mirror of
https://github.com/guillaume-be/rust-bert.git
synced 2024-09-19 16:48:02 +03:00
214 lines
9.1 KiB
Rust
214 lines
9.1 KiB
Rust
use tch::{Device, nn, Tensor};
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use rust_tokenizers::{TruncationStrategy, Tokenizer, OpenAiGptTokenizer};
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use rust_bert::Config;
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use rust_bert::pipelines::generation::{OpenAIGenerator, LanguageGenerator, GenerateConfig, LMHeadModel};
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use rust_bert::gpt2::Gpt2Config;
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use rust_bert::openai_gpt::{OpenAIGPTLMHeadModel, OpenAiGptConfigResources, OpenAiGptVocabResources, OpenAiGptMergesResources, OpenAiGptModelResources};
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use rust_bert::resources::{RemoteResource, Resource, download_resource};
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#[test]
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fn openai_gpt_lm_model() -> failure::Fallible<()> {
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// Resources paths
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let config_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptConfigResources::GPT));
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let vocab_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptVocabResources::GPT));
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let merges_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptMergesResources::GPT));
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let weights_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptModelResources::GPT));
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let config_path = download_resource(&config_resource)?;
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let vocab_path = download_resource(&vocab_resource)?;
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let merges_path = download_resource(&merges_resource)?;
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let weights_path = download_resource(&weights_resource)?;
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// Set-up masked LM model
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let device = Device::Cpu;
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let mut vs = nn::VarStore::new(device);
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let tokenizer = OpenAiGptTokenizer::from_file(vocab_path.to_str().unwrap(), merges_path.to_str().unwrap(), true);
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let config = Gpt2Config::from_file(config_path);
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let mut openai_gpt = OpenAIGPTLMHeadModel::new(&vs.root(), &config);
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vs.load(weights_path)?;
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// Define input
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let input = ["Wondering what the next word will"];
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let tokenized_input = tokenizer.encode_list(input.to_vec(), 128, &TruncationStrategy::LongestFirst, 0);
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let max_len = tokenized_input.iter().map(|input| input.token_ids.len()).max().unwrap();
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let tokenized_input = tokenized_input.
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iter().
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map(|input| input.token_ids.clone()).
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map(|mut input| {
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input.extend(vec![0; max_len - input.len()]);
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input
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}).
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map(|input|
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Tensor::of_slice(&(input))).
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collect::<Vec<_>>();
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let input_tensor = Tensor::stack(tokenized_input.as_slice(), 0).to(device);
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// Forward pass
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let (output, _, _, _, _) = openai_gpt.forward_t(
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&Some(input_tensor),
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&None,
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&None,
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&None,
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&None,
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&None,
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None,
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&None,
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false).unwrap();
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let next_word_id = output.get(0).get(-1).argmax(-1, true).int64_value(&[0]);
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let next_word = tokenizer.decode(vec!(next_word_id), true, true);
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assert_eq!(output.size(), vec!(1, 6, 40478));
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assert!((output.double_value(&[0, output.size()[1] - 1, next_word_id]) - (9.1056)).abs() < 1e-4);
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assert_eq!(next_word_id, 580i64);
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assert_eq!(next_word, String::from("be"));
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Ok(())
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}
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#[test]
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fn openai_gpt_generation_greedy() -> failure::Fallible<()> {
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// Resources paths
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let config_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptConfigResources::GPT));
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let vocab_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptVocabResources::GPT));
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let merges_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptMergesResources::GPT));
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let model_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptModelResources::GPT));
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// Set-up masked LM model
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let generate_config = GenerateConfig {
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model_resource,
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config_resource,
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vocab_resource,
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merges_resource,
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max_length: 40,
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do_sample: false,
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num_beams: 1,
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top_p: 1.0,
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no_repeat_ngram_size: 1,
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temperature: 1.1,
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..Default::default()
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};
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let mut model = OpenAIGenerator::new(generate_config)?;
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let input_context = "It was an intense machine dialogue. ";
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let output = model.generate(Some(vec!(input_context)), None);
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assert_eq!(output.len(), 1);
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assert_eq!(output[0], "it was an intense machine dialogue. \n \" i\'m sorry, but we have to go now! the police are on their way and they\'re going after you - or at least that\'s what my");
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Ok(())
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}
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#[test]
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fn openai_gpt_generation_beam_search() -> failure::Fallible<()> {
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// Resources paths
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let config_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptConfigResources::GPT));
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let vocab_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptVocabResources::GPT));
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let merges_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptMergesResources::GPT));
