[PDF] Opsramp for Google Cloud Platform

Total Page:16

File Type:pdf, Size:1020Kb

[PDF] Opsramp for Google Cloud Platform Datasheet OpsRamp for Google Cloud Platform Google Cloud Platform (GCP) provides everything you Embrace Google Cloud Platform need for mission-critical workloads. GCP ensures that with Confidence enterprise applications are always running smoothly Track every enterprise cloud resource with with a wide variety of infrastructure and platform continuous and real-time discovery services for compute, storage, networking, databases, Internet of Things, data analytics, AI and machine Manage the health and performance learning, and developer tools. of cloud infrastructure with end-to-end visibility OpsRamp’s digital operations management platform delivers powerful, multi-cloud monitoring and Drive impact analysis by linking critical IT management capabilities for various GCP services services to different cloud resources so that you can identify, diagnose, and resolve all your incidents in a single place. You’ll gain immediate Track cloud consumption for GCP spending visibility with performance metrics and contextual by service, region, resource, and tag notifications for GCP cloud infrastructure services like virtual machines, container clusters, VPN gateways, Speed incident detection with accurate root data lakes, hybrid computing, and integration services. cause(s) analysis for cloud services Deliver end-to-end visibility for your Google Cloud Platform Services with OpsRamp. Instant Insights and Real-Time Visibility for Google Cloud Platform OpsRamp lets enterprise IT teams optimize their business-critical services and deliver compelling end- user experiences with rapid onboarding, comprehensive monitoring, intelligent correlation, and real-time alerting. DevOps teams can gain proactive insights and operational visibility of their entire GCP inventory, utilization, and consumption. Cloud Asset Visibility Cloud Cost Insights Onboard different GCP services like Access cost analytics for GCP services Compute Engine, Google Kubernetes across different business units and IT Engine, Cloud Functions, Cloud Storage, services. Optimize GCP infrastructure Cloud DNS, Cloud Spanner, and Cloud by spotting unused and underutilized SQL with OpsRamp’s event-based instances and get notified when teams discovery for real-time management. exceed their allocated cloud budgets. Performance Monitoring Impact Analysis Pinpoint performance issues and Establish linkages and dependencies respond to outages faster with out- between your business-critical services of-the-box integrations for Google and cloud infrastructure by mapping Stackdriver. Drive faster problem specific GCP resource groups in service identification and resolution with alert maps. Understand the infrastructure notifications for breaches of critical dependencies for IT services with performance thresholds. cloud topology maps. Intelligent Correlation Automation Reduce alert noise and establish Handle routine operational processes the right priorities for incident at scale and drive incident remediation management with service-centric without human intervention using AIOps. Tailor notification preferences policy-based automation. Deliver self- for DevOps/Site Reliability service information by designating Engineering teams with smart knowledge base articles to cloud escalations for rapid resolution. resources. About OpsRamp OpsRamp enables IT to control the chaos of managing their hybrid IT operations and act like a service provider back to the business. Built in the cloud, the OpsRamp service-centric AIOps platform drives total visibility across hybrid infrastructures, offers complete multi-cloud infrastructure monitoring and management of business-critical services, and optimizes services through automation and integration with ITSM and DevOps tools. 1-833-OPS-RAMP | OpsRamp.com.
