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Browse files- Dockerfile +15 -12
- app.py +65 -0
- requirements.txt +7 -3
Dockerfile
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WORKDIR /app
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curl \
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git \
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&& rm -rf /var/lib/apt/lists/*
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COPY requirements.txt ./
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COPY src/ ./src/
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RUN pip3 install -r requirements.txt
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# Use a minimal base image with Python 3.9 installed
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FROM python:3.9
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# Set the working directory inside the container to /app
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WORKDIR /app
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# Copy all files from the current directory on the host to the container's /app directory
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COPY . .
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# Install Python dependencies listed in requirements.txt
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RUN pip3 install -r requirements.txt
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RUN useradd -m -u 1000 user
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USER user
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ENV HOME=/home/user \
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PATH=/home/user/.local/bin:$PATH
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WORKDIR $HOME/app
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COPY --chown=user . $HOME/app
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# Define the command to run the Streamlit app on port "8501" and make it accessible externally
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CMD ["streamlit", "run", "app.py", "--server.port=8501", "--server.address=0.0.0.0", "--server.enableXsrfProtection=false"]
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app.py
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import streamlit as st
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import pandas as pd
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from huggingface_hub import hf_hub_download
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import joblib
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# Download and load the model
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model_path = hf_hub_download(repo_id="KishoreKT/tourism_study_model", filename="best_tourism_study_model_v1.joblib")
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model = joblib.load(model_path)
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# Streamlit UI for Machine Failure Prediction
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st.title("Tourism Study App")
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st.write("""
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This application predicts the likelihood of a user opting to choose a tourism package.
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Please enter the relevant data below to get a prediction.
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""")
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# User input
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age = st.number_input("Age", min_value=18, max_value=100, value=35)
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type_of_contact = st.selectbox("Type of Contact", ["Company Invited", "Self Inquiry"])
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city_tier = st.selectbox("City Tier", ["Tier 1", "Tier 2", "Tier 3"])
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occupation = st.selectbox("Occupation", ["Salaried", "Small Business", "Large Business", "Freelancer"])
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gender = st.selectbox("Gender", ["Male", "Female"])
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number_of_person_visiting = st.number_input("Number of Persons Visiting", min_value=1, max_value=10, value=2)
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preferred_property_star = st.selectbox("Preferred Property Star", [3, 4, 5])
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marital_status = st.selectbox("Marital Status", ["Single", "Married", "Divorced"])
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number_of_trips = st.number_input("Number of Trips (Annual)", min_value=0, max_value=20, value=3)
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passport = st.selectbox("Passport", ["Yes", "No"])
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own_car = st.selectbox("Own Car", ["Yes", "No"])
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number_of_children_visiting = st.number_input("Number of Children Visiting", min_value=0, max_value=5, value=0)
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designation = st.selectbox("Designation", ["Executive", "Manager", "Senior Manager", "AVP", "VP"])
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monthly_income = st.number_input("Monthly Income", min_value=0, max_value=200000, value=25000, step=1000)
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# Customer Interaction Data
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pitch_satisfaction_score = st.slider("Pitch Satisfaction Score", min_value=1, max_value=5, value=3)
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product_pitched = st.selectbox("Product Pitched", ["Basic", "Standard", "Deluxe", "Super Deluxe", "King"])
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number_of_followups = st.number_input("Number of Follow-ups", min_value=0, max_value=10, value=3)
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duration_of_pitch = st.number_input("Duration of Pitch (minutes)", min_value=5, max_value=120, value=30)
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# Assemble input into DataFrame
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input_data = pd.DataFrame([{
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'Age': age,
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'TypeofContact': type_of_contact,
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'CityTier': city_tier,
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'Occupation': occupation,
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'Gender': gender,
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'NumberOfPersonVisiting': number_of_person_visiting,
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'PreferredPropertyStar': preferred_property_star,
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'MaritalStatus': marital_status,
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'NumberOfTrips': number_of_trips,
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'Passport': 1 if passport == "Yes" else 0,
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'OwnCar': 1 if own_car == "Yes" else 0,
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'NumberOfChildrenVisiting': number_of_children_visiting,
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'Designation': designation,
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'MonthlyIncome': monthly_income,
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'PitchSatisfactionScore': pitch_satisfaction_score,
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'ProductPitched': product_pitched,
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'NumberOfFollowups': number_of_followups,
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'DurationOfPitch': duration_of_pitch
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}])
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if st.button("Predict User Choice for Opting Package"):
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prediction = model.predict(input_data)[0]
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result = "User Opt is YES" if prediction == 1 else "User Opt is NO"
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st.subheader("Prediction Result:")
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st.success(f"The model predicts: **{result}**")
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requirements.txt
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streamlit
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pandas==2.2.2
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huggingface_hub==0.32.6
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streamlit==1.43.2
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joblib==1.5.1
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scikit-learn==1.6.0
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xgboost==2.1.4
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mlflow==3.0.1
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