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💬 Perpustakaan Prompt 📖 Glosarium AI 🔗 Tautan Berguna

Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
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23.060
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Contention

Mechanism designed to restrict or guide the output of an LLM to prevent the generation of unwanted, dangerous, or out-of-scope content.

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Prompt Guardrails

Set of rules and filters applied upstream to user input to detect and block malicious, inappropriate requests, or those attempting to bypass the model's security policies.

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Output Filtering

Post-generation security mechanism that analyzes the LLM's response to identify and remove prohibited content before it is presented to the user.

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Jailbreaking

Set of reverse engineering techniques aimed at bypassing an LLM's contention and security mechanisms to force it to produce normally prohibited responses.

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Safety Layer

Distinct software component, often a classification model, that intercepts LLM inputs and outputs to evaluate their compliance with security policies.

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Decoding Alignment

Strategy of modifying the decoding process (e.g., beam search, sampling) to penalize the generation of tokens or token sequences associated with unsafe content.

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Self-Critique

Ability of an LLM to evaluate its own generated response against a set of predefined criteria (coherence, safety, accuracy) and revise it if necessary.

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Adversarial Suffix

Learned character sequence added to the end of a prompt to manipulate the LLM's internal behavior and force a specific output, often used in jailbreaking attacks.

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Preference Modeling

Process of creating a reward model that learns human preferences from pairwise response comparisons, essential for RLHF.

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Refusal Training

Specialized training phase where the LLM learns to identify inappropriate requests and generate polite and informative refusal responses instead of attempting to answer.

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Harmlessness Classification

Binary classification task to determine if an LLM output is 'harmless' or 'harmful', often implemented as a safety filter.

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Sycophancy Mitigation

Set of techniques aimed at reducing an LLM's tendency to agree with incorrect user premises to please them, an undesirable behavior that compromises truthfulness.

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Model Steering

Technique for dynamically adjusting an LLM's behavior during inference, often by modifying logits, to guide generation towards a desired and safe response space.

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