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import base64
import io
import time

import torch

QM9_ATOM_TYPES = ["C", "N", "O", "F"]
STATE_BLOB_MAX_BYTES = 10 * 1024 * 1024  # 10 MB
REQUIRED_STATE_KEYS = {
    "X", "E", "y", "n_nodes", "dataset_id", "model_type", "T",
    "n", "m", "t", "t_prime", "gibbs_chain_freq", "inner_step", "step",
}


# ---------------------------------------------------------------------------
# Model-type helpers
# ---------------------------------------------------------------------------

def _is_discrete(model):
    from diffusion_model_discrete import DiscreteDenoisingDiffusion
    return isinstance(model, DiscreteDenoisingDiffusion)


def _build_node_mask(n_nodes, n_max, model):
    """bool for discrete, float32 for continuous."""
    arange = torch.arange(n_max, device=n_nodes.device).unsqueeze(0)
    mask = arange < n_nodes.unsqueeze(1)  # (1, n_max) bool
    return mask if _is_discrete(model) else mask.float()


def _sample_initial_noise(model, n_max, node_mask):
    from src.diffusion import diffusion_utils
    if _is_discrete(model):
        return diffusion_utils.sample_discrete_feature_noise(
            limit_dist=model.limit_dist, node_mask=node_mask)
    else:
        bs = node_mask.shape[0]
        return diffusion_utils.sample_feature_noise(
            X_size=(bs, n_max, model.Xdim_output),
            E_size=(bs, n_max, n_max, model.Edim_output),
            y_size=(bs, model.ydim_output),
            node_mask=node_mask)


def _denoising_step(model, s_t, t_t, X, E, y, node_mask):
    """One denoising step. Returns (X_soft, E_soft, y_soft, X_int, E_int)."""
    if _is_discrete(model):
        sampled_s, discrete_s = model.sample_p_zs_given_zt(s_t, t_t, X, E, y, node_mask)
        # .type_as(y_t) in the model can cast collapsed ints to float β€” force back to long
        return sampled_s.X, sampled_s.E, sampled_s.y, discrete_s.X.long(), discrete_s.E.long()
    else:
        from src import utils
        z_s = model.sample_p_zs_given_zt(s=s_t, t=t_t, X_t=X, E_t=E, y_t=y, node_mask=node_mask)
        unnorm = utils.unnormalize(
            z_s.X, z_s.E, z_s.y,
            model.norm_values, model.norm_biases, node_mask, collapse=True)
        return z_s.X, z_s.E, z_s.y, unnorm.X, unnorm.E


def _gibbs_aggregate(model, X):
    if _is_discrete(model):
        return torch.median(X, dim=1).values
    else:
        return torch.mean(X, dim=1)


def _collapse_final(model, X, E, y, node_mask):
    """Returns (X_int, E_int) integer tensors.

    Symmetrize E first: MultiProx aggregation (mean / median over multiple
    chains) can introduce ULP-level asymmetry that survives into pred_E and
    breaks the model's strict ``assert (pred_E == pred_E.T).all()`` on some
    BLAS / vectorization stacks (notably the Linux ``+cu118`` torch wheel
    inside the deployment container, while the same code runs fine on the
    Windows wheel in dev).  Symmetrizing here is a no-op when the input is
    already symmetric and a 1-line invariant fix when it isn't.
    """
    E = (E + E.transpose(1, 2)) / 2
    if _is_discrete(model):
        from src.utils import PlaceHolder
        final = PlaceHolder(X=X, E=E, y=y).mask(node_mask, collapse=True)
        return final.X.long(), final.E.long()
    else:
        final = model.sample_discrete_graph_given_z0(X, E, y, node_mask)
        return final.X, final.E


