This change moves the .rst files into the main adming-guide-cloud folder now conversion is complete. changes to the project config and to the openstack manuals to stop sync of .xml files are also needed. Change-Id: I498e8d6ac3cb80da413e23b14a0959abd58e7d79 Implements: blueprint reorganise-user-guides
16 KiB
System architecture
OpenStack Compute contains several main components.
- The
cloud controller
represents the global state and interacts with the other components. TheAPI server
acts as the web services front end for the cloud controller. Thecompute controller
provides compute server resources and usually also contains the Compute service. - The
object store
is an optional component that provides storage services; you can also use OpenStack Object Storage instead. - An
auth manager
provides authentication and authorization services when used with the Compute system; you can also use OpenStack Identity as a separate authentication service instead. - A
volume controller
provides fast and permanent block-level storage for the compute servers. - The
network controller
provides virtual networks to enable compute servers to interact with each other and with the public network. You can also use OpenStack Networking instead. - The
scheduler
is used to select the most suitable compute controller to host an instance.
Compute uses a messaging-based, shared nothing
architecture. All major components exist on multiple servers, including
the compute, volume, and network controllers, and the object store or
image service. The state of the entire system is stored in a database.
The cloud controller communicates with the internal object store using
HTTP, but it communicates with the scheduler, network controller, and
volume controller using AMQP (advanced message queuing protocol). To
avoid blocking a component while waiting for a response, Compute uses
asynchronous calls, with a callback that is triggered when a response is
received.
Hypervisors
Compute controls hypervisors through an API server. Selecting the best hypervisor to use can be difficult, and you must take budget, resource constraints, supported features, and required technical specifications into account. However, the majority of OpenStack development is done on systems using KVM and Xen-based hypervisors. For a detailed list of features and support across different hypervisors, see http://wiki.openstack.org/HypervisorSupportMatrix.
You can also orchestrate clouds using multiple hypervisors in different availability zones. Compute supports the following hypervisors:
- Baremetal
- Docker
- Hyper-V
- Kernel-based Virtual Machine (KVM)
- Linux Containers (LXC)
- Quick Emulator (QEMU)
- User Mode Linux (UML)
- VMware vSphere
- Xen
For more information about hypervisors, see the Hypervisors section in the OpenStack Configuration Reference.
Tenants, users, and roles
The Compute system is designed to be used by different consumers in the form of tenants on a shared system, and role-based access assignments. Roles control the actions that a user is allowed to perform.
Tenants are isolated resource containers that form the principal
organizational structure within the Compute service. They consist of an
individual VLAN, and volumes, instances, images, keys, and users. A user
can specify the tenant by appending :project_id
to their
access key. If no tenant is specified in the API request, Compute
attempts to use a tenant with the same ID as the user.
For tenants, you can use quota controls to limit the:
- Number of volumes that can be launched.
- Number of processor cores and the amount of RAM that can be allocated.
- Floating IP addresses assigned to any instance when it launches. This allows instances to have the same publicly accessible IP addresses.
- Fixed IP addresses assigned to the same instance when it launches. This allows instances to have the same publicly or privately accessible IP addresses.
Roles control the actions a user is allowed to perform. By default,
most actions do not require a particular role, but you can configure
them by editing the policy.json
file for user roles. For example, a rule
can be defined so that a user must have the admin
role in
order to be able to allocate a public IP address.
A tenant limits users' access to particular images. Each user is assigned a user name and password. Keypairs granting access to an instance are enabled for each user, but quotas are set, so that each tenant can control resource consumption across available hardware resources.
Note
Earlier versions of OpenStack used the term project
instead of tenant
. Because of this legacy terminology, some
command-line tools use --project_id
where you would
normally expect to enter a tenant ID.
Block storage
OpenStack provides two classes of block storage: ephemeral storage and persistent volume.
Ephemeral storage
Ephemeral storage includes a root ephemeral volume and an additional ephemeral volume.
