ai-content-maker/.venv/Lib/site-packages/openai/resources/fine_tuning/jobs/jobs.py

687 lines
26 KiB
Python

# File generated from our OpenAPI spec by Stainless. See CONTRIBUTING.md for details.
from __future__ import annotations
from typing import Union, Iterable, Optional
from typing_extensions import Literal
import httpx
from .... import _legacy_response
from ...._types import NOT_GIVEN, Body, Query, Headers, NotGiven
from ...._utils import (
maybe_transform,
async_maybe_transform,
)
from ...._compat import cached_property
from .checkpoints import (
Checkpoints,
AsyncCheckpoints,
CheckpointsWithRawResponse,
AsyncCheckpointsWithRawResponse,
CheckpointsWithStreamingResponse,
AsyncCheckpointsWithStreamingResponse,
)
from ...._resource import SyncAPIResource, AsyncAPIResource
from ...._response import to_streamed_response_wrapper, async_to_streamed_response_wrapper
from ....pagination import SyncCursorPage, AsyncCursorPage
from ...._base_client import (
AsyncPaginator,
make_request_options,
)
from ....types.fine_tuning import job_list_params, job_create_params, job_list_events_params
from ....types.fine_tuning.fine_tuning_job import FineTuningJob
from ....types.fine_tuning.fine_tuning_job_event import FineTuningJobEvent
__all__ = ["Jobs", "AsyncJobs"]
class Jobs(SyncAPIResource):
@cached_property
def checkpoints(self) -> Checkpoints:
return Checkpoints(self._client)
@cached_property
def with_raw_response(self) -> JobsWithRawResponse:
return JobsWithRawResponse(self)
@cached_property
def with_streaming_response(self) -> JobsWithStreamingResponse:
return JobsWithStreamingResponse(self)
def create(
self,
*,
model: Union[str, Literal["babbage-002", "davinci-002", "gpt-3.5-turbo"]],
training_file: str,
hyperparameters: job_create_params.Hyperparameters | NotGiven = NOT_GIVEN,
integrations: Optional[Iterable[job_create_params.Integration]] | NotGiven = NOT_GIVEN,
seed: Optional[int] | NotGiven = NOT_GIVEN,
suffix: Optional[str] | NotGiven = NOT_GIVEN,
validation_file: Optional[str] | NotGiven = NOT_GIVEN,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> FineTuningJob:
"""
Creates a fine-tuning job which begins the process of creating a new model from
a given dataset.
Response includes details of the enqueued job including job status and the name
of the fine-tuned models once complete.
[Learn more about fine-tuning](https://platform.openai.com/docs/guides/fine-tuning)
Args:
model: The name of the model to fine-tune. You can select one of the
[supported models](https://platform.openai.com/docs/guides/fine-tuning/what-models-can-be-fine-tuned).
training_file: The ID of an uploaded file that contains training data.
See [upload file](https://platform.openai.com/docs/api-reference/files/create)
for how to upload a file.
Your dataset must be formatted as a JSONL file. Additionally, you must upload
your file with the purpose `fine-tune`.
See the [fine-tuning guide](https://platform.openai.com/docs/guides/fine-tuning)
for more details.
hyperparameters: The hyperparameters used for the fine-tuning job.
integrations: A list of integrations to enable for your fine-tuning job.
seed: The seed controls the reproducibility of the job. Passing in the same seed and
job parameters should produce the same results, but may differ in rare cases. If
a seed is not specified, one will be generated for you.
suffix: A string of up to 18 characters that will be added to your fine-tuned model
name.
For example, a `suffix` of "custom-model-name" would produce a model name like
`ft:gpt-3.5-turbo:openai:custom-model-name:7p4lURel`.
validation_file: The ID of an uploaded file that contains validation data.
If you provide this file, the data is used to generate validation metrics
periodically during fine-tuning. These metrics can be viewed in the fine-tuning
results file. The same data should not be present in both train and validation
files.
Your dataset must be formatted as a JSONL file. You must upload your file with
the purpose `fine-tune`.
See the [fine-tuning guide](https://platform.openai.com/docs/guides/fine-tuning)
for more details.
