Comments (8)
通过基于模型裁剪工具 https://github.com/hong19860320/PaddleInference-generic-demo/blob/develop/tools/model_utilities/split_model.py 和二分法裁剪模型方法,定位到这个算子有点问题,可能 Paddle 主框架调整了该算子定义,Paddle Lite 暂时没有适配导致的。
from paddle-lite.
您可以试试拉develop最新分支编译运行,这边试过是能跑通的~
from paddle-lite.
已收到您的issue,等内部同学看一下
from paddle-lite.
您的log里没有看到报错诶,方便贴一下带报错的部分吗
from paddle-lite.
设置export GLOG_v=9
只有一段 Segmentation fault (core dumped)
from paddle-lite.
试试把右边的x直接reshape到[1, 256, 14, 14]看看
from paddle-lite.
我将is_repped改成False得到的网络结构:
模型文件连接:
inference12.zip
但是在opt执行依旧提示
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] depthwise_conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] depthwise_conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] depthwise_conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] depthwise_conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] depthwise_conv2d
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
[6 4/14 6:45: 1.194 ...ite/lite/core/optimizer/mir/ssa_graph.cc:30 CheckBidirectionalConnection] fusion_elementwise_add_activation
Segmentation fault (core dumped)
error.log
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感谢用develop验证了没有问题
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from paddle-lite.