# ---------------------------------------------------------------------------
# Main inference generators β€” yield progress dicts, then a result dict
# ---------------------------------------------------------------------------

def run_standard_generation(model, num_nodes, diffusion_steps, chain_frames, dataset_id):
    device = next(model.parameters()).device
    if num_nodes is None:
        n_nodes = model.node_dist.sample_n(1, device)
    else:
        n_nodes = torch.tensor([num_nodes], dtype=torch.long, device=device)
    n_max = n_nodes.item()
    node_mask = _build_node_mask(n_nodes, n_max, model)

    z_T = _sample_initial_noise(model, n_max, node_mask)
    X, E, y = z_T.X, z_T.E, z_T.y

    frame_interval = max(1, diffusion_steps // chain_frames)
    gif_frames = []

    t0 = time.time()
    with torch.no_grad():
        for s_idx in reversed(range(diffusion_steps)):
            s_t = (s_idx / diffusion_steps) * torch.ones((1, 1), device=device)
            t_t = ((s_idx + 1) / diffusion_steps) * torch.ones((1, 1), device=device)
            X, E, y, X_int, E_int = _denoising_step(model, s_t, t_t, X, E, y, node_mask)
            step = diffusion_steps - 1 - s_idx
            is_frame = step % frame_interval == 0 or s_idx == 0
            if is_frame:
                frame_img = render_graph(X_int[0, :n_max], E_int[0, :n_max, :n_max], dataset_id)
                gif_frames.append(frame_img)
            event = {
                "type": "progress",
                "phase": "denoise",
                "step": step + 1,
                "total_steps": diffusion_steps,
                "elapsed_ms": int((time.time() - t0) * 1000),
            }
            if is_frame:
                event["preview"] = _pil_to_b64(frame_img)
            yield event

    X_final, E_final = _collapse_final(model, X, E, y, node_mask)
    image_b64 = _pil_to_b64(render_graph(X_final[0, :n_max], E_final[0, :n_max, :n_max], dataset_id))
    elapsed_ms = int((time.time() - t0) * 1000)
    yield {
        "type": "result",
        "image": image_b64,
        "chain_gif": _frames_to_gif_b64(gif_frames),
        "inference_time_ms": elapsed_ms,
    }


def run_multiprox_init(model, num_nodes, n, m, t, t_prime, gibbs_chain_freq, dataset_id):
    device = next(model.parameters()).device
    if num_nodes is None:
        n_nodes = model.node_dist.sample_n(1, device)
    else:
        n_nodes = torch.tensor([num_nodes], dtype=torch.long, device=device)
    n_max = n_nodes.item()
    node_mask = _build_node_mask(n_nodes, n_max, model)

    t0 = time.time()
    z_samples = []
    for i in range(m):
        z_samples.append(_sample_initial_noise(model, n_max, node_mask))
        if (i + 1) % max(1, m // 10) == 0 or i == m - 1:
            yield {
                "type": "progress",
                "phase": "noise_init",
                "step": i + 1,
                "total_steps": m,
                "elapsed_ms": int((time.time() - t0) * 1000),
            }

    X = torch.stack([z.X for z in z_samples], dim=1)  # (1, M, n_max, Xdim)
    E = torch.stack([z.E for z in z_samples], dim=1)
    y = torch.stack([z.y for z in z_samples], dim=1)

    agg_X = _gibbs_aggregate(model, X)
    agg_E = _gibbs_aggregate(model, E)
    agg_y = _gibbs_aggregate(model, y.float())
    X_int, E_int = _collapse_final(model, agg_X, agg_E, agg_y, node_mask)
    image_b64 = _pil_to_b64(render_graph(X_int[0, :n_max], E_int[0, :n_max, :n_max], dataset_id))
    elapsed_ms = int((time.time() - t0) * 1000)

    state = {
        "X": X.cpu(), "E": E.cpu(), "y": y.cpu(), "n_nodes": n_nodes.cpu(),
        "dataset_id": dataset_id, "model_type": None,  # filled by registry
        "T": model.T, "n": n, "m": m, "t": t, "t_prime": t_prime,
        "gibbs_chain_freq": gibbs_chain_freq, "inner_step": 0, "step": 0,
    }
    yield {
        "type": "result",
        "state": state,
        "image": image_b64,
        "inference_time_ms": elapsed_ms,
    }


