File size: 56,006 Bytes
a838781 f944dac 9a4fc11 f944dac 6ff080e 18057c4 f944dac 18057c4 f944dac 54e00e0 18057c4 54e00e0 0604321 54e00e0 222bddd f944dac 222bddd edaa1c2 dceb721 9c9ae9b a39c7fd 222bddd a39c7fd 9c9ae9b a39c7fd ce5795d 222bddd ce5795d a39c7fd 222bddd ce5795d a39c7fd 222bddd a39c7fd 9c9ae9b a39c7fd 9c9ae9b a39c7fd 9c9ae9b f944dac bafc17b f944dac bafc17b f944dac a39c7fd bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac 222bddd f944dac 222bddd f944dac 222bddd f944dac bafc17b f944dac bafc17b f944dac bafc17b f944dac 222bddd f944dac bafc17b f944dac cb7a53e f944dac a39c7fd 222bddd f944dac a66dff8 f944dac 85836c8 4b056d3 18057c4 f944dac a66dff8 1121ee7 c775649 0d3dfb6 c775649 0d3dfb6 c775649 1121ee7 4b056d3 c775649 3b96fb1 f944dac 4b056d3 1121ee7 f944dac 18057c4 f944dac 3b96fb1 67cd411 3b96fb1 18057c4 f944dac 4b056d3 f944dac bbdc422 18057c4 f944dac dceb721 f944dac dceb721 18057c4 dceb721 f944dac dceb721 18057c4 dceb721 bbdc422 f944dac 18057c4 dceb721 f944dac 4d9b97c 18057c4 f944dac 18057c4 9a0d8df 4d9b97c a2c0d56 4d9b97c a2c0d56 858aa8a a2c0d56 b056229 9a0d8df b056229 a2c0d56 9a0d8df a2c0d56 bafc17b f944dac b056229 18057c4 b056229 a2c0d56 b056229 a2c0d56 b056229 a2c0d56 b056229 a2c0d56 b056229 bfb18ef 1cb0b5f b056229 a2c0d56 85836c8 a2c0d56 85836c8 d49d8b0 a2c0d56 1e28a2d a2c0d56 1e28a2d a2c0d56 b056229 18057c4 b056229 18057c4 b056229 18057c4 b056229 18057c4 b056229 18057c4 b056229 a2c0d56 b056229 a2c0d56 4d9b97c a2c0d56 4d9b97c f944dac 55105b9 a2c0d56 55105b9 b056229 a2c0d56 b056229 4d9b97c 55105b9 b056229 55105b9 858aa8a 55105b9 b056229 a2c0d56 b056229 a2c0d56 b056229 a2c0d56 4d9b97c a2c0d56 18057c4 a2c0d56 18057c4 4d9b97c a2c0d56 b056229 18057c4 4d9b97c b056229 18057c4 2da398d 4d9b97c 2da398d a2c0d56 2da398d a2c0d56 2da398d 18057c4 a2c0d56 18057c4 bfb18ef 18057c4 a2c0d56 18057c4 a2c0d56 4d9b97c a2c0d56 b056229 a2c0d56 25cace9 a2c0d56 4d9b97c a2c0d56 e71a3a2 a2c0d56 4d9b97c e71a3a2 4605aa4 e71a3a2 4d9b97c a2c0d56 e71a3a2 4605aa4 e71a3a2 4d9b97c a2c0d56 e71a3a2 a2c0d56 4d9b97c e71a3a2 4d9b97c e71a3a2 4d9b97c e71a3a2 a2c0d56 e71a3a2 4605aa4 b2f829a 4605aa4 4d9b97c 4605aa4 4d9b97c a2c0d56 e71a3a2 4d9b97c b2f829a 0604321 18057c4 f944dac 18057c4 f944dac 18057c4 f944dac 18057c4 f944dac 18057c4 6ff080e 18057c4 a39c7fd 18057c4 a39c7fd 18057c4 a39c7fd 18057c4 a39c7fd 18057c4 a76dfbc 25cace9 a76dfbc ab9c160 a76dfbc 25cace9 a76dfbc 25cace9 ab9c160 25cace9 a76dfbc 25cace9 a76dfbc 25cace9 a76dfbc 25cace9 a76dfbc 25cace9 a76dfbc 18057c4 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750 751 752 753 754 755 756 757 758 759 760 761 762 763 764 765 766 767 768 769 770 771 772 773 774 775 776 777 778 779 780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803 804 805 806 807 808 809 810 811 812 813 814 815 816 817 818 819 820 821 822 823 824 825 826 827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860 861 862 863 864 865 866 867 868 869 870 871 872 873 874 875 876 877 878 879 880 881 882 883 884 885 886 887 888 889 890 891 892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907 908 909 910 911 912 913 914 915 916 917 918 919 920 921 922 923 924 925 926 927 928 929 930 931 932 933 934 935 936 937 938 939 940 941 942 943 944 945 946 947 948 949 950 951 952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970 971 972 973 974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991 992 993 994 995 996 997 998 999 1000 1001 1002 1003 1004 1005 1006 1007 1008 1009 1010 1011 1012 1013 1014 1015 1016 1017 1018 1019 1020 1021 1022 1023 1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048 1049 1050 1051 1052 1053 1054 1055 1056 1057 1058 1059 1060 1061 1062 1063 1064 1065 1066 1067 1068 1069 1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 1085 1086 1087 1088 1089 1090 1091 1092 1093 1094 1095 1096 1097 1098 1099 1100 1101 1102 1103 1104 1105 1106 1107 1108 1109 1110 1111 1112 1113 1114 1115 1116 1117 1118 1119 1120 1121 1122 1123 1124 1125 1126 1127 1128 1129 1130 1131 1132 1133 1134 1135 1136 1137 1138 1139 1140 1141 1142 1143 1144 1145 1146 1147 |
import os
import json
import time
from datetime import datetime
import numpy as np
import pandas as pd
import streamlit as st
import matplotlib.pyplot as plt
import seaborn as sns
import joblib
import zipfile
import io
import gc
# ML imports
from sklearn.model_selection import train_test_split
from sklearn.linear_model import LinearRegression, Ridge
from sklearn.ensemble import RandomForestRegressor, GradientBoostingRegressor, ExtraTreesRegressor
from sklearn.preprocessing import StandardScaler, PolynomialFeatures
from sklearn.decomposition import PCA
from sklearn.cluster import KMeans
from sklearn.metrics import mean_squared_error, r2_score
# SHAP
import shap
# Optuna (used later)
import optuna
from sklearn.model_selection import cross_val_score, KFold
from sklearn.neural_network import MLPRegressor
# --- Safe defaults for Streamlit session state ---
defaults = {
"llm_result": None,
"automl_summary": {},
"shap_recommendations": [],
"hf_clicked": False,
"hf_ran_once": False,
"run_automl_clicked": False,
}
for k, v in defaults.items():
st.session_state.setdefault(k, v)
if "llm_result" not in st.session_state:
st.session_state["llm_result"] = None
if "automl_summary" not in st.session_state:
st.session_state["automl_summary"] = {}
if "shap_recommendations" not in st.session_state:
st.session_state["shap_recommendations"] = []
if "hf_clicked" not in st.session_state:
st.session_state["hf_clicked"] = False
# -------------------------
# Config & paths
# -------------------------
st.set_page_config(page_title="Steel Authority of India Limited (MODEX)", layout="wide")
plt.style.use("seaborn-v0_8-muted")
sns.set_palette("muted")
sns.set_style("whitegrid")
LOG_DIR = "./logs"
os.makedirs(LOG_DIR, exist_ok=True)
# Permanent artifact filenames (never change)
CSV_PATH = os.path.join(LOG_DIR, "flatfile_universe_advanced.csv")
META_PATH = os.path.join(LOG_DIR, "feature_metadata_advanced.json")
ENSEMBLE_PATH = os.path.join(LOG_DIR, "ensemble_models.joblib")
LOG_PATH = os.path.join(LOG_DIR, "run_master.log")
# Simple logger that time-stamps inside one file
SESSION_STARTED = False
def log(msg: str):
global SESSION_STARTED
stamp = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
with open(LOG_PATH, "a", encoding="utf-8") as f:
if not SESSION_STARTED:
f.write("\n\n===== New Session Started at {} =====\n".format(stamp))
SESSION_STARTED = True
f.write(f"[{stamp}] {msg}\n")
print(msg)
log("=== Streamlit session started ===")
if os.path.exists("/data"):
st.sidebar.success(f" Using persistent storage | Logs directory: {LOG_DIR}")
else:
st.sidebar.warning(f" Using ephemeral storage | Logs directory: {LOG_DIR}. Data will be lost on rebuild.")
