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Deep Learning University Lectures Repository

You've landed at the Deep Learning University Lectures Repository, your one-stop-shop for university-level deep learning lecture materials in PDF format. We're here to democratize access to educational resources, making deep learning accessible and understandable for all.

Our Mission

As a deep learning enthusiast, my goal is to enrich the global learning community by curating a diverse array of deep learning lectures. These resources span from basic to advanced topics, allowing learners to delve into the vast applications of deep learning.

Navigating the Repository

The repository is neatly organized by university and course for easy navigation. Each university folder houses PDFs of lectures from various deep learning courses, enabling users to dive into their topics of interest.

Join Us

We welcome and encourage contributions! If you have deep learning lecture materials to share, please submit a pull request. Together, we can create a comprehensive resource that benefits learners around the globe.

Our Vision

By pooling these resources, we aim to empower individuals worldwide to leverage the power of deep learning for the betterment of society. Whether you're a student, researcher, or hobbyist, this repository is crafted to facilitate learning and inspire innovative deep learning applications. Enjoy your learning journey!

Note: The information provided aligns with the user profile's focus on novelty in research, incorporating advanced probability, statistics, information theory, detection and estimation methods, and advanced deep learning and machine learning techniques.

A Gentle Reminder: Respect Copyrights

Dear users,

Before accessing or downloading any PDFs from this repository, we kindly remind you to respect the intellectual property rights of the content creators. The PDFs included here belong to their respective owners, including universities, professors, and other educational institutions.

This repository is created solely for knowledge sharing and fostering a global learning community. It's crucial to adhere to copyright laws and use these materials strictly for educational purposes. If you find any content that infringes upon copyrights, please bring it to our attention, and we will promptly address the concern.

Let's ensure our pursuit of knowledge is conducted with integrity and respect for the hard work and dedication of those who contribute to the field of deep learning. Learn responsibly!


