""" title: Flash Card author: Fu-Jie author_url: https://github.com/Fu-Jie funding_url: https://github.com/Fu-Jie/awesome-openwebui version: 0.2.1 icon_url: data:image/svg+xml;base64,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 description: Quickly generates beautiful flashcards from text, extracting key points and categories. """ from pydantic import BaseModel, Field from typing import Optional, Dict, Any, List import json import logging from open_webui.utils.chat import generate_chat_completion from open_webui.models.users import Users # Setup logging logging.basicConfig(level=logging.INFO) logger = logging.getLogger(__name__) HTML_WRAPPER_TEMPLATE = """
""" class Action: class Valves(BaseModel): MODEL_ID: str = Field( default="", description="Model ID used for generating card content. If empty, uses the current model.", ) MIN_TEXT_LENGTH: int = Field( default=50, description="Minimum text length required to generate a flashcard (characters).", ) MAX_TEXT_LENGTH: int = Field( default=2000, description="Recommended maximum text length. For longer texts, deep analysis tools are recommended.", ) LANGUAGE: str = Field( default="en", description="Target language for card content (e.g., 'en', 'zh').", ) SHOW_STATUS: bool = Field( default=True, description="Whether to show status updates in the chat interface.", ) CLEAR_PREVIOUS_HTML: bool = Field( default=False, description="Whether to force clear previous plugin results (if True, overwrites instead of merging).", ) MESSAGE_COUNT: int = Field( default=1, description="Number of recent messages to use for generation. Set to 1 for just the last message, or higher for more context.", ) def __init__(self): self.valves = self.Valves() async def action( self, body: dict, __user__: Optional[Dict[str, Any]] = None, __event_emitter__: Optional[Any] = None, __request__: Optional[Any] = None, ) -> Optional[dict]: logger.info(f"Action: {__name__} triggered") if not __event_emitter__: return body # Get messages based on MESSAGE_COUNT messages = body.get("messages", []) if not messages: return body # Get last N messages based on MESSAGE_COUNT message_count = min(self.valves.MESSAGE_COUNT, len(messages)) recent_messages = messages[-message_count:] # Aggregate content from selected messages with labels aggregated_parts = [] for i, msg in enumerate(recent_messages, 1): text_content = self._extract_text_content(msg.get("content")) if text_content: role = msg.get("role", "unknown") role_label = ( "User" if role == "user" else "Assistant" if role == "assistant" else role ) aggregated_parts.append(f"[{role_label} Message {i}]\n{text_content}") if not aggregated_parts: return body target_message = "\n\n---\n\n".join(aggregated_parts) # Check text length text_length = len(target_message) if text_length < self.valves.MIN_TEXT_LENGTH: await self._emit_notification( __event_emitter__, f"Text too short ({text_length} chars), recommended at least {self.valves.MIN_TEXT_LENGTH} chars.", "warning", ) return body if text_length > self.valves.MAX_TEXT_LENGTH: await self._emit_notification( __event_emitter__, f"Text quite long ({text_length} chars), consider using 'Deep Reading' for deep analysis.", "info", ) # Notify user that we are generating the card await self._emit_notification( __event_emitter__, "⚡ Generating Flash Card...", "info" ) await self._emit_status( __event_emitter__, "⚡ Flash Card: Starting generation...", done=False ) try: # 1. Extract information using LLM await self._emit_status( __event_emitter__, "⚡ Flash Card: Calling AI model to analyze content...", done=False, ) user_id = __user__.get("id") if __user__ else "default" user_obj = Users.get_user_by_id(user_id) target_model = ( self.valves.MODEL_ID if self.valves.MODEL_ID else body.get("model") ) system_prompt = f""" You are a Flash Card Generation Expert, specializing in creating knowledge cards suitable for learning and memorization. Your task is to distill text into concise, easy-to-remember flashcards. Please extract the following fields and return them in JSON format: 1. "title": Create a short, precise title (3-8 words), highlighting the core concept. 