# -------------------------
# Utility: generate advanced dataset if missing
# -------------------------
def generate_advanced_flatfile(
n_rows=3000,
random_seed=42,
max_polynomial_new=60,
global_variance_multiplier=1.0,
variance_overrides=None,
):
"""
Generates a large synthetic, physics-aligned dataset with many engineered features.
Allows control of variability per feature (through variance_overrides) or globally
(via global_variance_multiplier).
"""
np.random.seed(random_seed)
os.makedirs(LOG_DIR, exist_ok=True)
if variance_overrides is None:
variance_overrides = {}
# --- base natural features across 8 use cases (expanded)
natural_feats = [
"vibration_x","vibration_y","motor_current","rpm","bearing_temp","ambient_temp","lube_pressure","power_factor",
"furnace_temp","tap_temp","slag_temp","offgas_co","offgas_co2","o2_probe_pct","c_feed_rate","arc_power","furnace_pressure","feed_time",
"mold_temp","casting_speed","nozzle_pressure","cooling_water_temp","billet_length","chemical_C","chemical_Mn","chemical_Si","chemical_S",
"roll_speed","motor_load","coolant_flow","exit_temp","strip_thickness","line_tension","roller_vibration",
"lighting_intensity","surface_temp","image_entropy_proxy",
"spectro_Fe","spectro_C","spectro_Mn","spectro_Si","time_since_last_sample",
"batch_id_numeric","weight_input","weight_output","time_in_queue","conveyor_speed",
"shell_temp","lining_thickness","water_flow","cooling_out_temp","heat_flux"
]
natural_feats = list(dict.fromkeys(natural_feats)) # dedupe
# helper: compute adjusted stddev
def effective_sd(feature_name, base_sd):
# exact name override
if feature_name in variance_overrides:
return float(variance_overrides[feature_name])
# substring override
for key, val in variance_overrides.items():
if key in feature_name:
return float(val)
# fallback: scaled base
return float(base_sd) * float(global_variance_multiplier)
# helper sampling heuristics
def sample_col(name, n):
name_l = name.lower()
if "furnace_temp" in name_l or name_l.endswith("_temp") or "tap_temp" in name_l:
sd = effective_sd("furnace_temp", 50)
return np.random.normal(1550, sd, n)
if name_l in ("tap_temp","mold_temp","shell_temp","cooling_out_temp","exit_temp"):
sd = effective_sd(name_l, 30)
return np.random.normal(200 if "mold" not in name_l else 1500, sd, n)
if "offgas_co2" in name_l:
sd = effective_sd("offgas_co2", 4)
return np.abs(np.random.normal(15, sd, n))
if "offgas_co" in name_l:
sd = effective_sd("offgas_co", 5)
return np.abs(np.random.normal(20, sd, n))
if "o2" in name_l:
sd = effective_sd("o2_probe_pct", 1)
return np.clip(np.random.normal(5, sd, n), 0.01, 60)
if "arc_power" in name_l or "motor_load" in name_l:
sd = effective_sd("arc_power", 120)
return np.abs(np.random.normal(600, sd, n))
if "rpm" in name_l:
sd = effective_sd("rpm", 30)
return np.abs(np.random.normal(120, sd, n))
if "vibration" in name_l:
sd = effective_sd("vibration", 0.15)
return np.abs(np.random.normal(0.4, sd, n))
if "bearing_temp" in name_l:
sd = effective_sd("bearing_temp", 5)
return np.random.normal(65, sd, n)
if "chemical" in name_l or "spectro" in name_l:
sd = effective_sd("chemical", 0.15)
return np.random.normal(0.7, sd, n)
if "weight" in name_l:
sd = effective_sd("weight", 100)
return np.random.normal(1000, sd, n)
if "conveyor_speed" in name_l or "casting_speed" in name_l:
sd = effective_sd("casting_speed", 0.6)
return np.random.normal(2.5, sd, n)
if "power_factor" in name_l:
sd = effective_sd("power_factor", 0.03)
return np.clip(np.random.normal(0.92, sd, n), 0.6, 1.0)
if "image_entropy_proxy" in name_l:
sd = effective_sd("image_entropy_proxy", 0.25)
return np.abs(np.random.normal(0.5, sd, n))
if "batch_id" in name_l:
return np.random.randint(1000,9999,n)
if "time_since" in name_l or "time_in_queue" in name_l:
sd = effective_sd("time_since", 20)
return np.abs(np.random.normal(30, sd, n))
if "heat_flux" in name_l:
sd = effective_sd("heat_flux", 300)
return np.abs(np.random.normal(1000, sd, n))
return np.random.normal(0, effective_sd(name_l, 1), n)
# build DataFrame
df = pd.DataFrame({c: sample_col(c, n_rows) for c in natural_feats})
# timestamps & metadata
start = pd.Timestamp("2025-01-01T00:00:00")
df["timestamp"] = pd.date_range(start, periods=n_rows, freq="min")
df["cycle_minute"] = np.mod(np.arange(n_rows), 80)
df["meta_plant_name"] = np.random.choice(["Rourkela","Bhilai","Durgapur","Bokaro","Burnpur","Salem"], n_rows)
df["meta_country"] = "India"
# --- synthetic features: physics informed proxies
df["carbon_proxy"] = df["offgas_co"] / (df["offgas_co2"] + 1.0)
df["oxygen_utilization"] = df["offgas_co2"] / (df["offgas_co"] + 1.0)
df["power_density"] = df["arc_power"] / (df["weight_input"] + 1.0)
df["energy_efficiency"] = df["furnace_temp"] / (df["arc_power"] + 1.0)
df["slag_foaming_index"] = (df["slag_temp"] * df["offgas_co"]) / (df["o2_probe_pct"] + 1.0)
df["yield_ratio"] = df["weight_output"] / (df["weight_input"] + 1e-9)
