What is MCP and Why is it Important to My Business?

How Does MCP Help AI Application Development?

Technology is great! But it can be hard to keep up. Even if you have made a career in technology, the pace of change today is so rapid that, if you miss one issue of your favorite tech publication, you may risk falling behind.

Perhaps nothing has increased the pace of change in technology more than Artificial Intelligence (AI) and, because AI potential seems to be unconstrained, the need for expanded capabilities and foundations is constant.

One such development is Model Context Protocol (MCP). MCP is an open protocol that was created by Anthropic to simplify the process of interacting with Large Language Models (LLMs) and to standardize the way in which applications provide context to LLMs and help them interpret data.

It may help to think of MCP as a translator or a way to make connections. Much like a USB adapter can connect an external hard drive to your laptop, MCP can connect various tools and data sources to enable interaction, integration and context for use in AI.

While early stage AI struggled to connect disparate data sources, tools and Application Programming Interfaces (APIs), the advent of Model Context Protocol (MCP) provides a bridge to external data and services to connect AI models using a standardized communication framework to allow for AI reasoning and processing. So, AI models like Azure OpenAI, GPT, Atlassian and others can fetch data, connect and interact with APIs and perform tasks, going well beyond the knowledge contained in the model to produce new, expanded outputs.

What is Model Context Protocol (MCP) and WHY Should I Care?

In the good old days of AI (just last year), your users might ask a complex question or a question that exceeded the information contained within an LLM training data set. That question could elicit an answer that made no sense or the system might simply frustrate the user by saying, ‘I don’t know.’ In order to solve that problem, you would have to provide data refinement to ensure that the LLM had context or you would have to add another tool or secondary source. That can be complex, time consuming and expensive.

In short, in order to succeed with your LLM, you were constrained by the amount of training data, and how well you could anticipate what your clients or users would ask or need. Sure, the information exists out there somewhere, but your LLM doesn’t include that data! You could use APIs but that process of application integration is complex and can be difficult to implement in a meaningful way, and you have to hard-code each connection! Using this technique to provide information to an LLM requires you to review documentation and data, identify the end point of the search, verify authentication, structure requests and then make sure it all works seamlessly so your users are not frustrated.

MCP allows you to create a bridge between apps and tools and establish automated workflows, using the power of LLMs to perform tasks and provide clear, concise information across all technology frameworks and platforms. MCP allows developers and content managers to establish what the LLM should know and provide that in a standard format that the LLM can understand. In essence, MCP acts as the go-between or the middleman, simplifying the relationship and connection between the LLM and APIs, tools and data repositories. Rather than your app reaching out to the API, it communicates with an MCP server. The MCP server will then translate that information and decide how to communicate with the API to satisfy the user request. It’s a translator!

Model Context Protocols (MCP) provide support for application developers using AI so they can more easily build apps and integrate information, ensuring that the app is flexible enough to support future integration of tools and data. Its open-source accessibility allows software developers and software vendors to leverage these tools to create business and consumer apps.

The team can create apps that are extensible at runtime and connect tools and APIs to an MCP server, to use the app immediately without extensive coding and deployment. The process is simple.

  • When a user enters a query, the Large Language Model (LLM) sends a request to the MCP server
  • The MCP server translates the request and decides where it should go (API, tool, etc.), and then sends it to the appropriate source
  • The response to the query is returned through the MCP server
  • The MCP server sends that response to the LLM
  • The user receives the response

It’s just that simple.

If you, your IT staff, your management team or your customers are asking about the potential of AI and LLMs, it is time to consider MCP and how it can support your needs. The incorporation of this approach can save development time and expense and alleviate rework and developer and user frustration.

If your business wishes to improve productivity, timelines, budgets and dependability of in-house applications, you will want to find a vendor and service provider who appropriately employs AI and LLMs to support its development model. If you are planning to engage an IT expert to augment your own software product or solution, it is wise to look for this capability when you interview prospective partners. Contact Us to find out how to integrate AI And LLM capabilities into your software project, website, analytics initiative or other project. Explore our free White Papers: ‘What Is AI And How Can It Help My Business,’ and ‘The Practical Use Of GenAI In BI And Analytics Tools.’

Look For a Software Development Partner That Uses AI and LLMs

AI and LLMs Support Developer and DevOps Productivity

A recent Copilot study revealed an interesting fact about the use of AI and Large Language Models (LLM) in the software development process. The study included developers from Microsoft, Accenture, and a Fortune 100 electronics firm and reported a 26% boost in productivity, increasing output from the usual eight hour workday to what amounts to ten hours of traditional output. This improved output increased even more for less experienced developers.

By leveraging Artificial Intelligence (AI) and Large Language Models (LLM), the DevOPS organization can greatly improve output, code quality, developer productivity and consistency. As businesses embrace the collaborative and team-oriented concepts of DevOps, the use of AI and LLMs can be utilized across the organization, and forward-thinking organizations are looking at the set of practices in DevOps (software development IT operations) to automate processes and accelerate the software development lifecycle.

Where software vendors employ these techniques, clients, customers and end-users can benefit from this approach. The development team can work more quickly and efficiently to satisfy requirements, design, develop and test and deploy, so business projects can be completed more rapidly and dependably.

If a business is considering a vendor or a software product for implementation within the walls of the enterprise, it is worth asking the prospective vendor and service provider how they are currently using cutting-edge technology to improve their development process and lifecycle.

