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
3,300
[ -0.0251026414334774, 0.00020421840599738061, -0.012206457555294037, -0.006470267195254564, 0.010326826944947243, -0.014015516266226768, 0.029793309047818184, 0.023277096450328827, -0.014775710180401802, -0.006921060848981142, -0.013346784748136997, 0.060009922832250595, -0.033752262592315674...
Towards Data Science
192
2
8 Advanced Python Logging Features that You Shouldn’t Miss
https://towardsdatascience.com/8-advanced-python-logging-features-that-you-shouldnt-miss-a68a5ef1b62d
10
3,301
[ 0.009467290714383125, -0.0030999660957604647, 0.023875445127487183, 0.061124835163354874, 0.01943434402346611, -0.005023467820137739, -0.007258223835378885, -0.009497951716184616, -0.015003667213022709, -0.03728456050157547, 0.0173922348767519, 0.015297419391572475, -0.014335441403090954, ...
Towards Data Science
69
0
What is a Data Mesh — and How Not to Mesh it Up
https://towardsdatascience.com/what-is-a-data-mesh-and-how-not-to-mesh-it-up-210710bb41e0
9
3,302
[ -0.005845625884830952, 0.012591804377734661, -0.000432119908509776, -0.016468234360218048, -0.02475891076028347, -0.005310403183102608, -0.00011554765660548583, 0.045066043734550476, -0.02851942740380764, -0.0012100631138309836, 0.03848714381456375, 0.027596088126301765, -0.02348410338163376...
Towards Data Science
116
2
Did Liverpool Deserve to Win the Premier League?
https://towardsdatascience.com/did-liverpool-deserve-to-win-the-premier-league-eda7a4e1b9ca
8
3,303
[ 0.02849150262773037, -0.005994439125061035, 0.00781911239027977, 0.028135521337389946, -0.018510477617383003, -0.024843446910381317, -0.011909591034054756, 0.033026643097400665, -0.021300148218870163, -0.04331651329994202, -0.006830803584307432, 0.04349956288933754, -0.005835479591041803, ...
Towards Data Science
174
1
Get started with BigQuery and dbt, the easy way
https://towardsdatascience.com/get-started-with-bigquery-and-dbt-the-easy-way-36b9d9735e35
5
3,304
[ 0.04649060219526291, 0.008060220628976822, -0.016918828710913658, 0.005314113572239876, 0.045759543776512146, -0.020083008334040642, 0.00018065233598463237, 0.007467816583812237, 0.01569237746298313, -0.03671545162796974, 0.017815543338656425, 0.01876031793653965, 0.03751854598522186, -0.0...
Towards Data Science
174
2
What I learned from being An AI Startup Co-Founder and CTO
https://towardsdatascience.com/what-i-learned-from-being-an-ai-startup-co-founder-and-cto-285854f3a1ae
12
3,305
[ -0.004270641598850489, 0.004440676420927048, 0.00533565878868103, 0.03031703643500805, 0.0006731283501721919, -0.03462433069944382, 0.02975490689277649, -0.017891254276037216, 0.01812312938272953, -0.035220496356487274, 0.0028778722044080496, 0.01826334185898304, 0.02332538738846779, -0.04...
Towards Data Science
110
1
A Beginner’s Guide to Accessing Data with Web APIs (using Python)
https://towardsdatascience.com/a-beginners-guide-to-accessing-data-with-web-apis-using-python-23d262181467
9
3,306
[ 0.04666617140173912, -0.017618022859096527, -0.03891409933567047, 0.05379483476281166, 0.016813412308692932, -0.01963060535490513, 0.019797416403889656, -0.013869858346879482, 0.02092347852885723, 0.005688429344445467, 0.007076621521264315, 0.02666820026934147, -0.005869799293577671, -0.01...
Towards Data Science
81
1
How NOT to Build a Data Science Project
https://towardsdatascience.com/how-not-to-build-a-data-science-project-baa494d98da4
7
3,307
[ -0.061490096151828766, -0.00683580944314599, 0.059554845094680786, 0.017319895327091217, -0.05346062034368515, 0.01838655024766922, -0.001531017362140119, -0.040889672935009, 0.008369110524654388, -0.024946581572294235, 0.002923361724242568, 0.04025768116116524, -0.031322892755270004, 0.00...
Towards Data Science
96
0
GPT-3, OpenAI’s Revolution
https://towardsdatascience.com/gpt-3-openais-revolution-f549bf3d4b25
3
3,308
[ 0.006948250811547041, 0.0008321847999468446, -0.03322627395391464, 0.017023809254169464, -0.00841522216796875, 0.011393357999622822, 0.035718128085136414, -0.03116687200963497, 0.023073947057127953, -0.021693823859095573, -0.007388627622276545, 0.010912583209574223, 0.024512838572263718, -...
Towards Data Science
78
2
Uncovering the Magic: interpreting Machine Learning black-box models
https://towardsdatascience.com/uncovering-the-magic-interpreting-machine-learning-black-box-models-3154fb8ed01a
15
3,309
[ -0.002099359640851617, -0.00874475110322237, 0.027033274993300438, 0.019275715574622154, 0.006021462846547365, -0.0077090137638151646, -0.02374168485403061, -0.02511844038963318, 0.02704799361526966, -0.009687903337180614, -0.00031893933191895485, 0.024804826825857162, 0.027687620371580124, ...
Towards Data Science
43
0
The Lyft Data Scientist Interview
https://towardsdatascience.com/the-lyft-data-scientist-interview-a935700c3f8e
7
3,310
[ 0.008506563492119312, -0.008898387663066387, 0.03705841302871704, 0.024982063099741936, -0.044628143310546875, 0.004933156538754702, -0.0006800983101129532, -0.04434579238295555, 0.01864350400865078, -0.03812358155846596, -0.001003809506073594, 0.01654782146215439, -0.0342966765165329, -0....
Towards Data Science
144
0
Accelerating Spark 3.0 Google DataProc Project with NVIDIA GPUs in 6 simple steps
https://towardsdatascience.com/accelerating-spark-3-0-google-dataproc-project-with-nvidia-gpus-in-6-simple-steps-ab8c26d38957
8
3,311
[ -0.006258436944335699, -0.026240024715662003, 0.023235833272337914, 0.01318899355828762, -0.030988262966275215, -0.0031690658070147038, -0.009958514012396336, -0.03305194899439812, -0.006980787497013807, -0.0327882245182991, -0.018340766429901123, 0.007257687393575907, -0.014412042684853077,...
