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Entry Level Embedded Software Engineer Robotics Jobs in Austin, TX

Software Engineer

Lockhart, TX · On-site

$130K - $165K/yr

About the Role Eden Tech is seeking a hands-on Software Engineer to support embedded sensing, control systems, and edge AI deployment for our Reverse Osmosis Centrifuge platform. This role will work ...

About the team Roku TV is where embedded systems, media experiences, and intelligent software come ... This is a hands-on engineering role for someone who treats AI agent design as an engineering ...

As a Software Engineer Intern on the Robot Software Team, you will be responsible for writing software and making sure your code works on an actual surgical robot, not just simulation. Our robotics ...

Our flagship humanoid robot, Apollo, is built to collaborate thoughtfully with people, starting ... embedded software that drives our in-house hand designs, including motor control, sensor ...

These embedded systems are core components that enable robots, including humanoids and mobile ... Collaborate with systems, electrical, mechanical, and software engineers to develop the next ...

Software Engineer, Embedded Agentic AI

Austin, TX · On-site

$130K - $171K/yr

About the team Roku TV is where embedded systems, media experiences, and intelligent software come ... This is a hands-on engineering role for someone who treats AI agent design as an engineering ...

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Entry Level Embedded Software Engineer Robotics information

See Austin, TX salary details

$69.4K

$152K

$172.5K

How much do entry level embedded software engineer robotics jobs pay per year?

As of Jul 13, 2026, the average yearly pay for entry level embedded software engineer robotics in Austin, TX is $152,035.00, according to ZipRecruiter salary data. Most workers in this role earn between $130,300.00 and $171,500.00 per year, depending on experience, location, and employer.

What are some typical challenges faced by entry-level embedded software engineers in robotics, and how can they best prepare for them?

Entry-level embedded software engineers in robotics often encounter challenges such as debugging hardware-software interactions, working with limited system resources, and adapting to rapidly evolving project requirements. To navigate these, it's helpful to develop a strong understanding of embedded C/C++ programming, become familiar with hardware debugging tools, and practice effective communication within multidisciplinary teams. Proactively seeking mentorship and participating in code reviews can also accelerate learning and help you adapt quickly to the fast-paced robotics environment.

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

To thrive as an Entry Level Embedded Software Engineer in Robotics, you need a solid understanding of C/C++ programming, microcontroller architectures, and a relevant engineering degree (such as Electrical, Computer, or Robotics Engineering). Familiarity with real-time operating systems (RTOS), debugging tools, and version control systems like Git is typically expected. Strong problem-solving skills, attention to detail, and effective collaboration are valuable soft skills in this role. These competencies ensure reliable software development, efficient teamwork, and the successful integration of software with robotic hardware.

What does an Entry Level Embedded Software Engineer in Robotics do?

An Entry Level Embedded Software Engineer in Robotics is responsible for designing, developing, and testing software that runs on embedded systems within robotic devices. They work closely with hardware engineers to ensure seamless integration between software and hardware components. Typical tasks include writing code in languages like C or C++, debugging, performing hardware-software integration, and supporting the development of real-time control systems. Their work is crucial for enabling robots to perform tasks autonomously and efficiently.

What is the difference between Entry Level Embedded Software Engineer Robotics vs Entry Level Firmware Engineer?

AspectEntry Level Embedded Software Engineer RoboticsEntry Level Firmware Engineer
Required CredentialsBachelor's in Electrical, Computer Engineering, or related field; knowledge of robotics systemsBachelor's in Electrical, Computer Engineering, or related field; experience with embedded systems
Work EnvironmentRobotics labs, manufacturing, research facilitiesConsumer electronics, automotive, industrial devices
Employer & Industry UsageRobotics companies, automation firms, research institutionsElectronics manufacturers, automotive, IoT companies
Common Search & ComparisonYesYes

Entry Level Embedded Software Engineer Robotics focuses on developing software for robotic systems, integrating sensors and actuators. Entry Level Firmware Engineer develops low-level software for embedded devices across various industries. While both roles require similar technical skills and educational backgrounds, their application environments and specific focus areas differ.

What are popular job titles related to Entry Level Embedded Software Engineer Robotics jobs in Austin, TX? For Entry Level Embedded Software Engineer Robotics jobs in Austin, TX, the most frequently searched job titles are:
What job categories do people searching Entry Level Embedded Software Engineer Robotics jobs in Austin, TX look for? The top searched job categories for Entry Level Embedded Software Engineer Robotics jobs in Austin, TX are:
What cities near Austin, TX are hiring for Entry Level Embedded Software Engineer Robotics jobs? Cities near Austin, TX with the most Entry Level Embedded Software Engineer Robotics job openings:

Sr. Embedded Machine Learning Engineer

Allen Control Systems

Austin, TX • On-site

$122K - $161K/yr

Full-time

Medical, Dental, Vision, PTO

Posted 4 days ago


Job description

Senior Embedded Machine Learning Engineer for Autonomous Anti-Drone Systems

Company Overview:

Allen Control Systems (ACS) is a cutting-edge defense startup founded by two former Navy electrical engineers with a proven track record in robotics and software. We are developing an autonomous gun turret using advanced computer vision and control systems to precisely detect, track, and neutralize enemy drones.

