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196 lines
8.9 KiB
Python
196 lines
8.9 KiB
Python
# SPDX-FileCopyrightText: 2022-present deepset GmbH <info@deepset.ai>
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#
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# SPDX-License-Identifier: Apache-2.0
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from typing import Annotated, Any
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from haystack.core.serialization import generate_qualified_class_name
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from haystack.dataclasses.file_content import FileContent
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from haystack.dataclasses.image_content import ImageContent
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from haystack.dataclasses.skill_info import SkillInfo
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from haystack.skill_stores.types.protocol import SkillStore
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from haystack.tools.from_function import create_tool_from_function
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from haystack.tools.tool import Tool
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from haystack.tools.toolset import Toolset
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from haystack.utils.deserialization import deserialize_component_inplace
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class SkillToolset(Toolset):
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"""
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A Toolset that lets an Agent discover and read skills via progressive disclosure.
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A skill is a directory (or equivalent storage unit) containing a `SKILL.md` file with YAML frontmatter
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(`name` and `description`) and a markdown body of instructions. Skills may bundle additional files
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(reference docs, examples, templates).
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- On `warm_up`, the name and description of every discovered skill are baked into the `load_skill` tool
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description so the model knows which skills exist without any system prompt injection.
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- `load_skill` returns a skill's full instructions on demand, plus a manifest of its bundled files.
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- `read_skill_file` reads a bundled file on demand.
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### Usage example
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```python
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from haystack.components.agents import Agent
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from haystack.components.generators.chat import OpenAIChatGenerator
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from haystack.dataclasses import ChatMessage
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from haystack.tools import SkillToolset
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from haystack.skill_stores.file_system import FileSystemSkillStore
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store = FileSystemSkillStore("skills/")
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skills_toolset = SkillToolset(store)
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agent = Agent(chat_generator=OpenAIChatGenerator(), tools=skills_toolset)
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result = agent.run(messages=[ChatMessage.from_user("Fill in this PDF form for me.")])
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```
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Expected filesystem layout:
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```
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skills/
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pdf-forms/
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SKILL.md # frontmatter (name, description) + markdown instructions
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reference/forms.md
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```
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The tool names `load_skill` and `read_skill_file` are fixed, so an `Agent` can use at most one
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`SkillToolset`. To serve skills from multiple sources, back a single toolset with a custom store that
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merges them.
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"""
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def __init__(self, store: SkillStore) -> None:
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"""
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Initialize the SkillToolset.
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Constructing the toolset does not read any skills. The store is queried for the available skills on
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`warm_up()`, so stores that do I/O (reading a directory, connecting to a database) stay cheap to
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construct.
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The `load_skill` and `read_skill_file` tools are created right away, so the toolset can be used as a
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collection (length, membership checks, iteration) immediately.
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:param store: A `haystack.skill_stores.types.SkillStore` instance to back this toolset.
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"""
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self._store = store
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self._skills: dict[str, SkillInfo] = {}
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self._is_warmed_up = False
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# We create both tools now and dynamically update the `load_skill` description at warm-up with the discovered
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# catalog
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self._load_skill_tool = self._create_load_skill_tool()
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super().__init__(tools=[self._load_skill_tool, self._create_read_skill_file_tool()])
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@property
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def skills(self) -> dict[str, SkillInfo]:
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"""Mapping of skill name to its metadata. Triggers `warm_up()` on first access if not already warmed up."""
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if not self._is_warmed_up:
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self.warm_up()
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return self._skills
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def warm_up(self) -> None:
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"""
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Discover the available skills from the store and bake the catalog into the `load_skill` description.
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Only the description content is dynamic, so the (static) tools created in `__init__` are reused; this
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refreshes `load_skill`'s description once the catalog is known. Idempotent: repeated calls after the
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first are no-ops.
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"""
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if self._is_warmed_up:
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return
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if hasattr(self._store, "warm_up"):
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self._store.warm_up()
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self._skills = self._store.list_skills()
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self._load_skill_tool.description = self._load_skill_description()
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self._is_warmed_up = True
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def add(self, tool: Tool | Toolset) -> None:
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"""Adding tools is not supported: a SkillToolset's tools are fixed and defined by its store."""