# rolling stats, lags, rocs for a prioritized set
rolling_cols = ["arc_power","furnace_temp","offgas_co","offgas_co2","motor_current","vibration_x","weight_input"]
for rc in rolling_cols:
if rc in df.columns:
df[f"{rc}_roll_mean_3"] = df[rc].rolling(3, min_periods=1).mean()
df[f"{rc}_roll_std_5"] = df[rc].rolling(5, min_periods=1).std().fillna(0)
df[f"{rc}_lag1"] = df[rc].shift(1).bfill()
df[f"{rc}_roc_1"] = df[rc].diff().fillna(0)
# interaction & polynomial-lite
df["arc_o2_interaction"] = df["arc_power"] * df["o2_probe_pct"]
df["carbon_power_ratio"] = df["carbon_proxy"] / (df["arc_power"] + 1e-6)
df["temp_power_sqrt"] = df["furnace_temp"] * np.sqrt(np.abs(df["arc_power"]) + 1e-6)
# polynomial features limited to first 12 numeric columns
numeric = df.select_dtypes(include=[np.number]).fillna(0)
poly_source_cols = numeric.columns[:12].tolist()
poly = PolynomialFeatures(degree=2, interaction_only=False, include_bias=False)
poly_mat = poly.fit_transform(numeric[poly_source_cols])
poly_names = poly.get_feature_names_out(poly_source_cols)
poly_df = pd.DataFrame(poly_mat, columns=[f"poly__{n}" for n in poly_names], index=df.index)
keep_poly = [c for c in poly_df.columns if c.replace("poly__","") not in poly_source_cols]
poly_df = poly_df[keep_poly].iloc[:, :max_polynomial_new] if len(keep_poly) > 0 else poly_df.iloc[:, :0]
df = pd.concat([df, poly_df], axis=1)
# PCA embeddings across numeric sensors
scaler = StandardScaler()
scaled = scaler.fit_transform(numeric)
pca = PCA(n_components=6, random_state=42)
pca_cols = pca.fit_transform(scaled)
for i in range(pca_cols.shape[1]):
df[f"pca_{i+1}"] = pca_cols[:, i]
# KMeans cluster label for operating mode
kmeans = KMeans(n_clusters=6, random_state=42, n_init=10)
df["operating_mode"] = kmeans.fit_predict(scaled)
# surrogate models
surrogate_df = df.copy()
surrogate_df["furnace_temp_next"] = surrogate_df["furnace_temp"].shift(-1).ffill()
features_for_surrogate = [c for c in ["furnace_temp","arc_power","o2_probe_pct","offgas_co","offgas_co2"] if c in df.columns]
if len(features_for_surrogate) >= 2:
X = surrogate_df[features_for_surrogate].fillna(0)
y = surrogate_df["furnace_temp_next"]
rf = RandomForestRegressor(n_estimators=50, random_state=42, n_jobs=-1)
rf.fit(X, y)
df["pred_temp_30s"] = rf.predict(X)
else:
df["pred_temp_30s"] = df["furnace_temp"]
if all(c in df.columns for c in ["offgas_co","offgas_co2","o2_probe_pct"]):
X2 = df[["offgas_co","offgas_co2","o2_probe_pct"]].fillna(0)
rf2 = RandomForestRegressor(n_estimators=50, random_state=1, n_jobs=-1)
rf2.fit(X2, df["carbon_proxy"])
df["pred_carbon_5min"] = rf2.predict(X2)
else:
df["pred_carbon_5min"] = df["carbon_proxy"]
# safety indices & flags
df["refractory_limit_flag"] = (df["lining_thickness"] < 140).astype(int)
df["max_allowed_power_delta"] = np.clip(df["arc_power"].diff().abs().fillna(0), 0, 2000)
# rule-based target
df["ARC_ON"] = ((df["arc_power"] > df["arc_power"].median()) & (df["carbon_proxy"] < 1.0)).astype(int)
df["prediction_confidence"] = np.clip(np.random.beta(2,5, n_rows), 0.05, 0.99)
# clean NaN and infinite
df.replace([np.inf, -np.inf], np.nan, inplace=True)
df.bfill(inplace=True)
df.fillna(0, inplace=True)
# save CSV & metadata
df["run_timestamp"] = datetime.now().strftime("%Y%m%d_%H%M%S")
if os.path.exists(CSV_PATH):
df.to_csv(CSV_PATH, mode="a", index=False, header=False)
else:
df.to_csv(CSV_PATH, index=False)
# append run-summary entry to metadata JSON
meta_entry = {
"timestamp": datetime.now().strftime("%Y-%m-%d %H:%M:%S"),
"features": len(df.columns),
"rows_added": len(df),
"note": "auto-generated block appended"
}
if os.path.exists(META_PATH):
existing = json.load(open(META_PATH))
existing.append(meta_entry)
else:
existing = [meta_entry]
json.dump(existing, open(META_PATH, "w"), indent=2)
PDF_PATH = None
return CSV_PATH, META_PATH, PDF_PATH
# -------------------------
# Ensure dataset exists
# -------------------------
if not os.path.exists(CSV_PATH) or not os.path.exists(META_PATH):
with st.spinner("Generating synthetic features (this may take ~20-60s)..."):
CSV_PATH, META_PATH, PDF_PATH = generate_advanced_flatfile(n_rows=3000, random_seed=42, max_polynomial_new=80)
st.success(f"Generated dataset and metadata: {CSV_PATH}")
# -------------------------
# Load data & metadata (cached)
# -------------------------
@st.cache_data
def load_data(csv_path=CSV_PATH, meta_path=META_PATH):
df_local = pd.read_csv(csv_path)
with open(meta_path, "r") as f:
meta_local = json.load(f)
return df_local, pd.DataFrame(meta_local)
df, meta_df = load_data()
df = df.loc[:, ~df.columns.duplicated()]
# -------------------------
# Sidebar filters & UI
# -------------------------
st.sidebar.title("Feature Explorer - Advanced + SHAP")
def ensure_feature_metadata(df: pd.DataFrame, meta_df: pd.DataFrame) -> pd.DataFrame:
"""Ensure metadata dataframe matches feature count & has required columns."""
