Team augmentation – why is it important for your business?

Paulina Lewandowska

07 Mar 2023
Team augmentation – why is it important for your business?

What is team augmentation?

The term "team augmentation" describes the technique of adding outside expertise to an organization's internal team in order to strengthen and support it. This external talent can consist of people or groups with specific abilities, know-how, or experience in a particular field, or it could entail contracting with outside partners to handle the entirety of projects or company operations. The purpose of team augmentation is to provide new viewpoints and access to specialized experience that may not be available inside the firm's existing team, all while assisting the organization in completing projects and achieving its goals more successfully and efficiently.

When is team augmentation a good idea?

A number of circumstances call for team augmentation. For firms that need to scale up rapidly or have few resources, it could be helpful because it enables them to access outside talent without making long-term employment or investment commitments. Companies that need to finish a specific project or activity that calls for specialized knowledge or abilities that their present team lacks might also benefit from team augmentation. Additionally, team augmentation can give a company access to fresh viewpoints and concepts that can support innovation and help it stay competitive in its field. In the end, team augmentation can be a smart move for any firm looking to use the knowledge of outside partners to help it reach its objectives more quickly and successfully.

When an organization needs to scale up quickly or has limited resources.

By using team augmentation, businesses may swiftly expand their teams with seasoned individuals without making long-term employment commitments or spending money on new resources. For instance, if a business unexpectedly secures a major project or client, they might not be able to finish the work with their current crew. They may swiftly and effectively build up their resources to meet the increasing demand by adding external talent to their team. 

When a particular project or activity need specialized knowledge or abilities that the current team does not have.

An organization may occasionally need to finish a task or project that calls for specific knowledge or abilities that their current team does not have. For instance, a business might need to develop a new software program or put in place a new technological platform, but its current staff might not be qualified to do so. In this situation, team augmentation can assist the business in bringing in outside professionals who can offer the necessary expertise and knowledge to finish the project effectively. 

When a company wants to access outside talent without making a long-term hiring or financial commitment.

A corporation may have to make a large time and financial investment in hiring full-time workers. Companies can acquire external talent through team augmentation without making long-term recruiting or investment commitments. Without the long-term commitment of recruiting full-time staff, businesses can connect with professionals for specialized projects or tasks by working with outside partners or freelancers, paying only for the job that is performed. This strategy can be especially helpful for smaller businesses or startups that might lack the funding to dedicate to full-time personnel.

When an organization seeks to innovate and remain competitive by bringing in fresh viewpoints and ideas.

Team augmentation can give businesses a useful chance to include fresh viewpoints and concepts from outside specialists. By introducing firms to fresh perspectives and methods of operation, this strategy can help them innovate and stay competitive in their sector. External partners might have expertise using various technologies, instruments, or strategies that the organization has not yet taken into consideration, which could result in innovations in product creation or service provision. 

When the current staff is overworked and requires more help to fulfill deadlines or finish projects.

Companies may discover that their current crew is overloaded and requires more assistance to meet deadlines or finish tasks. In this situation, team augmentation can offer extra resources to assist the current team in carrying out their work more quickly and effectively. By sharing some of the task with other parties, the current team members will experience less stress and burnout. 

When a company wishes to employ outside experts to lower the chance of project failure.

Organizations can reduce the risk of project failure by enlisting the help of external specialists. External partners may have previous experience working on related projects and can offer insightful information about potential risks and obstacles that the company may not have thought about. The likelihood of a project's success can be increased by using this strategy to help the organization detect and handle possible issues before they materialize.

Challenges of team augmentation

Team augmentation, which is bringing in outside professionals to support an organization's current team, can create a number of difficulties. They include effective communication, coordinating the efforts of internal and external teams, effectively transferring information, cultural fit, and responsibility. External team members must also be integrated into the existing team. Organizations can take a number of measures to reduce these difficulties, including establishing clear goals and expectations, good communication channels, regular training and feedback sessions, and making sure that everyone on the team is aware of the company's culture and values. Team augmentation can be an effective strategy for firms to enhance their current capabilities and provide positive results if done correctly.

Conclusion

Organizations can enhance their skills by bringing in outside specialists through team augmentation. It may result in more innovation, quicker time to market, and lower risk. Yet, it can also present difficulties, like incorporating outside team members and ensuring clear communication. Organizations must establish clear expectations, offer efficient means of communication, and guarantee accountability if they are to flourish. They can use the strength of outside expertise in this way to realize their strategic objectives.

If you would like to find out more about how team augumentation from Nextrope can support the development of your project, click here!

