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An Open Source Infrastructure for PyTorch
    
  
    
      
	
	
	
	
	
		
		
	
	
		
			
				
					
					                    Abstract
					
						In this talk we’ll go over tools and techniques to deploy PyTorch in production. The PyTorch organization maintains and supports open source tools for efficient inference like pytorch/serve, job management pytorch/torchx and streaming datasets like pytorch/data. This talk will give an overview of the tools we use both internally at Meta and recommend externally for easy MLops that can scale to hundreds of machines.
					 
					
						
					
					
					
										
					
				 
				
			 
		 
	
			
			
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