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@ai-on-browser/data-analysis-models

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Data analysis model package without any dependencies

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/** * Monte Carlo agent */ export default class MCAgent { /** * @param {RLEnvironmentBase} env Environment * @param {number} [resolution] Resolution */ constructor(env: RLEnvironmentBase, resolution?: number); _env: RLEnvironmentBase; _table: MCTable; _history: any[]; /** * Reset agent. */ reset(): void; /** * Returns a score. * @returns {Array<Array<Array<number>>>} Score values */ get_score(): Array<Array<Array<number>>>; /** * Returns a action. * @param {*[]} state Current states * @param {number} greedy_rate Greedy rate * @returns {*[]} Action */ get_action(state: any[], greedy_rate?: number): any[]; /** * Update model. * @param {*[]} action Action * @param {*[]} state Next state * @param {number} reward Reward * @param {boolean} done Done epoch or not */ update(action: any[], state: any[], reward: number, done: boolean): void; } import { RLEnvironmentBase } from '../rl/base.js'; declare class MCTable extends QTableBase { constructor(env: any, resolution?: number, gamma?: number); _g: any[]; _epoch: number; _gamma: number; update(actions: any): void; } import { QTableBase } from './q_learning.js'; export {};