2. "summary": Summarize the core essence in one sentence (10-25 words), making it easy to understand and remember. 3. "key_points": List 3-5 key memory points (5-15 words each). - Each point should be an independent knowledge unit. - Use concise, conversational expression. - Avoid long sentences. 4. "tags": List 2-4 classification tags (1-3 words each). 5. "category": Choose a main category (e.g., Concept, Skill, Fact, Method, etc.). Target Language: {self.valves.LANGUAGE} Important Principles: - **Minimalism**: Refine each point to the extreme. - **Memory First**: Content should be easy to memorize and recall. - **Core Focus**: Extract only the most core knowledge points. - **Conversational**: Use easy-to-understand language. - Return ONLY the JSON object, do not include markdown formatting. """ prompt = f"Please refine the following text into a learning flashcard:\n\n{target_message}" payload = { "model": target_model, "messages": [ {"role": "system", "content": system_prompt}, {"role": "user", "content": prompt}, ], "stream": False, } response = await generate_chat_completion(__request__, payload, user_obj) content = response["choices"][0]["message"]["content"] await self._emit_status( __event_emitter__, "⚡ Flash Card: AI analysis complete, parsing data...", done=False, ) # Parse JSON try: # simple cleanup in case of markdown code blocks if "```json" in content: content = content.split("```json")[1].split("```")[0].strip() elif "```" in content: content = content.split("```")[1].split("```")[0].strip() card_data = json.loads(content) except Exception as e: logger.error(f"Failed to parse JSON: {e}, content: {content}") await self._emit_status( __event_emitter__, "❌ Flash Card: Data parsing failed", done=True ) await self._emit_notification( __event_emitter__, "❌ Failed to generate card data, please try again.", "error", ) return body # 2. Generate HTML components await self._emit_status( __event_emitter__, "⚡ Flash Card: Rendering card...", done=False ) card_content, card_style = self.generate_html_card_components(card_data) # 3. Append to message # Extract existing HTML if any existing_html_block = "" match = re.search( r"```html\s*([\s\S]*?)```", body["messages"][-1]["content"], ) if match: existing_html_block = match.group(1) if self.valves.CLEAR_PREVIOUS_HTML: body["messages"][-1]["content"] = self._remove_existing_html( body["messages"][-1]["content"] ) final_html = self._merge_html( "", card_content, card_style, "", self.valves.LANGUAGE ) else: if existing_html_block: body["messages"][-1]["content"] = self._remove_existing_html( body["messages"][-1]["content"] ) final_html = self._merge_html( existing_html_block, card_content, card_style, "", self.valves.LANGUAGE, ) else: final_html = self._merge_html( "", card_content, card_style, "", self.valves.LANGUAGE ) html_embed_tag = f"```html\n{final_html}\n```" body["messages"][-1]["content"] += f"\n\n{html_embed_tag}" await self._emit_status( __event_emitter__, "✅ Flash Card: Generation complete!", done=True ) await self._emit_notification( __event_emitter__, "⚡ Flash Card generated successfully!", "success" ) return body except Exception as e: logger.error(f"Error generating knowledge card: {e}") await self._emit_status( __event_emitter__, "❌ Flash Card: Generation failed", done=True ) await self._emit_notification( __event_emitter__, f"❌ Error generating knowledge card: {str(e)}", "error", ) return body async def _emit_status(self, emitter, description: str, done: bool = False): """Emits a status update event.""" if self.valves.SHOW_STATUS and emitter: await emitter( {"type": "status", "data": {"description": description, "done": done}} ) async def _emit_notification(self, emitter, content: str, ntype: str = "info"): """Emits a notification event (info/success/warning/error).""" if emitter: await emitter( {"type": "notification", "data": {"type": ntype, "content": content}} ) def _remove_existing_html(self, content: str) -> str: """Removes existing plugin-generated HTML code blocks from the content.""" pattern = r"```html\s*[\s\S]*?