Product Data Scientist at any tier 1-3 tech firm will be this type of role. But you'll still be doing lots of SQL Answer from pretender80 on reddit.com
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Reddit
reddit.com › r/datascience › career advice for new grads or early career data scientists/analysts looking to ride the ai wave
r/datascience on Reddit: Career advice for new grads or early career data scientists/analysts looking to ride the AI wave
February 17, 2026 -

From what I'm starting to see in the job market, it seems to me that the demand for "traditional" data science or machine learning roles seem be decreasing and shifting towards these new LLM-adjacent roles like AI/ML engineers. I think the main caveat to this assumption are DS roles that require strong domain knowledge to begin with and are more so looking to add data science best practices and problem framing to a team (think fields like finance or life sciences). Honestly it's not hard to see why as someone with strong domain knowledge and basic statistics can now build reasonable predictive models and run an analysis by querying an LLM for the code, check their assumptions with it, run tests and evals, etc.

Having said that, I'm curious what the subs advice would be for new grads (or early career DS) who graduated around the time of the ChatGPT genesis to maximize their chance of breaking into data? Assume these new grads are bootcamp graduates or did a Bachelors/Masters in a generic data science program (analysis in a notebook, model development, feature engineering, etc) without much prior experience related to statistics or programming. Asking new DS to pivot and target these roles just doesn't seem feasible because a lot of the time the requirements are often a strong software engineering background as a bare minimum.

Given the field itself is rapidly shifting with the advances in AI we're seeing (increased LLM capabilities, multimodality, agents, etc), what would be your advice for new grads to break into data/AI? Did this cohort of new grads get rug-pulled? Or is there still a play here for them to upskill in other areas like data/analytics engineering to increase their chances of success?

Top answer
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The reality is a lot of platforms have matured and the low hanging fruit on the product roadmaps were completed 10 years ago so SaaS products started making in house analytics tools and focusing integrations with other systems (ex: connect your random ERP to Hub Spot or whatever). This was happening before LLMs took off and the current AI cycle just accelerated it. The writing was on the wall already for data analytics work. The advice for new grads is still kind of the same as it was when the labor market got saturated around COVID, show people what you can build. No one cares about Titanic dataset tutorials or a portfolio of Jupyter notebooks with 30 pages of “report”. People want to see a unique insight on novel data, a project that conveys a sense of architecture, or some job experience that goes beyond homework. New grads and soon to be grads should be hammering every internship possible and working on projects that aren’t just resume padding.
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As a Gen X adjacent to data science at work. Don’t get hung up on titles, or even the specifics of what you “think” you should be doing every day. Try and learn about the business where you work, or if it’s research/non profit/academic, learn about what actually goes on, when people ask you to help them with something, set boundaries, but help, you will learn more and probably be more effective long term than if you are too rigid and only want “strict” data science, math, modeling problems. If you’re seen as someone who can solve a problem with data you’re likely to be asked about math/modeling and other problems later. I work at a major manufacturing company. The grads we hired who dug in and tried to help build solutions with python/r did great, the ones who only wanted to build models struggled. Data science as a title was very popular for 10+ yrs but the work they did was more of a combination of bi/data engineering/data science. I’ve been in analytics for about 17 yrs.
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Reddit
reddit.com › r › DataScienceJobs
Data Science & Machine Learning Jobs!
May 23, 2013 - r/DataScienceJobs: A place for people to post data science/machine learning jobs as well as those searching for jobs to put themselves in the…
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Reddit
reddit.com › r/datascience › is the traditional data scientist role dying out?
r/datascience on Reddit: Is the traditional Data Scientist role dying out?
May 22, 2025 -

I've been casually browsing job postings lately just to stay informed about the market, and honestly, I'm starting to wonder if the classic "Data Scientist" position is becoming a thing of the past.

Most of what I'm seeing falls into these categories:

  • Data Analyst/BI roles (lots of SQL, dashboards, basic reporting)

  • Data Engineer positions (pipelines, ETL, infrastructure stuff)

  • AI/ML Engineer jobs (but these seem more about LLMs and deploying models than actually building them)

What I'm not seeing much of anymore is that traditional data scientist role - you know, the one where you actually do statistical modeling, design experiments, and work through complex business problems from start to finish using both programming and solid stats knowledge.

It makes me wonder: are companies just splitting up what used to be one data scientist job into multiple specialized roles? Or has the market just moved on from needing that "unicorn" profile that could do everything?

