Amazon Rekognition vs. TensorFlow

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Amazon Rekognition
Score 9.9 out of 10
N/A
Amazon offers Rekognition, an image and video visual analytics tool that is trained on locating and identifying labeled or tag-related objects, events, people, and also inappropriate content in images and video so that images and video can more safely and reliably be integrated and positioned in web applications or presentations after it conducts its analysis.N/A
TensorFlow
Score 8.1 out of 10
N/A
TensorFlow is an open-source machine learning software library for numerical computation using data flow graphs. It was originally developed by Google.N/A
Pricing
Amazon RekognitionTensorFlow
Editions & Modules
No answers on this topic
No answers on this topic
Offerings
Pricing Offerings
Amazon RekognitionTensorFlow
Free Trial
YesNo
Free/Freemium Version
NoNo
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeOptionalNo setup fee
Additional Details
More Pricing Information
Community Pulse
Amazon RekognitionTensorFlow
Best Alternatives
Amazon RekognitionTensorFlow
Small Businesses
InterSystems IRIS
InterSystems IRIS
Score 7.7 out of 10
InterSystems IRIS
InterSystems IRIS
Score 7.7 out of 10
Medium-sized Companies
Posit
Posit
Score 10.0 out of 10
Posit
Posit
Score 10.0 out of 10
Enterprises
Posit
Posit
Score 10.0 out of 10
Posit
Posit
Score 10.0 out of 10
All AlternativesView all alternativesView all alternatives
User Ratings
Amazon RekognitionTensorFlow
Likelihood to Recommend
9.5
(0 ratings)
6.0
(0 ratings)
Usability
9.5
(0 ratings)
9.0
(0 ratings)
Support Rating
9.5
(0 ratings)
9.1
(0 ratings)
Implementation Rating
-
(0 ratings)
8.0
(0 ratings)
User Testimonials
Amazon RekognitionTensorFlow
Likelihood to Recommend
It is very well suited for image processing and recognition based applications and can be easily used using API calls without actually. writing any code for image processing. It can be used with any professional software development as it is built with so much precision. I would not suggest it for a sole feature-based application like image tagging only because for that you can create your own algorithm specific to a domain you want.
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  1. Whenever the problem has the demand for a neural networks based solution, Tensorflow (TF) is a great fit.
  2. The tf.dataset API makes it really simple to create complex data pipelines in a few lines of code.
  3. tf.estimators API abstracts all the complex computation graph creation logic making it very simple to get started.
  4. Eager execution makes it simple to develop a TF graph as debugging the code would be like any other imperative Python program.
  5. TF abstracts all the complexities of scaling it to multiple machines. It has various code and data distribution algorithms ready to use.
  6. Projects like TensorBoard make monitoring the training process really easy. It also gives the ability to view embeddings without any extra code. Their What-If is extremely useful for poking and understanding a black box model. It also has tools to visualize data to quickly check for anomalies.
  7. TF Autograph aims to covert any normal Python code into a distributed program which is quite handy to scale an existing code base.
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Pros
  • Image tagging is very good.
  • Object detection is precise.
  • Video tagging has become very easy using Rekognition.
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  • Data pipeline implementation is quite good, loading large amounts of data and pre-process it in an efficient way is no more issue for us
  • It supports all major DL algorithms and network layouts such as ConvNets, RNN, LSTMs, Word2Vec, and even the latest transformer architecture
  • The abstraction for the device is perfectly done and its support seamlessly for multiple GPU and even TPU will bring a lot of performance gain for enterprise scoped solution while still keep the flexibility
  • The TensorBoard is amazing. I haven't seen a similar thing in other frameworks on the market. It allows us to quickly understand and debug the model with the info visualization which makes understanding much better
  • A very supportive community, which is the key for sharing the ideas and find the quick and best solutions
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Cons
  • The cost is bit more for small scale companies.
  • For text processing, OCR is not available in amazon rekognition.
  • Only facial search is available in image search.
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  • It would be much better if they could provide good documentation and easy ways to understand concepts.
  • It is difficult to understand the concept behind for example, Tensor Graph, which takes a lot of time.
  • As you have to write everything, it is time consuming to write the implementation of whole neural network. It would be better if they can provide some wrapper library to make things easier.
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Usability
Very much suitable for many applications where the image processing features are secondary and independent of any domain. This makes it a general solution and the recognition features are returned in a JSON object in response to the API called made which is a very simple process.
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Support of multiple components and ease of development.
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Support Rating
Support of Amazon is great. So far we are having a great experience using it.
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Community support for TensorFlow is great. There's a huge community that truly loves the platform and there are many examples of development in TensorFlow. Often, when a new good technique is published, there will be a TensorFlow implementation not long after. This makes it quick to ally the latest techniques from academia straight to production-grade systems. Tooling around TensorFlow is also good. TensorBoard has been such a useful tool, I can't imagine how hard it would be to debug a deep neural network gone wrong without TensorBoard.
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Implementation Rating
No answers on this topic
Use of cloud for better execution power is recommended.
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Alternatives Considered
Accuracy and usability of amazon Rekognition are great. It provides many functionalities its competitors do not. Also, the Amazon service is great in general.
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Can't seem to choose any deep learning platform in the above, so I'll list it here: 1. Apache MXNet: this has been used for one of our main algorithms for search as an end-to-end pipeline. We chose this because of the Scala bindings, which makes it easier to integrate with out JVM backend. MXNet seems comparable to TensorFlow, although community support is not as good as TensorFlow, and there are issues with memory leaks that are being worked on. TensorFlow in general is easier to use, but MXNet isn't too far behind. 2. Keras: still a favorite. Often I use this when paired with TensorFlow. TensorFlow 2.0 will make it even easier. 3. PyTorch: only used it a little, so it's hard to provide a good opinion. 4. DL4J: used it initially in an early days project because it has good JVM support. Harder to used not because of poor API design, but because community support is lacking and features don't come out as fast as TensorFlow.
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Return on Investment
  • The best thing it made our work fast.
  • It reduces the chance of failure of a project which is based on image or video processing.
  • We can assign anyone in our team to work on this as it very easy to use.
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  • Positive Impact- As I mentioned before its open source. Very easy to learn for average programmer/ developer. We were able to design a POC model for understanding the patient appointment cancellation snd reasons behind it in 3 week time frame.
  • Negative Impact- If you are using tensor flow for small project it works fine. If you are trying to build a model for face recognition it will be hard to program and train the system. It needs data to be processed before hand cannot learn on the go.
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