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import gradio as gr
import torch
import os
import gc
import shutil
import requests
import json
import struct
import numpy as np
import re
from pathlib import Path
from typing import Dict, Any, Optional, List
from huggingface_hub import HfApi, hf_hub_download, list_repo_files, login
from safetensors.torch import load_file, save_file
from tqdm import tqdm

# --- Memory Efficient Safetensors ---
class MemoryEfficientSafeOpen:
    def __init__(self, filename):
        self.filename = filename
        self.file = open(filename, "rb")
        self.header, self.header_size = self._read_header()

    def __enter__(self):
        return self

    def __exit__(self, exc_type, exc_val, exc_tb):
        self.file.close()

    def keys(self) -> list[str]:
        return [k for k in self.header.keys() if k != "__metadata__"]

    def metadata(self) -> Dict[str, str]:
        return self.header.get("__metadata__", {})

    def get_tensor(self, key):
        if key not in self.header:
            raise KeyError(f"Tensor '{key}' not found in the file")
        metadata = self.header[key]
        offset_start, offset_end = metadata["data_offsets"]
        self.file.seek(self.header_size + 8 + offset_start)
        tensor_bytes = self.file.read(offset_end - offset_start)
        return self._deserialize_tensor(tensor_bytes, metadata)

    def _read_header(self):
        header_size = struct.unpack("<Q", self.file.read(8))[0]
        header_json = self.file.read(header_size).decode("utf-8")
        return json.loads(header_json), header_size

    def _deserialize_tensor(self, tensor_bytes, metadata):
        dtype_map = {
            "F32": torch.float32, "F16": torch.float16, "BF16": torch.bfloat16,
            "I64": torch.int64, "I32": torch.int32, "I16": torch.int16, "I8": torch.int8,
            "U8": torch.uint8, "BOOL": torch.bool
        }
        dtype = dtype_map[metadata["dtype"]]
        shape = metadata["shape"]
        return torch.frombuffer(tensor_bytes, dtype=torch.uint8).view(dtype).reshape(shape)

# --- Constants & Setup ---
try:
    TempDir = Path("/tmp/temp_tool")
    os.makedirs(TempDir, exist_ok=True)
except:
    TempDir = Path("./temp_tool")
    os.makedirs(TempDir, exist_ok=True)

api = HfApi()

def cleanup_temp():
    if TempDir.exists():
        shutil.rmtree(TempDir)
    os.makedirs(TempDir, exist_ok=True)
    gc.collect()

def get_key_stem(key):
    key = key.replace(".weight", "").replace(".bias", "")
    key = key.replace(".lora_down", "").replace(".lora_up", "")
    key = key.replace(".lora_A", "").replace(".lora_B", "")
    key = key.replace(".alpha", "")
    prefixes = [
        "model.diffusion_model.", "diffusion_model.", "model.", 
        "transformer.", "text_encoder.", "lora_unet_", "lora_te_", "base_model.model."
    ]
    changed = True
    while changed:
        changed = False
        for p in prefixes:
            if key.startswith(p):
                key = key[len(p):]
                changed = True
    return key

# =================================================================================
# TAB 1: MERGE & RESHARD
# =================================================================================

def parse_hf_url(url):
    """Parses a direct HF URL into repo_id and filename."""
    # Pattern: https://huggingface.co/{user}/{repo}/resolve/{branch}/{filename...}
    if "huggingface.co" in url and "resolve" in url:
        try:
            parts = url.split("huggingface.co/")[-1].split("/")
            # parts[0]=user, parts[1]=repo, parts[2]=resolve, parts[3]=branch, parts[4:]=file
            repo_id = f"{parts[0]}/{parts[1]}"
            filename = "/".join(parts[4:]).split("?")[0] # Strip query params
            return repo_id, filename
        except:
            return None, None
    return None, None

def download_lora_smart(input_str, token):
    local_path = TempDir / "adapter.safetensors"
    if local_path.exists(): os.remove(local_path)
    
    print(f"Resolving LoRA Input: {input_str}")
    
    # 1. Try Parse as HF URL (Most Robust Method)
    repo_id, filename = parse_hf_url(input_str)
    if repo_id and filename:
        print(f"Detected HF URL. Repo: {repo_id}, File: {filename}")
        try:
            hf_hub_download(repo_id=repo_id, filename=filename, token=token, local_dir=TempDir)
            # Move to standard name
            found = list(TempDir.rglob(filename.split("/")[-1]))[0] # Handle subfolder downloads
            if found != local_path: shutil.move(found, local_path)
            return local_path
        except Exception as e:
            print(f"HF Download failed: {e}. Falling back...")

