Ray provides a simple, universal API for building distributed applications.
Project description
Ray provides a simple, universal API for building distributed applications.
Ray is packaged with the following libraries for accelerating machine learning workloads:
Tune: Scalable Hyperparameter Tuning
RLlib: Scalable Reinforcement Learning
Train: Distributed Deep Learning (beta)
Datasets: Distributed Data Loading and Compute
As well as libraries for taking ML and distributed apps to production:
There are also many community integrations with Ray, including Dask, MARS, Modin, Horovod, Hugging Face, Scikit-learn, and others. Check out the full list of Ray distributed libraries here.
Install Ray with: pip install ray. For nightly wheels, see the Installation page.
Quick Start
Execute Python functions in parallel.
import ray
ray.init()
@ray.remote
def f(x):
return x * x
futures = [f.remote(i) for i in range(4)]
print(ray.get(futures))
To use Ray’s actor model:
import ray
ray.init()
@ray.remote
class Counter(object):
def __init__(self):
self.n = 0
def increment(self):
self.n += 1
def read(self):
return self.n
counters = [Counter.remote() for i in range(4)]
[c.increment.remote() for c in counters]
futures = [c.read.remote() for c in counters]
print(ray.get(futures))
Ray programs can run on a single machine, and can also seamlessly scale to large clusters. To execute the above Ray script in the cloud, just download this configuration file, and run:
ray submit [CLUSTER.YAML] example.py --start
Read more about launching clusters.
Tune Quick Start
Tune is a library for hyperparameter tuning at any scale.
Launch a multi-node distributed hyperparameter sweep in less than 10 lines of code.
Supports any deep learning framework, including PyTorch, PyTorch Lightning, TensorFlow, and Keras.
Visualize results with TensorBoard.
Choose among scalable SOTA algorithms such as Population Based Training (PBT), Vizier’s Median Stopping Rule, HyperBand/ASHA.
Tune integrates with many optimization libraries such as Facebook Ax, HyperOpt, and Bayesian Optimization and enables you to scale them transparently.
To run this example, you will need to install the following:
$ pip install "ray[tune]"
This example runs a parallel grid search to optimize an example objective function.
from ray import tune
def objective(step, alpha, beta):
return (0.1 + alpha * step / 100)**(-1) + beta * 0.1
def training_function(config):
# Hyperparameters
alpha, beta = config["alpha"], config["beta"]
for step in range(10):
# Iterative training function - can be any arbitrary training procedure.
intermediate_score = objective(step, alpha, beta)
# Feed the score back back to Tune.
tune.report(mean_loss=intermediate_score)
analysis = tune.run(
training_function,
config={
"alpha": tune.grid_search([0.001, 0.01, 0.1]),
"beta": tune.choice([1, 2, 3])
})
print("Best config: ", analysis.get_best_config(metric="mean_loss", mode="min"))
# Get a dataframe for analyzing trial results.
df = analysis.results_df
If TensorBoard is installed, automatically visualize all trial results:
tensorboard --logdir ~/ray_results
RLlib Quick Start
RLlib is an industry-grade library for reinforcement learning (RL), built on top of Ray. It offers high scalability and unified APIs for a variety of industry- and research applications.
$ pip install "ray[rllib]" tensorflow # or torch
import gym
from ray.rllib.agents.ppo import PPOTrainer
# Define your problem using python and openAI's gym API:
class SimpleCorridor(gym.Env):
"""Corridor in which an agent must learn to move right to reach the exit.
---------------------
| S | 1 | 2 | 3 | G | S=start; G=goal; corridor_length=5
---------------------
Possible actions to chose from are: 0=left; 1=right
Observations are floats indicating the current field index, e.g. 0.0 for
starting position, 1.0 for the field next to the starting position, etc..
Rewards are -0.1 for all steps, except when reaching the goal (+1.0).
"""
def __init__(self, config):
self.end_pos = config["corridor_length"]
self.cur_pos = 0
self.action_space = gym.spaces.Discrete(2) # left and right
self.observation_space = gym.spaces.Box(0.0, self.end_pos, shape=(1,))
def reset(self):
"""Resets the episode and returns the initial observation of the new one.
"""
self.cur_pos = 0
# Return initial observation.
return [self.cur_pos]
def step(self, action):
"""Takes a single step in the episode given `action`
Returns:
New observation, reward, done-flag, info-dict (empty).