Elements and Aspects of AI in Software Development

The Use of AI and Large Language Models (LLM) Improves the Development Process

Prompt Engineering uses natural language interfaces to study interactions with and the programing of LLM computation systems to enable complex problem solving, looking for patterns and focusing on reusable solutions. Infrastructure-as-Code (IaC), Code-as-Data and CodeQL LLMs support developers by exploring the code, studying requirements and documentation and analyzing infrastructure to find issues and inconsistencies.

Automated Code Generation allows the development team to optimize testing and deployment. Developers can use AI code review tools like Codiga and testing tools like DiffBlue Cover to review and analyze code and find issues, and AI-based code generators like GitHub and Copilot.

Generative AI (GenAI) leverages LLMs to streamline the steps in the development process, including analysis of requirements, coding and testing.

Natural Language Processing (NLP) enables code generation with machine learning and produces suggestions to develop or complete code, thereby reducing the occurrence of human error and allowing developers to focus on other, more complex aspects of code and development.

Testing and Debugging can be automated to detect and address bugs, inefficiencies and vulnerabilities in the code. These tools can be used to generate unit tests, create test cases and increase the effectiveness of the testing phase to improve overall quality.

Translation Tools enable translation of other programming languages for projects where the team must migrate code to other programming languages. The process uses large language models to complete the translation, leaving developers free to focus on architecture.

Documentation Support includes development of documents for code comments, regulatory requirements etc. Prompt Engineering generates summaries and answers questions and provides examples so developers who review the code for later upgrades have appropriate documentation to support the software evolution.

Project Management for all of DevOps is supported by automated routines and integration of information and documentation throughout the process, monitoring system performance, analyzing test results and optimizing implementation. The ongoing analysis of test planning, data migration, compliance documentation and architecture supports the entire DevOps team.

If your business wishes to improve productivity, timelines, budgets and dependability of in-house applications, you will want to find a vendor and service provider who appropriately employs AI and LLMs to support its development model. If you are planning to engage an IT expert to augment your own software product or solution, it is wise to look for this capability when you interview prospective partners. Contact Us to find out how to integrate AI and LLM capabilities into your software project, website, analytics initiative or other project. Explore our free White Papers: ‘What Is AI And How Can It Help My Business,’ and ‘The Practical Use Of GenAI In BI And Analytics Tools.’

Consider Software Development Partners for SME Success!

Ramp Up Your Results with a Software Development Partnership for Your SME!

According to a Partnerize study, 54% of companies say that partnerships drive more than 20% of total company revenue. If you are a small or medium sized enterprise, and you have not already recognized the value of a well-conceived partnership, you are missing out!

Hire MEAN Programmers and Enjoy all the Benefits of MEAN!

What is MEAN, and Why Should I Hire MEAN Programmers to Get the Most Out of the Components?

In its review of the MEAN stack development suite, TechTarget.com states that, ‘(The MEAN) stack of development tools helps to eliminate the language barriers often experienced in software development.’ There is, perhaps, no better way to explain why the MEAN stack of tools and services has gained such popularity. Developers know their job and their tools but, when these tools are combined to provide more ease-of-use and to help developers navigate and leverage the various features, the development process is much simpler and quicker.

Hire PHP Programmers and Build Your Software Team!

Hire PHP Programmers with the Right Skills and Ensure Project Success!

Recent research of server-side programming languages reveals impressive popularity of PHP for both high and low-traffic sites, making PHP an excellent choice for your new site or app. If you are considering a PHP project, your business might wish to hire PHP programmers with expertise and skills in completing this type of project.

Hire iOS Programmers and Get the Right Skills!

When You Hire iOS Programmers Your iPhone or iPad Mobile App WILL Succeed!

If you follow the mobile device market, you know that Android and Apple have been in close competition for years and, while every user has a favorite, some users now use both types of devices – perhaps an Android at work and an iPad or iPhone at home. Whatever your preference, if your organization wishes to develop a business or consumer mobile application, there are some interesting statistics to consider in the iOS realm.

Should My Business Choose Android for Mobile App Development?

Android Mobile App Development Serves a Global Market and Ensures Your Success!

According to BusinessOfApps, Android is the most popular operating system in the world, with over 2.5 billion active users spanning over 190 countries. Smart Phone and mobile device manufacturers using the Android platform include Samsung, Motorola, LG, Huawei, Vivo, Oppo and Xlaomi.

For Worry-Free Hybrid Apps Hire MEAN Programmers!

Hire MEAN Programmers to Meet the Needs of Your Hybrid and Cross-Platform App Project!

According to a Statista survey mobile apps are projected to generate more than $935 billion US dollars in 2023. The market shows no sign of choosing between iOS and Android so any mobile application development you consider will likely be best designed as a hybrid mobile application project.

Hire Python Programmers Without HIRING Python Programmers!

Don’t Give Up On Your Python Project. Hire Python Programmers and Build Your Team!

What if your business wishes to undertake a Python development project? What if your IT team does not have the time or the skill to take on this type of project? No worries! In this article, we will talk about the various ways in which Python can support your software application or software product development needs and how to best staff and manage a Python project and hire Python programmers in a worry-free environment.

No Worries! Build Your Own MEAN Programmers Team!

Everything You Need to Know to Hire MEAN Programmers for Mobile App Development!

When a business is considering a MEAN approach to its mobile application development it is often faced with the stark reality that it cannot adequately staff the project with the skills and experience it needs. Perhaps its IT team has some of the skills, but no time to dedicate to yet another project. Perhaps, the internal IT team simply lacks the skills, whether those skills are technical, project management, quality, testing or in other areas.