EOS RPO
Sr. Consultant, Software Engineer - India
Role summary:
The Solutions Engineer/Architect – Emerging Technology R&D Lab is accountable for shaping and delivering end‑to‑end technology solutions for Horizon 2/3 use cases. They:
Lead a squad of R&D engineers (AI/ML, data, app, infra) exploring emerging tech.
Bridge Emerging Tech with infrastructure, operations, architecture, product, security, and business partners.
Own the backlog, technical direction, and path‑to‑production for lab initiatives, from idea through PoC, pilot, and handoff.
You will focus primarily on providing high quality, efficient technology solutions to business partners by crafting new software applications or modifying and/or supporting existing packaged or custom-built applications. In this capacity, you'll code, configure, test, debug, document and maintain applications.
Key responsibilities:
Partner with product and business leaders to define R&D objectives, use‑case charters, and success criteria.
Maintain and prioritize the R&D backlog (experiments, PoCs, platform enablers), aligning with emerging technology big rocks and tech strategy.
Translate business needs into solution options and target architectures for emerging tech (e.g., Gen AI, Physical AI, world models, agentic patterns).
Own end‑to‑end technical design for lab solutions, from data and models through APIs, UX, monitoring, and controls.
Ensure lab solutions can graduate into production platforms (patterns, reference implementations, handoff artifacts).
Act as primary interface across infrastructure, architecture, product and business, extended teams such as data, security, compliance, legal and vendor partners
Facilitate design reviews and technical decisions, documenting trade‑offs and recommendations.
Coordinate day‑to‑day execution of the R&D backlog: scope experiments, size work, define milestones and exit criteria (PoC → pilot → scale or stop).
Ensure secure software and systems engineering practices across the lifecycle (data protection, model risk controls, access, logging).
Remove blockers for the team (environments, tools, data access, approvals).
Coach engineers on solution thinking (not just model or feature building) and how to design for eventual scale.
Promote reuse (patterns, components, accelerators) and share learnings with other teams.
Ensure lab work aligns with AI risk, compliance, and security policies; proactively engage risk partners as needed.
Assess technical feasibility, scalability, and operational readiness of solutions before recommending production.
Prepare and deliver concise, outcome‑focused updates to leadership: progress, findings, value, risks, and next steps.
Translate complex emerging‑tech concepts into business‑relevant narratives for non‑technical stakeholders.
MUST HAVE:
Leadership: Demonstrated ability to lead and guide a team of engineers in AI solutioning and development.
Architecture: AI/ML/ Gen AI / Agentic AI / Physical AI (Robotics)
Languages: Python
Cloud & Deployment - Experienced with two Cloud Platforms: AWS/Azure/GCP
Datastores: PostgreSQL, DynamoDB
Integration: Open API / Swagger/Apigee
Observability & SRE: Open Telemetry, Splunk, New Relic; Honey Hive or similar,
Security & Compliance: OWASP Top10 remediation, secrets management, policy-as-code (OPA / Sentinel)
NICE to HAVES:
Architecture: Agentic, RAG, Domain-Driven Design, Event-Driven (Kafka / SNS-SQS), Nice to have - Data Lake, Analytics understanding
Languages: Node.js, Java (Spring Boot)
Cloud & Deployment: Several Cloud platforms AWS/Azure/GCP Kubernetes (EKS), CDK, Pod man Compose for local
Datastores: Several Oracle Integration: Graph QL Federation, Async API
Observability & SRE: Open Telemetry, Splunk, New Relic; Honey Hive or similar Security & Compliance: OWASP Top10 remediation, secrets management, policy-as-code (OPA / Sentinel).