// Code generated by software.amazon.smithy.rust.codegen.smithy-rs. DO NOT EDIT.
pub use crate::operation::create_session::_create_session_input::CreateSessionInputBuilder;
pub use crate::operation::create_session::_create_session_output::CreateSessionOutputBuilder;
impl crate::operation::create_session::builders::CreateSessionInputBuilder {
/// Sends a request with this input using the given client.
pub async fn send_with(
self,
client: &crate::Client,
) -> ::std::result::Result<
crate::operation::create_session::CreateSessionOutput,
::aws_smithy_runtime_api::client::result::SdkError<
crate::operation::create_session::CreateSessionError,
::aws_smithy_runtime_api::client::orchestrator::HttpResponse,
>,
> {
let mut fluent_builder = client.create_session();
fluent_builder.inner = self;
fluent_builder.send().await
}
}
/// Fluent builder constructing a request to `CreateSession`.
///
/// <p>Creates a new session.</p>
#[derive(::std::clone::Clone, ::std::fmt::Debug)]
pub struct CreateSessionFluentBuilder {
handle: ::std::sync::Arc<crate::client::Handle>,
inner: crate::operation::create_session::builders::CreateSessionInputBuilder,
config_override: ::std::option::Option<crate::config::Builder>,
}
impl
crate::client::customize::internal::CustomizableSend<
crate::operation::create_session::CreateSessionOutput,
crate::operation::create_session::CreateSessionError,
> for CreateSessionFluentBuilder
{
fn send(
self,
config_override: crate::config::Builder,
) -> crate::client::customize::internal::BoxFuture<
crate::client::customize::internal::SendResult<
crate::operation::create_session::CreateSessionOutput,
crate::operation::create_session::CreateSessionError,
>,
> {
::std::boxed::Box::pin(async move { self.config_override(config_override).send().await })
}
}
impl CreateSessionFluentBuilder {
/// Creates a new `CreateSessionFluentBuilder`.
pub(crate) fn new(handle: ::std::sync::Arc<crate::client::Handle>) -> Self {
Self {
handle,
inner: ::std::default::Default::default(),
config_override: ::std::option::Option::None,
}
}
/// Access the CreateSession as a reference.
pub fn as_input(&self) -> &crate::operation::create_session::builders::CreateSessionInputBuilder {
&self.inner
}
/// Sends the request and returns the response.
///
/// If an error occurs, an `SdkError` will be returned with additional details that
/// can be matched against.
///
/// By default, any retryable failures will be retried twice. Retry behavior
/// is configurable with the [RetryConfig](aws_smithy_types::retry::RetryConfig), which can be
/// set when configuring the client.
pub async fn send(
self,
) -> ::std::result::Result<
crate::operation::create_session::CreateSessionOutput,
::aws_smithy_runtime_api::client::result::SdkError<
crate::operation::create_session::CreateSessionError,
::aws_smithy_runtime_api::client::orchestrator::HttpResponse,
>,
> {
let input = self
.inner
.build()
.map_err(::aws_smithy_runtime_api::client::result::SdkError::construction_failure)?;
let runtime_plugins = crate::operation::create_session::CreateSession::operation_runtime_plugins(
self.handle.runtime_plugins.clone(),
&self.handle.conf,
self.config_override,
);
crate::operation::create_session::CreateSession::orchestrate(&runtime_plugins, input).await
}
/// Consumes this builder, creating a customizable operation that can be modified before being sent.