def run_multiprox_step(model, state_dict, dataset_id):
    device = next(model.parameters()).device
    X = state_dict["X"].to(device)
    E = state_dict["E"].to(device)
    y = state_dict["y"].to(device)
    n_nodes = state_dict["n_nodes"].to(device)
    T = state_dict["T"]
    n = state_dict["n"]
    m = state_dict["m"]
    t = state_dict["t"]
    t_prime = state_dict["t_prime"]
    gibbs_chain_freq = state_dict["gibbs_chain_freq"]
    inner_step = state_dict["inner_step"]
    step = state_dict["step"]

    n_max = X.shape[2]
    node_mask = _build_node_mask(n_nodes, n_max, model)

    fixed_t = t * torch.ones((1, 1), dtype=torch.float, device=device)
    fixed_s = fixed_t - (1.0 / T)

    steps_this_call = min(gibbs_chain_freq, m - inner_step)

    t0 = time.time()
    with torch.no_grad():
        for i in range(steps_this_call):
            k = inner_step + i
            avg_X = _gibbs_aggregate(model, X)
            avg_E = _gibbs_aggregate(model, E)
            avg_y = _gibbs_aggregate(model, y.float())
            denoised_X, denoised_E, denoised_y, _, _ = _denoising_step(
                model, fixed_s, fixed_t, avg_X, avg_E, avg_y, node_mask)
            old_t2 = model.gibbs_fixed_t_2
            model.gibbs_fixed_t_2 = t  # safe: _inference_lock held by registry
            noisy = model.apply_noise(denoised_X, denoised_E, denoised_y, node_mask, gibbs=True)
            model.gibbs_fixed_t_2 = old_t2
            X[:, k] = noisy["X_t"]
            E[:, k] = noisy["E_t"]
            y[:, k] = noisy["y_t"]
            # Preview: aggregate + collapse current Gibbs state
            prev_X = _gibbs_aggregate(model, X)
            prev_E = _gibbs_aggregate(model, E)
            prev_y = _gibbs_aggregate(model, y.float())
            prev_Xi, prev_Ei = _collapse_final(model, prev_X, prev_E, prev_y, node_mask)
            yield {
                "type": "progress",
                "phase": "gibbs",
                "step": i + 1,
                "total_steps": steps_this_call,
                "elapsed_ms": int((time.time() - t0) * 1000),
                "preview": _pil_to_b64(render_graph(prev_Xi[0, :n_max], prev_Ei[0, :n_max, :n_max], dataset_id)),
            }

        new_inner_step = inner_step + steps_this_call
        round_complete = new_inner_step >= m
        if round_complete:
            new_inner_step = 0
            new_step = step + 1
        else:
            new_step = step

        done = round_complete and new_step >= n

        # Refinement pass β€” always produce a clean render
        P = int((t - t_prime) * T) + 1
        refine_preview_interval = max(1, P // 10)
        cur_X = _gibbs_aggregate(model, X)
        cur_E = _gibbs_aggregate(model, E)
        cur_y = _gibbs_aggregate(model, y.float())
        for j in range(P):
            s_ref = (t - (j + 1) / T) * torch.ones((1, 1), dtype=torch.float, device=device)
            t_ref = (t - j / T) * torch.ones((1, 1), dtype=torch.float, device=device)
            cur_X, cur_E, cur_y, cur_Xi, cur_Ei = _denoising_step(
                model, s_ref, t_ref, cur_X, cur_E, cur_y, node_mask)
            is_frame = (j + 1) % refine_preview_interval == 0 or j == P - 1
            event = {
                "type": "progress",
                "phase": "refine",
                "step": j + 1,
                "total_steps": P,
                "elapsed_ms": int((time.time() - t0) * 1000),
            }
            if is_frame:
                event["preview"] = _pil_to_b64(
                    render_graph(cur_Xi[0, :n_max], cur_Ei[0, :n_max, :n_max], dataset_id))
            yield event

