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TWiML Talk 72
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/experimental-creative-writing-with-the-vectorized-word-with-allison-parrish-ceb36e886d6 | Experimental Creative Writing with the Vectorized Word with Allison Parrish | [
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TWiML Talk 139
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/exploring-ai-generated-music-with-taryn-southern-b7d5bdd4acae | Exploring AI-Generated Music with Taryn Southern | [
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TWiML Talk 73
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/exploring-black-box-predictions-with-sam-ritchie-c42801f9745a | Exploring Black Box Predictions with Sam Ritchie | [
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TWiML Talk 60
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/fighting-fraud-with-machine-learning-at-shopify-with-solmaz-shahalizadeh-82f41d7a3519 | Fighting Fraud with Machine Learning at Shopify with Solmaz Shahalizadeh | [
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TWiML Talk 90
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/geometric-deep-learning-with-joan-bruna-and-michael-bronstein-74257f6f8da7 | Geometric Deep Learning with Joan Bruna and Michael Bronstein | [
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TWiML Talk 158
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/growth-hacking-sports-w-machine-learning-with-noah-gift-ceef0fee5db0 | Growth Hacking Sports w/ Machine Learning with Noah Gift | [
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TWiML Talk 150
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/how-a-global-energy-company-adopts-ml-ai-with-nicholas-osborn-9e52a6ce8c6c | How a Global Energy Company Adopts ML & AI with Nicholas Osborn | [
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TWiML Talk 056
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/human-factors-in-machine-intelligence-with-james-guszcza-b61e022afa0e | Human Factors in Machine Intelligence with James Guszcza | [
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TWiML Talk 127
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/hyper-personalizing-the-customer-experience-w-ai-with-rob-walker-df902cbec722 | Hyper-Personalizing the Customer Experience with AI with Rob Walker | [
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TWiML Talk 126
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/information-extraction-from-natural-document-formats-2006de1a5eaa | Information Extraction from Natural Document Formats with David Rosenberg | [
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TWiML Talk 128
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/infrastructure-for-autonomous-vehicles-with-missy-cummings-20f9f3f39e96 | Infrastructure for Autonomous Vehicles with Missy Cummings | [
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TWiML Talk 81
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/innovations-factories-for-ai-in-financial-services-with-thierry-derungs-bab2a3af5bde | Innovations Factories for AI in Financial Services with Thierry Derungs | [
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TWiML Talk 87
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/integrative-learning-for-robotic-systems-with-aaron-ames-d5f1cdf34840 | Integrative Learning for Robotic Systems with Aaron Ames | [
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Hi everyone! Im Malaika Charrington, TWIML & AIs newest intern. Im a recent high school
Malaika Charrington
https://medium.com/this-week-in-machine-learning-ai/introducing-twiml-ais-newest-intern-50b81f16232a | Introducing TWIML & AIs newest intern! | [
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TWiML Talk 114
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/inverse-programming-for-deeper-ai-with-zenna-tavares-1ec92a526432 | Inverse Programming for Deeper AI with Zenna Tavares | [
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TWiML Talk 137
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/kinds-of-intelligence-types-tests-meeting-the-needs-of-society-with-jose-hernandez-orallo-6016d669ceca | Kinds of Intelligence: Types, Tests & Meeting the Needs of Society with Jose Hernandez-Orallo | [
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TWiML Talk 111
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/learning-common-sense-and-physical-concepts-with-roland-memisevic-33240515c410 | Learning Common Sense and Physical Concepts with Roland Memisevic | [
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TWiML Talk 92
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/learning-state-representations-with-yael-niv-c6eef4066b12 | Learning State Representations with Yael Niv | [
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TWiML Talk 62
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/learning-to-learn-and-other-opportunities-in-machine-learning-with-graham-taylor-1ec89029c966 | Learning to Learn, and other Opportunities in Machine Learning with Graham Taylor | [