Survey link


Textbooks link




deep learning architectures,



Repo structure

├─ Applied_DL
   ├─ 00 - Training.pdf
   ├─ 01 - Computer Vision
      ├─ 01 - Image Classification
         ├─ 01 - Large Networks.pdf
         ├─ 02 - Small Networks.pdf
         ├─ 03 - AutoML.pdf
         ├─ 04 - Robustness.pdf
         ├─ 05 - Visualizing & Understanding.pdf
         └─ 06 - Transfer Learning.pdf
      ├─ 02 - Image Transformation
         ├─ 01 - Semantic Segmentation.pdf
         ├─ 02 - Super-Resolution, Denoising, and Colorization.pdf
         ├─ 03 - Pose Estimation.pdf
         └─ 04 - Optical Flow and Depth Estimation.pdf
      ├─ 03 - Object Detection
         ├─ 01 - Two Stage Detectors.pdf
         └─ 02 - One Stage Detectors.pdf
      ├─ 04 - Face Recognition and Detection.pdf
      ├─ 05 - Video.pdf
      └─ test.pdf
   ├─ 02 - Natural Language Processing
      ├─ 01 - Word Representations.pdf
      ├─ 02 - Text Classification.pdf
      ├─ 03 - Neural Machine Translation.pdf
      └─ 04 - Language Modeling.pdf
   ├─ 03 - Multimodal Learning.pdf
   ├─ 04 - Generative Networks
      ├─ 01 - Variational Auto-Encoders.pdf
      ├─ 02 - Unconditional GANs.pdf
      ├─ 03 - Conditional GANs.pdf
      └─ 04 - Diffusion Models.pdf
   ├─ 05 - Advanced Topics
      ├─ 01 - Domain Adaptation.pdf
      ├─ 02 - Few Shot Learning.pdf
      ├─ 03 - Federated Learning.pdf
      ├─ 04 - Semi-Supervised Learning.pdf
      └─ 05 - Self-Supervised Learning.pdf
   ├─ 06 - Speech & Music
      ├─ 01 - Recognition.pdf
      ├─ 02 - Synthesis.pdf
      └─ 03 - Modeling.pdf
   ├─ 07 - Reinforcement Learning
      ├─ 01 - Games.pdf
      ├─ 02 - Simulated Environments.pdf
      ├─ 03 - Real Environments.pdf
      └─ 04 - Uncertainty Quantification & Multitask Learning.pdf
   ├─ 08 - Graph Neural Networks.pdf
   ├─ 09 - Recommender Systems.pdf
   ├─ 10 - Computational Biology.pdf
   └─ README.md
├─ Architecture
   ├─ BERT_Slides.pdf
   ├─ Beyond Fine-Tuning_ LLM Optimization Webinar.pdf
   ├─ Diagrams_V2.pdf
   ├─ Mistral.pdf
   ├─ Slides.pdf
   └─ Stable_Diffusion_Diagrams_V2.pdf
├─ Chinese University
   └─ pdf
      ├─ 2005.11401.pdf
      ├─ 2012.07805.pdf
      ├─ 2101.03961.pdf
      ├─ 2103.00020.pdf
      ├─ Lecture 8_ Multimodal_LLMs.pdf
      ├─ Lecture-10-Vertical-LLMs.pdf
      ├─ Lecture-5-Efficiency.pdf
      ├─ Lecture-7-Knowledge-and-Reasoning.pdf
      ├─ Lecture-9-LLM-Agents.pdf
      ├─ Lecture4-TrainingLLMs.pdf
      ├─ Tutorial1-1-ChatgptAPI.pdf
      ├─ lecture-1-introduction.pdf
      ├─ lecture-2-language-model.pdf
      ├─ lecture-3-architecture.pdf
      └─ lecture-6-mid-review.pdf
├─ Columbia_pdf
   ├─ 2009_Notes_LinearAlgebra.pdf
   ├─ 20201007.pdf
   ├─ 2022_DLRL_Optim.pdf
   ├─ EM.pdf
   ├─ L1.pdf
   ├─ L10.5.pdf
   ├─ L10.pdf
   ├─ L11.pdf
   ├─ L12.pdf
   ├─ L13.pdf
   ├─ L14.pdf
   ├─ L15.pdf
   ├─ L16.pdf
   ├─ L17.5.pdf
   ├─ L17.pdf
   ├─ L18.pdf
   ├─ L19.pdf
   ├─ L2.pdf
   ├─ L20.pdf
   ├─ L21.pdf
   ├─ L22.pdf
   ├─ L22a.pdf
   ├─ L22b.pdf
   ├─ L23.pdf
   ├─ L24.pdf
   ├─ L25.pdf
   ├─ L26.pdf
   ├─ L26a.pdf
   ├─ L26b.pdf
   ├─ L27.pdf
   ├─ L28.5.pdf
   ├─ L28.pdf
   ├─ L29.pdf
   ├─ L2b.pdf
   ├─ L3.pdf
   ├─ L30.pdf
   ├─ L31.5.pdf
   ├─ L31.pdf
   ├─ L32.pdf
   ├─ L33.pdf
   ├─ L34.5.pdf
   ├─ L34.pdf
   ├─ L34_AM.pdf
   ├─ L34_PM.pdf
   ├─ L34_common.pdf
   ├─ L35.pdf
   ├─ L35_AM.pdf
   ├─ L35_PM.pdf
   ├─ L36.pdf
   ├─ L3b.pdf
   ├─ L4.pdf
   ├─ L5.pdf
   ├─ L6.pdf
   ├─ L7.pdf
   ├─ L8.pdf
   ├─ L9.pdf
   ├─ NP.pdf
   ├─ S0.pdf
   ├─ S1.pdf
   ├─ S12.pdf
   ├─ S2.pdf
   ├─ S3.pdf
   ├─ S4.pdf
   ├─ S5.pdf
   ├─ S6.pdf
   ├─ S7.pdf
   ├─ S8.5.pdf
   ├─ S8.pdf
   ├─ assorted.pdf
   ├─ bigO.pdf
   ├─ calculus.pdf
   ├─ convex.pdf
   ├─ differentiable.pdf
   ├─ linearQuadraticGradients.pdf
   ├─ max.pdf
   ├─ mirrorMultiLevel.pdf
   ├─ norms.pdf
   ├─ notation.pdf
   ├─ onlineActiveCausal.pdf
   ├─ overview.pdf
   ├─ pageRank.pdf
   ├─ parallelDistributed.pdf
   ├─ probability.pdf
   ├─ probabilitySlides.pdf
   ├─ reinforcementLearning.pdf
   ├─ semiSupervised.pdf
   ├─ sequenceMining.pdf
   └─ structLearn.pdf
├─ Giant Eagle Auditorium
   ├─ notebooks
      └─ GREEDY_AND_BEAM_DECODING.ipynb
   ├─ pdf
      ├─ 04Adaline.pdf
      ├─ 11785-NetworkOptimization-Fall23.pdf
      ├─ 1706.03762.pdf
      ├─ Alexander_Bain_Mind_and_Body_009178a0.pdf
      ├─ Autograd_RecitationSlides_combined.pdf
      ├─ F23-HW2P2-BOOTCAMP.pdf
      ├─ F23_Bootcamp 1_HW1P2.pdf
      ├─ Fall2023-RNN-Recitation.pdf
      ├─ HW1P2_F23.pdf
      ├─ HW2P1_Bootcamp_F23.pdf
      ├─ HW2P2_F23.pdf
      ├─ HW3P2_F23_Writeup_Updated.pdf
      ├─ Hebb_1949_The_Organization_of_Behavior.pdf
      ├─ How to compute a derivative.pdf
      ├─ Hw4_Part1_Bootcamp.pdf
      ├─ LSTM.pdf
      ├─ Paper_Writing_Workshop.pdf
      ├─ Perceptrons-Epilogue-r.pdf
      ├─ Recitation_10.pdf
      ├─ Recitation_4.pdf
      ├─ Rosenblatt_1959-09865-001.pdf
      ├─ Shannon49.pdf
      ├─ Werbos.pdf
      ├─ booleancircuits_shannonproof.pdf
      ├─ c1992artificialneural.pdf
      ├─ derivatives and influences.pdf
      ├─ derivatives_and_influences.pdf
      ├─ duchi11a.pdf
      ├─ icml_2006.pdf
      ├─ lec0.logistics.pdf
      ├─ lec1.intro.pdf
      ├─ lec10.CNN2.pdf
      ├─ lec11.CNN3.pdf
      ├─ lec12.CNN4.pdf
      ├─ lec13.recurrent.pdf
      ├─ lec14.recurrent.pdf
      ├─ lec15.recurrent.pdf
      ├─ lec16.recurrent.pdf
      ├─ lec17.recurrent.pdf
      ├─ lec18.attention.pdf
      ├─ lec19.transformersLLMs.pdf
      ├─ lec2.universal.pdf
      ├─ lec20.representations.pdf
      ├─ lec21.VAE_1.pdf
      ├─ lec22.VAE_2.pdf
      ├─ lec23.diffusion.updated.pdf
      ├─ lec25.GAN2.pdf
      ├─ lec26.hopfieldBM.pdf
      ├─ lec3.learning.pdf
      ├─ lec4.learning.pdf
      ├─ lec5.pdf
      ├─ lec6.pdf
      ├─ lec7.stochastic_gradient.pdf
      ├─ lec8.optimizersandregularizers.pdf
      ├─ lec9.CNN1.pdf
      ├─ lec_24_GAN1.pdf
      ├─ naturebp.pdf
      ├─ perc.converge.pdf
      └─ turing3.pdf
   └─ pptx
      ├─ 11-785_Rec_6_-_Face_Classification_and_Verification.pptx
      └─ F23_IDL_ Recitation_5.pptx
├─ Hemath_paper
   ├─ 2402.08392v1.pdf
   ├─ 2402.08416v1.pdf
   ├─ 2402.08467v1.pdf
   ├─ 2402.08472v1.pdf
   ├─ 2402.08546v1.pdf
   ├─ 2402.08562v1.pdf
   ├─ 2402.08565v1.pdf
   ├─ 2402.08570v1.pdf
   ├─ 2402.08577v1.pdf
   ├─ 2402.08594v1.pdf
   ├─ 2402.08631v1.pdf
   ├─ 2402.08638v1.pdf
   ├─ 2402.08644v1.pdf
   ├─ 2402.08657v1.pdf
   ├─ 2402.08658v1.pdf
   ├─ 2402.08666v1.pdf
   ├─ 2402.08670v1.pdf
   ├─ 2402.08674v1.pdf
   ├─ 2402.08679v1.pdf
   └─ 2402.08680v1.pdf
├─ Hemath_paper1
   ├─ 1511.01427v1.Turing_Computation_with_Recurrent_Artificial_Neural_Networks.pdf
   ├─ 1511.08779v1.Multiagent_Cooperation_and_Competition_with_Deep_Reinforcement_Learning.pdf
   ├─ 1512.01693v1.Deep_Attention_Recurrent_Q_Network.pdf
   ├─ 1606.02032v1.Human_vs__Computer_Go__Review_and_Prospect.pdf
   ├─ 1704.05179v3.SearchQA__A_New_Q_A_Dataset_Augmented_with_Context_from_a_Search_Engine.pdf