        X_int, E_int = _collapse_final(model, cur_X, cur_E, cur_y, node_mask)

    image_b64 = _pil_to_b64(render_graph(X_int[0, :n_max], E_int[0, :n_max, :n_max], dataset_id))
    elapsed_ms = int((time.time() - t0) * 1000)
    updated_state = {
        **state_dict,
        "X": X.cpu(), "E": E.cpu(), "y": y.cpu(),
        "step": new_step, "inner_step": new_inner_step,
    }
    yield {
        "type": "result",
        "state": updated_state,
        "image": image_b64,
        "round_complete": round_complete,
        "done": done,
        "inference_time_ms": elapsed_ms,
    }


# ---------------------------------------------------------------------------
# State blob serialisation
# ---------------------------------------------------------------------------

def encode_state_blob(state_dict):
    buf = io.BytesIO()
    torch.save(state_dict, buf)
    return base64.b64encode(buf.getvalue()).decode("ascii")


def decode_state_blob(b64_str):
    try:
        raw = base64.b64decode(b64_str)
    except Exception:
        raise ValueError("state is not valid base64")
    if len(raw) > STATE_BLOB_MAX_BYTES:
        raise ValueError(f"state blob exceeds {STATE_BLOB_MAX_BYTES // (1024 * 1024)} MB limit")
    try:
        state = torch.load(io.BytesIO(raw), weights_only=False)
    except Exception as exc:
        raise ValueError(f"state could not be deserialized: {exc}") from exc
    missing = REQUIRED_STATE_KEYS - set(state.keys())
    if missing:
        raise ValueError(f"state missing keys: {missing}")
    if not isinstance(state["X"], torch.Tensor) or state["X"].dim() != 4:
        raise ValueError("state['X'] must be a 4-D tensor")
    if not isinstance(state["E"], torch.Tensor) or state["E"].dim() != 5:
        raise ValueError("state['E'] must be a 5-D tensor")
    return state


# ---------------------------------------------------------------------------
# Visualisation
# ---------------------------------------------------------------------------

def render_graph(X_int, E_int, dataset_id):
    """Render a single graph to PIL Image. X_int/E_int are 1-D / 2-D integer tensors."""
    if dataset_id == "qm9":
        return _render_qm9(X_int, E_int)
    else:
        return _render_comm20(X_int, E_int)


def _render_qm9(X_int, E_int):
    from rdkit import Chem
    from rdkit.Chem import Draw
    from rdkit.Chem.rdchem import BondType

    bond_map = {1: BondType.SINGLE, 2: BondType.DOUBLE, 3: BondType.TRIPLE, 4: BondType.AROMATIC}

    mol = Chem.RWMol()
    x = X_int.cpu().tolist()
    valid_atoms = [i for i, a in enumerate(x) if a >= 0]
    idx_map = {}
    for i in valid_atoms:
        atom_sym = QM9_ATOM_TYPES[x[i]] if x[i] < len(QM9_ATOM_TYPES) else "C"
        idx_map[i] = mol.AddAtom(Chem.Atom(atom_sym))

    e = E_int.cpu().tolist()
    for i in valid_atoms:
        for j in valid_atoms:
            if j <= i:
                continue
            bond_type_idx = e[i][j]
            if bond_type_idx > 0 and bond_type_idx in bond_map:
                mol.AddBond(idx_map[i], idx_map[j], bond_map[bond_type_idx])

    try:
        img = Draw.MolToImage(mol.GetMol(), size=(300, 300))
    except Exception:
        # If RDKit can't sanitize, draw the raw RWMol
        img = Draw.MolToImage(mol, size=(300, 300))
    return img


