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from .simple import SimpleStrategy | ||
from .simple import SimpleStrategy | ||
from .simple_limit import SimpleLimitStrategy |
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import textwrap | ||
from datetime import timedelta | ||
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import numpy as np | ||
import pydantic as pd | ||
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from robusta_krr.core.abstract.strategies import ( | ||
BaseStrategy, | ||
K8sObjectData, | ||
MetricsPodData, | ||
PodsTimeData, | ||
ResourceRecommendation, | ||
ResourceType, | ||
RunResult, | ||
StrategySettings, | ||
) | ||
from robusta_krr.core.integrations.prometheus.metrics import ( | ||
CPUAmountLoader, | ||
MaxMemoryLoader, | ||
MemoryAmountLoader, | ||
CPULoader, | ||
PrometheusMetric, | ||
MaxOOMKilledMemoryLoader, | ||
) | ||
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class SimpleLimitStrategySettings(StrategySettings): | ||
cpu_request: float = pd.Field(66, gt=0, le=100, description="The percentile to use for the CPU request.") | ||
cpu_limit: float = pd.Field(96, gt=0, le=100, description="The percentile to use for the CPU limit.") | ||
memory_buffer_percentage: float = pd.Field( | ||
15, gt=0, description="The percentage of added buffer to the peak memory usage for memory recommendation." | ||
) | ||
points_required: int = pd.Field( | ||
100, ge=1, description="The number of data points required to make a recommendation for a resource." | ||
) | ||
allow_hpa: bool = pd.Field( | ||
False, | ||
description="Whether to calculate recommendations even when there is an HPA scaler defined on that resource.", | ||
) | ||
use_oomkill_data: bool = pd.Field( | ||
False, | ||
description="Whether to bump the memory when OOMKills are detected (experimental).", | ||
) | ||
oom_memory_buffer_percentage: float = pd.Field( | ||
25, ge=0, description="What percentage to increase the memory when there are OOMKill events." | ||
) | ||
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def calculate_memory_proposal(self, data: PodsTimeData, max_oomkill: float = 0) -> float: | ||
data_ = [np.max(values[:, 1]) for values in data.values()] | ||
if len(data_) == 0: | ||
return float("NaN") | ||
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return max( | ||
np.max(data_) * (1 + self.memory_buffer_percentage / 100), | ||
max_oomkill * (1 + self.oom_memory_buffer_percentage / 100), | ||
) | ||
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def calculate_cpu_percentile(self, data: PodsTimeData, percentile: float) -> float: | ||
if len(data) == 0: | ||
return float("NaN") | ||
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if len(data) > 1: | ||
data_ = np.concatenate([values[:, 1] for values in data.values()]) | ||
else: | ||
data_ = list(data.values())[0][:, 1] | ||
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return np.percentile(data_, percentile) | ||
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def history_range_enough(self, history_range: tuple[timedelta, timedelta]) -> bool: | ||
start, end = history_range | ||
return (end - start) >= timedelta(hours=3) | ||
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class SimpleLimitStrategy(BaseStrategy[SimpleLimitStrategySettings]): | ||
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display_name = "simple_limit" | ||
rich_console = True | ||
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@property | ||
def metrics(self) -> list[type[PrometheusMetric]]: | ||
metrics = [ | ||
CPULoader, | ||
MaxMemoryLoader, | ||
CPUAmountLoader, | ||
MemoryAmountLoader, | ||
] | ||
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if self.settings.use_oomkill_data: | ||
metrics.append(MaxOOMKilledMemoryLoader) | ||
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return metrics | ||
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@property | ||
def description(self): | ||
s = textwrap.dedent(f"""\ | ||
CPU request: {self.settings.cpu_request}% percentile, limit: {self.settings.cpu_limit}% percentile | ||
Memory request: max + {self.settings.memory_buffer_percentage}%, limit: max + {self.settings.memory_buffer_percentage}% | ||
History: {self.settings.history_duration} hours | ||
Step: {self.settings.timeframe_duration} minutes | ||
All parameters can be customized. For example: `krr simple_limit --cpu_request=66 --cpu_limit=96 --memory_buffer_percentage=15 --history_duration=24 --timeframe_duration=0.5` | ||
""") | ||
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if not self.settings.allow_hpa: | ||
s += "\n" + textwrap.dedent(f"""\ | ||
