import streamlit as st # Page title st.title("πŸ©ΊπŸ” Search Results") # Date and title st.markdown("**Date:** 08 Dec 2023") st.markdown("**Title:** Machine-learned molecular mechanics force field for the simulation of protein-ligand systems and beyond") st.markdown("[**Abstract Link**](https://arxiv.org/abs/2307.07085)") st.markdown("[**PDF Link**](https://arxiv.org/pdf/2307.07085)") st.write("---") # Sample table search_data = [ {"Date": "08 Dec 2023", "Title": "Machine-learned molecular mechanics force field for the simulation of protein-ligand systems and beyond", "Abstract Link": "https://arxiv.org/abs/2307.07085", "PDF Link": "https://arxiv.org/pdf/2307.07085"}, {"Date": "11 Apr 2023", "Title": "Design, Integration, and Field Evaluation of a Robotic Blossom Thinning System for Tree Fruit Crops", "Abstract Link": "https://arxiv.org/abs/2304.04919", "PDF Link": "https://arxiv.org/pdf/2304.04919"}, # Add more rows as needed... ] # Display table in Streamlit st.write("### πŸ“… Summary of Search Results") st.table(search_data) st.markdown(''' Discovery of Espaloma-0.3 (Hero's Journey) Ordinary World: Traditional force fields struggle with flexibility and extensibility. Call to Adventure: Researchers propose a new approach using graph neural networks. Refusal of the Call: Skeptics doubt the new method's feasibility without extensive computational resources. Meeting the Mentor: Collaboration with experts in quantum chemistry and machine learning. Crossing the Threshold: Initial tests show promising results, validating the concept. Tests, Allies, and Enemies: The method faces challenges with specific molecular systems but gains support. Approach to the Inmost Cave: Intensive training on a diverse dataset. Ordeal: Tackling edge cases and ensuring stability in simulations. Reward: The model achieves impressive accuracy and robustness. The Road Back: Publication and refinement for real-world applications. Resurrection: Acceptance and adoption in the wider scientific community. Return with the Elixir: A new, powerful tool for drug discovery and molecular simulations. Robotic Blossom Thinning (Rags to Riches) Initial Wholeness: Apple orchards rely heavily on manual labor. Fall from Grace: Inefficiency and cost concerns rise. Journey: Researchers develop a robotic solution for blossom thinning. Personal Resolve: Field tests reveal the robot's potential. Self-discovery: Optimizing the end-effector's performance. Major Victory: Significant reduction in labor and cost. False Defeat: Encountering technical issues during deployment. Final Victory: Successful large-scale adoption of the robotic system. Climax: Recognition of the system’s effectiveness and efficiency. Happily Ever After: Sustainable and cost-effective orchard management. Graph-Neural-Network Approach for Force Fields (Quest) Goals: Develop accurate and extendible force fields for large organic molecules. Challenges: Accurately modeling complex interactions. Journey: Combining physics-driven potentials with neural network models. Teamwork: Collaboration between physicists, chemists, and data scientists. Trials: Extensive testing on different molecular sizes. Transformation: The approach proves to be robust and extendible. Setbacks: Refining the model for diverse chemical domains. Redemption: Improved predictions for new molecular systems. Success: Establishing a new standard for force field development. Homecoming: Adoption in scientific research and industry applications. ''') # Streamlit app import streamlit as st st.title("πŸ©ΊπŸ” Search Results") # Add Stories st.header("Discovery of Espaloma-0.3 (Hero's Journey) πŸ§™β€β™‚οΈ") st.markdown("1. **Ordinary World:** Traditional force fields struggle with flexibility and extensibility.") st.markdown("2. **Call to Adventure:** Researchers propose a new approach using graph neural networks.") # Continue story steps... st.header("Robotic Blossom Thinning (Rags to Riches) πŸ› οΈ") st.markdown("1. **Initial Wholeness:** Apple orchards rely heavily on manual labor.") # Continue story steps... st.header("Graph-Neural-Network Approach for Force Fields (Quest) πŸ•΅οΈβ€β™‚οΈ") st.markdown("1. **Goals:** Develop accurate and extendible force fields for large organic molecules.") # Continue story steps... # Display Search Results with a table st.write("### πŸ“… Summary of Search Results") search_data = [ {"Date": "08 Dec 2023", "Title": "Machine-learned molecular mechanics force field for the simulation of protein-ligand systems and beyond", "Abstract Link": "https://arxiv.org/abs/2307.07085", "PDF Link": "https://arxiv.org/pdf/2307.07085"}, {"Date": "11 Apr 2023", "Title": "Design, Integration, and Field Evaluation of a Robotic Blossom Thinning System for Tree Fruit Crops", "Abstract Link": "https