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TWiML Talk 159
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/love-love-ai-and-ml-in-tennis-with-stephanie-kovalchik-87e55fbf940d | Love Love: AI and ML in Tennis with Stephanie Kovalchik | [
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TWiML Talk 044
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/lstms-plus-a-deep-learning-history-lesson-feat-j%C3%BCrgen-schmidhuber-b81e1bd407b | LSTMs, Plus a Deep Learning History Lesson feat Jrgen Schmidhuber | [
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0.09403149038553238,
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TWiML Talk 105
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/machine-learning-for-signal-processing-applications-with-stuart-feffer-brady-tsai-79a06c65bcf8 | Machine Learning for Signal Processing Applications with Stuart Feffer & Brady Tsai | [
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TWiML Talk 162
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/machine-learning-to-discover-physics-and-engineering-principles-with-nathan-kutz-8203e5c10c7f | Machine Learning to Discover Physics and Engineering Principles with Nathan Kutz | [
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TWiML Talk 043
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/machine-teaching-for-better-machine-learning-feat-mark-hammond-2a16cd0d2e99 | Machine Teaching for Better Machine Learning feat Mark Hammond | [
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TWiML Talk 042
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/marrying-physics-based-and-data-driven-ml-models-feat-josh-bloom-c3270233be1c | Marrying Physics-Based and Data Driven ML Models feat Josh Bloom | [
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TWiML Talk 145
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/masked-autoregressive-flow-for-density-estimation-with-george-papamakarios-a280429cd07c | Masked Autoregressive Flow for Density Estimation with George Papamakarios | [
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TWiML Talk 059
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/modeling-human-drivers-for-autonomous-driving-with-katie-driggs-campbell-c18f154df1ff | Modeling Human Drivers for Autonomous Driving with Katie Driggs-Campbell | [
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TWiML Talk 94
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/neuroevolution-evolving-novel-neural-network-architectures-with-kenneth-stanley-d788dbd2ab70 | Neuroevolution: Evolving Novel Neural Network Architectures with Kenneth Stanley | [
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TWiML Talk 65
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/nexus-lab-cohort-2-bite-ai-859af39d13c9 | Nexus Lab Cohort 2Bite.ai | [
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TWiML Talk 064
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/nexus-lab-cohort-2-bowtie-e3d3f1ecb729 | Nexus Lab Cohort 2Bowtie | [
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TWiML Talk 63
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/nexus-lab-cohort-2-mt-cleverest-384a83463eb5 | Nexus Lab Cohort 2Mt. Cleverest | [
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TWiML Talk 66
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/nexus-lab-cohort-2-second-mind-a2d22196bf42 | Nexus Lab Cohort 2Second Mind | [
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TWiML Talk 154
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/omni-channel-customer-experiences-with-vince-jeffs-3ab4c0d42b17 | Omni-Channel Customer Experiences with Vince Jeffs | [
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TWiML Talk 131
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/optimal-transport-and-machine-learning-with-marco-cuturi-57a409f37682 | Optimal Transport and Machine Learning with Marco Cuturi | [
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TWiML Talk 107
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/peering-into-the-home-w-aerials-wifi-motion-analytics-with-michel-allegue-negar-ghourchian-b47fd60053f9 | Peering into the Home w/ Aerials Wifi Motion Analytics with Michel Allegue & Negar Ghourchian | [
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TWiML Talk 058
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/perception-models-for-self-driving-cars-with-jianxiong-xiao-96c76f38e7d5 | Perception Models for Self-Driving Cars with Jianxiong Xiao | [
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0.5081101059913635,
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TWiML Talk 104
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/personalizing-the-ferrari-challenge-experience-with-andy-keller-and-emile-chin-dickey-a53db43114e0 | Personalizing the Ferrari Challenge Experience with Andy Keller and Emile Chin-Dickey | [
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TWiML Talk 91
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/philosophy-of-intelligence-with-matthew-crosby-417b891b7e65 | Philosophy of Intelligence with Matthew Crosby | [
