The new Tensor Flow is a technology launched by Google. It works on object detection API to make it easier for developers and researchers to identify an object within the image. The researcher is working on Google brain team within Google machine intelligence. Google uses for its operations like image search. The company planning new feature from quite few time and finally it is available to open source community. The model being releasing today offers best of simplicity and performance and have regularly used in research.  Detection API comprises streamlined models designed to operate on less sophisticated machines.

Google launched Mobile Nets family of trivial computer vision models. This new paradigm handle task like landmark recognition, landmark recognition, and object detection. The mobile phone does not support the computational resources of larger scale desktop. Models that run on cloud and required internet are known as machine learning models. Whichever service is in high demand, you can get freelance services for the same.

Tensor Flow is also for numerical computation and open source software library using data flow graph. The edge in the graph represents multidimensional data array while nodes in the graph represent mathematical operations. There are two main classes of Tensor Flow data that is graph and checkpoints. Checkpoints contain the saved Tensor values of the variable in a graph whereas graphs describe data flow graphs. Each newly created graph uses new graphDef version. Dropping support for a GraphDef version will only arise for a major release of Tensor Flow. Tensor Flow 1.2 support Graph def versions from 4 to 7. TensorFlow 1.3 could add GraphDef version 8 and support version from 4 to 7. TenFlow 2.0 support only version 8 and drop support for version 4 to 7. Now created the tool that is automatically converting graphs to newer supported GraphDef version.

Tensor Flow works on image factors like Label Detection, Text Detection, Face Detection, Logo Detection, and Safe Search Detection.

Label Detection:-

Label detection of an image is most interesting explanation type. Labels to images are selected among the thousands of category and mapped to official Google knowledge graph. These features add the enhanced semantic analysis, understanding, image classification, and reasoning. Actual detection is performed on the image and advance on the client to extract the set of labels for each single object. Every object that uploaded is considered as an image and lead lower quality results if the image resolution is not high. The label of the image is a string and comes with relevance score and knowledge graph reference. Post Freelance Jobs Online in which you are seeking an expertise.

Text Detection: – In the field of image analysis optical character recognition is not a new problem, but it requires high-resolution images and precise text extraction algorithm. In Google, vision API can recognise multiple languages and will return the detected local together with extracted text. Restful API that only returns a string and its bounding box get encapsulated in Google vision API. The character classification is the easiest and includes many of techniques in the literature

Face Detection: – Face Detection is not simple it includes localizing human faces inside images. It detects only human faces. Face detection does not mean face recognition whereas detection task is the first step in the process of recognizing someone’s face. Image detection includes many techniques such as skin texture analysis, 3D analysis, face position, face orientation, and landmark position.

Tensor Flow 1.0

The Tensor Flow version 1.0 is open source framework for artificial intelligence and also include artificial neural networks which are helping to make interface about new data. Tensor Flow includes traditional machine learning tools support vector machines. It also includes Python based Keras library used Theano deep learning framework. TensorFlow compiler that is XLA compile graph down to assembly languages that fit underlying computing infrastructure.

Tensor Flow version 1.0 supports Python API, and it is now very stable. You can also see the experimental API for Java added. This version also includes high-level API help with constructing convoluted neural networks and loss function operations. Google also says that they include a tf.transform library for data processing with TensorFlow. Tf, transform library avoiding the problem having data in production differ from data used to train underlying model. Google offers cloud machine learning service that potential to run Tensor Flow on Google’s cloud infrastructure.  This version also includes command line debugger.

Features of Tensor Flow 1.0:

Tensor Flow facilitated engineers, artist, student and many others from language translation to detection of skin cancers and also helped to prevent blindness in diabetics. The first Tensor Flow version that is Tensor Flow 1.0 work on Mountain View and lives streamed around the world.  Ask for freelance services of such type on freelancing websites.

Faster: – It is very fast. XLA place the foundation for more performance improvement in the future. Tensor Flow is tuning your models to achieve maximum speed. Tensor Flow 1.0 and its updated models show how to take full speed advantage of Tensor Flow. Tensor flow 1.0 is faster because it includes 7.3xspeedup on 8 GPU for Inception v3 and 58Xspeedup for distributed inception V3 on 64GPU.

Flexible: – Tensor Flow 1.0 include Keras is the high-level neural network library and module provide a high level of compatibility with this version. Tensor Flow introduces high-level API tf.losses, tf.metrics, and tf.layers modules.

More production Ready: – Tensor Flow has different API available in many languages for constructing and executing Tensor Flow graph, but Python API is easiest. The Tensor Flow version 1.0 includes Python API that provides more stability, and it makes easier to add new features without distressing about breaking your existing code. Other language API such as Python, C++, Java, and Go.

Summary:

The article is on Google’s new tool that is Tensor Flow. Tensor Flow is object detection API that detects an object from images. Post Freelance Jobs Online before or during the development process and you can find such freelancers though the skill is niche today. The article also contains the information of versions of Tensor Flow and working of TensorFlow.

Kitty Gupta