import questionary from typing import List, Optional, Tuple, Dict from rich.console import Console from cli.models import AnalystType from tradingagents.llm_clients.model_catalog import get_model_options console = Console() TICKER_INPUT_EXAMPLES = "Examples: SPY, CNC.TO, 7203.T, 0700.HK" ANALYST_ORDER = [ ("Market Analyst", AnalystType.MARKET), ("Social Media Analyst", AnalystType.SOCIAL), ("News Analyst", AnalystType.NEWS), ("Fundamentals Analyst", AnalystType.FUNDAMENTALS), ] def get_ticker() -> str: """Prompt the user to enter a ticker symbol.""" ticker = questionary.text( f"Enter the exact ticker symbol to analyze ({TICKER_INPUT_EXAMPLES}):", validate=lambda x: len(x.strip()) > 0 or "Please enter a valid ticker symbol.", style=questionary.Style( [ ("text", "fg:green"), ("highlighted", "noinherit"), ] ), ).ask() if not ticker: console.print("\n[red]No ticker symbol provided. Exiting...[/red]") exit(1) return normalize_ticker_symbol(ticker) def normalize_ticker_symbol(ticker: str) -> str: """Normalize ticker input while preserving exchange suffixes.""" return ticker.strip().upper() def get_analysis_date() -> str: """Prompt the user to enter a date in YYYY-MM-DD format.""" import re from datetime import datetime def validate_date(date_str: str) -> bool: if not re.match(r"^\d{4}-\d{2}-\d{2}$", date_str): return False try: datetime.strptime(date_str, "%Y-%m-%d") return True except ValueError: return False date = questionary.text( "Enter the analysis date (YYYY-MM-DD):", validate=lambda x: validate_date(x.strip()) or "Please enter a valid date in YYYY-MM-DD format.", style=questionary.Style( [ ("text", "fg:green"), ("highlighted", "noinherit"), ] ), ).ask() if not date: console.print("\n[red]No date provided. Exiting...[/red]") exit(1) return date.strip() def select_analysts() -> List[AnalystType]: """Select analysts using an interactive checkbox.""" choices = questionary.checkbox( "Select Your [Analysts Team]:", choices=[ questionary.Choice(display, value=value) for display, value in ANALYST_ORDER ], instruction="\n- Press Space to select/unselect analysts\n- Press 'a' to select/unselect all\n- Press Enter when done", validate=lambda x: len(x) > 0 or "You must select at least one analyst.", style=questionary.Style( [ ("checkbox-selected", "fg:green"), ("selected", "fg:green noinherit"), ("highlighted", "noinherit"), ("pointer", "noinherit"), ] ), ).ask() if not choices: console.print("\n[red]No analysts selected. Exiting...[/red]") exit(1) return choices def select_research_depth() -> int: """Select research depth using an interactive selection.""" # Define research depth options with their corresponding values DEPTH_OPTIONS = [ ("Shallow - Quick research, few debate and strategy discussion rounds", 1), ("Medium - Middle ground, moderate debate rounds and strategy discussion", 3), ("Deep - Comprehensive research, in depth debate and strategy discussion", 5), ] choice = questionary.select( "Select Your [Research Depth]:", choices=[ questionary.Choice(display, value=value) for display, value in DEPTH_OPTIONS ], instruction="\n- Use arrow keys to navigate\n- Press Enter to select", style=questionary.Style( [ ("selected", "fg:yellow noinherit"), ("highlighted", "fg:yellow noinherit"), ("pointer", "fg:yellow noinherit"), ] ), ).ask() if choice is None: console.print("\n[red]No research depth selected. Exiting...