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# ==========================================================
# ViT Visualizer — Simple (comic-style) + Advanced Mode
# Model: google/vit-base-patch16-224
# Gradio 5 compatible; CPU-friendly
#
# Features:
# - Simple mode (4-step, non-technical, kid-friendly)
# Step1: Patch grid
# Step2: Patch clustering (colored blocks)
# Step3: Patch-to-patch arrows (simplified attention)
# Step4: Focus map (rollout) + Top-5 predictions
# - Advanced mode (attention maps per layer/head, rollout, PCA)
# - SDPA -> eager fix for attention extraction
# ==========================================================
import math
import warnings
from typing import Any, Dict, List, Optional, Tuple
import gradio as gr
import numpy as np
import torch
from PIL import Image, ImageDraw, ImageFont
from sklearn.cluster import KMeans
from sklearn.decomposition import PCA
from transformers import (
AutoImageProcessor,
ViTModel,
ViTForImageClassification,
AutoConfig,
)
import plotly.express as px
warnings.filterwarnings("ignore")
MODEL_NAME = "google/vit-base-patch16-224"
DEVICE = torch.device("cuda" if torch.cuda.is_available() else "cpu")
# Globals
BASE_MODEL = None
CLF_MODEL = None
PROCESSOR = None
# ------------------- model loader with SDPA -> eager fix -------------------
def load_models():
global BASE_MODEL, CLF_MODEL, PROCESSOR
if BASE_MODEL is not None and CLF_MODEL is not None and PROCESSOR is not None:
return BASE_MODEL, CLF_MODEL, PROCESSOR
PROCESSOR = AutoImageProcessor.from_pretrained(MODEL_NAME)
# load config first, set attn_implementation BEFORE enabling attentions
cfg = AutoConfig.from_pretrained(MODEL_NAME)
cfg.attn_implementation = "eager" # << must set this first
cfg.output_attentions = True
cfg.output_hidden_states = True
# load base encoder with modified config (we'll extract hidden states & attentions)
BASE_MODEL = ViTModel.from_pretrained(MODEL_NAME, config=cfg)
BASE_MODEL.to(DEVICE).eval()
# classifier head (for top-5 predictions)
CLF_MODEL = ViTForImageClassification.from_pretrained(MODEL_NAME)
CLF_MODEL.to(DEVICE).eval()
return BASE_MODEL, CLF_MODEL, PROCESSOR
# ------------------- utility: patch grid positions -------------------
def patch_grid_info(image_size: int = 224, patch_size: int = 16):
grid_size = image_size // patch_size
positions = []
for i in range(grid_size):
for j in range(grid_size):
# center coordinates of patch (x,y)
cx = int((j + 0.5) * patch_size)
cy = int((i + 0.5) * patch_size)
positions.append((cx, cy))
return grid_size, positions
# ------------------- visual helpers -------------------
def draw_patch_grid(img: Image.Image, patch_size: int = 16, outline=(0, 180, 0)) -> Image.Image:
img = img.convert("RGB").resize((224, 224))
draw = ImageDraw.Draw(img)
w, h = img.size
for x in range(0, w, patch_size):
draw.line([(x, 0), (x, h)], fill=outline, width=1)
for y in range(0, h, patch_size):
draw.line([(0, y), (w, y)], fill=outline, width=1)
return img
def draw_cluster_blocks(img: Image.Image, labels: np.ndarray, n_clusters: int = 4, patch_size: int = 16):
"""
labels: (n_patches,) cluster labels assigned to each patch index (left→right, top→bottom)
"""
img = img.convert("RGB").resize((224, 224))
draw = ImageDraw.Draw(img, "RGBA")
grid_size, positions = patch_grid_info()
colors = [
(255, 99, 71, 140),
(60, 179, 113, 140),
(65, 105, 225, 140),
(255, 215, 0, 140),
(199, 21, 133, 140),
(0, 206, 209, 140),
]
for idx, lab in enumerate(labels):
i = idx // grid_size
j = idx % grid_size
x0 = j * patch_size
y0 = i * patch_size
x1 = x0 + patch_size
y1 = y0 + patch_size
col = colors[int(lab) % len(colors)]
draw.rectangle([x0, y0, x1, y1], fill=col)
return img
def draw_attention_arrows(img: Image.Image, att_matrix: np.ndarray, top_k: int = 3, query_idx: Optional[int] = None):
"""
att_matrix: (n_patches, n_patches) attention from query->keys (already preprocessed)
If query_idx is None -> use CLS (not plotted as patch), else 0..n_patches-1
We'll draw arrows from query patch centers to top-k key patch centers.
