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Posted to commits@tvm.apache.org by GitBox <gi...@apache.org> on 2019/11/14 20:51:10 UTC
[GitHub] [incubator-tvm] yzhliu commented on a change in pull request #4295:
[Relay][Quantize] Integrate data-aware calibration into quantization
yzhliu commented on a change in pull request #4295: [Relay][Quantize] Integrate data-aware calibration into quantization
URL: https://github.com/apache/incubator-tvm/pull/4295#discussion_r346537989
##########
File path: python/tvm/relay/quantize/quantize.py
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@@ -402,23 +304,21 @@ def prerequisite_optimize(graph, params=None):
_transform.FoldConstant()])
if params:
- graph = _bind_params(graph, params)
+ mod['main'] = _bind_params(mod['main'], params)
- mod = _module.Module.from_expr(graph)
- with _transform.PassContext(opt_level=3):
- mod = optimize(mod)
- return mod["main"]
+ mod = optimize(mod)
+ return mod
-def quantize(graph, params=None, dataset=None):
+def quantize(mod, params=None, dataset=None):
""" The quantization procedure. Before running the three main
procedure of quantization, "annotate", "calibrate" and "realize"
, we need to do "SimplifyInference", "FoldScaleAxis", "FoldConstant"
first for optimizing.
Parameters
---------
- graph: Function
+ mod: Function
Review comment:
```suggestion
mod: Module
```
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