Generation
Deterministic decoding
Deterministic decoding removes randomness from generation.
Quick definition
Deterministic decoding removes randomness from generation.
- Category: Generation
- Focus: output style and randomness
- Used in: Lower randomness for precise, repeatable answers.
What it means
It is useful for tests and repeatable outputs. In generation workflows, deterministic decoding often shapes output style and randomness.
How it works
Generation settings control how the model samples tokens. They trade off creativity, determinism, and safety.
Why it matters
Generation settings trade off creativity, determinism, and safety.
Common use cases
- Lower randomness for precise, repeatable answers.
- Higher randomness for brainstorming and creative tasks.
- Stopping rules to end output at the right time.
Example
Use greedy decoding with fixed settings.
Pitfalls and tips
High randomness can reduce accuracy while low randomness can be repetitive. Tune per task and evaluate results.
In BoltAI
In BoltAI, this appears in model settings that shape responses.