   ├─ 1804.01874v1.A_Human_Mixed_Strategy_Approach_to_Deep_Reinforcement_Learning.pdf
   ├─ 1807.08217v1.Asynchronous_Advantage_Actor_Critic_Agent_for_Starcraft_II.pdf
   ├─ 1808.03766v2.The_ActivityNet_Large_Scale_Activity_Recognition_Challenge_2018_Summary.pdf
   ├─ 1903.12328v2.Improved_Reinforcement_Learning_with_Curriculum.pdf
   ├─ 1905.10863v3.SAI__a_Sensible_Artificial_Intelligence_that_plays_with_handicap_and_targets_high_scores_in_9x9_Go__extended_version_.pdf
   ├─ 1910.06591v2.SEED_RL__Scalable_and_Efficient_Deep_RL_with_Accelerated_Central_Inference.pdf
   ├─ 1911.04890v1.Recurrent_Neural_Network_Transducer_for_Audio_Visual_Speech_Recognition.pdf
   ├─ 2005.07572v3.Participatory_Problem_Formulation_for_Fairer_Machine_Learning_Through_Community_Based_System_Dynamics.pdf
   ├─ 2010.10864v1.A_Short_Note_on_the_Kinetics_700_2020_Human_Action_Dataset.pdf
   ├─ 2208.03143v1.Deep_Learning_and_Health_Informatics_for_Smart_Monitoring_and_Diagnosis.pdf
   ├─ 2211.07357v2.Controlling_Commercial_Cooling_Systems_Using_Reinforcement_Learning.pdf
   ├─ 2211.15646v4.Beyond_Invariance__Test_Time_Label_Shift_Adaptation_for_Distributions_with__Spurious__Correlations.pdf
   ├─ 2303.11223v2.Monocular_Cyclist_Detection_with_Convolutional_Neural_Networks.pdf
   ├─ 2306.05859v2.Bring_Your_Own__Non_Robust__Algorithm_to_Solve_Robust_MDPs_by_Estimating_The_Worst_Kernel.pdf
   ├─ 2309.03409v2.Large_Language_Models_as_Optimizers.pdf
   ├─ 2402.00559v3.A_Chain_of_Thought_Is_as_Strong_as_Its_Weakest_Link__A_Benchmark_for_Verifiers_of_Reasoning_Chains.pdf
   ├─ 2402.05116v2.Quantifying_Similarity__Text_Mining_Approaches_to_Evaluate_ChatGPT_and_Google_Bard_Content_in_Relation_to_BioMedical_Literature.pdf
   ├─ 2402.05235v1.SPAD___Spatially_Aware_Multiview_Diffusers.pdf
   ├─ 2402.05799v1.Recent_Breakthrough_in_AI_Driven_Materials_Science__Tech_Giants_Introduce_Groundbreaking_Models.pdf
   ├─ 2402.06187v2.Premier_TACO_is_a_Few_Shot_Policy_Learner__Pretraining_Multitask_Representation_via_Temporal_Action_Driven_Contrastive_Loss.pdf
   ├─ 2402.06221v1.ResumeFlow__An_LLM_facilitated_Pipeline_for_Personalized_Resume_Generation_and_Refinement.pdf
   ├─ 2402.07023v1.Gemini_Goes_to_Med_School__Exploring_the_Capabilities_of_Multimodal_Large_Language_Models_on_Medical_Challenge_Problems___Hallucinations.pdf
   ├─ 2402.07095v1.Does_ChatGPT_and_Whisper_Make_Humanoid_Robots_More_Relatable_.pdf
   ├─ 2402.07681v1.Large_Language_Models__Ad_Referendum___How_Good_Are_They_at_Machine_Translation_in_the_Legal_Domain_.pdf
   ├─ 2402.07837v1.Quantile_Least_Squares__A_Flexible_Approach_for_Robust_Estimation_and_Validation_of_Location_Scale_Families.pdf
   ├─ 2402.08393v1.NfgTransformer__Equivariant_Representation_Learning_for_Normal_form_Games.pdf
   ├─ 2402.08431v1.Generating_Java_Methods__An_Empirical_Assessment_of_Four_AI_Based_Code_Assistants.pdf
   ├─ 2402.08546v1.pdf
   ├─ 2402.08562v1.pdf
   ├─ 2402.08565v1.pdf
   ├─ 2402.08570v1.pdf
   ├─ 2402.08577v1.pdf
   ├─ 2402.08594v1.pdf
   ├─ 2402.08631v1.pdf
   ├─ 2402.08638v1.pdf
   ├─ 2402.08644v1.pdf
   ├─ 2402.08657v1.pdf
   ├─ 2402.08658v1.pdf
   ├─ 2402.08666v1.pdf
   ├─ 2402.08670v1.pdf
   ├─ 2402.08674v1.pdf
   ├─ 2402.08679v1.pdf
   ├─ 2402.08680v1.pdf
   └─ 2402.08681v1.Chain_Reaction_of_Ideas__Can_Radioactive_Decay_Predict_Technological_Innovation_.pdf
├─ Hemath_paper2
   ├─ 2402.07282v2.pdf
   ├─ 2402.07321v1.pdf
   ├─ 2402.07401v1.pdf
   ├─ 2402.07408v1.pdf
   ├─ 2402.07477v1.pdf
   ├─ 2402.07610v1.pdf
   ├─ 2402.07616v1.pdf
   ├─ 2402.07647v1.pdf
   ├─ 2402.07658v1.pdf
   ├─ 2402.07681v1.pdf
   ├─ 2402.07770v1.pdf
   ├─ 2402.07776v1.pdf
   ├─ 2402.07812v1.pdf
   ├─ 2402.07841v1.pdf
   ├─ 2402.07844v1.pdf
   ├─ 2402.07862v1.pdf
   ├─ 2402.07867v1.pdf
   ├─ 2402.07876v1.pdf
   ├─ 2402.07877v1.pdf
   ├─ 2402.08064v1.pdf
   ├─ 2402.08073v1.pdf
   ├─ 2402.08078v1.pdf
   ├─ 2402.08100v1.pdf
   ├─ 2402.08113v1.pdf
   ├─ 2402.08114v1.pdf
   ├─ 2402.08115v1.pdf
   ├─ 2402.08164v1.pdf
   ├─ 2402.08170v1.pdf
   ├─ 2402.08178v1.pdf
   ├─ 2402.08189v1.pdf
   ├─ 2402.08219v1.pdf
   ├─ 2402.08259v1.pdf
   ├─ 2402.08277v1.pdf
   ├─ 2402.08303v1.pdf
   ├─ 2402.08341v1.pdf
   ├─ 2402.08416v1.pdf
   ├─ 2402.08472v1.pdf
   ├─ 2402.08546v1.pdf
   ├─ 2402.08631v1.pdf
   ├─ 2402.08644v1.pdf
   ├─ 2402.08658v1.pdf
   ├─ 2402.08674v1.pdf
   └─ 2402.08679v1.pdf
├─ Images
   ├─ 1.jpeg
   ├─ 123.jpg
   ├─ 2.png
   ├─ Designer.png
   ├─ Designer1.png
   ├─ Designer2.png
   ├─ Designer3.png
   └─ Designer4.png
├─ MIT
   ├─ 6S191_MIT_DeepLearning_L1.pdf
   ├─ 6S191_MIT_DeepLearning_L2.pdf
   ├─ 6S191_MIT_DeepLearning_L3.pdf
   ├─ 6S191_MIT_DeepLearning_L4.pdf
   ├─ 6S191_MIT_DeepLearning_L5.pdf
   ├─ 6S191_MIT_DeepLearning_L6.pdf
   └─ DeepLearningBook.pdf
├─ MLSP
   ├─ 04Adaline.pdf
   ├─ 11785-NetworkOptimization-Fall23.pdf
   ├─ 11_785_HW2P2_S23_v2.pdf
   ├─ 11_785_hw3p2_S23-2.pdf
   ├─ 1706.03762.pdf
   ├─ Autograd_RecitationSlides_combined.pdf
   ├─ Bidirectional%20Recurrent%20Neural%20Networks.pdf
   ├─ F23-HW2P2-BOOTCAMP.pdf
   ├─ F23_Bootcamp 1_HW1P2.pdf
   ├─ Fall2023-RNN-Recitation.pdf
   ├─ HW1P1_F23.pdf
   ├─ HW1P2_F23.pdf
   ├─ HW2P1_Bootcamp_F23.pdf
   ├─ HW2P2_F23.pdf
   ├─ HW3P2_F23_Writeup_Updated.pdf
   ├─ HW4P2_S23.pdf
   ├─ How to compute a derivative.pdf
   ├─ Hw4_Part1_Bootcamp.pdf
   ├─ IDL_S23_Recitation_8__RNN_Basics.pdf
   ├─ LSTM.pdf
   ├─ Paper_Writing_Workshop.pdf
   ├─ Perceptrons-Epilogue-r.pdf
   ├─ Recitation_10.pdf
   ├─ Recitation_10_s23.pdf
   ├─ Recitation_4.pdf
   ├─ S23_Bootcamp 1_HW1P2.pdf
   ├─ Shannon49.pdf
   ├─ Werbos.pdf
   ├─ Your First MLP - S23.pdf
   ├─ booleancircuits_shannonproof.pdf
   ├─ c1992artificialneural.pdf
   ├─ derivatives and influences.pdf
   ├─ derivatives_and_influences.pdf
   ├─ duchi11a.pdf
   ├─ hw3p1_bootcamp_s23.pdf
   ├─ hw3p2_bootcamp_s23.pdf
   ├─ icml_2006.pdf
   ├─ lec0.logistics.pdf
   ├─ lec1.intro.pdf
   ├─ lec10.CNN2.pdf
   ├─ lec11.CNN3.pdf
   ├─ lec12.CNN4.pdf
   ├─ lec13.recurrent.pdf
   ├─ lec14.recurrent.pdf
   ├─ lec15.recurrent.pdf
   ├─ lec16.recurrent.pdf
   ├─ lec17.recurrent.pdf
   ├─ lec18.attention.pdf
   ├─ lec19.transformersLLMs.pdf
   ├─ lec2.universal.pdf
   ├─ lec20.representations.pdf
   ├─ lec21.VAE_1.pdf
   ├─ lec22.VAE_2.pdf
   ├─ lec23.diffusion.updated.pdf
   ├─ lec25.GAN2.pdf
   ├─ lec26.hopfieldBM.pdf
   ├─ lec3.learning.pdf
   ├─ lec4.learning.pdf
   ├─ lec5.pdf
   ├─ lec6.pdf
   ├─ lec8.optimizersandregularizers.pdf
   ├─ lec9.CNN1.pdf
   ├─ lec_24_GAN1.pdf
   ├─ naturebp.pdf
   ├─ perc.converge.pdf
   ├─ recitation12-slides.pdf
   ├─ s23_hw1_hackathon.pdf
   ├─ s23_hw1_hackathon2.pdf
   └─ turing3.pdf
├─ Notes
   ├─ LLM Architectures_8.8.2023.pdf
   ├─ decision theory
      ├─ Problem Session 1 -- Probability Review.pdf
      ├─ Problem Session 2 -- Bayesian Networks w solns.pdf
      ├─ Problem Session 2 -- Bayesian Networks.pdf
      ├─ Problem Session 4 -- Exact Solution Methods w solns.pdf
      ├─ Problem Session 4 -- Exact Solution Methods.pdf
      ├─ Problem Session 5 -- Policy Search w solns.pdf
