AI Software Development Services

Leading Healthcare Innovation: AI That Grows Your Business and Patient Satisfaction

  • Comprehensive AI Assessment
  • Crafting Your AI Roadmap
  • Seamless AI Implementation
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Are You Facing These Challenges?

Facing resistance to technological adoption?

Finding it difficult to fully use the benefits of advanced AI solutions?

Overwhelmed by data complexity? 

Do you need help with bid volume of data, and are you unable to use actionable insights that could significantly enhance patient outcomes?

Struggling to improve patient outcomes? 

Are you finding enhancing patient care and achieving better health outcomes challenging? We will help

Tech adoption
Enhance efficiency
Better outcomes

Maximize Your Healthcare Business Potential with Us

Boost diagnostic accuracy by 45%
We develop hybrid AI models that integrate computer vision, NLP, and predictive analytics, significantly enhancing diagnostic precision and capabilities.
Sustain your market leadership for over 5 years
With our AI software development, you gain ongoing access to the latest AI innovations, helping you maintain a competitive edge in the long term.
Cut time to insight by 65%
Our AI solutions expedite the processing, structuring, and analysis of extensive datasets, delivering insights in days instead of months.
Recover 36% of your work week with automation
Our automated systems manage routine administrative tasks and workflows, freeing up your time to focus on strategic initiatives that drive value.

Our AI Services

Choose AI development services from Glorium Technologies to streamline all processes.
Custom AI Development

Our team can develop bespoke machine learning models for predictive analytics, image processing for diagnostic accuracy, and natural language processing for patient interaction or any other you wish.

AI Integration Services

Our AI solutions integrate seamlessly with your existing systems. It will help you streamline operations and smooth workflows.

Data Management and Analysis

We can develop advanced data solutions that organize, manage, and analyze large volumes of health data. It will lead to supporting better decision-making and improved patient outcomes.

AI Driven Automation

Choose automation of routine and complex processes within your healthcare organizations from patient scheduling and billing to more complex tasks like clinical decision support systems, reducing costs.

AI Compliance and Security

With us, you will ensure that your AI solutions not only comply with regulatory standards such as HIPAA but also incorporate all cybersecurity measures to protect sensitive patient data from potential threats.

Continuous Learning and Improvement

We provide services with the ongoing training of your AI systems and ensure that your AI applications continue to provide value and can be changed according to your needs.

Post Deployment Support

We ensure that your AI systems operate smoothly, including regular updates, bug fixes, and user support to handle any issues that arise.

Generative AI Solutions We Provide

We need to know all aspects of your project to achieve all business outcomes. With us, you’ll receive the top product that aligns seamlessly with your objectives, keeping your competitors guessing your secret to success.
Radiology Imaging
Quality Control
Pathology Analysis
Drug Screening
Clinical Trial Optimization
Telehealth Software Development
Telehealth Platforms
Virtual Health Assistants
Heart Gear
Health Monitoring Devices
Personalized Treatment Plans
Diagnosis and treatment planning
AI-Enhanced EHR

Our Development Process

We have the highest standards for development process and we choose client-centric solutions. It will ensure we deliver AI custom services that exceed your expectations.
We start by analyzing your business goals and converting them into comprehensive technical specifications.
We assemble a team tailored to your project needs.
Our AI developers build the software, providing you with weekly updates.
Post-deployment, our quality assurance team identifies any bugs and ensures continuous customer support to maintain high performance and satisfaction.

We Have Flexible Pricing

Whether you want to build a new AI tool or add AI features to your existing software, we can adjust our plans to fit your needs. Our pricing is straightforward and adaptable, designed to fit projects big and small.

Choose from various payment options based on the length or complexity of your project. This way, you can stick to your budget while getting the expert help your project demands. Let’s make AI work for you without breaking the bank.

Estimate Your Costs

Top AI Developers for your project

  • Our teams have successfully completed more than 140+ projects in various fields.
  • We strictly follow ISO standards to meet industry requirements.
  • Our collaboration models are flexible and free from unnecessary delays.
  • We provide high-quality development at a low cost due to our efficient management.
  • Our services can be customized to fit your specific needs and budget.
  • We design and develop products quickly and efficiently using the latest technologies.
  • We provide a project manager to ensure clear communication and successful outcomes.
Machine learning engineer
  • Data Analysis
  • AI
  • ML
Senior stack AI developer
  • Node
  • JS
  • Python
Middle AI developer
  • Swift
  • Objective-C
  • AI

Our clients say about us

Frame 80
They’re truly exceptional.
Turtle Health
Joshua Haselkorn,
Co-Founder, Turtle Health
Frame 80
Excellent experience from both professional expertise and customer experience perspectives.
Ingrid Vasiliu Feltes
Ingrid Vasiliu Feltes,
CEO at Softhread
Frame 80
Their punctuality and delivery capabilities were exactly as advertised.
Yayoi Sakaki
Yayoi Sakaki,
CEO, Project Ipsilon B.V.
I believe they really understand how to work with startups to augment their in-house development teams. They became personally invested in the quality of the product we produced.
Tracy Warren
Co-Founder and CEO at Astarte medical

Our clients journeys

Who we are

Learn more

Glorium Technologies is a full-cycle app & software development company which covers specific client business needs and manage them with the help of the best possible technology solutions.

