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User Interface
Sherlock edited this page Mar 12, 2021
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- Read inference_session.h to get familiar with the common interface functions,
Following are the important ones for training
- Load()
- Run()
- NewIOBinding()
- RegisterGraphTransformer()
- RegisterExecutionProvider()
- Advance: Initialize()
- What happens under the hood when we call session.initalize()?
- Understand the configs in SessionOptions (session_option.h)
Followings are important ones for training
- execution_order
- enable_mem_pattern
- use_deterministic_compute
- session_log_severity_level
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Prerequisite: What is an ORTValue? (ml_value.h)
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BindInput()
- How to create an ORTValue?
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BindOutput()
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With preallocated buffer
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Without preallocated buffer
- Who allocates the output buffer? and How is this returned back to user?
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What should be the lifespan of an IOBinding? Can user reuse IOBinding accross multiple Session::Run()?
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How is binded inputs/outputs passed into ExecutionFrame?
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Advance: How is IOBinding different from dlpack's approach? What are their advantages?
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Read training_agent.h to understand the available interface functions
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Understand how ORTModule uses TrainingAgent
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Read ORTModule forward() and backward() function
- How does ORTModule get an ONNX graph from torch nn.module?
- How is ORT doing the auto-diff without torch's autograd engine?
- How is ORT hijacking torch's foward/backward call?
- How's C++ InferenceSession used as python's onnxruntime.InferenceSession?
- Read onnxruntime_pybind_state.cc, onnxruntime_inference_collection.py for InferenceSession binding
- Read orttraining_pybind_state.cc for TrainingAgent binding
Please use the learning roadmap on the home wiki page for building general understanding of ORT.