"""
img = img.convert("RGB").resize((224, 224))
draw = ImageDraw.Draw(img, "RGBA")
grid_size, positions = patch_grid_info()
# pick a query: if None, choose center patch
if query_idx is None:
query_idx = (grid_size * grid_size) // 2
qpos = positions[query_idx]
# find top_k keys attended by this query
vec = att_matrix[query_idx] # length n_patches
top_idx = vec.argsort()[-top_k:][::-1]
for t in top_idx:
kpos = positions[t]
# draw line + arrowhead
draw.line([qpos, kpos], fill=(255, 0, 0, 200), width=3)
# arrowhead: small triangle
dx = kpos[0] - qpos[0]
dy = kpos[1] - qpos[1]
ang = math.atan2(dy, dx)
# size proportional
ah = 8
p1 = (kpos[0] - ah * math.cos(ang - 0.3), kpos[1] - ah * math.sin(ang - 0.3))
p2 = (kpos[0] - ah * math.cos(ang + 0.3), kpos[1] - ah * math.sin(ang + 0.3))
draw.polygon([kpos, p1, p2], fill=(255, 0, 0, 200))
# highlight query patch with blue circle
r = 10
draw.ellipse([qpos[0] - r, qpos[1] - r, qpos[0] + r, qpos[1] + r], outline=(0, 0, 255, 220), width=2)
return img
def make_focus_overlay(img: Image.Image, heat_grid: np.ndarray, alpha: float = 0.6):
"""
heat_grid: (G,G) float map
overlay colored transparency on image where heat is high
"""
img = img.convert("RGB").resize((224, 224))
g = np.array(heat_grid, dtype=np.float32)
if np.any(g):
g = g - g.min()
if g.max() > 0:
g = g / g.max()
else:
g = np.zeros_like(g)
heat_img = Image.fromarray((g * 255).astype("uint8"), mode="L").resize((224, 224), Image.BILINEAR)
heat = np.array(heat_img).astype(np.float32) / 255.0
draw = ImageDraw.Draw(img, "RGBA")
# color mapping simple: yellow -> red
H, W = heat.shape
for y in range(H):
for x in range(W):
v = heat[y, x]
if v > 0.05:
# map to color
r = int(255 * v)
gcol = int(200 * (1 - v))
draw.point((x, y), fill=(r, gcol, 40, int(255 * alpha * v)))
return img
# ------------------- attention rollout (Abnar & Zuidema) -------------------
def compute_attention_rollout(all_attentions: List[torch.Tensor]) -> np.ndarray:
avg_mats = []
for a in all_attentions:
mat = a[0].mean(dim=0).detach().cpu().numpy() # (seq, seq)
avg_mats.append(mat)
seq = avg_mats[0].shape[0]
aug = []
for A in avg_mats:
A_hat = A + np.eye(seq)
row_sums = A_hat.sum(axis=-1, keepdims=True)
row_sums[row_sums == 0] = 1.0
A_hat = A_hat / row_sums
aug.append(A_hat)
R = aug[0]
for A in aug[1:]:
R = A @ R
return R # (seq, seq)
# ------------------- PCA helper for advanced -------------------
def pca_plot_from_hidden(hidden_states: List[torch.Tensor], layers: List[int]):
pts_all = []
labels = []
for li in layers:
hs = hidden_states[li][0].detach().cpu().numpy()
patches = hs[1:, :]
pca = PCA(n_components=2)
pts = pca.fit_transform(patches)
pts_all.append(pts)
labels.append(np.array([li] * pts.shape[0]))
coords = np.vstack(pts_all)
layer_labels = np.concatenate(labels)
df = {"x": coords[:, 0], "y": coords[:, 1], "layer": layer_labels.astype(str)}
fig = px.scatter(df, x="x", y="y", color="layer", title="Patch embeddings across layers (PCA)")
fig.update_traces(marker=dict(size=6))
fig.update_layout(height=480)
return fig
# ------------------- main analyzer (both modes) -------------------
def analyze_all(img: Optional[Image.Image], mode_simple: bool):
if img is None:
# return placeholders for all outputs
empty = None
return empty, empty, empty, empty, "", empty, empty, empty
base, clf, processor = load_models()
# preprocess
img224 = img.convert("RGB").resize((224, 224))