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TWiML Talk 106
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/physiology-based-models-for-fitness-and-training-w-firstbeat-with-ilkka-korhonen-5ac8c5f18d2d | Physiology-Based Models for Fitness and Training w/ Firstbeat with Ilkka Korhonen | [
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TWiML Talk 138
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/practical-deep-learning-with-rachel-thomas-99f69061241a | Practical Deep Learning with Rachel Thomas | [
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0.3306567966938019,
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TWiML Talk 165
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/pragmatic-deep-learning-for-medical-imagery-with-prashant-warier-5a7630a7a4ac | Pragmatic Deep Learning for Medical Imagery with Prashant Warier | [
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TWiML Talk 122
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/predicting-cardiovascular-risk-factors-from-eye-images-with-ryan-poplin-6d5a925e43db | Predicting Cardiovascular Risk Factors from Eye Images with Ryan Poplin | [
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0.03576840087771416,
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TWiML Talk 163
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/predicting-metabolic-pathway-dynamics-w-machine-learning-with-zak-costello-d1001a0297f7 | Predicting Metabolic Pathway Dynamics w/ Machine Learning with Zak Costello | [
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TWiML Talk 149
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/problem-formulation-for-machine-learning-with-romer-rosales-18e8e6ace401 | Problem Formulation for Machine Learning with Romer Rosales | [
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TWiML Talk 70
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/pytorch-fast-differentiable-dynamic-graphs-in-python-with-soumith-chintala-e4fcfc19ffc8 | Pytorch: Fast Differentiable Dynamic Graphs in Python with Soumith Chintala | [
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TWiML Talk 83
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/re-invent-roundup-roundtable-eb0fe08d6fbe | re:Invent Roundup Roundtable | [
-0.04497477784752846,
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TWiML Talk 84
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/real-time-machine-learning-in-the-database-with-nikita-shamgunov-7dd225c6b472 | Real-Time Machine Learning in the Database with Nikita Shamgunov | [
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0.1411927342414856,
-0.3022536635398865,
-0.452405154... |
TWiML Talk 121
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/reproducibility-and-the-philosophy-of-data-with-clare-gollnick-f414adbb9a45 | Reproducibility and the Philosophy of Data with Clare Gollnick | [
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0.3646693229675293,
-0.05063001066446304,
-0.30610367... |
TWiML Talk 76
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/robotics-at-openai-with-jonas-schneider-90e7140ea835 | Robotics at OpenAI with Jonas Schneider | [
0.024186108261346817,
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0.139623433... |
TWiML Talk 99
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/safe-and-nested-subgame-solving-for-imperfect-information-games-with-tuomas-sandholm-nips-best-c9c664197e88 | Safe and Nested Subgame Solving for Imperfect-Information Games with Tuomas SandholmNIPS Best Paper 17 | [
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0.46885964274406433,
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TWiML Talk 134
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/scalable-differential-privacy-for-deep-learning-with-nicolas-papernot-4b1f35dcfdea | Scalable Differential Privacy for Deep Learning with Nicolas Papernot | [
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TWiML Talk 77
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/scalable-distributed-deep-learning-with-hillery-hunter-d8b38e6c77f5 | Scalable Distributed Deep Learning with Hillery Hunter | [
-0.1693701595067978,
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0.0503658764064312,
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0.342848539352417,
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TWiML Talk 116
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/scaling-machine-learning-at-uber-with-mike-del-balso-13a49c5f9b3e | Scaling Machine Learning at Uber with Mike Del Balso | [
-0.5513514876365662,
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0.2681781053543091,
0.002468335209414363,
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TWiML Talk 123
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/semantic-segmentation-of-3d-point-clouds-with-lyne-tchapmi-600218af94a8 | Semantic Segmentation of 3D Point Clouds with Lyne Tchapmi | [
-0.066661536693573,
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0.05545669049024582,
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0.0565968044102... |
TWiML Talk 113
