Thursday, November 30, 2023

💥💥💥 How to learn TensorFlow?



  • Python: Before you even start studying TensorFlow, you should be familiar with the Python programming language. Python is the most widely used language for TensorFlow, and it offers many libraries and tools for data analysis, visualization, and manipulation. You can learn Python from various online courses, books, or tutorials, such as Learn Python or Python for Everybody.
  • Foundations of Neural Networks: Since TensorFlow is a deep learning framework, it helps a lot to have a conceptual understanding of neural networks. Neural networks are composed of layers of artificial neurons that can learn from data and perform various tasks, such as classification, regression, generation, and more. You can learn the basics of neural networks from courses, books, or videos, such as Neural Networks and Deep Learning or 3Blue1Brown’s Neural Networks playlist.
  • Building Models with the Keras Sequential API: Keras is a high-level API that makes it easy to build and train models in TensorFlow. The Keras Sequential API allows you to create models by stacking layers in a linear fashion. You can learn how to use the Keras Sequential API from the official [TensorFlow tutorials], such as [TensorFlow 2 quickstart for beginners] or [Image classification].
  • Data Preprocessing: Data preprocessing is an essential step in any machine learning project. It involves transforming, cleaning, and augmenting the data to make it suitable for the model. TensorFlow offers multiple data tools to help you load, manipulate, and visualize data, such as tf.data, tf.io, tf.image, and more. You can learn how to use these tools from the official [TensorFlow guides], such as [Load and preprocess data] or [Data augmentation].
  • Keras Functional API, DataTypes, and Arithmetic Operators: The Keras Functional API is another way to create models in TensorFlow. It allows you to create more complex and flexible models that can have multiple inputs, outputs, or branches. You can learn how to use the Keras Functional API from the official [TensorFlow tutorials], such as [Multi-input and multi-output models] or [Siamese network with a triplet loss]. Additionally, you should also be familiar with the basic data types and arithmetic operators in TensorFlow, such as tensors, variables, constants, gradients, and more. You can learn these concepts from the official [TensorFlow guides], such as [Introduction to tensors] or [Introduction to gradients and automatic differentiation].
  • Advanced Topics: Once you have mastered the basics of TensorFlow, you can explore more advanced topics, such as distributed training, custom layers, custom training loops, model optimization, model deployment, and more. You can learn these topics from the official [TensorFlow tutorials] and [TensorFlow guides], as well as from other sources, such as [TensorFlow Hub], [TensorFlow Model Garden], [TensorFlow Probability], [TensorFlow Federated], and more. You can also find many examples of state-of-the-art research models implemented in TensorFlow, such as [Transformers], [GANs], [BERT], and more.

How do I install TensorFlow on my computer?

There are different ways to install TensorFlow on your computer, depending on your operating system, your hardware, and your preferences. Here are some possible options:

  • Install TensorFlow with pip: This is the easiest and most common way to install TensorFlow. You can use the pip package manager to install TensorFlow and its dependencies. You can choose between the CPU-only version or the GPU version of TensorFlow, depending on whether you have a CUDA-enabled GPU card or not. To install TensorFlow with pip, you need to have Python 3.9–3.11, pip version 19.0 or higher for Linux and Windows, or pip version 20.3 or higher for macOS. You can follow the official TensorFlow tutorials or TensorFlow guides for detailed instructions on how to install TensorFlow with pip for different operating systems and environments.
  • Run a TensorFlow container: This is another easy way to use TensorFlow without having to install it on your system. You can use Docker to run a TensorFlow container that is already configured to run TensorFlow. You can choose between the CPU-only version or the GPU version of TensorFlow, depending on whether you have a CUDA-enabled GPU card or not. To run a TensorFlow container, you need to have Docker installed on your system. You can follow the official Docker install guide for detailed instructions on how to run a TensorFlow container for different operating systems and environments.
  • Build from source: This is a more advanced and customized way to install TensorFlow. You can build TensorFlow from source code and specify the options and features you want. You can also enable support for different hardware and software configurations, such as CUDA, TensorRT, MKL, etc. To build TensorFlow from source, you need to have Bazel, MSYS2, Visual C++ Build Tools 2019, and other dependencies installed on your system. You can follow the official TensorFlow source guide for detailed instructions on how to build TensorFlow from source for different operating systems and environments.

What is the difference between TensorFlow 1 and TensorFlow 2?

The difference between TensorFlow 1 and TensorFlow 2 is a common question among machine learning enthusiasts and developers. TensorFlow is a popular open-source framework for machine learning and deep learning, developed by Google. TensorFlow 1 was released in 2017, and TensorFlow 2 was released in 2019. Here are some of the main differences between the two versions:

  • Eager execution: TensorFlow 2 enables eager execution by default, which means that the code is executed immediately as it is written, without creating a static graph first. This makes debugging and prototyping easier and more intuitive. TensorFlow 1 requires explicit graph creation and session management, which can be cumbersome and error-prone. However, TensorFlow 1 also supports eager execution as an experimental feature, and TensorFlow 2 also supports graph mode via the tf.function decorator, which can improve performance and portability.
  • Keras integration: TensorFlow 2 adopts Keras as the high-level API for building and training models, making it more user-friendly and consistent. Keras is a widely used and well-documented framework that simplifies common tasks such as data preprocessing, model construction, regularization, and evaluation. TensorFlow 1 also supports Keras, but as a separate package that is not fully integrated with the core TensorFlow APIs.
  • API cleanup: TensorFlow 2 removes or deprecates many redundant, inconsistent, or low-level APIs from TensorFlow 1, making it more concise and coherent. For example, TensorFlow 2 removes tf.app, tf.flags, and tf.logging in favor of the absl-py library, rehomes projects that lived in tf.contrib, and moves lesser used functions into subpackages like tf.math. TensorFlow 2 also replaces some APIs with their updated equivalents, such as tf.summary, tf.keras.metrics, and tf.keras.optimizers.
  • Distributed training: TensorFlow 2 simplifies the process of distributed training, which allows you to leverage multiple devices or machines to speed up your model training and inference. TensorFlow 2 provides the tf.distribute API, which abstracts away the details of distribution strategies and offers a consistent interface for single or multiple GPUs, TPUs, or CPUs. TensorFlow 1 also supports distributed training, but with more complex and lower-level APIs, such as tf.distribute.ClusterSpec, tf.distribute.Server, and tf.distribute.Strategy.

