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Multilingual Sentiment Aware Text Summarization A
Reinforcement
Learning
Approach for Consistency Maintenance
聽
馃
Large Language Models
聽
Content type:
Academic
arxiv.org
路
2d
2 days ago
Actions for Multilingual Sentiment Aware Text Summarization A Reinforcement Learning Approach for Consistency Maintenance
RATrain: A Resource-Aware Training Runtime for
Large
Language
Models
on Bandwidth-Constrained Heterogeneous Supercomputing Platforms
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
1d
1 day ago
Actions for RATrain: A Resource-Aware Training Runtime for Large Language Models on Bandwidth-Constrained Heterogeneous Supercomputing Platforms
REAL: A Reasoning-Enhanced Graph Framework for Long-Term Memory Management of LLMs
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
1d
1 day ago
Actions for REAL: A Reasoning-Enhanced Graph Framework for Long-Term Memory Management of LLMs
LLM-as-a-Discriminator
: When Synthetic Tables Still Look Real
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
1d
1 day ago
Actions for LLM-as-a-Discriminator: When Synthetic Tables Still Look Real
LANTERN: Layered Archival and Temporal Episodic Retrieval
Network
for
Long-Context
LLM
Conversations
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
6d
6 days ago
Actions for LANTERN: Layered Archival and Temporal Episodic Retrieval Network for Long-Context LLM Conversations
LLMCodec: Adapting Video Codecs for Efficient Weight Compression of
Large
Language
Models
聽
馃挰
Natural Language Processing
聽
Content type:
Academic
arxiv.org
路
6d
6 days ago
Actions for LLMCodec: Adapting Video Codecs for Efficient Weight Compression of Large Language Models
When
Large
Language
Models
Fail in Healthcare: Evaluating Sensitivity to Prompt Variations
聽
馃
Large Language Models
聽
Content type:
Academic
arxiv.org
路
3d
3 days ago
Actions for When Large Language Models Fail in Healthcare: Evaluating Sensitivity to Prompt Variations
Minimizing the Hidden Cost of Scales: Graph-Guided Ultra-Low-Bit Quantization for
Large
Language
Models
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
6d
6 days ago
Actions for Minimizing the Hidden Cost of Scales: Graph-Guided Ultra-Low-Bit Quantization for Large Language Models
TokenMizer: Graph-Structured Session Memory for Long-Horizon
LLM
Context
Management
聽
馃挰
Prompt Engineering
聽
Content type:
Academic
arxiv.org
路
6d
6 days ago
Actions for TokenMizer: Graph-Structured Session Memory for Long-Horizon LLM Context Management
Empirical Evaluation of
Large
Language
Models
for Migration of Code Fragments to Post-Quantum Cryptography
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
3d
3 days ago
Actions for Empirical Evaluation of Large Language Models for Migration of Code Fragments to Post-Quantum Cryptography
Dense
Contexts
Are Hard
Contexts
: Lexical Density Limits Effective Context in LLMs
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
6d
6 days ago
路
Hacker News
Actions for Dense Contexts Are Hard Contexts: Lexical Density Limits Effective Context in LLMs
SigmaScale:
LLM
Compression with SVD-based Low-Rank Decomposition and
Learned
Scaling Matrices
聽
馃
LLMs
聽
Content type:
Academic
arxiv.org
路
3d
3 days ago
Actions for SigmaScale: LLM Compression with SVD-based Low-Rank Decomposition and Learned Scaling Matrices
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