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1690 lines
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1690 lines
102 KiB
Plaintext
---
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title: Large Language Models
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teaser: Integrating LLMs into structured NLP pipelines
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menu:
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- ['Config and implementation', 'config']
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- ['Tasks', 'tasks']
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- ['Models', 'models']
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- ['Cache', 'cache']
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- ['Various Functions', 'various-functions']
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---
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[The `spacy-llm` package](https://github.com/explosion/spacy-llm) integrates
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Large Language Models (LLMs) into spaCy, featuring a modular system for **fast
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prototyping** and **prompting**, and turning unstructured responses into
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**robust outputs** for various NLP tasks, **no training data** required.
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## Config and implementation {id="config"}
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An LLM component is implemented through the `LLMWrapper` class. It is accessible
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through a generic `llm`
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[component factory](https://spacy.io/usage/processing-pipelines#custom-components-factories)
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as well as through task-specific component factories: `llm_ner`, `llm_spancat`,
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`llm_rel`, `llm_textcat`, `llm_sentiment`, `llm_summarization`,
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`llm_entity_linker`, `llm_raw` and `llm_translation`. For these factories, the
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GPT-3-5 model from OpenAI is used by default, but this can be customized.
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> #### Example
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>
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> ```python
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> # Construction via add_pipe with the default GPT 3.5 model and an explicitly defined task
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> config = {"task": {"@llm_tasks": "spacy.NER.v3", "labels": ["PERSON", "ORGANISATION", "LOCATION"]}}
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> llm = nlp.add_pipe("llm", config=config)
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>
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> # Construction via add_pipe with a task-specific factory and default GPT3.5 model
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> llm = nlp.add_pipe("llm_ner")
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>
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> # Construction via add_pipe with a task-specific factory and custom model
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> llm = nlp.add_pipe("llm_ner", config={"model": {"@llm_models": "spacy.Dolly.v1", "name": "dolly-v2-12b"}})
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>
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> # Construction from class
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> from spacy_llm.pipeline import LLMWrapper
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> llm = LLMWrapper(vocab=nlp.vocab, task=task, model=model, cache=cache, save_io=True)
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> ```
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### LLMWrapper.\_\_init\_\_ {id="init",tag="method"}
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Create a new pipeline instance. In your application, you would normally use a
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shortcut for this and instantiate the component using its string name and
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[`nlp.add_pipe`](/api/language#add_pipe).
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| Name | Description |
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| -------------- | -------------------------------------------------------------------------------------------------- |
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| `name` | String name of the component instance. `llm` by default. ~~str~~ |
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| _keyword-only_ | |
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| `vocab` | The shared vocabulary. ~~Vocab~~ |
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| `task` | An [LLM Task](#tasks) can generate prompts and parse LLM responses. ~~LLMTask~~ |
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| `model` | The [LLM Model](#models) queries a specific LLM API.. ~~Callable[[Iterable[Any]], Iterable[Any]]~~ |
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| `cache` | [Cache](#cache) to use for caching prompts and responses per doc. ~~Cache~~ |
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| `save_io` | Whether to save LLM I/O (prompts and responses) in the `Doc._.llm_io` custom attribute. ~~bool~~ |
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### LLMWrapper.\_\_call\_\_ {id="call",tag="method"}
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Apply the pipe to one document. The document is modified in place and returned.
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This usually happens under the hood when the `nlp` object is called on a text
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and all pipeline components are applied to the `Doc` in order.
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> #### Example
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>
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> ```python
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> doc = nlp("Ingrid visited Paris.")
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> llm_ner = nlp.add_pipe("llm_ner")
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> # This usually happens under the hood
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> processed = llm_ner(doc)
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> ```
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| Name | Description |
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| ----------- | -------------------------------- |
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| `doc` | The document to process. ~~Doc~~ |
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| **RETURNS** | The processed document. ~~Doc~~ |
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### LLMWrapper.pipe {id="pipe",tag="method"}
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Apply the pipe to a stream of documents. This usually happens under the hood
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when the `nlp` object is called on a text and all pipeline components are
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applied to the `Doc` in order.
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> #### Example
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>
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> ```python
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> llm_ner = nlp.add_pipe("llm_ner")
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> for doc in llm_ner.pipe(docs, batch_size=50):
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> pass
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------- |
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| `docs` | A stream of documents. ~~Iterable[Doc]~~ |
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| _keyword-only_ | |
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| `batch_size` | The number of documents to buffer. Defaults to `128`. ~~int~~ |
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| **YIELDS** | The processed documents in order. ~~Doc~~ |
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### LLMWrapper.add_label {id="add_label",tag="method"}
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Add a new label to the pipe's task. Alternatively, provide the labels upon the
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[task](#task) definition, or through the `[initialize]` block of the
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[config](#config).
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> #### Example
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>
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> ```python
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> llm_ner = nlp.add_pipe("llm_ner")
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> llm_ner.add_label("MY_LABEL")
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> ```
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| Name | Description |
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| ----------- | ----------------------------------------------------------- |
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| `label` | The label to add. ~~str~~ |
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| **RETURNS** | `0` if the label is already present, otherwise `1`. ~~int~~ |
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### LLMWrapper.to_disk {id="to_disk",tag="method"}
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Serialize the pipe to disk.
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> #### Example
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>
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> ```python
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> llm_ner = nlp.add_pipe("llm_ner")
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> llm_ner.to_disk("/path/to/llm_ner")
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------------------------------------------------------ |
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| `path` | A path to a directory, which will be created if it doesn't exist. Paths may be either strings or `Path`-like objects. ~~Union[str, Path]~~ |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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### LLMWrapper.from_disk {id="from_disk",tag="method"}
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Load the pipe from disk. Modifies the object in place and returns it.
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> #### Example
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>
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> ```python
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> llm_ner = nlp.add_pipe("llm_ner")
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> llm_ner.from_disk("/path/to/llm_ner")
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> ```
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| Name | Description |
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| -------------- | ----------------------------------------------------------------------------------------------- |
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| `path` | A path to a directory. Paths may be either strings or `Path`-like objects. ~~Union[str, Path]~~ |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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| **RETURNS** | The modified `LLMWrapper` object. ~~LLMWrapper~~ |
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### LLMWrapper.to_bytes {id="to_bytes",tag="method"}
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> #### Example
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>
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> ```python
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> llm_ner = nlp.add_pipe("llm_ner")
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> ner_bytes = llm_ner.to_bytes()
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> ```
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Serialize the pipe to a bytestring.
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------- |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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| **RETURNS** | The serialized form of the `LLMWrapper` object. ~~bytes~~ |
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### LLMWrapper.from_bytes {id="from_bytes",tag="method"}
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Load the pipe from a bytestring. Modifies the object in place and returns it.
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> #### Example
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>
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> ```python
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> ner_bytes = llm_ner.to_bytes()
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> llm_ner = nlp.add_pipe("llm_ner")
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> llm_ner.from_bytes(ner_bytes)
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------- |
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| `bytes_data` | The data to load from. ~~bytes~~ |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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| **RETURNS** | The `LLMWrapper` object. ~~LLMWrapper~~ |
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### LLMWrapper.labels {id="labels",tag="property"}
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The labels currently added to the component. Empty tuple if the LLM's task does
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not require labels.
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> #### Example
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>
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> ```python
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> llm_ner.add_label("MY_LABEL")
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> assert "MY_LABEL" in llm_ner.labels
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> ```
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| Name | Description |
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| ----------- | ------------------------------------------------------ |
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| **RETURNS** | The labels added to the component. ~~Tuple[str, ...]~~ |
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## Tasks {id="tasks"}
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In `spacy-llm`, a _task_ defines an NLP problem or question and its solution
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using an LLM. It does so by implementing the following responsibilities:
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1. Loading a prompt template and injecting documents' data into the prompt.
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Optionally, include fewshot examples in the prompt.
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2. Splitting the prompt into several pieces following a map-reduce paradigm,
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_if_ the prompt is too long to fit into the model's context and the task
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supports sharding prompts.
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3. Parsing the LLM's responses back into structured information and validating
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the parsed output.
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Two different task interfaces are supported: `ShardingLLMTask` and
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`NonShardingLLMTask`. Only the former supports the sharding of documents, i. e.
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splitting up prompts if they are too long.
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All tasks are registered in the `llm_tasks` registry.
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### On Sharding {id="task-sharding"}
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"Sharding" describes, generally speaking, the process of distributing parts of a
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dataset across multiple storage units for easier processing and lookups. In
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`spacy-llm` we use this term (synonymously: "mapping") to describe the splitting
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up of prompts if they are too long for a model to handle, and "fusing"
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(synonymously: "reducing") to describe how the model responses for several
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shards are merged back together into a single document.
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Prompts are broken up in a manner that _always_ keeps the prompt in the template
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intact, meaning that the instructions to the LLM will always stay complete. The
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document content however will be split, if the length of the fully rendered
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prompt exceeds a model context length.