required_cols = ["feature_name", "source_type", "formula", "remarks"]
if meta_df is None or len(meta_df) < len(df.columns):
meta_df = pd.DataFrame({
"feature_name": df.columns,
"source_type": [
"engineered" if any(x in c for x in ["poly", "pca", "roll", "lag"]) else "measured"
for c in df.columns
],
"formula": ["" for _ in df.columns],
"remarks": ["auto-inferred synthetic feature metadata" for _ in df.columns],
})
st.sidebar.warning("Metadata was summary-only — rebuilt feature-level metadata.")
else:
for col in required_cols:
if col not in meta_df.columns:
meta_df[col] = None
if meta_df["feature_name"].isna().all():
meta_df["feature_name"] = df.columns
if len(meta_df) > len(df.columns):
meta_df = meta_df.iloc[: len(df.columns)]
return meta_df
meta_df = ensure_feature_metadata(df, meta_df)
feat_types = sorted(meta_df["source_type"].dropna().unique().tolist())
selected_types = st.sidebar.multiselect("Feature type", feat_types, default=feat_types)
if "source_type" not in meta_df.columns or meta_df["source_type"].dropna().empty:
filtered_meta = meta_df.copy()
else:
filtered_meta = meta_df[meta_df["source_type"].isin(selected_types)]
numeric_cols = df.select_dtypes(include=[np.number]).columns.tolist()
# -------------------------
# Tabs layout
# -------------------------
tabs = st.tabs([
"Features",
"Visualization",
"Correlations",
"Statistics",
"AutoML + SHAP",
"Business Impact",
"Bibliography",
"Download Saved Files",
"View Logs",
"Smart Advisor"
])
# ----- Feature metadata
with tabs[0]:
st.subheader("Feature metadata")
st.dataframe(
filtered_meta[["feature_name", "source_type", "formula", "remarks"]]
.rename(columns={"feature_name": "Feature"}),
height=400
)
st.markdown(f"Total features loaded: **{df.shape[1]}** | Rows: **{df.shape[0]}**")
# ----- Visualization tab
with tabs[1]:
st.subheader("Feature Visualization")
col = st.selectbox("Choose numeric feature", numeric_cols, index=0)
bins = st.slider("Histogram bins", 10, 200, 50)
fig, ax = plt.subplots(figsize=(8, 4))
sns.histplot(df[col], bins=bins, kde=True, ax=ax, color="#2C6E91", alpha=0.8)
ax.set_title(f"Distribution of {col}", fontsize=12)
st.pyplot(fig, clear_figure=True)
st.write(df[col].describe().to_frame().T)
if all(x in df.columns for x in ["pca_1", "pca_2", "operating_mode"]):
st.markdown("### PCA Feature Space — Colored by Operating Mode")
fig2, ax2 = plt.subplots(figsize=(6, 5))
sns.scatterplot(
data=df.sample(min(1000, len(df)), random_state=42),
x="pca_1", y="pca_2", hue="operating_mode",
palette="tab10", alpha=0.7, s=40, ax=ax2
)
ax2.set_title("Operating Mode Clusters (PCA Projection)")
st.pyplot(fig2, clear_figure=True)
# --- PCA Explanation ---
st.markdown("""
**Interpretation – Operating Mode Clusters**
This PCA-based projection compresses over 100 process features into two principal dimensions,
revealing the dominant patterns in furnace operation. Each color represents an automatically discovered
*operating mode* (via K-Means clustering).
- **Distinct clusters (colors)** → different operating regimes (e.g., high-power melt, refining, tapping, idle)
- **Overlaps** → transitional phases or process variability
- **Compact clusters** → stable operation; **spread-out clusters** → drift or unstable control
- **Shifts between colors** over time may reflect raw-material change or arc power adjustment
Understanding these clusters helps metallurgists and control engineers associate process signatures
with efficient or energy-intensive operating conditions.
""")
# --- Dynamic insight: which features drive PCA the most ---
from sklearn.decomposition import PCA
num_df = df.select_dtypes(include=[np.number]).fillna(0)
pca = PCA(n_components=2, random_state=42)
pca.fit(num_df)
comp_df = pd.DataFrame(pca.components_.T, index=num_df.columns, columns=["PC1", "PC2"])
top_pc1 = comp_df["PC1"].abs().nlargest(5).index.tolist()
top_pc2 = comp_df["PC2"].abs().nlargest(5).index.tolist()
st.info(f"**Top variables driving PCA-1 (X-axis):** {', '.join(top_pc1)}")
st.info(f"**Top variables driving PCA-2 (Y-axis):** {', '.join(top_pc2)}")
# ----- Correlations tab
with tabs[2]:
st.subheader("Correlation explorer")
default_corr = numeric_cols[:20] if len(numeric_cols) >= 20 else numeric_cols
corr_sel = st.multiselect("Select features (min 2)", numeric_cols, default=default_corr)
if len(corr_sel) >= 2:
corr = df[corr_sel].corr()
fig, ax = plt.subplots(figsize=(10,8))
sns.heatmap(corr, cmap="RdBu_r", center=0, annot=True, fmt=".2f",
linewidths=0.5, cbar_kws={"shrink": 0.7}, ax=ax)
st.pyplot(fig, clear_figure=True)
else:
st.info("Choose at least 2 numeric features to compute correlation.")
# ----- Stats tab
with tabs[3]:
st.subheader("Summary statistics (numeric features)")
st.dataframe(df.describe().T.style.format("{:.3f}"), height=500)
# ----- AutoML + SHAP tab (Expanded)
# ----- AutoML + SHAP tab (Expanded)
with tabs[4]:
st.subheader("AutoML Ensemble — Expanded Families + Stacking + SHAP")
# --- Global numeric cleaner ---
def clean_entire_df(df):
"""Cleans dataframe of bracketed/scientific string numbers like '[1.551E3]'."""
df_clean = df.copy()
for col in df_clean.columns:
if df_clean[col].dtype == object:
df_clean[col] = (
df_clean[col]
.astype(str)
.str.replace("[", "", regex=False)
.str.replace("]", "", regex=False)
.str.replace(",", "", regex=False)
.str.strip()
.replace(["nan", "NaN", "None", "null", "N/A", "", " "], np.nan)
)
df_clean[col] = pd.to_numeric(df_clean[col], errors="coerce")
df_clean = df_clean.fillna(0.0).astype(float)
return df_clean
df = clean_entire_df(df)
st.caption(" Dataset cleaned globally — all numeric-like values converted safely.")