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/statistical-relational-artificial-intelligence-with-sriraam-natarajan-8a0afe6e1dc0 | Statistical Relational Artificial Intelligence with Sriraam Natarajan | [
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0.05961961671710014,
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0.48790568113327026,
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0.39097467064857483,
-0.24403934180736542,
-0.12256354... |
TWiML Talk 049
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/symbolic-and-sub-symbolic-natural-language-processing-with-jonathan-mugan-6e05744ed3dc | Symbolic and Sub-Symbolic Natural Language Processing with Jonathan Mugan | [
-0.5220582485198975,
0.05188419669866562,
0.05974605306982994,
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0.2772452235221863,
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0.13252705335617065,
-0.27818578481674194,
-0.0713813304... |
TWiML Talk 124
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/systems-and-software-for-machine-learning-at-scale-with-jeff-dean-6514b17b5e9b | Systems and Software for Machine Learning at Scale with Jeff Dean | [
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0.15748804807662964,
0.0880022868514061,
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0.168416365981102,
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-0.3811628818511963,
0.17375485599040985,
0.22153212130069733,
0.003446113... |
TWiML Talk 136
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/taming-arxiv-with-natural-language-processing-w-john-bohannon-5012686b2ca | Taming arXiv with Natural Language Processing w/ John Bohannon | [
-0.22159084677696228,
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0.07418923825025558,
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0.31007641553878784,
-0.6947126388549805,
-0.3097125291824... |
TWiML Talk 156
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/targeted-ticket-sales-using-azure-ml-w-the-trail-blazers-b0447c2fed10 | Targeted Ticket Sales Using Azure ML w/ the Trail Blazers | [
0.213749498128891,
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0.1228867843747139,
0.3589901328086853,
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0.2747906744480133,
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-0.13147792220115662,
-0.51846742... |
TWiML Talk 164
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/taskonomy-disentangling-transfer-learning-for-perception-with-amir-zamir-e8e3b102a7e2 | Taskonomy: Disentangling Transfer Learning for Perception with Amir Zamir | [
-0.8105509281158447,
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0.1495090276002884,
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0.06275801360607147,
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0.3770025074481964,
-0.0424942746758461,
-0.2008968144655... |
TWiML Talk 142
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/tensor-operations-for-machine-learning-with-anima-anandkumar-9f6776224c0d | Tensor Operations for Machine Learning with Anima Anandkumar | [
-0.5093071460723877,
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0.07536031305789948,
0.053648363798856735,
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0.29904904961586,
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-0.4061117470264435,
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-0.21847277879714966,
0.4556616544723511,
-0.04120568186044693,
-0.2494943886995... |
TWiML Talk 71
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/the-biological-path-towards-strong-ai-with-matthew-taylor-44aa04f78974 | The Biological Path Towards Strong AI with Matthew Taylor | [
-0.1167396605014801,
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0.23834818601608276,
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0.34512683749198914,
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0.20215703547000885,
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0.1043892502784729,
0.11252371966838837,
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0.17198027670383453,
-0.2747080624103546,
-0.264410465955... |
TWiML Talk 67
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/the-limitations-of-human-in-the-loop-ai-with-dennis-mortensen-2f01b2d2da36 | The Limitations of Human-in-the-Loop AI with Dennis Mortensen | [
-0.30633631348609924,
0.012381666339933872,
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0.29991069436073303,
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0.08293303847312927,
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0.15857984125614166,
-0.6821965575218201,
0.3933989405632019,
-0.37002506852149963,
-0.39634591... |
TWiML Talk 118
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/towards-abstract-robotic-understanding-with-raja-chatila-46268031657b | Towards Abstract Robotic Understanding with Raja Chatila | [
-0.2842373549938202,
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0.4148988127708435,
0.00976618193089962,
-0.06630880... |
TWiML Talk 74
