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
1,700
[ 0.05426165834069252, 0.014419973827898502, 0.02874859608709812, 0.033325646072626114, -0.007523514796048403, 0.001765444758348167, 0.019156135618686676, -0.05637643486261368, -0.00829879567027092, -0.04871394485235214, -0.0099997129291296, 0.07871124148368835, 0.01345414761453867, -0.04813...
The Startup
57
0
Gear Guide: Monitors for Architects
https://medium.com/swlh/gear-guide-monitors-for-architects-6f6665c82e3c
7
1,701
[ -0.01958533376455307, -0.010781770572066307, -0.00521228788420558, 0.030885079875588417, 0.0042220475152134895, -0.015951231122016907, 0.023956257849931717, -0.030573595315217972, -0.013676856644451618, -0.06462229788303375, -0.007287563756108284, 0.04053235799074173, 0.012697475031018257, ...
The Startup
872
0
A Progressive Master Plan to Transform As a Machine Learning Engineer
https://medium.com/swlh/a-progressive-master-plan-to-transform-as-a-machine-learning-engineer-a81fb8990552
5
1,702
[ 0.04779750853776932, 0.014240632764995098, -0.00452411687001586, 0.02649105340242386, 0.02470376156270504, 0.009652883745729923, 0.058045823127031326, -0.05858271196484566, -0.009381430223584175, -0.051271311938762665, 0.0000043377140173106454, 0.023516813293099403, -0.026319783180952072, ...
The Startup
11
0
6 Simple Steps to Save Money on Energy Costs During Quarantine
https://medium.com/swlh/6-simple-steps-to-save-money-on-energy-costs-during-quarantine-d70a1c3d4b39
3
1,703
[ 0.0034419517032802105, 0.009603527374565601, 0.006167237646877766, 0.011074332520365715, -0.034241899847984314, -0.010081268846988678, 0.0068773371167480946, 0.025865141302347183, -0.01491620671004057, -0.002155319321900606, 0.050823748111724854, -0.02709473855793476, 0.023866795003414154, ...
The Startup
30
0
My Year of Writer’s Block
https://medium.com/swlh/my-year-of-writers-block-f7173b14f97a
5
1,704
[ 0.0038279355503618717, 0.012995045632123947, 0.048666492104530334, -0.010986745357513428, 0.006194695830345154, 0.0277623999863863, 0.02396545000374317, 0.009061154909431934, -0.013376654125750065, -0.04970293119549751, -0.036579255014657974, 0.026404976844787598, -0.03011847659945488, -0....
The Startup
50
0
Apple unveils iOS 14, featuring widgets and several app upgrades
https://medium.com/swlh/apple-unveils-ios-14-featuring-widgets-and-several-app-upgrades-b7af6aad9e8a
5
1,705
[ 0.0073599801398813725, 0.040444184094667435, 0.007425675634294748, -0.008009382523596287, -0.006455966271460056, 0.0070635066367685795, 0.07294613867998123, -0.0452844612300396, -0.022595757618546486, -0.01514508668333292, 0.006997920107096434, 0.05372390151023865, 0.009340899996459484, -0...
Personal Growth
782
5
4 Steps to Make Reading a Regular Habit
https://medium.com/personal-growth/4-simple-steps-to-make-reading-a-regular-habit-ed9c4a2c04c6
4
1,706
[ 0.00793138425797224, 0.0224652960896492, -0.021035850048065186, 0.022183235734701157, -0.016249774023890495, -0.015227759256958961, 0.025006745010614395, 0.007672901265323162, 0.01641746610403061, -0.030873287469148636, -0.0046700178645551205, 0.02134145423769951, 0.016105834394693375, -0....
Personal Growth
217
1
Explaining Isn’t Always Easy
https://medium.com/personal-growth/explaining-isnt-always-easy-7086a9bb58ba
1
1,707
[ 0.03620053455233574, 0.012800410389900208, -0.0018160513136535883, -0.013432861305773258, 0.021291861310601234, 0.007082142401486635, 0.008657906204462051, 0.02397536113858223, -0.017572743818163872, -0.048062872141599655, 0.012170216999948025, 0.04562633857131004, 0.03119807317852974, -0....
Towards Data Science
330
3
What I Learnt From Taking A Masters In Computer Vision And Machine Learning
https://towardsdatascience.com/what-i-learnt-from-taking-a-masters-in-computer-vision-and-machine-learning-69f0c6dfe9df
13
1,708
[ -0.025237517431378365, -0.004800431430339813, -0.010234532877802849, 0.009288769215345383, -0.008649338036775589, 0.012939206324517727, -0.0035519644152373075, -0.014262152835726738, -0.0021728842984884977, -0.013893497176468372, -0.01646222360432148, 0.015639450401067734, -0.039616063237190...
Towards Data Science
248
1
A Bayesian Approach to Linear Mixed Models (LMM) in R/Python
https://towardsdatascience.com/a-bayesian-approach-to-linear-mixed-models-lmm-in-r-python-b2f1378c3ac8
12
1,709
[ 0.007918897084891796, 0.06371770799160004, -0.02111120894551277, 0.0014368686825037003, -0.012202555313706398, 0.006339106243103743, 0.06178181245923042, -0.007350639905780554, -0.03495241701602936, -0.022542262449860573, 0.008031388744711876, 0.041884154081344604, -0.049659643322229385, -...
Towards Data Science
166
2
4 Coding Mistakes I Did When I Was Learning Python
https://towardsdatascience.com/4-coding-mistakes-i-did-when-i-was-learning-python-bbc6824bdd8c
6
1,710
[ 0.0058059534057974815, -0.008401998318731785, 0.006686675827950239, 0.01141194999217987, 0.0335674062371254, -0.007466734852641821, 0.01997491717338562, 0.0014865538105368614, 0.012824354693293571, -0.05111437663435936, -0.007477684412151575, -0.02674293890595436, -0.01497322041541338, 0.0...
Towards Data Science
708
6
A Day in the Life of a Data Scientist in San Francisco
https://towardsdatascience.com/a-day-in-the-life-of-a-data-scientist-in-san-francisco-ffe32ca52d20
12
1,711
[ 0.02320128120481968, -0.009627517312765121, -0.0068762474693357944, 0.04355515539646149, 0.010192696936428547, -0.036084022372961044, -0.001799421152099967, 0.005671217106282711, -0.013306496664881706, -0.0167557280510664, 0.00824334193021059, 0.00006178996409289539, 0.020042607560753822, ...
Towards Data Science
146
3
How to Get Started in Data Science
https://towardsdatascience.com/how-to-get-started-in-data-science-af865b3d5231
8
1,712
[ 0.006177705712616444, -0.003009006381034851, 0.006994700990617275, 0.004439082462340593, -0.028621410951018333, 0.007298930548131466, 0.00940199289470911, -0.015850123018026352, 0.01059879269450903, -0.02614017203450203, 0.01005579438060522, 0.034724414348602295, -0.0009826761670410633, 0....
