#ai
33 approved public terms with this tag.
Agentic
مسودة ترجمة بمساعدة آلية (Arabic) for "Agentic": Describing AI systems capable of autonomous action, planning, and decision-making. An agentic AI can break down tasks, use tools, and work toward goals with minimal human intervention.
“مسودة مثال: The new release moves toward more agentic workflows where the AI can complete multi-step tasks independently.”
AI Alignment
مسودة ترجمة بمساعدة آلية (Arabic) for "AI Alignment": The research field focused on ensuring that AI systems pursue goals that match human values and intentions. A misaligned AI might optimize for a metric that appears correct but produces harmful or unintended outcomes at scale.
“مسودة مثال: AI alignment researchers worry that optimizing for user engagement could misalign with genuine user wellbeing.”
Chain of Thought
مسودة ترجمة بمساعدة آلية (Arabic) for "Chain of Thought": A prompting technique where a language model is encouraged or required to show its step-by-step reasoning before providing a final answer. Chain-of-thought prompting significantly improves accuracy on complex tasks like math, logic puzzles, and multi-step planning.
“مسودة مثال: Adding "let's think step by step" to the prompt triggered chain-of-thought reasoning and doubled accuracy.”
Constitutional AI
مسودة ترجمة بمساعدة آلية (Arabic) for "Constitutional AI": A training methodology developed by Anthropic where a set of guiding principles (a "constitution") is used to self-supervise and refine AI outputs. The model critiques and rewrites its own responses according to the constitution, reducing the need for human labelers for harmful content.
“مسودة مثال: Constitutional AI lets the model identify and self-correct its own harmful outputs using defined principles.”
Context Window
مسودة ترجمة بمساعدة آلية (Arabic) for "Context Window": The maximum amount of text (measured in tokens) that a language model can process and "remember" in a single interaction. Information outside the context window is inaccessible to the model, making context management critical for long-form tasks.
“مسودة مثال: The model kept losing track of earlier instructions because the codebase exceeded its context window.”
Diffusion Model
مسودة ترجمة بمساعدة آلية (Arabic) for "Diffusion Model": A class of generative AI model that learns to create images, audio, or video by reversing a noise-adding process. During training the model learns to denoise progressively; during generation it starts from pure noise and iteratively refines it into a coherent output. Stable Diffusion and DALL·E 3 are prominent examples.
“مسودة مثال: The diffusion model generated photorealistic product photos from text descriptions in seconds.”
Embeddings
مسودة ترجمة بمساعدة آلية (Arabic) for "Embeddings": Dense numerical vector representations of words, sentences, or other data that capture semantic meaning. Similar concepts have similar embeddings (nearby in vector space), allowing AI systems to measure meaning similarity mathematically rather than relying on exact keyword matches.
“مسودة مثال: The search engine uses embeddings to find relevant results even when the query words don't appear in the document.”
Federated AI
مسودة ترجمة بمساعدة آلية (Arabic) for "Federated AI": An approach to AI training and inference where models are distributed across multiple nodes or organizations without centralizing raw data. Each node trains on its local data and shares only model updates, preserving privacy while benefiting from collective learning.
“مسودة مثال: The hospital network used federated AI to improve diagnosis models without sharing patient records.”
Few-Shot
مسودة ترجمة بمساعدة آلية (Arabic) for "Few-Shot": A prompting approach where a small number of input-output examples are included in the context to guide model behavior on a new task. Few-shot prompting helps models understand the desired format, tone, or logic without any weight updates.
“مسودة مثال: We gave the model three few-shot examples of our data format and it immediately understood the pattern.”
Fine-Tuning
مسودة ترجمة بمساعدة آلية (Arabic) for "Fine-Tuning": The process of further training a pre-trained model on a smaller, task-specific dataset to adapt its behavior for a particular domain or style. Fine-tuning updates the model's weights to make it perform better on specific tasks without training from scratch.
