Toyota

Security ML / AI Engineer, Lead

Toyota$120K — $150K *
Plano, TX 75025In-Person
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 3+ years in applied ML/AI engineering with production deployment experience
  • Hands-on experience with LLM fine-tuning methods like LoRA or full fine-tuning
  • Proficiency in cloud ML platforms such as AWS SageMaker
  • Fluency in Python with strong production engineering practices
  • Experience in building evaluation pipelines with automated metrics
  • Understanding of transformer architectures and attention mechanisms
  • Strong communication skills to explain model behavior to non-technical stakeholders

Responsibilities

  • Design and implement prompt engineering for managed AI integration
  • Build training data pipelines from security data and telemetry
  • Fine-tune models on organization-specific security data
  • Implement feedback loops to enhance model accuracy
  • Build evaluation frameworks using metrics like F1 and precision
  • Design a model routing layer for task optimization
  • Monitor models in production for accuracy and performance

Benefits

  • Team-oriented work environment with flexibility and respect
  • Professional growth programs and tuition reimbursement
  • Vehicle purchase and lease programs available
  • Comprehensive healthcare plans for families
  • 401(k) Savings Plan with company matching contributions
  • Paid holidays and time off provisions
  • Referral services for child and family-related needs
  • Tax Advantaged Accounts for healthcare and dependent care expenses
Full Job Description
ML/AI Engineer, Security Intelligence

Location: Plano, Texas

To save time applying, Toyota does not offer sponsorship of job applicants for employment-based visas or any other work authorization for this position at this time.

Who We're Looking For

Toyota Financial Services (TFS) Technology team is looking for a highly motivated person to fill a role as an ML/AI Security Lead within the Security Intelligence Engineering organization. You'll own the intelligence layer of a new AI-powered security platform - starting with prompt engineering and managed AI service integration, then progressing to fine-tuning models on enterprise security data, and building a multi-model serving and routing layer. This role is what makes the organization own its intelligence rather than renting it from a vendor. You'll train models that understand the specific security environment, build the feedback loops that make them better over time, and ensure the AI layer delivers high accuracy on alert triage while keeping costs predictable through intelligent model routing.

What you'll be doing
  • Design and implement prompt engineering patterns for managed AI service integration
  • Build training data pipelines from the security data lake - curating, labeling, and versioning datasets from real enterprise security telemetry
  • Fine-tune models on organization-specific security data - alert triage, risk scoring, finding classification
  • Implement the analyst feedback loop - capturing human corrections to continuously improve model accuracy
  • Build model evaluation frameworks with rigorous metrics (F1, precision, recall, false positive rates) benchmarked against analyst agreement
  • Design and implement a model routing layer - directing each task to the optimal model based on complexity, latency requirements, and cost
  • Monitor models in production for drift, accuracy degradation, and emerging failure modes
  • Implement centralized token usage monitoring for leadership visibility into AI consumption and cost control
  • Collaborate with the Lead Engineer on agent architectures - multi-agent orchestration, tool use, and autonomous triage workflows
  • Deploy and manage model inference endpoints across cloud ML services and container-based serving
  • Build the analyst feedback loop: approval/rejection signals in dashboards feeding back into retraining pipelines

What You Bring
  • 3+ years in applied ML/AI engineering (not research-only - production deployment required)
  • Hands-on experience with LLM fine-tuning - LoRA, QLoRA, or full fine-tuning on domain-specific data
  • Experience with cloud ML platforms (e.g., AWS SageMaker): training jobs, hyperparameter tuning, model registry, endpoint deployment
  • PyTorch proficiency for model training and custom architectures
  • Experience building evaluation pipelines - automated metrics, human evaluation protocols, A/B testing
  • Understanding of transformer architectures and attention mechanisms (not just API calls)
  • Python fluency with production engineering practices (testing, CI/CD, monitoring)
  • Strong communication skills with the ability to explain model behavior and limitations to non-ML stakeholders

Added bonus if you have
  • Experience with security or cybersecurity data - alert classification, threat detection, anomaly detection
  • Familiarity with model serving at scale (vLLM, Triton Inference Server, TensorRT optimization)
  • HuggingFace ecosystem experience - model hub, tokenizers, datasets library, PEFT
  • Experience with RAG architectures and vector databases
  • Background in multi-model routing or mixture-of-experts approaches
  • Understanding of agentic AI patterns - tool use, chain-of-thought, multi-step reasoning
  • Experience with model cost optimization - quantization, distillation, caching strategies
  • Self-motivated individual who thrives in ambiguous environments and can build processes from the ground up


What We'll Bring

During your interview process, our team can fill you in on all the details of our industry-leading benefits and career development opportunities. A few highlights include:
  • A work environment built on teamwork, flexibility, and respect
  • Professional growth and development programs to help advance your career, as well as tuition reimbursement
  • Vehicle purchase & lease programs
  • Comprehensive health care and wellness plans for your entire family
  • Toyota 401(k) Savings Plan featuring a company match, as well as an annual retirement contribution from Toyota regardless of whether you contribute
  • Paid holidays and paid time off
  • Referral services related to prenatal services, adoption, childcare, schools and more
  • Tax Advantaged Accounts (Health Savings Account, Health Care FSA, Dependent Care FSA)


About Toyota

Toyota Motor Corporation is a Japanese multinational automotive manufacturer headquartered in Toyota City, Aichi, Japan. The company was founded in 1937 by Kiichiro Toyoda and has since grown to become the world's largest automotive manufacturer. Toyota Motor Corporation produces a wide range of vehicles including cars, trucks, and buses. The company is committed to sustainability and has set a goal of achieving zero carbon emissions by 2050. Toyota Motor Corporation has operations in over 170 countries and regions around the world.
Learn more about Toyota
Size
372,817 employees
Market Cap
$225.1 billion
Industry
Net Income
$1,531.2 billion
Founded
1937
5 Year Trend
+2.6%
Revenue
$26,625.1 billion
NASDAQ

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