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The CDK Construct Library for AWS::EC2

Project description

Amazon EC2 Construct Library

---

End-of-Support

AWS CDK v1 has reached End-of-Support on 2023-06-01. This package is no longer being updated, and users should migrate to AWS CDK v2.

For more information on how to migrate, see the Migrating to AWS CDK v2 guide.


The @aws-cdk/aws-ec2 package contains primitives for setting up networking and instances.

import aws_cdk.aws_ec2 as ec2

VPC

Most projects need a Virtual Private Cloud to provide security by means of network partitioning. This is achieved by creating an instance of Vpc:

vpc = ec2.Vpc(self, "VPC")

All default constructs require EC2 instances to be launched inside a VPC, so you should generally start by defining a VPC whenever you need to launch instances for your project.

Subnet Types

A VPC consists of one or more subnets that instances can be placed into. CDK distinguishes three different subnet types:

  • Public (SubnetType.PUBLIC) - public subnets connect directly to the Internet using an Internet Gateway. If you want your instances to have a public IP address and be directly reachable from the Internet, you must place them in a public subnet.
  • Private with Internet Access (SubnetType.PRIVATE_WITH_NAT) - instances in private subnets are not directly routable from the Internet, and connect out to the Internet via a NAT gateway. By default, a NAT gateway is created in every public subnet for maximum availability. Be aware that you will be charged for NAT gateways.
  • Isolated (SubnetType.PRIVATE_ISOLATED) - isolated subnets do not route from or to the Internet, and as such do not require NAT gateways. They can only connect to or be connected to from other instances in the same VPC. A default VPC configuration will not include isolated subnets,

A default VPC configuration will create public and private subnets. However, if natGateways:0 and subnetConfiguration is undefined, default VPC configuration will create public and isolated subnets. See Advanced Subnet Configuration below for information on how to change the default subnet configuration.

Constructs using the VPC will "launch instances" (or more accurately, create Elastic Network Interfaces) into one or more of the subnets. They all accept a property called subnetSelection (sometimes called vpcSubnets) to allow you to select in what subnet to place the ENIs, usually defaulting to private subnets if the property is omitted.

If you would like to save on the cost of NAT gateways, you can use isolated subnets instead of private subnets (as described in Advanced Subnet Configuration). If you need private instances to have internet connectivity, another option is to reduce the number of NAT gateways created by setting the natGateways property to a lower value (the default is one NAT gateway per availability zone). Be aware that this may have availability implications for your application.

Read more about subnets.

Control over availability zones

By default, a VPC will spread over at most 3 Availability Zones available to it. To change the number of Availability Zones that the VPC will spread over, specify the maxAzs property when defining it.

The number of Availability Zones that are available depends on the region and account of the Stack containing the VPC. If the region and account are specified on the Stack, the CLI will look up the existing Availability Zones and get an accurate count. If region and account are not specified, the stack could be deployed anywhere and it will have to make a safe choice, limiting itself to 2 Availability Zones.

Therefore, to get the VPC to spread over 3 or more availability zones, you must specify the environment where the stack will be deployed.

You can gain full control over the availability zones selection strategy by overriding the Stack's get availabilityZones() method:

// This example is only available in TypeScript

class MyStack extends Stack {

  constructor(scope: Construct, id: string, props?: StackProps) {
    super(scope, id, props);

    // ...
  }

  get availabilityZones(): string[] {
    return ['us-west-2a', 'us-west-2b'];
  }

}

Note that overriding the get availabilityZones() method will override the default behavior for all constructs defined within the Stack.

Choosing subnets for resources

When creating resources that create Elastic Network Interfaces (such as databases or instances), there is an option to choose which subnets to place them in. For example, a VPC endpoint by default is placed into a subnet in every availability zone, but you can override which subnets to use. The property is typically called one of subnets, vpcSubnets or subnetSelection.

The example below will place the endpoint into two AZs (us-east-1a and us-east-1c), in Isolated subnets:

# vpc: ec2.Vpc


ec2.InterfaceVpcEndpoint(self, "VPC Endpoint",
    vpc=vpc,
    service=ec2.InterfaceVpcEndpointService("com.amazonaws.vpce.us-east-1.vpce-svc-uuddlrlrbastrtsvc", 443),
    subnets=ec2.SubnetSelection(
        subnet_type=ec2.SubnetType.PRIVATE_ISOLATED,
        availability_zones=["us-east-1a", "us-east-1c"]
    )
)

You can also specify specific subnet objects for granular control:

# vpc: ec2.Vpc
# subnet1: ec2.Subnet
# subnet2: ec2.Subnet


ec2.InterfaceVpcEndpoint(self, "VPC Endpoint",
    vpc=vpc,
    service=ec2.InterfaceVpcEndpointService("com.amazonaws.vpce.us-east-1.vpce-svc-uuddlrlrbastrtsvc", 443),
    subnets=ec2.SubnetSelection(
        subnets=[subnet1, subnet2]
    )
)

Which subnets are selected is evaluated as follows:

  • subnets: if specific subnet objects are supplied, these are selected, and no other logic is used.

  • subnetType/subnetGroupName: otherwise, a set of subnets is selected by supplying either type or name:

    • subnetType will select all subnets of the given type.
    • subnetGroupName should be used to distinguish between multiple groups of subnets of the same type (for example, you may want to separate your application instances and your RDS instances into two distinct groups of Isolated subnets).
    • If neither are given, the first available subnet group of a given type that exists in the VPC will be used, in this order: Private, then Isolated, then Public. In short: by default ENIs will preferentially be placed in subnets not connected to the Internet.
  • availabilityZones/onePerAz: finally, some availability-zone based filtering may be done. This filtering by availability zones will only be possible if the VPC has been created or looked up in a non-environment agnostic stack (so account and region have been set and availability zones have been looked up).

    • availabilityZones: only the specific subnets from the selected subnet groups that are in the given availability zones will be returned.
    • onePerAz: per availability zone, a maximum of one subnet will be returned (Useful for resource types that do not allow creating two ENIs in the same availability zone).
  • subnetFilters: additional filtering on subnets using any number of user-provided filters which extend SubnetFilter. The following methods on the SubnetFilter class can be used to create a filter:

    • byIds: chooses subnets from a list of ids
    • availabilityZones: chooses subnets in the provided list of availability zones
    • onePerAz: chooses at most one subnet per availability zone
    • containsIpAddresses: chooses a subnet which contains any of the listed ip addresses
    • byCidrMask: chooses subnets that have the provided CIDR netmask

Using NAT instances

By default, the Vpc construct will create NAT gateways for you, which are managed by AWS. If you would prefer to use your own managed NAT instances instead, specify a different value for the natGatewayProvider property, as follows:

# Configure the `natGatewayProvider` when defining a Vpc
nat_gateway_provider = ec2.NatProvider.instance(
    instance_type=ec2.InstanceType("t3.small")
)

vpc = ec2.Vpc(self, "MyVpc",
    nat_gateway_provider=nat_gateway_provider,

    # The 'natGateways' parameter now controls the number of NAT instances
    nat_gateways=2
)

The construct will automatically search for the most recent NAT gateway AMI. If you prefer to use a custom AMI, use machineImage: MachineImage.genericLinux({ ... }) and configure the right AMI ID for the regions you want to deploy to.

