# chatbot_prompts.py import logging def get_initial_insight_prompt_and_suggestions(plot_id: str, plot_label: str, plot_data_summary: str = None): """ Generates an initial prompt for the LLM to provide insights on a plot and suggested questions. Args: plot_id (str): The unique identifier for the plot. plot_label (str): The display label for the plot. plot_data_summary (str, optional): A textual summary of the data for the plot. Returns: tuple: (prompt_for_llm_str, list_of_suggestion_strings) """ logging.info(f"Generating initial insight prompt for plot_id: {plot_id}, label: {plot_label}") base_persona_prompt = "You are an expert in Employer Branding and LinkedIn social media strategy. Analyze the following data for the chart '{plot_label}' and provide key insights and actionable advice. Focus on interpreting the provided data snapshot." prompt_text = f"{base_persona_prompt.format(plot_label=plot_label)}\n\n" if plot_data_summary and plot_data_summary.strip() and \ "No data summary available" not in plot_data_summary and \ "Error generating data summary" not in plot_data_summary and \ "Accesso negato" not in plot_data_summary and \ f"Nessun sommario dati specifico disponibile per '{plot_label}'" not in plot_data_summary : # Added check for this specific no data message prompt_text += f"Data Snapshot for '{plot_label}':\n```text\n{plot_data_summary}\n```\n\n" prompt_text += "Based on this data and your expertise, what are the most important observations and what steps can be taken to improve or capitalize on these trends? Please provide a concise initial analysis." else: prompt_text += f"No specific data snapshot is available for '{plot_label}'. Provide general insights and advice for improving performance related to '{plot_label}' on LinkedIn, assuming typical scenarios. Please provide a concise initial analysis." # Default suggestions suggestions = [ f"What are the key drivers for {plot_label.lower()} based on the data?", f"How can I improve my {plot_label.lower()} according to these trends?", f"What does good performance look like for {plot_label.lower()}?" ] # Customize suggestions per plot_id if plot_id == "followers_count": suggestions = [ "Based on the follower data, what was our peak growth period?", "How often should I post to maximize follower growth?", "What content typically resonates most with potential followers?" ] elif plot_id == "engagement_rate": suggestions = [ "What does the engagement trend tell us about recent content performance?", "What types of posts typically get the highest engagement?", "Can you give me examples of strong calls to action?" ] elif plot_id == "reach_over_time": suggestions = [ "What does the reach data suggest about our content visibility?", "What are effective organic strategies to increase post reach?", "How do hashtags and tagging strategies impact reach?" ] elif plot_id == "impressions_over_time": suggestions = [ "How do current impressions compare to previous periods based on the data?", "What's the difference between reach and impressions?", "Does LinkedIn's algorithm favor certain content for impressions?" ] elif plot_id == "comments_sentiment": suggestions = [ "What does the sentiment breakdown indicate about audience perception?", "How can I encourage more positive comments?", "What's the best way to respond to negative comments?" ] # Add more plot_id specific suggestions if needed # Ensure exactly 3 suggestions while len(suggestions) < 3: suggestions.append(f"Tell me more about the trends in the {plot_label.lower()} data.") if len(suggestions) > 3: suggestions = suggestions[:3] return prompt_text, suggestions