Towards Data Science
267
0
The point of no return: Using nbdev for the past 6 months changed the way I code in Jupyter notebooks
https://towardsdatascience.com/the-point-of-no-return-using-nbdev-for-the-past-6-months-changed-the-way-i-code-in-jupyter-2c5b0e6d2c4a
5
1,713
[ 0.009657065384089947, 0.010371716693043709, 0.008413818664848804, 0.03784841671586037, 0.007216375321149826, -0.027252444997429848, -0.00235347100533545, 0.006174582988023758, 0.0034863376058638096, -0.029397984966635704, -0.001707790419459343, 0.011728652752935886, -0.0013625784777104855, ...
Towards Data Science
375
8
A Casual Guide to Dirac Notation
https://towardsdatascience.com/a-casual-guide-to-dirac-notation-17961670ae7a
4
1,714
[ -0.0235426165163517, -0.0009106307988986373, -0.015072903595864773, 0.007790964096784592, -0.012689104303717613, 0.00021885316527914256, -0.005119086243212223, -0.032069236040115356, -0.0182725191116333, -0.031221585348248482, 0.013815346173942089, -0.004800770897418261, -0.01204344257712364...
Towards Data Science
311
2
Sankey Diagram Basics with Python’s Plotly
https://towardsdatascience.com/sankey-diagram-basics-with-pythons-plotly-7a13d557401a
5
1,715
[ -0.02088307961821556, -0.058827515691518784, 0.07010363042354584, 0.020842593163251877, -0.014432443305850029, 0.012453603558242321, -0.046086203306913376, -0.026548953726887703, -0.026440860703587532, -0.07590104639530182, -0.011126288212835789, 0.01296619325876236, -0.002652124036103487, ...
Towards Data Science
191
3
Pytorch vs Tensorflow in 2020
https://towardsdatascience.com/pytorch-vs-tensorflow-in-2020-fe237862fae1
6
1,716
[ -0.02539576031267643, 0.011992705054581165, -0.027290109544992447, 0.015258774161338806, -0.028505783528089523, -0.0043745567090809345, 0.010482541285455227, -0.00009957930888049304, 0.004219784401357174, -0.03912843391299248, -0.01703023537993431, 0.027681924402713776, -0.006073807366192341...
Towards Data Science
158
1
Understanding the crux of objects and classes in python.
https://towardsdatascience.com/understanding-the-crux-of-objects-and-classes-in-python-87c5f4f22d76
6
1,717
[ 0.004527856595814228, 0.02172299660742283, -0.02101455256342888, 0.025488710030913353, -0.012390545569360256, 0.04599066451191902, 0.005189698655158281, -0.02904132381081581, -0.031877487897872925, -0.06859567761421204, 0.005116858519613743, 0.008229788392782211, 0.026587676256895065, -0.0...
Towards Data Science
106
2
Scraping 1000’s of News Articles using 10 simple steps
https://towardsdatascience.com/scraping-1000s-of-news-articles-using-10-simple-steps-d57636a49755
16
1,718
[ 0.006788871716707945, 0.010645256377756596, -0.015118571929633617, 0.020270347595214844, 0.0071685113944113255, -0.007288171909749508, -0.016408538445830345, 0.013996015302836895, -0.02412927709519863, -0.04188750684261322, -0.01567484624683857, 0.03279873728752136, -0.036041259765625, 0.0...
Towards Data Science
57
2
Common Time Series Data Analysis Methods and Forecasting Models in Python
https://towardsdatascience.com/common-time-series-data-analysis-methods-and-forecasting-models-in-python-f0565b68a3d8
12
1,719
[ 0.003085625823587179, 0.027117889374494553, -0.023200787603855133, 0.004043631721287966, 0.010438911616802216, 0.0011751552810892463, -0.012777323834598064, -0.014032125473022461, -0.01967540569603443, -0.030181240290403366, 0.01312976609915495, 0.04092392697930336, 0.024377770721912384, -...
Towards Data Science
205
0
Introduction to Process Mining
https://towardsdatascience.com/introduction-to-process-mining-5f4ce985b7e5
11
1,720
[ 0.05103081837296486, 0.024549543857574463, 0.014320355840027332, -0.007970436476171017, 0.007133794017136097, -0.016577867791056633, 0.02787909284234047, -0.006014205049723387, -0.009291138499975204, -0.04140786454081535, 0.030592478811740875, 0.03880837559700012, 0.028821254149079323, 0.0...
Towards Data Science
301
1
What I’ve Learned After Using Vim 15 Days Straight
https://towardsdatascience.com/what-ive-learned-after-using-vim-15-days-straight-ceda7e773a6d
11
1,721
[ -0.024165207520127296, 0.008682845160365105, -0.018053729087114334, 0.037977539002895355, -0.022600838914513588, 0.013163103722035885, 0.023984042927622795, 0.02945215255022049, 0.011628253385424614, -0.027518315240740776, -0.028514571487903595, 0.0627724677324295, 0.04526003077626228, -0....
Towards Data Science
128
0
Top 10 Soft Skills for a Developer
https://towardsdatascience.com/soft-skills-developer-2ead1dd85b2f
8
1,722
[ 0.013122262433171272, -0.0027688678819686174, -0.01049806084483862, 0.03386849910020828, 0.02532966062426567, 0.009781170636415482, 0.01332788448780775, 0.02570187672972679, -0.009602220728993416, -0.035880398005247116, 0.0021640565246343613, 0.03765088692307472, 0.036311183124780655, 0.00...
Towards Data Science
138
4
Lessons learned from (almost) failing to deploy a simple Machine Learning model in the Cloud
https://towardsdatascience.com/lessons-learned-from-almost-failing-to-deploy-a-simple-machine-learning-model-in-the-cloud-69f041704f03
15
1,723
[ 0.016555864363908768, -0.009520428255200386, -0.009849248453974724, 0.04435598477721214, 0.003985160496085882, 0.009407302364706993, 0.01003314834088087, 0.043286267668008804, -0.01826685667037964, -0.041980352252721786, -0.01624128222465515, 0.01584910973906517, -0.021294094622135162, -0....
Towards Data Science
282
7
Make the cutest chart in Python -visualize your data with hand-drawn charts
https://towardsdatascience.com/make-the-cutest-chart-in-python-visualize-your-data-with-hand-drawn-charts-f21157f76b4b
5
1,724
[ 0.02651628665626049, -0.012552517466247082, 0.016751114279031754, 0.01795860566198826, 0.016923850402235985, 0.012626521289348602, -0.011023834347724915, 0.028616560623049736, -0.011542330496013165, -0.05926655977964401, 0.003204426495358348, 0.047562744468450546, 0.033440910279750824, -0....
