HighLevel Logo

HighLevel

Staff Analytics Engineer – Customer Data Platform

Reposted 16 Days Ago
Be an Early Applicant
Remote
Hiring Remotely in India
Expert/Leader
Remote
Hiring Remotely in India
Expert/Leader
Lead the modeling of the Customer Data Platform, defining event taxonomy and ensuring reliable datasets for analytics, product insights, and machine learning. Collaborate with various teams to maintain data consistency and shape the architecture of the behavioral data platform.
The summary above was generated by AI

About HighLevel:
HighLevel is an AI-powered business operating system that gives agencies, entrepreneurs and SMBs the infrastructure to build, automate and scale. Today, HighLevel supports SMBs across 150+ countries, fueling community-driven growth rooted in real customer outcomes.
To date, businesses operating on HighLevel have generated over $7 billion in ecosystem value, demonstrating the impact of shared infrastructure at scale. By centralizing conversations, automation and intelligence into one system, we help businesses move faster, reduce complexity and execute efficiently.
Behind the platform, HighLevel powers more than 4 billion API hits and 2.5 billion message events daily. With 250 terabytes of distributed data, 250+ microservices and over 1 million domain names supported, our architecture is built for performance, resilience and long-term scalability.
Our People
With over 2,000 team members across 10+ countries, HighLevel operates as a global, remote-first organization built for speed and ownership. We value initiative, clarity and execution, creating space for ambitious people to build systems that support millions of businesses worldwide. Here, innovation thrives, ideas are celebrated and people come first, no matter where they call home.
Our Impact
Every month, HighLevel enables more than 1.5 billion messages, 200 million leads and 20 million conversations for the more than 1 million businesses we support. Behind those numbers are real people building independence, expanding opportunity and creating measurable impact. We’re proud to be a part of that.
Learn more about us on our YouTube Channel or Blog Posts

About the Role:

    We are looking for a Staff Analytics Engineer to lead the modeling and semantic foundation of our Customer Data Platform. This role sits at the intersection of product data, analytics engineering, and data platform architecture. You will define how product events become structured behavioral datasets that power analytics, product insights, machine learning, and in‑app reporting. You will partner closely with product, engineering, marketing, data science, and platform teams to ensure that behavioral data is reliable, well‑modeled, and consistently defined across the company.

Responsibilities:

  • Define and govern the product event taxonomy across services and applications
  • Partner with engineering teams to establish clear instrumentation contracts and naming standards
  • Own the modeling patterns that translate event collection pipelines into durable warehouse datasets
  • Ensure event data is reliable, deduplicated, and usable for analytics and modeling
  • Transform raw events into reusable behavioral datasets such as sessions, feature usage, funnels, retention cohorts, and customer journeys
  • Design models that enable product teams to analyze feature adoption, engagement, and lifecycle behavior
  • Maintain modeling patterns that support both exploratory analysis and production use cases
  • Define and maintain canonical entities such as Agency, Location, Contact, Conversation, Campaign, Spend, Usage, and Outcomes
  • Establish durable fact and dimension models that connect behavioral events to business entities
  • Ensure relationships between entities remain consistent and scalable across teams and product surfaces
  • Build warehouse models that power product analytics platforms
  • Ensure metrics in analytics tools and warehouse metrics resolve to the same definitions
  • Provide standardized datasets for funnels, cohorts, retention analysis, and product experimentation
  • Build behavioral and feature‑ready datasets used by data science for lifecycle modeling, experimentation, and prediction
  • Ensure datasets are stable, versioned, and reproducible for downstream ML workflows
  • Establish modeling patterns, dbt conventions, macros, and documentation standards used across analytics engineering
  • Design tenant‑safe models that support multi‑tenant workloads and high‑concurrency analytics
  • Partner with platform teams to ensure models are performant for both internal analytics and in‑app experiences
  • Define tests, freshness expectations, and invariants for behavioral datasets
  • Implement automated validation for event completeness and schema consistency
  • Partner with platform and engineering teams to detect and resolve issues before they impact analytics or customers
  • Establish reusable modeling patterns and best practices
  • Review work from analytics engineers and raise the bar for correctness, clarity, and maintainability
  • Help shape the long‑term architecture of the behavioral data platform

Requirements:

  • 9+ years in analytics engineering, data engineering, or data architecture
  • Deep expertise in SQL and dbt, including testing, documentation, and version‑controlled workflows
  • Strong experience modeling event‑based or product usage data at scale
  • Experience working with modern event collection systems and product analytics platforms
  • Proven ownership of canonical datasets or semantic layers used by multiple teams
  • Strong judgment around metric definitions, change management, and keeping data consistent across a growing platform

Success in this role looks like:

  • Product events across the platform follow a clear and consistent taxonomy
  • Event collection pipelines feeding the warehouse and OLAP systems produce reliable, analysis‑ready behavioral data
  • Product analytics tools, internal analytics, and customer‑facing reporting all resolve to the same underlying definitions
  • Product teams can analyze usage, funnels, and retention without building custom analytics logic
  • Data science teams rely on stable behavioral datasets rather than raw event streams
  • Canonical customer and product models become the default foundation for analytics and product features across HighLevel.

EEO Statement:
The company is an Equal Opportunity Employer. As an employer subject to affirmative action regulations, we invite you to voluntarily provide the following demographic information. This information is used solely for compliance with government record-keeping, reporting, and other legal requirements. Providing this information is voluntary and refusal to do so will not affect your application status. This data will be kept separate from your application and will not be used in the hiring decision.
#LI-Remote #LI-NJ1

Similar Jobs

An Hour Ago
Remote or Hybrid
New Delhi, Delhi, IND
Expert/Leader
Expert/Leader
Fintech • Information Technology • Insurance • Financial Services • Big Data Analytics
The VP, Data and Analytics Officer will lead data strategy, analytics, and innovation across Asia, driving impactful insights and business decisions.
4 Hours Ago
Remote or Hybrid
India
Senior level
Senior level
Fintech • Professional Services • Consulting • Energy • Financial Services • Cybersecurity • Generative AI
The role involves managing program conflicts, facilitating communication across programs, process mapping, conducting quality assurance deep dives, and optimizing resource management, ensuring alignment and efficiency in financial transformation projects.
Top Skills: Azure DevopsClarityMS OfficeTableau
5 Hours Ago
Easy Apply
Remote
India
Easy Apply
Senior level
Senior level
Artificial Intelligence • Edtech • Mobile • Natural Language Processing • Productivity • Software
Lead the engineering team focusing on the data platform's architecture and scaling, ensuring reliability and performance while mentoring engineers and collaborating with cross-functional teams.
Top Skills: AWSAzureEltETLGCPJavaScriptNode.jsReactSpark

What you need to know about the Delhi Tech Scene

Delhi, India's capital city, is a place where tradition and progress co-exist. While Old Delhi is known for its rich history and bustling markets, New Delhi is defined by its modern architecture. It's clear the region places a strong emphasis on preserving its cultural heritage while embracing technological advancements, particularly in artificial intelligence, which plays a central role in shaping the city's tech landscape, fueled by investments in research and development.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account