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AI in Real Estate: How Does It Support the Housing Market?

Miłosz Mach

18 Mar 2025
AI in Real Estate: How Does It Support the Housing Market?

The digital transformation is reshaping numerous sectors of the economy, and real estate is no exception. By 2025, AI will no longer be a mere gadget but a powerful tool that facilitates customer interactions, streamlines decision-making processes, and optimizes sales operations. Simultaneously, blockchain technology ensures security, transparency, and scalability in transactions. With this article, we launch a series of publications exploring AI in business, focusing today on the application of artificial intelligence within the real estate industry.

AI vs. Tradition: Key Implementations of AI in Real Estate

Designing, selling, and managing properties—traditional methods are increasingly giving way to data-driven decision-making.

Breakthroughs in Customer Service

AI-powered chatbots and virtual assistants are revolutionizing how companies interact with their customers. These tools handle hundreds of inquiries simultaneously, personalize offers, and guide clients through the purchasing process. Implementing AI agents can lead to higher-quality leads for developers and automate responses to most standard customer queries. However, technical challenges in deploying such systems include:

  • Integration with existing real estate databases: Chatbots must have access to up-to-date listings, prices, and availability.
  • Personalization of communication: Systems must adapt their interactions to individual customer needs.
  • Management of industry-specific knowledge: Chatbots require specialized expertise about local real estate markets.

Advanced Data Analysis

Cognitive AI systems utilize deep learning to analyze complex relationships within the real estate market, such as macroeconomic trends, local zoning plans, and user behavior on social media platforms. Deploying such solutions necessitates:

  • Collecting high-quality historical data.
  • Building infrastructure for real-time data processing.
  • Developing appropriate machine learning models.
  • Continuously monitoring and updating models based on new data.

Intelligent Design

Generative artificial intelligence is revolutionizing architectural design. These advanced algorithms can produce dozens of building design variants that account for site constraints, legal requirements, energy efficiency considerations, and aesthetic preferences.

Optimizing Building Energy Efficiency

Smart building management systems (BMS) leverage AI to optimize energy consumption while maintaining resident comfort. Reinforcement learning algorithms analyze data from temperature, humidity, and air quality sensors to adjust heating, cooling, and ventilation parameters effectively.

Integration of AI with Blockchain in Real Estate

The convergence of AI with blockchain technology opens up new possibilities for the real estate sector. Blockchain is a distributed database where information is stored in immutable "blocks." It ensures transaction security and data transparency while AI analyzes these data points to derive actionable insights. In practice, this means that ownership histories, all transactions, and property modifications are recorded in an unalterable format, with AI aiding in interpreting these records and informing decision-making processes.

AI has the potential to bring significant value to the real estate sector—estimated between $110 billion and $180 billion by experts at McKinsey & Company.

Key development directions over the coming years include:

  • Autonomous negotiation systems: AI agents equipped with game theory strategies capable of conducting complex negotiations.
  • AI in urban planning: Algorithms designed to plan city development and optimize spatial allocation.
  • Property tokenization: Leveraging blockchain technology to divide properties into digital tokens that enable fractional investment opportunities.

Conclusion

For companies today, the question is no longer "if" but "how" to implement AI to maximize benefits and enhance competitiveness. A strategic approach begins with identifying specific business challenges followed by selecting appropriate technologies.

What values could AI potentially bring to your organization?
  • Reduction of operational costs through automation
  • Enhanced customer experience and shorter transaction times
  • Increased accuracy in forecasts and valuations, minimizing business risks
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Want to implement AI in your real estate business?

Nextrope specializes in implementing AI and blockchain solutions tailored to specific business needs. Our expertise allows us to:

  • Create intelligent chatbots that serve customers 24/7
  • Implement analytical systems for property valuation
  • Build secure blockchain solutions for real estate transactions
Schedule a free consultation

Or check out other articles from the "AI in Business" series

AI-Driven Frontend Automation: Elevating Developer Productivity to New Heights

Gracjan Prusik

11 Mar 2025
AI-Driven Frontend Automation: Elevating Developer Productivity to New Heights

AI Revolution in the Frontend Developer's Workshop

In today's world, programming without AI support means giving up a powerful tool that radically increases a developer's productivity and efficiency. For the modern developer, AI in frontend automation is not just a curiosity, but a key tool that enhances productivity. From automatically generating components, to refactoring, and testing – AI tools are fundamentally changing our daily work, allowing us to focus on the creative aspects of programming instead of the tedious task of writing repetitive code. In this article, I will show how these tools are most commonly used to work faster, smarter, and with greater satisfaction.

