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Guy Royse

Developer Advocate at Redis

activation function, artificial neural network, backpropagation, bit, daphne blake, deep learning, dimension, four-dimensional space, gradient descent, machine learning, memory, recurrent neural network, scoob!, scooby-doo, scooby-doo (character), scooby-doo! mystery incorporated, sentiment analysis, shaggy rogers, six feet up, sixfeetup, slope, softmax function, training, validation, and test sets, two-dimensional space, vanishing gradient problem, velma dinkley

Natalia Culakova

Data scientist and engineer at nPlan

accuracy and precision, artificial neural network, average, binary classification, calibration, data mining, data science, forecasting, ground truth, likelihood function, logistic regression, machine learning, mean, monte carlo method, neural network, neuroimaging, nothing, prediction, regression analysis, reliability engineering, research, simulation, softmax function, software engineering, statistical classification, temperature, theory, weighted arithmetic mean

Daniel Murphy

Data Scientist at nPlan

accuracy and precision, artificial neural network, average, binary classification, calibration, data mining, data science, forecasting, ground truth, likelihood function, logistic regression, machine learning, mean, monte carlo method, neural network, neuroimaging, nothing, prediction, regression analysis, reliability engineering, research, simulation, softmax function, software engineering, statistical classification, temperature, theory, weighted arithmetic mean

George Yu

Software Engineer at Google

artificial neural network, attention, autoencoder, binary classification, computer science, convolutional neural network, cosine similarity, cross entropy, data compression, deeep learning, directory (computing), floating-point arithmetic, hash function, hyperparameter (machine learning), locality-sensitive hashing, neural structured learning, regularization (mathematics), semi-supervised learning, social media, softmax function, statistical classification, string (computer science), tensorflow, test (assessment), training, validation, and test sets, two-dimensional space, vertex (graph theory)

Chun-Ta Lu

Software Engineer at Google AI

artificial neural network, attention, autoencoder, binary classification, computer science, convolutional neural network, cosine similarity, cross entropy, data compression, deeep learning, directory (computing), floating-point arithmetic, hash function, hyperparameter (machine learning), locality-sensitive hashing, neural structured learning, regularization (mathematics), semi-supervised learning, social media, softmax function, statistical classification, string (computer science), tensorflow, test (assessment), training, validation, and test sets, two-dimensional space, vertex (graph theory)

Chun-Sung Ferng

Software Engineer at Google

artificial neural network, attention, autoencoder, binary classification, computer science, convolutional neural network, cosine similarity, cross entropy, data compression, deeep learning, directory (computing), floating-point arithmetic, hash function, hyperparameter (machine learning), locality-sensitive hashing, neural structured learning, regularization (mathematics), semi-supervised learning, social media, softmax function, statistical classification, string (computer science), tensorflow, test (assessment), training, validation, and test sets, two-dimensional space, vertex (graph theory)

Philip Pham

Senior Software Engineer at Google

Allan Heydon

Google at Staff Software Engineer

Arjun Gopalan

Senior Software Engineer at Google AI

Da-Cheng Juan

Senior Software Engineer at Google

#tfworld, ai, api, artificial intelligence, artificial neural network, attention, autoencoder, backpropagation, binary classification, book, color, computer, computer science, computer vision, convolutional neural network, cosine similarity, cross entropy, da-cheng juan, data compression, deeep learning, deep learning, directory (computing), document classification, experiment, floating-point arithmetic, google, google ai, hash function, hyperparameter (machine learning), image segmentation, information retrieval, inheritance (object-oriented programming), knowledge graph, library (computing), locality-sensitive hashing, machine learning, mathematical optimization, ml, nearest neighbor search, neural structured learning, neural structured learning in tensorflow, neural structured learning in tf, o'reilly, o'reilly tensorflow world, prediction, regularization (mathematics), santa clara convention center, semi-supervised learning, social media, softmax function, software framework, statistical classification, string (computer science), sujith ravi, tensorflow, tensorflow 2.0, tensorflow world, tensorflow world 19, tensorflow world 2019, test (assessment), tf world, tf world 19, tf world 2019, tfworld, tfworld 19, tfworld 2019, training, validation, and test sets, two-dimensional space, vertex (graph theory), visual perception

