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Implementation:Online ml River Utils Random

From Leeroopedia


Knowledge Sources
Domains Online_Learning, Random_Sampling, Statistics
Last Updated 2026-02-08 16:00 GMT

Overview

Random variable generation for Poisson and exponential distributions.

Description

Provides efficient implementations of poisson and exponential random variate generators. These avoid overflow issues present in naive implementations and are optimized for online learning scenarios where random sampling is needed.

Usage

Use for generating inter-arrival times (exponential) or count data (Poisson) in simulations, synthetic data generation, or stochastic processes. Essential for modeling event streams and time-based phenomena.

Code Reference

Source Location

Signature

def poisson(rate: float, rng=random) -> int:
    ...

def exponential(rate: float = 1.0, rng=random) -> float:
    ...

Import

from river import utils

Usage Examples

import random
from river import utils

rng = random.Random(42)

# Poisson samples (count data)
print("Poisson samples (rate=3):")
for _ in range(5):
    sample = utils.random.poisson(rate=3, rng=rng)
    print(sample, end=' ')
print()

# Exponential samples (inter-arrival times)
print("\nExponential samples (rate=0.5):")
for _ in range(5):
    sample = utils.random.exponential(rate=0.5, rng=rng)
    print(f"{sample:.2f}", end=' ')
print()

# Simulating event stream
print("\nEvent arrival times:")
time = 0
for _ in range(10):
    inter_arrival = utils.random.exponential(rate=2.0, rng=rng)
    time += inter_arrival
    n_events = utils.random.poisson(rate=1.5, rng=rng)
    print(f"Time {time:.2f}: {n_events} events")

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