---- Meta Interview Prep Data Science Product Analytics

This class was created by Brainscape user Mario Pilac.

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Decks in this class (24)

Meta Metric Tree Fundamentals
What is meta s universal metric d...,
What are the three pillars of any...,
Why does meta use volume x qualit...
41  cards
Metric Tree Rapid Fire Drills
Blank 1,
Build a metric tree feed likes 2,
Build a metric tree reels watch t...
31  cards
5-10-15
Build a metric tree 5s 10s 15s re...,
Build a metric tree feed likes 2,
Build a metric tree reels views 3
22  cards
Meta Metrics Mastery
What is a volume metric 1,
What is a quality metric 2,
What is a depth intensity metric 3
37  cards
presto
Does presto support range and row...,
Why does meta never use range for...,
What window frame does meta expec...
31  cards
Module C: Experiment Diagnosis & CUPED (Meta Product Analytics)
What is the meta experiment diagn...,
What is your first sentence when ...,
After srm what do you check 3
61  cards
Experiment Math Basics (Explicit)
What is difference in an experime...,
What is variance 2,
What is standard error se 3
10  cards
Pillar 1: Metrics & Systems Thinking
What is the general meta metric f...,
What are the 3 main drivers of an...,
What is the core system thinking ...
36  cards
Pillar 2: Experimentation & Statistics
0  cards
Pillar 3: SQL & Analytical Reasoning
0  cards
Pillar 4: Product Interpretation & Root-Cause Analysis
0  cards
Pillar 5: Communication & Structured Answers
0  cards
DECK 1 — Core Framework (Volume Decomposition)
What is the general volume formul...,
What does users measure 2,
What does frequency measure 3
6  cards
7 Frameworks
When do you use the multi stakeho...,
When do you use the product healt...,
When do you use metric decomposit...
7  cards
Framework 1 — Multi-Stakeholder
What are the 4 stakeholders you c...,
Why is the user the primary stake...,
Why is the advertiser a key stake...
5  cards
Framework 2 — Product Health (Upstream → Core → Downstream)
What is upstream health 1,
What is core health 2,
What is downstream health 3
4  cards
Framework 3 — Metric Decomposition
Blank 1,
What is canonical meta metric dec...,
Why do we use rate instead of con...
10  cards
Framework 4 — Quality Framework
What are the 4 dimensions of qual...,
What is relevance in quality metr...,
What is utility in quality metrics 3
5  cards
Framework 5 — Tradeoff Framework
What are the three universal trad...,
Why do tradeoffs matter 2,
Example of a tradeoff in ads 3
3  cards
Framework 6 — Experimentation Framework
What are the steps of the meta ex...,
Why are guardrails essential 2,
What is a high quality hypothesis 3
3  cards
Framework 7 — Diagnostic Framework
What is the first step in diagnos...,
What is localization in diagnosti...,
Why compare cohorts 3
5  cards
G-C-MM-E Maste overview
What is the g c mm e framework an...,
When should i apply g c mm e 2,
What is the purpose of step g goa...
30  cards
G-C-MM-E Microdeck
G c mm e framework 1,
Step g the most important clarifi...,
Step c triggering the right frame...
12  cards
RATE MASTERY DECK — 7 CARDS
Rate metric 1,
Correct denominator opportunities...,
Quality rate 3
7  cards

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---- Meta Interview Prep Data Science Product Analytics

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