Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Business
Sports
Technology
Health & Fitness
About Us
Contact Us
Copyright
© 2024 PodJoint
Podjoint Logo
US
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts211/v4/38/43/08/384308ea-6cbd-3f0e-7137-b585de932fc9/mza_3465094858329860557.jpg/600x600bb.jpg
Byte Sized Breakthroughs
Arjun Srivastava
92 episodes
6 months ago
Byte-Sized Breakthroughs offers concise audio summaries of recent AI research papers. Each episode breaks down a single paper in areas like machine learning, computer vision, or natural language processing, making it easier to stay current with AI advancements. The podcast covers topics such as large language models, mechanistic interpretability, and in-context learning. Episodes feature clear explanations of complex concepts, designed for efficient listening. Ideal for researchers, engineers, and AI enthusiasts with limited time, Byte-Sized Breakthroughs provides a starting point for exploring cutting-edge AI research. While offering overviews, listeners are encouraged to refer to original papers for comprehensive understanding. Curated by Arjun Srivastava, an engineer in the field, this podcast transforms spare moments into opportunities for learning about the latest in AI. Note: The voices you hear are not real people, but the content is carefully curated and reviewed.
Show more...
Natural Sciences
RSS
All content for Byte Sized Breakthroughs is the property of Arjun Srivastava and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Byte-Sized Breakthroughs offers concise audio summaries of recent AI research papers. Each episode breaks down a single paper in areas like machine learning, computer vision, or natural language processing, making it easier to stay current with AI advancements. The podcast covers topics such as large language models, mechanistic interpretability, and in-context learning. Episodes feature clear explanations of complex concepts, designed for efficient listening. Ideal for researchers, engineers, and AI enthusiasts with limited time, Byte-Sized Breakthroughs provides a starting point for exploring cutting-edge AI research. While offering overviews, listeners are encouraged to refer to original papers for comprehensive understanding. Curated by Arjun Srivastava, an engineer in the field, this podcast transforms spare moments into opportunities for learning about the latest in AI. Note: The voices you hear are not real people, but the content is carefully curated and reviewed.
Show more...
Natural Sciences
Episodes (20/92)
Byte Sized Breakthroughs
GAIA-2 Controllable Multi-View Generative World Model for Autonomous Driving
6 months ago

Byte Sized Breakthroughs
Distillation Scaling Laws
8 months ago

Byte Sized Breakthroughs
Native Sparse Attention: Hardware-Aligned and Natively Trainable Sparse Attention
8 months ago

Byte Sized Breakthroughs
Streaming DiLoCo: Efficient Distributed Training of Large Language Models
9 months ago

Byte Sized Breakthroughs
Efficiently Scaling Transformer Inference
9 months ago

Byte Sized Breakthroughs
Tülu 3: Pushing Frontiers in Open Language Model Post-Training
9 months ago

Byte Sized Breakthroughs
Bytedance: UI-TARS: End-to-End Model for Automated GUI Interaction
9 months ago

Byte Sized Breakthroughs
DeepSeek-R1: Incentivizing Reasoning Capability in LLMs via Reinforcement Learning
9 months ago

Byte Sized Breakthroughs
DeepSeek-V3: Advancements in Open-Source Large Language Models
9 months ago

Byte Sized Breakthroughs
Titans: Learning to Memorize at Test Time
9 months ago

Byte Sized Breakthroughs
Transformer2: Self-Adaptive Large Language Models
9 months ago

Byte Sized Breakthroughs
Learning to Learn Optimization Algorithms with LSTM Networks
9 months ago

Byte Sized Breakthroughs
Trust Region Policy Optimization
9 months ago

Byte Sized Breakthroughs
Efficient Deep Learning Parallelization using SOAP Search Space and FlexFlow Framework
1 year ago

Byte Sized Breakthroughs
Deep Retrieval: Learning Efficient Structures for Large-Scale Recommendation Systems
1 year ago

Byte Sized Breakthroughs
Scaling User Modeling for Personalized Advertising at Meta
1 year ago

Byte Sized Breakthroughs
LiNR: Revolutionizing Large-Scale Retrieval for Recommendation Systems
1 year ago

Byte Sized Breakthroughs
Comprehensive Guide to Real-Time Bidding (RTB): Challenges and Opportunities
1 year ago

Byte Sized Breakthroughs
Efficient Inference for Large Language Models with LLM.int8()
1 year ago

Byte Sized Breakthroughs
Enhancing Language Models with a Massive Datastore
1 year ago

Byte Sized Breakthroughs
Byte-Sized Breakthroughs offers concise audio summaries of recent AI research papers. Each episode breaks down a single paper in areas like machine learning, computer vision, or natural language processing, making it easier to stay current with AI advancements. The podcast covers topics such as large language models, mechanistic interpretability, and in-context learning. Episodes feature clear explanations of complex concepts, designed for efficient listening. Ideal for researchers, engineers, and AI enthusiasts with limited time, Byte-Sized Breakthroughs provides a starting point for exploring cutting-edge AI research. While offering overviews, listeners are encouraged to refer to original papers for comprehensive understanding. Curated by Arjun Srivastava, an engineer in the field, this podcast transforms spare moments into opportunities for learning about the latest in AI. Note: The voices you hear are not real people, but the content is carefully curated and reviewed.