2

Entry Level Robotics Jobs in Washington (NOW HIRING)

This entry-level field role offers a strong opportunity for career growth within the utility ... Primary Responsibilities - Assist with preparing, locating, and maintaining robotic inspection ...

New

Recruiter

Falls Church, VA · On-site

$38K - $50K/yr

The firm's experience spans nearly 20 years and is focused across several domains, including financial management, analytics, and robotic process automation, (ERM) enterprise risk management, human ...

The firm's experience spans nearly 20 years and is focused across several domains, including financial management, analytics, and robotic process automation, (ERM) enterprise risk management, human ...

Accountant

Fairfax, VA · On-site

$68K/yr

Experience in using AI, automation tools, or RPA within finance or accounting; * Experience with ERP systems (e.g. Ellucian Banner, Workday, Oracle); * Demonstrated understanding of GAAP, financial ...

The firm's experience spans nearly 20 years and is focused across several domains, including financial management, analytics, and robotic process automation, (ERM) enterprise risk management, human ...

... products in robotic and autonomous platforms, ground, soldier, and maritime systems in 50 ... This entry-level role performs routine system maintenance tasks, assists with user account ...

... products in robotic and autonomous platforms, ground, soldier, and maritime systems in 50 ... This entry-level role performs routine system maintenance tasks, assists with user account ...

... products in robotic and autonomous platforms, ground, soldier, and maritime systems in 50 ... This entry-level role performs routine system maintenance tasks, assists with user account ...

... products in robotic and autonomous platforms, ground, soldier, and maritime systems in 50 ... This entry-level role performs routine system maintenance tasks, assists with user account ...

... Robotics - At least one of the following: Certifications aligned to data engineering, machine ... PwC does not intend to hire experienced or entry level job seekers who will need, now or in the ...

Entry Level Robotics information

See Washington salary details

$95.1K

$108.7K

$131.9K

How much do entry level robotics jobs pay per year?

As of Jun 21, 2026, the average yearly pay for entry level robotics in Washington is $108,729.00, according to ZipRecruiter salary data. Most workers in this role earn between $101,900.00 and $115,500.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as an Entry Level Robotics professional, and why are they important?

To thrive as an Entry Level Robotics professional, you need a solid understanding of robotics fundamentals, programming (such as Python or C++), and often a degree in engineering, computer science, or a related field. Familiarity with robotics platforms (like ROS), CAD software, and basic electronics or automation tools is typically required. Strong problem-solving abilities, teamwork, and effective communication help individuals stand out in this collaborative and innovative field. These skills and qualities are crucial for designing, testing, and improving robotic systems in a rapidly advancing industry.

How can I start my career in robotics?

To start a career in robotics, gain a strong foundation in STEM fields such as mechanical, electrical, or computer engineering, and learn programming languages like Python or C++. Pursuing relevant education, such as a bachelor's degree, and gaining hands-on experience through internships, projects, or robotics clubs can improve job prospects. Familiarity with robotics tools and platforms like Arduino or ROS is also beneficial.

How to get an entry-level robotics job?

To get an entry-level robotics job, candidates should develop foundational skills in programming, electronics, and mechanical design, often through relevant coursework or certifications. Gaining hands-on experience with robotics kits, internships, or projects can improve employability, and familiarity with tools like Arduino or ROS is beneficial. Entry-level roles typically require a strong understanding of basic robotics concepts and problem-solving abilities.

What types of projects or tasks can I expect to work on as an entry-level robotics engineer?

As an entry-level robotics engineer, you can expect to be involved in tasks such as assembling and testing robotic components, supporting software development for robotic systems, conducting experiments to validate sensors and actuators, and assisting senior engineers with troubleshooting and data analysis. You may also participate in team meetings to discuss project requirements and progress, and collaborate closely with specialists in mechanical, electrical, and software disciplines. These experiences help you build foundational skills and understanding that pave the way for more complex responsibilities as your career progresses.

What is the difference between Entry Level Robotics vs Entry Level Mechanical Engineer?

AspectEntry Level RoboticsEntry Level Mechanical Engineer
Required CredentialsAssociate's or Bachelor's in Robotics, Mechanical, or Electrical EngineeringBachelor's in Mechanical Engineering or related field
Work EnvironmentManufacturing, automation labs, research facilitiesDesign firms, manufacturing plants, R&D departments
Industry UsageRobotics companies, automation industriesAutomotive, aerospace, manufacturing sectors
Common Search/ComparisonYesYes

Entry Level Robotics and Entry Level Mechanical Engineer roles share similar educational backgrounds and work environments, often overlapping in manufacturing and automation sectors. While robotics roles focus on designing and programming robotic systems, mechanical engineering positions emphasize designing mechanical components and systems. Both are entry-level positions suited for recent graduates seeking careers in engineering and automation industries.