inputs = processor(images=img224, return_tensors="pt").to(DEVICE)
# forward through base model to get attentions & hidden states
with torch.no_grad():
outputs = base(**inputs)
attentions = outputs.attentions # list L of (1, heads, seq, seq)
hidden_states = outputs.hidden_states
# build grid & info
grid_size, positions = patch_grid_info()
seq_len = attentions[0].shape[-1]
n_patches = seq_len - 1
# Step1: patch grid image
patch_grid_img = draw_patch_grid(img224.copy())
# Step2: cluster patches using last hidden layer embeddings
last_hidden = hidden_states[-1][0].detach().cpu().numpy() # (seq, hidden)
patch_embeddings = last_hidden[1:, :] # remove CLS
# KMeans small number clusters (4)
n_clusters = 4
try:
kmeans = KMeans(n_clusters=n_clusters, random_state=0).fit(patch_embeddings)
cluster_labels = kmeans.labels_
except Exception:
# fallback uniform
cluster_labels = np.zeros(n_patches, dtype=int)
cluster_img = draw_cluster_blocks(img224.copy(), cluster_labels, n_clusters=n_clusters)
# Step3: simplified arrows using average last-layer attention across heads
last_att = attentions[-1][0].mean(dim=0).cpu().numpy() # (seq, seq) averaged heads
# We want patch->patch attention (exclude CLS index in mapping)
# Map token indices 1.. to patch indices 0..
# Make an (n_patches, n_patches) matrix where row q corresponds to query patch q
if last_att.shape[0] >= n_patches + 1:
patch_to_patch = last_att[1:, 1:] # (n_patches, n_patches)
else:
# fallback zeros
patch_to_patch = np.zeros((n_patches, n_patches))
# draw arrows for a central query
arrow_img = draw_attention_arrows(img224.copy(), patch_to_patch, top_k=4, query_idx=(n_patches // 2))
# Step4: rollout focus map (CLS rollout)
rollout = compute_attention_rollout(attentions) # (seq, seq)
# take CLS row -> keys 1.. = patches
rollout_cls = rollout[0, 1:]
if rollout_cls.shape[0] != grid_size * grid_size:
tmp = np.zeros(grid_size * grid_size, dtype=float)
nmin = min(len(rollout_cls), tmp.shape[0])
tmp[:nmin] = rollout_cls[:nmin]
rollout_cls = tmp
rollout_grid = rollout_cls.reshape(grid_size, grid_size)
focus_img = make_focus_overlay(img224.copy(), rollout_grid, alpha=0.6)
# Top-5 predictions from classifier head
with torch.no_grad():
logits = clf(**inputs).logits[0].cpu().numpy()
probs = np.exp(logits - logits.max())
probs = probs / probs.sum()
top5 = probs.argsort()[-5:][::-1]
labels = clf.config.id2label
preds_text = "\n".join([f"{labels[i]} — {probs[i]*100:.2f}%" for i in top5])
# Advanced outputs: PCA fig and default attention overlay (last layer head 0 CLS->patch)
pca_fig = pca_plot_from_hidden(hidden_states, [0, max(0, len(hidden_states) // 2), len(hidden_states) - 1])
# Attention overlay for advanced default (last layer head0 CLS->patch)
att_np = attentions[-1][0].cpu().numpy() # (heads, seq, seq)
# average heads for simplicity
cls_to_patches = att_np.mean(axis=0)[0, 1:]
if cls_to_patches.shape[0] != grid_size * grid_size:
tmp = np.zeros(grid_size * grid_size, dtype=float)
nmin = min(len(cls_to_patches), tmp.shape[0])
tmp[:nmin] = cls_to_patches[:nmin]
cls_to_patches = tmp
cls_grid = cls_to_patches.reshape(grid_size, grid_size)
# create overlay
from PIL import Image # ensure imported
focus_overlay_default = make_focus_overlay(img224.copy(), cls_grid, alpha=0.5)
# make state for interactive advanced controls (move to CPU to save GPU mem)
state = {
"attentions": [a.cpu() for a in attentions],
