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import random
import threading
import time
import uuid
import os
import html
import sys
from typing import Callable
import pandas as pd
from huggingface_hub import hf_hub_download
from storage import VoteStorage
from stats_from_logs import load_stats_by_md5
from explorer import ALLOWED_CLASSIFIER_FILTERS, add_results_tab, build_results_data, load_more_results, on_gallery_select
DEBUG_MODE = os.getenv("DEBUG", "0").lower() in ("1", "true", "yes", "on")
RATINGS_APP_TOKEN = os.getenv("RATINGS_APP_TOKEN")
SUBMIT_KEY = os.getenv("RATINGS_SUBMIT_KEY")
assert SUBMIT_KEY, "Missing required env var: RATINGS_SUBMIT_KEY"
POOL_REPO_ID = "taigasan/e6-visual-ratings"
VOTE_STORAGE = VoteStorage(mode="void" if DEBUG_MODE else "hf", token=RATINGS_APP_TOKEN)
STATS_RELOAD_S = 30 * 60
# -- Pool dataset -----------------------------------------------------------
_pool_path = hf_hub_download(
repo_id=POOL_REPO_ID,
filename="pool.parquet",
repo_type="dataset",
token=RATINGS_APP_TOKEN
)
_pool_df = pd.read_parquet(_pool_path)
_pool_df[["wins", "losses", "ties", "votes", "winrate"]] = (0, 0, 0, 0, 0.0)
WINS_LOC = _pool_df.columns.get_loc("wins")
LOSSES_LOC = _pool_df.columns.get_loc("losses")
TIES_LOC = _pool_df.columns.get_loc("ties")
VOTES_LOC = _pool_df.columns.get_loc("votes")
WINRATE_LOC = _pool_df.columns.get_loc("winrate")
_md5_to_idx = { md5: idx for idx, md5 in enumerate(_pool_df["md5"]) }
_pool_lock = threading.Lock()
_stats_last_loaded_at = 0.0
_explorer_df = pd.DataFrame(columns=["group", "id", "md5", "rating", "sample_url", "image_url", "classifier", "classifier_score", "percentile"])
def _load_stats() -> None:
VOTE_STORAGE.sync()
load_stats_by_md5(repo_id=POOL_REPO_ID, token=RATINGS_APP_TOKEN)
n_missing = 0
with _pool_lock:
VOTE_STORAGE.sync()
stats_by_key = load_stats_by_md5(repo_id=POOL_REPO_ID, token=RATINGS_APP_TOKEN)
for md5, stats in stats_by_key.items():
if (idx := _md5_to_idx.get(md5)) is not None:
_pool_df.iloc[idx, [WINS_LOC, LOSSES_LOC, TIES_LOC, VOTES_LOC, WINRATE_LOC]] = (
stats.wins, stats.losses, stats.ties, stats.votes, stats.winrate
)
else:
n_missing += 1
if n_missing:
print(f"{n_missing} md5s have stats but are not in the pool!", file=sys.stderr)
classifier_scores_path = hf_hub_download(
repo_id=POOL_REPO_ID,
filename="classifier_scores.parquet",
repo_type="dataset",
token=RATINGS_APP_TOKEN,
)
validation_set_path = hf_hub_download(
repo_id=POOL_REPO_ID,
filename="validation_set.parquet",
repo_type="dataset",
token=RATINGS_APP_TOKEN,
)
validation_df = pd.read_parquet(
validation_set_path,
columns=["group", "id", "md5", "rating", "sample_url", "image_url"],
)
classifier_scores_df = pd.read_parquet(classifier_scores_path)
assert {"classifier", "md5", "classifier_score", "percentile"}.issubset(classifier_scores_df.columns), "classifier_scores.parquet missing expected columns"
classifier_scores_df = classifier_scores_df[["classifier", "md5", "classifier_score", "percentile"]]
classifier_scores_df["classifier"] = classifier_scores_df["classifier"].astype(str)
classifier_scores_df["md5"] = classifier_scores_df["md5"].astype(str)
validation_df["md5"] = validation_df["md5"].astype(str)
global _explorer_df
_explorer_df = validation_df.merge(classifier_scores_df, on="md5", how="left", validate="one_to_many")
def _stats_reloader() -> None:
while True:
time.sleep(STATS_RELOAD_S)
_load_stats()
_load_stats()
threading.Thread(target=_stats_reloader, daemon=True).start()
def _pick_from(df: pd.DataFrame, *, weights: pd.Series | None = None) -> tuple[pd.Series, pd.Series, int] | None:
if len(df) < 2:
return None
sample = df.sample(2, weights=weights, replace=False)
return sample.iloc[0], sample.iloc[1], len(df)
def _pick_similar(
df: pd.DataFrame,
distance: Callable[[pd.DataFrame, pd.Series], pd.Series],
*,
weights: Callable[[pd.DataFrame], pd.Series] | None = None,
other_df: pd.DataFrame | None = None,
) -> tuple[pd.Series, pd.Series, int] | None:
if len(df) < 2:
return None
if other_df is None:
other_df = df
elif len(other_df) < 2:
return None
weight_vals: pd.Series | None = None
if weights is not None:
weight_vals = weights(df)
first = df.sample(weights=weight_vals).iloc[0]
weight_vals = 1.0 / (1.0 + distance(other_df, first))
while True:
other = other_df.sample(weights=weight_vals).iloc[0]
if other["md5"] != first["md5"]:
return first, other, len(df)
def _pool_fetch_pair(group: str) -> tuple[pd.Series, pd.Series, int, str]:
gdf = _pool_df[_pool_df["group"] == group]
voted = gdf[gdf["votes"] > 0]
votes = voted["votes"]
# Pair first-time winners.
picked = _pick_from(voted[(votes == 1) & (voted["wins"] == 1)])
if picked is not None:
return *picked, "new-winners"
# Pair first-time losers.
picked = _pick_from(voted[(votes == 1) & (voted["losses"] == 1)])
if picked is not None:
return *picked, "new-losers"
def record_distance(df: pd.DataFrame, pivot: pd.Series) -> pd.Series:
return (
(df["wins"] - pivot["wins"])**2 +
(df["losses"] - pivot["losses"])**2
)**0.75 # L2 is a bit too loose
# Link cliques to main network and break ties.
nonties = votes - voted["ties"]
picked = _pick_similar(
voted[(nonties == 0) | (votes == 2)],
record_distance,
other_df=voted[nonties > 3],
)
if picked is not None:
return *picked, "sparse"
# Introduce new images.
if len(voted) < 8 or random.random() < 0.33:
unvoted = gdf[gdf["votes"] == 0]
match len(unvoted):
case 0:
pass
case 1:
return unvoted.iloc[0], voted.iloc[0], 1, "new"
case _:
picked = _pick_from(unvoted)
assert picked is not None
return *picked, "new"
# Vote-weighted random sampling between similar winrates, slighlty biased against picking losers.
picked = _pick_similar(
voted, record_distance,
weights=lambda df: 1.0 / (df["votes"]**1.25 + 0.1 * df["losses"]),
)
assert picked is not None
return *picked, "fair-probe"
def _row_image_url(row) -> str:
sample_url = row.get("sample_url")
if isinstance(sample_url, str) and sample_url:
return sample_url
image_url = row.get("image_url")
if isinstance(image_url, str) and image_url:
return image_url
return ''
DATASETS: dict[str, dict] = {
"pool": {
"fetch_pair": _pool_fetch_pair,
"get_id": lambda row: row["md5"],
"get_image": _row_image_url,
"groups": sorted(_pool_df["group"].unique()),
},
}
DEFAULT_DATASET = list(DATASETS.keys())[0]
def _format_rating_post_title(post_id: int, votes: int, label: str) -> str:
return f"<strong>{label}</strong>: <a href=\"https://e621.net/posts/{post_id}\" target=\"_blank\" rel=\"noreferrer\">Post #{post_id}</a> | {votes} {'Vote' if votes == 1 else 'Votes'}"
def _render_current(state: dict, submit_status: str = "") -> tuple:
votes_a = _pool_df.iloc[_md5_to_idx[state["key_a"]], VOTES_LOC]
votes_b = _pool_df.iloc[_md5_to_idx[state["key_b"]], VOTES_LOC]
title_a = _format_rating_post_title(state["id_a"], votes_a, "Image A")
title_b = _format_rating_post_title(state["id_b"], votes_b, "Image B")
img_a_html = f"<div class=\"rating-card\"><div class=\"rating-card-title\">{title_a}</div><div class=\"rating-image-frame\"><img src=\"{html.escape(state['url_a'])}\" class=\"rating-image\" loading=\"eager\" referrerpolicy=\"no-referrer\"></div></div>"
