id
int64
0
5.98k
vector
list
publication
stringclasses
8 values
claps
int64
0
14.8k
responses
int64
0
212
title
stringlengths
1
170
link
stringlengths
37
145
reading_time
int64
1
67
400
[ 0.045293960720300674, 0.02856455370783806, -0.007103841286152601, 0.033593568950891495, 0.010692838579416275, -0.022833533585071564, 0.028966763988137245, 0.052730318158864975, -0.03058597631752491, -0.016357099637389183, 0.026028931140899658, 0.003430639859288931, -0.032227303832769394, 0...
The Startup
57
2
Why You Should Try Kotlin
https://medium.com/swlh/why-you-should-try-kotlin-fd11de0b924f
6
401
[ 0.034632954746484756, 0.0010046577081084251, -0.030323904007673264, -0.0028770805802196264, -0.035011447966098785, 0.021507909521460533, -0.013590545393526554, 0.02976609207689762, 0.005563340149819851, -0.024566346779465675, -0.026488622650504112, 0.060712654143571854, -0.0291090477257967, ...
The Startup
57
0
Socket Programming in Python
https://medium.com/swlh/socket-programming-in-python-580efe2ca31d
4
402
[ -0.010923727415502071, 0.017696768045425415, -0.001338296802714467, 0.016974421218037605, 0.014883818104863167, 0.00643182173371315, 0.03069164976477623, -0.031450964510440826, 0.004698440432548523, -0.04186542332172394, -0.007161431945860386, 0.03057018853724003, -0.019504142925143242, -0...
The Startup
50
0
Investigating and Mitigating MTG: Arena Network Errors
https://medium.com/swlh/investigating-and-mitigating-mtg-arena-network-errors-23baa46802bb
9
403
[ 0.030874229967594147, -0.026569128036499023, 0.004288358613848686, 0.022780386731028557, -0.004599224776029587, 0.03726174309849739, 0.012326999567449093, -0.0010459093609824777, -0.040494903922080994, -0.012795694172382355, -0.0009614909649826586, 0.02320033498108387, -0.024043474346399307,...
The Startup
91
0
Random Walk: Will the Drunk Man Fall Off the Cliff?
https://medium.com/swlh/random-walk-a-comprehensive-illustration-aa13373830d1
10
404
[ 0.021261049434542656, -0.01801721379160881, -0.017570536583662033, 0.0329049751162529, 0.010695009492337704, -0.0047281840816140175, 0.0841875821352005, 0.0414191372692585, -0.03413771092891693, -0.04956585168838501, -0.010135839693248272, 0.07432356476783752, 0.02084159478545189, -0.01781...
The Startup
111
1
Forget About Hard Skills; Soft Skills Are What You Need to Succeed
https://medium.com/swlh/forget-about-hard-skills-soft-skills-are-what-you-need-to-succeed-b4da9fdf618b
3
405
[ -0.005858434364199638, -0.006302969995886087, 0.016587503254413605, 0.017014745622873306, -0.00414246553555131, -0.02091042697429657, -0.022044222801923752, -0.03961457312107086, -0.024850742891430855, -0.019675636664032936, -0.023301618173718452, 0.006290552671998739, -0.008481746539473534,...
The Startup
76
0
Setting up HA Vault Cluster on GCP
https://medium.com/swlh/setting-up-ha-vault-cluster-on-gcp-3e9e8222ac39
6
406
[ 0.04449968785047531, -0.019730500876903534, 0.015516326762735844, 0.014987096190452576, -0.018862135708332062, 0.0023959169629961252, -0.00745135685428977, 0.018570683896541595, -0.043898195028305054, -0.04304264113306999, -0.009936649352312088, 0.020106051117181778, -0.01074343640357256, ...
The Startup
142
1
Post-Pandemic Consumer Behaviour Trends to Watch
https://medium.com/swlh/post-pandemic-consumer-behaviour-trends-to-watch-29e51b34de40
6
407
[ 0.041555166244506836, 0.02576903998851776, 0.012575051747262478, 0.008626624010503292, -0.013067315332591534, 0.013632954098284245, 0.009429607540369034, -0.014840014278888702, -0.0042479028925299644, -0.0558164156973362, -0.03011302836239338, 0.03159620240330696, 0.002528604120016098, -0....
The Startup
55
0
JavaScript + Art Supplies
https://medium.com/swlh/javascript-art-supplies-af949595112e
6
408
[ 0.03687627986073494, 0.029624827206134796, 0.019622618332505226, -0.017653897404670715, 0.01986527629196644, 0.012416893616318703, 0.03775019198656082, 0.0434504970908165, 0.007124884519726038, -0.04080813005566597, -0.0194309763610363, 0.047209128737449646, 0.013028881512582302, 0.0481904...
The Startup
117
0
The 3 Brands That Define Today’s College Campus
https://medium.com/swlh/the-3-brands-that-define-todays-college-campus-cd0f77408968
4
409
[ 0.026621920987963676, 0.02181219309568405, -0.0021668621338903904, 0.03359813243150711, -0.0014072493650019169, 0.031624872237443924, -0.0019362674793228507, 0.003715954953804612, -0.0021653904113918543, -0.08515958487987518, -0.010229077190160751, 0.052332181483507156, 0.058874234557151794,...
The Startup
69
0
Building Knowledge on the Customer Through Machine Learning
https://medium.com/swlh/building-knowledge-on-customer-through-machine-learning-2785b344749f
10
410
[ -0.0015313529875129461, -0.034696441143751144, 0.020809823647141457, -0.005270466674119234, 0.005305171012878418, -0.028877481818199158, 0.03452559560537338, -0.02622133120894432, -0.005738907493650913, -0.05724912881851196, -0.018369559198617935, 0.058379944413900375, -0.0422518253326416, ...
The Startup
54
0
One-step Install+Save for Python Dependencies
https://medium.com/swlh/one-step-install-save-for-python-dependencies-b7fe2bee1d09
2
411
[ 0.020415453240275383, 0.0128125986084342, 0.015582364983856678, 0.05404498800635338, 0.042942095547914505, -0.005138288717716932, -0.016840102151036263, 0.061480969190597534, -0.011903195641934872, -0.059711284935474396, -0.0015821404522284865, 0.059301745146512985, -0.022149963304400444, ...
The Startup
37
1
Startups Will Save the World, but We Must Save Them First
https://medium.com/swlh/startups-will-save-the-world-but-we-must-save-them-first-5ab4a913d26e
5
412
[ 0.08277231454849243, -0.033610958606004715, -0.025508064776659012, -0.0037708848249167204, -0.0013132018502801657, -0.015996867790818214, 0.009480657987296581, 0.03498883545398712, -0.03759011998772621, -0.008767726831138134, 0.0024330811575055122, 0.05617867410182953, 0.0017382488586008549,...