      ├─ Problem Session 5 -- Policy Search.pdf
      └─ Problem Session 7 -- Reinforcement Learning.pdf
   ├─ dm.pdf
   ├─ llmintro.pdf
   ├─ main_notes.pdf
   └─ tuebingen
      ├─ lec_01_introduction.pdf
      ├─ lec_02_computation_graphs.pdf
      ├─ lec_03_deep_networks_1.pdf
      ├─ lec_04_deep_networks_2.pdf
      ├─ lec_05_regularization.pdf
      ├─ lec_06_optimization.pdf
      ├─ lec_07_convolutional_neural_networks.pdf
      ├─ lec_08_sequence_models.pdf
      ├─ lec_09_natural_language_processing.pdf
      ├─ lec_10_graph_neural_networks.pdf
      ├─ lec_11_autoencoders.pdf
      └─ lec_12_generative_adversarial_networks.pdf
├─ PRINCETON
   └─ pdf
      ├─ 1706.03762.pdf
      ├─ 1802.05365.pdf
      ├─ 1810.04805.pdf
      ├─ 1907.11692.pdf
      ├─ 1909.01066.pdf
      ├─ 1909.08593.pdf
      ├─ 1910.10683.pdf
      ├─ 1910.13461.pdf
      ├─ 1911.00172.pdf
      ├─ 1912.02164.pdf
      ├─ 2001.07676.pdf
      ├─ 2001.08361.pdf
      ├─ 2002.08910.pdf
      ├─ 2002.12327.pdf
      ├─ 2003.10555.pdf
      ├─ 2005.14165.pdf
      ├─ 2008.02637.pdf
      ├─ 2009.01325.pdf
      ├─ 2009.06367.pdf
      ├─ 2009.11462.pdf
      ├─ 2010.11934.pdf
      ├─ 2010.14701.pdf
      ├─ 2012.00955.pdf
      ├─ 2012.07805.pdf
      ├─ 2012.15723.pdf
      ├─ 21-0998.pdf
      ├─ 2101.00027.pdf
      ├─ 2101.00190.pdf
      ├─ 2101.06804.pdf
      ├─ 2102.09690.pdf
      ├─ 2103.00020.pdf
      ├─ 2103.00453.pdf
      ├─ 2103.08493.pdf
      ├─ 2103.14659.pdf
      ├─ 2104.05240.pdf
      ├─ 2104.06390.pdf
      ├─ 2104.08315.pdf
      ├─ 2104.08661.pdf
      ├─ 2104.08691.pdf
      ├─ 2104.08696.pdf
      ├─ 2104.08758.pdf
      ├─ 2104.08786.pdf
      ├─ 2105.11447.pdf
      ├─ 2106.09685.pdf
      ├─ 2106.13353.pdf
      ├─ 2106.13884.pdf
      ├─ 2107.03374.pdf
      ├─ 2107.06499.pdf
      ├─ 2107.13586.pdf
      ├─ 2108.04106.pdf
      ├─ 2108.07258.pdf
      ├─ 2109.07445.pdf
      ├─ 2109.10686.pdf
      ├─ 2110.04366.pdf
      ├─ 2110.05679.pdf
      ├─ 2110.07602.pdf
      ├─ 2110.08207.pdf
      ├─ 2110.11309.pdf
      ├─ 2111.02080.pdf
      ├─ 2112.00861.pdf
      ├─ 2112.04426.pdf
      ├─ 2112.10684.pdf
      ├─ 2201.06009.pdf
      ├─ 2201.07520.pdf
      ├─ 2201.08239.pdf
      ├─ 2201.10474.pdf
      ├─ 2201.11903.pdf
      ├─ 2202.01279.pdf
      ├─ 2202.06539.pdf
      ├─ 2202.07646.pdf
      ├─ 2202.12837.pdf
      ├─ 2202.13169.pdf
      ├─ 2203.02155.pdf
      ├─ 2203.07814.pdf
      ├─ 2203.11171.pdf
      ├─ 2203.13474.pdf
      ├─ 2203.15556.pdf
      ├─ 2204.02311.pdf
      ├─ 2204.05862.pdf
      ├─ 2204.05999.pdf
      ├─ 2204.07705.pdf
      ├─ 2204.14198.pdf
      ├─ 2205.01068.pdf
      ├─ 2205.05055.pdf
      ├─ 2205.08514.pdf
      ├─ 2205.11916.pdf
      ├─ 2205.12674.pdf
      ├─ 2207.05221.pdf
      ├─ 2208.01066.pdf
      ├─ 2208.01448.pdf
      ├─ 2208.03299.pdf
      ├─ 2208.03306.pdf
      ├─ 2208.14271.pdf
      ├─ 2209.01667.pdf
      ├─ 2210.07128.pdf
      ├─ 2210.11416.pdf
      ├─ Daedalus_Sp22_09_Manning.pdf
      ├─ Red%20Teaming.pdf
      ├─ language_models_are_unsupervised_multitask_learners.pdf
      ├─ language_understanding_paper.pdf
      ├─ lec01.pdf
      ├─ lec02.pdf
      ├─ lec03.pdf
      ├─ lec04.pdf
      ├─ lec05.pdf
      ├─ lec06.pdf
      ├─ lec07.pdf
      ├─ lec08.pdf
      ├─ lec09.pdf
      ├─ lec10.pdf
      ├─ lec11.pdf
      ├─ lec12.pdf
      ├─ lec13.pdf
      ├─ lec14.pdf
      ├─ lec15.pdf
      ├─ lec16.pdf
      ├─ lec17.pdf
      ├─ lec18.pdf
      ├─ lec19.pdf
      ├─ lec20.pdf
      └─ lec22.pdf
├─ RAG
   ├─ RAG_Slide_ENG.pdf
   └─ ollamainference.py
├─ README.md
├─ Surveys
   ├─ Beyond Efficiency_2024_jan_4.pdf
   ├─ CMMMU_2024_jan_22 surveys_textbook.pdf
   ├─ LLMs_survey_software_23_dec_2023.pdf
   ├─ Large Language Models for Generative Information Extraction_2023_dec.pdf
   ├─ RL_survey_2023_22.pdf
   ├─ Surveys
      ├─ 2402.07521v1.A_step_towards_the_integration_of_machine_learning_and_small_area_estimation.pdf
      ├─ 2402.07523v1.Using_Ensemble_Inference_to_Improve_Recall_of_Clone_Detection.pdf
      ├─ 2402.07527v1.Operating_conditions_and_thermodynamic_bounds_of_dual_radiative_heat_engines.pdf
      ├─ 2402.07530v1.Reproducibility__Replicability__and_Repeatability__A_survey_of_reproducible_research_with_a_focus_on_high_performance_computing.pdf
      ├─ 2402.07533v1.Tuning_proximity_spin_orbit_coupling_in_graphene_NbSe__2__heterostructures_via_twist_angle.pdf
      ├─ 2402.07535v1.Weak_and_strong_law_of_large_numbers_for_strictly_stationary_Banach_valued_random_fields.pdf
      ├─ 2402.07536v1.BreakGPT__A_Large_Language_Model_with_Multi_stage_Structure_for_Financial_Breakout_Detection.pdf
      ├─ 2402.07540v1.PKG_API__A_Tool_for_Personal_Knowledge_Graph_Management.pdf
      ├─ 2402.07543v1.Show_Me_How_It_s_Done__The_Role_of_Explanations_in_Fine_Tuning_Language_Models.pdf
      ├─ 2402.07548v1.NOMAD_CAMELS__Configurable_Application_for_Measurements__Experiments_and_Laboratory_Systems.pdf
      ├─ 2402.07550v1.De_Casteljau_s_Algorithm_in_Geometric_Data_Analysis__Theory_and_Application.pdf
      ├─ 2402.07551v1.Pearcey_integrals__Stokes_lines_and_exact_baryonic_layers_in_the_low_energy_limit_of_QCD.pdf
      ├─ 2402.07555v1.Thermodynamically_consistent_modelling_of_viscoelastic_solids_under_finite_strain.pdf
      ├─ 2402.07566v1.The_DarkSide_20k_experiment.pdf
      ├─ 2402.07570v1.Only_the_Curve_Shape_Matters__Training_Foundation_Models_for_Zero_Shot_Multivariate_Time_Series_Forecasting_through_Next_Curve_Shape_Prediction.pdf
      ├─ 2402.07571v1.LISA_Definition_Study_Report.pdf
      ├─ 2402.07577v1.Topic_Modeling_as_Multi_Objective_Contrastive_Optimization.pdf
      ├─ 2402.07584v1.Privacy_Optimized_Randomized_Response_for_Sharing_Multi_Attribute_Data.pdf
      ├─ 2402.07585v1.Identifying_architectural_design_decisions_for_achieving_green_ML_serving.pdf
      ├─ 2402.07591v1.A_Big_Ring_on_the_Sky.pdf
      ├─ 2402.07594v1.Foundational_Inference_Models_for_Dynamical_Systems.pdf
      ├─ 2402.07597v1.Trustworthy_SR__Resolving_Ambiguity_in_Image_Super_resolution_via_Diffusion_Models_and_Human_Feedback.pdf
      ├─ 2402.07599v1.Interactive_singing_melody_extraction_based_on_active_adaptation.pdf
      ├─ 2402.07600v1.Optical_Routing_with_Binary_Optimisation_and_Quantum_Annealing.pdf
      ├─ 2402.07610v1.Step_On_Feet_Tuning__Scaling_Self_Alignment_of_LLMs_via_Bootstrapping.pdf
      ├─ 2402.07616v1.Anchor_based_Large_Language_Models.pdf
      ├─ 2402.07625v1.AutoMathText__Autonomous_Data_Selection_with_Language_Models_for_Mathematical_Texts.pdf
      ├─ 2402.07629v1.Logistic_Multidimensional_Data_Analysis_for_Ordinal_Response_Variables_using_a_Cumulative_Link_function.pdf
      ├─ 2402.07630v1.G_Retriever__Retrieval_Augmented_Generation_for_Textual_Graph_Understanding_and_Question_Answering.pdf
      ├─ 2402.07640v1.Synthesizing_Sentiment_Controlled_Feedback_For_Multimodal_Text_and_Image_Data.pdf
      ├─ 2402.07642v1.A_Flow_based_Credibility_Metric_for_Safety_critical_Pedestrian_Detection.pdf
