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On this page
  • Fields
  • sample_count: u32
  • mean: f64
  • p50: f64
  • p90: f64
  • p95: f64
  • Trait Implementations
  • impl Clone for PredictionMetrics
  • clone
  • clone_from
  • impl Debug for PredictionMetrics
  • fmt
  • impl Default for PredictionMetrics
  • default
  • impl<'de> Deserialize<'de> for PredictionMetrics
  • deserialize
  • impl PartialEq for PredictionMetrics
  • eq
  • ne
  • impl Serialize for PredictionMetrics
  • serialize
  • impl StructuralPartialEq for PredictionMetrics
ReferenceAPIsRust Library Referencenemo-relay-adaptivetriedata_models

Struct Prediction Metrics

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Generated from cargo doc --no-deps -p nemo-relay -p nemo-relay-adaptive -p nemo-relay-ffi.

pub struct PredictionMetrics {
    pub sample_count: u32,
    pub mean: f64,
    pub p50: f64,
    pub p90: f64,
    pub p95: f64,
}

Aggregated statistics for a single metric from profiler data.

Fields

sample_count: u32

Number of samples.

mean: f64

Mean value.

p50: f64

50th percentile (median).

p90: f64

90th percentile.

p95: f64

95th percentile.

Trait Implementations

impl Clone for PredictionMetrics

impl Clone for PredictionMetrics

clone

fn clone(&self) -> PredictionMetrics

clone_from

fn clone_from(&mut self, source: &Self)

impl Debug for PredictionMetrics

impl Debug for PredictionMetrics

fmt

fn fmt(&self, f: &mut Formatter<'_>) -> Result

impl Default for PredictionMetrics

impl Default for PredictionMetrics

default

fn default() -> PredictionMetrics

impl<'de> Deserialize<'de> for PredictionMetrics

impl<'de> Deserialize<'de> for PredictionMetrics

deserialize

fn deserialize<__D>(__deserializer: __D) -> Result<Self, __D::Error>where
    __D: Deserializer<'de>,

impl PartialEq for PredictionMetrics

impl PartialEq for PredictionMetrics

eq

fn eq(&self, other: &PredictionMetrics) -> bool

ne

fn ne(&self, other: &Rhs) -> bool

impl Serialize for PredictionMetrics

impl Serialize for PredictionMetrics

serialize

fn serialize<__S>(&self, __serializer: __S) -> Result<__S::Ok, __S::Error>where
    __S: Serializer,

impl StructuralPartialEq for PredictionMetrics

impl StructuralPartialEq for PredictionMetrics