Increasing model coverage of Tensor MP and Inference Engine.
See original GitHub issue@RezaYazdaniAminabadi Let’s continue the discussion we had in the offline chat here.
First of all I want to refactor the module_injection.py
and inference/engine.py
codes. The current codes consist of too many nested functions, and all logic is contained in one function, so it is a bit complicated. What do you think?
Issue Analytics
- State:
- Created 2 years ago
- Reactions:1
- Comments:19 (18 by maintainers)
Top Results From Across the Web
Questions about implementing model parallelism in the ...
In general, the model parallelism that I can think of is inter-layer model ... Increasing model coverage of Tensor MP and Inference Engine....
Read more >arXiv:1907.01989v1 [cs.LG] 3 Jul 2019
Our primary goal is a fast inference engine with wide coverage for TensorFlow Lite (TFLite) [8]. By leveraging the mobile GPU, a ubiquitous ......
Read more >Quantization — PyTorch 1.13 documentation
A quantized model executes some or all of the operations on tensors with reduced precision rather than full precision (floating point) values. This...
Read more >Design and Evaluation of a New Machine Learning ... - MDPI
Data analysis is the process of inspecting, cleansing and modelling data, ... The Tensor Wrapper is compatible at API level with Tensorflow.js engine;...
Read more >Bayesian Generalized Sparse Symmetric Tensor-on-Vector ...
The over-coverage in SGTM is perhaps due to mild over-fitting which is observed frequently in high-dimensional Bayesian models in presence of small sample...
Read more >Top Related Medium Post
No results found
Top Related StackOverflow Question
No results found
Troubleshoot Live Code
Lightrun enables developers to add logs, metrics and snapshots to live code - no restarts or redeploys required.
Start FreeTop Related Reddit Thread
No results found
Top Related Hackernoon Post
No results found
Top Related Tweet
No results found
Top Related Dev.to Post
No results found
Top Related Hashnode Post
No results found
Top GitHub Comments
I’d be more than happy to assist with translation, though I doubt @hyunwoongko will have issues. Plus I know you’re secretly hiding your Korean skills, @stas00.
We can coordinate a date and time for further discussion and proceed from there? Perhaps a when2meet?
The invite was sent to your naver.com email you emailed me from. Please email me if you haven’t received it.