Since 2010, we have been inventing digital breakthroughs, helping startups and businesses come out on top in their markets.


Why choose us

Products delivered:
Years on the market:
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Awards & recognitions

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real leaders
behemot 2023
excellence award

Inc. 5000


Named among the Inc.5000 (2020, 2021, 2022, 2023) & Regionals (2021, 2022, 2024) fastest-growing private companies in America


ISO 9001
ISO 13485
ISO 27001

    Let's connect!

    Send us a message, and we'll promptly discuss your project with you.

    What’s next?

    We start by signing an NDA to ensure your ideas are protected.

    Then, our team will analyze your requirements.

    You get a detailed project outline.

    We bring your project to life, so you can focus on growing your business.

    How to Implement AI in Healthcare Business

    AI integration becomes the main component if you want to unburden your operations and as a result, improve the quality of patient care. This article provides general information on how to embrace the change that comes with AI software development services to transform your healthcare business.

    As much as there are exciting opportunities that come with information technology in healthcare, many healthcare organizations experience challenges while implementing the systems. Peculiarities such as negativity coming from work staff, or beliefs that the introduction of AI techniques will cost the firm a lot of money are some of the challenges that delay the take-off of innovative solutions. Also, there is constantly the pressure to improve patient outcomes for the healthcare providers involved in order to deliver the best results possible.

    That is why, advancements in Artificial Intelligence is gaining traction in the software development industry with companies opting for the software as a solution to offer solutions to clients. Mckinsey research shows that currently, only 21% of all healthcare organisations are prepared for Gen AI. Among them some companies use AI in business processes and some of them make assessment to know they are ready for integrating AI in software development.

    Gen AI and Predictive AI in Healthcare

    AI has, therefore, transformed aspects relating to the administration and provision of care in the healthcare systems. It has been seen that use of AI has become a trend where AI in software development and generation of codes replaces software engineers in many aspects like coding and testing or writing normal codes and tedious testing processes, and engineers can then use their skills in developing more challenging software programs.

    Also, it has become essential that systems can generate code in various domains through the use of artificial intelligence. It offers true code snippets of high quality and free from errors, which helps cut down the time to complete the project and also saves the human coders from the tedious work.

    Two primary types of AI are often discussed: traditional AI and generative AI. Both are quite different from one another and have their individual uses and advantages in the field of healthcare. In this article, we will identify some of the key categories of AI that are implemented to design the healthcare software.

    Healthcare and other fields with stakes in traditional AI came away with physical and numerical code generation. Traditional AI defines ordinary concepts that use algorithms to assess data in order to make decisions. Traditional artificial intelligence can help startups, as well as healthcare companies, to deal with patient’s data, health records, or sometimes can work as diagnosis tools.

    As with other types, it uses a sizable amount of machine learning where systems are trained and get better at what they do with time. For instance, the model would need to train on thousands of X-ray images in order to figure out which of them exhibit demonstrable symptoms of pneumonia. These examples demonstrated how the concept of reducing costs is an important idea that contributes to consistent success in improving business processes.

    Therefore, in general, the primary advantage of traditional AI lies in the fact that it is capable of handling large sets of data at extremely high speed with small percentage of errors. For this reason, it assists in managing the burden of the workforce in the health sector and supports the decision-making process since time is of the essence in most of these facilities.

    Another fact is about promising branch of AI is generative AI, which does not forecast results but works on data and develops new instances. It can create words and phrases and images, and even computerized models, which are good for learning or practicing scenarios in the medical field.

    Benefits of Gen AI

    This is the case of the new gen AI that does not follow the logic of learning from the data and then predicting new values. What can be done with it is to write text, draw images, and even create simulations that would be beneficial in training or some sort in the healthcare field. For instance, generative AI can generate realistic patients for training purposes without needing the true data of real-life patients in health facilities for real-life patients’ information privacy. An experience to learn from, Mayo Clinic serves as an example to show that such innovations benefited cost-cutting and workflows.

    The final characteristic of generative AI is its capacity to innovate. Closely related, and still in the same context, it can propose approaches for managing a patient’s condition or even model how this particular disease may develop in a particular patient. This type of AI is particularly useful for innovation and application in predictive medicine, which is the utilization of highly customized treatment plans to patients.