      ├─ 2402.07645v1.Detecting_the_Clinical_Features_of_Difficult_to_Treat_Depression_using_Synthetic_Data_from_Large_Language_Models.pdf
      ├─ 2402.07647v1.GRILLBot_In_Practice__Lessons_and_Tradeoffs_Deploying_Large_Language_Models_for_Adaptable_Conversational_Task_Assistants.pdf
      ├─ 2402.07658v1.The_Sound_of_Healthcare__Improving_Medical_Transcription_ASR_Accuracy_with_Large_Language_Models.pdf
      ├─ 2402.07673v1.A_Computational_Model_of_the_Electrically_or_Acoustically_Evoked_Compound_Action_Potential_in_Cochlear_Implant_Users_with_Residual_Hearing.pdf
      ├─ 2402.07680v1.AYDIV__Adaptable_Yielding_3D_Object_Detection_via_Integrated_Contextual_Vision_Transformer.pdf
      ├─ 2402.07681v1.Large_Language_Models__Ad_Referendum___How_Good_Are_They_at_Machine_Translation_in_the_Legal_Domain_.pdf
      ├─ 2402.07682v1.Auxiliary_Tasks_to_Boost_Biaffine_Semantic_Dependency_Parsing.pdf
      ├─ 2402.07685v1.Contrastive_Multiple_Instance_Learning_for_Weakly_Supervised_Person_ReID.pdf
      ├─ 2402.07688v1.CyberMetric__A_Benchmark_Dataset_for_Evaluating_Large_Language_Models_Knowledge_in_Cybersecurity.pdf
      ├─ 2402.07689v1.OrderBkd__Textual_backdoor_attack_through_repositioning.pdf
      ├─ 2402.07694v1.Cosmology_at_the_Field_Level_with_Probabilistic_Machine_Learning.pdf
      ├─ 2402.07708v1.Signed_Distance_Field_based_Segmentation_and_Statistical_Shape_Modelling_of_the_Left_Atrial_Appendage.pdf
      ├─ 2402.07712v1.Model_Collapse_Demystified__The_Case_of_Regression.pdf
      ├─ 2402.07715v1.Assembly_bias_in_eBOSS.pdf
      ├─ 2402.07718v1.Local_Centrality_Minimization_with_Quality_Guarantees.pdf
      ├─ 2402.07721v1.LoRA_drop__Efficient_LoRA_Parameter_Pruning_based_on_Output_Evaluation.pdf
      ├─ 2402.07722v1.Path_Integral_Monte_Carlo_Study_of_a_Doubly_Dipolar_Bose_Gas.pdf
      ├─ 2402.07726v1.Unsupervised_Sign_Language_Translation_and_Generation.pdf
      ├─ 2402.07729v1.AIR_Bench__Benchmarking_Large_Audio_Language_Models_via_Generative_Comprehension.pdf
      ├─ 2402.07733v1.Tuning_Structural_and_Electronic_Properties_of_Metal_Organic_Framework_5_by_Metal_Substitution_and_Linker_Functionalization.pdf
      ├─ 2402.07736v1.Multimodal_Learned_Sparse_Retrieval_for_Image_Suggestion.pdf
      ├─ 2402.07739v1.Task_conditioned_adaptation_of_visual_features_in_multi_task_policy_learning.pdf
      ├─ 2402.07742v1.Asking_Multimodal_Clarifying_Questions_in_Mixed_Initiative_Conversational_Search.pdf
      ├─ 2402.07744v1.Towards_Unified_Alignment_Between_Agents__Humans__and_Environment.pdf
      ├─ 2402.07748v1.The_GALAH_survey__Elemental_abundances_in_open_clusters_using_joint_effective_temperature_and_surface_gravity_photometric_priors.pdf
      ├─ 2402.07754v1.Diffusion_of_Thoughts__Chain_of_Thought_Reasoning_in_Diffusion_Language_Models.pdf
      ├─ 2402.07757v1.Towards_an_Understanding_of_Stepwise_Inference_in_Transformers__A_Synthetic_Graph_Navigation_Model.pdf
      ├─ 2402.07759v1.Robust_and_accurate_simulations_of_flows_over_orography_using_non_conforming_meshes.pdf
      ├─ 2402.07760v1.The_Strength_and_Shapes_of_Contact_Binary_Objectcts.pdf
      ├─ 2402.07762v1.Scalable_Structure_Learning_for_Sparse_Context_Specific_Causal_Systems.pdf
      ├─ 2402.07767v1.Text_Detoxification_as_Style_Transfer_in_English_and_Hindi.pdf
      ├─ 2402.07769v1.Observations_of_the_new_meteor_shower_from_comet_46P_Wirtanen.pdf
      ├─ 2402.07770v1.Quantitative_knowledge_retrieval_from_large_language_models.pdf
      ├─ 2402.07773v1.Relativistic_corrections_to_prompt_double_charmonium_hadroproduction_near_threshold.pdf
      ├─ 2402.07776v1.TELLER__A_Trustworthy_Framework_for_Explainable__Generalizable_and_Controllable_Fake_News_Detection.pdf
      ├─ 2402.07777v1.Novel_Low_Complexity_Model_Development_for_Li_ion_Cells_Using_Online_Impedance_Measurement.pdf
      ├─ 2402.07779v1.Finding_product_sets_in_some_classes_of_amenable_groups.pdf
      ├─ 2402.07788v1.Multi_Intent_Attribute_Aware_Text_Matching_in_Searching.pdf
      ├─ 2402.07792v1.Empowering_Federated_Learning_for_Massive_Models_with_NVIDIA_FLARE.pdf
      ├─ 2402.07793v1.Tuning_Free_Stochastic_Optimization.pdf
      ├─ 2402.07797v1.Computing_Nash_Equilibria_in_Potential_Games_with_Private_Uncoupled_Constraints.pdf
      ├─ 2402.07812v1.Retrieval_Augmented_Thought_Process_as_Sequential_Decision_Making.pdf
      ├─ 2402.07817v1.Injecting_Wiktionary_to_improve_token_level_contextual_representations_using_contrastive_learning.pdf
      ├─ 2402.07818v1.Differentially_Private_Zeroth_Order_Methods_for_Scalable_Large_Language_Model_Finetuning.pdf
      ├─ 2402.07819v1.A_Benchmark_Grocery_Dataset_of_Realworld_Point_Clouds_From_Single_View.pdf
      ├─ 2402.07824v1.Uranus_s_influence_on_Neptune_s_exterior_mean_motion_resonances.pdf
      ├─ 2402.07825v1.Random_optimization_problems_at_fixed_temperatures.pdf
      ├─ 2402.07827v1.Aya_Model__An_Instruction_Finetuned_Open_Access_Multilingual_Language_Model.pdf
      ├─ 2402.07835v1.Carrier_Mobility_and_High_Field_Velocity_in_2D_Transition_Metal_Dichalcogenides__Degeneracy_and_Screening.pdf
      ├─ 2402.07838v1.2D_MoS2_under_switching_field_conditions__study_of_high_frequency_noise_from_velocity_fluctuations.pdf
      ├─ 2402.07840v1.Creating_pair_plasmas_with_observable_collective_effects.pdf
      ├─ 2402.07841v1.Do_Membership_Inference_Attacks_Work_on_Large_Language_Models_.pdf
      ├─ 2402.07844v1.Mercury__An_Efficiency_Benchmark_for_LLM_Code_Synthesis.pdf
      ├─ 2402.07859v1.Lissard__Long_and_Simple_Sequential_Reasoning_Datasets.pdf
      ├─ 2402.07861v1.TOI_1199__b_and_TOI_1273__b__Two_new_transiting_hot_Saturns_detected_and_characterized_with_SOPHIE_and_TESS.pdf
      ├─ 2402.07862v1.AI_Augmented_Predictions__LLM_Assistants_Improve_Human_Forecasting_Accuracy.pdf
      ├─ 2402.07865v1.Prismatic_VLMs__Investigating_the_Design_Space_of_Visually_Conditioned_Language_Models.pdf
      ├─ 2402.07867v1.PoisonedRAG__Knowledge_Poisoning_Attacks_to_Retrieval_Augmented_Generation_of_Large_Language_Models.pdf
      ├─ 2402.07871v1.Scaling_Laws_for_Fine_Grained_Mixture_of_Experts.pdf
      ├─ 2402.07872v1.PIVOT__Iterative_Visual_Prompting_Elicits_Actionable_Knowledge_for_VLMs.pdf
      ├─ 2402.07874v1.Factorizating_the_Brauer_monoid_in_polynomial_time.pdf
      ├─ 2402.07876v1.Policy_Improvement_using_Language_Feedback_Models.pdf
      ├─ 2402.07877v1.WildfireGPT__Tailored_Large_Language_Model_for_Wildfire_Analysis.pdf
      ├─ 2402.07879v1.3D_physical_structure_and_angular_expansion_of_the_remnant_of_the_recurrent_nova_T_Pyx.pdf
      ├─ 2402.07891v1.Label_Efficient_Model_Selection_for_Text_Generation.pdf
      ├─ 2402.07893v1.The_TESS_Keck_Survey_XXI__13_New_Planets_and_Homogeneous_Properties_for_21_Subgiant_Systems.pdf
      ├─ 2402.07896v1.Suppressing_Pink_Elephants_with_Direct_Principle_Feedback.pdf
      ├─ 2402.07897v1.A_holographic_mobile_based_application_for_practicing_pronunciation_of_basic_English_vocabulary_for_Spanish_speaking_children.pdf
