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{{#seo:
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|title=PRIMO.ai
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|keywords=Game, design, ChatGPT, artificial, intelligence, machine, learning, NLP, NLG, NLC, NLU, models, data, singularity, moonshot, Sentience, AGI, Emergence, Moonshot, Explainable, TensorFlow, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Hugging Face, OpenAI, Tensorflow, OpenAI, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Meta, LLM, metaverse, assistants, agents, digital twin, IoT, Transhumanism, Immersive Reality, Generative AI, Conversational AI, Perplexity, Bing, You, Gemini, Ernie, prompt Engineering LangChain, Video/Image, Vision, End-to-End Speech, Synthesize Speech, Speech Recognition, Stanford, MIT |description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools 
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On {{LOCALDAYNAME}} {{LOCALMONTHNAME}} {{LOCALDAY}}, {{LOCALYEAR}} PRIMO.ai has {{NUMBEROFPAGES}} pages  
 
On {{LOCALDAYNAME}} {{LOCALMONTHNAME}} {{LOCALDAY}}, {{LOCALYEAR}} PRIMO.ai has {{NUMBEROFPAGES}} pages  
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<b>Primo.ai</b> provides links to articles and videos on Artificial intelligence (AI) concepts and techniques such as [[Generative AI]], [[Natural Language Processing (NLP)]], [[Vision|Computer Vision]], [[Deep Learning]], [[Reinforcement Learning (RL)]], and [[Quantum|Quantum Technology]] -- providing [[Perspective|perspectives]] for individuals who are passionate about learning and developing new skills.   
  
 
= Getting Started =
 
= Getting Started =
=== Overview ===
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* [[How do I leverage Artificial Intelligence (AI)?]]
* [[How do I leverage AI?]]
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* [[What is Artificial Intelligence (AI)?]]
* [[Courses]]
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** [[History of Artificial Intelligence (AI)]]  
* [[Reading Material & Glossary]]
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** [[Courses & Certifications]]
 
+
** [[Reading Material & Glossary]]
=== Background ===
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** [[Podcasts]]
* [[What is AI?]]
 
* [[History of AI]]
 
 
* [[Current State]]
 
* [[Current State]]
 
+
* [[Life~Meaning#Can_Meaning_Exist_in_Artificial_Systems|Can ''Meaning'' Exist in Artificial Systems?]] ... Explore the condition that separates simulation from ''Meaning''
=== AI Breakthroughs ===
 
* [[Capabilities]]
 
* [[Case Studies]]
 
* [http://patft.uspto.gov/netacgi/nph-Parser?Sect1=PTO2&Sect2=HITOFF&u=%2Fnetahtml%2FPTO%2Fsearch-adv.htm&r=0&p=1&f=S&l=50&Query=%28%28abst%2F%28intelligence+and+%28artificial+or+machine%29%29%29+or+%28aclm%2F%28intelligence+and+%28artificial+or+machine%29%29%29%29+and++%28ISD%2F1%2F1%2F2014-%3E1%2F1%2F2050%29&d=PTXT AI Patents after 2013]
 
  
 
=== AI Fun ===
 
=== AI Fun ===
* [http://experiments.withgoogle.com/collection/ai Google AI Experiments]
+
* Try [[ChatGPT]] | [[OpenAI]]
* [http://playground.tensorflow.org TensorFlow Playground]
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* Create your own [[music]] with [https://www.udio.com/ Udio]
* [http://js.tensorflow.org/ TensorFlow.js Demos]
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* Try [[Stability_AI#DreamStudio | DreamStudio]] | Stability AI ... text-to-image [[Diffusion|diffusion]] model capable of generating photo-realistic images
* [http://aiyprojects.withgoogle.com/ Do-it-yourself artificial intelligence | AIY]
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* [https://experiments.withgoogle.com/collection/ai Google AI Experiments]
 +
* [https://playground.tensorflow.org TensorFlow Playground] [[TensorFlow Playground|...learn more]]
 +
* [https://js.tensorflow.org/ TensorFlow.js Demos]
 +
* [[Google AIY Projects Program]]  - Do-it-yourself artificial intelligence
 +
* [https://www.nvidia.com/en-us/research/ai-playground/ NVIDIA Playground]
 
* [[Competitions]]
 
* [[Competitions]]
 +
* [https://colab.research.google.com/github/nickwalton/AIDungeon/blob/master/AIDungeon_2.ipynb AI Dungeon 2] AI generated text adventure  ... [[Gaming]] ... [[Game Design | Design]]
 +
 +
<i>.. more [[Natural Language Processing (NLP)]] fun...</i>
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* [https://corenlp.run/ CoreNLP - see NLP parsing techniques by pasting your text | Stanford]
 +
* [https://nlp.stanford.edu:8080/sentiment/rntnDemo.html Sentiment Treebank Analysis Demo]
  
 
=== How to... ===
 
=== How to... ===
*[[AI Solver]]
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* [[Strategy & Tactics]] for developing AI investments
*[[Strategy & Tactics]]
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* [[AI Solver]] for determining possible algorithms for your needs
*[[Checklists]]
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* [[Evaluation]]   ... Prompts for assessing AI projects
 +
* [[Checklists]] for ensuring consistency and completeness
  
 
=== Forward Thinking ===
 
=== Forward Thinking ===
* [[Moonshots]]
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* [[Moonshots]]   ... a project or goal that aims to achieve a major breakthrough in artificial intelligence that has the potential to transform society or address significant global challenges
* [[Journey to Singularity]]
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* [[Artificial General Intelligence (AGI) to Singularity]] ... a hypothetical future event in which artificial intelligence (AI) surpasses human intelligence in a way that fundamentally changes human society and civilization
* [[Creatives]]
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* [https://www.uspto.gov/initiatives/artificial-intelligence Artificial Intelligence | United States Patent and Trademark Office] --> [https://patft.uspto.gov/netacgi/nph-Parser?Sect1=PTO2&Sect2=HITOFF&u=%2Fnetahtml%2FPTO%2Fsearch-adv.htm&r=0&p=1&f=S&l=50&Query=%28%28abst%2F%28intelligence+and+%28artificial+or+machine%29%29%29+or+%28aclm%2F%28intelligence+and+%28artificial+or+machine%29%29%29%29+and++%28ISD%2F1%2F1%2F2014-%3E1%2F1%2F2050%29&d=PTXT AI Patents after 2013]
 +
* [[Creatives]]   ... individuals who have significantly contributed to the development, advancement, or popularization of AI
 +
* [[Books, Radio & Movies - Exploring Possibilities]]
 +
 
