Note: The job is a remote job and is open to candidates in USA. Dayforce is a global human capital management company seeking a Senior AI Engineer to design, build, and productionize AI-powered solutions. The role involves collaborating with various teams to create scalable and reliable AI capabilities that deliver business value.
Responsibilities
- Design, develop, test, and deploy AI-powered applications, services, APIs, and integrations
- Build solutions using large language models (LLMs), embedding models, vector search, retrieval-augmented generation (RAG), prompt engineering, agentic workflows, and AI orchestration patterns
- Translate business and product requirements into practical AI solution designs and production-ready software
- Develop reusable components, accelerators, templates, and reference implementations for AI use cases
- Partner with application engineering teams to integrate AI capabilities into existing products, workflows, and platforms
- Evaluate commercial, open-source, and hybrid AI models to determine the best solution for business needs
- Identify, shape, and deliver AI use cases that create measurable business, operational, customer, and employee value
- Partner with stakeholders to define success measures for AI initiatives, including productivity, automation, quality, cost reduction, adoption, and user experience
- Support teams in moving AI initiatives from proof of concept to scalable production solutions
- Build reusable AI enablement assets including starter kits, reference architectures, coding patterns, prompt libraries, evaluation templates, and implementation playbooks
- Provide hands-on guidance to product and engineering teams adopting AI capabilities
- Assess feasibility, implementation effort, business value, and complexity for proposed AI opportunities
- Contribute to AI intake, prioritization, and value tracking processes
- Measure post-launch solution performance and continuously improve AI capabilities based on business outcomes and customer feedback
- Design and build agentic workflows capable of reasoning, retrieving information, calling tools, executing business logic, and supporting human-in-the-loop decision making
- Develop orchestration patterns for multi-step AI workflows, planning, memory, retrieval, tool usage, and task execution
- Integrate AI agents with enterprise APIs, internal systems, workflow platforms, and business applications
- Implement guardrails, permissions, audit trails, error handling, approval workflows, and fallback mechanisms
- Develop solutions using frameworks such as Semantic Kernel, LangChain, LlamaIndex, AutoGen, CrewAI, or similar technologies
- Monitor and continuously improve agent performance through evaluation frameworks, telemetry, user feedback, and business outcomes
- Apply software engineering best practices including clean code, automated testing, CI/CD, observability, and secure development
- Deploy and operate AI solutions within cloud-native environments
- Monitor AI application performance, reliability, usage, costs, and quality
- Troubleshoot production issues related to AI services, models, integrations, orchestration, and infrastructure
- Implement monitoring for model outputs, retrieval quality, prompt performance, latency, token usage, and user feedback
- Partner with Security, Legal, Risk, and Governance teams to ensure AI solutions meet enterprise standards
- Promote responsible AI practices by implementing controls for privacy, security, auditability, human oversight, and data protection
- Identify and mitigate risks related to hallucinations, bias, misuse, data leakage, explainability, and unsafe agent behavior
- Provide technical guidance to engineers and delivery teams working on AI initiatives
- Lead design discussions and contribute to broader architecture decisions
- Stay current on emerging AI technologies, frameworks, and engineering best practices
- Communicate technical concepts clearly to both technical and non-technical stakeholders
- Help build organizational AI knowledge by sharing reusable assets, implementation guidance, and lessons learned
Skills
- 6+ years of experience in software engineering, machine learning engineering, data engineering, or related technical roles
- 2+ years of hands-on experience building AI, machine learning, automation, or intelligent workflow solutions
- Strong programming experience in Python and at least one additional language such as Java, C#, TypeScript, or Go
- Hands-on experience with generative AI, large language models, prompt engineering, embeddings, vector search, retrieval-augmented generation, or AI orchestration
- Experience building production-grade APIs, services, integrations, and backend systems
- Experience with Azure, AWS, or another major cloud platform
- Strong understanding of software engineering fundamentals including system design, testing, CI/CD, monitoring, and operational support
- Experience working with structured and unstructured data, data pipelines, APIs, and enterprise data sources
- Ability to evaluate trade-offs across accuracy, performance, scalability, privacy, security, maintainability, cost, and business value
- Ability to connect technical delivery to measurable business outcomes
- Strong communication, collaboration, and problem-solving skills
- Experience building enterprise generative AI solutions using frameworks such as LangChain, LlamaIndex, Hugging Face, Azure OpenAI, OpenAI APIs, Claude, AutoGen, CrewAI, or similar technologies
- Experience evaluating, fine-tuning, hosting, or deploying open-source models
- Experience with small language models, domain-specific models, embedding models, or hybrid model architectures
- Knowledge of agentic orchestration platforms and intelligent workflow automation
- Experience with vector databases or search platforms such as Azure AI Search, Pinecone, OpenSearch, or Elasticsearch
- Experience with LLM evaluation, prompt management, experiment tracking, or AI observability
- Experience designing secure enterprise AI solutions in SaaS, regulated, or large-scale environments
- Familiarity with responsible AI principles, AI governance, data privacy, and secure software development
- Experience mentoring engineers or leading technical delivery of complex AI initiatives
Benefits
- Dayforce employees and their families are eligible to participate in the following benefits programs: medical, dental, vison, and life insurance.
- Dayforce employees are also eligible to participate in a 401k plan (plus match) and a Global Employee Stock Purchase Plan.
- Employees also receive unlimited Time Away From Work (in lieu of accrued vacation time), 10 paid US holidays, up to 80 hours of paid sick time and 17 weeks of paid parental leave, subject to the terms of the applicable policy or program.
- With a commitment to community impact, including volunteer days and our charity, Dayforce Cares we provide opportunities for you to thrive both in your career and personal life.
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