Recommended publications
  • IBM Cloud Unit 2016 IBM Cloud Unit Leadership Organization
    IBM Cloud Technical Academy IBM Cloud Unit 2016 IBM Cloud Unit Leadership Organization SVP IBM Cloud Robert LeBlanc GM Cloud Platform GM Cloud GM Cloud Managed GM Cloud GM Cloud Object Integration Services Video Storage Offering Bill Karpovich Mike Valente Braxton Jarratt Line Execs Line Execs Marie Wieck John Morris GM Strategy, GM Client Technical VP Development VP Service Delivery Business Dev Engagement Don Rippert Steve Robinson Harish Grama Janice Fischer J. Comfort (GM & CTO) J. Considine (Innovation Lab) Function Function Leadership Leadership VP Marketing GM WW Sales & VP Finance VP Human Quincy Allen Channels Resources Steve Cowley Steve Lasher Sam Ladah S. Carter (GM EcoD) GM Design VP Enterprise Mobile GM Digital Phil Gilbert Phil Buckellew Kevin Eagan Missions Missions Enterprise IBM Confidential IBM Hybrid Cloud Guiding Principles Choice with! Hybrid ! DevOps! Cognitive Powerful, Consistency! Integration! Productivity! Solutions! Accessible Data and Analytics! The right Unlock existing Automation, tooling Applications and Connect and extract workload in the IT investments and composable systems that insight from all types right place and Intellectual services to increase have the ability to of data Property speed learn Three entry points 1. Create! 2. Connect! 3. Optimize! new cloud apps! existing apps and data! any app! 2016 IBM Cloud Offerings aligned to the Enterprise’s hybrid cloud needs IBM Cloud Platform IBM Cloud Integration IBM Cloud Managed Offerings Offerings Services Offerings Mission: Build true cloud platform
    [Show full text]
  • Securebox Azure
    General Electronics E-Commerce General Web General General General Electronics General Location Electronics E-Commerce Electronics Electronics Arrows General Web Electronics E-Commerce E-Commerce E-Commerce Web Location GeneraE-Col mmerce Weather Web Arrows WeWeb b Electronics Location Weather Miscellaneous Location Arrows Location Location Arrows Arrows Miscellaneous Electronics E-Commerce Arrows Weather Weather Weather Miscellaneous Web 28/03/2019 Weather SecureBox Azure penta.ch General Miscellaneous Access, backup, sync and share your data on Microsoft Azure SecureBox is a secure corporate cloud file sharing platform. Access your data anywhere and backup, view, sync and share – all under your control. Miscellaneous E-Commerce Browser & apps General SecureBox Devices Files Tablet Email Mobile Calendar PC Word processing Mac Spreadsheets Miscellaneous Photos Private cloud Bank-level security Local sync Backups & disaster recovery File sharing Independent auditing Password protection Editing permissions Link expiry dates Internal users External users SecureLo filecati sharingon and backup Long-term backups and data recovery The secure alternative to public cloud Instantly meet data protection and backup file sharing and backup with bank-level legal requirements with up to five-year data authentication. In multiple languages. backup and recovery options. English, French, German, Italian, Spanish and Arabic Web Control your data Versioning SecureBox data is stored and encrypted in Previous version of modified files are Microsft Azure data center. Manage groups automatically retained and can be restored, and security policies, backed by audit logs. while automatically managing storage space. Share files Regulatory compliance Send Arrolinks to wspeople inside or outside your Auditor-ready compliance reports included. company. Set unique passwords, expiry IndependentElec ISAEtr onic3402 auditss for regulatory dates, edit and download permissions.
    [Show full text]
  • Mimioclassroom User Guide for Windows
    MimioClassroom User Guide For Windows mimio.com © 2012 Sanford, L.P. All rights reserved. Revised 12/4/2012. No part of this document or the software may be reproduced or transmitted in any form or by any means or translated into another language without the prior written consent of Sanford, L.P. Mimio, MimioClassroom, MimioTeach, MimioCapture, MimioVote, MimioView, MimioHub, MimioPad, and MimioStudio are registered marks in the United States and other countries. All other trademarks are the property of their respective holders. Contents About MimioClassroom 1 MimioStudio 1 MimioTeach 1 Mimio Interactive 1 MimioCapture 2 Mimio Capture Kit 2 MimioVote 2 MimioView 2 MimioPad 2 Minimum System Requirements 2 Using this Guide 3 MimioStudio 7 About MimioStudio 7 About MimioStudio Notebook 7 About MimioStudio Tools 7 About MimioStudio Gallery 9 Getting Started with MimioStudio 9 Accessing MimioStudio Notebook 9 Accessing MimioStudio Tools 10 Accessing MimioStudio Gallery 10 Using MimioStudio Notebook 10 Working with Pages 11 Creating an Activity 14 Creating an Activity - Step 1: Define 14 Creating an Activity - Step 2: Select 14 Creating an Activity - Step 3: Refine 15 Creating an Activity - Step 4: Review 16 Working with an Activity 17 Writing an Objective 17 Attaching Files 18 Using MimioStudio Tools 18 Creating Objects 18 Manipulating Objects 21 Adding Actions to Objects 25 Using MimioStudio Gallery 26 iii Importing Gallery Items into a Notebook 27 Customizing the Content of the Gallery 27 Exporting a Gallery Folder to a Gallery File 29 Working
    [Show full text]
  • Wandisco Fusion® Microsoft Azure Data Box
    WANDISCO FUSION® MICROSOFT AZURE DATA BOX Use WANdisco Fusion with Data Box for bulk transfer of changing data WANdisco Fusion is the only solution that enables Microsoft customers to use the bulk transfer capabilities of the Azure Data Box to transfer static and changing Guaranteed data consistency information from Big Data applications to Azure Cloud with guaranteed data consistency. Users can continue to Take advantage of the storage on Azure Data Box for write to their local cluster while the Azure Data Box is in bulk data transfer while continuing to write to a local transit so when the Azure Data Box is subsequently being cluster and replicate those changes while the Azure uploaded, any changes are replicated to the Azure Cloud Data Box is uploaded to the Azure Cloud. with guaranteed consistency. Easy and intuitive step-by-step operation • Applications write to Azure Data Box using the same API that they use to interact with the Azure Cloud. No downtime and • WANdisco Fusion for Azure Data Box requires no change to applications which can continue to use the no business disruption API as they would normally. Write data to a local HDFS-compatible endpoint • Replication is continuous and recovers from on-premises and replicate to a storage location in intermittent network or system failures automatically. Microsoft Azure with no modification or disruption to applications on-premises. AZURE 2 STORAGE Cost saving MICROSOFT 1 3 AZURE DATA BOX Avoid the high network costs common to large scale data transfers and benefit from a range of FUSION applications available in Azure Cloud.