Towards Data Science
176
1
Replacing PowerPoint with R
https://towardsdatascience.com/replacing-powerpoint-with-r-b96661928ed4
5
3,312
[ 0.0009589781984686852, 0.006208919454365969, -0.0006760748219676316, 0.02803106978535652, 0.010365747846662998, 0.00035388139076530933, 0.0019177529029548168, -0.03788205608725548, -0.002177890855818987, -0.02886711247265339, -0.029024509713053703, 0.024400619789958, -0.008181807585060596, ...
Towards Data Science
508
0
Deploying a Trained ML Model using Flask
https://towardsdatascience.com/deploying-a-trained-ml-model-using-flask-541520b3cbe9
8
3,313
[ -0.01171982940286398, -0.02540510706603527, 0.022508153691887856, 0.023616209626197815, 0.013238022103905678, 0.019802868366241455, 0.0153093496337533, 0.01474504079669714, -0.034743838012218475, -0.0615401454269886, 0.0025849896483123302, 0.015987107530236244, -0.0026911585591733456, 0.00...
Towards Data Science
77
0
Time Series Forecasting for Beginners
https://towardsdatascience.com/time-series-essentials-fe6727ab6a94
17
3,314
[ 0.0005626401980407536, 0.0004969330038875341, 0.0030794828198850155, 0.04546219855546951, 0.0387423150241375, -0.01292606070637703, 0.0008583527524024248, -0.03408962860703468, 0.005871117580682039, -0.08773986995220184, 0.01860804297029972, -0.002915730234235525, 0.015233746729791164, -0....
Towards Data Science
66
0
How to create maps in Plotly with non-US locations
https://towardsdatascience.com/how-to-create-maps-in-plotly-with-non-us-locations-ca974c3bc997
5
3,315
[ 0.038324300199747086, 0.00027115363627672195, -0.014880320988595486, 0.05318392440676689, -0.008216671645641327, -0.012155422009527683, 0.020081371068954468, 0.02418264001607895, -0.03272546827793121, -0.021726854145526886, -0.022652411833405495, 0.027404338121414185, -0.02172665297985077, ...
Towards Data Science
80
0
Telling stories with Google Trends using Pytrends in Python
https://towardsdatascience.com/telling-stories-with-google-trends-using-pytrends-in-python-a11e5b8a177
5
3,316
[ 0.035779256373643875, -0.003919229377061129, -0.011625906452536583, 0.03612209111452103, -0.006187121383845806, 0.010636509396135807, 0.015659593045711517, -0.013369293883442879, -0.013706142082810402, -0.017157645896077156, 0.022602953016757965, 0.014974359422922134, -0.015617764554917812, ...
Towards Data Science
62
0
What if data visualized itself?
https://towardsdatascience.com/what-if-data-visualized-itself-fd2e5dc1d744
8
3,317
[ 0.01862165704369545, -0.02892819419503212, 0.0031316797249019146, 0.04481026902794838, 0.019976560026407242, -0.02123515121638775, 0.017545413225889206, 0.002413005568087101, 0.028664764016866684, -0.0818011611700058, 0.010063385590910912, 0.046273160725831985, 0.0068948641419410706, -0.04...
Towards Data Science
93
0
How to use Streamlit to deploy your ML models wrapped in beautiful web apps
https://towardsdatascience.com/how-to-use-streamlit-to-deploy-your-ml-models-wrapped-in-beautiful-web-apps-66e07c3dd525
7
3,318
[ 0.056256722658872604, 0.06183650344610214, -0.010522301308810711, 0.00961433257907629, -0.0008579352870583534, -0.009547456167638302, -0.0057343170046806335, 0.000999054522253573, -0.01458172407001257, 0.008732610382139683, -0.017676452174782753, 0.05780554562807083, -0.013366776518523693, ...
Towards Data Science
1,100
0
Mining Telecom Product Recommendations
https://towardsdatascience.com/mining-telecom-product-recommendations-cfe455f3e563
7
3,319
[ 0.06248152256011963, -0.03513451665639877, 0.01034839078783989, 0.05718647688627243, -0.008303945884108543, -0.03074435330927372, -0.006495131645351648, 0.024943040683865547, -0.008930939249694347, -0.011684020981192589, -0.0010625196155160666, 0.029291734099388123, -0.011592111550271511, ...
Towards Data Science
4
0
Hot to Build Your Own Streaming Service like Netflix
https://towardsdatascience.com/hot-to-build-your-own-streaming-service-like-netflix-5d5ef02cb6cf
11
3,320
[ -0.04158378764986992, -0.006728596985340118, 0.015127391554415226, 0.06317257136106491, -0.023462871089577675, 0.0410955436527729, 0.0025778806302696466, -0.027772482484579086, -0.014908595941960812, -0.0587482787668705, -0.004922913853079081, 0.012802431359887123, -0.04924364760518074, 0....
Towards Data Science
38
0
Hyperparameters of Decision Trees Explained with Visualizations
https://towardsdatascience.com/hyperparameters-of-decision-trees-explained-with-visualizations-1a6ef2f67edf
6
3,321
[ 0.04024944454431534, 0.0057128919288516045, -0.003572429297491908, 0.05990420654416084, 0.03584212809801102, -0.0013583776308223605, 0.040278561413288116, 0.008426764979958534, -0.023111354559659958, -0.014556694775819778, 0.013895446434617043, 0.05072182044386864, 0.036433205008506775, -0...
Towards Data Science
104
0
Five Skills They Don’t Teach at Data Science Bootcamp (that will get you hired!)
https://towardsdatascience.com/five-skills-they-dont-teach-at-data-science-bootcamp-that-will-get-you-hired-9023e5428b8e
6
3,322
[ 0.021167274564504623, 0.00738134840503335, 0.037811294198036194, 0.017063066363334656, -0.012725792825222015, -0.009051385335624218, 0.0137029392644763, -0.005603371653705835, -0.019137362018227577, -0.042267318814992905, -0.04259059578180313, -0.010918975807726383, -0.024430876597762108, ...
Towards Data Science
8
0
Waffle Charts Using Python’s Matplotlib
https://towardsdatascience.com/waffle-charts-using-pythons-matplotlib-94252689a701
4
3,323
[ 0.03608420118689537, 0.020237183198332787, 0.04227698594331741, -0.0033521782606840134, 0.029092738404870033, -0.029421312734484673, -0.01595984771847725, 0.01023776177316904, -0.018232576549053192, -0.020107639953494072, -0.0000073620094553916715, 0.022688355296850204, -0.03701949492096901,...
Towards Data Science
64
0
Why do we need LSTM
https://towardsdatascience.com/why-do-we-need-lstm-a343836ec4bc
6
3,324
[ -0.005696611013263464, -0.03745618090033531, -0.004314200486987829, 0.0101799750700593, -0.024283550679683685, 0.049092184752225876, -0.00868319347500801, -0.02708246372640133, 0.0026013681199401617, -0.04778618365526199, -0.007361200638115406, 0.06230740249156952, -0.03605656698346138, -0...
