Fix several typos in docs.
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@ -14,10 +14,10 @@ initially in CPU memory. Then each of the :math:`G` GPUs obtains a mini-batch of
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along with the current model parameters. Using this mini-batch each GPU then
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along with the current model parameters. Using this mini-batch each GPU then
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computes the gradients for all model parameters and sends these gradients back
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computes the gradients for all model parameters and sends these gradients back
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to the CPU when the GPU is done with its mini-batch. The CPU then asynchronously
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to the CPU when the GPU is done with its mini-batch. The CPU then asynchronously
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updates the model parameters whenever it recieves a set of gradients from a GPU.
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updates the model parameters whenever it receives a set of gradients from a GPU.
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Asynchronous parallel optimization has several advantages and several
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Asynchronous parallel optimization has several advantages and several
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disadvantages. One large advantage is throughput. No GPU will every be waiting
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disadvantages. One large advantage is throughput. No GPU will ever be waiting
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idle. When a GPU is done processing a mini-batch, it can immediately obtain the
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idle. When a GPU is done processing a mini-batch, it can immediately obtain the
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next mini-batch to process. It never has to wait on other GPUs to finish their
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next mini-batch to process. It never has to wait on other GPUs to finish their
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mini-batch. However, this means that the model updates will also be asynchronous
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mini-batch. However, this means that the model updates will also be asynchronous
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@ -63,7 +63,7 @@ advantages of asynchronous and synchronous optimization.
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Hybrid Parallel Optimization
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Hybrid Parallel Optimization
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----------------------------
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----------------------------
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Hybrid parallel optimization combines most of the benifits of asynchronous and
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Hybrid parallel optimization combines most of the benefits of asynchronous and
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synchronous optimization. It allows for multiple GPUs to be used, but does not
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synchronous optimization. It allows for multiple GPUs to be used, but does not
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suffer from the incorrect gradient problem exhibited by asynchronous
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suffer from the incorrect gradient problem exhibited by asynchronous
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optimization.
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optimization.
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@ -86,7 +86,7 @@ to use multiple GPUs in parallel. Furthermore, unlike asynchronous parallel
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optimization, the incorrect gradient problem is not present here. In fact,
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optimization, the incorrect gradient problem is not present here. In fact,
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hybrid parallel optimization performs as if one is working with a single
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hybrid parallel optimization performs as if one is working with a single
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mini-batch which is :math:`G` times the size of a mini-batch handled by a single GPU.
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mini-batch which is :math:`G` times the size of a mini-batch handled by a single GPU.
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Hoewever, hybrid parallel optimization is not perfect. If one GPU is slower than
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However, hybrid parallel optimization is not perfect. If one GPU is slower than
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all the others in completing its mini-batch, all other GPUs will have to sit
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all the others in completing its mini-batch, all other GPUs will have to sit
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idle until this straggler finishes with its mini-batch. This hurts throughput.
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idle until this straggler finishes with its mini-batch. This hurts throughput.
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But, if all GPUs are of the same make and model, this problem should be
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But, if all GPUs are of the same make and model, this problem should be
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@ -99,7 +99,7 @@ synchronous optimization. So, we will, for our work, use this hybrid model.
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Adam Optimization
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Adam Optimization
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-----------------
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-----------------
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In constrast to
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In contrast to
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`Deep Speech: Scaling up end-to-end speech recognition <http://arxiv.org/abs/1412.5567>`_,
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`Deep Speech: Scaling up end-to-end speech recognition <http://arxiv.org/abs/1412.5567>`_,
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in which `Nesterov’s Accelerated Gradient Descent <www.cs.toronto.edu/~fritz/absps/momentum.pdf>`_ was used, we will use the Adam method for optimization `[3] <http://arxiv.org/abs/1412.6980>`_,
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in which `Nesterov’s Accelerated Gradient Descent <www.cs.toronto.edu/~fritz/absps/momentum.pdf>`_ was used, we will use the Adam method for optimization `[3] <http://arxiv.org/abs/1412.6980>`_,
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because, generally, it requires less fine-tuning.
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because, generally, it requires less fine-tuning.
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