ML Engineer
hirecrap
Job Description
- Work with real-world ML codebases to support MLE Bench–style evaluation tasks.
- Build, run, and modify model training, evaluation, and inference pipelines.
- Prepare datasets, features, and metrics for ML benchmarking and validation.
- Debug, refactor, and improve production-like ML systems for correctness and performance.
- Evaluate model behavior, failure modes, and edge cases relevant to benchmark tasks.
- Write clean, reproducible, and well-documented Python code for ML workflows.
- Participate in code reviews to ensure high standards of engineering quality.
- Collaborate with researchers and engineers to design challenging, real-world ML engineering tasks for AI system evaluation.
Requirements:
- Minimum 3+ years of overall experience as a Machine Learning Engineer or Software Engineer (ML-focused).
- Strong proficiency in Python for machine learning and data workflows.
- Hands-on experience with model training, evaluation, and inference pipelines.
- Solid understanding of machine learning fundamentals (supervised/unsupervised learning, evaluation metrics, optimization).
- Experience working with ML frameworks (e.g., PyTorch, TensorFlow, JAX, or similar).
- Ability to understand, navigate, and modify complex, real-world ML codebases.
- Experience writing readable, reusable, and maintainable production-quality code.
- Strong problem-solving and debugging skills.
- Excellent spoken and written English communication skills.