Overview
This is a repackaged open source software product wherein additional charges apply for support by Bansir with Deep Learning AMI (DLAMI) Amazon Linux 2 and includes support. Deep learning frameworks are installed in Conda environments to provide a reliable and isolated environment for practitioners. The AWS Deep Learning AMI is provided at no additional charge to Amazon EC2 users. Deep Learning frameworks are pre-configured with latest versions of NVIDIA CUDA, cuDNN and Intel acceleration libraries such as MKL-DNN for high performance across CPU and GPU AWS EC2 instance types.
Below are the core components of AWS Deep Learning AMI:
Popular deep learning frameworks includng TensorFlow(1.x, 2.x), PyTorch(1.x), and MXNet(1.x) performance tuned for using in AWS Instrasturctures. They are organized into Conda environments that are configured to be used out-of-the-box. Built-in support for AWS Inferentia with the Inf1 instance family. AWS Deep Learning Tools including AWS Elastic Fabric Adapter(EFA) and AWS Neuron. NVIDIA Deep Learning Softwares Including NVIDIA GPU Driver, CUDA Toolkit, cuDNN, NCCL, and Fabric Manager. Containerization platforms including Docker, and NVIDIA-Docker for build and run GPU accelerated Docker containers. Intel Architecture performance library Intel MKL-DNN. A collection of popular tools such as awscli, boto3, numpy, scikit-learn, opencv, pandas, matplotlib, graphviz, jupyter, ipython, and more.
Highlights
- Based on Amazon Linux 2
- For getting-started guides, tutorials, and other deep learning resources : https://docs.aws.amazon.com/dlami/latest/devguide/overview-conda.html
Details
Typical total price
$0.163/hour
Features and programs
Financing for AWS Marketplace purchases
Pricing
- ...
Instance type | Product cost/hour | EC2 cost/hour | Total/hour |
---|---|---|---|
t2.nano | $0.07 | $0.006 | $0.076 |
t2.micro AWS Free Tier | $0.07 | $0.012 | $0.082 |
t2.small | $0.07 | $0.023 | $0.093 |
t2.medium | $0.07 | $0.046 | $0.116 |
t2.large Recommended | $0.07 | $0.093 | $0.163 |
t2.xlarge | $0.07 | $0.186 | $0.256 |
t2.2xlarge | $0.07 | $0.371 | $0.441 |
t3.nano | $0.07 | $0.005 | $0.075 |
t3.micro AWS Free Tier | $0.07 | $0.01 | $0.08 |
t3.small | $0.07 | $0.021 | $0.091 |
Additional AWS infrastructure costs
Type | Cost |
---|---|
EBS General Purpose SSD (gp2) volumes | $0.10/per GB/month of provisioned storage |
Vendor refund policy
No refunds will be issued for usage of this product.
Legal
Vendor terms and conditions
Content disclaimer
Delivery details
64-bit (x86) Amazon Machine Image (AMI)
Amazon Machine Image (AMI)
An AMI is a virtual image that provides the information required to launch an instance. Amazon EC2 (Elastic Compute Cloud) instances are virtual servers on which you can run your applications and workloads, offering varying combinations of CPU, memory, storage, and networking resources. You can launch as many instances from as many different AMIs as you need.
Version release notes
1.0.0-2022
Additional details
Usage instructions
SSH to the instance and login as 'ec2-user' using the key specified at launch.
OS commands via SSH: SSH as user 'ec2-user' to the running instance and use sudo to run commands requiring root access.
More on using Deep Learning AMI with Conda: https://docs.aws.amazon.com/dlami/latest/devguide/tutorial-conda.html
Resources
Vendor resources
Support
Vendor support
remote support support@bansircloud.com support@bansircloud.com
AWS infrastructure support
AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.
Similar products
Customer reviews
Ami for VPC
Amazon Deep Learning AMIs to train image and statistics models
1) image processing
2) testing if the historical data is useful to do forecasts.
Deep Learning AMI Bansir provides excellent frameworks to build statistical models and GPU instances for images.