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Adversarial Attack Detection Jobs (NOW HIRING)

Sr. Machine Learning Engineer

Charleston, WV ยท Remote

$107K - $146K/yr

Research and evaluate emerging techniques in face liveness detection, presentation attack detection (PAD), deepfake detection, biometric authentication, and adversarial machine learning to strengthen ...

Sr. Machine Learning Engineer

$107K - $146K/yr

Research and evaluate emerging techniques in face liveness detection, presentation attack detection (PAD), deepfake detection, biometric authentication, and adversarial machine learning to strengthen ...

Security Engineer (Blue Team)

Hawthorne, CA ยท On-site +1

$145K - $175K/yr

Build and improve existing security detection mechanisms and automation frameworks that directly ... Knowledge of common Red Team and Adversarial attack trends and techniques, and the evidence sources ...

Security Engineer (Blue Team)

Redmond, WA ยท On-site +1

$145K - $175K/yr

Build and improve existing security detection mechanisms and automation frameworks that directly ... Knowledge of common Red Team and Adversarial attack trends and techniques, and the evidence sources ...

... detection, and actioning. * Analyze and verify escalations of suspected fraud from internal and external Adobe teams. * Utilize reverse engineering techniques to disrupt adversarial attack vectors.

Sr. Adversarial AI Security Engineer

Atlanta, GA ยท On-site +1

$110K - $151K/yr

... as well as the company's ability to detect and respond to these types of attacks. Key ... Prepare reports containing attack paths, findings/vulnerability information, and mitigation options ...

Security Engineer (Blue Team)

Redmond, WA ยท On-site +1

$145K - $175K/yr

Build and improve existing security detection mechanisms and automation frameworks that directly ... Knowledge of common Red Team and Adversarial attack trends and techniques, and the evidence sources ...

Security Engineer (Blue Team)

Hawthorne, CA ยท On-site

$145K - $175K/yr

Build and improve existing security detection mechanisms and automation frameworks that directly ... Knowledge of common Red Team and Adversarial attack trends and techniques, and the evidence sources ...

Security Engineer (Blue Team)

Hawthorne, CA ยท On-site +1

$145K - $175K/yr

Build and improve existing security detection mechanisms and automation frameworks that directly ... Knowledge of common Red Team and Adversarial attack trends and techniques, and the evidence sources ...

Security Engineer (Blue Team)

Redmond, WA ยท On-site

$145K - $175K/yr

Build and improve existing security detection mechanisms and automation frameworks that directly ... Knowledge of common Red Team and Adversarial attack trends and techniques, and the evidence sources ...

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Adversarial Attack Detection information

What is adversarial attack detection?

Adversarial attack detection refers to the process of identifying and mitigating attempts to fool machine learning models by introducing subtle, intentionally crafted inputs known as adversarial examples. These attacks can cause models, especially in image, speech, and text recognition, to make incorrect predictions or classifications without obvious changes to human observers. Detecting such attacks is crucial for ensuring the robustness and security of AI systems, particularly in sensitive applications like autonomous vehicles, healthcare, and cybersecurity. Methods include statistical analysis, anomaly detection, and model training techniques specifically designed to spot adversarial manipulations.

What are the key skills and qualifications needed to thrive as an Adversarial Attack Detection Specialist, and why are they important?

To thrive in Adversarial Attack Detection, you need a strong background in computer science, machine learning, and cybersecurity, often supported by a relevant degree and experience in AI security. Familiarity with frameworks like TensorFlow or PyTorch, knowledge of adversarial machine learning techniques, and certifications such as Certified Ethical Hacker (CEH) are typically required. Analytical thinking, problem-solving, and effective communication skills help professionals identify threats and collaborate with cross-functional teams. These skills and qualities are crucial for detecting, mitigating, and preventing sophisticated attacks on AI systems, thereby ensuring the integrity and reliability of digital infrastructure.

What is the difference between Adversarial Attack Detection vs Cybersecurity Analyst?

AspectAdversarial Attack DetectionCybersecurity Analyst
Required CredentialsKnowledge of machine learning, AI security, certifications like CEH or CISSP beneficialCertifications like CISSP, CISA, or Security+ often required
Work EnvironmentFocus on AI systems, machine learning models, and threat detection toolsNetwork security, incident response, and vulnerability assessment in IT environments
Industry UsagePrimarily in AI, tech, and cybersecurity sectors dealing with AI model securityAcross finance, government, healthcare, and tech sectors for overall security

Adversarial Attack Detection specialists focus on identifying and mitigating threats aimed at AI models, while Cybersecurity Analysts handle broader security threats across IT systems. Both roles require security certifications but differ in their technical focus and work environment.

What are some common challenges faced when working in adversarial attack detection roles?

