This site uses cookies to improve your experience. To help us insure we adhere to various privacy regulations, please select your country/region of residence. If you do not select a country, we will assume you are from the United States. Select your Cookie Settings or view our Privacy Policy and Terms of Use.
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Used for the proper function of the website
Used for monitoring website traffic and interactions
Cookie Settings
Cookies and similar technologies are used on this website for proper function of the website, for tracking performance analytics and for marketing purposes. We and some of our third-party providers may use cookie data for various purposes. Please review the cookie settings below and choose your preference.
Strictly Necessary: Used for the proper function of the website
Performance/Analytics: Used for monitoring website traffic and interactions
Now, let's embark on a journey into the depths of Kubernetes Cluster Logging, a topic that holds the key to efficient management and troubleshooting in the container-based 5G Telecom IoTmicroservices environment.
Deploying microservices in a Kubernetes cluster is critical in 5G Telecom. Therefore, implementing additional security measures within each microservice pod is not just a recommendation but a crucial step to ensure secure communication within the cluster. However, it also introduces significant security risks.
Through the Internet of Things (IoT), it is also connecting humans to the machines all around us and directly connecting machines to other machines. In light of this, we’ll share an emerging machine-to-machine (M2M) architecture pattern in which MQTT, Apache Kafka ® , and Scylla all work together to provide an end-to-end IoT solution.
Cisco Systems this week launched an IoT Dev Center as part of an effort to foster development of a new generation of applications that will be deployed at the network edge. Announced at the Cisco Live EMEA event, the IoT Dev Center provides access to sandboxes and tutorials for building highly distributed IoT applications that […].
The Internet of Things (IoT) is getting more and more traction as valuable use cases come to light. Confluent MQTT Proxy , which ingests data from IoT devices without needing a MQTT broker. Use cases for IoT technologies and an event streaming platform. Use cases for IoT technologies and an event streaming platform.
Stream processing applications, including streaming ETL pipelines, materialized caches, and event-driven microservices, are made easy with ksqlDB. Until recently, your options for interacting with ksqlDB were limited to its command-line […].
APIs have become ubiquitous across microservices architectures, public product initiatives, SaaS platform offerings, IoT and partner-partner integrations. The API management market alone is expected to expand 35% by 2025, supported by the sheer number of web APIs coming to market. The industry has […].
Whether it’s integrating third-party services, building microservices, or enabling dynamic content for web and mobile applications, APIs are everywhere. Flexibility : JSON API is integral to delivering structured content across various platforms, such as websites, mobile apps, and IoT devices.
Modern IT environments have long been evolving beyond the on-premises data center to include cloud infrastructure, mobile devices, internet-of-things (IoT) systems and operational technology (OT). To get a close look at this shift, the Tenable Exposure Management Academy regularly interviews cybersecurity leaders around the world.
When Cargill started putting IoT sensors into shrimp ponds, then CIO Justin Kershaw realized that the $130 billion agricultural business was becoming a digital business. To help determine where IT should stop and IoT product engineering should start, Kershaw did not call CIOs of other food and agricultural businesses to compare notes.
Underlying technology of Chaos Studio for Azure Kubernetes Service is the opens source platform Chaos Mesh We started with deploying a microservice application on to AKS. IoT Demo – Bas, Kees, Sander, Tijmen, Matthijs, Olena, Arjan With a large group of people we were able to attack the full chain of an Azure IoT Hub based solution.
virtual machine, container, microservice, application, storage, or cloud resource) used either as needed or in an always-on fashion to complete a specific task; for example, AWS S3. Zero trust for IoT and OT “Internet of things” and “operational technology” are not just buzzwords. A workload is any specific service (e.g.,
The pace of change can be managed successfully by defining service level objectives and more in dev environments Mobile applications, data lakes, microservices, data visualizations, SaaS integrations, automations, IoT data streams, machine learning models—in proof of concepts, pilots and scaling production environments, for customer-facing capabilities (..)
