Implementation Data Engineer

ProjectGrowth · Posted 2026-06-03

This role is open to candidates based in LATAM, Africa, and Eastern Europe. Please note that as this role supports U.S.-based clients, candidates must be available to work during U.S. business hours aligned with the client’s time zone.Client OverviewOur client is a fast-growing AI-powered marketing intelligence platform that helps brands and retailers make smarter media investment decisions through advanced forecasting and attribution modeling. Their engineering team operates at the intersection of data infrastructure and machine learning, building the pipelines and models that power real commercial decisions for some of the most recognizable names in retail and ecommerce. They move quickly, hold high standards for code quality, and give engineers the autonomy to own their work end-to-end — from the first line of code to a clean handoff with full documentation.Role OverviewThe Implementation Data Engineer is the dedicated technical owner for new client onboarding, responsible for building the customer-specific ELT pipelines, dbt models, and Dagster orchestration that transform a freshly-signed account into a fully modeled, analytics-ready environment. This role sits at the core of the client delivery workflow, partnering closely with the Implementation Project Manager while maintaining full ownership of the technical build. The Implementation Data Engineer works within a modern analytics engineering stack and is expected to deliver independently, surface blockers early, and hand off completed onboardings with clean documentation and monitoring in place.LocationFully Remote (Work from Home) | 9AM - 5PM ESTKey ResponsibilitiesClient Onboarding & Pipeline DevelopmentBuild and maintain scalable, fault-tolerant ELT pipelines for new client onboarding using PythonDevelop and optimize dbt models, tests, and documentation following analytics engineering best practicesOrchestrate and monitor onboarding workflows using DagsterModel clean, analytics-ready datasets for BI, forecasting, and ML feature consumptionData Quality & ObservabilityImplement and maintain data quality checks and testing strategies throughout the onboarding lifecycleTroubleshoot pipeline failures, performance issues, and data inconsistencies during onboardingMonitor pipeline health using observability tools and metricsCross-Functional CollaborationPartner with the Implementation Project Manager to provide realistic engineering ETAs, surface blockers early, and keep work visible in JiraCollaborate with Data Science to ensure forecasting and AI feature data lands correctly and on timeWrite clear, concise status updates that stakeholders can act on without rewritingHandoff, Documentation & Continuous ImprovementHand off completed onboardings to the core Data Engineering team with documentation, runbooks, and monitoring in placeSupport data source re-authentications, migrations, and net-new API additions on live accountsContribute to refactoring and improvement of onboarding pipeline templates and patterns as the platform evolvesFollow established team standards for SLAs, code quality, and deploymentsQualifications — Experience3+ years of professional experience in data engineering or analytics engineeringStrong proficiency in Python (e.g., pandas, SQLAlchemy, psycopg2)Hands-on experience with dbt (Core or Cloud)Hands-on experience with Dagster or similar orchestration toolsAdvanced SQL skills including CTEs, window functions, and query optimizationExperience with cloud data warehouses such as Snowflake, BigQuery, or RedshiftFamiliarity with modern ELT tools such as Airbyte, Fivetran, Meltano, or dltHubExperience working cross-functionally with Product, Analytics, or Data Science teamsAbility to work independently and deliver consistently in a contract environmentQualifications — SkillsStrong written communication skills — able to produce status updates clear enough for non-technical stakeholders to act on directlyProactive about surfacing blockers, data quality issues, and timeline risks before they escalateDetail-oriented with a bias for clean handoffs, thorough documentation, and maintainable codeComfortable using AI-assisted tools (e.g., Claude, ChatGPT) to accelerate personal workflowSelf-directed with strong ownership mentality in a fully remote, async-friendly environmentOpportunityThis is a high-impact contract role where your work directly determines how quickly new clients go from signed contract to fully operational analytics — making you a critical part of a product that informs real media spend decisions at scale. You'll work with a modern, well-designed stack (Python, dbt, Dagster) alongside a team that values engineering craft, clear communication, and continuous improvement. If you thrive in implementation-heavy environments, enjoy owning the full technical lifecycle of a project, and want visibility into how AI-driven forecasting products are built and delivered, this is the role for you.Application Process:To be considered for this role these steps need to be followed:Fill in the application formRecord a video showcasing your skill sets

Apply for this role

Other open roles at ProjectGrowth

See all 145 open roles at ProjectGrowth →

Related jobs in Data & Analytics

On Take-Off

  • 1 candidate applied to ProjectGrowth on Take-Off in the last 30 days.
  • 1 apply-button click across their roles in the same period.