forked from phoenix-oss/llama-stack-mirror
268 lines
8.9 KiB
Python
268 lines
8.9 KiB
Python
# Copyright (c) Meta Platforms, Inc. and affiliates.
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# All rights reserved.
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#
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# This source code is licensed under the terms described in the LICENSE file in
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# the root directory of this source tree.
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import re
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from string import Template
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from typing import List, Optional
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from llama_models.llama3.api.datatypes import * # noqa: F403
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from llama_stack.apis.inference import * # noqa: F403
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from .base import CANNED_RESPONSE_TEXT, OnViolationAction, ShieldBase, ShieldResponse
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SAFE_RESPONSE = "safe"
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_INSTANCE = None
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CAT_VIOLENT_CRIMES = "Violent Crimes"
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CAT_NON_VIOLENT_CRIMES = "Non-Violent Crimes"
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CAT_SEX_CRIMES = "Sex Crimes"
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CAT_CHILD_EXPLOITATION = "Child Exploitation"
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CAT_DEFAMATION = "Defamation"
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CAT_SPECIALIZED_ADVICE = "Specialized Advice"
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CAT_PRIVACY = "Privacy"
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CAT_INTELLECTUAL_PROPERTY = "Intellectual Property"
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CAT_INDISCRIMINATE_WEAPONS = "Indiscriminate Weapons"
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CAT_HATE = "Hate"
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CAT_SELF_HARM = "Self-Harm"
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CAT_SEXUAL_CONTENT = "Sexual Content"
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CAT_ELECTIONS = "Elections"
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CAT_CODE_INTERPRETER_ABUSE = "Code Interpreter Abuse"
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SAFETY_CATEGORIES_TO_CODE_MAP = {
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CAT_VIOLENT_CRIMES: "S1",
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CAT_NON_VIOLENT_CRIMES: "S2",
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CAT_SEX_CRIMES: "S3",
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CAT_CHILD_EXPLOITATION: "S4",
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CAT_DEFAMATION: "S5",
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CAT_SPECIALIZED_ADVICE: "S6",
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CAT_PRIVACY: "S7",
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CAT_INTELLECTUAL_PROPERTY: "S8",
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CAT_INDISCRIMINATE_WEAPONS: "S9",
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CAT_HATE: "S10",
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CAT_SELF_HARM: "S11",
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CAT_SEXUAL_CONTENT: "S12",
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CAT_ELECTIONS: "S13",
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CAT_CODE_INTERPRETER_ABUSE: "S14",
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}
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DEFAULT_LG_V3_SAFETY_CATEGORIES = [
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CAT_VIOLENT_CRIMES,
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CAT_NON_VIOLENT_CRIMES,
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CAT_SEX_CRIMES,
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CAT_CHILD_EXPLOITATION,
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CAT_DEFAMATION,
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CAT_SPECIALIZED_ADVICE,
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CAT_PRIVACY,
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CAT_INTELLECTUAL_PROPERTY,
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CAT_INDISCRIMINATE_WEAPONS,
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CAT_HATE,
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CAT_SELF_HARM,
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CAT_SEXUAL_CONTENT,
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CAT_ELECTIONS,
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]
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MODEL_TO_SAFETY_CATEGORIES_MAP = {
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CoreModelId.llama_guard_3_8b.value: (
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DEFAULT_LG_V3_SAFETY_CATEGORIES + [CAT_CODE_INTERPRETER_ABUSE]
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),
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CoreModelId.llama_guard_3_1b.value: DEFAULT_LG_V3_SAFETY_CATEGORIES,
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CoreModelId.llama_guard_3_11b_vision.value: DEFAULT_LG_V3_SAFETY_CATEGORIES,
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}
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PROMPT_TASK = "Task: Check if there is unsafe content in '$agent_type' messages in conversations according our safety policy with the below categories."
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SAFETY_CATEGORIES = """
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<BEGIN UNSAFE CONTENT CATEGORIES>
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$categories
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<END UNSAFE CONTENT CATEGORIES>
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"""
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PROMPT_CONVERSATION = """
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<BEGIN CONVERSATION>
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$conversations
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<END CONVERSATION>
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"""
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PROMPT_INSTRUCTIONS = """
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Provide your safety assessment for ONLY THE LAST $agent_type message in the above conversation:
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- First line must read 'safe' or 'unsafe'.
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- If unsafe, a second line must include a comma-separated list of violated categories."""
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PROMPT_TEMPLATE = Template(
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f"{PROMPT_TASK}{SAFETY_CATEGORIES}{PROMPT_CONVERSATION}{PROMPT_INSTRUCTIONS}"
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)
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class LlamaGuardShield(ShieldBase):
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def __init__(
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self,
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model: str,
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inference_api: Inference,
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excluded_categories: List[str] = None,
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on_violation_action: OnViolationAction = OnViolationAction.RAISE,
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):
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super().__init__(on_violation_action)
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if excluded_categories is None:
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excluded_categories = []
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assert len(excluded_categories) == 0 or all(
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x in SAFETY_CATEGORIES_TO_CODE_MAP.values() for x in excluded_categories
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), "Invalid categories in excluded categories. Expected format is ['S1', 'S2', ..]"