For those of you currently working as data scientists - what does your actual day-to-day look like? Are you still doing the traditional DS work, or has your role evolved into something more specialized?

And for anyone else who's been keeping an eye on the job market - am I just looking in the wrong places, or are others seeing this same trend?

Just curious about where the field is heading and whether that broad, stats-heavy data scientist role still has a place in today's market.

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What does a typical day look like for someone in a Reddit Data Science role?
A typical day in a Reddit Data Science role involves collecting and analyzing large-scale Reddit data, building machine learning models to identify trends or predict user engagement, and creating visualizations to communicate findings to stakeholders. You can expect to collaborate closely with product managers, engineers, and community moderators to design experiments, evaluate new features, or address user behavior questions. Regular team meetings, asynchronous communication, and clear documentation are part of the workflow, especially since many teams operate in hybrid or remote environments
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$64k-$175k Reddit Data Science Jobs (NOW HIRING) Nov 2025
What are the best opportunities in data science?
Data science offers diverse roles in analytics, machine learning, and business intelligence across industries. To excel, develop strong programming skills in Python or R, statistical knowledge, and experience with data visualization tools. Continuous learning through online courses and certifications is vital. Networking and contributing to open-source projects can boost your profile. Career advancement often involves specializing in areas like artificial intelligence or big data engineering, with opportunities in both startups and established companies.
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ziprecruiter.com › all jobs › reddit data science jobs
$64k-$175k Reddit Data Science Jobs (NOW HIRING) Nov 2025
Where can I find job openings in data science?
To find data science job openings, explore online job boards, professional networking sites, and company career pages. Joining data science communities and attending industry conferences can also provide leads. Tailor your resume to highlight relevant skills like programming, statistics, and machine learning. Additionally, consider internships or freelance projects to build experience. Staying updated on industry trends and continuously improving your technical skills will increase your chances of securing a role in this competitive field.
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reddit.com › r/datascience › graduating soon — any tips for landing an entry-level data science job?
r/datascience on Reddit: Graduating Soon — Any Tips for Landing an Entry-Level Data Science Job?
June 25, 2025 -

Hey everyone — I'm finishing up my MSc in Data Science this fall (Fall 2025). I also have a BSc in Computer Science and completed 2–3 relevant tech internships.

I’m starting to plan my job hunt and would love to hear from working data scientists or others in the field:

  • Should I be applying in bulk to everything I qualify for, or focus on tailoring my resume with ATS keywords?

  • Are there other strategies that helped you break into the field?

  • What do you wish someone had told you when you were job hunting?

  • Is it even heard of fresh graduates landing data roles?

I know the market’s tough right now, so I want to be as strategic as possible. Any advice is appreciated — thanks!

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Reddit
reddit.com › r/datascience › more meaningful data science jobs (or do you have to leave the field altogether?)
More meaningful data science jobs (or do you have to leave the field altogether?) : r/datascience
December 17, 2025 - If you miss rigor, look at research-adjacent roles like applied research, public sector labs, health/climate orgs, or even data engineering where data quality and experimentation actually matter. You don’t have to leave the field, but you probably do have to leave consulting.
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ziprecruiter.com › all jobs › reddit data science jobs
$64k-$175k Reddit Data Science Jobs (NOW HIRING) Nov 2025
Browse 16 REDDIT DATA SCIENCE jobs ($64k-$175k) from companies with openings that are hiring now. Find job postings near you and 1-click apply!
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reddit.com › r/leavingacademia › is something up with the data analyst/data scientist job market right now or is it just me?
r/LeavingAcademia on Reddit: Is something up with the data analyst/data scientist job market right now or is it just me?
December 15, 2024 -

Background: I have a PhD in social psychology that I completed in Spring of 2023. The last few years of my doctorate, I worked full time for ~2.5 years as an evaluation coordinator for a process evaluation of a statewide gun violence reduction program. After this (and most recently), I worked ~2 years full time in a supervisory role at a state office focused on criminal justice programs working with data, writing legislative reports, and doing some grant management.

Miscellaneous skills: I know R, SPSS, Power BI, and some SQL. I’m well-versed in multivariate stats, psychometrics, and even some Bayesian inference. I’m used to working with lots of forms of data, ranging from survey data to public datasets from the census bureau/FBI to SQL databases accessed through ODBC connections. I only have 4 peer-reviewed publications and only taught 2 classes during my PhD, but that’s largely because I pivoted towards acquiring non-academic work experience somewhat early in my program.