 +
<hr>
  
= Datasets & Information Analysis =
+
= Information Analysis =
* [[Datasets]]
+
* [[Context]] ... the next AI frontier
* [[Batch Norm(alization) & Standardization]]
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* [[Data Science]] ... [[Data Governance|Governance]] ... [[Data Preprocessing|Preprocessing]] ... [[Feature Exploration/Learning|Exploration]] ... [[Data Interoperability|Interoperability]] ... [[Algorithm Administration#Master Data Management (MDM)|Master Data Management (MDM)]] ... [[Bias and Variances]] ... [[Benchmarks]] ... [[Datasets]]  
* [[Data Preprocessing & Feature Exploration/Learning]]
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* [[Data Quality]] ...[[AI Verification and Validation|validity]], [[Evaluation - Measures#Accuracy|accuracy]], [[Data Quality#Data Cleaning|cleaning]], [[Data Quality#Data Completeness|completeness]], [[Data Quality#Data Consistency|consistency]], [[Data Quality#Data Encoding|encoding]], [[Data Quality#Zero Padding|padding]], [[Data Quality#Data Augmentation, Data Labeling, and Auto-Tagging|augmentation, labeling, auto-tagging]], [[Data Quality#Batch Norm(alization) & Standardization| normalization, standardization]], and [[Data Quality#Imbalanced Data|imbalanced data]]
* [[Hyperparameters]]
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* [[Natural Language Processing (NLP)#Managed Vocabularies |Managed Vocabularies]]
* [[Data Augmentation]]
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* [[Excel]] ... [[LangChain#Documents|Documents]] ... [[Database|Database; Vector & Relational]] ... [[Graph]] ... [[LlamaIndex]]
 
* [[Visualization]]
 
* [[Visualization]]
* [[Master Data Management  (MDM) / Feature Store / Data Lineage / Data Catalog]]
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* [[Analytics]] 
 +
* [[Algorithm Administration#Hyperparameter|Hyperparameter]]s
 +
 
 +
= <span id="Algorithms"></span>[[Algorithms]] =
 +
* [https://huggingface.co/models Models | Hugging Face] ... click on Sort: Trending
 +
* [[Algorithms]]; the engines of AI
 +
* [[Model Zoos]]
 +
* [[Graphical Tools for Modeling AI Components]]
  
 +
== [[Generative AI| Generative AI (Gen AI)]] ==
 +
The ability to generate new content or solutions, such as [[Writing/Publishing|writing]] or designing new products, using techniques such as [[Generative Adversarial Network (GAN)]] or neural [[Style Transfer|style transfer]].
  
= Algorithms =
+
* [[Conversational AI]] ... [[ChatGPT]] | [[OpenAI]] ... [[Bing/Copilot]] | [[Microsoft]] ... [[Gemini]] | [[Google]] ... [[Claude]] | [[Anthropic]] ... [[Perplexity]] ... [[You]] ... [[phind]] ... [[Grok]] | [https://x.ai/ xAI] ... [[Groq]] ... [[Ernie]] | [[Baidu]] ... [[DeepSeek]]
* [[About Algorithms & Neural Network Models]]
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** [[Prompt Engineering (PE)]] ...[[Prompt Engineering (PE)#PromptBase|PromptBase]] ... [[Prompt Injection Attack]]
* [[Discriminative vs. Generative]]
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** [[Generative AI for Business Analysis]]
* [http://www.youtube.com/user/IntegrateBiz/playlists Intersection of Artificial Intelligence and Architecture | Raj Ramesh]
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* [[Large Language Model (LLM)#Multimodal|Multimodal Language Model]]s
 +
* [[Video/Image]]
 +
* [[Synthesize Speech]]
 +
* [[Game Development with Generative AI]] ... [[Gaming]] ... [[Game-Based Learning (GBL)]] ... [[Games - Security|Security]] ... [[Game Development with Generative AI|Generative AI]] ... [[Metaverse#Games - Metaverse|Games - Metaverse]] ... [[Games - Quantum Theme|Quantum]] ... [[Game Theory]] ... [[Game Design | Design]]
  
 +
== Predict values - [[Regression]] ==
 +
Analyze large amounts of data and make predictions or recommendations based on that data.
  
== Predict values ==
 
 
* [[Linear Regression]]
 
* [[Linear Regression]]
 
* [[Ridge Regression]]
 
* [[Ridge Regression]]
* [[Bayesian Linear Regression]]
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* [[Lasso Regression]]
 +
* [[Elastic Net Regression]]
 +
* [[Bayes#Bayesian Linear Regression|Bayesian Linear Regression]]
 +
* [[Bayes#Bayesian Deep Learning (BDL)|Bayesian Deep Learning (BDL)]]
 +
* [[Logistic Regression (LR)]]
 
* [[Support Vector Regression (SVR)]]
 
* [[Support Vector Regression (SVR)]]
 
* [[Ordinal Regression]]
 
* [[Ordinal Regression]]
 
* [[Poisson Regression]]
 
* [[Poisson Regression]]
* [[Tree-based...]]
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* Tree-based...
 