    Traditional AI in healthcare and code generation

    Classic or traditional (predictive) AI applies mathematical models which they use to examine input data and then make decisions on the results of the assessments. Small businesses, especially startups can utilize traditional artificial intelligence to deal with patient information, medical records, or diagnostics.

    This is a method that heavily utilizes artificial learning, where systems adapt to the data being fed into them over time to make improvements to the system. In another case, AI will need to study thousands of X-ray images with the aim of detecting signals of pneumonia. Such examples demonstrated the effectiveness of cost reduction paired with outstanding indicators in optimizing processes.

    Thus, the greatest advantage of traditional AI lies in the readiness of these tools to process large amounts of data within a short timeframe and demonstrating increased accuracy in the process. It also assists in easing the burden of work on the health care professionals while also aiding in offering faster solutions which are vital in the health facilities.

    Differences between predictive AI and Gen AI

    Before choosing predictive AI or Generative AI for your healthcare business, let’s describe the main differences between them.

    Traditional AI deals with pre-existing information reaching pertinent conclusions; generative AI generates new information with new findings.

    Diagnostic AI is utilized more for diagnostic tool-aided and operational purposes, while generative AI is applied to develop new training dossiers, predictive analysis, and individualized healthcare.

    Gen AI is more creative since it tests multiple options and generates new values, while generative AI aims to perfect current procedures and approaches.

    Cost factor of ai and software engineering
    Gen AI and predictive AI require more financial investments from the beginning of the project. However, such investments can reduce costs in the future and boost revenue.

    Steps to Consider when Impementing AI Tools in Healthcare

    AI algorithms are very useful in analyzing large medical data, resulting in better diagnostics and more. Here’s how AI can positively impact your healthcare business and what steps should healthcare leaders consider when implementing AI. Still the idea that “ai replace software engineers“ cannot be true, as AI software developers needs to be involved in process of code generation.

    Comprehensive AI assessment

    The first way to start making strategic changes to incorporate AI in your healthcare organization is to conduct an assessment. This evaluation enables you to determine some of the key focuses that may benefit from AI and where AI software developers are needed so that informed decisions may be made. Knowing what can be achieved with a current system and how this would integrate with AI, a specific roadmap can be put in place.

    Your AI roadmap

    Think about your AI roadmap. It includes deciding which approach to use, selecting the right tools to implement the AI, planning realistic timelines for each step in the implementation process, and maintaining focus on achieving the goal of providing better patient care and organizational efficiency.

    AI and machine learning implementation

    While it remains acceptable for AI to be integrated into your healthcare systems, the process should not cause any problems to the normal functioning of existing systems, while at the same time offering as many benefits as possible. It includes the people in your team who have to be taught how to use it. So after adopting AI, your healthcare services will blend seamlessly with the new features and capabilities of AI to ensure smooth operations and successful delivery of services.

    Our AI software developers from Glorium Technologies are ready to implement our AI solutions to fit your healthcare organization best.

    The Cost of AI Software Development

    AI implementation in healthcare has higher costs than traditional software development. This abstract will help you understand the financial prospects involved in the AI project.

    Initial costs

    It might cover AI tools for machine learning models, data analysis, predictive analytics, and natural language processing applications. Furthermore, managing such advanced technologies may require new infrastructures and better storage solutions.

    Operational costs

    It becomes clear that healthcare organizations need certain overheads to operate this system. Staff training is also a significant factor, as employees must be well-versed in the new systems to utilize their capabilities thoroughly.

    Customization costs

    Modifications are frequently necessary to guarantee that the systems match the existing processes. It is worth noting that you may encounter additional costs by introducing tailored AI tools and incorporating them into a specific process.

    Potential savings

    While the upfront and ongoing costs can be substantial, AI  offers potential savings and benefits. Implementing AI technology in the hospital is greatly beneficial since it helps avoid overburdening personnel in performing routine duties and instead dedicates their time to crucial patient needs. It will decrease the chances of the need for further treatment and even recurrent hospitalization.

    Use Cases of AI in Healthcare

    Advanced technology within the medical industry that applies artificial intelligence innovation is unique. From the identification of diseases in infected patients to improving the contrast in medical imaging, applications of Artificial Intelligence are revolutionizing the medical field. Thanks to SD, AI in software development is developing new products and facilitating the work of physicians and other caretakers in diagnosing diseases and coming up with the best treatment regimens and modes of care that will help this vulnerable group of people. Here are some of the key industries where AI is gathering more ground.

    Detecting Infectious Diseases

    It has revolutionized actual public health responses to look for infectious diseases using AI and machine learning. Existing codes with AI are much faster than traditional ways of doing it, and various inputs from multiple places are fed into the AI systems in order to look for and detect diseases and their increasing prevalence. With the help of more efficient machine learning models, healthcare professionals are employed to anticipate the spread of infections and focus resources on managing diseases. The AI software engineers and AI tools invest further time and effort into improving the code and the subsequent procedures to make the tools fully reliable and efficient.


