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This post gives some vocabularies abot the topic of "DeepSeek: Pioneering AI's Future"
Try using it and discuss the topic! Topic site: https://zh.purasbar.com/post.php?t=31282 |
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Beginner Level Vocabulary List: 1. Basic Concepts Artificial Intelligence (AI): The simulation of human intelligence in machines. Chatbot: A computer program designed to simulate conversation with human users. Search Engine: A system designed to search for information on the internet. Language Model: A type of AI that understands and generates human language. Data: Facts and statistics collected together for analysis. Information: Knowledge or details about something. Database: A structured set of data stored electronically. Algorithm: A set of rules or instructions for solving a problem or performing a task. 2. User Interaction User-Friendly: Easy to use and understand. Response: A reply or reaction to a query. Interface: The point of interaction between a user and a system. Interaction: The process of communicating or engaging with a system. Input: Data or information entered into a system. Output: The result or response generated by a system. Chat Widget: A small application embedded in a website for chatting. Session: A period of interaction between a user and a system. 3. Technology and Tools Technology: The application of scientific knowledge for practical purposes. Device: A tool or machine used for a specific purpose. Application: A computer program designed for a particular purpose. Software: A set of instructions or programs that tell a computer what to do. Hardware: The physical components of a computer or device. Cybersecurity: The practice of protecting systems from malicious attacks. Server: A computer that stores and manages data for other computers. Internet Provider: A company that provides internet access to users. |
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Intermediate Level Vocabulary List: 1. Technical Features Multilingual Support: The ability of a system to support multiple languages. Contextual Understanding: The ability to understand the context of a conversation or query. Natural Language Processing (NLP): The ability of a computer to understand human language. Machine Learning: A subset of AI that involves training algorithms to learn from data. Deep Learning: A subset of machine learning that uses neural networks with multiple layers. Neural Network: A computational model inspired by the structure of the human brain. Training Data: The data used to train a machine learning model. Model Architecture: The structure and design of a machine learning model. 2. Data and Information Data Collection: The process of gathering data from various sources. Data Analysis: The process of examining data to identify patterns and insights. Data Storage: The process of keeping data in a storage system for future use. Data Security: Measures taken to protect data from unauthorized access or theft. Data Privacy: The practice of protecting personal data from unauthorized use. Data Integrity: The accuracy and consistency of data throughout its lifecycle. Data Visualization: The presentation of data in a graphical or visual format. Data Mining: The process of discovering patterns and correlations in large datasets. 3. Performance Metrics Accuracy: The degree of correctness or precision. Response Time: The time it takes for a system to respond to a query. Throughput: The amount of data processed by a system in a given time. Latency: The delay before a transfer of data begins following an instruction for its transfer. Scalability: The ability of a system to handle increased load. Efficiency: The ability to accomplish a task with minimal resources. Reliability: The ability of a system to perform its required functions under stated conditions. Robustness: The ability of a system to handle errors and unexpected inputs. 4. Ethical Considerations Bias: A prejudice in favor of or against one thing, person, or group. Fairness: The quality of being just, impartial, and free from bias. Transparency: The quality of being open and easy to understand. Accountability: The obligation to account for one's actions. Privacy: The state of being free from unauthorized intrusion. Security: The state of being protected against potential harm or threats. Ethics: The branch of knowledge that deals with moral principles. Regulation: The act of controlling or supervising something. |
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Advanced Level Vocabulary List: 1. Technical Architecture Neural Architecture Search (NAS): An automated process of searching for the optimal neural network architecture. Sparse Attention Mechanism: A type of attention mechanism that only focuses on a subset of input elements. Model Compression: The process of reducing the size of a machine learning model to improve efficiency. Quantization: The process of converting a continuous range of values into a finite range of discrete values. Knowledge Distillation: A technique where a smaller model is trained to mimic the behavior of a larger model. Parameter Efficiency: The ability of a model to achieve high performance with a limited number of parameters. Modular Design: A design approach where a system is divided into separate functional units. Pipeline Parallelism: A technique where different parts of a model are processed in parallel. 2. Advanced Applications Predictive Analytics: The use of data, statistical algorithms, and machine learning techniques to identify the likelihood of future outcomes. Sentiment Analysis: The process of determining the sentiment or emotion behind a piece of text. Image Recognition: The ability of a system to identify objects, scenes, and people in images. Speech Recognition: The ability of a system to convert spoken language into text. Natural Language Generation (NLG): The process of generating natural language text from data. Reinforcement Learning: A type of machine learning where an agent learns to behave in an environment by performing actions and seeing the results. Unsupervised Learning: A type of machine learning where a model learns from data without explicit instructions. Semi-Supervised Learning: A type of machine learning that uses both labeled and unlabeled data. 3. Ethical and Regulatory Considerations Algorithmic Bias: Systematic and unfair discrimination caused by the use of algorithms. Fairness in AI: The practice of ensuring that AI systems do not discriminate against any group. Transparency in AI: The practice of making AI systems understandable and open to scrutiny. Accountability in AI: The practice of holding AI systems and their creators responsible for their actions. Data Privacy Regulations: Laws and regulations that protect personal data. Cybersecurity Threats: Potential dangers to the security of computer systems and networks. Ethical AI Frameworks: Guidelines and principles for the ethical development and use of AI. Regulatory Compliance: The practice of adhering to laws, regulations, and policies. |