"""
# Walk left.
if action == 0 and self.cur_pos > 0:
self.cur_pos -= 1
# Walk right.
elif action == 1:
self.cur_pos += 1
# Set `done` flag when end of corridor (goal) reached.
done = self.cur_pos >= self.end_pos
# +1 when goal reached, otherwise -1.
reward = 1.0 if done else -0.1
return [self.cur_pos], reward, done, {}
# Create an RLlib Trainer instance.
trainer = PPOTrainer(
config={
# Env class to use (here: our gym.Env sub-class from above).
"env": SimpleCorridor,
# Config dict to be passed to our custom env's constructor.
"env_config": {
# Use corridor with 20 fields (including S and G).
"corridor_length": 20
},
# Parallelize environment rollouts.
"num_workers": 3,
})
# Train for n iterations and report results (mean episode rewards).
# Since we have to move at least 19 times in the env to reach the goal and
# each move gives us -0.1 reward (except the last move at the end: +1.0),
# we can expect to reach an optimal episode reward of -0.1*18 + 1.0 = -0.8
for i in range(5):
results = trainer.train()
print(f"Iter: {i}; avg. reward={results['episode_reward_mean']}")
After training, you may want to perform action computations (inference) in your environment. Here is a minimal example on how to do this. Also check out our more detailed examples here (in particular for normal models, LSTMs, and attention nets).
# Perform inference (action computations) based on given env observations.
# Note that we are using a slightly different env here (len 10 instead of 20),
# however, this should still work as the agent has (hopefully) learned
# to "just always walk right!"
env = SimpleCorridor({"corridor_length": 10})
# Get the initial observation (should be: [0.0] for the starting position).
obs = env.reset()
done = False
total_reward = 0.0
# Play one episode.
while not done:
# Compute a single action, given the current observation
# from the environment.
action = trainer.compute_single_action(obs)
# Apply the computed action in the environment.
obs, reward, done, info = env.step(action)
# Sum up rewards for reporting purposes.
total_reward += reward
# Report results.
print(f"Played 1 episode; total-reward={total_reward}")
Ray Serve Quick Start
Ray Serve is a scalable model-serving library built on Ray. It is:
Framework Agnostic: Use the same toolkit to serve everything from deep learning models built with frameworks like PyTorch or Tensorflow & Keras to Scikit-Learn models or arbitrary business logic.
Python First: Configure your model serving declaratively in pure Python, without needing YAMLs or JSON configs.
Performance Oriented: Turn on batching, pipelining, and GPU acceleration to increase the throughput of your model.
Composition Native: Allow you to create “model pipelines” by composing multiple models together to drive a single prediction.
Horizontally Scalable: Serve can linearly scale as you add more machines. Enable your ML-powered service to handle growing traffic.
To run this example, you will need to install the following:
$ pip install scikit-learn
$ pip install "ray[serve]"
This example runs serves a scikit-learn gradient boosting classifier.
import pickle
import requests
from sklearn.datasets import load_iris
from sklearn.ensemble import GradientBoostingClassifier
from ray import serve
serve.start()
# Train model.
iris_dataset = load_iris()
model = GradientBoostingClassifier()
model.fit(iris_dataset["data"], iris_dataset["target"])
@serve.deployment(route_prefix="/iris")
class BoostingModel:
def __init__(self, model):
self.model = model
self.label_list = iris_dataset["target_names"].tolist()
async def __call__(self, request):
payload = await request.json()["vector"]
print(f"Received flask request with data {payload}")
prediction = self.model.predict([payload])[0]
human_name = self.label_list[prediction]
return {"result": human_name}
# Deploy model.
BoostingModel.deploy(model)
# Query it!
sample_request_input = {"vector": [1.2, 1.0, 1.1, 0.9]}
response = requests.get("http://localhost:8000/iris", json=sample_request_input)
print(response.text)
# Result:
# {
# "result": "versicolor"
# }
More Information
Older documents:
Getting Involved
Forum: For discussions about development, questions about usage, and feature requests.
GitHub Issues: For reporting bugs.
Twitter: Follow updates on Twitter.
Slack: Join our Slack channel.
Meetup Group: Join our meetup group.
StackOverflow: For questions about how to use Ray.
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