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Unmixtraled 22B expert 0

This model outputs gibberish as it was not trained under the dense configuration. Finetuning or merging is needed to make this model useful.

This is a 22B Mistral model recycling weights from mistral-community/Mixtral-8x22B-v0.1. The model was adapted from a Mixtral architecture to a dense Mistral architecture with the same number of layers, attention heads and hidden dimensions.
Embeddings, attention, layer norms and LM head weights were taken directly from the 8x22B model, all MLP weights were taken from expert 0.

The following named weight correspondance was used:

Mistral weight Mixtral weight
gate_proj experts.0.w1
down_proj experts.0.w2
up_proj experts.0.w3

Unmixtraled models

Expert Source Wikitext perplexity
Unmixtraled-22B-v0.1-expert-0 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 0 MLPs 696.6932983398438
Unmixtraled-22B-v0.1-expert-1 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 1 MLPs 6853.04248046875
Unmixtraled-22B-v0.1-expert-2 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 2 MLPs 4689.181640625
Unmixtraled-22B-v0.1-expert-3 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 3 MLPs 782.3755493164062
Unmixtraled-22B-v0.1-expert-4 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 4 MLPs 2844.943603515625
Unmixtraled-22B-v0.1-expert-5 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 5 MLPs 1099.32373046875
Unmixtraled-22B-v0.1-expert-6 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 6 MLPs 341.5309753417969
Unmixtraled-22B-v0.1-expert-7 Mixtral 8x22B embed, attn, layernorm, lm_head + expert 7 MLPs 2099.63818359375
Unmixtraled-22B-v0.1-lerp Mixtral 8x22B embed, attn, layernorm, lm_head + linear merge of expert 0-7 MLPs 1873.9874267578125

Code

The following code was used to extract the experts and construct the dense models:

# pip install -U transformers huggingface_hub "git+https://github.com/arcee-ai/mergekit@7467108c05d56ef2bb4b8f33936d437dc448f7dd"

import fnmatch
import json
import os
import re
import shutil

import torch
from huggingface_hub import snapshot_download
from mergekit.architecture import get_architecture_info
from mergekit.common import ModelReference
from mergekit.io import LazyTensorLoader, TensorWriter
from tqdm import tqdm

MIXTRAL_MODEL_ID = "mistral-community/Mixtral-8x22B-v0.1"
MIXTRAL_PATH = snapshot_download(repo_id=MIXTRAL_MODEL_ID)
print(f"Mixtral downloaded to: {MIXTRAL_PATH}")

MISTRAL_PATH = snapshot_download(
    repo_id="mistralai/Mistral-7B-v0.1", allow_patterns=["config.json"]
)
print(f"Mistral config downloaded to: {MISTRAL_PATH}")

with open(os.path.join(MISTRAL_PATH, "config.json"), "r") as f:
    mistral_config = json.load(f)

with open(os.path.join(MIXTRAL_PATH, "config.json"), "r") as f:
    mixtral_config = json.load(f)

combined_config = {
    key: mixtral_config[key] for key in mistral_config if key in mixtral_config
}
combined_config["architectures"] = ["MistralForCausalLM"]
combined_config["model_type"] = "mistral"

mixtral_model_ref = ModelReference.parse(MIXTRAL_PATH)
mixtral_architecture_info = get_architecture_info(mixtral_model_ref.config())
mixtral_loader = LazyTensorLoader(mixtral_model_ref.tensor_index(), lazy_unpickle=True)

ALLOW_LIST = ["generation_config.json", "tokenizer.model", "tokenizer_config.json"]

def copy_directory(src, dest, allowed_patterns):
    os.makedirs(dest, exist_ok=True)
    for root, dirs, files in os.walk(src):
        # Only keep directories that match at least one of the allowed patterns
        dirs[:] = [d for d in dirs if any(fnmatch.fnmatch(d, pattern) for pattern in allowed_patterns)]
        for file in files:
            # Only copy files that match at least one of the allowed patterns
            if any(fnmatch.fnmatch(file, pattern) for pattern in allowed_patterns):
                src_path = os.path.join(root, file)
                dest_path = os.path.join(dest, os.path.relpath(src_path, src))
                os.makedirs(os.path.dirname(dest_path), exist_ok=True)
                shutil.copy2(src_path, dest_path)

def get_tensor(layer_num, expert_num, tensor_type):
    weight_name = f"model.layers.{layer_num}.block_sparse_moe.experts.{expert_num}.{tensor_type}.weight"
    return mixtral_loader.get_tensor(weight_name)


def extract_layer_number(string):
    match = re.search(r"layers\.(\d+)\.", string)
    return int(match.group(1)) if match else None


def save_expert_as_dense(output_path, expert_num):
    dense_model_ref = ModelReference.parse(output_path)
    dense_architecture_info = get_architecture_info(dense_model_ref.config())

    writer = TensorWriter(output_path, safe_serialization=True)

    for weight_info in tqdm(dense_architecture_info.all_weights(dense_model_ref.config())):
        if weight_info.name.endswith(".up_proj.weight"):
            layer_num = extract_layer_number(weight_info.name)
            writer.save_tensor(weight_info.name, get_tensor(layer_num, expert_num, "w3"))
        elif weight_info.name.endswith(".down_proj.weight"):
            layer_num = extract_layer_number(weight_info.name)
            writer.save_tensor(weight_info.name, get_tensor(layer_num, expert_num, "w2"))
        elif weight_info.name.endswith(".gate_proj.weight"):
            layer_num = extract_layer_number(weight_info.name)
            writer.save_tensor(weight_info.name, get_tensor(layer_num, expert_num, "w1"))
        else:
            writer.save_tensor(weight_info.name, mixtral_loader.get_tensor(weight_info.name))

    writer.finalize()


num_experts = mixtral_config["num_local_experts"]

for expert_num in range(num_experts):
    dense_path = f"./dense_expert_{expert_num}"
    copy_directory(MIXTRAL_PATH, dense_path, ALLOW_LIST)

    with open(os.path.join(dense_path, "config.json"), "w") as f:
        json.dump(combined_config, f, indent=2)

    save_expert_as_dense(dense_path, expert_num)
    print(f"Dense model #{expert_num} saved to {os.path.abspath(dense_path)}")
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