Systems | Development | Analytics | API | Testing

Machine Learning

Applied Machine Learning Prototypes | The Future of Machine Learning

Applied Machine Learning Prototypes or AMPs, are pre-built applications that can be used as a starting point for your next machine learning project. These prototypes are designed to save time and resources by providing a tested and reliable solution to common machine learning problems. Cloudera + Dell + AMD.

How Generative AI Will Impact the Pharmaceutical Industry

By Noam Harel In the ever-changing landscape of the pharmaceutical industry, the integration of generative artificial intelligence (AI) holds immense promise and potential alongside risk, patient and consumer safety and tight regulation. Generative AI refers to the ability of machines to autonomously create new and unique content, ideas, or solutions.

Mind the Gap: Bridging the Business Unit AI Innovation Gap

By Noam Harel In the fast-paced and ever-evolving business landscape, innovation has become the lifeblood of success. Yet, many organizations fail to harness the full potential of innovation due to a significant gap between their business units. This gap, like a hidden chasm, prevents the sharing of best practices, stifling growth and hindering progress.

Machine Learning Operations (MLOps) Practices in WSO2 Choreo

MLOps also known as Machine Learning Operations is a core function of Machine Learning engineering, focused on streamlining the process of taking machine learning models to production, and then maintaining and monitoring them. MLOps is a collaborative function, often comprising data scientists, devops engineers, and IT. In this video, you can learn about the basics of MLOps and its applications in Choreo.

The Role of AI and Machine Learning in Future Product Analytics

In our data-driven world, the landscape of product analytics is rapidly evolving. With the rise of Artificial Intelligence (AI) and Machine Learning (ML), we're seeing a seismic shift in how businesses approach product development and enhancement. But how does AI and ML fit into product analytics, particularly for non-technical business leaders and marketers? And more importantly, what does this mean for the future? ‍

Key Takeaways on Generative AI for CEOs: Revolutionizing Business with Speed and Trust

Generative AI stands out from other technological breakthroughs due to its remarkable velocity and unprecedented speed. In a matter of mere months since its initial emergence in the limelight, this cutting-edge innovation has already achieved scalability, aiming to attain substantial return on investment. However, it is imperative to effectively harness this formidable technology, ensuring that it can deploy on a large scale and yield outcomes that garner trust from your business stakeholders.

What is Enterprise Generative AI and Why Should You Care?

It seems like we are witnessing a new quantum leap of technological advancement, with Generative AI taking the world by storm earlier this year. Generative AI (GenAI) has emerged as a powerful tool that combines artificial intelligence with creativity, empowering machines to generate original content, such as images, music, and even text, that imitates human-like creativity from structured and unstructured data.

Snowflake Expands Programmability to Bolster Support for AI/ML and Streaming Pipeline Development

At Snowflake, we’re helping data scientists, data engineers, and application developers build faster and more efficiently in the Data Cloud. That’s why at our annual user conference, Snowflake Summit 2023, we unveiled new features that further extend data programmability in Snowflake for their language of choice, without having to compromise on governance.