Cesar Ilharco Magalhaes

Research Engineer at Google

Yijia Wang

Analyst at Parsons School of Design

ads recommendation, advertising, algorithm, application software, attention, bit, censorship, china, christianity, click-through rate, common technologies for feed and ads recommendation, computer, computer data storage, computer network, cosine similarity, decentralised system, encryption, equation, feed recommendation , finite set, freedom of the press, function (mathematics), image understanding, infrastructure, introduction - feed, ads, search and spam, javascript, letter case, linear combination, logic, mixture model, multimedia, multimedia infrastructure, multimedia search, multivariate random variable, nicotine, online and offline, prediction, risk, safeway inc., scraper (archaeology), simulation, social media, softmax function, software , source lines of code, speech recognition, summation, telegram (software), tool, trust (social science), url, video, video representations used in production, video search engine, video understanding, virtual private network

Liang Zhang

Global Sales Strategy & Operations at LinkedIn

before deep learning , artificial intelligence , artificial intelligence tutorial, computer science conference , feed and ads modeling, introduction to multimedia, visio-lingual representations, 3d cnns, accent (sociolinguistics), accuracy and precision, acm 2020 tutorial, acoustic model, action recognition, ads recommendation, advertising, algorithm, angle, apache hadoop, apache spark, api, application software, applications at linkedin, array data structure, array data type, art, artificial intelligence tutorial, artificial neural network, assembly language, association for computing machinery, attention, attention (machine learning), average, baby talk, bag-of-words model, bangalore, beef, before deep learning , bible, bichon frise, cartesian coordinate system, castle, central processing unit, click-through rate, closed captioning, code-division multiple access, codec, coherence (physics), color, common technologies for feed and ads recommendation, compass, computer, computer graphics, computer performance, computer science tutorial, computer science tutorials, computer vision, computer vision 2020, computing, concept, convolution, convolutional neural network, cosine similarity, data, data compression, data conversion, data science tutorial, data type, debugging, deconvolution, deep learning, deep learning and cnns, deep learnning, deep learnning tutorial, definition, depiction, design, desk, diagram, diamond, digital image processing, dimension, dsgmm and deep cluster-and-aggregate method, dynamic programming, education, email spam, energy, engine, enzyme kinetics, equation, essay, euclidean vector, experiment, extract, transform, load, feature (machine learning), feature extraction, feature learning, feed recommendation , file system, film frame, finite set, function (mathematics), gas, gender, gradient, grayscale, hidden markov model, histogram, history, hyperparameter optimization, image embeddings, image representations , image segmentation, image understanding, imagenet, improvements on 3d cnn, improvements on 3d cnns and two-stream, infection, information, information retrieval, input/output, inspection, instagram, intelligence, interface (computing), internet, introduction - feed, ads, search and spam, inverted index, k-means clustering, kdd2020 tutorials, language, language model, learning, lecture-style tutorials, letter case, library (computing), likelihood function, linear combination, linearity, linkedin, literature, loader (computing), logic, long short-term memory, machine, machine learning, map, markov chain, markov model, mathematical optimization, matrix (mathematics), mean, meme, memory, metric learning for images, metric space, microsoft, mixture model, mobile app, monotonic function, motivation, moving average, mp3, multimedia, multimedia infrastructure, multimedia search, multimodality, multivariate random variable, music, nature, navigation, neural network, news, non-local networks and slowfast, nothing, number, object detection, online and offline, optical character recognition, optical flow, optimization for cnns, oracle corporation, parameter, parameter (computer programming), parity bit, phoneme, pixel, plasterwork, podcast, precision and recall, prediction, preprocessor, protein–protein interaction, python (programming language), radio, reason, recommender system, recurrent neural network, research, robust statistics, satya nadella, search algorithm, search engine, search engine indexing, self-supervised learning, self-supervised video embeddings, sense, signal, similarity learning, simulation, sms, social media, social networking service, softmax function, software , source lines of code, space, spam detection, spamming, spectral density, spectrogram, speech, speech recognition, speech technologies for video understanding, spotify, statistical classification, statistics, streaming media, string (computer science), subroutine, summation, supervised learning, support-vector machine, temporal topic localization, tensor, texas, three-dimensional space, training, validation, and test sets, transcription (linguistics), transformer (machine learning model), transmission (mechanics), truck, two-stream networks, typing, understanding, unsupervised learning, upload, use case, variance, vector graphics, vector space, video, video captioning, video classification, video embeddings and networks, video game, video game console, video game live streaming, video representations used in production, video search, video search engine, video understanding, weight, youtube

