Files
PHANTOM/engine/engine.py

76 lines
2.5 KiB
Python

from sys import platform
import numpy as np
from .lib.demand import generate_demand_for_actor, estimate_demand
from .lib.behavior import sample_behavior
from logging import INFO, getLogger
logger = getLogger(__name__)
logger.setLevel(INFO)
class MarketEngine():
"""implements separate demand distributions for humans and agents per Section 3.1.1"""
def __init__(self,
alpha: float,
N: int,
human_params: tuple,
agent_params: tuple,
demand_distribution = np.random.normal,
noise_std: float = 1.0):
# no defaults for D_H, D_A - force explicit experiment design
self.alpha = alpha
self.Nagents = int(N * alpha)
self.Nhumans = int(N * (1 - alpha))
self.human_params = human_params
self.agent_params = agent_params
self.noise_std = noise_std
self.demand_dist = demand_distribution
def act(self, prices):
# generate separate demands d() per actor type
demand_h = generate_demand_for_actor(prices, self.human_params, self.noise_std, distribution_method = self.demand_dist)
demand_a = generate_demand_for_actor(prices, self.agent_params, self.noise_std, distribution_method = self.demand_dist)
# sample behavior trajectories from each demand distribution
human_t = [sample_behavior(demand_h, human=True) for _ in range(self.Nhumans)]
agent_t = [sample_behavior(demand_a, human=False) for _ in range(self.Nagents)]
return estimate_demand(human_t + agent_t)
def measure(self):
pass
class PricingEngine():
def __init__(self,
) -> None:
pass
def act(self, demand):
return np.random.uniform(low=25, high=100, size=10)
class Limbo():
def __init__(self,
platform,
market
) -> None:
self.platform_turn = True
self.platform = platform
self.market = market
self.output = None
def step(self):
# we could code golf this a little bit
if self.platform_turn:
self.output = self.platform.act(self.output)
else:
self.output = self.market.act(self.output)
print(self.output)
self.platform_turn = not self.platform_turn
if __name__ == "__main__":
platform = PricingEngine()
market = MarketEngine(alpha=0.3, N=100, human_params=(50, 10), agent_params=(45, 15))
limbo = Limbo(platform, market)
for _ in range(10):
limbo.step()