#[non_exhaustive]pub struct LambdaFunctionRecommendationBuilder { /* private fields */ }
Expand description
A builder for LambdaFunctionRecommendation
.
Implementations§
Source§impl LambdaFunctionRecommendationBuilder
impl LambdaFunctionRecommendationBuilder
Sourcepub fn function_arn(self, input: impl Into<String>) -> Self
pub fn function_arn(self, input: impl Into<String>) -> Self
The Amazon Resource Name (ARN) of the current function.
Sourcepub fn set_function_arn(self, input: Option<String>) -> Self
pub fn set_function_arn(self, input: Option<String>) -> Self
The Amazon Resource Name (ARN) of the current function.
Sourcepub fn get_function_arn(&self) -> &Option<String>
pub fn get_function_arn(&self) -> &Option<String>
The Amazon Resource Name (ARN) of the current function.
Sourcepub fn function_version(self, input: impl Into<String>) -> Self
pub fn function_version(self, input: impl Into<String>) -> Self
The version number of the current function.
Sourcepub fn set_function_version(self, input: Option<String>) -> Self
pub fn set_function_version(self, input: Option<String>) -> Self
The version number of the current function.
Sourcepub fn get_function_version(&self) -> &Option<String>
pub fn get_function_version(&self) -> &Option<String>
The version number of the current function.
Sourcepub fn account_id(self, input: impl Into<String>) -> Self
pub fn account_id(self, input: impl Into<String>) -> Self
The Amazon Web Services account ID of the function.
Sourcepub fn set_account_id(self, input: Option<String>) -> Self
pub fn set_account_id(self, input: Option<String>) -> Self
The Amazon Web Services account ID of the function.
Sourcepub fn get_account_id(&self) -> &Option<String>
pub fn get_account_id(&self) -> &Option<String>
The Amazon Web Services account ID of the function.
Sourcepub fn current_memory_size(self, input: i32) -> Self
pub fn current_memory_size(self, input: i32) -> Self
The amount of memory, in MB, that's allocated to the current function.
Sourcepub fn set_current_memory_size(self, input: Option<i32>) -> Self
pub fn set_current_memory_size(self, input: Option<i32>) -> Self
The amount of memory, in MB, that's allocated to the current function.
Sourcepub fn get_current_memory_size(&self) -> &Option<i32>
pub fn get_current_memory_size(&self) -> &Option<i32>
The amount of memory, in MB, that's allocated to the current function.
Sourcepub fn number_of_invocations(self, input: i64) -> Self
pub fn number_of_invocations(self, input: i64) -> Self
The number of times your function code was applied during the look-back period.
Sourcepub fn set_number_of_invocations(self, input: Option<i64>) -> Self
pub fn set_number_of_invocations(self, input: Option<i64>) -> Self
The number of times your function code was applied during the look-back period.
Sourcepub fn get_number_of_invocations(&self) -> &Option<i64>
pub fn get_number_of_invocations(&self) -> &Option<i64>
The number of times your function code was applied during the look-back period.
Sourcepub fn utilization_metrics(self, input: LambdaFunctionUtilizationMetric) -> Self
pub fn utilization_metrics(self, input: LambdaFunctionUtilizationMetric) -> Self
Appends an item to utilization_metrics
.
To override the contents of this collection use set_utilization_metrics
.
An array of objects that describe the utilization metrics of the function.
Sourcepub fn set_utilization_metrics(
self,
input: Option<Vec<LambdaFunctionUtilizationMetric>>,
) -> Self
pub fn set_utilization_metrics( self, input: Option<Vec<LambdaFunctionUtilizationMetric>>, ) -> Self
An array of objects that describe the utilization metrics of the function.
Sourcepub fn get_utilization_metrics(
&self,
) -> &Option<Vec<LambdaFunctionUtilizationMetric>>
pub fn get_utilization_metrics( &self, ) -> &Option<Vec<LambdaFunctionUtilizationMetric>>
An array of objects that describe the utilization metrics of the function.
Sourcepub fn lookback_period_in_days(self, input: f64) -> Self
pub fn lookback_period_in_days(self, input: f64) -> Self
The number of days for which utilization metrics were analyzed for the function.
Sourcepub fn set_lookback_period_in_days(self, input: Option<f64>) -> Self
pub fn set_lookback_period_in_days(self, input: Option<f64>) -> Self
The number of days for which utilization metrics were analyzed for the function.
