Find Your Next Job
Agentic Data Delivery Lead
Posted on June 15, 2026
- Mh, India
- 0 - 0 USD (yearly)
- Full Time
Tailor Your Resume for this Job
Job Description: Roles & Responsibilities
1. Delivery Leadership & Strategy
- Lead end-to-end delivery of large-scale data engineering and modernisation programs (Data Lakes, Data Warehousing, Lakehouse, Data Migration).
- Define and drive Agentic AI-led delivery models to improve productivity across SDLC.
- Own delivery governance, quality, timelines, and client satisfaction across multiple accounts.
2. Data Platform & Modernisation Leadership
Drive enterprise-level data transformations including: On-prem- Cloud migrations Cloud
- Cloud transformations Legacy DW
- Modern Lakehouse / Warehouse
- Platform modernisation & digitalisation initiatives
- Architect scalable, resilient, and future-ready data ecosystems .
3. GenAI / Agentic AI Delivery
- Lead design and implementation of Agentic AI / LLM-based solutions in enterprise data ecosystems.
- Define delivery patterns for multi-agent systems, RAG pipelines, automation, and intelligent workflows .
- Drive adoption of AI-led accelerators across delivery programs.
4. Solutioning & Pre-Sales
- Lead RFP / RFI / proactive solutioning for large deals.
- Build value-led proposals including solution architecture, costing, and delivery models.
- Work closely with sales and account leadership in deal shaping.
5. CoE & Capability Building
- Build, scale, and run Data / AI / Agentic AI Centres of Excellence (CoEs) .
- Define frameworks, accelerators, reusable assets, and best practices.
- Develop internal capability maturity models and delivery standards.
6. Data Governance:
- Define and enforce enterprise-wide data governance frameworks covering data quality, lineage, metadata, and access controls
- Ensure compliance with regulatory requirements, data privacy (PII), and security standards across all data and AI platforms
- Embed governance controls within data engineering pipelines and Agentic AI / GenAI delivery workflows
- Establish standards for data lifecycle management, audit readiness, and risk mitigation
- Implement AI governance practices, including model oversight, ethical AI usage, and guardrails
- Collaborate with stakeholders to drive adoption of governance policies across global delivery teams
- Engage with senior client stakeholders (CXO / VP level).
- Act as a trusted advisor on data strategy, AI adoption, and digital transformation .
- Manage multi-geography teams and global client engagements.
7. Stakeholder & Client Management
8. Partnerships & Ecosystem
- Drive strategic partnerships with hyperscalers and technology partners such as:
- AWS, Azure, GCP
- Snowflake, Databricks
- OpenAI, Anthropic and GenAI ecosystem providers
- Influence joint GTM strategies and co-innovation initiatives.
9. Leadership & People Development
- Lead and mentor large cross-functional teams (delivery, architecture, engineering).
- Build leadership pipelines and strong engineering culture. Drive performance, engagement, and capability development.
Must Have Skills & Experience
- 20+ years of IT experience , with strong early career foundation in solution development / engineering .
- 10+ years of experience in data engineering & platform delivery , including:
- Data Lake / Data Warehouse implementation
- Data migration (On-prem to Cloud / Cloud to Cloud)
- Platform modernisation & digital transformation
- 3–4 years of hands-on experience in GenAI / Agentic AI solutions .
- Proven experience in building and leading large delivery teams and CoEs .
- Strong experience in stakeholder management and global client engagement .
- Demonstrated experience in RFPs, RFIs, and large deal solutioning .
Technology Exposure (Mandatory)
- Programming: Python
- Data Engineering: ETL/ELT, Big Data frameworks (Spark, Hadoop ecosystem)
- Data Platforms: Snowflake, Databricks, Lakehouse architectures
- Cloud: AWS / Azure / GCP AI/GenAI: LLMs, RAG, Agentic frameworks, orchestration tools
Good to Have Skills
- Experience in multi-agent architectures and AI-driven automation of SDLC
- Exposure to MLOps, DataOps, and AI governance frameworks
- Experience in industry domains such as Insurance, Banking, Healthcare, Retail
- Thought leadership (whitepapers, POVs, client presentations)
Responsibilities: Roles & Responsibilities
1. Delivery Leadership & Strategy
- Lead end-to-end delivery of large-scale data engineering and modernisation programs (Data Lakes, Data Warehousing, Lakehouse, Data Migration).
- Define and drive Agentic AI-led delivery models to improve productivity across SDLC.
- Own delivery governance, quality, timelines, and client satisfaction across multiple accounts.
