DiffSharp.Data 1.0.7

dotnet add package DiffSharp.Data --version 1.0.7
                    
NuGet\Install-Package DiffSharp.Data -Version 1.0.7
                    
This command is intended to be used within the Package Manager Console in Visual Studio, as it uses the NuGet module's version of Install-Package.
<PackageReference Include="DiffSharp.Data" Version="1.0.7" />
                    
For projects that support PackageReference, copy this XML node into the project file to reference the package.
<PackageVersion Include="DiffSharp.Data" Version="1.0.7" />
                    
Directory.Packages.props
<PackageReference Include="DiffSharp.Data" />
                    
Project file
For projects that support Central Package Management (CPM), copy this XML node into the solution Directory.Packages.props file to version the package.
paket add DiffSharp.Data --version 1.0.7
                    
#r "nuget: DiffSharp.Data, 1.0.7"
                    
#r directive can be used in F# Interactive and Polyglot Notebooks. Copy this into the interactive tool or source code of the script to reference the package.
#addin nuget:?package=DiffSharp.Data&version=1.0.7
                    
Install as a Cake Addin
#tool nuget:?package=DiffSharp.Data&version=1.0.7
                    
Install as a Cake Tool

DiffSharp is a tensor library with support for differentiable programming. It is designed for use in machine learning, probabilistic programming, optimization and other domains. For documentation and installation instructions visit: https://diffsharp.github.io/

Product Compatible and additional computed target framework versions.
.NET net5.0 was computed.  net5.0-windows was computed.  net6.0 was computed.  net6.0-android was computed.  net6.0-ios was computed.  net6.0-maccatalyst was computed.  net6.0-macos was computed.  net6.0-tvos was computed.  net6.0-windows was computed.  net7.0 was computed.  net7.0-android was computed.  net7.0-ios was computed.  net7.0-maccatalyst was computed.  net7.0-macos was computed.  net7.0-tvos was computed.  net7.0-windows was computed.  net8.0 was computed.  net8.0-android was computed.  net8.0-browser was computed.  net8.0-ios was computed.  net8.0-maccatalyst was computed.  net8.0-macos was computed.  net8.0-tvos was computed.  net8.0-windows was computed.  net9.0 was computed.  net9.0-android was computed.  net9.0-browser was computed.  net9.0-ios was computed.  net9.0-maccatalyst was computed.  net9.0-macos was computed.  net9.0-tvos was computed.  net9.0-windows was computed.  net10.0 was computed.  net10.0-android was computed.  net10.0-browser was computed.  net10.0-ios was computed.  net10.0-maccatalyst was computed.  net10.0-macos was computed.  net10.0-tvos was computed.  net10.0-windows was computed. 
.NET Core netcoreapp3.0 was computed.  netcoreapp3.1 was computed. 
.NET Standard netstandard2.1 is compatible. 
MonoAndroid monoandroid was computed. 
MonoMac monomac was computed. 
MonoTouch monotouch was computed. 
Tizen tizen60 was computed. 
Xamarin.iOS xamarinios was computed. 
Xamarin.Mac xamarinmac was computed. 
Xamarin.TVOS xamarintvos was computed. 
Xamarin.WatchOS xamarinwatchos was computed. 
Compatible target framework(s)
Included target framework(s) (in package)
Learn more about Target Frameworks and .NET Standard.

NuGet packages (4)

Showing the top 4 NuGet packages that depend on DiffSharp.Data:

Package Downloads
DiffSharp-cuda-windows

DiffSharp is a tensor library with support for differentiable programming. It is designed for use in machine learning, probabilistic programming, optimization and other domains. For documentation and installation instructions visit: https://diffsharp.github.io/

DiffSharp-cuda-linux

DiffSharp is a tensor library with support for differentiable programming. It is designed for use in machine learning, probabilistic programming, optimization and other domains. For documentation and installation instructions visit: https://diffsharp.github.io/

DiffSharp-cpu

DiffSharp is a tensor library with support for differentiable programming. It is designed for use in machine learning, probabilistic programming, optimization and other domains. For documentation and installation instructions visit: https://diffsharp.github.io/

DiffSharp-lite

DiffSharp is a tensor library with support for differentiable programming. It is designed for use in machine learning, probabilistic programming, optimization and other domains. For documentation and installation instructions visit: https://diffsharp.github.io/

GitHub repositories

This package is not used by any popular GitHub repositories.