    # 2. Try as Raw Repo ID (User/Repo)
    try:
        # Check if user put "User/Repo/file.safetensors"
        if ".safetensors" in input_str and input_str.count("/") >= 2:
            parts = input_str.split("/")
            repo_id = f"{parts[0]}/{parts[1]}"
            filename = "/".join(parts[2:])
            hf_hub_download(repo_id=repo_id, filename=filename, token=token, local_dir=TempDir)
            found = list(TempDir.rglob(filename.split("/")[-1]))[0]
            if found != local_path: shutil.move(found, local_path)
            return local_path
            
        # Standard Auto-Discovery
        candidates = ["adapter_model.safetensors", "model.safetensors"]
        files = list_repo_files(repo_id=input_str, token=token)
        target = next((f for f in files if f in candidates), None)
        if not target:
            safes = [f for f in files if f.endswith(".safetensors")]
            if safes: target = safes[0]
        
        if not target: raise ValueError("No safetensors found")
        
        hf_hub_download(repo_id=input_str, filename=target, token=token, local_dir=TempDir)
        found = list(TempDir.rglob(target.split("/")[-1]))[0]
        if found != local_path: shutil.move(found, local_path)
        return local_path
        
    except Exception as e:
        # 3. Last Resort: Raw Requests (For non-HF links)
        if input_str.startswith("http"):
            try:
                headers = {"Authorization": f"Bearer {token}"} if token else {}
                r = requests.get(input_str, stream=True, headers=headers, timeout=60)
                r.raise_for_status()
                with open(local_path, 'wb') as f:
                    for chunk in r.iter_content(chunk_size=8192): f.write(chunk)
                return local_path
            except Exception as req_e:
                raise ValueError(f"All download methods failed.\nRepo Logic Error: {e}\nURL Logic Error: {req_e}")
        raise e

def load_lora_to_memory(lora_path, precision_dtype=torch.bfloat16):
    print(f"Loading LoRA from {lora_path}...")
    state_dict = load_file(lora_path, device="cpu")
    pairs = {} 
    alphas = {}
    for k, v in state_dict.items():
        stem = get_key_stem(k)
        if "alpha" in k:
            alphas[stem] = v.item() if isinstance(v, torch.Tensor) else v
        else:
            if stem not in pairs: pairs[stem] = {}
            if "lora_down" in k or "lora_A" in k:
                pairs[stem]["down"] = v.to(dtype=precision_dtype)
                pairs[stem]["rank"] = v.shape[0]
            elif "lora_up" in k or "lora_B" in k:
                pairs[stem]["up"] = v.to(dtype=precision_dtype)
    for stem in pairs:
        pairs[stem]["alpha"] = alphas.get(stem, float(pairs[stem].get("rank", 1.0)))
    return pairs

class ShardBuffer:
    def __init__(self, max_size_gb, output_dir, output_repo, subfolder, hf_token, filename_prefix="model"):
        self.max_bytes = int(max_size_gb * 1024**3)
        self.output_dir = output_dir
        self.output_repo = output_repo
        self.subfolder = subfolder
        self.hf_token = hf_token
        self.filename_prefix = filename_prefix
        self.buffer = []
        self.current_bytes = 0
        self.shard_count = 0
        self.index_map = {}
        self.total_size = 0

    def add_tensor(self, key, tensor):
        if tensor.dtype == torch.bfloat16:
            raw_bytes = tensor.view(torch.int16).numpy().tobytes()
            dtype_str = "BF16"
        elif tensor.dtype == torch.float16:
            raw_bytes = tensor.numpy().tobytes()
            dtype_str = "F16"
        else:
            raw_bytes = tensor.numpy().tobytes()
            dtype_str = "F32"
            
        size = len(raw_bytes)
        self.buffer.append({
            "key": key,
            "data": raw_bytes,
            "dtype": dtype_str,
            "shape": tensor.shape
        })
        self.current_bytes += size
        self.total_size += size
        
        if self.current_bytes >= self.max_bytes:
            self.flush()
            
    def flush(self):
        if not self.buffer: return
        self.shard_count += 1
        
        filename = f"{self.filename_prefix}-{self.shard_count:05d}.safetensors"
        path_in_repo = f"{self.subfolder}/{filename}" if self.subfolder else filename
        
        print(f"Flushing {path_in_repo} ({self.current_bytes / 1024**3:.2f} GB)...")
        
        header = {"__metadata__": {"format": "pt"}}
        current_offset = 0
        for item in self.buffer:
            header[item["key"]] = {
                "dtype": item["dtype"],
                "shape": item["shape"],
                "data_offsets": [current_offset, current_offset + len(item["data"])]
            }
            current_offset += len(item["data"])
            self.index_map[item["key"]] = filename
            
        header_json = json.dumps(header).encode('utf-8')
        
        out_path = self.output_dir / filename
        with open(out_path, 'wb') as f:
            f.write(struct.pack('<Q', len(header_json)))
            f.write(header_json)
            for item in self.buffer:
                f.write(item["data"])
                
        print(f"Uploading {path_in_repo}...")
        api.upload_file(path_or_fileobj=out_path, path_in_repo=path_in_repo, repo_id=self.output_repo, token=self.hf_token)
        
        os.remove(out_path)
        self.buffer = []
        self.current_bytes = 0
        gc.collect()

def copy_auxiliary_configs(hf_token, base_repo, base_subfolder, output_repo, output_subfolder):
    """Aggressively copy all config/misc files, only skipping heavy weights."""
    print(f"Copying config files from {base_repo}...")
    try:
        files = list_repo_files(repo_id=base_repo, token=hf_token)
        blocked_ext = ['.safetensors', '.bin', '.pt', '.pth', '.msgpack', '.h5', '.onnx']
        
        for f in files:
            # Filter by subfolder if needed
            if base_subfolder and not f.startswith(base_subfolder): continue
                
