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175 lines
5.1 KiB
Markdown
175 lines
5.1 KiB
Markdown
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---
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# sort: 2
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weight: 2
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title: Custom Model Guide
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# disableToc: true
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menu:
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docs:
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parent: "vmanomaly-models"
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weight: 2
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# sort: 2
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aliases:
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- /anomaly-detection/components/models/custom_model.html
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---
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# Custom Model Guide
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**Note**: vmanomaly is a part of [enterprise package](https://docs.victoriametrics.com/enterprise.html). Please [contact us](https://victoriametrics.com/contact-us/) to find out more.
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Apart from vmanomaly predefined models, users can create their own custom models for anomaly detection.
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Here in this guide, we will
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- Make a file containing our custom model definition
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- Define VictoriaMetrics Anomaly Detection config file to use our custom model
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- Run service
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**Note**: The file containing the model should be written in [Python language](https://www.python.org/) (3.11+)
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## 1. Custom model
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We'll create `custom_model.py` file with `CustomModel` class that will inherit from vmanomaly `Model` base class.
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In the `CustomModel` class there should be three required methods - `__init__`, `fit` and `infer`:
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* `__init__` method should initiate parameters for the model.
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**Note**: if your model relies on configs that have `arg` [key-value pair argument](./models.md#section-overview), do not forget to use Python's `**kwargs` in method's signature and to explicitly call
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```python
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super().__init__(**kwargs)
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```
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to initialize the base class each model derives from
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* `fit` method should contain the model training process.
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* `infer` should return Pandas.DataFrame object with model's inferences.
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For the sake of simplicity, the model in this example will return one of two values of `anomaly_score` - 0 or 1 depending on input parameter `percentage`.
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<div class="with-copy" markdown="1">
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```python
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import numpy as np
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import pandas as pd
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import scipy.stats as st
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import logging
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from model.model import Model
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logger = logging.getLogger(__name__)
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class CustomModel(Model):
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"""
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Custom model implementation.
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"""
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def __init__(self, percentage: float = 0.95, **kwargs):
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super().__init__(**kwargs)
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self.percentage = percentage
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self._mean = np.nan
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self._std = np.nan
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def fit(self, df: pd.DataFrame):
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# Model fit process:
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y = df['y']
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self._mean = np.mean(y)
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self._std = np.std(y)
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if self._std == 0.0:
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self._std = 1 / 65536
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def infer(self, df: pd.DataFrame) -> np.array:
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# Inference process:
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y = df['y']
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zscores = (y - self._mean) / self._std
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anomaly_score_cdf = st.norm.cdf(np.abs(zscores))
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df_pred = df[['timestamp', 'y']].copy()
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df_pred['anomaly_score'] = anomaly_score_cdf > self.percentage
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df_pred['anomaly_score'] = df_pred['anomaly_score'].astype('int32', errors='ignore')
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return df_pred
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```
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</div>
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## 2. Configuration file
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Next, we need to create `config.yaml` file with VM Anomaly Detection configuration and model input parameters.
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In the config file `model` section we need to put our model class `model.custom.CustomModel` and all parameters used in `__init__` method.
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You can find out more about configuration parameters in vmanomaly docs.
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<div class="with-copy" markdown="1">
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```yaml
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scheduler:
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infer_every: "1m"
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fit_every: "1m"
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fit_window: "1d"
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model:
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# note: every custom model should implement this exact path, specified in `class` field
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class: "model.model.CustomModel"
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# custom model params are defined here
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percentage: 0.9
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reader:
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datasource_url: "http://localhost:8428/"
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queries:
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ingestion_rate: 'sum(rate(vm_rows_inserted_total)) by (type)'
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churn_rate: 'sum(rate(vm_new_timeseries_created_total[5m]))'
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writer:
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datasource_url: "http://localhost:8428/"
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metric_format:
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__name__: "custom_$VAR"
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for: "$QUERY_KEY"
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model: "custom"
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run: "test-format"
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monitoring:
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# /metrics server.
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pull:
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port: 8080
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push:
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url: "http://localhost:8428/"
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extra_labels:
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job: "vmanomaly-develop"
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config: "custom.yaml"
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```
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</div>
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## 3. Running model
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Let's pull the docker image for vmanomaly:
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<div class="with-copy" markdown="1">
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```sh
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docker pull us-docker.pkg.dev/victoriametrics-test/public/vmanomaly-trial:latest
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```
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</div>
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Now we can run the docker container putting as volumes both config and model file:
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**Note**: place the model file to `/model/custom.py` path when copying
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<div class="with-copy" markdown="1">
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```sh
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docker run -it \
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--net [YOUR_NETWORK] \
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-v [YOUR_LICENSE_FILE_PATH]:/license.txt \
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-v $(PWD)/custom_model.py:/vmanomaly/src/model/custom.py \
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-v $(PWD)/custom.yaml:/config.yaml \
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us-docker.pkg.dev/victoriametrics-test/public/vmanomaly-trial:latest /config.yaml \
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--license-file=/license.txt
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```
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</div>
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Please find more detailed instructions (license, etc.) [here](/vmanomaly.html#run-vmanomaly-docker-container)
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## Output
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As the result, this model will return metric with labels, configured previously in `config.yaml`.
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In this particular example, 2 metrics will be produced. Also, there will be added other metrics from input query result.
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```
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{__name__="custom_anomaly_score", for="ingestion_rate", model="custom", run="test-format"}
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{__name__="custom_anomaly_score", for="churn_rate", model="custom", run="test-format"}
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```
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