Towards Data Science
247
1
The Best Way to Invest in the Market
https://towardsdatascience.com/the-best-way-to-invest-in-the-market-3b4f0f50990c
5
1,725
[ 0.012140201404690742, -0.005391284357756376, 0.001921569462865591, 0.05620359629392624, 0.01604229398071766, -0.021441450342535973, -0.01407987903803587, -0.04251733049750328, 0.016024086624383926, -0.013470490463078022, -0.0071075367741286755, 0.046523548662662506, 0.011974315159022808, -...
Towards Data Science
26
0
Data Science questions for interview prep (Machine Learning Concepts) — Part I
https://towardsdatascience.com/33-data-science-questions-for-interview-prep-machine-learning-concepts-6b1718397431
10
1,726
[ -0.0005450646858662367, -0.0013659611577168107, -0.0013477376196533442, 0.03314870223402977, 0.0016949005657806993, 0.020280534401535988, -0.0021258790511637926, -0.005072091706097126, -0.012802575714886189, -0.0438288077712059, -0.041169777512550354, -0.019476808607578278, 0.002293118974193...
Towards Data Science
112
2
PyTorch and GANs: A Micro Tutorial
https://towardsdatascience.com/pytorch-and-gans-a-micro-tutorial-804855817a6b
11
1,727
[ -0.051095157861709595, -0.033896587789058685, 0.033627890050411224, 0.03619608283042908, -0.03860149160027504, 0.03462076932191849, 0.005417719483375549, -0.03212098404765129, -0.016742931678891182, -0.05713582783937454, -0.024384429678320885, 0.024761207401752472, -0.038134969770908356, 0...
Towards Data Science
155
0
Hyperparameter Search with Iterative Sweeps
https://towardsdatascience.com/hyperparameter-search-with-iterative-sweeps-3799df1a4d45
13
1,728
[ 0.009027387946844101, -0.008203264325857162, -0.04020039364695549, 0.023295458406209946, 0.017956163734197617, 0.03621608391404152, 0.040513504296541214, -0.0437166653573513, 0.0068303621374070644, -0.05968785285949707, -0.008563417010009289, 0.04933583736419678, -0.00746709480881691, -0.0...
Towards Data Science
25
0
Anamoly Detection: Techniques to detect outliers
https://towardsdatascience.com/anamoly-detection-techniques-to-detect-outliers-fea92047a222
8
1,729
[ 0.0036387594882398844, 0.0013368187937885523, -0.010246286168694496, 0.031379133462905884, -0.022734032943844795, -0.0209817998111248, -0.0018683946691453457, 0.010678354650735855, -0.010500241070985794, -0.0077189430594444275, -0.004065468441694975, 0.0014008579310029745, -0.028811823576688...
Towards Data Science
52
1
BigQuery: Creating Nested Data with SQL
https://towardsdatascience.com/bigquery-creating-nested-data-with-sql-727b761f1755
5
1,730
[ -0.015542514622211456, -0.012190083973109722, 0.009955537505447865, 0.004360818769782782, 0.009871885180473328, -0.004197722766548395, 0.005007823929190636, -0.010364021174609661, -0.01361570693552494, -0.03280165418982506, -0.03344995900988579, 0.04496607184410095, 0.02203712984919548, -0...
Towards Data Science
24
0
Enabling Data & AI in Retail Banking Part 1: Customer Analytics Journey
https://towardsdatascience.com/enabling-data-ai-in-retail-banking-part-1-customer-analytics-journey-54a7ce7d2a81
13
1,731
[ -0.01800348237156868, -0.012069099582731724, 0.001794540206901729, -0.01173085905611515, -0.0185793898999691, 0.010579334571957588, 0.034986626356840134, -0.017657404765486717, -0.007528396788984537, -0.03442193567752838, 0.007840537466108799, 0.06548529118299484, -0.020405448973178864, -0...
Towards Data Science
24
0
VaR Calculation Using Monte Carlo Simulations
https://towardsdatascience.com/var-calculation-using-monte-carlo-simulations-40b2bb417a67
6
1,732
[ 0.01740204356610775, -0.008238730952143669, -0.00165003992151469, 0.027826756238937378, 0.0018684295937418938, -0.017406832426786423, 0.015576583333313465, -0.006255876738578081, -0.004593695979565382, -0.050971318036317825, 0.013730471953749657, 0.023698514327406883, -0.012386288493871689, ...
Towards Data Science
67
2
Use SHAP loss values to debug/monitor your model
https://towardsdatascience.com/use-shap-loss-values-to-debug-monitor-your-model-83f7808af40f
11
1,733
[ 0.003599948715418577, 0.010725376196205616, 0.02427792176604271, 0.027779066935181618, 0.044156745076179504, -0.0019986629486083984, 0.017408685758709908, -0.021295564249157906, -0.015911007300019264, -0.07558253407478333, -0.010561843402683735, 0.03905947133898735, -0.001835353672504425, ...
Towards Data Science
75
0
5 Basic Machine Learning Algorithms You Need To Know in 2020
https://towardsdatascience.com/5-basic-machine-learning-algorithms-you-need-to-know-in-2020-ec4f2825ce06
6
1,734
[ 0.04197625443339348, 0.0008991871727630496, -0.04295496642589569, 0.025774961337447166, 0.0026696559507399797, 0.0067875864915549755, 0.007767064496874809, -0.018936891108751297, 0.011266367509961128, -0.01586488075554371, -0.008516685105860233, 0.024593401700258255, -0.03539004176855087, ...
Towards Data Science
5
1
How to generate pseudo-random datasets in Python: start from scratch with Numpy & Faker
https://towardsdatascience.com/how-to-generate-pseudo-random-datasets-in-python-start-from-scratch-with-numpy-faker-c5661e3bc58b
10
1,735
[ 0.036200832575559616, 0.00851841177791357, -0.05519472062587738, 0.014671103097498417, -0.015596296638250351, 0.01124299131333828, 0.02672390267252922, -0.03389998897910118, 0.020712673664093018, -0.005399306770414114, 0.002953130519017577, 0.01589883305132389, -0.007205938920378685, -0.05...
Towards Data Science
15
0
How to Perform Hypothesis Testing in Python: Proportion and the Difference in Proportions
https://towardsdatascience.com/how-to-perform-hypothesis-testing-in-python-proportion-and-the-difference-in-proportions-ea7d23dcd038
6
1,736
[ 0.021407248452305794, -0.0017779667396098375, -0.0017547177849337459, 0.050474390387535095, 0.021438345313072205, -0.0019675837829709053, 0.03504917025566101, -0.009089642204344273, 0.013958746567368507, -0.013139686547219753, 0.02272704243659973, 0.030624378472566605, 0.016546836122870445, ...
Towards Data Science
23
0
5 Tips for Kickstarting Your Data Career
https://towardsdatascience.com/5-tips-for-kickstarting-your-data-career-8f3491f62a07
6
1,737
[ -0.003061037277802825, -0.03235634043812752, -0.039285022765398026, 0.033327776938676834, 0.006460272707045078, 0.02615469880402088, -0.024097157642245293, -0.009194113314151764, -0.040509045124053955, -0.05805651471018791, 0.0133573729544878, 0.052661485970020294, -0.0370633490383625, -0....