** [[Fast Forest Quantile Regression]]
 
** [[Fast Forest Quantile Regression]]
 
** [[Decision Forest Regression]]
 
** [[Decision Forest Regression]]
* [[Boosted Decision Tree Regression]]
 
 
* [[General Regression Neural Network (GRNN)]]
 
* [[General Regression Neural Network (GRNN)]]
 
* [[One-class Support Vector Machine (SVM)]]
 
* [[One-class Support Vector Machine (SVM)]]
 +
* [[Gradient Boosting Machine (GBM)]]
  
 
+
== [[Classification]] [[...predict categories]] ==
== Classification [[...predict categories]] ==
+
* <span id="Supervised"></span>[[Supervised]]
* [[Supervised]]
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** Naive [[Bayes]]
** [[Naive Bayes]]
 
 
** [[K-Nearest Neighbors (KNN)]]
 
** [[K-Nearest Neighbors (KNN)]]
 
** [[Perceptron (P)]] ...and Multi-layer Perceptron (MLP)
 
** [[Perceptron (P)]] ...and Multi-layer Perceptron (MLP)
 
** [[Feed Forward Neural Network (FF or FFNN)]]
 
** [[Feed Forward Neural Network (FF or FFNN)]]
** [[Artificial Neural Network (ANN)]]
+
** [[Neural Network]]
** [[Deep Neural Network (DNN)]]
+
*** [[Deep Learning]] - [[Neural Network#Deep Neural Network (DNN)|Deep Neural Network (DNN)]]
** [[Kernel Approximation]]
+
** Kernel Approximation - [[Kernel Trick]]
 
*** [[Support Vector Machine (SVM)]]
 
*** [[Support Vector Machine (SVM)]]
 
** [[Logistic Regression (LR)]]
 
** [[Logistic Regression (LR)]]
** [[Tree-based...]]
+
*** [[Softmax]] Regression; Multinominal Logistic Regression
 +
** Tree-based...
 
*** [[(Boosted) Decision Tree]]
 
*** [[(Boosted) Decision Tree]]
 
*** [[Random Forest (or) Random Decision Forest]]
 
*** [[Random Forest (or) Random Decision Forest]]
 
*** [[Decision Jungle]]
 
*** [[Decision Jungle]]
 
** [[Apriori, Frequent Pattern (FP) Growth, Association Rules/Analysis]]
 
** [[Apriori, Frequent Pattern (FP) Growth, Association Rules/Analysis]]
** [[Markov Model (Chain, Discrete Time, Continuous Tme, Hidden)]]
+
** [[Markov Model (Chain, Discrete Time, Continuous Time, Hidden)]]
* [[Unsupervised]]
+
* <span id="Unsupervised"></span>[[Unsupervised]]
 
** [[Radial Basis Function Network (RBFN)]]
 
** [[Radial Basis Function Network (RBFN)]]
** [[Autoencoder (AE) / Encoder-Decoder]]
+
** <span id="Self-Supervised"></span>[[Self-Supervised]]
** [[(Stacked) Denoising Autoencoder (DAE)]]
+
*** [[Autoencoder (AE) / Encoder-Decoder]]
** [[Sparse Autoencoder (SAE)]]
+
*** [[(Stacked) Denoising Autoencoder (DAE)]]
 +
*** [[Sparse Autoencoder (SAE)]]
  
 
== [[Recommendation]] ==
 
== [[Recommendation]] ==
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* [[Matrix Factorization]]
 
* [[Matrix Factorization]]
  
== [[Clustering]] - Continuous - Dimensional Reduction ==
+
== [[Clustering]] - Continuous - [[Dimensional Reduction]] ==
 
* [[Singular Value Decomposition (SVD)]]
 
* [[Singular Value Decomposition (SVD)]]
 
* [[Principal Component Analysis (PCA)]]
 
* [[Principal Component Analysis (PCA)]]
 
* [[K-Means]]
 
* [[K-Means]]
 +
* [[Fuzzy C-Means (FCM)]]
 
* [[K-Modes]]
 
* [[K-Modes]]
 
* [[Association Rule Learning]]
 
* [[Association Rule Learning]]
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* [[Restricted Boltzmann Machine (RBM)]]
 
* [[Restricted Boltzmann Machine (RBM)]]
 
* [[Variational Autoencoder (VAE)]]
 
* [[Variational Autoencoder (VAE)]]
 +
* [[Biclustering]]
 +
* [https://en.wikipedia.org/wiki/Multidimensional_scaling Multidimensional Scaling (MDS)]
  
 
=== [[Hierarchical]] ===
 
=== [[Hierarchical]] ===
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* [[Mixture Models; Gaussian]]
 
* [[Mixture Models; Gaussian]]
  
== Convolutional; Image & Object Recognition ==
+
=== Convolutional ===
 
* [[(Deep) Convolutional Neural Network (DCNN/CNN)]]
 
* [[(Deep) Convolutional Neural Network (DCNN/CNN)]]
 
* [[(Deep) Residual Network (DRN) - ResNet]]
 
* [[(Deep) Residual Network (DRN) - ResNet]]
 
** [[ResNet-50]]
 
** [[ResNet-50]]
 
=== [[Graph Convolutional Network (GCN)]] ===
 
- includes social networks, sensor networks, the entire Internet, 3D Objects (point cloud)
 
* [[Point Cloud Convolutional Neural Network (CNN)]]
 
  
 
=== Deconvolutional ===
 
=== Deconvolutional ===
 
*[[Deconvolutional Neural Network (DN) / Inverse Graphics Network (IGN)]]
 
*[[Deconvolutional Neural Network (DN) / Inverse Graphics Network (IGN)]]
  
== Other ==
+
== Graph ==
* [[Hopfield Network (HN)]]
+
- includes social networks, sensor networks, the entire Internet, 3D Objects ([[Point Cloud]])
* [[Energy-based Model (EBN)]]
+
* [[Graph Convolutional Network (GCN), Graph Neural Networks (Graph Nets), Geometric Deep Learning]]  
* [[Generative Query Network (GQN)]]
+
* [[Point Cloud]]  
 
+
* [https://techxplore.com/news/2019-04-hierarchical-rnn-based-scene-graphs-images.html A hierarchical RNN-based model to predict scene graphs for images]
== Sequence / Time ==
+
* [https://techxplore.com/news/2019-01-multi-granularity-framework-social-recognition.html A multi-granularity reasoning framework for social relation recognition]
* [[Sequence to Sequence (Seq2Seq)]]
+
* [[Neural Structured Learning (NSL)]]
* [[Neural Turing Machine]]
 
