As the Solution Delivery Director (AI: Intelligent Automation Advanced Analytics Generative AI) you will own end-to-end delivery of AI-driven solutions spanning discovery design model development engineering deployment and stabilization across intelligent automation advanced analytics and generative AI. You will lead cross-functional teams of data scientists ML engineers platform engineers product owners and change leaders to achieve business outcomes with strong governance quality risk control and client satisfaction.
As a national premier consulting firm alliant is focused on providing solutions to help businesses transform and thrive. alliant offers six different service lines to our clients and this role is within in the alliant Digital service line which helps businesses on their AI journey.
Responsibilities:
- Shape and manage a portfolio of AI initiatives that balance quick wins (automation and analytics) with longer-horizon platform and generative AI capabilities sequencing use cases by value feasibility risk and data readiness
- Establish AI-specific stage gates (use-case intake data readiness model readiness safety/compliance review deployment and post-deployment monitoring) and run disciplined governance rituals tailored to ML lifecycle and GenAI evaluation
- Translate use cases and SOWs into integrated delivery plans that account for experimentation cycles model training time evaluation loops and integration work with transparent change control that protects timelines and business value
- Serve as the senior delivery leader and trusted advisor to clients framing AI opportunities and trade-offs in business terms shaping success metrics (e.g. cost/time savings revenue uplift risk/quality improvements) and driving alignment through structured reviews
- Ensure solutions meet non-functional requirements for latency scalability reliability and security; guide choices on architectures (data lakehouse feature store MLOps platforms vector databases RAG pipelines orchestration frameworks) and integration patterns with enterprise systems
- Drive rigorous data profiling lineage access controls and quality baselines; align with governance on PII/PHI handling consent retention and purpose limitation and ensure training/serving data management is auditable and compliant
- Lead teams to deliver robust models and agents with reproducible workflows CI/CD for ML (feature pipelines model packaging automated tests) and deployment to target runtimes (batch streaming real-time APIs) with model registry and approval workflows
- Institutionalize red-teaming prompt/guardrail strategies refusal policies and automated eval suites (toxicity bias hallucination jailbreak resistance factuality) with human-in-the-loop processes and content moderation where appropriate
- Define quality strategies that include unit/integration tests data and feature tests offline and online model evaluation A/B or shadow testing performance testing and post-release SLOs with rollback and fallback mechanisms
- Embed responsible AI principles and regulatory requirements (e.g. AI Act sector regulations) throughout the lifecycle; maintain model cards decision logs and audit trails and ensure explainability fairness assessments and incident response readiness
- Grow and mentor a blended team of PMs DS/ML engineers platform engineers solution architects and automation specialists; set expectations for documentation reproducibility knowledge sharing and iterate-with-evidence culture
- Ensure accurate estimating that accounts for experimentation and platform costs (compute storage model/API usage) manage budgets and cloud spend and align change control to value realization while partnering with sales on credible AI proposals
- Coordinate SI partners and AI vendors (cloud AI services LLM providers RPA/iPaaS vector DBs) with clear SLAs usage policies and versioning strategies; manage model/provider selection contracts and switching/contingency options
- Provide executive reporting on business outcomes and model health (drift data quality latency cost per inference error rates user satisfaction) institutionalize post-implementation reviews and feed learnings back into playbooks and templates.
Qualifications:
Bachelors or Masters degree required (in Business Administration Information Technology or related field)
Proven experience (prefer 8 to 10 years) in solution delivery professional services or program management with substantial leadership of AI/ML intelligent automation analytics and/or GenAI initiatives in production
Strong technical fluency across modern AI stacks: cloud data platforms (e.g. Databricks Snowflake BigQuery) MLOps (MLflow SageMaker Vertex AI Azure ML) orchestration (airflow/Prefect)) vector stores (Pinecone FAISS pgvector) and LLM frameworks (LangChain/Llamalndex/semantic kernels)
Mastery of Agile at scale with AI-specific lifecycle practices (experiment tracking offline/online evaluation model versioning) combined with stage-gate controls for compliance and release management
Financial and contractual acumen covering cloud and model API cost dynamics capacity planning and ROI modeling for AI use cases
Executive communication skills with the ability to translate AI constraints and risks into clear business options and decisions
Excellent interpersonal skills with the ability to lead cross-functional teams and foster collaboration among diverse stakeholders
Preferred certifications in project/program management (PMP/PMI-ACP) Agile/SAFe and cloud (AWS/Azure/GCP) plus hands-on familiarity with responsible AI frameworks and security/compliance standards
Preferred experience delivering AI in regulated industries (healthcare financial services public sector life sciences) and in multi-region or global operation models
Effective communication and presentation skills with experience in conveying technical information to non-technical audiences
Ability to work collaboratively in a fast-paced environment
High sense of urgency with the ability to meet deadlines and changing priorities
Receptiveness to performance feedback within a team environment is essential
alliant offers a comprehensive compensation and benefits package including 100% employer paid medical /dental premiums for single coverage for certain options 401(k) matching PTO company provided life insurance and disability onsite gym and group exercise classes paid covered parking daily allowance for onsite café and Starbucks and more!
Do Work That Matters. alliant
#LI-DI1
Required Experience:
Director
As the Solution Delivery Director (AI: Intelligent Automation Advanced Analytics Generative AI) you will own end-to-end delivery of AI-driven solutions spanning discovery design model development engineering deployment and stabilization across intelligent automation advanced analytics and generative...
