Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Keras
Score 7.0 out of 10
N/A
Keras is a Python deep learning libraryN/A
Pytorch
Score 9.3 out of 10
N/A
Pytorch is an open source machine learning (ML) framework boasting a rich ecosystem of tools and libraries that extend PyTorch and support development in computer vision, NLP and or that supports other ML goals.N/A
Segments.ai
Score 8.0 out of 10
N/A
Segments.ai is a multi-sensor labeling platform for robotics and autonomous vehicles. Segments.ai’s labeling platform is used to label across multiple sensors at the same time to improve the quality of all data across the board. Consistent track IDs across modalities and time Multiple sensors can be labeled with just 1 click Fuses information from multiple sensors The solution provides segmentation labels and vector labels with…
$9.60
per year
Pricing
KerasPytorchSegments.ai
Editions & Modules
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Team
$9,600
per year
Scale
Custom pricing
per year
Enterprise
Custom pricing
per year
Offerings
Pricing Offerings
KerasPytorchSegments.ai
Free Trial
NoNoYes
Free/Freemium Version
NoNoNo
Premium Consulting/Integration Services
NoNoYes
Entry-level Setup FeeNo setup feeNo setup feeNo setup fee
Additional Details
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Community Pulse
KerasPytorchSegments.ai
Considered Multiple Products
Keras
Chose Keras
As Keras is the high level API, so using Keras, we don't have to be bothered by the low level TensorFlow complexity, and we can reduce a lot coding and testing efforts.
Pytorch
Chose Pytorch
Pytorch is very, very simple compared to TensorFlow. Simple to install, less dependency issues, and very small learning curve. TensorFlow is very much optimised for robust deployment but very complicated to train simple models and play around with the loss functions. It needs a …
Chose Pytorch
TensorFlow without Keras is not a pleasant experience; when using Keras, it is pretty nice, but it feels more opinionated than PyTorch; one is less free, which is not an issue in industrial settings with classic workflow but can be an issue in research settings. JAX is great …
Chose Pytorch
Saving and loading Machine/Deep Learning models is very easy with Pytorch. It provides visualization capabilities when combined with Tensorboard, and mathematical operations are highly optimized. Easy to understand for a person who is an expert in Python. It takes significantly …
Segments.ai

No answer on this topic

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User Ratings
KerasPytorchSegments.ai
Likelihood to Recommend
8.1
(6 ratings)
9.0
(6 ratings)
-
(0 ratings)
Usability
7.7
(2 ratings)
10.0
(1 ratings)
-
(0 ratings)
Support Rating
8.2
(2 ratings)
-
(0 ratings)
-
(0 ratings)
User Testimonials
KerasPytorchSegments.ai
Likelihood to Recommend
Open Source
Keras is quite perfect, if the aim is to build the standard Deep Learning model, and materialize it to serve the real business use case, while it is not suitable if the purpose is for research and a lot of non-standard try out and customization are required, in that case either directly goes to low level TensorFlow API or Pytorch
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Open Source
They have created Pytorch Lightening on top of Pytorch to make the life of Data Scientists easy so that they can use complex models they need with just a few lines of code, so it's becoming popular. As compared to TensorFlow(Keras), where we can create custom neural networks by just adding layers, it's slightly complicated in Pytorch.
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Segments.ai
No answers on this topic
Pros
Open Source
  • One of the reason to use Keras is that it is easy to use. Implementing neural network is very easy in this, with just one line of code we can add one layer in the neural network with all it's configurations.
  • It provides lot of inbuilt thing like cov2d, conv2D, maxPooling layers. So it makes fast development as you don't need to write everything on your own. It comes with lot of data processing libraries in it like one hot encoder which also makes your development easy and fast.
  • It also provides functionality to develop models on mobile device.
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Open Source
  • flexibility
  • Clean code, close to the algorithm.
  • Fast
  • Handles GPUs, multiple GPUs on a single machine, CPUs, and Mac.
  • Versatile, can work efficiently on text/audio/image/tabular datasets.
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Segments.ai
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Cons
Open Source
  • As it is a kind of wrapper library it won't allow you to modify everything of its backend
  • Unlike other deep learning libraries, it lacks a pre-defined trained model to use
  • Errors thrown are not always very useful for debugging. Sometimes it is difficult to know the root cause just with the logs
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Open Source
  • Since pythonic if developing an app with pytorch as backend the response can be substantially slow and support is less compares to Tensorflow
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Segments.ai
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Usability
Open Source
I am giving this rating depending on my experience so far with Keras, I didn't face any issue far. I would like to recommend it to the new developers.
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Open Source
The big advantage of PyTorch is how close it is to the algorithm. Oftentimes, it is easier to read Pytorch code than a given paper directly. I particularly like the object-oriented approach in model definition; it makes things very clean and easy to teach to software engineers.
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Segments.ai
No answers on this topic
Support Rating
Open Source
Keras have really good support along with the strong community over the internet. So in case you stuck, It won't so hard to get out from it.
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Open Source
No answers on this topic
Segments.ai
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Alternatives Considered
Open Source
Keras is good to develop deep learning models. As compared to TensorFlow, it's easy to write code in Keras. You have more power with TensorFlow but also have a high error rate because you have to configure everything by your own. And as compared to MATLAB, I will always prefer Keras as it is easy and powerful as well.
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Open Source
Pytorch is very, very simple compared to TensorFlow. Simple to install, less dependency issues, and very small learning curve. TensorFlow is very much optimised for robust deployment but very complicated to train simple models and play around with the loss functions. It needs a lot of juggling around with the documentation. The research community also prefers PyTorch, so it becomes easy to find solutions to most of the problems. Keras is very simple and good for learning ML / DL. But when going deep into research or building some product that requires a lot of tweaks and experimentation, Keras is not suitable for that. May be good for proving some hypotheses but not good for rigorous experimentation with complex models.
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Segments.ai
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Return on Investment
Open Source
  • Easy and faster way to develop neural network.
  • It would be much better if it is available in Java.
  • It doesn't allow you to modify the internal things.
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Open Source
  • The ability to make models as never before
  • Being able to control the bias of models was not done before the arrival of Pytorch in our company
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Segments.ai
No answers on this topic
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