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			<title>LLM-Guided Open Hypothesis Learning from Autonomous Scanning Probe Microscopy Experiments</title>
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			<title>Anatomy of Unlearning: The Dual Impact of Fact Salience and Model Fine-Tuning</title>
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			<guid><![CDATA[https://provide.ai/rhamba-region-aware-hybrid-attention-mamba-framework-for-self-supervised-learning-in-resting-state-fmri-2/]]></guid>
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			<title>Rhamba: Region-Aware Hybrid Attention-Mamba Framework for Self-Supervised Learning in Resting-State fMRI</title>
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			<guid><![CDATA[https://provide.ai/reasonstl-bridging-natural-language-and-signal-temporal-logic-via-tool-augmented-process-rewarded-learning-2/]]></guid>
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			<title>ReasonSTL: Bridging Natural Language and Signal Temporal Logic via Tool-Augmented Process-Rewarded Learning</title>
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			<guid><![CDATA[https://provide.ai/securing-computer-use-agents-a-unified-architecture-lifecycle-framework-for-deployment-grounded-reliability/]]></guid>
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			<title>Securing Computer-Use Agents: A Unified Architecture-Lifecycle Framework for Deployment-Grounded Reliability</title>
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			<guid><![CDATA[https://provide.ai/how-value-induction-reshapes-llm-behaviour/]]></guid>
			<link><![CDATA[https://provide.ai/how-value-induction-reshapes-llm-behaviour/]]></link>
			<title>How Value Induction Reshapes LLM Behaviour</title>
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			<guid><![CDATA[https://provide.ai/narrow-secret-loyalty-dodges-black-box-audits-2/]]></guid>
			<link><![CDATA[https://provide.ai/narrow-secret-loyalty-dodges-black-box-audits-2/]]></link>
			<title>Narrow Secret Loyalty Dodges Black-Box Audits</title>
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			<guid><![CDATA[https://provide.ai/implicit-compression-regularization-concise-reasoning-via-internal-shorter-distributions-in-rl-post-training/]]></guid>
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			<title>Implicit Compression Regularization: Concise Reasoning via Internal Shorter Distributions in RL Post-Training</title>
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			<guid><![CDATA[https://provide.ai/rethinking-weight-tying-pseudo-inverse-tying-for-lm-stable-training-and-updates/]]></guid>
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			<title>Rethinking Weight Tying: Pseudo-Inverse Tying for LM Stable Training and Updates</title>
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			<title>How to Compress KV Cache in RL Post-Training? Shadow Mask Distillation for Memory-Efficient Alignment</title>
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			<guid><![CDATA[https://provide.ai/a-resilience-framework-for-bi-criteria-combinatorial-optimization-with-bandit-feedback/]]></guid>
			<link><![CDATA[https://provide.ai/a-resilience-framework-for-bi-criteria-combinatorial-optimization-with-bandit-feedback/]]></link>
			<title>A Resilience Framework for Bi-Criteria Combinatorial Optimization with Bandit Feedback</title>
			<pubDate><![CDATA[Mon, 11 May 2026 04:00:00 +0000]]></pubDate>
		</item>
					<item>
			<guid><![CDATA[https://provide.ai/beyond-lora-vs-full-fine-tuning-gradient-guided-optimizer-routing-for-llm-adaptation/]]></guid>
			<link><![CDATA[https://provide.ai/beyond-lora-vs-full-fine-tuning-gradient-guided-optimizer-routing-for-llm-adaptation/]]></link>
			<title>Beyond LoRA vs. Full Fine-Tuning: Gradient-Guided Optimizer Routing for LLM Adaptation</title>
			<pubDate><![CDATA[Mon, 11 May 2026 04:00:00 +0000]]></pubDate>
		</item>
					<item>
			<guid><![CDATA[https://provide.ai/how-to-train-your-latent-diffusion-language-model-jointly-with-the-latent-space/]]></guid>
			<link><![CDATA[https://provide.ai/how-to-train-your-latent-diffusion-language-model-jointly-with-the-latent-space/]]></link>
			<title>How to Train Your Latent Diffusion Language Model Jointly With the Latent Space</title>
			<pubDate><![CDATA[Mon, 11 May 2026 04:00:00 +0000]]></pubDate>
		</item>
					<item>
			<guid><![CDATA[https://provide.ai/linerides-line-guided-reinforcement-learning-for-bicycle-robot-stunts-2/]]></guid>
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			<title>LineRides: Line-Guided Reinforcement Learning for Bicycle Robot Stunts</title>
			<pubDate><![CDATA[Mon, 11 May 2026 04:00:00 +0000]]></pubDate>
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