
AIG Data Scientist interview typically runs 4 rounds: recruiter call, three interviews, then offer stage. The process usually takes about two months and can end with late-stage title or level changes.
$133K
Avg. Base Comp
$161K
Avg. Total Comp
4-5
Typical Rounds
2 months
Process Length
We’ve seen AIG evaluate data scientists with a fairly conventional technical surface, but the candidate experience suggests the bar is less about novelty and more about whether you can operate cleanly at the level you’re claiming. In the one detailed report we have, the candidate moved through conversations with multiple stakeholders, including a senior director of data science, and described the technical portion as smooth and straightforward. That lines up with a process that seems to reward candidates who can answer core modeling questions crisply — even something as basic as Lasso vs. Ridge can be used as a proxy for whether you understand tradeoffs, not just terminology.
What stands out more is the mismatch between how candidates are evaluated and how the offer is ultimately handled. A recurring theme in this account is that the company appeared to assess the candidate as senior throughout, then later tried to down-level the role and reset compensation. That tells us AIG may be highly sensitive to internal leveling and budget constraints, even after technical approval. Our candidates should read that as a signal to make title and scope alignment explicit early, because the real risk here is not failing the interview — it’s discovering late that the company’s idea of the role is narrower than yours.
Synthetized from 1 candidates reports by our editorial team.
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Real interview reports from people who went through the Aig process.
I went through the process for a Senior Data Scientist role, and the part that stood out most was how long it dragged on before the offer stage. After the recruiter call, I spoke with three people, including the senior director of data science, and the technical conversations went smoothly for me — I didn’t miss a question in those rounds. The interviews themselves felt pretty standard on the surface, but there wasn’t much room for error because they were clearly evaluating me at a senior level.
What really soured the experience was the end of the process. After about two months, HR came back with what felt like a bait-and-switch and tried to down-level me from Senior Data Scientist to Data Scientist. The compensation discussion started around $130k-$140k and then got pushed down even further to roughly $120k-$130k on the last call, which was frustrating after being assessed for a senior role the whole time. I ended up declining the offer. My takeaway is to be very direct early about title and comp expectations, because the technical rounds may go fine, but the offer stage is where the real negotiation seems to happen.
Prep tip from this candidate
Be very explicit with the recruiter about title level and compensation range before investing time in the later rounds, since the offer stage is where the mismatch showed up here. Also be ready for senior-level technical screening with multiple interviewers, including a senior director.
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Sourced from candidate reports and verified by our team.
Topics based on recent interview experiences.
| Question | |
|---|---|
| Generative vs Discriminative | |
| 2nd Highest Salary | |
| Employee Salaries | |
| Bagging vs Boosting | |
| Booking Regression | |
| P-value to a Layman | |
| Size of Joins | |
| WAU vs Open Rates | |
| Hurdles In Data Projects | |
| Random Forest Explanation | |
| Scalped Ticket | |
| Precision and Recall | |
| Missing Housing Data | |
| Three Zebras | |
| Assumptions of Linear Regression | |
| Success Measurement | |
| Target Indices | |
| Integer String Addition | |
| Classification and Regression | |
| Poker Pair | |
| Fine-Tuning VS RAG | |
| Duplicate Rows | |
| Data Preparation for Imbalanced Data | |
| Type I and II Errors | |
| Modifying a Billion Rows | |
| Same Characters | |
| Second Ace | |
| Overfit Avoidance | |
| Swap Variables |
Synthesized from candidate reports. Individual experiences may vary.
An initial recruiter call to discuss the Senior Data Scientist/Data Scientist role, background, and fit. This appears to be the first step before moving into the technical interviews.
The candidate spoke with three people, including the senior director of data science. These rounds were described as standard technical conversations, but they were evaluated at a senior level and left little room for error.
After roughly two months, HR re-engaged to discuss title and compensation. The candidate reported a down-leveling attempt from Senior Data Scientist to Data Scientist, with compensation expectations shifting downward during the final negotiation calls.