Results for "full pass through data"
Expanding training data via transformations (flips, noise, paraphrases) to improve robustness.
Training across many devices/silos without centralizing raw data; aggregates updates, not data.
Increasing performance via more data.
Shift in feature distribution over time.
Privacy risk analysis under GDPR-like laws.
Learning structure from unlabeled data, such as discovering groups, compressing representations, or modeling data distributions.
Information that can identify an individual (directly or indirectly); requires careful handling and compliance.
Inferring sensitive features of training data.
Training with a small labeled dataset plus a larger unlabeled dataset, leveraging assumptions like smoothness/cluster structure.
Learning where data arrives sequentially and the model updates continuously, often under changing distributions.
A mismatch between training and deployment data distributions that can degrade model performance.
Designing input features to expose useful structure (e.g., ratios, lags, aggregations), often crucial outside deep learning.
The internal space where learned representations live; operations here often correlate with semantics or generative factors.
Recovering training data from gradients.
Diffusion model trained to remove noise step by step.
Diffusion performed in latent space for efficiency.
Sequential data indexed by time.
Artificial sensor data generated in simulation.
Combining simulation and real-world data.
A subfield of AI where models learn patterns from data to make predictions or decisions, improving with experience rather than explicit rule-coding.
Minimizing average loss on training data; can overfit when data is limited or biased.
A branch of ML using multi-layer neural networks to learn hierarchical representations, often excelling in vision, speech, and language.
Separating data into training (fit), validation (tune), and test (final estimate) to avoid leakage and optimism bias.
Automatically learning useful internal features (latent variables) that capture salient structure for downstream tasks.
Forcing predictable formats for downstream systems; reduces parsing errors and supports validation/guardrails.
Learning from data generated by a different policy.
Models that learn to generate samples resembling training data.
Model that compresses input into latent space and reconstructs it.
Shift in model outputs.
Probability of data given parameters.