Towards Data Science
126
0
Random Walk, Brownian Motion, and Stochastic Differential Equations — the Intuition
https://towardsdatascience.com/random-walk-brownian-motion-and-stochastic-differential-equations-the-intuition-3484413503e0
15
1,738
[ 0.05361618101596832, 0.014886891469359398, -0.024701682850718498, -0.007091525010764599, -0.015904471278190613, 0.01317333709448576, 0.001137184677645564, -0.016938956454396248, -0.018032079562544823, -0.05606061592698097, 0.022470341995358467, 0.021675216034054756, -0.025303183123469353, ...
Towards Data Science
72
1
Visualising the albums of Wu-Tang Clan
https://towardsdatascience.com/visualising-the-albums-of-wu-tang-clan-246ea75efdac
4
1,739
[ -0.03498225659132004, -0.014990711584687233, 0.0004087636771146208, 0.036467958241701126, -0.006457410287111998, 0.016759026795625687, 0.0029131111223250628, -0.03273206204175949, 0.001490551047027111, -0.04702551290392876, -0.002199445152655244, 0.035919927060604095, -0.002689126180484891, ...
Towards Data Science
7
0
Searching for the Best Forecasting Model: A Comparison of Different Univariate Forecasting Models
https://towardsdatascience.com/f-forecasting-5d23341462eb
18
1,740
[ 0.010082080960273743, 0.017337476834654808, 0.008310696110129356, 0.02807667851448059, 0.013158838264644146, -0.03469361364841461, 0.02058650366961956, 0.015465468168258667, -0.021542111411690712, 0.011436894536018372, -0.0023015281185507774, 0.0022999730426818132, -0.008481143042445183, 0...
Towards Data Science
153
0
What’s inside the Data!
https://towardsdatascience.com/whats-inside-the-data-aadbb28ba8cd
5
1,741
[ 0.03177563473582268, -0.019625408574938774, 0.0009483210160396993, 0.04659971222281456, 0.003003958147019148, 0.00012301825336180627, -0.017668863758444786, -0.011629306711256504, 0.00628287298604846, -0.05325475335121155, -0.02157885581254959, 0.032171666622161865, -0.0011806790716946125, ...
Towards Data Science
73
2
End to End Pipeline for setting up Multiclass Image Classification for Data Scientists
https://towardsdatascience.com/end-to-end-pipeline-for-setting-up-multiclass-image-classification-for-data-scientists-2e051081d41c
13
1,742
[ -0.02110048569738865, 0.028865749016404152, 0.024906519800424576, 0.007577111013233662, -0.010462570935487747, -0.004885031841695309, 0.02248220331966877, -0.07415784895420074, -0.0007774580153636634, -0.047239094972610474, -0.017743436619639397, 0.0358169786632061, -0.017396291717886925, ...
Towards Data Science
26
0
3 Simple Steps to Map Geospatial Data in R
https://towardsdatascience.com/route-66-revisited-mapping-geospatial-data-in-r-371dd406cde0
3
1,743
[ -0.02167789451777935, 0.025512030348181725, -0.020999442785978317, 0.003220705781131983, -0.00641322648152709, -0.0014698631130158901, 0.006955041084438562, -0.022631604224443436, 0.015394511632621288, -0.028271345421671867, -0.02679755911231041, 0.04866623878479004, -0.017694851383566856, ...
Towards Data Science
97
0
Introduction to Technical Indicators and its Implementation using Python
https://towardsdatascience.com/introduction-to-technical-indicators-and-its-implementation-using-python-155ae0fb51c9
6
1,744
[ 0.030572641640901566, -0.013745440170168877, 0.017145786434412003, 0.017507372424006462, -0.01202833279967308, -0.019339362159371376, 0.002672236179932952, 0.029801560565829277, -0.03678242489695549, -0.046231191605329514, 0.013917543925344944, 0.03197471797466278, 0.043366938829422, -0.00...
Towards Data Science
40
3
Finding the best part of your podcast to promote via NLP
https://towardsdatascience.com/finding-the-best-part-of-your-podcast-to-promote-via-nlp-f844a88b287a
7
1,745
[ -0.030689474195241928, -0.031354870647192, 0.009411578997969627, 0.03562696650624275, -0.015122758224606514, -0.022651195526123047, 0.022177359089255333, 0.003606684971600771, -0.001382692949846387, -0.05330326780676842, -0.02666301280260086, -0.01782180927693844, 0.058141324669122696, 0.0...
Towards Data Science
39
0
Geometric Deep Learning: A Quick Tour
https://towardsdatascience.com/geometric-deep-learning-a-quick-tour-12cef72492ca
5
1,746
[ 0.004209298640489578, -0.0032533423509448767, 0.0306132510304451, 0.022175120189785957, 0.010812528431415558, 0.03811315447092056, -0.0031886030919849873, -0.044402703642845154, 0.016078079119324684, -0.04831971228122711, 0.005122286733239889, 0.003527973312884569, -0.03398839011788368, -0...
Towards Data Science
21
0
Building an ApiGateway-SQS-Lambda integration using Terraform
https://towardsdatascience.com/building-an-apigateway-sqs-lambda-integration-using-terraform-5617cc0408ad
4
1,747
[ -0.01301757711917162, 0.00485147163271904, -0.018453700467944145, 0.014438534155488014, -0.025191418826580048, 0.020798178389668465, -0.014268557541072369, 0.01644727773964405, -0.011639243923127651, -0.022986868396401405, -0.03224898874759674, 0.03764311224222183, -0.05263001471757889, -0...
Towards Data Science
2
0
Asynchronous Parallel Programming in Python with Multiprocessing
https://towardsdatascience.com/asynchronous-parallel-programming-in-python-with-multiprocessing-a3fc882b4023
4
1,748
[ 0.008835894986987114, -0.007606819272041321, 0.031101001426577568, 0.011721936985850334, -0.00006723272963427007, -0.011727896519005299, -0.0025494995061308146, -0.011236370541155338, 0.009023550897836685, -0.04914235323667526, -0.03252611309289932, 0.002403117949143052, -0.01133161317557096...
Towards Data Science
9
1
E-mobility in Germany: Analysis of electric vehicle charging stations
https://towardsdatascience.com/e-mobility-in-germany-analysis-of-electric-vehicle-charging-stations-58d797988738
14
1,749
[ 0.0447876900434494, 0.018390655517578125, 0.010657605715095997, 0.025689564645290375, -0.015626803040504456, -0.006433445960283279, 0.007943233475089073, 0.006848130840808153, 0.025273993611335754, -0.043823473155498505, -0.027326595038175583, 0.015160559676587582, 0.004027992486953735, -0...