The basic flow of data can be summarize like so: Events are emitted by IoT devices over OPC-UA or MQTT to a local broker. Industrial IoT (IIoT) solution overview diagram. The second, more modern option is MQTT, now available on most IoT devices and certain industrial equipments. Azure IoT Edge – Source: Azure.
Compliance and security: Securing the network is harder than ever before due to the rapid implementation of cloud-based services in response to the pandemic and the increasing adoption of IoT. Critical talent shortage: Organizations are increasingly struggling to recruit and retain talent with specialized skills.
When IoT becomes the driver of a new solutions P&L, the general manager of that business will need more technology acumen than general managers of the past. The second is to bring IoT and AI-driven predictive maintenance services to adjacent markets. “By The silos were inhibiting our velocity.
In a microservices architecture, events drive microservice actions. In the most basic scenario, microservices that need to take action on a common stream of events all listen to that stream. In the Apache Kafka ® world, this means that each of those microservice client applications subscribes to a common Kafka topic.
Building a microservice using ChatGPT to consume messages and enrich, transform, and persist is the next phase of this project. In this example, we will be consuming input from an IoT device (RaspberryPi) which sends a JSON temperature reading every few seconds.
Understand the pros and cons of monolithic and microservices architectures and when they should be used – Why microservices development is popular. The traditional method of building monolithic applications gradually started phasing out, giving way to microservice architectures. What is a microservice?
Used judiciously, EventStorming gives us the ability to uncover enough information about our domain and our business that we can use it to design our microservices, bounded contexts, and even our teams. You’ll get a ton of insights into the best way to design your system and especially for designing microservice boundaries.
Recently, Microservices have been mainly favored to fixate on these dilemmas. As the title implies, Microservices are about developing software applications by breaking them into smaller parts known as ‘services’. In this blog, let’s explore how to unlock Microservices in Node.js What are Microservices ? microservices?
In a relatively brief time span, technologies like cloud, edge computing, artificial intelligence, and IoT have taken center stage, and new innovative technologies keep emerging. There are billions of devices, including IoT sensors, mobile phones, external services, and more—and trillions of connections. Granularity. Transportation.
Java (Spring Boot) : A Java-based framework that simplifies the development of enterprise-level applications with built-in tools for microservices, security, and database integration. Arduino : An open-source electronics platform with easy-to-use hardware and software, commonly used for building IoT and embedded systems projects.
Titanium Intelligent Solutions, a global SaaS IoT organization, even saved one customer over 15% in energy costs across 50 distribution centers , thanks in large part to AI. Cloud-native apps, microservices and mobile apps drive revenue with their real-time customer interactions. That’s not to say it’ll be easy.
However, the rise of cloud native has introduced larger workloads and more advanced capabilities, which required a new solution—microservices and Apache Kafka. With the introduction of microservices in 2011, the realization of adopting a new architectural style became clear. With that, SOA has started to hit its limit. Click To Tweet.
Cloud and Microservices. K3s is a stripped-down Kubernetes designed (among other things) for IoT and Edge Computing. Microsoft announces Open Service Mesh for managing communications between microservices. I’ve thought for some time that Kubernetes needs simplification. Is this it?
It also effectively provides a serverless architecture and is very widely used when building microservices applications. Any customer willing to run NiFi flows efficiently at scale should now consider adopting CDF-PC. However, for certain use cases, we want to go one step further.
Schema-based sharding gives an easy path for scaling out several important classes of applications that can divide their data across schemas: Multi-tenant SaaS applications Microservices that use the same database Vertical partitioning by groups of tables Each of these scenarios can now be enabled on Citus using regular CREATE SCHEMA commands.
Quarkus: Unleashing the Power of Cloud-Native Development Quarkus is a Kubernetes-native Java framework designed for building cloud-native, microservices-based applications. Quarkus excels in scenarios where fast startup times and small container sizes are paramount, such as serverless computing, IoT, and edge computing.
That means that each entity, such as an endpoint, server, VM- or container-based microservice, or Platform-as-a-Service (PaaS), must validate the identity of any endpoint, workload or application that it communicates with as well as scan any content that it sends, receives or maintains at rest for malicious activity. .
