What are the responsibilities and job description for the Data Architect With AI position at The Avian Consulting LLC?
Mandatory Skills :
AWS
Google Cloud Platform
Snowflake
AWS to Google Cloud Platform Migration
RAG Architecture
LLM
12-15 yrs exp
Strategic & Architectural Leadership
- Define and evolve AI & Data architecture strategy and roadmap, aligned with business priorities and IT strategy.
- Serve as a thought leader for modern data, analytics, and AI architectures, including Generative AI and Agentic AI.
- Identify, evaluate, and recommend emerging technologies, platforms, and architectural patterns.
- Partner with business and digital leaders to identify and prioritize high-impact AI and analytics use cases.
- Provide architectural guidance on ethical, responsible, and compliant AI adoption.
Solution Architecture & Platform Design
- Lead end-to-end architecture design for complex data, analytics, and AI initiatives, ensuring scalability, performance, security, and cost efficiency.
- Design and govern cloud-based data platforms leveraging:
- Google Cloud Platform (BigQuery, Vertex AI, Dataflow, Dataproc, Looker)
- AWS (S3, Glue, EMR, Redshift, SageMaker, Lambda)
- Snowflake (data warehouse, data sharing, performance optimization)
- Architect modern enterprise data architectures, including:
- Data Lake, Lakehouse, Data Mesh, and Data Fabric
- Open table/file formats such as Parquet, Iceberg, Delta Lake
- Medallion architectures (Bronze/Silver/Gold)
- Define data ingestion and integration patterns across structured and semi-structured sources (SAP, Oracle, Salesforce, JDE, Ariba, IoT, APIs, NoSQL).
- Define and enforce data quality, metadata, lineage, and access control standards.
AI, ML, and Generative AI Architecture
- Design and implement AI/ML and GenAI solution architectures from experimentation through production.
- Architect solutions for core ML use cases such as demand forecasting, predictive maintenance, supply chain optimization, and customer analytics.
- Lead architecture for Generative AI and Agentic AI, including:
- LLM integration with tools, APIs, and knowledge bases (RAG patterns)
- Autonomous and semi-autonomous agent workflows
- Fine-tuning, prompt engineering, and optimization strategies
- Establish MLOps and LLMOps frameworks for model training, deployment, monitoring, evaluation, and lifecycle management.
- Define approaches for model observability, explainability (XAI), bias detection, and risk mitigation.
Technical Leadership & Collaboration
- Provide technical leadership and mentorship to solution architects, data engineers, data scientists, and AI engineers.
- Collaborate closely with platform, DevOps, and cloud engineering teams to enable automation-driven deployments.
- Review solution designs, conduct architecture assessments, and provide impact analysis and recommendations.
- Communicate complex technical concepts clearly to both technical and executive audiences.
Required Qualifications
- Bachelor’s Degree in Engineering or a related technical discipline.
- 12 years of hands-on experience in data architecture, analytics solutions, and/or cloud data platforms.
- 3 years of hands-on experience delivering AI/ML and Generative AI solutions in production.
- 6 years of experience designing and scaling enterprise data platforms on Google Cloud Platform, AWS, and Snowflake.
Preferred Qualifications
- Master’s degree or Ph.D. preferred.
- Demonstrated success leading large-scale, cross-functional data and AI initiatives.
- Cloud platforms: Google Cloud Platform and AWS (multi-cloud experience strongly preferred)
- Data platforms: Snowflake, BigQuery, Data Lakes, Lakehouse architectures
- Programming & analytics: Python, SQL, PySpark
- AI/ML frameworks: TensorFlow, PyTorch, scikit-learn, XGBoost
- GenAI/LLM frameworks, vector databases, and graph databases
- Data engineering tools: Spark, Kafka, Hadoop
- Containerization and orchestration: Docker, Kubernetes
- CI/CD and DevOps practices
- Strong understanding of data modeling, performance tuning, and cost optimization
- Strong architectural thinking and problem-solving skills
- Excellent communication and stakeholder management capabilities
- Ability to influence without authority and operate effectively in matrixed organizations
- Self-driven, organized, and able to manage multiple priorities
Preferred Certifications
- AWS Certified Solutions Architect
- Google Cloud Professional Cloud Architect
- Snowflake or Data Engineering certifications
Salary : $130,000 - $140,000