2. Data Platform & Modernisation Leadership
Drive enterprise-level data transformations including: On-prem- Cloud migrations Cloud
- Cloud transformations Legacy DW
- Modern Lakehouse / Warehouse
- Platform modernisation & digitalisation initiatives
- Architect scalable, resilient, and future-ready data ecosystems .
3. GenAI / Agentic AI Delivery
- Lead design and implementation of Agentic AI / LLM-based solutions in enterprise data ecosystems.
- Define delivery patterns for multi-agent systems, RAG pipelines, automation, and intelligent workflows .
- Drive adoption of AI-led accelerators across delivery programs.
4. Solutioning & Pre-Sales
- Lead RFP / RFI / proactive solutioning for large deals.
- Build value-led proposals including solution architecture, costing, and delivery models.
- Work closely with sales and account leadership in deal shaping.
5. CoE & Capability Building
- Build, scale, and run Data / AI / Agentic AI Centres of Excellence (CoEs) .
- Define frameworks, accelerators, reusable assets, and best practices.
- Develop internal capability maturity models and delivery standards.
6. Data Governance:
- Define and enforce enterprise-wide data governance frameworks covering data quality, lineage, metadata, and access controls
- Ensure compliance with regulatory requirements, data privacy (PII), and security standards across all data and AI platforms
- Embed governance controls within data engineering pipelines and Agentic AI / GenAI delivery workflows
- Establish standards for data lifecycle management, audit readiness, and risk mitigation
- Implement AI governance practices, including model oversight, ethical AI usage, and guardrails
- Collaborate with stakeholders to drive adoption of governance policies across global delivery teams
- Engage with senior client stakeholders (CXO / VP level).
- Act as a trusted advisor on data strategy, AI adoption, and digital transformation .
- Manage multi-geography teams and global client engagements.
7. Stakeholder & Client Management
8. Partnerships & Ecosystem
- Drive strategic partnerships with hyperscalers and technology partners such as:
- AWS, Azure, GCP
- Snowflake, Databricks
- OpenAI, Anthropic and GenAI ecosystem providers
- Influence joint GTM strategies and co-innovation initiatives.
9. Leadership & People Development
- Lead and mentor large cross-functional teams (delivery, architecture, engineering).
- Build leadership pipelines and strong engineering culture. Drive performance, engagement, and capability development.
Must Have Skills & Experience
- 20+ years of IT experience , with strong early career foundation in solution development / engineering .
- 10+ years of experience in data engineering & platform delivery , including:
- Data Lake / Data Warehouse implementation
- Data migration (On-prem to Cloud / Cloud to Cloud)
- Platform modernisation & digital transformation
- 3–4 years of hands-on experience in GenAI / Agentic AI solutions .
- Proven experience in building and leading large delivery teams and CoEs .
- Strong experience in stakeholder management and global client engagement .
- Demonstrated experience in RFPs, RFIs, and large deal solutioning .
Technology Exposure (Mandatory)
- Programming: Python
- Data Engineering: ETL/ELT, Big Data frameworks (Spark, Hadoop ecosystem)
- Data Platforms: Snowflake, Databricks, Lakehouse architectures
- Cloud: AWS / Azure / GCP AI/GenAI: LLMs, RAG, Agentic frameworks, orchestration tools
Good to Have Skills
- Experience in multi-agent architectures and AI-driven automation of SDLC
- Exposure to MLOps, DataOps, and AI governance frameworks
- Experience in industry domains such as Insurance, Banking, Healthcare, Retail
- Thought leadership (whitepapers, POVs, client presentations)
Qualifications: Roles & Responsibilities
1. Delivery Leadership & Strategy
- Lead end-to-end delivery of large-scale data engineering and modernisation programs (Data Lakes, Data Warehousing, Lakehouse, Data Migration).
- Define and drive Agentic AI-led delivery models to improve productivity across SDLC.
- Own delivery governance, quality, timelines, and client satisfaction across multiple accounts.
2. Data Platform & Modernisation Leadership
Drive enterprise-level data transformations including: On-prem- Cloud migrations Cloud
- Cloud transformations Legacy DW
- Modern Lakehouse / Warehouse
- Platform modernisation & digitalisation initiatives
- Architect scalable, resilient, and future-ready data ecosystems .
3. GenAI / Agentic AI Delivery
- Lead design and implementation of Agentic AI / LLM-based solutions in enterprise data ecosystems.
- Define delivery patterns for multi-agent systems, RAG pipelines, automation, and intelligent workflows .
- Drive adoption of AI-led accelerators across delivery programs.
4. Solutioning & Pre-Sales
- Lead RFP / RFI / proactive solutioning for large deals.
- Build value-led proposals including solution architecture, costing, and delivery models.
