Files
wehub-resource-sync e768098d0e
Flake8 Lint / flake8 (push) Waiting to run
Publish Promptflow Doc / Build (push) Waiting to run
Publish Promptflow Doc / Deploy (push) Blocked by required conditions
Spell check CI / Spell_Check (push) Waiting to run
tools_continuous_delivery / Private PyPI non-main branch release (push) Has been skipped
tools_continuous_delivery / Private PyPI main branch release (push) Failing after 2m42s
chore: import upstream snapshot with attribution
2026-07-13 13:39:52 +08:00
..

Basic Eval

This example shows how to create a basic evaluation flow.

Tools used in this flow

  • python tool

Prerequisites

Install promptflow sdk and other dependencies in this folder:

pip install -r requirements.txt

What you will learn

In this flow, you will learn

  • how to compose a point based evaluation flow, where you can calculate point-wise metrics.
  • the way to log metrics. use from promptflow.core import log_metric

1. Test flow with single line data

Testing flow/node:

# test with default input value in flow.dag.yaml
pf flow test --flow .

# test with flow inputs
pf flow test --flow . --inputs groundtruth=ABC prediction=ABC

# test node with inputs
pf flow test --flow . --node line_process --inputs groundtruth=ABC prediction=ABC

2. create flow run with multi line data

There are two ways to evaluate an classification flow.

pf run create --flow . --data ./data.jsonl --column-mapping groundtruth='${data.groundtruth}' prediction='${data.prediction}' --stream

You can also skip providing column-mapping if provided data has same column name as the flow. Reference here for default behavior when column-mapping not provided in CLI.