Most Loved, Dreaded And Wanted Programming Languages

Krish Naik · Intermediate ·📐 ML Fundamentals ·6y ago

Key Takeaways

Analyzes the most loved, dreaded, and wanted programming languages based on the Stack Overflow developer survey

Full Transcript

[Music] hello on my name is Krishna Gama come to my youtube channel so guys today in this particular video we are going to discuss about the most loved dreaded and wanted programming language and the data that we are going to analyze is from Stack Overflow developer Survey 2020 and then will try to discuss which is the most famous programming language this video will definitely be helpful for all of you guys because if you want to understand that which programming language you should focus much on if you're planning to make some transitions so this video will definitely be helpful not only for you guys for freshers this may be wonderful thing so we will try to analyze that first of all let's go over here completely this particular data has been taken from the stack developer survey itself so here you can see that there are a lot of information as such like databases and all but we are just going to discuss about this probably if you are interested you can let me know by putting down your comments we'll also be discussing about which is the most loved databases you can also see the data from here ok so over here what it says is that from five years running rust has taken the top spot as most loved programming language typescript is the second surprising Python compared to the last year so in 2019 if you just go and see the developer solving right there Python was the second most loved programming language first of all we are just going to see the love right very favorite like kind of stuff so the first programming language that you can see is rust then you have AI script then you have Python then you have Cortland you have go Julia right and with respect to data science guys if you're thinking rust is used for creating models or not Oh see rust is if I just go and search for the bust you can see that it is it is similar to C++ programming language okay and it is basically used you know it has and if you talk about C++ programming language usually it is very very fast okay so that is what rust is if you talk about typescript is an open-source programming language developed and maintained by Microsoft and it is a strict synthetical superset of JavaScript similar to JavaScript it is basically Time Square but with respect to data sense if I talk you know with respect to the libraries you can see where your Python and Julia are there they are currently the love most loved programming language you can see within the top six I guess so this is first second third four five six so within six you have two programming languages like Python and Julia now if you are talking about our programming language you may be also be worrying about our programming language our programming language is somewhere here you know but definitely Python and julia is taking the top six position in the last year Python was the second most loved programming language okay but again the right has gone down because typescript is doing pretty much well and remember typescript is a product of it is maintained by Microsoft but it is an open source okay you also have c-sharp over there okay and I try if you don't know about me guys I was a c-sharp develop I was a late developer why have you seen shop I know how good it is you know she shop in Java if you just go around say five to six years back you know six years back you know this was the pool how the programming languages many people everybody was trying to use apart from JavaScript okay so definitely would then scale is also there and VBA Objective C has gone down low C programming language C++ is some way around 43.4% now you can see that since we have rust you know it is similarly the syntax is similar to C++ so you can definitely have a look onto that now this was about the loved programming language if we go and see the dreaded programming language dead end it basically means it is about to die no people are not using much you know so VBA is on the top list Objective C for assembly C PHP you can see PHP is also people are losing the interest on that Ruby C++ Java and then just surprised to see over here Java is in this particular position are is there then if we go and see again rust right script obviously right it leader inverse of probably this list that we have right so we have five script Python code Lane Julia dot C shop or swift and all right so obviously this is the most loved and this is not the love so it's just the reverse of this list okay so probably this will also help you to decide which programming language you should actually speak off now I have the wanted programming most-wanted programming language definitely Python is stopping the listener now one date is basically defined by what companies are trying to use you know what programming languages they are trying to use so definitely Python is on the top of the list your javascript javascript is extensively in the useless trust me if you have a JavaScript developer you need not worry about immunity okay javascript is extensively used you know let it be anyway and what kind of applications you are actually developing javascript is require then you have goldeye script trust again what lean Java C Java is also over there you can see that it is in the dreaded list also somewhere here but still companies are using Java a lot you know if I stalk about Android development also you also have a kind of jobs in when you actually creating that Android app you know and in some other open so and since Java is an open-source programming language it will be extensively used ok so this is what the companies actually require and most of the applications by the companies are already developed in Java then you have C++ SQL c-sharp c-sharp over here Java is beating shisha with respect to the most wanted wanted again I'm telling you what the company wants okay so based on that this ranking is actually given Julia's still it is growing probably as I told in one of my video I compared about Julia and Python and are it will take time for Julia to come to the top you know since there are less packages and people still are trying to learn those things it will probably take around three to five years you know to come to this particular position but yes it will be pretty much interesting if we see in the next year what will be the rank so next year Julia may play of a better role if the rank may increase with respect to put one okay so because in love you can see that julia is in the top six position right so yes I hope you have got the idea like which programming languages you should actually think of learning things right so this is pretty much important and try to see this particular survey every year next this will help you to plan how how what what is the next thing that you should actually be you know definitely help you to plan those things so make sure that you watch this you see this apart from that they are most of them many more things like databases or not probably if you want I will be creating videos with respect to that so let's let's see just comment down in this particular video and I'll with that you know and try to create another videos for that so yes this was all about this particular video I hope you liked it please to subscribe the channel if you are not ready suspect I'll see you in the next video have a great day and going on behind

Original Description

Stack Overflow link: https://insights.stackoverflow.com/survey/2020#developer-profile--survey-respondents Join My telegram group: https://t.me/joinchat/N77M7xRvYUd403DgfE4TWw Please join as a member in my channel to get additional benefits like materials in Data Science, live streaming for Members and many more https://www.youtube.com/channel/UCNU_lfiiWBdtULKOw6X0Dig/join Please do subscribe my other channel too https://www.youtube.com/channel/UCjWY5hREA6FFYrthD0rZNIw Connect with me here: Twitter: https://twitter.com/Krishnaik06 Facebook: https://www.facebook.com/krishnaik06 instagram: https://www.instagram.com/krishnaik06
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