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
return self._post(
"/fine_tuning/jobs",
body=maybe_transform(
{
"model": model,
"training_file": training_file,
"hyperparameters": hyperparameters,
"integrations": integrations,
"seed": seed,
"suffix": suffix,
"validation_file": validation_file,
},
job_create_params.JobCreateParams,
),
options=make_request_options(
extra_headers=extra_headers, extra_query=extra_query, extra_body=extra_body, timeout=timeout
),
cast_to=FineTuningJob,
)
def retrieve(
self,
fine_tuning_job_id: str,
*,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> FineTuningJob:
"""
Get info about a fine-tuning job.
[Learn more about fine-tuning](https://platform.openai.com/docs/guides/fine-tuning)
Args:
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
if not fine_tuning_job_id:
raise ValueError(f"Expected a non-empty value for `fine_tuning_job_id` but received {fine_tuning_job_id!r}")
return self._get(
f"/fine_tuning/jobs/{fine_tuning_job_id}",
options=make_request_options(
extra_headers=extra_headers, extra_query=extra_query, extra_body=extra_body, timeout=timeout
),
cast_to=FineTuningJob,
)
def list(
self,
*,
after: str | NotGiven = NOT_GIVEN,
limit: int | NotGiven = NOT_GIVEN,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> SyncCursorPage[FineTuningJob]:
"""
List your organization's fine-tuning jobs
Args:
after: Identifier for the last job from the previous pagination request.
limit: Number of fine-tuning jobs to retrieve.
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
return self._get_api_list(
"/fine_tuning/jobs",
page=SyncCursorPage[FineTuningJob],
options=make_request_options(
extra_headers=extra_headers,
extra_query=extra_query,
extra_body=extra_body,
timeout=timeout,
query=maybe_transform(
{
"after": after,
"limit": limit,
},
job_list_params.JobListParams,
),
),
model=FineTuningJob,
)
def cancel(
self,
fine_tuning_job_id: str,
*,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> FineTuningJob:
"""
Immediately cancel a fine-tune job.
Args:
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
if not fine_tuning_job_id:
raise ValueError(f"Expected a non-empty value for `fine_tuning_job_id` but received {fine_tuning_job_id!r}")
return self._post(
f"/fine_tuning/jobs/{fine_tuning_job_id}/cancel",
options=make_request_options(
extra_headers=extra_headers, extra_query=extra_query, extra_body=extra_body, timeout=timeout
),
cast_to=FineTuningJob,
)
def list_events(
self,
fine_tuning_job_id: str,
*,
after: str | NotGiven = NOT_GIVEN,
limit: int | NotGiven = NOT_GIVEN,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> SyncCursorPage[FineTuningJobEvent]:
"""
Get status updates for a fine-tuning job.
Args:
after: Identifier for the last event from the previous pagination request.
limit: Number of events to retrieve.
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
if not fine_tuning_job_id:
raise ValueError(f"Expected a non-empty value for `fine_tuning_job_id` but received {fine_tuning_job_id!r}")
return self._get_api_list(
f"/fine_tuning/jobs/{fine_tuning_job_id}/events",
page=SyncCursorPage[FineTuningJobEvent],
options=make_request_options(
extra_headers=extra_headers,
extra_query=extra_query,
extra_body=extra_body,
timeout=timeout,
query=maybe_transform(
{
"after": after,
"limit": limit,
},
job_list_events_params.JobListEventsParams,
),
),
model=FineTuningJobEvent,
)
class AsyncJobs(AsyncAPIResource):
@cached_property
def checkpoints(self) -> AsyncCheckpoints:
return AsyncCheckpoints(self._client)
@cached_property
def with_raw_response(self) -> AsyncJobsWithRawResponse:
return AsyncJobsWithRawResponse(self)
@cached_property
def with_streaming_response(self) -> AsyncJobsWithStreamingResponse:
return AsyncJobsWithStreamingResponse(self)
async def create(
self,
*,
model: Union[str, Literal["babbage-002", "davinci-002", "gpt-3.5-turbo"]],
training_file: str,
hyperparameters: job_create_params.Hyperparameters | NotGiven = NOT_GIVEN,
integrations: Optional[Iterable[job_create_params.Integration]] | NotGiven = NOT_GIVEN,
seed: Optional[int] | NotGiven = NOT_GIVEN,
suffix: Optional[str] | NotGiven = NOT_GIVEN,
validation_file: Optional[str] | NotGiven = NOT_GIVEN,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> FineTuningJob:
"""
Creates a fine-tuning job which begins the process of creating a new model from
a given dataset.