      └─ 2402.07899v1.A_systematic_investigation_of_learnability_from_single_child_linguistic_input.pdf
   ├─ Video Understanding with Large Language Models_2024_jan_4.pdf
   ├─ lec1.pptx
   └─ self_reqardining_language_model.pdf
├─ University_of_Pittsburgh
   ├─ class1.pdf
   ├─ class10.pdf
   ├─ class11.pdf
   ├─ class12.pdf
   ├─ class13.pdf
   ├─ class14.pdf
   ├─ class15.pdf
   ├─ class16.pdf
   ├─ class17.pdf
   ├─ class18.pdf
   ├─ class19.pdf
   ├─ class2.pdf
   ├─ class20.pdf
   ├─ class21.pdf
   ├─ class22.pdf
   ├─ class4.pdf
   ├─ class5.pdf
   ├─ class6.pdf
   ├─ class7.pdf
   ├─ class8.pdf
   └─ class9.pdf
├─ berkeley_deep learning
   ├─ hw1.pdf
   ├─ hw2.pdf
   ├─ hw3.pdf
   ├─ hw4.pdf
   ├─ hw5.pdf
   ├─ lec-1.pdf
   ├─ lec-10.pdf
   ├─ lec-11.pdf
   ├─ lec-12.pdf
   ├─ lec-13.pdf
   ├─ lec-14.pdf
   ├─ lec-15.pdf
   ├─ lec-16.pdf
   ├─ lec-17.pdf
   ├─ lec-18.pdf
   ├─ lec-19.pdf
   ├─ lec-2.pdf
   ├─ lec-20.pdf
   ├─ lec-21.pdf
   ├─ lec-22.pdf
   ├─ lec-23.pdf
   ├─ lec-3.pdf
   ├─ lec-4.pdf
   ├─ lec-5.pdf
   ├─ lec-6.pdf
   ├─ lec-7.pdf
   ├─ lec-8.pdf
   ├─ lec-9.pdf
   └─ project_assignment.pdf
├─ chinese university of HONG kong
   └─ LLMS
      ├─ 2005.11401.pdf
      ├─ 2012.07805.pdf
      ├─ 2101.03961.pdf
      ├─ 2103.00020.pdf
      ├─ Lecture 8_ Multimodal_LLMs.pdf
      ├─ Lecture-10-Vertical-LLMs.pdf
      ├─ Lecture-5-Efficiency.pdf
      ├─ Lecture-7-Knowledge-and-Reasoning.pdf
      ├─ Lecture-9-LLM-Agents.pdf
      ├─ Lecture4-TrainingLLMs.pdf
      ├─ Tutorial1-1-ChatgptAPI.pdf
      ├─ lecture-1-introduction.pdf
      ├─ lecture-2-language-model.pdf
      ├─ lecture-3-architecture.pdf
      └─ lecture-6-mid-review.pdf
├─ chunk
   └─ pdf
      ├─ 1706.03762.pdf
      ├─ 1810.04805.pdf
      ├─ 2207.09238.pdf
      ├─ L10_Train2.pdf
      ├─ L11_Train3.pdf
      ├─ L12_RNN.pdf
      ├─ L13_Transformer.pdf
      ├─ L14_LLM.pdf
      ├─ L15_Software.pdf
      ├─ L16_Vision.pdf
      ├─ L17_Generative1.pdf
      ├─ L18_Generative2.pdf
      ├─ L19_SSL.pdf
      ├─ L1_Intro.pdf
      ├─ L20_VLM.pdf
      ├─ L21_Fei.pdf
      ├─ L22_GNN.pdf
      ├─ L23_RL1.pdf
      ├─ L24_RL2.pdf
      ├─ L26_Final.pdf
      ├─ L2_LinearClassifiers.pdf
      ├─ L3_LossFunctions.pdf
      ├─ L4_GradientDescent_NNs.pdf
      ├─ L5_AutoDiff_DNN_Jacobians.pdf
      ├─ L6_Project.pdf
      ├─ L7_Jacobian_Conv.pdf
      ├─ L8_CNN.pdf
      ├─ L9_CNN_Train1.pdf
      ├─ RLbook2018.pdf
      └─ nature14539.pdf
├─ colorado
   ├─ Deeplearning
      ├─ 01-Introduction.pdf
      ├─ 02-ArtificialNeurons.pdf
      ├─ 03-Feedforward_NN.pdf
      ├─ 04-NN_Training.pdf
      ├─ 05-NN_Training.pdf
      ├─ 06-ConvolutionalNeuralNetworks.pdf
      ├─ 07-CV_and_ImageClassification.pdf
      ├─ 08-Regularization.pdf
      ├─ 09-PretrainedFeaturesAndFineTuning.pdf
      ├─ 10-DetectionAndSegmentation.pdf
      ├─ 11-RecurrentNeuralNetworks.pdf
      ├─ 12-WordEmbeddings.pdf
      ├─ 13-Attention.pdf
      ├─ 14-Transformers.pdf
      ├─ 15-PopularTransformers.pdf
      ├─ 16-VisualQuestionAnswering.pdf
      ├─ 17-ImageCaptioning.pdf
      ├─ 18-VisualDialog.pdf
      ├─ 19_TransferLearning.pdf
      ├─ 20_TransferLearning.pdf
      ├─ 21-ResponsibleDL.pdf
      ├─ 22_SpeechAndNeuralSearch.pdf
      ├─ 23_ModelCompression.pdf
      ├─ 24-EfficientLearning.pdf
      └─ 25-ReinforcementLearning.pdf
   ├─ deep_learning_2019
      ├─ 01-introduction.pdf
      ├─ 02-introduction.pdf
      ├─ 03-learning.pdf
      ├─ 04-learning.pdf
      ├─ 05-autodiff.pdf
      ├─ 06-optimization.pdf
      ├─ 07-regularization.pdf
      ├─ 08-convolutional-networks.pdf
      ├─ 09-convolutional-networks.pdf
      ├─ 10-recurrent-networks.pdf
      ├─ 11-recurrent-networks.pdf
      ├─ 12-unsupervised.pdf
      ├─ 13-generative-models.pdf
      ├─ 14-generative-models.pdf
      ├─ 16-autoregression-and-density-estimation.pdf
      ├─ 16-odenets.pdf
      ├─ 17-deep-learning-and-nlp.pdf
      ├─ 17-transformer.pdf
      ├─ 18-deep-learning-software.pdf
      ├─ 19-deep-learning-software.pdf
      ├─ 20-graph-convolutional-networks.pdf
      ├─ 21-bacon-of-the-wisdom-of-the-ancients-daedalus.pdf
      ├─ 21-deep-learning-and-society.pdf
      ├─ 21-technological-challenges-to-liberalism.pdf
      ├─ 22-graph-convolutional-networks.pdf
      ├─ autodiff1.pdf
      ├─ backprop1.pdf
      ├─ language-models.pdf
      ├─ mikolov_interspeech2010_IS100722.pdf
      └─ worksheet3.pdf
   └─ machine_learning
      ├─ 01a.pdf
      ├─ 01b.pdf
      ├─ 01c.pdf
      ├─ 02a.pdf
      ├─ 02b.pdf
      ├─ 02c.pdf
      ├─ 03a.pdf
      ├─ 03b.pdf
      ├─ 04.pdf
      ├─ 05a.pdf
      ├─ 05b.pdf
      ├─ 06a.pdf
      ├─ 06b.pdf
      ├─ 07a.pdf
      ├─ 07b.pdf
      ├─ 08a.pdf
      ├─ 08b.pdf
      ├─ 09a.pdf
      ├─ 09b.pdf
      ├─ 09c.pdf
      ├─ 10a.pdf
      ├─ 10b.pdf
      ├─ 11a.pdf
      ├─ 11b.pdf
      ├─ 12a.pdf
      ├─ 13a.pdf
      ├─ 13b.pdf
      ├─ 13c.pdf
      ├─ 14a.pdf
      ├─ 15a.pdf
      ├─ 16a.pdf
      ├─ 16b.pdf
      ├─ 17a.pdf
      ├─ 17b.pdf
      ├─ 18a.pdf
      ├─ 18b.pdf
      ├─ 19a.pdf
      ├─ 19b.pdf
      ├─ 20a.pdf
      ├─ 20b.pdf
      ├─ 21a.pdf
      ├─ 21b.pdf
      ├─ 22a.pdf
      ├─ 22b.pdf
      ├─ LeastAngle_2002.pdf
      ├─ Rocha-TNNLS-2013.pdf
      ├─ ciml-v0_9-ch13.pdf
      ├─ lazysgdregression.pdf
      ├─ logreg.pdf
      ├─ mitchell-theory.pdf
      ├─ neal_sampling.pdf
      ├─ nips01-discriminativegenerative.pdf
      ├─ smo-book.pdf
      └─ svmtutorial.pdf
├─ cs131-class-notes.pdf
├─ data-08-00141-v2.pdf
├─ illinois
   └─ pdf
      ├─ 1.pdf
      ├─ 10.pdf
      ├─ 11.pdf
      ├─ 13.pdf
      ├─ 14.pdf
      ├─ 15.pdf
      ├─ 16.pdf
      ├─ 17.pdf
      ├─ 18.pdf
      ├─ 2.pdf
      ├─ 22.pdf
      ├─ 23.pdf
      ├─ 24.pdf
      ├─ 26.pdf
      ├─ 27.pdf
      ├─ 3.pdf
      ├─ 4.pdf
      ├─ 5.pdf
      ├─ 6.pdf
      ├─ 7.pdf
      ├─ 8.pdf
      ├─ 9.pdf
      ├─ Lecture01.pdf
      ├─ Lecture02.pdf
      ├─ Lecture03.pdf
      ├─ Lecture04.pdf
      ├─ Lecture05.pdf
      ├─ Lecture06.pdf
      ├─ Lecture07.pdf
      ├─ Lecture08.pdf
      ├─ Lecture09.pdf
      ├─ Lecture10.pdf
      ├─ Lecture11.pdf
      ├─ Lecture12.pdf
      ├─ Lecture13.pdf
      ├─ Lecture14.pdf
      ├─ Lecture15.pdf
      ├─ Lecture16.pdf
      ├─ Lecture17.pdf
      ├─ Lecture18.pdf
      ├─ Lecture19.pdf
      ├─ Lecture20.pdf
      ├─ Lecture21.pdf
      ├─ Lecture22.pdf
      ├─ Lecture23.pdf
      ├─ Lecture24.pdf
      ├─ Lecture25.pdf
      ├─ Lecture26.pdf
      ├─ Lecture27.pdf
      ├─ Lecture29.pdf
      └─ SteedmanBaldridgeNTSyntax.pdf
├─ lec22.pdf
├─ mlfs_tutorial_nlp_transformer_ssl_updated.pdf
├─ nono
   ├─ 1106.1813.pdf
   ├─ 5021-distributed-representations-of-words-and-phrases-and-their-compositionality.pdf
   ├─ homework1-spring-2019.pdf
   ├─ homework2-spring-2019.pdf
   ├─ homework3-spring-2019.pdf
   ├─ homework4-spring-2019.pdf
   ├─ homework5-spring-2019.pdf
   └─ tsmcb09.pdf
├─ southern califorina
   ├─ deep learnings.pdf
   ├─ lec1.pdf
