Teresa  Jerde

Teresa Jerde

1596657240

New – Label 3D Point Clouds with Amazon SageMaker Ground Truth

Launched at AWS re:Invent 2018, Amazon Sagemaker Ground Truth is a capability of Amazon SageMaker that makes it easy to annotate machine learning datasets. Customers can efficiently and accurately label image and text data with built-in workflows, or any other type of data with custom workflows. Data samples are automatically distributed to a workforce (private, 3rd party or MTurk), and annotations are stored in Amazon Simple Storage Service (S3). Optionally, automated data labeling may also be enabled, reducing both the amount of time required to label the dataset, and the associated costs.

About a year ago, I met with Automotive customers who expressed interest in labeling 3-dimensional (3D) datasets for autonomous driving. Captured by LIDAR sensors, these datasets are particularly large and complex. Data is stored in frames that typically contain 50,000 to 5 million points, and can weigh up to hundreds of Megabytes each. Frames are either stored individually, or in sequences that make it easier to track moving objects.

As you can imagine, labeling these datasets is extremely time-consuming, as workers need to navigate complex 3D scenes and annotate many different object classes. This often requires building and managing very complex tools. Always looking to help customers build simpler and more efficient workflows, the Ground Truth team gathered more feedback, and got to work.

Today, I’m extremely happy to announce that you can use Amazon Sagemaker Ground Truth to label 3D point clouds using a built-in editor, and state-of-the-art assistive labeling features.

#amazon sagemaker ground truth #announcements #artificial intelligence #news #sagemaker

What is GEEK

Buddha Community

New – Label 3D Point Clouds with Amazon SageMaker Ground Truth
Adaline  Kulas

Adaline Kulas

1594162500

Multi-cloud Spending: 8 Tips To Lower Cost

A multi-cloud approach is nothing but leveraging two or more cloud platforms for meeting the various business requirements of an enterprise. The multi-cloud IT environment incorporates different clouds from multiple vendors and negates the dependence on a single public cloud service provider. Thus enterprises can choose specific services from multiple public clouds and reap the benefits of each.

Given its affordability and agility, most enterprises opt for a multi-cloud approach in cloud computing now. A 2018 survey on the public cloud services market points out that 81% of the respondents use services from two or more providers. Subsequently, the cloud computing services market has reported incredible growth in recent times. The worldwide public cloud services market is all set to reach $500 billion in the next four years, according to IDC.

By choosing multi-cloud solutions strategically, enterprises can optimize the benefits of cloud computing and aim for some key competitive advantages. They can avoid the lengthy and cumbersome processes involved in buying, installing and testing high-priced systems. The IaaS and PaaS solutions have become a windfall for the enterprise’s budget as it does not incur huge up-front capital expenditure.

However, cost optimization is still a challenge while facilitating a multi-cloud environment and a large number of enterprises end up overpaying with or without realizing it. The below-mentioned tips would help you ensure the money is spent wisely on cloud computing services.

  • Deactivate underused or unattached resources

Most organizations tend to get wrong with simple things which turn out to be the root cause for needless spending and resource wastage. The first step to cost optimization in your cloud strategy is to identify underutilized resources that you have been paying for.

Enterprises often continue to pay for resources that have been purchased earlier but are no longer useful. Identifying such unused and unattached resources and deactivating it on a regular basis brings you one step closer to cost optimization. If needed, you can deploy automated cloud management tools that are largely helpful in providing the analytics needed to optimize the cloud spending and cut costs on an ongoing basis.

  • Figure out idle instances

Another key cost optimization strategy is to identify the idle computing instances and consolidate them into fewer instances. An idle computing instance may require a CPU utilization level of 1-5%, but you may be billed by the service provider for 100% for the same instance.

Every enterprise will have such non-production instances that constitute unnecessary storage space and lead to overpaying. Re-evaluating your resource allocations regularly and removing unnecessary storage may help you save money significantly. Resource allocation is not only a matter of CPU and memory but also it is linked to the storage, network, and various other factors.

  • Deploy monitoring mechanisms

The key to efficient cost reduction in cloud computing technology lies in proactive monitoring. A comprehensive view of the cloud usage helps enterprises to monitor and minimize unnecessary spending. You can make use of various mechanisms for monitoring computing demand.

For instance, you can use a heatmap to understand the highs and lows in computing visually. This heat map indicates the start and stop times which in turn lead to reduced costs. You can also deploy automated tools that help organizations to schedule instances to start and stop. By following a heatmap, you can understand whether it is safe to shut down servers on holidays or weekends.

#cloud computing services #all #hybrid cloud #cloud #multi-cloud strategy #cloud spend #multi-cloud spending #multi cloud adoption #why multi cloud #multi cloud trends #multi cloud companies #multi cloud research #multi cloud market

Teresa  Jerde

Teresa Jerde

1596657240

New – Label 3D Point Clouds with Amazon SageMaker Ground Truth

Launched at AWS re:Invent 2018, Amazon Sagemaker Ground Truth is a capability of Amazon SageMaker that makes it easy to annotate machine learning datasets. Customers can efficiently and accurately label image and text data with built-in workflows, or any other type of data with custom workflows. Data samples are automatically distributed to a workforce (private, 3rd party or MTurk), and annotations are stored in Amazon Simple Storage Service (S3). Optionally, automated data labeling may also be enabled, reducing both the amount of time required to label the dataset, and the associated costs.