These are some of the major differences between TensorFlow 1 and TensorFlow 2. If you want to learn more, you can check out the official TensorFlow tutorials or TensorFlow guides, or some of the web search results I found for you, such as TensorFlow 1.x vs TensorFlow 2 - Behaviors and APIs, Tensorflow 1.0 vs. Tensorflow 2.0: What’s the Difference?, or TensorFlow vs TensorFlow 2: Which is Better?. I hope this helps you understand the difference between TensorFlow 1 and TensorFlow 2. 

Can You recommend a good learning resources about TensorFlow ?

Sure, I can recommend some good learning resources about TensorFlow. TensorFlow is a popular open-source framework for machine learning and deep learning, developed by Google. It allows you to build, train, and deploy models using various languages, such as Python, JavaScript, Swift, and more. If you want to learn TensorFlow, here are some possible resources you can check out:

  • TensorFlow and Keras Official Tutorials: These are the official tutorials from the TensorFlow website, which cover the basics and advanced topics of TensorFlow and Keras, the high-level API for building and training models. You can learn how to use TensorFlow for different tasks, such as image classification, natural language processing, data augmentation, distributed training, and more. You can also find examples of code and interactive notebooks that you can run and modify. You can access the TensorFlow tutorials here and the Keras tutorials here.
  • TensorFlow Developer Professional Certificate by Coursera: This is a four-course specialization offered by Coursera, which teaches you how to use TensorFlow for artificial intelligence, machine learning, and deep learning. You will learn the foundations of neural networks, convolutions, natural language processing, and generative models. You will also work on real-world projects and datasets, such as fashion MNIST, IMDB reviews, Shakespeare texts, and more. You can also earn an official certification from TensorFlow after completing the specialization. You can enroll in the TensorFlow Developer Professional Certificate here.
  • Video Tutorials on YouTube Channels: There are many YouTube channels that offer video tutorials on TensorFlow, which can be helpful if you prefer to learn by watching and listening. Some of the popular channels are TensorFlow, sentdex, deeplizard, and freeCodeCamp.org. You can find many videos on different topics, such as TensorFlow basics, TensorFlow 2.0, TensorFlow.js, TensorFlow Lite, and more. You can also follow along with the code and exercises. You can browse the TensorFlow YouTube channel here and the other channels here, [here], and [here].
  • Introduction to Deep Learning from MIT: This is an online course from MIT, which introduces you to the concepts and applications of deep learning. You will learn how to use TensorFlow and Keras to implement various types of neural networks, such as feedforward, convolutional, recurrent, and generative. You will also learn how to use TensorFlow for computer vision, natural language processing, reinforcement learning, and more. You can access the course materials, videos, and assignments [here].
  • Book: Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: This is a book by Aurélien Géron, which teaches you how to use TensorFlow and other frameworks to create machine learning and deep learning models. You will learn the theory and practice of machine learning, from data preprocessing, model selection, evaluation, to deployment. You will also learn how to use TensorFlow for various tasks, such as regression, classification, clustering, dimensionality reduction, and more. You can buy the book [here] or read it online [here].

Tuesday, November 28, 2023

💥💥💥 What is Simit (simulation platform) from Siemens ?

 Simit is a simulation platform developed by Siemens that enables comprehensive tests of automation applications and offers realistic training environments for operators before real systems go into operation1. Simit can be used for different industries, such as chemical, pharmaceutical, automotive, and energy2. Simit can help reduce commissioning time, shorten time-to-market, optimize processes, and retain know-how12. Simit is also compatible with other Siemens products, such as SIMATIC PCS 7, SIMATIC WinCC, and TIA Portal1. Simit is described as the “holy grail” of simulation platforms by some experts3.

What are some features of Simit?

Can I use Simit for free ?

According to the web search results, Simit is not a free software. You need to purchase a license for your needs on the following page: New licensing model for Simit. However, you can use a 14-day trial license after installation and first opening of the software1. This means you have 14 days to test the software at your leisure. If you like it, you can buy a license from the Siemens Industry Mall2

Can I connect Simit with Ansys ?

There is a possibility to connect Simit with Ansys. Ansys is a software suite that offers engineering simulation solutions for various fields, such as structural, fluid, thermal, and electromagnetic analysis1. Simit is a simulation platform that enables comprehensive tests of automation applications and offers realistic training environments for operators before real systems go into operation2. Simit can be used for different industries, such as chemical, pharmaceutical, automotive, and energy3.

One way to connect Simit with Ansys is to use the SIMIT Component Type Editor, which allows users to create custom component types and integrate them into the Simit simulation framework4. The Component Type Editor supports different engineering methods, such as logic matrix, SFC calculations, and selective download3. The Component Type Editor also enables users to import and export component types in XML format4.

Another way to connect Simit with Ansys is to use the SIMIT Simulation Framework, which allows users to connect I/O signals with Simit simulation models5. The SIMIT Simulation Framework can be used to create and run simulation scenarios, as well as to monitor and control the simulation process6. The SIMIT Simulation Framework also supports different communication protocols, such as OPC UA, OPC DA, and TCP/IP6.

Can I export my simulation from Ansys Fluent to Simit?

According to the web search results, there is no direct way to export a simulation from Ansys Fluent to Simit. Ansys Fluent is a software that offers computational fluid dynamics (CFD) solutions for various applications, such as aerodynamics, combustion, heat transfer, and multiphase flow1. Simit is a simulation platform that enables comprehensive tests of automation applications and offers realistic training environments for operators before real systems go into operation2. Simit can be used for different industries, such as chemical, pharmaceutical, automotive, and energy3.

However, there are some possible ways to export data from Ansys Fluent and import it into Simit. One way is to use the execute commands feature in Ansys Fluent, which allows users to run text user interface (TUI) commands at specified intervals during a simulation4. The TUI commands can be used to display and save plots, contours, vectors, pathlines, etc. in various formats, such as ASCII, CSV, or JPEG4. These files can then be imported into Simit using the component type editor, which allows users to create custom component types and integrate them into the Simit simulation framework5. The component type editor supports different engineering methods, such as logic matrix, SFC calculations, and selective download3. The component type editor also enables users to import and export component types in XML format5.

Another way is to use the solution animation feature in Ansys Fluent, which allows users to create and save animations of the simulation results in various formats, such as AVI, MPEG, or WMV. These files can then be imported into Simit using the simulation framework, which allows users to connect I/O signals with Simit simulation models. The simulation framework can be used to create and run simulation scenarios, as well as to monitor and control the simulation process. The simulation framework also supports different communication protocols, such as OPC UA, OPC DA, and TCP/IP.

How do I connect Simit with Ansys Fluent?

