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
Imagine that you’re a data engineer. These challenges are quite common for the data engineers and data scientists we speak to. Scalable data infrastructure As AI models become more complex, their computational requirements increase. NetApp is already addressing many of these challenges.
In this post, I’ll explore why history repeats itself and how modern solutions like Platform Engineering can help solve the challenges of today. The Original Software Crisis In 1968, a Software Engineering Conference took place in Germany. Let me introduce you to a potential solution: Platform Engineering.
To address this consideration and enhance your use of batch inference, we’ve developed a scalable solution using AWS Lambda and Amazon DynamoDB. Conclusion In this post, we’ve introduced a scalable and efficient solution for automating batch inference jobs in Amazon Bedrock. This automatically deletes the deployed stack.
This post presents a solution where you can upload a recording of your meeting (a feature available in most modern digital communication services such as Amazon Chime ) to a centralized video insights and summarization engine. This post provides guidance on how you can create a video insights and summarization engine using AWS AI/ML services.
Speaker: Maher Hanafi, VP of Engineering at Betterworks & Tony Karrer, CTO at Aggregage
. 💡 This new webinar featuring Maher Hanafi, VP of Engineering at Betterworks, will explore a practical framework to transform Generative AI prototypes into impactful products! He'll delve into the complexities of data collection and management, model selection and optimization, and ensuring security, scalability, and responsible use.
In the rapidly evolving world of generative AI image modeling, prompt engineering has become a crucial skill for developers, designers, and content creators. Understanding the Prompt Structure Prompt engineering is a valuable technique for effectively using generative AI image models. Stability AI’s newest launch of Stable Diffusion 3.5
A team of engineers, physicists and computer specialists at Canadian company, Xanadu Quantum Technologies Inc., has unveiled what they describe as the world’s first scalable, connected, photonic quantum computer prototype.
According to data platform Acceldata , there are three core principles of data architecture: Scalability. Modern data architectures must be scalable to handle growing data volumes without compromising performance. Scalable data pipelines. Seamless data integration.
This article is the first in a multi-part series sharing a breadth of Analytics Engineering work at Netflix, recently presented as part of our annual internal Analytics Engineering conference. Subsequent posts will detail examples of exciting analytic engineering domain applications and aspects of the technical craft.
Think your customers will pay more for data visualizations in your application? Five years ago they may have. But today, dashboards and visualizations have become table stakes. Discover which features will differentiate your application and maximize the ROI of your embedded analytics. Brought to you by Logi Analytics.
Add to this the escalating costs of maintaining legacy systems, which often act as bottlenecks for scalability. The latter option had emerged as a compelling solution, offering the promise of enhanced agility, reduced operational costs, and seamless scalability. Scalability. Scalability. Cost forecasting. The results?
To do that, I needed to hire AI engineers. As a Singaporean AI R&D outfit, I couldn’t have only 10% of our engineers be Singaporeans and the rest foreigners. There’s a lot of buzz around it, and these are people who could be quickly brought in and, given the right training and guidance, become real-world AI engineers.
Native Multi-Agent Architecture: Build scalable applications by composing specialized agents in a hierarchy. BigFrames provides a Pythonic DataFrame and machine learning (ML) API powered by the BigQuery engine. BigFrames 2.0 bigframes.pandas provides a pandas-compatible API for analytics, and bigframes.ml
Three years ago BSH Home Appliances completely rearranged its IT organization, creating a digital platform services team consisting of three global platform engineering teams, and four regional platform and operations teams. Berke Menekli, VP of digital platform services, says it’s one of the best things he ever did.
research firm Vanson Bourne to survey 650 global IT, DevOps, and Platform Engineering decision-makers on their enterprise AI strategy. Consistent data access, quality, and scalability are essential for AI, emphasizing the need to protect and secure data in any AI initiative. Nutanix commissioned U.K.
VMware Cloud Foundation on Google Cloud VMware Engine (GCVE) is now generally available, and there has never been a better time to move your VMware workloads to Google Cloud, so you can bring down your costs and benefit from a modern cloud experience. Customers are already benefiting from VCF licensing support in GCVE.
to identify opportunities for optimizations that reduce cost, improve efficiency and ensure scalability. Software architecture: Designing applications and services that integrate seamlessly with other systems, ensuring they are scalable, maintainable and secure and leveraging the established and emerging patterns, libraries and languages.
This inspired him to co-found Locad , a logistics provider for omnichannel e-commerce companies that connects its network of third-party warehouses and shipping carriers with a cloud-based platform referred to its “logistics engine.”. That is what Locad’s tech enables. 4 ways to use e-commerce data to optimize LTV pre- and post-holiday.
VMware Live Recovery was engineered to solve these challenges. In addition, we have announced plans to enhance VMware Live Recovery support for Google Cloud VMware Engine (GCVE) as a cyber and disaster recovery (DR) site, for both on-premises and GCVE environments.
In software engineering, we have a lot of toolstens or hundreds of different tools, products, and platforms. In this article, I want to describe a basic modern stack that will allow you to build robust and scalable systems. We have enough.
The engineering ecosystem has undergone a massive paradigm shift – more languages, more frameworks, and minimal technical or procedural barriers to adopt new technologies or implement third-party tools and frameworks. Speed is great, but not when it comes at the expense of security.
Similarly, platforms like Lovable enable non-coders to build viable tech businesses using natural language prompts, contributing to a shift where AI-generated code reduces the need for large engineering teams. ” Use AI for rapid prototyping, but it’s your expertise that transforms raw output into robust, scalable software.