Di Wen

Staff Software Engineer at LinkedIn

before deep learning , artificial intelligence , artificial intelligence tutorial, computer science conference , feed and ads modeling, introduction to multimedia, visio-lingual representations, 3d cnns, accent (sociolinguistics), accuracy and precision, acm 2020 tutorial, acoustic model, action recognition, ads recommendation, advertising, algorithm, angle, apache hadoop, api, application software, applications at linkedin, art, artificial intelligence tutorial, artificial neural network, association for computing machinery, attention, attention (machine learning), average, baby talk, bag-of-words model, bangalore, beef, before deep learning , bible, bichon frise, cartesian coordinate system, castle, central processing unit, click-through rate, closed captioning, code-division multiple access, codec, coherence (physics), common technologies for feed and ads recommendation, compass, computer, computer graphics, computer performance, computer science tutorial, computer science tutorials, computer vision, computer vision 2020, computing, concept, convolution, convolutional neural network, cosine similarity, data, data compression, data science tutorial, deconvolution, deep learning, deep learning and cnns, deep learnning, deep learnning tutorial, definition, depiction, design, desk, diagram, diamond, digital image processing, dimension, dsgmm and deep cluster-and-aggregate method, dynamic programming, education, email spam, energy, engine, enzyme kinetics, equation, essay, euclidean vector, experiment, extract, transform, load, feature (machine learning), feature extraction, feature learning, feed recommendation , film frame, finite set, function (mathematics), gas, gender, gradient, grayscale, hidden markov model, histogram, history, hyperparameter optimization, image embeddings, image representations , image segmentation, image understanding, imagenet, improvements on 3d cnn, improvements on 3d cnns and two-stream, infection, information, information retrieval, input/output, inspection, instagram, intelligence, interface (computing), internet, introduction - feed, ads, search and spam, inverted index, k-means clustering, kdd2020 tutorials, language, language model, learning, lecture-style tutorials, letter case, likelihood function, linear combination, linearity, linkedin, literature, logic, long short-term memory, machine, machine learning, map, markov chain, markov model, mathematical optimization, matrix (mathematics), mean, meme, memory, metric learning for images, metric space, microsoft, mixture model, mobile app, monotonic function, motivation, moving average, mp3, multimedia, multimedia infrastructure, multimedia search, multimodality, multivariate random variable, music, nature, navigation, neural network, news, non-local networks and slowfast, nothing, number, object detection, online and offline, optical character recognition, optical flow, optimization for cnns, oracle corporation, parameter, parity bit, phoneme, pixel, plasterwork, podcast, precision and recall, prediction, protein–protein interaction, radio, reason, recommender system, recurrent neural network, research, robust statistics, satya nadella, search algorithm, search engine, search engine indexing, self-supervised learning, self-supervised video embeddings, sense, signal, similarity learning, simulation, sms, social media, social networking service, softmax function, software , space, spam detection, spamming, spectral density, spectrogram, speech, speech recognition, speech technologies for video understanding, spotify, statistical classification, statistics, streaming media, summation, supervised learning, support-vector machine, temporal topic localization, texas, three-dimensional space, transcription (linguistics), transmission (mechanics), truck, two-stream networks, typing, understanding, unsupervised learning, upload, use case, variance, vector graphics, vector space, video, video captioning, video classification, video embeddings and networks, video game, video game console, video game live streaming, video representations used in production, video search, video search engine, video understanding, weight, youtube

