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sap@v0.17.
...
master
| Author | SHA1 | Date | |
|---|---|---|---|
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b8dcf626b2 |
20 changed files with 113 additions and 435 deletions
86
.github/workflows/MLPipelinePullRequest.yml
vendored
86
.github/workflows/MLPipelinePullRequest.yml
vendored
|
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@ -32,92 +32,6 @@ jobs:
|
||||||
# echo "Please choose one of these tags: 'major', 'major', 'patch'"
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# echo "Please choose one of these tags: 'major', 'major', 'patch'"
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# exit(1)
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# exit(1)
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||||||
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Verify-Lambda:
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||||||
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runs-on: ubuntu-latest
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steps:
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- uses: actions/checkout@v3
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- name: Install packages to retrieve artifacts
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env:
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AWS_ACCESS_KEY_ID: ${{ secrets.ROBOT_AWS_ACCESS_KEY_ID }}
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AWS_SECRET_ACCESS_KEY: ${{ secrets.ROBOT_AWS_SECRET_ACCESS_KEY }}
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run: |
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pip install --upgrade pip
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pip install -r modules/ml-pipeline/src/pipeline/requirements/version_control/requirements.txt
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- name: Retrieve artifacts (dvc.lock)
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env:
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AWS_ACCESS_KEY_ID: ${{ secrets.ROBOT_AWS_ACCESS_KEY_ID }}
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AWS_SECRET_ACCESS_KEY: ${{ secrets.ROBOT_AWS_SECRET_ACCESS_KEY }}
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run: |
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cd modules/ml-pipeline/src/pipeline
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dvc pull -r experiments
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- name: Set timestamp
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id: set_timestamp
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run: |
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echo "timestamp=$(date +%Y%m%d)" >> $GITHUB_ENV
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echo "Generated timestamp: ${timestamp}"
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- name: Upload sample row dataset to S3
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env:
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AWS_ACCESS_KEY_ID: ${{ secrets.ROBOT_AWS_ACCESS_KEY_ID }}
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AWS_SECRET_ACCESS_KEY: ${{ secrets.ROBOT_AWS_SECRET_ACCESS_KEY }}
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run: |
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cd modules/ml-pipeline/src/pipeline/data/prepared_data/
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aws s3 cp sample_test.parquet s3://retrofit-data-dev/sap_change_model/sample_data_for_cicd/${timestamp}/sample_test.parquet
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- name: Build Lambda docker Image
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run: |
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docker build . --file ./deployment/Dockerfile.prediction.lambda --tag lambda_test
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- name: Run lambda docker container
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env:
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AWS_ACCESS_KEY_ID: ${{ secrets.ROBOT_AWS_ACCESS_KEY_ID }}
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AWS_SECRET_ACCESS_KEY: ${{ secrets.ROBOT_AWS_SECRET_ACCESS_KEY }}
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run: |
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docker run -d -p 9000:8080 \
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-e AWS_ACCESS_KEY_ID=${AWS_ACCESS_KEY_ID} \
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-e AWS_SECRET_ACCESS_KEY=${AWS_SECRET_ACCESS_KEY} \
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-e RUNTIME_ENVIRONMENT=dev \
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-e PREDICTIONS_BUCKET=retrofit-sap-predictions-dev lambda_test
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- name: Test Lambda endpoint
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run: |
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sleep 2
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curl -X POST "http://localhost:9000/2015-03-31/functions/function/invocations" \
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-H "Content-Type: application/json" \
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-d "{\"body\": \"{\\\"file_location\\\": \\\"s3://retrofit-data-dev/sap_change_model/sample_data_for_cicd/${timestamp}/sample_test.parquet\\\", \\\"property_id\\\": 1, \\\"portfolio_id\\\": 4, \\\"created_at\\\": \\\"now\\\", \\\"warm\\\": true}\"}"
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|
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- name: Get Lambda logs
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|
||||||
run: |
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docker logs $(docker ps -al -q)
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- name: Test Lambda endpoint again
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run: |
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sleep 2
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curl -X POST "http://localhost:9000/2015-03-31/functions/function/invocations" \
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-H "Content-Type: application/json" \
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-d "{\"body\": \"{\\\"file_location\\\": \\\"s3://retrofit-data-dev/sap_change_model/sample_data_for_cicd/${timestamp}/sample_test.parquet\\\", \\\"property_id\\\": 1, \\\"portfolio_id\\\": 4, \\\"created_at\\\": \\\"now\\\", \\\"testing\\\": true}\"}"
|
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||||||
|
|
||||||
- name: Get Lambda logs
|
|
||||||
run: |
|
|
||||||
docker logs $(docker ps -al -q)
|
|
||||||
|
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||||||
- name: Stop Lambda container
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|
||||||
run: |
|
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docker stop lambda_test || echo "Container already stopped"
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|
||||||
|
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- name: Remove uploaded sample row dataset from S3
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if: always()
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env:
|
|
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AWS_ACCESS_KEY_ID: ${{ secrets.ROBOT_AWS_ACCESS_KEY_ID }}
|
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AWS_SECRET_ACCESS_KEY: ${{ secrets.ROBOT_AWS_SECRET_ACCESS_KEY }}
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run: |
|
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aws s3 rm --recursive s3://retrofit-data-dev/sap_change_model/sample_data_for_cicd/${timestamp}/
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|
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||||||
|
|
||||||
Verify-Model:
|
Verify-Model:
|
||||||
|
|
||||||
runs-on: ubuntu-latest
|
runs-on: ubuntu-latest
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|
|
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|
|
@ -8,65 +8,25 @@
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"active": true
|
"active": true
|
||||||
},
|
},
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"sap": {
|
"sap": {
|
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"version": "v0.17.3",
|
"version": "v0.14.0",
|
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"stage": {
|
"stage": {
|
||||||
"dev": "v0.17.3"
|
"dev": "v0.14.0"
|
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},
|
},
|
||||||
"registered": true,
|
"registered": true,
|
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"active": true
|
"active": true
|
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},
|
},
|
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"heat": {
|
"heat": {
|
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"version": "v0.7.0",
|
"version": "v0.5.0",
|
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"stage": {
|
"stage": {
|
||||||
"dev": "v0.7.0"
|
"dev": "v0.5.0"
|
||||||
},
|
},
|
||||||
"registered": true,
|
"registered": true,
|
||||||
"active": true
|
"active": true
|
||||||
},
|
},
|
||||||
"carbon": {
|
"carbon": {
|
||||||
"version": "v0.7.0",
|
"version": "v0.5.0",
|
||||||
"stage": {
|
"stage": {
|
||||||
"dev": "v0.7.0"
|
"dev": "v0.5.0"
|
||||||
},
|
|
||||||
"registered": true,
|
|
||||||
"active": true
|
|
||||||
},
|
|
||||||
"hotwater": {
|
|
||||||
"version": "v1.0.0",
|
|
||||||
"stage": {
|
|
||||||
"dev": "v1.0.0"
|
|
||||||
},
|
|
||||||
"registered": true,
|
|
||||||
"active": true
|
|
||||||
},
|
|
||||||
"heating": {
|
|
||||||
"version": "v1.0.0",
|
|
||||||
"stage": {
|
|
||||||
"dev": "v1.0.0"
|
|
||||||
},
|
|
||||||
"registered": true,
|
|
||||||
"active": true
|
|
||||||
},
|
|
||||||
"lighting": {
|
|
||||||
"version": "v1.0.0",
|
|
||||||
"stage": {
|
|
||||||
"dev": "v1.0.0"
|
|
||||||
},
|
|
||||||
"registered": true,
|
|
||||||
"active": true
|
|
||||||
},
|
|
||||||
"hotwaterkwh": {
|
|
||||||
"version": "v1.3.0",
|
|
||||||
"stage": {
|
|
||||||
"dev": "v1.3.0"
|
|
||||||
},
|
|
||||||
"registered": true,
|
|
||||||
"active": true
|
|
||||||
},
|
|
||||||
"heatingkwh": {
|
|
||||||
"version": "v1.5.0",
|
|
||||||
"stage": {
|
|
||||||
"dev": "v1.5.0"
|
|
||||||
},
|
},
|
||||||
"registered": true,
|
"registered": true,
|
||||||
"active": true
|
"active": true
|
||||||
|
|
|
||||||
10
README.md
10
README.md
|
|
@ -83,13 +83,3 @@ curl -XPOST "http://localhost:9000/2015-03-31/functions/function/invocations" -d
|
||||||
```
|
```
|
||||||
|
|
||||||
This will send a POST request to the running Lambda function and pass in the required data as JSON.
