Technical Delivery Lead – Data & AI
FULL TIME
lead_staff
Salary
No salary data
vs. Engineering avg
Ghost Score
Better than ~80% of category
Engineering jobs
Freshness
Posted 1 weeks ago
Job Description
Matrix USA is a global, dynamic, fast-growing technical consultancy leading technology services company. The Technical Delivery Lead – Data & AI is responsible for end-to-end delivery of complex data engineering, analytics, and AI/ML engagements, blending hands-on technical architecture with delivery leadership and executive client engagement.
Responsibilities:
Own full lifecycle delivery accountability for complex, multi‑workstream Data & AI engagements, from kickoff through hypercare and steady‑state handoff; Establish and manage delivery governance, including project cadence, sprint reviews, RAID management, executive steering committees, and formal change control (e.g., CAB processes); Lead and coordinate cross‑functional delivery teams (5–15+ resources), including data engineers, ML engineers, BI developers, and nearshore/offshore contributors; Translate business objectives into scalable technical architectures and phased delivery roadmaps; manage scope, timeline, and resourcing trade‑offs with clients and internal stakeholders; Ensure delivery excellence and production readiness across all outputs, including data pipelines, analytics layers, AI/ML models, dashboards, and governance artifacts; Lead solution design for enterprise data platform initiatives, including cloud migrations, lakehouse architectures, data mesh, Unity Catalog implementations, and modernization programs; Architect and oversee ETL/ELT pipelines, data quality frameworks, and semantic layers leveraging technologies such as Databricks, dbt, Apache Spark, Airflow, and major cloud platforms (AWS, Azure, GCP); Guide AI/ML solution delivery, including feature engineering, model development, MLOps pipelines, model monitoring, and production deployment; Evaluate and recommend tools across the modern data and AI ecosystem, including orchestration, observability, data quality, vector databases, and AI governance solutions; Act as the senior escalation point for complex technical challenges across active engagements; Serve as the senior delivery‑phase relationship owner, operating as a trusted advisor to executive and technical stakeholders; Identify expansion opportunities and contribute to account growth during ongoing engagements; Support pre‑sales activities, including discovery workshops, proposal development, RFP responses, SOW authoring, architectural solutioning, and pricing inputs; Participate in executive briefings, QBRs, and roadmap discussions, translating complex technical concepts into clear business narratives; Collaborate with practice and sales leadership to develop packaged offerings, accelerators, and repeatable delivery frameworks; Mentor and develop consultants at multiple levels, providing technical guidance, career coaching, and performance feedback; Contribute to internal intellectual property, including delivery playbooks, reference architectures, estimation models, and case studies; Represent the practice within partner ecosystems and at industry events, client forums, and thought‑leadership engagements
Qualifications:
8+ years of experience in data engineering, analytics, or AI/ML roles; Minimum 3+ years in a consulting or professional services environment leading client‑facing engagements; Proven success delivering complex, multi‑phase data or AI programs valued between $500K and $5M+ on time and within budget; Experience managing distributed, cross‑functional teams in matrixed delivery models, including offshore and nearshore resources; Production‑scale experience with modern cloud data platforms such as Databricks (Delta Lake, Unity Catalog, MLflow), Snowflake, BigQuery, or Azure Synapse; Strong background in data engineering and orchestration tools, including dbt, Apache Spark, Airflow, Kafka, or comparable technologies; Experience operationalizing ML models, with familiarity in LLMs, RAG architectures, and AI governance principles; Hands‑on knowledge of data governance, cataloging, lineage, access control, and quality frameworks (e.g., Unity Catalog, Collibra, Alation); Proficiency with at least one major cloud provider (AWS, Azure, or GCP), including working knowledge of DevOps and Infrastructure‑as‑Code practices (Terraform, CI/CD); Strong executive presence with the ability to present to C‑level audiences and facilitate senior stakeholder discussions; Excellent written and verbal communication skills, capable of producing client‑ready architecture documents, executive presentations, and SOWs; Structured, analytical problem‑solver comfortable navigating ambiguity and fast‑paced consulting environments; Demonstrated ability to build and sustain trusted client relationships that drive repeat and expansion business
Required Skills:
Data engineering, AI/ML, Cloud data platforms, Databricks, Snowflake, BigQuery, Azure Synapse, Dbt, Apache Spark, Airflow, Kafka, ML model operationalization, LLMs, RAG architectures, AI governance, Data governance, Data cataloging, Data lineage, Access control, Data quality frameworks, AWS, Azure, GCP, DevOps, Infrastructure-as-Code, Terraform, CI/CD, Consulting delivery management, Executive presence, Client relationship management
Ghost Score Breakdown
No salary info
+ ptsNo company logo
+ ptsVery fresh posting (0-3 days)
+ ptsKnown scam/ghost company
Reposted listing
Expired deadline
High job-to-employee ratio
Recruiting agency
Overall: 13/100Low Ghost Risk
Application Tips
- Top skills mentioned: aws, azure, gcp. Make sure your resume highlights these.
- This listing shows strong signals of being a real opportunity — apply with confidence.