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A toy example: let's assume a model has a context window of 25 tokens and the
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prompt template for our fictional, sharding-supporting task looks like this:
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```
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Estimate the sentiment of this text:
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"{text}"
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Estimated sentiment:
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```
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Depending on how tokens are counted exactly (this is a config setting), we might
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come up with `n = 12` tokens for the number of tokens in the prompt
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instructions. Furthermore let's assume that our `text` is "This has been
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amazing - I can't remember the last time I left the cinema so impressed." -
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which has roughly 19 tokens.
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Considering we only have 13 tokens to add to our prompt before we hit the
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context limit, we'll have to split our prompt into two parts. Thus `spacy-llm`,
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assuming the task used supports sharding, will split the prompt into two (the
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default splitting strategy splits by tokens, but alternative splitting
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strategies splitting e. g. by sentences can be configured):
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_(Prompt 1/2)_
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```
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Estimate the sentiment of this text:
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"This has been amazing - I can't remember "
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Estimated sentiment:
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```
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_(Prompt 2/2)_
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```
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Estimate the sentiment of this text:
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"the last time I left the cinema so impressed."
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Estimated sentiment:
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```
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The reduction step is task-specific - a sentiment estimation task might e. g. do
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a weighted average of the sentiment scores. Note that prompt sharding introduces
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potential inaccuracies, as the LLM won't have access to the entire document at
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once. Depending on your use case this might or might not be problematic.
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### `NonShardingLLMTask` {id="task-nonsharding"}
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#### task.generate_prompts {id="task-nonsharding-generate-prompts"}
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Takes a collection of documents, and returns a collection of "prompts", which
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can be of type `Any`. Often, prompts are of type `str` - but this is not
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enforced to allow for maximum flexibility in the framework.
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| Argument | Description |
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| ----------- | ---------------------------------------- |
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| `docs` | The input documents. ~~Iterable[Doc]~~ |
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| **RETURNS** | The generated prompts. ~~Iterable[Any]~~ |
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#### task.parse_responses {id="task-non-sharding-parse-responses"}
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Takes a collection of LLM responses and the original documents, parses the
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responses into structured information, and sets the annotations on the
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documents. The `parse_responses` function is free to set the annotations in any
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way, including `Doc` fields like `ents`, `spans` or `cats`, or using custom
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defined fields.
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The `responses` are of type `Iterable[Any]`, though they will often be `str`
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objects. This depends on the return type of the [model](#models).
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| Argument | Description |
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| ----------- | ------------------------------------------------------ |
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| `docs` | The input documents. ~~Iterable[Doc]~~ |
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| `responses` | The responses received from the LLM. ~~Iterable[Any]~~ |
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| **RETURNS** | The annotated documents. ~~Iterable[Doc]~~ |
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### `ShardingLLMTask` {id="task-sharding"}
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#### task.generate_prompts {id="task-sharding-generate-prompts"}
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Takes a collection of documents, breaks them up into shards if necessary to fit
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all content into the model's context, and returns a collection of collections of
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"prompts" (i. e. each doc can have multiple shards, each of which have exactly
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one prompt), which can be of type `Any`. Often, prompts are of type `str` - but
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this is not enforced to allow for maximum flexibility in the framework.
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| Argument | Description |
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| ----------- | -------------------------------------------------- |
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| `docs` | The input documents. ~~Iterable[Doc]~~ |
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| **RETURNS** | The generated prompts. ~~Iterable[Iterable[Any]]~~ |
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#### task.parse_responses {id="task-sharding-parse-responses"}
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Receives a collection of collections of LLM responses (i. e. each doc can have
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multiple shards, each of which have exactly one prompt / prompt response) and
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the original shards, parses the responses into structured information, sets the
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annotations on the shards, and merges back doc shards into single docs. The
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`parse_responses` function is free to set the annotations in any way, including
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`Doc` fields like `ents`, `spans` or `cats`, or using custom defined fields.
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The `responses` are of type `Iterable[Iterable[Any]]`, though they will often be
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`str` objects. This depends on the return type of the [model](#models).
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| Argument | Description |
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| ----------- | ---------------------------------------------------------------- |
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| `shards` | The input document shards. ~~Iterable[Iterable[Doc]]~~ |
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| `responses` | The responses received from the LLM. ~~Iterable[Iterable[Any]]~~ |
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| **RETURNS** | The annotated documents. ~~Iterable[Doc]~~ |
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### Translation {id="translation"}
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The translation task translates texts from a defined or inferred source to a
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defined target language.
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#### spacy.Translation.v1 {id="translation-v1"}
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`spacy.Translation.v1` supports both zero-shot and few-shot prompting.
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> #### Example config
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>
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> ```ini
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> [components.llm.task]
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> @llm_tasks = "spacy.Translation.v1"
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> examples = null
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> target_lang = "Spanish"
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> ```
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| Argument | Description |
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| --------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
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| `template` | Custom prompt template to send to LLM model. Defaults to [translation.v1.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/translation.v1.jinja). ~~str~~ |
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| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
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| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[TranslationTask]]~~ |
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| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `TranslationExample`. ~~Optional[Type[FewshotExample]]~~ |
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| `source_lang` | Language to translate from. Doesn't have to be set. ~~Optional[str]~~ |
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| `target_lang` | Language to translate to. No default value, has to be set. ~~str~~ |
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| `field` | Name of extension attribute to store translation in (i. e. the translation will be available in `doc._.{field}`). Defaults to `translation`. ~~str~~ |
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To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
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you can write down a few examples in a separate file, and provide these to be
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injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
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supports `.yml`, `.yaml`, `.json` and `.jsonl`.
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```yaml
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- text: 'Top of the morning to you!'
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translation: '¡Muy buenos días!'
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- text: 'The weather is great today.'
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translation: 'El clima está fantástico hoy.'
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- text: 'Do you know what will happen tomorrow?'
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translation: '¿Sabes qué pasará mañana?'
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```
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```ini
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[components.llm.task]
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@llm_tasks = "spacy.Translation.v1"
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target_lang = "Spanish"
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[components.llm.task.examples]
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@misc = "spacy.FewShotReader.v1"
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path = "translation_examples.yml"
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```
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### Raw prompting {id="raw"}
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Different to all other tasks `spacy.Raw.vX` doesn't provide a specific prompt,
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wrapping doc data, to the model. Instead it instructs the model to reply to the
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doc content. This is handy for use cases like question answering (where each doc
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contains one question) or if you want to include customized prompts for each
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doc.
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#### spacy.Raw.v1 {id="raw-v1"}
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Note that since this task may request arbitrary information, it doesn't do any
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parsing per se - the model response is stored in a custom `Doc` attribute (i. e.
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can be accessed via `doc._.{field}`).
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It supports both zero-shot and few-shot prompting.
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> #### Example config
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>
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> ```ini
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> [components.llm.task]
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> @llm_tasks = "spacy.Raw.v1"
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> examples = null
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> ```
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| Argument | Description |
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| --------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
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| `template` | Custom prompt template to send to LLM model. Defaults to [raw.v1.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/raw.v1.jinja). ~~str~~ |
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| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
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| `parse_responses` | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[RawTask]]~~ |
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| `prompt_example_type` | Type to use for fewshot examples. Defaults to `RawExample`. ~~Optional[Type[FewshotExample]]~~ |
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| `field` | Name of extension attribute to store model reply in (i. e. the reply will be available in `doc._.{field}`). Defaults to `reply`. ~~str~~ |
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To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
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you can write down a few examples in a separate file, and provide these to be
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injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
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supports `.yml`, `.yaml`, `.json` and `.jsonl`.
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```yaml
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# Each example can follow an arbitrary pattern. It might help the prompt performance though if the examples resemble
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# the actual docs' content.
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- text: "3 + 5 = x. What's x?"
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reply: '8'
|
|
|
|
- text: 'Write me a limerick.'
|
|
reply:
|
|
"There was an Old Man with a beard, Who said, 'It is just as I feared! Two
|
|
Owls and a Hen, Four Larks and a Wren, Have all built their nests in my
|
|
beard!"
|
|
|
|
- text: "Analyse the sentiment of the text 'This is great'."
|
|
reply: "'This is great' expresses a very positive sentiment."
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.Raw.v1"
|
|
field = "llm_reply"
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "raw_examples.yml"
|
|
```
|
|
|
|
### Summarization {id="summarization"}
|
|
|
|
A summarization task takes a document as input and generates a summary that is
|
|
stored in an extension attribute.
|
|
|
|
#### spacy.Summarization.v1 {id="summarization-v1"}
|
|
|
|
The `spacy.Summarization.v1` task supports both zero-shot and few-shot
|
|
prompting.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.Summarization.v1"
|
|
> examples = null
|
|
> max_n_words = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | --------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [summarization.v1.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/summarization.v1.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SummarizationTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `SummarizationExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `max_n_words` | Maximum number of words to be used in summary. Note that this should not expected to work exactly. Defaults to `None`. ~~Optional[int]~~ |
|
|
| `field` | Name of extension attribute to store summary in (i. e. the summary will be available in `doc._.{field}`). Defaults to `summary`. ~~str~~ |
|
|
|
|
The summarization task prompts the model for a concise summary of the provided
|
|
text. It optionally allows to limit the response to a certain number of tokens -
|
|
note that this requirement will be included in the prompt, but the task doesn't
|
|
perform a hard cut-off. It's hence possible that your summary exceeds
|
|
`max_n_words`.