Towards Data Science
165
0
Demand Forecasting using FB-Prophet
https://towardsdatascience.com/demand-forecasting-using-fb-prophet-e3d1444b9dd8
9
3,325
[ 0.010016321204602718, -0.009166114032268524, -0.0254120584577322, 0.035368241369724274, -0.013406294398009777, 0.0046001579612493515, 0.033358488231897354, -0.03372823819518089, 0.004710052628070116, -0.05587286502122879, -0.002340574748814106, 0.05446833744645119, -0.02085513062775135, -0...
Towards Data Science
13
0
Improve Your Model with Missing Data | Imputation with NumPyro
https://towardsdatascience.com/improve-your-model-with-missing-data-imputation-with-numpyro-dcb3c3376eff
9
3,326
[ -0.017809825018048286, -0.009967713616788387, -0.020635049790143967, 0.032727230340242386, 0.015235014259815216, 0.020507963374257088, -0.04649653658270836, -0.021524161100387573, 0.012266071513295174, -0.06147998571395874, -0.024437831714749336, 0.049173709005117416, 0.019953696057200432, ...
Towards Data Science
925
0
Machine learning and deep learning in one liner using Libra
https://towardsdatascience.com/machine-learning-and-deep-learning-in-one-liner-using-libra-7eef4023618f
8
3,327
[ -0.023637862876057625, -0.01218670979142189, -0.03506425768136978, 0.013291223905980587, -0.0026024982798844576, -0.0028218647930771112, 0.011190195567905903, -0.014356972649693489, 0.025433793663978577, -0.016727015376091003, -0.002562927082180977, -0.01447442639619112, 0.02436288632452488,...
Towards Data Science
3
0
A Practical Introduction to Early Stopping in Machine Learning
https://towardsdatascience.com/a-practical-introduction-to-early-stopping-in-machine-learning-550ac88bc8fd
8
3,328
[ -0.0037802772130817175, 0.022207481786608696, 0.043099649250507355, 0.02274990826845169, -0.022648431360721588, -0.02225622348487377, 0.03790803998708725, -0.007299791555851698, -0.009566375985741615, -0.03597329184412956, 0.021326173096895218, 0.02870570868253708, -0.021343061700463295, -...
Towards Data Science
11
0
Why Is This Chart Bad? The Ultimate Guide to Data Visualization Evaluation using GoDVE (Grammar of Data Visualization...
https://towardsdatascience.com/why-is-this-chart-bad-5f16da298afa
12
3,329
[ 0.02655576914548874, -0.040527284145355225, 0.025339286774396896, 0.005598137620836496, -0.010967551730573177, 0.008023553527891636, -0.018695177510380745, 0.022762775421142578, -0.028183406218886375, -0.04795436933636665, -0.0050487220287323, -0.0036888739559799433, -0.03037210740149021, ...
Towards Data Science
2
0
AlexNet
https://towardsdatascience.com/alexnet-8b05c5eb88d4
11
3,330
[ 0.00418957369402051, 0.007271129637956619, 0.019063813611865044, 0.019066793844103813, -0.02196764573454857, 0.001409062184393406, 0.014165916480123997, -0.0003200476639904082, 0.02457238920032978, -0.040825046598911285, -0.014783579856157303, 0.020298846065998077, -0.02329573966562748, -0...
Towards Data Science
19
0
I created a Deep Learning powered Discord Bot to react with smily 😎
https://towardsdatascience.com/i-created-a-deep-learning-powered-discord-bot-to-react-with-smily-fec831d30d1b
6
3,331
[ 0.0012914930703118443, -0.0018576536094769835, 0.01083910372108221, 0.010446209460496902, 0.02580098621547222, -0.01145165879279375, -0.062009941786527634, -0.008851611986756325, 0.010266142897307873, 0.00337569834664464, -0.023712946102023125, 0.05754672363400459, 0.020659461617469788, 0....
Towards Data Science
5
0
Stock Fundamental Analysis: EDA of SEC’s quarterly data summary
https://towardsdatascience.com/stock-fundamental-analysis-eda-of-secs-quarterly-data-summary-455e62ff4817
13
3,332
[ -0.0235348641872406, -0.025609873235225677, -0.022410565987229347, 0.009232738986611366, 0.014699752442538738, -0.003306445898488164, 0.021589282900094986, -0.016277020797133446, -0.002821417758241296, -0.06029336899518967, -0.04028633236885071, 0.05372018739581108, 0.008195487782359123, -...
Towards Data Science
4
0
Natural Scene Recognition Using Deep Learning
https://towardsdatascience.com/natural-scene-recognition-using-deep-learning-91b6ba86bad5
3
3,333
[ 0.03179962560534477, 0.02205568179488182, -0.033086296170949936, 0.022654622793197632, 0.02337637171149254, -0.016619116067886353, 0.007533899508416653, -0.01704411953687668, -0.016602301970124245, -0.055110204964876175, -0.048931486904621124, 0.020067641511559486, 0.016394585371017456, -0...
Towards Data Science
26
3
Candidates Should Be Paid For Take-Home Coding Assignments
https://towardsdatascience.com/candidates-should-be-paid-for-take-home-coding-assignments-36967b51a32c
4
3,334
[ 0.037505414336919785, -0.004964099731296301, -0.0163832139223814, 0.028969600796699524, 0.004781375639140606, -0.00950074102729559, 0.011332486756145954, 0.026547037065029144, -0.009200180880725384, 0.019357828423380852, 0.010080142877995968, 0.029174111783504486, 0.0021750512532889843, -0...
Towards Data Science
8
0
“What’s that? Reinforcement Learning in the Real-world?”
https://towardsdatascience.com/whats-that-reinforcement-learning-in-the-real-world-942d5d735d8e
9
3,335
[ 0.02359725907444954, -0.0042778304778039455, -0.014171188697218895, 0.054557524621486664, 0.005656730383634567, 0.015772882848978043, -0.040566977113485336, 0.005960958544164896, -0.012927880510687828, -0.02700613997876644, -0.05147325247526169, 0.04457791894674301, -0.01745464839041233, -...
Towards Data Science
3
0
Data Whispering
https://towardsdatascience.com/data-whispering-eebb77a422da
11
3,336
[ 0.02867548167705536, 0.03727036342024803, 0.025056712329387665, 0.042764320969581604, 0.019240858033299446, 0.0017395532922819257, -0.004266744013875723, -0.019584912806749344, -0.0018040129216387868, 0.004110377747565508, 0.0015179056208580732, 0.07759847491979599, -0.026918144896626472, ...