|
This will send a POST request to the running Lambda function and pass in the required data as JSON.
|
||||||
|
|
||||||
For the testing of warm or testing of the lambda, use:
|
|
||||||
|
|
||||||
```json
|
|
||||||
curl -XPOST "http://localhost:9000/2015-03-31/functions/function/invocations" -d '{"body": "{\"file_location\": \"s3://retrofit-data-dev/sap_change_model/one_sample_test_dataset.parquet\", \"property_id\": 1, \"portfolio_id\": 4, \"created_at\": \"now\", \"testing\": \"true\"}"}'
|
|
||||||
```
|
|
||||||
or
|
|
||||||
```json
|
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||||||
curl -XPOST "http://localhost:9000/2015-03-31/functions/function/invocations" -d '{"body": "{\"file_location\": \"s3://retrofit-data-dev/sap_change_model/one_sample_test_dataset.parquet\", \"property_id\": 1, \"portfolio_id\": 4, \"created_at\": \"now\", \"warm\": \"true\"}"}'
|
|
||||||
```
|
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||||||
|
|
|
||||||
|
|
@ -1,24 +1,19 @@
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||||||
FROM public.ecr.aws/lambda/python:3.12
|
FROM public.ecr.aws/lambda/python:3.10
|
||||||
|
|
||||||
# Set the working directory
|
# Set the working directory
|
||||||
WORKDIR ${LAMBDA_TASK_ROOT}
|
WORKDIR ${LAMBDA_TASK_ROOT}
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ENV PYTHONPATH="${PYTHONPATH}:${LAMBDA_TASK_ROOT}"
|
ENV PYTHONPATH "${PYTHONPATH}:${LAMBDA_TASK_ROOT}"
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||||||
ENV MPLCONFIGDIR="/tmp/matplotlib"
|
|
||||||
|
|
||||||
# Environment variables
|
# Environment variables
|
||||||
ARG RUNTIME_ENVIRONMENT
|
ARG RUNTIME_ENVIRONMENT
|
||||||
ENV RUNTIME_ENVIRONMENT=${RUNTIME_ENVIRONMENT}
|
ENV RUNTIME_ENVIRONMENT=${RUNTIME_ENVIRONMENT}
|
||||||
|
|
||||||
# Install necessary build tools - required to test locally
|
# Install necessary build tools - required to test locally
|
||||||
RUN dnf install -y gcc python3-devel gcc-c++
|
RUN yum install -y gcc python3-devel gcc-c++
|
||||||
|
|
||||||
# Install python packages
|
# Install python packages
|
||||||
COPY modules/ml-pipeline/src/pipeline/requirements/predictions/requirements.txt ./requirements.txt
|
COPY modules/ml-pipeline/src/pipeline/requirements/predictions/requirements.txt ./requirements.txt
|
||||||
|
RUN pip install --no-cache-dir -r ./requirements.txt
|
||||||
RUN pip install uv
|
|
||||||
|
|
||||||
RUN uv pip install -r requirements.txt --system
|
|
||||||
# RUN pip install --no-cache-dir -r ./requirements.txt
|
|
||||||
|
|
||||||
# Copy the project code
|
# Copy the project code
|
||||||
COPY modules/ml-pipeline/src/pipeline ./pipeline
|
COPY modules/ml-pipeline/src/pipeline ./pipeline
|
||||||
|
|
|
||||||
|
|
@ -47,30 +47,6 @@ def upload_dataframe_to_s3(df, bucket, s3_file_name):
|
||||||
return False
|
return False
|
||||||
|
|
||||||
|
|
||||||
def warming_up_invocation(
|
|
||||||
model,
|
|
||||||
model_filepath: str,
|
|
||||||
):
|
|
||||||
"""
|
|
||||||
Function to handle warm up invocations
|
|
||||||
"""
|
|
||||||
import pandas as pd
|
|
||||||
import numpy as np
|
|
||||||
|
|
||||||
model.load_model(model_filepath)
|
|
||||||
|
|
||||||
warmup_df = pd.DataFrame(
|
|
||||||
np.zeros((1, len(model.model.original_features))),
|
|
||||||
columns=model.model.original_features,
|
|
||||||
)
|
|
||||||
|
|
||||||
# model_names = model.model.model_names()
|
|
||||||
# if "NeuralNetFastAI" in model_names:
|
|
||||||
# model.model.predict(warmup_df, model="NeuralNetFastAI")
|
|
||||||
# else:
|
|
||||||
model.predict(data=warmup_df)
|
|
||||||
|
|
||||||
|
|
||||||
def handler(event, context):
|
def handler(event, context):
|
||||||
"""
|
"""
|
||||||
Take in event and trigger the prediction pipeline
|
Take in event and trigger the prediction pipeline
|
||||||
|
|
@ -90,6 +66,9 @@ def handler(event, context):
|
||||||
created_at = body["created_at"]
|
created_at = body["created_at"]
|
||||||
|
|
||||||
# TODO: Implement the loading of the model and prediction
|
# TODO: Implement the loading of the model and prediction
|
||||||
|
|
||||||
|
storage_filepath = f"s3://{PREDICTIONS_BUCKET}/{portfolio_id}/{property_id}/{created_at}.parquet"
|
||||||
|
|
||||||
logger.info(f"--- Initiate MLModel ---")
|
logger.info(f"--- Initiate MLModel ---")
|
||||||
|
|
||||||
build_model_params = settings.build_model
|
build_model_params = settings.build_model
|
||||||
|
|
@ -99,32 +78,6 @@ def handler(event, context):
|
||||||
|
|
||||||
model = model_factory(build_model_params["model_type"])
|
model = model_factory(build_model_params["model_type"])
|
||||||
|
|
||||||
model_filepath = build_model_params["model_save_filepath"]
|
|
||||||
|
|
||||||
if "warm" in body:
|
|
||||||
logger.info("Warm up invocation - synthetic prediction")
|
|
||||||
|
|
||||||
warming_up_invocation(model=model, model_filepath=model_filepath)
|
|
||||||
|
|
||||||
return {
|
|
||||||
"statusCode": 200,
|
|
||||||
"body": json.dumps(
|
|
||||||
{
|
|
||||||
"message": "Successfully warmed up invocation",
|
|
||||||
}
|
|
||||||
),
|
|
||||||
}
|
|
||||||
|
|
||||||
if "testing" in body:
|
|
||||||
logger.info(
|
|
||||||
