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  1. agentic-travel-planner-langchain agentic-travel-planner-langchain Public

    Autonomous AI travel planning agent using LangChain + Groq LLM. Integrates 5 tools (weather, flights, hotels, attractions, budget) with Pydantic-validated inputs. Agent sequences API calls autonomo…

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    Loan default risk prediction on 404K records using XGBoost + SMOTE. Weighted F1 0.988, CV F1 0.88. SHAP explainability, MLflow experiment tracking, Streamlit deployment. Python · scikit-learn · XGB…

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  3. Voyage-Analytics Voyage-Analytics Public

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  4. amazon-delivery-time-prediction amazon-delivery-time-prediction Public

    Delivery time prediction on 43K Amazon orders using Random Forest. 57% RMSE reduction vs mean baseline (RMSE 22.3, R² 0.813). SHAP feature ranking, MLflow tracking. Python · scikit-learn · Random F…

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  5. tesla-stock-prediction-lstm-rnn tesla-stock-prediction-lstm-rnn Public

    Tesla stock price forecasting using LSTM and SimpleRNN for 1-, 5-, and 10-day horizons. GridSearchCV hyperparameter tuning. SimpleRNN best val loss 1.76e-4 (scaled). Deployed via Streamlit. Python …

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  6. deepcsat-nlp-customer-satisfaction deepcsat-nlp-customer-satisfaction Public

    E-commerce customer satisfaction classification on 85K support records. TF-IDF + Logistic Regression, 71.75% accuracy. Token-level SHAP identifies complaint phrases. Honest macro-F1 0.25 reported d…

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