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TELUS Digital showcases AI transformation in telecom: Unlocking value with innovative use cases at Mobile World Congress 2026
Prnewswire· 2026-02-24 11:45
TELUS Digital showcases AI transformation in telecom: Unlocking value with innovative use cases at Mobile World Congress 2026 [Accessibility Statement] Skip NavigationHow 2 trillion tokens and 20+ production use cases help telecoms escape 'Pilot Purgatory' with insights from NVIDIA, F3 Networks and TELUSVANCOUVER, BC, Feb. 24, 2026 /PRNewswire/ - [TELUS Digital] will showcase production-ready artificial intelligence (AI) driven customer experience (CX) and network optimization solutions for telecommunicatio ...
New TELUS Digital Poll and Research Paper Find that AI Accuracy Rarely Improves When Questioned
Prnewswire· 2026-02-11 11:45
Core Insights - The TELUS Digital poll indicates that follow-up questions to AI assistants like ChatGPT or Claude rarely lead to more accurate responses, emphasizing the importance of high-quality training data and model evaluation for AI systems [1][2] Group 1: Poll Findings - Among 1,000 U.S. adults using AI regularly, only 8% reported that AI responses became less accurate when questioned, while 26% could not determine the correct answer, 40% felt the new response was similar to the original, and 25% believed the new response was more accurate [1] - 88% of respondents have witnessed AI making mistakes, yet only 15% always fact-check AI-generated answers, indicating a gap in user diligence [1] Group 2: Research Findings - TELUS Digital's research evaluated four large language models (LLMs): Meta's Llama-4, Anthropic's Claude Sonnet 4.5, Google's Gemini 3 Pro, and OpenAI's GPT-5.2, focusing on their responses to follow-up prompts [1] - The study found that follow-up prompts do not reliably improve LLM accuracy and can sometimes decrease it, with GPT-5.2 showing a tendency to change correct answers to incorrect ones when questioned [1] Group 3: Recommendations for Enterprises - Enterprises are encouraged to invest in robust subject matter expertise, flexible platforms, and end-to-end AI data solutions to ensure AI reliability and user trust [1][2] - High-quality, expert-guided data is essential for training AI systems effectively, particularly in high-stakes contexts [2]