* [[Long Short-Term Memory (LSTM), Gated Recurrent Unit (GRU), and Recurrent Neural Network (RNN)]]
 
** [[Bidirectional Long Short-Term Memory (BI-LSTM)]]
 
** [[Bidirectional Long Short-Term Memory (BI-LSTM) with Attention Mechanism]]
 
** [[Average-Stochastic Gradient Descent (SGD) Weight-Dropped LSTM (AWD-LSTM)]]
 
* [[(Tree) Recursive Neural (Tensor) Network (RNTN)]]
 
  
=== Time ===
+
== [[Time#Sequence/Time-based Algorithms|Sequence/Time-based Algorithms]] ==
* [[Temporal Difference (TD) Learning]]
+
* [[Mamba]]
* Predict values
 
** [[Time Series Forecasting Methods - Statistical]]  
 
** [[Time Series Forecasting - Deep Learning]]
 
  
 
== Competitive  ==
 
== Competitive  ==
 
* [[Generative Adversarial Network (GAN)]]
 
* [[Generative Adversarial Network (GAN)]]
 +
* [[Image-to-Image Translation]]
 
* [[Conditional Adversarial Architecture (CAA)]]
 
* [[Conditional Adversarial Architecture (CAA)]]
 
* [[Kohonen Network (KN)/Self Organizing Maps (SOM)]]
 
* [[Kohonen Network (KN)/Self Organizing Maps (SOM)]]
 +
* [[Quantum Generative Adversarial Learning (QuGAN - QGAN)]]
  
 
+
== <span id="Semi-Supervised"></span>[[Semi-Supervised]] ==
== [[Semi-Supervised]] ==
+
In many practical situations, the cost to label is quite high, since it requires skilled human experts to do that. So, in the absence of labels in the majority of the observations but present in few, semi-supervised algorithms are the best candidates for the model building. These methods exploit the idea that even though the group memberships of the unlabeled data are unknown, this data carries important information about the group parameters. Reference: [[Learning Techniques]]
In many practical situations, the cost to label is quite high, since it requires skilled human experts to do that. So, in the absence of labels in the majority of the observations but present in few, semi-supervised algorithms are the best candidates for the model building. These methods exploit the idea that even though the group memberships of the unlabeled data are unknown, this data carries important information about the group parameters.
 
 
* [[Semi-Supervised Learning with Generative Adversarial Network (SSL-GAN)]]
 
* [[Semi-Supervised Learning with Generative Adversarial Network (SSL-GAN)]]
 
* [[Context-Conditional Generative Adversarial Network (CC-GAN)]]
 
* [[Context-Conditional Generative Adversarial Network (CC-GAN)]]
  
 +
== <span id="Natural Language"></span>Natural Language  ==
  
== [[Natural Language Processing (NLP)]] ==
+
* [[Natural Language Processing (NLP)]] involves speech recognition, (speech) translation, understanding (semantic parsing) complete sentences, understanding synonyms of matching words, and sentiment analysis
Challenges involve Speech recognition, (speech) translation, understanding (semantic parsing) complete sentences, understanding synonyms of matching words, sentiment analysis, and writing/generating complete grammatically correct sentences and paragraphs
+
** [[Natural Language Generation (NLG)]]
* [[Topic Model/Mapping]]
+
** [[Natural Language Classification (NLC)]] 
* [[Average-Stochastic Gradient Descent (SGD) Weight-Dropped LSTM (AWD-LSTM)]]
+
** [[Large Language Model (LLM)]] 
 
+
** [[Natural Language Tools & Services]]
 +
*** [[Embedding]]
 +
*** [[Fine-tuning]]
 +
*** [[Agents#AI-Powered Search|Search]] (where results are ranked by relevance to a query string)
 +
*** [[Clustering]] (where text strings are grouped by similarity)
 +
*** [[Recommendation]]s (where items with related text strings are recommended)
 +
*** [[Anomaly Detection]] (where outliers with little relatedness are identified)
 +
*** [[Classification]] (where text strings are classified by their most similar label)
 +
*** [[Dimensional Reduction]]
 +
*** [[...find outliers]] ... diversity measurement (where similarity distributions are analyzed)
  
== [[Reinforcement Learning (RL)]]  ==
+
== <span id="Reinforcement Learning (RL)"></span>[[Reinforcement Learning (RL)]]  ==
an algorithm receives a delayed reward in the next time step to evaluate its previous action. Therefore based on those decisions, the algorithm will train itself based on the success/error of output. In combination with Neural Networks it is capable of solving more complex tasks.
+
an algorithm receives a delayed reward in the next time step to evaluate its previous action. Therefore based on those decisions, the algorithm will train itself based on the success/error of output. In combination with Neural Networks it is capable of solving more complex tasks. [[Policy Gradient (PG)]] methods are a type of reinforcement learning techniques that rely upon optimizing parametrized policies with respect to the expected return (long-term cumulative reward) by [[Gradient Descent Optimization & Challenges |gradient descent]].
  
