AWS expands its widely adopted machine learning
service, combining comprehensive data, analytics, and AI
capabilities
At AWS re:Invent, Amazon Web Services, Inc. (AWS), an
Amazon.com, Inc. company (NASDAQ: AMZN), today announced the next
generation of Amazon SageMaker, unifying the capabilities customers
need for fast SQL analytics, petabyte-scale big data processing,
data exploration and integration, model development and training,
and generative artificial intelligence (AI) into one integrated
platform.
- The new SageMaker Unified Studio makes it easy for customers to
find and access data from across their organization and brings
together purpose-built AWS analytics, machine learning (ML), and AI
capabilities so customers can act on their data using the best tool
for the job across all types of common data use cases, assisted by
Amazon Q Developer along the way.
- SageMaker Catalog and built-in governance capabilities allow
the right users to access the right data, models, and development
artifacts for the right purpose.
- The new SageMaker Lakehouse unifies data across data lakes,
data warehouses, operational databases, and enterprise
applications, making it easy to access and work with data from
within SageMaker Unified Studio and using familiar AI and ML tools
or query engines compatible with Apache Iceberg.
- New zero-ETL integrations with leading Software-as-a-Service
(SaaS) applications make it easy to access data from third-party
SaaS applications in SageMaker Lakehouse and Amazon Redshift for
analytics or ML without complex data pipelines.
- Customers and partners including Adastra, Confluent, Etleap,
idealista, Informatica, Lennar, Natera, NatWest Group, NTT Data,
Roche, Tableau, Toyota Motor North America, and more are already
exploring the next generation of SageMaker to bring together their
data, analytics, and AI initiatives.
"We are seeing a convergence of analytics and AI, with customers
using data in increasingly interconnected ways—from historical
analytics to ML model training and generative AI applications,"
said Swami Sivasubramanian, vice president of Data and AI at AWS.
"To support these workloads, many customers already use
combinations of our purpose-built analytics and ML tools, such as
Amazon SageMaker—the de facto standard for working with data and
building ML models—Amazon EMR, Amazon Redshift, Amazon S3 data
lakes, and AWS Glue. The next generation of SageMaker brings
together these capabilities—along with some exciting new
features—to give customers all the tools they need for data
processing, SQL analytics, ML model development and training, and
generative AI, directly within SageMaker."
Collaborate and build faster with Amazon SageMaker Unified
Studio
Today, hundreds of thousands of customers use SageMaker to
build, train, and deploy ML models. Many customers also rely on the
comprehensive set of purpose-built analytics services from AWS to
support a wide range of workloads, including SQL analytics, search
analytics, big data processing, and streaming analytics.
Increasingly, customers are not using these tools in isolation;
rather, they are using a combination of analytics, ML, and
generative AI to derive insights and power new experiences for
their users. These customers would benefit from a unified
environment that brings together familiar AWS tools for analytics,
ML, and generative AI, along with easy access to all of their data
and the ability to easily collaborate on data projects with other
members of their team or organization.
The next generation of SageMaker includes a new, unified studio
that gives customers a single data and AI development environment
where users can find and access all of the data in their
organization, act on it using the best tool for the job across all
types of common data use cases, and collaborate within teams and
across roles to scale their data and AI initiatives. SageMaker
Unified Studio brings together functionality and tools from the
range of standalone “studios,” query editors, and visual tools that
customers enjoy today in Amazon Bedrock, Amazon EMR, Amazon
Redshift, AWS Glue, and the existing SageMaker Studio. This makes
it easy for customers to access and use these capabilities to
discover and prepare data, author queries or code, process data,
and build ML models. Amazon Q Developer assists along the way to
support development tasks such as data discovery, coding, SQL
generation, and data integration. For example, a user could ask
Amazon Q, “What data should I use to get a better idea of product
sales?” or “Generate a SQL to calculate total revenue by product
category.” Users can securely publish and share data, models,
applications, and other artifacts with members of their team or
organization, accelerating discoverability and usage of the data
assets. With the Amazon Bedrock integrated development environment
(IDE) in SageMaker Unified Studio, users can build and deploy
generative AI applications quickly and easily using Amazon
Bedrock’s selection of high-performing foundation models and tools
such as Agents, Guardrails, Knowledge Bases, and Flows. SageMaker
Unified Studio comes with data discovery, sharing, and governance
capabilities built in, so analysts, data scientists, and engineers
can easily search and find the right data they need for their use
case, while applying desired security controls and permissions,
maintaining access control, and securing their data.
NatWest Group, a leading bank in the United Kingdom serving more
than 19 million customers, uses multiple tools for data
engineering, SQL analytics, ML, and generative AI workloads. With
SageMaker Unified Studio, NatWest Group will have a single unified
environment across the organization to support these workloads and
anticipates a 50% reduction in the time required for their data
users to access analytics and AI capabilities, enabling them to
spend less time managing multiple services and more time innovating
for their customers.
Meet enterprise security needs with Amazon SageMaker data and
AI governance
The next generation of SageMaker simplifies the discovery,
governance, and collaboration of data and AI across an
organization. With SageMaker Catalog, built on Amazon DataZone,
administrators can define and implement consistent access policies
using a single permission model with granular controls, while data
workers from across teams can securely discover and access approved
data and models enriched with business context metadata created by
generative AI. Administrators can easily define and enforce
permissions across models, tools, and data sources, while
customized safeguards help make AI applications secure and
compliant. Customers can also safeguard their AI models with data
classification, toxicity detection, guardrails, and responsible AI
policies within SageMaker.
