Senior Machine Learning Engineer

Anno.ai

$120K — $160K *
US-AnywhereRemote in United States
Aerospace & Defense
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in Computer Science, Electrical Engineering, Data Science, or related field (Master's preferred)
  • 5+ years of experience in software engineering, machine learning engineering, or MLOps
  • Proven experience in operationalizing ML systems at production scale
  • Strong proficiency in Python and familiarity with a deep learning framework like PyTorch or TensorFlow
  • Hands-on experience with MLOps frameworks and workflow tooling like MLflow or Kubeflow
  • Experience deploying containerized ML services using Docker and orchestrating with Kubernetes
  • Understanding of CI/CD workflows and DevOps practices relevant to ML systems

Responsibilities

  • Build and maintain scalable machine learning pipelines for training, evaluation, and deployment
  • Translate mission requirements into deployable machine learning capabilities
  • Implement automated CI/CD workflows for ML systems
  • Manage ML runtime infrastructure using containerization and orchestration frameworks
  • Develop monitoring systems to track model health and performance
  • Ensure ML deployments meet security requirements and maintain data integrity
  • Integrate emerging MLOps technologies to enhance deployment speed and scalability

Benefits

  • Equity options
  • Comprehensive benefits package
  • 401k with a 5% company match
  • Generous paid time off and paid holidays
  • Paid leave programs
  • Patent bonus program
  • Employee referral bonus program
  • Learning and development opportunities
  • Collaborative work environment with highly skilled team members
Full Job Description
Position Overview

As a Senior Machine Learning Engineer at Anno.ai, you will design, develop, test, document, deploy, and maintain production machine learning and statistical modeled software to automate processes and streamline our customer's mission operations. MLEs work directly with product, user-facing, hardware, and platform teams to deliver the highest quality products. You will join a team of beasts known as "Annomals" are notable for their practical, mission-driven, and fun demeanor. MLEs work directly with product, user-facing, hardware, and platform teams to deliver the highest quality products, and because of these diverse interfaces, we value good, seasoned judgment in your approach to management, your career growth, and maintaining ethical and responsible practices.

For this opportunity we are looking for MLEs who have a fairly uniform distribution of talent across a breadth the range of machine learning tasks and skills. You are an experienced MLE, part solid software engineer, and part modeling expert. You have been through the trenches and bring key knowledge and intuition through your combination of training and experience.

Candidates need to be able to obtain and maintain U.S. Government security clearance (U.S. citizenship required). Candidates must be able to travel up to 20% of the time.

What You Will Do
  • Operationalize machine learning models by building and maintaining robust, scalable pipelines for training, evaluation, deployment, and lifecycle management across cloud, on-prem, and edge compute environments
  • Work closely with autonomy researchers, software engineers, systems teams, and field operators to translate mission requirements into deployable ML capabilities
  • Implement automated CI/CD workflows tailored to ML systems, ensuring repeatable experiments, reliable packaging, and continuous delivery of both up to date models and associated data pipelines
  • Manage ML runtime infrastructure using containerization and orchestration frameworks (e.g., Docker, Kubernetes) and incorporating model serving platforms (e.g., Seldon, KServe, BentoML)
  • Develop monitoring systems to track model health, performance, data drift, system utilization, and mission relevance using tools such as Prometheus, Grafana, and ELK/EFK stacks
  • Ensure ML deployments meet defense, customer, and platform security requirements, with emphasis on data integrity, traceability, and operational reliability
  • Evaluate and integrate emerging MLOps, distributed training, and edge inference technologies to enhance reproducibility, extensibility, scalability, and deployment speed of ML systems

Required Qualifications
  • Bachelor's degree in Computer Science, Electrical Engineering, Data Science, or a related technical field (Master's preferred)
  • 5+ years of professional experience in software engineering, machine learning engineering, MLOps, or related roles
  • Experience operationalizing ML systems at production scale, including model training, versioning, packaging, deployment, and monitoring
  • Strong proficiency in Python and familiarity with at least one deep learning framework (e.g., PyTorch, TensorFlow)
  • Hands-on experience with MLOps frameworks and workflow tooling (e.g., MLflow, Kubeflow, Airflow, DVC, BentoML)
  • Experience deploying containerized ML services using Docker and orchestrating workloads using Kubernetes (including air-gapped or constrained deployments)
  • Understanding of CI/CD workflows and DevOps practices applied to ML systems (e.g., Git, Code Review, Metrics Evaluation)
  • Familiarity with monitoring, observability, and logging platforms (e.g., Prometheus, Grafana, ELK/EFK)
  • Ability to obtain and maintain U.S. Government security clearance (U.S. Citizenship required)
  • Ability to travel up to 20%

Preferred Qualifications
  • Experience with deploying models and associated runtimes to Edged Devices
  • Experience optimizing models for memory and CPU constrained systems (e.g., embedded systems, microcontrollers)
  • Prior experience supporting U.S. Department of War programs, cUAS systems, or mission-critical autonomous platforms
  • Experience working with diverse or atypical data sources (e.g., Audio/Acoustics, RF signals, EO/IR imagery)
  • Experience deploying and optimizing ML inference on edge or resource-limited compute systems
  • Experience with Explainable/Auditable AI/ML tools and interpretable model design
  • Experience with AI Software Development Tools (e.g., GitHub CoPilot, Claude)

Quick Note on Role Fit

If you think you have what it takes to fulfill this opportunity, but don't necessarily check every box, please still connect with us at [email protected] by sharing your resume and cover letter. Feel free to send a cover letter so we can get to know you better!

Total Rewards Package for Our US Employees
  • Competitive salary
  • Equity
  • Comprehensive benefits package
  • 401k with a 5% company match
  • Paid holidays and generous paid time off offering
  • Paid leave programs
  • Patent bonus program
  • Employee referral bonus program
  • Learning and development program
  • Opportunity to work with a team of highly skilled, creative and motivated team members

Quick Note on Role Fit

If you think you have what it takes to fulfill this opportunity, but don't necessarily check every box, please still connect with us at [email protected]. Feel free to send a cover letter so we can get to know you better!

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