The Startup
261
1
From Full-Time to Freelance: Why You Should Do It Too
https://medium.com/swlh/from-full-time-to-freelance-why-you-should-do-it-too-1c240c322d8b
5
413
[ -0.019748404622077942, -0.0288230087608099, 0.02093997597694397, -0.001283161574974656, 0.027150757610797882, 0.028802841901779175, 0.028875159099698067, -0.026001883670687675, 0.006378957070410252, -0.02253592759370804, -0.006847082171589136, 0.03442537784576416, -0.037116240710020065, -0...
The Startup
138
1
Desperately Seeking Sleep: Insomnia Edition
https://medium.com/swlh/desperately-seeking-sleep-insomnia-edition-6e32ae241431
11
414
[ -0.004657498095184565, -0.03398109972476959, -0.02945370227098465, 0.02441425248980522, 0.03525121137499809, 0.009181281551718712, -0.008592612110078335, -0.02525150217115879, 0.029328934848308563, -0.05799270421266556, 0.02846533991396427, 0.03048735298216343, 0.014222770929336548, -0.009...
The Startup
96
0
How to Predict If Someone Would Default on Their Credit Payment Using Deep Learning
https://medium.com/swlh/how-to-predict-if-someone-would-default-on-their-credit-payment-using-deep-learning-49ee032a8a31
4
415
[ -0.018763065338134766, -0.012719806283712387, -0.0005433090846054256, 0.02315765619277954, -0.014799621887505054, 0.027534840628504753, -0.0065584550611674786, -0.029536744579672813, 0.008981474675238132, -0.05702267214655876, -0.03367606922984123, 0.04515755921602249, -0.0334538072347641, ...
The Startup
111
0
Data Visualization With Python: Matplotlib
https://medium.com/swlh/data-visualization-with-python-matplotlib-16880d0d3a44
7
416
[ 0.01807366870343685, -0.0411839634180069, 0.008613631129264832, -0.009858625009655952, -0.01655462384223938, 0.012120540253818035, -0.03543677181005478, -0.023258348926901817, -0.04104426130652428, -0.0474420003592968, 0.004026263952255249, 0.009634616784751415, -0.0057639144361019135, -0....
The Startup
163
0
Using NLP to Visualize Ulysses, Part Two
https://medium.com/swlh/using-nlp-to-visualize-ulysses-part-two-8ead745f320c
8
417
[ -0.021375970914959908, -0.022470925003290176, 0.04635172709822655, 0.006505269557237625, -0.042421214282512665, 0.04467717185616493, 0.04050593078136444, 0.0077069406397640705, -0.021115299314260483, -0.04022326320409775, 0.013859391212463379, -0.009663868695497513, 0.020406095311045647, 0...
The Startup
78
0
Pytorch Zero to GANs: Final Week
https://medium.com/swlh/pytorch-zero-to-gans-final-week-4888a20b57f9
15
418
[ 0.07201442122459412, -0.02006516046822071, 0.0022603576071560383, -0.00046524073695763946, 0.024100061506032944, -0.0036394456401467323, 0.014494124799966812, -0.047256361693143845, -0.0008772891014814377, -0.10699016600847244, -0.024439062923192978, 0.0444524772465229, -0.002121189842000603...
The Startup
100
0
How to Install .Net Core Runtime in Service Fabric Using Terraform
https://medium.com/swlh/how-to-install-net-core-runtime-in-service-fabric-using-terraform-dcca95dedb74
4
419
[ 0.041180167347192764, -0.03658026084303856, -0.02059277333319187, 0.029360180720686913, -0.016410721465945244, 0.010388347320258617, 0.001259437995031476, -0.02182982675731182, -0.02391054481267929, 0.006382298190146685, 0.017150968313217163, 0.022872649133205414, -0.044808484613895416, -0...
The Startup
125
0
React: What Are Hooks and Why Should You Use Them?
https://medium.com/swlh/react-what-are-hooks-and-why-should-you-use-them-bf1e79788305
4
420
[ 0.04085488244891167, -0.017247308045625687, -0.012614898383617401, 0.046553969383239746, -0.004591128323227167, 0.007098524831235409, 0.017963290214538574, -0.0019557452760636806, 0.00663146935403347, -0.010238614864647388, -0.007874244824051857, 0.05845354124903679, 0.01127590797841549, -...
The Startup
121
0
Focus on Value: How to Gain Alignment With User Value Stories
https://medium.com/swlh/focus-on-value-how-to-gain-alignment-with-user-value-stories-5f95c717dd2e
7
421
[ 0.034269750118255615, 0.017371313646435738, -0.014003708958625793, -0.011121856048703194, -0.015544951893389225, 0.009706925600767136, 0.038720645010471344, -0.033553801476955414, -0.01274095755070448, -0.051015909761190414, -0.03775002434849739, 0.026794804260134697, -0.0353233776986599, ...
The Startup
50
0
JavaScript: Template Literals (ES6)
https://medium.com/swlh/javascript-template-literals-es6-f71d6f945272
4
422
[ 0.022854331880807877, -0.00026379909832030535, -0.014091528952121735, 0.004891190677881241, -0.02632056176662445, -0.021990777924656868, -0.007728924509137869, -0.017417527735233307, 0.014391293749213219, -0.042383141815662384, -0.018071504309773445, 0.010037563741207123, -0.0080272024497389...
The Startup
50
0
Defining JPA/Hibernate Entities in Kotlin
https://medium.com/swlh/defining-jpa-hibernate-entities-in-kotlin-1ff8ee470805
3
423
[ 0.034227125346660614, -0.04609285295009613, -0.015387565828859806, 0.03797249495983124, -0.01218372955918312, -0.03591529652476311, 0.023785782977938652, -0.016924239695072174, 0.013716121204197407, -0.043177224695682526, 0.008686050772666931, 0.03160382807254791, -0.026591293513774872, -0...
The Startup
102
0
Understanding Streams By Implementing Your Own Pt 2
https://medium.com/swlh/understanding-streams-by-implementing-your-own-pt-2-a990a26523ad
7
424
[ 0.040427327156066895, 0.030965808779001236, 0.019290199503302574, 0.030211541801691055, -0.005216904450207949, -0.004677272401750088, 0.002904438879340887, 0.017594214528799057, -0.010803261771798134, -0.034848254173994064, -0.002538885222747922, 0.003953880164772272, 0.03715640306472778, ...