By default, the NAT instances will route all traffic. To control what traffic gets routed, pass a custom value for defaultAllowedTraffic and access the NatInstanceProvider.connections member after having passed the NAT provider to the VPC:

# instance_type: ec2.InstanceType


provider = ec2.NatProvider.instance(
    instance_type=instance_type,
    default_allowed_traffic=ec2.NatTrafficDirection.OUTBOUND_ONLY
)
ec2.Vpc(self, "TheVPC",
    nat_gateway_provider=provider
)
provider.connections.allow_from(ec2.Peer.ipv4("1.2.3.4/8"), ec2.Port.tcp(80))

Advanced Subnet Configuration

If the default VPC configuration (public and private subnets spanning the size of the VPC) don't suffice for you, you can configure what subnets to create by specifying the subnetConfiguration property. It allows you to configure the number and size of all subnets. Specifying an advanced subnet configuration could look like this:

vpc = ec2.Vpc(self, "TheVPC",
    # 'cidr' configures the IP range and size of the entire VPC.
    # The IP space will be divided over the configured subnets.
    cidr="10.0.0.0/21",

    # 'maxAzs' configures the maximum number of availability zones to use
    max_azs=3,

    # 'subnetConfiguration' specifies the "subnet groups" to create.
    # Every subnet group will have a subnet for each AZ, so this
    # configuration will create `3 groups × 3 AZs = 9` subnets.
    subnet_configuration=[ec2.SubnetConfiguration(
        # 'subnetType' controls Internet access, as described above.
        subnet_type=ec2.SubnetType.PUBLIC,

        # 'name' is used to name this particular subnet group. You will have to
        # use the name for subnet selection if you have more than one subnet
        # group of the same type.
        name="Ingress",

        # 'cidrMask' specifies the IP addresses in the range of of individual
        # subnets in the group. Each of the subnets in this group will contain
        # `2^(32 address bits - 24 subnet bits) - 2 reserved addresses = 254`
        # usable IP addresses.
        #
        # If 'cidrMask' is left out the available address space is evenly
        # divided across the remaining subnet groups.
        cidr_mask=24
    ), ec2.SubnetConfiguration(
        cidr_mask=24,
        name="Application",
        subnet_type=ec2.SubnetType.PRIVATE_WITH_NAT
    ), ec2.SubnetConfiguration(
        cidr_mask=28,
        name="Database",
        subnet_type=ec2.SubnetType.PRIVATE_ISOLATED,

        # 'reserved' can be used to reserve IP address space. No resources will
        # be created for this subnet, but the IP range will be kept available for
        # future creation of this subnet, or even for future subdivision.
        reserved=True
    )
    ]
)

The example above is one possible configuration, but the user can use the constructs above to implement many other network configurations.

The Vpc from the above configuration in a Region with three availability zones will be the following:

Subnet Name Type IP Block AZ Features
IngressSubnet1 PUBLIC 10.0.0.0/24 #1 NAT Gateway
IngressSubnet2 PUBLIC 10.0.1.0/24 #2 NAT Gateway
IngressSubnet3 PUBLIC 10.0.2.0/24 #3 NAT Gateway
ApplicationSubnet1 PRIVATE 10.0.3.0/24 #1 Route to NAT in IngressSubnet1
ApplicationSubnet2 PRIVATE 10.0.4.0/24 #2 Route to NAT in IngressSubnet2
ApplicationSubnet3 PRIVATE 10.0.5.0/24 #3 Route to NAT in IngressSubnet3
DatabaseSubnet1 ISOLATED 10.0.6.0/28 #1 Only routes within the VPC
DatabaseSubnet2 ISOLATED 10.0.6.16/28 #2 Only routes within the VPC
DatabaseSubnet3 ISOLATED 10.0.6.32/28 #3 Only routes within the VPC

Accessing the Internet Gateway

If you need access to the internet gateway, you can get its ID like so:

# vpc: ec2.Vpc


igw_id = vpc.internet_gateway_id

For a VPC with only ISOLATED subnets, this value will be undefined.

This is only supported for VPCs created in the stack - currently you're unable to get the ID for imported VPCs. To do that you'd have to specifically look up the Internet Gateway by name, which would require knowing the name beforehand.

This can be useful for configuring routing using a combination of gateways: for more information see Routing below.

Routing

It's possible to add routes to any subnets using the addRoute() method. If for example you want an isolated subnet to have a static route via the default Internet Gateway created for the public subnet - perhaps for routing a VPN connection - you can do so like this:

vpc = ec2.Vpc(self, "VPC",
    subnet_configuration=[ec2.SubnetConfiguration(
        subnet_type=ec2.SubnetType.PUBLIC,
        name="Public"
    ), ec2.SubnetConfiguration(
        subnet_type=ec2.SubnetType.PRIVATE_ISOLATED,
        name="Isolated"
    )]
)

(vpc.isolated_subnets[0]).add_route("StaticRoute",
    router_id=vpc.internet_gateway_id,
    router_type=ec2.RouterType.GATEWAY,
    destination_cidr_block="8.8.8.8/32"
)

Note that we cast to Subnet here because the list of subnets only returns an ISubnet.

Reserving subnet IP space

There are situations where the IP space for a subnet or number of subnets will need to be reserved. This is useful in situations where subnets would need to be added after the vpc is originally deployed, without causing IP renumbering for existing subnets. The IP space for a subnet may be reserved by setting the reserved subnetConfiguration property to true, as shown below:

vpc = ec2.Vpc(self, "TheVPC",
    nat_gateways=1,
    subnet_configuration=[ec2.SubnetConfiguration(
        cidr_mask=26,
        name="Public",
        subnet_type=ec2.SubnetType.PUBLIC
    ), ec2.SubnetConfiguration(
        cidr_mask=26,
        name="Application1",
        subnet_type=ec2.SubnetType.PRIVATE_WITH_NAT
    ), ec2.SubnetConfiguration(
        cidr_mask=26,
        name="Application2",
        subnet_type=ec2.SubnetType.PRIVATE_WITH_NAT,
        reserved=True
    ), ec2.SubnetConfiguration(
        cidr_mask=27,
        name="Database",
        subnet_type=ec2.SubnetType.PRIVATE_ISOLATED
    )
    ]
)

In the example above, the subnet for Application2 is not actually provisioned but its IP space is still reserved. If in the future this subnet needs to be provisioned, then the reserved: true property should be removed. Reserving parts of the IP space prevents the other subnets from getting renumbered.

