Data Scientist vs. AI Engineer

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IBM Technology

IBM Technology

Күн бұрын

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Breakthroughs in generative AI have given rise to the growth of an emerging AI Engineering role that is differentiating itself from traditional data science. Do these two disciplines focus on the same problems? Is there any overlap in techniques and models? In this video, Isaac Ke, a former data scientist turned AI engineer, explains key differences and similarities between the two fields, along with some of the emerging trends gripping the AI landscape.
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Пікірлер: 122
@panchao
@panchao 25 күн бұрын
Thank you for the explanation. But I feel they are not even on the same level. To me AI Engineer is a subtype of MLE who focus ML application which uses LLM. I would compare between DS vs MLE. And to me the comparison boils down to compare science vs engineering. Each has a totally different mindset when tackling the same problem. While engineer approach a problem from a system perspective, scientist approach a problem from an inference perspective.
@adamblake2466
@adamblake2466 12 күн бұрын
I see the AI Engineer (at least in the context explained above) as a SWE that builds AI applications. Not that there’s anything wrong with that. When I think of AI Engineer, I typically think of someone actually building the LLM.
@francogionardo
@francogionardo 6 күн бұрын
Thats true. If we compared the roles: The AI engineer, deploys the model, prebuilded as service (SaaS) form GCP, AWS, Azure, etc from the requirements from the R&D team. On the other hand, the Data Scientist (MLEng) role is focused in build the intern arquitecture to build the algorithms or make finetunning to the models using diferents methods from the bussiness requirements (Data Analyst). If youre in a Hybrid Role, maybe youre Data Scientist focused on building AI products, or Machine Learning Engineer with Bussiness background or something similar, but the Science is not equal to the Engineering. The perpspective is different. you´re right.
@anythinggoes4881
@anythinggoes4881 18 күн бұрын
Hmmm. Im a data scientist and there seems to be some concepts that I find wrong or misleading. 1) data scientists can also do prescriptive tasks aside from prediction and classification tasks. In fact the last project that I worked on was in the prescriptive analysis domain 2) data scientists also deal with texts and media data. From my experience that largest I handled so far is around millions of these data 3) data scientists are not limited to traditional ML models and Neural Networks. In fact, pretrained models are also used to speed up the training process with some fine tuning involved.
@DanielK1213th
@DanielK1213th 17 күн бұрын
I think that one has to be a data scientist first in order to be an ai engineer. The reason is that you can’t engineer something that you don’t understand like a data scientist from the ground up. That being said, data scientists wear many hats and the ai engineering role can be included. I think the only difference seems to be that the engineering side demands more complex data and doesn’t do a lot of structured data analysis.
@Bruhl-cb9wy
@Bruhl-cb9wy 14 күн бұрын
@@DanielK1213th that’s my goal, I am trying to get a data science job, then move to a machine learning job after a few years.
@adamblake2466
@adamblake2466 12 күн бұрын
I am also a data scientist. I have been using LLMs to help with my feature engineering. What was mostly useless free form text fields can now easily be cleaned and standardized. One example I am working on takes a duration, which can be anything from “one week” to “oh idk maybe half a month” and converts it to integer day value. The LLM is able to transform into a 7 and 15 respectively and note whether it’s an estimate based on ranges or language. Pretty cool stuff.
@DominikaOliver-RedHat
@DominikaOliver-RedHat 11 күн бұрын
I agree, I used to mostly create models based on unstructured data when I was working in text analytics.
@KnowledgePowerForAll
@KnowledgePowerForAll Күн бұрын
AI LLMS can be data scientist itself
@bayesian7404
@bayesian7404 25 күн бұрын
Great presentation. Super clear. I can’t wait to watch more of your talks. Thanks
@patfov
@patfov 26 күн бұрын
Thank you so much for the video! I'm learning Gen AI so it really helped me understand the differences between data scientists and AI engineers.
@dusanbosnjakovic6588
@dusanbosnjakovic6588 18 күн бұрын
Great effort. I think it's a discussion that we should be having over the next few years. But it's definitely premature. Just like data science became a field long after people were actually practicing data science, we will only realize the differences a bit in retrospect.