Sourcepub fn get_lookback_period_in_days(&self) -> &Option<f64>
pub fn get_lookback_period_in_days(&self) -> &Option<f64>
The number of days for which utilization metrics were analyzed for the function.
Sourcepub fn last_refresh_timestamp(self, input: DateTime) -> Self
pub fn last_refresh_timestamp(self, input: DateTime) -> Self
The timestamp of when the function recommendation was last generated.
Sourcepub fn set_last_refresh_timestamp(self, input: Option<DateTime>) -> Self
pub fn set_last_refresh_timestamp(self, input: Option<DateTime>) -> Self
The timestamp of when the function recommendation was last generated.
Sourcepub fn get_last_refresh_timestamp(&self) -> &Option<DateTime>
pub fn get_last_refresh_timestamp(&self) -> &Option<DateTime>
The timestamp of when the function recommendation was last generated.
Sourcepub fn finding(self, input: LambdaFunctionRecommendationFinding) -> Self
pub fn finding(self, input: LambdaFunctionRecommendationFinding) -> Self
The finding classification of the function.
Findings for functions include:
-
Optimized
— The function is correctly provisioned to run your workload based on its current configuration and its utilization history. This finding classification does not include finding reason codes. -
NotOptimized
— The function is performing at a higher level (over-provisioned) or at a lower level (under-provisioned) than required for your workload because its current configuration is not optimal. Over-provisioned resources might lead to unnecessary infrastructure cost, and under-provisioned resources might lead to poor application performance. This finding classification can include theMemoryUnderprovisioned
andMemoryUnderprovisioned
finding reason codes. -
Unavailable
— Compute Optimizer was unable to generate a recommendation for the function. This could be because the function has not accumulated sufficient metric data, or the function does not qualify for a recommendation. This finding classification can include theInsufficientData
andInconclusive
finding reason codes.Functions with a finding of unavailable are not returned unless you specify the
filter
parameter with a value ofUnavailable
in yourGetLambdaFunctionRecommendations
request.
Sourcepub fn set_finding(
self,
input: Option<LambdaFunctionRecommendationFinding>,
) -> Self
pub fn set_finding( self, input: Option<LambdaFunctionRecommendationFinding>, ) -> Self
The finding classification of the function.
Findings for functions include:
-
Optimized
— The function is correctly provisioned to run your workload based on its current configuration and its utilization history. This finding classification does not include finding reason codes. -
NotOptimized
— The function is performing at a higher level (over-provisioned) or at a lower level (under-provisioned) than required for your workload because its current configuration is not optimal. Over-provisioned resources might lead to unnecessary infrastructure cost, and under-provisioned resources might lead to poor application performance. This finding classification can include theMemoryUnderprovisioned
andMemoryUnderprovisioned
finding reason codes. -
Unavailable
— Compute Optimizer was unable to generate a recommendation for the function. This could be because the function has not accumulated sufficient metric data, or the function does not qualify for a recommendation. This finding classification can include theInsufficientData
andInconclusive
finding reason codes.Functions with a finding of unavailable are not returned unless you specify the
filter
parameter with a value ofUnavailable
in yourGetLambdaFunctionRecommendations
request.
Sourcepub fn get_finding(&self) -> &Option<LambdaFunctionRecommendationFinding>
pub fn get_finding(&self) -> &Option<LambdaFunctionRecommendationFinding>
The finding classification of the function.
Findings for functions include:
-
Optimized
— The function is correctly provisioned to run your workload based on its current configuration and its utilization history. This finding classification does not include finding reason codes. -
NotOptimized
— The function is performing at a higher level (over-provisioned) or at a lower level (under-provisioned) than required for your workload because its current configuration is not optimal. Over-provisioned resources might lead to unnecessary infrastructure cost, and under-provisioned resources might lead to poor application performance. This finding classification can include theMemoryUnderprovisioned
andMemoryUnderprovisioned
finding reason codes. -
Unavailable
— Compute Optimizer was unable to generate a recommendation for the function. This could be because the function has not accumulated sufficient metric data, or the function does not qualify for a recommendation. This finding classification can include theInsufficientData
andInconclusive
finding reason codes.Functions with a finding of unavailable are not returned unless you specify the
filter
parameter with a value ofUnavailable
in yourGetLambdaFunctionRecommendations
request.
Sourcepub fn finding_reason_codes(
self,
input: LambdaFunctionRecommendationFindingReasonCode,
) -> Self
pub fn finding_reason_codes( self, input: LambdaFunctionRecommendationFindingReasonCode, ) -> Self
Appends an item to finding_reason_codes
.