Towards Data Science
15
0
The Three Things Only Your Data Science Team Can Tell You... and the One Thing Most Companies Do That’s Holding Them...
https://towardsdatascience.com/the-three-things-only-your-data-science-team-can-tell-you-and-the-one-thing-most-companies-do-1501521fc349
4
3,337
[ 0.028237858787178993, 0.0010512432781979442, 0.0143973957747221, 0.04627902805805206, 0.005004631355404854, 0.009168975055217743, 0.011750154197216034, 0.06802481412887573, -0.019114496186375618, -0.016535265371203423, -0.003863109042868018, 0.013685429468750954, -0.012018993496894836, 0.0...
Towards Data Science
83
0
Artificial Intelligence Might Just Get You Your Doppelganger
https://towardsdatascience.com/artificial-intelligence-might-just-get-you-your-doppelganger-6511be7a405b
8
3,338
[ 0.03639092668890953, -0.005565226543694735, -0.008419768884778023, 0.028642740100622177, 0.02657189406454563, 0.004805781412869692, 0.009586314670741558, -0.04055599495768547, 0.04747297242283821, -0.055783532559871674, 0.00893479399383068, 0.035685066133737564, 0.005602363031357527, -0.04...
Towards Data Science
13
0
How to build a Data Pipeline with Airflow
https://towardsdatascience.com/how-to-build-a-data-pipeline-with-airflow-f31473fa42cb
3
3,339
[ 0.014213714748620987, 0.007137707434594631, -0.0020695601124316454, 0.013759943656623363, 0.0023439135402441025, -0.024048171937465668, 0.011483101174235344, -0.005584170576184988, -0.013801198452711105, -0.043020885437726974, -0.03835620358586311, 0.04024389386177063, -0.015176793560385704,...
Towards Data Science
1
0
Anomaly detection with practical example
https://towardsdatascience.com/anomaly-detection-with-practical-example-d06b90f89caf
7
3,340
[ 0.029970629140734673, 0.014031419530510902, -0.02404649555683136, 0.03890137001872063, 0.0034643705002963543, 0.004452581517398357, -0.005613460671156645, -0.02470114827156067, -0.0077827852219343185, -0.04914408177137375, 0.017617054283618927, -0.0015626938547939062, -0.04243074357509613, ...
Towards Data Science
36
0
Using One Line of Code to Write to a Relational Database
https://towardsdatascience.com/using-just-one-line-of-code-to-write-to-a-relational-database-3ed08a643c5f
5
3,341
[ -0.013485364615917206, -0.03128691762685776, 0.029412303119897842, 0.02157287858426571, 0.005466002970933914, 0.0024852410424500704, -0.004936339799314737, -0.058931201696395874, -0.02091108448803425, -0.06258296966552734, -0.001163974986411631, 0.012059598229825497, 0.012299463152885437, ...
Towards Data Science
17
0
Spatial Data Solution for City Planning in Indonesia: Understanding The GeoDataFrame
https://towardsdatascience.com/spatial-data-solution-for-city-planning-in-indonesia-understanding-the-geodataframe-f50d58e6c9f2
9
3,342
[ 0.001094352686777711, -0.013901257887482643, -0.010522950440645218, 0.02666841447353363, -0.0384686104953289, 0.0080392025411129, -0.023995377123355865, -0.008864544332027435, -0.013513258658349514, -0.036543481051921844, -0.00007397338777082041, 0.024889402091503143, -0.006031440570950508, ...
Towards Data Science
12
0
The Emergence of Data Generalists
https://towardsdatascience.com/the-emergence-of-data-generalists-2e73fa1e722
3
3,343
[ 0.053028304129838943, 0.013707787729799747, -0.006937435362488031, 0.022377921268343925, -0.004563348833471537, -0.032145701348781586, 0.03646340221166611, 0.011068708263337612, -0.012809629552066326, -0.0669730082154274, 0.0032321724575012922, 0.0441121943295002, -0.023863572627305984, -0...
Towards Data Science
24
0
Let AI write your Blog — AutoBlog
https://towardsdatascience.com/let-ai-write-your-blog-autoblog-6c4ad840eecf
11
3,344
[ 0.008158720098435879, 0.016300922259688377, -0.0015794006176292896, 0.010122527368366718, 0.000002162933697036351, 0.013350766152143478, 0.0021273570600897074, -0.06919939070940018, 0.0044630770571529865, -0.034850411117076874, 0.019674118608236313, 0.0493023544549942, 0.011795667000114918, ...
Towards Data Science
3
0
How to Measure Stock Portfolio Performance using R
https://towardsdatascience.com/how-to-measure-stock-portfolio-performance-using-r-847c992195c2
7
3,345
[ -0.022809073328971863, -0.016456343233585358, 0.005646290257573128, 0.03088817000389099, -0.016294779255986214, 0.010593024082481861, -0.006526827812194824, 0.002207377227023244, -0.036299727857112885, -0.04367530345916748, -0.037690114229917526, 0.04431406781077385, -0.023174205794930458, ...
Towards Data Science
2
0
Regularization: Machine Learning
https://towardsdatascience.com/regularization-machine-learning-891e9a62c58d
11
3,346
[ -0.008694376796483994, 0.011186819523572922, -0.006516856607049704, 0.036358416080474854, -0.00008777504990575835, 0.0169304758310318, 0.006701846607029438, -0.023308342322707176, 0.006382836494594812, -0.04193582013249397, -0.015481681562960148, 0.015213635750114918, -0.021185552701354027, ...
Towards Data Science
2
0
Building a Deployable Jira Bug Classification Engine using Google AutoML
https://towardsdatascience.com/building-a-deployable-jira-bug-classification-engine-using-google-automl-a0497ad8c475
8
3,347
[ 0.017415741458535194, -0.02303631789982319, 0.040809664875268936, 0.0593276172876358, -0.011282453313469887, -0.011279158294200897, 0.011484550312161446, -0.005195395089685917, 0.0041693090461194515, -0.01049202773720026, 0.011404979042708874, 0.007672592997550964, -0.041870422661304474, -...
Towards Data Science
62
1
Syncing Data from Snowflake to DynamoDB
https://towardsdatascience.com/syncing-data-from-snowflake-to-dynamodb-e28363b6432
4
3,348
[ 0.02112680859863758, 0.013413685373961926, 0.01856256276369095, 0.0016938281478360295, -0.04026917368173599, 0.025023935362696648, 0.012587943114340305, 0.06479553133249283, -0.013044492341578007, -0.04086429253220558, -0.007145724259316921, -0.02566627599298954, -0.00018298062786925584, 0...