Sharing VPCs between stacks

If you are creating multiple Stacks inside the same CDK application, you can reuse a VPC defined in one Stack in another by simply passing the VPC instance around:

#
# Stack1 creates the VPC
#
class Stack1(cdk.Stack):

    def __init__(self, scope, id, *, description=None, env=None, stackName=None, tags=None, synthesizer=None, terminationProtection=None, analyticsReporting=None):
        super().__init__(scope, id, description=description, env=env, stackName=stackName, tags=tags, synthesizer=synthesizer, terminationProtection=terminationProtection, analyticsReporting=analyticsReporting)

        self.vpc = ec2.Vpc(self, "VPC")

#
# Stack2 consumes the VPC
#
class Stack2(cdk.Stack):
    def __init__(self, scope, id, *, vpc, description=None, env=None, stackName=None, tags=None, synthesizer=None, terminationProtection=None, analyticsReporting=None):
        super().__init__(scope, id, vpc=vpc, description=description, env=env, stackName=stackName, tags=tags, synthesizer=synthesizer, terminationProtection=terminationProtection, analyticsReporting=analyticsReporting)

        # Pass the VPC to a construct that needs it
        ConstructThatTakesAVpc(self, "Construct",
            vpc=vpc
        )

stack1 = Stack1(app, "Stack1")
stack2 = Stack2(app, "Stack2",
    vpc=stack1.vpc
)

Importing an existing VPC

If your VPC is created outside your CDK app, you can use Vpc.fromLookup(). The CDK CLI will search for the specified VPC in the the stack's region and account, and import the subnet configuration. Looking up can be done by VPC ID, but more flexibly by searching for a specific tag on the VPC.

Subnet types will be determined from the aws-cdk:subnet-type tag on the subnet if it exists, or the presence of a route to an Internet Gateway otherwise. Subnet names will be determined from the aws-cdk:subnet-name tag on the subnet if it exists, or will mirror the subnet type otherwise (i.e. a public subnet will have the name "Public").

The result of the Vpc.fromLookup() operation will be written to a file called cdk.context.json. You must commit this file to source control so that the lookup values are available in non-privileged environments such as CI build steps, and to ensure your template builds are repeatable.

Here's how Vpc.fromLookup() can be used:

vpc = ec2.Vpc.from_lookup(stack, "VPC",
    # This imports the default VPC but you can also
    # specify a 'vpcName' or 'tags'.
    is_default=True
)

Vpc.fromLookup is the recommended way to import VPCs. If for whatever reason you do not want to use the context mechanism to look up a VPC at synthesis time, you can also use Vpc.fromVpcAttributes. This has the following limitations:

  • Every subnet group in the VPC must have a subnet in each availability zone (for example, each AZ must have both a public and private subnet). Asymmetric VPCs are not supported.
  • All VpcId, SubnetId, RouteTableId, ... parameters must either be known at synthesis time, or they must come from deploy-time list parameters whose deploy-time lengths are known at synthesis time.

Using Vpc.fromVpcAttributes() looks like this:

vpc = ec2.Vpc.from_vpc_attributes(self, "VPC",
    vpc_id="vpc-1234",
    availability_zones=["us-east-1a", "us-east-1b"],

    # Either pass literals for all IDs
    public_subnet_ids=["s-12345", "s-67890"],

    # OR: import a list of known length
    private_subnet_ids=Fn.import_list_value("PrivateSubnetIds", 2),

    # OR: split an imported string to a list of known length
    isolated_subnet_ids=Fn.split(",", ssm.StringParameter.value_for_string_parameter(self, "MyParameter"), 2)
)

Allowing Connections

In AWS, all network traffic in and out of Elastic Network Interfaces (ENIs) is controlled by Security Groups. You can think of Security Groups as a firewall with a set of rules. By default, Security Groups allow no incoming (ingress) traffic and all outgoing (egress) traffic. You can add ingress rules to them to allow incoming traffic streams. To exert fine-grained control over egress traffic, set allowAllOutbound: false on the SecurityGroup, after which you can add egress traffic rules.

You can manipulate Security Groups directly:

my_security_group = ec2.SecurityGroup(self, "SecurityGroup",
    vpc=vpc,
    description="Allow ssh access to ec2 instances",
    allow_all_outbound=True
)
my_security_group.add_ingress_rule(ec2.Peer.any_ipv4(), ec2.Port.tcp(22), "allow ssh access from the world")

All constructs that create ENIs on your behalf (typically constructs that create EC2 instances or other VPC-connected resources) will all have security groups automatically assigned. Those constructs have an attribute called connections, which is an object that makes it convenient to update the security groups. If you want to allow connections between two constructs that have security groups, you have to add an Egress rule to one Security Group, and an Ingress rule to the other. The connections object will automatically take care of this for you:

# load_balancer: elbv2.ApplicationLoadBalancer
# app_fleet: autoscaling.AutoScalingGroup
# db_fleet: autoscaling.AutoScalingGroup


# Allow connections from anywhere
load_balancer.connections.allow_from_any_ipv4(ec2.Port.tcp(443), "Allow inbound HTTPS")

# The same, but an explicit IP address
load_balancer.connections.allow_from(ec2.Peer.ipv4("1.2.3.4/32"), ec2.Port.tcp(443), "Allow inbound HTTPS")

# Allow connection between AutoScalingGroups
app_fleet.connections.allow_to(db_fleet, ec2.Port.tcp(443), "App can call database")

Connection Peers

There are various classes that implement the connection peer part:

# app_fleet: autoscaling.AutoScalingGroup
# db_fleet: autoscaling.AutoScalingGroup


# Simple connection peers
peer = ec2.Peer.ipv4("10.0.0.0/16")
peer = ec2.Peer.any_ipv4()
peer = ec2.Peer.ipv6("::0/0")
peer = ec2.Peer.any_ipv6()
peer = ec2.Peer.prefix_list("pl-12345")
app_fleet.connections.allow_to(peer, ec2.Port.tcp(443), "Allow outbound HTTPS")

Any object that has a security group can itself be used as a connection peer:

# fleet1: autoscaling.AutoScalingGroup
# fleet2: autoscaling.AutoScalingGroup
# app_fleet: autoscaling.AutoScalingGroup


# These automatically create appropriate ingress and egress rules in both security groups
fleet1.connections.allow_to(fleet2, ec2.Port.tcp(80), "Allow between fleets")

app_fleet.connections.allow_from_any_ipv4(ec2.Port.tcp(80), "Allow from load balancer")

Port Ranges

The connections that are allowed are specified by port ranges. A number of classes provide the connection specifier:

ec2.Port.tcp(80)
ec2.Port.tcp_range(60000, 65535)
ec2.Port.all_tcp()
ec2.Port.all_traffic()

NOTE: This set is not complete yet; for example, there is no library support for ICMP at the moment. However, you can write your own classes to implement those.

