SonicJobs Logo
Left arrow iconBack to search

Member of Technical Staff (Software Engineer, Data Platform)

Perplexity
Posted 3 days ago, valid for 25 days
Location

New York, NY 10008, US

Salary

$220,000 - $405,000 per year

Contract type

Full Time

By applying, a Sonicjobs account will be created for you. Sonicjobs's Privacy Policy and Terms & Conditions will apply.

SonicJobs' Terms & Conditions and Privacy Policy also apply.

Sonic Summary

info
  • The Data Platform team at Perplexity is looking for a senior or staff-level engineer to shape the architecture and technical direction of their data ecosystem.
  • Candidates should have 5+ years of experience for the senior role or 8+ years for the staff role, along with strong expertise in building production data infrastructure systems.
  • The responsibilities include designing large-scale data pipelines, building event-driven systems, and improving developer experience through better abstractions and standards.
  • Proficiency in Python and familiarity with data orchestration systems like Airflow or Dagster are essential, as well as experience supporting ML/AI workflows.
  • The role offers a competitive salary, and applicants are encouraged to apply even if they do not meet every qualification listed.

About the Role

The Data Platform team owns the end-to-end data lifecycle at Perplexity, from ingestion through processing, storage, and serving, powering product features, analytics, experimentation, AI workloads, and the company’s data lake.

The team defines the architecture for batch and streaming systems, the orchestration and observability stack, and a self-serve data platform, while thoughtfully combining platforms such as Databricks and Snowflake with open-source technologies including Spark, Kafka, Flink, Airflow, Dagster, dbt, Iceberg, Delta Lake, and ClickHouse.

In this senior/staff role, you will shape architecture, set standards, and drive the long-term technical direction of Perplexity’s data ecosystem.

Key Responsibilities

  • Design and operate large-scale batch and streaming data pipelines that directly power Perplexity product features, AI training and evaluation workflows, analytics, and experimentation.

  • Build event-driven and streaming systems (Kafka, Kinesis, PubSub, or similar) for real-time ingestion, transformation, and delivery, alongside batch frameworks for backfills, aggregations, and offline computation.

  • Lead the architecture of data orchestration using tools like Airflow or Dagster, owning scheduling, dependency management, retries, SLAs, and end-to-end observability for critical data flows.

  • Set and enforce guarantees for data correctness, freshness, lineage, and recoverability, designing systems that handle rapid scale growth, partial failures, and evolving schemas without disrupting AI workloads or product experiences.

  • Build self-serve data platforms that let engineers, data scientists, and analysts safely discover data, define contracts, and create and operate their own pipelines with minimal friction.

  • Improve developer experience through better abstractions, opinionated paved paths, and standards for data modeling, testing, validation, and deployment, treating the data platform as a product used by many teams.

  • Drive architectural decisions across storage, compute, orchestration, and data APIs, partnering closely with product engineering and data science to align the data ecosystem with Perplexity’s roadmap.

  • Mentor engineers, review designs, and raise the technical bar for data infrastructure through thoughtful feedback, documentation, and hands-on collaboration.

Qualifications

  • 5+ years (Senior) or 8+ years (Staff) of software engineering experience.

  • Strong experience building production data infrastructure systems.

  • Hands-on experience with batch and/or streaming data processing at scale.

  • Deep familiarity with data orchestration systems (Airflow, Dagster, or similar).

  • Proficiency in Python and at least one additional backend language (Go, TypeScript, etc.).

  • Strong systems thinking around reliability, latency, cost, and complexity tradeoffs.

  • Experience supporting ML/AI workflows, training pipelines, or evaluation systems.

  • Familiarity with data quality, lineage, observability, and governance tooling.

  • Prior ownership of internal platforms used by many teams.

If you’re excited about this role, we encourage you to apply even if your experience doesn’t match every qualification listed above.




Learn more about this Employer on their Career Site

Apply now in a few quick clicks

By applying, a Sonicjobs account will be created for you. Sonicjobs's Privacy Policy and Terms & Conditions will apply.

SonicJobs' Terms & Conditions and Privacy Policy also apply.