Problem: I’ve been aggressively applying to multiple positions for the past six months with very disheartening results. I’ve mostly focused on the public sector plus some non-profits and think tanks (I’m geographically close to the DMV, so the government-industrial complex is really THE big employer where I am). I’ve recently started applying to more private sector jobs too, though. Out of the dozens of positions I’ve applied to, I’ve only gotten one real interview. It’s rough…

Has anyone else in a similar position who left academia been experiencing this? Any advice to improve my search and/or prospects?

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Oh, PhD in Physics here from a good US university. 10 years of experience, with python, c++, statistics, a bunch of papers, all about analyzing data. No jobs. A PhD won't get you automatically a job in DS.
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The myth that there are plentyfull data jobs out there in industry for PhDs to pivot into was true 10 years ago but no longer. Yet it keeps being perpetuated in academic circles, because academia wants you to believe there are paved transition paths. 10 years ago, machine learning was new and companies went all in on hiring anyone they could as a data scientists, because they believed that they were sitting on untapped riches: their operational data. The frenzy gave rise to data science programs to cater to the demand and tons of PhDs who reskilled to get into the market. Then companies came to realize they can't do much with their expensive data scientists because their data is scattered, inconsistent, and low quality. Data scientists spend 90% of their time trying to get data and clean it up. Even when data science delivers a result, the impact is often disappointing in terms of ROI (see every churn model). Rarely do companies need fancy ML beyond a basic linear regression. Spagetti code from data scientists could not be reused. The focus shifted to building better technological foundations to support data operations. Roles in data engineering, platform engineering, ML engineering replaced a lot of data science. People with a software engineering background are better suited to these roles than academics or data science graduates. For the insights part, companies realized data analysts who run an ad-hoc SQL query on the data warehouse or work in Excel is enough. The data science hype died down, the market dried up, but the graduates and academics kept coming. For the data science positions that remained, companies could afford to be much more selective. Generally they prefer to hire those who worked in the industry; everyone else is considered a starter. Now the situation is even worse. There is a lot of economic uncertainty. For most companies, data is just a nice to have, not core business. Many are looking at their expensive data department as a source of savings. There are layoffs across the industry. So I can totally imagine you are struggling. The market for data science has been bad for years, and now the market for data roles overall is down too. Even with the technologies you say you know, companies look at your academic background and see a risk. Consider whether the following are an option for you: Expand your scope for roles & industries. Look for data analyst, data engineer, data manager, consultant, business analyst roles. Adjust based on whether you prefer technical work or working with stakeholders. Expand your geographic search radius Try to get a referal. This works best in smaller companies, and is so much more effective than applying through job boards. Do you know anyone who works where you would also consider working, and who could vouch for you and your skills? Reach out personally and ask whether they are hiring, and tell them about the value you bring to the table. This is how I got my first job as a data engineer after my post-doc. I came from applied physics. Best of luck!
Find elsewhere
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Reddit
reddit.com › r/datascience › do remote data science jobs still exsist?
r/datascience on Reddit: Do remote data science jobs still exsist?
April 7, 2025 -

Evry time I search remote data science etc jobs i exclusively seem to get hybrid if anything results back and most of them are 3+ days in office a week.

Do remote data science jobs even still exsist, and if so, is there some in the know place to look that isn't a paid for site or LinkedIn which gives me nothing helpful?

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Reddit
reddit.com › r/careerguidance › should i pursue data science in 2026, or is the field at risk because of ai?
r/careerguidance on Reddit: Should I pursue Data Science in 2026, or is the field at risk because of AI?
December 12, 2025 -

Calling all data scientists, ML engineers, AI researchers, and anyone working in the data/AI ecosystem — I’m hoping to get honest insight from people in the field.

I’m currently deciding my career direction, and Data Science has been one of the main areas I’ve been considering. But with the rapid rise of automation, LLMs, and AI-driven tools, I keep hearing discussions about data science roles shrinking or becoming obsolete. This has made me question whether it is still a reliable long-term path.

I want to understand whether Data Science is still worth entering in 2026, or whether the field is becoming too automated for stable career growth. Are companies reducing traditional DS positions, or are the roles simply evolving into something more technical, such as ML engineering, AI engineering, data engineering, or AI-focused product roles?

If the field is changing, I would also appreciate guidance on which skills someone starting in 2026 should prioritize to remain relevant by 2030 and beyond.

I’m also interested in a realistic view of opportunities both in India and abroad. Is Data Science still stable and in demand worldwide, or is the market becoming saturated and uncertain?

