import * as Core from "../../../core.js"; import { APIResource } from "../../../resource.js"; import * as JobsAPI from "./jobs.js"; import * as CheckpointsAPI from "./checkpoints.js"; import { CursorPage, type CursorPageParams } from "../../../pagination.js"; export declare class Jobs extends APIResource { checkpoints: CheckpointsAPI.Checkpoints; /** * 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) */ create(body: JobCreateParams, options?: Core.RequestOptions): Core.APIPromise; /** * Get info about a fine-tuning job. * * [Learn more about fine-tuning](https://platform.openai.com/docs/guides/fine-tuning) */ retrieve(fineTuningJobId: string, options?: Core.RequestOptions): Core.APIPromise; /** * List your organization's fine-tuning jobs */ list(query?: JobListParams, options?: Core.RequestOptions): Core.PagePromise; list(options?: Core.RequestOptions): Core.PagePromise; /** * Immediately cancel a fine-tune job. */ cancel(fineTuningJobId: string, options?: Core.RequestOptions): Core.APIPromise; /** * Get status updates for a fine-tuning job. */ listEvents(fineTuningJobId: string, query?: JobListEventsParams, options?: Core.RequestOptions): Core.PagePromise; listEvents(fineTuningJobId: string, options?: Core.RequestOptions): Core.PagePromise; } export declare class FineTuningJobsPage extends CursorPage { } export declare class FineTuningJobEventsPage extends CursorPage { } /** * The `fine_tuning.job` object represents a fine-tuning job that has been created * through the API. */ export interface FineTuningJob { /** * The object identifier, which can be referenced in the API endpoints. */ id: string; /** * The Unix timestamp (in seconds) for when the fine-tuning job was created. */ created_at: number; /** * For fine-tuning jobs that have `failed`, this will contain more information on * the cause of the failure. */ error: FineTuningJob.Error | null; /** * The name of the fine-tuned model that is being created. The value will be null * if the fine-tuning job is still running. */ fine_tuned_model: string | null; /** * The Unix timestamp (in seconds) for when the fine-tuning job was finished. The * value will be null if the fine-tuning job is still running. */ finished_at: number | null; /** * The hyperparameters used for the fine-tuning job. See the * [fine-tuning guide](https://platform.openai.com/docs/guides/fine-tuning) for * more details. */ hyperparameters: FineTuningJob.Hyperparameters; /** * The base model that is being fine-tuned. */ model: string; /** * The object type, which is always "fine_tuning.job". */ object: 'fine_tuning.job'; /** * The organization that owns the fine-tuning job. */ organization_id: string; /** * The compiled results file ID(s) for the fine-tuning job. You can retrieve the * results with the * [Files API](https://platform.openai.com/docs/api-reference/files/retrieve-contents). */ result_files: Array; /** * The seed used for the fine-tuning job. */ seed: number; /** * The current status of the fine-tuning job, which can be either * `validating_files`, `queued`, `running`, `succeeded`, `failed`, or `cancelled`. */ status: 'validating_files' | 'queued' | 'running' | 'succeeded' | 'failed' | 'cancelled'; /** * The total number of billable tokens processed by this fine-tuning job. The value * will be null if the fine-tuning job is still running. */ trained_tokens: number | null; /** * The file ID used for training. You can retrieve the training data with the * [Files API](https://platform.openai.com/docs/api-reference/files/retrieve-contents). */ training_file: string; /** * The file ID used for validation. You can retrieve the validation results with * the * [Files API](https://platform.openai.com/docs/api-reference/files/retrieve-contents). */ validation_file: string | null; /** * The Unix timestamp (in seconds) for when the fine-tuning job is estimated to * finish. The value will be null if the fine-tuning job is not running. */ estimated_finish?: number | null; /** * A list of integrations to enable for this fine-tuning job. */ integrations?: Array | null; } export declare namespace FineTuningJob { /** * For fine-tuning jobs that have `failed`, this will contain more information on * the cause of the failure. */ interface Error { /** * A machine-readable error code. */ code: string; /** * A human-readable error message. */ message: string; /** * The parameter that was invalid, usually `training_file` or `validation_file`. * This field will be null if the failure was not parameter-specific. */ param: string | null; } /** * The hyperparameters used for the fine-tuning job. See the * [fine-tuning guide](https://platform.openai.com/docs/guides/fine-tuning) for * more details. */ interface Hyperparameters { /** * The number of epochs to train the model for. An epoch refers to one full cycle * through the training dataset. "auto" decides the optimal number of epochs based * on the size of the dataset. If setting the number manually, we support any * number between 1 and 50 epochs. */ n_epochs: 'auto' | number; } } /** * Fine-tuning job event object */ export interface FineTuningJobEvent { id: string; created_at: number; level: 'info' | 'warn' | 'error'; message: string; object: 'fine_tuning.job.event'; } export type FineTuningJobIntegration = FineTuningJobWandbIntegrationObject; /** * The settings for your integration with Weights and Biases. This payload * specifies the project that metrics will be sent to. Optionally, you