3Pillar Global Logo

3Pillar Global

Lead Data Engineer with AI experience

Posted 9 Days Ago
Be an Early Applicant
Remote
Hiring Remotely in India
Senior level
Remote
Hiring Remotely in India
Senior level
Lead Data Engineer to design, build, and operate production data pipelines, retrieval/vector infrastructure, semantic/feature stores, and ML/LLMOps foundations. Drive CI/CD, governance, monitoring, and agent/data APIs for RAG, LLM, and predictive model workloads.
The summary above was generated by AI
3Pillar is an AI transformation partner on a mission to help enterprises build the AI-native products and intelligent agents that will define the next era of business. With teams across North America, Europe, Latin America, and Asia, we work with the most ambitious companies in financial services, healthcare, media, and technology — helping them move faster, modernize boldly, and compete on their own terms. Our HelixAI platform and Helix Pods delivery model put our engineers at the center of real agentic transformation — doing work that is open, portable, and built to last. We are building the future of enterprise AI
 
We are looking Lead Data Engineer to build, operate, and continuously improve the
data pipelines, retrieval infrastructure, and ML/LLMOps foundations that power our AI
initiatives. The resource will work on turning reference architectures and data contracts
into robust, production-grade implementations that serve conversational AI assistants,
dashboard copilots, autonomous agents, RAG applications, and predictive ML models.

Key Responsibilities:

    Data Pipeline Engineering : Build, test, and maintain production pipelines (batch & real-time) on Snowflake, PySpark, Delta Lake, and Kafka.
    Implement data quality checks, schema validation, and alerting at every pipeline stage.
    Migrate legacy ETL/DWH to cloud-native AWS/Azure architectures with measurable latency and cost improvements. 
    Maintain CI/CD pipelines: automated testing, deployment, rollback, and IaC (Terraform, GitHub Actions). 
     
    RAG, Vector & Retrieval Infrastructure: Build end-to-end retrieval infrastructure: document ingestion, embedding pipelines, vector store management (Pinecone, FAISS, ChromaDB, OpenSearch), and hybrid retrieval layers.
    Implement chunking, metadata filtering, and re ranking — tuning for precision, recall, and latency. 
    Maintain data freshness and index consistency; instrument with context relevance and faithfulness metrics.
     
    Semantic Layer & Knowledge Infrastructure: Implement and maintain business entity mappings, ontologies, and knowledge graphs (Neo4j) per Architect design.
    Build and version the feature store and semantic data contracts serving both ML models and LLM applications.
    Manage metadata, data lineage, and audit trail instrumentation across the platform.
     
    ML/LLMOps Pipeline Support: Build ML data infrastructure: training curation, feature engineering, MLflow experiment tracking, dataset versioning.
    Support LLM fine-tuning workflows — corpus curation, quality filtering, dataset formatting.
    Implement automated evaluation pipelines: factual accuracy, hallucination detection, regression tracking.
    Maintain production monitoring dashboards for pipeline health, model metrics, and alerting.
     
    Agentic Data Infrastructure: Build and maintain data APIs, tool schemas, and memory/state stores that autonomous agents depend on.
    Implement agent observability: capture inputs, retrieved context, tool calls, reasoning traces, and outputs.
    Maintain text-to-SQL layers, semantic query interfaces, and context APIs for conversational AI consumers.
     
    Governance, Security & Data Quality: Implement RBAC, attribute-based access, PII detection/masking, data classification, and audit logging.
    Enforce data contracts and schema governance with automated breaking-change detection and versioned migrations.
    Build data quality monitoring (completeness, freshness, consistency) with automated alerting and root-cause tooling.
    Support compliance readiness: audit trails, data provenance, and regulatory documentation. 

Qualifications:

  • 7+ years data engineering using Cloud services
  • 2+ years production AI/ML or LLM-era data infrastructure. Proven experience building production pipelines at scale — batch and streaming, Snowflake,AWS/Azure. 
  • Deep expertise: Python, PySpark, Snowflake, Delta Lake, Kafka, Spark Structured Streaming. 
  • Hands-on with vector stores, embedding pipelines, and retrieval infrastructure in production RAG environments.
  • Working knowledge of MLOps: MLflow, CI/CD for AI, automated evaluation, and production monitoring.
  • Strong grounding in data governance, quality frameworks, and compliance-
    aligned engineering.
  • Technical Skills:

  • Primary skills: Python, SQL, PySpark, Kafka, Snowflake/DataBricks, Delta Lake, AWS (S3, Glue, Kinesis, EKS, Redshift), Docker, Kubernetes, GitHub Actions.
  • Secondary Skills : LangChain, LlamaIndex, LLM APIs (OpenAI, Bedrock, Claude, HuggingFace), Pinecone, FAISS, ChromaDB, OpenSearch, MLflow, FastAPI, Neo4j,  LangGraph, prompt engineering, RLHF dataset prep, LLM fine-tuning workflows

What It's Like to Work at 3Pillar:

    At 3Pillar, we create an environment where people can do their best work while maintaining a healthy work-life balance.
  • Flexibility & Well-being – Our remote-first approach gives you the flexibility to work where you perform best, while prioritizing your well-being and personal commitments.
  • Global Community – Collaborate with talented colleagues across the globe in a culture built on connection, support, and shared success.
  • Your Voice Matters – We foster open communication and multiple feedback channels, ensuring every employee has the opportunity to be heard and make an impact.
  • Growth & Development – Gain exposure to diverse clients, industries, and challenges that accelerate learning and career growth.

  • Our culture is guided by four core values: Collaboration, Outperform, Respect, and Evolve—the principles that shape how we work, grow, and succeed together.

Thank you,
Kiran Dhanak
Manager, Talent Acquisition

Similar Jobs

21 Hours Ago
Remote
India
Mid level
Mid level
Cloud • Information Technology • Productivity • Software • Automation
The Marketing Program Manager will build and execute a marketing plan for India, drive demand, manage budgets, and support global marketing initiatives while engaging with partners and stakeholders.
Top Skills: MarketoMS OfficeSfdc (Salesforce)
21 Hours Ago
Remote
Gujarat, IND
Mid level
Mid level
Artificial Intelligence • Hardware • Information Technology • Machine Learning
The role involves analyzing failed components, responding to equipment issues, providing technical support and training, performing engineering requests, and managing failure analysis data and quality control processes.
Top Skills: AteC LanguageCadenceCurve TracerDfiiMicromateOscilloscopePythonUm3Unix
21 Hours Ago
Remote or Hybrid
India
Senior level
Senior level
Fintech • Professional Services • Consulting • Energy • Financial Services • Cybersecurity • Generative AI
Lead end-to-end delivery of digital transformation projects in banking, managing stakeholders and risks while mentoring teams to achieve goals.
Top Skills: AgileBlackrock PlatformsProject Management Methodologies

What you need to know about the Chennai Tech Scene

To locals, it's no secret that South India is leading the charge in big data infrastructure. While the environmental impact of data centers has long been a concern, emerging hubs like Chennai are favored by companies seeking ready access to renewable energy resources, which provide more sustainable and cost-effective solutions. As a result, Chennai, along with neighboring Bengaluru and Hyderabad, is poised for significant growth, with a projected 65 percent increase in data center capacity over the next decade.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account