As the Solution Delivery Director (AI: Intelligent Automation Advanced Analytics Generative AI) you will own end-to-end delivery of AI-driven solutions spanning discovery design model development engineering deployment and stabilization across intelligent automation advanced analytics and generative AI. You will lead cross-functional teams of data scientists ML engineers platform engineers product owners and change leaders to achieve business outcomes with strong governance quality risk control and client satisfaction.
As a national premier consulting firm alliant is focused on providing solutions to help businesses transform and thrive. alliant offers six different service lines to our clients and this role is within in the alliant Digital service line which helps businesses on their AI journey.
Responsibilities:
- Shape and manage a portfolio of AI initiatives that balance quick wins (automation and analytics) with longer-horizon platform and generative AI capabilities sequencing use cases by value feasibility risk and data readiness
- Establish AI-specific stage gates (use-case intake data readiness model readiness safety/compliance review deployment and post-deployment monitoring) and run disciplined governance rituals tailored to ML lifecycle and GenAI evaluation
- Translate use cases and SOWs into integrated delivery plans that account for experimentation cycles model training time evaluation loops and integration work with transparent change control that protects timelines and business value
- Serve as the senior delivery leader and trusted advisor to clients framing AI opportunities and trade-offs in business terms shaping success metrics (e.g. cost/time savings revenue uplift risk/quality improvements) and driving alignment through structured reviews
- Ensure solutions meet non-functional requirements for latency scalability reliability and security; guide choices on architectures (data lakehouse feature store MLOps platforms vector databases RAG pipelines orchestration frameworks) and integration patterns with enterprise systems
- Drive rigorous data profiling lineage access controls and quality baselines; align with governance on PII/PHI handling consent retention and purpose limitation and ensure training/serving data management is auditable and compliant
- Lead teams to deliver robust models and agents with reproducible workflows CI/CD for ML (feature pipelines model packaging automated tests) and deployment to target runtimes (batch streaming real-time APIs) with model registry and approval workflows
- Institutionalize red-teaming prompt/guardrail strategies refusal policies and automated eval suites (toxicity bias hallucination jailbreak resistance factuality) with human-in-the-loop processes and content moderation where appropriate
- Define quality strategies that include unit/integration tests data and feature tests offline and online model evaluation A/B or shadow testing performance testing and post-release SLOs with rollback and fallback mechanisms
- Embed responsible AI principles and regulatory requirements (e.g. AI Act sector regulations) throughout the lifecycle; maintain model cards decision logs and audit trails and ensure explainability fairness assessments and incident response readiness
- Grow and mentor a blended team of PMs DS/ML engineers platform engineers solution architects and automation specialists; set expectations for documentation reproducibility knowledge sharing and iterate-with-evidence culture
- Ensure accurate estimating that accounts for experimentation and platform costs (compute storage model/API usage) manage budgets and cloud spend and align change control to value realization while partnering with sales on credible AI proposals
- Coordinate SI partners and AI vendors (cloud AI services LLM providers RPA/iPaaS vector DBs) with clear SLAs usage policies and versioning strategies; manage model/provider selection contracts and switching/contingency options
- Provide executive reporting on business outcomes and model health (drift data quality latency cost per inference error rates user satisfaction) institutionalize post-implementation reviews and feed learnings back into playbooks and templates.
Qualifications:
Bachelors or Masters degree required (in Business Administration Information Technology or related field)
Proven experience (prefer 8 to 10 years) in solution delivery professional services or program management with substantial leadership of AI/ML intelligent automation analytics and/or GenAI initiatives in production
Strong technical fluency across modern AI stacks: cloud data platforms (e.g. Databricks Snowflake BigQuery) MLOps (MLflow SageMaker Vertex AI Azure ML) orchestration (airflow/Prefect)) vector stores (Pinecone FAISS pgvector) and LLM frameworks (LangChain/Llamalndex/semantic kernels)
Mastery of Agile at scale with AI-specific lifecycle practices (experiment tracking offline/online evaluation model versioning) combined with stage-gate controls for compliance and release management
Financial and contractual acumen covering cloud and model API cost dynamics capacity planning and ROI modeling for AI use cases
Executive communication skills with the ability to translate AI constraints and risks into clear business options and decisions
Excellent interpersonal skills with the ability to lead cross-functional teams and foster collaboration among diverse stakeholders
Preferred certifications in project/program management (PMP/PMI-ACP) Agile/SAFe and cloud (AWS/Azure/GCP) plus hands-on familiarity with responsible AI frameworks and security/compliance standards
Preferred experience delivering AI in regulated industries (healthcare financial services public sector life sciences) and in multi-region or global operation models
Effective communication and presentation skills with experience in conveying technical information to non-technical audiences
Ability to work collaboratively in a fast-paced environment
High sense of urgency with the ability to meet deadlines and changing priorities
Receptiveness to performance feedback within a team environment is essential
alliant offers a comprehensive compensation and benefits package including 100% employer paid medical /dental premiums for single coverage for certain options 401(k) matching PTO company provided life insurance and disability onsite gym and group exercise classes paid covered parking daily allowance for onsite café and Starbucks and more!
Do Work That Matters. alliant
#LI-DI1
Required Experience:
Director
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