The Startup
58
0
Building a Personal Data Science or Analytics Brand Online
https://medium.com/swlh/building-a-personal-data-science-analytics-brand-online-6c664e2dba9c
6
425
[ 0.00006890209624543786, 0.0040802499279379845, 0.020804041996598244, 0.03931909427046776, 0.01195959560573101, 0.012914877384901047, -0.045822251588106155, -0.016655994579195976, -0.01885676197707653, -0.04991992190480232, -0.019586293026804924, 0.034116778522729874, -0.04136146605014801, ...
The Startup
51
0
Annotated RPN, ROI Pooling and ROI Align
https://medium.com/swlh/annotated-rpn-roi-pooling-and-roi-align-6a40ac5bbe1b
3
426
[ -0.04431609436869621, -0.007743312511593103, -0.026355158537626266, 0.007882406003773212, -0.010492616333067417, 0.027556994929909706, -0.029589297249913216, -0.029054174199700356, 0.00420999713242054, -0.024371875450015068, -0.013376268558204174, 0.04752713814377785, -0.021810173988342285, ...
The Startup
52
0
Linear Regression Using Pytorch
https://medium.com/swlh/linear-regression-using-pytorch-be0018eb699f
2
427
[ -0.011305143125355244, -0.006193504203110933, -0.0029970945324748755, 0.016478193923830986, -0.016838470473885536, 0.01452577207237482, -0.017762985080480576, -0.034549564123153687, -0.013647370971739292, -0.03317958861589432, 0.008388676680624485, 0.01222684420645237, -0.014291305094957352,...
The Startup
2
0
Discovering a few Pytorch Tensor Functions
https://medium.com/swlh/discovering-a-few-pytorch-tensor-functions-88224c97249
2
428
[ -0.05877368524670601, -0.00737744802609086, 0.02725539170205593, -0.009859376586973667, -0.015607000328600407, -0.005453381221741438, 0.021285219117999077, -0.046017978340387344, -0.017709385603666306, -0.028043685480952263, -0.024201035499572754, -0.004143034107983112, -0.011307826265692711...
The Startup
15
0
Simon’s Chess Factor
https://medium.com/swlh/simons-chess-factor-8d5b83f88d3
6
429
[ 0.011381871066987514, 0.007701251655817032, -0.03742632642388344, 0.016323180869221687, 0.02043280377984047, -0.004245775751769543, 0.022338634356856346, 0.019418947398662567, 0.018847860395908356, -0.02331111580133438, 0.01669260300695896, 0.066001296043396, 0.017478372901678085, -0.01558...
The Startup
96
0
How to Make the Most of Your Negative Reviews
https://medium.com/swlh/negative-reviews-c6ce0962f144
5
430
[ 0.03171256184577942, 0.00019123007950838655, 0.011495893821120262, 0.009873065166175365, -0.002927621128037572, -0.01492869108915329, -0.02355111949145794, 0.00578088266775012, -0.015794191509485245, -0.03814367204904556, -0.03346110135316849, 0.0038904508110135794, -0.020634008571505547, ...
The Startup
50
0
d3 Shapes and Layouts — What’s It All About?
https://medium.com/swlh/d3-shapes-and-layouts-whats-it-all-about-c1591b9139a0
6
431
[ 0.0047193849459290504, 0.02764975279569626, 0.019831517711281776, 0.02911965362727642, -0.0046587130054831505, 0.007897591218352318, 0.017367158085107803, 0.004799628630280495, -0.03470742329955101, -0.007789260242134333, 0.011905857361853123, 0.023402556777000427, -0.03697763755917549, 0....
The Startup
52
0
The Most Ignored “Regression” — 0 Independent Variables
https://medium.com/swlh/the-most-ignored-regression-0-independent-variables-f26221a94c8b
3
432
[ 0.013660948723554611, 0.025903740897774696, -0.010740549303591251, 0.004957043100148439, -0.012982938438653946, 0.02035311423242092, -0.007272069808095694, -0.013968360610306263, -0.004815202206373215, -0.019421298056840897, 0.018254633992910385, 0.023950213566422462, 0.00023655936820432544,...
Personal Growth
233
0
Counting The Cost
https://medium.com/personal-growth/counting-the-cost-e5ee10515121
1
433
[ -0.024925896897912025, 0.011096147820353508, -0.0027287022676318884, 0.03192979097366333, -0.009370308369398117, 0.009426521137356758, 0.007286666892468929, 0.00574910081923008, -0.01874050311744213, -0.030693180859088898, -0.004460708703845739, 0.05396927148103714, 0.011843837797641754, -...
Towards Data Science
1,600
2
Task Cheatsheet for Almost Every Machine Learning Project
https://towardsdatascience.com/task-cheatsheet-for-almost-every-machine-learning-project-d0946861c6d0
5
434
[ 0.00689907930791378, -0.0021084207110106945, -0.03149062767624855, -0.005257445853203535, -0.010110793635249138, 0.005195062141865492, 0.028031937777996063, 0.010028805583715439, -0.0018039797432720661, -0.04565146192908287, -0.014228977262973785, 0.04075656831264496, -0.01585138402879238, ...
Towards Data Science
188
3
Detecting Face Features with Python
https://towardsdatascience.com/detecting-face-features-with-python-30385aee4a8e
8
435
[ 0.07263670116662979, 0.02550666779279709, -0.028278792276978493, -0.012649846263229847, -0.026874443516135216, -0.03646910935640335, 0.05170711502432823, -0.018531465902924538, 0.0037184753455221653, -0.01831231638789177, 0.006551693193614483, 0.019079964607954025, -0.025269480422139168, -...
Towards Data Science
293
3
5 Python Code Smells You Should Be Wary Of
https://towardsdatascience.com/5-python-code-smells-you-should-be-wary-of-c48cc0eb9d8b
5
436
[ -0.0008856197819113731, -0.009803751483559608, -0.00953929778188467, 0.0332644097507, -0.01932426169514656, -0.014158381149172783, -0.005531949456781149, -0.021901538595557213, 0.016469178721308708, -0.023850778117775917, -0.018644820898771286, 0.03878192976117134, -0.02332582324743271, -0...
Towards Data Science
44
0
A Data Scientist Approach: Running Postgres SQL using Docker
https://towardsdatascience.com/a-data-scientist-approach-running-postgres-sql-using-docker-1b978122e5e6
5
437
[ -0.017322877421975136, 0.0014623376773670316, -0.0016328328056260943, 0.0507693849503994, -0.02033679559826851, 0.010659745894372463, 0.0045248535461723804, 0.009629178792238235, -0.01947668381035328, -0.023334456607699394, -0.034346677362918854, 0.046811673790216446, 0.016081927344202995, ...
