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Create completion

completions.create(CompletionCreateParams**kwargs) -> Completion
POST/completions

Creates a completion for the provided prompt and parameters.

ParametersExpand Collapse
model: Union[str, Literal["gpt-3.5-turbo-instruct", "davinci-002", "babbage-002"]]

ID of the model to use. You can use the List models API to see all of your available models, or see our Model overview for descriptions of them.

Accepts one of the following:
str
Literal["gpt-3.5-turbo-instruct", "davinci-002", "babbage-002"]

ID of the model to use. You can use the List models API to see all of your available models, or see our Model overview for descriptions of them.

Accepts one of the following:
"gpt-3.5-turbo-instruct"
"davinci-002"
"babbage-002"
prompt: Union[str, SequenceNotStr[str], Iterable[int], 2 more]

The prompt(s) to generate completions for, encoded as a string, array of strings, array of tokens, or array of token arrays.

Note that <|endoftext|> is the document separator that the model sees during training, so if a prompt is not specified the model will generate as if from the beginning of a new document.

Accepts one of the following:
str
SequenceNotStr[str]
Iterable[int]
Iterable[Iterable[int]]
best_of: Optional[int]

Generates best_of completions server-side and returns the "best" (the one with the highest log probability per token). Results cannot be streamed.

When used with n, best_of controls the number of candidate completions and n specifies how many to return – best_of must be greater than n.

Note: Because this parameter generates many completions, it can quickly consume your token quota. Use carefully and ensure that you have reasonable settings for max_tokens and stop.

minimum0
maximum20
echo: Optional[bool]

Echo back the prompt in addition to the completion

frequency_penalty: Optional[float]

Number between -2.0 and 2.0. Positive values penalize new tokens based on their existing frequency in the text so far, decreasing the model's likelihood to repeat the same line verbatim.

See more information about frequency and presence penalties.

minimum-2
maximum2
logit_bias: Optional[Dict[str, int]]

Modify the likelihood of specified tokens appearing in the completion.

Accepts a JSON object that maps tokens (specified by their token ID in the GPT tokenizer) to an associated bias value from -100 to 100. You can use this tokenizer tool to convert text to token IDs. Mathematically, the bias is added to the logits generated by the model prior to sampling. The exact effect will vary per model, but values between -1 and 1 should decrease or increase likelihood of selection; values like -100 or 100 should result in a ban or exclusive selection of the relevant token.

As an example, you can pass {"50256": -100} to prevent the <|endoftext|> token from being generated.

logprobs: Optional[int]

Include the log probabilities on the logprobs most likely output tokens, as well the chosen tokens. For example, if logprobs is 5, the API will return a list of the 5 most likely tokens. The API will always return the logprob of the sampled token, so there may be up to logprobs+1 elements in the response.

The maximum value for logprobs is 5.

minimum0
maximum5
max_tokens: Optional[int]

The maximum number of tokens that can be generated in the completion.

The token count of your prompt plus max_tokens cannot exceed the model's context length. Example Python code for counting tokens.

minimum0
n: Optional[int]

How many completions to generate for each prompt.

Note: Because this parameter generates many completions, it can quickly consume your token quota. Use carefully and ensure that you have reasonable settings for max_tokens and stop.

minimum1
maximum128
presence_penalty: Optional[float]

Number between -2.0 and 2.0. Positive values penalize new tokens based on whether they appear in the text so far, increasing the model's likelihood to talk about new topics.

See more information about frequency and presence penalties.

minimum-2
maximum2
seed: Optional[int]

If specified, our system will make a best effort to sample deterministically, such that repeated requests with the same seed and parameters should return the same result.

Determinism is not guaranteed, and you should refer to the system_fingerprint response parameter to monitor changes in the backend.

formatint64
stop: Optional[Union[Optional[str], SequenceNotStr[str], null]]

Not supported with latest reasoning models o3 and o4-mini.

Up to 4 sequences where the API will stop generating further tokens. The returned text will not contain the stop sequence.