"hidden_states": [h.cpu() for h in hidden_states],
"grid_size": grid_size,
"num_layers": len(attentions),
"num_heads": attentions[0].shape[1],
"base_image": img,
}
# Return values:
# Simple view images: patch_grid_img, cluster_img, arrow_img, focus_img, preds_text
# Advanced outputs: focus_overlay_default, pca_fig, preds_text, explain_md, state
simple_explain = """
**How ViT Sees — Simple Steps**
1) **Chop** — The image is chopped into small square tiles (patches) like LEGO pieces.
2) **Understand** — Each piece gets a code that describes colors/edges. Pieces that look similar are grouped.
3) **Talk** — Pieces tell each other what they see (we draw arrows to show that).
4) **Focus & Guess** — The model merges clues and focuses on important areas, then guesses what the image shows.
"""
advanced_explain = """
**Advanced View:** Explore attention per layer/head, the PCA of patch embeddings, and the model's internal focus.
Use sliders to change layer/head and see how ViT's attention evolves.
"""
return (
patch_grid_img,
cluster_img,
arrow_img,
focus_img,
preds_text,
simple_explain,
focus_overlay_default,
pca_fig,
preds_text,
advanced_explain,
state,
)
# ------------------- interactive advanced helpers -------------------
def advanced_update_attention(state: Dict[str, Any], layer_idx: int, head_idx: int):
if not state:
return None
l = max(0, min(int(layer_idx), state["num_layers"] - 1))
h = max(0, min(int(head_idx), state["num_heads"] - 1))
att_tensor = state["attentions"][l] # (1, heads, seq, seq) or (heads, seq, seq)
if att_tensor.ndim == 4:
att_tensor = att_tensor[0]
att_np = att_tensor.numpy() # (heads, seq, seq)
# take CLS->patchs for selected head
vec = att_np[h, 0, 1:]
grid = state["grid_size"]
if vec.shape[0] != grid * grid:
tmp = np.zeros(grid * grid, dtype=float)
nmin = min(vec.shape[0], tmp.shape[0])
tmp[:nmin] = vec[:nmin]
vec = tmp
grid_map = vec.reshape(grid, grid)
return make_focus_overlay(state["base_image"].convert("RGB"), grid_map, alpha=0.55)
def advanced_update_rollout(state: Dict[str, Any]):
if not state:
return None
mats = [a.unsqueeze(0) if a.ndim == 3 else a for a in state["attentions"]]
R = compute_attention_rollout(mats)
grid = state["grid_size"]
rollout_cls = R[0, 1:]
if rollout_cls.shape[0] != grid * grid:
tmp = np.zeros(grid * grid, dtype=float)
nmin = min(len(rollout_cls), tmp.shape[0])
tmp[:nmin] = rollout_cls[:nmin]
rollout_cls = tmp
rollout_grid = rollout_cls.reshape(grid, grid)
return make_focus_overlay(state["base_image"].convert("RGB"), rollout_grid, alpha=0.6)
def advanced_update_pca(state: Dict[str, Any], txt: str):
if not state:
return None
try:
layers = [int(x.strip()) for x in txt.split(",") if x.strip() != ""]
except Exception:
layers = [0, max(0, state["num_layers"] - 1)]
return pca_plot_from_hidden(state["hidden_states"], layers)
# ------------------- GRADIO UI -------------------
with gr.Blocks(title="ViT Visualizer — Simple + Advanced") as demo:
gr.Markdown("# 👀 How Vision Transformers (ViT) See Images\n"
"Simple mode (story-style) + Advanced mode (inspect internals). Model: **google/vit-base-patch16-224**")
with gr.Tabs():
with gr.TabItem("Simple (for everyone)"):
with gr.Row():
with gr.Column(scale=1):
img_input = gr.Image(label="Upload an image (photo / object)", type="pil")
run_btn = gr.Button("🔎 Explain simply")
gr.Markdown("Tip: use clear images of objects, animals, scenes for best examples.")