Towards Data Science
103
0
Tableau: Unleashing the Power of Visual Analytics
https://towardsdatascience.com/tableau-unleashing-the-power-of-visual-analytics-3376ccf0c1f8
4
438
[ 0.013249813579022884, 0.002723732963204384, 0.002391811925917864, 0.03833729028701782, 0.000042070591007359326, -0.0318639799952507, -0.004818171262741089, 0.0107848159968853, -0.017001230269670486, 0.014278452843427658, 0.00042234527063556015, 0.023263847455382347, 0.01003994233906269, -0...
Towards Data Science
118
2
What is a Full Stack Data Scientist?
https://towardsdatascience.com/full-stack-data-scientist-a-jack-of-all-trades-6490e007298
4
439
[ -0.08612969517707825, -0.018369978293776512, 0.003200623905286193, -0.0014649240765720606, -0.011840137653052807, 0.0037920870818197727, 0.0004929112619720399, 0.0005547004984691739, -0.023204775527119637, -0.027469191700220108, -0.017302637919783592, 0.019939754158258438, -0.040755361318588...
Towards Data Science
214
2
NGBoost algorithm: solving probabilistic prediction problems
https://towardsdatascience.com/ngboost-algorithm-solving-probabilistic-prediction-problems-fdbe1858ca61
6
440
[ -0.03240397572517395, -0.006750526838004589, -0.016790537163615227, 0.034400444477796555, -0.0038974296767264605, -0.009331602603197098, -0.013922333717346191, -0.0011014981428161263, 0.008103327825665474, -0.042897094041109085, -0.015525820665061474, 0.08554664999246597, -0.0297436881810426...
Towards Data Science
36
3
Machine Learning Basics: Polynomial Regression
https://towardsdatascience.com/machine-learning-basics-polynomial-regression-3f9dd30223d1
5
441
[ 0.01349538005888462, -0.005997807253152132, 0.03549864515662193, 0.03282824158668518, -0.0030054678209125996, -0.038511909544467926, 0.009937535040080547, 0.04167790338397026, -0.010340344160795212, -0.04184897616505623, -0.002633002121001482, 0.02376316301524639, 0.02235318161547184, 0.00...
Towards Data Science
26
0
Interesting AI/ML Articles You Should Read This Week (July 4)
https://towardsdatascience.com/interesting-ai-ml-articles-you-should-read-this-week-july-4-cad0d162e108
7
442
[ 0.01860984042286873, 0.02428070455789566, 0.013018934056162834, 0.01578722894191742, 0.011670108884572983, -0.003387140342965722, -0.006920785177499056, -0.005766094662249088, -0.028143851086497307, -0.013209483586251736, 0.014274440705776215, 0.01704278402030468, 0.013022332452237606, -0....
Towards Data Science
21
1
How Floating Point Numbers Work
https://towardsdatascience.com/how-floating-point-numbers-work-1429907b6d1d
13
443
[ 0.004743229132145643, -0.018224621191620827, 0.019582465291023254, 0.013234669342637062, -0.009633881971240044, 0.010233758948743343, -0.010567651130259037, -0.009681749157607555, -0.03363043814897537, -0.054560594260692596, -0.0170673206448555, 0.05788062885403633, -0.03301221504807472, 0...
Towards Data Science
160
1
The Multi-Channel Neural Network
https://towardsdatascience.com/the-multi-channel-neural-network-26551bdfab6c
7
444
[ 0.023031912744045258, 0.0031781652942299843, -0.012031788006424904, 0.024495994672179222, -0.010446297004818916, -0.004327904433012009, -0.01270516961812973, -0.013475648127496243, -0.0246095173060894, -0.02777692675590515, 0.014020855538547039, 0.007475539576262236, -0.00905176717787981, ...
Towards Data Science
98
0
Labeling Data with Pandas
https://towardsdatascience.com/labeling-data-with-pandas-9e573ce59c42
4
445
[ -0.022963067516684532, -0.0113439429551363, -0.006960236933082342, 0.020864007994532585, -0.05517576262354851, -0.017508650198578835, 0.018584098666906357, 0.00036208939854986966, -0.0027774255722761154, 0.0025682784616947174, -0.02804006077349186, 0.07639140635728836, -0.0198740866035223, ...
Towards Data Science
38
0
Monocular Dynamic Object SLAM in Autonomous Driving
https://towardsdatascience.com/monocular-dynamic-object-slam-in-autonomous-driving-f12249052bf1
14
446
[ 0.010403713211417198, 0.007171384524554014, -0.043359894305467606, 0.020625624805688858, -0.004010138567537069, 0.015986958518624306, 0.0068849981762468815, -0.022516366094350815, -0.015786679461598396, 0.003650318132713437, -0.0014618149725720286, 0.031929563730955124, -0.03098999336361885,...
Towards Data Science
66
2
How to parse JSON data with Python Pandas?
https://towardsdatascience.com/how-to-parse-json-data-with-python-pandas-f84fbd0b1025
4
447
[ 0.012304587289690971, -0.0043717329390347, 0.010428120382130146, 0.016234958544373512, -0.003867441089823842, 0.00894448533654213, -0.006817402318120003, 0.028854582458734512, -0.010954545810818672, -0.05571649968624115, 0.0060357023030519485, 0.028113722801208496, 0.003749897237867117, -0...
Towards Data Science
95
0
Speed up your Pandas Processing with Swifter
https://towardsdatascience.com/speed-up-your-pandas-processing-with-swifter-6aa314600a13
5
448
[ 0.008682483807206154, -0.007910949178040028, 0.003075015265494585, 0.04063974693417549, -0.010082160122692585, -0.007496309000998735, 0.031081974506378174, 0.04181775823235512, -0.01624743826687336, -0.03285408392548561, 0.015515340492129326, 0.011771038174629211, -0.021814698353409767, 0....
Towards Data Science
8
0
Raspberry Pi: Dummy Tutorial on hosting a Jupyter Notebook that you can access anywhere
https://towardsdatascience.com/raspberry-pi-tutorial-on-hosting-a-jupyter-notebook-that-you-can-access-anywhere-32191f882b1f
7
449
[ 0.007832398638129234, 0.04058239981532097, -0.07389812171459198, 0.04006125405430794, -0.003553947200998664, 0.01775035634636879, -0.021909868344664574, 0.01703682728111744, 0.009564355947077274, -0.0140324542298913, -0.0006212834268808365, 0.019774464890360832, -0.02041011117398739, 0.022...
Towards Data Science
280
4
Racial Bias in Software
https://towardsdatascience.com/racial-bias-in-software-772d6e949269
5
450
[ -0.01825287751853466, 0.0023822071962058544, 0.04260193184018135, -0.025946231558918953, -0.01813707873225212, 0.016014982014894485, 0.03637976199388504, -0.011120662093162537, -0.04377426579594612, -0.0257501769810915, -0.03497057408094406, 0.028198953717947006, -0.017506349831819534, -0....
