Completion Token Usage & Cost
By default LiteLLM returns token usage in all completion requests (See here)
However, we also expose some helper functions + [NEW] an API to calculate token usage across providers:
encode
: This encodes the text passed in, using the model-specific tokenizer. Jump to codedecode
: This decodes the tokens passed in, using the model-specific tokenizer. Jump to codetoken_counter
: This returns the number of tokens for a given input - it uses the tokenizer based on the model, and defaults to tiktoken if no model-specific tokenizer is available. Jump to codecreate_pretrained_tokenizer
andcreate_tokenizer
: LiteLLM provides default tokenizer support for OpenAI, Cohere, Anthropic, Llama2, and Llama3 models. If you are using a different model, you can create a custom tokenizer and pass it ascustom_tokenizer
to theencode
,decode
, andtoken_counter
methods. Jump to codecost_per_token
: This returns the cost (in USD) for prompt (input) and completion (output) tokens. Uses the live list fromapi.litellm.ai
. Jump to codecompletion_cost
: This returns the overall cost (in USD) for a given LLM API Call. It combinestoken_counter
andcost_per_token
to return the cost for that query (counting both cost of input and output). Jump to codeget_max_tokens
: This returns the maximum number of tokens allowed for the given model. Jump to codemodel_cost
: This returns a dictionary for all models, with their max_tokens, input_cost_per_token and output_cost_per_token. It uses theapi.litellm.ai
call shown below. Jump to coderegister_model
: This registers new / overrides existing models (and their pricing details) in the model cost dictionary. Jump to codeapi.litellm.ai
: Live token + price count across all supported models. Jump to code
π£ This is a community maintained list. Contributions are welcome! β€οΈ
Example Usageβ
1. encode
β
Encoding has model-specific tokenizers for anthropic, cohere, llama2 and openai. If an unsupported model is passed in, it'll default to using tiktoken (openai's tokenizer).
from litellm import encode, decode
sample_text = "HellΓΆ World, this is my input string!"
# openai encoding + decoding
openai_tokens = encode(model="gpt-3.5-turbo", text=sample_text)
print(openai_tokens)
2. decode
β
Decoding is supported for anthropic, cohere, llama2 and openai.
from litellm import encode, decode
sample_text = "HellΓΆ World, this is my input string!"
# openai encoding + decoding
openai_tokens = encode(model="gpt-3.5-turbo", text=sample_text)
openai_text = decode(model="gpt-3.5-turbo", tokens=openai_tokens)
print(openai_text)
3. token_counter
β
from litellm import token_counter
messages = [{"user": "role", "content": "Hey, how's it going"}]
print(token_counter(model="gpt-3.5-turbo", messages=messages))
4. create_pretrained_tokenizer
and create_tokenizer
β
from litellm import create_pretrained_tokenizer, create_tokenizer
# get tokenizer from huggingface repo
custom_tokenizer_1 = create_pretrained_tokenizer("Xenova/llama-3-tokenizer")
# use tokenizer from json file
with open("tokenizer.json") as f:
json_data = json.load(f)
json_str = json.dumps(json_data)
custom_tokenizer_2 = create_tokenizer(json_str)
5. cost_per_token
β
from litellm import cost_per_token
prompt_tokens = 5
completion_tokens = 10
prompt_tokens_cost_usd_dollar, completion_tokens_cost_usd_dollar = cost_per_token(model="gpt-3.5-turbo", prompt_tokens=prompt_tokens, completion_tokens=completion_tokens))
print(prompt_tokens_cost_usd_dollar, completion_tokens_cost_usd_dollar)
6. completion_cost
β
- Input: Accepts a
litellm.completion()
response OR prompt + completion strings - Output: Returns a
float
of cost for thecompletion
call
litellm.completion()
from litellm import completion, completion_cost
response = completion(
model="bedrock/anthropic.claude-v2",
messages=messages,
request_timeout=200,
)
# pass your response from completion to completion_cost
cost = completion_cost(completion_response=response)
formatted_string = f"${float(cost):.10f}"
print(formatted_string)
prompt + completion string
from litellm import completion_cost
cost = completion_cost(model="bedrock/anthropic.claude-v2", prompt="Hey!", completion="How's it going?")
formatted_string = f"${float(cost):.10f}"
print(formatted_string)
7. get_max_tokens
β
Input: Accepts a model name - e.g., gpt-3.5-turbo (to get a complete list, call litellm.model_list). Output: Returns the maximum number of tokens allowed for the given model
from litellm import get_max_tokens
model = "gpt-3.5-turbo"
print(get_max_tokens(model)) # Output: 4097
8. model_cost
β
- Output: Returns a dict object containing the max_tokens, input_cost_per_token, output_cost_per_token for all models on community-maintained list
from litellm import model_cost
print(model_cost) # {'gpt-3.5-turbo': {'max_tokens': 4000, 'input_cost_per_token': 1.5e-06, 'output_cost_per_token': 2e-06}, ...}
9. register_model
β
- Input: Provide EITHER a model cost dictionary or a url to a hosted json blob
- Output: Returns updated model_cost dictionary + updates litellm.model_cost with model details.
Dictionary
from litellm import register_model
litellm.register_model({
"gpt-4": {
"max_tokens": 8192,
"input_cost_per_token": 0.00002,
"output_cost_per_token": 0.00006,
"litellm_provider": "openai",
"mode": "chat"
},
})
URL for json blob
import litellm
litellm.register_model(model_cost=
"https://raw.githubusercontent.com/BerriAI/litellm/main/model_prices_and_context_window.json")
Don't pull hosted model_cost_map
If you have firewalls, and want to just use the local copy of the model cost map, you can do so like this:
export LITELLM_LOCAL_MODEL_COST_MAP="True"
Note: this means you will need to upgrade to get updated pricing, and newer models.