Default Ports

Some Constructs have default ports associated with them. For example, the listener of a load balancer does (it's the public port), or instances of an RDS database (it's the port the database is accepting connections on).

If the object you're calling the peering method on has a default port associated with it, you can call allowDefaultPortFrom() and omit the port specifier. If the argument has an associated default port, call allowDefaultPortTo().

For example:

# listener: elbv2.ApplicationListener
# app_fleet: autoscaling.AutoScalingGroup
# rds_database: rds.DatabaseCluster


# Port implicit in listener
listener.connections.allow_default_port_from_any_ipv4("Allow public")

# Port implicit in peer
app_fleet.connections.allow_default_port_to(rds_database, "Fleet can access database")

Security group rules

By default, security group wills be added inline to the security group in the output cloud formation template, if applicable. This includes any static rules by ip address and port range. This optimization helps to minimize the size of the template.

In some environments this is not desirable, for example if your security group access is controlled via tags. You can disable inline rules per security group or globally via the context key @aws-cdk/aws-ec2.securityGroupDisableInlineRules.

my_security_group_without_inline_rules = ec2.SecurityGroup(self, "SecurityGroup",
    vpc=vpc,
    description="Allow ssh access to ec2 instances",
    allow_all_outbound=True,
    disable_inline_rules=True
)
# This will add the rule as an external cloud formation construct
my_security_group_without_inline_rules.add_ingress_rule(ec2.Peer.any_ipv4(), ec2.Port.tcp(22), "allow ssh access from the world")

Importing an existing security group

If you know the ID and the configuration of the security group to import, you can use SecurityGroup.fromSecurityGroupId:

sg = ec2.SecurityGroup.from_security_group_id(self, "SecurityGroupImport", "sg-1234",
    allow_all_outbound=True
)

Alternatively, use lookup methods to import security groups if you do not know the ID or the configuration details. Method SecurityGroup.fromLookupByName looks up a security group if the secruity group ID is unknown.

sg = ec2.SecurityGroup.from_lookup_by_name(self, "SecurityGroupLookup", "security-group-name", vpc)

If the security group ID is known and configuration details are unknown, use method SecurityGroup.fromLookupById instead. This method will lookup property allowAllOutbound from the current configuration of the security group.

sg = ec2.SecurityGroup.from_lookup_by_id(self, "SecurityGroupLookup", "sg-1234")

The result of SecurityGroup.fromLookupByName and SecurityGroup.fromLookupById operations will be written to a file called cdk.context.json. You must commit this file to source control so that the lookup values are available in non-privileged environments such as CI build steps, and to ensure your template builds are repeatable.

Cross Stack Connections

If you are attempting to add a connection from a peer in one stack to a peer in a different stack, sometimes it is necessary to ensure that you are making the connection in a specific stack in order to avoid a cyclic reference. If there are no other dependencies between stacks then it will not matter in which stack you make the connection, but if there are existing dependencies (i.e. stack1 already depends on stack2), then it is important to make the connection in the dependent stack (i.e. stack1).

Whenever you make a connections function call, the ingress and egress security group rules will be added to the stack that the calling object exists in. So if you are doing something like peer1.connections.allowFrom(peer2), then the security group rules (both ingress and egress) will be created in peer1's Stack.

As an example, if we wanted to allow a connection from a security group in one stack (egress) to a security group in a different stack (ingress), we would make the connection like:

If Stack1 depends on Stack2

# Stack 1
# stack1: Stack
# stack2: Stack


sg1 = ec2.SecurityGroup(stack1, "SG1",
    allow_all_outbound=False,  # if this is `true` then no egress rule will be created
    vpc=vpc
)

# Stack 2
sg2 = ec2.SecurityGroup(stack2, "SG2",
    allow_all_outbound=False,  # if this is `true` then no egress rule will be created
    vpc=vpc
)

# `connections.allowTo` on `sg1` since we want the
# rules to be created in Stack1
sg1.connections.allow_to(sg2, ec2.Port.tcp(3333))

In this case both the Ingress Rule for sg2 and the Egress Rule for sg1 will both be created in Stack 1 which avoids the cyclic reference.

If Stack2 depends on Stack1

# Stack 1
# stack1: Stack
# stack2: Stack


sg1 = ec2.SecurityGroup(stack1, "SG1",
    allow_all_outbound=False,  # if this is `true` then no egress rule will be created
    vpc=vpc
)

# Stack 2
sg2 = ec2.SecurityGroup(stack2, "SG2",
    allow_all_outbound=False,  # if this is `true` then no egress rule will be created
    vpc=vpc
)

# `connections.allowFrom` on `sg2` since we want the
# rules to be created in Stack2
sg2.connections.allow_from(sg1, ec2.Port.tcp(3333))

In this case both the Ingress Rule for sg2 and the Egress Rule for sg1 will both be created in Stack 2 which avoids the cyclic reference.

Machine Images (AMIs)

AMIs control the OS that gets launched when you start your EC2 instance. The EC2 library contains constructs to select the AMI you want to use.

Depending on the type of AMI, you select it a different way. Here are some examples of things you might want to use:

# Pick the right Amazon Linux edition. All arguments shown are optional
# and will default to these values when omitted.
amzn_linux = ec2.MachineImage.latest_amazon_linux(
    generation=ec2.AmazonLinuxGeneration.AMAZON_LINUX,
    edition=ec2.AmazonLinuxEdition.STANDARD,
    virtualization=ec2.AmazonLinuxVirt.HVM,
    storage=ec2.AmazonLinuxStorage.GENERAL_PURPOSE,
    cpu_type=ec2.AmazonLinuxCpuType.X86_64
)

# Pick a Windows edition to use
windows = ec2.MachineImage.latest_windows(ec2.WindowsVersion.WINDOWS_SERVER_2019_ENGLISH_FULL_BASE)

# Read AMI id from SSM parameter store
ssm = ec2.MachineImage.from_ssm_parameter("/my/ami", os=ec2.OperatingSystemType.LINUX)

# Look up the most recent image matching a set of AMI filters.
# In this case, look up the NAT instance AMI, by using a wildcard
# in the 'name' field:
nat_ami = ec2.MachineImage.lookup(
    name="amzn-ami-vpc-nat-*",
    owners=["amazon"]
)

# For other custom (Linux) images, instantiate a `GenericLinuxImage` with
# a map giving the AMI to in for each region:
linux = ec2.MachineImage.generic_linux({
    "us-east-1": "ami-97785bed",
    "eu-west-1": "ami-12345678"
})

# For other custom (Windows) images, instantiate a `GenericWindowsImage` with
# a map giving the AMI to in for each region:
generic_windows = ec2.MachineImage.generic_windows({
    "us-east-1": "ami-97785bed",
    "eu-west-1": "ami-12345678"
})

NOTE: The AMIs selected by MachineImage.lookup() will be cached in cdk.context.json, so that your AutoScalingGroup instances aren't replaced while you are making unrelated changes to your CDK app.

