Lead Data Solutions Architect at Syngenta Group
pune, maharashtra, India -
Full Time


Start Date

Immediate

Expiry Date

24 Aug, 26

Salary

0.0

Posted On

26 May, 26

Experience

10 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

AWS, Databricks, Data Mesh, Generative AI, MLOps, DataOps, Delta Lake, Cloud Security, Data Modeling, Unity Catalog, Infrastructure as Code, FinOps, RAG Pipelines, Vector Search, Knowledge Graphs, Solution Architecture

Industry

Farming

Description
Company Description Join Syngenta Group, a leader in agricultural innovation where technology meets purpose. As digital pioneers in AgTech, we're integrating AI across our value chain from smart breeding to precision agriculture. Our global team of 56,000 professionals is transforming sustainable farming worldwide. At Syngenta IT & Digital, your expertise will directly impact food security and shape the future of agriculture through cutting-edge technology. Website address - https://www.syngentagroup.com/ Job Description We are seeking a Lead Data Architect to serve as a critical bridge between the EDO Enterprise Solution Architecture team and our business domains, with a strong focus on AI-aligned data initiatives. This role is embedded within a specific business function, serving as the domain’s trusted architectural authority to accelerate delivery of data mesh, data science, ML, and GenAI use cases. The primary objective is to translate enterprise architecture blueprints, platforms, and standards into tangible, high-value solutions, while providing continuous feedback to evolve those standards based on real-world applications. This is a hands-on architectural leadership role requiring deep expertise in AWS and Databricks, modern cloud data architectures, and strong stakeholder influence and communication skills Key Accountabilities Architectural Enablement & Leadership Act as the primary Data architect and trusted advisor for the embedded business function, supporting initiatives from ideation through to production. Ensure enterprise Data, ML, and AI architecture principles are applied pragmatically to deliver measurable business value. Solution Architecture & Design Partner with business stakeholders, product managers, and engineering teams to understand business use cases and constraints. Design and document end-to-end data, aligned with enterprise standards for: o Data mesh and domain-oriented data products o DataOps, MLOps, and emerging AgentOps practices o AI-aligned data patterns (feature stores, RAG pipelines, inference architectures) Review and guide solution designs to ensure they are secure, scalable, resilient, and cost-effective. Collaboration & Enterprise Alignment Work closely with domain leadership to help shape domain data and AI strategy and roadmaps. Act as the voice of the business domain within the central Enterprise Architecture and Data communities. Provide structured feedback to central teams to evolve enterprise blueprints, platforms, and governance models based on practical experience. Governance, Risk & Best Practices Represent the business function in Central Design Authority and architectural review forums. Ensure solutions meet enterprise security, data governance, and AI risk standards while remaining delivery-oriented and scalable. Champion architectural best practices, data literacy, and AI-responsible design within the business function. Balance governance with enablement, ensuring standards accelerate rather than hinder delivery. Strategic Guidance & Value Identification Proactively identify opportunities where data, ML, and AI initiatives can deliver significant business value. Advise on DataOps principles prioritisation and sequencing of initiatives based on feasibility, impact, and architectural readiness. Support the maturation of the domain’s data product and AI operating model. Knowledge, Experience & Capabilities Deep knowledge of modern cloud data architectures on AWS, including lakehouse, streaming, and analytical workloads. Expert-level experience designing and operating Databricks Lakehouse platforms on AWS, with strong mastery of Delta Lake concepts (ACID transactions, schema evolution, time travel, and performance optimisation). Strong understanding of cloud security architectures, including VPC design, private connectivity, IAM least-privilege models, encryption, and enterprise identity integration. Solid grounding in data modelling paradigms (analytical, domain-oriented, event-driven) and their application in large-scale, multi-domain environments. Ability to translate enterprise blueprints into Domain-oriented Data Products, promoting decentralised ownership while maintaining central standards for interoperability and discoverability. Hands-on experience with enterprise metadata and governance tooling (e.g. Unity Catalog, Glue), including fine-grained access control and lineage Strong capability in infrastructure-as-code and environment standardisation to support scalable and repeatable delivery. Hands-on experience applying DataOps principles, including Data observability, CI/CD, testing, and operational resilience of data pipelines. Demonstrated ability to apply cloud cost management (FinOps) and the ability to influence cost-aware design decisions. Proven experience architecting data platforms that support ML and Generative AI, including feature stores, vector search, RAG pipelines, and inference architectures. · Exposure and deep appreciation for AI/BI, Ontologies and Knowledge Graphs Critical success factors & key challenges Needs to be motivated, creative and curious, with a customer-centric mindset Able to engage with business and technical leaders with confidence and integrity A clear and effective communicator both at a team level and senior stakeholder level Able to manage ambiguity and ensure expectations are set appropriately The ability to balance a dynamic workload and prioritize effectively Comfortable working in a fast-paced environment and adapting to change Understand the main constraints and business objectives which our main stakeholder/business partners operate in Qualifications Bachelor’s degree in computer science, Information Technology, or related field Additional Information Note: Syngenta is an Equal Opportunity Employer and does not discriminate in recruitment, hiring, training, promotion or any other employment practices for reasons of race, color, religion, gender, national origin, age, sexual orientation, gender identity, marital or veteran status, disability, or any other legally protected status. Follow us on: LinkedIn LI page - https://www.linkedin.com/company/syngentagroup/posts/?feedView=all
Responsibilities
Serve as the primary architectural authority for a business domain to translate enterprise blueprints into high-value data, ML, and AI solutions. Bridge the gap between central enterprise architecture and business functions to accelerate the delivery of data products and GenAI use cases.
Loading...