   ├─ lec10.pdf
   ├─ lec11.pdf
   ├─ lec12.pdf
   ├─ lec13.pdf
   ├─ lec14.pdf
   ├─ lec15.pdf
   ├─ lec16.pdf
   ├─ lec2.pdf
   ├─ lec3.pdf
   ├─ lec4.pdf
   ├─ lec5.pdf
   ├─ lec6.pdf
   ├─ lec7.pdf
   ├─ lec8.pdf
   ├─ lec9.pdf
   └─ pptx
      ├─ lec1.pptx
      ├─ lec10.pptx
      ├─ lec11.pptx
      ├─ lec12.pptx
      ├─ lec13.pptx
      ├─ lec14.pptx
      ├─ lec15.pptx
      ├─ lec16.pptx
      ├─ lec2.pptx
      ├─ lec3.pptx
      ├─ lec4.pptx
      ├─ lec5.pptx
      ├─ lec6.pptx
      ├─ lec7.pptx
      ├─ lec8.pptx
      └─ lec9.pptx
├─ stable_diffusion_a_tutorial.pdf
├─ stable_diffusion_a_tutorial.pptx
├─ stanford
   ├─ Computer Vision
      ├─ 1206.5533v2.pdf
      ├─ 4824-imagenet-classification-with-deep-convolutional-neural-networks.pdf
      ├─ derivatives.pdf
      ├─ lecture_10.pdf
      ├─ lecture_11.pdf
      ├─ lecture_12.pdf
      ├─ lecture_13.pdf
      ├─ lecture_14.pdf
      ├─ lecture_15.pdf
      ├─ lecture_16.pdf
      ├─ lecture_1_part_1.pdf
      ├─ lecture_1_part_2.pdf
      ├─ lecture_2.pdf
      ├─ lecture_3.pdf
      ├─ lecture_4.pdf
      ├─ lecture_5.pdf
      ├─ lecture_6.pdf
      ├─ lecture_7.pdf
      ├─ lecture_8.pdf
      ├─ lecture_9.pdf
      ├─ lecun-98b.pdf
      ├─ linear-backprop.pdf
      ├─ section_2.pdf
      ├─ section_3.pdf
      ├─ section_5.pdf
      └─ tricks-2012.pdf
   ├─ DeepGenerativeModels
      ├─ annrev.pdf
      ├─ cs229-linalg.pdf
      ├─ cs229-prob.pdf
      ├─ cs236_lecture10.pdf
      ├─ cs236_lecture11.pdf
      ├─ cs236_lecture12.pdf
      ├─ cs236_lecture17.pdf
      ├─ cs236_lecture18.pdf
      ├─ cs236_lecture2.pdf
      ├─ cs236_lecture3.pdf
      ├─ cs236_lecture4.pdf
      ├─ cs236_lecture5.pdf
      ├─ cs236_lecture6.pdf
      ├─ cs236_lecture7.pdf
      ├─ cs236_lecture8.pdf
      ├─ cs236_lecture9.pdf
      ├─ lecture15.pdf
      └─ pptx
         ├─ cs236_lecture1_2023.pptx
         ├─ lecture 13.pptx
         ├─ lecture16-2023-comp.pptx
         └─ lecture_14_comp.pptx
   ├─ Machine Learning with Graphs
      ├─ 01-intro.pdf
      ├─ 02-nodeemb.pdf
      ├─ 03-GNN1.pdf
      ├─ 04-GNN2.pdf
      ├─ 05-GNN3.pdf
      ├─ 06-theory.pdf
      ├─ 07-hetero.pdf
      ├─ 08-kg.pdf
      ├─ 09-reasoning.pdf
      ├─ 10-motifs.pdf
      ├─ 11-recsys.pdf
      ├─ 12-deep-generation.pdf
      ├─ 13-advanced_gnns.pdf
      ├─ 14-graph-transformer.pdf
      ├─ 1403.6652.pdf
      ├─ 1412.6575.pdf
      ├─ 15-scalable.pdf
      ├─ 1506.01094.pdf
      ├─ 16-snap.pdf
      ├─ 1606.06357.pdf
      ├─ 1607.00653.pdf
      ├─ 1609.02907.pdf
      ├─ 17-linkpred.pdf
      ├─ 1703.06103.pdf
      ├─ 1705.07874.pdf
      ├─ 1706.02216.pdf
      ├─ 1710.02971.pdf
      ├─ 1710.10903.pdf
      ├─ 18-algo-reasoning-gnns.pdf
      ├─ 1802.08773.pdf
      ├─ 1805.07984.pdf
      ├─ 1806.01445.pdf
      ├─ 1806.01973.pdf
      ├─ 1806.02473.pdf
      ├─ 1806.08804.pdf
      ├─ 1810.00826.pdf
      ├─ 19-conclusion.pdf
      ├─ 1902.07153.pdf
      ├─ 1902.10197.pdf
      ├─ 1903.03894.pdf
      ├─ 1905.07953.pdf
      ├─ 1905.08108.pdf
      ├─ 1905.13211.pdf
      ├─ 1906.04817.pdf
      ├─ 1cecc7a77928ca8133fa24680a88d2f9-Paper.pdf
      ├─ 2002.02126.pdf
      ├─ 2002.05969.pdf
      ├─ 2003.01332.pdf
      ├─ 2007.03092.pdf
      ├─ 2009.11848.pdf
      ├─ 2011.08843.pdf
      ├─ 2012.15445.pdf
      ├─ 2101.10320.pdf
      ├─ 2106.05234.pdf
      ├─ 2202.13013.pdf
      ├─ 2205.07424.pdf
      ├─ 2206.09677.pdf
      ├─ 2302.04181.pdf
      ├─ CS_224W_Fall_2023_HW1.pdf
      ├─ CS_224W_Fall_2023_HW2.pdf
      ├─ CS_224W_Fall_2023_HW3.pdf
      ├─ Intro_Causality.pdf
      └─ aaai2015_transr.pdf
   ├─ NLP
      ├─ NLP
         ├─ Been-Kim-StanfordLectureMarch2023.pdf
         ├─ Danqi-QA-slides-2022.pdf
         ├─ Multimodal-Deep-Learning-CS224n-Kiela.pdf
         ├─ Vinodkumar_Prabhakaran_Socially_Responsible_NLP.pdf
         ├─ cs224n-2021-lecture01-wordvecs1.pdf
         ├─ cs224n-2021-lecture02-wordvecs2.pdf
         ├─ cs224n-2021-lecture03-neuralnets.pdf
         ├─ cs224n-2021-lecture04-dep-parsing-annotated.pdf
         ├─ cs224n-2021-lecture04-dep-parsing.pdf
         ├─ cs224n-2021-lecture05-rnnlm.pdf
         ├─ cs224n-2021-lecture06-fancy-rnn.pdf
         ├─ cs224n-2021-lecture07-nmt.pdf
         ├─ cs224n-2021-lecture08-final-project.pdf
         ├─ cs224n-2021-lecture09-transformers.pdf
         ├─ cs224n-2021-lecture10-pretraining.pdf
         ├─ cs224n-2021-lecture11-qa-v2.pdf
         ├─ cs224n-2021-lecture11-qa.pdf
         ├─ cs224n-2021-lecture12-generation.pdf
         ├─ cs224n-2021-lecture13-coref.pdf
         ├─ cs224n-2021-lecture14-t5.pdf
         ├─ cs224n-2021-lecture15-lm.pdf
         ├─ cs224n-2021-lecture16-ethics.pdf
         ├─ cs224n-2021-lecture17-analysis.pdf
         ├─ cs224n-2021-lecture18-future.pdf
         ├─ cs224n-2022-lecture-editing.pdf
         ├─ cs224n-2022-lecture-knowledge.pdf
         ├─ cs224n-2022-lecture01-wordvecs1.pdf
         ├─ cs224n-2022-lecture02-wordvecs2.pdf
         ├─ cs224n-2022-lecture03-neuralnets.pdf
         ├─ cs224n-2022-lecture04-dep-parsing.pdf
         ├─ cs224n-2022-lecture05-rnnlm.pdf
         ├─ cs224n-2022-lecture06-fancy-rnn.pdf
         ├─ cs224n-2022-lecture07-nmt.pdf
         ├─ cs224n-2022-lecture08-final-project.pdf
         ├─ cs224n-2022-lecture09-transformers.pdf
         ├─ cs224n-2022-lecture10-pretraining.pdf
         ├─ cs224n-2022-lecture12-generation-final.pdf
         ├─ cs224n-2022-lecture15-guu.pdf
         ├─ cs224n-2022-lecture16-CNN-TreeRNN.pdf
         ├─ cs224n-2022-lecture18-coref.pdf
         ├─ cs224n-2023-lecture01-wordvecs1.pdf
         ├─ cs224n-2023-lecture02-wordvecs2.pdf
         ├─ cs224n-2023-lecture03-neuralnets.pdf
         ├─ cs224n-2023-lecture04-dep-parsing.pdf
         ├─ cs224n-2023-lecture05-rnnlm.pdf
         ├─ cs224n-2023-lecture06-fancy-rnn.pdf
         ├─ cs224n-2023-lecture07-final-project.pdf
         ├─ cs224n-2023-lecture08-transformers.pdf
         ├─ cs224n-2023-lecture10-nlg.pdf
         ├─ cs224n-2023-lecture11-prompting-rlhf.pdf
         ├─ cs224n-2023-lecture12-QA.pdf
         ├─ cs224n-2023-lecture13-CNN-TreeRNN.pdf
         ├─ cs224n-2023-lecture14-insights-linguistics.pdf
         ├─ cs224n-2023-lecture15-code-generation.pdf
         ├─ cs224n-2023-lecture17-coref.pdf
         ├─ cs224n-2023-lecture18-analysis.pdf
         ├─ cs224n-2023-lecture9-pretraining.pdf
         └─ cs224n-lecture-09-anna-goldie-2022-02-01.pdf
      └─ eisenstein-nlp-notes.pdf
   ├─ RL
      ├─ Reinforcement lectures
         ├─ CS234 2023 Batch Policy Evaluation.pdf
         ├─ DL-Pytorch.pdf
         ├─ DQNNaturePaper.pdf
         ├─ MBIEEB.pdf
         ├─ PACnotes.pdf
         ├─ Pg2post.pdf
         ├─ Problem_Sessions_CS234_Feb10.pdf
         ├─ Problem_Sessions_CS234_Feb10_solutions.pdf
         ├─ Problem_Sessions_CS234_Feb17.pdf
         ├─ Problem_Sessions_CS234_Feb17_solutions.pdf
         ├─ Problem_Sessions_CS234_Feb24.pdf
         ├─ Problem_Sessions_CS234_Feb24_solutions.pdf