Towards Data Science
53
0
Geobinning Starbucks
https://towardsdatascience.com/geobinning-starbucks-88bc636f43c6
4
3,349
[ -0.00980028323829174, 0.04544752091169357, -0.00796933937817812, -0.022219501435756683, -0.03473757579922676, 0.011977657675743103, -0.017452972009778023, -0.04880745708942413, 0.0142153799533844, -0.03566247224807739, -0.01049735862761736, 0.025598540902137756, -0.03307625651359558, -0.00...
Towards Data Science
102
0
Predicting Air Pollution with Prophet on GCP
https://towardsdatascience.com/predicting-air-pollution-with-prophet-on-gcp-42ceb1625818
4
3,350
[ -0.012708413414657116, -0.013419672846794128, 0.02743709273636341, 0.01487314235419035, -0.036073993891477585, 0.0134468087926507, -0.03453614190220833, -0.023915687575936317, -0.010039067827165127, -0.07465695589780807, 0.0025273002684116364, 0.04417704418301582, -0.022213619202375412, -0...
Towards Data Science
21
0
Image Classifier using TensorFlow
https://towardsdatascience.com/image-classifier-using-tensorflow-a8506dc21d04
5
3,351
[ -0.029880862683057785, 0.009202942252159119, -0.04258406162261963, 0.039098843932151794, -0.0036895093508064747, 0.021719085052609444, -0.017695073038339615, -0.02844420075416565, -0.0028206082060933113, -0.0378161258995533, -0.0009042923338711262, 0.03673752769827843, -0.03222804516553879, ...
Towards Data Science
151
0
Handling imbalanced data using Geometric SMOTE
https://towardsdatascience.com/handling-imbalanced-data-using-geometric-smote-770b49d5c7b5
9
3,352
[ -0.04581346735358238, 0.015191561542451382, -0.0024491988588124514, -0.00012610264820978045, -0.0033568842336535454, 0.03990291804075241, -0.023769166320562363, -0.002515512052923441, -0.008321544155478477, -0.051210109144449234, -0.007368892896920443, -0.006917161867022514, -0.0216661486774...
Towards Data Science
1
0
Introduction To Epipolar Geometry
https://towardsdatascience.com/introduction-to-epipolar-geometry-1bbe6e505b81
7
3,353
[ -0.018878018483519554, -0.039499349892139435, -0.0003519869060255587, 0.02927839197218418, -0.029286863282322884, 0.03859522193670273, 0.0036290562711656094, -0.025317955762147903, -0.0027945986948907375, -0.02642638422548771, -0.008866746909916401, 0.0740126296877861, -0.033362969756126404,...
Towards Data Science
11
0
Simultaneous Continuous/Discrete Hyperparameter Tuning with Policy Gradients
https://towardsdatascience.com/simultaneous-continuous-discrete-hyperparameter-tuning-with-policy-gradients-4531d226d6e2
6
3,354
[ 0.04993000999093056, 0.03049231879413128, 0.007917094975709915, 0.02753804251551628, -0.008623934350907803, 0.039182569831609726, -0.03310368210077286, 0.041434723883867264, -0.06576259434223175, -0.03041894920170307, -0.056823357939720154, 0.006208722945302725, 0.004975959658622742, -0.00...
Towards Data Science
30
0
Space Science with Python — Ceres in the Sky
https://towardsdatascience.com/space-science-with-python-ceres-in-the-sky-fec20fee3f9d
8
3,355
[ 0.03422693535685539, 0.01885751634836197, -0.028049157932400703, 0.004640500992536545, -0.023746266961097717, -0.0005331541178748012, 0.0026685944758355618, -0.02078906074166298, -0.011640355922281742, -0.043965894728899, 0.03605451434850693, 0.013128205202519894, -0.004963754676282406, 0....
Towards Data Science
31
0
Thinking About Experimental Design
https://towardsdatascience.com/thinking-about-experimental-design-f7f3090c7b6d
5
3,356
[ -0.024042708799242973, -0.008716151118278503, -0.03756619617342949, 0.018060963600873947, -0.0127117820084095, -0.01565086841583252, -0.01756380684673786, -0.014113731682300568, -0.0015957350842654705, -0.06942123919725418, -0.035570915788412094, 0.02983723394572735, -0.048376522958278656, ...
Towards Data Science
88
0
Demystifying Binary Search
https://towardsdatascience.com/demystifying-binary-search-bed0274e27e7
3
3,357
[ -0.022550804540514946, 0.01918204315006733, 0.029064584523439407, 0.01581455208361149, 0.0011541114654392004, 0.030334528535604477, 0.03630523011088371, -0.02137521654367447, -0.031346939504146576, -0.04406677559018135, 0.00022879117750562727, 0.028869813308119774, -0.01107338909059763, -0...
Towards Data Science
4
0
Scaling AI: 5 Reasons Why It’s Difficult
https://towardsdatascience.com/scaling-ai-5-reasons-why-its-difficult-6ea77b9f7d48
7
3,358
[ 0.022869763895869255, -0.009800654835999012, -0.011931727640330791, 0.007401679642498493, -0.006979998201131821, -0.0004616961523424834, -0.005929053761065006, -0.007068873383104801, -0.01615372858941555, -0.012726272456347942, 0.006883848458528519, -0.005312373396009207, 0.02168797887861728...
Towards Data Science
7
0
Getting started in data science with Ken Jee
https://towardsdatascience.com/getting-started-in-data-science-with-ken-jee-98045a74651d
2
3,359
[ 0.0069335466250777245, 0.01701374538242817, 0.04358680546283722, 0.014726412482559681, 0.007712255232036114, -0.02109728753566742, 0.016874315217137337, -0.036952387541532516, 0.008294632658362389, -0.05888406187295914, 0.013813581317663193, 0.03203589841723442, 0.036760058254003525, -0.01...
Towards Data Science
736
0
What to Study to Prepare for Solutions Architect Exam
https://towardsdatascience.com/what-to-study-to-prepare-for-solutions-architect-exam-9d678f99dc9f
5
3,360
[ -0.03344816714525223, 0.03500400483608246, -0.047074414789676666, 0.038254786282777786, 0.010734098963439465, 0.015515810810029507, -0.027366209775209427, -0.02099747210741043, -0.04478458687663078, -0.02564712055027485, -0.03285965323448181, 0.04035109281539917, -0.018767183646559715, -0....
Towards Data Science
1
0
Handling Missing Data
https://towardsdatascience.com/handling-missing-data-f998715fb73f
7
3,361
[ -0.031484730541706085, -0.022109800949692726, -0.014653702266514301, 0.03498681262135506, 0.0072675119154155254, 0.02451208047568798, -0.011196968145668507, -0.011906800791621208, -0.01264273189008236, -0.04753531888127327, -0.012020018883049488, 0.04564117640256882, -0.04612714424729347, ...