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/towards-artificial-general-intelligence-with-greg-brockman-448fcdb00cd | Towards Artificial General Intelligence with Greg Brockman | [
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TWiML Talk 151
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/towards-the-self-driving-enterprise-with-kirk-borne-4a14c0c8fc98 | Towards the Self-Driving Enterprise with Kirk Borne | [
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TWiML Talk 057
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/training-data-for-autonomous-vehicles-with-daryn-nakhuda-d5a7d6c00fec | Training Data for Autonomous Vehicles with Daryn Nakhuda | [
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TWiML Talk 144
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/training-data-for-computer-vision-at-figure-eight-with-qazaleh-mirsharif-1aa7bf0a2627 | Training Data for Computer Vision at Figure Eight with Qazaleh Mirsharif | [
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Comparing Machine Transcription Services
Malaika Charrington
https://medium.com/this-week-in-machine-learning-ai/transcription-project-update-1-85b905d45584 | Transcription Project Update | [
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TWiML Talk 110
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/trust-in-human-robot-ai-interactions-with-ayanna-howard-e38e7232bc43 | Trust in Human-Robot/AI Interactions with Ayanna Howard | [
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TWiML Talk 88
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/using-deep-learning-and-google-street-view-to-estimate-demographics-with-timnit-gebru-c9ae1ff01013 | Using Deep Learning and Google Street View to Estimate Demographics with Timnit Gebru | [
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TWiML Talk 86
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/visual-recognition-in-the-cloud-for-law-enforcement-with-chris-adzima-6df248e4805f | Visual Recognition in the Cloud for Law Enforcement with Chris Adzima | [
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TWiML Talk 040
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/web-scale-engineering-for-machine-learning-feat-sharath-rao-94e02e851528 | Web Scale Engineering for Machine Learning feat Sharath Rao | [
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TWiML Talk 048
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/word2vec-and-friends-with-bruno-goncalves-981e09d12b45 | Word2Vec and Friends with Bruno Goncalves | [
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TWiML Talk 153
TWiML AI
https://medium.com/this-week-in-machine-learning-ai/workforce-intelligence-for-automation-productivity-with-michael-kempe-1b9bdbfb4e01 | Workforce Intelligence for Automation & Productivity with Michael Kempe | [
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A while ago I noticed a tick in my writing.
Chris Thilk
https://medium.com/this-writing-life/a-while-ago-i-noticed-a-tick-in-my-writing-11498300288d | Watch Out For Gender Bias In Your Writing | [
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For years I rejected the notion I had to pay even one ounce of attention to the look and feel of my personal blog. I didnt care what it looked like and didnt understand why anyone would. It was just a dumb wrapper for my writing and didnt translate to RSS
Chris Thilk
https://medium.com/this-writing-life/dont-neglect-design-in-your-writing-b0f5e9d0a691 | Dont Neglect Design In Your Writing | [
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Im a big fan of self-imposed deadlines on writing projects. Ill try and get a post written in 30 minutes or a project completed before a certain time of the day. If I dont, then Im prone to letting them sit there and fester and sit
Chris Thilk
https://medium.com/this-writing-life/how-an-editorial-calendar-keeps-my-writing-on-task-3f5eecd0e051 | How an Editorial Calendar Keeps My Writing on Task | [
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As Ive mentioned before, I have a substantial list of ideas for future writing topics that I keep in Evernote. If I am feeling stuck or notice a gap coming up in the editorial calendar I maintain for my personal publishing I can turn to that list and see what
Chris Thilk
https://medium.com/this-writing-life/one-long-post-or-several-little-posts-7b6d1cf5a867 | One Long Post or Several Little Posts? | [
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Better to go your own way than be miserable
Chris Thilk
https://medium.com/this-writing-life/steadfastly-ignoring-advice-b397d9c96358 | Steadfastly Ignoring Advice | [
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you have to fight for everything you love. you have to tell people you love them often. when they need it the most. when theyre sitting at the edge of their bed and they cant listen to their favorite
Ruchita
https://medium.com/thisblogisperfectlynormal/how-to-grow-flowers-e4617eb7862b | HOW TO GROW FLOWERS | [
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A poem about the one rule we have at my local writing group: youre not allowed to apologise for your work.