Yijie Dylan Wang

Software Engineering Manager at LinkedIn

before deep learning , artificial intelligence , artificial intelligence tutorial, computer science conference , feed and ads modeling, introduction to multimedia, visio-lingual representations, 3d cnns, accent (sociolinguistics), accuracy and precision, acm 2020 tutorial, acoustic model, action recognition, advertising, algorithm, angle, apache hadoop, api, application software, applications at linkedin, art, artificial intelligence tutorial, artificial neural network, association for computing machinery, attention, attention (machine learning), average, baby talk, bag-of-words model, bangalore, beef, before deep learning , bible, bichon frise, cartesian coordinate system, castle, central processing unit, closed captioning, code-division multiple access, codec, coherence (physics), compass, computer, computer graphics, computer performance, computer science tutorial, computer science tutorials, computer vision, computer vision 2020, computing, concept, convolution, convolutional neural network, data, data compression, data science tutorial, deconvolution, deep learning, deep learning and cnns, deep learnning, deep learnning tutorial, definition, depiction, design, desk, diagram, diamond, digital image processing, dimension, dsgmm and deep cluster-and-aggregate method, dynamic programming, education, email spam, energy, engine, enzyme kinetics, equation, essay, euclidean vector, experiment, extract, transform, load, feature (machine learning), feature extraction, feature learning, film frame, function (mathematics), gas, gender, gradient, grayscale, hidden markov model, histogram, history, hyperparameter optimization, image embeddings, image representations , image segmentation, imagenet, improvements on 3d cnn, improvements on 3d cnns and two-stream, infection, information, information retrieval, input/output, inspection, instagram, intelligence, interface (computing), internet, inverted index, k-means clustering, kdd2020 tutorials, language, language model, learning, lecture-style tutorials, likelihood function, linearity, linkedin, literature, long short-term memory, machine, machine learning, map, markov chain, markov model, mathematical optimization, matrix (mathematics), mean, meme, memory, metric learning for images, metric space, microsoft, mixture model, mobile app, monotonic function, motivation, moving average, mp3, multimedia, multimedia infrastructure, multimodality, music, nature, navigation, neural network, news, non-local networks and slowfast, nothing, number, object detection, online and offline, optical character recognition, optical flow, optimization for cnns, oracle corporation, parameter, parity bit, phoneme, pixel, plasterwork, podcast, precision and recall, prediction, protein–protein interaction, radio, reason, recommender system, recurrent neural network, research, robust statistics, satya nadella, search algorithm, search engine, search engine indexing, self-supervised learning, self-supervised video embeddings, sense, signal, similarity learning, sms, social networking service, softmax function, space, spam detection, spamming, spectral density, spectrogram, speech, speech recognition, speech technologies for video understanding, spotify, statistical classification, statistics, streaming media, supervised learning, support-vector machine, temporal topic localization, texas, three-dimensional space, transcription (linguistics), transmission (mechanics), truck, two-stream networks, typing, understanding, unsupervised learning, upload, use case, variance, vector graphics, vector space, video, video captioning, video classification, video embeddings and networks, video game, video game console, video game live streaming, video search, video search engine, video understanding, weight, youtube

