future forecasting
30 articles about future forecasting in AI news
Smarter Shopping: Forecasting the Future of AI Agents in Retail
The Wall Street Journal reports on the emerging role of autonomous AI agents in retail, forecasting their potential to transform shopping by handling complex, multi-step tasks. This signals a shift from passive chatbots to active, goal-oriented assistants.
TimeSqueeze: A New Method for Dynamic Patching in Time Series Forecasting
Researchers introduce TimeSqueeze, a dynamic patching mechanism for Transformer-based time series models. It adaptively segments sequences based on signal complexity, achieving up to 20x faster convergence and 8x higher data efficiency. This addresses a core trade-off between accuracy and computational cost in long-horizon forecasting.
Zalando's AI Strategy: 90% of Marketing Content Now AI-Generated, Preparing for AI Agent Future
Zalando reveals 90% of its marketing content is now AI-generated and is preparing for a future where 15% of e-commerce flows through AI agents by 2030. The company has been using AI for 15 years, with applications growing increasingly complex.
Beyond Simple Predictions: How Frequency Domain AI Transforms Retail Demand Forecasting
New FreST Loss AI technique analyzes retail data in joint spatio-temporal frequency domain, capturing complex dependencies between stores, products, and time for superior demand forecasting accuracy.
TimeGS: How Computer Graphics Techniques Are Revolutionizing Time Series Forecasting
Researchers have introduced TimeGS, a novel AI framework that treats time series forecasting as a 2D rendering problem. By adapting Gaussian splatting techniques from computer graphics, the approach achieves state-of-the-art performance while maintaining temporal continuity.
StaTS AI Model Revolutionizes Time Series Forecasting with Adaptive Noise Schedules
Researchers introduce StaTS, a diffusion model that learns adaptive noise schedules and uses frequency guidance for superior time series forecasting. The approach addresses key limitations in existing methods while maintaining efficiency.
Google's TimesFM Foundation Model: A New Paradigm for Time Series Forecasting
Google Research has open-sourced TimesFM, a 200 million parameter foundation model for time series forecasting. Trained on 100 billion real-world time points, it demonstrates remarkable zero-shot forecasting capabilities across diverse domains without task-specific training.
Deloitte Report: The Future of Commerce is Agentic Shopping in Asia Pacific
Deloitte has published a report on 'Agentic Shopping' in Asia Pacific, framing AI agents as the next major commerce paradigm. This signals a strategic shift from passive recommendation engines to proactive, autonomous shopping assistants.
The Future of Production ML Is an 'Ugly Hybrid' of Deep Learning, Classic ML, and Rules
A technical article argues that the most effective production machine learning systems are not pure deep learning or classic ML, but pragmatic hybrids combining embeddings, boosted trees, rules, and human review. This reflects a maturing, engineering-first approach to deploying AI.
AI-Powered Geopolitical Forecasting: How Machine Learning Models Are Predicting Regime Stability
Advanced AI systems are now analyzing political instability with unprecedented accuracy, predicting regime vulnerabilities in real-time. These models process vast datasets to forecast governmental collapse and potential conflict escalation.
OpenAI Forecasts $121B in AI Hardware Costs for 2028
OpenAI is forecasting its own AI research hardware costs will reach $121 billion in 2028, according to a WSJ report. This figure highlights the extreme capital intensity required to compete at the frontier of AI.
Kronos AI Outperforms Leading Time Series Models by 93% on Candlestick Data
Researchers from Tsinghua University released Kronos, an open-source foundation model trained on 12 billion candlestick records from 45 exchanges. It reportedly achieves 93% higher accuracy than leading time series models for price and volatility forecasting, requiring no fine-tuning.
Best Buy Bets on 'Agentic Commerce' and AI-Powered Hardware for Growth
Best Buy CEO Corie Barry outlines a dual AI strategy: making its digital properties 'agentic friendly' for AI assistants and positioning stores as the hub for AI-powered hardware like smart glasses. The retailer is partnering with OpenAI and Google to enable this future.
Beyond Blue Books: How Real-Time Market Intelligence AI is Transforming Luxury Asset Valuation
duPont REGISTRY Group's deployment of real-time AI analytics for luxury vehicles demonstrates a scalable model for dynamic pricing, authentication, and market forecasting of high-value collectibles. This approach directly translates to luxury retail for limited editions, vintage items, and exclusive collections.
The AI Policy Gap: Why Governments Are Struggling to Keep Pace with Rapid Technological Change
AI expert Ethan Mollick warns that rapid AI advancements combined with knowledge gaps and uncertain futures are leading to reactive, scattered policy responses rather than coherent governance frameworks.