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if model not in MODEL_TO_SAFETY_CATEGORIES_MAP:
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raise ValueError(f"Unsupported model: {model}")
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self.model = model
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self.inference_api = inference_api
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self.excluded_categories = excluded_categories
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def check_unsafe_response(self, response: str) -> Optional[str]:
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match = re.match(r"^unsafe\n(.*)$", response)
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if match:
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# extracts the unsafe code
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extracted = match.group(1)
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return extracted
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return None
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def get_safety_categories(self) -> List[str]:
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excluded_categories = self.excluded_categories
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if set(excluded_categories) == set(SAFETY_CATEGORIES_TO_CODE_MAP.values()):
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excluded_categories = []
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final_categories = []
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all_categories = MODEL_TO_SAFETY_CATEGORIES_MAP[self.model]
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for cat in all_categories:
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cat_code = SAFETY_CATEGORIES_TO_CODE_MAP[cat]
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if cat_code in excluded_categories:
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continue
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final_categories.append(f"{cat_code}: {cat}.")
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return final_categories
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def validate_messages(self, messages: List[Message]) -> None:
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if len(messages) == 0:
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raise ValueError("Messages must not be empty")
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if messages[0].role != Role.user.value:
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raise ValueError("Messages must start with user")
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if len(messages) >= 2 and (
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messages[0].role == Role.user.value and messages[1].role == Role.user.value
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):
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messages = messages[1:]
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for i in range(1, len(messages)):
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if messages[i].role == messages[i - 1].role:
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raise ValueError(
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f"Messages must alternate between user and assistant. Message {i} has the same role as message {i - 1}"
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)
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return messages
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async def run(self, messages: List[Message]) -> ShieldResponse:
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messages = self.validate_messages(messages)
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if self.model == CoreModelId.llama_guard_3_11b_vision.value:
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shield_input_message = self.build_vision_shield_input(messages)
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else:
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shield_input_message = self.build_text_shield_input(messages)
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# TODO: llama-stack inference protocol has issues with non-streaming inference code
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content = ""
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async for chunk in await self.inference_api.chat_completion(
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model=self.model,
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messages=[shield_input_message],
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stream=True,
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):
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event = chunk.event
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if event.event_type == ChatCompletionResponseEventType.progress:
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assert isinstance(event.delta, str)
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content += event.delta
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content = content.strip()
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shield_response = self.get_shield_response(content)
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return shield_response
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def build_text_shield_input(self, messages: List[Message]) -> UserMessage:
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return UserMessage(content=self.build_prompt(messages))
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def build_vision_shield_input(self, messages: List[Message]) -> UserMessage:
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conversation = []
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most_recent_img = None
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for m in messages[::-1]:
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if isinstance(m.content, str):
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conversation.append(m)
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elif isinstance(m.content, ImageMedia):
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if most_recent_img is None and m.role == Role.user.value:
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most_recent_img = m.content
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conversation.append(m)
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elif isinstance(m.content, list):
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content = []
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for c in m.content:
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if isinstance(c, str):
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content.append(c)
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elif isinstance(c, ImageMedia):
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if most_recent_img is None and m.role == Role.user.value:
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most_recent_img = c
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content.append(c)
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else:
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raise ValueError(f"Unknown content type: {c}")
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conversation.append(UserMessage(content=content))
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else:
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raise ValueError(f"Unknown content type: {m.content}")
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prompt = []
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if most_recent_img is not None:
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prompt.append(most_recent_img)
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prompt.append(self.build_prompt(conversation[::-1]))
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return UserMessage(content=prompt)
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def build_prompt(self, messages: List[Message]) -> str:
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categories = self.get_safety_categories()
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categories_str = "\n".join(categories)
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conversations_str = "\n\n".join(
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[
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f"{m.role.capitalize()}: {interleaved_text_media_as_str(m.content)}"
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for m in messages
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]
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)
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return PROMPT_TEMPLATE.substitute(
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agent_type=messages[-1].role.capitalize(),
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categories=categories_str,
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conversations=conversations_str,
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)
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def get_shield_response(self, response: str) -> ShieldResponse:
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response = response.strip()
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if response == SAFE_RESPONSE:
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return ShieldResponse(is_violation=False)
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unsafe_code = self.check_unsafe_response(response)
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if unsafe_code:
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unsafe_code_list = unsafe_code.split(",")
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if set(unsafe_code_list).issubset(set(self.excluded_categories)):
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return ShieldResponse(is_violation=False)
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return ShieldResponse(
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is_violation=True,
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violation_type=unsafe_code,
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violation_return_message=CANNED_RESPONSE_TEXT,
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)
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raise ValueError(f"Unexpected response: {response}")
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