To query for the latest AMI again, remove the relevant cache entry from cdk.context.json, or use the cdk context command. For more information, see Runtime Context in the CDK developer guide.

MachineImage.genericLinux(), MachineImage.genericWindows() will use CfnMapping in an agnostic stack.

Special VPC configurations

VPN connections to a VPC

Create your VPC with VPN connections by specifying the vpnConnections props (keys are construct ids):

vpc = ec2.Vpc(self, "MyVpc",
    vpn_connections={
        "dynamic": ec2.VpnConnectionOptions( # Dynamic routing (BGP)
            ip="1.2.3.4"),
        "static": ec2.VpnConnectionOptions( # Static routing
            ip="4.5.6.7",
            static_routes=["192.168.10.0/24", "192.168.20.0/24"
            ])
    }
)

To create a VPC that can accept VPN connections, set vpnGateway to true:

vpc = ec2.Vpc(self, "MyVpc",
    vpn_gateway=True
)

VPN connections can then be added:

vpc.add_vpn_connection("Dynamic",
    ip="1.2.3.4"
)

By default, routes will be propagated on the route tables associated with the private subnets. If no private subnets exist, isolated subnets are used. If no isolated subnets exist, public subnets are used. Use the Vpc property vpnRoutePropagation to customize this behavior.

VPN connections expose metrics (cloudwatch.Metric) across all tunnels in the account/region and per connection:

# Across all tunnels in the account/region
all_data_out = ec2.VpnConnection.metric_all_tunnel_data_out()

# For a specific vpn connection
vpn_connection = vpc.add_vpn_connection("Dynamic",
    ip="1.2.3.4"
)
state = vpn_connection.metric_tunnel_state()

VPC endpoints

A VPC endpoint enables you to privately connect your VPC to supported AWS services and VPC endpoint services powered by PrivateLink without requiring an internet gateway, NAT device, VPN connection, or AWS Direct Connect connection. Instances in your VPC do not require public IP addresses to communicate with resources in the service. Traffic between your VPC and the other service does not leave the Amazon network.

Endpoints are virtual devices. They are horizontally scaled, redundant, and highly available VPC components that allow communication between instances in your VPC and services without imposing availability risks or bandwidth constraints on your network traffic.

# Add gateway endpoints when creating the VPC
vpc = ec2.Vpc(self, "MyVpc",
    gateway_endpoints={
        "S3": ec2.GatewayVpcEndpointOptions(
            service=ec2.GatewayVpcEndpointAwsService.S3
        )
    }
)

# Alternatively gateway endpoints can be added on the VPC
dynamo_db_endpoint = vpc.add_gateway_endpoint("DynamoDbEndpoint",
    service=ec2.GatewayVpcEndpointAwsService.DYNAMODB
)

# This allows to customize the endpoint policy
dynamo_db_endpoint.add_to_policy(
    iam.PolicyStatement( # Restrict to listing and describing tables
        principals=[iam.AnyPrincipal()],
        actions=["dynamodb:DescribeTable", "dynamodb:ListTables"],
        resources=["*"]))

# Add an interface endpoint
vpc.add_interface_endpoint("EcrDockerEndpoint",
    service=ec2.InterfaceVpcEndpointAwsService.ECR_DOCKER
)

By default, CDK will place a VPC endpoint in one subnet per AZ. If you wish to override the AZs CDK places the VPC endpoint in, use the subnets parameter as follows:

# vpc: ec2.Vpc


ec2.InterfaceVpcEndpoint(self, "VPC Endpoint",
    vpc=vpc,
    service=ec2.InterfaceVpcEndpointService("com.amazonaws.vpce.us-east-1.vpce-svc-uuddlrlrbastrtsvc", 443),
    # Choose which availability zones to place the VPC endpoint in, based on
    # available AZs
    subnets=ec2.SubnetSelection(
        availability_zones=["us-east-1a", "us-east-1c"]
    )
)

Per the AWS documentation, not all VPC endpoint services are available in all AZs. If you specify the parameter lookupSupportedAzs, CDK attempts to discover which AZs an endpoint service is available in, and will ensure the VPC endpoint is not placed in a subnet that doesn't match those AZs. These AZs will be stored in cdk.context.json.

# vpc: ec2.Vpc


ec2.InterfaceVpcEndpoint(self, "VPC Endpoint",
    vpc=vpc,
    service=ec2.InterfaceVpcEndpointService("com.amazonaws.vpce.us-east-1.vpce-svc-uuddlrlrbastrtsvc", 443),
    # Choose which availability zones to place the VPC endpoint in, based on
    # available AZs
    lookup_supported_azs=True
)

Pre-defined AWS services are defined in the InterfaceVpcEndpointAwsService class, and can be used to create VPC endpoints without having to configure name, ports, etc. For example, a Keyspaces endpoint can be created for use in your VPC:

# vpc: ec2.Vpc


ec2.InterfaceVpcEndpoint(self, "VPC Endpoint",
    vpc=vpc,
    service=ec2.InterfaceVpcEndpointAwsService.KEYSPACES
)

Security groups for interface VPC endpoints

By default, interface VPC endpoints create a new security group and traffic is not automatically allowed from the VPC CIDR.

Use the connections object to allow traffic to flow to the endpoint:

# my_endpoint: ec2.InterfaceVpcEndpoint


my_endpoint.connections.allow_default_port_from_any_ipv4()

Alternatively, existing security groups can be used by specifying the securityGroups prop.

VPC endpoint services

A VPC endpoint service enables you to expose a Network Load Balancer(s) as a provider service to consumers, who connect to your service over a VPC endpoint. You can restrict access to your service via allowed principals (anything that extends ArnPrincipal), and require that new connections be manually accepted.

# network_load_balancer1: elbv2.NetworkLoadBalancer
# network_load_balancer2: elbv2.NetworkLoadBalancer


ec2.VpcEndpointService(self, "EndpointService",
    vpc_endpoint_service_load_balancers=[network_load_balancer1, network_load_balancer2],
    acceptance_required=True,
    allowed_principals=[iam.ArnPrincipal("arn:aws:iam::123456789012:root")]
)

Endpoint services support private DNS, which makes it easier for clients to connect to your service by automatically setting up DNS in their VPC. You can enable private DNS on an endpoint service like so:

from aws_cdk.aws_route53 import HostedZone, VpcEndpointServiceDomainName
# zone: HostedZone
# vpces: ec2.VpcEndpointService


VpcEndpointServiceDomainName(self, "EndpointDomain",
    endpoint_service=vpces,
    domain_name="my-stuff.aws-cdk.dev",
    public_hosted_zone=zone
)

Note: The domain name must be owned (registered through Route53) by the account the endpoint service is in, or delegated to the account. The VpcEndpointServiceDomainName will handle the AWS side of domain verification, the process for which can be found here

Client VPN endpoint

AWS Client VPN is a managed client-based VPN service that enables you to securely access your AWS resources and resources in your on-premises network. With Client VPN, you can access your resources from any location using an OpenVPN-based VPN client.

