WIP: Parallel generation implemenation #1209
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This is a basic and relatively simple implementation of parallel generation, both streaming and non-streaming, as considered in #771. It sticks mostly to using the existing high level API functions, except when messing around with the KV cache. The only real optimization is detecting a common prefix among the sequences and decoding that in a single pass, which would cover things like system prompts.
Rather than trying to fit into the existing functions, this creates new functions
eval_parallel
,generate_parallel
, etc. Right now it just outputs lists of string results, rather than the full JSON formatting. I wanted to see if this is viable before going down that road.The existing top-level state variables such as
n_tokens
,scores
, andinput_ids
are geared toward single stream generation. The way I'm decoding here is position aligned, son_tokens
is basically the same. Whilescores
now stores the logits for a single batch across multiple sequences, but in a way thatsample
still works the same. Andinput_ids
anddraft_model
are ignored for now.