Job Search and Career Advice Platform

Enable job alerts via email!

STEM Computational Problem Creation Expert

hackajob

Remote

GBP 60,000 - 80,000

Part time

Today
Be an early applicant

Generate a tailored resume in minutes

Land an interview and earn more. Learn more

Job summary

A leading AI platform partner is seeking a STEM Computational Problem Creation Expert to design and verify computational STEM problems used for AI training datasets. The ideal candidate will have an MSc or PhD in a relevant field, with over 5 years of experience in computational problem-solving and strong Python skills. This remote, independent contract role requires a precise and methodical approach to ensure correct and reproducible outputs in scientific simulations.

Qualifications

  • 5+ years of computational or numerical problem-solving experience.
  • Strong Python programming skills.

Responsibilities

  • Design and verify original computational STEM problems.
  • Create deterministic computational problems that require Python to solve.
  • Document inputs, methods, constraints, and expected outputs.

Skills

Strong Python skills with libraries such as NumPy, SciPy, and Pandas
Numerical methods expertise
Experience validating numerical or algorithmic results

Education

MSc or PhD in Physics, Applied Mathematics, Engineering, or Scientific Computing
Job description
STEM Computational Problem Creation Expert (Remote, Contract)

Independant contract | Flexible | Remote

hackajob is partnering with a leading AI platform to support the development of advanced AI evaluation and training datasets.

We’re onboarding senior STEM experts to design fully deterministic, computationally intensive STEM problems used to train and evaluate next-generation AI systems.

What You’ll Do

You’ll design and verify original computational STEM problems that simulate real scientific and engineering workflows.

Your responsibilities include:
  • Creating deterministic computational problems that require Python to solve
  • Ensuring each problem has one correct, reproducible output
  • Implementing and validating Python reference solutions
  • Clearly documenting:
  • Inputs
  • Methods
  • Constraints
  • Expected outputs
  • Verifying numerical and algorithmic correctness

This role is ideal for professionals who enjoy numerical methods, simulations, optimization, and exact problem-solving.

Example Problem Types
  • Numerical integration with fixed boundary conditions
  • Deterministic Monte Carlo simulations (fixed seeds)
  • Combinatorial or graph enumeration
  • Optimization problems with a unique global optimum
  • Physics or engineering simulations with fully specified parameters

This role is about precision, determinism, and verification.

Ideal Background
  • MSc or PhD in:
  • Physics
  • Applied Mathematics
  • Engineering
  • Scientific Computing

5+ years of computational or numerical problem-solving experience

Strong Python skills (NumPy, SciPy, Pandas; sklearn where relevant)

Experience validating numerical or algorithmic results

Strong bonus if you have:
  • Research or post-doctoral experience
  • HPC or simulation-heavy work**Utility functions** We are given two anyone?…????..???.. We need..??……… This…..? ...….. ...??? ?????…..?……?…..… Scrolling? Wait. The prompt incomplete? maybe incorrectly parsed. Let's open alc court? : The problem statement maybe from another source. Let's guess:
Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.