CG数据库 >> MathWorks MATLAB R2017b Linux

Matlab R2017b Linux 版本正式发布!MATLAB 是美国MathWorks公司出品的商业数学软件,用于算法开发、数据可视化、数据分析以及数值计算的高级技术计算语言和交互式环境,主要包括MATLAB和Simulink两大部分。

MATLAB是matrix&laboratory两个词的组合,意为矩阵工厂(矩阵实验室)。

是由美国mathworks公司发布的主要面对科学计算、可视化以及交互式程序设计的高科技计算环境。

它将数值分析、矩阵计算、科学数据可视化以及非线性动态系统的建模和仿真等诸多强大功能集成在一个易于使用的视窗环境中,为科学研究、工程设计以及必须进行有效数值计算的众多科学领域提供了一种全面的解决方案,并在很大程度上摆脱了传统非交互式程序设计语言(如C、Fortran)的编辑模式,代表了当今国际科学计算软件的先进水平。

MATLAB和Mathematica、Maple并称为三大数学软件。

它在数学类科技应用软件中在数值计算方面首屈一指。

MATLAB可以进行矩阵运算、绘制函数和数据、实现算法、创建用户界面、连接其他编程语言的程序等,主要应用于工程计算、控制设计、信号处理与通讯、图像处理、信号检测、金融建模设计与分析等领域。

MATLAB的基本数据单位是矩阵,它的指令表达式与数学、工程中常用的形式十分相似,故用MATLAB来解算问题要比用C,FORTRAN等语言完成相同的事情简捷得多,并且MATLAB也吸收了像Maple等软件的优点,使MATLAB成为一个强大的数学软件。

在新的版本中也加入了对C,FORTRAN,C++,JAVA的支持。

MathWorks MATLAB R2017b Linux | 11.5 GbMathWorks introduced Release 2017b (R2017b), which includes new features in MATLAB and Simulink, six new products, and updates and bug fixes to 86 other products.

The release also adds new important deep learning capabilities that simplify how engineers, researchers, and other domain experts design, train, and deploy models.

Deep Learning SupportSpecific deep learning features, products, and capabilities in R2017b include:- Neural Network Toolbox has added support for complex architectures, including directed acyclic graph (DAG) and long short-term memory (LSTM) networks, and provides access to popular pretrained models such as GoogLeNet.

- The Image Labeler app in Computer Vision System Toolbox now provides a convenient and interactive way to label ground truth data in a sequence of images.

In addition to object detection workflows, the toolbox now also supports semantic segmentation using deep learning to classify pixel regions in images and to evaluate and visualize segmentation results.

- A new product, GPU Coder, automatically converts deep learning models to CUDA code for NVIDIA GPUs.

Internal benchmarks show the generated code for deep learning inference achieves up to 7x better performance than TensorFlow and 4.

5x better performance than Caffe2 for deployed models.

Together with capabilities introduced in R2017a, pretrained models can be used for transfer learning, including convolutional neural networks (CNN) models (AlexNet, VGG-16, and VGG-19), as well as models from Caffe (including Caffe Model Zoo).

Models can be developed from scratch, including using CNNs for image classification, object detection, regression, and more.

Additional UpdatesIn addition to deep learning, R2017b also includes a series of updates in other key areas, including:Data Analytics with MATLAB- A new Text Analytics Toolbox product, extensible datastore, more big data plots and algorithms for machine learning, and Microsoft Azure blob storage supportReal-Time Software Modeling with Simulink- Model scheduling effects and implement pluggable components for software environmentsVerification and Validation with Simulink- New tools for requirements modeling, test coverage analysis, and compliance checkingAbout MATLAB.

MATLAB is a high-performance language for technical computing. It integrates computation, visualization, and programming in an easy-to-use environment where problems and solutions are expressed in familiar mathematical notation. Typical uses include:- Math and computation- Algorithm development- Modeling, simulation, and prototyping- Data analysis, exploration, and visualization- Scientific and engineering graphics- Application development, including Graphical User Interface buildingMATLAB is an interactive system whose basic data element is an array that does not require dimensioning.

This allows you to solve many technical computing problems, especially those with matrix and vector formulations, in a fraction of the time it would take to write a program in a scalar noninteractive language such as C or Fortran.

The name MATLAB stands for matrix laboratory.

MATLAB was originally written to provide easy access to matrix software developed by the LINPACK and EISPACK projects, which together represent the state-of-the-art in software for matrix computation.

MATLAB has evolved over a period of years with input from many users.

In university environments, it is the standard instructional tool for introductory and advanced courses in mathematics, engineering, and science.

In industry, MATLAB is the tool of choice for high-productivity research, development, and analysis.

MATLAB features a family of application-specific solutions called toolboxes.

Very important to most users of MATLAB, toolboxes allow you to learn and apply specialized technology.

Toolboxes are comprehensive collections of MATLAB functions (M-files) that extend the MATLAB environment to solve particular classes of problems.

Areas in which toolboxes are available include signal processing, control systems, neural networks, fuzzy logic, wavelets, simulation, and many others.

About MathWorks.

MathWorks is the leading developer of mathematical computing software.

MATLAB, the language of technical computing, is a programming environment for algorithm development, data analysis, visualization, and numeric computation.

Simulink is a graphical environment for simulation and Model-Based Design for multidomain dynamic and embedded systems.

Engineers and scientists worldwide rely on these product families to accelerate the pace of discovery, innovation, and development in automotive, aerospace, electronics, financial services, biotech-pharmaceutical, and other industries.

MATLAB and Simulink are also fundamental teaching and research tools in the world's universities and learning institutions.

Founded in 1984, MathWorks employs more than 3500 people in 15 countries, with headquarters in Natick, Massachusetts, USA.

Product:MathWorks MATLABVersion:R2017b (version 9.3.0.713579) 2DVDSupported Architectures:x64Language:englishSystem Requirements:LinuxSupported Operating Systems:Ubuntu 14.04 LTS, 16.04 LTS, and 17.04 / Red Hat Enterprise Linux 6 and 7 / SUSE Linux Enterprise Desktop 12 / Debian 8.x, 9.xSize:11.5 Gb


MathWorks MATLAB R2017b Linux的图片1

发布日期: 2017-11-14