To connect Simit with Ansys Fluent, you need to use the Simit Component Type Editor and the Simit Simulation Framework. These are tools that allow you to create custom component types and integrate them into the Simit simulation framework, as well as to connect I/O signals with Simit simulation models1. You can also use the execute commands feature and the solution animation feature in Ansys Fluent to export data and animations from your CFD simulations and import them into Simit2.

Here are the steps to connect Simit with Ansys Fluent:

What are alternatives for Simit ?

Some of the alternatives for Simit simulation platform are:

What are benefits of using Simit with Ansys Fluent  ?

Monday, November 27, 2023

💥💥💥 What are the best and easy use open source CAE systems available on Linux?

 There are many open source CAE systems available on Linux, but the best and easy to use ones may depend on your specific needs and preferences. However, based on the web search results, some of the most popular and comprehensive ones are:

- CAELinux: an open source LiveDVD Linux distribution dedicated to computer aided engineering, scientific simulation, finite element analysis and computational fluid dynamics (CAE / FEA / CFD) ¹. It offers a complete platform for open source engineering development with CAD, CAM, CAE, FEA, CFD, electronic design, scientific computing, programming and mathematical modelling tools ¹. It is based on Xubuntu 18.04 LTS 64 bit and can run directly from a USB flash drive without any installation ¹. Some of the software included in CAELinux are Salome, Freecad, OpenSCAD, LibreCAD, PyCAM, Camotics, dxf2gcode, Cura, Salome-Meca, Code-Aster, Code-Saturne, OpenFOAM, Elmer, Calculix and more ¹⁴.

- FEniCS Project: a software package developed by American and European researchers with the goal to enable automated solution of differential equations ². It is written in C++ and Python and supports all widely used finite element types, serial and parallel meshes, and h and hp adaptivity ². It can be used for multiphysics simulations involving fluid flow, heat transfer, elasticity, electromagnetics, acoustics, etc. ². It is available for Linux, Unix, Mac OS X and Windows ².

- FreeFEM: a free and open-source parallel FEA software for multiphysics simulations ³. The problems are defined in terms of their variational formulation and can be easily implemented using FreeFEM language ³. It is written in C++ and supports various types of meshes, solvers, preconditioners, discretizations, etc. ³. It can handle problems involving fluid mechanics, solid mechanics, electromagnetism, heat transfer, etc. ³. It is available for Linux, MacOS, Windows and Solaris ³.

These are some of the best and easy to use open source CAE systems available on Linux, but there are many others that you can explore and compare. I hope this helps you find the right one for your needs. 😊

Source: 

(1) CAELinux - Home. http://www.caelinux.com/CMS3/.

(2) CAELinux - Home. https://caelinux.com/.

(3) . https://bing.com/search?q=open+source+CAE+systems+Linux.

(4) List of finite element software packages - Wikipedia. https://en.wikipedia.org/wiki/List_of_finite_element_software_packages.

(5) CAELinux - Download. http://www.caelinux.com/CMS3/index.php/download.

(6) http://www.oscae.org/.

(7) http://www.caelinux.com/CMS3/index.php/download/62-caelinux-2020.

MORE INFO ABOUT CAELINUX 

Is CAELinux still developed ?

According to the web search results, CAELinux is still being developed, but it faces some challenges due to the increasing size and complexity of the software packages and the base distribution. The latest release of CAELinux is CAELinux 2020, which is based on Xubuntu 18.04 and was published in January 2019 ². The developer of CAELinux, Joël Cugnoni, has posted a request for feedback on the CAELinux forum in March 2021, asking for suggestions on how to improve the next release of CAELinux ¹. He has proposed some possible options, such as switching to a lighter distribution, developing a CAE software center app, or creating a lightweight and a full version of CAELinux ¹. However, there is no official announcement or confirmation on the development status of CAELinux 2022 or later. If you are interested in CAELinux, you can download the latest version from the official website ⁴ or join the forum discussion ¹ to share your ideas and feedback. 😊

Source: 

(1) CAELinux - Home. http://www.caelinux.com/CMS3/.

(2) Development of a new 2022 release or else? - CAELinux. https://www.caelinux.com/CMS3/index.php/forum/2-general/9864-request-for-feedback-development-of-a-new-2022-release-or-else.

(3) CAELinux - Download. https://caelinux.com/CMS3/index.php/download.

(4) CAELinux - Home. https://caelinux.com/.


CAELinux is a Linux distribution that is specially designed for computer aided engineering (CAE) applications. It is based on Xubuntu, a lightweight and user-friendly version of Ubuntu, and contains a large number of open source software packages for CAD, CAM, CAE, FEA, CFD, electronic design, scientific computing, programming and mathematical modelling. CAELinux can run directly from a USB flash drive without any installation, or it can be installed to a hard disk for better performance. It can also run in a virtual machine using software like VMWare Player or VirtualBox. CAELinux is updated regularly with new versions of the software and the base distribution, and it can be safely updated as any other Ubuntu install. However, it is not recommended to upgrade to Ubuntu 20.04, as it may break some custom packages.


Some of the software included in CAELinux are:

- Salome: a software platform for pre- and post-processing of numerical simulations. It provides an integrated environment for geometry modelling, mesh generation, data analysis and visualization. It can also be used as a graphical user interface for various solvers, such as Code-Aster, Code-Saturne, OpenFOAM, Elmer and Calculix ¹.

- Freecad: a parametric 3D CAD modeler that can create and modify complex solid models using a sketch-based approach. It supports various types of modelling, such as mechanical engineering, architecture, product design and 3D printing. It can also perform finite element analysis, computational fluid dynamics, and export models to various formats ².

- OpenSCAD: a software for creating solid 3D models using a script-based approach. It is mainly used for designing parametric parts, such as gears, screws, nuts, etc. It can also import and export models in various formats, such as STL, DXF, SVG, etc. ³.

- LibreCAD: a 2D CAD application that can create and edit technical drawings, such as floor plans, schematics, diagrams, etc. It supports various file formats, such as DXF, SVG, PDF, etc. It also has a large library of standard parts and symbols ⁴.

- PyCAM: a tool for generating toolpaths and G-code for 3D milling, engraving and cutting. It can import models in STL, DXF and SVG formats, and export G-code in various formats, such as EMC2, Mach3, RepRap, etc. It also has a simulation mode that can preview the machining process ⁵.

- Camotics: a tool for simulating 3-axis CNC milling and engraving. It can load G-code files and display the resulting toolpaths and workpiece. It can also estimate the machining time, material removal rate, and cutting forces ⁶.

