Optional
fields: Partial<HFInput> & BaseLLMParamsAPI key to use.
The async caller should be used by subclasses to make any async calls, which will thus benefit from the concurrency and retry logic.
Custom inference endpoint URL to use
Penalizes repeated tokens according to frequency
Credentials to use for the request. If this is a string, it will be passed straight on. If it's a boolean, true will be "include" and false will not send credentials at all.
Maximum number of tokens to generate in the completion.
Model to use
Sampling temperature to use
Integer to define the top tokens considered within the sample operation to create new text.
Total probability mass of tokens to consider at each step
Whether to print out response text.
Optional
cacheOptional
callbacksOptional
metadataOptional
nameOptional
tagsKeys that the language model accepts as call options.
Assigns new fields to the dict output of this runnable. Returns a new runnable.
Default implementation of batch, which calls invoke N times. Subclasses should override this method if they can batch more efficiently.
Array of inputs to each batch call.
Optional
options: Partial<BaseLLMCallOptions> | Partial<BaseLLMCallOptions>[]Either a single call options object to apply to each batch call or an array for each call.
Optional
batchOptions: RunnableBatchOptions & { An array of RunOutputs, or mixed RunOutputs and errors if batchOptions.returnExceptions is set
Optional
options: Partial<BaseLLMCallOptions> | Partial<BaseLLMCallOptions>[]Optional
batchOptions: RunnableBatchOptions & { Optional
options: Partial<BaseLLMCallOptions> | Partial<BaseLLMCallOptions>[]Optional
batchOptions: RunnableBatchOptionsBind arguments to a Runnable, returning a new Runnable.
A new RunnableBinding that, when invoked, will apply the bound args.
Optional
options: string[] | BaseLLMCallOptionsOptional
callbacks: CallbacksUse .invoke() instead. Will be removed in 0.2.0. Convenience wrapper for generate that takes in a single string prompt and returns a single string output.
Run the LLM on the given prompts and input, handling caching.
Optional
options: string[] | BaseLLMCallOptionsOptional
callbacks: CallbacksThis method takes prompt values, options, and callbacks, and generates a result based on the prompts.
Prompt values for the LLM.
Optional
options: string[] | BaseLLMCallOptionsOptions for the LLM call.
Optional
callbacks: CallbacksCallbacks for the LLM call.
An LLMResult based on the prompts.
Get the parameters used to invoke the model
Optional
_options: Omit<BaseLLMCallOptions, never>This method takes an input and options, and returns a string. It converts the input to a prompt value and generates a result based on the prompt.
Input for the LLM.
Optional
options: BaseLLMCallOptionsOptions for the LLM call.
A string result based on the prompt.
Return a new Runnable that maps a list of inputs to a list of outputs, by calling invoke() with each input.
Pick keys from the dict output of this runnable. Returns a new runnable.
Create a new runnable sequence that runs each individual runnable in series, piping the output of one runnable into another runnable or runnable-like.
A runnable, function, or object whose values are functions or runnables.
A new runnable sequence.
Input text for the prediction.
Optional
options: string[] | BaseLLMCallOptionsOptions for the LLM call.
Optional
callbacks: CallbacksCallbacks for the LLM call.
A prediction based on the input text.
Use .invoke() instead. Will be removed in 0.2.0.
This feature is deprecated and will be removed in the future.
It is not recommended for use.
This method is similar to call
, but it's used for making predictions
based on the input text.
A list of messages for the prediction.
Optional
options: string[] | BaseLLMCallOptionsOptions for the LLM call.
Optional
callbacks: CallbacksCallbacks for the LLM call.
A predicted message based on the list of messages.
Use .invoke() instead. Will be removed in 0.2.0.
This method takes a list of messages, options, and callbacks, and returns a predicted message.
Return a json-like object representing this LLM.
Stream output in chunks.
Optional
options: Partial<BaseLLMCallOptions>A readable stream that is also an iterable.
Stream all output from a runnable, as reported to the callback system. This includes all inner runs of LLMs, Retrievers, Tools, etc. Output is streamed as Log objects, which include a list of jsonpatch ops that describe how the state of the run has changed in each step, and the final state of the run. The jsonpatch ops can be applied in order to construct state.
Optional
options: Partial<BaseLLMCallOptions>Optional
streamOptions: Omit<LogStreamCallbackHandlerInput, "autoClose">Default implementation of transform, which buffers input and then calls stream. Subclasses should override this method if they can start producing output while input is still being generated.
Bind config to a Runnable, returning a new Runnable.
New configuration parameters to attach to the new runnable.
A new RunnableBinding with a config matching what's passed.
Create a new runnable from the current one that will try invoking other passed fallback runnables if the initial invocation fails.
Other runnables to call if the runnable errors.
A new RunnableWithFallbacks.
Bind lifecycle listeners to a Runnable, returning a new Runnable. The Run object contains information about the run, including its id, type, input, output, error, startTime, endTime, and any tags or metadata added to the run.
The object containing the callback functions.
Optional
onCalled after the runnable finishes running, with the Run object.
Optional
config: RunnableConfigOptional
onCalled if the runnable throws an error, with the Run object.
Optional
config: RunnableConfigOptional
onCalled before the runnable starts running, with the Run object.
Optional
config: RunnableConfigAdd retry logic to an existing runnable.
Optional
fields: { Optional
onOptional
stopA new RunnableRetry that, when invoked, will retry according to the parameters.
Static
deserializeLoad an LLM from a json-like object describing it.
Static
isGenerated using TypeDoc
Class implementing the Large Language Model (LLM) interface using the Hugging Face Inference API for text generation.
Example