Use the addClientVpnEndpoint() method to add a client VPN endpoint to a VPC:

vpc.add_client_vpn_endpoint("Endpoint",
    cidr="10.100.0.0/16",
    server_certificate_arn="arn:aws:acm:us-east-1:123456789012:certificate/server-certificate-id",
    # Mutual authentication
    client_certificate_arn="arn:aws:acm:us-east-1:123456789012:certificate/client-certificate-id",
    # User-based authentication
    user_based_authentication=ec2.ClientVpnUserBasedAuthentication.federated(saml_provider)
)

The endpoint must use at least one authentication method:

  • Mutual authentication with a client certificate
  • User-based authentication (directory or federated)

If user-based authentication is used, the self-service portal URL is made available via a CloudFormation output.

By default, a new security group is created, and logging is enabled. Moreover, a rule to authorize all users to the VPC CIDR is created.

To customize authorization rules, set the authorizeAllUsersToVpcCidr prop to false and use addAuthorizationRule():

endpoint = vpc.add_client_vpn_endpoint("Endpoint",
    cidr="10.100.0.0/16",
    server_certificate_arn="arn:aws:acm:us-east-1:123456789012:certificate/server-certificate-id",
    user_based_authentication=ec2.ClientVpnUserBasedAuthentication.federated(saml_provider),
    authorize_all_users_to_vpc_cidr=False
)

endpoint.add_authorization_rule("Rule",
    cidr="10.0.10.0/32",
    group_id="group-id"
)

Use addRoute() to configure network routes:

endpoint = vpc.add_client_vpn_endpoint("Endpoint",
    cidr="10.100.0.0/16",
    server_certificate_arn="arn:aws:acm:us-east-1:123456789012:certificate/server-certificate-id",
    user_based_authentication=ec2.ClientVpnUserBasedAuthentication.federated(saml_provider)
)

# Client-to-client access
endpoint.add_route("Route",
    cidr="10.100.0.0/16",
    target=ec2.ClientVpnRouteTarget.local()
)

Use the connections object of the endpoint to allow traffic to other security groups.

Instances

You can use the Instance class to start up a single EC2 instance. For production setups, we recommend you use an AutoScalingGroup from the aws-autoscaling module instead, as AutoScalingGroups will take care of restarting your instance if it ever fails.

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType


# AWS Linux
ec2.Instance(self, "Instance1",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=ec2.AmazonLinuxImage()
)

# AWS Linux 2
ec2.Instance(self, "Instance2",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=ec2.AmazonLinuxImage(
        generation=ec2.AmazonLinuxGeneration.AMAZON_LINUX_2
    )
)

# AWS Linux 2 with kernel 5.x
ec2.Instance(self, "Instance3",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=ec2.AmazonLinuxImage(
        generation=ec2.AmazonLinuxGeneration.AMAZON_LINUX_2,
        kernel=ec2.AmazonLinuxKernel.KERNEL5_X
    )
)

# AWS Linux 2022
ec2.Instance(self, "Instance4",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=ec2.AmazonLinuxImage(
        generation=ec2.AmazonLinuxGeneration.AMAZON_LINUX_2022
    )
)

Configuring Instances using CloudFormation Init (cfn-init)

CloudFormation Init allows you to configure your instances by writing files to them, installing software packages, starting services and running arbitrary commands. By default, if any of the instance setup commands throw an error; the deployment will fail and roll back to the previously known good state. The following documentation also applies to AutoScalingGroups.

For the full set of capabilities of this system, see the documentation for AWS::CloudFormation::Init. Here is an example of applying some configuration to an instance:

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType
# machine_image: ec2.IMachineImage


ec2.Instance(self, "Instance",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=machine_image,

    # Showing the most complex setup, if you have simpler requirements
    # you can use `CloudFormationInit.fromElements()`.
    init=ec2.CloudFormationInit.from_config_sets(
        config_sets={
            # Applies the configs below in this order
            "default": ["yumPreinstall", "config"]
        },
        configs={
            "yum_preinstall": ec2.InitConfig([
                # Install an Amazon Linux package using yum
                ec2.InitPackage.yum("git")
            ]),
            "config": ec2.InitConfig([
                # Create a JSON file from tokens (can also create other files)
                ec2.InitFile.from_object("/etc/stack.json", {
                    "stack_id": Stack.of(self).stack_id,
                    "stack_name": Stack.of(self).stack_name,
                    "region": Stack.of(self).region
                }),

                # Create a group and user
                ec2.InitGroup.from_name("my-group"),
                ec2.InitUser.from_name("my-user"),

                # Install an RPM from the internet
                ec2.InitPackage.rpm("http://mirrors.ukfast.co.uk/sites/dl.fedoraproject.org/pub/epel/8/Everything/x86_64/Packages/r/rubygem-git-1.5.0-2.el8.noarch.rpm")
            ])
        }
    ),
    init_options=ec2.ApplyCloudFormationInitOptions(
        # Optional, which configsets to activate (['default'] by default)
        config_sets=["default"],

        # Optional, how long the installation is expected to take (5 minutes by default)
        timeout=Duration.minutes(30),

        # Optional, whether to include the --url argument when running cfn-init and cfn-signal commands (false by default)
        include_url=True,

        # Optional, whether to include the --role argument when running cfn-init and cfn-signal commands (false by default)
        include_role=True
    )
)

You can have services restarted after the init process has made changes to the system. To do that, instantiate an InitServiceRestartHandle and pass it to the config elements that need to trigger the restart and the service itself. For example, the following config writes a config file for nginx, extracts an archive to the root directory, and then restarts nginx so that it picks up the new config and files:

# my_bucket: s3.Bucket


handle = ec2.InitServiceRestartHandle()

ec2.CloudFormationInit.from_elements(
    ec2.InitFile.from_string("/etc/nginx/nginx.conf", "...", service_restart_handles=[handle]),
    ec2.InitSource.from_s3_object("/var/www/html", my_bucket, "html.zip", service_restart_handles=[handle]),
    ec2.InitService.enable("nginx",
        service_restart_handle=handle
    ))

Bastion Hosts

A bastion host functions as an instance used to access servers and resources in a VPC without open up the complete VPC on a network level. You can use bastion hosts using a standard SSH connection targeting port 22 on the host. As an alternative, you can connect the SSH connection feature of AWS Systems Manager Session Manager, which does not need an opened security group. (https://aws.amazon.com/about-aws/whats-new/2019/07/session-manager-launches-tunneling-support-for-ssh-and-scp/)

A default bastion host for use via SSM can be configured like:

host = ec2.BastionHostLinux(self, "BastionHost", vpc=vpc)

If you want to connect from the internet using SSH, you need to place the host into a public subnet. You can then configure allowed source hosts.

host = ec2.BastionHostLinux(self, "BastionHost",
    vpc=vpc,
    subnet_selection=ec2.SubnetSelection(subnet_type=ec2.SubnetType.PUBLIC)
)
host.allow_ssh_access_from(ec2.Peer.ipv4("1.2.3.4/32"))

As there are no SSH public keys deployed on this machine, you need to use EC2 Instance Connect with the command aws ec2-instance-connect send-ssh-public-key to provide your SSH public key.