    [Show full text]
  • F1 Query: Declarative Querying at Scale
    F1 Query: Declarative Querying at Scale Bart Samwel John Cieslewicz Ben Handy Jason Govig Petros Venetis Chanjun Yang Keith Peters Jeff Shute Daniel Tenedorio Himani Apte Felix Weigel David Wilhite Jiacheng Yang Jun Xu Jiexing Li Zhan Yuan Craig Chasseur Qiang Zeng Ian Rae Anurag Biyani Andrew Harn Yang Xia Andrey Gubichev Amr El-Helw Orri Erling Zhepeng Yan Mohan Yang Yiqun Wei Thanh Do Colin Zheng Goetz Graefe Somayeh Sardashti Ahmed M. Aly Divy Agrawal Ashish Gupta Shiv Venkataraman Google LLC [email protected] ABSTRACT 1. INTRODUCTION F1 Query is a stand-alone, federated query processing platform The data processing and analysis use cases in large organiza- that executes SQL queries against data stored in different file- tions like Google exhibit diverse requirements in data sizes, la- based formats as well as different storage systems at Google (e.g., tency, data sources and sinks, freshness, and the need for custom Bigtable, Spanner, Google Spreadsheets, etc.). F1 Query elimi- business logic. As a result, many data processing systems focus on nates the need to maintain the traditional distinction between dif- a particular slice of this requirements space, for instance on either ferent types of data processing workloads by simultaneously sup- transactional-style queries, medium-sized OLAP queries, or huge porting: (i) OLTP-style point queries that affect only a few records; Extract-Transform-Load (ETL) pipelines. Some systems are highly (ii) low-latency OLAP querying of large amounts of data; and (iii) extensible, while others are not. Some systems function mostly as a large ETL pipelines. F1 Query has also significantly reduced the closed silo, while others can easily pull in data from other sources.
    [Show full text]
  • Lock-Free Collaboration Support for Cloud Storage Services With
    Lock-Free Collaboration Support for Cloud Storage Services with Operation Inference and Transformation Jian Chen, Minghao Zhao, and Zhenhua Li, Tsinghua University; Ennan Zhai, Alibaba Group Inc.; Feng Qian, University of Minnesota - Twin Cities; Hongyi Chen, Tsinghua University; Yunhao Liu, Michigan State University & Tsinghua University; Tianyin Xu, University of Illinois Urbana-Champaign https://www.usenix.org/conference/fast20/presentation/chen This paper is included in the Proceedings of the 18th USENIX Conference on File and Storage Technologies (FAST ’20) February 25–27, 2020 • Santa Clara, CA, USA 978-1-939133-12-0 Open access to the Proceedings of the 18th USENIX Conference on File and Storage Technologies (FAST ’20) is sponsored by Lock-Free Collaboration Support for Cloud Storage Services with Operation Inference and Transformation ⇤ 1 1 1 2 Jian Chen ⇤, Minghao Zhao ⇤, Zhenhua Li , Ennan Zhai Feng Qian3, Hongyi Chen1, Yunhao Liu1,4, Tianyin Xu5 1Tsinghua University, 2Alibaba Group, 3University of Minnesota, 4Michigan State University, 5UIUC Abstract Pattern 1: Losing updates Alice is editing a file. Suddenly, her file is overwritten All studied This paper studies how today’s cloud storage services support by a new version from her collaborator, Bob. Sometimes, cloud storage collaborative file editing. As a tradeoff for transparency/user- Alice can even lose her edits on the older version. services friendliness, they do not ask collaborators to use version con- Pattern 2: Conflicts despite coordination trol systems but instead implement their own heuristics for Alice coordinates her edits with Bob through emails to All studied handling conflicts, which however often lead to unexpected avoid conflicts by enforcing a sequential order.