pub fn customize(
self,
) -> crate::client::customize::CustomizableOperation<
crate::operation::create_session::CreateSessionOutput,
crate::operation::create_session::CreateSessionError,
Self,
> {
crate::client::customize::CustomizableOperation::new(self)
}
pub(crate) fn config_override(mut self, config_override: impl ::std::convert::Into<crate::config::Builder>) -> Self {
self.set_config_override(::std::option::Option::Some(config_override.into()));
self
}
pub(crate) fn set_config_override(&mut self, config_override: ::std::option::Option<crate::config::Builder>) -> &mut Self {
self.config_override = config_override;
self
}
/// <p>The ID of the session request.</p>
pub fn id(mut self, input: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.id(input.into());
self
}
/// <p>The ID of the session request.</p>
pub fn set_id(mut self, input: ::std::option::Option<::std::string::String>) -> Self {
self.inner = self.inner.set_id(input);
self
}
/// <p>The ID of the session request.</p>
pub fn get_id(&self) -> &::std::option::Option<::std::string::String> {
self.inner.get_id()
}
/// <p>The description of the session.</p>
pub fn description(mut self, input: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.description(input.into());
self
}
/// <p>The description of the session.</p>
pub fn set_description(mut self, input: ::std::option::Option<::std::string::String>) -> Self {
self.inner = self.inner.set_description(input);
self
}
/// <p>The description of the session.</p>
pub fn get_description(&self) -> &::std::option::Option<::std::string::String> {
self.inner.get_description()
}
/// <p>The IAM Role ARN</p>
pub fn role(mut self, input: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.role(input.into());
self
}
/// <p>The IAM Role ARN</p>
pub fn set_role(mut self, input: ::std::option::Option<::std::string::String>) -> Self {
self.inner = self.inner.set_role(input);
self
}
/// <p>The IAM Role ARN</p>
pub fn get_role(&self) -> &::std::option::Option<::std::string::String> {
self.inner.get_role()
}
/// <p>The <code>SessionCommand</code> that runs the job.</p>
pub fn command(mut self, input: crate::types::SessionCommand) -> Self {
self.inner = self.inner.command(input);
self
}
/// <p>The <code>SessionCommand</code> that runs the job.</p>
pub fn set_command(mut self, input: ::std::option::Option<crate::types::SessionCommand>) -> Self {
self.inner = self.inner.set_command(input);
self
}
/// <p>The <code>SessionCommand</code> that runs the job.</p>
pub fn get_command(&self) -> &::std::option::Option<crate::types::SessionCommand> {
self.inner.get_command()
}
/// <p>The number of minutes before session times out. Default for Spark ETL jobs is 48 hours (2880 minutes). Consult the documentation for other job types.</p>
pub fn timeout(mut self, input: i32) -> Self {
self.inner = self.inner.timeout(input);
self
}
/// <p>The number of minutes before session times out. Default for Spark ETL jobs is 48 hours (2880 minutes). Consult the documentation for other job types.</p>
pub fn set_timeout(mut self, input: ::std::option::Option<i32>) -> Self {
self.inner = self.inner.set_timeout(input);
self
}
/// <p>The number of minutes before session times out. Default for Spark ETL jobs is 48 hours (2880 minutes). Consult the documentation for other job types.</p>
pub fn get_timeout(&self) -> &::std::option::Option<i32> {
self.inner.get_timeout()
}
/// <p>The number of minutes when idle before session times out. Default for Spark ETL jobs is value of Timeout. Consult the documentation for other job types.</p>
pub fn idle_timeout(mut self, input: i32) -> Self {
self.inner = self.inner.idle_timeout(input);
self
}
/// <p>The number of minutes when idle before session times out. Default for Spark ETL jobs is value of Timeout. Consult the documentation for other job types.</p>
pub fn set_idle_timeout(mut self, input: ::std::option::Option<i32>) -> Self {
self.inner = self.inner.set_idle_timeout(input);
self
}
/// <p>The number of minutes when idle before session times out. Default for Spark ETL jobs is value of Timeout. Consult the documentation for other job types.</p>
pub fn get_idle_timeout(&self) -> &::std::option::Option<i32> {
self.inner.get_idle_timeout()
}
///
/// Adds a key-value pair to `DefaultArguments`.
///
/// To override the contents of this collection use [`set_default_arguments`](Self::set_default_arguments).