            # Block heavy weights
            if any(f.endswith(ext) for ext in blocked_ext): continue
            
            print(f"Transferring {f}...")
            local = hf_hub_download(repo_id=base_repo, filename=f, token=hf_token, local_dir=TempDir)
            
            # Determine path in new repo
            rel_name = f[len(base_subfolder):].lstrip('/') if base_subfolder else f
            target_path = f"{output_subfolder}/{rel_name}" if output_subfolder else rel_name
            
            api.upload_file(path_or_fileobj=local, path_in_repo=target_path, repo_id=output_repo, token=hf_token)
            os.remove(local)
            
    except Exception as e:
        print(f"Config copy warning: {e}")

def streaming_copy_structure(token, src_repo, dst_repo, ignore_prefix=None, is_root_merge=False):
    print(f"Scanning {src_repo} for structure cloning...")
    try:
        files = api.list_repo_files(repo_id=src_repo, token=token)
        for f in tqdm(files, desc="Copying Structure"):
            if ignore_prefix and f.startswith(ignore_prefix): continue
            
            if is_root_merge:
                if any(f.endswith(ext) for ext in ['.safetensors', '.bin', '.pt', '.pth']):
                    continue
            
            try:
                local = hf_hub_download(repo_id=src_repo, filename=f, token=token, local_dir=TempDir)
                api.upload_file(path_or_fileobj=local, path_in_repo=f, repo_id=dst_repo, token=token)
                if os.path.exists(local): os.remove(local)
            except: pass
    except Exception as e: print(f"Structure clone error: {e}")

def task_merge(hf_token, base_repo, base_subfolder, lora_input, scale, precision, shard_size, output_repo, structure_repo, private, progress=gr.Progress()):
    cleanup_temp()
    if not hf_token: return "Error: HF Token required."
    login(hf_token.strip())
    
    try:
        api.create_repo(repo_id=output_repo, private=private, exist_ok=True, token=hf_token)
    except Exception as e: return f"Error creating repo: {e}"
    
    # Logic: If using a subfolder like 'transformer', we want standard diffusers naming
    output_subfolder = base_subfolder if base_subfolder else "" 
    
    # 2. Copy Configs from Base (Aggressive Copy)
    if base_subfolder:
        copy_auxiliary_configs(hf_token, base_repo, base_subfolder, output_repo, output_subfolder)
    
    # 3. Clone Structure Repo
    if structure_repo:
        ignore = output_subfolder if output_subfolder else None
        streaming_copy_structure(hf_token, structure_repo, output_repo, ignore_prefix=ignore, is_root_merge=not bool(output_subfolder))

    # 4. Download Shards
    progress(0.1, desc="Downloading Input Model...")
    files = list_repo_files(repo_id=base_repo, token=hf_token)
    input_shards = []
    
    for f in files:
        if f.endswith(".safetensors"):
            if output_subfolder and not f.startswith(output_subfolder): continue
            
            local = TempDir / "inputs" / os.path.basename(f)
            os.makedirs(local.parent, exist_ok=True)
            hf_hub_download(repo_id=base_repo, filename=f, token=hf_token, local_dir=local.parent, local_dir_use_symlinks=False)
            found = list(local.parent.rglob(os.path.basename(f)))
            if found: input_shards.append(found[0])

    if not input_shards: return "No safetensors found."
    input_shards.sort()

    # --- NAMING CONVENTION ---
    # Force diffusion naming if target is transformer/unet
    if output_subfolder in ["transformer", "unet", "qint4", "qint8"]:
        filename_prefix = "diffusion_pytorch_model"
        index_filename = "diffusion_pytorch_model.safetensors.index.json"
    elif "diffusion_pytorch_model" in os.path.basename(input_shards[0]):
        filename_prefix = "diffusion_pytorch_model"
        index_filename = "diffusion_pytorch_model.safetensors.index.json"
    else:
        filename_prefix = "model"
        index_filename = "model.safetensors.index.json"
        
    print(f"Naming scheme: {filename_prefix}")

    # 5. Load LoRA
    dtype = torch.bfloat16 if precision == "bf16" else torch.float16 if precision == "fp16" else torch.float32
    try:
        progress(0.15, desc="Downloading LoRA...")
        lora_path = download_lora_smart(lora_input, hf_token)
        lora_pairs = load_lora_to_memory(lora_path, precision_dtype=dtype)
    except Exception as e: return f"Error loading LoRA: {e}"

    # 6. Stream
    buffer = ShardBuffer(shard_size, TempDir, output_repo, output_subfolder, hf_token, filename_prefix=filename_prefix)
    
    for i, shard_file in enumerate(input_shards):
        progress(0.2 + (0.7 * i / len(input_shards)), desc=f"Processing {os.path.basename(shard_file)}")
        
        with MemoryEfficientSafeOpen(shard_file) as f:
            keys = f.keys()
            for k in keys:
                v = f.get_tensor(k)
                base_stem = get_key_stem(k)
                match = lora_pairs.get(base_stem)
                
