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Entry Level Customer Data Platform Jobs (NOW HIRING)

As the product, platform, and customer base scale, data is becoming one of the most important systems in the company: how we understand usage, reliability, activation, customer health, cost ...

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The median Ramp customer saves 5% and grows revenue 16% in their first year - far in excess of ... About the Role The Data Platform builds infrastructure and tools that enable Ramp to realize ...

The median Ramp customer saves 5% and grows revenue 16% in their first year - far in excess of ... About the Role The Data Platform builds infrastructure and tools that enable Ramp to realize ...

Data Platform Engineer

Chicago, IL · On-site

$99K - $169K/yr

Major Duties : Solves complex problems Takes a new perspective on existing solutions Exercises judgment based on the analysis of multiple sources of information Impacts a range of customer ...

Data Platform Engineer

London, OH · On-site

$99K - $169K/yr

Major Duties : Solves complex problems Takes a new perspective on existing solutions Exercises judgment based on the analysis of multiple sources of information Impacts a range of customer ...

Canoo Data Platform - Data Engineer

Oklahoma City, OK · On-site

$98K - $118K/yr

Job Title Canoo Data Platform - Data Engineer About Canoo Canoo's mission is to bring EVs to ... Understand product requirements, engage with team members and customers to define solutions, and ...

Centrellis ® , our innovative health intelligence platform, is enabling us to generate a more ... Communicate directly with users (clinical experts and data scientists) to understand customer needs ...

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Entry Level Client Representative (Customer-Facing) Entry Level Position in Chicago - Little to No ... We find great success in face-to-face communication rather than the typical platforms of direct ...

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Be Seen First

Entry Level Client Representative (Customer-Facing) Entry Level Position in Chicago - Little to No ... We find great success in face-to-face communication rather than the typical platforms of direct ...

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Entry Level Customer Data Platform information

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How much do entry level customer data platform jobs pay per hour?

As of Jul 12, 2026, the average hourly pay for entry level customer data platform in the United States is $17.64, according to ZipRecruiter salary data. Most workers in this role earn between $14.90 and $18.99 per hour, depending on experience, location, and employer.

What is the difference between Entry Level Customer Data Platform vs Customer Data Analyst?

AspectEntry Level Customer Data PlatformCustomer Data Analyst
Required CredentialsBasic knowledge of data management, certifications like Google Data Analytics or SQLDegree in Data Science, Statistics, or related field; certifications like Microsoft Certified Data Analyst
Work EnvironmentTech teams, marketing departments, data management platformsData teams, marketing, business intelligence units
Employer & Industry UsageUsed by companies implementing customer data platforms for marketing automationUsed by organizations analyzing customer data for insights and decision-making

The Entry Level Customer Data Platform role focuses on managing and utilizing customer data platforms, often involving data integration and management tools. In contrast, a Customer Data Analyst interprets data to generate insights, requiring analytical skills and statistical knowledge. Both roles are essential in data-driven marketing but differ in responsibilities and skill sets.

What are the most commonly searched types of Customer Data Platform jobs? The most popular types of Customer Data Platform jobs are:

Lead Data Engineer, Data Platform

CrewAI

San Francisco, CA

$134K - $162K/yr

Full-time

Posted 3 days ago

New


Job description

About CrewAI

CrewAI is the leading framework and enterprise platform for building and orchestrating multi-agent AI systems, powering 300M+ agent executions per month across thousands of companies. As the product, platform, and customer base scale, data is becoming one of the most important systems in the company: how we understand usage, reliability, activation, customer health, cost, governance, and where to invest next.

Today, we have meaningful data already, but it is spread across product telemetry, trace data, application databases, analytics tables, Cube models, Metabase dashboards, and team-specific queries. We need someone to turn that into a coherent, trusted, useful data foundation.

The Role

You'll be CrewAI's first dedicated data engineering hire. Your job is to own the data foundation end to end: rationalize what exists, improve the infrastructure, define trusted metrics, close instrumentation gaps, and make data accessible enough that product, growth, engineering, customer success, and leadership can actually use it.

This is a foundational role with real range. The center of gravity is data infrastructure and analytics engineering: pipelines, warehouse/lake design, semantic modeling, metric definitions, data quality, and self-serve access. You'll also be the person who turns messy questions into clear analysis, reliable dashboards, and better product decisions.

This is not a maintenance role. It is a "make data legible and useful for the company" role.

What You'll Do
  • Own and evolve CrewAI's data platform across ingestion, transformation, storage, semantic modeling, BI, and operational data quality.
  • Rationalize the existing data estate: product events, execution telemetry, OpenTelemetry-derived traces, application tables, Cube models, Redshift/data-lake tables, Metabase dashboards, and team-specific reporting.
  • Establish trusted source-of-truth metrics for the business and product, including executions, active builders/users, activation, deployment health, token and cost usage, customer health, governance adoption, retention, and feature usage.
  • Build and maintain the models, pipelines, and metric layers that make those numbers consistent across teams.
  • Partner with product and engineering to improve instrumentation, event taxonomy, data contracts, and telemetry coverage for new features.
  • Make data self-serve through clear dashboards, documented datasets, reusable metric definitions, and sensible access patterns.
  • Improve reliability and trust in the stack through data quality checks, freshness monitoring, lineage, alerting, backfills, and incident/debug workflows.
  • Partner with Discovery, product, and go-to-market teams on analysis behind recommendations, customer signals, usage patterns, and roadmap decisions.
  • Keep the stack secure and cost-aware, including access control, PII handling, retention, and warehouse/query efficiency.
  • Help define how CrewAI uses data internally as the company scales.

Requirements

What We're Looking For
  • Strong data engineering or analytics engineering experience, especially building data foundations in fast-moving product companies.
  • Excellent SQL and data modeling skills, with experience designing reliable datasets, fact/dimension models, and metric definitions.
  • Experience operating a warehouse or analytics store such as Redshift, Snowflake, BigQuery, Postgres, or similar.
  • Familiarity with transformation and modeling tools such as dbt, Cube, semantic layers, or equivalent systems.
  • Experience with event pipelines, product telemetry, application data, and BI tools such as Metabase, Looker, Mode, or similar.
  • Strong Python for data work, automation, validation, and operational workflows.
  • Product sense: you can turn ambiguous questions into useful metrics, and you care whether the numbers are understood correctly.
  • Pragmatism: you are comfortable inheriting messy systems, improving them incrementally, and choosing boring reliable solutions when they are right.
  • Strong communication and documentation habits. You make data easier for other people to use.
  • Comfort being the first dedicated owner in an early-stage, high-growth environment.
Bonus
  • Experience with LLM, agent, observability, trace, usage, or cost analytics.
  • Experience with OpenTelemetry, high-volume event data, or operational telemetry.
  • Experience with experimentation, causal analysis, activation/retention modeling, or customer health scoring.
  • Experience defining event taxonomies and instrumentation standards for SaaS products.
  • Familiarity with Rails/Postgres application data, background jobs, and product analytics in B2B SaaS.
  • Lightweight ML or recommendation experience, especially where it supports product or customer workflows.