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JackKuo666/README.md

About Me

👋 Hi, I’m Jack Guo
📍 Based in Hangzhou, China
🐍 Python Enthusiast | AI Researcher
🧠 Focus: LLM Agents · Foundation Models · NLP · Data Mining
🔬 Applying AI to advance Life Sciences
📄 Learn more: CV / Portfolio

The 2024 Nobel Prizes in Physics and Chemistry were awarded to the fields of artificial intelligence and AI-driven life sciences, respectively. This landmark event heralds to the world that we are now in the midst of a paradigm-shifting revolution in scientific research, spearheaded by AI.

As we stand today, the exploration of life sciences has fully entered the era of LLMs. Leveraging vast datasets and immense computational power for training and optimization, these LLMs have demonstrated unparalleled advantages in precision, efficiency, transferability, and emergent capabilities. They are now pushing the boundaries of human understanding of life's complexity in ways never before imagined.

The transformative impact of LLMs on scientific research extends far beyond algorithmic performance. More profoundly, they have catalyzed the emergence of a new generation of infrastructure and platform systems, shifting the paradigm of scientific discovery from isolated model breakthroughs to an end-to-end intelligent closed loop. This enables autonomous decision-making, dynamic optimization, and continuous evolution for high-complexity, large-scale research tasks.

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  1. NLP_basis NLP_basis Public

    This is the notes and code I took while studying an NLP tutorial [2019 Latest AI Natural Language Processing Deep Machine Learning Top Project Practical Course]

    Python 446 173

  2. Data_Structure_with_Python Data_Structure_with_Python Public

    This is my notes and code when I was learning "Data Structure Based on Python"

    Python 127 57

  3. Similarity_matching_system Similarity_matching_system Public

    This is a small NLP project "E-commerce Title Data Similarity Matching System". The usage methods are: tfidf+word bag model, cosine similarity, word2vec

    Jupyter Notebook 25 9

  4. SLMP_demo SLMP_demo Public

    This is the front-end code and back-end code of our paper《SLMP: A Scientific Literature Management Platform Based on Large Language Models》ICKG2024

    Vue

  5. AMP-SEMiner-Portal AMP-SEMiner-Portal Public

    This is the portal code for our new article “Unveiling the Evolution of Antimicrobial Peptides in Gut Microbes via Foundation Model-Powered Framework”

    Vue 2

  6. LLM-BioDataExtractor LLM-BioDataExtractor Public

    This is the pipeline of our new article "Enzyme Co-Scientist: Harnessing Large Language Models for Enzyme Kinetic Data Extraction from Literature'

    Jupyter Notebook 12 1