What are entry level robotics jobs?

Entry level robotics jobs are positions designed for individuals who are new to the robotics field, typically recent graduates or those with limited professional experience. These roles may involve assisting in the design, assembly, testing, and maintenance of robotic systems under the supervision of more experienced engineers or technicians. Common responsibilities include programming robots, troubleshooting technical issues, and supporting project teams in research and development. These jobs often require a background in engineering, computer science, or a related field, and provide valuable hands-on experience for career growth in robotics.

Is robotics a dead field?

Robotics is an active and growing field with applications in manufacturing, healthcare, automation, and research. Entry level robotics jobs often require skills in programming, electronics, and mechanical design, and demand continues to increase as technology advances.

What engineers make $500,000?

Highly experienced engineers in specialized fields such as software engineering, data engineering, or certain senior roles in aerospace and oil and gas industries can earn $500,000 or more annually. These positions often require advanced skills, certifications, and extensive industry experience, and may include bonuses or stock options that contribute to total compensation.
What are the most commonly searched types of Robotics jobs in Washington? The most popular types of Robotics jobs in Washington are:
What cities in Washington are hiring for Entry Level Robotics jobs? Cities in Washington with the most Entry Level Robotics job openings:
Infographic showing various Entry Level Robotics job openings in Washington as of June 2026, with employment types broken down into 42% Full Time, and 58% Part Time. Highlights an 91% Physical, 1% Hybrid, and 8% Remote job distribution, with an average salary of $108,729 per year, or $52.3 per hour.
Entry Level Machine Learning Engineer

Entry Level Machine Learning Engineer

Frederick Community College

Rockville, MD

Other

Posted yesterday


Job description

Entry Level Machine Learning Engineer

Temple Allen Industries is at the forefront of bringing AI and Machine Learning to industrial processes for high-value assets in aerospace, marine, wind power, and transportation markets. We are currently expanding our award-winning line of Smart Automation EMMAâ„¢ systems which promise to dramatically reshape surface preparation and the robotics, machine learning, and human augmentation landscape.

Position: Entry Level Machine Learning Engineer

We are seeking a highly skilled Machine Learning Engineer to join our dynamic team and lead projects within the Machine Learning Program. In this role, you will be responsible for completing projects associated with the training, deployment, optimization, and advancement of machine learning models that are currently running, or will be run, on the SA EMMA systems.

You should be interested in the full scope of the machine learning pipeline, including data collection, annotation, simulation, training, deployment, testing, benchmarking, and model optimization. Your passion for robotics will help fuel your work in improving the EMMA robotic solution. You should be excited to show off your work, teach peers about it, and uplift your team's skills by sharing your expertise.

You should also want to be part of the design process and be excited to participate in discussions with designers, engineers, and managers to understand the system holistically and implement machine learning solutions that bring real value to the artisan and the enterprise.

This role will expose you to complex and rewarding technical challenges, as well as real-world engineering and machine learning experience. You will work with a team of engineers and developers to meet the requirements of the overall EMMA system and the Machine Learning Program. Along the course of the project, mentorship and guidance will be provided to help you grow and advance your skills on both the technical and managerial fronts.

You will need to be organized, systematic, and self-driven to lead projects, successfully deliver machine learning solutions that achieve system-level performance and functional specifications, and participate in discussions coordinating the Machine Learning Program's long-term vision and objectives with other programs and major projects.

In this role, you will work on major projects that create and advance the machine learning approach used to continually improve cutting-edge robotic systems that push the boundaries of technology.