- dxf2gcode: a tool for converting 2D DXF drawings to G-code for CNC machines. It can handle various types of entities, such as lines, arcs, circles, etc. It also has a graphical user interface that can preview and edit the G-code ⁷.

- Cura: a tool for slicing 3D models and generating G-code for 3D printing. It supports various types of printers, materials, and settings. It also has a graphical user interface that can preview and modify the print .

- Salome-Meca: a software package that integrates Salome and Code-Aster, a powerful finite element solver for structural mechanics, thermal, acoustics, fluid-structure interaction, and other multiphysics problems. It provides a graphical user interface for setting up, running and post-processing Code-Aster simulations .

- Code-Aster: a finite element solver that can handle various types of problems, such as linear and nonlinear mechanics, thermics, acoustics, fluid-structure interaction, contact, fracture, fatigue, etc. It has a large library of elements, materials, models, and algorithms. It can also be coupled with other solvers, such as Code-Saturne, OpenFOAM, etc. .

- Code-Saturne: a finite volume solver for computational fluid dynamics. It can handle various types of flows, such as incompressible, compressible, multiphase, reactive, etc. It has a modular architecture that allows for easy customization and extension. It can also be coupled with other solvers, such as Code-Aster, OpenFOAM, etc. .

- OpenFOAM: a finite volume solver for computational fluid dynamics. It can handle various types of flows, such as incompressible, compressible, multiphase, reactive, etc. It has a large library of models, solvers, and utilities. It can also be coupled with other solvers, such as Code-Aster, Code-Saturne, etc. .

- Elmer: a finite element solver for multiphysics problems. It can handle various types of physics, such as fluid dynamics, heat transfer, electromagnetics, elasticity, etc. It has a modular structure that allows for easy coupling and extension. It also has a graphical user interface for setting up, running and post-processing simulations .

- Calculix: a finite element solver for structural mechanics, heat transfer, and fluid dynamics. It can handle various types of elements, materials, models, and algorithms. It also has a graphical user interface for pre- and post-processing, as well as a launcher and a CAE GUI for setting up and running simulations .

- KiCad: a software suite for electronic design automation. It can create and edit schematic diagrams, printed circuit boards, and 3D models of electronic components. It supports various file formats, such as Gerber, DXF, SVG, etc. It also has a large library of standard parts and symbols .

- Arduino: a software and hardware platform for creating and programming microcontroller-based electronic devices. It consists of a development board, an integrated development environment, and a programming language. It can be used for various applications, such as robotics, sensors, actuators, etc. .

- Flatcam: a tool for creating toolpaths and G-code for isolation milling of printed circuit boards. It can import Gerber and Excellon files and export G-code in various formats, such as EMC2, Mach3, RepRap, etc. It also has a graphical user interface that can preview and edit the toolpaths .

These are some of the software included in CAELinux, but there are many others that you can explore and compare. I hope this gives you a better idea of what CAELinux can offer you. 😊

Source: 

(1) Xubuntu Based CAELinux 2020 Released for Dedicated Simulation Works. https://www.debugpoint.com/caelinux-2020-release/.

(2) . https://bing.com/search?q=CAELinux+software+list.

(3) CAELinux - Home. https://caelinux.com/.

(4) CAELinux - CAELinux 2020. http://www.caelinux.com/CMS3/index.php/download/62-caelinux-2020.

(5)https://distrowatch.com/cae.

(6) https://www.electronicsforu.com/buyers-guides/software-buyers-guide/caelinux-distribution-open-source-engineering-tools.

(7) http://caelinux.org/wiki/index.php/Main_Page.

What is the difference between FreeCAD and OpenSCAD?

FreeCAD and OpenSCAD are both open source CAD software, but they have very different approaches to 3D modelling. FreeCAD is a parametric 3D modeler that uses a sketch-based approach, while OpenSCAD is a script-based modeler that uses a programming language. Here are some of the main differences between them:

- User interface: FreeCAD has a graphical user interface that resembles other commercial CAD software, such as SolidWorks or AutoCAD. It has various workbenches that provide different tools and functions for different tasks, such as Part Design, Draft, Mesh, FEM, etc. OpenSCAD has a non-traditional user interface that consists of a text editor and a 3D preview window. The user has to write code in a custom language to create and modify 3D models, and the preview window only shows the result of the code ¹².

- Modelling method: FreeCAD uses a parametric modelling method, which means that the user can create and edit 3D models by defining sketches, constraints, features, and parameters. The user can also modify the model history and change the parameters at any time. OpenSCAD uses a constructive solid geometry (CSG) method, which means that the user can create and edit 3D models by combining primitive shapes, such as cubes, spheres, cylinders, etc., using boolean operations, such as union, difference, and intersection. The user can also use variables, functions, and loops to create complex shapes ¹².

- Modelling flexibility: FreeCAD offers more modelling flexibility than OpenSCAD, as it supports various types of modelling, such as mechanical engineering, architecture, product design, and 3D printing. It also supports various types of meshes, solvers, and file formats. OpenSCAD is more limited in its modelling capabilities, as it only supports solid modelling and does not support meshes, solvers, or file formats other than STL, DXF, and SVG ¹².

- Modelling precision: OpenSCAD offers more modelling precision than FreeCAD, as it allows the user to define the exact dimensions and coordinates of the shapes using code. It also allows the user to use algorithms and mathematical expressions to create complex and accurate shapes. FreeCAD relies more on the user's graphical input and mouse movements, which can introduce errors and inaccuracies. It also has some issues with rounding errors and tolerance settings ¹².

- Learning curve: FreeCAD has a steeper learning curve than OpenSCAD, as it has a complex and crowded user interface, a large number of tools and functions, and a different workflow for each workbench. The user has to learn how to use the sketcher, the constraints, the features, and the parameters, as well as how to switch between workbenches and modes. OpenSCAD has a simpler and more consistent user interface, a smaller number of tools and functions, and a single workflow for all models. The user only has to learn how to write code in the OpenSCAD language, which is similar to C or Python ¹².

These are some of the main differences between FreeCAD and OpenSCAD, but there are also some similarities and advantages that they share. For example, they are both free and open source, which means that they are constantly updated and improved by the community. They also both have a large and active user base, which means that they have a lot of documentation, tutorials, forums, and support available. They also both have a modular and extensible architecture, which means that they can be customized and enhanced by adding plugins, modules, libraries, and scripts ¹²³⁴..

Source:

(1) OpenSCAD vs FreeCAD: The Differences | All3DP. https://all3dp.com/2/openscad-vs-freecad-cad-software-compared/.

