import streamlit as st import requests # Streamlit interface setup st.title('Video Summary Interface') # Creating tabs, tab1, tab2, tab3, tab4, tab5 = st.tabs(["Project Description", "Video Uploader", "Video Indexer", "Video Prompt", "Unique Value Add"]) with tab1: st.header("Project Description") st.write("Here you can describe the project in detail.") image_path = 'data/projectflow.png' # Display the image st.image(image_path, caption='Project Flow Diagram') # Add more components as needed with tab2: st.header("Video Uploader") st.write("This tab can be used to display Scrum-related data and analytics.") # You can use things like st.dataframe(df) to show data image_path2 = 'data/quantumai.png' # Display the image st.image(image_path2, caption='Synthetic Data') # Add more components as needed # Create a link to an external URL url = "https://chat.openai.com/g/g-RjiG3D1mm-velocity-scrum-master" link_text = "Velocity Scrum Master" # Use Markdown to create the link st.markdown(f'[**{link_text}**]({url})') with tab3: st.header("Video Indexer") st.write("Information and controls related to the Scrum TruEra Assistants API.") # Integration and API controls could be managed here with tab4: st.header("Video Prompt") st.write("Information and controls related to the Scrum TruEra Assistants API.") # Input for modifying the prompt prompt = st.text_input("Enter your prompt:", "list the top 4 job interview mistakes and how to improve") # Slider to adjust the number in the prompt number = st.slider("Select the number of top mistakes:", min_value=1, max_value=10, value=4) # Update the prompt with the chosen number updated_prompt = prompt.replace("4", str(number)) # Button to send the request if st.button("Summarize Video"): BASE_URL = "https://api.twelvelabs.io/v1.2" api_key = "tlk_3CPMVGM0ZPTKNT2TKQ3Y62TA7ZY9" data = { "video_id": "6636cf7fd1cd5a287c957cf5", "type": "summary", "prompt": updated_prompt } # Send the request response = requests.post(f"{BASE_URL}/summarize", json=data, headers={"x-api-key": api_key}) # Check if the response is successful if response.status_code == 200: st.text_area("Summary:", response.json()['summary'], height=300) else: st.error("Failed to fetch summary: " + response.text) # Run this script using the following command: # streamlit run your_script_name.py with tab5: st.header("Unique Value Add") st.write("Information and controls related to the Scrum TruEra Assistants API.") # Integration and API controls could be managed here