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
```yaml
|
|
- text: >
|
|
The United Nations, referred to informally as the UN, is an
|
|
intergovernmental organization whose stated purposes are to maintain
|
|
international peace and security, develop friendly relations among nations,
|
|
achieve international cooperation, and serve as a centre for harmonizing the
|
|
actions of nations. It is the world's largest international organization.
|
|
The UN is headquartered on international territory in New York City, and the
|
|
organization has other offices in Geneva, Nairobi, Vienna, and The Hague,
|
|
where the International Court of Justice is headquartered.\n\n The UN was
|
|
established after World War II with the aim of preventing future world wars,
|
|
and succeeded the League of Nations, which was characterized as
|
|
ineffective.
|
|
summary:
|
|
'The UN is an international organization that promotes global peace,
|
|
cooperation, and harmony. Established after WWII, its purpose is to prevent
|
|
future world wars.'
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.Summarization.v1"
|
|
max_n_words = 20
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "summarization_examples.yml"
|
|
```
|
|
|
|
### EL (Entity Linking) {id="nel"}
|
|
|
|
The EL links recognized entities (see [NER](#ner)) to those in a knowledge base
|
|
(KB). The EL task prompts the LLM to select the most likely candidate from the
|
|
KB, whose structure can be arbitrary.
|
|
|
|
Note that the documents processed by the entity linking task are expected to
|
|
have recognized entities in their `.ents` attribute. This can be achieved by
|
|
either running the [NER task](#ner), using a trained spaCy NER model or setting
|
|
the entities manually prior to running the EL task.
|
|
|
|
In order to be able to pull data from the KB, an object implementing the
|
|
`CandidateSelector` protocol has to be provided. This requires two functions:
|
|
(1) `__call__()` to fetch candidate entities for entity mentions in the text
|
|
(assumed to be available in `Doc.ents`) and (2) `get_entity_description()` to
|
|
fetch descriptions for any given entity ID. Descriptions can be empty, but
|
|
ideally provide more context for entities stored in the KB.
|
|
|
|
`spacy-llm` provides a `CandidateSelector` implementation
|
|
(`spacy.CandidateSelector.v1`) that leverages a spaCy knowledge base - as used
|
|
in an `entity_linking` component - to select candidates. This knowledge base can
|
|
be loaded from an existing spaCy pipeline (note that the pipeline's EL component
|
|
doesn't have to be trained) or from a separate .yaml file.
|
|
|
|
#### spacy.EntityLinker.v1 {id="el-v1"}
|
|
|
|
Supports zero- and few-shot prompting. Relies on a configurable component
|
|
suggesting viable entities before letting the LLM pick the most likely
|
|
candidate.
|
|
|
|
> #### Example config for spacy.EntityLinker.v1
|
|
>
|
|
> ```ini
|
|
> [paths]
|
|
> el_nlp = null
|
|
>
|
|
> ...
|
|
>
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.EntityLinker.v1"
|
|
>
|
|
> [initialize]
|
|
> [initialize.components]
|
|
> [initialize.components.llm]
|
|
> [initialize.components.llm.candidate_selector]
|
|
> @llm_misc = "spacy.CandidateSelector.v1"
|
|
>
|
|
> # Load a KB from a KB file. For loading KBs from spaCy pipelines see spacy.KBObjectLoader.v1.
|
|
> [initialize.components.llm.candidate_selector.kb_loader]
|
|
> @llm_misc = "spacy.KBFileLoader.v1"
|
|
> # Path to knowledge base .yaml file.
|
|
> path = ${paths.el_kb}
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------- | --------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [entity_linker.v1.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/entity_linker.v1.jinja). ~~str~~ |
|
|
| `parse_responses` | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[EntityLinkerTask]]~~ |
|
|
| `prompt_example_type` | Type to use for fewshot examples. Defaults to `ELExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `examples` | Optional callable that reads a file containing task examples for few-shot learning. If `None` is passed, zero-shot learning will be used. Defaults to `None`. ~~ExamplesConfigType~~ |
|
|
| `scorer` | Scorer function. Defaults to the metric used by spaCy to evaluate entity linking performance. ~~Optional[Scorer]~~ |
|
|
|
|
##### spacy.CandidateSelector.v1 {id="candidate-selector-v1"}
|
|
|
|
`spacy.CandidateSelector.v1` is an implementation of the `CandidateSelector`
|
|
protocol required by [`spacy.EntityLinker.v1`](#el-v1). The built-in candidate
|
|
selector method allows loading existing knowledge bases in several ways, e. g.
|
|
loading from a spaCy pipeline with a (not necessarily trained) entity linking
|
|
component, and loading from a file describing the knowlege base as a .yaml file.
|
|
Either way the loaded data will be converted to a spaCy `InMemoryLookupKB`
|
|
instance. The KB's selection capabilities are used to select the most likely
|
|
entity candidates for the specified mentions.
|
|
|
|
> #### Example config for spacy.CandidateSelector.v1
|
|
>
|
|
> ```ini
|
|
> [initialize]
|
|
> [initialize.components]
|
|
> [initialize.components.llm]
|
|
> [initialize.components.llm.candidate_selector]
|
|
> @llm_misc = "spacy.CandidateSelector.v1"
|
|
>
|
|
> # Load a KB from a KB file. For loading KBs from spaCy pipelines see spacy.KBObjectLoader.v1.
|
|
> [initialize.components.llm.candidate_selector.kb_loader]
|
|
> @llm_misc = "spacy.KBFileLoader.v1"
|
|
> # Path to knowledge base .yaml file.
|
|
> path = ${paths.el_kb}
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| ----------- | ----------------------------------------------------------------- |
|
|
| `kb_loader` | KB loader object. ~~InMemoryLookupKBLoader~~ |
|
|
| `top_n` | Top-n candidates to include in the prompt. Defaults to 5. ~~int~~ |
|
|
|
|
##### spacy.KBObjectLoader.v1 {id="kb-object-loader-v1"}
|
|
|
|
Adheres to the `InMemoryLookupKBLoader` interface required by
|
|
[`spacy.CandidateSelector.v1`](#candidate-selector-v1). Loads a knowledge base
|
|
from an existing spaCy pipeline.
|
|
|
|
> #### Example config for spacy.KBObjectLoader.v1
|
|
>
|
|
> ```ini
|
|
> [initialize.components.llm.candidate_selector.kb_loader]
|
|
> @llm_misc = "spacy.KBObjectLoader.v1"
|
|
> # Path to knowledge base directory in serialized spaCy pipeline.
|
|
> path = ${paths.el_kb}
|
|
> # Path to spaCy pipeline. If this is not specified, spacy-llm tries to determine this automatically (but may fail).
|
|
> nlp_path = ${paths.el_nlp}
|
|
> # Path to file with descriptions for entity.
|
|
> desc_path = ${paths.el_desc}
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| ----------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `path` | Path to KB file. ~~Union[str, Path]~~ |
|
|
| `nlp_path` | Path to serialized NLP pipeline. If None, path will be guessed. ~~Optional[Union[Path, str]]~~ |
|
|
| `desc_path` | Path to file with descriptions for entities. ~~int~~ |
|
|
| `ent_desc_reader` | Entity description reader. Defaults to an internal method expecting a CSV file without header row, with ";" as delimiters, and with two columns - one for the entitys' IDs, one for their descriptions. ~~Optional[EntDescReader]~~ |
|
|
|
|
##### spacy.KBFileLoader.v1 {id="kb-file-loader-v1"}
|
|
|
|
Adheres to the `InMemoryLookupKBLoader` interface required by
|
|
[`spacy.CandidateSelector.v1`](#candidate-selector-v1). Loads a knowledge base
|
|
from a knowledge base file. The KB .yaml file has to stick to the following
|
|
format:
|
|
|
|
```yaml
|
|
entities:
|
|
# The key should be whatever ID identifies this entity uniquely in your knowledge base.
|
|
ID1:
|
|
name: "..."
|
|
desc: "..."
|
|
ID2:
|
|
...
|
|
# Data on aliases in your knowledge base - e. g. "Apple" for the entity "Apple Inc.".
|
|
aliases:
|
|
- alias: "..."
|
|
# List of all entities that this alias refers to.
|
|
entities: ["ID1", "ID2", ...]
|
|
# Optional: prior probabilities that this alias refers to the n-th entity in the "entities" attribute.
|
|
probabilities: [0.5, 0.2, ...]
|
|
- alias: "..."
|
|
entities: [...]
|
|
probabilities: [...]
|
|
...
|
|
```
|
|
|
|
See
|
|
[here](https://github.com/explosion/spacy-llm/blob/main/usage_examples/el_openai/el_kb_data.yml)
|
|
for a toy example of how such a KB file might look like.
