Lead Machine Learning Engineer
Company: The Walt Disney Company
Location: Orlando
Posted on: April 1, 2026
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Job Description:
Job Posting Title: Lead Machine Learning Engineer Req ID:
10137406 Job Description: At Disney Experiences Technology, our
team creates world-class immersive and digital experiences for the
Company’s vacation brands , Disney’s Parks and Resorts worldwide,
Disney Cruise Line, Aulani, A Disney Resort & Spa, and Disney
Vacation Club. The Disney Experiences Technology team is
responsible for the end-to-end digital and physical Guest
experience for all technology & digital-led initiatives across the
Attractions & Entertainment, Food & Beverage, Resorts &
Transportation, and Merchandise lines of business as well as other
initiatives including the MyDisneyExperience app and Hey , Disney!
The team is seeking a results-oriented and hands-on Lead Machine
Learning Engineer to design, develop, and deploy high-impact AI/ML
solutions that drive measurable business value across our
entertainment company. In this role, you will lead complex,
cross-functional projects with a strong emphasis on reuse,
scalability, reliability, and performance. The Lead ML Engineer
will report to the ML Engineering Manager. About The Role & Team:
The DXT AI Technology Platform team is responsible for building an
AI enablement platform for the DX segment that provides streamlined
AI & Generative AI capabilities for the segment to build solutions
around and on top of. The Lead Machine Learning Engineer will
design, develop, implement enterprise grade and robust AI/ML
solutions, including agentic systems, multi-modal models, RAG, and
Responsible AI applications. This position is in office. What
You’ll Do: Develop sophisticated, production-scale AI systems,
including multi-step agentic workflows and multi-agent
orchestration platforms. Build tools & agents with advanced
capabilities in reasoning, planning, and adaptive tool utilization
to address complex business challenges. Drive complete ownership of
the AI/ML lifecycle – encompassing implementation, comprehensive
testing, deployment, and continuous operational monitoring –
delivering projects on schedule and to specification. Produce
high-quality, maintainable code for model training pipelines,
evaluation frameworks, and inference services that meet production
standards. Partner strategically with cross-functional stakeholders
including product leaders, data scientists, application teams,
vendors, and partners to align on requirements, iterate on
solutions, and deliver successful outcomes. Provide hands-on
technical leadership, driving architectural decisions and
championing best practices across AI development, LLMOps, quality
assurance, and production deployment. Design and implement
responsible AI frameworks including hallucination detection, safety
guardrails, comprehensive evaluation systems, and observability
infrastructure to ensure model reliability, accuracy, and ethical
deployment. Establish comprehensive evaluation frameworks for Large
Language Models and agent-based systems, measuring model quality,
task success rates, safety compliance, and operational
effectiveness. Proactively identify and resolve technical blockers
that could impact project timelines or deliverables. Communicate
technical strategy and progress to executive leadership and key
stakeholders with clarity and confidence. Engage directly in
development and problem-solving, particularly on high-complexity
technical challenges, to maintain project velocity and quality.
Drive innovation through research and experimentation with emerging
AI technologies and frameworks, evaluating and integrating new
capabilities that advance our platform. Basic Qualifications: 7
years of proven expertise in designing, building, and deploying
AI/ML solutions at scale, with 1-2 years of production experience
in Generative AI technologies. Strong foundation in machine
learning including statistical modeling, supervised and
unsupervised learning algorithms. Advanced skills in prompt
engineering with deep understanding of optimization techniques and
best practices for LLM interactions. Expert-level programming
proficiency in Python and AI/ML development ecosystems. Deep
expertise in modern AI frameworks including LLM application
development and agentic systems (LangChain, CrewAI, or similar).
Comprehensive MLOps experience with hands-on implementation of
CI/CD pipelines, model monitoring, versioning, and lifecycle
management for both models and agent-based systems. Production
deployment experience on major cloud platforms (AWS, Azure, or GCP)
with demonstrated ability to architect and scale cloud-native ML
solutions. Versatile ML skillset spanning traditional techniques
(classification, regression, clustering) and cutting-edge deep
learning approaches. Production-grade generative AI experience
deploying and maintaining LLMs and multi-modal models in live
environments. Exceptional analytical capabilities with a track
record of solving complex technical problems and thriving in
ambiguous, rapidly-evolving situations. Proficiency with
industry-standard ML libraries including PyTorch, TensorFlow,
Scikit-learn, NumPy, and Pandas. Outstanding communication and
collaboration skills with ability to translate complex technical
concepts for diverse audiences and drive cross-functional
alignment. Success partnering across organizational levels from
individual contributors to senior leadership, building trust and
delivering results. Proven ability to influence and lead in matrix
organizations where collaboration and relationship-building are
essential to achieving outcomes. Preferred Qualifications:
Experience with vector databases and embedding technologies.
Specialized expertise in AI safety and responsible AI using
evaluation tools such as Arize, Langfuse, TruLens, or equivalent
platforms for hallucination detection, bias mitigation, and model
performance assessment. Experience with advanced ML techniques
including reinforcement learning from human feedback (RLHF), model
fine-tuning (LoRA, QLoRA), retrieval-augmented generation (RAG), or
model distillation and optimization. Familiarity with real-time
data processing and streaming architectures using technologies such
as Apache Kafka, Google Pub/Sub, AWS Kinesis, or Azure Event Hubs
for building responsive ML systems. Required Education: Bachelor's
degree in Computer Science, Machine Learning, Mathematical
Sciences, Information Systems, Software, Electrical or Electronics
Engineering, or comparable field of study, and/or equivalent work
experience. Preferred Education: Master's degree or Ph.D in
Artificial Intelligence, Machine Learning, Mathematical Sciences,
Computer Science, Information Systems, Software, Electrical or
Electronics Engineering, or comparable field of study, and/or
equivalent work experience. The hiring range for this position in
Glendale, CA is $171,600 to $230,100 per year. The base pay
actually offered will take into account internal equity and also
may vary depending on the candidate’s geographic region,
job-related knowledge, skills, and experience among other factors.
A bonus and/or long-term incentive units may be provided as part of
the compensation package, in addition to the full range of medical,
financial, and/or other benefits, dependent on the level and
position offered. Job Posting Segment: DX Technology Job Posting
Primary Business: Tech Delivery, Platforms, & Core Systems Primary
Job Posting Category: Machine Learning Employment Type: Full time
Primary City, State, Region, Postal Code: Orlando, FL, USA
Alternate City, State, Region, Postal Code: USA - CA - 1200 Grand
Central Ave Date Posted: 2026-01-15
Keywords: The Walt Disney Company, Palm Harbor , Lead Machine Learning Engineer, Engineering , Orlando, Florida