Professionals in adversarial attack detection often face the challenge of keeping up with rapidly evolving attack techniques, as adversaries continually develop new methods to bypass defenses. Another common difficulty is balancing security measures with system usability, ensuring that detection does not introduce excessive false positives or degrade user experience. Additionally, collaboration with other cybersecurity and machine learning teams is crucial, as sharing insights and data can improve detection accuracy and response times.
Infographic showing various Adversarial Attack Detection job openings in the United States as of June 2026, with employment types broken down into 1% As Needed, 90% Full Time, 6% Part Time, and 3% Contract. Highlights an 86% Physical, 4% Hybrid, and 10% Remote job distribution.
Sr. Machine Learning Engineer

Sr. Machine Learning Engineer

Mitek Systems

Charleston, WV โ€ข Remote

$107K - $146K/yr

Full-time

This job post hasย expired 1 day ago.ย Applications are no longer accepted.


Job description

Mitekย (NASDAQ: MITK)ย is a global leader in digital & biometric identity authentication, fraud prevention, and mobile deposit solutions. Our verified identity platform and advanced image capture solutions are built on the latest advancements in biometric recognition, artificial intelligence, computer vision and machine learning, and trusted by over 7,500 organizations worldwide. We are headquartered in San Diego, California, with operations in the United Kingdom, Spain, France, Mexico, and the Netherlands. Visit us atย www.miteksystems.com.

We are Virtual 1st!ย Whether you choose to work remotely from your home office or in-person from one of Mitekโ€™s offices, our practices, processes and tools are designed to enable your success. At Mitek, the Future of Work is about flexibility and preference wherever and whenever we are working. Because we care about our candidates, employees and customers, we include an in-person meeting as part of our hiring process. Itโ€™s one of the ways we live our mission to โ€œProtect Whatโ€™s Real.โ€

At Mitek, we believe that teams are more resilient, effective, and innovative when they benefit from a wide range of ideas, lived experiences, and perspectives. The strength of our organization is deeply rooted in the people who power it.โ€‹ We know that a workforce reflecting the richness of our communities and customers helps us better serve their needs.


About Mitek Systems:ย 
Specializing in identity verification, authentication, biometrics, image capture, and fraud detection, our products ensure swift onboarding, instant identity verification, and robust defense against rising threats, such as check fraud, deepfakes, and AI-powered fraud. Trusted by millions globally, our enterprise-grade solutions are relied on by some of the world's leading enterprises, offering peace of mind for both the company and their customers. Our mission is simple but essential:ย To protectย what'sย real.ย 
ย 
The Impact You'll Make:
As a Sr. Machine Learning Engineer, you will lead applied ML initiatives that power our next-generation Identity Verification (IDV) engine. You'll work hands-on across the full lifecycleโ€”from data collection and organization to model design, training, evaluation, deployment, and production monitoringโ€”delivering models that are accurate, efficient, and resilient in real-world adversarial environments. This role is focused on computer vision and image-based machine learning problems rather than NLP/LLM-first systems.

This role is centered on biometric identity verification, face liveness detection, presentation attack detection (PAD), and anti-spoofing technologies. You will help develop and improve systems designed to detect fraud, replay attacks, deepfakes, and other forms of identity manipulation while improving the accuracy, robustness, and scalability of our identity verification platform.