Towards Data Science
8
0
Regularization — Part 3
https://towardsdatascience.com/regularization-part-4-2ee8e7aa60ec
9
451
[ 0.02754424884915352, -0.01632448099553585, -0.014096415601670742, 0.05256596580147743, -0.002744967583566904, 0.019554492086172104, -0.027474742382764816, 0.004664748441427946, 0.011445194482803345, -0.029974760487675667, -0.012624898925423622, 0.022534852847456932, -0.04533828794956207, -...
Towards Data Science
36
0
Creating smart ETL data pipelines in python for financial and economic data
https://towardsdatascience.com/creating-smart-etl-data-pipelines-in-python-for-financial-and-economic-data-ad852e8daca7
5
452
[ -0.0250123031437397, -0.027945905923843384, 0.03707385063171387, 0.023029467090964317, -0.01865016296505928, -0.010873944498598576, 0.007374321110546589, -0.007594845723360777, 0.03977179154753685, -0.039566438645124435, 0.027001801878213882, 0.021767502650618553, 0.025196438655257225, 0.0...
Towards Data Science
34
0
A taste of ACL2020: 6 new Datasets & Benchmarks
https://towardsdatascience.com/a-taste-of-acl2020-6-new-datasets-benchmarks-4f5584f3f0ba
7
453
[ -0.001297945505939424, -0.010521047748625278, -0.017266608774662018, 0.020916709676384926, 0.013806603848934174, -0.009167945943772793, 0.04012511298060417, -0.04595954716205597, 0.037837956100702286, -0.05054723471403122, 0.003938761074095964, 0.03574628755450249, 0.018953626975417137, -0...
Towards Data Science
2
0
How to implement Prioritized Experience Replay for a Deep Q-Network
https://towardsdatascience.com/how-to-implement-prioritized-experience-replay-for-a-deep-q-network-a710beecd77b
15
454
[ -0.033042870461940765, -0.0002257582964375615, 0.012308682315051556, 0.013721036724746227, -0.0038407761603593826, -0.0005509334150701761, -0.020933497697114944, 0.02666635811328888, -0.0017707353690639138, -0.08948313444852829, -0.01945546083152294, -0.014694023877382278, 0.0139151019975543...
Towards Data Science
36
0
Geographic Clustering with HDBSCAN
https://towardsdatascience.com/geographic-clustering-with-hdbscan-ef8cb0ed6051
11
455
[ -0.008749347180128098, -0.008304774761199951, -0.013764073140919209, 0.039809323847293854, -0.04187507927417755, -0.014147679321467876, 0.001678453991189599, 0.010327647440135479, 0.009302918799221516, 0.0100834546610713, -0.019952500239014626, 0.027790844440460205, -0.031610533595085144, ...
Towards Data Science
29
0
XRL: eXplainable Reinforcement Learning
https://towardsdatascience.com/xrl-explainable-reinforcement-learning-4cd065cdec9a
17
456
[ -0.02370835281908512, -0.030741842463612556, 0.014461237005889416, 0.01952102966606617, -0.026867615059018135, 0.026211772114038467, 0.012160824611783028, -0.0007183793350122869, -0.02043408527970314, -0.02388743869960308, -0.01847795769572258, 0.027580000460147858, 0.021910572424530983, 0...
Towards Data Science
34
0
Witnessing the Progression in Semantic Segmentation: DeepLab Series from V1 to V3+
https://towardsdatascience.com/witnessing-the-progression-in-semantic-segmentation-deeplab-series-from-v1-to-v3-4f1dd0899e6e
15
457
[ -0.009455110877752304, 0.0003618788905441761, 0.010172883979976177, -0.0016703668516129255, -0.011254284530878067, -0.00005224153574090451, 0.00560568505898118, -0.023330241441726685, 0.020184509456157684, -0.03454504534602165, -0.008663894608616829, 0.04009408503770828, -0.01376820076256990...
Towards Data Science
161
2
A layman’s guide to plot with python and matplotlib
https://towardsdatascience.com/a-laymans-guide-to-plot-with-python-and-matplotlib-8462054f2059
9
458
[ 0.011975747533142567, 0.015068791806697845, 0.004201929550617933, 0.02801571413874626, -0.010403518564999104, -0.009228047914803028, 0.03826310485601425, -0.03368283063173294, -0.006167994812130928, -0.01337397750467062, 0.0031004766933619976, 0.031008368358016014, -0.029953066259622574, -...
Towards Data Science
225
0
Matching: Koalas On Fire — Part 1
https://towardsdatascience.com/matching-koalas-on-fire-part-1-17691bb85c23
7
459
[ 0.025858284905552864, 0.010930688120424747, -0.021288610994815826, -0.00032095678034238517, -0.0030212781857699156, 0.00312209315598011, 0.023992115631699562, 0.009899433702230453, 0.01798403449356556, -0.02826748602092266, 0.03316721320152283, 0.013902177102863789, 0.010150558315217495, -...
Towards Data Science
88
0
My First Month as an AI Healthcare Researcher
https://towardsdatascience.com/my-first-month-as-an-ai-healthcare-researcher-f4736a38bd02
6
460
[ 0.039111752063035965, -0.008891628123819828, -0.008494583889842033, 0.020479947328567505, -0.040016934275627136, -0.0005311762797646224, -0.01624388061463833, 0.03931627795100212, -0.02206479385495186, -0.01836877316236496, -0.030082684010267258, 0.016945021227002144, -0.035445235669612885, ...
Towards Data Science
3
0
Twitter JSON data processing
https://towardsdatascience.com/twitter-json-data-processing-3f353a5deac4
9
461
[ 0.013544890098273754, -0.03652273491024971, -0.02420455776154995, 0.03678523004055023, 0.0006340577965602279, -0.009662719443440437, -0.021716581657528877, -0.01593839004635811, 0.03017893247306347, -0.052547384053468704, -0.045083411037921906, 0.037994783371686935, 0.0027118984144181013, ...
Towards Data Science
20
1
Deploy Sci-kit Learn models in .NET Core Applications
https://towardsdatascience.com/deploy-sci-kit-learn-models-in-net-core-applications-90e24e572f64
6
462
[ 0.023231539875268936, -0.007134227082133293, 0.014645717106759548, 0.021482190117239952, 0.004489841405302286, 0.003646447788923979, 0.02192569151520729, -0.003739110426977277, -0.019507242366671562, -0.060865480452775955, -0.0016907531535252929, 0.030998438596725464, -0.028816090896725655, ...
