Operations | Monitoring | ITSM | DevOps | Cloud

Everything you need to know about Large AI Model Training

When looking back at the role artificial intelligence (AI) has played in revolutionizing different industries that would typically require human intelligence, it is important to consider the next steps in this journey and how it is starting to evolve. With the growth of the industry, the volume and complexity of data are becoming unmanageable for pre-existing AI models.

IBM partners with Elasticsearch to deliver Conversational Search with watsonx Assistant

To meet customer needs for scale, speed, and precision, IBM partners with Elasticsearch to deliver retrieval augmented generation (RAG) capabilities that can be seamlessly integrated into the IBM watsonx Assistant’s new Conversational Search feature. Customers using IBM watsonx Assistant and watsonx Orchestrate can now build conversational AI assistants grounded on their company data with comprehensive search capabilities with RAG.

Cribl Copilot: Lets You Bypass the Learning Curve

Think of it as your digital concierge to achieve faster time-to-value IT and security teams face more challenges than ever, with data growing at 28% CAGR and taking numerous shapes and forms. Cribl’s suite of products – Stream, Edge, Search, and Lake – is built on a unified data processing engine specifically designed for IT and security data.

OpenAI Cost Optimization: 11+ Best Practices To Optimize Your OpenAI Spend

It’s a fast-paced business world out there. This means artificial intelligence (AI) models that help modern businesses win are more than welcome. The right model can drive innovation, streamline workflows, and save you money. But OpenAI’s powerful models can have a catch: High-frequency API usage, complex queries, and data processing can lead to unexpectedly high costs. Surprise costs eat up budgets and threaten other critical investments. Not good.

7 trends to watch when considering gen AI adoption

AI is the current “big thing” in tech and its development marks a pivotal chapter in computing history, where it is redefining how industries operate globally. As IT leaders and CTOs navigate their organisations through this transformative landscape, understanding the direction generative AI is heading and knowing how to manage this technology effectively is crucial.

Stack Overflow rolls out generative AI using Elasticsearch and Azure Open AI

Stack Overflow puts Elastic at the heart of OverflowAI powered by Azure OpenAI, a new search tool that enables developers to retrieve trusted information from a knowledge base of 60 million questions and answers. About Elastic Elastic, the Search AI Company, enables everyone to find the answers they need in real time, using all their data, at scale. Elastic’s solutions for search, observability, and security are built on the Elastic Search AI Platform — the development platform used by thousands of companies, including more than 50% of the Fortune 500.

Harness GenAI to enhance IT incident management

Advances in generative AI are rapidly transforming the IT operations landscape. According to Enterprise Strategy Group, 85% of organizations use or plan to deploy AI across many functional areas, including ITOps. AIOps platforms can apply advanced GenAI to quickly identify an incident’s root cause, impact, and recommend steps to resolution. When fed the correct information, AIOps gives IT teams immediate access to context-rich insights.

AI in Telecommunications: Opportunities, Challenges, and the Role of Resolve

Artificial Intelligence (AI) is rapidly becoming an essential component of the telecommunications industry, driving significant changes in how networks are managed, optimized, and maintained. With the growing complexity of telecom networks, coupled with the rising demand for seamless connectivity, AI offers a range of solutions to address these challenges. From predictive maintenance and network optimization to enhancing customer service, AI is poised to transform telecom operations.

Beyond RAG basics: Advanced strategies for AI applications

Our recent virtual event with Cohere dove deep into the world of retrieval augmented generation (RAG), focusing on the critical considerations for building RAG applications beyond the proof-of-concept stage. Our speakers, Lily Adler, principal solutions architect at Elastic, and Maxime Voisin, senior product manager at Cohere, shared valuable insights on the challenges, solutions, and best practices in this evolving field of natural language processing (NLP).