Senior Consultant - AI Systems & Platforms
Role details
Job location
Tech stack
Job description
As a Senior Consultant, AI Engineer, you will be a hands-on builder responsible for designing, building, evaluating, and deploying production-grade AI systems for clients. You will contribute to solution architecture, own implementation workstreams, write production-quality code, and clearly articulate technical decisions, delivery progress, risks, and business value to client stakeholders.
You will:
-
Contribute to AI solution architecture, including application design, cloud service selection, data integration patterns, model/service integration, evaluation strategy, deployment approach, and production operating considerations.
-
Own implementation workstreams from design through delivery, including backlog refinement, technical design, coding, testing, integration, deployment, documentation, and client handoff.
-
Design and build AI-enabled applications and systems, including LLM-powered applications, retrieval-augmented generation solutions, agentic workflows, APIs, data pipelines, and cloud-native services.
-
Use modern AI platforms, hyperscaler services, data platforms, and software engineering practices to deliver reliable, secure, maintainable solutions.
-
Work hands-on with at least one major hyperscaler such as AWS, Azure, or GCP, and at least one major enterprise data platform such as Databricks or Snowflake.
-
Partner with clients to understand business processes, technical environments, data constraints, and user needs, then translate those inputs into deployable AI solutions.
-
Build and integrate AI systems with enterprise data sources, applications, APIs, workflow tools, and existing client technology ecosystems.
-
Apply practical data science and machine learning methods where appropriate, including classification,clustering, segmentation,recommendations, NLP, semantic search, experimentation, and model evaluation.
-
Develop evaluation approaches for AI systems, including accuracy, groundedness, relevance, reliability, latency, cost, usability, and business impact.
-
Collaborate with Responsible AI specialists to apply responsible AI practices, including appropriate human oversight, risk awareness, validation, documentation, and safe use of AI development tools.
-
Responsibly use AI coding assistants and agentic development tools such as Claude Code, OpenAI Codex,Antigravity,Cursor, GitHub Copilot or comparable tools to accelerate delivery while maintaining code quality, security, testing, and human review.
-
Create reusable assets such as reference architectures, accelerators, code templates, demos, implementation patterns, and enablement materials.
-
Communicate technical concepts, architecture decisions, implementation tradeoffs, delivery progress, risks, and outcomes to client stakeholders ranging from engineers to executives.
-
Mentor peers and clients on AI engineering practices, production delivery patterns, responsible AI basics, and practical use of modern AI development tools.
-
Stay current on emerging AI engineering patterns, hyperscaler capabilities, data platform features, LLM application architectures, agentic workflows, and production AI practices.
Requirements
- 4+ years of experience designing and building data, AI, software, or machine learning solutions in real-world business environments.
- Hands-on experience building production-quality software using Python and modern software engineering practices.
- Hands-on experience with statistical and data mining software packages inPython (e.g.SciPy, NumPy, Pandas,SciKit-Learn,glmnet, caret,dplyr) and a knowledge of a variety of statistical modeling and machine learning algorithms as well as their practical application.
- Experience contributing to technical architecture and owning implementation workstreams in client-facing or cross-functional delivery environments.
- Experience delivering AI or ML solutions beyond notebook prototypes, including deployment, integration, testing, monitoring, and operational support.
- Experience with Azure OpenAI, Azure AI Foundry, AWS Bedrock, Google Vertex AI, Databricks Mosaic AI, Snowflake Cortex, or comparable enterprise AI platforms.
- Experience with vector databases; embeddings models; search platforms; AI Agentbuildand orchestration frameworks; LLM evaluation tools; and AI observability tooling.
- Experience with APIs, SQL, data pipelines, ETL/ELT, cloud services, and enterprise data integration patterns.
- Experiencewith LLM application patterns such as RAG, embeddings, semantic search, prompt orchestration, tool/function calling, or agentic workflows.
- Practical understanding of model and AI-system evaluation, including validation methods, test datasets, quality metrics, error analysis, and production feedback loops.
- Working knowledge of responsible AI basics, including privacy, security, bias, explainability, human review, safe tool use, and appropriate governance escalation.
- Strong consultative and communication skills, including the ability to explain complex technical concepts to business and technical stakeholders.
- Ability to work independently, collaborate across multidisciplinary teams, and deliver high-quality client outcomes in ambiguous environments.
- Curiosity and continuous learning mindset across AI platforms, software engineering, cloud, data, and applied machine learning.
Preferred Qualifications
-
Technical depth in at least one major data platform such as Databricks or Snowflake.
-
Technical depth in at least one majorhyperscalersuch as AWS, Azure, or GCPinfrastructure and data services in addition to AI services.
-
Experience using AI-assisted development tools responsibly to improve delivery productivity while maintaining engineering discipline.
-
Experience building agentic workflows or AI-enabled business process automation.
-
Experience with MLOps, LLMOps, CI/CD, infrastructure-as-code, automated testing, monitoring, logging, cost management, or production support.
-
Experience in consulting, client delivery, technical pre-sales, solution shaping, or cross-functional product engineering environments.
-
Exposure to industry-specific AI use cases in areas such as financial services, healthcare, life sciences, manufacturing, retail, public sector, or technology.
-
Experience mentoring engineers, data scientists, or client teams on modern AI engineering practices.
Benefits & conditions
Compensation and Benefits
Slalom prides itself on helping team members thrive in their work and life. As a result, Slalom is proud to invest in benefits that includemeaningful time off and paid holidays, parental leave, 401(k) with a match, a range of choices for highly subsidized health, dental, & vision coverage, adoption and fertility assistance, and short/long-term disability. We also offer yearly $350 reimbursement account for any well-being-related expenses, as well as discounted home, auto, and pet insurance.
Slalom is committed to fair and equitable compensation practices. For this position, the targeted base salary range is $ 133,000 - $166,000. In addition, individuals may be eligible for an annual discretionary bonus. Actual compensation will depend upon an individual's skills, experience, qualifications, location, and other relevant factors. The salary pay range is subject to change and may be modified at any time.