checkAd

     298  0 Kommentare HPE Accelerates Artificial Intelligence Innovation with Enterprise-Grade Solution for Managing Entire Machine Learning Lifecycle

    Hewlett Packard Enterprise (HPE) today announced a container-based software solution, HPE ML Ops, to support the entire machine learning model lifecycle for on-premises, public cloud and hybrid cloud environments. The new solution introduces a DevOps-like process to standardize machine learning workflows and accelerate AI deployments from months to days.

    The new HPE ML Ops solution extends the capabilities of the BlueData EPIC container software platform, providing data science teams with on-demand access to containerized environments for distributed AI / ML and analytics. BlueData was acquired by HPE in November 2018 to bolster its AI, analytics, and container offerings, and complements HPE’s Hybrid IT solutions and HPE Pointnext Services for enterprise AI deployments.

    Anzeige 
    Handeln Sie Ihre Einschätzung zu Hewlett Packard Enterprise Company!
    Long
    15,87€
    Basispreis
    1,36
    Ask
    × 11,63
    Hebel
    Short
    18,80€
    Basispreis
    1,71
    Ask
    × 9,48
    Hebel
    Präsentiert von

    Den Basisprospekt sowie die Endgültigen Bedingungen und die Basisinformationsblätter erhalten Sie bei Klick auf das Disclaimer Dokument. Beachten Sie auch die weiteren Hinweise zu dieser Werbung.

    Enterprise AI adoption has more than doubled in the last four years1, and organizations continue to invest significant time and resources in building machine learning and deep learning models for a wide range of AI use cases such as fraud detection, personalized medicine, and predictive customer analytics. However, the biggest challenge faced by technical professionals is operationalizing ML, also known as the “last mile,” to successfully deploy and manage these models, and unlock business value. According to Gartner, by 2021, at least 50 percent of machine learning projects will not be fully deployed due to lack of operationalization.2

    HPE ML Ops transforms AI initiatives from experimentation and pilot projects to enterprise-grade operations and production by addressing the entire machine learning lifecycle from data preparation and model building, to training, deployment, monitoring, and collaboration.

    “Only operational machine learning models deliver business value,” said Kumar Sreekanti, SVP and CTO, Hybrid IT at HPE. “And with HPE ML Ops, we provide the only enterprise-class solution to operationalize the end-to-end machine learning lifecycle for on-premises and hybrid cloud deployments. We’re bringing DevOps speed and agility to machine learning, delivering faster time-to-value for AI in the enterprise.”

    “From retail to banking to manufacturing to healthcare and beyond, virtually all industries are adopting or investigating AI/ML to develop innovative products and services and gain a competitive edge. While most businesses are ramping up on the build and train phase of their AI/ML projects, they are struggling to operationalize the entire ML lifecycle from PoC to pilot to production deployment and monitoring,” said Ritu Jyoti, program vice president, Artificial Intelligence (AI) Strategies at IDC. “HPE is closing this gap by addressing the entire ML lifecycle with its container-based, platform-agnostic offering – to support a range of ML operational requirements, accelerate the overall time to insights, and drive superior business outcomes.”

    Seite 1 von 3


    Diskutieren Sie über die enthaltenen Werte


    Business Wire (engl.)
    0 Follower
    Autor folgen

    HPE Accelerates Artificial Intelligence Innovation with Enterprise-Grade Solution for Managing Entire Machine Learning Lifecycle Hewlett Packard Enterprise (HPE) today announced a container-based software solution, HPE ML Ops, to support the entire machine learning model lifecycle for on-premises, public cloud and hybrid cloud environments. The new solution introduces a …

    Schreibe Deinen Kommentar

    Disclaimer