Version Downloads Last Updated
1.0.7 5,889 3/26/2022
1.0.7-preview2044360861 402 3/26/2022
1.0.7-preview1873603133 476 2/21/2022
1.0.7-preview1872895008 453 2/20/2022
1.0.7-preview1872194677 435 2/20/2022
1.0.7-preview1867437105 428 2/19/2022
1.0.7-preview1838897476 467 2/14/2022
1.0.7-preview1838869913 459 2/14/2022
1.0.6 6,625 2/9/2022
1.0.6-preview1838805210 461 2/14/2022
1.0.6-preview1838790927 498 2/14/2022
1.0.6-preview1838781533 470 2/14/2022
1.0.6-preview1838761310 445 2/14/2022
1.0.6-preview1838574327 515 2/14/2022
1.0.6-preview1838238393 469 2/13/2022
1.0.6-preview1837967313 483 2/13/2022
1.0.6-preview1837932839 311 2/13/2022
1.0.6-preview1837857091 339 2/13/2022
1.0.5 3,598 2/9/2022
1.0.4 3,822 2/8/2022
1.0.3 4,873 2/8/2022
1.0.2 3,999 2/8/2022
1.0.1 4,835 11/8/2021
1.0.0-preview-987646120 633 6/30/2021
1.0.0-preview-964642900 583 6/23/2021
1.0.0-preview-964597118 455 6/23/2021
1.0.0-preview-964532207 509 6/23/2021
1.0.0-preview-964414624 502 6/23/2021
1.0.0-preview-962665709 370 6/23/2021
1.0.0-preview-961120541 410 6/22/2021
1.0.0-preview-958984202 460 6/22/2021
1.0.0-preview-783523654 583 4/25/2021
1.0.0-preview-783503343 506 4/25/2021
1.0.0-preview-783410550 509 4/25/2021
1.0.0-preview-781810429 424 4/25/2021
1.0.0-preview-775752139 530 4/22/2021
1.0.0-preview-774228953 517 4/22/2021
1.0.0-preview-769092916 532 4/21/2021
1.0.0-preview-768013090 496 4/20/2021
1.0.0-preview-762002995 474 4/19/2021
1.0.0-preview-761040762 525 4/18/2021
1.0.0-preview-761018834 531 4/18/2021
1.0.0-preview-756065403 446 4/16/2021
1.0.0-preview-755638011 473 4/16/2021
1.0.0-preview-752421465 520 4/15/2021
1.0.0-preview-748176085 508 4/14/2021
1.0.0-preview-746203897 470 4/13/2021
1.0.0-preview-746138300 494 4/13/2021
1.0.0-preview-745205599 458 4/13/2021
1.0.0-preview-739671157 466 4/12/2021
1.0.0-preview-712483117 506 4/2/2021
1.0.0-preview-699281085 425 3/29/2021
1.0.0-preview-699125312 489 3/29/2021
1.0.0-preview-698458610 538 3/29/2021
1.0.0-preview-697743517 543 3/29/2021
1.0.0-preview-697665469 503 3/29/2021
1.0.0-preview-690194555 493 3/26/2021
1.0.0-preview-688124591 445 3/25/2021
1.0.0-preview-687886352 474 3/25/2021
1.0.0-preview-681551353 485 3/24/2021
1.0.0-preview-681104545 482 3/23/2021
1.0.0-preview-680643606 532 3/23/2021
1.0.0-preview-679950457 494 3/23/2021
1.0.0-preview-669022451 480 3/19/2021
1.0.0-preview-643151273 466 3/11/2021
1.0.0-preview-633398743 484 3/8/2021
1.0.0-preview-633348953 467 3/8/2021
1.0.0-preview-621803110 529 3/4/2021
1.0.0-preview-611561611 539 3/1/2021
1.0.0-preview-1413494063 506 11/2/2021
1.0.0-preview-1405354284 464 10/31/2021
1.0.0-preview-1338129467 474 10/13/2021
1.0.0-preview-1327345305 591 10/11/2021
1.0.0-preview-1325686991 476 10/10/2021
1.0.0-preview-1324682939 616 10/10/2021
1.0.0-preview-1239345497 543 9/15/2021
1.0.0-preview-1227879651 522 9/13/2021
1.0.0-preview-1227810778 540 9/13/2021
1.0.0-preview-1222163389 508 9/10/2021
1.0.0-preview-1177844564 511 8/28/2021
1.0.0-preview-1176119659 443 8/28/2021
1.0.0-preview-1176116073 445 8/28/2021
1.0.0-preview-1176112166 430 8/28/2021
1.0.0-preview-1172193368 447 8/26/2021
1.0.0-preview-1168287221 488 8/25/2021
1.0.0-preview-1147185155 517 8/19/2021
1.0.0-preview-1133286135 559 8/15/2021
1.0.0-preview-1118120224 537 8/10/2021
1.0.0-preview-1111420036 447 8/9/2021
1.0.0-preview-1111385512 419 8/9/2021
1.0.0-preview-1111166736 454 8/9/2021
1.0.0-preview-1088380884 476 8/1/2021
1.0.0-preview-1088311063 515 8/1/2021
1.0.0-preview-1088021240 555 8/1/2021
1.0.0-preview-1083990424 493 7/31/2021
1.0.0-preview-1080710191 494 7/30/2021
1.0.0-preview-1080701269 500 7/30/2021
1.0.0-preview-1079028054 531 7/29/2021
1.0.0-preview-1079000079 513 7/29/2021
1.0.0-preview-1078977564 551 7/29/2021
1.0.0-preview-1069218438 436 7/26/2021
1.0.0-preview-1065692127 536 7/26/2021
1.0.0-preview-1054554829 480 7/22/2021
1.0.0-preview-1054460177 515 7/22/2021
1.0.0-preview-1044919966 460 7/19/2021
1.0.0-preview-1043697034 413 7/19/2021
1.0.0-preview-1001211231 504 7/5/2021
1.0.0-preview-1001204475 475 7/5/2021