Caffe is a deep learning framework made with expression, speed, and modularity in mind. It is developed by Berkeley AI Research and by community contributors.
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Dataiku
Score 7.7 out of 10
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The Dataiku platform unifies all data work, from analytics to Generative AI. It can modernize enterprise analytics and accelerate time to insights with visual, cloud-based tooling for data preparation, visualization, and workflow automation.
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Caffe Deep Learning Framework
Dataiku
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Caffe Deep Learning Framework
Dataiku
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Caffe Deep Learning Framework
Dataiku
Features
Caffe Deep Learning Framework
Dataiku
Platform Connectivity
Comparison of Platform Connectivity features of Product A and Product B
Caffe Deep Learning Framework
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Ratings
Dataiku
9.1
4 Ratings
8% above category average
Connect to Multiple Data Sources
00 Ratings
10.04 Ratings
Extend Existing Data Sources
00 Ratings
10.04 Ratings
Automatic Data Format Detection
00 Ratings
10.04 Ratings
MDM Integration
00 Ratings
6.52 Ratings
Data Exploration
Comparison of Data Exploration features of Product A and Product B
Caffe Deep Learning Framework
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Ratings
Dataiku
10.0
4 Ratings
18% above category average
Visualization
00 Ratings
9.94 Ratings
Interactive Data Analysis
00 Ratings
10.04 Ratings
Data Preparation
Comparison of Data Preparation features of Product A and Product B
Caffe Deep Learning Framework
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Ratings
Dataiku
10.0
4 Ratings
20% above category average
Interactive Data Cleaning and Enrichment
00 Ratings
10.04 Ratings
Data Transformations
00 Ratings
10.04 Ratings
Data Encryption
00 Ratings
10.04 Ratings
Built-in Processors
00 Ratings
10.04 Ratings
Platform Data Modeling
Comparison of Platform Data Modeling features of Product A and Product B
Caffe Deep Learning Framework
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Ratings
Dataiku
8.7
4 Ratings
4% above category average
Multiple Model Development Languages and Tools
00 Ratings
5.14 Ratings
Automated Machine Learning
00 Ratings
10.04 Ratings
Single platform for multiple model development
00 Ratings
10.04 Ratings
Self-Service Model Delivery
00 Ratings
10.04 Ratings
Model Deployment
Comparison of Model Deployment features of Product A and Product B
Caffe is only appropriate for some new beginners who don't want to write any lines of code, just want to use existing models for image recognition, or have some taste of the so-called Deep Learning.
Dataiku DSS is very well suited to handle large datasets and projects which requires a huge team to deliver results. This allows users to collaborate with each other while working on individual tasks. The workflow is easily streamlined and every action is backed up, allowing users to revert to specific tasks whenever required. While Dataiku DSS works seamlessly with all types of projects dealing with structured datasets, I haven't come across projects using Dataiku dealing with images/audio signals. But a workaround would be to store the images as vectors and perform the necessary tasks.
Caffe's model definition - static configuration files are really painful. Maintaining big configuration files with so many parameters and details of many layers can be a really challenging task.
Besides imagine and vision (CNN), Caffe also gradually adds some other NN architecture support. It doesn't play well in a recurrent domain, so we have to say variety is a problem.
Caffe's deployment for production is not easy. The community support and project development all mean it is almost fading out of the market.
The learning curve is quite steep. Although TensorFlow's is not easy to master either, the reward for Caffe is much less than the TensorFlow can offer.
As I have described earlier, the intuitiveness of this tool makes it great as well as the variety of users that can use this tool. Also, the plugins available in their repository provide solutions to various data science problems.
The support team is very helpful, and even when we discover the missing features, after providing enough rational reasons and requirements, they put into it their development pipeline for the future release.
TensorFlow is kind of low-level API most suited for those developers who like to control the details, while Keras provides some kind of high-level API for those users who want to boost their project or experiment by reusing most of the existing architecture or models and the accumulated best practice. However, Caffe isn't like either of them so the position for the user is kind of embarrassing.
Strictly for Data Science operations, Anaconda can be considered as a subset of Dataiku DSS. While Anaconda supports Python and R programming languages, Dataiku also provides this facility, but also provides GUI to creates models with just a click of a button. This provides the flexibility to users who do not wish to alter the model hyperparameters in greater depths. Writing codes to extract meaningful data is time consuming compared to Dataiku's ability to perform feature engineering and data transformation through click of a button.