                # QKV Heuristics
                if not match:
                     if "to_q" in base_stem:
                        qkv = base_stem.replace("to_q", "qkv")
                        match = lora_pairs.get(qkv)
                     elif "to_k" in base_stem:
                        qkv = base_stem.replace("to_k", "qkv")
                        match = lora_pairs.get(qkv)
                     elif "to_v" in base_stem:
                        qkv = base_stem.replace("to_v", "qkv")
                        match = lora_pairs.get(qkv)

                if match:
                    down = match["down"]
                    up = match["up"]
                    scaling = scale * (match["alpha"] / match["rank"])
                    
                    if len(v.shape) == 4 and len(down.shape) == 2:
                        down = down.unsqueeze(-1).unsqueeze(-1)
                        up = up.unsqueeze(-1).unsqueeze(-1)
                    
                    try:
                        if len(up.shape) == 4:
                            delta = (up.squeeze() @ down.squeeze()).reshape(up.shape[0], down.shape[1], 1, 1)
                        else:
                            delta = up @ down
                    except: delta = up.T @ down 
                    
                    delta = delta * scaling
                    
                    valid = True
                    if delta.shape == v.shape: pass
                    elif delta.shape[0] == v.shape[0] * 3:
                        chunk = v.shape[0]
                        if "to_q" in k: delta = delta[0:chunk, ...]
                        elif "to_k" in k: delta = delta[chunk:2*chunk, ...]
                        elif "to_v" in k: delta = delta[2*chunk:, ...]
                        else: valid = False
                    elif delta.numel() == v.numel(): delta = delta.reshape(v.shape)
                    else: valid = False
                        
                    if valid:
                        v = v.to(dtype)
                        delta = delta.to(dtype)
                        v.add_(delta)
                        del delta

                if v.dtype != dtype: v = v.to(dtype)
                buffer.add_tensor(k, v)
                del v
        
        os.remove(shard_file)
        gc.collect()

    buffer.flush()
    
    print(f"Uploading Index: {index_filename} (Size: {buffer.total_size})")
    index_data = {"metadata": {"total_size": buffer.total_size}, "weight_map": buffer.index_map}
    with open(TempDir / index_filename, "w") as f:
        json.dump(index_data, f, indent=4)
        
    path_in_repo = f"{output_subfolder}/{index_filename}" if output_subfolder else index_filename
    api.upload_file(path_or_fileobj=TempDir / index_filename, path_in_repo=path_in_repo, repo_id=output_repo, token=hf_token)
    
    cleanup_temp()
    return f"Done! Merged {buffer.shard_count} shards to {output_repo}"

# =================================================================================
# TAB 2: EXTRACT LORA
# =================================================================================

def identify_and_download_model(input_str, token):
    """
    Smart download: 
    1. Checks if input is a direct URL -> downloads specific file.
    2. If input is a Repo ID -> scans for diffusers format (unet/transformer) or standard safetensors.
    """
    print(f"Resolving model input: {input_str}")
    
    # --- STRATEGY A: Direct URL ---
    repo_id_from_url, filename_from_url = parse_hf_url(input_str)
    
    if repo_id_from_url and filename_from_url:
        print(f"Detected Direct Link. Repo: {repo_id_from_url}, File: {filename_from_url}")
        local_path = TempDir / os.path.basename(filename_from_url)
        # Clean up previous download if name conflicts
        if local_path.exists(): os.remove(local_path)
        
        try:
            hf_hub_download(repo_id=repo_id_from_url, filename=filename_from_url, token=token, local_dir=TempDir)
            # Find where it landed (handling subfolders in local_dir)
            found = list(TempDir.rglob(os.path.basename(filename_from_url)))[0]
            return found
        except Exception as e:
            print(f"URL Download failed: {e}. Trying fallback...")

    # --- STRATEGY B: Repo Discovery (Auto-Detect) ---
    # If we are here, input_str is treated as a Repo ID (e.g. "ostris/Z-Image-De-Turbo")
    print(f"Scanning Repo {input_str} for model weights...")
    
    try:
        files = list_repo_files(repo_id=input_str, token=token)
    except Exception as e:
        raise ValueError(f"Failed to list repo '{input_str}'. If this is a URL, ensure it is formatted correctly. Error: {e}")

    # Priority list for diffusers vs single file
    priorities = [
        "transformer/diffusion_pytorch_model.safetensors",
        "unet/diffusion_pytorch_model.safetensors",
        "model.safetensors",
        # Fallback to any safetensors that isn't an adapter or lora
        lambda f: f.endswith(".safetensors") and "lora" not in f and "adapter" not in f and "extracted" not in f
    ]
    
    target_file = None
    for p in priorities:
        if callable(p):
            candidates = [f for f in files if p(f)]
            if candidates:
                # Pick the largest file if multiple candidates (heuristic for "main" model)
                target_file = candidates[0] 
                break
        elif p in files:
            target_file = p
            break
            
    if not target_file:
        raise ValueError(f"Could not find a valid model weight file in {input_str}. Ensure it contains .safetensors weights.")
        
    print(f"Downloading auto-detected weight file: {target_file}")
    hf_hub_download(repo_id=input_str, filename=target_file, token=token, local_dir=TempDir)
    
    # Locate actual path
    found = list(TempDir.rglob(os.path.basename(target_file)))[0]
    return found

def extract_lora_layer_by_layer(model_org, model_tuned, rank, clamp):
    org = MemoryEfficientSafeOpen(model_org)
    tuned = MemoryEfficientSafeOpen(model_tuned)
    lora_sd = {}
    print("Calculating diffs & extracting LoRA...")
    
