DC/OS vs Nomad vs YARN Hadoop

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DC/OS

108
161
+ 1
12
Nomad

196
244
+ 1
28
YARN Hadoop

93
63
+ 1
1
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Pros of DC/OS
Pros of Nomad
Pros of YARN Hadoop
  • 5
    Easy to setup a HA cluster
  • 3
    Open source
  • 2
    Has templates to install via AWS and Azure
  • 1
    Easy Setup
  • 1
    Easy to get services running and operate them
  • 6
    Built in Consul integration
  • 5
    Easy setup
  • 4
    Bult-in Vault integration
  • 3
    Built-in federation support
  • 1
    Autoscaling support
  • 1
    Self-healing
  • 1
    Nice ACL
  • 1
    Managable by terraform
  • 1
    Open source
  • 1
    Simple
  • 1
    Flexible
  • 1
    Multiple workload support
  • 1
    Bult-in Vault inegration
  • 1
    Stable
  • 1
    Batch processing with commodity machine

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Cons of DC/OS
Cons of Nomad
Cons of YARN Hadoop
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    • 3
      Easy to start with
    • 1
      HCL language for configuration, an unpopular DSL
    • 1
      Small comunity
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      No Stats
      - No public GitHub repository available -

      What is DC/OS?

      Unlike traditional operating systems, DC/OS spans multiple machines within a network, aggregating their resources to maximize utilization by distributed applications.

      What is Nomad?

      Nomad is a cluster manager, designed for both long lived services and short lived batch processing workloads. Developers use a declarative job specification to submit work, and Nomad ensures constraints are satisfied and resource utilization is optimized by efficient task packing. Nomad supports all major operating systems and virtualized, containerized, or standalone applications.

      What is YARN Hadoop?

      Its fundamental idea is to split up the functionalities of resource management and job scheduling/monitoring into separate daemons. The idea is to have a global ResourceManager (RM) and per-application ApplicationMaster (AM).

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      What companies use DC/OS?
      What companies use Nomad?
      What companies use YARN Hadoop?

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      What tools integrate with DC/OS?
      What tools integrate with Nomad?
      What tools integrate with YARN Hadoop?

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      Blog Posts

      Mar 24 2021 at 12:57PM

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      What are some alternatives to DC/OS, Nomad, and YARN Hadoop?
      Kubernetes
      Kubernetes is an open source orchestration system for Docker containers. It handles scheduling onto nodes in a compute cluster and actively manages workloads to ensure that their state matches the users declared intentions.
      Apache Mesos
      Apache Mesos is a cluster manager that simplifies the complexity of running applications on a shared pool of servers.
      Docker
      The Docker Platform is the industry-leading container platform for continuous, high-velocity innovation, enabling organizations to seamlessly build and share any application — from legacy to what comes next — and securely run them anywhere
      OpenStack
      OpenStack is a cloud operating system that controls large pools of compute, storage, and networking resources throughout a datacenter, all managed through a dashboard that gives administrators control while empowering their users to provision resources through a web interface.
      Marathon
      Marathon is an Apache Mesos framework for container orchestration. Marathon provides a REST API for starting, stopping, and scaling applications. Marathon is written in Scala and can run in highly-available mode by running multiple copies. The state of running tasks gets stored in the Mesos state abstraction.
      See all alternatives