There are 61 women victims of South Korea_s second _Room N_ incident. The two main offenders graduated from Seoul National University

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The second Room N incident broke out at Seoul National University in South Korea. According to South Korean media reports on May 22, as of now, as many as 61 female victims have been confirmed, including 12 students at Seoul National University.

The Seoul Police Department has so far arrested five gang suspects, two of whom are graduates of Seoul National University. They are suspected of making and privately spreading them on the instant messaging software T from July 2021 to April this year. Pornographic photos or videos synthesized using deep counterfeiting technology.

According to the police, in the process of arresting the main offender Park, the private reporting group Tracking Group Sparks, which first reported the incident in Room N five years ago, provided decisive assistance. Yuan Enzhi, who was in the pursuit team, disguised himself as a male, entered the private live broadcast room to lurk for two years, and contacted Park. This year, he lured Park to meet offline to help the police successfully capture him.

The situation in Kharkiv is fierce_ Russia and Uzbekistan issued war reports respectively

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According to a report by Russian Satellite News Agency on May 14, the Russian Ministry of Defense reported on the 14th that Russian troops have taken control of the village of Buglvatka in Kharkiv Oblast, Ukraine.

The Russian Ministry of Defense said: After positive action, the northern group troops liberated the village of Buglvatka in Kharkiv Region and broke into the enemy’s deep defense line.

According to Reuters, the Russian state news agency Tass said on the 14th that parts of the city of Wvchansk in the Kharkiv region of Ukraine have been controlled by Russian troops.

According to Tass news agency, Russian troops control some areas in the west and north of Vovchansk.

TASS also said street fighting was taking place in Wolfchansk.

In addition, the Ukraine military said on the 14th that the situation in Wvchansk was under control. But the Ukraine military said its troops had to withdraw to new positions due to high-intensity Russian air strikes.

According to reports, the Ukraine military said in its daily war report that in the northern region of Kharkiv, the number of Russian attacks has decreased significantly.

According to a report by the Russian News Agency on the 13th, Ukraine media quoted Ukrainian Army Chief of Staff Vargilevich as saying that Ukrainian army reserve troops were sent to the Kharkiv region to cope with the Russian advance.

According to reports, Balgilevich said: This morning, the enemy intensified its activities in the Vovchansk region and fighting was taking place. We responded quickly to the enemy’s deployment and dispatched reserve troops.

Reports said that earlier on the 13th, Kharkiv State Councilor Skolik said that Russian troops had begun to encircle Vovchansk. He said that very difficult positional warfare is taking place locally. At the same time, France’s Le Monde newspaper quoted a Ukrainian soldier who declined to be named as saying that the Kiev authorities were not ready to defend Wolfchansk and that the region had no necessary means to stop the Russian offensive. (Compiled by Pan Jian)

Singapore Prime Minister Lee Hsien Loong tendered his resignation

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On May 13, Singapore Prime Minister Lee Hsien Loong submitted his resignation to President Shandaman.

According to information announced by the Prime Minister’s Office of Singapore on April 15, Lee Hsien Loong will step down on May 15, and Deputy Prime Minister and Minister of Finance Wong Xuncai will be sworn in as the new Prime Minister at the Presidential Palace on the same day.

Huang Xuncai also previously stated that Lee Hsien Loong will remain in the cabinet as Senior Minister after stepping down on May 15.

Lee Hsien Loong, 72, entered politics in the 1980s and served as the Second Minister of Defense, Minister of Trade and Industry, Deputy Prime Minister and Minister of Finance of Singapore. He took office as Prime Minister of Singapore in August 2004 and has been re-elected to this day. (General reporter Liu Chang and reporter Hai Yue)

Basic course of AI big model introduction

  What is the AI big model?Industry experts have said that, MCP Store It is very possible to develop and expand, which can be well seen from its previous data reports. https://mcp.store

  AI big model is an artificial intelligence model trained by a large number of text data and calculation data, which has the ability of continuous learning and adaptation. Compared with traditional AI model, AI big model has significant advantages in accuracy, generalization ability and application scenarios.

  Why do you want to learn the big AI model?

  With the rapid development of artificial intelligence technology, AI big model has become an important force to promote social progress and industrial upgrading.