    # Get intersection of keys
    keys = set(org.keys()).intersection(set(tuned.keys()))
    
    for key in tqdm(keys, desc="Extracting"):
        # Skip integer buffers/metadata
        if "num_batches_tracked" in key or "running_mean" in key or "running_var" in key:
            continue
            
        mat_org = org.get_tensor(key).float()
        mat_tuned = tuned.get_tensor(key).float()
        
        # Skip if shapes mismatch (shouldn't happen if models match)
        if mat_org.shape != mat_tuned.shape: continue
        
        diff = mat_tuned - mat_org
        
        # Skip if no difference
        if torch.max(torch.abs(diff)) < 1e-4: continue
        
        out_dim = diff.shape[0]
        in_dim = diff.shape[1] if len(diff.shape) > 1 else 1
        
        r = min(rank, in_dim, out_dim)
        
        is_conv = len(diff.shape) == 4
        if is_conv: diff = diff.flatten(start_dim=1)
        elif len(diff.shape) == 1: diff = diff.unsqueeze(1) # Handle biases if needed
            
        try:
            # Use svd_lowrank for massive speedup on CPU vs linalg.svd
            U, S, V = torch.svd_lowrank(diff, q=r+4, niter=4)
            Vh = V.t()
            
            U = U[:, :r]
            S = S[:r]
            Vh = Vh[:r, :]
            
            # Merge S into U for standard LoRA format
            U = U @ torch.diag(S)
            
            # Clamp outliers
            dist = torch.cat([U.flatten(), Vh.flatten()])
            hi_val = torch.quantile(torch.abs(dist), clamp)
            if hi_val > 0:
                U = U.clamp(-hi_val, hi_val)
                Vh = Vh.clamp(-hi_val, hi_val)
            
            if is_conv:
                U = U.reshape(out_dim, r, 1, 1)
                Vh = Vh.reshape(r, in_dim, mat_org.shape[2], mat_org.shape[3])
            else:
                U = U.reshape(out_dim, r)
                Vh = Vh.reshape(r, in_dim)
                
            stem = key.replace(".weight", "")
            lora_sd[f"{stem}.lora_up.weight"] = U.contiguous()
            lora_sd[f"{stem}.lora_down.weight"] = Vh.contiguous()
            lora_sd[f"{stem}.alpha"] = torch.tensor(r).float()
        except Exception as e:
            print(f"Skipping {key} due to error: {e}")
            pass
            
    out = TempDir / "extracted.safetensors"
    save_file(lora_sd, out)
    return str(out)

def task_extract(hf_token, org, tun, rank, out):
    cleanup_temp()
    if hf_token: login(hf_token.strip())
    try:
        print("Downloading Original Model...")
        p1 = identify_and_download_model(org, hf_token)
        print("Downloading Tuned Model...")
        p2 = identify_and_download_model(tun, hf_token)
        
        f = extract_lora_layer_by_layer(p1, p2, int(rank), 0.99)
        
        api.create_repo(repo_id=out, exist_ok=True, token=hf_token)
        api.upload_file(path_or_fileobj=f, path_in_repo="extracted_lora.safetensors", repo_id=out, token=hf_token)
        return "Done! Extracted to " + out
    except Exception as e: return f"Error: {e}"

# =================================================================================
# TAB 3: MERGE ADAPTERS (Multi-Method)
# =================================================================================

def load_full_state_dict(path):
    """Loads a safetensor file and cleans keys for easier processing."""
    raw = load_file(path, device="cpu")
    cleaned = {}
    for k, v in raw.items():
        # Map common keys to standard "lora_up/lora_down"
        if "lora_A" in k: new_k = k.replace("lora_A", "lora_down")
        elif "lora_B" in k: new_k = k.replace("lora_B", "lora_up")
        else: new_k = k
        cleaned[new_k] = v.float()
    return cleaned

# --- Original EMA Method ---
def sigma_rel_to_gamma(sigma_rel):
    t = sigma_rel**-2
    coeffs = [1, 7, 16 - t, 12 - t]
    roots = np.roots(coeffs)
    gamma = roots[np.isreal(roots) & (roots.real >= 0)].real.max()
    return gamma

def merge_lora_iterative_ema(paths, beta, sigma_rel):
    print("Executing Iterative EMA Merge (Original Method)...")
    base_sd = load_file(paths[0], device="cpu")
    for k in base_sd:
        if base_sd[k].dtype.is_floating_point: base_sd[k] = base_sd[k].float()
            
    gamma = None
    if sigma_rel > 0:
        gamma = sigma_rel_to_gamma(sigma_rel)
        
    for i, path in enumerate(paths[1:]):
        print(f"Merging {path}")
        if gamma is not None:
            t = i + 1
            current_beta = (1 - 1 / t) ** (gamma + 1)
        else:
            current_beta = beta 
            
        curr = load_file(path, device="cpu")
        for k in base_sd:
            if k in curr and "alpha" not in k:
                base_sd[k] = base_sd[k] * current_beta + curr[k].float() * (1 - current_beta)
    return base_sd

