Tag
GitHub Copilot code review now supports AGENTS.md files, allowing users to customize for more context-aware reviews.
Introducing an AI assistant that integrates with Teams and Slack, proactively remembering team context and acting before instructions are fully given.
Clawd is a context-aware browser mascot powered by 100% local offline AI.
A research paper proposing a unified agentic-retrieval framework for autonomous context-aware data quality assessment. It interprets natural-language usage descriptions, generates executable validation logic via multi-agent workflow, and uses feasibility validation to ensure reliability.
Introduces ContextRL, a reinforcement learning approach that teaches LLMs to identify which context supports an answer, achieving gains on agentic and multimodal benchmarks.
Presents BioStance, a context-aware dataset of 39,600 annotated Reddit post-comment pairs for stance detection in bioethical controversies, covering six targets across three dimensions of bioethical debate.
This paper introduces MAD2, a new benchmark for multimodal claim verification in spoken dialogues, and proposes a calibrated fusion of audio and text models that leverages conversational context to improve verification accuracy.
Introduces Spice, an open-source decision layer that acts as a 'brain' above execution agents like Claude Code and Codex, enabling context-aware task delegation and structured decision-making.
PhotoCraft proposes a training-free hierarchical memory system for photo-search agents, integrating working, episodic, and semantic memory to maintain long-horizon context and transfer knowledge across tasks, achieving up to 18.5% improvement on DISBench.
LaSR proposes a latent reasoning training paradigm for context-aware speech recognition, aligning chain-of-thought supervision around acoustic features to improve terminology recognition without added latency, outperforming standard fine-tuning on Fun-Audio-Chat.
Spice is an open-source runtime that acts as a decision layer above AI agents, observing context, simulating options, and dispatching tasks to agents before execution.
This paper introduces a knowledge-based approach using knowledge graph embeddings to automatically assess big data quality by predicting missing edges between context representations and quality rules, outperforming traditional matching methods.
Google's Nexus paper proposes an agentic framework that incorporates contextual events alongside numerical data for time series forecasting, achieving an 86.6% MAPE reduction on Zillow tests compared to direct chain-of-thought prompting.
Coworker AI offers context-aware model routing to reduce AI spending while maintaining performance.
Tabracadabra has been upgraded to a context-aware assistant for any textbox, eliminating the need to switch between chat interfaces. It is now open-sourced.
Proposes AR-VLA, an autoregressive action expert that generates continuous action sequences with long-term memory for context-aware robotic policy training, improving trajectory smoothness and task success rates over reactive VLA models.
A research paper proposing NWCAD (No-Worse Context-Aware Decoding), a decode-time adapter that prevents 'neutral regression' where LLMs overwrite already-correct answers when given non-informative context, using a two-stream architecture with gated fallback to no-context decoding.