V
主页
Nic Lane_ Machine Learning Systems_ On-device AI and beyond
发布人
https://www.youtube.com/watch?v=lImr87-_0Lk About the speaker Nic Lane is an Associate Professor in the Computer Science Department at the University of Oxford. Before joining Oxford, he held dual appointments at University College London (UCL) and Nokia Bell Labs; at Nokia, as a Principal Scientist, Nic founded and led DeepX – an embedded focused deep learning unit at the Cambridge location. Nic specializes in the study of efficient machine learning under computational constraints, and over the last three years has pioneered a range of embedded and mobile forms of deep learning. This work formed the basis for his 2017 Google Faculty Award in machine learning. Nic’s work has received multiple best paper awards, including ACM/IEEE IPSN 2017 and two from ACM UbiComp (2012 and 2015). This year he will serve as the PC Chair of ACM SenSys 2018. Prior to moving to England, Nic spent four years at Microsoft Research based in Beijing as a Lead Researcher. He received his PhD from Dartmouth College in 2011. More information about Nic is available from http://niclane.org.
打开封面
下载高清视频
观看高清视频
视频下载器
Stanford CS234_ Reinforcement Learning: 蒙特卡洛树搜索和AlphaGO
TGN Temporal Graph Networks for Deep Learning on Dynamic Graphs [Paper Explained
陶哲轩, Machine Assisted Proof (机器辅助证明)
Pragmatic AI with TypeChat Daniel Rosenwasser
Two Sigma Presents_ Machine Learning Models of Financial Data
PPO算法 - Deep Reinforcement Learning
BBC 新闻:AI trading bot 会多大影响投资界 (02/06/2024)
深度学习之FPGA: FPGAs are (not) Good at Deep Learning [Invited]
Trading at light speed designing low latency systems in C++ - David
AI 产品介绍(imagica.ai):无需代码就可以制作AI 应用
Can China's AI Technology Compete With the US
Sparsity in Deep Learning Pruning + growth for efficient inference
Understanding over-squashing and bottlenecks on graphs via curvature Ricci Flow
教机器像人类一样思考:alternatiives to backpropagation
Scaling AI the Human Way Building Machines That Understand the world
谷歌AI: 量子计算
GPU 编程优化 workshop (hosted by @ChipHuyen )
Policy Gradients, TRPO, PPO算法
联邦学习:Federated Learning on Decentralized Data (Google I_O'19)
AI 能产生意识吗? by Oxford professor Michael Wooldridge
辛顿现场授课:AI在生物学上的神奇应用,太超前
Markus Pelger, Stanford University Deep Learning Statistical Arbitrage (9/7/21)
图神经网络paper reading: EXPHORMER Sparse Transformers for Graphs
Lecture 15 - On-Device Training and Transfer Learning (Part I) _ MIT 6.S965
Paper Reading: Causal Inference with LLM from Microsoft
【破解深度学习】2.2 非线性动力学搭台,损失函数梯度唱戏
Jacob Andreas What Learning Algorithm is In-Context Learning
Jacob Andreas - Good Old-fashioned LLMs (or, Autoformalizing the World)
强化学习经典Paper Reading: 分布式强化学习A3C paper 导读
我在B站上大学!【完整版-麻省理工-微积分重点】全18讲!学数学不看的微积分课程,看完顺滑一整年。_人工智能数学基础/机器学习/微积分/麻省理工/高等数学
paper reading: StockFormer 结合SAC强化学习的Trading 算法
timeseries - forecast using temporal convolution network (TCN)
标星15.4K,普林斯顿大学博士手敲3万行代码的深度学习项目,直接拿去用!
大语言模型开发工具: Pydantic is all you need - JasonLiu
Building Reactive AI Apps by Matt Welsh
【附源码】2024最新53个大模型实战项目!练完即就业Ⅰ基础到框架Ⅰ适合小白入门_LLM_RAG_Agent_ChatGPT_Prompt
简直逆天!李永乐老师深度讲解AI!带你了解电脑如何像人一样思考,带你学习AI前沿技术/人工智能/机器学习/深度学习/神经网络/计算机技术
The Modern Stack for ML Infrastructure _ Outerbounds
Learning to Cooperate and Compete via Self Play
Bloomberg PodCast: 电力如何应对AI 数据中心的需求