This session was not filmed.
Cloud computing services offer unlimited and on-demand computational power including large amounts of data storage. The combination of built in support for asynchronous workflows, event combinators and data processing make F# uniquely suited to develop scalable cloud solutions efficiently. In this session we will build and deploy a service “in the cloud”, more specifically in Azure, leveraging its infrastructure for distributed computations across clusters of machines using Microsoft Orleans and the “Orleankka” library. Moreover, we will develop a simple mobile application to interact with the API of the deployed service.
Microsoft Orleans is a framework for .NET platform built by the Microsoft Research to simplify building and deploying cloud services that can scale to thousands of servers and millions of users. Orleankka is a powerful library which provides a set of API for supporting Microsoft Orleans framework in F#.
YOU MAY ALSO LIKE:
- Functional Concurrency in .NET with C# and F# (in London on 9th - 10th December 2019)
- Go Channels in .NET – concurrency made easy (SkillsCast recorded in September 2019)
- Modern Application Development with C# and .NET Core (in London on 16th - 19th December 2019)
- F# eXchange 2020 (in London on 2nd - 3rd April 2020)
- ProgNET London 2020 (in London on 16th - 18th September 2020)
- Keynote by Konrad Kokosa: What’s New in .NET Core 3.0 and .NET 5.0 for Performance and Memory-Aware Folks? (in London on 29th October 2019)
- Skills Matter Open House November (in London on 25th November 2019)
- Implementing Clean Architecture in Flutter using BLoC (SkillsCast recorded in October 2019)
- Getting setup and started with doing AI on the Nvidia Jetson Nano (SkillsCast recorded in September 2019)
Building Service in the Cloud with F#
Riccardo is a Microsoft Most Valuable Professional (MVP) who is active in the .Net, functional programming, and F# communities.He is passionate about integrating advanced technology tools to increase internal efficiency, enhance work productivity, and reduce operating costs.