In the contemporary landscape of scientific research, the transformative potential of AI has become increasingly evident. This is particularly true when applying scalable AI systems to high-performance computing (HPC) platforms. This exploration of scalable AI for science underscores the necessity of integrating large-scale computational resources with vast datasets to address complex scientific challenges. The success… →
Reinforcement learning from human feedback (RLHF) encourages generations to have high rewards, using a reward model trained on human preferences to align large language models (LLMs). However, RLHF has several unresolved issues. First, the fine-tuning process is often limited to small datasets, causing the model to become too specialized and miss the wide range of… →
Accelerating Drug Discovery with AI: The Role of AlphaFold in Targeting Liver Cancer: AI is significantly transforming the field of drug discovery, offering new ways to design and synthesize medicines more efficiently. A notable example is AlphaFold, an AI program developed by DeepMind, which has made groundbreaking advancements in predicting the three-dimensional structures of proteins.… →
CONCLUSIONS: These results suggest blood anti-dsDNA IgE as a non-invasive predictive marker of LN relapse. →
Prompt engineering is crucial to leveraging ChatGPT’s capabilities, enabling users to elicit relevant, accurate, high-quality responses from the model. As language models like ChatGPT become more sophisticated, mastering the art of crafting effective prompts has become essential. This comprehensive overview delves into prompt engineering principles, techniques, and best practices, providing a detailed understanding drawn from… →
Humans are versatile; they can quickly apply what they’ve learned from little examples to larger contexts by combining new and old information. Not only can they foresee possible setbacks and determine what is important for success, but they swiftly learn to adjust to different situations by practicing and receiving feedback on what works. This process… →
The field of research focuses on enhancing large multimodal models (LMMs) to process and understand extremely long video sequences. Video sequences offer valuable temporal information, but current LMMs need help to understand exceptionally long videos. This issue stems from the sheer volume of visual tokens generated by the vision encoders, making it challenging for existing… →
In the rapidly advancing field of Artificial Intelligence (AI), it is crucial to assess the outputs of models accurately. State-of-the-art AI systems, such as those built on the GPT-4 architecture, are trained via Reinforcement Learning with Human Feedback (RLHF). Because it is typically quicker and simpler for humans to evaluate AI-generated outputs than it is… →
Multimodal large language models (MLLMs) are advancing the integration of NLP and computer vision, essential for analyzing visual and textual data. These models are particularly valuable for interpreting complex charts in scientific papers, financial reports, and other documents. The primary challenge is enhancing these models’ ability to comprehend and interpret such charts. However, current benchmarks… →
CONCLUSION: Hydromorphone combined with ropivacaine for ESPB achieved a greater postoperative analgesic effect for patients receiving MRM under general anesthesia. The combined analgesia caused fewer adverse reactions and inhibited the expression level of the inflammatory factor IL-6 more effectively, thereby facilitating postoperative recovery. ESPB using hydromorphone with ropivacaine improved pain control post-MRM, reduced adverse effects,… →