Introduction to Amazon Nimble Studio and its use cases

In this recipe, we will learn about Amazon Nimble Studio. We will also learn about the use cases of Amazon Nimble Studio.

Recipe Objective - Introduction to Amazon Nimble Studio and its use cases?

The Amazon Nimble Studio is a widely used service and is defined as a fully managed service which enables creative studios to produce visual effects, animation, and interactive content entirely in the cloud. With access to virtual workstations, high-speed storage, and scalable rendering across AWS's global infrastructure, you can quickly onboard and collaborate with artists around the world and create content faster. Amazon Nimble Studio combines virtual workstations powered by Amazon EC2 G4dn instances, NVIDIA GPUs, and Amazon FSx high-speed storage into a single package. It works with Windows and Linux and allows artists to use Amazon Machine Images to work with third-party creative applications and custom software applications (AMIs). AWS also stated that studios can use custom software applications and bring them into Nimble Studio via AMIs. Customers can start with G4dn.xlarge (4 vCPUs, 16GB memory, and an NVIDIA Tesla T4 GPU with RTX) for simple tasks and scale up to 64 vCPUs and 256GB memory for larger data sets and simulation workflows. Build on the world's most secure infrastructure, knowing that users will always have control over their data, including the ability to encrypt, move, and manage it. Before it leaves the secure facilities, AWS automatically encrypts all data flowing across the AWS global network at the physical layer and it builds with the highest standard for data security. Granting user permissions, sharing project data, and adding new team members are all made easier with the Nimble Studio portal. Stream pixels instead of data using the NICE DCV remote display protocol to keep the users project data in the cloud and streamline artist collaboration and provides seamless collaboration.

Learn to Build ETL Data Pipelines on AWS

Benefits of Amazon Nimble Studio

  • Instead of weeks, users get their content production pipeline up and running in hours. Nimble Studio's automation and pre-built Amazon Machine Images (AMIs) make setting up virtual workstations, storage, and a render farm a breeze, all while maintaining an artist-friendly user interface (UI) and thus accelerate the cloud transition. Nimble Studio scales users studio to meet business needs across single or multiple locations by automatically configuring AWS services. With virtual workstations, users can add more artists to graphics-intensive projects, use high-speed storage with Amazon FSx, and orchestrate compute resources on an integrated cloud-based render farm with EC2 Spot Instances and thus scale with the project demand. In a matter of minutes, users will be able to bring in remote artists. Make use of the most up-to-date software and hardware to give users their artists and studio the best possible performance. Users can look for and hire the best talent in major content creation markets because of the availability and thus access the global talent users need. There are several costs to consider when setting up virtual streaming workstations. To take the guesswork out of the total cost of ownership, Nimble Studio offers a simplified pricing structure that includes the instance, Elastic Block Store (EBS), and egress charges (TCO) and thus provide simplified workstation pricing.

System Requirements

  • Any Operating System(Mac, Windows, Linux)

This recipe explains Amazon Nimble Studio and Use cases of Amazon Nimble Studio.

Use cases of Amazon Nimble Studio

    • It has a use case of Visual Effects(VFX)

Nimble Studio provides the robust infrastructure you need for even the most complex VFX work, whether users are creating lifelike creatures, immersive environments, or complex simulations.

    • It has a use case of Animation

Nimble Studio offers a content creation pipeline that scales with users needs, from animated shorts and commercials to full-length feature films.

    • It has a use case of Game development

Nimble Studio, in collaboration with AWS Partners Epic Games, Incredibuild, and Perforce, can help users scale your game production pipeline and connect remote teams.

What Users are saying..

profile image

Jingwei Li

Graduate Research assistance at Stony Brook University
linkedin profile url

ProjectPro is an awesome platform that helps me learn much hands-on industrial experience with a step-by-step walkthrough of projects. There are two primary paths to learn: Data Science and Big Data.... Read More

Relevant Projects

Build a Data Pipeline with Azure Synapse and Spark Pool
In this Azure Project, you will learn to build a Data Pipeline in Azure using Azure Synapse Analytics, Azure Storage, Azure Synapse Spark Pool to perform data transformations on an Airline dataset and visualize the results in Power BI.

Retail Analytics Project Example using Sqoop, HDFS, and Hive
This Project gives a detailed explanation of How Data Analytics can be used in the Retail Industry, using technologies like Sqoop, HDFS, and Hive.

Hadoop Project to Perform Hive Analytics using SQL and Scala
In this hadoop project, learn about the features in Hive that allow us to perform analytical queries over large datasets.

SQL Project for Data Analysis using Oracle Database-Part 7
In this SQL project, you will learn to perform various data wrangling activities on an ecommerce database.

Explore features of Spark SQL in practice on Spark 3.0
The goal of this spark project for students is to explore the features of Spark SQL in practice on the latest version of Spark i.e. Spark 2.0.

EMR Serverless Example to Build a Search Engine for COVID19
In this AWS Project, create a search engine using the BM25 TF-IDF Algorithm that uses EMR Serverless for ad-hoc processing of a large amount of unstructured textual data.

Build a real-time Streaming Data Pipeline using Flink and Kinesis
In this big data project on AWS, you will learn how to run an Apache Flink Python application for a real-time streaming platform using Amazon Kinesis.

Build Data Pipeline using Azure Medallion Architecture Approach
In this Azure Project, you will build a data pipeline to analyze large sensor data collected from water bodies across different European countries over several years using Azure Services and SQL Server to generate visualizations to gain valuable insights into water quality trends and determinands.

Python and MongoDB Project for Beginners with Source Code-Part 1
In this Python and MongoDB Project, you learn to do data analysis using PyMongo on MongoDB Atlas Cluster.

Build a Real-Time Spark Streaming Pipeline on AWS using Scala
In this Spark Streaming project, you will build a real-time spark streaming pipeline on AWS using Scala and Python.

OSZAR »