Towards Data Science
58
0
Stochastic Gradient Descent for Bayesian Neural Networks
https://towardsdatascience.com/stochastic-gradient-descent-for-bayesian-neural-networks-90b783cea7fc
5
3,362
[ -0.0027831837069243193, 0.01520960871130228, 0.029750339686870575, -0.0031968390103429556, -0.011271785944700241, 0.01876542717218399, 0.015396497212350368, -0.03254099562764168, -0.030463390052318573, -0.035496536642313004, -0.02215416170656681, 0.04892439767718315, 0.0016048889374360442, ...
Towards Data Science
12
0
Visualization & Attention — Part 3
https://towardsdatascience.com/visualization-attention-part-3-84a43958e48b
11
3,363
[ -0.008292190730571747, 0.008748934604227543, 0.004001801833510399, 0.010019609704613686, -0.014941653236746788, -0.04016599804162979, 0.05932672694325447, -0.030882766470313072, 0.013034073635935783, -0.007505314890295267, 0.002856103703379631, 0.0681486576795578, -0.011571972630918026, -0...
Towards Data Science
355
1
The Ultimate Guide To SMS: Spam or Ham Detector
https://towardsdatascience.com/the-ultimate-guide-to-sms-spam-or-ham-detector-67c179bc94dc
7
3,364
[ 0.005563212092965841, 0.0179750956594944, 0.043511372059583664, 0.0063211312517523766, -0.0007403390482068062, 0.02745857462286949, 0.00916584674268961, -0.021587630733847618, -0.033354829996824265, -0.023915542289614677, -0.030918627977371216, 0.05722925439476967, 0.01598237454891205, -0....
Towards Data Science
2
0
Visualization & Attention — Part 4
https://towardsdatascience.com/visualization-attention-part-4-a1cfefce8bd3
16
3,365
[ 0.007231418509036303, -0.017749203369021416, 0.03250685706734657, -0.0077016050927340984, -0.006387107074260712, -0.01197219081223011, -0.0020253141410648823, -0.01737656071782112, 0.02167103998363018, -0.023934904485940933, -0.020070912316441536, 0.04219174012541771, 0.004405476152896881, ...
Towards Data Science
2
0
TIQ Part 4 — Being Time intelligent in Power BI
https://towardsdatascience.com/tiq-part-4-being-time-intelligent-in-power-bi-88171980b141
6
3,366
[ 0.005249778740108013, 0.018347222357988358, 0.01013374887406826, -0.0028453764971345663, -0.013467090204358101, 0.025502903386950493, 0.02210327424108982, -0.030096039175987244, -0.0006667966372333467, -0.0410030223429203, -0.01603417843580246, 0.0350649356842041, -0.017538679763674736, -0...
Towards Data Science
82
0
Error Bar plots from a Data Frame using Matplotlib in Python
https://towardsdatascience.com/error-bar-plots-from-a-data-frame-using-matplotlib-53026fe95491
2
3,367
[ -0.03504766523838043, 0.01755448617041111, 0.014884043484926224, -0.022185489535331726, 0.030456667765975, 0.007804345339536667, -0.006084016989916563, -0.001585358171723783, -0.028246842324733734, 0.0022762329317629337, -0.028271803632378578, 0.03737645968794823, 0.009205561131238937, -0....
Towards Data Science
3
0
Apple Music activity analyser — Part 2
https://towardsdatascience.com/apple-music-activity-analyser-part-2-3a62c6284eb0
9
3,368
[ 0.011893661692738533, 0.008443116210401058, 0.005983071867376566, 0.006894718389958143, 0.0005647903890348971, 0.006671383511275053, -0.0038607337046414614, 0.014365742914378643, 0.02149573341012001, -0.0395820252597332, -0.04360197111964226, 0.03133789449930191, 0.01965275965631008, -0.01...
Startup Grind
55
0
Startup Q&A: Uizard
https://medium.com/startup-grind/startup-q-a-uizard-8121b530cdc4
5
3,369
[ 0.002273702062666416, -0.012173561379313469, 0.0004374035925138742, -0.002759029855951667, -0.0045735775493085384, 0.014434227719902992, 0.006749470718204975, -0.018382996320724487, -0.01070011779665947, -0.042800359427928925, -0.03236638754606247, 0.006694955751299858, 0.02664908580482006, ...
UX Collective
121
1
Working towards user research and insight libraries
https://uxdesign.cc/working-towards-user-research-and-insight-libraries-1c618bcec565
5
3,370
[ 0.018348895013332367, -0.005407366901636124, 0.0363108292222023, 0.005746225360780954, 0.022327836602926254, 0.002444031648337841, 0.003887220984324813, -0.016905978322029114, 0.02140095829963684, -0.061905231326818466, -0.012316524982452393, 0.04574555531144142, 0.015859998762607574, -0.0...
UX Collective
90
0
How to achieve product/market fit
https://uxdesign.cc/how-to-achieve-product-market-fit-40494796411
6
3,371
[ -0.008230889216065407, 0.017085202038288116, 0.016803409904241562, -0.0018215737072750926, 0.012537368573248386, -0.007987068966031075, 0.0395134836435318, -0.015738630667328835, 0.010354289785027504, -0.029583845287561417, -0.008845170959830284, 0.01488177664577961, 0.00438849488273263, -...
UX Collective
142
0
Envisaging a modern Goodreads iOS experience — a redesign study
https://uxdesign.cc/envisaging-a-modern-goodreads-ios-experience-49b9d78b27ed
17
3,372
[ 0.004058783408254385, 0.016385061666369438, 0.016478151082992554, -0.005063299089670181, -0.025726711377501488, -0.02635728195309639, 0.023950116708874702, 0.06646253913640976, 0.028243310749530792, -0.030708156526088715, -0.04772782698273659, 0.0755477175116539, -0.027990825474262238, -0....
UX Collective
93
1
Easy UX does not mean good UX
https://uxdesign.cc/easy-ux-does-not-mean-good-ux-44eeee1d9077
4
3,373
[ 0.03344938904047012, 0.010285204276442528, -0.003681425005197525, 0.013884912244975567, 0.03193185478448868, -0.027900874614715576, 0.04754636436700821, -0.05671142786741257, 0.043438855558633804, -0.03591543063521385, 0.020807422697544098, 0.012904312461614609, 0.04403017461299896, 0.0003...
UX Collective
89
0
5 steps to properly synthesize your usability test findings
https://uxdesign.cc/5-steps-to-properly-synthesize-your-usability-test-findings-a6c7cab52a48
9
3,374
[ 0.04568192735314369, 0.04543086141347885, -0.027842646464705467, -0.009662255644798279, -0.010698364116251469, 0.016663625836372375, 0.0275175329297781, -0.026196151971817017, 0.019681980833411217, -0.0707954466342926, -0.025275632739067078, 0.0482184924185276, 0.01953606680035591, -0.0081...