Towards Data Science
65
0
Launch a Website for Free in 5 simple steps with GitHub Pages
https://towardsdatascience.com/launch-a-website-for-free-in-5-simple-steps-with-github-pages-e9680bcd94aa
7
1,750
[ 0.017107218503952026, -0.02554289437830448, 0.011837762780487537, 0.022497618570923805, -0.02109041064977646, 0.026499126106500626, 0.0005381866358220577, -0.017872542142868042, 0.04023309797048569, -0.03535179793834686, -0.007816017605364323, 0.023451341316103935, 0.013192670419812202, -0...
Towards Data Science
12
0
Sentiment Analysis Of Political Speeches Using Hugging Face’s Pipeline Feature
https://towardsdatascience.com/sentiment-analysis-of-political-speeches-using-hugging-faces-pipeline-feature-3109c121d351
6
1,751
[ 0.029749775305390358, 0.019347257912158966, -0.024444660171866417, 0.048601917922496796, -0.018474334850907326, -0.03491224721074104, 0.009030296467244625, -0.008416962809860706, 0.019174395129084587, -0.018626254051923752, -0.004493534564971924, 0.012808955274522305, -0.029813509434461594, ...
Towards Data Science
11
0
Generating Fake News with OpenAI’s Language Models
https://towardsdatascience.com/creating-fake-news-with-openais-language-models-368e01a698a3
10
1,752
[ 0.007379250135272741, -0.0040606847032904625, -0.01078646257519722, 0.04283615201711655, -0.015548216179013252, -0.006683786865323782, 0.008776416070759296, -0.03055407851934433, -0.013963861390948296, -0.02962132729589939, -0.00226740469224751, 0.030783431604504585, -0.0050626094453036785, ...
Towards Data Science
55
0
Custom neural networks in Keras: a street fighter’s guide to build a graphCNN
https://towardsdatascience.com/custom-neural-networks-in-keras-a-street-fighters-guide-to-build-a-graphcnn-e91f6b05f12e
7
1,753
[ 0.044093985110521317, -0.01202369760721922, -0.04273790493607521, 0.06139678508043289, 0.03420715034008026, 0.01863545924425125, -0.0021633999422192574, -0.007123499643057585, -0.016294922679662704, -0.0562959648668766, 0.02829768881201744, -0.013551978394389153, -0.02636270597577095, -0.0...
Towards Data Science
19
0
Using Data Science to Study Economic Inequality in the United States
https://towardsdatascience.com/using-data-science-to-study-economic-inequality-in-the-united-states-1101e9350c3d
12
1,754
[ 0.023424018174409866, -0.02243967540562153, 0.027018681168556213, 0.019704818725585938, 0.007976261898875237, 0.025338931009173393, -0.021835876628756523, -0.009571106173098087, -0.0065401154570281506, -0.05303768441081047, 0.005257304757833481, 0.0278246458619833, -0.02420441061258316, 0....
Towards Data Science
136
1
Transform your ML-model to Pytorch with Hummingbird
https://towardsdatascience.com/transform-your-ml-model-to-pytorch-with-hummingbird-da49665497e7
5
1,755
[ 0.04692298173904419, 0.0056799184530973434, 0.00994840171188116, 0.01733633130788803, 0.02886831946671009, -0.014431287534534931, 0.011831102892756462, 0.04060472920536995, 0.0004186499281786382, -0.01927584409713745, 0.040318749845027924, 0.042093854397535324, 0.034715645015239716, -0.028...
Towards Data Science
32
0
What WhatsApp conversations tell us about our friendships
https://towardsdatascience.com/what-whatsapp-conversations-tell-us-about-our-friendships-73ce7104d84e
8
1,756
[ 0.01648481748998165, 0.007627285085618496, -0.027151132002472878, 0.04495443403720856, 0.012750158086419106, 0.010479181073606014, 0.007038862444460392, 0.0024280992802232504, 0.0009535983554087579, -0.0414966382086277, 0.010250948369503021, 0.02073139324784279, -0.019115261733531952, -0.0...
Towards Data Science
4
0
Using Machine Learning to Predict Fantasy Football Points
https://towardsdatascience.com/using-machine-learning-to-predict-fantasy-football-points-72f77cb0678a
11
1,757
[ 0.018615979701280594, 0.03597203642129898, -0.009794685989618301, 0.01853226311504841, -0.013209732249379158, -0.03254082426428795, -0.01885461062192917, -0.034175220876932144, -0.007169654127210379, -0.030941639095544815, -0.0057381875813007355, 0.01952614076435566, -0.016707034781575203, ...
Towards Data Science
85
2
Creating Reports with R Markdown
https://towardsdatascience.com/creating-reports-with-r-markdown-c6031ecdd65c
3
1,758
[ 0.018571337684988976, -0.015321901999413967, -0.014832931570708752, 0.027860838919878006, 0.016415724530816078, 0.02213248796761036, -0.0025926632806658745, -0.03978501632809639, 0.008616730570793152, -0.03742968663573265, 0.0128786014392972, 0.030297286808490753, -0.025509756058454514, -0...
Towards Data Science
343
0
How to transform variables in a pandas DataFrame
https://towardsdatascience.com/transforming-variables-in-a-pandas-dataframe-bce2c6ef91a1
11
1,759
[ -0.005037996452301741, 0.0066794962622225285, -0.02347673289477825, 0.053301069885492325, 0.014743073843419552, 0.00251764920540154, -0.024343350902199745, -0.005999283399432898, -0.012982623651623726, -0.02871096134185791, -0.0006223868113011122, 0.03986784443259239, -0.001959951827302575, ...
Towards Data Science
24
1
Machine Learning application in Petrophysics Industry: A Sonic Log Synthesis prediction story
https://towardsdatascience.com/machine-learning-application-in-petrophysics-industry-a-sonic-log-synthesis-prediction-story-cf0ea54ffdad
8
1,760
[ 0.029315372928977013, -0.001555437920615077, 0.0028701338451355696, 0.0526781901717186, 0.0029740200843662024, -0.010376065969467163, 0.0007892990252003074, -0.028082873672246933, -0.04228807985782623, -0.04774955287575722, -0.02173077128827572, 0.03191843256354332, -0.008709263987839222, ...
Towards Data Science
88
0
Dataset creation for beginners using Software
https://towardsdatascience.com/dataset-creation-for-beginners-using-software-4795ee119f6d
16
1,761
[ -0.014526068232953548, -0.010420323349535465, 0.02308722771704197, 0.014988044276833534, -0.003412962891161442, 0.008866095915436745, 0.000012442475053831004, -0.042111869901418686, -0.010528573766350746, -0.04573541134595871, -0.009036780335009098, -0.02215392142534256, -0.03026278130710125...