Google's TimesFM: The Zero-Shot Time Series Model That Works Without Training
Google has open-sourced TimesFM, a foundation model for time series forecasting that requires no training on specific datasets. Unlike traditional models, it can make predictions directly from historical data, potentially revolutionizing forecasting across industries.
Build Reusable Data Science Workflows with Claude Skills and Subagents
Claude Skills and Subagents let you package prompts into reusable modules, freeing data scientists from repetitive AI adjustments for EDA, modeling, and deployment.
Airbnb's Engineering Blueprint for a Petabyte-Scale
Airbnb engineers detail the construction of a massive, internally operated metrics storage system. The system ingests 50 million samples per second, manages 1.3 billion active time series, and stores 2.5 petabytes of data, overcoming challenges in tenancy, shuffle sharding, and observability at scale.
The Graveyard of Models: Why 87% of ML Models Never Reach Production
An investigation into the 'silent epidemic' of ML model failure finds that 87% of models never make it to production, despite significant investment in development. This represents a massive waste of resources and talent across industries.
The Silent Threat to AI Benchmarks: 8 Sources of Eval Contamination
The article warns that subtle data contamination in evaluation pipelines—from benchmark leakage to temporal overlap—can create misleading performance metrics. Identifying these eight leakage sources is essential for trustworthy AI validation.
Chow Tai Fook Partners with Microsoft to Develop 'Hyper-Intelligence' for
The world's largest jeweler, Chow Tai Fook, has entered a strategic collaboration with Microsoft to co-develop an AI and data platform termed 'Hyper-Intelligence.' The initiative aims to redefine customer experience and operational efficiency across the global luxury retail sector.
Agentic AI in Retail: Experts Warn Against Shifting Liability to Consumers
Industry experts warn that the rush to implement agentic AI in retail carries significant risk. If brands attempt to shift liability for AI mistakes onto customers, they could erode hard-won consumer trust and face increased regulatory scrutiny.
Mo Gawdat: AI-Driven Unemployment Could End Capitalism
Mo Gawdat, former Google CBO, argues AI outperforming human labor could trigger 30-50% unemployment, not from crisis but efficiency, undermining capitalism's core reliance on labor for production and consumption.
IAT: Instance-As-Token Compression for Historical User Sequence Modeling
Researchers propose Instance-As-Token (IAT), which compresses all features of each historical interaction into a unified embedding token, then applies standard sequence modeling. This approach outperforms state-of-the-art methods and has been deployed in e-commerce advertising, shopping mall marketing, and live-streaming e-commerce with substantial business metric improvements.
AI Uncertainty Drives Software Stock Sell-Off, Says Altimeter's Gerstner
Altimeter Capital founder Brad Gerstner states that recent software stock drops stem from AI-induced uncertainty over 10-30 year cash flows, not poor earnings. This highlights AI's disruptive impact on traditional software valuation models.
Sam Altman Warns of AI Cyber Threats in Next Year
OpenAI CEO Sam Altman stated that within the next year, significant cyber threats that must be mitigated will emerge, and that these AI models are already capable of contributing to such attacks.
Kering's 80% Opportunity: A Strategic Pivot from Operational AI to Brand Meaning
Kering CEO Luca de Meo frames luxury as a €350B market where Kering only plays in 20%. The article argues that Gucci's decade-long growth has been erased and Balenciaga hasn't recovered from its 2022 scandal because both lost their core brand meaning. De Meo's strategy—proven at Renault—is to define meaning first, then execute operationally.
Privacy-First Personalization: How Synthetic Data Powers Accurate Recommendations Without Risk
A new approach uses GANs or VAEs to generate synthetic customer behavior data for training recommendation engines. This eliminates privacy risks and regulatory burdens while maintaining performance, as demonstrated by a German bank's 73% drop in data exposure incidents.
Ethan Mollick: No Major GenAI Work Impact in Large Firms During 2025
Wharton professor Ethan Mollick argues that studies showing no generative AI productivity impact in 2025 are misleading, as adoption was experimental and agentic tools were unavailable. The real impact will be measurable in 2027.
DrugPlayGround Benchmark Tests LLMs on Drug Discovery Tasks
A new framework called DrugPlayGround provides the first standardized benchmark for evaluating large language models on key drug discovery tasks, including predicting drug-protein interactions and chemical properties. This addresses a critical gap in objectively assessing LLMs' potential to accelerate pharmaceutical research.