UX Collective
179
0
The importance of Design Principles and how they impact good designs
https://uxdesign.cc/the-importance-of-design-principles-and-how-they-impact-good-designs-93b58b723918
4
3,375
[ 0.03233351185917854, -0.014586170203983784, -0.004923791158944368, 0.023245442658662796, 0.0004128286673221737, -0.000809124787338078, -0.001439610030502081, -0.036134250462055206, 0.04253659024834633, -0.061540719121694565, 0.011936997063457966, 0.07392068952322006, 0.012520684860646725, ...
UX Collective
166
0
How to price design work — stop charging for time and focus on value
https://uxdesign.cc/how-to-price-design-work-stop-charging-for-time-and-focus-on-value-800fbc2a9b27
6
3,376
[ 0.025499805808067322, 0.029086122289299965, -0.01589878834784031, -0.019368454813957214, -0.05317883938550949, -0.0016743222950026393, 0.012623804621398449, -0.023633837699890137, 0.038039352744817734, -0.04397868365049362, -0.035527992993593216, 0.06711599230766296, 0.0197969451546669, -0...
UX Collective
66
0
Branding 101: Introduction
https://uxdesign.cc/branding-101-introduction-b5d05e88fd7f
4
3,377
[ -0.008630728349089622, 0.009899410419166088, 0.0168869998306036, 0.025813745334744453, 0.00249799364246428, 0.006184483878314495, -0.010534567758440971, -0.022690443322062492, -0.0017761350609362125, -0.06905123591423035, -0.0024463615845888853, 0.057661835104227066, 0.04043412208557129, 0...
UX Collective
179
0
The power of personalization in user experience
https://uxdesign.cc/the-power-of-personalization-in-user-experience-f3719402bd2
6
3,378
[ -0.023905465379357338, -0.01868978887796402, -0.008479841984808445, 0.030563119798898697, -0.006144605111330748, 0.011720643378794193, -0.029061954468488693, -0.005144153721630573, -0.0075884913094341755, -0.06965454667806625, -0.03576838597655296, 0.06605327129364014, 0.007051283959299326, ...
UX Collective
56
0
Human-centered design in digital transformation
https://uxdesign.cc/human-centered-design-in-digital-transformation-bbb49e4b6ba7
6
3,379
[ 0.03946113586425781, 0.009461847133934498, 0.00021158182062208652, -0.022100625559687614, -0.008498714305460453, -0.011092162691056728, 0.019691167399287224, -0.030741173774003983, 0.016676288098096848, -0.04834269732236862, 0.017298610880970955, 0.05011526867747307, 0.041928138583898544, ...
UX Collective
66
0
How to inform product vision with a HEART workshop
https://uxdesign.cc/how-to-inform-product-vision-with-a-heart-workshop-5fa72d778066
6
3,380
[ 0.02118094451725483, 0.026238756254315376, 0.019982540979981422, 0.010701408609747887, -0.013020409271121025, -0.019993511959910393, -0.0055597745813429356, -0.009304918348789215, -0.003952837083488703, -0.025851985439658165, -0.028797250241041183, 0.029342684894800186, 0.02648899145424366, ...
UX Collective
67
1
Researchers must be participants: A case for immersive ethnography in UX
https://uxdesign.cc/researchers-must-be-participants-a-case-for-immersive-ethnography-in-ux-c1c0222e9cd7
6
3,381
[ 0.01052391529083252, -0.0023965395521372557, -0.03473193943500519, 0.04030262306332588, -0.022996779531240463, 0.00836996827274561, -0.007908191531896591, 0.0016394687118008733, -0.03482447564601898, -0.07634329795837402, -0.015685608610510826, 0.006027711555361748, -0.030710509046912193, ...
UX Collective
38
1
Designing cities with computer games: simulating citizen participation
https://uxdesign.cc/designing-cities-with-computer-games-simulating-citizen-participation-e2748dab013f
5
3,382
[ 0.05868799611926079, 0.010435095988214016, -0.023086676374077797, 0.024383772164583206, -0.00047621512203477323, 0.0064794765785336494, 0.02955176867544651, -0.0019084797240793705, -0.01791641116142273, -0.037305645644664764, 0.011371713131666183, -0.012139756232500076, 0.006098289042711258,...
UX Collective
44
0
What does a T, a broken comb and a spider web have to do with design?
https://uxdesign.cc/what-does-a-t-a-broken-comb-and-a-spider-web-have-to-do-with-design-b17039febff0
7
3,383
[ -0.0107767004519701, -0.04022631794214249, 0.040943387895822525, 0.02705548331141472, -0.035245634615421295, -0.02150597609579563, 0.009829079732298851, -0.01740673929452896, -0.03433374688029289, -0.04635646939277649, -0.0421496257185936, 0.030238134786486626, 0.0011625237530097365, -0.01...
UX Collective
43
0
UI gamification: Making your design fun to play with
https://uxdesign.cc/ui-gamification-or-making-your-design-fun-to-play-with-6021ecafe77b
8
3,384
[ 0.04055164381861687, 0.019433071836829185, 0.008123276755213737, 0.02416272833943367, -0.00507678696885705, 0.01620558835566044, -0.0027530784718692303, 0.016429580748081207, 0.0003818208060692996, 0.002004896989092231, 0.00156680541113019, 0.03469621762633324, 0.004240864887833595, 0.0201...
UX Collective
26
0
What makes a good UX designer?
https://uxdesign.cc/what-makes-a-good-ux-designer-df0cf19fba22
12
3,385
[ -0.0035005740355700254, 0.022853434085845947, 0.005358890630304813, 0.012864910997450352, -0.002816352527588606, 0.05499757081270218, 0.039559610188007355, -0.005871862173080444, -0.011556827463209629, -0.06743400543928146, -0.030963581055402756, 0.005178488790988922, 0.00915706716477871, ...
UX Collective
37
1
5 situational archetypes
https://uxdesign.cc/5-situational-archetypes-b278e3a58074
4
3,386
[ -0.0016120861982926726, 0.017553595826029778, 0.02269669994711876, -0.010002548806369305, -0.04348670691251755, -0.002423583995550871, 0.05402277037501335, -0.04889771342277527, 0.026393547654151917, -0.04510057345032692, -0.012676948681473732, 0.02736106887459755, -0.032568398863077164, -...