EBS volume for the bastion host can be encrypted like:

host = ec2.BastionHostLinux(self, "BastionHost",
    vpc=vpc,
    block_devices=[ec2.BlockDevice(
        device_name="EBSBastionHost",
        volume=ec2.BlockDeviceVolume.ebs(10,
            encrypted=True
        )
    )]
)

Block Devices

To add EBS block device mappings, specify the blockDevices property. The following example sets the EBS-backed root device (/dev/sda1) size to 50 GiB, and adds another EBS-backed device mapped to /dev/sdm that is 100 GiB in size:

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType
# machine_image: ec2.IMachineImage


ec2.Instance(self, "Instance",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=machine_image,

    # ...

    block_devices=[ec2.BlockDevice(
        device_name="/dev/sda1",
        volume=ec2.BlockDeviceVolume.ebs(50)
    ), ec2.BlockDevice(
        device_name="/dev/sdm",
        volume=ec2.BlockDeviceVolume.ebs(100)
    )
    ]
)

It is also possible to encrypt the block devices. In this example we will create an customer managed key encrypted EBS-backed root device:

from aws_cdk.aws_kms import Key

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType
# machine_image: ec2.IMachineImage


kms_key = Key(self, "KmsKey")

ec2.Instance(self, "Instance",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=machine_image,

    # ...

    block_devices=[ec2.BlockDevice(
        device_name="/dev/sda1",
        volume=ec2.BlockDeviceVolume.ebs(50,
            encrypted=True,
            kms_key=kms_key
        )
    )
    ]
)

Volumes

Whereas a BlockDeviceVolume is an EBS volume that is created and destroyed as part of the creation and destruction of a specific instance. A Volume is for when you want an EBS volume separate from any particular instance. A Volume is an EBS block device that can be attached to, or detached from, any instance at any time. Some types of Volumes can also be attached to multiple instances at the same time to allow you to have shared storage between those instances.

A notable restriction is that a Volume can only be attached to instances in the same availability zone as the Volume itself.

The following demonstrates how to create a 500 GiB encrypted Volume in the us-west-2a availability zone, and give a role the ability to attach that Volume to a specific instance:

# instance: ec2.Instance
# role: iam.Role


volume = ec2.Volume(self, "Volume",
    availability_zone="us-west-2a",
    size=Size.gibibytes(500),
    encrypted=True
)

volume.grant_attach_volume(role, [instance])

Instances Attaching Volumes to Themselves

If you need to grant an instance the ability to attach/detach an EBS volume to/from itself, then using grantAttachVolume and grantDetachVolume as outlined above will lead to an unresolvable circular reference between the instance role and the instance. In this case, use grantAttachVolumeByResourceTag and grantDetachVolumeByResourceTag as follows:

# instance: ec2.Instance
# volume: ec2.Volume


attach_grant = volume.grant_attach_volume_by_resource_tag(instance.grant_principal, [instance])
detach_grant = volume.grant_detach_volume_by_resource_tag(instance.grant_principal, [instance])

Attaching Volumes

The Amazon EC2 documentation for Linux Instances and Windows Instances contains information on how to attach and detach your Volumes to/from instances, and how to format them for use.

The following is a sample skeleton of EC2 UserData that can be used to attach a Volume to the Linux instance that it is running on:

# instance: ec2.Instance
# volume: ec2.Volume


volume.grant_attach_volume_by_resource_tag(instance.grant_principal, [instance])
target_device = "/dev/xvdz"
instance.user_data.add_commands("TOKEN=$(curl -SsfX PUT \"http://169.254.169.254/latest/api/token\" -H \"X-aws-ec2-metadata-token-ttl-seconds: 21600\")", "INSTANCE_ID=$(curl -SsfH \"X-aws-ec2-metadata-token: $TOKEN\" http://169.254.169.254/latest/meta-data/instance-id)", f"aws --region {Stack.of(this).region} ec2 attach-volume --volume-id {volume.volumeId} --instance-id $INSTANCE_ID --device {targetDevice}", f"while ! test -e {targetDevice}; do sleep 1; done")

Tagging Volumes

You can configure tag propagation on volume creation.

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType
# machine_image: ec2.IMachineImage


ec2.Instance(self, "Instance",
    vpc=vpc,
    machine_image=machine_image,
    instance_type=instance_type,
    propagate_tags_to_volume_on_creation=True
)

Configuring Instance Metadata Service (IMDS)

Toggling IMDSv1

You can configure EC2 Instance Metadata Service options to either allow both IMDSv1 and IMDSv2 or enforce IMDSv2 when interacting with the IMDS.

To do this for a single Instance, you can use the requireImdsv2 property. The example below demonstrates IMDSv2 being required on a single Instance:

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType
# machine_image: ec2.IMachineImage


ec2.Instance(self, "Instance",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=machine_image,

    # ...

    require_imdsv2=True
)

You can also use the either the InstanceRequireImdsv2Aspect for EC2 instances or the LaunchTemplateRequireImdsv2Aspect for EC2 launch templates to apply the operation to multiple instances or launch templates, respectively.

The following example demonstrates how to use the InstanceRequireImdsv2Aspect to require IMDSv2 for all EC2 instances in a stack:

aspect = ec2.InstanceRequireImdsv2Aspect()
Aspects.of(self).add(aspect)

VPC Flow Logs

VPC Flow Logs is a feature that enables you to capture information about the IP traffic going to and from network interfaces in your VPC. Flow log data can be published to Amazon CloudWatch Logs and Amazon S3. After you've created a flow log, you can retrieve and view its data in the chosen destination. (https://docs.aws.amazon.com/vpc/latest/userguide/flow-logs.html).

By default, a flow log will be created with CloudWatch Logs as the destination.

You can create a flow log like this:

# vpc: ec2.Vpc


ec2.FlowLog(self, "FlowLog",
    resource_type=ec2.FlowLogResourceType.from_vpc(vpc)
)

Or you can add a Flow Log to a VPC by using the addFlowLog method like this:

vpc = ec2.Vpc(self, "Vpc")

vpc.add_flow_log("FlowLog")

You can also add multiple flow logs with different destinations.

vpc = ec2.Vpc(self, "Vpc")

vpc.add_flow_log("FlowLogS3",
    destination=ec2.FlowLogDestination.to_s3()
)

vpc.add_flow_log("FlowLogCloudWatch",
    traffic_type=ec2.FlowLogTrafficType.REJECT
)

By default, the CDK will create the necessary resources for the destination. For the CloudWatch Logs destination it will create a CloudWatch Logs Log Group as well as the IAM role with the necessary permissions to publish to the log group. In the case of an S3 destination, it will create the S3 bucket.

