StreamlitTest / app.py
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import streamlit as st
import pandas as pd
import matplotlib.pyplot as plt
import seaborn as sns
# read the dataset
df = pd.read_csv('diamonds.csv')
st.title('Diamond APP sorting festivity. Noted by Dimitri')
df = df.drop(["Unnamed: 0"], axis=1)
#Potential diamonds with a impossible dimensions are dropped, for example a diamond that has a 0 in x, y or z should not be possible.
df = df.drop(df[df["x"]==0].index)
df = df.drop(df[df["y"]==0].index)
df = df.drop(df[df["z"]==0].index)
st.image('diamonds.jpg')
st.write(f"the price range is {326} to {18823}")
# users set the price range
min_price = st.number_input('Input minimum price', min_value=int(df['price'].min()), max_value=int(df['price'].max()), value=int(df['price'].min()))
max_price = st.number_input('Input maximum price', min_value=int(df['price'].min()), max_value=int(df['price'].max()), value=int(df['price'].max()))
#users select
selected_cuts = st.multiselect('choosing cut', df['cut'].unique())
selected_cuts = st.multiselect('choosing color', df['color'].unique())
selected_cuts = st.multiselect('choosing clarity', df['clarity'].unique())
selected_cuts = st.multiselect('choosing carat', df['carat'].unique())
# select the diamonds
filtered_diamonds = df[(df['price'] >= min_price) & (df['price'] <= max_price)]
# show the results
if not filtered_diamonds.empty:
st.write(f"find {len(filtered_diamonds)} diamonds for you.")
st.dataframe(filtered_diamonds)
# Create a scatterplot based on the selected criteria
fig, ax = plt.subplots()
sns.scatterplot(x='carat', y='price', data=filtered_diamonds, ax=ax)
ax.set_title('Prices by Carat')
st.pyplot(fig)
else:
st.write("No diamonds fit you")