To override the contents of this collection use set_finding_reason_codes
.
The reason for the finding classification of the function.
Functions that have a finding classification of Optimized
don't have a finding reason code.
Finding reason codes for functions include:
-
MemoryOverprovisioned
— The function is over-provisioned when its memory configuration can be sized down while still meeting the performance requirements of your workload. An over-provisioned function might lead to unnecessary infrastructure cost. This finding reason code is part of theNotOptimized
finding classification. -
MemoryUnderprovisioned
— The function is under-provisioned when its memory configuration doesn't meet the performance requirements of the workload. An under-provisioned function might lead to poor application performance. This finding reason code is part of theNotOptimized
finding classification. -
InsufficientData
— The function does not have sufficient metric data for Compute Optimizer to generate a recommendation. For more information, see the Supported resources and requirements in the Compute Optimizer User Guide. This finding reason code is part of theUnavailable
finding classification. -
Inconclusive
— The function does not qualify for a recommendation because Compute Optimizer cannot generate a recommendation with a high degree of confidence. This finding reason code is part of theUnavailable
finding classification.
Sourcepub fn set_finding_reason_codes(
self,
input: Option<Vec<LambdaFunctionRecommendationFindingReasonCode>>,
) -> Self
pub fn set_finding_reason_codes( self, input: Option<Vec<LambdaFunctionRecommendationFindingReasonCode>>, ) -> Self
The reason for the finding classification of the function.
Functions that have a finding classification of Optimized
don't have a finding reason code.
Finding reason codes for functions include:
-
MemoryOverprovisioned
— The function is over-provisioned when its memory configuration can be sized down while still meeting the performance requirements of your workload. An over-provisioned function might lead to unnecessary infrastructure cost. This finding reason code is part of theNotOptimized
finding classification. -
MemoryUnderprovisioned
— The function is under-provisioned when its memory configuration doesn't meet the performance requirements of the workload. An under-provisioned function might lead to poor application performance. This finding reason code is part of theNotOptimized
finding classification. -
InsufficientData
— The function does not have sufficient metric data for Compute Optimizer to generate a recommendation. For more information, see the Supported resources and requirements in the Compute Optimizer User Guide. This finding reason code is part of theUnavailable
finding classification. -
Inconclusive
— The function does not qualify for a recommendation because Compute Optimizer cannot generate a recommendation with a high degree of confidence. This finding reason code is part of theUnavailable
finding classification.
Sourcepub fn get_finding_reason_codes(
&self,
) -> &Option<Vec<LambdaFunctionRecommendationFindingReasonCode>>
pub fn get_finding_reason_codes( &self, ) -> &Option<Vec<LambdaFunctionRecommendationFindingReasonCode>>
The reason for the finding classification of the function.
Functions that have a finding classification of Optimized
don't have a finding reason code.
Finding reason codes for functions include:
-
MemoryOverprovisioned
— The function is over-provisioned when its memory configuration can be sized down while still meeting the performance requirements of your workload. An over-provisioned function might lead to unnecessary infrastructure cost. This finding reason code is part of theNotOptimized
finding classification. -
MemoryUnderprovisioned
— The function is under-provisioned when its memory configuration doesn't meet the performance requirements of the workload. An under-provisioned function might lead to poor application performance. This finding reason code is part of theNotOptimized
finding classification. -
InsufficientData
— The function does not have sufficient metric data for Compute Optimizer to generate a recommendation. For more information, see the Supported resources and requirements in the Compute Optimizer User Guide. This finding reason code is part of theUnavailable
finding classification. -
Inconclusive
— The function does not qualify for a recommendation because Compute Optimizer cannot generate a recommendation with a high degree of confidence. This finding reason code is part of theUnavailable
finding classification.
Sourcepub fn memory_size_recommendation_options(
self,
input: LambdaFunctionMemoryRecommendationOption,
) -> Self
pub fn memory_size_recommendation_options( self, input: LambdaFunctionMemoryRecommendationOption, ) -> Self
Appends an item to memory_size_recommendation_options
.
To override the contents of this collection use set_memory_size_recommendation_options
.
An array of objects that describe the memory configuration recommendation options for the function.
Sourcepub fn set_memory_size_recommendation_options(
self,
input: Option<Vec<LambdaFunctionMemoryRecommendationOption>>,
) -> Self
pub fn set_memory_size_recommendation_options( self, input: Option<Vec<LambdaFunctionMemoryRecommendationOption>>, ) -> Self
An array of objects that describe the memory configuration recommendation options for the function.