Towards Data Science
5
0
Using B-Splines and K-means to Cluster Time Series
https://towardsdatascience.com/using-b-splines-and-k-means-to-cluster-time-series-16468f588ea6
5
1,762
[ 0.0039555467665195465, -0.02024928666651249, 0.007770658936351538, 0.0345475859940052, 0.011046251282095909, 0.007851246744394302, 0.024501264095306396, -0.03791327029466629, 0.0012959640007466078, -0.07028759270906448, -0.003388385521247983, -0.0029137360397726297, -0.017226295545697212, ...
Towards Data Science
94
0
A Walk-through of the Gapminder Tool using Plotly Express
https://towardsdatascience.com/a-walk-through-of-the-gapminder-tools-using-plotly-express-a12275bde5d0
8
1,763
[ 0.0249307993799448, 0.023796692490577698, -0.01605159603059292, 0.018136896193027496, -0.003350757760927081, 0.0026959103997796774, -0.0012713221367448568, 0.023536939173936844, 0.0158295389264822, -0.029989046975970268, -0.019506562501192093, 0.04703680798411369, -0.03838304430246353, -0....
Towards Data Science
179
0
Send Stock Data to Your Phone in Seconds with Python!
https://towardsdatascience.com/send-stock-data-to-your-phone-in-seconds-with-python-39759c085052
3
1,764
[ 0.0004814204585272819, 0.025438997894525528, -0.008274967782199383, 0.01877385936677456, 0.017730914056301117, -0.012622685171663761, 0.00598180154338479, -0.02135351672768593, 0.005131190177053213, -0.019546372815966606, -0.04458429664373398, 0.03559104725718498, -0.044976502656936646, -0...
Towards Data Science
3
0
Homomorphic Encryption intro: Part 2: HE landscape and CKKS
https://towardsdatascience.com/homomorphic-encryption-intro-part-2-he-landscape-and-ckks-8b32ba5b04dd
5
1,765
[ 0.014547600410878658, -0.0013883390929549932, 0.004541311413049698, 0.009352082386612892, -0.012479884549975395, -0.024670539423823357, 0.03165017068386078, 0.014053945429623127, -0.026357222348451614, -0.029139148071408272, 0.02584000863134861, 0.01472105085849762, 0.04389356076717377, -0...
Towards Data Science
8
0
Is Deep Learning hitting the wall?
https://towardsdatascience.com/is-deep-learning-hitting-the-wall-d2f560419daf
14
1,766
[ 0.018602553755044937, 0.026429126039147377, -0.01440687756985426, 0.00038903087261132896, -0.01542945671826601, -0.016896869987249374, 0.028516270220279694, 0.008567297831177711, 0.004132783971726894, -0.06698805838823318, -0.039917200803756714, 0.012446830980479717, 0.006133525166660547, ...
Towards Data Science
10
0
Personalised restaurant recommendations using FunkSVD
https://towardsdatascience.com/personalised-restaurant-recommendations-using-funksvd-3beff200b01c
7
1,767
[ -0.002346085850149393, -0.023853110149502754, -0.00004168081431998871, 0.031451623886823654, 0.0035208261106163263, -0.011892611160874367, -0.0039002145640552044, -0.02025751955807209, -0.0016498493496328592, -0.03943764045834541, -0.002750534564256668, 0.032038360834121704, 0.00900678802281...
Towards Data Science
9
0
Picking the right tool for geospatial data enrichment (part 2)
https://towardsdatascience.com/picking-the-right-tool-for-geospatial-data-enrichment-part-2-6417e97db394
9
1,768
[ 0.026010585948824883, -0.0001726901828078553, -0.004621479660272598, 0.04107051342725754, 0.039237599819898605, 0.01977670006453991, 0.012774481438100338, -0.05174434185028076, 0.0048811836168169975, -0.04783916845917702, 0.019413389265537262, 0.03681390732526779, 0.01572462171316147, -0.0...
Towards Data Science
152
2
How to tell if your model is over-fit using unlabeled data
https://towardsdatascience.com/how-to-tell-if-your-model-is-over-fit-using-unlabeled-data-4a5bddabc452
7
1,769
[ -0.03279479965567589, -0.0608171671628952, 0.020391780883073807, 0.015473267994821072, -0.030838370323181152, 0.014953427948057652, 0.007516966201364994, -0.023632429540157318, -0.02721032314002514, -0.03991008549928665, -0.002843603491783142, 0.03429148346185684, -0.03866440802812576, 0.0...
Towards Data Science
17
0
Regularization with Ridge, Lasso, and Elastic Net Regressions
https://towardsdatascience.com/what-is-regularization-and-how-do-i-use-it-f7008b5a68c6
10
1,770
[ 0.008921663276851177, -0.031239058822393417, -0.015089195221662521, 0.033937886357307434, -0.002923649037256837, -0.0188797228038311, -0.015183649957180023, -0.013832801021635532, -0.004220896400511265, -0.04164209961891174, 0.006236040499061346, 0.0412973128259182, -0.0071704029105603695, ...
Towards Data Science
12
0
Picking the right tool for geospatial data enrichment (part 1)
https://towardsdatascience.com/picking-the-right-tool-for-geospatial-data-enrichment-part-1-59a5842c55ca
5
1,771
[ -0.009321402758359909, -0.023636912927031517, -0.025921711698174477, 0.008483863435685635, 0.01087541226297617, 0.007709342986345291, -0.017569519579410553, -0.006498998496681452, -0.04225313663482666, -0.034048013389110565, 0.0017133256187662482, 0.04352378845214844, -0.02546335570514202, ...
Towards Data Science
19
1
Do Decision Trees need Feature Scaling?
https://towardsdatascience.com/do-decision-trees-need-feature-scaling-97809eaa60c6
3
1,772
[ 0.03263486549258232, 0.007351655047386885, -0.021754944697022438, 0.05611623078584671, 0.02257526107132435, -0.03696635738015175, -0.008630585856735706, 0.010866058059036732, -0.014609073288738728, -0.015297030098736286, -0.006792983040213585, 0.02077735774219036, -0.019901173189282417, 0....
Towards Data Science
7
0
Why do we need Privacy-Preserving Machine Learning?
https://towardsdatascience.com/why-do-we-need-privacy-preserving-machine-learning-7480ddf9f114
5
1,773
[ -0.01822035387158394, -0.013878915458917618, 0.007063502445816994, 0.013274640776216984, -0.007589012384414673, 0.061308931559324265, -0.0017559867119416595, 0.0017236800631508231, -0.0034362112637609243, -0.026785412803292274, 0.003716657403856516, 0.026003878563642502, 0.010552143678069115...
Towards Data Science
23
0
Prediction on Customer Churn with Mobile App Behavior Data
https://towardsdatascience.com/prediction-on-customer-churn-with-mobile-app-behavior-data-bbce8de2802f
5
1,774
[ -0.01211391668766737, -0.019542617723345757, -0.025275181978940964, 0.03807821869850159, -0.00667486060410738, 0.029786033555865288, 0.0006937910220585763, -0.03073074482381344, -0.03045433945953846, -0.029999354854226112, -0.01054034661501646, 0.026883171871304512, -0.021770145744085312, ...
