Artificial intelligence, how can this river and lake be calm?
Pytorch, a new open source deep learning framework, was officially released yesterday. There was a lot of hot talk on Twitter, and all kinds of artificial intelligence experts did not hesitate to say beautiful words: elegant, concise, super powerful, cool... but these are all virtual words. Why did this new Pytorch win praise?
Mainly still the "dynamic" feature.
Recently, a number of "dynamic" deep learning libraries have emerged, such as Chainer, MinPy, DyNet and so on. The benefits of dynamic libraries are obvious, and that is easy to debug and deduct. Matroid founder Reza Zadeh concluded that using the deep learning framework of Pytorch, I want to add a layer to the neural network, and I don't have to reinvent it all.
Someone gave an example on reddit. He used to build RNN (Circular Neural Network) with TensorFlow or Keras framework, but this has to specify the length of the sentence. Each instance must have the same length. Short sentences must be filled. . But if you use a dynamic library, you can handle sentences of almost any length.
The neural module network is ideal for dynamic architectures such as Pytorch. For example, specify a picture and let the artificial intelligence answer: What color is the object on the right side of the kitten in the picture? To solve this problem, including several sub-task modules: first identify the kitten, then find the object on the right side of the kitten, and then identify the specific color.
Of course, Pytorch's new features don't stop there, but it's enough to make AI engineers excited, especially Google's deep learning framework TensorFlow, which doesn't have dynamic features. Moreover, although Pytorch did not make a loud announcement, everyone knows that this deep learning framework belongs to Facebook.
Pytorch, can Facebook help Google challenge Google's dominance in the deep learning framework?
In response to the above question, Dr. Liu Shengping, senior AI technologist and head of NLP, said that the dynamic neural network is a good feature, but at present, Pytorch lacks some key features in the Beta stage, and it is difficult to shake TensorFlow in the short term. status. But he also said that the competition in the framework will continue.
Continuing to discuss this topic, I want to explain again, what is the deep learning framework. The artificial intelligence and deep learning we talked about are systems that rely on software. There are at least two ways to build this system: one is to write the code of the whole neural network step by step from scratch; in addition, it is directly assembled by using the molded module.
The so-called framework is a set of software packages that have been assembled with basic components. You can think of a deep learning framework as a set of blocks, and engineers can use different building blocks to quickly build different buildings. The differences between the various frameworks can be simply understood as the shape of the building blocks provided to the user.
At present, the mainstream deep learning framework is mostly behind different technology giants. The correspondence is as follows:
TensorFlow - Google
MXNet - Amazon
Paddle - Baidu
CNTK - Microsoft
Torch, Caffe - Facebook
In order to take the initiative in the battle for artificial intelligence, these technology giants can only compete fiercely in the field of deep learning framework. And the significance of this competition is also obvious. Whose deep learning framework can win more users, who can build a better ecosystem, and then get more vitality and faster development.
Imagine the meaning of Android to Google.
Frankly speaking, in the field of artificial intelligence, TensorFlow has obvious advantages in the deep learning framework. However, various technology giants have already recruited a large number of artificial intelligence elites. Who said that variables will not happen? Must have hope.
Two days ago, Lu Qi, who had just served as Baidu COO, talked about the artificial intelligence strategy. He also clearly stated that Baidu’s investment in artificial intelligence is not a product of AI, but hopes to build an open platform for Baidu. The technology can be applied to different fields and different enterprises.
Dr. Liu Shengping pointed out that the competition for the entrance and voice of the deep learning platform will become more and more fierce. Even if it is stronger than Google, it is unlikely to swallow a whole piece of cake in one go. For the industry, competition can avoid a single big one. .
However, it is the commercial purpose behind this technological competition to become the basis for ultimately carrying various artificial intelligence applications. Therefore, how can artificial intelligence be a calm river?
Perhaps soon, Pytorch's features will appear in TensorFlow.
First, basic information
Voltage: 24V, which is the standard output voltage of the battery, is suitable for a variety of applications requiring 24V voltage sources.
Technology Type: Lithium iron phosphate battery, known for its high safety, long life and stable performance.
Second, application scenarios
Solar energy storage system: In solar power generation systems, 24V lithium iron phosphate batteries are used as energy storage batteries in conjunction with solar panels to convert solar energy into electricity and store it for home, commercial or industrial applications.
Electric vehicles: including electric vehicles, electric bicycles, electric motorcycles, etc., 24V lithium iron phosphate batteries provide lasting power support for these vehicles.
UPS power supply: In data centers, communication base stations and other places that need uninterruptible power supply, 24V lithium iron phosphate batteries serve as backup power supply for UPS systems to ensure that they can continue to supply power when the mains power is cut off.
Industrial applications: In industrial automation, robotics and other fields, 24V lithium iron phosphate batteries are also widely used to provide stable power support.
Third, performance characteristics
High safety: Lithium iron phosphate material has good thermal stability and chemical stability, so that lithium iron phosphate battery in overcharge, over-discharge, short circuit and other extreme conditions can still maintain a high safety.
Long life: The cycle life of lithium iron phosphate batteries is generally long, which can meet the needs of long-term use.
Stable performance: Lithium iron phosphate batteries exhibit stable voltage and current output during operation, helping to protect electrical equipment from voltage fluctuations. For different in series connection of the lithium battery.
Large capacity: Compared to other types of batteries, lithium iron phosphate batteries usually have a larger capacity and are able to store more electrical energy.
When using 24V lithium iron phosphate batteries, the relevant safe operating procedures and battery instructions should be followed.
Check and maintain the battery regularly to ensure that the battery is in good working condition.
Select proper battery capacity and performance parameters based on specific application scenarios and requirements.
25.6V Lithium battery,24V Lifepo4 battery,24V solar energy system,24V battery energy system
Foshan Keylewatt Technology Co., LTD , https://www.keylewatt.com