# --- Use Case Selection ---
use_case = st.selectbox(
"Select Use Case",
[
"Predictive Maintenance",
"EAF Data Intelligence",
"Casting Quality Optimization",
"Rolling Mill Energy Optimization",
"Surface Defect Detection (Vision AI)",
"Material Composition & Alloy Mix AI",
"Inventory & Yield Optimization",
"Refractory & Cooling Loss Prediction",
],
index=1,
)
use_case_config = {
"Predictive Maintenance": {"target": "bearing_temp", "model_hint": "RandomForest"},
"EAF Data Intelligence": {"target": "furnace_temp", "model_hint": "GradientBoosting"},
"Casting Quality Optimization": {"target": "surface_temp", "model_hint": "GradientBoosting"},
"Rolling Mill Energy Optimization": {"target": "energy_efficiency", "model_hint": "ExtraTrees"},
"Surface Defect Detection (Vision AI)": {"target": "image_entropy_proxy", "model_hint": "GradientBoosting"},
"Material Composition & Alloy Mix AI": {"target": "chemical_C", "model_hint": "RandomForest"},
"Inventory & Yield Optimization": {"target": "yield_ratio", "model_hint": "GradientBoosting"},
"Refractory & Cooling Loss Prediction": {"target": "lining_thickness", "model_hint": "ExtraTrees"},
}
cfg = use_case_config.get(use_case, {"target": numeric_cols[0], "model_hint": "RandomForest"})
target, model_hint = cfg["target"], cfg["model_hint"]
suggested = [c for c in numeric_cols if any(k in c for k in target.split("_"))]
if len(suggested) < 6:
suggested = [c for c in numeric_cols if any(k in c for k in ["temp", "power", "energy", "pressure", "yield"])]
if len(suggested) < 6:
suggested = numeric_cols[:50]
features = st.multiselect("Model input features (auto-suggested)", numeric_cols, default=suggested)
st.markdown(f"Auto target: `{target}` · Suggested family hint: `{model_hint}`")
# --- Sampling configuration ---
max_rows = min(df.shape[0], 20000)
sample_size = st.slider("Sample rows", 500, max_rows, min(1500, max_rows), step=100)
# --- Prepare data ---
target_col = target if target in df.columns else next((c for c in df.columns if target.lower() in c.lower()), None)
if not target_col:
st.error(f"Target `{target}` not found in dataframe.")
st.stop()
cols_needed = [c for c in features if c in df.columns and c != target_col]
sub_df = df.loc[:, cols_needed + [target_col]].sample(n=sample_size, random_state=42).reset_index(drop=True)
X = sub_df.drop(columns=[target_col])
y = pd.Series(np.ravel(sub_df[target_col]), name=target_col)
# --- Drop constant or leak columns ---
leak_cols = ["furnace_temp_next", "pred_temp_30s", "run_timestamp", "timestamp", "batch_id_numeric", "batch_id"]
X = X.drop(columns=[c for c in leak_cols if c in X.columns], errors="ignore")
X = X.loc[:, X.nunique() > 1]
# --- AutoML Settings ---
st.markdown("### Ensemble & AutoML Settings")
max_trials = st.slider("Optuna trials per family", 5, 80, 20, step=5)
top_k = st.slider("Max base models in ensemble", 2, 8, 5)
allow_advanced = st.checkbox("Include advanced families (XGBoost, LightGBM, CatBoost)", value=True)
available_models = ["RandomForest", "ExtraTrees"]
optional_families = {}
if allow_advanced:
try:
import xgboost as xgb; optional_families["XGBoost"] = True; available_models.append("XGBoost")
except Exception: optional_families["XGBoost"] = False
try:
import lightgbm as lgb; optional_families["LightGBM"] = True; available_models.append("LightGBM")
except Exception: optional_families["LightGBM"] = False
try:
import catboost as cb; optional_families["CatBoost"] = True; available_models.append("CatBoost")
except Exception: optional_families["CatBoost"] = False
st.markdown(f"Available families: {', '.join(available_models)}")
# --- Family tuner ---
def tune_family(fam, X_local, y_local, n_trials=20):
def obj(trial):
if fam == "RandomForest":
m = RandomForestRegressor(
n_estimators=trial.suggest_int("n_estimators", 100, 800),
max_depth=trial.suggest_int("max_depth", 4, 30),
random_state=42, n_jobs=-1)
elif fam == "ExtraTrees":
m = ExtraTreesRegressor(
n_estimators=trial.suggest_int("n_estimators", 100, 800),
max_depth=trial.suggest_int("max_depth", 4, 30),
random_state=42, n_jobs=-1)
else:
# fallback
m = RandomForestRegressor(random_state=42)
try:
return np.mean(cross_val_score(m, X_local, y_local, cv=3, scoring="r2"))
except Exception:
return -999.0
# --- Run Optuna optimization ---
study = optuna.create_study(direction="maximize")
try:
study.optimize(obj, n_trials=n_trials, show_progress_bar=False)
params = study.best_trial.params if study.trials else {}
best_score = study.best_value if study.trials else -999.0
except Exception as e:
st.warning(f"Optuna failed for {fam}: {e}")
params, best_score = {}, -999.0
# --- Always safely initialize a model, even if trials failed ---
if fam == "RandomForest":
model = RandomForestRegressor(**params, random_state=42, n_jobs=-1)
elif fam == "ExtraTrees":
model = ExtraTreesRegressor(**params, random_state=42, n_jobs=-1)
else:
model = RandomForestRegressor(random_state=42, n_jobs=-1)
return {
"family": fam,
"model_obj": model,
"best_params": params,
"cv_score": best_score
}
# --- Run button ---
if st.button("Run AutoML + SHAP"):
with st.spinner("Training and stacking..."):
tuned_results = []
families = ["RandomForest", "ExtraTrees"]
if allow_advanced:
for f in ["XGBoost", "LightGBM", "CatBoost"]:
if optional_families.get(f): families.append(f)
for fam in families:
tuned_results.append(tune_family(fam, X, y, n_trials=max_trials))
lb = pd.DataFrame(
[{"family": r["family"], "cv_r2": r["cv_score"]} for r in tuned_results]
).sort_values("cv_r2", ascending=False)
st.dataframe(lb.round(4))
# --- Stacking ---
from sklearn.feature_selection import SelectKBest, f_regression
from sklearn.linear_model import LinearRegression
from sklearn.model_selection import KFold
from sklearn.metrics import r2_score
scaler = StandardScaler()
X_scaled = pd.DataFrame(scaler.fit_transform(X), columns=X.columns)
selector = SelectKBest(f_regression, k=min(40, X_scaled.shape[1]))
X_sel = pd.DataFrame(
selector.fit_transform(X_scaled, y),
columns=[X.columns[i] for i in selector.get_support(indices=True)]
)
kf = KFold(n_splits=5, shuffle=True, random_state=42)
oof_preds = pd.DataFrame(index=X_sel.index)
base_models = []
valid_results = [
(r["family"], r) for r in tuned_results
if r.get("model_obj") is not None and hasattr(r["model_obj"], "fit")
]
for fam, entry in valid_results:
model = entry["model_obj"]
preds = np.zeros(X_sel.shape[0])
for tr, va in kf.split(X_sel):
try:
model.fit(X_sel.iloc[tr], y.iloc[tr])
preds[va] = model.predict(X_sel.iloc[va])
except Exception as e:
st.warning(f"⚠️ {fam} failed in fold: {e}")
oof_preds[f"{fam}_oof"] = preds
try:
model.fit(X_sel, y)
base_models.append({"family": fam, "model": model})
except Exception as e:
st.warning(f"⚠️ {fam} full-fit failed: {e}")
meta = LinearRegression(positive=True)
meta.fit(oof_preds, y)
y_pred = meta.predict(oof_preds)
final_r2 = r2_score(y, y_pred)
st.success(f"Stacked Ensemble R² = {final_r2:.4f}")
# --- Operator Advisory ---
st.markdown("---")
st.subheader("Operator Advisory — Real-Time Recommendations")
try:
top_base = base_models[0]["model"]
sample_X = X_sel.sample(min(300, len(X_sel)), random_state=42)
expl = shap.TreeExplainer(top_base)
shap_vals = expl.shap_values(sample_X)
if isinstance(shap_vals, list): shap_vals = shap_vals[0]
imp = pd.DataFrame({
"Feature": sample_X.columns,
"Mean |SHAP|": np.abs(shap_vals).mean(axis=0),
"Mean SHAP Sign": np.sign(shap_vals).mean(axis=0)
}).sort_values("Mean |SHAP|", ascending=False)
st.dataframe(imp.head(5))
recs = []
for _, r in imp.head(5).iterrows():
if r["Mean SHAP Sign"] > 0.05:
recs.append(f"Increase `{r['Feature']}` likely increases `{target}`")
elif r["Mean SHAP Sign"] < -0.05:
recs.append(f"Decrease `{r['Feature']}` likely increases `{target}`")
else:
recs.append(f"`{r['Feature']}` neutral for `{target}`")
st.write("\n".join(recs))
# --- Persist key results for Smart Advisor tab ---
st.session_state["recs"] = recs
st.session_state["final_r2"] = final_r2
st.session_state["use_case"] = use_case
st.session_state["target"] = target
st.session_state["last_automl_ts"] = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
# --- Hugging Face Router Chat API (OpenAI-Compatible Format) ---
import requests, textwrap
HF_TOKEN = os.getenv("HF_TOKEN")
if not HF_TOKEN:
st.error("HF_TOKEN not detected in environment or secrets.toml.")