(2) FreeCAD Vs. OpenSCAD: Pros & Cons of Each Software - 3D Printing Spot. https://www.3dprintingspot.com/post/freecad-vs-openscad-pros-cons-of-each-software.

(3) OpenSCAD vs FreeCAD - Software Comparison | Xometry. https://www.xometry.com/resources/3d-printing/openscad-vs-freecad/.

(4) Compare FreeCAD vs. OpenSCAD | G2. https://www.g2.com/compare/freecad-vs-openscad.

(5) en.wikipedia.org. https://en.wikipedia.org/wiki/OpenSCAD.

Sunday, November 26, 2023

💥💥💥 What are capabilities of Twin Builder in Ansys ?

 Twin Builder in Ansys is a software that allows you to create and deploy simulation-based digital twin models. A digital twin is a connected, virtual replica of an in-service physical asset that mirrors its real-world behavior and performance. With Twin Builder, you can:

- Build, validate, deploy and scale digital twins using Ansys systems-level simulation know-how¹

- Integrate real-world data from sensors and other sources into your digital twin models¹

- Increase efficiency, optimize performance, and reduce maintenance costs with digital twins¹

- Use hybrid analytics to combine machine learning and physics-based approaches for more accurate predictive analytics¹

- Leverage Ansys solvers and reduced-order model (ROM) technology to speed up simulation time and improve accuracy³

- Deploy your digital twins on various Internet of Things (IoT) platforms with Twin Deployer³

- Access a web-based standalone ROM viewer and a new fuel cell and thermal power library³

Source: 

(1) Digital Twin Simulation-Based Software | Ansys. https://www.ansys.com/products/digital-twin.

(2) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(3) Digital Twin Simulation-Based Software | Ansys. https://www.ansys.com/products/digital-twin.

(4) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(5) Ansys Twin Builder Software | Simulation-Based Digital Twin Models. https://wildeanalysis.co.uk/software/design-simulation/ansys/platform/twin-builder/.

(6) https://www.ansys.com/blog/three-key-enhancements-in-the-new-release-of-ansys-twin-builder.

(7) . https://bing.com/search?q=Twin+Builder+in+Ansys+capabilities.

Can you give me an example of a digital twin model created using Twin Builder?

Sure, I can give you an example of a digital twin model created using Twin Builder. One example is a digital twin of the Golden Gate Bridge, which was created by Ozen Engineering using Ansys Twin Builder³. The digital twin model simulates the structural response of the bridge under various wind and traffic conditions, and uses real-time data from sensors installed on the bridge to update the model parameters and validate the simulation results³. The digital twin model can help monitor the bridge's health and performance, and optimize its maintenance and operation³.

Another example is a digital twin of a battery system, which was created by Ansys using Twin Builder and other Ansys tools⁴. The digital twin model combines electrical, thermal, and fluid dynamics simulations to capture the multiphysics behavior of the battery system under different operating conditions⁴. The digital twin model also uses reduced order models (ROMs) to speed up the simulation time and improve the accuracy⁴. The digital twin model can help design and optimize the battery system, and predict its performance and degradation⁴.

Source:

(1) How to Create a Digital Twin of the Golden Gate Bridge - Ansys. https://www.ansys.com/blog/how-to-create-a-digital-twin.

(2) How to Build a Digital Twin from a Systems Simulation | Ansys. https://www.ansys.com/blog/how-to-build-a-digital-twin-from-a-systems-simulation.

(3) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(4) How to Create a Digital Twin of the Golden Gate Bridge - Ansys. https://www.ansys.com/blog/how-to-create-a-digital-twin.

(5) How to Build a Digital Twin from a Systems Simulation | Ansys. https://www.ansys.com/blog/how-to-build-a-digital-twin-from-a-systems-simulation.

(6) https://cla.opensource.microsoft.com.

(7) Azure Digital Twins end-to-end samples - Code Samples. https://learn.microsoft.com/en-us/samples/azure-samples/digital-twins-samples/digital-twins-samples/.

How does Twin Builder integrate real-world data into digital twin models?

Twin Builder integrates real-world data into digital twin models by using the following steps:

- First, Twin Builder allows you to connect your digital twin model to various Internet of Things (IoT) platforms, such as Microsoft Azure IoT, Microsoft Azure Digital Twins, PTC ThingWorx, SAP Predictive Asset Insights, Rockwell Automation Emulate 3D and Rockwell Studio 5000¹. These platforms can access test and real-time data from sensors and other sources installed on the physical asset that the digital twin represents¹².

- Second, Twin Builder uses the data from the IoT platforms as inputs to the digital twin model, which can be a system-level simulation composed of different components, such as electrical, thermal, fluid, mechanical, and software¹². Some of these components can also be reduced-order models (ROMs), which are simplified versions of complex 3D simulations that run faster and more accurately¹².

- Third, Twin Builder runs the digital twin model as a simulation, using the data inputs to update the model parameters and validate the simulation results¹². The digital twin model can also be instrumented with virtual sensors, which are measurements taken from the simulation outputs that augment and enrich the data from the physical sensors¹².

- Fourth, Twin Builder exports the digital twin model as a standalone software code, which can be deployed on the IoT platforms or at the edge of the physical asset, where it can work against the data in real time¹². The digital twin model can then provide insights into the current and future performance, behavior, and health of the physical asset, and enable optimization, prediction, and control¹².

Source: 

(1) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(2) ANSYS Twin Builder: Connecting IoT Data to Simulations. https://www.lifecycleinsights.com/ansys-twin-builder/.

(3) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(4) ANSYS Twin Builder: Connecting IoT Data to Simulations. https://www.lifecycleinsights.com/ansys-twin-builder/.

(5) Toward Smart-Building Digital Twins: BIM and IoT Data Integration .... https://ieeexplore.ieee.org/document/9987476.

(6) Ansys Twin Builder Integration with Azure Digital Twins. https://learn.microsoft.com/en-us/shows/internet-of-things-show/ansys-twin-builder-integration-with-azure-digital-twins.

(7) https://aka.ms/iotshow/AnsysTwinBuilder%29.

How can I use Twin Builder to optimize the performance of my machine learning model?

One possible way to use Twin Builder to optimize the performance of your machine learning model is to create a hybrid digital twin that combines data analytics and simulation-based approaches. A hybrid digital twin is a connected, virtual replica of a physical system that uses both machine learning and physics-based models to capture its behavior and performance¹. With Twin Builder, you can:

- Build a system-level simulation of your physical system using various components, such as electrical, thermal, fluid, mechanical, and software¹². You can also use reduced-order models (ROMs) to simplify complex 3D simulations and speed up the simulation time¹².