@thinkalinkle
@thinkalinkle 23 күн бұрын
"AI engineers" are just software engineers who dabble with OpenAI API calls.
@JohnvanBrederode-oh9gj
@JohnvanBrederode-oh9gj 15 күн бұрын
Not even close.
@muyivushafiq8389
@muyivushafiq8389 14 күн бұрын
Consider engineers who are prepare OpenAI APIs.
@ThoughtfulAl
@ThoughtfulAl 26 күн бұрын
I am learning AI, but it is pretty slow for me as I am an old truck driver although I did computer repair and builds for 12 years. My wife is a clever engineer like you and she can also write backwards fluently like you did here, but in real-time (not post-production). She is also learning AI now.
@solsospecial
@solsospecial 23 күн бұрын
He isn’t writing backwards: the video has been mirrored; the same goes for all the videos I have seen on this channel. To verify, confirm that they all appear to be left-handed, which is very unlikely.
@user-ju2pu8cf2l
@user-ju2pu8cf2l 23 күн бұрын
@@solsospecialyeah I always came to this same conclusion.
@GambillDataEngineering
@GambillDataEngineering 3 күн бұрын
Hi Issac! great job explaining the difference between data science and AI engineering! I really enjoyed your video!
@cuddy90210
@cuddy90210 26 күн бұрын
Thank you so much for the clarity!.. What a Wonderful video!
@Theuser2022
@Theuser2022 26 күн бұрын
They just changed your title dude, it’s the same thing
@jonathanreef6938
@jonathanreef6938 26 күн бұрын
Really well explained and summarized! 😊 I am currently working on my bachelor's thesis and can absolutely confirm that I am currently using (almost) all techniques from both sides. The overlap in my area/subject is extremely large and quite often I have to be very creative when it comes to obtaining and processing information... so definitely both sides... 😅
@waynesletcher7470
@waynesletcher7470 26 күн бұрын
Keep these vids coming!! 🔥🔥🔥
@DillonLui-xy9ex
@DillonLui-xy9ex 25 күн бұрын
wow great breakdown, thanks professor Isaac, I learned a lot 🤔
@OxidoPEZON
@OxidoPEZON 23 күн бұрын
As you are an example of DS pivoted to AIE, how would you transition from one role to another? I am really interested in what you describe as AIE, but recently landed a job in DS, so I was curious what steps could I follow in the long term to shift my carrer to what I really want to do. Thank you!
@saidshikhizada332
@saidshikhizada332 23 күн бұрын
enjoyed video wondering how you do annotation of your notes
@NaijaStreets-mr1bl
@NaijaStreets-mr1bl 12 күн бұрын
You are a great teacher. I love your analysis: top-notch
@hibou647
@hibou647 26 күн бұрын
From scientist to engineer to technician. Since I mostly use NLP I'm excited of the possibilities of llms but fear the models will become so good that we will shortly simply have to take the back seat.
@superuser8636
@superuser8636 16 күн бұрын
Dude, GPT 4o can’t even generate simple code correctly without mistakes. Your job is safe.
@natesmith2105
@natesmith2105 14 күн бұрын
@@superuser8636You must not be using it correctly then. If you prompt it correctly then it can get great results on many different types of tasks
@1ONEOFONE1
@1ONEOFONE1 26 күн бұрын
literally the perfect video for me right now
@franciscomedinav
@franciscomedinav 22 күн бұрын
Pretty interesting. I'm gonna start learning Data Analysis. Very helpful info.
@stt.9433
@stt.9433 23 күн бұрын
Thank you, I build RAG applications as an intern and never really knew how to qualify my job. I do some data science like scraping and cleaning data but I also do prompt engineering among other things. I don't train the models per say though or even fine tune them (for now), so was reluctant to say I'm an AI engineer but given your description I guess it's coherent.
@okotpascal1239
@okotpascal1239 24 күн бұрын
Well explained! THANK YOU.
@babasathyanarayanathota8564
@babasathyanarayanathota8564 26 күн бұрын
You know what IBM. YOUR COMPANY WAS DREAM COMPANY. WITH HELP OF THE SHORT CONTENT WHICH EASED ME LANDED IN FRESHER DEVOPS JOB . THANKS
@hemalpatel3770
@hemalpatel3770 25 күн бұрын
Congrats!
