Accenture

Technical Delivery Lead - Data & Agentic Transformation, Google Cloud

Accenture$87K — $213K *
Information Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 7+ years in client-facing technology roles with strong delivery background.
  • 5+ years of experience on Google Cloud Platform, focusing on data engineering and AI/ML.
  • Proficiency in BigQuery, Vertex AI, and entire data pipeline architecture.
  • Knowledge of agentic AI patterns and intelligent agent deployment.
  • Experience managing global cross-functional teams.

Responsibilities

  • Own the end-to-end delivery process for data and AI engagements.
  • Design the execution strategy, define the delivery plan, and oversee team structuring.
  • Serve as a technical advisor to mid-market clients on Google Cloud services.
  • Act as the primary client contact for engagement status and expectations.
  • Accelerate solution delivery, transitioning from deal closure to project execution swiftly.
  • Lead and coordinate with engineering teams across borders to remove project blockers.
  • Ensure delivery governance and uphold quality across all engagements.

Benefits

  • Comprehensive medical, dental, and vision coverage.
  • Generous paid time off and holidays.
  • 401(k) plan participation with potential company match.
  • Long-term disability and life insurance options.
  • Bonus opportunities based on performance.
Full Job Description
The Domain

Data and AI are no longer back-office functions - they're the engine of every modern business decision. And with the arrival of agentic AI, we're entering a new era: intelligent agents that don't just analyze data but act on it - automating complex workflows, making autonomous decisions, and transforming how companies operate. Google Cloud is leading this shift with the Gemini Enterprise Agent Platform, Vertex AI, and the most powerful data stack in the industry. Our mid-market clients need lean, agile leaders who can unlock massive amounts of untapped data and rapidly turn it into a distinct competitive advantage.

The Role

You're the person the client trusts to make it happen.

As a Technical Delivery Lead, you own delivery from initial solution shaping through go-live. You design the execution approach for data and AI engagements, lead the implementation, and ensure the final product fundamentally upgrades how the client leverages data and intelligent automation. You're supported by a dedicated offshore engineering team - you set the strategic direction, and they build alongside you. But you're the single point of accountability for what ships.

This role is for an execution-focused leader who takes full ownership of their work. You care deeply about delivery quality, data architecture outcomes, agent design, and speed-to-value for the business. You hold yourself to a higher standard than anyone else would. You'll work directly with client stakeholders - immersing yourself in their environment, understanding their fast-evolving resource constraints, and delivering outcomes that matter in weeks, not quarters. You'll have the autonomy to shape how they experience the full power of Google Cloud's data and AI stack, from first conversation to go-live.

What You'll Do
  • Own the delivery. End-to-end. Scope, timeline, team structure, quality, outcome. You're the single point of accountability the client relies on.
  • Design how it gets delivered. Shape the delivery approach for complex data and AI engagements - define the delivery plan, phase the work, structure the team, and manage dependencies across data engineering, analytics, and AI workstreams. Partner with solution engineers who own the technical architecture; you own how it gets executed and shipped.
  • Provide technical advisory across the engagement - Guide our mid-market clients and teams on our offerings, technical implementation, and the underlying Google Cloud services, with a deep understanding of each client's existing environment and architecture.
  • Be the client's trusted delivery partner. You're the face of the engagement. Lead status reviews, manage expectations, navigate trade-offs in real time, and ensure the client always knows where things stand - especially when the work involves iterative AI development where scope evolves.
  • Get solutions into clients' hands fast. Pick up where the deal ends and make it real. Stand up the delivery, mobilize the team, and drive execution from day one - delivering proven capabilities in weeks, not quarters.
  • Lead across borders. Coordinate onshore delivery leadership with offshore engineering teams. Set priorities, define workstreams, remove blockers, and keep the entire delivery machine moving at pace.
  • Drive quality and outcomes. Establish delivery governance, define checkpoints, track progress against commitments, and ensure every engagement delivers measurable client value - from data platform readiness to AI models in production.


Technical Skills & Domain Expertise
  • Data Platforms & Engineering: Advanced proficiency in BigQuery, Dataflow, Pub/Sub, Cloud SQL, Spanner, and Bigtable for data migration, modernization, pipeline design, data quality governance, and lakehouse architecture patterns.
  • Analytics & Business Intelligence: Hands-on experience executing Looker deployments, connected sheets integrations, real-time operational dashboards, and semantic modeling.
  • Artificial Intelligence & Machine Learning: Core understanding of Vertex AI, Gemini models, AutoML, custom model training, and building production-grade MLOps deployment pipelines.
  • Agentic & Generative AI Patterns: Working knowledge of modern agent orchestration patterns, including tool use, grounding mechanisms, Retrieval-Augmented Generation (RAG), Gemini Enterprise Agent Platform, Agent Development Kit (ADK), A2A protocol, and Model Context Protocol (MCP) - specifically for deploying intelligent agents that automate complex business processes.