 +
* [[Monte Carlo]] (MC) Method - Model Free Reinforcement Learning
 
* [[Markov Decision Process (MDP)]]
 
* [[Markov Decision Process (MDP)]]
* [[Deep Reinforcement Learning (DRL)]]
 
* [[Deep Q Learning (DQN)]]
 
* [[Neural Coreference]]
 
 
* [[State-Action-Reward-State-Action (SARSA)]]
 
* [[State-Action-Reward-State-Action (SARSA)]]
* [[Deep Deterministic Policy Gradient (DDPG)]]
+
* [[Q Learning]]
* [[Trust Region Policy Optimization (TRPO)]]
+
** [[Deep Q Network (DQN)]]
* [[Proximal Policy Optimization (PPO)]]
+
* [[Deep Reinforcement Learning (DRL)]] DeepRL
 +
* [[Distributed Deep Reinforcement Learning (DDRL)]]
 +
* [[Evolutionary Computation / Genetic Algorithms]]
 +
* [[Actor Critic]]
 +
** [[Asynchronous Advantage Actor Critic (A3C)]]
 +
** [[Advanced Actor Critic (A2C)]]
 +
** [[Lifelong Latent Actor-Critic (LILAC)]]
 
* [[Hierarchical Reinforcement Learning (HRL)]]
 
* [[Hierarchical Reinforcement Learning (HRL)]]
 +
* [[Reinforcement Learning (RL) from Human Feedback (RLHF)]]
 +
 +
== [[Neuro-Symbolic]] ==
 +
the “connectionists” seek to construct artificial [[Neural Network]]s, inspired by biology, to learn about the world, while the “symbolists” seek to build intelligent machines by coding in logical rules and representations of the world. Neuro-Symbolic combines the fruits of group.
  
 +
* [[Neuro-Symbolic]] ... [[Symbolic Artificial Intelligence]]
 +
* [[Neuro-Symbolic Concept Learner (NS-CL)]]
  
 +
== Other ==
 +
* [[Hopfield Network (HN)]]
 +
* [[Energy-based Model (EBN)]] ... non-normalized probabilistic model
 +
* [[Generative Query Network (GQN)]]
  
 
= Techniques =
 
= Techniques =
== Foundation ==
+
* [[Math for Intelligence]] ... [[Finding Paul Revere]]
* [[Math for Intelligence]]
+
* [https://www.arxiv-sanity.com/ Arxiv Sanity Preserver] to accelerate research
* [http://www.arxiv-sanity.com/ Arxiv Sanity Preserver] to accelerate research
+
* [[Theory-free Science]]
  
== Methods ==
+
=== Methods & Concepts ===
 
* [[Backpropagation]]
 
* [[Backpropagation]]
* [[Gradient Boosting Algorithms]]
+
* [[Gradient Descent Optimization & Challenges|Stochastic Gradient Descent]]
 +
* [[Gradient Descent Optimization & Challenges#Learning Rate Decay|Learning Rate Decay]]
 +
* [[Pooling / Sub-sampling: Max, Mean|Max Pooling]]
 +
* [[Data Quality#Batch Norm(alization) & Standardization|Batch Normalization]]
 
* [[Overfitting Challenge]]
 
* [[Overfitting Challenge]]
 
** [[Regularization]]
 
** [[Regularization]]
 
** [[Dropout]]
 
** [[Dropout]]
* [[Softmax]]
+
* [[Manifold Hypothesis]] and [[Dimensional Reduction]]; identification - what influences an observed outcome
* [[Dimensional Reduction Algorithms]]; what influences an observed outcome
 
** [[Principal Component Analysis (PCA)]]
 
** [[Kernel Approximation]]
 
** [[Isomap]]
 
** [[Local Linear Embedding (LLE)]]
 
** [[T-Distributed Stochastic Neighbor Embedding (t-SNE)]]
 
** [[Pooling / Sub-sampling: Max, Mean]]
 
** [[Zero Padding]]
 
 
* [[Activation Functions]]
 
* [[Activation Functions]]
* [[Attention Mechanism/Model]]
+
* [[Memory]]
 +
** [[Memory Networks]]
 
* [[Multiclassifiers; Ensembles and Hybrids; Bagging, Boosting, and Stacking]]
 
* [[Multiclassifiers; Ensembles and Hybrids; Bagging, Boosting, and Stacking]]
* [[Object Detection; Faster R-CNN, YOLO, SSD]]
+
* [[Optimizer]]s
* [[Optimizers]]
 
 
** [[Optimization Methods]]
 
** [[Optimization Methods]]
 
** [[Objective vs. Cost vs. Loss vs. Error Function]]
 
** [[Objective vs. Cost vs. Loss vs. Error Function]]
 
** [[Gradient Descent Optimization & Challenges]]
 
** [[Gradient Descent Optimization & Challenges]]
 
** [[Parameter Initialization]]
 
** [[Parameter Initialization]]
** [http://www.kdnuggets.com/2018/04/right-metric-evaluating-machine-learning-models-1.html Choosing the Right Metric for Evaluating Machine Learning Models]
+
* [[Neural Network Pruning]]
** [[Approach to Bias and Variances]]
+
* [[Repositories & Other Algorithms]]
** [[Evaluation Measures - Classification Performance]]
+
* [https://dawn.cs.stanford.edu/benchmark/index.html DAWNBench] An End-to-End Deep Learning Benchmark and Competition
* [[Few Shot Learning]]
+
* [[Knowledge Graphs]]
* [[Multitask Learning]]
+
* [[Quantization]]
 +
* [[Causation vs. Correlation]]
 +
* [[Deep Features]]
 +
* [[Local Features]]
 +
* [[Loop#Unintended Feedback Loop|Unintended Feedback Loop]]
 +
* [[Backtesting]]
 +
* [[Digital Twin]]
 +
 
 +
==== [[Policy]] ====
 +
* [[Policy]]  ... [[Policy vs Plan]] ... [[Constitutional AI]] ... [[Trust Region Policy Optimization (TRPO)]] ... [[Policy Gradient (PG)]] ... [[Proximal Policy Optimization (PPO)]]
 +
 
 +
=== <span id="Learning Techniques"></span>[[Learning Techniques]] ===
 +
* [[In-Context Learning (ICL)]] ... [[Context]]
 +
* [[Out-of-Distribution (OOD) Generalization]]
 +
* [[PRIMO.ai#Supervised|Supervised Learning]] ... [[PRIMO.ai#Semi-Supervised|Semi-Supervised Learning]] ... [[PRIMO.ai#Self-Supervised|Self-Supervised Learning]] ... [[PRIMO.ai#Unsupervised|Unsupervised Learning]]
 +
* [[PRIMO.ai#Reinforcement Learning (RL)|Reinforcement Learning (RL)]]
 +
* [[Reinforcement Learning (RL) from Human Feedback (RLHF)]]
 +
* [[Deep Learning]]
 