# --- New Concatenation Method (DiffSynth) ---
def merge_lora_concatenation(adapter_states, weights):
    """
    DiffSynth Method: Concatenates ranks.
    New Rank = sum(ranks). Lossless merging.
    """
    print("Executing Concatenation Merge (Rank Summation)...")
    merged_state = {}
    
    # Identify all stems (layers) present across all adapters
    all_stems = set()
    for state in adapter_states:
        for k in state.keys():
            stem = k.split(".lora_")[0]
            if "lora_" in k: all_stems.add(stem)
    
    for stem in tqdm(all_stems, desc="Concatenating Layers"):
        down_list = []
        up_list = []
        alpha_sum = 0.0
        
        for i, state in enumerate(adapter_states):
            w = weights[i]
            down_key = f"{stem}.lora_down.weight"
            up_key = f"{stem}.lora_up.weight"
            alpha_key = f"{stem}.alpha"
            
            if down_key in state and up_key in state:
                d = state[down_key]
                u = state[up_key] * w # weighted contribution applied to UP
                
                down_list.append(d)
                up_list.append(u)
                
                if alpha_key in state:
                    alpha_sum += state[alpha_key].item()
                else:
                    alpha_sum += d.shape[0] 
                    
        if down_list and up_list:
            # Concat Down (A) along dim 0 (output of A, input to B) - Wait, lora_A is (rank, in)
            # Concat Up (B) along dim 1 (input of B) - lora_B is (out, rank)
            # Reference: DiffSynth code: lora_A = concat(tensors_A, dim=0), lora_B = concat(tensors_B, dim=1)
            
            new_down = torch.cat(down_list, dim=0) # (sum_rank, in)
            new_up = torch.cat(up_list, dim=1)     # (out, sum_rank)
            
            merged_state[f"{stem}.lora_down.weight"] = new_down.contiguous()
            merged_state[f"{stem}.lora_up.weight"] = new_up.contiguous()
            merged_state[f"{stem}.alpha"] = torch.tensor(alpha_sum)
            
    return merged_state

# --- New SVD/Task Arithmetic Method ---
def merge_lora_svd(adapter_states, weights, target_rank):
    """
    SVD / Task Arithmetic Method:
    1. Calculate Delta W for each adapter: dW = B @ A
    2. Sum Delta Ws: Total dW = sum(weight_i * dW_i)
    3. SVD(Total dW) -> New B, New A at target_rank
    """
    print(f"Executing SVD Merge (Target Rank: {target_rank})...")
    merged_state = {}
    
    all_stems = set()
    for state in adapter_states:
        for k in state.keys():
            stem = k.split(".lora_")[0]
            if "lora_" in k: all_stems.add(stem)
            
    for stem in tqdm(all_stems, desc="SVD Merging Layers"):
        total_delta = None
        valid_layer = False
        
        for i, state in enumerate(adapter_states):
            w = weights[i]
            down_key = f"{stem}.lora_down.weight"
            up_key = f"{stem}.lora_up.weight"
            alpha_key = f"{stem}.alpha"
            
            if down_key in state and up_key in state:
                down = state[down_key]
                up = state[up_key]
                alpha = state[alpha_key].item() if alpha_key in state else down.shape[0]
                rank = down.shape[0]
                
                scale = (alpha / rank) * w
                
                # Reconstruct Delta
                if len(down.shape) == 4: # Conv2d
                    d_flat = down.flatten(start_dim=1)
                    u_flat = up.flatten(start_dim=1)
                    delta = (u_flat @ d_flat).reshape(up.shape[0], down.shape[1], down.shape[2], down.shape[3])
                else:
                    delta = up @ down
                    
                delta = delta * scale
                
                if total_delta is None:
                    total_delta = delta
                    valid_layer = True
                else:
                    if total_delta.shape == delta.shape:
                        total_delta += delta
                    else:
                        print(f"Shape mismatch in {stem}, skipping.")
        
        if valid_layer and total_delta is not None:
            out_dim = total_delta.shape[0]
            in_dim = total_delta.shape[1]
            is_conv = len(total_delta.shape) == 4
            
            if is_conv:
                flat_delta = total_delta.flatten(start_dim=1)
            else:
                flat_delta = total_delta
                
            try:
                U, S, V = torch.svd_lowrank(flat_delta, q=target_rank + 4, niter=4)
                Vh = V.t()
                
                U = U[:, :target_rank]
                S = S[:target_rank]
                Vh = Vh[:target_rank, :]
                
                U = U @ torch.diag(S)
                
                if is_conv:
                    U = U.reshape(out_dim, target_rank, 1, 1)
                    Vh = Vh.reshape(target_rank, in_dim, total_delta.shape[2], total_delta.shape[3])
                else:
                    U = U.reshape(out_dim, target_rank)
                    Vh = Vh.reshape(target_rank, in_dim)
                    
                merged_state[f"{stem}.lora_down.weight"] = Vh.contiguous()
                merged_state[f"{stem}.lora_up.weight"] = U.contiguous()
                merged_state[f"{stem}.alpha"] = torch.tensor(target_rank).float()
            except Exception as e:
                print(f"SVD Failed for {stem}: {e}")

    return merged_state

def task_merge_adapters_advanced(hf_token, inputs_text, method, weight_str, beta, sigma_rel, target_rank, out_repo, private):
    cleanup_temp()
    if hf_token: login(hf_token.strip())
    
    if not out_repo or not out_repo.strip():
        return "Error: Output Repo cannot be empty."

