TensortPort: The machine learning platform and its classification

Author: Carol Davis

In present scenario, when all the things are being easy then why we deal with large amount of data sets to complete a project. Machine learning concept is derived from the AI field. It is based on the pattern recognition and computational learning.

Machine learning Classification:

  • Supervised learning: It involves the pair to pair relationship between the input and output.
  • Unsupervised learning: In this case, output is dependent upon the dynamic conditions of the input.
  • Reinforcement learning: In this case, software will take actions on the environment in order to increase the output.

Distributed machine learning is the multi node platform. It contains the multiple algorithms and develops a system that helps in improving performance, accuracy and also increases the number of the input data. The concept of the big data has opened the new platforms of distributed learning. Distributed learning systems are hard to design because it requires large level of complexity.

Today there are number of machine learning platforms available. But if you want most sophisticated then the TensorPort is best one can easily help you handle your TensorFlow projects without the hassle of set up of this platform. It is the distributed machine learning platform which is used to improve the performance and even make it easy to handle.

Exciting features of TensorPort:

  • TensorPort is running number of experiment at the highest level. It deals with terabytes of data. It is the platform that deals with multiple parallel computing nodes.
  • The another most important feature of the TensorPort is that there is no chance of losing the data, because it uses GIT and GIT file storage system that helps to store the large volume of data for long period of time. You can access the older uploaded files from the TensorPort as it helps in reproducibility of the data.
  • The next exciting feature is the collaborations. It helps to collaborate with the other machine level projects. It helps to invite the other machine learning teams, share projects with others and grant permissions to other machine learning teams.
  • Another feature is that it is not easy to use but it has the required level of flexibility which can handle larger projects of any space.
  • The next one is that it has different subscription level. One can choose level of support according to their convenience
  • It’s the effortless platform. It is developed and designed By AI researchers and there is no need of the extra efforts.
  • It integrates the various work flow tools like tensor board, notifications etc

TensorPort is the great machine learning platform and it is completely ideal to the needs of machine learning teams. If you really want to streamline your distributed TensorFlow projects quickly and efficiently then make sure you use TensorPort.