A platform-based approach to AI emphasizes building a scalable, reusable foundation that evolves with the organization, rather than developing costly, siloed solutions for individual use cases,” said Guan, supporting the notion that establishing standards to test outcomes of models is necessary.
Scalability and Flexibility: The Double-Edged Sword of Pay-As-You-Go Models Pay-as-you-go pricing models are a game-changer for businesses. In these scenarios, the very scalability that makes pay-as-you-go models attractive can undermine an organization’s return on investment.
When I started at Novanta about five years ago, my first mission was to bring scalability to our Enterprise solutions, as well as developing a digital roadmap to modernize the technology footprint, reduce technical debt, and explore strategies to ensure that we’re growing at scale. I’ve been in engineering. I’ve been outside of IT.
Scalability and Flexibility: The Double-Edged Sword of Pay-As-You-Go Models Pay-as-you-go pricing models are a game-changer for businesses. In these scenarios, the very scalability that makes pay-as-you-go models attractive can undermine an organization’s return on investment.
In the fast-evolving world of software engineering, one of the most transformative innovations is the combination of Continuous Integration (CI) and Continuous Deployment (CD) pipelines with cloud hosting. Let’s explore how CI/CD pipelines in the cloud are accelerating software delivery, with insights backed by research and industry trends.
The team should be structured similarly to traditional IT or data engineering teams. Ensuring effective and secure AI implementations demands continuous adaptation and investment in robust, scalable data infrastructures.
In todays fast-paced digital landscape, the cloud has emerged as a cornerstone of modern business infrastructure, offering unparalleled scalability, agility, and cost-efficiency. Cracking this code or aspect of cloud optimization is the most critical piece for enterprises to strike gold with the scalability of AI solutions.
Customers can stand up a dedicated cloud in under an hour and seamlessly extend or move virtual workloads to Google Cloud VMware Engine without any disruption or refactoring. Benefits of running virtualized workloads in Google Cloud A significant advantage to housing workloads in the cloud: scalability on demand.
Many legacy applications were not designed for flexibility and scalability. A faster time to market and a better customer experience GenAI copilots are well-established in the world of software engineering and will continue to proliferate and evolve.
They dont just react to change; they engineer it. Companies like Qualcomm have to plan and commit well in advance, estimating chip production cycles while simultaneously innovating at breakneck speed. Thats the mindset we need to bring into every business, whether were selling insurance, financial services, or something else entirely.
This unification of data engineering, data science and business intelligence workflows contrasts sharply with traditional approaches that required cumbersome data movement between disparate systems (e.g., data lake for exploration, data warehouse for BI, separate ML platforms).
Smaller than GIF or PNG graphics, Lottie animations also have the advantage of being scalable and interactive. It was introduced as an open-source library by Airbnb engineers six years ago and quickly became popular with app developers because Lottie files can be used across platforms without additional coding and edited after shipping.
This surge is driven by the rapid expansion of cloud computing and artificial intelligence, both of which are reshaping industries and enabling unprecedented scalability and innovation. The cost-control focus fails to engage architects and engineers in rethinking how systems are designed, built and operated for greater efficiency.
Among these signals, OpenTelemetry metrics are crucial in helping engineers understand their systems. These key components provide a standardized and scalable framework for capturing and analyzing metrics. The post OpenTelemetry Metrics Explained: A Guide for Engineers appeared first on Honeycomb.
Sales: Building Your Growth Engine The foundation of scaling startups is a robust sales strategy driving consistent revenue growth. This isn’t merely about hiring more salespeopleit’s about creating scalable systems efficiently converting prospects into customers.
CIOs who bring real credibility to the conversation understand that AI is an output of a well architected, well managed, scalable set of data platforms, an operating model, and a governance model. CIOs have shared that in every meeting, people are enamored with AI and gen AI.
Tools like dbt accelerated data democratization by allowing engineers to shift left business logic and create a hub-spoke model for data. By boosting productivity and fostering innovation, human-AI collaboration will reshape workplaces, making operations more efficient, scalable, and adaptable.
Outdated technology typically exhibits a variety of negative indicators linked to poor performance, including scalability, flexibility, high maintenance costs, and other issues that should be carefully monitored, Galbraith says. These issues often reflect a deeper problem within the IT infrastructure and can serve as early warning signs.”
And third, systems consolidation and modernization focuses on building a cloud-based, scalable infrastructure for integration speed, security, flexibility, and growth. For empowerment, weve introduced prompt engineering guides and access to an AI knowledge hub, and we reinforce training through AI forums about high-value use cases.
Ravi Ithal, GVP and CTO of Proofpoint DSPM, highlights the importance of a synergistic data and AI governance strategy by thinking of data as the fuel and AI as the engine: If youre throwing random fuel types into a high-performance engine, dont be surprised if it backfires.
Scalable Onboarding: Easing New Members into a Scala Codebase Piotr Zawia-Niedwiecki In this talk, Piotr Zawia-Niedwiecki, a senior AI engineer, shares insights from his experience onboarding over ten university graduates, focusing on the challenges and strategies to make the transition smoother.
Their journey offers valuable lessons for IT leaders seeking scalable and efficient architecture solutions. The brewery engineered a novel solution: a purpose-built underground beer pipeline. Just ask your tour guide to show you the actual pipeline, and you can see this engineering marvel with your own eyes.
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