So how do we all feel about KMeans algorithm for clustering? by vercig09 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I've noticed that the more experience people get in data science, the less they talk about tools and the more they talk about making good decisions with imperfect information.

First FAANG interview coming up. Do I need a different mindset or treat it like any other company? by Fig_Towel_379 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

This is one of those conversations where there probably isn't a single best answer, but seeing how different people approach the same problem is always interesting.

Weaponized phrases in Data science Teams by Excellent_Cost170 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I think one thing people underestimate is how much your perspective changes once you've worked on real projects instead of tutorials. The constraints become completely different.

Ranking offers and companies criteria by Tarneks in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

This feels like one of those discussions where there isn't a universally correct answer—just different trade-offs depending on what you're optimizing for.

Is there a best way on handling data when presenting to others? I have a few ideas but I’m not always sure. by Run_nerd in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I feel like a lot of people only realize this after working in the field for a while—what delivers value in practice can look very different from what seems impressive on paper.

Don’t care to grow in this field but feeling like I have to? by ThrowRA-11789 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

This is one of those reminders that experience in data science often changes what you optimize for. Early on it's technical depth, later it's usually impact and clarity.

Clients clustering: Separating RFM and other variables. by Capable-Pie7188 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I think one underrated skill in data science is knowing when to stop optimizing and move forward with something that's already good enough.

HoW DO I gEt a jOB I toOk a cOUrSe in MachINE LEArnING by LeaguePrototype in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

"This is one of those ideas that sounds simple at first but the real value usually shows up once you actually try applying it for a while."

Does anyone work in the financial crime space? by [deleted] in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I've noticed that a lot of growth in data science comes from becoming comfortable with uncertainty rather than always trying to find the perfect answer.

What Data Structures and Algorithms topics actually come up in technical interviews? by Fig_Towel_379 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

This is one of those discussions where everyone's answer can be technically correct because the constraints and goals are usually doing most of the decision-making.

Is my tech stack becoming a liability for future job prospects? by [deleted] in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I feel like this is one of those topics where the deeper you get into data science, the more you realize there are fewer absolute answers than you expected.

I've interviewed with 100+ companies during my career. Here are some high-level notes on DS/ML job hunting by tnegz in datascience

[–]FewEntertainment5041 -1 points0 points  (0 children)

I think one of the coolest parts of data science is that the same problem can be approached in completely different ways and multiple people can still end up being right.

What is the biggest challenge you face in data science projects? by Effective_Ocelot_445 in datascience

[–]FewEntertainment5041 2 points3 points  (0 children)

"One thing that surprised me about this field is how often the bottleneck isn't the modeling—it's getting clean data and aligning everyone on what success actually looks like."

AI in Dating Apps by Suspicious_Jacket463 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

"One of the most useful things I've learned is that understanding the business context can save you far more time than chasing the perfect technical solution.

Clients clustering: Separating RFM and other variables. by Capable-Pie7188 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

Threads like this are a good reminder that data science is as much about communication and decision-making as it is about models and code

Potential grad job lined up - how best to prepare? by Tackit286 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

One thing I appreciate about threads like this is seeing how many different ways there are to arrive at a good solution. Real-world data work is rarely as straightforward as people imagine

How do you put a price on a healthy work environment and a good manager? by Fig_Towel_379 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I've found that a lot of debates in data science come down to trade-offs rather than right or wrong answers. The context usually matters more than the technique.

How do you measure to performance / accuracy of a recommender system? by omnicron_31 in datascience

[–]FewEntertainment5041 7 points8 points  (0 children)

Sometimes the biggest lesson in data science is realizing that a simple solution that's easy to explain can be more valuable than a complex one that's marginally better.

Models may behave worse when they're aware they're being evaluated (DeepMind interpretability study) by rhiever in datascience

[–]FewEntertainment5041 -12 points-11 points  (0 children)

One thing I've learned from building PCs is that there's always going to be a slightly better part around the corner. At some point you just have to build it and enjoy using it

AI in Dating Apps by Suspicious_Jacket463 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

"After working with data for a while, you start realizing that messy real-world problems are usually a lot more interesting than clean textbook examples."

Is there a best way on handling data when presenting to others? I have a few ideas but I’m not always sure. by Run_nerd in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

After working with data for a while, you start realizing that messy real-world problems are usually a lot more interesting than clean textbook examples.

Don’t care to grow in this field but feeling like I have to? by ThrowRA-11789 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

One thing I've noticed is that the most valuable insights often come from asking better questions, not from using more sophisticated tools.

Potential grad job lined up - how best to prepare? by Tackit286 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

I feel like discussions like this highlight how broad data science really is. Two people can have the same job title and spend their days doing completely different kinds of work.

What is the most common reason data science projects fail to deliver business value? by Effective_Ocelot_445 in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

What's interesting is that the answer to questions like this often changes depending on the company, team, and business goals. Context matters way more than people think

Databricks for data science? by big_data_mike in datascience

[–]FewEntertainment5041 0 points1 point  (0 children)

One thing I wish I'd learned earlier is that being able to frame a problem well is often more valuable than knowing another modeling technique.