![](data:image/png;base64,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)
01 | 课程介绍
![](data:image/png;base64,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)
02 | 内容综述
![](data:image/png;base64,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)
03 | AI概览:宣传片外的人工智能
![](data:image/png;base64,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)
04 | AI项目流程:从实验到落地
![](data:image/png;base64,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)
05 | NLP领域简介:NLP基本任务及研究方向
08 | NLP的学习方法:如何在AI爆炸时代快速上手学习?
09 | 深度学习框架简介:如何选择合适的深度学习框架?
16 | 统计学基础:随机性是如何改变数据拟合的本质的?
20 | Embedding简介:为什么Embedding更适合编码文本特征?
21 | RNN简介:马尔可夫过程和隐马尔可夫过程
25 | PyTorch简介:Tensor和相关运算
26 | PyTorch简介:如何构造Dataset和DataLoader?
29 | 文本分类实践的评价:如何提升进一步的分类效果?
30 | 经典的数据挖掘方法:数据驱动型开发早期的努力
31 | 表格化数据挖掘基本流程:看看现在的数据挖掘都是怎么做的?
32 | Pandas简介:如何使用Pandas对数据进行处理?
33 | Matplotlib简介:如何进行简单的可视化分析?
34 | 半自动特征构建方法:Target Mean Encoding
35 | 半自动特征构建方法:Categorical Encoder
37 | 半自动特征构建方法:Entity Embedding
38 | 半自动构建方法:Entity Embedding的实现
40 | 半自动特征构建方法:缺失变量和异常值的处理
41 | 自动特征构建方法:Symbolic learning和AutoCross简介
43 | 降维方法:Denoising Auto Encoders
44 | 降维方法:Variational Auto Encoder
47 | 集成树模型:GBDT和XgBoost的数学表达
49 | 集成树模型:CatBoost和NGBoost简介
50 | 神经网络建模:如何让神经网络实现你的数据挖掘需求
51 | 神经网络的构建:Residual Connection和Dense Connection
52 | 神经网络的构建:Network in Network
53 | 神经网络的构建:Gating Mechanism和Attention
55 | 神经网络的构建:Activation Function
56 | 神经网络的构建:Normalization
59 | 神经网络的训练:新的PyTorch训练框架
60 | Transformer:如何通过Transformer榨取重要变量?
62 | xDeepFM:如何用神经网络处理高维的特征?
64 | 时序建模:如何用神经网络解决时间序列的预测问题?
66 | 图网络简介:如何在图结构的基础上建立神经网络?
67 | 模型融合基础:如何让你所学到的模型方法一起发挥作用?
68 | 高级模型融合技巧:Metades是什么?
69 | 挖掘自然语言中的人工特征:如何用传统的特征解决问题?
70 | 重新审视Word Embedding:Negative Sampling和Contextual Embedding
72 | 深度迁移学习模型:RoBERTa、XLNet、ERNIE和T5
73 | 深度迁移学习模型:ALBERT和ELECTRA
74 | 深度迁移学习模型的微调:如何使用TensorFlow在TPU对模型进行微调
75 | 深度迁移学习模型的微调:TensorFlow BERT代码简析
76 | 深度迁移学习的微调:如何利用PyTorch实现深度迁移学习模型的微调及代码简析
78 | 优化器:Lookahead,Radam和Lamb
79 | 多重loss的方式:如何使用多重loss来提高模型准确率?
80 | 数据扩充的基本方法:如何从少部分数据中扩充更多的数据并避免过拟合?
82 | Label Smoothing和Logit Squeezing
83 | 底层模型拼接:如何让不同的语言模型融合在一起从而达到更好的效果?
84 | 上层模型拼接:如何在语言模型基础上拼接更多的模型?
86 | Virtual Adverserial Training:如何减少一般对抗训练难收敛的问题并提高结果的鲁棒性?
87 | 其他Embedding的训练:还有哪些Embedding方法?
89 | 多任务训练:如何利用多任务训练来提升效果?
90 | Domain Adaptation:如何利用其它有标注语料来提升效果?
91 | Few-shot Learning:是否有更好的利用不同任务的方法?
92 | 半监督学习:如何让没有标注的数据也派上用场?
93 | 依存分析和Semantic Parsing概述
94 | 依存分析和Universal Depdency Relattions
95 | 如何在Stanza中实现Dependency Parsing
98 | 树神经网络:如何采用Tree LSTM和其它拓展方法?
99 | Semantic Parsing基础:Semantic Parsing的任务是什么?
105 | Inductive Logic Programming:基本设定
106 | Inductive Logic Programming:一个可微的实现
107 | 增强学习的基本设定:增强学习与传统的预测性建模有什么区别?
108 | 最短路问题和Dijkstra Algorithm
109 | Q-learning:如何进行Q-learning算法的推导?
110 | Rainbow:如何改进Q-learning算法?
111 | Policy Gradient:如何进行Policy Gradient的基本推导?
112 | A2C和A3C:如何提升基本的Policy Gradient算法
113 | Gumbel-trick:如何将离散的优化改变为连续的优化问题?
114 | MCTS简介:如何将“推理”引入到强化学习框架中
115 | Direct Policty Gradient:基本设定及Gumbel-trick的使用
116 | Direct Policty Gradient:轨迹生成方法
117 | AutoML及Neural Architecture Search简介
119 | RENAS:如何使用遗传算法和增强学习探索网络架构
120 | Differentiable Search:如何将NAS变为可微的问题
124 | Learning to optimize:是否可以让机器学到一个新的优化器
127 | 多代理增强学习概述:什么是多代理增强学习?
128 | AlphaStar介绍:AlphaStar中采取了哪些技术?
129 | IMPALA:多Agent的Actor-Critic算法
133 | DeepGBM:如何用神经网络捕捉集成树模型的知识
139 | 解决Sparse Reward的一些方法
140 | Imitation Learning和Self-imitation Learning
142 | Model-based Reinforcement Learning
143 | Transfer Reinforcement Learning和Few-shot Reinforcement Learning
144 | Quora问题等价性案例学习:预处理和人工特征
145 | Quora问题等价性案例学习:深度学习模型
157 | Kubernetes Stateful Sets
158 | Istio简介:Istio包含哪些功能?
159 | Istio实例和Circuit Breaker