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evaluate.py
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evaluate.py
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import keras
from keras.models import load_model
from agent.agent import Agent
from functions import *
import sys
if len(sys.argv) != 3:
print "Usage: python evaluate.py [stock] [model]"
exit()
stock_name, model_name = sys.argv[1], sys.argv[2]
model = load_model("models/" + model_name)
window_size = model.layers[0].input.shape.as_list()[1]
agent = Agent(window_size, True, model_name)
data = getStockDataVec(stock_name)
l = len(data) - 1
batch_size = 32
state = getState(data, 0, window_size + 1)
total_profit = 0
agent.inventory = []
for t in xrange(l):
action = agent.act(state)
# sit
next_state = getState(data, t + 1, window_size + 1)
reward = 0
if action == 1: # buy
agent.inventory.append(data[t])
print "Buy: " + formatPrice(data[t])
elif action == 2 and len(agent.inventory) > 0: # sell
bought_price = agent.inventory.pop(0)
reward = max(data[t] - bought_price, 0)
total_profit += data[t] - bought_price
print "Sell: " + formatPrice(data[t]) + " | Profit: " + formatPrice(data[t] - bought_price)
done = True if t == l - 1 else False
agent.memory.append((state, action, reward, next_state, done))
state = next_state
if done:
print "--------------------------------"
print stock_name + " Total Profit: " + formatPrice(total_profit)
print "--------------------------------"