Bharat Jain

Data Scientist at LinkedIn

before deep learning , artificial intelligence , artificial intelligence tutorial, computer science conference , feed and ads modeling, introduction to multimedia, visio-lingual representations, 3d cnns, accent (sociolinguistics), accuracy and precision, acm 2020 tutorial, acoustic model, action recognition, ads recommendation, advertising, algorithm, angle, apache hadoop, api, application software, applications at linkedin, art, artificial intelligence tutorial, artificial neural network, association for computing machinery, attention, attention (machine learning), average, baby talk, bag-of-words model, bangalore, beef, before deep learning , bible, bichon frise, cartesian coordinate system, castle, central processing unit, click-through rate, closed captioning, code-division multiple access, codec, coherence (physics), common technologies for feed and ads recommendation, compass, computer, computer graphics, computer performance, computer science tutorial, computer science tutorials, computer vision, computer vision 2020, computing, concept, convolution, convolutional neural network, cosine similarity, data, data compression, data science tutorial, deconvolution, deep learning, deep learning and cnns, deep learnning, deep learnning tutorial, definition, depiction, design, desk, diagram, diamond, digital image processing, dimension, dsgmm and deep cluster-and-aggregate method, dynamic programming, education, email spam, energy, engine, enzyme kinetics, equation, essay, euclidean vector, experiment, extract, transform, load, feature (machine learning), feature extraction, feature learning, feed recommendation , film frame, finite set, function (mathematics), gas, gender, gradient, grayscale, hidden markov model, histogram, history, hyperparameter optimization, image embeddings, image representations , image segmentation, image understanding, imagenet, improvements on 3d cnn, improvements on 3d cnns and two-stream, infection, information, information retrieval, input/output, inspection, instagram, intelligence, interface (computing), internet, introduction - feed, ads, search and spam, inverted index, k-means clustering, kdd2020 tutorials, language, language model, learning, lecture-style tutorials, letter case, likelihood function, linear combination, linearity, linkedin, literature, logic, long short-term memory, machine, machine learning, map, markov chain, markov model, mathematical optimization, matrix (mathematics), mean, meme, memory, metric learning for images, metric space, microsoft, mixture model, mobile app, monotonic function, motivation, moving average, mp3, multimedia, multimedia infrastructure, multimedia search, multimodality, multivariate random variable, music, nature, navigation, neural network, news, non-local networks and slowfast, nothing, number, object detection, online and offline, optical character recognition, optical flow, optimization for cnns, oracle corporation, parameter, parity bit, phoneme, pixel, plasterwork, podcast, precision and recall, prediction, protein–protein interaction, radio, reason, recommender system, recurrent neural network, research, robust statistics, satya nadella, search algorithm, search engine, search engine indexing, self-supervised learning, self-supervised video embeddings, sense, signal, similarity learning, simulation, sms, social media, social networking service, softmax function, software , space, spam detection, spamming, spectral density, spectrogram, speech, speech recognition, speech technologies for video understanding, spotify, statistical classification, statistics, streaming media, summation, supervised learning, support-vector machine, temporal topic localization, texas, three-dimensional space, transcription (linguistics), transmission (mechanics), truck, two-stream networks, typing, understanding, unsupervised learning, upload, use case, variance, vector graphics, vector space, video, video captioning, video classification, video embeddings and networks, video game, video game console, video game live streaming, video representations used in production, video search, video search engine, video understanding, weight, youtube