    [Show full text]
  • Containers at Google
    Build What’s Next A Google Cloud Perspective Thomas Lichtenstein Customer Engineer, Google Cloud [email protected] 7 Cloud products with 1 billion users Google Cloud in DACH HAM BER ● New cloud region Germany Google Cloud Offices FRA Google Cloud Region (> 50% latency reduction) 3 Germany with 3 zones ● Commitment to GDPR MUC VIE compliance ZRH ● Partnership with MUC IoT platform connects nearly Manages “We found that Google Ads has the best system for 50 brands 250M+ precisely targeting customer segments in both the B2B with thousands of smart data sets per week and 3.5M and B2C spaces. It used to be hard to gain the right products searches per month via IoT platform insights to accurately measure our marketing spend and impacts. With Google Analytics, we can better connect the omnichannel customer journey.” Conrad is disrupting online retail with new Aleš Drábek, Chief Digital and Disruption Officer, Conrad Electronic services for mobility and IoT-enabled devices. Solution As Conrad transitions from a B2C retailer to an advanced B2B and Supports B2C platform for electronic products, it is using Google solutions to grow its customer base, develop on a reliable cloud infrastructure, Supports and digitize its workplaces and retail stores. Products Used 5x Mobile-First G Suite, Google Ads, Google Analytics, Google Chrome Enterprise, Google Chromebooks, Google Cloud Translation API, Google Cloud the IoT connections vs. strategy Vision API, Google Home, Apigee competitors Industry: Retail; Region: EMEA Number of Automate Everything running
    [Show full text]
  • Wandisco Fusion® Microsoft Azure Data Box®
    FUSION WANDISCO FUSION® MICROSOFT AZURE DATA BOX® Use WANdisco Fusion with Data Box for bulk transfer of changing data WANdisco Fusion is the only solution that enables Microsoft customers to use the bulk transfer capabilities of the Azure Data Box to transfer static and changing Always accurate information from Big Data applications to Azure Cloud with guaranteed data consistency. Users can continue to Take advantage of the storage on Azure Data Box for write to their local cluster while the Azure Data Box is in bulk data transfer while continuing to write to a local transit so when the Azure Data Box is subsequently being cluster and replicate those changes while the Azure uploaded, any changes are replicated to the Azure Cloud Data Box is uploaded to the Azure Cloud. with guaranteed consistency. Easy and intuitive step-by-step operation • Applications write to Azure Data Box using the same API that they use to interact with the Azure Cloud. Always available • WANdisco Fusion for Azure Data Box requires no change to applications which can continue to use the Write data to a local HDFS-compatible endpoint API as they would normally. on-premises and replicate to a storage location in • Replication is continuous and recovers from Microsoft Azure with no modification or disruption to intermittent network or system failures automatically. applications on-premises. AZURE 2 STORAGE Lower cost structure MICROSOFT 1 3 AZURE DATA BOX Avoid the high network costs common to large scale data transfers and benefit from a range of applications available in Azure Cloud. FUSION FUSION FUSION HADOOP ON-PREMISES Copyright © 2018 WANdisco, Inc.
    [Show full text]
  • Igneous Backup with Microsoft Azure Data Box Executive Overview the Benefits of Cloud Backup, Including Scalability, Accessibility, and Agility, Are Immense
    SOLUTION GUIDE Igneous Backup with Microsoft Azure Data Box Executive Overview The benefits of cloud backup, including scalability, accessibility, and agility, are immense. However, significant challenges lie in effectively deploying cloud backups for enterprise. To help enterprises harness the value of cloud backup while overcoming the challenges of massive scale, Igneous Unstructured Data Management as-a-Service and Microsoft Azure Data Box combine to offer an integrated solution that accelerates data migration from network attached storage (NAS) to Microsoft Azure Storage, and manages ongoing replication and tiering to cloud. With backup environments, the challenge of using public cloud is often seeding the initial backup before doing incrementals. Azure Data Box provides an economical way to transport those initial backups (often called “level- 0’s”) into Azure Storage without worrying about network bandwidth between your on-premises environment and Azure Storage. Igneous Unstructured Data Management as-a-Service solution, built for managing file-based backups, provides native integration with Azure Storage, including the Azure Data Box. Together, Igneous and Azure allow you to backup unstructured data stored on your primary network attached storage (NAS) file systems, efficiently move large amounts of data to Azure Storage, and protect and manage your data with tiering and replication to cloud. Microsoft Azure Data Box provides a secure, tamper-resistant method for quick and simple transfer of your data to Azure. Use Azure Data Box service when you want to transfer large amounts of data to Azure but are limited by time, network availability, or costs. Azure Data Box is supported by Igneous as a method to support transfers or initial sync to Azure Storage.