- Connect your simulation model to an IoT platform, such as Microsoft Azure IoT, Microsoft Azure Digital Twins, PTC ThingWorx, SAP Predictive Asset Insights, Rockwell Automation Emulate 3D and Rockwell Studio 5000¹². These platforms can access test and real-time data from sensors and other sources installed on the physical system¹².

- Use the data from the IoT platform as inputs to your machine learning model, which can be a neural network, a regression model, a classification model, or any other type of data-driven model¹². You can use various tools and frameworks, such as TensorFlow, PyTorch, Scikit-learn, or Ansys SCADE, to create and train your machine learning model¹².

- Integrate your machine learning model with your simulation model using Twin Builder's hybrid analytics capabilities¹². You can use the machine learning model to calibrate, update, or augment the simulation model, or vice versa¹². You can also use the machine learning model to perform predictive analytics, such as forecasting, anomaly detection, or optimization¹².

- Deploy your hybrid digital twin model on the IoT platform or at the edge of the physical system, where it can work against the data in real time¹². You can then use your hybrid digital twin model to monitor, control, and optimize the performance of your physical system¹².

Source:

(1) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(2) Review of Computational Mechanics, Optimization, and Machine Learning .... https://www.mdpi.com/2076-3417/12/23/11997.

(3) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(4) Review of Computational Mechanics, Optimization, and Machine Learning .... https://www.mdpi.com/2076-3417/12/23/11997.

(5) How AI and ML are Changing Simulation - Ansys. https://www.ansys.com/blog/how-ai-and-ml-are-changing-simulation.

(6) Ansys Twin Builder Getting Started | Ansys Training. https://www.ansys.com/training-center/course-catalog/digital-twin/ansys-twin-builder-getting-started.

(7) Twin Builder - Ansys Learning Forum. https://forum.ansys.com/forums/topic/twin-builder/.

(8) https://doi.org/10.3390/app122311997.

Does OptiSLang have the same capabilities as Twin Builder in Ansys?

No, OptiSLang and Twin Builder in Ansys have different capabilities and purposes. OptiSLang is a process integration and design optimization solution that automates key aspects of the robust design optimization process¹. OptiSLang connects multiple CAx tools and different physics into a holistic, multi-disciplinary approach to optimization¹. OptiSLang uses state-of-the-art algorithms for design exploration, optimization, robustness and reliability analysis¹. OptiSLang can help you make better decisions with less effort using design optimization software¹.

Twin Builder, on the other hand, is a digital twin solution that allows you to create and deploy simulation-based digital twin models². A digital twin is a connected, virtual replica of an in-service physical asset that mirrors its real-world behavior and performance². Twin Builder enables you to build, validate, deploy and scale digital twins using Ansys systems-level simulation know-how². Twin Builder can help you increase efficiency, optimize performance, and reduce maintenance costs with digital twins².

OptiSLang and Twin Builder can work together to enhance your product lifecycle management and predictive maintenance. For example, you can use OptiSLang to calibrate and update your digital twin model created with Twin Builder using real-world data from sensors and other sources¹². You can also use OptiSLang to perform sensitivity analysis and optimization on your digital twin model to improve its accuracy and performance¹². 

Source: 

(1) Ansys optiSLang | Process Integration & Design Optimization Software. https://www.ansys.com/products/connect/ansys-optislang.

(2) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(3) Ansys optiSLang | Process Integration & Design Optimization Software. https://www.ansys.com/products/connect/ansys-optislang.

(4) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(5) Compare Ansys optiSLang vs. GE Digital Twin vs. SOLIDWORKS Simulation .... https://slashdot.org/software/comparison/Ansys-optiSLang-vs-GE-Digital-Twin-vs-SOLIDWORKS-Simulation/.

(6) Ansys optiSLang vs. GE Digital Twin vs. Maxwell Render. https://sourceforge.net/software/compare/Ansys-optiSLang-vs-GE-Digital-Twin-vs-Maxwell-Render/.

(7) Top 3 New Features in Ansys optiSLang. https://www.ansys.com/blog/top-3-new-features-in-ansys-optislang.

(8) en.wikipedia.org. https://en.wikipedia.org/wiki/OptiSLang.

Can I build a Digital Twin using only OptiSLang?

No, you cannot build a digital twin using only OptiSLang. OptiSLang is a process integration and design optimization (PIDO) solution that automates key aspects of the robust design optimization (RDO) process¹. OptiSLang can help you calibrate, update, and optimize your digital twin model using real-world data from sensors and other sources¹². However, OptiSLang cannot create and deploy simulation-based digital twin models by itself. You need another software, such as Ansys Twin Builder, to do that¹².

Ansys Twin Builder is a digital twin solution that allows you to create and deploy simulation-based digital twin models³. A digital twin is a connected, virtual replica of an in-service physical asset that mirrors its real-world behavior and performance³. Twin Builder enables you to build, validate, deploy and scale digital twins using Ansys systems-level simulation know-how³. Twin Builder can help you increase efficiency, optimize performance, and reduce maintenance costs with digital twins³

Source: 

(1) 3D Field Meta Models for Digital Twins with Ansys optiSLang. https://www.ansys.com/resource-center/webinar/3d-field-meta-models-for-digital-twins.

(2) How to Design Better Products in Less Time with Ansys optiSLang and the .... https://www.ansys.com/blog/how-to-design-better-products.

(3) A Comprehensive Review of Digital Twin - Part 1: Modeling and Twinning .... https://arxiv.org/pdf/2208.14197.pdf.

(4) 3D Field Meta Models for Digital Twins with Ansys optiSLang. https://www.ansys.com/resource-center/webinar/3d-field-meta-models-for-digital-twins.

(5) A Comprehensive Review of Digital Twin - Part 1: Modeling and Twinning .... https://arxiv.org/pdf/2208.14197.pdf.

(6) How to Design Better Products in Less Time with Ansys optiSLang and the .... https://www.ansys.com/blog/how-to-design-better-products.

(7) Optimizing Design Optimization Efforts - Ansys. https://www.ansys.com/blog/optimizing-design-optimization-efforts.

Is there a machine learning feature in Twin Builder?

Yes, there is a machine learning feature in Twin Builder. Twin Builder allows you to integrate your simulation-based digital twin model with artificial intelligence and machine learning (AI/ML) models to create a hybrid digital twin¹². A hybrid digital twin combines the power of physics and data modeling to enable real-time monitoring, predictive maintenance, and performance optimization¹².