What Sets You Apart
  • Google Cloud Certifications: Active Google Cloud Professional certifications (specifically Professional Data Engineer, Professional Machine Learning Engineer, or Professional Cloud Architect).
  • Advanced Agent Deployments: Hands-on experience with the Gemini Enterprise Agent Platform, ADK, A2A, or MCP.
  • Production AI Experience: Experience building production-grade ML/AI systems - not just prototypes.
  • Cross-Functional Ecosystem Exposure: Secondary familiarity with adjacent Google domains to maximize mid-market account impact, including:
    • Marketing & Personalization: Customer 360, CDP setups, and predictive segmentation using BigQuery + Vertex AI.
    • Customer Engagement: GECX and CCAI platforms for AI-powered customer interactions built directly on the data layer.
    • Infrastructure Foundations: GKE, Terraform, and progressive CI/CD data pipeline deployments.
    • Cybersecurity: Google Security Operations and Agentic Defense architectures for securing data assets.
    • Workspace Productive Tech: Gemini Enterprise for Workspace internal collaboration workflows.
  • Transformation Track Record: A documented track record delivering data platform modernizations and AI solutions at pace across multiple concurrent clients.
  • Data Governance Depth: Deep expertise in multi-pillar data governance, enterprise migration strategy, and lakehouse architecture on GCP.


Travel may be required for this role. The amount of travel will vary from 25% to 100% depending on business need and client requirements.

What You'll Need:
  • Minimum 7 years in hands-on, client-facing technology roles - you've built and delivered, not just managed.
  • Minimum 5 years architecting and delivering on Google Cloud Platform, with deep expertise in data engineering, analytics, AI/ML, and modern data platforms.
  • Independently owned client engagements from technical design through go-live.
  • Deep hands-on proficiency with BigQuery, Vertex AI, Dataflow, and data pipeline architecture - you can design a data platform, build a model, and troubleshoot a broken pipeline.
  • Working knowledge of agentic AI patterns - agent orchestration, tool use, grounding, retrieval-augmented generation.
  • Strong in both technical leadership and delivery management - architecture, scope, risk, stakeholders.
  • Experience with distributed global teams and modern engineering practices.
  • Clear communicator - whiteboarding with engineers or presenting to a C-suite.
  • Bachelor's degree or equivalent (minimum 12 years) work experience. (If Associate's Degree, must have minimum 6 years work experience)


Preferred Skills:
  • Bachelor's in CS, Engineering, or related field - or 12 years equivalent experience.
  • Google Cloud Professional certifications (Data Engineer, ML Engineer, Cloud Architect)
  • Hands-on experience with Gemini Enterprise Agent Platform, ADK, A2A, or MCP
  • Experience building production ML/AI systems - not just prototypes
  • Track record delivering data platform modernizations and AI solutions at pace across multiple clients
  • Deep expertise in data governance, migration strategy, and lakehouse architecture on GCP


Domain Expertise

Primary - Data & Agentic AI

Domain Area

Skills & Technologies

Data Platforms

BigQuery, Dataflow, Pub/Sub, Cloud SQL, Spanner, Bigtable - data migration, modernization, lakehouse architecture

Analytics & BI

Looker, connected sheets, real-time dashboards, semantic modeling

AI / ML

Vertex AI, Gemini models, AutoML, custom model training, MLOps pipelines

Agentic & Generative AI

Gemini Enterprise Agent Platform, Agent Development Kit (ADK), RAG, A2A protocol, MCP - intelligent agents that automate complex business processes

Data Engineering

Pipeline design, data quality, governance, migration at scale

Also Valuable

Domain Area

Skills & Technologies

Marketing & Personalization

Customer 360, CDP, predictive segmentation using BigQuery + Vertex AI

Customer Engagement

GECX, CCAI - AI-powered customer interactions built on the data layer

Infrastructure

GKE, Terraform, CI/CD - foundational for data platform deployments

Cybersecurity

Google Security Operations, Agentic Defense - securing data assets

Workspace

Gemini Enterprise for Workspace - AI-powered productivity and collaboration

Compensation at Accenture varies depending on a wide array of factors, which may include but are not limited to the specific office location, role, skill set, and level of experience. As required by local law, Accenture provides a reasonable range of compensation for roles that may be hired as set forth below.
We anticipate this job posting will be posted until 08/23/2026.

Accenture offers a market competitive suite of benefits including medical, dental, vision, life, and long-term disability coverage, a 401(k) plan, bonus opportunities, paid holidays, and paid time off. See more information on our benefits here:

U.S. Employee Benefits | Accenture

Role Location Annual Salary Range
California $94,400 to $266,300
Cleveland $87,400 to $213,000
Colorado $94,400 to $230,000
District of Columbia $100,500 to $245,000
Illinois $87,400 to $230,000
Maine $80,400 to $196,000
Maryland $94,400 to $230,000
Massachusetts $94,400 to $245,000
Minnesota $94,400 to $230,000
New York $87,400 to $266,300
New Jersey $100,500 to $266,300
Virginia $87,400 to $245,000
Washington $100,500 to $245,000

About Accenture

Accenture plc is a multinational professional services company that provides services in strategy, consulting, digital, technology, and operations. The company has more than 537,000 employees serving clients in more than 120 countries. Accenture operates across five business segments: Communications, Media & Technology; Financial Services; Health & Public Service; Products; and Resources. The company is headquartered in Dublin, Ireland, and has offices worldwide.
Learn more about Accenture
Size
624,000 employees
Market Cap
$173.8 billion
Industry
Net Income
$5.2 billion
Founded
1989
5 Year Trend
+11.2%
Revenue
$44.7 billion
NASDAQ

Similar Jobs

More Jobs at Accenture

More Information Technology Jobs

Find similar Technical Delivery Lead - Data & Agentic Transformation, Google Cloud jobs: