# Remote Operator *author: shiyu*
## Desription Remote triton server.
## Code Example *Run with ops:* ```python from towhee.dc2 import ops c = ops.triton.client(':') res = c('') ``` *Run with pipeline:* ```python from towhee.dc2 import ops, pipe p = (pipe.input('data') .map('data', 'res', ops.triton.client(':')) .output('res')) p('').get() ```
## Factory Constructor Create the operator via the following factory method: ***towhee.remote(uri, mode='infer', model_name='pipeline', protocol='grpc')*** **Parameters:** ***url:*** *str* IP address and port for the triton server, such as ':' and '127.0.0.1:8001'. ***model_name:*** *str* The name of the model to run inference, defaults to 'pipline'.
## Interface **Parameters:** ***data:*** The data to your triton server. **Returns:** Return the results in triton. # More Resources - [Multimodal RAG with Milvus and GPT-4o](https://zilliz.com/event/multimodal-rag-with-milvus-and-gpt-4o): Join us for a webinar for a demo of multimodal RAG with Milvus and GPT-4o - [The Journey to Optimizing Billion-scale Image Search (2/2) - Zilliz blog](https://zilliz.com/blog/optimizing-billion-scale-image-search-milvus-part-2): A case study with UPYUN, part II - [Multimodal RAG with Milvus and GPT-4o](https://zilliz.com/event/multimodal-rag-with-milvus-and-gpt-4o/success): Join us for a webinar for a demo of multimodal RAG with Milvus and GPT-4o - [The GUI for Milvus - Attu](https://zilliz.com/attu): Attu is an all-in-one Milvus administration tool, enabling you to dramatically reduce the DevOps cost of managing Milvus.