About a year ago, I met with Automotive customers who expressed interest in labeling 3-dimensional (3D) datasets for autonomous driving. Captured by LIDAR sensors, these datasets are particularly large and complex. Data is stored in frames that typically contain 50,000 to 5 million points, and can weigh up to hundreds of Megabytes each. Frames are either stored individually, or in sequences that make it easier to track moving objects.

As you can imagine, labeling these datasets is extremely time-consuming, as workers need to navigate complex 3D scenes and annotate many different object classes. This often requires building and managing very complex tools. Always looking to help customers build simpler and more efficient workflows, the Ground Truth team gathered more feedback, and got to work.

Today, I’m extremely happy to announce that you can use Amazon Sagemaker Ground Truth to label 3D point clouds using a built-in editor, and state-of-the-art assistive labeling features.

#amazon sagemaker ground truth #announcements #artificial intelligence #news #sagemaker

Adaline  Kulas

Adaline Kulas

1594166040

What are the benefits of cloud migration? Reasons you should migrate

The moving of applications, databases and other business elements from the local server to the cloud server called cloud migration. This article will deal with migration techniques, requirement and the benefits of cloud migration.

In simple terms, moving from local to the public cloud server is called cloud migration. Gartner says 17.5% revenue growth as promised in cloud migration and also has a forecast for 2022 as shown in the following image.

#cloud computing services #cloud migration #all #cloud #cloud migration strategy #enterprise cloud migration strategy #business benefits of cloud migration #key benefits of cloud migration #benefits of cloud migration #types of cloud migration

Best Cloud Computing (AWS) Development Company

Mobile App Development India engineers, who hold years of experience in building data centers in the cloud. Being AWS partner, our app developer’s offer spearhead integration services for Cloud to Cloud and Business-to-Business for all three models - SaaS, PaaS and IaaS.

Contact: https://www.mobile-app-development-india.com/cloud-computing-aws/

#cloud computing services india #cloud computing services #amazon cloud services india #amazon cloud computing services #cloud application development #amazon cloud app development

Blake  Kulas

Blake Kulas

1594392540

New – Label Videos with Amazon SageMaker Ground Truth | Amazon Web Services

Launched at AWS re:Invent 2018, Amazon Sagemaker Ground Truth is a capability of Amazon SageMaker that makes it easy to annotate machine learning datasets. Customers can efficiently and accurately label image, text and 3D point cloud data with built-in workflows, or any other type of data with custom workflows. Data samples are automatically distributed to a workforce (private, 3rd party or MTurk), and annotations are stored in Amazon Simple Storage Service (S3). Optionally, automated data labeling may also be enabled, reducing both the amount of time required to label the dataset, and the associated costs.

As models become more sophisticated, AWS customers are increasingly applying machine learning prediction to video content. Autonomous driving is perhaps the most well-known use case, as safety demands that road condition and moving objects be correctly detected and tracked in real-time. Video prediction is also a popular application in Sports, tracking players or racing vehicles to compute all kinds of statistics that fans are so fond of. Healthcare organizations also use video prediction to identify and track anatomical objects in medical videos. Manufacturing companies do the same to track objects on the assembly line, parcels for logistics, and more. The list goes on, and amazing applications keep popping up in many different industries.

Of course, this requires building and labeling video datasets, where objects of interest need to be labeled manually. At 30 frames per second, one minute of video translates to 1,800 individual images, so the amount of work can quickly become overwhelming. In addition, specific tools have to be built to label images, manage workflows, and so on. All this work takes valuable time and resources away from an organization’s core business.

AWS customers have asked us for a better solution, and today I’m very happy to announce that Amazon Sagemaker Ground Truth now supports video labeling.

Customer use case: the National Football League

The National Football League (NFL) has already put this new feature to work. Says Jennifer Langton, SVP of Player Health and Innovation, NFL: “At the National Football League (NFL), we continue to look for new ways to use machine learning (ML) to help our fans, broadcasters, coaches, and teams benefit from deeper insights. Building these capabilities requires large amounts of accurately labeled training data. Amazon SageMaker Ground Truth was truly a force multiplier in accelerating our project timelines. We leveraged the new video object tracking workflow in addition to other existing computer vision (CV) labeling workflows to develop labels for training a computer vision system that tracks all 22 players as they move on the field during plays. Amazon SageMaker Ground Truth reduced the timeline for developing a high quality labeling dataset by more than 80%”.

Courtesy of the NFL, here are a couple of predicted frames, showing helmet detection in a Seattle Seahawks video. This particular video has 353 frames. This first picture is frame #100.

Object tracking

This second picture is frame #110.

Object tracking

#amazon sagemaker ground truth #announcements #artificial intelligence