///
/// <p>A map array of key-value pairs. Max is 75 pairs.</p>
pub fn default_arguments(
mut self,
k: impl ::std::convert::Into<::std::string::String>,
v: impl ::std::convert::Into<::std::string::String>,
) -> Self {
self.inner = self.inner.default_arguments(k.into(), v.into());
self
}
/// <p>A map array of key-value pairs. Max is 75 pairs.</p>
pub fn set_default_arguments(
mut self,
input: ::std::option::Option<::std::collections::HashMap<::std::string::String, ::std::string::String>>,
) -> Self {
self.inner = self.inner.set_default_arguments(input);
self
}
/// <p>A map array of key-value pairs. Max is 75 pairs.</p>
pub fn get_default_arguments(&self) -> &::std::option::Option<::std::collections::HashMap<::std::string::String, ::std::string::String>> {
self.inner.get_default_arguments()
}
/// <p>The number of connections to use for the session.</p>
pub fn connections(mut self, input: crate::types::ConnectionsList) -> Self {
self.inner = self.inner.connections(input);
self
}
/// <p>The number of connections to use for the session.</p>
pub fn set_connections(mut self, input: ::std::option::Option<crate::types::ConnectionsList>) -> Self {
self.inner = self.inner.set_connections(input);
self
}
/// <p>The number of connections to use for the session.</p>
pub fn get_connections(&self) -> &::std::option::Option<crate::types::ConnectionsList> {
self.inner.get_connections()
}
/// <p>The number of Glue data processing units (DPUs) that can be allocated when the job runs. A DPU is a relative measure of processing power that consists of 4 vCPUs of compute capacity and 16 GB memory.</p>
pub fn max_capacity(mut self, input: f64) -> Self {
self.inner = self.inner.max_capacity(input);
self
}
/// <p>The number of Glue data processing units (DPUs) that can be allocated when the job runs. A DPU is a relative measure of processing power that consists of 4 vCPUs of compute capacity and 16 GB memory.</p>
pub fn set_max_capacity(mut self, input: ::std::option::Option<f64>) -> Self {
self.inner = self.inner.set_max_capacity(input);
self
}
/// <p>The number of Glue data processing units (DPUs) that can be allocated when the job runs. A DPU is a relative measure of processing power that consists of 4 vCPUs of compute capacity and 16 GB memory.</p>
pub fn get_max_capacity(&self) -> &::std::option::Option<f64> {
self.inner.get_max_capacity()
}
/// <p>The number of workers of a defined <code>WorkerType</code> to use for the session.</p>
pub fn number_of_workers(mut self, input: i32) -> Self {
self.inner = self.inner.number_of_workers(input);
self
}
/// <p>The number of workers of a defined <code>WorkerType</code> to use for the session.</p>
pub fn set_number_of_workers(mut self, input: ::std::option::Option<i32>) -> Self {
self.inner = self.inner.set_number_of_workers(input);
self
}
/// <p>The number of workers of a defined <code>WorkerType</code> to use for the session.</p>
pub fn get_number_of_workers(&self) -> &::std::option::Option<i32> {
self.inner.get_number_of_workers()
}
/// <p>The type of predefined worker that is allocated when a job runs. Accepts a value of G.1X, G.2X, G.4X, or G.8X for Spark jobs. Accepts the value Z.2X for Ray notebooks.</p>
/// <ul>
/// <li>
/// <p>For the <code>G.1X</code> worker type, each worker maps to 1 DPU (4 vCPUs, 16 GB of memory) with 94GB disk, and provides 1 executor per worker. We recommend this worker type for workloads such as data transforms, joins, and queries, to offers a scalable and cost effective way to run most jobs.</p></li>
/// <li>
/// <p>For the <code>G.2X</code> worker type, each worker maps to 2 DPU (8 vCPUs, 32 GB of memory) with 138GB disk, and provides 1 executor per worker. We recommend this worker type for workloads such as data transforms, joins, and queries, to offers a scalable and cost effective way to run most jobs.</p></li>
/// <li>
/// <p>For the <code>G.4X</code> worker type, each worker maps to 4 DPU (16 vCPUs, 64 GB of memory) with 256GB disk, and provides 1 executor per worker. We recommend this worker type for jobs whose workloads contain your most demanding transforms, aggregations, joins, and queries. This worker type is available only for Glue version 3.0 or later Spark ETL jobs in the following Amazon Web Services Regions: US East (Ohio), US East (N. Virginia), US West (Oregon), Asia Pacific (Singapore), Asia Pacific (Sydney), Asia Pacific (Tokyo), Canada (Central), Europe (Frankfurt), Europe (Ireland), and Europe (Stockholm).</p></li>