The root disk is associated with an instance, and exists only for the life of this very instance. Generally, it is used to store an instance's root file system, persists across the guest operating system reboots, and is removed on an instance deletion. The amount of the root ephemeral volume is defined by the flavor of an instance.
In addition to the ephemeral root volume, all default types of
flavors, except m1.tiny
, which is the smallest one, provide
an additional ephemeral block device sized between 20 and 160 GB (a
configurable value to suit an environment). It is represented as a raw
block device with no partition table or file system. A cloud-aware
operating system can discover, format, and mount such a storage device.
OpenStack Compute defines the default file system for different
operating systems as Ext4 for Linux distributions, VFAT for non-Linux
and non-Windows operating systems, and NTFS for Windows. However, it is
possible to specify any other filesystem type by using
virt_mkfs
or default_ephemeral_format
configuration options.
Note
For example, the cloud-init
package included into an
Ubuntu's stock cloud image, by default, formats this space as an Ext4
file system and mounts it on /mnt
. This is a cloud-init feature, and is not an
OpenStack mechanism. OpenStack only provisions the raw storage.
Persistent volume
A persistent volume is represented by a persistent virtualized block device independent of any particular instance, and provided by OpenStack Block Storage.
Only a single configured instance can access a persistent volume. Multiple instances cannot access a persistent volume. This type of configuration requires a traditional network file system to allow multiple instances accessing the persistent volume. It also requires a traditional network file system like NFS, CIFS, or a cluster file system such as GlusterFS. These systems can be built within an OpenStack cluster, or provisioned outside of it, but OpenStack software does not provide these features.
You can configure a persistent volume as bootable and use it to provide a persistent virtual instance similar to the traditional non-cloud-based virtualization system. It is still possible for the resulting instance to keep ephemeral storage, depending on the flavor selected. In this case, the root file system can be on the persistent volume, and its state is maintained, even if the instance is shut down. For more information about this type of configuration, see the OpenStack Configuration Reference.
Note
A persistent volume does not provide concurrent access from multiple instances. That type of configuration requires a traditional network file system like NFS, or CIFS, or a cluster file system such as GlusterFS. These systems can be built within an OpenStack cluster, or provisioned outside of it, but OpenStack software does not provide these features.
EC2 compatibility API
In addition to the native compute API, OpenStack provides an EC2-compatible API. This API allows EC2 legacy workflows built for EC2 to work with OpenStack. For more information and configuration options about this compatibility API, see the OpenStack Configuration Reference.
Numerous third-party tools and language-specific SDKs can be used to interact with OpenStack clouds, using both native and compatibility APIs. Some of the more popular third-party tools are:
- Euca2ools
-
A popular open source command-line tool for interacting with the EC2 API. This is convenient for multi-cloud environments where EC2 is the common API, or for transitioning from EC2-based clouds to OpenStack. For more information, see the euca2ools site.
- Hybridfox
-
A Firefox browser add-on that provides a graphical interface to many popular public and private cloud technologies, including OpenStack. For more information, see the hybridfox site.
- boto
-
A Python library for interacting with Amazon Web Services. It can be used to access OpenStack through the EC2 compatibility API. For more information, see the boto project page on GitHub.
- fog
-
A Ruby cloud services library. It provides methods for interacting with a large number of cloud and virtualization platforms, including OpenStack. For more information, see the fog site.
- php-opencloud
-
A PHP SDK designed to work with most OpenStack- based cloud deployments, as well as Rackspace public cloud. For more information, see the php-opencloud site.