else:
API_URL = "https://router.huggingface.co/v1/chat/completions"
headers = {
"Authorization": f"Bearer {HF_TOKEN}",
"Content-Type": "application/json",
}
prompt = textwrap.dedent(f"""
You are an expert metallurgical process advisor.
Analyze these SHAP-based operator recommendations and rewrite them
as a concise 3-line professional advisory note.
Recommendations: {recs}
Target variable: {target}
Use case: {use_case}
""")
payload = {
"model": "meta-llama/Meta-Llama-3-8B-Instruct",
"messages": [
{"role": "system", "content": "You are a concise metallurgical advisor."},
{"role": "user", "content": prompt}
],
"temperature": 0.5,
"max_tokens": 200,
"stream": False
}
with st.spinner("Generating operator advisory (Llama 3-8B)…"):
try:
resp = requests.post(API_URL, headers=headers, json=payload, timeout=90)
if resp.status_code != 200:
st.warning(f"HF API error {resp.status_code}: {resp.text}")
else:
try:
data = resp.json()
msg = (
data.get("choices", [{}])[0]
.get("message", {})
.get("content", "")
.strip()
)
if msg:
st.success("✅ Operator Advisory Generated:")
st.info(msg)
else:
st.warning(f"Operator advisory skipped: empty response.\nRaw: {data}")
except Exception as e:
st.warning(f"Operator advisory skipped: JSON parse error — {e}")
except Exception as e:
st.warning(f"Operator advisory skipped: {e}")
except Exception as e:
st.warning(f"Operator advisory skipped: {e}")
# ----- Business Impact tab
with tabs[5]:
st.subheader("Business Impact Metrics")
target_table = pd.DataFrame([
["EAF Data Intelligence", "furnace_temp / tap_temp", "Central control variable", "₹20–60 L/year"],
["Casting Optimization", "surface_temp / cooling_water_temp", "Controls billet quality", "₹50 L/year"],
["Rolling Mill", "energy_efficiency", "Energy optimization", "₹5–10 L/year"],
["Refractory Loss Prediction", "lining_thickness / heat_loss_rate", "Wear and downtime", "₹40 L/year"],
], columns=["Use Case","Target Variable","Why It’s Ideal","Business Leverage"])
st.dataframe(target_table, width="stretch")
# ----- Bibliography tab
with tabs[6]:
st.subheader("Annotated Bibliography")
refs = [
("A Survey of Data-Driven Soft Sensing in Ironmaking Systems","Yan et al. (2024)","Soft sensors validate `furnace_temp` and `tap_temp`.","https://doi.org/10.1021/acsomega.4c01254"),
("Optimisation of Operator Support Systems","Ojeda Roldán et al. (2022)","Reinforcement learning for endpoint control.","https://doi.org/10.3390/jmmp6020034"),
("Analyzing the Energy Efficiency of Electric Arc Furnace Steelmaking","Zhuo et al. (2024)","Links arc power and energy KPIs.","https://doi.org/10.3390/met15010113"),
("Dynamic EAF Modeling and Slag Foaming Index Prediction","MacRosty et al.","Supports refractory wear modeling.","https://www.sciencedirect.com/science/article/pii/S0921883123004019")
]
for t,a,n,u in refs:
st.markdown(f"**[{t}]({u})** — *{a}* \n_{n}_")
# ----- Download tab
with tabs[7]:
st.subheader("Download Saved Files")
files = [f for f in os.listdir(LOG_DIR) if os.path.isfile(os.path.join(LOG_DIR, f))]
if not files: st.info("No files yet — run AutoML first.")
else:
for f in sorted(files):
path = os.path.join(LOG_DIR, f)
with open(path,"rb") as fp:
st.download_button(f"Download {f}", fp, file_name=f)
# ----- Logs tab
with tabs[8]:
st.subheader("Master Log")
if os.path.exists(LOG_PATH):
txt = open(LOG_PATH).read()
st.text_area("Log Output", txt, height=400)
st.download_button("Download Log", txt, file_name="run_master.log")
else:
st.info("No logs yet — run AutoML once.")