_COMM20_GREEN_LOW = (212, 237, 218)
_COMM20_GREEN_MID = (82, 180, 120)
_COMM20_GREEN_HIGH = (22, 80, 50)


def _comm20_green_rgb(t):
    """Map [-1, 1] β†’ RGB via a green palette (pale mint β†’ vivid green β†’ deep forest)."""
    t = max(-1.0, min(1.0, float(t)))
    if t < 0:
        w = t + 1.0
        a, b = _COMM20_GREEN_LOW, _COMM20_GREEN_MID
    else:
        w = t
        a, b = _COMM20_GREEN_MID, _COMM20_GREEN_HIGH
    return (
        int(a[0] + (b[0] - a[0]) * w),
        int(a[1] + (b[1] - a[1]) * w),
        int(a[2] + (b[2] - a[2]) * w),
    )


def _render_comm20(X_int, E_int):
    """Render a community graph as an undirected spring-layout plot.

    Mirrors MultiProxAn's ``visualize_non_molecule``: largest connected
    component, spring_layout, normalized-Laplacian eigenvector for node
    colouring (swapped to a site-green palette), no labels, grey edges.
    Uses pure PIL + networkx and ``torch.linalg.eigh`` to avoid the matplotlib /
    numpy MKL DLL conflicts on Windows.
    """
    import networkx as nx
    from PIL import Image, ImageDraw

    e = E_int.cpu().tolist()
    n = len(e)
    G = nx.Graph()
    G.add_nodes_from(range(n))
    for i in range(n):
        for j in range(i + 1, n):
            if e[i][j] > 0:
                G.add_edge(i, j)

    # Largest connected component only (matches visualize_non_molecule(largest_component=True)).
    components = sorted(nx.connected_components(G), key=len, reverse=True)
    graph = G.subgraph(components[0]).copy() if components else G

    size = 720
    img = Image.new("RGB", (size, size), "white")
    draw = ImageDraw.Draw(img)

    if graph.number_of_nodes() == 0:
        return img

    pos = nx.spring_layout(graph, iterations=100, seed=42)

    # Normalized Laplacian eigenvector for node colouring (torch avoids numpy MKL DLL clash).
    L = nx.normalized_laplacian_matrix(graph).toarray()
    L_t = torch.from_numpy(L).to(torch.float64)
    _, U_t = torch.linalg.eigh(L_t)
    U = U_t.numpy()
    eigen_dim = 1 if U.shape[1] > 1 else 0
    vec = U[:, eigen_dim]
    m_abs = max(abs(vec.min()), abs(vec.max()), 1e-9)
    node_color = {n: _comm20_green_rgb(vec[i] / m_abs)
                  for i, n in enumerate(graph.nodes())}

    margin = 60
    scale = (size - 2 * margin) / 2
    cx, cy = size / 2, size / 2
    pixel_pos = {k: (cx + v[0] * scale, cy - v[1] * scale) for k, v in pos.items()}

    for i, j in graph.edges():
        draw.line([pixel_pos[i], pixel_pos[j]], fill="#9a9a9a", width=2)

    node_r = 14
    for k, (x, y) in pixel_pos.items():
        r, g, b = node_color[k]
        draw.ellipse([x - node_r, y - node_r, x + node_r, y + node_r],
                     fill=(r, g, b), outline="#333333", width=2)

    return img


def _pil_to_b64(img):
    buf = io.BytesIO()
    img.save(buf, format="PNG")
    return "data:image/png;base64," + base64.b64encode(buf.getvalue()).decode("ascii")


def _frames_to_gif_b64(frames):
    if not frames:
        return None
    buf = io.BytesIO()
    frames[0].save(
        buf, format="GIF", save_all=True,
        append_images=frames[1:], duration=150, loop=0,
    )
    return "data:image/gif;base64," + base64.b64encode(buf.getvalue()).decode("ascii")