with gr.Column(scale=1):
pass
gr.Markdown("### Step 1 — Chopped into patches")
step1 = gr.Image(label="Patch Grid (ViT chops image into 16×16 patches)")
gr.Markdown("### Step 2 — The model groups similar patches")
step2 = gr.Image(label="Clustered patches (colored blocks)")
gr.Markdown("### Step 3 — Patches talk to each other (simplified)")
step3 = gr.Image(label="Patch-to-Patch arrows")
gr.Markdown("### Step 4 — Model focus map and guess")
with gr.Row():
step4 = gr.Image(label="Focus map (where model looked most)")
preds_simple = gr.Textbox(label="Model guesses (Top-5)", lines=4)
explanation_simple = gr.Markdown()
run_btn.click(
fn=analyze_all,
inputs=[img_input, gr.State(True)],
outputs=[step1, step2, step3, step4, preds_simple, explanation_simple,
gr.State(), gr.Plot(), gr.Textbox(), gr.Markdown(), gr.State()],
)
with gr.TabItem("Advanced (inspect internals)"):
with gr.Row():
with gr.Column(scale=1):
img_adv = gr.Image(label="Upload image for advanced view", type="pil")
run_adv = gr.Button("Analyze (advanced)")
gr.Markdown("Use the sliders to explore attention per layer and head.")
layer_slider = gr.Slider(0, 11, value=11, step=1, label="Layer (0=shallow)")
head_slider = gr.Slider(0, 11, value=0, step=1, label="Head index")
rollout_btn = gr.Button("Refresh Rollout Overlay")
pca_txt = gr.Textbox(label="PCA layers (comma separated)", value="0,6,11")
pca_btn = gr.Button("Update PCA")
with gr.Column(scale=1):
adv_attn = gr.Image(label="Attention overlay (layer/head CLS->patch)")
adv_rollout = gr.Image(label="Attention rollout overlay (aggregated)")
adv_pca = gr.Plot(label="PCA of patch embeddings")
adv_preds = gr.Textbox(label="Top-5 predictions", lines=5)
adv_explain = gr.Markdown()
state_box = gr.State()
# run advanced analysis
run_adv.click(
fn=analyze_all,
inputs=[img_adv, gr.State(False)],
outputs=[gr.Image(), gr.Image(), gr.Image(), gr.Image(), adv_preds, gr.Markdown(),
adv_attn, adv_pca, adv_preds, adv_explain, state_box],
)
# update attention overlay with sliders
layer_slider.change(
fn=advanced_update_attention,
inputs=[state_box, layer_slider, head_slider],
outputs=[adv_attn],
)
head_slider.change(
fn=advanced_update_attention,
inputs=[state_box, layer_slider, head_slider],
outputs=[adv_attn],
)
rollout_btn.click(
fn=advanced_update_rollout,
inputs=[state_box],
outputs=[adv_rollout],
)
pca_btn.click(
fn=advanced_update_pca,
inputs=[state_box, pca_txt],
outputs=[adv_pca],
)
demo.launch() |