Nikita Gupta

Senior Applied Research Engineer at LinkedIn

before deep learning , artificial intelligence , artificial intelligence tutorial, computer science conference , feed and ads modeling, introduction to multimedia, visio-lingual representations, 3d cnns, accent (sociolinguistics), accuracy and precision, acm 2020 tutorial, acoustic model, action recognition, ads recommendation, advertising, algorithm, angle, apache hadoop, api, application software, applications at linkedin, art, artificial intelligence tutorial, artificial neural network, association for computing machinery, attention, attention (machine learning), average, baby talk, bag-of-words model, bangalore, beef, before deep learning , bible, bichon frise, cartesian coordinate system, castle, central processing unit, click-through rate, closed captioning, code-division multiple access, codec, coherence (physics), common technologies for feed and ads recommendation, compass, computer, computer graphics, computer performance, computer science tutorial, computer science tutorials, computer vision, computer vision 2020, computing, concept, convolution, convolutional neural network, cosine similarity, data, data compression, data science tutorial, deconvolution, deep learning, deep learning and cnns, deep learnning, deep learnning tutorial, definition, depiction, design, desk, diagram, diamond, digital image processing, dimension, dsgmm and deep cluster-and-aggregate method, dynamic programming, education, email spam, energy, engine, enzyme kinetics, equation, essay, euclidean vector, experiment, extract, transform, load, feature (machine learning), feature extraction, feature learning, feed recommendation , film frame, finite set, function (mathematics), gas, gender, gradient, grayscale, hidden markov model, histogram, history, hyperparameter optimization, image embeddings, image representations , image segmentation, image understanding, imagenet, improvements on 3d cnn, improvements on 3d cnns and two-stream, infection, information, information retrieval, input/output, inspection, instagram, intelligence, interface (computing), internet, introduction - feed, ads, search and spam, inverted index, k-means clustering, kdd2020 tutorials, language, language model, learning, lecture-style tutorials, letter case, likelihood function, linear combination, linearity, linkedin, literature, logic, long short-term memory, machine, machine learning, map, markov chain, markov model, mathematical optimization, matrix (mathematics), mean, meme, memory, metric learning for images, metric space, microsoft, mixture model, mobile app, monotonic function, motivation, moving average, mp3, multimedia, multimedia infrastructure, multimedia search, multimodality, multivariate random variable, music, nature, navigation, neural network, news, non-local networks and slowfast, nothing, number, object detection, online and offline, optical character recognition, optical flow, optimization for cnns, oracle corporation, parameter, parity bit, phoneme, pixel, plasterwork, podcast, precision and recall, prediction, protein–protein interaction, radio, reason, recommender system, recurrent neural network, research, robust statistics, satya nadella, search algorithm, search engine, search engine indexing, self-supervised learning, self-supervised video embeddings, sense, signal, similarity learning, simulation, sms, social media, social networking service, softmax function, software , space, spam detection, spamming, spectral density, spectrogram, speech, speech recognition, speech technologies for video understanding, spotify, statistical classification, statistics, streaming media, summation, supervised learning, support-vector machine, temporal topic localization, texas, three-dimensional space, transcription (linguistics), transmission (mechanics), truck, two-stream networks, typing, understanding, unsupervised learning, upload, use case, variance, vector graphics, vector space, video, video captioning, video classification, video embeddings and networks, video game, video game console, video game live streaming, video representations used in production, video search, video search engine, video understanding, weight, youtube