/// <li>
/// <p>For the <code>G.8X</code> worker type, each worker maps to 8 DPU (32 vCPUs, 128 GB of memory) with 512GB disk, and provides 1 executor per worker. We recommend this worker type for jobs whose workloads contain your most demanding transforms, aggregations, joins, and queries. This worker type is available only for Glue version 3.0 or later Spark ETL jobs, in the same Amazon Web Services Regions as supported for the <code>G.4X</code> worker type.</p></li>
/// <li>
/// <p>For the <code>Z.2X</code> worker type, each worker maps to 2 M-DPU (8vCPUs, 64 GB of memory) with 128 GB disk, and provides up to 8 Ray workers based on the autoscaler.</p></li>
/// </ul>
pub fn worker_type(mut self, input: crate::types::WorkerType) -> Self {
self.inner = self.inner.worker_type(input);
self
}
/// <p>The type of predefined worker that is allocated when a job runs. Accepts a value of G.1X, G.2X, G.4X, or G.8X for Spark jobs. Accepts the value Z.2X for Ray notebooks.</p>
/// <ul>
/// <li>
/// <p>For the <code>G.1X</code> worker type, each worker maps to 1 DPU (4 vCPUs, 16 GB of memory) with 94GB disk, and provides 1 executor per worker. We recommend this worker type for workloads such as data transforms, joins, and queries, to offers a scalable and cost effective way to run most jobs.</p></li>
/// <li>
/// <p>For the <code>G.2X</code> worker type, each worker maps to 2 DPU (8 vCPUs, 32 GB of memory) with 138GB disk, and provides 1 executor per worker. We recommend this worker type for workloads such as data transforms, joins, and queries, to offers a scalable and cost effective way to run most jobs.</p></li>
/// <li>
/// <p>For the <code>G.4X</code> worker type, each worker maps to 4 DPU (16 vCPUs, 64 GB of memory) with 256GB disk, and provides 1 executor per worker. We recommend this worker type for jobs whose workloads contain your most demanding transforms, aggregations, joins, and queries. This worker type is available only for Glue version 3.0 or later Spark ETL jobs in the following Amazon Web Services Regions: US East (Ohio), US East (N. Virginia), US West (Oregon), Asia Pacific (Singapore), Asia Pacific (Sydney), Asia Pacific (Tokyo), Canada (Central), Europe (Frankfurt), Europe (Ireland), and Europe (Stockholm).</p></li>
/// <li>
/// <p>For the <code>G.8X</code> worker type, each worker maps to 8 DPU (32 vCPUs, 128 GB of memory) with 512GB disk, and provides 1 executor per worker. We recommend this worker type for jobs whose workloads contain your most demanding transforms, aggregations, joins, and queries. This worker type is available only for Glue version 3.0 or later Spark ETL jobs, in the same Amazon Web Services Regions as supported for the <code>G.4X</code> worker type.</p></li>
/// <li>
/// <p>For the <code>Z.2X</code> worker type, each worker maps to 2 M-DPU (8vCPUs, 64 GB of memory) with 128 GB disk, and provides up to 8 Ray workers based on the autoscaler.</p></li>
/// </ul>
pub fn set_worker_type(mut self, input: ::std::option::Option<crate::types::WorkerType>) -> Self {
self.inner = self.inner.set_worker_type(input);
self
}
/// <p>The type of predefined worker that is allocated when a job runs. Accepts a value of G.1X, G.2X, G.4X, or G.8X for Spark jobs. Accepts the value Z.2X for Ray notebooks.</p>
/// <ul>
/// <li>
/// <p>For the <code>G.1X</code> worker type, each worker maps to 1 DPU (4 vCPUs, 16 GB of memory) with 94GB disk, and provides 1 executor per worker. We recommend this worker type for workloads such as data transforms, joins, and queries, to offers a scalable and cost effective way to run most jobs.</p></li>
/// <li>
/// <p>For the <code>G.2X</code> worker type, each worker maps to 2 DPU (8 vCPUs, 32 GB of memory) with 138GB disk, and provides 1 executor per worker. We recommend this worker type for workloads such as data transforms, joins, and queries, to offers a scalable and cost effective way to run most jobs.</p></li>
/// <li>
/// <p>For the <code>G.4X</code> worker type, each worker maps to 4 DPU (16 vCPUs, 64 GB of memory) with 256GB disk, and provides 1 executor per worker. We recommend this worker type for jobs whose workloads contain your most demanding transforms, aggregations, joins, and queries. This worker type is available only for Glue version 3.0 or later Spark ETL jobs in the following Amazon Web Services Regions: US East (Ohio), US East (N. Virginia), US West (Oregon), Asia Pacific (Singapore), Asia Pacific (Sydney), Asia Pacific (Tokyo), Canada (Central), Europe (Frankfurt), Europe (Ireland), and Europe (Stockholm).</p></li>