"Testing invocation for CI/CD - save file to same location in S3"
|
|
||||||
)
|
|
||||||
storage_filepath = body["file_location"].replace(
|
|
||||||
".parquet", "_output.parquet"
|
|
||||||
)
|
|
||||||
else:
|
|
||||||
storage_filepath = f"s3://{PREDICTIONS_BUCKET}/{portfolio_id}/{property_id}/{created_at}.parquet"
|
|
||||||
|
|
||||||
logger.info(f"--- Initiate Input DataClient ---")
|
logger.info(f"--- Initiate Input DataClient ---")
|
||||||
input_dataclient = dataclient_factory(
|
input_dataclient = dataclient_factory(
|
||||||
dataclient_type="aws-s3",
|
dataclient_type="aws-s3",
|
||||||
|
|
@ -142,7 +95,7 @@ def handler(event, context):
|
||||||
output_dataclient=output_dataclient,
|
output_dataclient=output_dataclient,
|
||||||
model=model,
|
model=model,
|
||||||
target=feature_process_params["feature_processor_config"]["target"],
|
target=feature_process_params["feature_processor_config"]["target"],
|
||||||
model_filepath=model_filepath,
|
model_filepath=build_model_params["model_save_filepath"],
|
||||||
test_data_filepath=body["file_location"],
|
test_data_filepath=body["file_location"],
|
||||||
predictions_output_filepath=storage_filepath,
|
predictions_output_filepath=storage_filepath,
|
||||||
predictions_column_name=generate_predictions_params[
|
predictions_column_name=generate_predictions_params[
|
||||||
|
|
|
||||||
|
|
@ -51,4 +51,3 @@ functions:
|
||||||
path: /predict
|
path: /predict
|
||||||
method: POST
|
method: POST
|
||||||
timeout: 120 # Set max run time to 2 minutes - we shouldn't need this much time so this can be reviewed
|
timeout: 120 # Set max run time to 2 minutes - we shouldn't need this much time so this can be reviewed
|
||||||
memorySize: 4096
|
|
||||||
|
|
|
||||||
|
|
@ -1,8 +1,7 @@
|
||||||
export PYENV_ROOT=$(HOME)/.pyenv
|
export PYENV_ROOT=$(HOME)/.pyenv
|
||||||
export PATH := $(PYENV_ROOT)/bin:$(PATH)
|
export PATH := $(PYENV_ROOT)/bin:$(PATH)
|
||||||
PYTHON_VERSION ?= 3.12.12
|
PYTHON_VERSION ?= 3.10.12
|
||||||
CONDA_ENV=dev_env_pipeline
|
CONDA_ENV=dev_env_pipeline
|
||||||
CONDA_ACTIVATE=source $$(conda info --base)/etc/profile.d/conda.sh ; conda deactivate ; conda activate
|
|
||||||
|
|
||||||
.PHONY: init
|
.PHONY: init
|
||||||
init: dev-conda
|
init: dev-conda
|
||||||
|
|
@ -13,15 +12,11 @@ dev-conda:
|
||||||
# conda remove --name ${CONDA_ENV} --all -y || echo "No environment created previously"
|
# conda remove --name ${CONDA_ENV} --all -y || echo "No environment created previously"
|
||||||
conda create --name ${CONDA_ENV} python=$(PYTHON_VERSION) -y
|
conda create --name ${CONDA_ENV} python=$(PYTHON_VERSION) -y
|
||||||
conda init bash
|
conda init bash
|
||||||
${CONDA_ACTIVATE} ${CONDA_ENV} && \
|
conda run -v -n ${CONDA_ENV} pip install --upgrade pip
|
||||||
which pip && \
|
conda run -v -n ${CONDA_ENV} pip install -r src/pipeline/requirements/training/requirements-dev.txt
|
||||||
pip install --upgrade pip && \
|
conda run -v -n ${CONDA_ENV} pip install -r src/pipeline/requirements/version_control/requirements.txt
|
||||||
pip install uv && \
|
conda run -v -n ${CONDA_ENV} pre-commit install
|
||||||
uv pip install -r src/pipeline/requirements/training/requirements-dev.txt && \
|
conda run -v -n ${CONDA_ENV} pip install ipykernel
|
||||||
uv pip install -r src/pipeline/requirements/version_control/requirements.txt && \
|
|
||||||
pre-commit install && \
|
|
||||||
uv pip install ipykernel && \
|
|
||||||
conda install llvm-openmp -y
|
|
||||||
echo "TO ACTIVATE ENVIRONMENT, USE THE FOLLOWING COMMAND"
|
echo "TO ACTIVATE ENVIRONMENT, USE THE FOLLOWING COMMAND"
|
||||||
echo "conda activate ${CONDA_ENV}"
|
echo "conda activate ${CONDA_ENV}"
|
||||||
|
|
||||||
|
|
|
||||||
|
|
@ -1,17 +1,12 @@
|
||||||
# Dockerfile that can be used to test loading a model to generate a prediction (part of CI/CD flow)
|
# Dockerfile that can be used to test loading a model to generate a prediction (part of CI/CD flow)
|
||||||
FROM python:3.12.12-slim
|
FROM python:3.10.12-slim
|
||||||
|
|
||||||
RUN apt-get update && apt-get install -y libgomp1 gcc python3-dev
|
RUN apt-get update && apt-get install -y libgomp1 gcc python3-dev
|
||||||
|
|
||||||
COPY pipeline/requirements/predictions/requirements.txt requirements.txt
|
COPY pipeline/requirements/predictions/requirements.txt requirements.txt
|
||||||
|
|
||||||
RUN pip install --upgrade pip
|
RUN pip install --upgrade pip
|
||||||
|
RUN pip install -r requirements.txt
|
||||||
RUN pip install uv
|
|
||||||
|
|
||||||
RUN uv pip install -r requirements.txt --system
|
|
||||||
|
|
||||||
# RUN pip install -r requirements.txt
|
|
||||||
|
|
||||||
# Assuming in the CI/CD step, there will be a dvc pull step to get data and model, so will just need to run a single script
|
# Assuming in the CI/CD step, there will be a dvc pull step to get data and model, so will just need to run a single script
|
||||||
COPY pipeline/ /home/pipeline/
|
COPY pipeline/ /home/pipeline/
|
||||||
|
|
|
||||||
|
|
@ -29,7 +29,6 @@ data_filepath = prepare_data_params["data_filepath"]
|
||||||
train_proportion = prepare_data_params["train_proportion"]
|
train_proportion = prepare_data_params["train_proportion"]
