Job ID: JOB_ID_7831
Job Description:
We are seeking an experienced AI/ML Architect with deep hands-on expertise in Databricks on AWS to lead the design and implementation of scalable, high-performance data and machine learning platforms. The ideal candidate combines architectural thinking with strong engineering execution, demonstrating the ability to build modern lakehouse systems, optimize largescale pipelines, and drive analytical and ML capabilities across the organization. This role requires working with large, multi-terabyte datasets, advanced analytics, and endtoend ML lifecycle management using Databricks, Python, PySpark, and AWS-native services.
Must Demonstrate (Critical Competencies)
- Designing Databricks-based lakehouse architectures on AWS (Delta Lake + S3 + Unity Catalog).
- Clear separation of compute vs. serving layers in distributed architectures.
- Low-latency API strategy where Spark is insufficient (e.g., leveraging optimized services or caching).
- Caching strategies to accelerate reads and reduce compute cost.
- Data partitioning, file size tuning, and optimization strategies for large-scale pipelines.
- Experience handling multi-terabyte structured timeseries workloads.
- Ability to distill architectural significance from ambiguous business requirements.
- Strong curiosity, questioning, and requirement-probing mindset.
- Player-coach approach: hands-on technical depth + ability to guide design.
Key Responsibilities
AI/ML & Advanced Analytics
- Develop, train, and optimize ML models using Python, PySpark, MLflow, and Databricks Machine Learning.
- Conduct exploratory data analysis (EDA) to identify patterns, trends, and insights in large datasets.
- Deploy ML models into production using MLflow, Databricks Workflows, or other MLOps pipelines.
- Build analytics solutions such as forecasting, anomaly detection, segmentation, or recommendation systems.
- Design ML architectures aligned with Databricks Lakehouse on AWS.
Data Engineering & Lakehouse Architecture
- Architect and build scalable ETL/ELT pipelines using PySpark, SQL, and Databricks Workflows.
- Implement Delta Lake best practices, including OPTIMIZE, ZORDER, partitioning, and schema evolution.
- Design lakehouse layers (Bronze/Silver/Gold) with strong separation of compute and serving layers.
- Optimize cluster performance and jobs using Spark tuning, caching, and shuffle minimization.
- Work with multi-terabyte, time-series, high-velocity data in a distributed environment.
- Ensure robust data availability for downstream ML and analytics workloads.
AWS Cloud Integration
- Architect end-to-end data and ML solutions using AWS services, including: S3 for storage, IAM for identity & access, Glue Catalog for metadata management, Networking for secure, high-throughput data movement.
- Integrate Databricks with AWS-native compute, API layers, and low-latency endpoints.
Business Collaboration & Leadership
- Translate business problems into scalable analytical or ML architectures.
- Communicate complex statistical and architectural concepts to nontechnical stakeholders.
- Collaborate with product, engineering, and business leaders to drive data-informed initiatives.
- Provide design leadership while remaining hands-on in execution.
Compensation & Location
Salary: $80 – $80 per year
Location: Los Angeles, CA
Recruiter / Company – Contact Information
Recruiter / Employer: Los Angeles CA or NYC
Email: akhilcanopy@gmail.com
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