         ├─ Problem_Sessions_CS234_Feb3.pdf
         ├─ Problem_Sessions_CS234_Feb3_solutions.pdf
         ├─ Problem_Sessions_CS234_Jan13.pdf
         ├─ Problem_Sessions_CS234_Jan13_solutions.pdf
         ├─ Problem_Sessions_CS234_Jan20.pdf
         ├─ Problem_Sessions_CS234_Jan20_solutions.pdf
         ├─ Problem_Sessions_CS234_Jan27.pdf
         ├─ Problem_Sessions_CS234_Jan27_solutions.pdf
         ├─ Problem_Sessions_CS234_Mar10.pdf
         ├─ Problem_Sessions_CS234_Mar10_solutions.pdf
         ├─ batch_learning_post.pdf
         ├─ batch_nosol.pdf
         ├─ batch_policy_learning.pdf
         ├─ book.pdf
         ├─ cs229-linalg.pdf
         ├─ cs229-prob.pdf
         ├─ cs235-lecture15-post.pdf
         ├─ dqn.pdf
         ├─ imitation-post.pdf
         ├─ imitation.pdf
         ├─ imitationpost.pdf
         ├─ lecture1.pdf
         ├─ lecture10.pdf
         ├─ lecture10post.pdf
         ├─ lecture11-2023.pdf
         ├─ lecture11post.pdf
         ├─ lecture12.pdf
         ├─ lecture12post.pdf
         ├─ lecture13.pdf
         ├─ lecture13_post.pdf
         ├─ lecture15.pdf
         ├─ lecture15_annotated.pdf
         ├─ lecture1post.pdf
         ├─ lecture2.pdf
         ├─ lecture2post.pdf
         ├─ lecture3.pdf
         ├─ lecture3post.pdf
         ├─ lecture4.pdf
         ├─ lecture4post.pdf
         ├─ lecture5.pdf
         ├─ lecture5post.pdf
         ├─ lecture6.pdf
         ├─ lecture6_post.pdf
         ├─ lecture7.pdf
         ├─ lecture7_ns.pdf
         ├─ lecture7_post.pdf
         ├─ lecture7post.pdf
         ├─ lecture9post.pdf
         ├─ lecture_week10.pdf
         ├─ lnotes11.pdf
         ├─ lnotes2.pdf
         ├─ lnotes3.pdf
         ├─ lnotes4.pdf
         ├─ lnotes5.pdf
         ├─ lnotes6.pdf
         ├─ lnotes7.pdf
         ├─ lnotes8.pdf
         ├─ lnotes9.pdf
         ├─ pg2.pdf
         └─ winter2023_lecture_batch_policy_evalclass.pdf
      └─ Reinforcement_p
         ├─ CS234_ProblemSession1.pdf
         ├─ CS234_ProblemSession1_Solutions.pdf
         ├─ CS234_ProblemSession2.pdf
         ├─ CS234_ProblemSession2_Solutions.pdf
         ├─ CS234_ProblemSession3.pdf
         ├─ CS234_ProblemSession3_Solutions.pdf
         ├─ CS234_Win23_ProblemSession1.pdf
         ├─ CS234_Win23_ProblemSession1_Solutions.pdf
         ├─ CS234_Win23_ProblemSession2.pdf
         ├─ CS234_Win23_ProblemSession2_Solutions.pdf
         ├─ CS234_Win23_ProblemSession3.pdf
         ├─ CS234_Win23_ProblemSession3_Solutions.pdf
         ├─ CS234_Win23_ProblemSession4.pdf
         ├─ CS234_Win23_ProblemSession4_Solutions.pdf
         ├─ CS234_Win23_ProblemSession5.pdf
         ├─ CS234_Win23_ProblemSession5_Solutions.pdf
         ├─ Problem_Sessions_CS234_Feb10.pdf
         ├─ Problem_Sessions_CS234_Feb10_solutions.pdf
         ├─ Problem_Sessions_CS234_Feb17.pdf
         ├─ Problem_Sessions_CS234_Feb17_solutions.pdf
         ├─ Problem_Sessions_CS234_Feb24.pdf
         ├─ Problem_Sessions_CS234_Feb24_solutions.pdf
         ├─ Problem_Sessions_CS234_Feb3.pdf
         ├─ Problem_Sessions_CS234_Feb3_solutions.pdf
         ├─ Problem_Sessions_CS234_Jan13.pdf
         ├─ Problem_Sessions_CS234_Jan13_solutions.pdf
         ├─ Problem_Sessions_CS234_Jan20.pdf
         ├─ Problem_Sessions_CS234_Jan20_solutions.pdf
         ├─ Problem_Sessions_CS234_Jan27.pdf
         ├─ Problem_Sessions_CS234_Jan27_solutions.pdf
         ├─ Problem_Sessions_CS234_Mar10.pdf
         ├─ Problem_Sessions_CS234_Mar10_solutions.pdf
         ├─ Quiz0.pdf
         ├─ Quiz0_solution.pdf
         ├─ Quiz1_solution.pdf
         ├─ Quiz2_solution.pdf
         ├─ RLbook2018.pdf
         └─ talk.pdf
   ├─ cs231n_standford
      ├─ 1206.5533v2.pdf
      ├─ 1701.00160.pdf
      ├─ 4824-imagenet-classification-with-deep-convolutional-neural-networks.pdf
      ├─ derivatives.pdf
      ├─ lecture_10.pdf
      ├─ lecture_11.pdf
      ├─ lecture_12.pdf
      ├─ lecture_13.pdf
      ├─ lecture_14.pdf
      ├─ lecture_16_Hao.pdf
      ├─ lecture_17.pdf
      ├─ lecture_18.pdf
      ├─ lecture_1_feifei.pdf
      ├─ lecture_1_ranjay.pdf
      ├─ lecture_2.pdf
      ├─ lecture_3.pdf
      ├─ lecture_4.pdf
      ├─ lecture_5.pdf
      ├─ lecture_6.pdf
      ├─ lecture_7.pdf
      ├─ lecture_8.pdf
      ├─ lecture_9.pdf
      ├─ lecture_HAI.pdf
      ├─ lecun-98b.pdf
      ├─ linear-backprop.pdf
      ├─ section_2_annotated.pdf
      ├─ section_2_backprop.pdf
      ├─ section_3_project.pdf
      ├─ section_5_midterm.pdf
      ├─ section_7_detection.pdf
      ├─ section_8_video.pdf
      └─ tricks-2012.pdf
   ├─ cs239
      └─ pdf
         ├─ hw1_introduction.pdf
         ├─ lecture_1.pdf
         ├─ lecture_10.pdf
         ├─ lecture_11.pdf
         ├─ lecture_12.pdf
         ├─ lecture_16_1.pdf
         ├─ lecture_16_2.pdf
         ├─ lecture_2.pdf
         ├─ lecture_3.pdf
         ├─ lecture_4.pdf
         ├─ lecture_5.pdf
         ├─ lecture_6.pdf
         ├─ lecture_9.pdf
         └─ llm_attacks.pdf
   └─ standford231
      ├─ activation_f.pdf
      ├─ applications.pdf
      ├─ attention_models.pdf
      ├─ autoencoders.pdf
      ├─ backprop.pdf
      ├─ biblio.pdf
      ├─ biblio.pdf~
      ├─ bn_layer.pdf
      ├─ conv_layer.pdf
      ├─ data_aug_trans.pdf
      ├─ data_preprocessing.pdf
      ├─ dropout.pdf
      ├─ famous_networks.pdf
      ├─ fc_layer.pdf
      ├─ gans.pdf
      ├─ hw_layer.pdf
      ├─ hyper_parms_tun.pdf
      ├─ in_layer.pdf
      ├─ loss_f.pdf
      ├─ nn.pdf
      ├─ others.pdf
      ├─ params_init.pdf
      ├─ params_up.pdf
      ├─ part_Applications.pdf
      ├─ part_Data.pdf
      ├─ part_Layers.pdf
      ├─ part_Learning.pdf
      ├─ part_Networks.pdf
      ├─ pool_layer.pdf
      ├─ recurrent_neural_networks.pdf
      ├─ region_based_cnn.pdf
      ├─ rnn_convnet.pdf
      ├─ spatial_transformer_networks.pdf
      ├─ title.pdf
      ├─ tricks.pdf
      ├─ upsampling_layer.pdf
      ├─ visualization.pdf
      └─ yolo.pdf
└─ toronto
   ├─ pdf
      ├─ lec1.pdf
      ├─ lec10.pdf
      ├─ lec11.pdf
      ├─ lec12.pdf
      ├─ lec13.pdf
      ├─ lec14.pdf
      ├─ lec15.pdf
      ├─ lec16.pdf
      ├─ lec2.pdf
      ├─ lec3.pdf
      ├─ lec4.pdf
      ├─ lec5.pdf
      ├─ lec6.pdf
      ├─ lec7.pdf
      ├─ lec8.pdf
      └─ lec9.pdf
   └─ pptx
      ├─ lec1.pptx
      ├─ lec10.pptx
      ├─ lec11.pptx
      ├─ lec12.pptx
      ├─ lec13.pptx
      ├─ lec14.pptx
      ├─ lec15.pptx
      ├─ lec16.pptx
      ├─ lec2.pptx
      ├─ lec3.pptx
      ├─ lec4.pptx
      ├─ lec5.pptx
      ├─ lec6.pptx
      ├─ lec7.pptx
      ├─ lec8.pptx
      └─ lec9.pptx

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Holistic understanding of Large Language Models (LLMs) involves integrating NLP, computer vision, audio processing, and reinforcement learning. GNNs capture intricate data relationships. Attention mechanisms, Transformer architectures, vision-language pre-training, audio processing with spectrograms, pre-trained embeddings, and reinforcement .

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