@R0H00
@R0H00 26 күн бұрын
Hi, Thank you for such a huge clarification. However, can you please shed some more light on these regarding AI Engineering: 1. What are the sub-fields/areas under AI Engineering? 2. How much math is required to become AI Engineer? 3. Where can I learn the fundamentals/essentials to become an Applied AI engineer? TIA
@vitorpmh
@vitorpmh 26 күн бұрын
1. generative AI, or big new models that use multiple stuff to classify or make regression. Also, robotics. 2. A LOT, learn math and statistics, the rest doesn't matter 3. Internet. Start with datascience, math and statistics. Within datascience you need to learn about common models (MLP, SVM, etc). After that, start understanding LSTMs, CNNs, dropout and batch normalization. In the end, after around 1 or 2 years, start learning transformers, visual transformers, and also diffusion generative models. Start with any calculus and basic math videos, also basic statistics. After that, use a course from udemy and youtube that talks about sklearn. And then go through computer vision with deeplearning and time series prediction algorithms... it is a possible way.
@R0H00
@R0H00 26 күн бұрын
@@vitorpmh Thanks for the response. 1. I know about these GAI. Any other type of sub-areas/fields based on different criteria. 2. Any fields/areas that requires less math. I heard, interoperability is one areas where no/less math. But not sure if it can be considered AI engineer. Also, prompt engineering. Any thing else? 3. I just finished Google AI essentials from Coursera. I'm coming from Social science background but has STEM background as well. So, expecting some AI related skillsets (but not hardcore) and I also have Biology/life-science related domain knowledge. Any suggestions?
@user-lx2fs4fv7i
@user-lx2fs4fv7i 24 күн бұрын
with GPT store in place . do we really need to work on foundation model to get the result we want?
@petrusdimase1520
@petrusdimase1520 19 күн бұрын
The DS scope is only EDA, feature engineering, giving business insight and story telling. More than that is area of MLE and AIE. Data Science is generating insight from "data". Building the statistical analysis, gain thr business efficiency or profit. Mostly use SQL, Python, Sklearn. Working with Jupyter notebook. ML Engineer is developing, serving, maintain the ML model. Sklearn basis. Pytorch. Tensorflow. NLTK. May use Python, C, Java, C# etc. Working with Postman, MlOps. AI Engineer is Implementor or Enabler of AI solution that may combine either pretrained ML or AI or Gen AI. AI may be processing of language, image, audio, artificial voice, ocr. May use Python, Java, C#. Working with Docker, Linux server. It all clear.
@AbdulMajeed-lf5sq
@AbdulMajeed-lf5sq 26 күн бұрын
Very nicely explained
@Fuego958
@Fuego958 24 күн бұрын
Best explanation on the topic
@kursatoz.9988
@kursatoz.9988 2 күн бұрын
Great presentation
@faisalIqbal_AI
@faisalIqbal_AI 26 күн бұрын
Thanks
@Muneeb__Arain
@Muneeb__Arain 2 күн бұрын
Thanks for Explanation ♥️♥️♥️
@AnalogAirwavesWAAIR
@AnalogAirwavesWAAIR 16 күн бұрын
Thank you for sharing this
@Irades
@Irades 26 күн бұрын
Thank you ♥
@eliaszeray7981
@eliaszeray7981 25 күн бұрын
Great! Thank you.
@guesswho5170
@guesswho5170 8 күн бұрын
I’m interested in going into the field of data science/ machine learning. I’m currently a self taught programmer who have done text book math in years. Can anyone in this profession tell me what the math requirements are for these roles?