* [[Transfer Learning]] a model trained on one task is re-purposed on a second related task
 
* [[Transfer Learning]] a model trained on one task is re-purposed on a second related task
 
** [[Text Transfer Learning]]  
 
** [[Text Transfer Learning]]  
 
** [[Image/Video Transfer Learning]]
 
** [[Image/Video Transfer Learning]]
* [[Repositories & Other Algorithms]]
+
* [[Few Shot Learning]] ... [[Few Shot Learning#One-Shot Learning|One-Shot Learning]] ... [[Few Shot Learning#Zero-Shot Learning|Zero-Shot Learning]]
 +
* [[Ensemble Learning]]
 +
* [[Multi-Task Learning (MTL)]]
 +
* [[Apprenticeship Learning - Inverse Reinforcement Learning (IRL)]]
 +
* [[Imitation Learning (IL)]]
 +
* [[Lifelong Learning]] - Catastrophic Forgetting Challenge
 +
* [[Neural Structured Learning (NSL)]]
 +
* [[Meta-Learning]]
 +
* [[Online Learning]]
 +
* [[Human-in-the-Loop (HITL) Learning]] / Active Learning
 +
* [[Decentralized: Federated & Distributed]] Learning
 +
* [[Large Language Model (LLM)#Multimodal|Multimodal Machine Learning]]
 +
* [[Embodied AI| Action Learning ... Embodied AI]]
 +
* [[Simulated Environment Learning]]
 +
 
 +
=== Opportunities & Challenges ===
 +
* [[Generative AI]]
 +
* [[Inside Out - Curious Optimistic Reasoning]] 
 +
* Nature
 +
** [[Evolutionary Computation / Genetic Algorithms]]
 +
** [[Bio-inspired Computing]]
 +
* [[Connecting Brains]]
 +
** [[Molecular Artificial Intelligence (AI)]]
 +
** [[Neuroscience]]
 +
* [[Architectures]]
 +
** [[Deep Distributed Q Network Partial Observability]] 
 +
** [[Graph Convolutional Network (GCN), Graph Neural Networks (Graph Nets), Geometric Deep Learning]]
 +
** [[Capsule Networks (CapNets)]]
 +
** [[Messaging & Routing]]
 +
** [[Processing Units - CPU, GPU, APU, TPU, VPU, FPGA, QPU]]
 +
* [[Integrity Forensics]]
 +
* [[Metaverse]]
 +
* [[Omniverse]]
 +
* [[Cybersecurity]]
 +
* [[Robotics]]
 +
* [[Other Challenges]] in Artificial Intelligence
 +
* [[Quantum]]
 +
 
 +
 
 +
<hr>
 +
= <span id="Development & Implementation"></span>[[Development]] & Implementation =
 +
* [https://aitoptools.com/ Tool Assist | AI Top Tools] ... largest directory of AI Tools, Ranked with dynamic algorithms
 +
* [[Development]]
 +
** [[Project Management]]
 +
** [[Generative AI for Business Analysis]]
 +
** [[Diagrams for Business Analysis]]
 +
** [[Requirements Management]]
 +
** [[Risk, Compliance and Regulation]]
 +
** [[Evaluation]]
 +
*** [[Evaluation - Measures]]
 +
** [[Train, Validate, and Test]]
 +
* [[Building Your Environment]]
 +
* [[Algorithm Administration]]
 +
** [[Algorithm Administration#AIOps/MLOps|AIOps/MLOps]]
 +
* [[ChatGPT#Integration | ChatGPT Integration]]
 +
* [[Game Development with Generative AI]] ... [[Gaming]] ... [[Game-Based Learning (GBL)]] ... [[Games - Security|Security]] ... [[Game Development with Generative AI|Generative AI]] ... [[Metaverse#Games - Metaverse|Games - Metaverse]] ... [[Games - Quantum Theme|Quantum]] ... [[Game Theory]] ... [[Game Design | Design]]
 +
* [[Agents]] ... [[Robotic Process Automation (RPA)|Robotic Process Automation]] ... [[Assistants]] ... [[Personal Companions]] ... [[Personal Productivity|Productivity]] ... [[Email]] ... [[Negotiation]] ... [[LangChain]]
 +
* [[Service Capabilities]]
 +
* [[AI Marketplace & Toolkit/Model Interoperability]]
 +
 
 +
== No Coding ==
 +
* [[Algorithm Administration#Automated Learning|Automated Learning]]
 +
* [[Neural Architecture]] Search (NAS) Algorithm
 +
* [[Codeless Options, Code Generators, Drag n' Drop]]
 +
 
 +
== Coding ==
 +
* [[Development#AI Pair Programming Tools|AI Pair Programming Tools]]
 +
* [[Python]] ... [[Generative AI with Python|GenAI w/ Python]] ... [[JavaScript]] ... [[Generative AI with JavaScript|GenAI w/ JavaScript]] ... [[TensorFlow]] ... [[PyTorch]]
 +
* [[R Project]]
 +
* [[Other Coding options]]
  
= Development & Implementation =
+
=== [[Libraries & Frameworks]] ===
== [[Libraries & Frameworks]] ==
 
 
* [[Libraries & Frameworks Overview]]
 
* [[Libraries & Frameworks Overview]]
  
=== [[TensorFlow]] ===
+
==== [[TensorFlow]] ====
* [[TensorFlow Overview & Tutorials]]
 
 
* [[TensorBoard]]
 
* [[TensorBoard]]
 +
* [[TensorFlow Playground]]
 +
* [https://js.tensorflow.org/ TensorFlow.js Demos]
 
* [[TensorFlow.js]]   
 
* [[TensorFlow.js]]   
* [http://playground.tensorflow.org TensorFlow Playground]
 
 
* [[TensorFlow Lite]]
 
* [[TensorFlow Lite]]
 
* [[TensorFlow Serving]]
 
* [[TensorFlow Serving]]
Line 230: Line 369:
 
** [[Swift]]
 
** [[Swift]]
  
== Tooling ==
+
=== Tooling ===
 
 
 