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let model_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptModelResources::GPT));
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// Set-up masked LM model
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let generate_config = GenerateConfig {
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model_resource,
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config_resource,
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vocab_resource,
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merges_resource,
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max_length: 20,
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do_sample: false,
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num_beams: 5,
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temperature: 2.0,
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num_return_sequences: 3,
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..Default::default()
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};
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let mut model = OpenAIGenerator::new(generate_config)?;
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let input_context = "The dog is";
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let output = model.generate(Some(vec!(input_context)), None);
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assert_eq!(output.len(), 3);
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assert_eq!(output[0], "the dog isn\'t going anywhere. i\'m going to take care of him. i \'ll be right");
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assert_eq!(output[1], "the dog isn\'t going anywhere. i\'m going to take care of him. i \'ll be back");
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assert_eq!(output[2], "the dog isn\'t going anywhere. i\'m going to take care of him. \" \n \" i");
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Ok(())
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}
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#[test]
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fn openai_gpt_generation_beam_search_multiple_prompts_without_padding() -> failure::Fallible<()> {
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// Resources paths
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let config_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptConfigResources::GPT));
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let vocab_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptVocabResources::GPT));
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let merges_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptMergesResources::GPT));
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let model_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptModelResources::GPT));
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// Set-up masked LM model
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let generate_config = GenerateConfig {
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model_resource,
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config_resource,
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vocab_resource,
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merges_resource,
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max_length: 20,
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do_sample: false,
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num_beams: 5,
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temperature: 2.0,
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num_return_sequences: 3,
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..Default::default()
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};
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let mut model = OpenAIGenerator::new(generate_config)?;
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let input_context_1 = "The dog is";
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let input_context_2 = "The cat";
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let output = model.generate(Some(vec!(input_context_1, input_context_2)), None);
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assert_eq!(output.len(), 6);
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// Unpadded sequence (generation for `The dog is`) is identical to the
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assert_eq!(output[0], "the dog isn\'t going anywhere. i\'m going to take care of him. i \'ll be right");
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assert_eq!(output[1], "the dog isn\'t going anywhere. i\'m going to take care of him. i \'ll be back");
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assert_eq!(output[2], "the dog isn\'t going anywhere. i\'m going to take care of him. \" \n \" i");
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assert_eq!(output[3], "the cat. \" \n \" i don\'t know what you\'re talking about. i don\'t");
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assert_eq!(output[4], "the cat. \" \n \" i don\'t know what you\'re talking about. i\'m not");
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assert_eq!(output[5], "the cat. \" \n \" i don\'t know what you\'re talking about. i do know");
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Ok(())
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}
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#[test]
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fn openai_gpt_generation_beam_search_multiple_prompts_with_padding() -> failure::Fallible<()> {
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// Resources paths
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let config_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptConfigResources::GPT));
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let vocab_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptVocabResources::GPT));
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let merges_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptMergesResources::GPT));
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let model_resource = Resource::Remote(RemoteResource::from_pretrained(OpenAiGptModelResources::GPT));
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// Set-up masked LM model
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let generate_config = GenerateConfig {
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model_resource,
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config_resource,
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vocab_resource,
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merges_resource,
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max_length: 20,
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do_sample: false,
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num_beams: 5,
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temperature: 2.0,
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num_return_sequences: 3,
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..Default::default()
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};
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let mut model = OpenAIGenerator::new(generate_config)?;
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let input_context_1 = "The dog is";
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let input_context_2 = "The cat was in";
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let output = model.generate(Some(vec!(input_context_1, input_context_2)), None);
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assert_eq!(output.len(), 6);
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// Left padding impacts the generated sentences output
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assert_eq!(output[0], "the dog is a dog. \" \n \" i don\'t know what you\'re talking about.");
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assert_eq!(output[1], "the dog is a dog. \" \n \" i don\'t know what you\'re talking about,");
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assert_eq!(output[2], "the dog is a dog. \" \n \" i don\'t know what you\'re talking about!");
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assert_eq!(output[3], "the cat was in the room with them. \n \" what\'s going on? \" i asked.");
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assert_eq!(output[4], "the cat was in the room with them. \n \" what\'s going on? \" she asked.");
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assert_eq!(output[5], "the cat was in the room with them. \n \" what\'s going on? why are you all");
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Ok(())
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}
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