# Generated by SnakeBridge v0.15.1 - DO NOT EDIT MANUALLY # Regenerate with: mix compile # Library: vllm 0.14.0 # Python module: vllm.engine defmodule Vllm.Engine do @moduledoc """ Submodule bindings for `vllm.engine`. ## Version - Requested: 0.14.0 - Observed at generation: 0.14.0 ## Runtime Options All functions accept a `__runtime__` option for controlling execution behavior: Vllm.Engine.some_function(args, __runtime__: [timeout: 120_000]) ### Supported runtime options - `:timeout` - Call timeout in milliseconds (default: 120,000ms / 2 minutes) - `:timeout_profile` - Use a named profile (`:default`, `:ml_inference`, `:batch_job`, `:streaming`) - `:stream_timeout` - Timeout for streaming operations (default: 1,800,000ms / 30 minutes) - `:session_id` - Override the session ID for this call - `:pool_name` - Target a specific Snakepit pool (multi-pool setups) - `:affinity` - Override session affinity (`:hint`, `:strict_queue`, `:strict_fail_fast`) ### Timeout Profiles - `:default` - 2 minute timeout for regular calls - `:ml_inference` - 10 minute timeout for ML/LLM workloads - `:batch_job` - Unlimited timeout for long-running jobs - `:streaming` - 2 minute timeout, 30 minute stream_timeout ### Example with timeout override # For a long-running ML inference call Vllm.Engine.predict(data, __runtime__: [timeout_profile: :ml_inference]) # Or explicit timeout Vllm.Engine.predict(data, __runtime__: [timeout: 600_000]) # Route to a pool and enforce strict affinity Vllm.Engine.predict(data, __runtime__: [pool_name: :strict_pool, affinity: :strict_queue]) See `SnakeBridge.Defaults` for global timeout configuration. """ @doc false def __snakebridge_python_name__, do: "vllm.engine" @doc false def __snakebridge_library__, do: "vllm" end