img_b_html = f"<div class=\"rating-card\"><div class=\"rating-card-title\">{title_b}</div><div class=\"rating-image-frame\"><img src=\"{html.escape(state['url_b'])}\" class=\"rating-image\" loading=\"eager\" referrerpolicy=\"no-referrer\"></div></div>"
can_go_back = bool(state.get("pending", ()))
pair_details = f"/ {state['group']} / {state.get('pair_reason', 'unknown')}"
return img_a_html, img_b_html, gr.Button(interactive=can_go_back), html.escape(pair_details), html.escape(submit_status), state
def _normalize_rating_pref(pref: str | None) -> str:
return pref if pref in ("safe", "all") else "safe"
def _initial_load(state: dict, rating_pref: str | None, submit_key: str | None, image_height: str, groups: list[str]):
rating_pref = _normalize_rating_pref(rating_pref)
submit_key = _normalize_submit_key(submit_key)
return rating_pref, submit_key, image_height, image_height, groups, *new_round(DEFAULT_DATASET, groups, state)
def _on_groups_change(groups: list[str], state: dict):
return *new_round(DEFAULT_DATASET, groups, state), groups
def _on_image_height_change(image_height: str) -> tuple[str, str]:
return image_height, image_height
def _normalize_submit_key(submit_key: str | None) -> str:
return (submit_key or "").strip()
def _filtered_explorer_df(rating_pref: str) -> pd.DataFrame:
return _filtered_explorer_df_by_classifier(rating_pref, ALLOWED_CLASSIFIER_FILTERS[0])
def _filtered_explorer_df_by_classifier(rating_pref: str, classifier_name: str) -> pd.DataFrame:
if rating_pref == "all":
rating_filtered = _explorer_df
else:
assert rating_pref == "safe", f"Unsupported rating preference: {rating_pref}"
rating_filtered = _explorer_df[_explorer_df["rating"] == "s"]
assert classifier_name in ALLOWED_CLASSIFIER_FILTERS, f"Unsupported classifier filter: {classifier_name}"
return rating_filtered[rating_filtered["classifier"] == classifier_name]
def _load_results(rating_pref: str, sort_mode: str, classifier_filter: str):
rating_pref = _normalize_rating_pref(rating_pref)
sort_mode = _normalize_sort_mode(sort_mode)
classifier_name = _normalize_classifier_filter(classifier_filter)
filtered_explorer_df = _filtered_explorer_df_by_classifier(rating_pref, classifier_name)
summary, score_distribution_plot, distribution_data, gallery_items, page_meta, next_offset, btn_update = build_results_data(
filtered_explorer_df,
_explorer_df,
rating_pref,
sort_mode,
classifier_name,
)
return summary, score_distribution_plot, distribution_data, gallery_items, btn_update, "Click an image to reveal its ID and link.", page_meta, next_offset
def _normalize_sort_mode(sort_mode: str | None) -> str:
if sort_mode in ("Default", "Rating: Low to High", "Rating: High to Low"):
return sort_mode
return "Default"
def _normalize_classifier_filter(classifier_name: str | None) -> str:
if classifier_name in ALLOWED_CLASSIFIER_FILTERS:
return str(classifier_name)
return ALLOWED_CLASSIFIER_FILTERS[0]
# -- Gradio callbacks -------------------------------------------------------
def new_round(dataset_name: str, groups: list[str], state: dict) -> tuple:
if not groups:
return "", "", gr.skip(), "", "Please select at least one group.", state
cfg = DATASETS[dataset_name]
group = random.choice(groups)
row_a, row_b, reason_remaining, pair_reason = cfg["fetch_pair"](group)
pair_reason = f"{pair_reason} ({reason_remaining})"
state.setdefault("session_id", uuid.uuid4().hex)
key_a = cfg["get_id"](row_a)
key_b = cfg["get_id"](row_b)
id_a = int(row_a["id"])
id_b = int(row_b["id"])
state.update(dataset=dataset_name, key_a=key_a, key_b=key_b, id_a=id_a, id_b=id_b, group=group, pair_reason=pair_reason)
