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Enterprise Architect (Data & Ai)

Enterprise Architect (Data & Ai)

AccellorGuntur, Republic Of India, IN
1 day ago
Job description
  • As an Enterprise Architect, you will own the end-to-end technology blueprint, spanning backend platforms (Java / .NET, Python), frontend frameworks (React, Angular, Node.Js), real-time data streaming, and AI-driven / agentic services. You will translate business objectives into an actionable, multi-year technology and AI roadmap;
  • ensure that every layer(application, data, infrastructure, security, AI, agentic agents) is aligned and future-proof;
  • and act as the bridge between C-suite strategy, product, sales engineering (presales), and delivery teams.

    Key Deliverables & Success Metrics

    • Architecture & AI Roadmap
    • Deliver a three-year, multi-domain blueprint covering cloud, data, integration, AI / ML, and agentic-AI agents
    • Stand up an AI & Agentic Architecture Council (quarterly) driving adoption of generative AI, conversational agents, and MLOps standards
    • AI-First Proof-of-Concepts & Agentic Demos
    • Lead 4–6 POCs / year around AI / ML and agentic use cases (e.G., LLM-powered assistants, workflow orchestration bots)
    • Measure POC success by model accuracy (+15% lift), inference latency (2× faster), and business KPIs (reduced support tickets, increased demo‐to‐close rate)
    • Team Enablement & AI Mentorship
    • Launch a monthly “AI & Agentic Deep Dive” series to upskill engineers, data scientists, and presales consultants on ML frameworks (TensorFlow, PyTorch), conversational-AI patterns, and agent orchestration
    • Embed AI / agentic design patterns into standard playbooks (prompt engineering, feedback loops, multi-agent coordination)
    • GTM & Presales Enablement
    • Collaborate with Sales Engineering to craft technical demos, solution blueprints, and ROI analyses for enterprise prospects
    • Support bid responses and RFPs with architecture diagrams, security / compliance narratives, and scalability proof points
    • Resilience & Responsible AI
    • Define and track system and model health metrics (system uptime ≥99.9%;
    • model drift ≤5% per quarter)

    • Lead “AI fairness & ethics” reviews, ensuring bias detection, explainability, and compliance with GDPR / ADA
    • Extended Responsibilities :

      A. Strategic Architecture & Agentic-AI Planning

    • Enterprise Blueprint : Evolve the canonical reference architecture to include AI / ML pipelines, feature stores, inference-at-the-edge, and autonomous agent orchestration
    • Cloud & Hybrid AI : Architect cloud-native AI / agentic services (SageMaker, Azure ML, Vertex AI Agents), hybrid inference runtimes, and GPU / TPU provisioning strategies
    • Standards & Policies : Author AI governance policies—data privacy, model validation, versioning, rollback strategies, and agent safety guardrails
    • B. Solution & AI-Driven Design

    • Core Platforms : Architect mission-critical microservices on Java / Spring Boot, .NET Core, and Python (Django, Flask, FastAPI) with embedded AI inference and agentic endpoints (REST / GRPC)
    • Frontend & Full-Stack : Design rich client applications using React, Angular, or Vue.Js;
    • backend APIs with Node.Js / Express or Python frameworks;
    • implement CI / CD for full-stack deployments

    • Data & Streaming : Design streaming ETL with Kafka + Spark / Flink feeding feature stores, real-time scoring engines, and agent event buses
    • MLOps & AI Ops : Define CI / CD for models (training, validation, deployment), automated retraining triggers, canary and shadow deployments, plus agent lifecycle management
    • C. Governance & Responsible AI

    • Architecture Reviews : Include an “ML & agentic risk” dimension in every design review (performance, security, bias, unintended behaviors)
    • Security & Compliance : Partner with InfoSec to secure code, model artifacts, and agent logic (encryption, access controls, audit trails);
    • vet third-party AI / agentic services