Building blocks
In OpenStack the base operating system is usually copied from an image stored in the OpenStack Image service. This is the most common case and results in an ephemeral instance that starts from a known template state and loses all accumulated states on virtual machine deletion. It is also possible to put an operating system on a persistent volume in the OpenStack Block Storage volume system. This gives a more traditional persistent system that accumulates states which are preserved on the OpenStack Block Storage volume across the deletion and re-creation of the virtual machine. To get a list of available images on your system, run:
$ nova image-list
+--------------------------------------+-----------------------------+--------+---------+
| ID | Name | Status | Server |
+--------------------------------------+-----------------------------+--------+---------+
| aee1d242-730f-431f-88c1-87630c0f07ba | Ubuntu 14.04 cloudimg amd64 | ACTIVE | |
| 0b27baa1-0ca6-49a7-b3f4-48388e440245 | Ubuntu 14.10 cloudimg amd64 | ACTIVE | |
| df8d56fc-9cea-4dfd-a8d3-28764de3cb08 | jenkins | ACTIVE | |
+--------------------------------------+-----------------------------+--------+---------+
The displayed image attributes are:
ID
-
Automatically generated UUID of the image
Name
-
Free form, human-readable name for image
Status
-
The status of the image. Images marked
ACTIVE
are available for use. Server
-
For images that are created as snapshots of running instances, this is the UUID of the instance the snapshot derives from. For uploaded images, this field is blank.
Virtual hardware templates are called flavors
. The
default installation provides five flavors. By default, these are
configurable by admin users, however that behavior can be changed by
redefining the access controls for
compute_extension:flavormanage
in /etc/nova/policy.json
on the
compute-api
server.
For a list of flavors that are available on your system:
$ nova flavor-list
+-----+-----------+-----------+------+-----------+------+-------+-------------+-----------+
| ID | Name | Memory_MB | Disk | Ephemeral | Swap | VCPUs | RXTX_Factor | Is_Public |
+-----+-----------+-----------+------+-----------+------+-------+-------------+-----------+
| 1 | m1.tiny | 512 | 1 | 0 | | 1 | 1.0 | True |
| 2 | m1.small | 2048 | 20 | 0 | | 1 | 1.0 | True |
| 3 | m1.medium | 4096 | 40 | 0 | | 2 | 1.0 | True |
| 4 | m1.large | 8192 | 80 | 0 | | 4 | 1.0 | True |
| 5 | m1.xlarge | 16384 | 160 | 0 | | 8 | 1.0 | True |
+-----+-----------+-----------+------+-----------+------+-------+-------------+-----------+
Compute service architecture
These basic categories describe the service architecture and information about the cloud controller.
API server
At the heart of the cloud framework is an API server, which makes command and control of the hypervisor, storage, and networking programmatically available to users.
The API endpoints are basic HTTP web services which handle authentication, authorization, and basic command and control functions using various API interfaces under the Amazon, Rackspace, and related models. This enables API compatibility with multiple existing tool sets created for interaction with offerings from other vendors. This broad compatibility prevents vendor lock-in.
Message queue
A messaging queue brokers the interaction between compute nodes (processing), the networking controllers (software which controls network infrastructure), API endpoints, the scheduler (determines which physical hardware to allocate to a virtual resource), and similar components. Communication to and from the cloud controller is handled by HTTP requests through multiple API endpoints.
A typical message passing event begins with the API server receiving a request from a user. The API server authenticates the user and ensures that they are permitted to issue the subject command. The availability of objects implicated in the request is evaluated and, if available, the request is routed to the queuing engine for the relevant workers. Workers continually listen to the queue based on their role, and occasionally their type host name. When an applicable work request arrives on the queue, the worker takes assignment of the task and begins executing it. Upon completion, a response is dispatched to the queue which is received by the API server and relayed to the originating user. Database entries are queried, added, or removed as necessary during the process.
Compute worker
Compute workers manage computing instances on host machines. The API dispatches commands to compute workers to complete these tasks:
- Run instances
- Terminate instances
- Reboot instances
- Attach volumes
- Detach volumes
- Get console output
Network Controller
The Network Controller manages the networking resources on host machines. The API server dispatches commands through the message queue, which are subsequently processed by Network Controllers. Specific operations include:
- Allocating fixed IP addresses
- Configuring VLANs for projects
- Configuring networks for compute nodes