{"data":{"id":"baai/bge-base-en-v1.5","name":"BAAI: bge-base-en-v1.5","created":1763431837,"description":"The bge-base-en-v1.5 embedding model converts English sentences and paragraphs into 768-dimensional dense vectors, delivering efficient, high-quality semantic embeddings optimized for retrieval, semantic search, and document-matching workflows. This version (v1.5) features...","architecture":{"tokenizer":"Other","instruct_type":null,"modality":"text->embeddings","input_modalities":["text"],"output_modalities":["embeddings"]},"endpoints":[{"name":"DeepInfra | baai/bge-base-en-v1.5-20251117","model_id":"baai/bge-base-en-v1.5","model_name":"BAAI: bge-base-en-v1.5","context_length":512,"pricing":{"prompt":"0.000000005","completion":"0","discount":0},"provider_name":"DeepInfra","tag":"deepinfra","quantization":"unknown","max_completion_tokens":null,"max_prompt_tokens":null,"supported_parameters":["max_tokens","temperature","top_p","stop","frequency_penalty","presence_penalty","repetition_penalty","top_k","seed","min_p","response_format"],"status":0,"uptime_last_30m":100,"uptime_last_5m":100,"uptime_last_1d":100,"supports_implicit_caching":false,"latency_last_30m":null,"throughput_last_30m":null}]}}