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Quanthub assginment McKinsey

McKinsey
Neue Antwort am 28. Jan. 2022
2 Antworten
2,2 T. Views
Anonym A fragte am 27. Jan. 2022

Hi I received invitation for Quanthub assginment for McKinsey How I can pass the exam please  ? which website can use for parctise ? I am just new to Data Science ?

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Ian
Experte
Content Creator
antwortete am 28. Jan. 2022
#1 BCG coach | MBB | Tier 2 | Digital, Tech, Platinion | 100% personal success rate (8/8) | 95% candidate success rate

Hi there,

I highly recommend you do some googling - there are plenty of resources out there.

Also, to poach a bit from an anonymous answer here:

https://www.preplounge.com/en/consulting-forum/mckinsey-quanthub-assessment-data-science-analyst-role-12223

 

“For future awareness / for anyone who was wondering, here’s my personal recommendation: 1. SQL: practice easy / medium questions on Leetcode and Hackerrank 2. Analyst (Data Wrangling, Exploring, Storing): Understand data architecture / warehouse / Snowflake principles (i.e. asynchronous replication, load balancers, etc.). Also, practicing SQL was helpful here (some questions around ‘which one of these queries would lead to an error?’) 3. Data Storytelling: Just understand key principles in data visualization (i.e. know when to use certain graphs, etc.) and interpreting graphs”

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Clara
Experte
Content Creator
antwortete am 28. Jan. 2022
McKinsey | Awarded professor at Master in Management @ IE | MBA at MIT |+180 students coached | Integrated FIT Guide aut

Hello!

To add on top, have a look at other Q&A answers in this same forum by searching by keyword, there is a ton of useful info you can leverage :)

Cheers, 

Clara

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