/// <li>
/// <p>For the <code>G.8X</code> worker type, each worker maps to 8 DPU (32 vCPUs, 128 GB of memory) with 512GB disk, and provides 1 executor per worker. We recommend this worker type for jobs whose workloads contain your most demanding transforms, aggregations, joins, and queries. This worker type is available only for Glue version 3.0 or later Spark ETL jobs, in the same Amazon Web Services Regions as supported for the <code>G.4X</code> worker type.</p></li>
/// <li>
/// <p>For the <code>Z.2X</code> worker type, each worker maps to 2 M-DPU (8vCPUs, 64 GB of memory) with 128 GB disk, and provides up to 8 Ray workers based on the autoscaler.</p></li>
/// </ul>
pub fn get_worker_type(&self) -> &::std::option::Option<crate::types::WorkerType> {
self.inner.get_worker_type()
}
/// <p>The name of the SecurityConfiguration structure to be used with the session</p>
pub fn security_configuration(mut self, input: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.security_configuration(input.into());
self
}
/// <p>The name of the SecurityConfiguration structure to be used with the session</p>
pub fn set_security_configuration(mut self, input: ::std::option::Option<::std::string::String>) -> Self {
self.inner = self.inner.set_security_configuration(input);
self
}
/// <p>The name of the SecurityConfiguration structure to be used with the session</p>
pub fn get_security_configuration(&self) -> &::std::option::Option<::std::string::String> {
self.inner.get_security_configuration()
}
/// <p>The Glue version determines the versions of Apache Spark and Python that Glue supports. The GlueVersion must be greater than 2.0.</p>
pub fn glue_version(mut self, input: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.glue_version(input.into());
self
}
/// <p>The Glue version determines the versions of Apache Spark and Python that Glue supports. The GlueVersion must be greater than 2.0.</p>
pub fn set_glue_version(mut self, input: ::std::option::Option<::std::string::String>) -> Self {
self.inner = self.inner.set_glue_version(input);
self
}
/// <p>The Glue version determines the versions of Apache Spark and Python that Glue supports. The GlueVersion must be greater than 2.0.</p>
pub fn get_glue_version(&self) -> &::std::option::Option<::std::string::String> {
self.inner.get_glue_version()
}
///
/// Adds a key-value pair to `Tags`.
///
/// To override the contents of this collection use [`set_tags`](Self::set_tags).
///
/// <p>The map of key value pairs (tags) belonging to the session.</p>
pub fn tags(mut self, k: impl ::std::convert::Into<::std::string::String>, v: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.tags(k.into(), v.into());
self
}
/// <p>The map of key value pairs (tags) belonging to the session.</p>
pub fn set_tags(mut self, input: ::std::option::Option<::std::collections::HashMap<::std::string::String, ::std::string::String>>) -> Self {
self.inner = self.inner.set_tags(input);
self
}
/// <p>The map of key value pairs (tags) belonging to the session.</p>
pub fn get_tags(&self) -> &::std::option::Option<::std::collections::HashMap<::std::string::String, ::std::string::String>> {
self.inner.get_tags()
}
/// <p>The origin of the request.</p>
pub fn request_origin(mut self, input: impl ::std::convert::Into<::std::string::String>) -> Self {
self.inner = self.inner.request_origin(input.into());
self
}
/// <p>The origin of the request.</p>
pub fn set_request_origin(mut self, input: ::std::option::Option<::std::string::String>) -> Self {
self.inner = self.inner.set_request_origin(input);
self
}
/// <p>The origin of the request.</p>
pub fn get_request_origin(&self) -> &::std::option::Option<::std::string::String> {
self.inner.get_request_origin()
}
/// <p>The type of session to create.</p>
pub fn session_type(mut self, input: crate::types::SessionType) -> Self {
self.inner = self.inner.session_type(input);
self
}
/// <p>The type of session to create.</p>
pub fn set_session_type(mut self, input: ::std::option::Option<crate::types::SessionType>) -> Self {
self.inner = self.inner.set_session_type(input);
self
}
/// <p>The type of session to create.</p>
pub fn get_session_type(&self) -> &::std::option::Option<crate::types::SessionType> {
self.inner.get_session_type()
}
}