technillogue / llama-2-70b-fp16-short-triton

  • Public
  • 173 runs

Run technillogue/llama-2-70b-fp16-short-triton with an API

Use one of our client libraries to get started quickly. Clicking on a library will take you to the Playground tab where you can tweak different inputs, see the results, and copy the corresponding code to use in your own project.

Input schema

The fields you can use to run this model with an API. If you don't give a value for a field its default value will be used.

Field Type Default value Description
prompt
string
Prompt to send to the model.
max_new_tokens
integer
128

Min: 1

Maximum number of tokens to generate. A word is generally 2-3 tokens
min_new_tokens
integer

Min: -1

Minimum number of tokens to generate. To disable, set to -1. A word is generally 2-3 tokens.
temperature
number
0.7

Max: 5

Adjusts randomness of outputs, greater than 1 is random and 0 is deterministic, 0.75 is a good starting value.
top_p
number
0.95

Max: 1

When decoding text, samples from the top p percentage of most likely tokens; lower to ignore less likely tokens
top_k
integer
0

Min: -1

When decoding text, samples from the top k most likely tokens; lower to ignore less likely tokens
stop_sequences
string
A comma-separated list of sequences to stop generation at. For example, '<end>,<stop>' will stop generation at the first instance of 'end' or '<stop>'.
length_penalty
number
1

Max: 5

A parameter that controls how long the outputs are. If < 1, the model will tend to generate shorter outputs, and > 1 will tend to generate longer outputs.
presence_penalty
number
0
A parameter that penalizes repeated tokens regardless of the number of appearances. As the value increases, the model will be less likely to repeat tokens in the output.
seed
integer
Random seed. Leave blank to randomize the seed
prompt_template
string
{prompt}
Template for formatting the prompt. Can be an arbitrary string, but must contain the substring `{prompt}`.

Output schema

The shape of the response you’ll get when you run this model with an API.

Schema
{
  "type": "array",
  "items": {
    "type": "string"
  },
  "title": "Output",
  "x-cog-array-type": "iterator",
  "x-cog-array-display": "concatenate"
}