@miguelalba2106
@miguelalba2106 21 күн бұрын
ML engineers are data scientists that develop scalable ML pipelines and bring research to production following MLOps standards (they work together with data scientists) and know the math and SE. Being a ML engineer includes being able to deploy models as microservices that get consumed by multiple “AI” applications. One thing is the model and another are applications that consume the models and apply certain business logic In my opinion the new “AI engineer” is a very misleading term for backend software engineer that knows how to connect/use to AI apis
@geedad
@geedad 25 күн бұрын
I appreciate this distinction. There are nuances but the inputs are different, tuning techniques and evaluation approaches are different. This view is opinionated and could offend a Data Scientist who knows neural networks very well (and can create foundation models rather than just use it). But you could have someone on the right who cant do the ones on the left. And someone on the left who despite knowing a lot needs to become familiar with techniques on the right. They can cross but given that additional work is needed, its reasonable to say they are different. There is enough work that I think we need the distinction and if you can do both then yey for you. Maybe it should be GenAI/TransformerAI Enginner rather than just AI engineer but we can keep it simple.
@dearadulthoodhopeicantrust6155
@dearadulthoodhopeicantrust6155 26 күн бұрын
What are the differences between a ML engineer , AI engineer and Datascientist
@kumaranragunathan7602
@kumaranragunathan7602 25 күн бұрын
Im so surprised that this video felt like an oversell of AI engineer and GenAI stuff. Most of the usecases he compared are wrong. DS side is almost like a process if all ML applications while AI eng side just appliactions. Also where is evaluation? Explain ability ?
@abhisheksen5690
@abhisheksen5690 23 күн бұрын
The 'Prescriptive' capability or specifically Prescriptive Analytics has always been part of Data Science. I found in this video, it switched side. And as you mentioned AI is more seen from Application side, specifically GenAI for its ability as productivity booster.
@GamingGirlfriend_
@GamingGirlfriend_ 25 күн бұрын
Cheers!
@abhisheksen5690
@abhisheksen5690 23 күн бұрын
This video is informative. However, I feel Prescriptive capability or 'Prescriptive' analytics has always been part of Data Science. I have seen Data Scientists with exceptional domain knowledge, building Prescriptive Analytics systems. However, in this video, I was surprised to see, how 'Prescriptive' analytics switched sides - as it too got heavily influenced in the newfound AI (or GenAI) rage. On the other hand, I feel - AI is more towards Applications, and specially GenAI with a promise of productivity booster.
@NeuroBoy24
@NeuroBoy24 12 сағат бұрын
Please we need AI engineering roadmap 🙏🙏🙏
@tahir2443
@tahir2443 24 күн бұрын
great video
@TinCan3161
@TinCan3161 23 күн бұрын
Issac Ke my GOAT!!!!!
@gauravbarge
@gauravbarge 2 күн бұрын
How is able write on the screen???
@proofcoc7315
@proofcoc7315 26 күн бұрын
It was more of a data scientist vs generative AI engineer
@nh--66
@nh--66 15 күн бұрын
Awesome 👍
@user-pn8te8tl1t
@user-pn8te8tl1t 19 күн бұрын
excellent
@tizianonakamader8177
@tizianonakamader8177 26 күн бұрын
So basically I switched from Data Scientist to Ai Engineer without even knowing. I’m a bit surprised to hear this from IBM … it sounds a bit wrong, I didn’t know IBM competence on AI has dropped this much
@babasathyanarayanathota8564
@babasathyanarayanathota8564 26 күн бұрын
Hi , is data scientistit requirement to become ai engineer . I am from devops
@tizianonakamader8177
@tizianonakamader8177 24 күн бұрын
@@babasathyanarayanathota8564 AI engineer in this context has no meaning, what they say in the video it’s wrong
@mustard2502
@mustard2502 18 күн бұрын
@@babasathyanarayanathota8564you need data experience to get a job as a mle
@anythinggoes4881
@anythinggoes4881 18 күн бұрын
@@babasathyanarayanathota8564what’s required is that you must know ML and when to use it as “AI engr” is an applied field. Data science isn’t required but is a plus.
@jesseg7841
@jesseg7841 16 күн бұрын
I am very disappointed in this video as well.
@farexBaby-ur8ns
@farexBaby-ur8ns 14 күн бұрын
Data scientists train the models and ai engineers choose the required models for each step of whatever ai tool they are building.. is that a good analogy? Fin analyst vs portfolio manager relation? Btw didn’t mention langchain Also with dspy, prompt engineering shld be dead. Dspy adds reasoning to prompts
@kubakakauko
@kubakakauko 26 күн бұрын
I must disagree. I just finished an MSc in AI, and we learned everything you mentioned in the Data Science section and the AIe section, but nothing you mentioned, we learnt math behind the algorithms, etc.
