--- license: mit language: - sa - en tags: - sanskrit - paraphrase - diffusion - d3pm - pytorch pipeline_tag: text2text-generation --- # Sanskrit D3PM Encoder-Decoder Model Roman/IAST Sanskrit input to Devanagari output using a custom D3PM checkpoint. This package is configured for the `d3pm_encoder_decoder` checkpoint stored in `best_model.pt`. Hugging Face model repo: `bhsinghgrid/devflow2` ## Files Included - `best_model.pt` — trained checkpoint - `model_settings.json` — packaged runtime metadata - `config.py` — runtime config - `inference.py` — model loading + generation loop - `inference_api.py` — simple Python API (`predict`) - `handler.py` — Hugging Face Endpoint handler - `model/`, `diffusion/` — architecture modules - `sanskrit_src_tokenizer.json`, `sanskrit_tgt_tokenizer.json` — tokenizers ## Quick Local Test ```python from inference_api import predict print(predict("dharmo rakṣati rakṣitaḥ")["output"]) ``` ## Runtime Settings For local/API usage, the runtime first reads `model_settings.json`, then allows optional environment variable overrides: - `HF_MODEL_TYPE` = `d3pm_cross_attention` or `d3pm_encoder_decoder` - `HF_INCLUDE_NEG` = `true` or `false` - `HF_NUM_STEPS` = diffusion step count for the packaged checkpoint Packaged settings for this repo: ```bash export HF_MODEL_TYPE=d3pm_encoder_decoder export HF_INCLUDE_NEG=false export HF_NUM_STEPS=4 ``` ## Use This Model In A Hugging Face Space In your Space settings, set: - `HF_CHECKPOINT_REPO=bhsinghgrid/devflow2` - `HF_CHECKPOINT_FILE=best_model.pt` If your Space reads model metadata automatically, no extra model-type variables are required. If it does not, also set: ```bash HF_DEFAULT_MODEL_TYPE=d3pm_encoder_decoder HF_DEFAULT_INCLUDE_NEG=false HF_DEFAULT_NUM_STEPS=4 ``` ## Transformer-Style Usage (Custom Runtime) This checkpoint is a custom D3PM architecture (`.pt`), not a native `transformers` `AutoModel` format. Use it via the provided runtime: ```python import torch from config import CONFIG from inference import load_model, run_inference, _decode_clean from model.tokenizer import SanskritSourceTokenizer, SanskritTargetTokenizer device = torch.device("cuda" if torch.cuda.is_available() else "cpu") model, cfg = load_model("best_model.pt", CONFIG, device) src_tok = SanskritSourceTokenizer(vocab_size=16000, max_len=cfg["model"]["max_seq_len"]) tgt_tok = SanskritTargetTokenizer(vocab_size=16000, max_len=cfg["model"]["max_seq_len"]) text = "dharmo rakṣati rakṣitaḥ" ids = torch.tensor([src_tok.encode(text)], dtype=torch.long, device=device) out = run_inference(model, ids, cfg) print(_decode_clean(tgt_tok, out[0].tolist())) ``` If you need full `transformers` compatibility (`AutoModel.from_pretrained`), export weights to a Hugging Face Transformers model format first. ## Endpoint Payload ```json { "inputs": "yadā mano nivarteta viṣayebhyaḥ svabhāvataḥ", "parameters": { "temperature": 0.7, "top_k": 40, "repetition_penalty": 1.2, "diversity_penalty": 0.0, "num_steps": 4, "clean_output": true } } ``` ## Push This Folder To Model Hub ```bash cd hf_model_repo_encoder_decoder git add . git commit -m "Add encoder-decoder T4 model package" git push -u hf main ```