|
|
|
|
> #### Example config for spacy.KBFileLoader.v1
|
|
>
|
|
> ```ini
|
|
> [initialize.components.llm.candidate_selector.kb_loader]
|
|
> @llm_misc = "spacy.KBFileLoader.v1"
|
|
> # Path to knowledge base file.
|
|
> path = ${paths.el_kb}
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| -------- | ------------------------------------- |
|
|
| `path` | Path to KB file. ~~Union[str, Path]~~ |
|
|
|
|
### NER {id="ner"}
|
|
|
|
The NER task identifies non-overlapping entities in text.
|
|
|
|
#### spacy.NER.v3 {id="ner-v3"}
|
|
|
|
Version 3 is fundamentally different to v1 and v2, as it implements
|
|
Chain-of-Thought prompting, based on the
|
|
[PromptNER paper](https://arxiv.org/pdf/2305.15444.pdf) by Ashok and Lipton
|
|
(2023). On an internal use-case, we have found this implementation to obtain
|
|
significant better accuracy - with an increase of F-score of up to 15 percentage
|
|
points.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.NER.v3"
|
|
> labels = ["PERSON", "ORGANISATION", "LOCATION"]
|
|
> ```
|
|
|
|
When no examples are [specified](/usage/large-language-models#few-shot-prompts),
|
|
the v3 implementation will use a dummy example in the prompt. Technically this
|
|
means that the task will always perform few-shot prompting under the hood.
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [ner.v3.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/ner.v3.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[NERTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `NERExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `label_definitions` | Optional dict mapping a label to a description of that label. These descriptions are added to the prompt to help instruct the LLM on what to extract. Defaults to `None`. ~~Optional[Dict[str, str]]~~ |
|
|
| `description` (NEW) | A description of what to recognize or not recognize as entities. ~~str~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, defaults to `spacy.LowercaseNormalizer.v1`. Defaults to `None`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `alignment_mode` | Alignment mode in case the LLM returns entities that do not align with token boundaries. Options are `"strict"`, `"contract"` or `"expand"`. Defaults to `"contract"`. ~~str~~ |
|
|
| `case_sensitive_matching` | Whether to search without case sensitivity. Defaults to `False`. ~~bool~~ |
|
|
|
|
Note that the `single_match` parameter, used in v1 and v2, is not supported
|
|
anymore, as the CoT parsing algorithm takes care of this automatically.
|
|
|
|
New to v3 is the fact that you can provide an explicit description of what
|
|
entities should look like. You can use this feature in addition to
|
|
`label_definitions`.
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.NER.v3"
|
|
labels = ["DISH", "INGREDIENT", "EQUIPMENT"]
|
|
description = Entities are the names food dishes,
|
|
ingredients, and any kind of cooking equipment.
|
|
Adjectives, verbs, adverbs are not entities.
|
|
Pronouns are not entities.
|
|
|
|
[components.llm.task.label_definitions]
|
|
DISH = "Known food dishes, e.g. Lobster Ravioli, garlic bread"
|
|
INGREDIENT = "Individual parts of a food dish, including herbs and spices."
|
|
EQUIPMENT = "Any kind of cooking equipment. e.g. oven, cooking pot, grill"
|
|
```
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
While not required, this task works best when both positive and negative
|
|
examples are provided. The format is different than the files required for v1
|
|
and v2, as additional fields such as `is_entity` and `reason` should now be
|
|
provided.
|
|
|
|
```json
|
|
[
|
|
{
|
|
"text": "You can't get a great chocolate flavor with carob.",
|
|
"spans": [
|
|
{
|
|
"text": "chocolate",
|
|
"is_entity": false,
|
|
"label": "==NONE==",
|
|
"reason": "is a flavor in this context, not an ingredient"
|
|
},
|
|
{
|
|
"text": "carob",
|
|
"is_entity": true,
|
|
"label": "INGREDIENT",
|
|
"reason": "is an ingredient to add chocolate flavor"
|
|
}
|
|
]
|
|
},
|
|
...
|
|
]
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "${paths.examples}"
|
|
```
|
|
|
|
For a fully working example, see this
|
|
[usage example](https://github.com/explosion/spacy-llm/tree/main/usage_examples/ner_v3_openai).
|
|
|
|
#### spacy.NER.v2 {id="ner-v2"}
|
|
|
|
This version supports explicitly defining the provided labels with custom
|
|
descriptions, and further supports zero-shot and few-shot prompting just like
|
|
v1.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.NER.v2"
|
|
> labels = ["PERSON", "ORGANISATION", "LOCATION"]
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `template` (NEW) | Custom prompt template to send to LLM model. Defaults to [ner.v2.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/ner.v2.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[NERTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `NERExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `label_definitions` (NEW) | Optional dict mapping a label to a description of that label. These descriptions are added to the prompt to help instruct the LLM on what to extract. Defaults to `None`. ~~Optional[Dict[str, str]]~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, defaults to `spacy.LowercaseNormalizer.v1`. Defaults to `None`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `alignment_mode` | Alignment mode in case the LLM returns entities that do not align with token boundaries. Options are `"strict"`, `"contract"` or `"expand"`. Defaults to `"contract"`. ~~str~~ |
|
|
| `case_sensitive_matching` | Whether to search without case sensitivity. Defaults to `False`. ~~bool~~ |
|
|
| `single_match` | Whether to match an entity in the LLM's response only once (the first hit) or multiple times. Defaults to `False`. ~~bool~~ |
|
|
|
|
The parameters `alignment_mode`, `case_sensitive_matching` and `single_match`
|
|
are identical to the [v1](#ner-v1) implementation. The format of few-shot
|
|
examples are also the same.
|
|
|
|
> Label descriptions can also be used with explicit examples to give as much
|
|
> info to the LLM model as possible.
|
|
|
|
New to v2 is the fact that you can write definitions for each label and provide
|
|
them via the `label_definitions` argument. This lets you tell the LLM exactly
|
|
what you're looking for rather than relying on the LLM to interpret its task
|
|
given just the label name. Label descriptions are freeform so you can write
|
|
whatever you want here, but a brief description along with some examples and
|
|
counter examples seems to work quite well.
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.NER.v2"
|
|
labels = PERSON,SPORTS_TEAM
|
|
|
|
[components.llm.task.label_definitions]
|
|
PERSON = "Extract any named individual in the text."
|
|
SPORTS_TEAM = "Extract the names of any professional sports team. e.g. Golden State Warriors, LA Lakers, Man City, Real Madrid"
|
|
```
|
|
|
|
For a fully working example, see this
|
|
[usage example](https://github.com/explosion/spacy-llm/tree/main/usage_examples/ner_dolly).
|
|
|
|
#### spacy.NER.v1 {id="ner-v1"}
|
|
|
|
The original version of the built-in NER task supports both zero-shot and
|
|
few-shot prompting.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.NER.v1"
|
|
> labels = PERSON,ORGANISATION,LOCATION
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[NERTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `NERExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | Comma-separated list of labels. ~~str~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, defaults to `spacy.LowercaseNormalizer.v1`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `alignment_mode` | Alignment mode in case the LLM returns entities that do not align with token boundaries. Options are `"strict"`, `"contract"` or `"expand"`. Defaults to `"contract"`. ~~str~~ |
|
|
| `case_sensitive_matching` | Whether to search without case sensitivity. Defaults to `False`. ~~bool~~ |
|
|
| `single_match` | Whether to match an entity in the LLM's response only once (the first hit) or multiple times. Defaults to `False`. ~~bool~~ |
|
|
|
|
The NER task implementation doesn't currently ask the LLM for specific offsets,
|
|
but simply expects a list of strings that represent the enties in the document.
|
|
This means that a form of string matching is required. This can be configured by
|
|
the following parameters:
|
|
|
|
- The `single_match` parameter is typically set to `False` to allow for multiple
|
|
matches. For instance, the response from the LLM might only mention the entity
|
|
"Paris" once, but you'd still want to mark it every time it occurs in the
|
|
document.
|
|
- The case-sensitive matching is typically set to `False` to be robust against
|
|
case variances in the LLM's output.
|
|
- The `alignment_mode` argument is used to match entities as returned by the LLM
|
|
to the tokens from the original `Doc` - specifically it's used as argument in
|
|
the call to [`doc.char_span()`](/api/doc#char_span). The `"strict"` mode will
|
|
only keep spans that strictly adhere to the given token boundaries.
|
|
`"contract"` will only keep those tokens that are fully within the given
|
|
range, e.g. reducing `"New Y"` to `"New"`. Finally, `"expand"` will expand the
|
|
span to the next token boundaries, e.g. expanding `"New Y"` out to
|
|
`"New York"`.