This strategy does not work with objects with HPA defined (Horizontal Pod Autoscaler). | ||
If HPA is defined for CPU or Memory, the strategy will return "?" for that resource. | ||
You can override this behaviour by passing the --allow-hpa flag | ||
""") | ||
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s += "\nLearn more: [underline]https://github.com/robusta-dev/krr#algorithm[/underline]" | ||
return s | ||
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def __calculate_cpu_proposal( | ||
self, history_data: MetricsPodData, object_data: K8sObjectData | ||
) -> ResourceRecommendation: | ||
data = history_data["CPULoader"] | ||
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if len(data) == 0: | ||
return ResourceRecommendation.undefined(info="No data") | ||
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# NOTE: metrics for each pod are returned as list[values] where values is [timestamp, value] | ||
# As CPUAmountLoader returns only the last value (1 point), [0, 1] is used to get the value | ||
# So each pod is string with pod name, and values is numpy array of shape (N, 2) | ||
data_count = {pod: values[0, 1] for pod, values in history_data["CPUAmountLoader"].items()} | ||
total_points_count = sum(data_count.values()) | ||
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if total_points_count < self.settings.points_required: | ||
return ResourceRecommendation.undefined(info="Not enough data") | ||
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if ( | ||
object_data.hpa is not None | ||
and object_data.hpa.target_cpu_utilization_percentage is not None | ||
and not self.settings.allow_hpa | ||
): | ||
return ResourceRecommendation.undefined(info="HPA detected") | ||
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cpu_request = self.settings.calculate_cpu_percentile(data, self.settings.cpu_request) | ||
cpu_limit = self.settings.calculate_cpu_percentile(data, self.settings.cpu_limit) | ||
return ResourceRecommendation(request=cpu_request, limit=cpu_limit) | ||
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def __calculate_memory_proposal( | ||
self, history_data: MetricsPodData, object_data: K8sObjectData | ||
) -> ResourceRecommendation: | ||
data = history_data["MaxMemoryLoader"] | ||
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oomkill_detected = False | ||
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if self.settings.use_oomkill_data: | ||
max_oomkill_data = history_data["MaxOOMKilledMemoryLoader"] | ||
# NOTE: metrics for each pod are returned as list[values] where values is [timestamp, value] | ||
# As MaxOOMKilledMemoryLoader returns only the last value (1 point), [0, 1] is used to get the value | ||
# So each value is numpy array of shape (N, 2) | ||
max_oomkill_value = ( | ||
np.max([values[0, 1] for values in max_oomkill_data.values()]) if len(max_oomkill_data) > 0 else 0 | ||
) | ||
if max_oomkill_value != 0: | ||
oomkill_detected = True | ||
else: | ||
max_oomkill_value = 0 | ||
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if len(data) == 0: | ||
return ResourceRecommendation.undefined(info="No data") | ||
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# NOTE: metrics for each pod are returned as list[values] where values is [timestamp, value] | ||
# As MemoryAmountLoader returns only the last value (1 point), [0, 1] is used to get the value | ||
# So each pod is string with pod name, and values is numpy array of shape (N, 2) | ||
data_count = {pod: values[0, 1] for pod, values in history_data["MemoryAmountLoader"].items()} | ||
total_points_count = sum(data_count.values()) | ||
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if total_points_count < self.settings.points_required: | ||
return ResourceRecommendation.undefined(info="Not enough data") | ||
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if ( | ||
object_data.hpa is not None | ||
and object_data.hpa.target_memory_utilization_percentage is not None | ||
and not self.settings.allow_hpa | ||
): | ||
return ResourceRecommendation.undefined(info="HPA detected") | ||
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memory_usage = self.settings.calculate_memory_proposal(data, max_oomkill_value) | ||
return ResourceRecommendation( | ||
request=memory_usage, limit=memory_usage, info="OOMKill detected" if oomkill_detected else None | ||
) | ||
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def run(self, history_data: MetricsPodData, object_data: K8sObjectData) -> RunResult: | ||
return { | ||
ResourceType.CPU: self.__calculate_cpu_proposal(history_data, object_data), | ||
ResourceType.Memory: self.__calculate_memory_proposal(history_data, object_data), | ||
} |