With Twin Builder, you can:

- Use various tools and frameworks, such as TensorFlow, PyTorch, Scikit-learn, or Ansys SCADE, to create and train your AI/ML model¹².

- Connect your simulation model to an Internet of Things (IoT) platform, such as Microsoft Azure IoT, Microsoft Azure Digital Twins, PTC ThingWorx, SAP Predictive Asset Insights, Rockwell Automation Emulate 3D and Rockwell Studio 5000¹². These platforms can access test and real-time data from sensors and other sources installed on the physical system¹².

- Use the data from the IoT platform as inputs to your AI/ML model, which can be a neural network, a regression model, a classification model, or any other type of data-driven model¹².

- Integrate your AI/ML model with your simulation model using Twin Builder's hybrid analytics capabilities¹². You can use the AI/ML model to calibrate, update, or augment the simulation model, or vice versa¹². You can also use the AI/ML model to perform predictive analytics, such as forecasting, anomaly detection, or optimization¹².

- Deploy your hybrid digital twin model on the IoT platform or at the edge of the physical system, where it can work against the data in real time¹². You can then use your hybrid digital twin model to monitor, control, and optimize the performance of your physical system¹².

I hope this answer helps you understand the machine learning feature in Twin Builder. If you want to learn more about Twin Builder and its capabilities, you can check out the following resources:

- [Ansys Twin Builder | Create and Deploy Digital Twin Models](^1^)

- [Get the Best Digital Twin with Hybrid Analytics - Ansys](^2^)

- [Ansys Twin Builder Software | Simulation-Based Digital Twin Models](^3^)

- [How AI and ML are Changing Simulation - Ansys](^4^)

Source: 

(1) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(2) Get the Best Digital Twin with Hybrid Analytics - Ansys. https://www.ansys.com/blog/get-the-best-digital-twin-with-hybrid-analytics.

(3) Ansys Twin Builder | Create and Deploy Digital Twin Models. https://www.ansys.com/products/digital-twin/ansys-twin-builder.

(4) Get the Best Digital Twin with Hybrid Analytics - Ansys. https://www.ansys.com/blog/get-the-best-digital-twin-with-hybrid-analytics.

(5) Ansys Twin Builder Software | Simulation-Based Digital Twin Models. https://wildeanalysis.co.uk/software/design-simulation/ansys/platform/twin-builder/.

(6) How AI and ML are Changing Simulation - Ansys. https://www.ansys.com/blog/how-ai-and-ml-are-changing-simulation.

💥💥💥 What is more difficult, CFD Analysis or Structural Analysis to learn ?

 That is a difficult question to answer, as both CFD analysis and structural analysis have their own challenges and complexities. However, some possible factors that could affect the difficulty of learning either one are:

- The mathematical background and familiarity with the governing equations and numerical methods. CFD analysis typically involves solving nonlinear partial differential equations, such as the Navier-Stokes equations, which can be challenging to understand and implement. Structural analysis usually involves solving linear or nonlinear systems of equations, which may be easier to grasp and solve¹²³.

- The type and scope of the problem and the desired accuracy of the solution. CFD analysis can deal with a variety of fluid phenomena, such as turbulence, multiphase flow, heat transfer, chemical reactions, etc. Structural analysis can also handle different types of loading, deformation, failure, material behavior, etc. Depending on the problem, the solution may require different levels of mesh refinement, boundary conditions, convergence criteria, etc¹²⁴.

- The availability and usability of the software and tools. CFD analysis and structural analysis both rely on specialized software and tools that can perform the numerical simulations and provide the results. The software and tools may vary in their features, capabilities, interfaces, documentation, support, etc. The user may need to learn how to use the software and tools effectively and efficiently¹²⁴⁵.

Therefore, the difficulty of learning CFD analysis or structural analysis may depend on the individual's background, interest, motivation, and resources. There is no definitive answer to which one is more difficult, as both have their own merits and challenges. However, both are valuable skills that can help in designing and optimizing various systems and applications.

Source: 

(1) How accurate is FEA and CFD simulation? - The SOLIDWORKS Blog. https://blogs.solidworks.com/solidworksblog/2014/05/how-accurate-is-fea-and-cfd-simulation.html.

(2) FEA vs. CFD: The Differences and Applications of Simulation Tools. https://resources.system-analysis.cadence.com/blog/msa2021-fea-vs-cfd-the-differences-and-applications-of-simulation-tools.

(3) What's the Difference Between FEA and CFD? - Enterfea. https://enterfea.com/whats-the-difference-between-fea-and-cfd/.

(4) FEA/CFD Analysis for Fluid-Structure Interaction Studies. https://resources.system-analysis.cadence.com/blog/msa2021-fea-cfd-analysis-for-fluid-structure-interaction-studies.

(5) FEA vs. CFD Thermal Analysis - When to Use Which?. https://www.pages.mechartes.com/resources/2021/10/23/fea-vs-cfd-analysis-when-to-use-which-in-thermal-analysis.

Which software is commonly used for CFD and Structural Analysis?

There are many software packages that can be used for CFD and structural analysis, depending on the type and complexity of the problem, the desired accuracy and efficiency, and the user's preference and budget. However, some of the most commonly used software are:

- For CFD analysis, some popular software are **Ansys Fluent**, **Autodesk CFD**, **SimScale**, and **COMSOL Multiphysics**. These software offer a range of features and capabilities for simulating various fluid phenomena, such as turbulence, multiphase flow, heat transfer, chemical reactions, etc. They also have user-friendly interfaces, advanced solvers, and cloud-based platforms¹²³⁴.

- For structural analysis, some widely used software are **STAAD**, **RAM**, **Tekla Structures**, and **SkyCiv**. These software allow engineers to design and analyze different types of structures and materials, such as concrete, steel, and joist. They also support BIM and 3D modeling, interoperability, and collaboration⁵⁶⁷ .

Of course, there are many other software that can be used for CFD and structural analysis, and the choice may depend on the specific needs and preferences of the user. 

Source: 

(1) CFD Software: Fluid Dynamics Simulation Software - Ansys. https://www.ansys.com/products/fluids.

(2) Autodesk CFD Software | Get Prices & Buy Official CFD 2024. https://www.autodesk.com/products/cfd/overview.

(3) Computational Fluid Dynamics (CFD) Simulation Software | SimScale. https://www.simscale.com/product/cfd/.

(4) List of structural engineering software - Wikipedia. https://en.wikipedia.org/wiki/List_of_structural_engineering_software.

(5) Structural Analysis and Detailing | Bentley Systems | Infrastructure .... https://www.bentley.com/software/structural-analysis-and-detailing/.