This post kicks off a series dedicated to the use of AI in frontend automation, where we will analyze and discuss specific tools, techniques, and practical use cases of AI that help developers in their everyday tasks.

AI in Frontend Automation – How It Helps with Code Refactoring

One of the most common uses of AI is improving code quality and finding errors. These tools can analyze code and suggest optimizations. As a result, we will be able to write code much faster and significantly reduce the risk of human error.

How AI Saves Us from Frustrating Bugs

Imagine this situation: you spend hours debugging an application, not understanding why data isn't being fetched. Everything seems correct, the syntax is fine, yet something isn't working. Often, the problem lies in small details that are hard to catch when reviewing the code.

Let’s take a look at an example:

function fetchData() {
    fetch("htts://jsonplaceholder.typicode.com/posts")
      .then((response) => response.json())
      .then((data) => console.log(data))
      .catch((error) => console.error(error));
}

At first glance, the code looks correct. However, upon running it, no data is retrieved. Why? There’s a typo in the URL – "htts" instead of "https." This is a classic example of an error that could cost a developer hours of frustrating debugging.

When we ask AI to refactor this code, not only will we receive a more readable version using newer patterns (async/await), but also – and most importantly – AI will automatically detect and fix the typo in the URL:

async function fetchPosts() {
    try {
      const response = await fetch(
        "https://jsonplaceholder.typicode.com/posts"
      );
      const data = await response.json();
      console.log(data);
    } catch (error) {
      console.error(error);
    }
}

How AI in Frontend Automation Speeds Up UI Creation

One of the most obvious applications of AI in frontend development is generating UI components. Tools like GitHub Copilot, ChatGPT, or Claude can generate component code based on a short description or an image provided to them.

With these tools, we can create complex user interfaces in just a few seconds. Generating a complete, functional UI component often takes less than a minute. Furthermore, the generated code is typically error-free, includes appropriate animations, and is fully responsive, adapting to different screen sizes. It is important to describe exactly what we expect.

Here’s a view generated by Claude after entering the request: “Based on the loaded data, display posts. The page should be responsive. The main colors are: #CCFF89, #151515, and #E4E4E4.”

Generated posts view

AI in Code Analysis and Understanding

AI can analyze existing code and help understand it, which is particularly useful in large, complex projects or code written by someone else.

Example: Generating a summary of a function's behavior

Let’s assume we have a function for processing user data, the workings of which we don’t understand at first glance. AI can analyze the code and generate a readable explanation:

function processUserData(users) {
  return users
    .filter(user => user.isActive) // Checks the `isActive` value for each user and keeps only the objects where `isActive` is true
    .map(user => ({ 
      id: user.id, // Retrieves the `id` value from each user object
      name: `${user.firstName} ${user.lastName}`, // Creates a new string by combining `firstName` and `lastName`
      email: user.email.toLowerCase(), // Converts the email address to lowercase
    }));
}

In this case, AI not only summarizes the code's functionality but also breaks down individual operations into easier-to-understand segments.

AI in Frontend Automation – Translations and Error Detection

Every frontend developer knows that programming isn’t just about creatively building interfaces—it also involves many repetitive, tedious tasks. One of these is implementing translations for multilingual applications (i18n). Adding translations for each key in JSON files and then verifying them can be time-consuming and error-prone.

However, AI can significantly speed up this process. Using ChatGPT, DeepSeek, or Claude allows for automatic generation of translations for the user interface, as well as detecting linguistic and stylistic errors.

Example:

We have a translation file in JSON format:

{
  "welcome_message": "Welcome to our application!",
  "logout_button": "Log out",
  "error_message": "Something went wrong. Please try again later."
}

AI can automatically generate its Polish version:

{
  "welcome_message": "Witaj w naszej aplikacji!",
  "logout_button": "Wyloguj się",
  "error_message": "Coś poszło nie tak. Spróbuj ponownie później."
}

Moreover, AI can detect spelling errors or inconsistencies in translations. For example, if one part of the application uses "Log out" and another says "Exit," AI can suggest unifying the terminology.

This type of automation not only saves time but also minimizes the risk of human errors. And this is just one example – AI also assists in generating documentation, writing tests, and optimizing performance, which we will discuss in upcoming articles.

Summary

Artificial intelligence is transforming the way frontend developers work daily. From generating components and refactoring code to detecting errors, automating testing, and documentation—AI significantly accelerates and streamlines the development process. Without these tools, we would lose a lot of valuable time, which we certainly want to avoid.

In the next parts of this series, we will cover topics such as:

Stay tuned to keep up with the latest insights!