How is AI Improving Weather Forecasting?
Why it matters: See how AI weather forecasting beats supercomputers, saves billions, and predicts hurricanes faster, plus where the models still fall short today.
Everything AI, Robotics, and IoT
Sanksshep Mahendra is a technology executive with success in driving, vision, strategy, design, and execution of software engineering for the web, mobile, apps, social, voice, IoT, applications along with Machine learning and AI. His expertise lies in partnering with business leaders, powering through roadblocks, and leading global teams to deliver disruptive products that advance the organization’s mission and capture game-changing results in the market. Sanksshep Mahendra has a lot of experience in M&A and compliance, he holds a Master's degree from Pratt Institute and executive education from Massachusetts Institute of Technology, in AI, Robotics, and Automation.
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Why it matters: How can AI help film makers in 2026? Inside the tools, films, cost cuts, union rules, and risks studios and indies cannot ignore.









