use crate::models::common::{
MultiModalData,
generate::{GenerationDataProvider, PrepareData},
};
use anyhow::Result;
use candle_core::{DType, Device};
use candle_nn::VarBuilder;
use crate::{
models::deepseek_ocr::{
config::DeepseekOCRConfig, model::DeepseekOCRModel, processor::DeepseekOCRProcessor,
},
tokenizer::TokenizerModel,
utils::{extract_metadata_value, find_type_files, get_device, get_dtype},
};
pub struct DeepseekOCRGenerateModel {
tokenizer: TokenizerModel,
processor: DeepseekOCRProcessor,
model: DeepseekOCRModel,
device: Device,
size: Vec<u32>,
model_name: String,
version: usize,
}
impl DeepseekOCRGenerateModel {
pub fn init(path: &str, device: Option<&Device>, dtype: Option<DType>) -> Result<Self> {
let tokenizer = TokenizerModel::init(path)?;
let config_path = path.to_string() + "/config.json";
let cfg: DeepseekOCRConfig = serde_json::from_slice(&std::fs::read(config_path)?)?;
let cfg_dtype = cfg.language_config.torch_dtype.clone();
let device = &get_device(device);
let dtype = get_dtype(dtype, &cfg_dtype);
let model_name = std::path::Path::new(path)
.file_name()
.and_then(|s| s.to_str())
.unwrap_or("deepseek-ai/DeepSeek-OCR")
.to_string();
let version = if model_name.contains("2") || cfg.vision_config.width.qwen2_0_5b.is_some() {
2usize
} else {
1usize
};
let processor = DeepseekOCRProcessor::new(device, dtype, version)?;
let model_list = find_type_files(path, "safetensors")?;
let vb = unsafe { VarBuilder::from_mmaped_safetensors(&model_list, dtype, device)? };
let model = DeepseekOCRModel::new(vb, cfg, version)?;
let size = vec![512u32, 640, 1024, 1280];
Ok(Self {
tokenizer,
processor,
model,
device: device.clone(),
size,
model_name: model_name.to_string(),
version,
})
}
}
impl GenerationDataProvider for DeepseekOCRGenerateModel {
fn get_data(&self, mes: &crate::params::chat::ChatCompletionParameters) -> Result<PrepareData> {
let base_size = extract_metadata_value::<u32>(&mes.metadata, "base_size").unwrap_or(640);
let base_size = if self.size.contains(&base_size) {
base_size
} else {
640
};
let image_size = extract_metadata_value::<u32>(&mes.metadata, "image_size").unwrap_or(640);
let image_size = if self.size.contains(&image_size) {
image_size
} else {
640
};
let base_size = if self.version == 2 { 1024 } else { base_size };
let image_size = if self.version == 2 { 768 } else { image_size };
let crop_mode = extract_metadata_value::<bool>(&mes.metadata, "crop_mode").unwrap_or(false);
let (input_ids, images_ori, image_crop, images_seq_mask, images_spatial_crop_t) = self
.processor
.process_info(mes, &self.tokenizer, base_size, image_size, crop_mode)?;
let data_vec = vec![
Some(images_ori),
Some(image_crop),
Some(images_seq_mask),
Some(images_spatial_crop_t),
];
let multi_model_data = MultiModalData::new(data_vec);
Ok(PrepareData {
in_reasoning: false,
input_ids,
multi_model_data,
})
}
}
crate::impl_generate_model!(DeepseekOCRGenerateModel);