llama-stack-mirror/llama_stack/apis/eval/eval.py
Charlie Doern c88c4ff2c6
feat: introduce API leveling, post_training, eval to v1alpha (#3449)
# What does this PR do?

Rather than have a single `LLAMA_STACK_VERSION`, we need to have a
`_V1`, `_V1ALPHA`, and `_V1BETA` constant.

This also necessitated addition of `level` to the `WebMethod` so that
routing can be handeled properly.


For backwards compat, the `v1` routes are being kept around and marked
as `deprecated`. When used, the server will log a deprecation warning.

Deprecation log:

<img width="1224" height="134" alt="Screenshot 2025-09-25 at 2 43 36 PM"
src="https://github.com/user-attachments/assets/0cc7c245-dafc-48f0-be99-269fb9a686f9"
/>

move:
1. post_training to `v1alpha` as it is under heavy development and not
near its final state
2. eval: job scheduling is not implemented. Relies heavily on the
datasetio API which is under development missing implementations of
specific routes indicating the structure of those routes might change.
Additionally eval depends on the `inference` API which is going to be
deprecated, eval will likely need a major API surface change to conform
to using completions properly

implements leveling in #3317 

note: integration tests will fail until the SDK is regenerated with
v1alpha/inference as opposed to v1/inference

## Test Plan

existing tests should pass with newly generated schema. Conformance will
also pass as these routes are not the ones we currently test for
stability

Signed-off-by: Charlie Doern <cdoern@redhat.com>
2025-09-26 16:18:07 +02:00

167 lines
6.1 KiB
Python

# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from typing import Annotated, Any, Literal, Protocol
from pydantic import BaseModel, Field
from llama_stack.apis.agents import AgentConfig
from llama_stack.apis.common.job_types import Job
from llama_stack.apis.inference import SamplingParams, SystemMessage
from llama_stack.apis.scoring import ScoringResult
from llama_stack.apis.scoring_functions import ScoringFnParams
from llama_stack.apis.version import LLAMA_STACK_API_V1, LLAMA_STACK_API_V1ALPHA
from llama_stack.schema_utils import json_schema_type, register_schema, webmethod
@json_schema_type
class ModelCandidate(BaseModel):
"""A model candidate for evaluation.
:param model: The model ID to evaluate.
:param sampling_params: The sampling parameters for the model.
:param system_message: (Optional) The system message providing instructions or context to the model.
"""
type: Literal["model"] = "model"
model: str
sampling_params: SamplingParams
system_message: SystemMessage | None = None
@json_schema_type
class AgentCandidate(BaseModel):
"""An agent candidate for evaluation.
:param config: The configuration for the agent candidate.
"""
type: Literal["agent"] = "agent"
config: AgentConfig
EvalCandidate = Annotated[ModelCandidate | AgentCandidate, Field(discriminator="type")]
register_schema(EvalCandidate, name="EvalCandidate")
@json_schema_type
class BenchmarkConfig(BaseModel):
"""A benchmark configuration for evaluation.
:param eval_candidate: The candidate to evaluate.
:param scoring_params: Map between scoring function id and parameters for each scoring function you want to run
:param num_examples: (Optional) The number of examples to evaluate. If not provided, all examples in the dataset will be evaluated
"""
eval_candidate: EvalCandidate
scoring_params: dict[str, ScoringFnParams] = Field(
description="Map between scoring function id and parameters for each scoring function you want to run",
default_factory=dict,
)
num_examples: int | None = Field(
description="Number of examples to evaluate (useful for testing), if not provided, all examples in the dataset will be evaluated",
default=None,
)
# we could optinally add any specific dataset config here
@json_schema_type
class EvaluateResponse(BaseModel):
"""The response from an evaluation.
:param generations: The generations from the evaluation.
:param scores: The scores from the evaluation.
"""
generations: list[dict[str, Any]]
# each key in the dict is a scoring function name
scores: dict[str, ScoringResult]
class Eval(Protocol):
"""Llama Stack Evaluation API for running evaluations on model and agent candidates."""
@webmethod(route="/eval/benchmarks/{benchmark_id}/jobs", method="POST", level=LLAMA_STACK_API_V1, deprecated=True)
@webmethod(route="/eval/benchmarks/{benchmark_id}/jobs", method="POST", level=LLAMA_STACK_API_V1ALPHA)
async def run_eval(
self,
benchmark_id: str,
benchmark_config: BenchmarkConfig,
) -> Job:
"""Run an evaluation on a benchmark.
:param benchmark_id: The ID of the benchmark to run the evaluation on.
:param benchmark_config: The configuration for the benchmark.
:returns: The job that was created to run the evaluation.
"""
...
@webmethod(
route="/eval/benchmarks/{benchmark_id}/evaluations", method="POST", level=LLAMA_STACK_API_V1, deprecated=True
)
@webmethod(route="/eval/benchmarks/{benchmark_id}/evaluations", method="POST", level=LLAMA_STACK_API_V1ALPHA)
async def evaluate_rows(
self,
benchmark_id: str,
input_rows: list[dict[str, Any]],
scoring_functions: list[str],
benchmark_config: BenchmarkConfig,
) -> EvaluateResponse:
"""Evaluate a list of rows on a benchmark.
:param benchmark_id: The ID of the benchmark to run the evaluation on.
:param input_rows: The rows to evaluate.
:param scoring_functions: The scoring functions to use for the evaluation.
:param benchmark_config: The configuration for the benchmark.
:returns: EvaluateResponse object containing generations and scores.
"""
...
@webmethod(
route="/eval/benchmarks/{benchmark_id}/jobs/{job_id}", method="GET", level=LLAMA_STACK_API_V1, deprecated=True
)
@webmethod(route="/eval/benchmarks/{benchmark_id}/jobs/{job_id}", method="GET", level=LLAMA_STACK_API_V1ALPHA)
async def job_status(self, benchmark_id: str, job_id: str) -> Job:
"""Get the status of a job.
:param benchmark_id: The ID of the benchmark to run the evaluation on.
:param job_id: The ID of the job to get the status of.
:returns: The status of the evaluation job.
"""
...
@webmethod(
route="/eval/benchmarks/{benchmark_id}/jobs/{job_id}",
method="DELETE",
level=LLAMA_STACK_API_V1,
deprecated=True,
)
@webmethod(route="/eval/benchmarks/{benchmark_id}/jobs/{job_id}", method="DELETE", level=LLAMA_STACK_API_V1ALPHA)
async def job_cancel(self, benchmark_id: str, job_id: str) -> None:
"""Cancel a job.
:param benchmark_id: The ID of the benchmark to run the evaluation on.
:param job_id: The ID of the job to cancel.
"""
...
@webmethod(
route="/eval/benchmarks/{benchmark_id}/jobs/{job_id}/result",
method="GET",
level=LLAMA_STACK_API_V1,
deprecated=True,
)
@webmethod(
route="/eval/benchmarks/{benchmark_id}/jobs/{job_id}/result", method="GET", level=LLAMA_STACK_API_V1ALPHA
)
async def job_result(self, benchmark_id: str, job_id: str) -> EvaluateResponse:
"""Get the result of a job.
:param benchmark_id: The ID of the benchmark to run the evaluation on.
:param job_id: The ID of the job to get the result of.
:returns: The result of the job.
"""
...