Close Menu
    Trending
    • High Paying, Six Figure Jobs For Recent Graduates: Report
    • What If I had AI in 2018: Rent the Runway Fulfillment Center Optimization
    • YouBot: Understanding YouTube Comments and Chatting Intelligently — An Engineer’s Perspective | by Sercan Teyhani | Jun, 2025
    • Inspiring Quotes From Brian Wilson of The Beach Boys
    • AI Is Not a Black Box (Relatively Speaking)
    • From Accidents to Actuarial Accuracy: The Role of Assumption Validation in Insurance Claim Amount Prediction Using Linear Regression | by Ved Prakash | Jun, 2025
    • I Wish Every Entrepreneur Had a Dad Like Mine — Here’s Why
    • Why You’re Still Coding AI Manually: Build a GPT-Backed API with Spring Boot in 30 Minutes | by CodeWithUs | Jun, 2025
    Finance StarGate
    • Home
    • Artificial Intelligence
    • AI Technology
    • Data Science
    • Machine Learning
    • Finance
    • Passive Income
    Finance StarGate
    Home»Data Science»VAST Data Adds Blocks to Unified Storage Platform
    Data Science

    VAST Data Adds Blocks to Unified Storage Platform

    FinanceStarGateBy FinanceStarGateFebruary 19, 2025No Comments4 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email


    VAST Information at the moment introduced the addition of block storage to its knowledge platform, finishing what the corporate mentioned is its imaginative and prescient for the VAST DataStore as a common storage platform that now encompasses recordsdata, objects and blocks.

    VAST additionally added the VAST Occasion Dealer, an Apache Kafka-compatible occasion streaming service for real-time knowledge ingestion and processing and permits native querying of occasion matters through VAST DataBase APIs. Collectively, the capabilities combine occasion streaming with structured analytics, the corporate mentioned.

    “These new developments make the VAST Information Platform the one exascale answer available on the market able to linearly scaling parallel knowledge entry efficiency for each kind of knowledge – file, object, block, desk, and streaming knowledge – for all knowledge workloads,” VAST mentioned in its announcement. “By having all knowledge accessible in a single system, organizations can now tackle all workloads inside one unified structure – with out trade-offs in efficiency, scalability, or economics – permitting them to speed up their journey to real-time insights and seamless AI adoption.”

    By incorporating block storage, VAST has reworked knowledge administration for large-scale enterprises, consolidating siloed infrastructure into one platform with a collection of enterprise knowledge providers equivalent to snapshots, replication, multi-tenancy, high quality of service (QoS), encryption, and granular Position-Primarily based Entry Management (RBAC).

    In tandem, the VAST Information Platform has unified transactional, analytical, AI and real-time streaming workloads by including the VAST Occasion Dealer – enabling real-time analytics, AI/ML pipelines, and event-driven workflows with simplified administration, improved observability instruments, expanded SQL question capabilitiesn and superior resilience.

    The added capabilities is meant to boost the VAST Information Platform’s skill to energy virtualized and containerized workloads, and handle transactional, analytics and real-time knowledge administration:

    • The VAST Information Platform now helps environments equivalent to VMware, Hyper-V, and different hypervisors. Options equivalent to multi-tenancy and QoS enable IT groups to isolate workloads and simplify useful resource administration throughout lots of or hundreds of VMs.
    • For organizations leveraging Kubernetes, Openshift or different container orchestration platforms, the addition of block storage permits persistent storage for containerized workloads. From transactional databases in containers to stateful microservices, the platform helps DevOps workflows, take a look at environments and production-grade purposes.
    • In fashionable enterprise environments, virtualized and containerized workloads typically coexist, creating challenges in managing disparate storage programs. The VAST Information Platform is designed to remove this complexity by consolidating each workload varieties onto a single, unified storage structure. This method reduces operational overhead, simplifies provisioning, and performs throughout numerous utility environments.
    • By delivering an built-in Occasion Dealer, VAST lets organizations stream occasion logs to programs for processing, publishing and processing telemetry knowledge in actual time, giving event-driven updates to customers, and streaming knowledge to fashions for real-time coaching or inference. VAST unifies real-time streaming, AI/ML, and analytical workloads, eliminating the necessity for a number of siloed programs and driving effectivity, innovation, and price financial savings.
    • Scalability, Observability, Resilience and Ease of Use of Open-Supply Kafka: The VAST Occasion Dealer provides energy failure safety, unbiased scaling of storage and compute, built-in knowledge discount, seamless database integration for querying occasion streams, enhanced observability instruments that present actionable insights to optimize efficiency, and automation of advanced workflows.

    In accordance with Gartner, “Subsequent-generation enterprise storage infrastructure should fulfill platform-native expertise necessities for… Multiprotocol storage platforms. These are designed to assist a number of storage entry protocols and tackle the rising wants of companies. These platforms are versatile, permitting knowledge to be saved and accessed utilizing completely different protocols, equivalent to Community File System (NFS), Server Message Block (SMB), block and object. This flexibility permits seamless integration with numerous IT environments and ensures that the storage system can meet the various necessities of purposes and customers with completely different protocol preferences or compatibility wants.”[1]

    [1] Gartner, Cease Shopping for Storage, Embrace Platforms As an alternative, Julia Palmer, Jeff Vogel, Chandra Mukhyala, January 15, 2025





    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleApple Replaces iPhone SE with iPhone 16e: Key Differences
    Next Article AI Agent Developer: A Journey Through Code, Creativity, and Curiosity | by Talha Nazar | Feb, 2025
    FinanceStarGate

    Related Posts

    Data Science

    FedEx Deploys Hellebrekers Robotic Sorting Arm in Germany

    June 13, 2025
    Data Science

    Translating the Internet in 18 Days: DeepL to Deploy NVIDIA DGX SuperPOD

    June 12, 2025
    Data Science

    Multiverse Computing Raises $215M for LLM Compression

    June 12, 2025
    Add A Comment

    Comments are closed.

    Top Posts

    Why AI Startup Anysphere Is the Fastest-Growing Startup Ever

    June 7, 2025

    Best Jobs for Introverts With the Highest Pay: Report

    March 13, 2025

    10 Key Lessons That Will Boost Your Business Success in 2025

    April 3, 2025

    Selection of the Loss Functions for Logistic Regression | by Rebecca Li | Mar, 2025

    March 8, 2025

    xbsdh – #شماره خاله تهران #شماره خاله شیراز

    May 25, 2025
    Categories
    • AI Technology
    • Artificial Intelligence
    • Data Science
    • Finance
    • Machine Learning
    • Passive Income
    Most Popular

    Prompt vs Output: The Ultimate Comparison That’ll Blow Your Mind! 🚀 | by AI With Lil Bro | Apr, 2025

    April 8, 2025

    Papers Explained 376: REFINE-AF. This paper explores the use of… | by Ritvik Rastogi | May, 2025

    May 29, 2025

    How to Cultivate Connection When Your Team Doesn’t Agree

    February 27, 2025
    Our Picks

    4 Huge Reasons Your Brand Values Should Not Change (Even If Laws Do)

    February 11, 2025

    6 Ways to Help Your Child Build Credit During College

    February 1, 2025

    Redefining Education With Personalized Learning Powered by AI

    February 1, 2025
    Categories
    • AI Technology
    • Artificial Intelligence
    • Data Science
    • Finance
    • Machine Learning
    • Passive Income
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us
    Copyright © 2025 Financestargate.com All Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.