XX
Data Analytics EngineerSCALISUnited States

Dieses Stellenangebot ist nicht mehr verfügbar

XX

Data Analytics Engineer

SCALIS
  • US
    United States
  • US
    United States

Über

About the Job We're building the AI team member that every restaurant deserves, one that knows every guest by heart, generates revenue around the clock, and delivers the kind of hospitality that turns first‑timers into regulars. Restaurants are the heartbeat of every community, and we believe their teams deserve superpowers. Through our voice AI platform, we're redefining how restaurants engage with their customers, making every interaction seamless and consistently outstanding. At Slang, we foster a culture of innovation, inclusivity, and growth, ensuring that every Slangster feels valued and connected to the impact we're driving together.
Overview We're looking for a
Data Analytics Engineer
to join our data team and help build and scale our analytics infrastructure from ingestion to dashboard. You'll build and maintain the pipelines, transformations, and reporting layers that the rest of the company relies on to understand our product, our customers, and our business. This role sits at the intersection of data engineering and BI analytics, and the right person will be equally comfortable writing complex SQL transformations and presenting a clean dashboard to stakeholders.
You will work closely with product engineering to instrument new features, maintain the business logic behind our core metrics, and keep our data warehouse performant and cost‑efficient. There's also real opportunity to push into real‑time data infrastructure as the platform evolves, including streaming pipelines and event‑driven metric delivery for production services.
Key Responsibilities
Build and maintain analytics pipelines in BigQuery using dbt Cloud, including staging, transformation, and mart layers
Manage and configure Airbyte ingestion streams and Hightouch reverse ETL syncs
Partner with product engineering to ensure new features follow our event‑driven instrumentation methodology and emit the right data from day one
Define and maintain business logic for metrics construction, serving as the source of truth for how key metrics are calculated
Build, update, and maintain internal dashboards in Looker Studio
Build and maintain BigQuery datasets, views, and scheduled queries
Monitor and optimize query performance and warehouse costs, proactively identifying opportunities to reduce spend
Design and implement data backup and redundancy strategies
Make occasional updates to the customer‑facing dashboard layer in the product (TypeScript)
Perform ad‑hoc data analysis and produce one‑off data pulls for customers as needed
Identify recurring data requests and build automated, self‑serve solutions to replace manual fulfillment
Investigate BigQuery continuous queries for publishing metrics to Cloud Pub/Sub, enabling product engineering services to consume analytics data in near real‑time
Evaluate Cloud Dataflow for real‑time and low‑latency data processing use cases as the platform's needs evolve
Basic Qualifications
5+ years of experience in data engineering, BI analytics, or software engineering
Expert‑level SQL skills, particularly in BigQuery or comparable cloud data warehouses
Hands‑on experience with dbt (dbt Cloud preferred) for managing transformation pipelines
Experience with data ingestion tools such as Airbyte, Fivetran, or similar
Experience with reverse ETL tools such as Hightouch or Census
Working knowledge of Python for data scripting, automation, and ad‑hoc analysis
Experience building and maintaining dashboards in Looker Studio or similar BI tools
Strong understanding of event‑driven data instrumentation and how analytics contracts should be defined alongside product features
Track record of optimizing data warehouse costs and query performance
Comfort working directly with engineering teams to define data requirements and instrumentation standards
Nice to Haves
Experience with GCP data services beyond BigQuery (Cloud Dataflow, Pub/Sub, Cloud Functions)
Familiarity with TypeScript or Kotlin
Experience building or contributing to customer‑facing analytics features within a product
Prior work with streaming or real‑time data architectures
Experience implementing data quality testing frameworks (e.g., dbt tests, Great Expectations, or similar)
Familiarity with data governance practices, including documentation, lineage tracking, and access controls
Experience working at a fast‑growing startup where you owned the data stack end to end
Location New York / Hybrid or Remote (USA)
Compensation & Location Compensation for this role is location‑based and benchmarked against local market data aligned to the employee’s primary work location. Total compensation includes a mix of cash and equity and may vary by location, role level, and experience. Our range is therefore wide and not meant as a negotiation range.
#J-18808-Ljbffr
  • United States

Sprachkenntnisse

  • English
Hinweis für Nutzer

Dieses Stellenangebot wurde von einem unserer Partner veröffentlicht. Sie können das Originalangebot einsehen hier.