Towards Data Science
21
0
Random Forest for prediction
https://towardsdatascience.com/random-forest-ca80e56224c1
6
1,775
[ -0.010628152638673782, 0.02333151176571846, -0.0005948251346126199, 0.01699657365679741, 0.02251679077744484, 0.01567501574754715, 0.02053214982151985, -0.003364604664966464, 0.0024258680641651154, -0.05516195297241211, -0.03832094743847847, 0.022663718089461327, 0.007295787334442139, -0.0...
Towards Data Science
12
0
Exploratory Data Analysis on Mobile App Behavior Data
https://towardsdatascience.com/exploratory-data-analysis-on-mobile-app-behavior-data-2777fc937973
5
1,776
[ 0.01383867859840393, -0.01613309606909752, 0.019971095025539398, 0.007638566195964813, -0.028836077079176903, 0.007096308283507824, -0.020949535071849823, -0.02858569845557213, -0.019794883206486702, -0.06336955726146698, 0.016914162784814835, 0.026598423719406128, -0.042753249406814575, 0...
Towards Data Science
2
0
Using Custom Building Blocks in TensorFlow 2.0
https://towardsdatascience.com/using-custom-building-blocks-in-tensorflow-2-0-550b88eb7aa2
3
1,777
[ 0.01479326281696558, 0.04636521264910698, -0.02462492324411869, 0.0315866619348526, 0.008212738670408726, 0.028720885515213013, 0.01662401668727398, 0.000299967301543802, 0.014460134319961071, -0.046070992946624756, -0.010264817625284195, 0.053602516651153564, 0.014115077443420887, 0.01183...
Towards Data Science
41
0
The Hidden Costs of Low Quality Word Embeddings
https://towardsdatascience.com/the-hidden-costs-of-low-quality-word-embeddings-b05f38c7e095
6
1,778
[ 0.0033200334291905165, 0.04320622608065605, 0.02033955603837967, 0.03032623790204525, 0.031347379088401794, -0.008701310493052006, -0.001320224953815341, -0.046420492231845856, 0.027532430365681648, 0.011717691086232662, 0.00613230699673295, 0.06225160136818886, -0.010095300152897835, -0.0...
Towards Data Science
0
0
Lovecraft with Natural Language Processing — Part 4: Latent Semantic Analysis
https://towardsdatascience.com/lovecraft-with-natural-language-processing-part-4-latent-semantic-analysis-70aa2fa2161b
8
1,779
[ -0.033732008188962936, 0.0018451266223564744, 0.020331060513854027, 0.033482931554317474, 0.014906324446201324, 0.00041595069342292845, -0.007647526450455189, -0.009045769460499287, 0.003439650870859623, -0.030385136604309082, -0.01876205950975418, 0.044529397040605545, -0.03831928223371506,...
Towards Data Science
8
0
Compute the Incomputable | How SVI and ELBO work
https://towardsdatascience.com/compute-the-incomputable-how-svi-and-elbo-work-505ce0868fdd
8
1,780
[ 0.009401016868650913, 0.0014153325464576483, 0.009501127526164055, 0.04441619664430618, 0.005762343294918537, 0.07488634437322617, 0.012498375028371811, 0.006814019288867712, -0.0025392272509634495, -0.0747673511505127, 0.0072468859143555164, 0.010479223914444447, -0.024544773623347282, -0...
Towards Data Science
53
0
10 Ways AI Improves Distribution and the Supply Chain
https://towardsdatascience.com/10-ways-ai-improves-distribution-and-the-supply-chain-bbd2dc600965
6
1,781
[ 0.020158767700195312, -0.0031688103917986155, -0.009182577952742577, 0.04835787042975426, 0.018922729417681694, 0.016359953209757805, -0.01289251260459423, -0.010109823197126389, -0.0003181084175594151, -0.031000306829810143, -0.02120113931596279, 0.042010772973299026, -0.023121388629078865,...
Towards Data Science
36
0
AI in Industry: Why you should synchronize features in Time-Series
https://towardsdatascience.com/ai-in-industry-why-you-should-synchronize-features-in-time-series-f8a2e831f87
5
1,782
[ 0.0022474739234894514, -0.014103027060627937, -0.04860277473926544, 0.05224292725324631, 0.012024376541376114, -0.004407182335853577, -0.035123955458402634, -0.01854751631617546, -0.015321759507060051, -0.0744132325053215, -0.021963030099868774, 0.06949132680892944, -0.007379237562417984, ...
Towards Data Science
6
0
Machine Learning for Scientific Waste Management
https://towardsdatascience.com/machine-learning-for-scientific-waste-management-a27e7c561d64
8
1,783
[ -0.01000277604907751, -0.007520831655710936, -0.038204267621040344, 0.009460492059588432, 0.0033618086017668247, 0.03681151568889618, -0.0018917324487119913, -0.061099231243133545, 0.024188131093978882, -0.060800258070230484, -0.013214527629315853, 0.022834859788417816, -0.00901006069034338,...
Towards Data Science
7
0
Targeted Estimation of Heterogeneous Treatment Effect in Observational Survival Analysis
https://towardsdatascience.com/targeted-estimation-of-heterogeneous-treatment-effect-in-observational-survival-analysis-e61c701c1316
4
1,784
[ -0.017253512516617775, -0.006230867002159357, 0.013747911900281906, 0.0111696133390069, -0.025849683210253716, -0.013593995943665504, -0.026815088465809822, -0.003974364139139652, -0.02184836007654667, -0.05501263961195946, -0.0027360194362699986, 0.016559593379497528, -0.03126533329486847, ...
Towards Data Science
14
0
Confusion Matrix is not so confusing
https://towardsdatascience.com/confusion-matrix-is-not-so-confusing-46cf4bd4ded
3
1,785
[ 0.04906056448817253, -0.0065830848179757595, 0.026242639869451523, 0.05320947617292404, 0.004587701056152582, -0.027979135513305664, -0.011646018363535404, 0.0006301996763795614, -0.028991853818297386, -0.01176638063043356, -0.011800113134086132, 0.04336733743548393, -0.013436314649879932, ...
Towards Data Science
2
1
Television and data science: it’s complicated
https://towardsdatascience.com/television-and-data-science-its-complicated-2c6f7d62c638
7
1,786
[ 0.025060808286070824, 0.04002465680241585, -0.005458302330225706, 0.0068835546262562275, 0.0102224200963974, 0.00793036911636591, -0.013718163594603539, -0.027521377429366112, -0.041464921087026596, -0.021367887035012245, 0.025074345991015434, 0.008948424831032753, 0.01063028909265995, 0.0...
