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42 lines
2.3 KiB
Plaintext
42 lines
2.3 KiB
Plaintext
# solvers.TailLatencyModel { #mlsysim.solvers.TailLatencyModel }
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```python
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solvers.TailLatencyModel()
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```
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Analyzes queueing delays and P99 tail latency for deployed inference models.
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Models inference servers as M/M/c queues to determine if the deployment
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can sustain the target arrival rate while meeting strict SLA latency bounds.
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Literature Source:
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1. Dean & Barroso (2013), "The Tail at Scale."
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## Methods
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| Name | Description |
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| --- | --- |
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| [solve](#mlsysim.solvers.TailLatencyModel.solve) | Solves for P50 and P99 tail latencies under variable load. |
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### solve { #mlsysim.solvers.TailLatencyModel.solve }
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```python
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solvers.TailLatencyModel.solve(
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arrival_rate_qps,
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service_latency_ms,
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num_replicas=1,
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service_time_cv=1.0,
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)
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```
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Solves for P50 and P99 tail latencies under variable load.
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#### Parameters {.doc-section .doc-section-parameters}
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| Name | Type | Description | Default |
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|--------------------|--------|-------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------|------------|
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| arrival_rate_qps | float | Request arrival rate in queries per second. | _required_ |
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| service_latency_ms | float | Mean service time per request in milliseconds. | _required_ |
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| num_replicas | int | Number of server replicas (c in M/M/c). | `1` |
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| service_time_cv | float | Coefficient of variation of service time (default 1.0 = exponential). When CV != 1, applies Kingman's M/G/1 correction factor (cv^2 + 1) / 2 to queue wait times, approximating M/G/c behavior. | `1.0` |
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