Sourcepub fn get_memory_size_recommendation_options(
&self,
) -> &Option<Vec<LambdaFunctionMemoryRecommendationOption>>
pub fn get_memory_size_recommendation_options( &self, ) -> &Option<Vec<LambdaFunctionMemoryRecommendationOption>>
An array of objects that describe the memory configuration recommendation options for the function.
Sourcepub fn current_performance_risk(self, input: CurrentPerformanceRisk) -> Self
pub fn current_performance_risk(self, input: CurrentPerformanceRisk) -> Self
The risk of the current Lambda function not meeting the performance needs of its workloads. The higher the risk, the more likely the current Lambda function requires more memory.
Sourcepub fn set_current_performance_risk(
self,
input: Option<CurrentPerformanceRisk>,
) -> Self
pub fn set_current_performance_risk( self, input: Option<CurrentPerformanceRisk>, ) -> Self
The risk of the current Lambda function not meeting the performance needs of its workloads. The higher the risk, the more likely the current Lambda function requires more memory.
Sourcepub fn get_current_performance_risk(&self) -> &Option<CurrentPerformanceRisk>
pub fn get_current_performance_risk(&self) -> &Option<CurrentPerformanceRisk>
The risk of the current Lambda function not meeting the performance needs of its workloads. The higher the risk, the more likely the current Lambda function requires more memory.
Sourcepub fn effective_recommendation_preferences(
self,
input: LambdaEffectiveRecommendationPreferences,
) -> Self
pub fn effective_recommendation_preferences( self, input: LambdaEffectiveRecommendationPreferences, ) -> Self
Describes the effective recommendation preferences for Lambda functions.
Sourcepub fn set_effective_recommendation_preferences(
self,
input: Option<LambdaEffectiveRecommendationPreferences>,
) -> Self
pub fn set_effective_recommendation_preferences( self, input: Option<LambdaEffectiveRecommendationPreferences>, ) -> Self
Describes the effective recommendation preferences for Lambda functions.
Sourcepub fn get_effective_recommendation_preferences(
&self,
) -> &Option<LambdaEffectiveRecommendationPreferences>
pub fn get_effective_recommendation_preferences( &self, ) -> &Option<LambdaEffectiveRecommendationPreferences>
Describes the effective recommendation preferences for Lambda functions.
Appends an item to tags
.
To override the contents of this collection use set_tags
.
A list of tags assigned to your Lambda function recommendations.
A list of tags assigned to your Lambda function recommendations.
A list of tags assigned to your Lambda function recommendations.
Sourcepub fn build(self) -> LambdaFunctionRecommendation
pub fn build(self) -> LambdaFunctionRecommendation
Consumes the builder and constructs a LambdaFunctionRecommendation
.
Trait Implementations§
Source§impl Clone for LambdaFunctionRecommendationBuilder
impl Clone for LambdaFunctionRecommendationBuilder
Source§fn clone(&self) -> LambdaFunctionRecommendationBuilder
fn clone(&self) -> LambdaFunctionRecommendationBuilder
1.0.0 · Source§fn clone_from(&mut self, source: &Self)
fn clone_from(&mut self, source: &Self)
source
. Read moreSource§impl Default for LambdaFunctionRecommendationBuilder
impl Default for LambdaFunctionRecommendationBuilder
Source§fn default() -> LambdaFunctionRecommendationBuilder
fn default() -> LambdaFunctionRecommendationBuilder
Source§impl PartialEq for LambdaFunctionRecommendationBuilder
impl PartialEq for LambdaFunctionRecommendationBuilder
Source§fn eq(&self, other: &LambdaFunctionRecommendationBuilder) -> bool
fn eq(&self, other: &LambdaFunctionRecommendationBuilder) -> bool
self
and other
values to be equal, and is used by ==
.impl StructuralPartialEq for LambdaFunctionRecommendationBuilder
Auto Trait Implementations§
impl Freeze for LambdaFunctionRecommendationBuilder
impl RefUnwindSafe for LambdaFunctionRecommendationBuilder
impl Send for LambdaFunctionRecommendationBuilder
impl Sync for LambdaFunctionRecommendationBuilder
impl Unpin for LambdaFunctionRecommendationBuilder
impl UnwindSafe for LambdaFunctionRecommendationBuilder
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