url_a = cfg["get_image"](row_a)
url_b = cfg["get_image"](row_b)
state["url_a"] = url_a
state["url_b"] = url_b
return _render_current(state)
def _queue_decision(winner: str | None, state: dict):
assert state.get("session_id"), "Missing session_id: refusing to record vote"
pending = state.setdefault("pending", [])
pending.append({
"winner": winner,
"key_a": state["key_a"],
"key_b": state["key_b"],
"id_a": state["id_a"],
"id_b": state["id_b"],
"url_a": state["url_a"],
"url_b": state["url_b"],
"dataset": state["dataset"],
"group": state["group"],
"pair_reason": state.get("pair_reason", ""),
"session_id": state["session_id"],
})
if len(pending) > 1:
VOTE_STORAGE.queue_row(pending.pop(0))
def _add_vote(idx: int, col_loc: int, delta: int = 1) -> None:
_pool_df.iloc[idx, [col_loc, VOTES_LOC]] += delta
wins, ties, votes = _pool_df.iloc[idx, [WINS_LOC, TIES_LOC, VOTES_LOC]]
_pool_df.iloc[idx, WINRATE_LOC] = (wins + 0.5 * ties) / max(votes, 1)
def vote(winner: str | None, state: dict, groups: list[str], submit_key: str | None) -> tuple:
if _normalize_submit_key(submit_key) != SUBMIT_KEY:
return _render_current(state, "Wrong submission key.")
if not groups:
return "", "", gr.skip(), "", "Please select at least one group.", state
_queue_decision(winner, state)
a_idx = _md5_to_idx[state["key_a"]]
b_idx = _md5_to_idx[state["key_b"]]
with _pool_lock:
match winner:
case "A":
_add_vote(a_idx, WINS_LOC)
_add_vote(b_idx, LOSSES_LOC)
case "B":
_add_vote(a_idx, LOSSES_LOC)
_add_vote(b_idx, WINS_LOC)
case None:
_add_vote(a_idx, TIES_LOC)
_add_vote(b_idx, TIES_LOC)
case _:
raise AssertionError
return new_round(state["dataset"], groups, state)
def go_back(state: dict) -> tuple:
pending = state.setdefault("pending", [])
if pending:
last = pending.pop()
state.update(
dataset=last["dataset"],
key_a=last["key_a"],
key_b=last["key_b"],
id_a=last["id_a"],
id_b=last["id_b"],
url_a=last["url_a"],
url_b=last["url_b"],
group=last["group"],
pair_reason=last.get("pair_reason", ""),
)
a_idx = _md5_to_idx[state["key_a"]]
b_idx = _md5_to_idx[state["key_b"]]
with _pool_lock:
match last["winner"]:
case "A":
_add_vote(a_idx, WINS_LOC, -1)
_add_vote(b_idx, LOSSES_LOC, -1)
case "B":
_add_vote(a_idx, LOSSES_LOC, -1)
_add_vote(b_idx, WINS_LOC, -1)
case None:
_add_vote(a_idx, TIES_LOC, -1)
_add_vote(b_idx, TIES_LOC, -1)
case _:
raise AssertionError
return _render_current(state)
# -- UI ---------------------------------------------------------------------
with gr.Blocks(
title="e621 Visual Ratings",
head="""
<script>
const VOTE_COOLDOWN_MS = 1500;
let lastVoteAtMs = 0;
let voteToastTimer = null;
function showVoteToast(message) {
let toast = document.getElementById('vote-cooldown-toast');
if (!toast) {
toast = document.createElement('div');
toast.id = 'vote-cooldown-toast';
toast.style.position = 'fixed';
toast.style.left = '50%';
toast.style.bottom = '20px';
toast.style.transform = 'translateX(-50%)';
toast.style.background = 'rgba(20, 20, 20, 0.92)';
toast.style.color = '#fff';
toast.style.padding = '8px 12px';
toast.style.borderRadius = '8px';
toast.style.fontSize = '0.92rem';
toast.style.zIndex = '9999';
toast.style.pointerEvents = 'none';
toast.style.opacity = '0';
toast.style.transition = 'opacity 120ms ease';
document.body.appendChild(toast);
}
toast.textContent = message;
toast.style.opacity = '1';
if (voteToastTimer) clearTimeout(voteToastTimer);
voteToastTimer = setTimeout(function () {
toast.style.opacity = '0';
}, 1400);
}
function showVoteBlockedMessage(remainingMs) {
const remainingS = Math.max(0.1, remainingMs / 1000).toFixed(1);