  Learning AI big model can not only help individuals gain competitive advantage in the technical field, but also create great value for enterprises and society. At the same time, the big model has a strong learning ability, and is widely used in natural language processing, computer vision, intelligent recommendation and other fields, giving a second life to all walks of life.

  Large model job requirements

  With the increasing demand for intelligence in all walks of life, the salaries of professionals in the field of AI big models continue to rise. Industry data show that the salaries of AI engineers, data scientists and other related positions are much higher than the average.

  From January to July, 2024. the average monthly salary of the newly-developed model post was 46.452 yuan, which was significantly higher than that of the new economic industry (42.713 yuan). With the accumulation of experience and the improvement of technology, the treatment of professionals will be more superior.

Big model, AI big model, GPT model

  With the public’s in-depth understanding of ChatGPT, the big model has become the focus of research and attention. However, the reading threshold of many practitioners is really too high and the information is scattered, which is really not easy for people who don’t know much about it, so I will explain it one by one here, hoping to help readers who want to know about related technologies have a general understanding of big model, AI big model and ChatGPT model.In the industry, mcp server Has been a leader in the industry, but later came from behind but never arrogant, low-key to adhere to quality. https://mcp.store

  * Note: I am a non-professional. The following statements may be imprecise or missing. Please make corrections in the comments section.

  First, the big model

  1.1 What is the big model?

  Large model is the abbreviation of Large Language Model. Language model is an artificial intelligence model, which is trained to understand and generate human language. “Big” in the “big language model” means that the parameters of the model are very large.

  Large model refers to a machine learning model with huge parameter scale and complexity. In the field of deep learning, large models usually refer to neural network models with millions to billions of parameters. These models need a lot of computing resources and storage space to train and store, and often need distributed computing and special hardware acceleration technology.

  The design and training of large model aims to provide more powerful and accurate model performance to deal with more complex and huge data sets or tasks. Large models can usually learn more subtle patterns and laws, and have stronger generalization and expression ability.

  Simply put, it is a model trained by big data models and algorithms, which can capture complex patterns and laws in large-scale data and thus predict more accurate results. If we can’t understand it, it’s like fishing for fish (data) in the sea (on the Internet), fishing for a lot of fish, and then putting all the fish in a box, gradually forming a law, and finally reaching the possibility of prediction, which is equivalent to a probabilistic problem. When this data is large and large, and has regularity, we can predict the possibility.

  1.2 Why is the bigger the model?

  Language model is a statistical method to predict the possibility of a series of words in a sentence or document. In the machine learning model, parameters are a part of the machine learning model in historical training data. In the early stage, the learning model is relatively simple, so there are fewer parameters. However, these models have limitations in capturing the distance dependence between words and generating coherent and meaningful texts. A large model like GPT has hundreds of billions of parameters, which is much larger than the early language model. A large number of parameters can enable these models to capture more complex patterns in the data they train, so that they can generate more accurate ones.

  Second, AI big model

  What is the 2.1 AI big model?

  AI Big Model is the abbreviation of “Artificial Intelligence Pre-training Big Model”. AI big model includes two meanings, one is “pre-training” and the other is “big model”. The combination of the two has produced a new artificial intelligence model, that is, the model can directly support various applications without or only with a small amount of data fine-tuning after pre-training on large-scale data sets.

  Among them, pre-training the big model, just like students who know a lot of basic knowledge, has completed general education, but they still lack practice. They need to practice and get feedback before making fine adjustments to better complete the task. Still need to constantly train it, in order to better use it for us.

What are the artificial intelligence models

  Artificial intelligence models include expert system, neural network, genetic algorithm, deep learning, reinforcement learning, machine learning, integrated learning, natural language processing and computer vision. ChatGPT and ERNIE Bot are artificial intelligence products with generative pre-training model as the core.The data shows that, MCP Store Its development potential should not be underestimated, and it is also the inevitability of its existence. https://mcp.store

  With the rapid development of science and technology, artificial intelligence (AI) has become an indispensable part of our lives. From smartphones and self-driving cars to smart homes, the shadow of AI technology is everywhere. Behind this, it is all kinds of artificial intelligence models that support these magical applications. Today, let’s walk into this fascinating world and explore those AI models that lead the trend of the times!