Reduce data silos and unify data with Amazon SageMaker
Lakehouse
Today, more than one million data lakes are built on Amazon
Simple Storage Service (Amazon S3), allowing customers to
centralize their data assets and derive value with AWS analytics,
AI, and ML tools. Data lakes make it possible for customers to
store their data as-is—making it easy to combine data from multiple
sources. Customers may have data spread across multiple data lakes,
as well as a data warehouse, and would benefit from a simple way to
unify all of this data.
SageMaker Lakehouse provides unified access to data stored in
Amazon S3 data lakes, Redshift data warehouses, and federated data
sources, reducing data silos and making it easy to query data, no
matter how and where it is physically stored. With this new Apache
Iceberg-compatible lakehouse capability in SageMaker, customers can
access and work with all of their data from within SageMaker
Unified Studio, as well as with familiar AI and ML tools and query
engines compatible with Apache Iceberg open standards. Now,
customers can use their preferred analytics and ML tools on their
data, no matter how and where it is physically stored, to support
use cases including SQL analytics, ad-hoc querying, data science,
ML, and generative AI. SageMaker Lakehouse provides integrated,
fine-grained access controls that are consistently applied across
the data in all analytics and AI tools in the lakehouse, enabling
customers to define permissions once and securely share data across
their organization.
Roche, a global pioneer in pharmaceuticals and diagnostics
focused on advancing science to improve people's lives, will use
SageMaker Lakehouse to unify data from Redshift and Amazon S3 data
lakes, eliminating data silos, enhancing interoperability among
teams, and allowing users to seamlessly leverage data without the
need for costly data movement or duplicated security access
controls. With SageMaker Lakehouse, Roche anticipates a 40%
reduction in data processing time, allowing them to focus more on
driving their business forward and less on data management.
Quickly and easily access SaaS data with the new zero-ETL
integrations with SaaS applications
To truly leverage data across their operations, businesses need
seamless access to all their data, regardless of its location. That
is why AWS has invested in a zero-ETL future, where data
integration is no longer a tedious, manual effort, and customers
can easily get their data where they need it. This includes
zero-ETL integrations for Amazon Aurora MySQL and PostgreSQL,
Amazon RDS for MySQL, and Amazon DynamoDB with Amazon Redshift,
which help customers quickly and easily access data from popular
relational and non-relational databases in Redshift and SageMaker
Lakehouse for analytics and ML. In addition to operational
databases and data lakes, many customers also have critical
enterprise data stored in SaaS applications and would benefit from
easy access to this data for analytics and ML.
The new zero-ETL integrations with SaaS applications make it
easy for customers to access their data from applications such as
Zendesk and SAP in SageMaker Lakehouse and Redshift for analytics
and AI. This removes the need for data pipelines, which can be
challenging and costly to build, complex to manage, and prone to
errors that may delay access to time-sensitive insights. Zero-ETL
integrations for SaaS applications incorporate best practices for
full data sync, detection of incremental updates and deletes, and
target merge operations.
Organizations of all sizes and across industries, including
Infosys, Intuit, and Woolworths, are already benefiting from AWS
zero-ETL integrations to quickly and easily connect and analyze
data without building and managing data pipelines. With the
zero-ETL integrations for SaaS applications, for example, online
real estate platform idealista will be able to simplify their data
extraction and ingestion processes, eliminating the need for
multiple pipelines to access data stored in third-party SaaS
applications and freeing their data engineering team to focus on
deriving actionable insights from data rather than building and
managing infrastructure.
The next generation of SageMaker is available today. SageMaker
Unified Studio is currently in preview and will be made generally
available soon.
To learn more, visit:
- The AWS Blog for details on today’s announcement.
- The Amazon SageMaker page to learn more about the service.
- The SageMaker Unified Studio page, SageMaker data and AI
governance page, and SageMaker Lakehouse page to learn how
companies are using these capabilities.
- The AWS re:Invent page for more details on everything happening
at AWS re:Invent.
About Amazon Web Services
Since 2006, Amazon Web Services has been the world’s most
comprehensive and broadly adopted cloud. AWS has been continually
expanding its services to support virtually any workload, and it
now has more than 240 fully featured services for compute, storage,
databases, networking, analytics, machine learning and artificial
intelligence (AI), Internet of Things (IoT), mobile, security,
hybrid, media, and application development, deployment, and
management from 108 Availability Zones within 34 geographic
regions, with announced plans for 18 more Availability Zones and
six more AWS Regions in Mexico, New Zealand, the Kingdom of Saudi
Arabia, Taiwan, Thailand, and the AWS European Sovereign Cloud.
Millions of customers—including the fastest-growing startups,
largest enterprises, and leading government agencies—trust AWS to
power their infrastructure, become more agile, and lower costs. To
learn more about AWS, visit aws.amazon.com.
About Amazon
Amazon is guided by four principles: customer obsession rather
than competitor focus, passion for invention, commitment to
operational excellence, and long-term thinking. Amazon strives to
be Earth’s Most Customer-Centric Company, Earth’s Best Employer,
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