# Experiments: Running Experiments in Python Execute experiments with `run_experiment`. ## Basic Usage ```python from phoenix.client import Client from phoenix.client.experiments import run_experiment client = Client() dataset = client.datasets.get_dataset(name="qa-test-v1") def my_task(example): return call_llm(example.input["question"]) def exact_match(output, expected): return 1.0 if output.strip().lower() == expected["answer"].strip().lower() else 0.0 experiment = run_experiment( dataset=dataset, task=my_task, evaluators=[exact_match], experiment_name="qa-experiment-v1", ) ``` ## Task Functions ```python # Basic task def task(example): return call_llm(example.input["question"]) # With context (RAG) def rag_task(example): return call_llm(f"Context: {example.input['context']}\nQ: {example.input['question']}") ``` ## Evaluator Parameters | Parameter | Access | | --------- | ------ | | `output` | Task output | | `expected` | Example expected output | | `input` | Example input | | `metadata` | Example metadata | ## Options ```python experiment = run_experiment( dataset=dataset, task=my_task, evaluators=evaluators, experiment_name="my-experiment", dry_run=3, # Test with 3 examples repetitions=3, # Run each example 3 times ) ``` ## Results ```python print(experiment.aggregate_scores) # {'accuracy': 0.85, 'faithfulness': 0.92} for run in experiment.runs: print(run.output, run.scores) ``` ## Add Evaluations Later ```python from phoenix.client.experiments import evaluate_experiment evaluate_experiment(experiment=experiment, evaluators=[new_evaluator]) ```