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raise NotImplementedError(
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"SkillToolset does not support adding tools. To combine it with other tools, pass it to the Agent "
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"alongside them, e.g. tools=[skill_toolset, other_tool]."
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)
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def __add__(self, other: Tool | Toolset | list[Tool]) -> "Toolset":
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"""Concatenation is not supported for SearchableToolset."""
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raise NotImplementedError(
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"SkillToolset does not support concatenation. To combine it with other tools, pass it to the Agent "
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"alongside them, e.g. tools=[skill_toolset, other_tool]."
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)
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def _load_skill_description(self) -> str:
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"""
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Build the `load_skill` tool description, including the catalog of discovered skills.
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The available skills (name + description) are baked into the description so the model can see which skills
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exist and decide when to load one, without relying on any system prompt injection.
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:returns: The tool description text.
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"""
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lines = [
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"Load a skill's full instructions before doing a task it covers. Skills are specialized instruction "
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"sets for specific task types; once loaded, follow them exactly (they override your general approach). "
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"If a loaded skill references a bundled file, fetch it with `read_skill_file`."
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]
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if self._skills:
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lines += ["", "Available skills:"]
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lines += [f"- {meta.name}: {meta.description}" for meta in self._skills.values()]
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else:
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lines += ["", "No skills are currently available."]
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return "\n".join(lines)
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def _create_load_skill_tool(self) -> Tool:
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"""Create the `load_skill` tool, closed over this toolset's store."""
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def load_skill(name: Annotated[str, "Exact name of the skill to load, from the Available skills list."]) -> str:
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# The store raises an actionable error (e.g. unknown skill) on failure. We let it propagate so the Agent
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# applies its own tool-failure policy.
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body, bundled = self._store.load_skill(name)
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if bundled:
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manifest = "\n".join(f"- {path}" for path in bundled)
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body = f"{body}\n\nBundled files (read with `read_skill_file`):\n{manifest}"
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return body
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return create_tool_from_function(
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function=load_skill, name="load_skill", description=self._load_skill_description()
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)
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def _create_read_skill_file_tool(self) -> Tool:
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"""Create the `read_skill_file` tool, closed over this toolset's store."""
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def read_skill_file(
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name: Annotated[str, "Name of the skill that owns the file."],
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path: Annotated[str, "Path of the file relative to the skill directory, e.g. 'reference/forms.md'."],
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) -> str | list[ImageContent | FileContent]:
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"""Read a file bundled with a skill (reference docs, examples, templates, images, PDFs)."""
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# The store raises an actionable error (e.g. unknown skill) on failure. We let it propagate so the Agent
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# applies its own tool-failure policy.
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content = self._store.read_skill_file(name, path)
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# Text is returned as-is; images/PDFs are wrapped in a list so they ride back as multimodal tool-result
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# content parts for the model to ingest directly.
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return content if isinstance(content, str) else [content]
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# raw_result keeps ImageContent/FileContent intact instead of stringifying them, so they reach the model as
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# image/file content parts. This requires a multimodal-capable generator (e.g. OpenAIResponsesChatGenerator).
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return create_tool_from_function(
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function=read_skill_file, name="read_skill_file", outputs_to_string={"raw_result": True}
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)
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def to_dict(self) -> dict[str, Any]:
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"""
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Serialize the toolset to a dictionary.
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:returns: Dictionary representation of the toolset.
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"""
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return {"type": generate_qualified_class_name(type(self)), "data": {"store": self._store.to_dict()}}
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@classmethod
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def from_dict(cls, data: dict[str, Any]) -> "SkillToolset":
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"""
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Deserialize a toolset from a dictionary.
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:param data: Dictionary representation of the toolset, as produced by `to_dict`.
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:returns: A new SkillToolset instance.
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"""
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inner_data = data["data"]
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deserialize_component_inplace(inner_data, key="store")
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return cls(**inner_data)
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