Skip to content

Machine Learning Engineer
Company | Noetica |
---|
Location | New York, NY, USA |
---|
Salary | $187000 – $270000 |
---|
Type | Full-Time |
---|
Degrees | Master’s, PhD |
---|
Experience Level | Junior, Mid Level |
---|
Requirements
- An MS or PhD in Computer Science, Machine Learning, or a related field with a focus in ML/AI.
- 2+ years of professional software engineering experience.
- Practical experience with traditional NLP techniques and modern LLM architectures.
- Proficiency with Python, PyTorch/TensorFlow, and ML deployment pipelines.
- Direct experience building and fine-tuning language models for specialized domains.
- Strong experience designing effective evaluation metrics for NLP systems.
- Strong communication and collaboration skills.
- A self-starting, problem-solving approach biased towards action and scope minimization.
Responsibilities
- Build ML models and pipelines with scalability and reproducibility as foundational principles, not afterthoughts.
- Develop NLP systems that can accurately process and understand complex legal language and terminology.
- Design and implement LLM-based solutions that are well-documented, and empower legal professionals to extract valuable insights.
- Extend and create reliable model evaluation frameworks that ensure accuracy and reduce the risk of model drift or bias.
- Simplify complex ML systems into more manageable solutions that are easier to understand, maintain, and explain.
- Optimize model performance through smart feature engineering and efficient algorithm selection based on actual use cases.
- Work with security engineers to implement responsible AI practices that protect sensitive data while still delivering valuable insights.
Preferred Qualifications
- You have experience implementing ML systems in regulated industries.
- You have experience optimizing model performance and resource utilization in data-intensive environments.
- You have a strong background in legal text analysis or have worked with legal domain experts.
- You have experience with few-shot learning and prompt engineering techniques.
- You are interested in language, law, finance, or economics.
- You thrive in a high-leverage, fast-paced environment.