True while loading the model.')
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shared.gradio['auto_devices'] = gr.Checkbox(label="auto-devices", value=shared.args.auto_devices)
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shared.gradio['tensorcores'] = gr.Checkbox(label="tensorcores", value=shared.args.tensorcores, info='NVIDIA only: use llama-cpp-python compiled with tensor cores support. This increases performance on RTX cards.')
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shared.gradio['streaming_llm'] = gr.Checkbox(label="streaming_llm", value=shared.args.streaming_llm, info='(experimental) Activate StreamingLLM to avoid re-evaluating the entire prompt when old messages are removed.')
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shared.gradio['attention_sink_size'] = gr.Number(label="attention_sink_size", value=shared.args.attention_sink_size)
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shared.gradio['cpu'] = gr.Checkbox(label="cpu", value=shared.args.cpu, info='llama.cpp: Use llama-cpp-python compiled without GPU acceleration. Transformers: use PyTorch in CPU mode.')
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shared.gradio['row_split'] = gr.Checkbox(label="row_split", value=shared.args.row_split, info='Split the model by rows across GPUs. This may improve multi-gpu performance.')
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shared.gradio['no_offload_kqv'] = gr.Checkbox(label="no_offload_kqv", value=shared.args.no_offload_kqv, info='Do not offload the K, Q, V to the GPU. This saves VRAM but reduces the performance.')
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