If you want to customize any of the destination resources you can provide your own as part of the destination.

CloudWatch Logs

# vpc: ec2.Vpc


log_group = logs.LogGroup(self, "MyCustomLogGroup")

role = iam.Role(self, "MyCustomRole",
    assumed_by=iam.ServicePrincipal("vpc-flow-logs.amazonaws.com")
)

ec2.FlowLog(self, "FlowLog",
    resource_type=ec2.FlowLogResourceType.from_vpc(vpc),
    destination=ec2.FlowLogDestination.to_cloud_watch_logs(log_group, role)
)

S3

# vpc: ec2.Vpc


bucket = s3.Bucket(self, "MyCustomBucket")

ec2.FlowLog(self, "FlowLog",
    resource_type=ec2.FlowLogResourceType.from_vpc(vpc),
    destination=ec2.FlowLogDestination.to_s3(bucket)
)

ec2.FlowLog(self, "FlowLogWithKeyPrefix",
    resource_type=ec2.FlowLogResourceType.from_vpc(vpc),
    destination=ec2.FlowLogDestination.to_s3(bucket, "prefix/")
)

User Data

User data enables you to run a script when your instances start up. In order to configure these scripts you can add commands directly to the script or you can use the UserData's convenience functions to aid in the creation of your script.

A user data could be configured to run a script found in an asset through the following:

from aws_cdk.aws_s3_assets import Asset

# instance: ec2.Instance


asset = Asset(self, "Asset",
    path="./configure.sh"
)

local_path = instance.user_data.add_s3_download_command(
    bucket=asset.bucket,
    bucket_key=asset.s3_object_key,
    region="us-east-1"
)
instance.user_data.add_execute_file_command(
    file_path=local_path,
    arguments="--verbose -y"
)
asset.grant_read(instance.role)

Multipart user data

In addition, to above the MultipartUserData can be used to change instance startup behavior. Multipart user data are composed from separate parts forming archive. The most common parts are scripts executed during instance set-up. However, there are other kinds, too.

The advantage of multipart archive is in flexibility when it's needed to add additional parts or to use specialized parts to fine tune instance startup. Some services (like AWS Batch) support only MultipartUserData.

The parts can be executed at different moment of instance start-up and can serve a different purpose. This is controlled by contentType property. For common scripts, text/x-shellscript; charset="utf-8" can be used as content type.

In order to create archive the MultipartUserData has to be instantiated. Than, user can add parts to multipart archive using addPart. The MultipartBody contains methods supporting creation of body parts.

If the very custom part is required, it can be created using MultipartUserData.fromRawBody, in this case full control over content type, transfer encoding, and body properties is given to the user.

Below is an example for creating multipart user data with single body part responsible for installing awscli and configuring maximum size of storage used by Docker containers:

boot_hook_conf = ec2.UserData.for_linux()
boot_hook_conf.add_commands("cloud-init-per once docker_options echo 'OPTIONS=\"${OPTIONS} --storage-opt dm.basesize=40G\"' >> /etc/sysconfig/docker")

setup_commands = ec2.UserData.for_linux()
setup_commands.add_commands("sudo yum install awscli && echo Packages installed らと > /var/tmp/setup")

multipart_user_data = ec2.MultipartUserData()
# The docker has to be configured at early stage, so content type is overridden to boothook
multipart_user_data.add_part(ec2.MultipartBody.from_user_data(boot_hook_conf, "text/cloud-boothook; charset=\"us-ascii\""))
# Execute the rest of setup
multipart_user_data.add_part(ec2.MultipartBody.from_user_data(setup_commands))

ec2.LaunchTemplate(self, "",
    user_data=multipart_user_data,
    block_devices=[]
)

For more information see Specifying Multiple User Data Blocks Using a MIME Multi Part Archive

Using add*Command on MultipartUserData

To use the add*Command methods, that are inherited from the UserData interface, on MultipartUserData you must add a part to the MultipartUserData and designate it as the reciever for these methods. This is accomplished by using the addUserDataPart() method on MultipartUserData with the makeDefault argument set to true:

multipart_user_data = ec2.MultipartUserData()
commands_user_data = ec2.UserData.for_linux()
multipart_user_data.add_user_data_part(commands_user_data, ec2.MultipartBody.SHELL_SCRIPT, True)

# Adding commands to the multipartUserData adds them to commandsUserData, and vice-versa.
multipart_user_data.add_commands("touch /root/multi.txt")
commands_user_data.add_commands("touch /root/userdata.txt")

When used on an EC2 instance, the above multipartUserData will create both multi.txt and userdata.txt in /root.

Importing existing subnet

To import an existing Subnet, call Subnet.fromSubnetAttributes() or Subnet.fromSubnetId(). Only if you supply the subnet's Availability Zone and Route Table Ids when calling Subnet.fromSubnetAttributes() will you be able to use the CDK features that use these values (such as selecting one subnet per AZ).

Importing an existing subnet looks like this:

# Supply all properties
subnet1 = ec2.Subnet.from_subnet_attributes(self, "SubnetFromAttributes",
    subnet_id="s-1234",
    availability_zone="pub-az-4465",
    route_table_id="rt-145"
)

# Supply only subnet id
subnet2 = ec2.Subnet.from_subnet_id(self, "SubnetFromId", "s-1234")

Launch Templates

A Launch Template is a standardized template that contains the configuration information to launch an instance. They can be used when launching instances on their own, through Amazon EC2 Auto Scaling, EC2 Fleet, and Spot Fleet. Launch templates enable you to store launch parameters so that you do not have to specify them every time you launch an instance. For information on Launch Templates please see the official documentation.

The following demonstrates how to create a launch template with an Amazon Machine Image, and security group.

# vpc: ec2.Vpc


template = ec2.LaunchTemplate(self, "LaunchTemplate",
    machine_image=ec2.MachineImage.latest_amazon_linux(),
    security_group=ec2.SecurityGroup(self, "LaunchTemplateSG",
        vpc=vpc
    )
)

Detailed Monitoring

The following demonstrates how to enable Detailed Monitoring for an EC2 instance. Keep in mind that Detailed Monitoring results in additional charges.

# vpc: ec2.Vpc
# instance_type: ec2.InstanceType


ec2.Instance(self, "Instance1",
    vpc=vpc,
    instance_type=instance_type,
    machine_image=ec2.AmazonLinuxImage(),
    detailed_monitoring=True
)

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