Suhit Sinha

Senior Applied Research Engineer at LinkedIn

Sumit Srivastava

Staff Applied Research Engineer at LinkedIn

Sirjan Kafle

Senior Machine Learning Engineer, Multimedia AI at LinkedIn

Aman Gupta

Senior Machine Learning Scientist at LinkedIn Multimedia AI

Ananth Sankar

Principal Staff Engineer at LinkedIn

before deep learning , artificial intelligence , artificial intelligence tutorial, computer science conference , feed and ads modeling, introduction to multimedia, visio-lingual representations, 3d cnns, accent (sociolinguistics), accuracy and precision, acm 2020 tutorial, acoustic model, action recognition, ads recommendation, advertising, ai, algorithm, angle, apache hadoop, api, application software, applications at linkedin, art, artificial intelligence tutorial, artificial neural network, association for computing machinery, attention, attention (machine learning), automatic summarization, average, baby talk, backpropagation, bag-of-words model, bangalore, beef, before deep learning , bible, bichon frise, black box, cartesian coordinate system, castle, central processing unit, click-through rate, closed captioning, code-division multiple access, codec, coherence (physics), common technologies for feed and ads recommendation, compass, computer, computer graphics, computer performance, computer science tutorial, computer science tutorials, computer vision, computer vision 2020, computing, concept, convolution, convolutional neural network, cosine similarity, cross entropy, data, data compression, data science, data science tutorial, deconvolution, deep learning, deep learning and cnns, deep learnning, deep learnning tutorial, definition, depiction, design, desk, diagram, diamond, digital image processing, dimension, dsgmm and deep cluster-and-aggregate method, dynamic programming, education, email spam, encoding (memory), energy, engine, english language, enzyme kinetics, equation, essay, euclidean vector, experiment, extract, transform, load, feature (machine learning), feature extraction, feature learning, feed recommendation , feedforward neural network, film frame, finite set, four-dimensional space, function (mathematics), gas, gender, gradient, grayscale, hidden markov model, histogram, history, hyperparameter optimization, image embeddings, image representations , image segmentation, image understanding, imagenet, improvements on 3d cnn, improvements on 3d cnns and two-stream, infection, information, information retrieval, input/output, inspection, instagram, intelligence, interface (computing), internet, introduction - feed, ads, search and spam, inverted index, k-means clustering, kdd2020 tutorials, language, language model, learning, lecture-style tutorials, letter case, likelihood function, linear combination, linearity, linkedin, literature, logic, long short-term memory, machine, machine learning, map, markov chain, markov model, mathematical optimization, matrix (mathematics), mean, meme, memory, metric learning for images, metric space, microsoft, mind, mixture model, mobile app, monotonic function, motivation, moving average, mp3, multimedia, multimedia infrastructure, multimedia search, multimodality, multivariate random variable, music, natural language processing, nature, navigation, neural network, neural networks, news, non-local networks and slowfast, nothing, number, object detection, odsc, odsc india, online and offline, optical character recognition, optical flow, optimization for cnns, oracle corporation, parameter, parity bit, phoneme, pixel, plasterwork, podcast, precision and recall, prediction, protein–protein interaction, radio, reason, recommender system, recurrent neural network, research, robust statistics, satya nadella, search algorithm, search engine, search engine indexing, self-supervised learning, self-supervised video embeddings, semantics, sense, signal, similarity learning, simulation, sms, social media, social networking service, softmax function, software , space, spam detection, spamming, spectral density, spectrogram, speech, speech recognition, speech technologies for video understanding, spotify, statistical classification, statistics, streaming media, summation, supervised learning, support-vector machine, temporal topic localization, texas, three-dimensional space, transcription (linguistics), transmission (mechanics), truck, two-stream networks, typing, understanding, unsupervised learning, upload, use case, vanishing gradient problem, variance, vector graphics, vector space, video, video captioning, video classification, video embeddings and networks, video game, video game console, video game live streaming, video representations used in production, video search, video search engine, video understanding, vocabulary, weight, youtube

Julian Togelius

Associate Professor of Computer Science and Engineering at New York University

adaptation, algorithm, art, artificial intelligence, artificial intelligence in video games, artificial life, artificial neural network, association football, atom, average, batman, beach, behaviorism, bipedalism, bit, card game, cell (biology), cogeneration, color, colorado, communication, constraint (mathematics), control flow, control theory, convolution, creativity, data, door, error, evaluation, evolutionary algorithm, experiment, feedback, fitness function, food, fox, function (mathematics), game of chance, games, generation, genetic algorithm, goal, graph (discrete mathematics), greedy algorithm, hanabi (card game), heuristic, hierarchy, hill climbing, history, human, hypothesis, information, intelligence, intersection (road), java (programming language), just say no, kilogram, kullback–leibler divergence, language, learning, linear programming, liver, machine learning, map, mario, mathematical optimization, mathematics, maze, mobile phone, monte carlo method, monte carlo tree search, mood (psychology), mother, motivation, multiplayer video game, music, neural network, neuron, number, overworld, paper, pathfinding, percentage, pisa, playing card, poet, procedural programming, programming language, pronunciation, protein, psychology, python (programming language), radio, reason, red bull, research, robot, ruby (programming language), sampling (statistics), search algorithm, severe acute respiratory syndrome coronavirus 2, signal, singapore, sink, softmax function, space, speed, super mario, super mario bros., tensor, terrain, tile, time complexity, toddler, training, validation, and test sets, tree traversal, turtle, variable (mathematics), video, video game, wii