Response includes details of the enqueued job including job status and the name
of the fine-tuned models once complete.
[Learn more about fine-tuning](https://platform.openai.com/docs/guides/fine-tuning)
Args:
model: The name of the model to fine-tune. You can select one of the
[supported models](https://platform.openai.com/docs/guides/fine-tuning/what-models-can-be-fine-tuned).
training_file: The ID of an uploaded file that contains training data.
See [upload file](https://platform.openai.com/docs/api-reference/files/create)
for how to upload a file.
Your dataset must be formatted as a JSONL file. Additionally, you must upload
your file with the purpose `fine-tune`.
See the [fine-tuning guide](https://platform.openai.com/docs/guides/fine-tuning)
for more details.
hyperparameters: The hyperparameters used for the fine-tuning job.
integrations: A list of integrations to enable for your fine-tuning job.
seed: The seed controls the reproducibility of the job. Passing in the same seed and
job parameters should produce the same results, but may differ in rare cases. If
a seed is not specified, one will be generated for you.
suffix: A string of up to 18 characters that will be added to your fine-tuned model
name.
For example, a `suffix` of "custom-model-name" would produce a model name like
`ft:gpt-3.5-turbo:openai:custom-model-name:7p4lURel`.
validation_file: The ID of an uploaded file that contains validation data.
If you provide this file, the data is used to generate validation metrics
periodically during fine-tuning. These metrics can be viewed in the fine-tuning
results file. The same data should not be present in both train and validation
files.
Your dataset must be formatted as a JSONL file. You must upload your file with
the purpose `fine-tune`.
See the [fine-tuning guide](https://platform.openai.com/docs/guides/fine-tuning)
for more details.
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
return await self._post(
"/fine_tuning/jobs",
body=await async_maybe_transform(
{
"model": model,
"training_file": training_file,
"hyperparameters": hyperparameters,
"integrations": integrations,
"seed": seed,
"suffix": suffix,
"validation_file": validation_file,
},
job_create_params.JobCreateParams,
),
options=make_request_options(
extra_headers=extra_headers, extra_query=extra_query, extra_body=extra_body, timeout=timeout
),
cast_to=FineTuningJob,
)
async def retrieve(
self,
fine_tuning_job_id: str,
*,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> FineTuningJob:
"""
Get info about a fine-tuning job.
[Learn more about fine-tuning](https://platform.openai.com/docs/guides/fine-tuning)
Args:
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
if not fine_tuning_job_id:
raise ValueError(f"Expected a non-empty value for `fine_tuning_job_id` but received {fine_tuning_job_id!r}")
return await self._get(
f"/fine_tuning/jobs/{fine_tuning_job_id}",
options=make_request_options(
extra_headers=extra_headers, extra_query=extra_query, extra_body=extra_body, timeout=timeout
),
cast_to=FineTuningJob,
)
def list(
self,
*,
after: str | NotGiven = NOT_GIVEN,
limit: int | NotGiven = NOT_GIVEN,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> AsyncPaginator[FineTuningJob, AsyncCursorPage[FineTuningJob]]:
"""
List your organization's fine-tuning jobs
Args:
after: Identifier for the last job from the previous pagination request.
limit: Number of fine-tuning jobs to retrieve.
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
return self._get_api_list(
"/fine_tuning/jobs",
page=AsyncCursorPage[FineTuningJob],
options=make_request_options(
extra_headers=extra_headers,
extra_query=extra_query,
extra_body=extra_body,
timeout=timeout,
query=maybe_transform(
{
"after": after,
"limit": limit,
},
job_list_params.JobListParams,
),
),
model=FineTuningJob,
)
async def cancel(
self,
fine_tuning_job_id: str,
*,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> FineTuningJob:
"""
Immediately cancel a fine-tune job.