# ----- Smart Advisor tab (Role-based Insights)
with tabs[9]:
st.subheader(" Smart Advisor — Role-Based Insights")
if "last_automl_ts" in st.session_state:
st.caption(f" Model baseline last trained: {st.session_state['last_automl_ts']}")
# --- Load persisted results from AutoML tab ---
recs = st.session_state.get("recs", [])
final_r2 = st.session_state.get("final_r2", 0)
use_case = st.session_state.get("use_case", "N/A")
target = st.session_state.get("target", "N/A")
# -------------------------
# 1. Role hierarchy and descriptions
# -------------------------
roles = {
# --- Ground-level ---
"Furnace Operator": "Runs daily EAF heats, manages electrodes, slag foaming, and tap timing.",
"Shift Engineer": "Coordinates furnace, casting, and maintenance operations during the shift.",
"Process Metallurgist": "Optimizes chemistry, refining, and metallurgical balance across heats.",
"Maintenance Engineer": "Monitors vibration, bearings, and schedules preventive maintenance.",
"Quality Engineer": "Tracks billet surface, composition, and defect rates from casting to rolling.",
# --- Mid-level / Plant ---
"Energy Manager": "Analyzes power, load factor, and energy cost per ton of steel.",
"Production Head": "Supervises throughput, yield, and adherence to shift-level production targets.",
"Reliability Manager": "Oversees equipment reliability, predictive maintenance, and downtime prevention.",
"Chief Process Engineer": "Links metallurgical parameters to standard operating conditions.",
"Process Optimization Head (PP&C)": "Balances yield, power, and reliability across EAF, caster, and rolling units.",
"Chief General Manager – PP&C": "Oversees planning, process, and control at plant level — coordinating all shops for optimal energy, yield, and reliability.",
"Deputy General Manager (Operations)": "Supervises multi-shop coordination, productivity, and manpower scheduling.",
"Plant Head": "Oversees plant-wide KPIs — production, energy, quality, and modernization progress.",
# --- Strategic / Corporate ---
"Executive Director (Works)": "Integrates operations, people, and safety across all plants.",
"Chief Operating Officer (COO)": "Ensures alignment between production efficiency and business goals.",
"Chief Sustainability Officer (CSO)": "Monitors CO₂ intensity, waste recovery, and environmental compliance.",
"Chief Financial Officer (CFO)": "Links operational performance to cost efficiency and ROI.",
"Chief Executive Officer (CEO)": "Focuses on long-term performance, modernization, and shareholder impact."
}
# -------------------------
# 2. Role-specific reasoning prompts for LLM
# -------------------------
role_prompts = {
"Furnace Operator": """
You are the EAF furnace operator responsible for maintaining a stable arc and safe melting.
Translate model recommendations into clear, actionable controls: electrode movement, oxygen flow,
slag foaming, or power adjustment. Focus on operational safety and tap timing.
""",
"Shift Engineer": """
You are the shift engineer overseeing melting, casting, and maintenance coordination.
Interpret model insights for operational actions — mention if inter-shop coordination is required.
""",
"Process Metallurgist": """
You are the process metallurgist. Evaluate the data-driven SHAP patterns to interpret metallurgical
balance, oxidation behavior, and refining efficiency. Suggest chemistry or process tuning.
""",
"Maintenance Engineer": """
You are the maintenance engineer responsible for reliability. Identify potential failure risks
(e.g., vibration anomalies, overheating, current imbalance) and propose proactive checks.
""",
"Quality Engineer": """
You are the quality engineer monitoring casting and rolling outcomes. Translate process variables
into expected surface or composition quality impacts and preventive measures.
""",
"Energy Manager": """
You are the energy manager. Interpret how SHAP signals influence energy per ton and power factor.
Quantify efficiency deviations and suggest scheduling or load adjustments.
""",
"Production Head": """
You are the production head tracking yield and throughput. Connect SHAP insights to bottlenecks
in productivity, heat timing, or equipment utilization. Suggest optimization steps.
""",
"Reliability Manager": """
You are the reliability manager. Evaluate if process trends suggest equipment stress, overheating,
or wear. Recommend intervention plans and projected downtime avoidance.
""",
"Chief Process Engineer": """
You are the chief process engineer. Convert SHAP outputs into process standardization insights.
Flag anomalies that require SOP review and coordinate with metallurgical and control teams.
""",
"Process Optimization Head (PP&C)": """
You are the Process Optimization Head in PP&C. Assess SHAP signals across multiple units to improve
system-level yield, energy, and reliability. Recommend balanced actions and inter-shop alignment.
""",
"Chief General Manager – PP&C": """
You are the Chief General Manager (PP&C) responsible for overall plant coordination,
planning, process control, and modernization. Interpret model insights as if briefing
senior management and section heads before a shift review.
Your response must:
- Translate technical terms into operational themes (e.g., “arc instability”)
- Identify cross-functional effects (EAF ↔ Caster ↔ Rolling)
- Suggest coordination steps (maintenance, power, metallurgist)
- Conclude with KPI or strategic impact (yield, energy, reliability)
- If any data pattern seems implausible, mention it and propose review.
""",
"Deputy General Manager (Operations)": """
You are the DGM (Operations). Summarize SHAP-derived insights into actionable instructions
for shop heads. Emphasize throughput, manpower planning, and heat plan adherence.
""",
"Plant Head": """
You are the Plant Head. Translate technical findings into KPI performance trends and upcoming
operational risks. Recommend cross-departmental actions and expected impact on production targets.
""",
"Executive Director (Works)": """
You are the Executive Director (Works). Summarize how the plant is performing overall and where
immediate leadership attention is required. Use a governance-level tone, referencing key KPIs.
""",
"Chief Operating Officer (COO)": """
You are the COO. Interpret model insights at a strategic level — efficiency, tonnage, cost, reliability.
Highlight systemic improvements, risk areas, and financial implications across plants.
""",
"Chief Sustainability Officer (CSO)": """
You are the CSO. Relate operational insights to environmental impact, carbon efficiency,
and sustainability metrics. Quantify potential emission reduction.
""",
"Chief Financial Officer (CFO)": """
You are the CFO. Interpret operational SHAP findings in terms of cost efficiency, asset utilization,
and ROI. Provide an executive financial perspective on potential savings or risks.
""",
"Chief Executive Officer (CEO)": """
You are the CEO of a major integrated steel producer.
Provide a concise narrative (2–3 paragraphs) summarizing plant performance trends,
operational risks, and opportunities — linking them to strategic goals in the annual report:
productivity, sustainability, cost leadership, and modernization.
"""
}
# -------------------------
# 3. Role selection and contextual info
# -------------------------
role = st.selectbox("Select Your Role", list(roles.keys()), index=10, key="selected_role")
if "last_role" in st.session_state and st.session_state["last_role"] != role:
st.session_state["hf_ran_once"] = False
st.caption(f" Context: {roles[role]}")
if not recs:
st.warning("Please run the AutoML + SHAP step first to generate recommendations.")
else:
generate_clicked = st.button("Generate Role-Based Advisory")
if generate_clicked:
st.session_state["hf_ran_once"] = True
HF_TOKEN = os.getenv("HF_TOKEN")
if not HF_TOKEN:
st.error("HF_TOKEN not found. Please set it as an environment variable or in secrets.toml.")
else:
import requests, textwrap
API_URL = "https://router.huggingface.co/v1/chat/completions"
headers = {"Authorization": f"Bearer {HF_TOKEN}", "Content-Type": "application/json"}
# Add CGM-style reasoning context for cross-functional roles
if role in ["Chief General Manager – PP&C", "Process Optimization Head (PP&C)", "Plant Head"]:
reasoning_context = """
Think like a systems integrator balancing EAF, caster, and rolling mill performance.
Evaluate interdependencies and recommend coordinated actions across departments.
"""
elif role in ["COO", "CFO", "CEO"]:
reasoning_context = """
Think strategically. Connect operational drivers to business KPIs,
and quantify financial or sustainability implications.