[/red]") exit(1) return choice def select_shallow_thinking_agent(provider) -> str: """Select shallow thinking llm engine using an interactive selection.""" choice = questionary.select( "Select Your [Quick-Thinking LLM Engine]:", choices=[ questionary.Choice(display, value=value) for display, value in get_model_options(provider, "quick") ], instruction="\n- Use arrow keys to navigate\n- Press Enter to select", style=questionary.Style( [ ("selected", "fg:magenta noinherit"), ("highlighted", "fg:magenta noinherit"), ("pointer", "fg:magenta noinherit"), ] ), ).ask() if choice is None: console.print( "\n[red]No shallow thinking llm engine selected. Exiting...[/red]" ) exit(1) return choice def select_deep_thinking_agent(provider) -> str: """Select deep thinking llm engine using an interactive selection.""" choice = questionary.select( "Select Your [Deep-Thinking LLM Engine]:", choices=[ questionary.Choice(display, value=value) for display, value in get_model_options(provider, "deep") ], instruction="\n- Use arrow keys to navigate\n- Press Enter to select", style=questionary.Style( [ ("selected", "fg:magenta noinherit"), ("highlighted", "fg:magenta noinherit"), ("pointer", "fg:magenta noinherit"), ] ), ).ask() if choice is None: console.print("\n[red]No deep thinking llm engine selected. Exiting...[/red]") exit(1) return choice def select_llm_provider() -> tuple[str, str]: """Select the OpenAI api url using interactive selection.""" # Define OpenAI api options with their corresponding endpoints BASE_URLS = [ ("OpenAI", "https://api.openai.com/v1"), ("Google", "https://generativelanguage.googleapis.com/v1"), ("Anthropic", "https://api.anthropic.com/"), ("xAI", "https://api.x.ai/v1"), ("Openrouter", "https://openrouter.ai/api/v1"), ("Ollama", "http://localhost:11434/v1"), ] choice = questionary.select( "Select your LLM Provider:", choices=[ questionary.Choice(display, value=(display, value)) for display, value in BASE_URLS ], instruction="\n- Use arrow keys to navigate\n- Press Enter to select", style=questionary.Style( [ ("selected", "fg:magenta noinherit"), ("highlighted", "fg:magenta noinherit"), ("pointer", "fg:magenta noinherit"), ] ), ).ask() if choice is None: console.print("\n[red]no OpenAI backend selected. Exiting...[/red]") exit(1) display_name, url = choice print(f"You selected: {display_name}\tURL: {url}") return display_name, url def ask_openai_reasoning_effort() -> str: """Ask for OpenAI reasoning effort level.""" choices = [ questionary.Choice("Medium (Default)", "medium"), questionary.Choice("High (More thorough)", "high"), questionary.Choice("Low (Faster)", "low"), ] return questionary.select( "Select Reasoning Effort:", choices=choices, style=questionary.Style([ ("selected", "fg:cyan noinherit"), ("highlighted", "fg:cyan noinherit"), ("pointer", "fg:cyan noinherit"), ]), ).ask() def ask_anthropic_effort() -> str | None: """Ask for Anthropic effort level. Controls token usage and response thoroughness on Claude 4.5+ and 4.6 models. """ return questionary.select( "Select Effort Level:", choices=[ questionary.Choice("High (recommended)", "high"), questionary.Choice("Medium (balanced)", "medium"), questionary.Choice("Low (faster, cheaper)", "low"), ], style=questionary.Style([ ("selected", "fg:cyan noinherit"), ("highlighted", "fg:cyan noinherit"), ("pointer", "fg:cyan noinherit"), ]), ).ask() def ask_gemini_thinking_config() -> str | None: """Ask for Gemini thinking configuration. Returns thinking_level: "high" or "minimal". Client maps to appropriate API param based on model series. """ return questionary.select( "Select Thinking Mode:", choices=[ questionary.Choice("Enable Thinking (recommended)", "high"), questionary.Choice("Minimal/Disable Thinking", "minimal"), ], style=questionary.Style([ ("selected", "fg:green noinherit"), ("highlighted", "fg:green noinherit"), ("pointer", "fg:green noinherit"), ]), ).ask()