    • FinOps for AI : Implement cost-optimization for GPU / compute, track ROI on AI and agentic initiatives (cost per model endpoint, agent-handling cost per transaction)
    • D. Leadership, GTM & Collaboration

    • Cross-Functional Engagement : Work closely with Product, UX, Sales Engineering, and Security to define AI / use-case roadmaps, demo strategies, and success criteria
    • Presales Coaching : Mentor Solutions Architects and Sales Engineers on technical storytelling, POC / demo best practices, and objection handling around AI and agentic capabilities
    • Community Building : Sponsor internal hackathons, open-source contributions (e.G., agent frameworks such as AutoGen, LangChain), and external speaking opportunities
    • E. AI & Agentic POC, Innovation, and GTM

    • Rapid Experimentation : Prototype generative AI agents, semantic search with vector databases, autonomous workflow bots, and conversational-AI pipelines
    • Benchmarking & Optimization : Lead performance profiling (JVM / CLR / Python interpreters), model quantization, optimization for CPU-only edge deployments, and low-latency agent responses
    • GTM Support : Develop presales playbooks, ROI calculators, and competitive battlecards for AI and agent-driven offerings
    • Requirements :

    • Bachelor’s or Master’s degree in Computer Science, Engineering, or related field
    • 15+ years delivering enterprise-grade solutions with significant AI / ML and agentic-AI components
    • Certifications (highly desirable) : TOGAF 9.2, AWS Solutions Architect – Professional, Azure Solutions Architect Expert, Certified Kubernetes Administrator (CKA), TensorFlow Developer Certificate
    • Mandatory Skills & Expertise

    • Languages & Frameworks :
    • Backend : Java (JEE, Spring Boot), .NET Core / Framework, Python (Django, Flask, FastAPI)
    • Frontend & Full-Stack : React, Angular, Vue.Js, Node.Js / Express, Next.Js / Nuxt.Js
    • APIs & Microservices : REST, gRPC, GraphQL, serverless functions (AWS Lambda, Azure Functions)
    • Streaming & Real-Time Data : Apache Kafka (Streams, Connect), Pulsar, Spark / Flink, event sourcing / CQRS
    • Cloud & AI Platforms : AWS (SageMaker, Lambda, ECS / EKS), Azure (ML, Functions, AKS), GCP (Vertex AI, Cloud Functions), Terraform, CloudFormation, Azure ARM
    • Containers & Orchestration : Docker, Kubernetes (EKS / AKS / GKE), Helm, service meshes (Istio, Linkerd)
    • Data Engineering & Feature Stores : Spark, Flink, Kinesis, S3 / HDFS;
    • data warehousing (Redshift, BigQuery, Snowflake);
    • feature stores (Feast, Tecton)

    • AI / ML & Agentic Lifecycle : TensorFlow, PyTorch, MLflow, Kubeflow, SageMaker Pipelines;
    • conversational-AI frameworks (Rasa, Bot Framework);
    • agentic frameworks (LangChain, AutoGen)

    • Responsible AI & Ethics : Bias detection, explainability (SHAP, LIME), privacy-preserving ML (DP, federated learning), GDPR / PCI-DSS fundamentals
    • Distributed Systems & Performance : CAP theorem, consensus (Raft / Paxos), JVM / CLR / Python tuning, algorithmic complexity analysis, network diagnostics
    • GTM & Presales : Hands-on experience with technical presales, RFP / RFI responses, demo / PITCH deck creation, ROI analysis, competitive positioning
    • Leadership & Collaboration : Architecture governance, technical mentorship, stakeholder management, workshop facilitation, cross-functional team leadership.
    • Preferred Attributes :

    • Domain expertise in regulated industries (finance, healthcare, telecommunications)
    • Active open-source contributions to AI / agentic or frontend / backend frameworks
    • Proven track record driving agile transformations, DevSecOps, and responsible AI adoption at scale
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    Enterprise Architect • Guntur, Republic Of India, IN