--- title: SteelAI Module2 EAF Intelligence Explorer emoji: 🚀 colorFrom: red colorTo: green sdk: docker app_port: 8501 tags: - streamlit pinned: false short_description: Part of the TenderMatcher.Tech AI & Digital Intelligence license: other persistent_storage: 1Gi --- # SteelAI Module #2 — Blast Furnace & EAF Data Intelligence Explorer **Part of the TenderMatcher.Tech AI & Digital Intelligence for Metallurgy Suite** Ready-to-deploy **Streamlit + SHAP application** for **energy and yield optimization** in **Blast Furnace** and **Electric Arc Furnace (EAF)** operations. --- ## Objective Predict and optimize key furnace variables such as: - `furnace_temp` - `tap_temp` - `offgas_co`, `offgas_co2`, `o2_probe_pct` - `arc_power`, `energy_efficiency`, `yield_ratio` This module simulates a **complete furnace data intelligence environment** with ensemble modeling, SHAP explainability, and physics-informed feature engineering. --- ## Core Features - Synthetic EAF dataset generator (3,000+ records) - Derived physical proxies: - `carbon_proxy`, `oxygen_utilization`, `slag_foaming_index` - PCA and clustering for operating modes - Ensemble regression (Linear, RF, GB, ExtraTrees) - SHAP explainability for model transparency - Business framing & annotated bibliography for metallurgy ML - Fully local synthetic data generation (no external upload needed) --- ## Use Case Alignment (SteelAI Framework) | # | Use Case | Alignment | Description | |---|-----------|------------|--------------| | **2** | Blast Furnace / EAF Data Intelligence | **Primary (100%)** | Furnace temperature, gas chemistry, and power-density modeling for yield & energy optimization | | 7 | AI-Driven Alloy Design Tool | Partial | Shares compositional features (`chemical_C`, `chemical_Mn`, etc.) | | 8 | Predictive Maintenance Framework | Partial | Includes rolling, lag, and vibration signals for maintenance AI | --- ## Example Targets - Predict **`furnace_temp`** from operational data - Analyze **feature importance** with SHAP plots - Quantify business value: - 5–8% yield improvement - 3–5% energy cost reduction per ton --- ## How to Run Locally ```bash pip install -r requirements.txt streamlit run app.py ``` Then open the local URL shown in your terminal (typically http://localhost:8501). --- ## Deploy on Hugging Face 1. Create a Space → choose **SDK: Streamlit** 2. Upload: - `app.py` - `requirements.txt` - `README.md` 3. Hugging Face automatically installs dependencies and builds your Space. Your app will be live at: ``` https://huggingface.co/spaces/singhn9/SteelAI_Module2_EAF_Intelligence_Explorer ``` --- ## Business Value Snapshot | Dimension | Improvement | Impact | |------------|-------------|---------| | Productivity | +8–15% throughput | Higher process stability | | Energy efficiency | 3–8% reduction | Lower cost per ton | | Quality control | 10–15% better rejection precision | Fewer off-grade batches | | R&D cycle | 25–35% faster property correlation | Shorter design-to-validation loop | | Predictive reliability | 7–10% OEE gain | Reduced downtime | --- ## Generative AI & Industrial Innovation Beyond process modeling, **TenderMatcher.Tech** extends AI into Generative domains: - **Knowledge-Graph Assistant** — links research papers, alloy data & insights - **Chat-based Technical Advisor** — LLM-powered metallurgical Q&A - **Generative Report Builder** — auto-creates lab summaries & dashboards --- ## AI–ServiceNow Integration Mapping | # | AI Module | ServiceNow Integration | Business Value | |---|------------|------------------------|----------------| | 1 | Steel Property Prediction | QMS, Predictive Intelligence | QA traceability & ISO/BIS compliance | | 2 | Blast Furnace Intelligence | OT IntegrationHub, EHS | Closed-loop efficiency alerts | | 3 | Microstructure Classifier | KM, AI Search | Metallography knowledge base | | 4 | Surface Defect Detection | FSM, Predictive Intelligence | Real-time defect case auto-routing | | 5 | Corrosion/Fatigue Prediction | ORM, Asset Mgmt | Predictive asset health | | 6 | Energy Optimizer | Sustainability Mgmt | ESG-linked savings reporting | | 7 | Alloy Design Tool | Innovation Mgmt, KM | R&D portfolio tracking | | 8 | Predictive Maintenance | AIOps, FSM, CMDB | 10–12% downtime reduction | --- ## About Naval Singh **Naval Singh** — Digital Transformation Advisor Specializing in AI, analytics, and industrial systems. Focused on production-grade decision systems for metallurgy, mining & manufacturing. **singhn9@gmail.com** [LinkedIn](https://linkedin.com/in/navalsingh9) **Rourkela, India** --- ## Why Rourkela Matters Rourkela — India’s steel and metallurgy hub — provides the perfect ecosystem for AI pilot collaborations among academia, consulting, and industry. --- © **TenderMatcher.Tech** — *AI & Digital Intelligence for Metallurgy* **[Read More](https://tendermatcher.tech/ai-metallurgy)** # SteelAI — EAF Intelligence Explorer (MODEX) An industrial-grade AI demonstrator for Electric Arc Furnace (EAF) analytics at **Steel Authority of India Limited (MODEX)** — combining synthetic metallurgical datasets, automated feature engineering, and AutoML ensembles with SHAP explainability. ### Key Highlights - Generates full synthetic EAF datasets (~3000 rows × 200+ features) - Supports ensemble AutoML across RandomForest, XGBoost, LightGBM, CatBoost, etc. - Performs Optuna-based hyperparameter tuning per family - Uses meta-stacking (Ridge) and SHAP explainability - Includes “Recommended Target Variables” and Business Impact framing - Features annotated bibliography with direct research paper links ### Logging & Reproducibility - All generated CSVs, JSONs, and logs are stored under `./logs/` - Each session in Hugging Face ephemeral environment appends new timestamps - Users can download artifacts directly via the **Download Saved Files** tab *Ephemeral note*: Data and models are cleared when the Space rebuilds, but logs persist for the current runtime session. --- ### Credits Developed as part of SteelAI MODEX initiative for AI-driven metallurgy R&D.