* [[Model Search]]
 
* [[Model Search]]
* [[Model Monitoring]]
+
* [[Algorithm Administration#Model Monitoring|Model Monitoring]]
* [[Notebooks; Jupyter and R Markdown]]
+
* [[Notebooks]]; [[Jupyter]] and R Markdown
 
 
== Coding ==
 
* [[Javascript]]
 
* [[Python]]
 
* [[Other Coding options]]
 
 
 
== [[Platforms: Machine Learning as a Service (MLaaS)]] ==
 
* [[Service Capabilities]]
 
 
 
=== [[Google Cloud Platform (GCP)]] ...AI with TensorFlow ===
 
* [http://www.kubeflow.org/ Kubeflow] ML workflows on Kubernetes
 
** [[Pipelines]]
 
* [[Colaboratory]] - Jupyter notebooks
 
* [http://codelabs.developers.google.com/ Google Developers Codelabs]
 
* [[Dopamine]] - reinforcement learning algorithms
 
* [http://experiments.withgoogle.com/collection/ai Google AI Experiments]
 
* [[ML Engine]]
 
* [[Prediction API]]
 
* [http://cloud.google.com/vision/ Cloud Vision API] - drag & drop picture on webpage
 
* [http://grow.google/ Grow with Google]
 
* [http://ai.google/education/ Learn from ML experts at Google]
 
 
 
=== [[Amazon AWS]] ===
 
* [[AWS with TensorFlow]]
 
* [[DeepLens - deep learning enabled video camera]]
 
** [[Getting Started & Project: Object Detection]]
 
** [[More DeepLens Projects]]
 
* [[AWS Internet of Things (IoT)]]
 
** [[AWS IoT Button]]
 
* [[AmazonML]]
 
* [[Deep Learning (DL) Amazon Machine Image (AMI) - DLAMI]]
 
* [http://www.floydhub.com/ FloydHub - training and deploying your DL models]
 
* [http://aws.amazon.com/about-aws/events/monthlywebinarseries/on-demand/ On-Demand AWS Tech Talks]
 
* [http://aws.amazon.com/training/ AWS Training and Certification]
 
 
 
=== [[Microsoft Azure]] ===
 
* [[Azure with TensorFlow]]
 
* [[Azure AI Process]]
 
* [[ML Studio]]
 
* [[Cognitive Services]]
 
* [[Bot Framework]]
 
* [http://aischool.microsoft.com/learning-paths AI School]
 
 
 
=== [[NVIDIA]] ===
 
* [[RAPIDS]]
 
* [[NVIDIA Deep Learning Institute]]
 
* [http://on-demand-gtc.gputechconf.com/gtcnew/on-demand-gtc.php?searchByKeyword=&searchItems=&sessionTopic=&sessionEvent=2&sessionYear=2018&sessionFormat=&submit=&select= GTC Sessions]
 
 
 
=== Kaggle ===
 
* [[Kaggle Overview]]
 
* [[Kaggle Kernels]]
 
* [[Kaggle Competitions]]
 
** [[Passenger Screening]]
 
* [http://www.kaggle.com/learn/overview Hands-On Data Science Education]
 
 
 
=== Intel ===
 
* [[Neural Compute Stick (NCS)]]
 
* [http://software.intel.com/en-us/ai-academy AI Academy]
 
 
 
=== Apple ===
 
* [[Turi]]
 
 
 
= Research =
 
* [[Generative]] Modeling
 
* [[Automated Machine Learning (AML) - AutoML]]
 
* [[Explainable Artificial Intelligence (EAI)]]
 
* [[AI Marketplace & Toolkit/Model Interoperability]]
 
* [[Self Learning Artificial Intelligence - AutoML & World Models]]
 
** [[Inside Out - Curious Optimistic Reasoning]] 
 
** [[Evolutionary Computation / Genetic Algorithms]]
 
** [[Apprenticeship Learning - Inverse Reinforcement Learning (IRL)]]
 
** [[Imitation Learning]]
 
** [[Simulated Environment Learning]]
 
** [[3D Simulation Environments]]
 
* [[Connecting Brains]]
 
** [[Molecular Artificial Intelligence (AI)]]
 
** [[Neuroscience]]
 
* [[Architectures]]
 
** [[Deep Distributed Q Network Partial Observability]] 
 
** [[Graph Nets - Graph Neural Networks]]
 
** [[Capsule Networks (CapNets)]]
 
** [[Messaging & Routing]]
 
** [[Pipelines]]
 
** [[Processing Units - CPU, GPU, APU, TPU, VPU, FPGA, QPU]]
 
* [[Cybersecurity]]
 
* [[Integrity Forensics]]
 
* [[Other Challenges]]
 
  
 +
=== [[Platforms: AI/Machine Learning as a Service (AIaaS/MLaaS)]] ===
 +
* [[Amazon]] AWS 
 +
* [[Apple]]
 +
* [[Google]] Cloud Platform (GCP)
 +
* [[Hugging Face]]
 +
* [[IBM]]
 +
* [[Intel]]
 +
* [[Kaggle]]
 +
* [[Microsoft]] [[Azure AI Process|Azure Machine Learning]]
 +
* [https://modal.com/ Modal]
 +
* [[NVIDIA]]
 +
* [[OpenAI]]
 +
* [[Palantir]]
 +
* [[xAI]]
  