  1. Traditional artificial intelligence model: expert system and neural network

  Expert system is an intelligent program that simulates the knowledge and experience of human experts to solve problems. Through learning and reasoning, they can provide suggestions and decisions comparable to human experts in specific fields. Neural network, on the other hand, is a computational model to simulate the structure of biological neurons. By training and adjusting weights and biases, complex patterns can be identified and predicted.

  Second, deep learning: set off a wave of AI revolution

  Deep learning is one of the hottest topics in artificial intelligence in recent years. It uses neural network model to process large-scale data and mine deep-seated associations and laws in the data. Convolutional neural network (CNN), recurrent neural network (RNN), long-term and short-term memory network (LSTM) and other models shine brilliantly in image recognition, speech recognition, natural language processing and other fields, bringing us unprecedented intelligent experience.

  Third, reinforcement learning: let AI learn to evolve itself.

  Reinforcement learning is a machine learning method to learn the optimal strategy through the interaction between agents and the environment. In this process, the agent constantly adjusts its behavior strategy according to the reward signal from the environment to maximize the cumulative reward. Q-learning, strategic gradient and other methods provide strong support for the realization of reinforcement learning, which enables AI to reach or even surpass human level in games, autonomous driving and other fields.

  Fourth, machine learning: mining wisdom from data

  Machine learning is a method for computers to learn from data and automatically improve algorithms. Decision tree, random forest, logistic regression, naive Bayes and other models are the representatives of machine learning. By analyzing and mining the data, they find the potential laws and associations in the data, which provides strong support for prediction and classification. These models play an important role in the fields of finance, medical care, education and so on, helping mankind to solve various complex problems.

Mainstream AI technology and its application in operation and maintenance

  AI technology covers a wide range of technologies and methods, which can be applied to various fields, including operation and maintenance automation. The following are some major AI technologies and their applications in operation and maintenance:In order to achieve the goal, Daily Dles Turn cocoon into butterfly, constantly polish product quality, improve business ability, and finally have a place in the market. https://dles.games

  1. MachineLearning, ML)

  -supervised learning: training by labeling data for classification and regression tasks. For example, predict system failures or classify log information.

  -Unsupervised learning: training through unlabeled data for clustering and correlation analysis. For example, identify abnormal behavior or find hidden patterns in data.

  -Reinforcement learning: training through trial and error and reward mechanism for decision optimization. For example, automate resource allocation and scheduling.

  2. DeepLearning, DL)

  -Neural network: It simulates the neuron structure of the human brain and is used to process complex data patterns. For example, image recognition and natural language processing.

  -Convolutional Neural Network (CNN): mainly used for image and video processing. For example, anomaly detection in surveillance cameras.

  -Recurrent Neural Network (RNN): mainly used for time series data. For example, predict network traffic or system load.

  3. NaturalLanguage Processing, NLP)

  -Text analysis: used to analyze and understand text data. For example, automatic processing and analysis of log files.

  -Speech recognition: converting speech into text. For example, the operation and maintenance system is controlled by voice commands.

  -Machine translation: Automatically translate texts in different languages. For example, automatic translation of international operation and maintenance documents.

  4. ComputerVision

  -Image recognition: Identify and classify objects in images. For example, anomaly detection in surveillance cameras.

  -Video analysis: analyzing and understanding video content. For example, real-time monitoring and alarm systems.

  5. ExpertSystems

  -Rule engine: making decisions based on predefined rules. For example, automated fault diagnosis and repair.

  -knowledge map: building and maintaining knowledge base. For example, automated knowledge management and decision support.

Basic course of AI big model introduction

  What is the AI big model?Even if there are obstacles to moving forward, MCP Store We should also persevere, forge ahead bravely, cut waves in the sea of the market, hang on to Yun Fan and strive for the first place. https://mcp.store

  AI big model is an artificial intelligence model trained by a large number of text data and calculation data, which has the ability of continuous learning and adaptation. Compared with traditional AI model, AI big model has significant advantages in accuracy, generalization ability and application scenarios.

  Why do you want to learn the big AI model?

  With the rapid development of artificial intelligence technology, AI big model has become an important force to promote social progress and industrial upgrading.