@otabek_rizayev
@otabek_rizayev 24 күн бұрын
I'm A.I engineer...!!! Amen...!!!
@jesshuandine6159
@jesshuandine6159 3 күн бұрын
Thanks, but in my point of view it's a very strange definition for AI Engineer... Fondation Model, RAG, LLM... are just a little part of AI system and AI engineering needs... For me, when a DataScientist build a global system to make real-time prediction with industrial sensors, for example, he is an AI Engineer...
@carlitos5336
@carlitos5336 26 күн бұрын
Interesting
@oshkit
@oshkit 26 күн бұрын
Where does fine tuning fit in all these ?
@BigRedHeadd
@BigRedHeadd 26 күн бұрын
Fine tuning is usually referred to in connection to nural networks when one takes a base model of some sort and continues training the model on a specific domain of the problem at hand
@ManuelSoutoPico
@ManuelSoutoPico 15 күн бұрын
PEFT
@gighavlex
@gighavlex 26 күн бұрын
I study data science... the AI Enginering seems need more people to work.... data science can be done by one SCIENTIST...?
@anthonyrivera312
@anthonyrivera312 25 күн бұрын
Whoop yessir Isaac
@ibrahiimycl
@ibrahiimycl 4 күн бұрын
I am looking for a colleague to advance in the field of data science, someone I can exchange ideas with and learn together
@sibidora
@sibidora 17 күн бұрын
The AI Engineer part only talks about LLMs (ChatGPT,Gemini types of models) only, which feels heavily misleading. Reducing the whole field of AI just to something that has been popular for the last few years is not really understandable. Also I think using the term Generative AI for LLMs is another misleading thing. We can also generate videos, audio, images, 3D structures with AI. Back in the day when image generation was popular people used to use generative term for images. Another problem in the video is that we don't always use "Foundation models". The video shows as if AI Engineers mostly finetune (adapt) these foundation models. Don't let this video think that AI is just finetuning LLMs. We have lots and lots of stuff to do in the field of AI :)
@anasaberchih9490
@anasaberchih9490 24 күн бұрын
I like the comparison but I do note that Data Science was not presented fairly, he could've said that Data Scientists lately do work on million of rows data, using Deep Learning algorithms, just a side note*. But thanks for the video! Great job.
@FelipeCampelo0
@FelipeCampelo0 18 күн бұрын
Great
@italosayan4747
@italosayan4747 23 күн бұрын
Anything is possible?
@gerhitchman
@gerhitchman 9 күн бұрын
I really don't think the details of this are right. Plenty of data scientists work in generative AI / LLMs / unstructured data.
@jacobmoore8734
@jacobmoore8734 14 күн бұрын
Basically, every five years a new career is dropped. When that happens, all the other new drops from the past 15 yr like data science, business intelligence, ML engineer, start to look more like SQL queries. In 2034, we’re all going to say we’re “sentient robot engineers”
@ruvinduamararathna
@ruvinduamararathna 26 күн бұрын
I'm still an undergraduate, any tips to land on a big comapany(Google, IBM, etc.) as an AI engineer.
@williammbollombassy1778
@williammbollombassy1778 26 күн бұрын
Good question 🤣 A good internship a good knowledge of artificial intelligence and good projects on the portfolio
@tarekhosny8166
@tarekhosny8166 19 күн бұрын
This is more like Data Scientist vs Generative AI Engineer
@brandonpham230
@brandonpham230 25 күн бұрын
This is one handsome fella😍
@LifeCtured
@LifeCtured 25 күн бұрын
Confusion..🙄
@gabrielorce
@gabrielorce 8 сағат бұрын
AI is much more than "Generative AI"... Just take into account the term "AI" itself didn't suddenly appear when Generative AI took off a few years ago, it is much older and much more encompassing than that.... There's even mention about how "Generative AI has split off from AI into it own distinct field" at the beginning of his video. Many in the comments section have mentioned valid criticisms to what's exposed in the video, so i'll just limit myself to saying the name "AI Engineer" already seems incorrect for the concepts exposed, and in this case seems to be used only because of the current hype in GAI.