Args:
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
if not fine_tuning_job_id:
raise ValueError(f"Expected a non-empty value for `fine_tuning_job_id` but received {fine_tuning_job_id!r}")
return await self._post(
f"/fine_tuning/jobs/{fine_tuning_job_id}/cancel",
options=make_request_options(
extra_headers=extra_headers, extra_query=extra_query, extra_body=extra_body, timeout=timeout
),
cast_to=FineTuningJob,
)
def list_events(
self,
fine_tuning_job_id: str,
*,
after: str | NotGiven = NOT_GIVEN,
limit: int | NotGiven = NOT_GIVEN,
# Use the following arguments if you need to pass additional parameters to the API that aren't available via kwargs.
# The extra values given here take precedence over values defined on the client or passed to this method.
extra_headers: Headers | None = None,
extra_query: Query | None = None,
extra_body: Body | None = None,
timeout: float | httpx.Timeout | None | NotGiven = NOT_GIVEN,
) -> AsyncPaginator[FineTuningJobEvent, AsyncCursorPage[FineTuningJobEvent]]:
"""
Get status updates for a fine-tuning job.
Args:
after: Identifier for the last event from the previous pagination request.
limit: Number of events to retrieve.
extra_headers: Send extra headers
extra_query: Add additional query parameters to the request
extra_body: Add additional JSON properties to the request
timeout: Override the client-level default timeout for this request, in seconds
"""
if not fine_tuning_job_id:
raise ValueError(f"Expected a non-empty value for `fine_tuning_job_id` but received {fine_tuning_job_id!r}")
return self._get_api_list(
f"/fine_tuning/jobs/{fine_tuning_job_id}/events",
page=AsyncCursorPage[FineTuningJobEvent],
options=make_request_options(
extra_headers=extra_headers,
extra_query=extra_query,
extra_body=extra_body,
timeout=timeout,
query=maybe_transform(
{
"after": after,
"limit": limit,
},
job_list_events_params.JobListEventsParams,
),
),
model=FineTuningJobEvent,
)
class JobsWithRawResponse:
def __init__(self, jobs: Jobs) -> None:
self._jobs = jobs
self.create = _legacy_response.to_raw_response_wrapper(
jobs.create,
)
self.retrieve = _legacy_response.to_raw_response_wrapper(
jobs.retrieve,
)
self.list = _legacy_response.to_raw_response_wrapper(
jobs.list,
)
self.cancel = _legacy_response.to_raw_response_wrapper(
jobs.cancel,
)
self.list_events = _legacy_response.to_raw_response_wrapper(
jobs.list_events,
)
@cached_property
def checkpoints(self) -> CheckpointsWithRawResponse:
return CheckpointsWithRawResponse(self._jobs.checkpoints)
class AsyncJobsWithRawResponse:
def __init__(self, jobs: AsyncJobs) -> None:
self._jobs = jobs
self.create = _legacy_response.async_to_raw_response_wrapper(
jobs.create,
)
self.retrieve = _legacy_response.async_to_raw_response_wrapper(
jobs.retrieve,
)
self.list = _legacy_response.async_to_raw_response_wrapper(
jobs.list,
)
self.cancel = _legacy_response.async_to_raw_response_wrapper(
jobs.cancel,
)
self.list_events = _legacy_response.async_to_raw_response_wrapper(
jobs.list_events,
)
@cached_property
def checkpoints(self) -> AsyncCheckpointsWithRawResponse:
return AsyncCheckpointsWithRawResponse(self._jobs.checkpoints)
class JobsWithStreamingResponse:
def __init__(self, jobs: Jobs) -> None:
self._jobs = jobs
self.create = to_streamed_response_wrapper(
jobs.create,
)
self.retrieve = to_streamed_response_wrapper(
jobs.retrieve,
)
self.list = to_streamed_response_wrapper(
jobs.list,
)
self.cancel = to_streamed_response_wrapper(
jobs.cancel,
)
self.list_events = to_streamed_response_wrapper(
jobs.list_events,
)
@cached_property
def checkpoints(self) -> CheckpointsWithStreamingResponse:
return CheckpointsWithStreamingResponse(self._jobs.checkpoints)
class AsyncJobsWithStreamingResponse:
def __init__(self, jobs: AsyncJobs) -> None:
self._jobs = jobs
self.create = async_to_streamed_response_wrapper(
jobs.create,
)
self.retrieve = async_to_streamed_response_wrapper(
jobs.retrieve,
)
self.list = async_to_streamed_response_wrapper(
jobs.list,
)
self.cancel = async_to_streamed_response_wrapper(
jobs.cancel,
)
self.list_events = async_to_streamed_response_wrapper(
jobs.list_events,
)
@cached_property
def checkpoints(self) -> AsyncCheckpointsWithStreamingResponse:
return AsyncCheckpointsWithStreamingResponse(self._jobs.checkpoints)