Towards Data Science
45
0
How do I stack up?
https://towardsdatascience.com/how-do-i-stack-up-9e49a18ba60b
6
1,787
[ 0.05198885500431061, -0.004010031931102276, -0.013468052260577679, 0.010690691880881786, 0.022669542580842972, -0.01605108380317688, -0.01667935401201248, 0.039683401584625244, -0.03156464546918869, 0.021768666803836823, 0.036481861025094986, 0.025362543761730194, 0.020084736868739128, 0.0...
Towards Data Science
13
0
So, what’s your story, then?
https://towardsdatascience.com/so-whats-your-story-then-5fc8aedb42f2
17
1,788
[ -0.014875411055982113, -0.0074976482428610325, 0.05538516864180565, -0.004176682326942682, -0.015889223664999008, 0.029422873631119728, -0.013255196623504162, -0.0027988150250166655, -0.037055063992738724, -0.060812808573246, -0.00338630354963243, 0.013219937682151794, 0.011811369098722935, ...
Towards Data Science
1
0
Solar Image Analysis: 5 Billion Rows In a Matter of Milliseconds
https://towardsdatascience.com/solar-image-analysis-5-billion-rows-in-a-matter-of-milliseconds-cd5276161087
3
1,789
[ 0.05302567780017853, -0.0011410863371565938, -0.007457595318555832, 0.025268036872148514, 0.021854154765605927, -0.0067258006893098354, 0.00911074411123991, 0.039671819657087326, 0.007193570490926504, -0.07046325504779816, -0.0041731540113687515, 0.029070334509015083, 0.0344587080180645, -...
Towards Data Science
0
0
For your next project I recommend...
https://towardsdatascience.com/for-your-next-project-i-recommend-ab89cad53dec
6
1,790
[ -0.002889646217226982, -0.053820982575416565, 0.02733643725514412, 0.009206878952682018, -0.023071225732564926, -0.013533229939639568, 0.039240360260009766, 0.049990493804216385, -0.051476895809173584, -0.027930693700909615, -0.028520936146378517, 0.0437089167535305, -0.010979301296174526, ...
Towards Data Science
0
0
When SUPER comes BIG.
https://towardsdatascience.com/when-super-comes-big-ebcdf60a8d61
5
1,791
[ 0.022977709770202637, 0.011820758692920208, 0.017449500039219856, 0.0509481318295002, -0.008496216498315334, 0.03837823495268822, 0.021779904142022133, 0.016620269045233727, -0.02191646583378315, -0.02119683474302292, 0.005155283026397228, -0.007945029996335506, 0.05431867018342018, -0.003...
Startup Grind
125
1
Google Launches Accelerator in North America to Support Women Founders
https://medium.com/startup-grind/google-launches-accelerator-in-north-america-to-support-women-founders-a2e6270b3c29
2
1,792
[ 0.03187263756990433, 0.005049111321568489, -0.008734384551644325, 0.022595098242163658, 0.013903526589274406, -0.021268585696816444, 0.024717457592487335, -0.014637943357229233, 0.007999971508979797, -0.06699007004499435, -0.0037703386042267084, 0.03212340921163559, 0.021893087774515152, -...
Better Humans
404
1
Steps to Radically Improve How You Consume Content
https://medium.com/better-humans/steps-to-radically-improve-how-you-consume-content-7aaf5f11da4f
10
1,793
[ -0.02893400937318802, 0.011504570953547955, -0.011929706670343876, 0.03429171442985535, 0.004694479517638683, 0.022355958819389343, 0.003034699009731412, 0.02278152108192444, -0.007623305544257164, -0.027472782880067825, -0.013164088129997253, 0.020973743870854378, 0.006184967700392008, -0...
UX Collective
2,400
5
13 of My Favorite UI/UX Goodies
https://uxdesign.cc/13-of-my-favorite-ui-ux-goodies-ae4b8b0c133e
6
1,794
[ 0.04685206338763237, 0.018240539357066154, -0.02323058806359768, 0.0007092863670550287, -0.010614733211696148, 0.009708859026432037, 0.007135039195418358, 0.009222500957548618, -0.04005539417266846, -0.032689064741134644, 0.020922968164086342, -0.0017449326114729047, -0.01576252467930317, ...
UX Collective
1,500
7
Why should you start drawing today?
https://uxdesign.cc/why-should-you-start-drawing-today-6e7fb8956bd7
13
1,795
[ 0.012570535764098167, 0.018048644065856934, 0.0027881779242306948, -0.0175583865493536, -0.02332913875579834, -0.023506296798586845, 0.00825381837785244, -0.05193979665637016, 0.010850328952074051, -0.04546818509697914, -0.0071077002212405205, 0.030709318816661835, 0.004495755769312382, -0...
UX Collective
371
0
A comprehensive guide to notification design
https://uxdesign.cc/a-comprehensive-guide-to-notification-design-2fff67f08b7a
10
1,796
[ 0.05674538016319275, 0.011026143096387386, -0.007207314018160105, -0.001206273678690195, 0.0168867576867342, 0.007069640327244997, -0.0023698799777776003, 0.019133904948830605, -0.016522018238902092, 0.0013141123345121741, -0.0014486610889434814, 0.03396209329366684, 0.007258381694555283, ...
UX Collective
198
2
Why I loved working as a UX consultant (and why I choose not to do it anymore)
https://uxdesign.cc/why-i-loved-working-as-a-ux-consultant-and-why-i-choose-not-to-do-it-anymore-d60bda4080c8
5
1,797
[ 0.009861315600574017, 0.007678831461817026, 0.02580462396144867, 0.035484056919813156, -0.011135809123516083, -0.027413858100771904, 0.0323774628341198, -0.017462829127907753, -0.0029322123154997826, -0.022085262462496758, -0.006183628924190998, 0.03970358893275261, 0.00962210912257433, -0...
UX Collective
249
5
3 tips junior designers can apply towards creating stronger case studies
https://uxdesign.cc/3-tips-junior-ux-designers-can-apply-towards-creating-stronger-case-studies-7b2722416f12
6
1,798
[ 0.015087158419191837, 0.02305617555975914, 0.0027786714490503073, 0.017925210297107697, 0.009901806712150574, -0.00850323773920536, 0.011340581811964512, 0.003706098534166813, -0.025354912504553795, -0.058367811143398285, 0.000488896039314568, 0.032875582575798035, 0.0008576210238970816, 0...
UX Collective
163
0
Why Great Conversationalists make Great Designers — a framework for System<>User Communication
https://uxdesign.cc/why-great-conversationalists-make-great-designers-c845039b9ab5
15
1,799
[ 0.02549712546169758, -0.0016908986726775765, -0.018719011917710304, 0.024334978312253952, 0.0008992759976536036, -0.0010216893861070275, 0.0009304560371674597, -0.020713144913315773, -0.006138044875115156, -0.04613441228866577, -0.0034437698777765036, 0.023608924821019173, 0.0020397638436406...
UX Collective
312
2
How to design for accessibility in digital products?
https://uxdesign.cc/how-to-design-for-accessibility-in-digital-products-d9e32e4403b7
10