showVoteToast(`Please wait ${remainingS}s before submitting again.`);
}
function findVoteButtonTarget(target) {
return target?.closest('#btn-vote-a button, button#btn-vote-a, #btn-vote-b button, button#btn-vote-b, #btn-skip button, button#btn-skip');
}
function clearImageContainers() {
const leftImg = document.querySelector('#img-a img');
const rightImg = document.querySelector('#img-b img');
if (leftImg) {
leftImg.src = '';
leftImg.removeAttribute('srcset');
}
if (rightImg) {
rightImg.src = '';
rightImg.removeAttribute('srcset');
}
}
function isVisible(el) {
return !!(el && el.offsetParent !== null);
}
window.addEventListener('keydown', function (e) {
const t = e.target;
const voteAButton = document.querySelector('#btn-vote-a button, button#btn-vote-a');
const voteBButton = document.querySelector('#btn-vote-b button, button#btn-vote-b');
const skipButton = document.querySelector('#btn-skip button, button#btn-skip');
const backButton = document.querySelector('#btn-back-action button, button#btn-back-action');
const resultsLoadMoreButton = document.querySelector('#btn-results-load-more button, button#btn-results-load-more');
const ratingTabActive = isVisible(voteAButton) || isVisible(voteBButton) || isVisible(skipButton);
const resultsTabActive = isVisible(resultsLoadMoreButton);
if (t && (t.tagName === 'INPUT' || t.tagName === 'TEXTAREA' || t.isContentEditable)) return;
if (e.key === 'ArrowLeft' && ratingTabActive) {
e.preventDefault();
voteAButton?.click();
} else if (e.key === 'ArrowRight' && ratingTabActive) {
e.preventDefault();
voteBButton?.click();
} else if (e.key === 'ArrowUp' && ratingTabActive) {
e.preventDefault();
skipButton?.click();
} else if ((e.key === 'z' || e.key === 'Z') && (e.ctrlKey || e.metaKey) && ratingTabActive) {
e.preventDefault();
backButton?.click();
} else if (e.key === 'ArrowDown') {
if (ratingTabActive) {
e.preventDefault();
backButton?.click();
}
if (resultsTabActive) {
e.preventDefault();
resultsLoadMoreButton?.click();
}
}
});
document.addEventListener('click', function (e) {
const voteBtn = findVoteButtonTarget(e.target);
if (voteBtn) {
const nowMs = Date.now();
const elapsedMs = nowMs - lastVoteAtMs;
if (elapsedMs < VOTE_COOLDOWN_MS) {
e.preventDefault();
e.stopPropagation();
if (typeof e.stopImmediatePropagation === 'function') e.stopImmediatePropagation();
showVoteBlockedMessage(VOTE_COOLDOWN_MS - elapsedMs);
return;
}
lastVoteAtMs = nowMs;
clearImageContainers();
return;
}
const a = e.target.closest('a[href="#back"]');
if (!a) return;
e.preventDefault();
document.querySelector('#btn-back-action button, button#btn-back-action')?.click();
}, true);
</script>
""",
css="""
.subtle-link button {
background: none !important;
border: none !important;
box-shadow: none !important;
color: #7a7a7a !important;
text-decoration: underline !important;
padding: 0 !important;
min-height: 0 !important;
font-size: 0.9em !important;
justify-content: flex-start !important;
}
.subtle-link button:hover {
color: #5a5a5a !important;
}
.subtle-link {
width: fit-content !important;
}
.subtle-link button {
width: fit-content !important;
}
.subtle-note {
color: #888;
font-size: 0.9em;
}
.rating-card {
width: 100%;
}
.rating-card-title {
min-height: 24px;
margin-bottom: 8px;
}
.rating-image-frame {
width: 100%;
border: 1px solid #e6e6e6;
border-radius: 8px;
background: #333;
display: flex;
align-items: center;
justify-content: center;
overflow: hidden;
}
.rating-image {
width: auto !important;
height: auto !important;
max-width: 100% !important;
max-height: 100% !important;
object-fit: contain !important;
object-position: center center !important;