|
||||||
output_train_filepath = prepare_data_params["output_train_filepath"]
|
output_train_filepath = prepare_data_params["output_train_filepath"]
|
||||||
output_test_filepath = prepare_data_params["output_test_filepath"]
|
output_test_filepath = prepare_data_params["output_test_filepath"]
|
||||||
sample_test_filepath = prepare_data_params["sample_test_filepath"]
|
|
||||||
feature_processor_config = feature_process_params["feature_processor_config"]
|
feature_processor_config = feature_process_params["feature_processor_config"]
|
||||||
|
|
||||||
logger.info(f"--- Initiate DataClient ---")
|
logger.info(f"--- Initiate DataClient ---")
|
||||||
|
|
@ -100,10 +99,6 @@ def prepare_data(
|
||||||
|
|
||||||
logger.info("--- Outputting data ---")
|
logger.info("--- Outputting data ---")
|
||||||
|
|
||||||
output_dataclient.save_data(
|
|
||||||
obj=data.sample(1), location=sample_test_filepath, save_config=None
|
|
||||||
)
|
|
||||||
|
|
||||||
output_dataclient.save_data(
|
output_dataclient.save_data(
|
||||||
obj=train, location=output_train_filepath, save_config=None
|
obj=train, location=output_train_filepath, save_config=None
|
||||||
)
|
)
|
||||||
|
|
|
||||||
|
|
@ -99,12 +99,6 @@ def generate_scenario_predictions(
|
||||||
]
|
]
|
||||||
)
|
)
|
||||||
|
|
||||||
# TEMPORARY FIX: ADD is_post_sap10_starting and is_post_sap10_ending if not present
|
|
||||||
if "is_post_sap10_starting" not in scenario_data.columns:
|
|
||||||
scenario_data["is_post_sap10_starting"] = False
|
|
||||||
if "is_post_sap10_ending" not in scenario_data.columns:
|
|
||||||
scenario_data["is_post_sap10_ending"] = False
|
|
||||||
|
|
||||||
logger.info("--- Loading Model ---")
|
logger.info("--- Loading Model ---")
|
||||||
|
|
||||||
model.load_model(model_filepath)
|
model.load_model(model_filepath)
|
||||||
|
|
|
||||||
|
|
@ -14,23 +14,9 @@ default:
|
||||||
output_filepath: ./data/model/allmodels/
|
output_filepath: ./data/model/allmodels/
|
||||||
problem_type: regression
|
problem_type: regression
|
||||||
eval_metric: mean_squared_error #mean_absolute_error
|
eval_metric: mean_squared_error #mean_absolute_error
|
||||||
time_limit: 3600
|
time_limit: 1800
|
||||||
presets: medium_quality
|
presets: medium_quality
|
||||||
excluded_model_types: ['RF', 'CAT', 'NN_TORCH', 'KNN', 'XT', 'FASTAI']
|
excluded_model_types: ['RF', 'CAT', 'NN_TORCH', 'KNN', 'XT']
|
||||||
infer_limit: 1
|
infer_limit: 0.05
|
||||||
infer_limit_batch_size: 10000
|
infer_limit_batch_size: 10000
|
||||||
fit_strategy: "parallel"
|
|
||||||
ag_args_ensemble: {'num_folds_parallel': 2}
|
ag_args_ensemble: {'num_folds_parallel': 2}
|
||||||
num_gpus: 0
|
|
||||||
hyperparameters:
|
|
||||||
{
|
|
||||||
'NN_TORCH': [{}],
|
|
||||||
'GBM': [{'extra_trees': True, 'ag_args': {'name_suffix': 'XT'}}, {}, {'learning_rate': 0.03, 'num_leaves': 128, 'feature_fraction': 0.9, 'min_data_in_leaf': 3, 'ag_args': {'name_suffix': 'Large', 'priority': 0,}}],
|
|
||||||
# 'GBM': [{}],
|
|
||||||
'CAT': [{}],
|
|
||||||
'XGB': [{}],
|
|
||||||
'FASTAI': [{}],
|
|
||||||
'RF': [{'criterion': 'gini', 'ag_args': {'name_suffix': 'Gini', 'problem_types': ['binary', 'multiclass']}}, {'criterion': 'entropy', 'ag_args': {'name_suffix': 'Entr', 'problem_types': ['binary', 'multiclass']}}, {'criterion': 'squared_error', 'ag_args': {'name_suffix': 'MSE', 'problem_types': ['regression', 'quantile']}}],
|
|
||||||
'XT': [{'criterion': 'gini', 'ag_args': {'name_suffix': 'Gini', 'problem_types': ['binary', 'multiclass']}}, {'criterion': 'entropy', 'ag_args': {'name_suffix': 'Entr', 'problem_types': ['binary', 'multiclass']}}, {'criterion': 'squared_error', 'ag_args': {'name_suffix': 'MSE', 'problem_types': ['regression', 'quantile']}}],
|
|
||||||
'KNN': [{'weights': 'uniform', 'ag_args': {'name_suffix': 'Unif'}}, {'weights': 'distance', 'ag_args': {'name_suffix': 'Dist'}}],
|
|
||||||
}
|
|
||||||
|
|
|
||||||
|
|
@ -3,10 +3,11 @@ default:
|
||||||
input_dataclient_type: aws-s3
|
input_dataclient_type: aws-s3
|
||||||
output_dataclient_type: local
|
output_dataclient_type: local
|
||||||
scenario_data_filepaths:
|
scenario_data_filepaths:
|
||||||
# - s3://retrofit-data-dev/scenario_data/28-05-2024-19-22-41/recommendations_scoring_data.parquet
|
# - s3://retrofit-data-dev/scenario_data/22-03-2024-19-20-09/recommendations_scoring_data.parquet
|
||||||
# - s3://retrofit-data-dev/scenario_data/07-10-2024-16-26-06/recommendations_scoring_data.parquet
|
# - s3://retrofit-data-dev/scenario_data/24-03-2024-20-23-25/recommendations_scoring_data.parquet
|
||||||
# - s3://retrofit-data-dev/scenario_data/08-10-2024-15-07-33/recommendations_scoring_data.parquet
|
# - s3://retrofit-data-dev/scenario_data/27-03-2024-11-38-15/recommendations_scoring_data.parquet
|
||||||
# - s3://retrofit-data-dev/scenario_data/08-10-2024-22-18-44/recommendations_scoring_data.parquet
|
# - s3://retrofit-data-dev/scenario_data/26-05-2024-08-47-45/recommendations_scoring_data.parquet
|
||||||
- s3://retrofit-data-dev/scenario_data/09-10-2024-18-21-08/recommendations_scoring_data.parquet
|
# - s3://retrofit-data-dev/scenario_data/26-05-2024-10-44-53/recommendations_scoring_data.parquet
|