    # 1. Parse Inputs (Multi-line support)
    raw_lines = inputs_text.replace(" ", "\n").split('\n')
    urls = [line.strip() for line in raw_lines if line.strip()]
    if len(urls) < 2: return "Error: Please provide at least 2 adapters."
    
    # 2. Parse Weights (for SVD/Concatenation)
    try:
        if not weight_str.strip():
            weights = [1.0] * len(urls)
        else:
            weights = [float(w.strip()) for w in weight_str.split(',')]
            # Broadcast or Truncate
            if len(weights) < len(urls):
                weights += [1.0] * (len(urls) - len(weights))
            else:
                weights = weights[:len(urls)]
    except:
        return "Error parsing weights. Use format: 1.0, 0.5, 0.8"

    # 3. Download All
    paths = []
    try:
        for url in tqdm(urls, desc="Downloading Adapters"):
            paths.append(download_lora_smart(url, hf_token))
    except Exception as e: return f"Download Error: {e}"

    merged = None

    # 4. Execute Selected Method
    if "Iterative EMA" in method:
        # Calls the original method logic exactly
        merged = merge_lora_iterative_ema(paths, beta, sigma_rel)
    
    else:
        # For new methods, we load everything upfront
        states = [load_full_state_dict(p) for p in paths]
        
        if "Concatenation" in method:
            merged = merge_lora_concatenation(states, weights)
        elif "SVD" in method:
            merged = merge_lora_svd(states, weights, int(target_rank))

    if not merged: return "Merge failed (Result empty)."

    # 5. Save & Upload
    out = TempDir / "merged_adapters.safetensors"
    save_file(merged, out)
    
    try:
        api.create_repo(repo_id=out_repo, private=private, exist_ok=True, token=hf_token)
        api.upload_file(path_or_fileobj=out, path_in_repo="merged_adapters.safetensors", repo_id=out_repo, token=hf_token)
        return f"Success! Merged to {out_repo}"
    except Exception as e: return f"Upload Error: {e}"

# =================================================================================
# TAB 4: RESIZE (CPU Optimized)
# =================================================================================

def task_resize(hf_token, lora_input, new_rank, dynamic_method, dynamic_param, out_repo):
    cleanup_temp()
    if not hf_token: return "Error: Token required"
    login(hf_token.strip())
    
    try:
        path = download_lora_smart(lora_input, hf_token)
    except Exception as e: return f"Error: {e}"

    state = load_file(path, device="cpu")
    new_state = {}
    
    groups = {}
    for k in state:
        stem = get_key_stem(k)
        simple = k.split(".lora_")[0] 
        if simple not in groups: groups[simple] = {}
        if "lora_down" in k or "lora_A" in k: groups[simple]["down"] = state[k]
        if "lora_up" in k or "lora_B" in k: groups[simple]["up"] = state[k]
        if "alpha" in k: groups[simple]["alpha"] = state[k]

    print(f"Resizing {len(groups)} blocks...")
    for stem, g in tqdm(groups.items()):
        if "down" in g and "up" in g:
            down, up = g["down"].float(), g["up"].float()
            
            # 1. Merge Up/Down
            if len(down.shape) == 4:
                merged = (up.squeeze() @ down.squeeze()).reshape(up.shape[0], down.shape[1], down.shape[2], down.shape[3])
                flat = merged.flatten(1)
            else:
                merged = up @ down
                flat = merged
            
            # 2. FAST SVD (svd_lowrank)
            target_rank = int(new_rank)
            # Add buffer to q to ensure convergence
            q = min(target_rank + 10, min(flat.shape))
            
            U, S, V = torch.svd_lowrank(flat, q=q)
            Vh = V.t() 
            
            # 3. Dynamic Rank Selection
            if dynamic_method == "sv_ratio":
                target_rank = index_sv_ratio(S, dynamic_param)
            
            # Hard limit by user's max rank
            target_rank = min(target_rank, int(new_rank), S.shape[0])
            
            # 4. Truncate
            U = U[:, :target_rank]
            S = S[:target_rank]
            Vh = Vh[:target_rank, :]
            
            # 5. Reconstruct Up Matrix
            U = U @ torch.diag(S)
            
            if len(down.shape) == 4:
                U = U.reshape(up.shape[0], target_rank, 1, 1)
                Vh = Vh.reshape(target_rank, down.shape[1], down.shape[2], down.shape[3])
                