Requirements

  • Bachelor's or Master's degree in Machine Learning, Robotics, Computer Science, Computer Engineering, Electrical Engineering, or a related field.
  • Strong proficiency in modern C++ programming.
  • Previous experience in computer vision, machine learning, robotics, or real-time perception systems.
  • Previous experience training, testing, validating, and deploying machine learning models.
  • Experience with ROS and ROS2.
  • Experience with neural networks, CNNs, semantic segmentation, instance segmentation, object detection, and classification models.
  • Strong understanding of machine learning model architectures, including how layers, feature extractors, heads, parameters, and model size impact accuracy, latency, memory usage, and inference performance.
  • Experience analyzing model architecture to identify opportunities for optimization, simplification, pruning, quantization, layer reduction, or architecture tuning.
  • Ability to optimize models for faster inference on real-time robotic systems while maintaining acceptable accuracy, reliability, and system-level performance.
  • Familiarity with model optimization and deployment tools such as TensorRT, ONNX, TorchScript, OpenVINO, or similar frameworks.
  • Ability to implement and run machine learning models in real-time systems, edge devices, embedded systems, GPUs, or robotics platforms.
  • Experience benchmarking model performance using metrics such as inference time, FPS, latency, memory usage, GPU utilization, CPU utilization, and accuracy.
  • Experience using NVIDIA Isaac Sim or similar robotics simulation platforms for developing, testing, and validating robotic perception systems.
  • Familiarity with creating and configuring simulated robotic environments, including lighting, camera placement, sensor models, textures, object behaviors, aircraft geometry, and environmental conditions.
  • Experience generating synthetic image datasets from simulated environments to support machine learning model training, validation, and testing.
  • Experience creating or using RGB images, depth images, segmentation masks, annotation outputs, and other simulated sensor data for model development.
  • Familiarity with domain randomization techniques to improve model robustness across different lighting conditions, surface finishes, camera angles, environments, and real-world operating scenarios.
  • Experience comparing simulated data performance against real-world data and identifying gaps between simulation and deployment environments.
  • Exposure to cloud-based machine learning workflows, including training, testing, evaluating, and deploying models using platforms such as AWS, Azure, or Google Cloud.
  • Experience using cloud services such as AWS EC2, S3, Lambda, SageMaker, or similar tools for data storage, training pipelines, automation, and deployment.
  • Ability to manage large-scale datasets in cloud environments, including organizing, versioning, transferring, securing, and retrieving training data.
  • Familiarity with distributed training, GPU-based cloud instances, containerized machine learning workflows, and scalable model training pipelines.
  • Experience using Docker or similar containerization tools to support repeatable training, testing, and deployment environments.
  • Experience with data handling libraries and dataset preprocessing workflows.
  • Exposure to GPU programming, such as CUDA, is preferred.
  • Proficient in software development best practices, including version control systems, testing frameworks, code reviews, documentation, and maintainable software design.
  • Ability to create project deadlines, remain self-driven to meet those deadlines, and think critically about the long-term goals of the program.
  • Ability to coordinate technical work across programs and projects while aligning machine learning efforts with broader system objectives.
  • Ability to hold team members accountable and delegate project work efficiently.
  • Excellent problem-solving skills and strong attention to detail.
  • Eagerness to receive and implement direct feedback from the customer.
  • Strong written and verbal communication skills.
  • Ability to demonstrate strong time management skills.
  • Ability to work effectively in a collaborative team environment.
  • Ability to efficiently communicate and renegotiate requirements based on ongoing scopes of work.

Responsibilities

  • Lead and participate in system design discussions to generate performance and functional specifications for machine learning projects.
  • Research different machine learning models, understand their inputs, outputs, architectures, and limitations, and determine how they can be utilized for specific EMMA system tasks.
  • Train, test, validate, optimize, and deploy machine learning models for use on EMMA robotic systems.
  • Analyze existing machine learning model architectures to understand performance bottlenecks and identify opportunities for optimization.
  • Modify, simplify, or remove unnecessary model layers to improve inference speed while preserving required accuracy and reliability.
  • Apply model optimization techniques such as pruning, quantization, layer reduction, architecture tuning, knowledge distillation, and conversion to optimized runtime formats.
  • Convert trained models into deployment-ready formats such as ONNX, TensorRT, TorchScript, OpenVINO, or other runtime-optimized formats.
  • Benchmark models before and after optimization to validate improvements in inference speed, memory usage, GPU utilization, CPU utilization, and real-time system performance.
  • Evaluate tradeoffs between model size, accuracy, latency, compute requirements, hardware constraints, and deployment performance.
  • Work with robotics and software engineers to ensure optimized models meet the timing and performance requirements of the EMMA system.
  • Generate datasets and annotation requirements for future models, and lead junior engineers performing annotations.
  • Record desired camera and sensor data from EMMA systems to use for model training, validation, and testing.
  • Perform data manipulation tasks including labeling, cleaning, removing outliers, organizing metadata, and splitting data into training, validation, and test datasets.
  • Design and implement data collection pipelines for individual client sites.
  • Work with the network engineer to set up databases and cloud-connected storage systems to store, organize, and sort machine learning data.
  • Develop and maintain simulated environments in NVIDIA Isaac Sim or similar simulation platforms to support machine learning model training, validation, and testing.
  • Create realistic and domain-randomized simulation scenarios that vary lighting, surface conditions, camera angles, object placement, aircraft geometry, and environmental factors.
  • Generate simulated RGB images, depth images, segmentation masks, and other synthetic datasets to supplement real-world data collected from EMMA systems.
  • Design workflows for converting simulated outputs into usable training datasets with proper labels, annotations, and metadata.
  • Use synthetic and real-world datasets to improve perception tasks such as semantic segmentation, object detection, classification, feature recognition, surface identification, defect detection, and sanding-region identification.
  • Validate machine learning models using both simulated and real-world datasets to evaluate robustness