Difference between revisions of "Using AWS EC2"
(→How to start Machine Learning Environment?) |
(→How to start Machine Learning Environment?) |
||
Line 29: | Line 29: | ||
* Stop instance by console same way you started when your work is done or taking break. | * Stop instance by console same way you started when your work is done or taking break. | ||
− | == How to | + | == How to activate Machine Learning Environment? == |
* After successful login from terminal through SSH you will have terminal access to your instance. | * After successful login from terminal through SSH you will have terminal access to your instance. |
Revision as of 23:50, 10 March 2023
DeepSense has always been focused on providing enhanced solutions with security. So we provide an Amazon EC2 instance to anyone on our team who wants to use the GPU virtual machine's full environment. Amazon EC2 offers users a variety of instance types, software packages, instance storage, and operating systems, resulting in flexibility. Users can configure memory, CPU, and boot partition size on Amazon EC2, which is then optimised for the operating system and application. There are two layers of access: the AWS console and the pc terminal window, into which you will log in using SSH.
Contents
DeepSense AWS EC2 Instances
Find the available EC2 options on Resources
We acquired AWS EC2 for DeepSense in order to take advantage of its best services and use it as a Virtual Machine. This is ideal for running high-performance applications, long-running applications, and applications that must start immediately. If you use AWS EC2 instances, remember to backup your data to avoid losing it. Amazon EC2 offers users a variety of instance types, software packages, instance storage, and operating systems, resulting in flexibility. Users can configure memory, CPU, and boot partition size on Amazon EC2, which is then optimised for the operating system and application.
EC2 for Machine Learning
EC2 provides the most comprehensive and comprehensive set of machine learning services and cloud infrastructure, putting machine learning in the hands of every developer, data scientist, and expert practitioner. We have used Amazon Deep Learning AMI in every instance to ensure we get all the necessary packeges and libraries so we can avoid time to set up the system and focus on working on model development.
Accessing DeepSense EC2 Instance by SSH
- Prerequisites include providing your own newly created SSH public to the cloud system administrator.
- Access your AWS console (from email – you will be asked to create new password)
- Once everything is in place, you will see the AWS console dashboard.
- Navigate to security credentials in the right top corner, where the account name is written.
- Follow the on-screen instructions to enable MFA. (https://docs.aws.amazon.com/IAM/latest/UserGuide/id_credentials_mfa_enable_virtual.html#enable-virt-mfa-for-iam-user)
- Go to EC2 service from search bar [search ec2]
- Select instances and find the Project Named instance
- Select the instance and go to actions.
- Select Start instance
- Select the option Connect and change tab to SSH client
- Copy the SSH command with instance’s present dns address
- Start your DalVPN to access the instance
- Open Terminal and paste the SSH command and edit it as this:
ssh -i “privatekey_path” username@DNSaddress
- You should have the access to instance now
- Stop instance by console same way you started when your work is done or taking break.
How to activate Machine Learning Environment?
- After successful login from terminal through SSH you will have terminal access to your instance.
- DeepSense virtual machines launched in the AWS Deep Learning AMI.
What is AWS DLAMI?
The AWS Deep Learning AMI (DLAMI) is customised machine instance is available in the Amazon EC2 regions for a variety of instance types, ranging from a small CPU-only instance to the most recent high-powered multi-GPU instances.
- As all the GPU resourses are of NVIDIA, you can find out the GPU info by typing
nvidia-smi
- To activate the inbuilt environment write this command
activate tensorflow
oractivate pytorch
.