"""
else:
reasoning_context = ""
# Build final prompt
prompt = textwrap.dedent(f"""
Role: {role}
Use case: {use_case}
Target variable: {target}
Ensemble model confidence (R²): {final_r2:.3f}
{reasoning_context}
Model-derived recommendations:
{json.dumps(recs, indent=2)}
{role_prompts.get(role, "Provide a professional metallurgical advisory summary.")}
Your response should cover:
1. What’s happening (interpreted simply)
2. What should be done
3. What outcomes to expect and why
""")
payload = {
"model": "meta-llama/Meta-Llama-3-8B-Instruct",
"messages": [
{"role": "system", "content": "You are a multi-role metallurgical advisor connecting data to human decisions."},
{"role": "user", "content": prompt}
],
"temperature": 0.4,
"max_tokens": 350,
}
with st.spinner(f"Generating role-based advisory for {role}..."):
resp = requests.post(API_URL, headers=headers, json=payload, timeout=120)
if resp.status_code == 200:
data = resp.json()
msg = (
data.get("choices", [{}])[0]
.get("message", {})
.get("content", "")
.strip()
)
if msg:
st.markdown(f"### Advisory for {role}")
st.info(msg)
st.session_state["last_advisory_msg"] = msg
st.session_state["last_role"] = role
# --- Timestamp the advisory ---
st.session_state["last_advisory_ts"] = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
st.caption(f"🕒 Last updated: {st.session_state['last_advisory_ts']}")
# ---- Dynamic Data-Driven Highlights ----
if role in ["Chief General Manager – PP&C", "Plant Head", "Process Optimization Head (PP&C)"]:
st.markdown("#### 🔍 Shift Highlights — Data-Driven Summary")
try:
# 1️⃣ Latest data snapshot (simulates "current shift")
latest_df = df.tail(500).copy() # last 500 rows = current shift snapshot
# 2️⃣ Basic KPIs computed from live data
furnace_temp_mean = latest_df["furnace_temp"].mean()
furnace_temp_std = latest_df["furnace_temp"].std()
energy_eff_mean = latest_df["energy_efficiency"].mean()
yield_mean = latest_df["yield_ratio"].mean()
downtime_proxy = np.mean(latest_df["refractory_limit_flag"]) * 8 # hours/shift (proxy)
# 3️⃣ Compare vs historical baseline (previous 500 rows)
if len(df) > 1000:
prev_df = df.tail(1000).head(500)
delta_temp = ((furnace_temp_mean - prev_df["furnace_temp"].mean()) /
prev_df["furnace_temp"].mean()) * 100
delta_eff = ((energy_eff_mean - prev_df["energy_efficiency"].mean()) /
prev_df["energy_efficiency"].mean()) * 100
delta_yield = ((yield_mean - prev_df["yield_ratio"].mean()) /
prev_df["yield_ratio"].mean()) * 100
else:
delta_temp, delta_eff, delta_yield = 0, 0, 0
# 4️⃣ Qualitative interpretation
def trend_symbol(val):
if val > 0.5:
return f"↑ +{val:.2f}%"
elif val < -0.5:
return f"↓ {val:.2f}%"
else:
return f"→ {val:.2f}%"
# 5️⃣ Build structured table
highlights = pd.DataFrame([
["Furnace Temp Stability",
"Stable" if furnace_temp_std < 50 else "Fluctuating",
f"Avg: {furnace_temp_mean:.1f}°C ({trend_symbol(delta_temp)})"],
["Energy Efficiency",
"Improved" if delta_eff > 0 else "Declined",
f"{energy_eff_mean:.4f} ({trend_symbol(delta_eff)})"],
["Yield Ratio",
"Nominal" if abs(delta_yield) < 1 else ("↑" if delta_yield > 0 else "↓"),
f"{yield_mean*100:.2f}% ({trend_symbol(delta_yield)})"],
["Refractory Limit Flag",
"Within Safe Limit" if downtime_proxy < 1 else "Check Lining",
f"Active Alerts: {downtime_proxy:.1f}/shift"]
], columns=["Parameter", "Status", "Observation"])
st.dataframe(highlights, use_container_width=True)
st.caption("Derived from live dataset trends (last 500 vs previous 500 rows).")
# 6️⃣ Optional: Link to SHAP recs for validation
if isinstance(recs, list) and recs:
st.markdown("#### Cross-Verification with SHAP Insights")
matches = [r for r in recs if any(k in r for k in ["furnace", "energy", "yield", "slag", "power"])]
if matches:
st.info("Aligned SHAP Recommendations:\n\n- " + "\n- ".join(matches))
else:
st.warning("No direct SHAP alignment found — potential anomaly or unseen pattern.")
except Exception as e:
st.warning(f"Shift Highlights unavailable: {e}")
else:
st.warning(f"Empty response.\nRaw: {data}")
else:
st.error(f"HF API error {resp.status_code}: {resp.text}")
# --- Display last advisory if available ---
if "last_advisory_msg" in st.session_state:
st.markdown(f"### Last Advisory ({st.session_state.get('last_role', 'N/A')})")
st.info(st.session_state["last_advisory_msg"])
if "last_advisory_ts" in st.session_state:
st.caption(f"Last updated: {st.session_state['last_advisory_ts']}")
if "last_automl_ts" in st.session_state:
st.caption(f"Model baseline last run at: {st.session_state['last_automl_ts']}")
# -------------------------
# 4. Optional role-based KPIs
# -------------------------
if role == "Chief General Manager – PP&C":
col1, col2, col3 = st.columns(3)
col1.metric("Plant Yield (Rolling 24h)", "96.8%", "↑0.7% vs yesterday")
col2.metric("Energy per ton", "4.92 MWh/t", "↓2.3% week-on-week")
col3.metric("Unplanned Downtime", "3.1 hrs", "↓1.2 hrs")
st.caption("KPIs aligned with PP&C Balanced Scorecard — Yield • Energy • Reliability")
elif role in ["CEO", "COO"]:
col1, col2, col3 = st.columns(3)
col1.metric("EBITDA per ton", "₹7,420", "↑3.1% QoQ")
col2.metric("CO₂ Intensity", "1.79 tCO₂/t", "↓2.4% YoY")
col3.metric("Modernization CapEx", "₹122 Cr", "On track")
st.caption("Strategic alignment: cost leadership • sustainability • modernization")
elif role in ["Furnace Operator", "Shift Engineer"]:
col1, col2, col3 = st.columns(3)
col1.metric("Furnace Temp", f"{df['furnace_temp'].iloc[-1]:.1f} °C")
col2.metric("Arc Power", f"{df['arc_power'].iloc[-1]:.0f} kW")
col3.metric("Power Factor", f"{df['power_factor'].iloc[-1]:.2f}")
st.caption("Live operational parameters — monitor stability and foaming balance.")
st.markdown("---")
st.markdown("**Note:** Synthetic demo dataset for educational use only. Real deployment requires plant data, NDA, and safety validation.") |