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
```yaml
|
|
- text: Jack and Jill went up the hill.
|
|
entities:
|
|
PERSON:
|
|
- Jack
|
|
- Jill
|
|
LOCATION:
|
|
- hill
|
|
- text: Jack fell down and broke his crown.
|
|
entities:
|
|
PERSON:
|
|
- Jack
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "ner_examples.yml"
|
|
```
|
|
|
|
### SpanCat {id="spancat"}
|
|
|
|
The SpanCat task identifies potentially overlapping entities in text.
|
|
|
|
#### spacy.SpanCat.v3 {id="spancat-v3"}
|
|
|
|
The built-in SpanCat v3 task is a simple adaptation of the NER v3 task to
|
|
support overlapping entities and store its annotations in `doc.spans`.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.SpanCat.v3"
|
|
> labels = ["PERSON", "ORGANISATION", "LOCATION"]
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [`spancat.v3.jinja`](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/spancat.v3.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SpanCatTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `SpanCatExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `label_definitions` | Optional dict mapping a label to a description of that label. These descriptions are added to the prompt to help instruct the LLM on what to extract. Defaults to `None`. ~~Optional[Dict[str, str]]~~ |
|
|
| `description` (NEW) | A description of what to recognize or not recognize as entities. ~~str~~ |
|
|
| `spans_key` | Key of the `Doc.spans` dict to save the spans under. Defaults to `"sc"`. ~~str~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, defaults to `spacy.LowercaseNormalizer.v1`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `alignment_mode` | Alignment mode in case the LLM returns entities that do not align with token boundaries. Options are `"strict"`, `"contract"` or `"expand"`. Defaults to `"contract"`. ~~str~~ |
|
|
| `case_sensitive_matching` | Whether to search without case sensitivity. Defaults to `False`. ~~bool~~ |
|
|
|
|
Note that the `single_match` parameter, used in v1 and v2, is not supported
|
|
anymore, as the CoT parsing algorithm takes care of this automatically.
|
|
|
|
#### spacy.SpanCat.v2 {id="spancat-v2"}
|
|
|
|
The built-in SpanCat v2 task is a simple adaptation of the NER v2 task to
|
|
support overlapping entities and store its annotations in `doc.spans`.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.SpanCat.v2"
|
|
> labels = ["PERSON", "ORGANISATION", "LOCATION"]
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `template` (NEW) | Custom prompt template to send to LLM model. Defaults to [`spancat.v2.jinja`](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/spancat.v2.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SpanCatTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `SpanCatExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `label_definitions` (NEW) | Optional dict mapping a label to a description of that label. These descriptions are added to the prompt to help instruct the LLM on what to extract. Defaults to `None`. ~~Optional[Dict[str, str]]~~ |
|
|
| `spans_key` | Key of the `Doc.spans` dict to save the spans under. Defaults to `"sc"`. ~~str~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, defaults to `spacy.LowercaseNormalizer.v1`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `alignment_mode` | Alignment mode in case the LLM returns entities that do not align with token boundaries. Options are `"strict"`, `"contract"` or `"expand"`. Defaults to `"contract"`. ~~str~~ |
|
|
| `case_sensitive_matching` | Whether to search without case sensitivity. Defaults to `False`. ~~bool~~ |
|
|
| `single_match` | Whether to match an entity in the LLM's response only once (the first hit) or multiple times. Defaults to `False`. ~~bool~~ |
|
|
|
|
Except for the `spans_key` parameter, the SpanCat v2 task reuses the
|
|
configuration from the NER v2 task. Refer to [its documentation](#ner-v2) for
|
|
more insight.
|
|
|
|
#### spacy.SpanCat.v1 {id="spancat-v1"}
|
|
|
|
The original version of the built-in SpanCat task is a simple adaptation of the
|
|
v1 NER task to support overlapping entities and store its annotations in
|
|
`doc.spans`.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.SpanCat.v1"
|
|
> labels = PERSON,ORGANISATION,LOCATION
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SpanCatTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `SpanCatExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | Comma-separated list of labels. ~~str~~ |
|
|
| `spans_key` | Key of the `Doc.spans` dict to save the spans under. Defaults to `"sc"`. ~~str~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, defaults to `spacy.LowercaseNormalizer.v1`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `alignment_mode` | Alignment mode in case the LLM returns entities that do not align with token boundaries. Options are `"strict"`, `"contract"` or `"expand"`. Defaults to `"contract"`. ~~str~~ |
|
|
| `case_sensitive_matching` | Whether to search without case sensitivity. Defaults to `False`. ~~bool~~ |
|
|
| `single_match` | Whether to match an entity in the LLM's response only once (the first hit) or multiple times. Defaults to `False`. ~~bool~~ |
|
|
|
|
Except for the `spans_key` parameter, the SpanCat v1 task reuses the
|
|
configuration from the NER v1 task. Refer to [its documentation](#ner-v1) for
|
|
more insight.
|
|
|
|
### TextCat {id="textcat"}
|
|
|
|
The TextCat task labels documents with relevant categories.
|
|
|
|
#### spacy.TextCat.v3 {id="textcat-v3"}
|
|
|
|
On top of the functionality from v2, version 3 of the built-in TextCat tasks
|
|
allows setting definitions of labels. Those definitions are included in the
|
|
prompt.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.TextCat.v3"
|
|
> labels = ["COMPLIMENT", "INSULT"]
|
|
>
|
|
> [components.llm.task.label_definitions]
|
|
> "COMPLIMENT" = "a polite expression of praise or admiration.",
|
|
> "INSULT" = "a disrespectful or scornfully abusive remark or act."
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [`textcat.v3.jinja`](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/textcat.v3.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SpanCatTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `TextCatExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `label_definitions` (NEW) | Dictionary of label definitions. Included in the prompt, if set. Defaults to `None`. ~~Optional[Dict[str, str]]~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, falls back to `spacy.LowercaseNormalizer.v1`. Defaults to `None`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `exclusive_classes` | If set to `True`, only one label per document should be valid. If set to `False`, one document can have multiple labels. Defaults to `False`. ~~bool~~ |
|
|
| `allow_none` | When set to `True`, allows the LLM to not return any of the given label. The resulting dict in `doc.cats` will have `0.0` scores for all labels. Defaults to `True`. ~~bool~~ |
|
|
| `verbose` | If set to `True`, warnings will be generated when the LLM returns invalid responses. Defaults to `False`. ~~bool~~ |
|
|
|
|
The formatting of few-shot examples is the same as those for the
|
|
[v1](#textcat-v1) implementation.
|
|
|
|
#### spacy.TextCat.v2 {id="textcat-v2"}
|
|
|
|
V2 includes all v1 functionality, with an improved prompt template.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.TextCat.v2"
|
|
> labels = ["COMPLIMENT", "INSULT"]
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` (NEW) | Custom prompt template to send to LLM model. Defaults to [`textcat.v2.jinja`](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/textcat.v2.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SpanCatTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `TextCatExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, falls back to `spacy.LowercaseNormalizer.v1`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `exclusive_classes` | If set to `True`, only one label per document should be valid. If set to `False`, one document can have multiple labels. Defaults to `False`. ~~bool~~ |
|
|
| `allow_none` | When set to `True`, allows the LLM to not return any of the given label. The resulting dict in `doc.cats` will have `0.0` scores for all labels. Defaults to `True`. ~~bool~~ |
|
|
| `verbose` | If set to `True`, warnings will be generated when the LLM returns invalid responses. Defaults to `False`. ~~bool~~ |
|
|
|
|
The formatting of few-shot examples is the same as those for the
|
|
[v1](#textcat-v1) implementation.
|
|
|
|
#### spacy.TextCat.v1 {id="textcat-v1"}
|
|
|
|
Version 1 of the built-in TextCat task supports both zero-shot and few-shot
|
|
prompting.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.TextCat.v1"
|
|
> labels = COMPLIMENT,INSULT
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Deafults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SpanCatTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `TextCatExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | Comma-separated list of labels. ~~str~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, falls back to `spacy.LowercaseNormalizer.v1`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `exclusive_classes` | If set to `True`, only one label per document should be valid. If set to `False`, one document can have multiple labels. Defaults to `False`. ~~bool~~ |
|
|
| `allow_none` | When set to `True`, allows the LLM to not return any of the given label. The resulting dict in `doc.cats` will have `0.0` scores for all labels. Defaults to `True`. ~~bool~~ |
|
|
| `verbose` | If set to `True`, warnings will be generated when the LLM returns invalid responses. Defaults to `False`. ~~bool~~ |
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
```json
|
|
[
|
|
{
|
|
"text": "You look great!",
|
|
"answer": "Compliment"
|
|
},
|
|
{
|
|
"text": "You are not very clever at all.",
|
|
"answer": "Insult"
|
|
}
|
|
]
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "textcat_examples.json"
|
|
```
|
|
|
|
If you want to perform few-shot learning with a binary classifier (i. e. a text
|
|
either should or should not be assigned to a given class), you can provide
|
|
positive and negative examples with answers of "POS" or "NEG". "POS" means that
|
|
this example should be assigned the class label defined in the configuration,
|
|
"NEG" means it shouldn't. E. g. for spam classification:
|
|
|
|
```json
|
|
[
|
|
{
|
|
"text": "You won the lottery! Wire a fee of 200$ to be able to withdraw your winnings.",
|
|
"answer": "POS"
|
|
},
|
|
{
|
|
"text": "Your order #123456789 has arrived",
|
|
"answer": "NEG"
|
|
}
|
|
]
|
|
```
|
|
|
|
### REL {id="rel"}
|
|
|
|
The REL task extracts relations between named entities.