display: block;
}
.subtle-back-link-wrap a {
color: #7a7a7a !important;
text-decoration: underline;
}
.subtle-back-link-wrap a:hover {
color: #5a5a5a !important;
}
.subtle-back-link-disabled {
color: #b8b8b8 !important;
pointer-events: none;
text-decoration: none;
}
.hidden-action-btn {
display: none !important;
}
#submit-status {
position: fixed;
left: 50%;
bottom: 20px;
transform: translateX(-50%);
z-index: 9998;
pointer-events: none;
min-height: 1.2em;
}
.submit-status-msg {
background: rgba(20, 20, 20, 0.92);
color: #fff;
padding: 8px 12px;
border-radius: 8px;
font-size: 0.92rem;
}
#results-gallery {
--explorer-thumb-ratio: 1 / 1;
}
#results-gallery button,
#results-gallery .thumbnail-item {
aspect-ratio: var(--explorer-thumb-ratio) !important;
}
#results-gallery img {
width: 100% !important;
height: 100% !important;
object-fit: contain !important;
background: #1f2937;
}
a {
padding: 0 !important;
}
""",
fill_width=True,
) as demo:
state = gr.State({})
rating_pref_store = gr.BrowserState(default_value="safe", storage_key="rating_pref")
submit_key_store = gr.BrowserState(default_value="", storage_key="submit_key")
results_sort_store = gr.BrowserState(default_value="Default", storage_key="results_sort_mode")
results_classifier_store = gr.BrowserState(default_value=ALLOWED_CLASSIFIER_FILTERS[0], storage_key="results_classifier")
image_height_store = gr.BrowserState(default_value=768, storage_key="image_height")
groups_store = gr.BrowserState(default_value=[
group
for group in DATASETS[DEFAULT_DATASET]["groups"]
if group.endswith("_safe")
], storage_key="groups")
with gr.Tabs():
with gr.Tab("Image Quality Rater"):
gr.Markdown("Rate relative image quality. Choose the image with better quality, or select same quality if they are comparable. Both images are drawn from the same group to avoid cross-group bias.")
with gr.Row():
img_a = gr.HTML(elem_id="img-a")
img_b = gr.HTML(elem_id="img-b")
with gr.Row(equal_height=True):
btn_a = gr.Button("⬅️ Prefer A", variant="primary", elem_id="btn-vote-a")
with gr.Column(scale=0), gr.Group():
btn_skip = gr.Button("⬆️ Same Quality", elem_id="btn-skip")
btn_back_action = gr.Button("⬇️ Undo", elem_id="btn-back-action")
btn_b = gr.Button("➡️ Prefer B", variant="primary", elem_id="btn-vote-b")
with gr.Accordion("Settings", open=False):
groups_select = gr.CheckboxGroup(
choices=DATASETS[DEFAULT_DATASET]["groups"],
label="Categories",
show_label=True,
show_select_all=True
)
image_height_slider = gr.Slider(
minimum=512, maximum=2048, step=16, precision=0,
label="Image Size",
)
submit_key_tb = gr.Textbox(
value="",
type="password",
label="Submit Key",
elem_id="submit-key",
)
pair_details = gr.HTML(html_template="Dataset: <a href='https://huggingface.co/datasets/taigasan/e6-visual-ratings' target='_blank' rel='noopener noreferrer'>taigasan/e6-visual-ratings</a> ${value}")
submit_status = gr.HTML(html_template="<span class='submit-status-msg'>${value}</span>")
gr.HTML("<span class='subtle-note'>Keyboard Shortcuts: ⬅️ Vote A, ⬆️ Same Quality, ➡️ Vote B, ⬇️ or Ctrl+Z Undo</span>")
image_height = gr.HTML(html_template="<style>.rating-image-frame { height:${value}px; }</style>", apply_default_css=False)
(
results_summary_md,
results_rating_dd,
results_sort_dd,
results_classifier_dd,
results_score_distribution_plot,
results_distribution_state,
results_gallery,
results_load_more_btn,
selected_image_md,
results_page_meta_state,
results_page_offset_state,
) = add_results_tab(_pool_df)
outputs = [img_a, img_b, btn_back_action, pair_details, submit_status, state]
results_outputs = [