||||||
|
- s3://retrofit-data-dev/scenario_data/28-05-2024-19-22-41/recommendations_scoring_data.parquet
|
||||||
comparison_output_filepath: ./metrics/scenario_table.md
|
comparison_output_filepath: ./metrics/scenario_table.md
|
||||||
metrics_output_filepath: ./metrics/scenario_metrics.md
|
metrics_output_filepath: ./metrics/scenario_metrics.md
|
||||||
|
|
|
||||||
|
|
@ -18,15 +18,13 @@ default:
|
||||||
prepare_data:
|
prepare_data:
|
||||||
input_dataclient_type: aws-s3
|
input_dataclient_type: aws-s3
|
||||||
output_dataclient_type: local
|
output_dataclient_type: local
|
||||||
# data_filepath: s3://retrofit-data-dev/sap_change_model/2024-05-28-19-08-25/dataset_rooms.parquet
|
# data_filepath: s3://retrofit-data-dev/sap_change_model/2024-03-22-18-56-53/dataset_rooms.parquet
|
||||||
# data_filepath: s3://retrofit-data-dev/sap_change_model/2024-10-03-22-57-23/dataset_rooms.parquet
|
# data_filepath: s3://retrofit-data-dev/sap_change_model/2024-05-25-08-36-36/dataset_rooms.parquet
|
||||||
# data_filepath: s3://retrofit-data-dev/sap_change_model/2024-10-08-21-58-03/dataset_rooms.parquet
|
# data_filepath: s3://retrofit-data-dev/sap_change_model/2024-05-26-10-31-39/dataset_rooms.parquet
|
||||||
# data_filepath: s3://retrofit-data-dev/sap_change_model/2025-09-05-14-05-32/dataset_rooms.parquet
|
data_filepath: s3://retrofit-data-dev/sap_change_model/2024-05-28-19-08-25/dataset_rooms.parquet
|
||||||
data_filepath: s3://retrofit-data-dev/sap_change_model/2025-11-02-09-32-42/dataset_rooms.parquet
|
|
||||||
train_proportion: 0.9
|
train_proportion: 0.9
|
||||||
output_train_filepath: ./data/prepared_data/train.parquet
|
output_train_filepath: ./data/prepared_data/train.parquet
|
||||||
output_test_filepath: ./data/prepared_data/test.parquet
|
output_test_filepath: ./data/prepared_data/test.parquet
|
||||||
sample_test_filepath: ./data/prepared_data/sample_test.parquet
|
|
||||||
|
|
||||||
feature_processor:
|
feature_processor:
|
||||||
feature_processor_type: dataframe
|
feature_processor_type: dataframe
|
||||||
|
|
@ -39,9 +37,7 @@ default:
|
||||||
drop_columns: [
|
drop_columns: [
|
||||||
"heat_demand_change", "carbon_change", "rdsap_change", "heat_demand_ending", "carbon_ending", "days_to_starting", "days_to_ending",
|
"heat_demand_change", "carbon_change", "rdsap_change", "heat_demand_ending", "carbon_ending", "days_to_starting", "days_to_ending",
|
||||||
'number_habitable_rooms_starting', 'number_habitable_rooms_ending', 'number_heated_rooms_starting', 'number_heated_rooms_ending',
|
'number_habitable_rooms_starting', 'number_habitable_rooms_ending', 'number_heated_rooms_starting', 'number_heated_rooms_ending',
|
||||||
'number_habitable_rooms', 'number_heated_rooms', 'lighting_cost_starting',
|
'number_habitable_rooms', 'number_heated_rooms']
|
||||||
'lighting_cost_ending', 'heating_cost_starting', 'heating_cost_ending', 'hot_water_cost_starting', 'hot_water_cost_ending',
|
|
||||||
'floor_thermal_transmittance', 'floor_thermal_transmittance_ending', 'lodgement_date_starting', 'lodgement_date_ending',]
|
|
||||||
retain_features: null
|
retain_features: null
|
||||||
# retain_features: ['uprn', 'sap_starting', 'hot_water_energy_eff_ending',
|
# retain_features: ['uprn', 'sap_starting', 'hot_water_energy_eff_ending',
|
||||||
# 'mainheat_energy_eff_ending', 'constituency', 'roof_energy_eff_ending',
|
# 'mainheat_energy_eff_ending', 'constituency', 'roof_energy_eff_ending',
|
||||||
|
|
|
||||||
|
|
@ -1,4 +1,4 @@
|
||||||
""" "
|
""""
|
||||||
Implementations of MLModels, all of which will have four methods to:
|
Implementations of MLModels, all of which will have four methods to:
|
||||||
- Load model
|
- Load model
|
||||||
- Save Model
|
- Save Model
|
||||||
|
|
@ -11,6 +11,9 @@ import joblib
|
||||||
import pandas as pd
|
import pandas as pd
|
||||||
from pathlib import Path
|
from pathlib import Path
|
||||||
from typing import Union, List
|
from typing import Union, List
|
||||||
|
from sklearn import linear_model
|
||||||
|
from sklearn.svm import SVR
|
||||||
|
from autogluon.tabular import TabularDataset, TabularPredictor
|
||||||
from core.interface.InterfaceModels import MLModel
|
from core.interface.InterfaceModels import MLModel
|
||||||
from core.Logger import logger
|
from core.Logger import logger
|
||||||
|
|
||||||
|
|
@ -66,8 +69,6 @@ class SKLearnLinearRegression:
|
||||||
"""
|
"""
|
||||||
Method to train a model
|
Method to train a model
|
||||||
"""
|
"""
|
||||||
from sklearn import linear_model
|
|
||||||
|
|
||||||
self.model = linear_model.LinearRegression()
|
self.model = linear_model.LinearRegression()
|
||||||
|
|
||||||
x_train = data.iloc[:, data.columns != target]
|
x_train = data.iloc[:, data.columns != target]
|
||||||
|
|
@ -116,7 +117,6 @@ class SKLearnSVMRegression:
|
||||||
"""
|
"""
|
||||||
Method to train a model
|
Method to train a model
|
||||||
"""
|
"""
|
||||||
from sklearn.svm import SVR
|
|
||||||
|
|
||||||
validate_dict_keys(
|
validate_dict_keys(
|
||||||
list(model_hyperparameters.keys()),
|
list(model_hyperparameters.keys()),
|
||||||
|
|
