Files
easy-rl/codes/MonteCarlo/agent.py
JohnJim0816 6e4d966e1f update
2021-03-28 11:18:52 +08:00

66 lines
2.5 KiB
Python

#!/usr/bin/env python
# coding=utf-8
'''
Author: John
Email: johnjim0816@gmail.com
Date: 2021-03-12 16:14:34
LastEditor: John
LastEditTime: 2021-03-17 12:35:06
Discription:
Environment:
'''
import numpy as np
from collections import defaultdict
import torch
class FisrtVisitMC:
''' On-Policy First-Visit MC Control
'''
def __init__(self,action_dim,cfg):
self.action_dim = action_dim
self.epsilon = cfg.epsilon
self.gamma = cfg.gamma
self.Q = defaultdict(lambda: np.zeros(action_dim))
self.returns_sum = defaultdict(float) # sum of returns
self.returns_count = defaultdict(float)
def choose_action(self,state):
''' e-greed policy '''
if state in self.Q.keys():
best_action = np.argmax(self.Q[state])
action_probs = np.ones(self.action_dim, dtype=float) * self.epsilon / self.action_dim
action_probs[best_action] += (1.0 - self.epsilon)
action = np.random.choice(np.arange(len(action_probs)), p=action_probs)
else:
action = np.random.randint(0,self.action_dim)
return action
def update(self,one_ep_transition):
# Find all (state, action) pairs we've visited in this one_ep_transition
# We convert each state to a tuple so that we can use it as a dict key
sa_in_episode = set([(tuple(x[0]), x[1]) for x in one_ep_transition])
for state, action in sa_in_episode:
sa_pair = (state, action)
# Find the first occurence of the (state, action) pair in the one_ep_transition
first_occurence_idx = next(i for i,x in enumerate(one_ep_transition)
if x[0] == state and x[1] == action)
# Sum up all rewards since the first occurance
G = sum([x[2]*(self.gamma**i) for i,x in enumerate(one_ep_transition[first_occurence_idx:])])
# Calculate average return for this state over all sampled episodes
self.returns_sum[sa_pair] += G
self.returns_count[sa_pair] += 1.0
self.Q[state][action] = self.returns_sum[sa_pair] / self.returns_count[sa_pair]
def save(self,path):
'''把 Q表格 的数据保存到文件中
'''
import dill
torch.save(
obj=self.Q,
f=path,
pickle_module=dill
)
def load(self, path):
'''从文件中读取数据到 Q表格
'''
import dill
self.Q =torch.load(f=path,pickle_module=dill)