A-Z of Machine Learning and Computer Vision Terms

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PyTorch
PyTorch
Q
Q
Quantum Machine Learning
Quantum Machine Learning
Query Strategy (Active Learning)
Query Strategy (Active Learning)
Query Synthesis Methods
Query Synthesis Methods
R
R
RAG Architecture
RAG Architecture
ROC (Receiver Operating Characteristic) Curve
ROC (Receiver Operating Characteristic) Curve
Random Forest
Random Forest
Recall (Sensitivity or True Positive Rate)
Recall (Sensitivity or True Positive Rate)
Recurrent Neural Network (RNN)
Recurrent Neural Network (RNN)
Region-Based CNN (R-CNN)
Region-Based CNN (R-CNN)
Regression (Regression Analysis)
Regression (Regression Analysis)
Regularization Algorithms
Regularization Algorithms
Reinforcement Learning
Reinforcement Learning
Responsible AI
Responsible AI
S
S
Scale Imbalance
Scale Imbalance
Scikit-Learn
Scikit-Learn
Segment Anything Model (SAM)
Segment Anything Model (SAM)
Selective Sampling
Selective Sampling
Self-Supervised Learning
Self-Supervised Learning
Semantic Segmentation
Semantic Segmentation
Semi-supervised Learning
Semi-supervised Learning
Sensitivity and Specificity of Machine Learning
Sensitivity and Specificity of Machine Learning
Sentiment Analysis
Sentiment Analysis
Sliding Window Attention
Sliding Window Attention
Stream-Based Selective Sampling
Stream-Based Selective Sampling
Supervised Learning
Supervised Learning
Support Vector Machine (SVM)
Support Vector Machine (SVM)
Surrogate Model
Surrogate Model
Synthetic Data
Synthetic Data
T
T
Tabular Data
Tabular Data
Text Generation Inference
Text Generation Inference
Training Data
Training Data
Transfer Learning
Transfer Learning
Transformers (Transformer Networks)
Transformers (Transformer Networks)
Triplet Loss
Triplet Loss
True Positive Rate (TPR)
True Positive Rate (TPR)
Type I Error (False Positive)
Type I Error (False Positive)
Type II Error (False Negative)
Type II Error (False Negative)
U
U
Unsupervised Learning
Unsupervised Learning
V
V
Variance (Model Variance)
Variance (Model Variance)
Variational Autoencoders
Variational Autoencoders
W
W
Weak Supervision
Weak Supervision
Weight Decay (L2 Regularization)
Weight Decay (L2 Regularization)
X
X
XAI (Explainable AI)
XAI (Explainable AI)
XGBoost
XGBoost
Y
Y
YOLO (You Only Look Once)
YOLO (You Only Look Once)
Yolo Object Detection
Yolo Object Detection
Z
Z
Zero-Shot Learning
Zero-Shot Learning
R

RAG Architecture

RAG stands for Retrieval-Augmented Generation, an approach that combines a retrieval system with a generative AI model. A RAG architecture refers to the design of systems that implement this approach, typically consisting of two main components: a retriever and a generator​.The retriever (often a vector search over a knowledge base or documents) is responsible for fetching relevant information – for example, pulling the top-k text passages from a company’s document repository that relate to a user’s query. The generator is a large language model (LLM) or other generative model that then takes the query plus the retrieved documents as input and produces a final answer or output​.By integrating these, RAG architecture grounds the generative model’s output in up-to-date or domain-specific knowledge. Essentially, instead of relying solely on what the LLM memorized during training, it can consult an external knowledge source on the fly. The architecture is powerful for applications like question-answering, where the LLM can cite specific retrieved facts, or any scenario where the knowledge cutoff of the model needs to be extended (for example, an LLM that was trained on data up to 2021 can use retrieval to answer questions about 2023). This setup helps reduce hallucinations and improve factual accuracy​.In summary, a RAG architecture is a pipeline where a query first goes through a retrieval step to gather evidence, and then a generative step that uses that evidence to compose a context-aware, informed response​.It marries information retrieval with text generation, enabling more reliable and context-rich AI systems.

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