can set an * explicit display name for your run, add tags to your run, and set a default * entity (team, username, etc) to be associated with your run. */ export interface FineTuningJobWandbIntegration { /** * The name of the project that the new run will be created under. */ project: string; /** * The entity to use for the run. This allows you to set the team or username of * the WandB user that you would like associated with the run. If not set, the * default entity for the registered WandB API key is used. */ entity?: string | null; /** * A display name to set for the run. If not set, we will use the Job ID as the * name. */ name?: string | null; /** * A list of tags to be attached to the newly created run. These tags are passed * through directly to WandB. Some default tags are generated by OpenAI: * "openai/finetune", "openai/{base-model}", "openai/{ftjob-abcdef}". */ tags?: Array; } export interface FineTuningJobWandbIntegrationObject { /** * The type of the integration being enabled for the fine-tuning job */ type: 'wandb'; /** * The settings for your integration with Weights and Biases. This payload * specifies the project that metrics will be sent to. Optionally, you can set an * explicit display name for your run, add tags to your run, and set a default * entity (team, username, etc) to be associated with your run. */ wandb: FineTuningJobWandbIntegration; } export interface JobCreateParams { /** * 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). */ model: (string & {}) | 'babbage-002' | 'davinci-002' | 'gpt-3.5-turbo'; /** * 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. */ training_file: string; /** * The hyperparameters used for the fine-tuning job. */ hyperparameters?: JobCreateParams.Hyperparameters; /** * A list of integrations to enable for your fine-tuning job. */ integrations?: Array | null; /** * 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. */ seed?: number | null; /** * 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`. */ suffix?: string | null; /** * 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. */ validation_file?: string | null; } export declare namespace JobCreateParams { /** * The hyperparameters used for the fine-tuning job. */ interface Hyperparameters { /** * Number of examples in each batch. A larger batch size means that model * parameters are updated less frequently, but with lower variance. */ batch_size?: 'auto' | number; /** * Scaling factor for the learning rate. A smaller learning rate may be useful to * avoid overfitting. */ learning_rate_multiplier?: 'auto' | number; /** * The number of epochs to train the model for. An epoch refers to one full cycle * through the training dataset. */ n_epochs?: 'auto' | number; } interface Integration { /** * The type of integration to enable. Currently, only "wandb" (Weights and Biases) * is supported. */ type: 'wandb'; /** * The settings for your integration with Weights and Biases. This payload * specifies the project that metrics will be sent to. Optionally, you can set an * explicit display name for your run, add tags to your run, and set a default * entity (team, username, etc) to be associated with your run. */ wandb: Integration.Wandb; } namespace Integration { /** * The settings for your integration with Weights and Biases. This payload * specifies the project that metrics will be sent to. Optionally, you can set an * explicit display name for your run, add tags to your run, and set a default * entity (team, username, etc) to be associated with your run. */ interface Wandb { /** * The name of the project that the new run will be created under. */ project: string; /** * The entity to use for the run. This allows you to set the team or username of * the WandB user that you would like associated with the run. If not set, the * default entity for the registered WandB API key is used. */ entity?: string | null; /** * A display name to set for the run. If not set, we will use the Job ID as the * name. */ name?: string | null; /** * A list of tags to be attached to the newly created run. These tags are passed * through directly to WandB. Some default tags are generated by OpenAI: * "openai/finetune", "openai/{base-model}", "openai/{ftjob-abcdef}". */ tags?: Array; } } } export interface JobListParams extends CursorPageParams { } export interface JobListEventsParams extends CursorPageParams { } export declare namespace Jobs { export import FineTuningJob = JobsAPI.FineTuningJob; export import FineTuningJobEvent = JobsAPI.FineTuningJobEvent; export import FineTuningJobIntegration = JobsAPI.FineTuningJobIntegration; export import FineTuningJobWandbIntegration = JobsAPI.FineTuningJobWandbIntegration; export import FineTuningJobWandbIntegrationObject = JobsAPI.FineTuningJobWandbIntegrationObject; export import FineTuningJobsPage = JobsAPI.FineTuningJobsPage; export import FineTuningJobEventsPage = JobsAPI.FineTuningJobEventsPage; export import JobCreateParams = JobsAPI.JobCreateParams; export import JobListParams = JobsAPI.JobListParams; export import JobListEventsParams = JobsAPI.JobListEventsParams; export import Checkpoints = CheckpointsAPI.Checkpoints; export import FineTuningJobCheckpoint = CheckpointsAPI.FineTuningJobCheckpoint; export import FineTuningJobCheckpointsPage = CheckpointsAPI.FineTuningJobCheckpointsPage; export import CheckpointListParams = CheckpointsAPI.CheckpointListParams; } //# sourceMappingURL=jobs.d.ts.map