Any genuine insight or experience would be extremely helpful as I try to make an informed long-term decision.

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Reddit
reddit.com › r/datasciencejobs › i've reviewed hundreds of data science applications
r/DataScienceJobs on Reddit: I've reviewed hundreds of data science applications
November 10, 2025 -

I'm an AI engineer who oversees hiring at my company. The gap between what candidates show and what gets them hired is honestly depressing.

What job postings say:

  • PhD or Master's preferred

  • 5+ years ML/DL experience

  • Publications a plus

  • Expert in PyTorch, TensorFlow, scikit-learn

What actually gets people hired:

  • Can you clean messy data without complaining?

  • Can you explain your model to someone's VP who doesn't code?

  • Can you ship something in production?

  • Do you know SQL well enough to not break things?

  • Are you pleasant to work with?

IMO, most "data science" jobs are 70% data engineering. The modeling is maybe 20% of the actual work. If you can't wrangle APIs and build pipelines, you're going to struggle.

Kaggle portfolios might hurt you. Hiring managers see "Kaggle competitions" and think "this person optimizes for leaderboards, not business problems." Show me something that solved a real problem, even a tiny one.

The PhD requirement is mostly BS. Companies write "PhD preferred" because they think that's what serious roles need. Then they hire the person who actually shipped something.

Entry-level doesn't really exist anymore. When postings say "3-5 years," they mean it. The "we'll train you" era is over.

What actually works:

  • End-to-end projects (problem → data → model → deployed result)

  • GitHub with real code, not just notebooks

  • Proof you can work with engineers

  • Blog posts or anything showing you can explain technical stuff to humans

  • Referrals (still 80% of how people actually get jobs)

So, if you're applying to 100+ jobs with no response, it's probably not your skills. It's that you're showing academic credentials when companies need proof you solve business problems.

The market sucks right now. But the people getting hired are the ones who can demonstrate impact, not just knowledge.

Am I wrong? What's your experience? What's actually working for people landing DS roles?

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Reddit
reddit.com › r/learnmachinelearning › is studying data science still worth it?
r/learnmachinelearning on Reddit: Is studying Data Science still worth it?
December 11, 2024 -

Hi everyone, I’m currently studying data science, but I’ve been hearing that the demand for data scientists is decreasing significantly. I’ve also been told that many data scientists are essentially becoming analysts, while the machine learning side of things is increasingly being handled by engineers.

  • Does it still make sense to pursue a career in data science or should i switch to computer science?

  • Also, are machine learning engineers still building models or are they mostly focused on deploying them?

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Reddit
reddit.com › r/datasciencejobs › why is it so hard for graduates to land data science jobs in a "growing" field?
r/DataScienceJobs on Reddit: Why is it so hard for graduates to land data science jobs in a "growing" field?
June 3, 2025 -

Data science is supposedly gonna become more and more of one of the most sought after professions, but for graduates, the job hunt is rough let's be honest. Most entry-level roles still ask for 2–3 years of experience, and even internships are insanely competitive. At the same time, bootcamps, online certs, and university programs are flooding the market with new grads all chasing the same limited pool of junior roles.

The U.S. Bureau of Labor Statistics predicts 35% growth in data science jobs by 2032, but some recent estimates suggest that up to 50% of DS graduates remain unemployed or underemployed months after finishing their programs. And the roles that do exist often require a massive list of skills—cloud, ML, SQL, dashboards, stats, and production-level code—basically expecting a full-stack ML engineer for a junior salary.

The growth is there, but anyone else feel like it's only if you're already in the industry?

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Reddit
reddit.com › r/datascience › data scientist: job preparation guide 2024
r/datascience on Reddit: Data Scientist: job preparation guide 2024
April 18, 2024 -

I have been hunting jobs for almost 4 months now. It was after 2 years, that I opened my eyes to the outside world and in the beginning, the world fell apart because I wasn't aware of how much the industry has changed and genAI and LLMs were now mandatory things. Before, I was just limited to using chatGPT as UI.

So, after preparing for so many months it felt as if I was walking in circles and running across here and there without an in-depth understanding of things. I went through around 40+ job posts and studied their requirements, (for a medium seniority DS position). So, I created a plan and then worked on each task one by one. Here, if anyone is interested, you can take a look at the important tools and libraries, that are relevant for the job hunt.

Github, Notion

I am open to your suggestions and edits, Happy preparation!

