Spectro Cloud announced Palette EdgeAI to simplify how
organizations deploy and manage AI workloads at scale across simple to
complex edge locations, such as retail, healthcare, industrial
automation, oil and gas, automotive/connected cars, and more.
Palette's EdgeAI extends Spectro Cloud's award-winning core Palette Edge
Kubernetes management platform that addresses the unique challenges of
deploying and managing edge environments at scale, specifically:
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Limited on-site specialist IT expertise at the edge locations
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Increased security risk due to the distributed nature of edge infrastructure, software stack and communications.
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Inconsistent connectivity
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Costly and disruptive operational tasks, including security fixes, feature patches and updates
With a record number of organizations embracing the potential of running
AI workloads at the edge, these challenges are exacerbated. Gartner1
suggests that "by 2027, deep learning will be included in over 65% of
edge use cases, up from less than 10% in 2021". Activities that are
achievable in the data center or cloud, such as deploying daily updates
to a large language model (LLM), are costly or even impossible across
thousands of devices and locations. Furthermore, the exposed security
posture of edge locations is problematic given that AI workloads often
handle sensitive data and critical intellectual property.
"More and more of our customers are exploring AI at the edge as their
primary mechanism to deliver modern, rich applications and transform
the customer experience", said Jim Melton, Head of Cloud Strategy &
Programs, Digital Velocity, CDW. "The need to simplify deployment and
provide comprehensive management for AI-optimized infrastructure at the
edge is real and solutions such as Palette EdgeAI squarely addresses
those challenges".
The new Palette EdgeAI solution offers a rich suite of capabilities to
address specific requirements throughout the lifecycle of edge
infrastructure and AI software stacks.
It:
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Deploys and manages complete AI-ready infrastructure stacks in
edge computing environments, from the customer's preferred OS and
Kubernetes distribution, to AI model engines like Kubeflow and LocalAI,
including easy "plug-and-play" device onboarding.
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Secures edge infrastructure to protect sensitive intellectual
property and model data, with hardened configurations, SBOM scans,
full-disk encryption and robust access controls. Palette offers FIPS
compliance for highly regulated industries.
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Improves model accessibility, with integrated access to model
marketplaces, including Hugging Face and an enterprise's own private
repositories. Operators can incorporate their chosen models as part of
the AI stack ‘Cluster Profile', or blueprint.
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Makes it easy to deploy models to any number of edge locations
automatically with a click. Palette will deploy the model along with the
infrastructure stack and regularly reconcile the state of the stack to
ensure it is in line with policy.
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Enables operators to upgrade and roll back model versions
deployed in each edge cluster with a click, including Over-The-Air
(OTA), zero-downtime upgrades and designing canary deployments across
the edge estate, with advanced model observability.
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Simplifies distributed inferencing, enabling organizations to leverage multiple edge nodes for parallel execution and reduced model latency.
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Unlocks federated training, accelerating model improvement with on-device learning using local data.
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Reduces edge infrastructure costs, by enabling workloads to run with high availability even on limited edge hardware. Palette's unique fault-tolerant architecture allows workloads to be deployed on two-node Kubernetes clusters, instead of the usual three-node - a huge saving across multiple sites. 2-node HA now also available on all Palette solutions.
"The edge is the natural environment for AI inference workloads,"
said Tenry Fu, CEO of Spectro Cloud. "Our mission is to simplify
innovation for our customers and we have been working with organizations
that are already disrupting their industries, reaping the benefits of
AI at the edge".
In the healthcare sector, RapidAI uses Palette Edge to deploy its AI
applications into hospitals, giving clinicians deeper clinical context
to quickly and accurately triage and diagnose conditions, such as
strokes and embolisms, for better patient outcomes.
"At RapidAI our business is built on continuous AI innovation,
helping clinicians right in the hospital," said Amit Phadnis, Chief
Innovation and Technology Officer at RapidAI. "When it comes to deploying our applications securely and easily to the edge, we trust Spectro Cloud's Palette."
Palette's EdgeAI will be generally available in Q4 2023 with rapid future capabilities throughout 2024.
Spectro Cloud also announced a new round of investment,
led by Qualcomm Ventures. The investment will accelerate Spectro
Cloud's innovation in edge computing, AI and enterprise infrastructure
management.
"Qualcomm is uniquely positioned within the edge ecosystem and with
the adoption of AI, edge has become a necessity," said Dev Singh, Vice
President of Business Development, Qualcomm Technologies, Inc. "Across
Industrial, Enterprise, Utilities and Retail, we are seeing a need to
dynamically orchestrate AI workloads across edge and the cloud, simplify
edge deployments and manage upgrades with no downtime to build the
next-generation of resilient, high-performing applications."