Towards Data Science
90
0
Public Transportation Range of Service: Identifying Unserved Citizens in Jakarta...
https://towardsdatascience.com/public-transportation-range-of-service-identifying-the-unserved-citizens-in-jakarta-city-eaf8f3446fce
8
463
[ -0.040759168565273285, -0.0011141861323267221, -0.02057669870555401, 0.006057819351553917, -0.0006224591052159667, 0.008173390291631222, -0.019406702369451523, 0.0017299377359449863, -0.01995542086660862, -0.029862334951758385, -0.015430275350809097, 0.05486265569925308, -0.03659717738628387...
Towards Data Science
11
0
Linear Regression Algorithm in Python
https://towardsdatascience.com/basic-linear-regression-algorithm-in-python-for-beginners-c519a808b5f8
5
464
[ 0.015089653432369232, 0.008508662693202496, -0.014002707786858082, 0.03301956132054329, 0.0034385814797133207, 0.008714069612324238, -0.009259363636374474, 0.002258497290313244, -0.03154010698199272, -0.03815487027168274, -0.0035236328840255737, 0.023965606465935707, -0.010481069795787334, ...
Towards Data Science
29
0
Web Scraping NBA 2k Data
https://towardsdatascience.com/web-scraping-nba-2k-data-d7fdd4c8898c
5
465
[ 0.03648931533098221, 0.004169025924056768, -0.007671642117202282, 0.025706704705953598, -0.019110549241304398, -0.01927247643470764, -0.01741107739508152, 0.026930097490549088, 0.0008111758506856859, -0.006838456727564335, -0.010437739081680775, -0.0007810150855220854, -0.038865379989147186,...
Towards Data Science
14
0
Quantum parallelism — where quantum computers get their mojo from
https://towardsdatascience.com/quantum-parallelism-where-quantum-computers-get-their-mojo-from-66c93bd09855
6
466
[ 0.032121654599905014, -0.014028300531208515, 0.03104461543262005, 0.01459073182195425, 0.006877830717712641, 0.03190695494413376, -0.026582395657896996, -0.014753781259059906, -0.020899884402751923, -0.07513546198606491, -0.02153288945555687, 0.005176341161131859, -0.028561173006892204, 0....
Towards Data Science
15
0
Neighbourhood Segmentation and Clustering using Foursquare API
https://towardsdatascience.com/neighbourhood-segmentation-and-clustering-using-foursquare-api-c43c113e89fb
10
467
[ 0.006531039718538523, -0.012061224319040775, -0.03941385820508003, 0.00950996670871973, -0.01748770847916603, 0.06813178211450577, -0.0262660700827837, -0.015689527615904808, -0.020490774884819984, -0.04491457715630531, -0.009218626655638218, 0.03360144793987274, 0.01161156501621008, -0.05...
Towards Data Science
3
0
Slicing and Indexing with Pandas
https://towardsdatascience.com/slicing-and-indexing-with-pandas-2bff05ec361e
7
468
[ -0.042498718947172165, 0.034590866416692734, -0.0302578117698431, 0.00569889135658741, -0.002039286307990551, 0.027772225439548492, 0.03533068299293518, -0.027097107842564583, 0.02310747653245926, -0.07330676913261414, -0.05203094705939293, 0.05491773784160614, -0.06353607773780823, -0.036...
Towards Data Science
1
0
Basic AI Algorithms
https://towardsdatascience.com/basic-ai-algorithms-a7607b9ecdce
8
469
[ -0.000364797335350886, 0.02648046426475048, -0.03387349098920822, 0.015027311630547047, -0.01473967730998993, 0.030020661652088165, 0.01877276413142681, -0.04665076732635498, 0.04752066731452942, -0.03845440596342087, 0.0023051456082612276, 0.039370451122522354, 0.016708267852663994, -0.00...
Towards Data Science
18
0
Evaluate Classification Model Performance with Cumulative Gains and Lift Curves
https://towardsdatascience.com/evaluate-model-performance-with-cumulative-gains-and-lift-curves-1f3f8f79da01
9
470
[ 0.015227014198899269, 0.02521778643131256, -0.01836167275905609, 0.025932617485523224, -0.0000694348564138636, 0.00043969752732664347, 0.008893351070582867, 0.0076933931559324265, -0.022219279780983925, -0.05992424488067627, -0.05416756868362427, 0.04948757588863373, -0.00970862340182066, ...
Towards Data Science
24
0
Free Reading Resources | Machine Learning
https://towardsdatascience.com/free-reading-resources-machine-learning-9e15e96a7a2b
5
471
[ 0.001597158145159483, 0.01508208829909563, -0.007397735957056284, 0.01986011117696762, -0.03627542406320572, 0.0376567579805851, -0.017374224960803986, 0.024312332272529602, -0.03357700631022453, -0.006952602881938219, -0.004514515865594149, 0.03497222438454628, -0.0526711530983448, -0.000...
Towards Data Science
5
0
Parallel Programming: Multiprocessing in Python
https://towardsdatascience.com/parallel-programming-multiprocessing-in-python-61c596b366e0
10
472
[ -0.0024268822744488716, -0.048653531819581985, 0.01785706914961338, 0.05176815390586853, -0.0006419577402994037, -0.01149714458733797, -0.002826961688697338, -0.02435288392007351, -0.0032525856513530016, -0.033350035548210144, -0.03909454122185707, 0.038886554539203644, 0.03169206902384758, ...
Towards Data Science
5
1
Data Science and Machine Learning with Scala and Spark (Episode 02/03)
https://towardsdatascience.com/data-science-and-machine-learning-with-scala-and-spark-episode-02-03-be74f0590f20
5
473
[ -0.013771936297416687, 0.031052224338054657, -0.04582780599594116, 0.013119660317897797, -0.026585252955555916, 0.015560262836515903, -0.009937810711562634, -0.04634811356663704, 0.006390007678419352, -0.035469260066747665, 0.005406591575592756, 0.0069803521037101746, -0.030282456427812576, ...
Towards Data Science
10
0
Addressing The John Smith Problem
https://towardsdatascience.com/addressingthejohnsmithproblem-1533da4f7db8
19
474
[ 0.02319623902440071, -0.044690679758787155, 0.052461929619312286, 0.02939452789723873, 0.02947709895670414, -0.015158950351178646, -0.014671257697045803, 0.020960329100489616, 0.02344941906630993, -0.09327403455972672, -0.014654599130153656, 0.05242903530597687, 0.01773988828063011, -0.012...