- Work closely with sales and account leadership in deal shaping.
5. CoE & Capability Building
- Build, scale, and run Data / AI / Agentic AI Centres of Excellence (CoEs) .
- Define frameworks, accelerators, reusable assets, and best practices.
- Develop internal capability maturity models and delivery standards.
6. Data Governance:
- Define and enforce enterprise-wide data governance frameworks covering data quality, lineage, metadata, and access controls
- Ensure compliance with regulatory requirements, data privacy (PII), and security standards across all data and AI platforms
- Embed governance controls within data engineering pipelines and Agentic AI / GenAI delivery workflows
- Establish standards for data lifecycle management, audit readiness, and risk mitigation
- Implement AI governance practices, including model oversight, ethical AI usage, and guardrails
- Collaborate with stakeholders to drive adoption of governance policies across global delivery teams
- Engage with senior client stakeholders (CXO / VP level).
- Act as a trusted advisor on data strategy, AI adoption, and digital transformation .
- Manage multi-geography teams and global client engagements.
7. Stakeholder & Client Management
8. Partnerships & Ecosystem
- Drive strategic partnerships with hyperscalers and technology partners such as:
- AWS, Azure, GCP
- Snowflake, Databricks
- OpenAI, Anthropic and GenAI ecosystem providers
- Influence joint GTM strategies and co-innovation initiatives.
9. Leadership & People Development
- Lead and mentor large cross-functional teams (delivery, architecture, engineering).
- Build leadership pipelines and strong engineering culture. Drive performance, engagement, and capability development.
Must Have Skills & Experience
- 20+ years of IT experience , with strong early career foundation in solution development / engineering .
- 10+ years of experience in data engineering & platform delivery , including:
- Data Lake / Data Warehouse implementation
- Data migration (On-prem to Cloud / Cloud to Cloud)
- Platform modernisation & digital transformation
- 3–4 years of hands-on experience in GenAI / Agentic AI solutions .
- Proven experience in building and leading large delivery teams and CoEs .
- Strong experience in stakeholder management and global client engagement .
- Demonstrated experience in RFPs, RFIs, and large deal solutioning .
Technology Exposure (Mandatory)
- Programming: Python
- Data Engineering: ETL/ELT, Big Data frameworks (Spark, Hadoop ecosystem)
- Data Platforms: Snowflake, Databricks, Lakehouse architectures
- Cloud: AWS / Azure / GCP AI/GenAI: LLMs, RAG, Agentic frameworks, orchestration tools
Good to Have Skills
- Experience in multi-agent architectures and AI-driven automation of SDLC
- Exposure to MLOps, DataOps, and AI governance frameworks
- Experience in industry domains such as Insurance, Banking, Healthcare, Retail
- Thought leadership (whitepapers, POVs, client presentations)
Tailor Your Resume for this Job
Share with Friends!
Similar Jobs
Decision Foundry
Ai & It Infrastructure Manager
Job Overview: Welcome to Decision Foundry! Decision Foundry is a cloud-native, AppSec-first data a…
Full Time | Ka, India
Apply 6 days, 16 hours ago
ServiceNow
Sr Platform Architect
Company Description It all started when engineer Fred Luddy wrote code that automated a tedious tas…
Full Time | Wien, Austria
Apply 1 week, 5 days ago
EXL Service
Lead Ai Data Engineer
Job Description: Key Responsibilities 1. Solution Architecture & Technical Leadership Architect…
Full Time | Hr, India
Apply 1 week, 6 days ago
Citi
Product Manager – Fund Accounting And Administration, Data And Reporting, Vp - Sydney / Melbourne
Discover your future at Citi Working at Citi is far more than just a job. A career with us means jo…
Full Time | Sydney, Australia
Apply 3 weeks ago
EXL Service
Technical Project Manager
Job Description: Objectives of the Role: We are seeking an experienced Technical Project Manager (T…
Full Time | Up, India
Apply 3 weeks, 2 days ago
EXL Service
Senior Assistant Vice President
Job Description: Lead enterprise-scale AI and Generative AI delivery programs , driving measurable …
Full Time | Ka, India
Apply 3 weeks, 6 days ago
Amazon Web Services
Pr. Delivery Consultant, Aws Professional Services
DESCRIPTION AWS Professional Services is seeking a Principal Delivery Consultant for Agentic AI Tra…
Full Time | Sydney, Australia
Apply 3 weeks, 6 days ago
Mehiläinen
Lead Developer, Mehiläinen
Founded in 1909, Mehiläinen is a rapidly growing healthcare company that strongly invests in t…
Full Time | Helsinki, Finland
Apply 4 weeks, 1 day ago