bikrammaharjan's picture
added ford and tesla
2bf380c
from datetime import date
from datetime import datetime
import re
import numpy as np
import pandas as pd
from PIL import Image
import plotly.express as px
import plotly.graph_objects as go
import streamlit as st
import time
from plotly.subplots import make_subplots
# Read CSV file into pandas and extract timestamp data
# dfSentiment = ### YOUR LINE OF CODE HERE
dfSentiment = pd.read_csv('final_sentiment_data.csv')
dfSentiment['timestamp'] = [datetime.strptime(dt, '%Y-%m-%d') for dt in dfSentiment['timestamp'].tolist()]
# Multi-select columns to build chart
col_list = dfSentiment.columns.tolist()
r_ticker = re.compile(".*ticker")
ticker_cols = list(['FORD', 'TSLA'])
r_sentiment = re.compile(".*sentiment")
sentiment_cols = list(filter(r_sentiment.match, col_list))
r_post = re.compile(".*post")
post_list = list(filter(r_post.match, col_list))
r_perc= re.compile(".*perc")
perc_list = list(filter(r_perc.match, col_list))
r_close = re.compile(".*close")
close_list = list(filter(r_close.match, col_list))
r_volume = re.compile(".*volume")
volume_list = list(filter(r_volume.match, col_list))
sentiment_cols = sentiment_cols + post_list
stocks_cols = close_list + volume_list
# Config for page
st.set_page_config(
page_title= 'TSLA Stock Sentiment Analyzer with Reddit comments',
page_icon='🚙',
layout='wide',
)
with st.sidebar:
# FourthBrain logo to sidebar
fourthbrain_logo = Image.open('./images/fourthbrain_logo.png')
st.image([fourthbrain_logo], width=200)
# Types of Stock
stock_ticker_select = st.selectbox('Select Stock Ticker', ticker_cols)
# Date selection filters
start_date_filter = st.date_input(
'Start Date',
min(dfSentiment['timestamp']),
min_value=min(dfSentiment['timestamp']),
max_value=max(dfSentiment['timestamp'])
)
end_date_filter = st.date_input(
'End Date',
max(dfSentiment['timestamp']),
min_value=min(dfSentiment['timestamp']),
max_value=max(dfSentiment['timestamp'])
)
sentiment_select = st.selectbox('Select Sentiment/Reddit Data', sentiment_cols)
stock_select = st.selectbox('Select Stock Data', stocks_cols)
# Banner with TSLA and Reddit images
tsla_logo = Image.open('./images/tsla_logo.png')
ford_logo = Image.open('./images/ford_logo.png')
reddit_logo = Image.open('./images/reddit_logo.png')
spotlight_logo = tsla_logo if stock_ticker_select == 'TSLA' else ford_logo
st.image([spotlight_logo, reddit_logo], width=150)
# dashboard title
st.title(stock_ticker_select + ' Subreddit and Stock Price')
## dataframe filter
# start date
dfSentiment = dfSentiment[dfSentiment['stock_ticker'] == stock_ticker_select]
dfSentiment = dfSentiment[dfSentiment['timestamp'] >= datetime(start_date_filter.year, start_date_filter.month, start_date_filter.day)]
# end date
dfSentiment = dfSentiment[dfSentiment['timestamp'] <= datetime(end_date_filter.year, end_date_filter.month, end_date_filter.day)]
dfSentiment = dfSentiment.reset_index(drop=True)
# creating a single-element container
placeholder = st.empty()
# near real-time / live feed simulation
for i in range(1, len(dfSentiment)-1):
# creating KPIs
last_close = dfSentiment['close'][i]
last_close_lag1 = dfSentiment['close'][i-1]
last_sentiment = dfSentiment['sentiment_score'][i]
last_sentiment_lag1 = dfSentiment['sentiment_score'][i-1]
with placeholder.container():
# create columns
kpi1, kpi2 = st.columns(2)
# fill in those three columns with respective metrics or KPIs
kpi1.metric(
label='Sentiment Score',
value=round(last_sentiment, 3),
delta=round(last_sentiment_lag1, 3),
)
kpi2.metric(
label='Last Closing Price',
value=round(last_close),
delta=round(last_close - last_close_lag1)
)
# create two columns for charts
fig_col1, fig_col2 = st.columns(2)
with fig_col1:
# Add traces
fig=make_subplots(specs=[[{"secondary_y":True}]])
fig.add_trace(
go.Scatter(
x=dfSentiment['timestamp'][0:i],
y=dfSentiment[sentiment_select][0:i],
name=sentiment_select,
mode='lines',
hoverinfo='none',
)
)
if sentiment_select.startswith('perc') == True:
yaxis_label = '% Change Sentiment'
elif sentiment_select in sentiment_cols:
yaxis_label = 'Sentiment Score'
elif sentiment_select in post_list:
yaxis_label = 'Volume'
fig.layout.yaxis.title=yaxis_label
if stock_select.startswith('perc') == True:
fig.add_trace(
go.Scatter(
x=dfSentiment['timestamp'][0:i],
y=dfSentiment[stock_select][0:i],
name=stock_select,
mode='lines',
hoverinfo='none',
yaxis='y2',
)
)
fig.layout.yaxis2.title='% Change Stock Price ($US)'
elif stock_select == 'volume':
fig.add_trace(
go.Scatter(
x=dfSentiment['timestamp'][0:i],
y=dfSentiment[stock_select][0:i],
name=stock_select,
mode='lines',
hoverinfo='none',
yaxis='y2',
)
)
fig.layout.yaxis2.title="Shares Traded"
else:
fig.add_trace(
go.Scatter(
x=dfSentiment['timestamp'][0:i],
y=dfSentiment[stock_select][0:i],
name=stock_select,
mode='lines',
hoverinfo='none',
yaxis='y2',
)
)
fig.layout.yaxis2.title='Stock Price ($USD)'
fig.layout.xaxis.title='Timestamp'
# write the figure throught streamlit
st.write(fig)
st.markdown('### Detailed Data View')
st.dataframe(dfSentiment.iloc[:, 1:][0:i])
time.sleep(1)