(6) Structural Engineering Software to Learn in 2023: Top 10 Best. https://tribby3d.com/blog/structural-engineering-software/.

(7) Structural Analysis and Design | SkyCiv Engineering. https://skyciv.com/.

What is less difficult to learn, Ansys Mechanical or Ansys CFD (Fluent, CFX) ?

There is no definitive answer to which one is less difficult to learn, as both Ansys Mechanical and Ansys CFD (Fluent, CFX) have their own merits and challenges. However, based on the information I found from the web search results, some possible factors that could affect the difficulty of learning either one are:

- The type and scope of the problem and the desired accuracy of the solution. Ansys Mechanical can handle different types of loading, deformation, failure, material behavior, etc. Ansys CFD can deal with a variety of fluid phenomena, such as turbulence, multiphase flow, heat transfer, chemical reactions, etc. Depending on the problem, the solution may require different levels of mesh refinement, boundary conditions, convergence criteria, etc¹²⁴.

- The mathematical background and familiarity with the governing equations and numerical methods. Ansys Mechanical usually involves solving linear or nonlinear systems of equations, which may be easier to grasp and solve. Ansys CFD typically involves solving nonlinear partial differential equations, such as the Navier-Stokes equations, which can be challenging to understand and implement¹²³.

- The availability and usability of the software and tools. Ansys Mechanical and Ansys CFD both rely on specialized software and tools that can perform the numerical simulations and provide the results. The software and tools may vary in their features, capabilities, interfaces, documentation, support, etc. The user may need to learn how to use the software and tools effectively and efficiently¹²⁴.

Therefore, the difficulty of learning Ansys Mechanical or Ansys CFD may depend on the individual's background, interest, motivation, and resources. 

Source:

(1) Physics Preference – Mechanical or CFD - Ansys Learning Forum. https://forum.ansys.com/forums/topic/physics-preference-mechanical-or-cfd/.

(2) Compare Ansys Mechanical vs. Autodesk CFD | G2. https://www.g2.com/compare/ansys-mechanical-vs-autodesk-cfd.

(3) Compare Ansys Fluent vs. Ansys Mechanical vs. Autodesk CFD - Slashdot. https://slashdot.org/software/comparison/Ansys-Fluent-vs-Ansys-Mechanical-vs-Autodesk-CFD/.

(4) Solver: Workbench Mechanical vs. Fluent - Ansys Learning Forum. https://forum.ansys.com/forums/topic/solver-workbench-mechanical-vs-fluent/.

Which one do you recommend for a beginner, Ansys Mechanical or CFD?

I cannot recommend one over the other, as both Ansys Mechanical and CFD have their own merits and challenges. However, based on the information from the web search results, some possible factors that could affect your choice are:

- Your interest and motivation. You should choose the software that aligns with your goals and interests, as this will help you stay motivated and engaged in learning. For example, if you are interested in fluid dynamics and want to simulate various fluid phenomena, you may prefer Ansys CFD. If you are interested in structural mechanics and want to analyze different types of loading and deformation, you may prefer Ansys Mechanical .

- Your background and resources. You should choose the software that matches your level of mathematical and numerical knowledge, as well as the availability and usability of the software and tools. For example, if you have a strong background in partial differential equations and nonlinear solvers, you may find Ansys CFD easier to learn. If you have a solid foundation in linear and nonlinear systems of equations, you may find Ansys Mechanical easier to learn . You should also consider the cost, features, documentation, and support of the software and tools .

- Your problem and accuracy. You should choose the software that can handle the type and complexity of the problem you want to solve, as well as the desired accuracy and efficiency of the solution. For example, if you want to solve a problem involving turbulence, multiphase flow, heat transfer, chemical reactions, etc., you may need Ansys CFD. If you want to solve a problem involving loading, deformation, failure, material behavior, etc., you may need Ansys Mechanical .

What are some good resources to learn Ansys Mechanical and CFD?

There are many resources to learn Ansys Mechanical and CFD, depending on your level of experience, interest, and goals. Some of the resources that I found from the web search results are:

- Ansys Academic Support | Tutorials & Training Materials¹: This is a website that provides free Innovation Courses, the Learning Forum support community, videos with technology tips and introductory tutorials with step-by-step directions for performing basic simulations, and more. You can find tutorials for both Ansys Mechanical and Ansys CFD, as well as other Ansys products and physics areas.

- Ansys Mechanical Getting Started² and Ansys Fluent Getting Started⁵: These are courses that teach the essential skills you need to start performing basic linear static structural analyses and computational fluid dynamics (CFD) simulations on your own using Ansys Mechanical and Ansys Fluent software. You can learn the complete end-to-end procedure, the best practices, and the common techniques for solving your own analysis problems.

- Ansys Computational Fluid Dynamics (CFD) Tutorials⁴: This is a YouTube playlist that contains 34 videos that explore more advanced topics in the fluid-focused arena. You can learn how to simulate various fluid phenomena, such as turbulence, multiphase flow, heat transfer, chemical reactions, etc. You can also learn how to use different features and capabilities of Ansys CFD software, such as dynamic mesh, moving and deforming mesh, etc.

- Absolute Beginners Guide to CFD simulation in ANSYS⁶: This is a Udemy course that teaches CFD simulation from scratch in Ansys workbench environment. You can learn how to clean geometry and create domain in Ansys Spaceclaim, create high quality mesh in Workbench meshing, run CFD simulation in Fluent for full aircraft, and set up compressible flow problem and accelerate solution convergence for density based solver in Fluent.

Source: 

(1) Ansys Academic Support | Tutorials & Training Materials. https://www.ansys.com/academic/learning-resources.

(2) Ansys Mechanical Getting Started | Ansys Training. https://www.ansys.com/training-center/course-catalog/structures/ansys-mechanical-getting-started.

(3) Ansys Fluent Getting Started | Ansys Training. https://www.ansys.com/training-center/course-catalog/fluids/ansys-fluent-getting-started.

(4) Ansys Computational Fluid Dynamics (CFD) Tutorials - YouTube. https://www.youtube.com/playlist?list=PLQMtm0_chcLyEB1EJLUoouugMYZNQUslG.

(5) Absolute Beginners Guide to CFD simulation in ANSYS | Udemy. https://www.udemy.com/course/absolute-beginners-guide-to-cfd-simulation-in-ansys/.

(6) Getting Started with Ansys Mechanical | Ansys Courses. https://courses.ansys.com/index.php/courses/getting-started-with-ansys-mechanical/.

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