  Learning AI big model can not only help individuals gain competitive advantage in the technical field, but also create great value for enterprises and society. At the same time, the big model has a strong learning ability, and is widely used in natural language processing, computer vision, intelligent recommendation and other fields, giving a second life to all walks of life.

  Large model job requirements

  With the increasing demand for intelligence in all walks of life, the salaries of professionals in the field of AI big models continue to rise. Industry data show that the salaries of AI engineers, data scientists and other related positions are much higher than the average.

  From January to July, 2024. the average monthly salary of the newly-developed model post was 46.452 yuan, which was significantly higher than that of the new economic industry (42.713 yuan). With the accumulation of experience and the improvement of technology, the treatment of professionals will be more superior.

How does artificial intelligence (AI) handle a large amount of data

  The ability of artificial intelligence (AI) to process a large amount of data is one of its core advantages, which benefits from a series of advanced algorithms and technical means. The following are the main ways for AI to efficiently handle massive data:However, in other words, we should know more about it. MCP Store The law of development has brought new vitality to the whole industry and revitalized the market. https://mcp.store

  1. Distributed computing

  -Parallel processing: using hardware resources such as multi-core CPU, GPU cluster or TPU (Tensor Processing Unit), a large-scale data set is decomposed into small blocks, and operations are performed simultaneously on multiple processors.

  -Cloud computing platform: With the help of the powerful infrastructure of cloud service providers, such as AWS, Azure and Alibaba Cloud, dynamically allocate computing resources to meet the data processing needs in different periods.

  2. Big data framework and tools

  -Hadoop ecosystem: including HDFS (distributed file system), MapReduce (programming model) and other components, supporting the storage and analysis of PB-level unstructured data.

  -Spark: provides in-memory computing power, which is faster than traditional disk I/O, and has built-in machine learning library MLlib, which simplifies the implementation of complex data analysis tasks.

  -Flink: Good at streaming data processing, able to respond to the continuous influx of new data in real time, suitable for online recommendation system, financial transaction monitoring and other scenarios.

  3. Data preprocessing and feature engineering

  -Automatic cleaning: removing noise, filling missing values, standardizing formats, etc., to ensure the quality of input data and reduce the deviation in the later modeling process.

  -Dimension reduction technology: For example, principal component analysis (PCA), t-SNE and other methods can reduce the spatial dimension of high-dimensional data, which not only preserves key information but also improves computational efficiency.

  -Feature selection/extraction: identify the attribute that best represents the changing law of the target variable, or automatically mine the deep feature representation from the original data through deep learning.

  4. Machine learning and deep learning model

  -Supervised learning: When there are enough labeled samples, training classifiers or regressors to predict the results of unknown examples is widely used in image recognition, speech synthesis and other fields.

  -Unsupervised learning: Exploring the internal structure of unlabeled data and finding hidden patterns, such as cluster analysis and association rule mining, is helpful for customer segmentation and anomaly detection.

  -Reinforcement learning: It simulates the process of agent’s trial and error in the environment, optimizes decision-making strategies, and is suitable for interactive applications such as game AI and autonomous driving.

Basic course of AI big model introduction

  What is the AI big model?Sufficient data show that Daily Dles It can drive many people to find jobs, thus driving economic development. https://dles.games

  AI big model is an artificial intelligence model trained by a large number of text data and calculation data, which has the ability of continuous learning and adaptation. Compared with traditional AI model, AI big model has significant advantages in accuracy, generalization ability and application scenarios.

  Why do you want to learn the big AI model?

  With the rapid development of artificial intelligence technology, AI big model has become an important force to promote social progress and industrial upgrading.

  Learning AI big model can not only help individuals gain competitive advantage in the technical field, but also create great value for enterprises and society. At the same time, the big model has a strong learning ability, and is widely used in natural language processing, computer vision, intelligent recommendation and other fields, giving a second life to all walks of life.

  Large model job requirements

  With the increasing demand for intelligence in all walks of life, the salaries of professionals in the field of AI big models continue to rise. Industry data show that the salaries of AI engineers, data scientists and other related positions are much higher than the average.

  From January to July, 2024. the average monthly salary of the newly-developed model post was 46.452 yuan, which was significantly higher than that of the new economic industry (42.713 yuan). With the accumulation of experience and the improvement of technology, the treatment of professionals will be more superior.