Data analysts have become a key part of how companies operate, innovate, and grow in an era where data drives nearly every decision.
The role of a data analyst is deeply embedded across teams, from streamlining business operations to driving strategic product decisions.
Analysts work on everything from marketing to engineering, product, and beyond.
But what exactly does a data analyst do?
What skills do you need to enter this field or work at top tech companies like Amazon, Meta, Google, and fast-growing startups?
At its core, a data analyst translates data into insight and insight into action.
That sounds broad, because it is.
The specifics vary by company, team, and title, but most data analysts:
In large tech companies, analysts often specialize.
For example:
Regardless of title or team, all strong analysts solve problems with data and clearly communicate their thinking.
You’ve probably come across various titles:
These roles are often variations of the same core responsibilities, with slight differences in tools, scope, or domain expertise.
Here's a quick breakdown of how analyst roles differ:
Larger Tech Companies | Startups & Smaller Teams |
---|---|
Roles are well-defined and specialized | Titles are broader; responsibilities overlap |
Clear separation (e.g., BI Engineer vs. Product Analyst) | Analysts wear multiple hats (data pipelines, dashboards, analysis) |
Through hundreds of job descriptions and interviews with hiring managers at companies like Meta, Amazon, and Uber, we identified the skills that actually matter.
They fall into three broad categories:
These are non-negotiable in almost every data analytics role:
Hiring managers don’t just want analysts who can write clean SQL. They want business-savvy problem solvers who can:
Here are the tools top analysts rely on:
Tool | Purpose |
---|---|
SQL | Extracting and analyzing structured data |
Excel/Google Sheets | Rapid prototyping, reports, and quick stakeholder insights |
Tableau / Looker / Power BI | Building interactive dashboards and visual storytelling |
Python / R | Automating workflows, deeper statistical modeling (if needed) |
A/B Testing Platforms | Experimentation, feature rollout analysis |
Data analysts' ability to connect data to business value sets the best ones apart.
For example, imagine you’re asked:
“Sales dropped 25% last month—how would you investigate it?”
Strong candidates don’t just start querying tables.
They ask the right questions, prioritize metrics, form hypotheses, and tie results back to stakeholders' goals.
We built our Data Analytics Interview Course to do one thing: help you succeed.
What’s inside:
If you aim to become a high-impact data analyst—one who doesn’t just analyze, but drives strategy—this is your playbook.
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