Accepts one of the following:
Optional[str]
SequenceNotStr[str]
stream: Optional[Literal[false]]

Whether to stream back partial progress. If set, tokens will be sent as data-only server-sent events as they become available, with the stream terminated by a data: [DONE] message. Example Python code.

stream_options: Optional[ChatCompletionStreamOptionsParam]

Options for streaming response. Only set this when you set stream: true.

include_obfuscation: Optional[bool]

When true, stream obfuscation will be enabled. Stream obfuscation adds random characters to an obfuscation field on streaming delta events to normalize payload sizes as a mitigation to certain side-channel attacks. These obfuscation fields are included by default, but add a small amount of overhead to the data stream. You can set include_obfuscation to false to optimize for bandwidth if you trust the network links between your application and the OpenAI API.

include_usage: Optional[bool]

If set, an additional chunk will be streamed before the data: [DONE] message. The usage field on this chunk shows the token usage statistics for the entire request, and the choices field will always be an empty array.

All other chunks will also include a usage field, but with a null value. NOTE: If the stream is interrupted, you may not receive the final usage chunk which contains the total token usage for the request.

suffix: Optional[str]

The suffix that comes after a completion of inserted text.

This parameter is only supported for gpt-3.5-turbo-instruct.

temperature: Optional[float]

What sampling temperature to use, between 0 and 2. Higher values like 0.8 will make the output more random, while lower values like 0.2 will make it more focused and deterministic.

We generally recommend altering this or top_p but not both.

minimum0
maximum2
top_p: Optional[float]

An alternative to sampling with temperature, called nucleus sampling, where the model considers the results of the tokens with top_p probability mass. So 0.1 means only the tokens comprising the top 10% probability mass are considered.

We generally recommend altering this or temperature but not both.

minimum0
maximum1
user: Optional[str]

A unique identifier representing your end-user, which can help OpenAI to monitor and detect abuse. Learn more.

ReturnsExpand Collapse
class Completion: …

Represents a completion response from the API. Note: both the streamed and non-streamed response objects share the same shape (unlike the chat endpoint).

id: str

A unique identifier for the completion.

choices: List[CompletionChoice]

The list of completion choices the model generated for the input prompt.

finish_reason: Literal["stop", "length", "content_filter"]

The reason the model stopped generating tokens. This will be stop if the model hit a natural stop point or a provided stop sequence, length if the maximum number of tokens specified in the request was reached, or content_filter if content was omitted due to a flag from our content filters.

Accepts one of the following:
"stop"
"length"
"content_filter"
index: int
logprobs: Optional[Logprobs]
text_offset: Optional[List[int]]
token_logprobs: Optional[List[float]]
tokens: Optional[List[str]]
top_logprobs: Optional[List[Dict[str, float]]]
text: str
created: int

The Unix timestamp (in seconds) of when the completion was created.

model: str

The model used for completion.

object: Literal["text_completion"]

The object type, which is always "text_completion"

system_fingerprint: Optional[str]

This fingerprint represents the backend configuration that the model runs with.

Can be used in conjunction with the seed request parameter to understand when backend changes have been made that might impact determinism.

usage: Optional[CompletionUsage]

Usage statistics for the completion request.

completion_tokens: int

Number of tokens in the generated completion.

prompt_tokens: int

Number of tokens in the prompt.

total_tokens: int

Total number of tokens used in the request (prompt + completion).

completion_tokens_details: Optional[CompletionTokensDetails]

Breakdown of tokens used in a completion.

accepted_prediction_tokens: Optional[int]

When using Predicted Outputs, the number of tokens in the prediction that appeared in the completion.

audio_tokens: Optional[int]

Audio input tokens generated by the model.

reasoning_tokens: Optional[int]

Tokens generated by the model for reasoning.

rejected_prediction_tokens: Optional[int]

When using Predicted Outputs, the number of tokens in the prediction that did not appear in the completion. However, like reasoning tokens, these tokens are still counted in the total completion tokens for purposes of billing, output, and context window limits.

prompt_tokens_details: Optional[PromptTokensDetails]

Breakdown of tokens used in the prompt.

audio_tokens: Optional[int]

Audio input tokens present in the prompt.

cached_tokens: Optional[int]

Cached tokens present in the prompt.

class Completion: …

Represents a completion response from the API. Note: both the streamed and non-streamed response objects share the same shape (unlike the chat endpoint).

id: str

A unique identifier for the completion.

choices: List[CompletionChoice]

The list of completion choices the model generated for the input prompt.

finish_reason: Literal["stop", "length", "content_filter"]

The reason the model stopped generating tokens. This will be stop if the model hit a natural stop point or a provided stop sequence, length if the maximum number of tokens specified in the request was reached, or content_filter if content was omitted due to a flag from our content filters.