    [Show full text]
  • Spanner: Becoming a SQL System
    Spanner: Becoming a SQL System David F. Bacon Nathan Bales Nico Bruno Brian F. Cooper Adam Dickinson Andrew Fikes Campbell Fraser Andrey Gubarev Milind Joshi Eugene Kogan Alexander Lloyd Sergey Melnik Rajesh Rao David Shue Christopher Taylor Marcel van der Holst Dale Woodford Google, Inc. ABSTRACT this paper, we focus on the “database system” aspects of Spanner, Spanner is a globally-distributed data management system that in particular how query execution has evolved and forced the rest backs hundreds of mission-critical services at Google. Spanner of Spanner to evolve. Most of these changes have occurred since is built on ideas from both the systems and database communi- [5] was written, and in many ways today’s Spanner is very different ties. The first Spanner paper published at OSDI’12 focused on the from what was described there. systems aspects such as scalability, automatic sharding, fault tol- A prime motivation for this evolution towards a more “database- erance, consistent replication, external consistency, and wide-area like” system was driven by the experiences of Google developers distribution. This paper highlights the database DNA of Spanner. trying to build on previous “key-value” storage systems. The pro- We describe distributed query execution in the presence of reshard- totypical example of such a key-value system is Bigtable [4], which ing, query restarts upon transient failures, range extraction that continues to see massive usage at Google for a variety of applica- drives query routing and index seeks, and the improved blockwise- tions. However, developers of many OLTP applications found it columnar storage format.
    [Show full text]
  • Getting Started with Google Cloud Platform
    Harvard AP275 Computational Design of Materials Spring 2018 Boris Kozinsky Getting started with Google Cloud Platform A virtual machine image containing Python3 and compiled LAMMPS and Quantum Espresso codes are available for our course on the Google Cloud Platform (GCP). Below are instructions on how to get access and start using these resources. Request a coupon code: Google has generously granted a number of free credits for using GCP Compute Engines. Here is the URL you will need to access in order to request a Google Cloud Platform coupon. You will be asked to provide your school email address and name. An email will be sent to you to confirm these details before a coupon code is sent to you. Student Coupon Retrieval Link • You will be asked for a name and email address, which needs to match the domain (@harvard.edu or @mit.edu). A confirmation email will be sent to you with a coupon code. • You can only request ONE code per unique email address. If you run out of computational resources, Google will grant more coupons! If you don’t have a Gmail account, please get one. Harvard is a subscriber to G Suite, so access should work with your @g.harvard.edu email and these were added already to the GCP project. If you prefer to use your personal Gmail login, send it to me. Once you have your google account, you can log in and go to the website below to redeem the coupon. This will allow you to set up your GCP billing account.
    [Show full text]
  • Economic and Social Impacts of Google Cloud September 2018 Economic and Social Impacts of Google Cloud |
    Economic and social impacts of Google Cloud September 2018 Economic and social impacts of Google Cloud | Contents Executive Summary 03 Introduction 10 Productivity impacts 15 Social and other impacts 29 Barriers to Cloud adoption and use 38 Policy actions to support Cloud adoption 42 Appendix 1. Country Sections 48 Appendix 2. Methodology 105 This final report (the “Final Report”) has been prepared by Deloitte Financial Advisory, S.L.U. (“Deloitte”) for Google in accordance with the contract with them dated 23rd February 2018 (“the Contract”) and on the basis of the scope and limitations set out below. The Final Report has been prepared solely for the purposes of assessment of the economic and social impacts of Google Cloud as set out in the Contract. It should not be used for any other purposes or in any other context, and Deloitte accepts no responsibility for its use in either regard. The Final Report is provided exclusively for Google’s use under the terms of the Contract. No party other than Google is entitled to rely on the Final Report for any purpose whatsoever and Deloitte accepts no responsibility or liability or duty of care to any party other than Google in respect of the Final Report and any of its contents. As set out in the Contract, the scope of our work has been limited by the time, information and explanations made available to us. The information contained in the Final Report has been obtained from Google and third party sources that are clearly referenced in the appropriate sections of the Final Report.
    [Show full text]