Towards Data Science
5
1
The Future of GIT (2020)
https://towardsdatascience.com/the-future-of-git-2020-8e33b2f8746d
4
475
[ 0.04340466484427452, 0.02046942338347435, -0.060758426785469055, 0.014228272251784801, -0.025899039581418037, 0.02913769893348217, -0.0013051964342594147, -0.0033355909399688244, 0.02775837853550911, -0.013097554445266724, -0.017563320696353912, 0.03436722233891487, 0.01918182522058487, 0....
Towards Data Science
6
0
On Social Characteristics of Artificial Intelligence
https://towardsdatascience.com/on-social-characteristics-of-artificial-intelligence-5fb85ed2e69d
8
476
[ -0.008749830536544323, -0.02845085598528385, 0.003092429833486676, 0.025681521743535995, 0.025496607646346092, 0.02448958531022072, 0.00619041733443737, 0.008247445337474346, -0.006979143247008324, -0.019305232912302017, 0.01184376236051321, 0.021706905215978622, 0.02443159557878971, -0.00...
Towards Data Science
3
0
Baby Steps Towards Data Science: Multiple Linear Regression in Python
https://towardsdatascience.com/baby-steps-towards-data-science-multiple-linear-regression-in-python-add42dcfeca5
7
477
[ 0.02925575152039528, -0.008589254692196846, 0.008676367811858654, 0.0029250234365463257, 0.029522277414798737, 0.030397912487387657, 0.010228574275970459, -0.007026234176009893, -0.04485303908586502, -0.04015711322426796, 0.00873327162116766, 0.013651167973876, -0.03396940231323242, -0.013...
Towards Data Science
10
0
This Model is for the Birds
https://towardsdatascience.com/this-model-is-for-the-birds-6d55060d9074
13
478
[ 0.05830323323607445, -0.009442612528800964, -0.035716354846954346, 0.033222634345293045, -0.01363650243729353, -0.02679002471268177, 0.018059050664305687, 0.000725670310202986, 0.022001871839165688, 0.006094444077461958, -0.000014723095773661043, 0.025255104526877403, 0.02819177322089672, ...
Towards Data Science
102
1
In-depth on testing: Who?
https://towardsdatascience.com/in-depth-on-testing-who-1c583efd6163
5
479
[ -0.004260570276528597, -0.05233301967382431, -0.0032968379091471434, -0.000811108504422009, -0.006046912632882595, -0.010435863398015499, 0.011326411738991737, -0.017853355035185814, -0.016823794692754745, -0.03387069329619408, -0.01018256600946188, 0.03543752431869507, -0.02009405940771103,...
Towards Data Science
0
0
The leap from a discrete to a continuous probability distribution
https://towardsdatascience.com/the-leap-from-a-discrete-to-a-continuous-probability-distribution-b105fde3cc1f
13
480
[ -0.009633276611566544, 0.007382749579846859, 0.018218720331788063, 0.01686224341392517, -0.0048177908174693584, 0.02516276389360428, 0.0014172436203807592, 0.018421627581119537, -0.019936971366405487, -0.08778800815343857, -0.0010109824361279607, 0.053509946912527084, -0.035197436809539795, ...
Towards Data Science
4
1
Traffic sign recognition using deep neural networks
https://towardsdatascience.com/traffic-sign-recognition-using-deep-neural-networks-6abdb51d8b70
5
481
[ -0.028000762686133385, -0.009949256666004658, 0.03567715361714363, -0.014846204780042171, -0.00868289452046156, 0.0032580248080193996, 0.025342602282762527, 0.008386178873479366, -0.04502376541495323, -0.02804446406662464, -0.03954364359378815, 0.022201459854841232, -0.014194944873452187, ...
Towards Data Science
3
0
Regularization — Part 2
https://towardsdatascience.com/regularization-part-2-5b729698d026
12
482
[ -0.016749365255236626, -0.017800765112042427, 0.019844025373458862, 0.04451901838183403, -0.022358380258083344, 0.00518348952755332, 0.011335037648677826, 0.007585569284856319, -0.044631533324718475, -0.03965644910931587, -0.009218618273735046, 0.02521626092493534, 0.053636204451322556, -0...
Towards Data Science
355
0
Statistics measures are the best starter
https://towardsdatascience.com/statistics-measures-are-the-best-starter-86241bb39576
6
483
[ -0.0030492693185806274, -0.01726638153195381, 0.025941243395209312, 0.008735108189284801, -0.007348571438342333, -0.0077490005642175674, 0.01627102494239807, 0.017727352678775787, -0.016741707921028137, -0.02486129105091095, -0.04656451940536499, 0.02854655124247074, -0.014308792538940907, ...
Towards Data Science
5
0
Artificial Intelligence: Events Around The World (Jul 4)
https://towardsdatascience.com/artificial-intelligence-events-around-the-world-jul-4-93ac52154dee
5
484
[ 0.010950825177133083, 0.017088348045945168, 0.0015032917726784945, 0.002457856200635433, 0.040752921253442764, -0.014269618317484856, 0.0005959334084764123, 0.006360233761370182, -0.00416608527302742, -0.05738144740462303, -0.010012393817305565, 0.018463166430592537, -0.033700257539749146, ...
Towards Data Science
1
0
Equitable Code: Retiring master on GitHub
https://towardsdatascience.com/equitable-code-retiring-master-on-github-beb21b791a18
6
485
[ 0.013997258618474007, 0.031789980828762054, 0.007635089568793774, 0.015791557729244232, -0.004254243336617947, -0.009785887785255909, 0.019775474444031715, -0.000572672113776207, 0.02156851813197136, -0.03356248140335083, 0.02077663317322731, 0.025465767830610275, 0.021345039829611778, 0.0...
Towards Data Science
5
0
I designed an AI system that can predict ‘academic dishonesty’ with marginal accuracy
https://towardsdatascience.com/i-designed-an-ai-system-that-can-predict-academic-dishonesty-with-marginal-accuracy-daf165426aed
9
486
[ -0.006150975823402405, 0.04493962228298187, 0.011673139408230782, 0.016777293756604195, -0.005170798394829035, -0.005093068815767765, 0.010298811830580235, -0.039190638810396194, 0.005809810012578964, -0.026194818317890167, 0.013627235777676105, -0.0031606757547706366, 0.02459740824997425, ...
Towards Data Science
0
0
Building Recommendations for Articles with IBM
https://towardsdatascience.com/building-recommendations-for-articles-with-ibm-c034e24f75b2
5
487
[ 0.02241179533302784, 0.002706727012991905, -0.010340035893023014, 0.03344259783625603, -0.014150457456707954, 0.009893637150526047, 0.0043329172767698765, -0.030134884640574455, -0.00046154693700373173, -0.003957277629524469, -0.007086204830557108, 0.004822096787393093, 0.027218280360102654,...