results_summary_md,
results_score_distribution_plot,
results_distribution_state,
results_gallery,
results_load_more_btn,
selected_image_md,
results_page_meta_state,
results_page_offset_state,
]
btn_a.click(fn=lambda s, g, k: vote("A", s, g, k), inputs=[state, groups_store, submit_key_store], outputs=outputs, queue=False, show_progress="hidden")
btn_b.click(fn=lambda s, g, k: vote("B", s, g, k), inputs=[state, groups_store, submit_key_store], outputs=outputs, queue=False, show_progress="hidden")
btn_skip.click(fn=lambda s, g, k: vote(None, s, g, k), inputs=[state, groups_store, submit_key_store], outputs=outputs, queue=False, show_progress="hidden")
btn_back_action.click(fn=go_back, inputs=[state], outputs=outputs, queue=False, show_progress="hidden")
submit_key_tb.change(fn=_normalize_submit_key, inputs=[submit_key_tb], outputs=[submit_key_store], queue=False, show_progress="hidden")
groups_select.change(fn=_on_groups_change, inputs=[groups_select, state], outputs=[*outputs, groups_store], queue=False, show_progress="hidden")
image_height_slider.change(fn=_on_image_height_change, inputs=[image_height_slider], outputs=[image_height_store, image_height], queue=False, show_progress="hidden")
results_rating_dd.change(fn=_normalize_rating_pref, inputs=[results_rating_dd], outputs=[rating_pref_store], queue=False, show_progress="hidden")
results_rating_dd.change(fn=_load_results, inputs=[results_rating_dd, results_sort_store, results_classifier_store], outputs=results_outputs, queue=False, show_progress="hidden")
results_sort_dd.change(fn=_normalize_sort_mode, inputs=[results_sort_dd], outputs=[results_sort_store], queue=False, show_progress="hidden")
results_sort_dd.change(fn=_load_results, inputs=[rating_pref_store, results_sort_dd, results_classifier_store], outputs=results_outputs, queue=False, show_progress="hidden")
results_classifier_dd.change(fn=_normalize_classifier_filter, inputs=[results_classifier_dd], outputs=[results_classifier_store], queue=False, show_progress="hidden")
results_classifier_dd.change(fn=_load_results, inputs=[rating_pref_store, results_sort_store, results_classifier_dd], outputs=results_outputs, queue=False, show_progress="hidden")
demo.load(fn=_initial_load, inputs=[state, rating_pref_store, submit_key_store, image_height_store, groups_store], outputs=[results_rating_dd, submit_key_tb, image_height_slider, image_height, groups_select, *outputs], queue=False, show_progress="hidden")
demo.load(fn=_load_results, inputs=[rating_pref_store, results_sort_store, results_classifier_store], outputs=results_outputs, queue=False, show_progress="hidden")
demo.load(fn=_normalize_sort_mode, inputs=[results_sort_store], outputs=[results_sort_dd], queue=False, show_progress="hidden")
demo.load(fn=_normalize_classifier_filter, inputs=[results_classifier_store], outputs=[results_classifier_dd], queue=False, show_progress="hidden")
results_load_more_btn.click(
fn=lambda r, s, c, o: load_more_results(_filtered_explorer_df_by_classifier(_normalize_rating_pref(r), _normalize_classifier_filter(c)), _explorer_df, s, o),
inputs=[rating_pref_store, results_sort_store, results_classifier_store, results_page_offset_state],
outputs=[results_gallery, results_page_meta_state, results_page_offset_state, results_load_more_btn],
queue=False,
show_progress="hidden",
)
results_gallery.select(
fn=on_gallery_select,
inputs=[results_page_meta_state, results_distribution_state],
outputs=[selected_image_md, results_score_distribution_plot],
queue=False,
show_progress="hidden",
)
if __name__ == "__main__":
demo.launch()
|