“مسودة مثال: We fine-tuned the base model on our legal contracts corpus so it could draft clauses in the right style.”
مسودة ترجمة بمساعدة آلية (Arabic) for "Grounding": The process of connecting an AI model's outputs to verified, real-world information sources. Grounding reduces hallucination by anchoring responses to retrieved documents, databases, or live data rather than relying purely on the model's learned parameters.
“مسودة مثال: Grounding the chatbot in our product database eliminated the fabricated feature claims.”
Guardrails
مسودة ترجمة بمساعدة آلية (Arabic) for "Guardrails": Safety constraints and filters applied to AI systems to prevent harmful, offensive, or out-of-scope outputs. Guardrails can be implemented at the model level (via training), prompt level (system instructions), or application level (output classifiers) to keep AI behavior within acceptable boundaries.
“مسودة مثال: The guardrails blocked the model from providing detailed instructions on dangerous activities.”
Hallucination
مسودة ترجمة بمساعدة آلية (Arabic) for "Hallucination": When an AI model generates false, fabricated, or misleading information that it presents confidently as fact. A major challenge in deploying AI systems for factual tasks.
“مسودة مثال: The model hallucinated a citation that doesn't exist - always verify AI-generated references.”
Inference
مسودة ترجمة بمساعدة آلية (Arabic) for "Inference": The act of running a trained machine learning model on new input data to generate predictions or outputs. Inference is distinct from training — it is the "serving" phase where the model is used in production, and its speed and cost are critical for real-world applications.
“مسودة مثال: Inference latency dropped from 2 seconds to 200ms after switching to a quantized model.”
مسودة ترجمة بمساعدة آلية (Arabic) for "Jailbreak": A technique used to bypass the safety filters and content policies of an AI model, typically by framing harmful requests in ways the model's defenses don't recognize. Jailbreaks often use role-play scenarios, hypothetical framings, or encoded instructions to make the model comply with prohibited requests.
“مسودة مثال: The "DAN" jailbreak asked the model to pretend it was an AI with no restrictions.”
LLM
مسودة ترجمة بمساعدة آلية (Arabic) for "LLM": Large Language Model - A type of AI trained on massive text datasets to understand and generate human language. Examples include GPT, Claude, and Gemini.
“مسودة مثال: The LLM was able to write working code after just a brief description of the requirements.”
MCP
مسودة ترجمة بمساعدة آلية (Arabic) for "MCP": Model Context Protocol - An open standard developed by Anthropic for connecting AI assistants to external tools, data sources, and services. Enables AI agents to interact with the world in standardized ways.
“مسودة مثال: Our platform exposes all its APIs via MCP so any AI assistant can integrate with it.”
Multi-Agent
مسودة ترجمة بمساعدة آلية (Arabic) for "Multi-Agent": Describing a system architecture where multiple AI agents collaborate, delegate, or compete to accomplish a shared goal. Multi-agent systems can parallelize work, specialize roles, and check each other's outputs, enabling tasks too complex for a single agent context window.
“مسودة مثال: The multi-agent pipeline had a planner agent, a coder agent, and a reviewer agent working in sequence.”
Multimodal
مسودة ترجمة بمساعدة آلية (Arabic) for "Multimodal": Describing AI systems capable of processing and generating multiple types of data — such as text, images, audio, and video — in a unified model. Multimodal AI can answer questions about images, generate images from text, transcribe speech, and reason across modalities simultaneously.
“مسودة مثال: The multimodal model analyzed the chart image and provided a written summary of the trends.”
Neural Network
مسودة ترجمة بمساعدة آلية (Arabic) for "Neural Network": A computational model loosely inspired by biological neurons, consisting of interconnected layers of mathematical functions (nodes) that transform input data into output predictions. Neural networks learn by adjusting the weights of connections through exposure to training data.
“مسودة مثال: The neural network learned to recognize handwritten digits with over 99% accuracy.”