Towards Data Science
0
0
Paper Dissection: Cloze-driven Pretraining of Self-attention Networks; Facebook AI
https://towardsdatascience.com/paper-dissection-cloze-driven-pretraining-of-self-attention-networks-a91adb2d9b18
7
488
[ 0.0024804132990539074, -0.03878244012594223, 0.043035175651311874, -0.002433949150145054, 0.013271818868815899, -0.0010875844163820148, -0.016593338921666145, 0.016089562326669693, -0.024435605853796005, -0.0017712463159114122, -0.010923340916633606, 0.01797252707183361, -0.02259695529937744...
UX Collective
544
10
Introducing the Flo menu: A scalable thumb-friendly navigation for mobile
https://uxdesign.cc/introducing-the-flo-menu-a-scalable-thumb-friendly-navigation-for-mobile-5065251c66b6
6
489
[ 0.01066683791577816, 0.02499583177268505, 0.0076529765501618385, 0.003424671944230795, 0.011261317878961563, 0.013610530644655228, 0.012470744550228119, 0.03249400481581688, -0.01541958563029766, -0.04259730130434036, 0.028544725850224495, 0.03798805922269821, -0.006512029562145472, 0.0122...
UX Collective
208
1
What the Apple Newton taught us about UX 27 years ago
https://uxdesign.cc/what-the-apple-newton-taught-us-about-ux-27-years-ago-427c6be66a59
12
490
[ 0.041721999645233154, 0.023419160395860672, 0.02139597199857235, 0.03245823457837105, -0.018045391887426376, -0.002677076030522585, 0.01991836354136467, 0.05305558070540428, -0.028967173770070076, -0.046281229704618454, -0.006342555396258831, 0.04258750006556511, 0.008813784457743168, 0.00...
UX Collective
109
0
Think like a man, UI typography, whimsical websites — and more UX this week
https://uxdesign.cc/to-all-the-people-who-told-me-to-think-like-a-man-9db5e7a77eda
3
491
[ 0.007625255733728409, 0.02026519551873207, -0.016315912827849388, 0.025463376194238663, 0.009817290119826794, 0.003176547819748521, 0.0810382291674614, -0.034611258655786514, -0.03872288018465042, -0.041710421442985535, 0.04239988327026367, -0.023566510528326035, -0.0035795397125184536, 0....
UX Collective
911
0
Dancing with discomfort through design school (and a pandemic)
https://uxdesign.cc/im-not-ready-and-i-m-willing-5fef189c25d1
12
492
[ 0.03209906071424484, 0.019507477059960365, -0.016746630892157555, 0.03157097101211548, -0.009484859183430672, -0.041810519993305206, 0.030961213633418083, 0.029419168829917908, 0.029694445431232452, -0.045163895934820175, -0.008703048340976238, 0.04365925118327141, -0.012628939002752304, 0...
UX Collective
32
1
Professional doesn’t mean complex
https://uxdesign.cc/professional-doesnt-mean-complex-d7ec54c10d32
3
493
[ 0.022524399682879448, 0.012248839251697063, 0.01198855321854353, 0.020711194723844528, 0.0019700434058904648, 0.009491189382970333, 0.03401578962802887, 0.006745246704667807, 0.010137619450688362, -0.04863696172833443, -0.016128333285450935, 0.01172788254916668, 0.002089906483888626, -0.02...
UX Collective
32
0
Helping users achieve a better living and a healthier body — a UX/UI case study
https://uxdesign.cc/case-study-building-ui-ux-mobile-application-activ-fit-777eb728d96d
11
494
[ 0.025360040366649628, -0.01766551099717617, 0.025510426610708237, 0.023931952193379402, -0.003042504657059908, 0.0006889239884912968, 0.023780956864356995, -0.03541962429881096, 0.007020528893917799, -0.03437541052699089, 0.013346490450203419, 0.01319646555930376, -0.015170885249972343, -0...
UX Collective
175
0
How Instagram is gamified — an analysis using Octalysis
https://uxdesign.cc/how-instagram-is-gamified-analysis-using-octalysis-f99fc0175f2a
6
495
[ 0.05496032163500786, 0.02939325012266636, -0.03546968474984169, 0.013845596462488174, 0.0021607056260108948, -0.018706217408180237, 0.009946540929377079, 0.020882096141576767, -0.024399012327194214, -0.012016292661428452, 0.011380638927221298, 0.021678656339645386, -0.01582236774265766, 0....
UX Collective
109
0
Are you ignoring these user personas in your product?
https://uxdesign.cc/are-you-also-ignoring-these-user-personas-21d059834c70
4
496
[ 0.044537317007780075, 0.001297288341447711, -0.03450877591967583, 0.034098558127880096, 0.010470154695212841, -0.02481161244213581, -0.009220656007528305, -0.00019002307089976966, 0.0061019365675747395, -0.054022617638111115, 0.0008522687712684274, 0.019753100350499153, 0.016485681757330894,...
UX Collective
26
0
A board game design process: Test early, test a lot
https://uxdesign.cc/a-board-game-design-process-test-early-test-a-lot-a1bcdb0680eb
6
497
[ -0.03015025146305561, 0.023765213787555695, 0.037738751620054245, 0.01603623852133751, -0.009004849009215832, 0.016551552340388298, 0.043727949261665344, -0.05669843778014183, -0.005262723658233881, -0.028949717059731483, -0.01778586395084858, 0.00506731728091836, -0.013110239058732986, -0...
UX Collective
27
0
Jakob Nielsen’s fourth usability heuristic for user interface design
https://uxdesign.cc/jakob-nielsens-fourth-usability-heuristic-for-user-interface-design-7a25960037d1
6
498
[ 0.028576171025633812, -0.0020101007539778948, 0.028030818328261375, 0.044667210429906845, 0.007011511363089085, -0.018694698810577393, 0.011918632313609123, -0.006553771439939737, 0.0006505021592602134, -0.04601394757628441, -0.014665842987596989, 0.012613620609045029, -0.008355244062840939,...
UX Collective
35
0
100+ top tips for designing intranets
https://uxdesign.cc/100-top-tips-for-designing-intranets-9dfe533ffdf3
11
499
[ 0.04082213714718819, 0.008019261993467808, 0.0075011602602899075, -0.013291476294398308, -0.02937786467373371, 0.000308758084429428, 0.019572993740439415, 0.0002791602455545217, -0.02719583921134472, -0.03609265759587288, 0.0051528578624129295, 0.03145182132720947, 0.03072352521121502, 0.0...
UX Collective
24
0
Being a design officer in my city
https://uxdesign.cc/being-a-design-officer-in-my-city-dfef4944922
13