Try : Insurtech, Application Development

AgriTech(1)

Augmented Reality(20)

Clean Tech(7)

Customer Journey(17)

Design(41)

Solar Industry(7)

User Experience(64)

Edtech(10)

Events(34)

HR Tech(3)

Interviews(10)

Life@mantra(11)

Logistics(5)

Strategy(18)

Testing(9)

Android(48)

Backend(32)

Dev Ops(10)

Enterprise Solution(28)

Technology Modernization(7)

Frontend(29)

iOS(43)

Javascript(15)

AI in Insurance(37)

Insurtech(65)

Product Innovation(56)

Solutions(21)

E-health(12)

HealthTech(24)

mHealth(5)

Telehealth Care(4)

Telemedicine(5)

Artificial Intelligence(141)

Bitcoin(8)

Blockchain(19)

Cognitive Computing(7)

Computer Vision(8)

Data Science(18)

FinTech(51)

Banking(7)

Intelligent Automation(27)

Machine Learning(47)

Natural Language Processing(14)

expand Menu Filters

Serverless Architecture: Building the Future of App Development Like The Avengers

The world in today’s generation demands applications to be fast, efficient, and scalable. Serverless architecture has emerged as the superhero of the tech universe. Just like the Avengers assembling to save the world, serverless architecture brings together cloud functions to handle application tasks without the need for developers to manage or provision servers. Introduced in 2012, serverless architecture is reshaping how we build and deploy apps, enabling a new era of cost-efficiency and rapid development. Functions execute in response to events, leveraging FaaS (Function as a Service) to handle small pieces of application code.

Serverless Superpowers

Imagine a world where you only pay for what you use – sounds like a dream, right? Serverless architecture makes this dream a reality. By charging only for actual compute time, companies can significantly reduce their operational expenses. No more idle servers eating up your budget! Instead, resources are optimized, and costs are minimized, much like Tony Stark’s efficient use of his Iron Man suit’s power.

Scalability is another superpower of serverless architecture. Serverless applications automatically scale to handle varying loads. Whether there’s a sudden surge in traffic or a gradual increase in usage, the architecture adjusts seamlessly to meet demand. This ensures consistent performance and reliability, without the need for manual intervention.

A Focus on Innovation

Serverless architecture offloads the burden of server management to cloud providers. This shift allows companies to focus on their core business activities and innovation, rather than getting bogged down with infrastructure management. Serverless architecture handles the backend intricacies, freeing you up to innovate and drive your business forward.

Rapid Development and Deployment

The modular nature of serverless applications facilitates rapid development and deployment. By breaking down functionality into smaller, independent units, developers can quickly iterate and integrate new features with minimal disruption. This approach accelerates time-to-market, allowing companies to swiftly respond to evolving user needs and market changes. Serverless architecture empowers developers to accelerate their workflow and bring innovations to market with unparalleled agility.

How Industry Giants are Assembling Serverless Technologies

Serverless architecture isn’t just for startups; industry leaders are harnessing its power to drive innovation and enhance operations. Let’s take a look at how some tech giants are using serverless technologies to their advantage:

Netflix

Netflix, the master of media streaming, utilizes serverless architecture to handle data encoding and processing tasks. By offloading specific workloads to AWS Lambda, Netflix processes billions of user events daily, ensuring a smooth streaming experience for its global audience. 

T-Mobile

T-Mobile has adopted serverless to enhance its customer experience and backend operations. By using AWS Lambda and API Gateway, T-Mobile has streamlined its processes, enabling faster deployment cycles and more resilient applications. 

iRobot

iRobot employs serverless computing to manage data and interactions from millions of Roomba robots around the world. This allows iRobot to scale its operations without worrying about infrastructure management, focusing instead on delivering superior user experiences. Serverless architecture empowers iRobot to handle vast amounts of data and interactions efficiently, ensuring smooth and reliable performance across its global network of robots.

BBC

The BBC has integrated serverless architecture to support its digital broadcasting and content delivery platforms. By leveraging AWS Lambda, the BBC can scale its online services dynamically, ensuring reliable access to its vast content library for millions of viewers. 

The Future of Serverless

Serverless architecture is revolutionizing application development, offering cost-efficiency, scalability, and reduced management overhead. By leveraging cloud providers to manage infrastructure, developers can focus on coding and rapid deployment, optimizing resources, and minimizing costs. As industry leaders like Netflix, T-Mobile, iRobot, and the BBC continue to adopt serverless technologies, it’s clear that this architectural approach is here to stay.

Cancel

Knowledge thats worth delivered in your inbox

Is AI Ready to Replace Your Doctor?