```" return re.sub(pattern, "", content).strip() def _extract_text_content(self, content) -> str: """Extract text from message content, supporting multimodal message formats""" if isinstance(content, str): return content elif isinstance(content, list): # Multimodal message: [{"type": "text", "text": "..."}, {"type": "image_url", ...}] text_parts = [] for item in content: if isinstance(item, dict) and item.get("type") == "text": text_parts.append(item.get("text", "")) elif isinstance(item, str): text_parts.append(item) return "\n".join(text_parts) return str(content) if content else "" def _merge_html( self, existing_html_code: str, new_content: str, new_styles: str = "", new_scripts: str = "", user_language: str = "en-US", ) -> str: """ Merges new content into an existing HTML container, or creates a new one. """ if ( "" in existing_html_code and "" in existing_html_code ): base_html = existing_html_code base_html = re.sub(r"^```html\s*", "", base_html) base_html = re.sub(r"\s*```$", "", base_html) else: base_html = HTML_WRAPPER_TEMPLATE.replace("{user_language}", user_language) wrapped_content = f'
\n{new_content}\n
' if new_styles: base_html = base_html.replace( "/* STYLES_INSERTION_POINT */", f"{new_styles}\n/* STYLES_INSERTION_POINT */", ) base_html = base_html.replace( "", f"{wrapped_content}\n", ) if new_scripts: base_html = base_html.replace( "", f"{new_scripts}\n", ) return base_html.strip() def generate_html_card_components(self, data): # Enhanced CSS with premium styling style = """ @import url('https://fonts.googleapis.com/css2?family=Inter:wght@400;500;600;700;800&display=swap'); .knowledge-card-container { font-family: 'Inter', -apple-system, BlinkMacSystemFont, 'Segoe UI', sans-serif; display: flex; justify-content: center; margin: 30px 0; padding: 0 10px; } .knowledge-card { width: 100%; max-width: 500px; border-radius: 20px; overflow: hidden; background: linear-gradient(135deg, #667eea 0%, #764ba2 100%); padding: 3px; transition: all 0.4s cubic-bezier(0.4, 0, 0.2, 1); position: relative; } .knowledge-card:hover { transform: translateY(-8px) scale(1.02); box-shadow: 0 25px 50px -12px rgba(102, 126, 234, 0.4); } .knowledge-card::before { content: ''; position: absolute; top: -2px; left: -2px; right: -2px; bottom: -2px; background: linear-gradient(135deg, #667eea, #764ba2, #f093fb, #4facfe); border-radius: 20px; opacity: 0; transition: opacity 0.4s ease; z-index: -1; filter: blur(10px); } .knowledge-card:hover::before { opacity: 0.7; animation: glow 2s ease-in-out infinite; } @keyframes glow { 0%, 100% { opacity: 0.5; } 50% { opacity: 0.8; } } .card-inner { background: #ffffff; border-radius: 18px; overflow: hidden; } .card-header { background: linear-gradient(135deg, #667eea 0%, #764ba2 100%); color: white; padding: 32px 28px; position: relative; overflow: hidden; } .card-header::before { content: ''; position: absolute; top: -50%; right: -50%; width: 200%; height: 200%; background: radial-gradient(circle, rgba(255,255,255,0.1) 0%, transparent 70%); animation: rotate 15s linear infinite; } @keyframes rotate { from { transform: rotate(0deg); } to { transform: rotate(360deg); } } .card-category { font-size: 0.7em; text-transform: uppercase; letter-spacing: 2px; opacity: 0.95; margin-bottom: 10px; font-weight: 700; display: inline-block; padding: 4px 12px; background: rgba(255, 255, 255, 0.2); border-radius: 12px; backdrop-filter: blur(10px); } .card-title { font-size: 1.75em; font-weight: 800; margin: 0; line-height: 1.3; position: relative; z-index: 1; letter-spacing: -0.5px; } .card-body { padding: 28px; color: #1a1a1a; background: linear-gradient(to bottom, #ffffff 0%, #fafafa 100%); } .card-summary { font-size: 