    AI tool is artificial intelligence bases that help doctors diagnose complicated problems the human eye cannot easily notice. Applying AI to this particular field accelerates diagnostic procedures and enhances their efficacy, contributing to improved patient outcomes. Additionally, our AI software development company can provide any solution which will inlfuence on workflows and boost the revenue without any risk management.


    AI applications in cardiovascular disease have gone beyond diagnosis and treatment methods. AI systems combine data from multiple tests and constantly check heart rhythms and patterns through AI algorithms. The integration of these services assists in the early identification of potential heart attacks and other cardiovascular events, enabling individuals to be attended to before the events happen. Appropriate software engineering practices enable the advancement of these systems to be stable and secure, as their functionality is critical to the handling of health records.


    Over the last few years, many AI discoveries have been made in tissue diagnosis. AI-driven tools help pathologists detect abnormalities such as cancer at much earlier stages. Gen AI here can prove advantageous as it can generate clear tissue sample images that can be used to train pathologists about diseases and gain more reasonable insights into the signs of illness.


    Implementing AI system integration is especially important in radiology as it is one of the most affected fields. It incorporates using different intelligent methods in radiology to enhance image analysis, beginning with X-rays, MRI, and CT scans and extending to greater values. With the help of advanced programs for image enhancement and further analysis powered by AI, it is easier and faster for a radiologist to detect such conditions as fractures, tumors, or neurological diseases. Besides easing the work of diagnostic imaging specialists to improve the efficiency of the healthcare, the incorporation of AI helps to prevent human mistakes in analyzing images. It provides patients with the best diagnosis possible.


    In ophthalmology, AI is used to screen for eye diseases. Artificial intelligence means that retinal images are analyzed using aids that can help diagnose an illness in its early stages when it can be unnoticed during more ordinary checkups. They are applied as decision-support systems that stand in the ophthalmologist’s workflow to help with accurate and timely diagnosis and treatment, which may help prevent the development of severe vision impairment in patients.


    As AI tools become more sophisticated, they promise to enhance nearly every aspect of medical care by providing deeper insights, predicting outcomes, and personalizing patient management.

    Healthcare companies need to develop codes and tools and improve them to meet the high standards of medical applications. In this case, they can hire reliable partners such as Glorium Technologies to streamline operations and grow their businesses. With our AI in software development, companies will boost revenue and gain a competitive advantage.

    The development and integration of AI into healthcare are guided by a rigorous software development lifecycle, which ensures that each solution is tested and optimized for clinical environments. This systematic approach ensures that various risks are averted and AI systems are made more accurate, especially in sensitive areas such as healthcare.

    Contact our managers and start boosting your revenue. With our AI tools, healthcare professionals can enhance the effectiveness of their operations and define new industry standards for how medicine should be delivered.

    We support healthcare leaders in implementing AI strategies to deliver data-driven, personalized care.
    Questions You May Have

    How can AI improve healthcare software?

    AI can enhance healthcare software by automating routine tasks, improving diagnostic accuracy through advanced data analysis, and personalizing patient care plans based on predictive modeling. This leads to more efficient healthcare delivery, better patient outcomes, and reduced operational costs.

    What are the common applications of AI in healthcare?

    Common applications include image analysis for radiology and pathology, predictive analytics for patient monitoring, automated patient scheduling systems, and personalized medicine algorithms that tailor treatments to individual genetic profiles.

    How is data handled securely in AI healthcare applications?

    AI developers use encrypted data storage, secure data transfer protocols, and strict access controls to protect patient information. Additionally, compliance with healthcare regulations like HIPAA in the U.S. ensures that data handling meets stringent privacy standards.

    How does AI impact the role of healthcare professionals?

    AI is designed to support, not replace, healthcare professionals. By automating administrative tasks and providing analytical support, AI allows doctors, nurses, and other staff to spend more time on patient care and less on paperwork, enhancing the quality of service.

    Can AI in healthcare be customized for specific needs?

    Yes. Customization might include developing algorithms based on specific patient demographics or integrating AI seamlessly with existing clinical workflows.

    What are the costs and key factors involved in implementing AI in healthcare software development?

    Implementing AI in healthcare involves various costs and factors that organizations need to consider to ensure successful integration and operational efficiency. Initial costs may include expenses for AI software development, infrastructure upgrades, and purchasing necessary hardware. Ongoing costs can involve software maintenance, data management, and continuous training for staff.

    Key factors for a successful implementation include ensuring compliance with healthcare regulations, the scalability of AI solutions, and the ability to integrate seamlessly with existing healthcare systems. Additionally, organizations should consider the potential return on investment, such as improved patient outcomes and operational savings, when evaluating the feasibility of AI projects.