MCP Use Cloud

Development
Highlight AI | Master your world
Get instant answers about anything you've seen, heard or said. Download free: highlightai.com
Agora Protocol · Scalable Communication Between Agents
Scalable communication between agents
MCP.Link | Connect APIs to AI Assistants
Transform OpenAPI specifications into Model-Context-Protocol Protocol (MCP) endpoints for seamless AI integration.
RealEstateAPI | Public APIs | Postman API Network
Explore public APIs from RealEstateAPI, exclusively on the Postman API Network. Find everything you need to quickly get started with RealEstateAPI APIs.
Ref.
Documentation for your agent.
RealEstateAPI Developer Documentation
THE Property Data Solution. Our revolutionary tech allows us to get you property and owner data (and lots of it!) faster and cheaper than you've ever been able to before. Slow or buggy applications due to unreliable third party data APIs are a problem of the past.
Teaching chat apps about R packages - Posit
Simon Couch demonstrates how the btw package provides context to LLMs through system prompts and tool calls.
Agentic Engineer - Build LIVING software
Build LIVING software. Your guide to mastering prompts, ai coding, ai agents, and agentic workflows.
Quickstart: Deploy your first container app with containerapp up
Deploy your first application to Azure Container Apps using the Azure CLI containerapp up command.
AI Model & API Providers Analysis | Artificial Analysis
Comparison and analysis of AI models and API hosting providers. Independent benchmarks across key performance metrics including quality, price, output speed & latency.
shinymgr: A Framework for Building, Managing, and Stitching Shiny Modules into Reproducible Workflows
The R package shinymgr provides a unifying framework that allows Shiny developers to create, manage, and deploy a master Shiny application comprised of one or more "apps", where an "app" is a tab-based workflow that guides end-users through a step-by-step analysis. Each tab in a given "app" consists of one or more Shiny modules. The shinymgr app builder allows developers to "stitch" Shiny modules together so that outputs from one module serve as inputs to the next, creating an analysis pipeline that is easy to implement and maintain. Apps developed using shinymgr can be incorporated into R packages or deployed on a server, where they are accessible to end-users. Users of shinymgr apps can save analyses as an RDS file that fully reproduces the analytic steps and can be ingested into an RMarkdown or Quarto report for rapid reporting. In short, developers use the shinymgr framework to write Shiny modules and seamlessly combine them into Shiny apps, and end-users of these apps can execute reproducible analyses that can be incorporated into reports for rapid dissemination. A comprehensive overview of the package is provided by 12 learnr tutorials.
Futureverse
A Unifying Parallelization Framework in R for Everyone
Sparrow API Platform
Sparrow is your one-stop API testing solution. Supercharge your API workflow with Sparrow—the ultimate ally for agile teams and individual devs. Test, organize, and share APIs with finesse, revolutionizing your API game.
Introduction
Build production-ready Copilots and Agents effortlessly.
RealEstateAPI Developer Documentation
THE Property Data Solution. Our revolutionary tech allows us to get you property and owner data (and lots of it!) faster and cheaper than you've ever been able to before. Slow or buggy applications due to unreliable third party data APIs are a problem of the past.
Get started - xlcharts
How to make data pipelines idempotent
Unable to find practical examples of idempotent data pipelines? Then, this post is for you. In this post, we go over a technique that you can use to make your data pipelines professional and data reprocessing a breeze.
Shell and A.I - Steven Bucher - PSConfEU 2024
In this extensive lecture, I, Steven Bucher, a product manager on the PowerShell team, discuss the integration of AI into the shell environment. Over the pas...
You Don’t Need Airflow: Orchestrate Many Data Flows in R with Maestro – data-in-flight
Shiny App Workflows
This is a book that covers the standard shiny app
workflow.
autodb: Automatic Database Normalisation for Data Frames
Automatic normalisation of a data frame to third normal form, with the intention of easing the process of data cleaning. (Usage to design your actual database for you is not advised.) Originally inspired by the 'AutoNormalize' library for 'Python' by 'Alteryx' (<a href="https://github.com/alteryx/autonormalize" target="_top"https://github.com/alteryx/autonormalize/a>), with various changes and improvements. Automatic discovery of functional or approximate dependencies, normalisation based on those, and plotting of the resulting "database" via 'Graphviz', with options to exclude some attributes at discovery time, or remove discovered dependencies at normalisation time.
Data Pipeline Design Patterns - #1. Data flow patterns
Data pipelines built (and added on to) without a solid foundation will suffer from poor efficiency, slow development speed, long times to triage production issues, and hard testability. What if your data pipelines are elegant and enable you to deliver features quickly? An easy-to-maintain and extendable data pipeline significantly increase developer morale, stakeholder trust, and the business bottom line! Using the correct design pattern will increase feature delivery speed and developer value (allowing devs to do more in less time), decrease toil during pipeline failures, and build trust with stakeholders. This post goes over the most commonly used data flow design patterns, what they do, when to use them, and, more importantly, when not to use them. By the end of this post, you will have an overview of the typical data flow patterns and be able to choose the right one for your use case.
Nuitka the Python Compiler — Nuitka the Python Compiler
With the Python compiler Nuitka, you create protected binaries from your Python source code.
Catalog of Patterns of Distributed Systems
A catalog of patterns to better understand, communicate, and teach the design of distributed systems
Logging - Engineering Fundamentals Playbook
ISE Engineering Fundamentals Engineering Playbook
Logs vs Metrics vs Traces - Engineering Fundamentals Playbook
ISE Engineering Fundamentals Engineering Playbook
REST API Design Guidance - Engineering Fundamentals Playbook
ISE Engineering Fundamentals Engineering Playbook
Non-Functional Requirements Capture - Engineering Fundamentals Playbook
ISE Engineering Fundamentals Engineering Playbook
Data Transfer Object
An object that carries data between processes in order to
reduce the number of method calls.