Accepts one of the following:
"stop"
"length"
"content_filter"
index: int
logprobs: Optional[Logprobs]
text_offset: Optional[List[int]]
token_logprobs: Optional[List[float]]
tokens: Optional[List[str]]
top_logprobs: Optional[List[Dict[str, float]]]
text: str
created: int

The Unix timestamp (in seconds) of when the completion was created.

model: str

The model used for completion.

object: Literal["text_completion"]

The object type, which is always "text_completion"

system_fingerprint: Optional[str]

This fingerprint represents the backend configuration that the model runs with.

Can be used in conjunction with the seed request parameter to understand when backend changes have been made that might impact determinism.

usage: Optional[CompletionUsage]

Usage statistics for the completion request.

completion_tokens: int

Number of tokens in the generated completion.

prompt_tokens: int

Number of tokens in the prompt.

total_tokens: int

Total number of tokens used in the request (prompt + completion).

completion_tokens_details: Optional[CompletionTokensDetails]

Breakdown of tokens used in a completion.

accepted_prediction_tokens: Optional[int]

When using Predicted Outputs, the number of tokens in the prediction that appeared in the completion.

audio_tokens: Optional[int]

Audio input tokens generated by the model.

reasoning_tokens: Optional[int]

Tokens generated by the model for reasoning.

rejected_prediction_tokens: Optional[int]

When using Predicted Outputs, the number of tokens in the prediction that did not appear in the completion. However, like reasoning tokens, these tokens are still counted in the total completion tokens for purposes of billing, output, and context window limits.

prompt_tokens_details: Optional[PromptTokensDetails]

Breakdown of tokens used in the prompt.

audio_tokens: Optional[int]

Audio input tokens present in the prompt.

cached_tokens: Optional[int]

Cached tokens present in the prompt.

Create completion

from openai import OpenAI
client = OpenAI()

client.completions.create(
  model="VAR_completion_model_id",
  prompt="Say this is a test",
  max_tokens=7,
  temperature=0
)
{
  "id": "cmpl-uqkvlQyYK7bGYrRHQ0eXlWi7",
  "object": "text_completion",
  "created": 1589478378,
  "model": "VAR_completion_model_id",
  "system_fingerprint": "fp_44709d6fcb",
  "choices": [
    {
      "text": "\n\nThis is indeed a test",
      "index": 0,
      "logprobs": null,
      "finish_reason": "length"
    }
  ],
  "usage": {
    "prompt_tokens": 5,
    "completion_tokens": 7,
    "total_tokens": 12
  }
}

Create completion

from openai import OpenAI
client = OpenAI()

for chunk in client.completions.create(
  model="VAR_completion_model_id",
  prompt="Say this is a test",
  max_tokens=7,
  temperature=0,
  stream=True
):
  print(chunk.choices[0].text)
{
  "id": "cmpl-7iA7iJjj8V2zOkCGvWF2hAkDWBQZe",
  "object": "text_completion",
  "created": 1690759702,
  "choices": [
    {
      "text": "This",
      "index": 0,
      "logprobs": null,
      "finish_reason": null
    }
  ],
  "model": "gpt-3.5-turbo-instruct"
  "system_fingerprint": "fp_44709d6fcb",
}
Returns Examples
{
  "id": "id",
  "choices": [
    {
      "finish_reason": "stop",
      "index": 0,
      "logprobs": {
        "text_offset": [
          0
        ],
        "token_logprobs": [
          0
        ],
        "tokens": [
          "string"
        ],
        "top_logprobs": [
          {
            "foo": 0
          }
        ]
      },
      "text": "text"
    }
  ],
  "created": 0,
  "model": "model",
  "object": "text_completion",
  "system_fingerprint": "system_fingerprint",
  "usage": {
    "completion_tokens": 0,
    "prompt_tokens": 0,
    "total_tokens": 0,
    "completion_tokens_details": {
      "accepted_prediction_tokens": 0,
      "audio_tokens": 0,
      "reasoning_tokens": 0,
      "rejected_prediction_tokens": 0
    },
    "prompt_tokens_details": {
      "audio_tokens": 0,
      "cached_tokens": 0
    }
  }
}