            # 6. Save (FIX: Enforce contiguous memory layout)
            new_state[f"{stem}.lora_down.weight"] = Vh.contiguous()
            new_state[f"{stem}.lora_up.weight"] = U.contiguous()
            new_state[f"{stem}.alpha"] = torch.tensor(target_rank).float()

    out = TempDir / "resized.safetensors"
    # safetensors requires contiguous tensors
    save_file(new_state, out)
    
    api.create_repo(repo_id=out_repo, exist_ok=True, token=hf_token)
    api.upload_file(path_or_fileobj=out, path_in_repo="resized.safetensors", repo_id=out_repo, token=hf_token)
    return "Done"
# =================================================================================
# UI
# =================================================================================

css = ".container { max-width: 900px; margin: auto; }"

with gr.Blocks() as demo:
    gr.Markdown("# 🧰SOONmerge® LoRA Toolkit")
    
    with gr.Tabs():
        with gr.Tab("Merge to Base + Reshard Output"):
            t1_token = gr.Textbox(label="Token", type="password")
            t1_base = gr.Textbox(label="Base Repo (Diffusers)", value="ostris/Z-Image-De-Turbo")
            t1_sub = gr.Textbox(label="Subfolder", value="transformer")
            t1_lora = gr.Textbox(label="LoRA Direct Link or Repo", value="https://huggingface.co/GuangyuanSD/Z-Image-Re-Turbo-LoRA/resolve/main/Z-image_re_turbo_lora_8steps_rank_32_v1_fp16.safetensors")
            with gr.Row():
                t1_scale = gr.Slider(label="Scale", value=1.0, minimum=0, maximum=3.0, step=0.1)
                t1_prec = gr.Radio(["bf16", "fp16", "float32"], value="bf16", label="Precision")
                t1_shard = gr.Slider(label="Shard Size (GB)", value=2.0, minimum=0.1, maximum=10.0, step=0.1)
            t1_out = gr.Textbox(label="Output Repo")
            t1_struct = gr.Textbox(label="Diffusers Extras (Copies VAE/TextEnc/etc)", value="Tongyi-MAI/Z-Image-Turbo")
            t1_priv = gr.Checkbox(label="Private", value=True)
            t1_btn = gr.Button("Merge")
            t1_res = gr.Textbox(label="Result")
            t1_btn.click(task_merge, [t1_token, t1_base, t1_sub, t1_lora, t1_scale, t1_prec, t1_shard, t1_out, t1_struct, t1_priv], t1_res)

        with gr.Tab("Extract Adapter"):
            t2_token = gr.Textbox(label="Token", type="password")
            t2_org = gr.Textbox(label="Original Model")
            t2_tun = gr.Textbox(label="Tuned Model")
            t2_rank = gr.Number(label="Extract At Rank", value=32, minimum=1, maximum=1024, step=1)
            t2_out = gr.Textbox(label="Output Repo")
            t2_btn = gr.Button("Extract")
            t2_res = gr.Textbox(label="Result")
            t2_btn.click(task_extract, [t2_token, t2_org, t2_tun, t2_rank, t2_out], t2_res)
            
        with gr.Tab("Merge Multiple Adapters"):
            gr.Markdown("### Batch Adapter Merging")
            t3_token = gr.Textbox(label="Token", type="password")
            t3_urls = gr.TextArea(label="Adapter URLs/Repos (One per line, or space separated)", placeholder="ostris/lora1\nhttps://hf.co/user/lora2.safetensors\n...")
            
            with gr.Row():
                t3_method = gr.Dropdown(
                    ["Iterative EMA (Original Beta/Sigma)", "Concatenation (DiffSynth - Lossless)", "SVD Merge (Task Arithmetic/Compressed)"], 
                    value="Iterative EMA (Original Beta/Sigma)", 
                    label="Merge Method"
                )
            
            with gr.Row():
                t3_weights = gr.Textbox(label="Weights (Comma separated) - For Concat/SVD", placeholder="1.0, 0.5, 0.8...")
                t3_rank = gr.Number(label="Target Rank - For SVD only", value=128, minimum=4, maximum=1024)
            
            with gr.Row():
                t3_beta = gr.Slider(label="Beta - For EMA only", value=0.95, minimum=0.01, maximum=1.00, step=0.01)
                t3_sigma = gr.Slider(label="Sigma Rel - For EMA only", value=0.21, minimum=0.01, maximum=1.00, step=0.01)
            
            t3_out = gr.Textbox(label="Output Repo")
            t3_priv = gr.Checkbox(label="Private Output", value=True)
            t3_btn = gr.Button("Merge Adapters")
            t3_res = gr.Textbox(label="Result")
            
            t3_btn.click(task_merge_adapters_advanced, [t3_token, t3_urls, t3_method, t3_weights, t3_beta, t3_sigma, t3_rank, t3_out, t3_priv], t3_res)
            
        with gr.Tab("Resize Adapter"):
            t4_token = gr.Textbox(label="Token", type="password")
            t4_in = gr.Textbox(label="LoRA")
            with gr.Row():
                t4_rank = gr.Number(label="To Rank (Lower Only!)", value=8, minimum=1, maximum=256, step=1)
                t4_method = gr.Dropdown(["None", "sv_ratio"], value="None", label="Dynamic Method")
                t4_param = gr.Number(label="Dynamic Param", value=4.0)
            t4_out = gr.Textbox(label="Output")
            t4_btn = gr.Button("Resize")
            t4_res = gr.Textbox(label="Result")
            t4_btn.click(task_resize, [t4_token, t4_in, t4_rank, t4_method, t4_param, t4_out], t4_res)

if __name__ == "__main__":
    demo.queue().launch(css=css, ssr_mode=False)