Ray is a library for writing parallel and distributed Python applications. It scales from your laptop to a large cluster, has a simple yet flexible API, and provides high performance out of the box.
I have a question concerning the access of the shared memory within the Ray Framework.
Imagine the following setup on 1 machine:
Start Ray cluster
Start a process/worker python script w1.py, which ...
I have this code:
from copy import deepcopy
from ray.rllib.agents.agent import get_agent_class
from ray.rllib.agents.registry import ...
I am interested in understanding how remote functions and remote actors are made to run in a distributed manner under the hood in the ray library. I have traced the code beginning from ray.remote to ...
I design a reflection system based on Ray2D. when the ray casts toward an object, if the object's tag is "mirror", the ray reflects and if the tag is "barrier" the ray stops right ...
I was looking at this StackOverflow thread on using ray.serve to have a saved TF model predict in parallel:
I tried something similar with the following:
I'm trying to run ray head node on a VirtualBox(lubuntu18.04) with the command
ray start --head --port='2121' 2121 is the port forwarding port
I get a normal ray runtime message.
From my local machine,...
Similar question has been asked at How can I use the python logging in Ray? but the solution provided is not working for me
I'm not able to get the logs from the worker node in the stdout /logfile. ...
I've been having an issue with Rllib where my model is crashing on my LSTM layer, specifically with my initial hidden and cell states, and digging into it, it looks like the issue is that with a ...
I am trying to create a heat map image using a ray tracing algorithm. I need two variables pixel_with_most_rays and pixel_with_least_rays to determine the min and max values of the heat map.
I am ...
I am trying to use ray[tune] on a linux server where I am just a user without the root permission.
After installing ray[tune] and running python code from ray import tune , I got an error message:
I started ray on a terminal in an environment called p_c which has pandas installed with the command
ray start --head --num-cpus=2 --num-gpus=0
Then, I ran the following python script:
I am making a ray tracer in c++ using visual studio. I was implementing a ray class and in my main (and in other places I called for a ray) it gave me this error. I am genuinely so confused.
I'm using the Python package "Bayesian Optimization" (https://github.com/fmfn/BayesianOptimization) for parameter optimization. By default, the black_box_function always returns the (single) ...
I want to use the ray task method rather than the ray actor method to parallelise a method within a class. The reason being the latter seems to need to change how a class is instantiated (as shown ...
I have data on a server that I have made on a virtualbox and i have a grpc server there.
On my local machine, I have created a grpc client that sends a class instance to the server, the server ...
I want to parallelise the operation of a function on each element of a list using ray. A simplified snippet is below
import numpy as np
num_cpus = psutil....
I'm trying to distribute a function over an EMR cluster using Ray. The number of tasks(5,000) are much more than the number of available CPUs(512). My issue is that Ray is not distributing tasks to ...
How to modify the code that when I press FIRE1 for a short time, that comes a short shot, and when I leave the button pressed on the mouse for a long time to switch to semi-automatic shooting, it ...
I've been trying to set up a custom LSTM model with RLLib, but for some reason I'm getting an incompatible shapes error within my LSTM layer when trying to train. In particular, this error seems to be ...
Following the docs as suggested here: https://docs.ray.io/en/latest/cluster/kubernetes.html I am able to execute the sample programs and submit jobs.
I would like to know the best way to install ...
I need to get the episode info dict from the on_sample_end callback so that I can display some custom metrics every time a rollout has finished. How can I do that?
Ray Version: 0.7.3
Thank you in ...
I am encountering some strange behavior with a parameter server setup. It might be the code itself or maybe misuse on my part.
I have a server (that does some work also) instantiated with a numpy ...
so i have a simple a script
import requests as r
r.get("http://127.0.0.1:5000/" + str(i))
if __name__ == "...
I am trying to use Ray on Windows and have followed the documentation, but am unable to initialize Ray even though the latest Visual C++ runtime is installed.
Whenever I run
I've been trying, unsuccessfully, to implement Ray (https://github.com/ray-project/ray) into the production version of our AI API. Essentially, we want to use it to speed up one of our ...
When learning the Ray technology for the distributed Python, I read the following statement on Ray, and I am not fully understanding what does it really mean? Any explanations with some application ...
I'm using Ray Tune for hyperparameter optimization and logging.
Ray Tune successfully logs my scalar values and writes them to the Tensorboard log.
The values do show up in Tensorboards 'SCALARS' ...
The following code block is meant to save multiple metrics from my current run:
Ray is starting only one worker, even though enough GPUs and CPUs are available to launch more workers.
How can I increase the number of workers?
I have a function that loops through a list:
for id_ in id_list:
scrape(id_, str(id_.split('/')[-1]), id_list.index(id_), len(id_list), target_path)
I can run it in parallel using:
for id_ in ...
I am new to ray . I am on a small head node with 6 worker node on the same linux machine . When I submit my very small program to it it works . However as soon as I submit a little bit large program ...
Consider the following example:
import numpy as np
A = np.array( * 4200)
I am using version 0.8.6. The error occurs in the connect function in worker.py when ray.init() was run. I was able to trace the error and it occurs in the below part.
if mode == SCRIPT_MODE:
How can i construct a ray framework where each process will write it's results to a common file ? What i'm currently trying is :
How can I run an initializer function on each process started by Ray? This would be useful for global intialization tasks such as
configuring a specific logger for each new process
setting a specific ...
I wrote a simple pytorch script to train MNIST and it worked fine. I reimplemented my script to be with Trainable class:
import numpy as np
import torch.optim as optim
import torch.nn as ...
So I just ran a tune experiment and got the following output:
| Trial name | status | loc ...
I have a remote class like (using ray API)
And I want to start 60 or more instances of this class and let them do some work simultaneously.
However, I can't start ...
I'd like to use the rllib trained policy model in a different code where I need to track which action is generated for specific input states. Using a standard TensorFlow or PyTorch (preferred) network ...
I am writing a python program that sends packets for a specified amount of time.
The sending script:
transformer_sending_time = 0
I have a decently large Python program (~800 lines) which has the following structure:
Setup instructions, where I process an input file provided by the user and define variables/objects which will ...
I'm using Tune class-based Trainable API. See code sample:
from ray import tune
import numpy as np
# first run
# second run, expecting same result
I'm trying to get rid of object pinned in shared memory using ray.put.
Here is code sample:
obj_id = ray.put(obj)
<do stuff with obj_id on ray Actors ...
I am looking for some guidance to building a multi agent dummy example. I've been trying to work through Rllib documentation , but I think I haven't understood the approach of how to create my own ...
I am trying to do the simplest thing with Ray, but no matter what I do it just never releases memory and fails.
The usage case is simply
read parquet files to DF -> pass to pool of actors -> ...
Code sample to illustrate the issue:
from ray import tune
def objective(step, alpha, beta):
return (0.1 + alpha * step / 100)**(-1) + beta * 0.1
Hi I am trying to register a custom GYM environment with OpenAI . I have followed the steps of creating a setup.py file and init.py files and mentioned the dependencies as required.
The next step is ...
My goal is to make the code below execute in roughly 0.3 instead of 0.5 seconds. I've tried using the decorators from functools.lru_cache, toolz.functoolz.memoize and kids.cache.cache on foo but none ...
I have enormous remote function that is parallelized with ray but within it, there is a loop I really need to be executed serially - each iteration to be globally executed once and only once. So, my ...
I have over a million json files, and I'm trying to find the fastest way to check first, if they load, and then, if there exists either key_A, key_B, or neither. I thought I might be able to use ray ...