Machine Learning Engineer

Reposted 18 Days Ago
New York, NY, USA
In-Office
150K-250K Annually
Mid level
Artificial Intelligence • Analytics • Consulting • Cybersecurity
Research Services
The Role
The ML Engineer will build, deploy, and iterate on ML systems, focusing on classification, human feedback loops, and working with real-world data.
Summary Generated by Built In

About 10a Labs: 10a Labs is the safety and threat-intelligence layer trusted by frontier AI labs, AI unicorns, Fortune 10 companies, and leading global technology platforms. Our adversarial red teaming, model evaluations, and intelligence collection enable engineering, safety, and security teams to stay ahead of evolving threats and deploy AI systems safely.

About The role: We’re looking for an experienced ML engineer with a strong foundation in traditional ML and hands-on experience applying those skills to modern LLM systems. This is an applied role for someone who owns the full ML lifecycle—from data pipelines and model training to evaluation, deployment, and ongoing iteration in real-world production environments.

At least 3–8+ Years of Industry Experience Required

In This Role, You Will:

  • Build and deploy a multi-stage classification system optimized for high throughput and low latency, while ensuring high recall and precision.
  • Integrate continuous feedback loops from human review to refine model performance.
  • Design and implement real-world ML systems with a focus on robustness, observability, and scalability.
  • Collaborate with researchers and SMEs to generate training data and test against edge cases.
  • Work closely with a broader team of engineers to integrate ML components into production systems and ensure end-to-end system performance.

We’re Looking For Someone Who:

  • Has designed and deployed full ML pipelines (data ingestion → model training → evaluation → deployment → feedback).
  • Comfortable working with noisy or adversarial real-world data, not just clean benchmarks.
  • Understands the performance tradeoffs between recall, precision, latency, and cost—and knows how to tune for impact.
  • Moves fast with strong instincts for where to prototype, where to systematize, and how to deliver models that hold up in production.
  • Brings curiosity, creativity, innovation, and a bias for action in ambiguous environments.

Requirements:

  • At least 3–8+ years of professional working experience as a Machine Learning engineer, building, owning and deploying machine learning systems in production.
  • Strong foundation in traditional ML techniques (e.g., clustering, anomaly detection, supervised learning).
  • Hands-on experience with LLMs (e.g., OpenAI, Claude, LLaMA), including fine-tuning and prompt engineering.
  • Proficiency in Python and modern ML / NLP tooling.
  • Experience training models on small datasets and using in-context learning techniques.
  • Familiarity with text processing pipelines, semantic embeddings, and vector search.
  • Clear communicator of complex technical concepts to non-technical audiences.
  • Experience deploying models in cloud environments (e.g., AWS, GCP).
  • Experience designing or integrating human-in-the-loop systems for model evaluation or policy alignment.

Nice To Have Experience With:

  • Real-time ML pipelines.
  • Scaled moderation or large-scale threat detection.
  • Vision, audio, OCR, or deepfake classification.
  • Designing multilingual embedding systems with code-switch detection.
  • Agentic pipelines for explainable or rationale-based moderation.
  • Rapid prototyping using modern LLM APIs and frameworks (e.g., OpenAI, Hugging Face, LangChain).
  • Error analysis and model forensics—comfortable diving into false positives and failure modes.

What Success Looks Like in the First 3 Months:

  • You’ve designed and deployed a functioning moderation system using semantic embeddings and fine-tuned classifiers to detect abuse at scale.
  • You've designed and refined at least one model evaluation pipeline, including precision / recall tracking and false positive analysis.
  • You've contributed meaningful ideas to data strategy—synthetic generation, clustering schema, or policy alignment tuning.
  • You’ve owned a full subsystem—from ideation to deployment—and seen it hold up under real usage and scrutiny.

Compensation & Benefits:

  • Salary Range: $150K–$250K, depending on professional experience, location, and other factors.
  • Bonus: Performance-based annual bonus.
  • Professional Development: Support for continuing education, conferences, or training.
  • Work Environment: Fully remote, U.S.-based.
  • Health Benefits: Comprehensive health, dental, and vision coverage.
  • Time Off: Generous PTO and paid holiday schedule.
  • Retirement: 401(k) plan.

Skills Required

  • 3-8 years of experience building and deploying machine learning systems in production
  • Strong foundation in traditional ML techniques
  • Hands-on experience with LLMs (e.g., OpenAI, Claude, LLaMA)
  • Proficiency in Python and modern ML/NLP tooling
  • Experience deploying models in cloud environments (e.g., AWS, GCP)

10a Labs Compensation & Benefits Highlights

The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about 10a Labs and has not been reviewed or approved by 10a Labs.

  • Healthcare Strength Benefits include comprehensive medical, dental, and vision coverage for full-time roles, listed across multiple postings. Coverage is presented as a core part of the package rather than a role-specific perk.
  • Leave & Time Off Breadth Positions frequently advertise generous PTO and paid holidays, with some roles noting unlimited PTO and flexible hours. This indicates substantial time-off provisions alongside remote work arrangements.
  • Strong & Reliable Incentives Compensation commonly includes performance-based annual bonuses and occasional spot bonuses. These incentives are presented as standard components for many roles.

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The Company
28 Employees

What We Do

10a Labs is an applied research and technology company specializing in AI security. We deliver intelligence collection, investigative research, and analysis for AI unicorns, Fortune 10 companies, and U.S. tech leaders.

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