The leading-edge digital technologies that CIO Jimi would have at his disposal today would include cloud-native containers, microservices, Kubernetes, CI/CD, GitOps, artificial intelligence (AI), machine learning (ML), edge computing, and the Internet of Things (IoT).These
Get hands-on training in machine learning, microservices, blockchain, Python, Java, and many other topics. Machine Learning for IoT , March 20. Microservice Collaboration , March 7. Deploying Container-Based Microservices on AWS , March 21-22. Microservices Caching Strategies , March 27. AI and machine learning.
Fundamentals of IoT with JavaScript , February 14-15. Microservices Architecture and Design , January 16-17. Domain-Driven Design and Event-Driven Microservices , January 22-23. Advanced SQL Series: Proximal and Linear Interpolations , February 12. Getting Started with Python 3 , February 12-13. Mastering Pandas , February 13.
New use cases: event-driven, batch, and microservices. These use cases range from event-driven object store processing, microservices that power serverless web applications, to IoT data processing, asynchronous API gateway request processing, batch file processing, and job automation with cron/timer scheduling.
Think about refactoring to microservices or containerizing whenever feasible, to enhance performance in the cloud setting. This could entail decomposing monolithic applications into microservices or employing serverless technologies to improve scalability, performance, and resilience. Want to hire qualified devs? How to prevent it?
Create value from the Internet of Things (IoT) and connected enterprise. Some of the most common include cloud, IoT, big data, AI/ML, mobile, and more. Internet of Things (IoT), big data, and AI/ML capabilities for software outsourcing. Companies are building smart devices, using IoT to track data and control devices, and more.
Since microservices have constantly changing infrastructure resources and configurations, maintaining them is a challenge. Even the most capable teams have trouble when managing hundreds, or even thousands, of microservices. AWS IoT Greengrass 2.0 – With an Open Source Edge Runtime and New Developer Capabilities.
Fundamentals of IoT with JavaScript , February 14-15. Microservice Fundamentals , January 10. Microservices Architecture and Design , January 16-17. Domain-Driven Design and Event-Driven Microservices , January 22-23. Microservice Decomposition Patterns , January 25. Microservices Caching Strategies , January 28.
At the center of digital transformation, we face the exciting challenge of creating an ecosystem driven by high-performance, interconnected microservices developed in diverse languages such as Java, C#, JavaScript, and Python. At Perficient we extract the best of each language to shape an agile and efficient ecosystem.
DDD: testing in microservices architecture meetup: Videos & Presentation . In June we organized our 5th DDD meetup, where Christian Ciceri – co-founder & software architect of Apiumhub talked about testing in microservices architecture. IOT projects that may change the world. . Disruptive innovation to track.
The Platform Summit will bring together influential figures from the global API economy, offering a rich reservoir of expertise concerning API design norms and optimal methods for microservices. This conference is organized by our friends from DevNetwork. API World puts the API Product lifecycle center stage. Interested in attending?
IoT Fundamentals , April 4-5. Microservice Fundamentals , April 15. Microservice Collaboration , April 16. Domain-Driven Design and Event-Driven Microservices , May 14-15. Microservice Fundamentals , May 28. Microservice Decomposition Patterns , May 29. Microservice Collaboration , June 26.
The Amazon SageMaker integration with NVIDIA NIM inference microservices will help customers further optimize price-performance of foundation models running on GPUs. (To To learn more, see Optimize price-performance of LLM inference on NVIDIA GPUs using the Amazon SageMaker integration with NVIDIA NIM Microservices.)
It is a key capability that will address the needs of our combined customer base in areas of real-time streaming architectures and Internet-of-Things (IoT). It meets the challenges faced with data-in-motion, such as real-time stream processing, data provenance, and data ingestion from IoT devices and other streaming sources.
We organize all of the trending information in your field so you don't have to. Join 49,000+ users and stay up to date on the latest articles your peers are reading.
You know about us, now we want to get to know you!
Let's personalize your content
Let's get even more personalized
We recognize your account from another site in our network, please click 'Send Email' below to continue with verifying your account and setting a password.
Let's personalize your content