Remove 2025 Remove AI Remove Software Engineering
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Microsoft Pays Its AI Engineers 48% More. What About You?

SaaStr

"Software engineers working in AI earned 48% more than the average software engineer at the company, according to a payroll spreadsheet shared with BI." They want fairly consistent comp across engineering, and fear if nothing else, lots of issue if favorites are played, the new guy gets a better deal, etc.

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Mastering Growth in the AI Era: How to Stand Out, Acquire Customers, and Raise VC Dollars with B Capital, Zetta, and Glasswing

SaaStr

Joselyn Goldfein , Managing Director at Zeta Venture Partners, which invests in AI and data infrastructure-focused startups from inception through seed stage And see everyone at 2025 SaaStr Annual, May 13-15 in SF Bay!! What VCs Are Funding in AI Today The AI funding landscape has evolved rapidly in 2023-2024.

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Top Themes in Data Transcript

Tom Tunguz

Slide 1 Clearing: While data world consolidates, capabilities have exploded with AI. Content: AI is rewriting every rule about what’s possible with data Those two forces in tension will make for an exciting 2025 Slide 2 Clearing: My name is Tomasz Tunguz, founder and general partner at Theory.

Data 100
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Top Themes in Data in 2025

Tom Tunguz

There are two opposing forces in the world of data: an overall consolidation within the modern data stack & a massive expansion driven by AI capabilities. AI is rewriting every rule about what’s possible with data in 2025. Here are Theory’s Top Themes in Data in 2025 with the full presentation at the bottom.

Data 153
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How to Achieve High-Accuracy Results When Using LLMs

Speaker: Ben Epstein, Stealth Founder & CTO | Tony Karrer, Founder & CTO, Aggregage

In this new session, Ben will share how he and his team engineered a system (based on proven software engineering approaches) that employs reproducible test variations (via temperature 0 and fixed seeds), and enables non-LLM evaluation metrics for at-scale production guardrails.