Richard Child
https://medium.com/thisincludes/no-apologies-208f814e6960 | No apologies | [
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New Horizons delivered the newsTaking nine years to reach me . . .I tried to appeal the
Richard Child
https://medium.com/thisincludes/pluto-b796e7df05b1 | Pluto | [
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Learning how to write song lyrics to a metronome, my first 4 bars:
Richard Child
https://medium.com/thisincludes/qua-train-77ede1962e01 | Qua-train | [
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It was no small feat;so they decided to cheatBy taking the triangle off the table
Richard Child
https://medium.com/thisincludes/stable-pool-table-30e38d08eaa7 | Stable pool table | [
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By
DNA
https://medium.com/thisisdna/a-world-where-all-tokens-are-securities-227651c4e173 | A World Where all Tokens are Securities | [
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DNA co-founder Brock Pierce on the death of paper, how the financial system is like power plugs, his criteria for choosing investments, and his advice for
DNA
https://medium.com/thisisdna/brock-pierce-my-criteria-for-investing-cfcfdbf54081 | Brock Pierce: My criteria for investing | [
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Hedera Hashgraph is providing the benefits of blockchain as a distributed ledger technology without the limitations
DNA
https://medium.com/thisisdna/faster-fairer-and-more-secure-9b5beeef52bc | Faster, fairer, and more secure | [
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DNAs James Glasscock on the crypto craze, the best way to invest in blockchain, and how a decentralized ecosystem will attack the Facebooks of the world
DNA
https://medium.com/thisisdna/reactions-to-beyond-the-bitcoin-bubble-b3525b13f2e6 | Reactions to Beyond the Bitcoin Bubble | [
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DNA Chairman Scott Walker explains the inherent flaw in corporations and why he believes in the blockchain and decentralized applications
DNA
https://medium.com/thisisdna/the-problem-with-corporations-and-how-blockchain-is-the-solution-a38820967556 | How blockchain solves the problem with corporations | [
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A veteran founder explains the lessons hes learned on his path to ICO
DNA
https://medium.com/thisisdna/workcoin-founder-fred-krueger-reinvents-freelance-work-on-the-blockchain-6483c87e1781 | WorkCoin founder Fred Krueger reinvents freelance work on the blockchain | [
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In early June, our Lefties travelled to Loon Lake for our yearly strategic retreat. As our company has grown substantially over the last twelve months, this was a special opportunity to come together and reflect on the culture and organization as we continue to scale. With the theme of
Amber McLennan
https://medium.com/thisisleft/lefts-magical-retreat-35f83b8bbd94 | Lefts Magical Retreat | [
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Something stirred within me, perhaps I had been wandering too long without clear direction and purpose. It is much easier to go with the flow and exist instead of living, avoiding confrontation in the hope that prosperity and well-being will somehow emerge some day.
matthew d. smith
https://medium.com/thisismyotherself/meeting-my-other-self-21bf220f109 | Meeting My Other Self | [
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The Phoenix sunk to yet another home loss on captain Andrew Durantes big night as George Blackwood earned three points for United away from home
TADS Media
https://medium.com/thisistads/a-league-2017-18-adelaide-upset-durante-centenary-6ad4f45692b7 | A-League 2017/18: Adelaide upset Durante centenary | [
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It truly was a day to remember for Wellington Phoenix, who recorded their first win of the season by beating Long Distance rivals Perth Glory.
TADS Media
https://medium.com/thisistads/a-league-2017-18-cloudy-with-a-chance-of-goals-in-wellington-5b189c9ec214 | A-League 2017/18: Cloudy with a chance of goals in Wellington | [
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It was the high-flying Jets, coached by Ernie Merrick, that won bragging rights against Darije Kalezic and his Phoenix side on Saturday night.
TADS Media
https://medium.com/thisistads/a-league-2017-18-jets-fly-over-rising-phoenix-f1cc028de03a | A-League 2017/18: Jets fly over rising Phoenix | [
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ACT leader David Seymours End of Life Choice Bill passed its first reading on Wednesday, the 13th of December. 76 members of parliament voted in favour of the bill, with 44 against.
TADS Media
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2017 Vodafone New Zealand Music Awards
TADS Media
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Our health is about one of the only things we have a good amount of control over in our lives. We are often taught from a young age to take care of our bodies. As we grow, that means that once you demolish four Oreo pancakes with ice cream and syrup
TADS Media
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An exclusive Black Yellow White panel make sense of a terrific opening leg of the FIFA World Cup playoff against Seleccin PeruanaFPF.
TADS Media
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