|
|
|
|
#### spacy.REL.v1 {id="rel-v1"}
|
|
|
|
The built-in REL task supports both zero-shot and few-shot prompting. It relies
|
|
on an upstream NER component for entities extraction.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.REL.v1"
|
|
> labels = ["LivesIn", "Visits"]
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | --------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [`rel.v3.jinja`](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/rel.v1.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[RELTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `RELExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `labels` | List of labels or str of comma-separated list of labels. ~~Union[List[str], str]~~ |
|
|
| `label_definitions` | Dictionary providing a description for each relation label. Defaults to `None`. ~~Optional[Dict[str, str]]~~ |
|
|
| `normalizer` | Function that normalizes the labels as returned by the LLM. If `None`, falls back to `spacy.LowercaseNormalizer.v1`. Defaults to `None`. ~~Optional[Callable[[str], str]]~~ |
|
|
| `verbose` | If set to `True`, warnings will be generated when the LLM returns invalid responses. Defaults to `False`. ~~bool~~ |
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
```json
|
|
{"text": "Laura bought a house in Boston with her husband Mark.", "ents": [{"start_char": 0, "end_char": 5, "label": "PERSON"}, {"start_char": 24, "end_char": 30, "label": "GPE"}, {"start_char": 48, "end_char": 52, "label": "PERSON"}], "relations": [{"dep": 0, "dest": 1, "relation": "LivesIn"}, {"dep": 2, "dest": 1, "relation": "LivesIn"}]}
|
|
{"text": "Michael travelled through South America by bike.", "ents": [{"start_char": 0, "end_char": 7, "label": "PERSON"}, {"start_char": 26, "end_char": 39, "label": "LOC"}], "relations": [{"dep": 0, "dest": 1, "relation": "Visits"}]}
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.REL.v1"
|
|
labels = ["LivesIn", "Visits"]
|
|
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "rel_examples.jsonl"
|
|
```
|
|
|
|
Note: the REL task relies on pre-extracted entities to make its prediction.
|
|
Hence, you'll need to add a component that populates `doc.ents` with recognized
|
|
spans to your spaCy pipeline and put it _before_ the REL component.
|
|
|
|
For a fully working example, see this
|
|
[usage example](https://github.com/explosion/spacy-llm/tree/main/usage_examples/rel_openai).
|
|
|
|
### Lemma {id="lemma"}
|
|
|
|
The Lemma task lemmatizes the provided text and updates the `lemma_` attribute
|
|
in the doc's tokens accordingly.
|
|
|
|
#### spacy.Lemma.v1 {id="lemma-v1"}
|
|
|
|
This task supports both zero-shot and few-shot prompting.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.Lemma.v1"
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [lemma.v1.jinja](https://github.com/explosion/spacy-llm/blob/main/spacy_llm/tasks/templates/lemma.v1.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[LemmaTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `LemmaExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
|
|
The task prompts the LLM to lemmatize the passed text and return the lemmatized
|
|
version as a list of tokens and their corresponding lemma. E. g. the text
|
|
`I'm buying ice cream for my friends` should invoke the response
|
|
|
|
```
|
|
I: I
|
|
'm: be
|
|
buying: buy
|
|
ice: ice
|
|
cream: cream
|
|
for: for
|
|
my: my
|
|
friends: friend
|
|
.: .
|
|
```
|
|
|
|
If for any given text/doc instance the number of lemmas returned by the LLM
|
|
doesn't match the number of tokens from the pipeline's tokenizer, no lemmas are
|
|
stored in the corresponding doc's tokens. Otherwise the tokens `.lemma_`
|
|
property is updated with the lemma suggested by the LLM.
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
```yaml
|
|
- text: I'm buying ice cream.
|
|
lemmas:
|
|
- 'I': 'I'
|
|
- "'m": 'be'
|
|
- 'buying': 'buy'
|
|
- 'ice': 'ice'
|
|
- 'cream': 'cream'
|
|
- '.': '.'
|
|
|
|
- text: I've watered the plants.
|
|
lemmas:
|
|
- 'I': 'I'
|
|
- "'ve": 'have'
|
|
- 'watered': 'water'
|
|
- 'the': 'the'
|
|
- 'plants': 'plant'
|
|
- '.': '.'
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.Lemma.v1"
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "lemma_examples.yml"
|
|
```
|
|
|
|
### Sentiment {id="sentiment"}
|
|
|
|
Performs sentiment analysis on provided texts. Scores between 0 and 1 are stored
|
|
in `Doc._.sentiment` - the higher, the more positive. Note in cases of parsing
|
|
issues (e. g. in case of unexpected LLM responses) the value might be `None`.
|
|
|
|
#### spacy.Sentiment.v1 {id="sentiment-v1"}
|
|
|
|
This task supports both zero-shot and few-shot prompting.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.Sentiment.v1"
|
|
> examples = null
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| --------------------------- | -------------------------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `template` | Custom prompt template to send to LLM model. Defaults to [sentiment.v1.jinja](./spacy_llm/tasks/templates/sentiment.v1.jinja). ~~str~~ |
|
|
| `examples` | Optional function that generates examples for few-shot learning. Defaults to `None`. ~~Optional[Callable[[], Iterable[Any]]]~~ |
|
|
| `parse_responses` (NEW) | Callable for parsing LLM responses for this task. Defaults to the internal parsing method for this task. ~~Optional[TaskResponseParser[SentimentTask]]~~ |
|
|
| `prompt_example_type` (NEW) | Type to use for fewshot examples. Defaults to `SentimentExample`. ~~Optional[Type[FewshotExample]]~~ |
|
|
| `scorer` (NEW) | Scorer function that evaluates the task performance on provided examples. Defaults to the metric used by spaCy. ~~Optional[Scorer]~~ |
|
|
| `field` | Name of extension attribute to store summary in (i. e. the summary will be available in `doc._.{field}`). Defaults to `sentiment`. ~~str~~ |
|
|
|
|
To perform [few-shot learning](/usage/large-language-models#few-shot-prompts),
|
|
you can write down a few examples in a separate file, and provide these to be
|
|
injected into the prompt to the LLM. The default reader `spacy.FewShotReader.v1`
|
|
supports `.yml`, `.yaml`, `.json` and `.jsonl`.
|
|
|
|
```yaml
|
|
- text: 'This is horrifying.'
|
|
score: 0
|
|
- text: 'This is underwhelming.'
|
|
score: 0.25
|
|
- text: 'This is ok.'
|
|
score: 0.5
|
|
- text: "I'm looking forward to this!"
|
|
score: 1.0
|
|
```
|
|
|
|
```ini
|
|
[components.llm.task]
|
|
@llm_tasks = "spacy.Sentiment.v1"
|
|
[components.llm.task.examples]
|
|
@misc = "spacy.FewShotReader.v1"
|
|
path = "sentiment_examples.yml"
|
|
```
|
|
|
|
### NoOp {id="noop"}
|
|
|
|
This task is only useful for testing - it tells the LLM to do nothing, and does
|
|
not set any fields on the `docs`.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task]
|
|
> @llm_tasks = "spacy.NoOp.v1"
|
|
> ```
|
|
|
|
#### spacy.NoOp.v1 {id="noop-v1"}
|
|
|
|
This task needs no further configuration.
|
|
|
|
## Models {id="models"}
|
|
|
|
A _model_ defines which LLM model to query, and how to query it. It can be a
|
|
simple function taking a collection of prompts (consistent with the output type
|
|
of `task.generate_prompts()`) and returning a collection of responses
|
|
(consistent with the expected input of `parse_responses`). Generally speaking,
|
|
it's a function of type
|
|
`Callable[[Iterable[Iterable[Any]]], Iterable[Iterable[Any]]]`, but specific
|
|
implementations can have other signatures, like
|
|
`Callable[[Iterable[Iterable[str]]], Iterable[Iterable[str]]]`.
|
|
|
|
Note: the model signature expects a nested iterable so it's able to deal with
|
|
sharded docs. Unsharded docs (i. e. those produced by (nonsharding
|
|
tasks)[/api/large-language-models#task-nonsharding]) are reshaped to fit the
|
|
expected data structure.
|
|
|
|
### Models via REST API {id="models-rest"}
|
|
|
|
These models all take the same parameters, but note that the `config` should
|
|
contain provider-specific keys and values, as it will be passed onwards to the
|
|
provider's API.
