


Definition of interaction methods: interaction between model quantification and edge artificial intelligence
The integration of artificial intelligence and edge computing has brought revolutionary changes to many industries. Among them, rapid innovation in model quantification plays a key role. Model quantization is a technique that speeds up calculations by improving portability and reducing model size
The rewritten content is: The computing power of edge devices is limited and cannot meet the needs of deploying high-precision models. Therefore, model quantization technology is introduced to bridge this gap to achieve faster, more efficient, and more cost-effective edge AI solutions. Breakthrough technologies such as Generalized Post-Training Quantization (GPTQ), Low-Rank Adaptation (LoRA), and Quantitative Low-Rank Adaptation (QLoRA) promise to facilitate analysis and decision-making as real-time data is generated
By combining edge AI with appropriate Combining the tools and technologies, we can redefine the way we interact with data and data-driven applications
Why choose edge artificial intelligence?
Edge artificial intelligence The goal is to push data processing and models closer to where the data is generated, such as remote servers, tablets, IoT devices, or smartphones. This enables low-latency, real-time artificial intelligence. It is expected that by 2025, more than half of deep neural network data analysis will be performed at the edge. This paradigm shift will bring multiple benefits:
- Reduced latency: By processing data directly on the device, edge AI reduces the need to transfer data back and forth to the cloud. This is critical for applications that rely on real-time data and require fast responses.
- Reduce cost and complexity: Processing data locally at the edge eliminates the expensive data transmission costs of sending information back and forth.
- Privacy Protection: Data remains on the device, reducing security risks of data transmission and data leakage.
- Better scalability: A decentralized approach to edge AI makes it easier to scale applications without relying on the processing power of central servers.
For example, manufacturers can apply edge AI technology to their processes for predictive maintenance, quality control, and defect detection. By running artificial intelligence on smart machines and sensors and analyzing the data locally, manufacturers can better leverage real-time data, reduce downtime, and improve production processes and efficiency
The role of model quantification
For edge AI to work, AI models need to optimize performance without compromising accuracy. As AI models become more complex and larger, they become more difficult to process. This brings challenges to deploying artificial intelligence models at the edge, because edge devices often have limited resources and limitations in their ability to support such models
The numerical accuracy of model parameters can be reduced through model quantization, for example, from 32-bit to 32-bit. Floating point numbers are reduced to 8-bit integers, making the model more lightweight and suitable for deployment on resource-constrained devices such as mobile phones, edge devices, and embedded systems
GPTQ, LoRA and QLoRA Technology has become a potential game changer in the field of model quantification. Three technologies, GPTQ, LoRA and QLoRA, have emerged as potential game-changers in the field of model quantization
- GPTQ involves compressing models after training. It is ideal for deploying models in memory-constrained environments.
- LoRA involves fine-tuning large pre-trained models for inference. Specifically, it fine-tunes smaller matrices (called LoRA adapters) that make up the large matrix of the pre-trained model.
- QLoRA is a more memory efficient option that utilizes GPU memory for pre-trained models. LoRA and QLoRA are particularly useful when adapting models to new tasks or datasets with limited computational resources.
Choosing from these methods depends largely on the unique needs of the project, whether the project is in the fine-tuning phase or the deployment phase, and whether you have computing resources at your disposal. By using these quantitative techniques, developers can effectively bring AI to the edge, striking the balance between performance and efficiency that is critical for a wide range of applications
Edge AI Use Cases and Data Platform
The applications of edge artificial intelligence are very wide. From smart cameras that process images of rail car inspections at train stations, to wearable health devices that detect abnormalities in the wearer’s vital signs, to smart sensors that monitor inventory on retailers’ shelves, the possibilities are endless. As a result, IDC predicts that edge computing spending will reach $317 billion in 2028, and the edge is redefining the way organizations process data demand will grow rapidly. Such a platform could facilitate local data processing while delivering all the benefits of edge AI, including reduced latency and enhanced data privacy
To facilitate the rapid development of edge AI, a persistent data layer is critical for local and cloud-based data management, distribution, and processing. With the emergence of multimodal AI models, a unified platform capable of processing different types of data becomes critical to meet the operational needs of edge computing. Having a unified data platform enables AI models to seamlessly access and interact with local data stores in both online and offline environments. In addition, distributed inference is also expected to solve current data privacy and compliance issues
As we move towards intelligent edge devices, the convergence of artificial intelligence, edge computing and edge database management will be the precursor to fast, real-time and The heart of the age of security solutions. Going forward, organizations can focus on implementing sophisticated edge policies to efficiently and securely manage AI workloads and simplify the use of data in the business
The above is the detailed content of Definition of interaction methods: interaction between model quantification and edge artificial intelligence. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics





This site reported on June 27 that Jianying is a video editing software developed by FaceMeng Technology, a subsidiary of ByteDance. It relies on the Douyin platform and basically produces short video content for users of the platform. It is compatible with iOS, Android, and Windows. , MacOS and other operating systems. Jianying officially announced the upgrade of its membership system and launched a new SVIP, which includes a variety of AI black technologies, such as intelligent translation, intelligent highlighting, intelligent packaging, digital human synthesis, etc. In terms of price, the monthly fee for clipping SVIP is 79 yuan, the annual fee is 599 yuan (note on this site: equivalent to 49.9 yuan per month), the continuous monthly subscription is 59 yuan per month, and the continuous annual subscription is 499 yuan per year (equivalent to 41.6 yuan per month) . In addition, the cut official also stated that in order to improve the user experience, those who have subscribed to the original VIP

Improve developer productivity, efficiency, and accuracy by incorporating retrieval-enhanced generation and semantic memory into AI coding assistants. Translated from EnhancingAICodingAssistantswithContextUsingRAGandSEM-RAG, author JanakiramMSV. While basic AI programming assistants are naturally helpful, they often fail to provide the most relevant and correct code suggestions because they rely on a general understanding of the software language and the most common patterns of writing software. The code generated by these coding assistants is suitable for solving the problems they are responsible for solving, but often does not conform to the coding standards, conventions and styles of the individual teams. This often results in suggestions that need to be modified or refined in order for the code to be accepted into the application

Large Language Models (LLMs) are trained on huge text databases, where they acquire large amounts of real-world knowledge. This knowledge is embedded into their parameters and can then be used when needed. The knowledge of these models is "reified" at the end of training. At the end of pre-training, the model actually stops learning. Align or fine-tune the model to learn how to leverage this knowledge and respond more naturally to user questions. But sometimes model knowledge is not enough, and although the model can access external content through RAG, it is considered beneficial to adapt the model to new domains through fine-tuning. This fine-tuning is performed using input from human annotators or other LLM creations, where the model encounters additional real-world knowledge and integrates it

To learn more about AIGC, please visit: 51CTOAI.x Community https://www.51cto.com/aigc/Translator|Jingyan Reviewer|Chonglou is different from the traditional question bank that can be seen everywhere on the Internet. These questions It requires thinking outside the box. Large Language Models (LLMs) are increasingly important in the fields of data science, generative artificial intelligence (GenAI), and artificial intelligence. These complex algorithms enhance human skills and drive efficiency and innovation in many industries, becoming the key for companies to remain competitive. LLM has a wide range of applications. It can be used in fields such as natural language processing, text generation, speech recognition and recommendation systems. By learning from large amounts of data, LLM is able to generate text

Machine learning is an important branch of artificial intelligence that gives computers the ability to learn from data and improve their capabilities without being explicitly programmed. Machine learning has a wide range of applications in various fields, from image recognition and natural language processing to recommendation systems and fraud detection, and it is changing the way we live. There are many different methods and theories in the field of machine learning, among which the five most influential methods are called the "Five Schools of Machine Learning". The five major schools are the symbolic school, the connectionist school, the evolutionary school, the Bayesian school and the analogy school. 1. Symbolism, also known as symbolism, emphasizes the use of symbols for logical reasoning and expression of knowledge. This school of thought believes that learning is a process of reverse deduction, through existing

Editor |ScienceAI Question Answering (QA) data set plays a vital role in promoting natural language processing (NLP) research. High-quality QA data sets can not only be used to fine-tune models, but also effectively evaluate the capabilities of large language models (LLM), especially the ability to understand and reason about scientific knowledge. Although there are currently many scientific QA data sets covering medicine, chemistry, biology and other fields, these data sets still have some shortcomings. First, the data form is relatively simple, most of which are multiple-choice questions. They are easy to evaluate, but limit the model's answer selection range and cannot fully test the model's ability to answer scientific questions. In contrast, open-ended Q&A

According to news from this site on August 1, SK Hynix released a blog post today (August 1), announcing that it will attend the Global Semiconductor Memory Summit FMS2024 to be held in Santa Clara, California, USA from August 6 to 8, showcasing many new technologies. generation product. Introduction to the Future Memory and Storage Summit (FutureMemoryandStorage), formerly the Flash Memory Summit (FlashMemorySummit) mainly for NAND suppliers, in the context of increasing attention to artificial intelligence technology, this year was renamed the Future Memory and Storage Summit (FutureMemoryandStorage) to invite DRAM and storage vendors and many more players. New product SK hynix launched last year

Editor | KX In the field of drug research and development, accurately and effectively predicting the binding affinity of proteins and ligands is crucial for drug screening and optimization. However, current studies do not take into account the important role of molecular surface information in protein-ligand interactions. Based on this, researchers from Xiamen University proposed a novel multi-modal feature extraction (MFE) framework, which for the first time combines information on protein surface, 3D structure and sequence, and uses a cross-attention mechanism to compare different modalities. feature alignment. Experimental results demonstrate that this method achieves state-of-the-art performance in predicting protein-ligand binding affinities. Furthermore, ablation studies demonstrate the effectiveness and necessity of protein surface information and multimodal feature alignment within this framework. Related research begins with "S