Samuel Earle

Lecturer in Feature-Writing at UCL

algorithm, artificial intelligence, batman, beach, bit, colorado, convolution, data, feedback, function (mathematics), game of chance, games, goal, hierarchy, information, intelligence, just say no, kilogram, kullback–leibler divergence, language, learning, liver, machine learning, map, mario, maze, mother, motivation, neural network, overworld, paper, percentage, programming language, pronunciation, psychology, radio, red bull, research, sampling (statistics), severe acute respiratory syndrome coronavirus 2, singapore, sink, softmax function, speed, super mario, super mario bros., tensor, training, validation, and test sets, turtle, video game, wii

Philip Bontrager

AI Research Scientist at TheTake.ai

algorithm, artificial intelligence, batman, beach, bit, colorado, convolution, data, feedback, function (mathematics), game of chance, games, goal, hierarchy, information, intelligence, just say no, kilogram, kullback–leibler divergence, language, learning, liver, machine learning, map, mario, maze, mother, motivation, neural network, overworld, paper, percentage, programming language, pronunciation, psychology, radio, red bull, research, sampling (statistics), severe acute respiratory syndrome coronavirus 2, singapore, sink, softmax function, speed, super mario, super mario bros., tensor, training, validation, and test sets, turtle, video game, wii

Ahmed Khalifa

Digital Experience Manager at CILEX

algorithm, artificial intelligence, batman, beach, bit, colorado, convolution, data, feedback, function (mathematics), game of chance, games, goal, hierarchy, information, intelligence, just say no, kilogram, kullback–leibler divergence, language, learning, liver, machine learning, map, mario, maze, mother, motivation, neural network, overworld, paper, percentage, programming language, pronunciation, psychology, radio, red bull, research, sampling (statistics), severe acute respiratory syndrome coronavirus 2, singapore, sink, softmax function, speed, super mario, super mario bros., tensor, training, validation, and test sets, turtle, video game, wii

Bodo Rosenhahn

Professor Computer Vision / Machine Learning at Leibniz University Hannover

algorithm, artificial intelligence, convolution, feedback, function (mathematics), games, goal, hierarchy, information, intelligence, kullback–leibler divergence, learning, machine learning, mario, neural network, overworld, psychology, research, sampling (statistics), softmax function, super mario, super mario bros., tensor, training, validation, and test sets, video game, wii

Frederik Schubert

PhD student at Leibniz University Hannover

algorithm, artificial intelligence, convolution, feedback, function (mathematics), games, goal, hierarchy, information, intelligence, kullback–leibler divergence, learning, machine learning, mario, neural network, overworld, psychology, research, sampling (statistics), softmax function, super mario, super mario bros., tensor, training, validation, and test sets, video game, wii

Maren Awiszus

PhD student at Leibniz University Hannover

algorithm, artificial intelligence, convolution, feedback, function (mathematics), games, goal, hierarchy, information, intelligence, kullback–leibler divergence, learning, machine learning, mario, neural network, overworld, psychology, research, sampling (statistics), softmax function, super mario, super mario bros., tensor, training, validation, and test sets, video game, wii

Hugo Larochelle

Research Scientist at Google

computer science event 2020, artificial neural network, computer science 2020, concept, cross entropy, data mining, deep learning, deep learning 2020, dependent and independent variables, distance, expert, gradient descent, hugo larochelle, imagenet, kdd2020, learning, machine learning, overfitting, prediction, prime number, softmax function, statistical classification, subroutine, test (assessment), training, training, validation, and test sets, transfer learning, understanding

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