By :

Have you ever wondered what if doctors could harness the power of many experts, all at once? Imagine every heartbeat, every lab result, and every medication being processed in seconds—faster than any human could ever dream of. No, this isn’t science fiction; it’s the new reality of Artificial Intelligence (AI) and Large Language Models (LLMs) in healthcare. The rise of AI in medicine and medical artificial intelligence is transforming the landscape of patient care and research.

Think of AI as the invisible co-pilot in a doctor’s journey—an entity that never sleeps, forgets nothing, and spots patterns that would take years for a human mind to recognize. It’s like giving healthcare professionals superpowers, enabling them to stay ahead of the curve in ways we never thought possible. But the real magic? Smart alert mechanisms jump into action when things are about to go wrong, providing warnings that save lives and make sure the right decisions happen in real-time. This is where AI for medical diagnosis truly shines, enhancing the capabilities of healthcare professionals.

AI and LLMs are changing the way healthcare works—and we’re at the forefront. Here’s how.

AI Pathology: Microscope with Superpowers

What if your microscope could not only analyze slides but also interpret them? That’s exactly what we did for Pathomiq. Our AI-powered pathology tool doesn’t just scan whole slides—it identifies disease progression and predicts patient responses with unmatched precision. By integrating LLMs, we created a system that not only analyzes images but also generates comprehensive, easy-to-understand diagnostic reports.

For Pathomiq, we trained AI models to detect malignancy patterns with 99% accuracy, and the LLMs translated the results into meaningful insights for doctors, which benefitted them with Faster diagnostics, better accuracy, and simpler communication between specialists.

Medical Image Analysis: X-Rays, But Make It Smart

X-rays, MRIs, and other medical imaging can be a treasure trove of data, but they often need an intelligent eye to make sense of it all. Abbvie came to us with this challenge. Our AI models analyze medical images to pinpoint abnormalities, demonstrating the power of AI medical diagnosis.

AI takes care of the image recognition, while LLMs convert findings into plain language summaries. For Abbvie, this resulted in faster image processing and more accurate interpretations. Clearer insights, faster decisions, and a smart system that even non-experts can understand.

AI Health Advisors

Imagine a health advisor that predicts your next treatment before you even need it. Our AI health advisor uses predictive analytics to identify patients likely to undergo surgery, showcasing how AI forecasts patient outcomes. This is similar to the Nura AI health screening concept, where early predictions combined with actionable, easy-to-read insights mean better health outcomes and proactive care.

Intelligent Document Parsing

Medical documents are notorious for their jargon-heavy content. But what if AI and LLMs could automatically extract the relevant information? That’s exactly what we did with our intelligent document parsing tool. Whether research papers or patient reports, our system extracts key data and presents it in a clear, concise format.

AI handles document parsing for faster decision-making. As there wouldn’t be any more sifting through endless documents—It streamlines the process and saves time.

Drug Discovery: Abbvie’s Fast-Track to Innovation

When Abbvie sought to enhance its drug discovery process, we stepped in with an AI-powered platform that redefines speed and accuracy. We developed a research tool that lists genes with their weighted interconnectivity from research papers, providing a visualization framework to display genes and proteins along with their interconnections. Our AI tools handle complex text parsing across various document formats and perform frequency determination and spectral clustering to identify gene pairs, their locations, and contextual details.

Our AI extracts and visualizes gene data, parses text, and determines the frequency and clustering of gene interactions. This approach accelerates drug discovery, cuts costs, and offers a clearer path from genetic research to real-world drug development.

Clinical Trials: Pathomiq’s AI-Powered Cancer Detection

Clinical trials are all about accuracy and speed, especially in cancer detection. For Pathomiq, we built AI models that analyze digital slides to identify early-stage malignancies. Our AI stepped in to explain the findings and suggest the next steps, streamlining the process for researchers and doctors.

AI detects cancer patterns in digital pathology slides and provides context-rich explanations that make trial results easier to understand. Early cancer detection paired with simplified trial documentation means faster, more accurate results.

Conclusion: AI & LLM—The Future of Healthcare, Today

At Mantra Labs, we’re not just integrating AI and LLMs into healthcare; we’re pioneering a revolution. It is said that AI has the potential to reduce diagnostic errors by up to 30% and streamline drug discovery processes by cutting research times in half. It has revolutionized healthcare by delivering faster diagnostics, improving the accuracy of medical imaging, and optimizing processes like pathology and clinical trials. Yet, even with these advancements, the human touch remains essential. Healthcare professionals bring the empathy, intuition, and ethical judgment that AI, for all its precision, cannot replace. While AI enhances decision-making and efficiency, it’s the collaboration between human insight and machine intelligence that ensures the best outcomes. The future of healthcare is not just about smarter technology, but about how human expertise and AI together can provide faster, more precise, and compassionate care.

Further Reading:

Doctor Who? AI takes center stage in American Healthcare

Cancel

Knowledge thats worth delivered in your inbox

Loading More Posts ...
Go Top
ml floating chatbot