Staff ML Engineer
Sanas
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See open jobs at Sanas.See open jobs similar to "Staff ML Engineer" General Catalyst.Software Engineering, Data Science
Bengaluru, Karnataka, India
Key Responsibilities:
- Architect and lead the development of large scale data pipelines and data lakes to ingest, transform and serve high quality data for AI model training,product telemetry and analytics.
- Drive long‑term data infrastructure strategy across streaming and batch,feature store extensions, Iceberg/Delta lake choices, metadata management, and lakehouse evolution.
- Drive platform and infrastructure decisions, optimizing compute fleets (e.g.Ray, Spark clusters), orchestration tooling Airflow, Dagster), and streaming stacks Kafka, Flink).
- Collaborate with AI research scientists, engineering leads, product, finance,marketing, and legal to align data architecture with business and regulatory requirements.
- Advocate best practices in data governance, lineage, observability, testing,tooling, and disaster recovery across pipelines and data stores.
- Act as a mentor and technical leader - review design and code, share patterns, elevate team capability, and support recruitment and hiring.
- Drive build vs buy decisions for tools to implement data quality and observability solutions to achieve high data quality.
Qualifications:
- 7+ years of experience in Data Engineering, Infrastructure, or ML SystemsExpertise in building distributed batch and real-time data systems
- Expertise in Databases (like Postgres) and Data Lakes (like Snowflake,Databricks and ClickHouse)
- Experience using Data Processing frameworks like Spark, Flink and Ray Deep
- Experience with cloud platforms AWS/GCP, object storage (e.g., S3,and orchestrators like Airflow and Dagster
- Strong knowledge of data lifecycle management, including privacy, security,compliance and reproducibility.
- Comfortable working in a fast-paced startup environment
- Strategic mindset and proven ability to collaborate across engineering, ML and product teams to deliver infrastructure that scales with the business.
Nice to Have:
- Familiarity with audio data and its unique challenges, like large file sizes, time-series features, metadata handling, is a strong plus.
- Experience with Voice AI models like ASR, TTS and speaker verification.
- Familiarity with real-time data processing frameworks like Kafka, Flink, Druid and Pinot
- Familiarity with ML workflows including: MLOps, feature engineering, model training and inference.
- Experience with labeling tools, audio annotation platforms, or human-in-the-loop annotation pipelines.
This job is no longer accepting applications
See open jobs at Sanas.See open jobs similar to "Staff ML Engineer" General Catalyst.