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Snowflake Buys Crunchy Data for $250m, Databricks Buys Neon for $1B. The New AI Database Battle.

SaaStr

Billion PostgreSQL Battle for AI Agent Supremacy Brief Overview : Two data giants are making strategic moves to dominate the AI agent infrastructure market through major PostgreSQL acquisitions. With this news, we will be introducing Snowflake Postgres: enterprise-grade, AI-ready, and fully managed.

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RAG Explained: What Is Retrieval-Augmented Generation?

How To Buy Saas

Retrieval-Augmented Generation (RAG) is a cutting-edge approach in AI that combines large language models (LLMs) with real-time information retrieval to produce more accurate and context-aware outputs. Industry leaders have quickly embraced RAG as a way to build more intelligent AI applications. and real SaaS examples using RAG.

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Best Applicant Tracking Systems for 2025

How To Buy Saas

Importantly, ATS platforms have evolved with AI-driven features , diversity and bias reduction tools , and deep analytics to meet todays hiring challenges. From cloud-based SaaS solutions to on-premise enterprise software , businesses worldwide are leveraging ATS technology to build efficient, fair, and scalable hiring pipelines.

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DeepSeek vs Claude vs Mistral: Top GPT Competitors in 2025

How To Buy Saas

Once-dominant ChatGPT (GPT-4) sparked a global AI race, and by 2025 there are powerful new alternatives. Companies now weigh dozens of LLMs each with its own strengths when choosing AI to enhance products and automate workflows. Tech giants (Googles Gemini, Metas LLaMA) and startups worldwide are launching generative AI models.

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Kellblog's 10 Predictions for 2020

Kellblog

I have always felt that blockchain was designed for one purpose (to support cybercurrency), hijacked to another, and ergo became a vendor-led technology in search of a business problem. AI/ML continue to see success in highly focused applications. I remain skeptical of vendors with broad claims around “enterprise AI”(e.g.,