Topic: enterprise ai applications

  • CTGT Earns Best Presentation Award at VB Transform 2025

    CTGT Earns Best Presentation Award at VB Transform 2025

    CTGT, a San Francisco-based AI startup, won the Best Presentation Style award at VB Transform 2025 for its feature-level AI customization technology, which helps enterprises overcome trust barriers in AI models. CTGT's method evaluates and trains AI models up to 500 times faster than conventional...

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  • MIT's Self-Learning AI Framework Breaks Static Limits

    MIT's Self-Learning AI Framework Breaks Static Limits

    MIT researchers developed SEAL, an AI framework enabling language models to self-teach by generating their own training data and updating instructions, creating a continuous learning loop. SEAL uses a dual-loop reinforcement learning system where the model self-edits its parameters and evaluates ...

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  • Google's Gemini 2.5 AI Challenges OpenAI in Enterprise Market

    Google's Gemini 2.5 AI Challenges OpenAI in Enterprise Market

    Google has released its Gemini 2.5 AI models for enterprise use, offering three versions (Pro, Flash, and Flash-Lite) tailored to different performance and budget needs, challenging OpenAI's dominance. The models feature a "thinking budget" for computational control, allowing businesses to optimi...

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  • Phison E28 2TB SSD Review: Powerful Comeback Performance

    Phison E28 2TB SSD Review: Powerful Comeback Performance

    The Phison E28 2TB SSD sets a new benchmark for PCIe 5.0 drives with blistering speeds (14.9 GB/s read, 14.0 GB/s write) and improved power efficiency, thanks to its 6nm controller and 218-layer BiCS8 TLC flash. Recent advancements in controller design and NAND technology address previous power d...

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  • AlphaOne Enhances LLM Control for Better AI Performance

    AlphaOne Enhances LLM Control for Better AI Performance

    The "AlphaOne (α1) system" introduces a breakthrough framework for dynamically adjusting AI reasoning processes during operation, improving accuracy and efficiency without costly retraining. Current AI systems struggle with balancing rapid (System 1) and analytical (System 2) thinking modes, bu...

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  • OpenAI's o3-pro Boosts Enterprise AI Reliability & Tools, Slower Speed

    OpenAI's o3-pro Boosts Enterprise AI Reliability & Tools, Slower Speed

    OpenAI's o3-pro model offers enhanced reliability and expanded tool access for enterprises, prioritizing accuracy over speed, though response times can be slow. The model is available via OpenAI's API and for ChatGPT Pro/Team users, featuring deeper reasoning and integration with web search, file...

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  • Fix Your Failing AI Models: Better Model Selection Tips

    Fix Your Failing AI Models: Better Model Selection Tips

    Choosing the right AI model is critical for enterprise success, and enhanced benchmarking tools like RewardBench 2 help assess real-world performance and ethical alignment. RewardBench 2, introduced by the Allen Institute of AI, evaluates reward models across six key domains (e.g., factuality, sa...

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  • Google Study: Why RAG Systems Fail & How to Fix Them

    Google Study: Why RAG Systems Fail & How to Fix Them

    Google researchers introduced the concept of "sufficient context" to evaluate RAG systems, helping determine if LLMs have enough information to answer queries accurately, improving reliability for enterprise applications. RAG systems often fail due to incorrect answers, irrelevant details, or poo...

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