@fenderskater46
@fenderskater46 26 күн бұрын
Writing backwards is an AI Engineer-type flex
@_Rodders_
@_Rodders_ 26 күн бұрын
The video is horizontally flipped.
@waelhussein4606
@waelhussein4606 25 күн бұрын
Particularly when you do it with your left hand 😂
@rcytpge
@rcytpge 22 күн бұрын
I am a Chief Generative AI DataDevSecFinMLOps Cybersecurity Architect Scientist Engineer Officer 😅
@rcytpge
@rcytpge 22 күн бұрын
Also a saiyan
@EricPham-gr8pg
@EricPham-gr8pg 19 күн бұрын
I am not sure if people know what is our capability they would let us use it because it is just like omni potent and omnipresent which is God like and we can even decide what individual fate is to be or not to be which may not be for humam biased
@hasszhao
@hasszhao 25 күн бұрын
AI Eng. -> applied level
@djtomoy
@djtomoy 23 күн бұрын
We just get our ai guy to do both jobs (and sort our website out all the time), no one show him this video or else he might ask for more money 🤫
@8g8819
@8g8819 25 күн бұрын
This does not sound right. Sorry, IBM. Relating AI Engineer to Gen AI (2 years old field) is obviously wrong. If this is the case, then 90% of today's Data Scientists are also AI engineers, and this distinction does not make sense anymore😮
@beltrewilton
@beltrewilton 18 күн бұрын
Explained with good concepts, but... Data Science: name of a career fundamented on statistics and computer science that already existed and has had updates over the years. While AI Engineer is the name of a vacant position. A data scientist is capable of doing everything you describe on the right side of the board and beyond, why? knows Statistics and data, and the fact that it is not structured is still data. You are comparing the man who knows how to build a car with the man who drives it.
@EranM
@EranM 19 күн бұрын
"prompt engineering" lol.. do you use chatGPT to help you come out with an "engineered prompt" ? The new form of engineer, prompt engineer!
@wilpaolo130
@wilpaolo130 Күн бұрын
Cute guy. 😍
@sereeshach
@sereeshach 7 күн бұрын
AI Engineering
@sahryun
@sahryun 18 күн бұрын
Cannot call someone as AI engineer if they are just using others models.
@SugengWahyudi
@SugengWahyudi 26 күн бұрын
I think it is more Generative AI Engineer ..
@NoNo-nr2xv
@NoNo-nr2xv 26 күн бұрын
"Use Machine learning, such as regression". Lol. Regression is machine learning now? Blimey.
@fupopanda
@fupopanda 26 күн бұрын
It is
@anythinggoes4881
@anythinggoes4881 18 күн бұрын
It is part of available ML models (i.e. linear regressor models,ridge regressor models, and lasso regression models)
@TheNck0732
@TheNck0732 11 күн бұрын
I stopped watching at "DATA STORYTELLER" 😆😆😆
@colinrickels201
@colinrickels201 4 күн бұрын
We know why IBMs are relic now. It’s this hyper corporized approach. At Apple we call em all data scientists and they do everything
@flamed7s
@flamed7s 26 күн бұрын
So many opinionated and false statements in one video 🤦🏻‍♂️ Wouldn't expect this from an official video from IBM
@davejones542
@davejones542 25 күн бұрын
agreed would have been better from fly on the wall not fly that moved walls
@paraskevasparaskevas350
@paraskevasparaskevas350 15 күн бұрын
avoid any title using Data ..prefer to be Software Engineers ...you dont want to be begging for compute just to productize your models....
@jeffreytsai2240
@jeffreytsai2240 8 сағат бұрын
AI engineers will survive.
@MohammadRahimJamshidi
@MohammadRahimJamshidi 2 күн бұрын
5- AI, in order to improve its performance and prevent undesirable consequences, must continuously interact with “effective rules and stable principles in the realm of existence”. @jamshidi_rahim
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