|
|
|
|
| Argument | Description |
|
|
| ------------------ | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
|
|
| `name` | Model name, i. e. any supported variant for this particular model. Default depends on the specific model (cf. below) ~~str~~ |
|
|
| `config` | Further configuration passed on to the model. Default depends on the specific model (cf. below). ~~Dict[Any, Any]~~ |
|
|
| `strict` | If `True`, raises an error if the LLM API returns a malformed response. Otherwise, return the error responses as is. Defaults to `True`. ~~bool~~ |
|
|
| `max_tries` | Max. number of tries for API request. Defaults to `5`. ~~int~~ |
|
|
| `max_request_time` | Max. time (in seconds) to wait for request to terminate before raising an exception. Defaults to `30.0`. ~~float~~ |
|
|
| `interval` | Time interval (in seconds) for API retries in seconds. Defaults to `1.0`. ~~float~~ |
|
|
| `endpoint` | Endpoint URL. Defaults to the provider's standard URL, if available (which is not the case for providers with exclusively custom deployments, such as Azure) ~~Optional[str]~~ |
|
|
|
|
> #### Example config:
|
|
>
|
|
> ```ini
|
|
> [components.llm.model]
|
|
> @llm_models = "spacy.GPT-4.v1"
|
|
> name = "gpt-4"
|
|
> config = {"temperature": 0.0}
|
|
> ```
|
|
|
|
Currently, these models are provided as part of the core library:
|
|
|
|
| Model | Provider | Supported names | Default name | Default config |
|
|
| ----------------------------- | ----------------- | ------------------------------------------------------------------------------------------------------------------ | ---------------------- | ------------------------------------ |
|
|
| `spacy.GPT-4.v1` | OpenAI | `["gpt-4", "gpt-4-0314", "gpt-4-32k", "gpt-4-32k-0314"]` | `"gpt-4"` | `{}` |
|
|
| `spacy.GPT-4.v2` | OpenAI | `["gpt-4", "gpt-4-0314", "gpt-4-32k", "gpt-4-32k-0314"]` | `"gpt-4"` | `{temperature=0.0}` |
|
|
| `spacy.GPT-4.v3` | OpenAI | All names of [GPT-4 models](https://platform.openai.com/docs/models/gpt-4-and-gpt-4-turbo) offered by OpenAI | `"gpt-4"` | `{temperature=0.0}` |
|
|
| `spacy.GPT-3-5.v1` | OpenAI | `["gpt-3.5-turbo", "gpt-3.5-turbo-16k", "gpt-3.5-turbo-0613", "gpt-3.5-turbo-0613-16k", "gpt-3.5-turbo-instruct"]` | `"gpt-3.5-turbo"` | `{}` |
|
|
| `spacy.GPT-3-5.v2` | OpenAI | `["gpt-3.5-turbo", "gpt-3.5-turbo-16k", "gpt-3.5-turbo-0613", "gpt-3.5-turbo-0613-16k", "gpt-3.5-turbo-instruct"]` | `"gpt-3.5-turbo"` | `{temperature=0.0}` |
|
|
| `spacy.GPT-3-5.v3` | OpenAI | All names of [GPT-3.5 models](https://platform.openai.com/docs/models/gpt-3-5) offered by OpenAI | `"gpt-3.5-turbo"` | `{temperature=0.0}` |
|
|
| `spacy.Davinci.v1` | OpenAI | `["davinci"]` | `"davinci"` | `{}` |
|
|
| `spacy.Davinci.v2` | OpenAI | `["davinci"]` | `"davinci"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Text-Davinci.v1` | OpenAI | `["text-davinci-003", "text-davinci-002"]` | `"text-davinci-003"` | `{}` |
|
|
| `spacy.Text-Davinci.v2` | OpenAI | `["text-davinci-003", "text-davinci-002"]` | `"text-davinci-003"` | `{temperature=0.0, max_tokens=1000}` |
|
|
| `spacy.Code-Davinci.v1` | OpenAI | `["code-davinci-002"]` | `"code-davinci-002"` | `{}` |
|
|
| `spacy.Code-Davinci.v2` | OpenAI | `["code-davinci-002"]` | `"code-davinci-002"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Curie.v1` | OpenAI | `["curie"]` | `"curie"` | `{}` |
|
|
| `spacy.Curie.v2` | OpenAI | `["curie"]` | `"curie"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Text-Curie.v1` | OpenAI | `["text-curie-001"]` | `"text-curie-001"` | `{}` |
|
|
| `spacy.Text-Curie.v2` | OpenAI | `["text-curie-001"]` | `"text-curie-001"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Babbage.v1` | OpenAI | `["babbage"]` | `"babbage"` | `{}` |
|
|
| `spacy.Babbage.v2` | OpenAI | `["babbage"]` | `"babbage"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Text-Babbage.v1` | OpenAI | `["text-babbage-001"]` | `"text-babbage-001"` | `{}` |
|
|
| `spacy.Text-Babbage.v2` | OpenAI | `["text-babbage-001"]` | `"text-babbage-001"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Ada.v1` | OpenAI | `["ada"]` | `"ada"` | `{}` |
|
|
| `spacy.Ada.v2` | OpenAI | `["ada"]` | `"ada"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Text-Ada.v1` | OpenAI | `["text-ada-001"]` | `"text-ada-001"` | `{}` |
|
|
| `spacy.Text-Ada.v2` | OpenAI | `["text-ada-001"]` | `"text-ada-001"` | `{temperature=0.0, max_tokens=500}` |
|
|
| `spacy.Azure.v1` | Microsoft, OpenAI | Arbitrary values | No default | `{temperature=0.0}` |
|
|
| `spacy.Command.v1` | Cohere | `["command", "command-light", "command-light-nightly", "command-nightly"]` | `"command"` | `{}` |
|
|
| `spacy.Claude-2-1.v1` | Anthropic | `["claude-2-1"]` | `"claude-2-1"` | `{}` |
|
|
| `spacy.Claude-2.v1` | Anthropic | `["claude-2", "claude-2-100k"]` | `"claude-2"` | `{}` |
|
|
| `spacy.Claude-1.v1` | Anthropic | `["claude-1", "claude-1-100k"]` | `"claude-1"` | `{}` |
|
|
| `spacy.Claude-1-0.v1` | Anthropic | `["claude-1.0"]` | `"claude-1.0"` | `{}` |
|
|
| `spacy.Claude-1-2.v1` | Anthropic | `["claude-1.2"]` | `"claude-1.2"` | `{}` |
|
|
| `spacy.Claude-1-3.v1` | Anthropic | `["claude-1.3", "claude-1.3-100k"]` | `"claude-1.3"` | `{}` |
|
|
| `spacy.Claude-instant-1.v1` | Anthropic | `["claude-instant-1", "claude-instant-1-100k"]` | `"claude-instant-1"` | `{}` |
|
|
| `spacy.Claude-instant-1-1.v1` | Anthropic | `["claude-instant-1.1", "claude-instant-1.1-100k"]` | `"claude-instant-1.1"` | `{}` |
|
|
| `spacy.PaLM.v1` | Google | `["chat-bison-001", "text-bison-001"]` | `"text-bison-001"` | `{temperature=0.0}` |
|
|
|
|
To use these models, make sure that you've [set the relevant API](#api-keys)
|
|
keys as environment variables.
|
|
|
|
**⚠️ A note on `spacy.Azure.v1`.** Working with Azure OpenAI is slightly
|
|
different than working with models from other providers:
|
|
|
|
- In Azure LLMs have to be made available by creating a _deployment_ of a given
|
|
model (e. g. GPT-3.5). This deployment can have an arbitrary name. The `name`
|
|
argument, which everywhere else denotes the model name (e. g. `claude-1.0`,
|
|
`gpt-3.5`), here refers to the _deployment name_.
|
|
- Deployed Azure OpenAI models are reachable via a resource-specific base URL,
|
|
usually of the form `https://{resource}.openai.azure.com`. Hence the URL has
|
|
to be specified via the `base_url` argument.
|
|
- Azure further expects the _API version_ to be specified. The default value for
|
|
this, via the `api_version` argument, is currently `2023-05-15` but may be
|
|
updated in the future.
|
|
- Finally, since we can't infer information about the model from the deployment
|
|
name, `spacy-llm` requires the `model_type` to be set to either
|
|
`"completions"` or `"chat"`, depending on whether the deployed model is a
|
|
completion or chat model.
|
|
|
|
#### API Keys {id="api-keys"}
|
|
|
|
Note that when using hosted services, you have to ensure that the proper API
|
|
keys are set as environment variables as described by the corresponding
|
|
provider's documentation.
|
|
|
|
E. g. when using OpenAI, you have to get an API key from openai.com, and ensure
|
|
that the keys are set as environmental variables:
|
|
|
|
```shell
|
|
export OPENAI_API_KEY="sk-..."
|
|
export OPENAI_API_ORG="org-..."
|
|
```
|
|
|
|
For Cohere:
|
|
|
|
```shell
|
|
export CO_API_KEY="..."
|
|
```
|
|
|
|
For Anthropic:
|
|
|
|
```shell
|
|
export ANTHROPIC_API_KEY="..."
|
|
```
|
|
|
|
For PaLM:
|
|
|
|
```shell
|
|
export PALM_API_KEY="..."
