New Unravel Data Release Introduces Cloud Platform Operations and Workload Migration Capabilities
March 26, 2019
Share this

Unravel Data announced a new portfolio of capabilities that help customers plan, migrate, and manage modern data applications running on AWS, Microsoft Azure and Google Cloud Platform.

This release leverages artificial intelligence, machine learning, and predictive analytics to baseline on-premises big data deployments and then determine which apps are the best candidates to move to the cloud based on customer defined criteria. Unravel can also help validate the success of a cloud migration and predict capacity based on the customers’ application workloads.

“All indications point to a massive shift in data deployments to the cloud,” said Kunal Agarwal, CEO, Unravel Data. “But there are too many unknowns around cost, visibility and migration that have prevented this transition to the cloud from occurring more quickly. We’re excited to introduce the industry’s only full-stack, AI-powered solution for migrating and managing data apps in the cloud.”

With its latest release, Unravel delivers visibility, insights, recommendations and automation for optimizing data workloads in the cloud. Unravel uses AI, machine learning and advanced analytics to determine the cloud infrastructure needs, the appropriate server instance sizes, and provide automated troubleshooting and auto-tuning of Spark, Hadoop, Kafka, and SQL/NoSQL powered data pipelines running on cloud platforms.

Unravel’s offering helps customers better migrate modern data pipelines to the cloud, establish and meet stringent SLAs for data apps in the cloud, and gain accounting and governance metrics for chargeback, capacity planning, and budget forecasting.

Unravel’s Cloud Operations capabilities include:

- Recommendations for the best apps to migrate – Unravel baselines on-premises performance of the full big data stack and uses AI to identify the best app candidates for migration to cloud. Organizations can avoid migrating apps that aren’t ideal for the cloud and having to repatriate them later.

- Full stack visibility – Unravel uses automation to provide detailed reports and metrics on app usage, performance, cost and chargebacks in the cloud.

- Unified management of the full big data stack on all deployment platforms – Unravel Cloud Migration covers AWS, Azure and Google clouds, as well as on-premises, hybrid environments and multi-cloud settings. Customers get AI-powered troubleshooting, auto-tuning and automated remediation of failures and slowdowns with the same user interface.

- Mapping on-premises infrastructure to cloud server instances – Unravel helps customers choose cloud instance types for their migration based on three strategies:
1. Lift and shift – A one-to-one mapping from physical servers to virtual servers, matching memory, storage and CPU/vCore footprints. This ensures that a cloud deployment will have the same (or more) amount of resources available as a current on-prem environment and minimizes any risks associated with migrating to the cloud.
2. Cost reduction - Provides the most cost-effective instance recommendations based on detailed dependency understanding for minimizing wasted capacity and overprovisioning.
3. Workload fit - Takes into account data collected over time from the on-premises environment, making recommendations for instance types based on the actual workload of applications running in a data center. These recommendations will be based on the VCore, memory, and storage requirements of a customer’s typical runtime environment.

- Cloud capacity planning and chargeback reporting - Unravel can predict cloud storage requirements up to six months out and can provide a detailed accounting of resource consumption and chargeback by user, department or other criteria.

- Migration validation - Unravel can provide a before and after assessment of cloud applications by comparing on-premises performance and resource consumption to the same metrics in the cloud, thereby validating the relative success of the migration.

Cloud services supported by the Unravel platform today include IaaS deployments on Azure, AWS and Google Cloud Platform and PaaS services on Azure HDInsight and AWS EMR. Supported services as part of Unravel’s early access program include AWS Redshift and AWS Athena.

Unravel is available now.

Share this

The Latest

September 19, 2024

As businesses and individuals increasingly seek to leverage artificial intelligence (AI), the cloud has become a critical enabler of AI's transformative power. Cloud platforms allow organizations to seamlessly scale their AI capabilities, hosting complex machine learning (ML) models while providing the flexibility needed to meet evolving business needs ... However, the promise of AI in the cloud brings significant challenges ...

September 18, 2024

The business case for digital employee experience (DEX) is clear: more than half (55%) of office workers say negative experiences with workplace technology impact their mood/morale and 93% of security professionals say prioritizing DEX has a positive impact on an organization's cybersecurity efforts, according to the 2024 Digital Employee Experience Report: A CIO Call to Action, a new report from Ivanti ...

September 17, 2024

For IT leaders, a few hurdles stand in the way of AI success. They include concerns over data quality, security and the ability to implement projects. Understanding and addressing these concerns can give organizations a realistic view of where they stand in implementing AI — and balance out a certain level of overconfidence many organizations seem to have — to enable them to make the most of the technology's potential ...

September 16, 2024

For the last 18 years — through pandemic times, boom times, pullbacks, and more — little has been predictable except one thing: Worldwide cloud spending will be higher this year than last year and a lot higher next year. But as companies spend more, are they spending more intelligently? Just how efficient are our modern SaaS systems? ...

September 12, 2024

The OpenTelemetry End-User SIG surveyed more than 100 OpenTelemetry users to learn more about their observability journeys and what resources deliver the most value when establishing an observability practice ... Regardless of experience level, there's a clear need for more support and continued education ...

September 11, 2024

A silo is, by definition, an isolated component of an organization that doesn't interact with those around it in any meaningful way. This is the antithesis of collaboration, but its effects are even more insidious than the shutting down of effective conversation ...

September 10, 2024

New Relic's 2024 State of Observability for Industrials, Materials, and Manufacturing report outlines the adoption and business value of observability for the industrials, materials, and manufacturing industries ... Here are 8 key takeaways from the report ...

September 09, 2024

For mission-critical applications, it's often easy to justify an investment in a solution designed to ensure that the application is available no less than 99.99% of the time — easy because the cost to the organization of that app being offline would quickly surpass the cost of a high availability (HA) solution ... But not every application warrants the investment in an HA solution with redundant infrastructure spanning multiple data centers or cloud availability zones ...

September 05, 2024

The edge brings computing resources and data storage closer to end users, which explains the rapid boom in edge computing, but it also generates a huge amount of data ... 44% of organizations are investing in edge IT to create new customer experiences and improve engagement. To achieve those goals, edge services observability should be a centerpoint of that investment ...

September 04, 2024

The growing adoption of efficiency-boosting technologies like artificial intelligence (AI) and machine learning (ML) helps counteract staffing shortages, rising labor costs, and talent gaps, while giving employees more time to focus on strategic projects. This trend is especially evident in the government contracting sector, where, according to Deltek's 2024 Clarity Report, 34% of GovCon leaders rank AI and ML in their top three technology investment priorities for 2024, above perennial focus areas like cybersecurity, data management and integration, business automation and cloud infrastructure ...