UX Collective
152
0
3 ways to mask in Adobe XD
https://uxdesign.cc/3-ways-to-mask-in-adobe-xd-81ff9cdf8b17
4
3,387
[ 0.009789791889488697, 0.002779986709356308, -0.010626159608364105, 0.022642094641923904, -0.02340032160282135, 0.0017023852560669184, 0.016702579334378242, 0.02911004051566124, 0.01711898110806942, -0.022752249613404274, -0.008654715493321419, 0.033577051013708115, 0.018562164157629013, 0....
UX Collective
31
0
The hidden face of feedback
https://uxdesign.cc/the-hidden-face-of-feedback-9b63d6eb7b7e
4
3,388
[ -0.009597696363925934, 0.022975696250796318, -0.04905590042471886, 0.018751684576272964, -0.01881999522447586, 0.0039665973745286465, -0.028060149401426315, -0.026364915072917938, 0.013170487247407436, -0.052311018109321594, -0.03910776972770691, 0.042001813650131226, -0.024588853120803833, ...
UX Collective
23
0
Negative space in combat design
https://uxdesign.cc/negative-space-in-combat-design-ec2f94898844
3
3,389
[ 0.01252291351556778, 0.011188044212758541, -0.007110804785043001, -0.013250070624053478, -0.008704508654773235, 0.03804916888475418, 0.00878075323998928, -0.01166412141174078, -0.004783270414918661, -0.04664416238665581, 0.022013524547219276, 0.0018909467617049813, 0.02789464220404625, 0.0...
UX Collective
25
1
The chronicle of a design death foretold
https://uxdesign.cc/the-chronicle-of-a-design-death-foretold-106a1fd03acd
5
3,390
[ 0.039822015911340714, 0.0329877994954586, -0.05277115851640701, 0.012999927625060081, -0.015057191252708435, 0.03976073116064072, 0.01943369396030903, 0.004732763860374689, -0.006619436200708151, -0.09014139324426651, -0.011573180556297302, 0.010004471056163311, 0.01008422952145338, -0.002...
UX Collective
28
0
Visual inspiration: the Mishti Notebook
https://uxdesign.cc/the-mishti-notebook-87a055038e87
11
3,391
[ 0.03984658792614937, 0.02877984382212162, -0.0015668869018554688, -0.004956583958119154, 0.009756682440638542, -0.014035362750291824, 0.015895456075668335, 0.009378139860928059, -0.010204778984189034, -0.02274996228516102, 0.005270196590572596, 0.02902396023273468, -0.020223665982484818, 0...
UX Collective
20
0
This job title isn’t for you
https://uxdesign.cc/this-job-title-isnt-for-you-42d8494aadaf
3
3,392
[ -0.0140303960070014, 0.012094908393919468, -0.025029510259628296, 0.02284693904221058, 0.009677229449152946, 0.0025022230111062527, 0.018275512382388115, 0.055333785712718964, -0.056054502725601196, -0.02587290108203888, -0.01726042479276657, 0.028676386922597885, 0.012781287543475628, -0....
The Startup
4,700
28
Managing Your Money During a Global Recession
https://medium.com/swlh/managing-your-money-during-a-global-recession-b4186d3e763
8
3,393
[ 0.03743331879377365, 0.018667731434106827, 0.03365453705191612, 0.008705954067409039, 0.04340696334838867, -0.028106581419706345, 0.030600355938076973, 0.02595212310552597, -0.014028627425432205, -0.025452058762311935, 0.05606167018413544, 0.037925563752651215, 0.02313791587948799, 0.03201...
The Startup
226
0
How long is this going to last? The impact of coronavirus on your business and what to do next
https://medium.com/swlh/how-long-is-this-going-to-last-the-impact-of-coronavirus-on-your-business-and-what-to-do-next-e0f1308fa4b5
13
3,394
[ 0.0118687329813838, -0.0010450800182297826, 0.016787968575954437, 0.03968501836061478, -0.02646983414888382, 0.004030394833534956, -0.02616656757891178, -0.019625000655651093, 0.013389091938734055, -0.024563144892454147, 0.013297699391841888, 0.02418510615825653, -0.007549925707280636, -0....
The Startup
61
0
Angular Elements: Create a Component Library for Angular and the Web
https://medium.com/swlh/angular-elements-create-a-component-library-for-angular-and-the-web-8f7986a82999
5
3,395
[ 0.038452859967947006, 0.02240114100277424, -0.026405492797493935, 0.017633656039834023, 0.018457701429724693, -0.02898363210260868, 0.004184833262115717, -0.0018148156814277172, -0.025150934234261513, -0.05244749039411545, -0.015896523371338844, 0.03624209389090538, -0.02617591805756092, 0...
The Startup
310
2
Explain By Example: Networking
https://medium.com/swlh/explain-by-example-networking-49d73a140c66
16
3,396
[ -0.008365347981452942, 0.005715879146009684, -0.045538969337940216, 0.02373051457107067, 0.03842912241816521, 0.003828260814771056, 0.029621904715895653, -0.006093298085033894, -0.0036054905503988266, -0.05774477869272232, -0.01248573511838913, 0.0381048247218132, 0.020357877016067505, -0....
The Startup
789
0
Simple Strategies for Becoming a Lifelong Student
https://medium.com/swlh/simple-strategies-for-becoming-a-lifelong-student-dba8483cded4
5
3,397
[ -0.020005332306027412, 0.01332468818873167, -0.022335819900035858, 0.012284054420888424, -0.012951393611729145, 0.03466343507170677, 0.0012806629529222846, -0.024663342162966728, 0.014596679247915745, -0.06824920326471329, 0.030796652659773827, 0.014479903504252434, -0.004596566315740347, ...
The Startup
114
0
Comparing Thread Synchronization Mechanisms in Java
https://medium.com/swlh/comparing-thread-synchronization-mechanisms-in-java-53e66ea059be
6
3,398
[ -0.03468259796500206, 0.055181458592414856, -0.014849182218313217, 0.037885330617427826, -0.009080972522497177, 0.03980860486626625, 0.03984656184911728, 0.004814245272427797, -0.018787844106554985, -0.018107177689671516, 0.002673357492312789, 0.04124739021062851, 0.0192622821778059, -0.02...
The Startup
130
0
Top ten mistakes found while performing code reviews
https://medium.com/swlh/top-ten-mistakes-found-while-doing-code-reviews-b935ef44e797
6
3,399
[ 0.03142572566866875, 0.02509337104856968, -0.020080342888832092, 0.029852066189050674, -0.024240832775831223, -0.032872945070266724, -0.016481822356581688, 0.0009298641234636307, 0.036064792424440384, -0.0017592275980859995, 0.013086875900626183, 0.05722959339618683, -0.004352737218141556, ...
The Startup
107
0
The Ethical Dark Side of the New Space Age
https://medium.com/swlh/the-ethical-dark-side-of-the-new-space-age-4f235c5099fc
16