@ -152,17 +152,12 @@ class AutogluonAutoML:
|
||||||
"infer_limit",
|
"infer_limit",
|
||||||
"infer_limit_batch_size",
|
"infer_limit_batch_size",
|
||||||
"ag_args_ensemble",
|
"ag_args_ensemble",
|
||||||
"fit_strategy",
|
|
||||||
"num_gpus",
|
|
||||||
"hyperparameters",
|
|
||||||
]
|
]
|
||||||
|
|
||||||
def load_model(self, path: Union[Path, str]) -> None:
|
def load_model(self, path: Union[Path, str]) -> None:
|
||||||
"""
|
"""
|
||||||
Method to load a model
|
Method to load a model
|
||||||
"""
|
"""
|
||||||
from autogluon.tabular import TabularPredictor
|
|
||||||
|
|
||||||
filepath = str(path)
|
filepath = str(path)
|
||||||
self.model = TabularPredictor.load(path=filepath)
|
self.model = TabularPredictor.load(path=filepath)
|
||||||
|
|
||||||
|
|
@ -188,10 +183,6 @@ class AutogluonAutoML:
|
||||||
"""
|
"""
|
||||||
Method to train a model
|
Method to train a model
|
||||||
"""
|
"""
|
||||||
from autogluon.tabular import TabularDataset, TabularPredictor
|
|
||||||
|
|
||||||
# Force Parallel Model fitting
|
|
||||||
os.environ["AG_FORCE_PARALLEL"] = "True"
|
|
||||||
|
|
||||||
validate_dict_keys(
|
validate_dict_keys(
|
||||||
keys_1=list(model_hyperparameters.keys()),
|
keys_1=list(model_hyperparameters.keys()),
|
||||||
|
|
@ -218,9 +209,6 @@ class AutogluonAutoML:
|
||||||
infer_limit=model_hyperparameters["infer_limit"],
|
infer_limit=model_hyperparameters["infer_limit"],
|
||||||
infer_limit_batch_size=model_hyperparameters["infer_limit_batch_size"],
|
infer_limit_batch_size=model_hyperparameters["infer_limit_batch_size"],
|
||||||
ag_args_ensemble=model_hyperparameters["ag_args_ensemble"],
|
ag_args_ensemble=model_hyperparameters["ag_args_ensemble"],
|
||||||
fit_strategy=model_hyperparameters["fit_strategy"],
|
|
||||||
num_gpus=model_hyperparameters["num_gpus"],
|
|
||||||
hyperparameters=model_hyperparameters["hyperparameters"].to_dict(),
|
|
||||||
)
|
)
|
||||||
|
|
||||||
def predict(
|
def predict(
|
||||||
|
|
|
||||||
|
|
@ -16,8 +16,8 @@ stages:
|
||||||
deps:
|
deps:
|
||||||
- path: 1_prepare_data.py
|
- path: 1_prepare_data.py
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: a5ce162e1c402c0f811a80ef78cf4dd5
|
md5: 11a3b8bfdfe199ab7ecc39ccc5652649
|
||||||
size: 4481
|
size: 4298
|
||||||
params:
|
params:
|
||||||
configs/settings.yaml:
|
configs/settings.yaml:
|
||||||
default.feature_processor.feature_processor_config.drop_columns:
|
default.feature_processor.feature_processor_config.drop_columns:
|
||||||
|
|
@ -34,36 +34,24 @@ stages:
|
||||||
- number_heated_rooms_ending
|
- number_heated_rooms_ending
|
||||||
- number_habitable_rooms
|
- number_habitable_rooms
|
||||||
- number_heated_rooms
|
- number_heated_rooms
|
||||||
- lighting_cost_starting
|
|
||||||
- lighting_cost_ending
|
|
||||||
- heating_cost_starting
|
|
||||||
- heating_cost_ending
|
|
||||||
- hot_water_cost_starting
|
|
||||||
- hot_water_cost_ending
|
|
||||||
- floor_thermal_transmittance
|
|
||||||
- floor_thermal_transmittance_ending
|
|
||||||
- lodgement_date_starting
|
|
||||||
- lodgement_date_ending
|
|
||||||
default.feature_processor.feature_processor_config.retain_features:
|
default.feature_processor.feature_processor_config.retain_features:
|
||||||
default.feature_processor.feature_processor_config.subsample_amount:
|
default.feature_processor.feature_processor_config.subsample_amount:
|
||||||
default.feature_processor.feature_processor_config.subsample_seed: 0
|
default.feature_processor.feature_processor_config.subsample_seed: 0
|
||||||
default.feature_processor.feature_processor_config.target: sap_ending
|
default.feature_processor.feature_processor_config.target: sap_ending
|
||||||
default.feature_processor.feature_processor_type: dataframe
|
default.feature_processor.feature_processor_type: dataframe
|
||||||
default.prepare_data.data_filepath:
|
default.prepare_data.data_filepath:
|
||||||
s3://retrofit-data-dev/sap_change_model/2025-11-02-09-32-42/dataset_rooms.parquet
|
s3://retrofit-data-dev/sap_change_model/2024-05-28-19-08-25/dataset_rooms.parquet
|
||||||
default.prepare_data.input_dataclient_type: aws-s3
|
default.prepare_data.input_dataclient_type: aws-s3
|
||||||
default.prepare_data.output_dataclient_type: local
|
default.prepare_data.output_dataclient_type: local
|
||||||
default.prepare_data.output_test_filepath:
|
default.prepare_data.output_test_filepath: ./data/prepared_data/test.parquet
|
||||||
./data/prepared_data/test.parquet
|
default.prepare_data.output_train_filepath: ./data/prepared_data/train.parquet
|
||||||
default.prepare_data.output_train_filepath:
|
|
||||||
./data/prepared_data/train.parquet
|
|
||||||
default.prepare_data.train_proportion: 0.9
|
default.prepare_data.train_proportion: 0.9
|
||||||
outs:
|
outs:
|
||||||
- path: data/prepared_data/
|
- path: data/prepared_data/
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: d798b73fafe6d59c96c0216baeaf085a.dir
|
md5: 80c9e138146a1d96b9d16091c207e2e8.dir
|
||||||
size: 46090520
|
size: 45056059
|
||||||
nfiles: 3
|
nfiles: 2
|
||||||
build_model:
|
build_model:
|
||||||
cmd: python 2_build_model.py
|
cmd: python 2_build_model.py
|
||||||
deps:
|