With an engineering-first culture, ACS values technical excellence and innovation. Backed by our founders' successful exits from two previous venture acquired for a combined $180M in 2022, we are committed to ensuring that the groundbreaking technologies we develop will have a real-world impact.

Position Summary:

We are hiring a Senior Embedded Machine Learning Engineer to own the end-to-end process of taking trained machine learning models including any code supporting them and deploying them efficiently onto resource-constrained edge hardware. This person sits at the intersection of machine learning, embedded systems, and hardware engineering.

The role has two tightly linked primary responsibilities: integrating, converting, and optimizing models so they run within strict constraints on latency, memory, power, and thermal budget; and building and integrating the supporting C++ code that runs the models on device and performs any necessary pre or post processing. The role is highly cross-functional. You will partner with CVML who build the models, with embedded and firmware teams who own the device, and with product teams who define performance targets. Success means models that are not just accurate in the lab but fast, small, and dependable in the field.

What You'll Do:

• Model optimization. Apply quantization, pruning, knowledge distillation, operator fusion, and graph optimization to shrink models and reduce inference cost while protecting accuracy.

• Model conversion and deployment. Convert trained models into formats suitable for edge runtimes using ONNX and TensorRT and deploy them to target hardware.

• Hardware bring-up and benchmarking. Profile inference on accelerators such as GPUs, NPUs, DSPs, TPUs, or FPGAs. Measure latency, throughput, memory footprint, and power, then drive the changes needed to hit targets.

• C++ application integration. Design, write, and maintain the supporting C++ code that hosts inference on device. This includes the application and library code that loads and runs models, the pre- and post-processing pipelines, data and memory management, threading, and the interfaces to the rest of the embedded system. Ensure the combined model and C++ stack meets real-time constraints, fits within the device memory budget, and behaves reliably on the target platform, using Python where appropriate for tooling and validation.

• Accuracy and quality validation. Build test harnesses that verify on-device accuracy against reference results and catch regressions introduced by optimization or quantization.

• Model update pipeline. Contribute to the tooling and processes for packaging, versioning, and delivering model updates to deployed devices, including over-the-air update paths where applicable.

• Cross-functional collaboration. Work closely with research, firmware, and product teams to set realistic performance targets early and to feed hardware constraints back into model design.

• Technical leadership. Set best practices for edge deployment, review designs and code, and mentor other engineers on optimization and embedded ML techniques.

What You'll Do:

  • Development and optimization of computer vision algorithms for our autonomous gun turret, focusing on real-time drone detection, tracking, and classification.

  • Design and implement machine learning models that can operate in resource-constrained environments while maintaining high accuracy and reliability.

  • Collaborate closely with electrical engineers to integrate computer vision systems into the turret's hardware architecture.

  • Conduct extensive testing and validation of computer vision algorithms in various scenarios to ensure robustness and performance under different environmental conditions.

  • Contribute to the hardening of the prototype turret into a military-grade system, and assist in developing variants for different weapon systems and engagement ranges.

What You'll Need:

  • A Bachelor's or Master's Degree in Computer Science, Electrical Engineering, Computer Engineering or a related field, or equivalent practical experience.

  • 10+ or more years of professional software or systems engineering experience, including at least 2 years focused on deploying ML models to embedded or edge devices.

  • Very strong proficiency in C/C++ (or Python but C++ most important)

  • Proficiency with CUDA

  • Hands-on experience with PyTorch and with at least one edge runtime or inference format (TensorFlow Lite, ONNX Runtime, TensorRT, or similar).

  • Practical experience with model optimization techniques such as quantization (post-training and quantization-aware), pruning, or distillation.

  • Demonstrated ability to profile and optimize for latency, memory, and power on constrained hardware.

  • Working knowledge of embedded or edge platforms (for example NVIDIA Jetson, Google Coral, Qualcomm, ARM Cortex, or comparable NPUs and SoCs) and of Linux or an RTOS.

  • Solid grasp of computer architecture concepts relevant to inference, including memory hierarchy, fixed-point arithmetic, and accelerator offload.

  • Domain experience in computer vision or sensor processing on device

 

What We Offer:

  • Competitive salary

  • ACS Equity Package

  • Health, Dental, Vision Insurance

  • Paid Time Off

Allen Control Systems is an Equal Opportunity Employer, providing equal employment opportunities to all employees and applicants for employment. Allen Control Systems prohibits discrimination and harassment of any type without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state or local laws.