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Reddit
reddit.com › r/datasciencejobs › i need to accept that i’ll never get a data science role.
r/DataScienceJobs on Reddit: I need to accept that I’ll never get a Data Science role.
November 29, 2025 -

I studied Data Science at a massive SEC school and got my degree in May of 2024, and despite getting glowing reviews at my internship, I couldn’t secure a full time role due to budget cuts at the company I interned at.

Fast forward 9 months, 800+ applications, and a part-time job at my local grocery store later, I finally land a role in B2B sales at a Fortune 500.

It didn’t take me very long to figure out that I am not good at sales and that I wouldn’t make it very long. I started this job in May and the fact that I made it this far is a shock to me, because they love to fire due to underperformance. I can only coast for so long. I need to get out before I get put on a PIP, because if I get put on a PIP and I have nothing lined up, I’m cooked.

I’m mainly looking in Houston, but am open to remote/hybrid roles, and am willing to relocate.

I feel defeated because even though I have work experience now, it’s not in anyway related to data science.

I’m kind of ranting on Reddit because networking has been hit or miss for me.

Ask me anything, and I can elaborate.

My top technical skills are in Python & R, but I have experience in Tableau, SQL, ArcGIS, and Java.

EDIT: Fixed for typos

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Reddit
reddit.com › r/datascience › where to go after data science: unconventional / weird exits?
r/datascience on Reddit: Where to Go After Data Science: Unconventional / Weird Exits?
November 16, 2025 -

Data science careers often feel like they funnel into the same few paths—FAANG, ML/AI engineering, or analytics leadership—but people actually branch into wildly unexpected directions. I’m curious about those off-the-beaten-path exits: roles in unexpected industries, analytics-adjacent pivots, international moves, or entirely new ventures. Would love to hear some stories.

P.S. Thread inspired from a thread in the consulting subreddit but adapted to DS.

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Reddit
reddit.com › r/datascience › reddit hiring sr data scientist
r/datascience on Reddit: Reddit Hiring Sr Data Scientist
April 18, 2024 -

Hey all, just noticed this job posting with reddit while I was doing my own searching. Sr Data Scientist in the US, remote-friendly, nice comp / pay range ($190k to $267k/yr). I'm not in the US so I'm out. https://boards.greenhouse.io/reddit/jobs/5486610?gh_src=8a8a4d8a1us. Actually kind of surprised they don't share it in this sub as well.

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Reddit
reddit.com › r/datascience › how’s the job search going?
r/datascience on Reddit: How’s the job search going?
March 26, 2024 -

I’m considering looking for a new data science job and kinda wanna get some secondhand data on what the market is like from people who are either in the market right now or just recently got hired or gave up. Please share the following info (or as much as you are comfortable sharing):

  1. How long have you been looking for work? How many apps?

  2. How many interviews/offers have you got?

  3. Your background (degree, years of experience, self taught?)

  4. Are you more into the engineering side (deep learning, Hadoop, aws) or the analysis side (power bi, sql)?

  5. Any leads/tips?

Top answer
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Started September 2023, somewhere around 130 apps total. Accepted job end of Feb 2024. Interviewed with 9 companies in total, ranging from startups to large companies (no FAANG, however - hardly applied to any). Most only consisted of first technical round, some with round two, only two were all the way to the final round (offers on both, one a startup I declined, another a mid-large company I accepted). Also had roughly 5 phone screens with recruiters where the job didn’t align with what I was looking for. Applied Math B.S, 6 years total experience, Data Analyst 2 years, MLE 2 years, MLOps 2 years all at one mid-sized company. Engineering side, mostly traditional ML. Very little deep learning, no Gen-AI/LLM work. Keep your LinkedIn up to date with past experiences, keywords, a photo of yourself, and a strong description (I found I got more recruiter messages when my LinkedIn was thoroughly filled out). Use an ATS-friendly resume, and be sure to tailor your resume to the language of job postings (especially use keywords); don’t go overboard though by copying and pasting entire sentences from job descriptions into your resume. Prioritize in-person roles, as your chances are higher than fully remote roles. Don’t bother applying for jobs postings that are more than a few days old; I found a better response rate when focusing on applying for newly posted jobs, since companies get inundated with applicants very quickly. Reach out to recruiters, too; they can get your foot in the door better than just applying on your own. Best of luck out there. It’s tough, but not impossible.
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Casually since November 2022 500ish apps/ 3 interviews all to final rounds/ 0 offers BS geology, MS DA, ~3 years BI side Haha nope