deps:
|
||||||
|
|
@ -73,9 +61,9 @@ stages:
|
||||||
size: 4820
|
size: 4820
|
||||||
- path: data/prepared_data
|
- path: data/prepared_data
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: d798b73fafe6d59c96c0216baeaf085a.dir
|
md5: 80c9e138146a1d96b9d16091c207e2e8.dir
|
||||||
size: 46090520
|
size: 45056059
|
||||||
nfiles: 3
|
nfiles: 2
|
||||||
params:
|
params:
|
||||||
configs/build_model.yaml:
|
configs/build_model.yaml:
|
||||||
default:
|
default:
|
||||||
|
|
@ -91,7 +79,7 @@ stages:
|
||||||
output_filepath: ./data/model/allmodels/
|
output_filepath: ./data/model/allmodels/
|
||||||
problem_type: regression
|
problem_type: regression
|
||||||
eval_metric: mean_squared_error
|
eval_metric: mean_squared_error
|
||||||
time_limit: 3600
|
time_limit: 1800
|
||||||
presets: medium_quality
|
presets: medium_quality
|
||||||
excluded_model_types:
|
excluded_model_types:
|
||||||
- RF
|
- RF
|
||||||
|
|
@ -99,94 +87,25 @@ stages:
|
||||||
- NN_TORCH
|
- NN_TORCH
|
||||||
- KNN
|
- KNN
|
||||||
- XT
|
- XT
|
||||||
- FASTAI
|
infer_limit: 0.05
|
||||||
infer_limit: 1
|
|
||||||
infer_limit_batch_size: 10000
|
infer_limit_batch_size: 10000
|
||||||
fit_strategy: parallel
|
|
||||||
ag_args_ensemble:
|
ag_args_ensemble:
|
||||||
num_folds_parallel: 2
|
num_folds_parallel: 2
|
||||||
num_gpus: 0
|
|
||||||
hyperparameters:
|
|
||||||
NN_TORCH:
|
|
||||||
- {}
|
|
||||||
GBM:
|
|
||||||
- extra_trees: true
|
|
||||||
ag_args:
|
|
||||||
name_suffix: XT
|
|
||||||
- {}
|
|
||||||
- learning_rate: 0.03
|
|
||||||
num_leaves: 128
|
|
||||||
feature_fraction: 0.9
|
|
||||||
min_data_in_leaf: 3
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Large
|
|
||||||
priority: 0
|
|
||||||
CAT:
|
|
||||||
- {}
|
|
||||||
XGB:
|
|
||||||
- {}
|
|
||||||
FASTAI:
|
|
||||||
- {}
|
|
||||||
RF:
|
|
||||||
- criterion: gini
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Gini
|
|
||||||
problem_types:
|
|
||||||
- binary
|
|
||||||
- multiclass
|
|
||||||
- criterion: entropy
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Entr
|
|
||||||
problem_types:
|
|
||||||
- binary
|
|
||||||
- multiclass
|
|
||||||
- criterion: squared_error
|
|
||||||
ag_args:
|
|
||||||
name_suffix: MSE
|
|
||||||
problem_types:
|
|
||||||
- regression
|
|
||||||
- quantile
|
|
||||||
XT:
|
|
||||||
- criterion: gini
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Gini
|
|
||||||
problem_types:
|
|
||||||
- binary
|
|
||||||
- multiclass
|
|
||||||
- criterion: entropy
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Entr
|
|
||||||
problem_types:
|
|
||||||
- binary
|
|
||||||
- multiclass
|
|
||||||
- criterion: squared_error
|
|
||||||
ag_args:
|
|
||||||
name_suffix: MSE
|
|
||||||
problem_types:
|
|
||||||
- regression
|
|
||||||
- quantile
|
|
||||||
KNN:
|
|
||||||
- weights: uniform
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Unif
|
|
||||||
- weights: distance
|
|
||||||
ag_args:
|
|
||||||
name_suffix: Dist
|
|
||||||
outs:
|
outs:
|
||||||
- path: data/fit_predictions/
|
- path: data/fit_predictions/
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: 2d3627b9752e0eb6988d655cc76cb871.dir
|
md5: d9c9afc05e8780db47c0548b19bf7d19.dir
|
||||||
size: 3474407
|
size: 3349989
|
||||||
nfiles: 1
|
nfiles: 1
|
||||||
- path: data/model/
|
- path: data/model/
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: e4279fd1aff989b128e7477ad7e02d81.dir
|
md5: 13c3100e1486c27a83a8a47491077842.dir
|
||||||
size: 790249675
|
size: 773523079
|
||||||
nfiles: 31
|
nfiles: 36
|
||||||
- path: metrics/fit_metrics.json
|
- path: metrics/fit_metrics.json
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: e45c166e089965e9c17d9b4a6656d6d6
|
md5: 2ff70a2a45813e1bcdf2ea3aa8e07d4a
|
||||||
size: 225
|
size: 224
|
||||||
generate_predictions:
|
generate_predictions:
|
||||||
cmd: python 3_generate_predictions.py
|
cmd: python 3_generate_predictions.py
|
||||||
deps:
|
deps:
|
||||||
|
|
@ -196,28 +115,26 @@ stages:
|
||||||
size: 2464
|
size: 2464
|
||||||
- path: data/model
|
- path: data/model
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: e4279fd1aff989b128e7477ad7e02d81.dir
|
md5: 13c3100e1486c27a83a8a47491077842.dir
|
||||||
size: 790249675
|
size: 773523079
|
||||||
nfiles: 31
|
nfiles: 36
|
||||||
- path: data/prepared_data
|
- path: data/prepared_data
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: d798b73fafe6d59c96c0216baeaf085a.dir
|
md5: 80c9e138146a1d96b9d16091c207e2e8.dir
|
||||||
size: 46090520
|
size: 45056059
|
||||||
nfiles: 3
|
nfiles: 2
|
||||||
params:
|
params:
|
||||||
configs/settings.yaml:
|
configs/settings.yaml:
|
||||||
default.generate_predictions.input_dataclient_type: local
|
default.generate_predictions.input_dataclient_type: local
|
||||||
default.generate_predictions.output_dataclient_type: local
|
default.generate_predictions.output_dataclient_type: local
|
||||||
default.generate_predictions.predictions_column_name: predictions
|
default.generate_predictions.predictions_column_name: predictions
|
||||||
default.generate_predictions.predictions_output_filepath:
|
default.generate_predictions.predictions_output_filepath: ./data/predictions/predictions.parquet