What Youโ€™ll Do (Essential Responsibilities):
  • Build, train, and optimize computer vision models for image classification, face liveness detection, and presentation attack detection (PAD) / anti-spoofing.
  • Work on real-world identity verification and biometric authentication problems, improving model performance on noisy, adversarial inputs such as spoofed images, replay attacks, deepfakes, and synthetic media.
  • Design and run experiments to improve model accuracy, recall, robustness, and fraud detection performance using techniques such as augmentation, class balancing, architecture tuning, and hard-negative mining.
  • Design, train, and improve deep learning models (e.g., CNNs, Vision Transformers, and foundation models), including loss function design, hyperparameter optimization, and performance tuning on large-scale image datasets.
  • Prepare and curate large, noisy datasets, including data ingestion, validation, cleaning, deduplication, labeling strategies, and dataset QA to improve model reliability and generalization.
  • Develop evaluation protocols and success metrics that balance fraud detection effectiveness, false acceptance rates, false rejection rates, and overall business impact.
  • Develop production-grade training and inference pipelines on AWS with strong reproducibility, monitoring, observability, and cost controls.
  • Productionize models as resilient Python services and libraries; collaborate with platform teams to optimize APIs, latency, scalability, and operational reliability.
  • Contribute to the evolution of our Identity Verification (IDV) platform by modernizing legacy components and improving model performance, maintainability, and modularity.
  • Partner closely with Product, Customer Success, Fraud, and Platform Engineering teams to ensure ML solutions meet privacy, compliance, security, and reliability requirements.
  • Support and mentor other engineers through design reviews, code reviews, experimentation best practices, and knowledge sharing.
  • Research and evaluate emerging techniques in face liveness detection, presentation attack detection (PAD), deepfake detection, biometric authentication, and adversarial machine learning to strengthen our fraud prevention capabilities.
Who You Are (Soft Skills/Attributes):
  • Analytical, curious, and creative in approaching complex machine learning and computer vision challenges.
  • Strong problem solver who can break down ambiguous problems, develop hypotheses, and use data to drive decisions.
  • Comfortable working in adversarial domains where fraud patterns and attack methods evolve over time.
  • Effective communicator who can clearly explain technical concepts, experimental results, tradeoffs, and recommendations to both technical and non-technical stakeholders.
  • Collaborative team player who enjoys partnering across engineering, product, fraud, and platform teams to deliver impactful solutions.
  • Self-motivated and adaptable, with the ability to manage multiple priorities in a fast-paced environment.
  • Experienced in designing, implementing, testing, and maintaining production-quality software and machine learning systems.
  • Strong debugging and troubleshooting skills across data pipelines, model training workflows, and production services.
  • Committed to continuous learning and staying current with advancements in computer vision, deep learning, biometric authentication, fraud detection, and related technologies.
What You Need (Required Knowledge, Skills & Abilities):
  • Bachelor's degree in Computer Science, Electrical Engineering, Computer Engineering, or a related technical field (or equivalent professional experience).
  • 5+ years of experience in applied machine learning, computer vision, or ML engineering with strong software engineering fundamentals (or equivalent combination of education and experience).
  • Strong Python programming skills and experience building production-quality machine learning systems.
  • Experience developing and deploying computer vision models for image classification, detection, segmentation, or related image-based learning tasks in production environments.
  • Hands-on experience designing, training, evaluating, and optimizing deep learning models using PyTorch or TensorFlow.
  • Strong computer vision background, including experience with CNNs, Vision Transformers, foundation models, image processing, and feature extraction techniques.
  • Experience working with large-scale image datasets, including data preprocessing, augmentation, labeling strategies, dataset QA, and model evaluation.
  • Understanding of model performance tradeoffs, including precision, recall, false positive rates, false negative rates, and robustness in real-world environments.
  • Proven ability to build reliable training and inference pipelines and collaborate on production deployment of machine learning systems.
  • Strong communication and collaboration skills with the ability to work effectively across engineering, product, fraud, operations, and platform teams.
  • Experience evaluating and improving model performance in adversarial, noisy, or highly imbalanced datasets
What Would be Nice (Preferred Skills & Experience):
  • Experience running ML in production, including containerization (Docker), CI/CD, monitoring, model/version management, and troubleshooting data and model issues end-to-end.
  • Experience optimizing models for real-time constraints using techniques such as quantization, distillation, pruning, ONNX, and CPU/GPU inference optimization.
  • Experience with model interpretability and debugging techniques such as Grad-CAM, saliency maps, feature visualization, error analysis, and targeted evaluation.
  • Experience with biometric authentication, face recognition, face liveness detection, presentation attack detection (PAD), anti-spoofing, deepfake detection, identity verification, or related fraud detection systems is strongly preferred.
  • Experience working with face-based systems, biometric image data, or adversarial computer vision problems is a strong plus.
  • Experience with synthetic data generation, domain adaptation, data augmentation, or techniques for improving model robustness and generalization in real-world environments.
Our Tech Stack Includes:
  • Cloud: AWS (AWS-native services for AI/ML and production workloads)ย 
  • Languages: Pythonย 
  • Data & Storage: S3, DynamoDB, MongoDB (varies by service)ย 
  • ML Platform: SageMaker (plus standard tooling for training, evaluation, and monitoring)ย 
  • ML Tools:ย Tensorflow,ย PyTorch, Matplotlib, Pandas, Scikit-learn,ย OpenCV, Pillowย 
  • Deployment: Containers and orchestration (ECS/EKS), CI/CD, observabilityย 
We are proud to offer competitive salary ranges aligned to industry standards. Please note that our ranges are representative and individual compensation specifics may vary based upon experience level, professional competencies and geographic differentials.ย 

We take pride in enabling career growth in an environment of innovation and teamwork.ย  Our commitment to all Mitekians is to do meaningful work that matters.ย  Our culture is defined by delivering our best to our customers by providing high value solutions and impactful outcomes, by continuously challenging convention, and by caring for each other through collaboration and celebrating our successes.ย  We are committed to creating competitive, equitable compensation & benefits programs and career development opportunities.ย 

Benefit offerings โ€“ย may vary based on geographic location

Wellness: Universal, supplemental, and private healthcare plan choices based on country specificsย 

Financial future: retirement/pension plan contributions, MTK stock plan participation ย 

Income protection: life eventย & disability coverageย 

Paid time off: generous annual leave, company holidays, volunteer time offย 

Learning: e-learning license, tuition reimbursement, hackathonsย 

Home office setup allowance

Additional/optional benefits: pet insurance, identity theft protection, legal assistanceย 

We sincerely appreciate your interest in Mitek. We know your time is valuable and look forward to the potential of speaking with you further!ย 

We may use artificial intelligence (AI) tools to support parts of the hiring process, such as reviewing applications, analyzing resumes, or assessing responses and identifying potential inconsistencies or verification signals in application materials based on available information. These tools assist our recruitment team but do not replace human judgment. Final hiring decisions are ultimately made by humans. If you would like more information about how your data is processed, please contact us.