|
|
```
|
|
|
|
### Models via HuggingFace {id="models-hf"}
|
|
|
|
These models all take the same parameters:
|
|
|
|
| Argument | Description |
|
|
| ------------- | ------------------------------------------------------------------------------------------------------------------------------------- |
|
|
| `name` | Model name, i. e. any supported variant for this particular model. ~~str~~ |
|
|
| `config_init` | Further configuration passed on to the construction of the model with `transformers.pipeline()`. Defaults to `{}`. ~~Dict[str, Any]~~ |
|
|
| `config_run` | Further configuration used during model inference. Defaults to `{}`. ~~Dict[str, Any]~~ |
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.model]
|
|
> @llm_models = "spacy.Llama2.v1"
|
|
> name = "Llama-2-7b-hf"
|
|
> ```
|
|
|
|
Currently, these models are provided as part of the core library:
|
|
|
|
| Model | Provider | Supported names | HF directory |
|
|
| -------------------- | --------------- | ------------------------------------------------------------------------------------------------------------ | -------------------------------------- |
|
|
| `spacy.Dolly.v1` | Databricks | `["dolly-v2-3b", "dolly-v2-7b", "dolly-v2-12b"]` | https://huggingface.co/databricks |
|
|
| `spacy.Falcon.v1` | TII | `["falcon-rw-1b", "falcon-7b", "falcon-7b-instruct", "falcon-40b-instruct"]` | https://huggingface.co/tiiuae |
|
|
| `spacy.Llama2.v1` | Meta AI | `["Llama-2-7b-hf", "Llama-2-13b-hf", "Llama-2-70b-hf"]` | https://huggingface.co/meta-llama |
|
|
| `spacy.Mistral.v1` | Mistral AI | `["Mistral-7B-v0.1", "Mistral-7B-Instruct-v0.1"]` | https://huggingface.co/mistralai |
|
|
| `spacy.StableLM.v1` | Stability AI | `["stablelm-base-alpha-3b", "stablelm-base-alpha-7b", "stablelm-tuned-alpha-3b", "stablelm-tuned-alpha-7b"]` | https://huggingface.co/stabilityai |
|
|
| `spacy.OpenLLaMA.v1` | OpenLM Research | `["open_llama_3b", "open_llama_7b", "open_llama_7b_v2", "open_llama_13b"]` | https://huggingface.co/openlm-research |
|
|
|
|
<Infobox variant="warning" title="Gated models on Hugging Face" id="hf_licensing">
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Some models available on Hugging Face (HF), such as Llama 2, are _gated models_.
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That means that users have to fulfill certain requirements to be allowed access
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to these models. In the case of Llama 2 you'll need to request agree to Meta's
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Terms of Service while logged in with your HF account. After Meta grants you
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permission to use Llama 2, you'll be able to download and use the model.
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This requires that you are logged in with your HF account on your local
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machine - check out the HF quick start documentation. In a nutshell, you'll need
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to create an access token on HF and log in to HF using your access token, e. g.
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with `huggingface-cli login`.
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</Infobox>
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Note that Hugging Face will download the model the first time you use it - you
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can
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[define the cached directory](https://huggingface.co/docs/huggingface_hub/main/en/guides/manage-cache)
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by setting the environmental variable `HF_HOME`.
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#### Installation with HuggingFace {id="install-hf"}
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To use models from HuggingFace, ideally you have a GPU enabled and have
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installed `transformers`, `torch` and CUDA in your virtual environment. This
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allows you to have the setting `device=cuda:0` in your config, which ensures
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that the model is loaded entirely on the GPU (and fails otherwise).
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You can do so with
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```shell
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python -m pip install "spacy-llm[transformers]" "transformers[sentencepiece]"
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```
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If you don't have access to a GPU, you can install `accelerate` and
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set`device_map=auto` instead, but be aware that this may result in some layers
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getting distributed to the CPU or even the hard drive, which may ultimately
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result in extremely slow queries.
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```shell
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python -m pip install "accelerate>=0.16.0,<1.0"
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```
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### LangChain models {id="langchain-models"}
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To use [LangChain](https://github.com/hwchase17/langchain) for the API retrieval
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part, make sure you have installed it first:
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```shell
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python -m pip install "langchain==0.0.191"
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# Or install with spacy-llm directly
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python -m pip install "spacy-llm[extras]"
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```
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Note that LangChain currently only supports Python 3.9 and beyond.
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LangChain models in `spacy-llm` work slightly differently. `langchain`'s models
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are parsed automatically, each LLM class in `langchain` has one entry in
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`spacy-llm`'s registry. As `langchain`'s design has one class per API and not
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per model, this results in registry entries like `langchain.OpenAI.v1` - i. e.
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there is one registry entry per API and not per model (family), as for the REST-
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and HuggingFace-based entries.
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The name of the model to be used has to be passed in via the `name` attribute.
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> #### Example config
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>
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> ```ini
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> [components.llm.model]
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> @llm_models = "langchain.OpenAI.v1"
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> name = "gpt-3.5-turbo"
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> query = {"@llm_queries": "spacy.CallLangChain.v1"}
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> config = {"temperature": 0.0}
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> ```
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| Argument | Description |
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| -------- | --------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
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| `name` | The name of a mdodel supported by LangChain for this API. ~~str~~ |
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| `config` | Configuration passed on to the LangChain model. Defaults to `{}`. ~~Dict[Any, Any]~~ |
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| `query` | Function that executes the prompts. If `None`, defaults to `spacy.CallLangChain.v1`. ~~Optional[Callable[["langchain.llms.BaseLLM", Iterable[Any]], Iterable[Any]]]~~ |
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The default `query` (`spacy.CallLangChain.v1`) executes the prompts by running
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`model(text)` for each given textual prompt.
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## Cache {id="cache"}
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Interacting with LLMs, either through an external API or a local instance, is
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costly. Since developing an NLP pipeline generally means a lot of exploration
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and prototyping, `spacy-llm` implements a built-in cache to avoid reprocessing
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the same documents at each run that keeps batches of documents stored on disk.
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|
> #### Example config
|
|
>
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> ```ini
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|
> [components.llm.cache]
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|
> @llm_misc = "spacy.BatchCache.v1"
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|
> path = "path/to/cache"
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> batch_size = 64
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> max_batches_in_mem = 4
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> ```
|
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|
|
| Argument | Description |
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| -------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------ |
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| `path` | Cache directory. If `None`, no caching is performed, and this component will act as a NoOp. Defaults to `None`. ~~Optional[Union[str, Path]]~~ |
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| `batch_size` | Number of docs in one batch (file). Once a batch is full, it will be peristed to disk. Defaults to 64. ~~int~~ |
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| `max_batches_in_mem` | Max. number of batches to hold in memory. Allows you to limit the effect on your memory if you're handling a lot of docs. Defaults to 4. ~~int~~ |
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|
When retrieving a document, the `BatchCache` will first figure out what batch
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the document belongs to. If the batch isn't in memory it will try to load the
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batch from disk and then move it into memory.
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|
Note that since the cache is generated by a registered function, you can also
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|
provide your own registered function returning your own cache implementation. If
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|
you wish to do so, ensure that your cache object adheres to the `Protocol`
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|
defined in `spacy_llm.ty.Cache`.
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|
|
## Various functions {id="various-functions"}
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|
|
|
### spacy.FewShotReader.v1 {id="fewshotreader-v1"}
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|
|
|
This function is registered in spaCy's `misc` registry, and reads in examples
|
|
from a `.yml`, `.yaml`, `.json` or `.jsonl` file. It uses
|
|
[`srsly`](https://github.com/explosion/srsly) to read in these files and parses
|
|
them depending on the file extension.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task.examples]
|
|
> @misc = "spacy.FewShotReader.v1"
|
|
> path = "ner_examples.yml"
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| -------- | ----------------------------------------------------------------------------------------------- |
|
|
| `path` | Path to an examples file with suffix `.yml`, `.yaml`, `.json` or `.jsonl`. ~~Union[str, Path]~~ |
|
|
|
|
### spacy.FileReader.v1 {id="filereader-v1"}
|
|
|
|
This function is registered in spaCy's `misc` registry, and reads a file
|
|
provided to the `path` to return a `str` representation of its contents. This
|
|
function is typically used to read
|
|
[Jinja](https://jinja.palletsprojects.com/en/3.1.x/) files containing the prompt
|
|
template.
|
|
|
|
> #### Example config
|
|
>
|
|
> ```ini
|
|
> [components.llm.task.template]
|
|
> @misc = "spacy.FileReader.v1"
|
|
> path = "ner_template.jinja2"
|
|
> ```
|
|
|
|
| Argument | Description |
|
|
| -------- | ------------------------------------------------- |
|
|
| `path` | Path to the file to be read. ~~Union[str, Path]~~ |
|
|
|
|
### Normalizer functions {id="normalizer-functions"}
|
|
|
|
These functions provide simple normalizations for string comparisons, e.g.
|
|
between a list of specified labels and a label given in the raw text of the LLM
|
|
response. They are registered in spaCy's `misc` registry and have the signature
|
|
`Callable[[str], str]`.
|
|
|
|
- `spacy.StripNormalizer.v1`: only apply `text.strip()`
|
|
- `spacy.LowercaseNormalizer.v1`: applies `text.strip().lower()` to compare
|
|
strings in a case-insensitive way.
|