1.05em; color: #374151; margin-bottom: 24px; line-height: 1.7; border-left: 5px solid #764ba2; padding: 16px 20px; background: linear-gradient(135deg, rgba(102, 126, 234, 0.08) 0%, rgba(118, 75, 162, 0.08) 100%); border-radius: 0 12px 12px 0; font-weight: 500; position: relative; overflow: hidden; } .card-summary::before { content: '"'; position: absolute; top: -10px; left: 10px; font-size: 4em; color: rgba(118, 75, 162, 0.1); font-family: Georgia, serif; font-weight: bold; } .card-section-title { font-size: 0.85em; font-weight: 700; color: #764ba2; margin-bottom: 14px; text-transform: uppercase; letter-spacing: 1.5px; display: flex; align-items: center; gap: 8px; } .card-section-title::before { content: ''; width: 4px; height: 16px; background: linear-gradient(to bottom, #667eea, #764ba2); border-radius: 2px; } .card-points { list-style: none; padding: 0; margin: 0; } .card-points li { margin-bottom: 14px; padding: 12px 16px 12px 44px; position: relative; line-height: 1.6; color: #374151; background: #ffffff; border-radius: 10px; transition: all 0.3s ease; border: 1px solid #e5e7eb; font-weight: 500; } .card-points li:hover { transform: translateX(5px); background: linear-gradient(135deg, rgba(102, 126, 234, 0.05) 0%, rgba(118, 75, 162, 0.05) 100%); border-color: #764ba2; box-shadow: 0 4px 12px rgba(118, 75, 162, 0.1); } .card-points li::before { content: '✓'; color: #ffffff; background: linear-gradient(135deg, #667eea, #764ba2); font-weight: bold; position: absolute; left: 12px; top: 50%; transform: translateY(-50%); width: 24px; height: 24px; display: flex; align-items: center; justify-content: center; border-radius: 50%; font-size: 0.85em; box-shadow: 0 2px 8px rgba(118, 75, 162, 0.3); } .card-footer { padding: 20px 28px; background: linear-gradient(to right, #f8fafc 0%, #f1f5f9 100%); display: flex; flex-wrap: wrap; gap: 10px; border-top: 2px solid #e5e7eb; align-items: center; } .card-tag-label { font-size: 0.75em; font-weight: 700; color: #64748b; text-transform: uppercase; letter-spacing: 1px; margin-right: 4px; } .card-tag { background: linear-gradient(135deg, #667eea 0%, #764ba2 100%); color: white; padding: 6px 16px; border-radius: 20px; font-size: 0.85em; font-weight: 600; transition: all 0.3s ease; border: 2px solid transparent; cursor: default; letter-spacing: 0.3px; } .card-tag:hover { transform: translateY(-2px); box-shadow: 0 4px 12px rgba(102, 126, 234, 0.4); border-color: rgba(255, 255, 255, 0.3); } /* Dark mode support */ @media (prefers-color-scheme: dark) { .card-inner { background: #1e1e1e; } .card-body { background: linear-gradient(to bottom, #1e1e1e 0%, #252525 100%); color: #e5e7eb; } .card-summary { background: linear-gradient(135deg, rgba(102, 126, 234, 0.15) 0%, rgba(118, 75, 162, 0.15) 100%); color: #d1d5db; } .card-summary::before { color: rgba(118, 75, 162, 0.2); } .card-points li { color: #d1d5db; background: #2d2d2d; border-color: #404040; } .card-points li:hover { background: linear-gradient(135deg, rgba(102, 126, 234, 0.15) 0%, rgba(118, 75, 162, 0.15) 100%); border-color: #667eea; } .card-footer { background: linear-gradient(to right, #252525 0%, #2d2d2d 100%); border-top-color: #404040; } .card-tag-label { color: #9ca3af; } } /* Mobile responsive */ @media (max-width: 640px) { .knowledge-card { max-width: 100%; } .card-header { padding: 24px 20px; } .card-title { font-size: 1.5em; } .card-body { padding: 20px; } .card-footer { padding: 16px 20px; } } """ # Generate tags HTML tags_html = "" if "tags" in data and data["tags"]: for tag in data["tags"]: tags_html += f'
#{tag}
' # Generate key points HTML points_html = "" if "key_points" in data and data["key_points"]: for point in data["key_points"]: points_html += f"
  • {point}
  • " # Build the card HTML structure content = f"""
    {data.get('category', 'Knowledge')}

    {data.get('title', 'Flash Card')}

    {data.get('summary', '')}
    KEY POINTS
      {points_html}
    """ return content, style