 +
=== ... and other leading organizations ===
 +
* [[Meta]]
 +
* [[Sakana]]
 +
* [https://allenai.org/ Allen Institute for Artificial Intelligence, or AI2]
 +
* [[Government Services]]
 +
** [[National Institute of Standards and Technology (NIST)]]
 +
** [[U.S. Department of Homeland Security (DHS)]]
 +
** [[Defense]]
 +
* [https://ai.stanford.edu/ Stanford University], [https://www.csail.mit.edu/ MIT], [https://www2.eecs.berkeley.edu/Research/Areas/AI/ UC Berkeley], [https://ai.cs.cmu.edu/ Carnegie Mellon University], [https://aiml.cs.princeton.edu/ Princeton University], [https://www.cs.ox.ac.uk/research/ai_ml/ University of Oxford], [https://www.cs.utexas.edu/concentrations/mlai University of Texas Austin], [https://samueli.ucla.edu/big-data-artificial-intelligence-and-machine-learning/ UCLA], [https://www.cs.duke.edu/research/artificialintelligence Duke University], [https://www.epfl.ch/research/ EPFL], [https://digital.hbs.edu/topics/artificial-intelligence-machine-learning/ Harvard University], [https://www.cs.cornell.edu/research/ai Cornell University], [https://inf.ethz.ch/ ETH], [https://www.cs.tsinghua.edu.cn/publish/csen/4917/index.html Tsinghua University], [https://www.comp.nus.edu.sg/about/depts/cs/research/ai/ National University of Singapore], [https://priml.upenn.edu/ University of Pennsylvania], [https://www.technion.ac.il/en/technion-research-units-2/ Technion], [https://www.cs.washington.edu/research/ai University of Washington], [https://ai.ucsd.edu/ UC San Diego], [https://www.cs.umd.edu/researcharea/ai-and-robotics University of Maryland], [https://www.cil.pku.edu.cn/ Peking University], [https://ic.gatech.edu/content/artificial-intelligence-machine-learning Georgia Institute of Technology], [https://machinelearning.illinois.edu/ University of Illinois at Urbana-Champaign], [https://research.cs.wisc.edu/areas/ai/ University of Wisconsin Madison], [https://www.engineering.utoronto.ca/research-innovation/industry-partnerships-with-u-of-t-engineering/data-analytics-artificial-intelligence/ University of Toronto], [https://www.umontreal.ca/en/artificialintelligence/ Université de Montréal] - [https://mila.quebec/en/mila/ Mila], [https://www.kaist.ac.kr/en/html/research/04.html KAIST], [https://engineering.tamu.edu/cse/research/areas/artificial-intelligence.html Texas A&M University], [https://www.riken.jp/en/research/labs/aip/ RIKEN], [https://www.cl.cam.ac.uk/research/ai/ University of Cambridge], [https://www.cs.columbia.edu/areas/ai/ Columbia University], [https://www.cics.umass.edu/research/area/artificial-intelligence UMass Amherst], [https://www.inria.fr/en National Institute for Research in Digital Science and Technology (INRIA)], [https://engineering.nyu.edu/research-innovation/centers-and-institutes/ai-now New York University],  [https://www.ucl.ac.uk/ai-centre/ University College London], [https://www.cs.usc.edu/academic-programs/masters/artificial-intelligence/ University of Southern California], [https://cpsc.yale.edu/research/artificial-intelligence Yale University], [https://yandexdataschool.com/ Yandex], [https://en.sjtu.edu.cn/ Shanghai Jiao Tong University], [https://www.cs.umn.edu/research/research_areas/robotics-and-artificial-intelligence University of Minnesota], [https://voices.uchicago.edu/machinelearning/ University of Chicago], [https://www.mcgill.ca/desautels/category/tags/artificial-intellligence-ai McGill University], [https://cse.snu.ac.kr/en Seoul National University], [https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/studium/studiengaenge/machine-learning/ University of Tuebingen], [https://www.ualberta.ca/computing-science/research/research-areas/artificial-intelligence.html University of Alberta], [https://engineering.rice.edu/research-faculty/research-focus-areas/artificial-intelligence-machine-learning Rice University], [https://ep.jhu.edu/programs-and-courses/programs/artificial-intelligence Johns Hopkins University]
  
  
  
 
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Latest revision as of 08:47, 11 February 2026

On Friday March 27, 2026 PRIMO.ai has 825 pages

Primo.ai provides links to articles and videos on Artificial intelligence (AI) concepts and techniques such as Generative AI, Natural Language Processing (NLP), Computer Vision, Deep Learning, Reinforcement Learning (RL), and Quantum Technology -- providing perspectives for individuals who are passionate about learning and developing new skills.

Getting Started

AI Fun

.. more Natural Language Processing (NLP) fun...

How to...

Forward Thinking


Information Analysis

Algorithms

Generative AI (Gen AI)

The ability to generate new content or solutions, such as writing or designing new products, using techniques such as Generative Adversarial Network (GAN) or neural style transfer.

Predict values - Regression

Analyze large amounts of data and make predictions or recommendations based on that data.

Classification ...predict categories

Recommendation

Clustering - Continuous - Dimensional Reduction

Hierarchical

Convolutional

Deconvolutional

Graph

- includes social networks, sensor networks, the entire Internet, 3D Objects (Point Cloud)

Sequence/Time-based Algorithms

Competitive

Semi-Supervised

In many practical situations, the cost to label is quite high, since it requires skilled human experts to do that. So, in the absence of labels in the majority of the observations but present in few, semi-supervised algorithms are the best candidates for the model building. These methods exploit the idea that even though the group memberships of the unlabeled data are unknown, this data carries important information about the group parameters. Reference: Learning Techniques

Natural Language

Reinforcement Learning (RL)

an algorithm receives a delayed reward in the next time step to evaluate its previous action. Therefore based on those decisions, the algorithm will train itself based on the success/error of output. In combination with Neural Networks it is capable of solving more complex tasks. Policy Gradient (PG) methods are a type of reinforcement learning techniques that rely upon optimizing parametrized policies with respect to the expected return (long-term cumulative reward) by gradient descent.

Neuro-Symbolic

the “connectionists” seek to construct artificial Neural Networks, inspired by biology, to learn about the world, while the “symbolists” seek to build intelligent machines by coding in logical rules and representations of the world. Neuro-Symbolic combines the fruits of group.

Other

Techniques

Methods & Concepts

Policy

Learning Techniques

Opportunities & Challenges



Development & Implementation

No Coding

Coding

Libraries & Frameworks

TensorFlow

Tooling

Platforms: AI/Machine Learning as a Service (AIaaS/MLaaS)

... and other leading organizations


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