|
||||||
./data/predictions/predictions.parquet
|
default.generate_predictions.test_data_filepath: ./data/prepared_data/test.parquet
|
||||||
default.generate_predictions.test_data_filepath:
|
|
||||||
./data/prepared_data/test.parquet
|
|
||||||
outs:
|
outs:
|
||||||
- path: data/predictions/
|
- path: data/predictions/
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: fdebcc5ba775c2b416e33e8775dd450a.dir
|
md5: 5d07bcebf3160a72bb18dfd79106e85c.dir
|
||||||
size: 484710
|
size: 463197
|
||||||
nfiles: 1
|
nfiles: 1
|
||||||
generate_metrics:
|
generate_metrics:
|
||||||
cmd: python 4_generate_metrics.py
|
cmd: python 4_generate_metrics.py
|
||||||
|
|
@ -228,14 +145,14 @@ stages:
|
||||||
size: 3484
|
size: 3484
|
||||||
- path: data/predictions
|
- path: data/predictions
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: fdebcc5ba775c2b416e33e8775dd450a.dir
|
md5: 5d07bcebf3160a72bb18dfd79106e85c.dir
|
||||||
size: 484710
|
size: 463197
|
||||||
nfiles: 1
|
nfiles: 1
|
||||||
- path: data/prepared_data
|
- path: data/prepared_data
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: d798b73fafe6d59c96c0216baeaf085a.dir
|
md5: 80c9e138146a1d96b9d16091c207e2e8.dir
|
||||||
size: 46090520
|
size: 45056059
|
||||||
nfiles: 3
|
nfiles: 2
|
||||||
params:
|
params:
|
||||||
configs/settings.yaml:
|
configs/settings.yaml:
|
||||||
default.generate_metrics.dataclient_type: local
|
default.generate_metrics.dataclient_type: local
|
||||||
|
|
@ -244,30 +161,30 @@ stages:
|
||||||
outs:
|
outs:
|
||||||
- path: metrics/metrics.json
|
- path: metrics/metrics.json
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: a5f8e795d87356eaff446ae7006a47fe
|
md5: 3e08df02fd5c5d094bcf936e1338d596
|
||||||
size: 224
|
size: 223
|
||||||
generate_scenerio_metrics:
|
generate_scenerio_metrics:
|
||||||
cmd: python 5_generate_scenarios.py
|
cmd: python 5_generate_scenarios.py
|
||||||
deps:
|
deps:
|
||||||
- path: 5_generate_scenarios.py
|
- path: 5_generate_scenarios.py
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: 872b0c762ce1c8933fcbc5f54d5d4b5d
|
md5: 40506749fefd926d47c60ff5b16db307
|
||||||
size: 5658
|
size: 5337
|
||||||
params:
|
params:
|
||||||
configs/scenarios.yaml:
|
configs/scenarios.yaml:
|
||||||
default.scenarios:
|
default.scenarios:
|
||||||
input_dataclient_type: aws-s3
|
input_dataclient_type: aws-s3
|
||||||
output_dataclient_type: local
|
output_dataclient_type: local
|
||||||
scenario_data_filepaths:
|
scenario_data_filepaths:
|
||||||
- s3://retrofit-data-dev/scenario_data/09-10-2024-18-21-08/recommendations_scoring_data.parquet
|
- s3://retrofit-data-dev/scenario_data/28-05-2024-19-22-41/recommendations_scoring_data.parquet
|
||||||
comparison_output_filepath: ./metrics/scenario_table.md
|
comparison_output_filepath: ./metrics/scenario_table.md
|
||||||
metrics_output_filepath: ./metrics/scenario_metrics.md
|
metrics_output_filepath: ./metrics/scenario_metrics.md
|
||||||
outs:
|
outs:
|
||||||
- path: metrics/scenario_metrics.md
|
- path: metrics/scenario_metrics.md
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: 86c9a8f2520cac8ed0796d62c03de278
|
md5: fa4d6d7bbd7818613800da5f8f37ea96
|
||||||
size: 356
|
size: 363
|
||||||
- path: metrics/scenario_table.md
|
- path: metrics/scenario_table.md
|
||||||
hash: md5
|
hash: md5
|
||||||
md5: 686f3f5d966c82c0f68baaaa74617aa1
|
md5: d6baf100a1623cc2467c2f8221d314c9
|
||||||
size: 872
|
size: 2133
|
||||||
|
|
|
||||||
|
|
@ -1,7 +1,7 @@
|
||||||
joblib==1.5.2
|
joblib==1.3.2
|
||||||
boto3==1.40.61
|
boto3==1.28.17
|
||||||
pandas==2.3.3
|
pandas==2.1.4
|
||||||
autogluon.tabular[all]==1.4.0
|
autogluon.tabular[all]==1.0.0
|
||||||
dynaconf==3.2.12
|
dynaconf==3.2.1
|
||||||
pyarrow==20.0.0
|
pyarrow==13.0.0
|
||||||
pre-commit==4.3.0
|
pre-commit==3.3.3
|
||||||
|
|
|
||||||
|
|
@ -1,7 +1,7 @@
|
||||||
joblib==1.5.2
|
joblib==1.3.2
|
||||||
boto3==1.40.61
|
boto3==1.28.17
|
||||||
pandas==2.3.3
|
pandas==2.1.4
|
||||||
autogluon.tabular[all]==1.4.0
|
autogluon.tabular[all]==1.0.0
|
||||||
dynaconf==3.2.12
|
dynaconf==3.2.1
|
||||||
pyarrow==20.0.0
|
pyarrow==13.0.0
|
||||||
PyYAML==6.0.3
|
PyYAML==6.0.1
|
||||||
|
|
|
||||||
|
|
@ -1,10 +1,10 @@
|
||||||
joblib==1.5.2
|
joblib==1.3.2
|
||||||
boto3==1.40.61
|
boto3==1.28.17
|
||||||
pandas==2.3.3
|
pandas==2.1.4
|
||||||
autogluon.tabular[all]==1.4.0
|
autogluon.tabular[all]==1.0.0
|
||||||
ray==2.44.1
|
ray==2.6.3
|
||||||
dynaconf==3.2.12
|
dynaconf==3.2.1
|
||||||
# alibi
|
alibi==0.9.5
|
||||||
shap==0.49.1
|
shap==0.42.1
|
||||||
pyarrow==20.0.0
|
pyarrow==13.0.0
|
||||||
pre-commit==4.3.0
|
pre-commit==3.3.3
|
||||||
|
|
|
||||||
|
|
@ -1,4 +1,4 @@
|
||||||
boto3==1.40.61
|
boto3==1.28.41
|
||||||
pandas==2.3.3
|
pandas==2.1.4
|
||||||
autogluon.tabular[all]==1.4.0
|
autogluon.tabular[all]==1.0.0
|
||||||
dynaconf==3.2.12
|
dynaconf==3.2.1
|
||||||
|
|
|
||||||
|
|
@ -1,4 +1,4 @@
|
||||||
dvc==3.51.0
|
dvc==3.51.0
|
||||||
dvc-s3==3.2.0
|
dvc-s3==3.2.0
|
||||||
gto==1.9.0
|
gto==1.7.1
|
||||||
pyOpenSSL==23.3.0
|
pyOpenSSL==23.3.0
|
||||||
|
|
|
||||||
Loading…
Add table
Reference in a new issue