Head of Data Engineering
Company: Ares Operations
Location: New York City
Posted on: April 1, 2026
|
|
|
Job Description:
Over the last 20 years, Ares’ success has been driven by our
people and our culture. Today, our team is guided by our core
values – Collaborative, Responsible, Entrepreneurial, Self-Aware,
Trustworthy – and our purpose to be a catalyst for shared
prosperity and a better future. Through our recruitment, career
development and employee-focused programming, we are committed to
fostering a welcoming and inclusive work environment where
high-performance talent of diverse backgrounds, experiences, and
perspectives can build careers within this exciting and growing
industry. Job Description Position Overview We are seeking an
exceptional Principal / Head of Data Engineering to establish and
lead our data engineering function from the ground up. This role
reports to the Head of Data and AI Engineering and is responsible
for the complete design, development, and implementation of a
world-class modern data platform. You will drive the strategic
evolution of our data infrastructure, enabling both structured and
unstructured data workflows at scale . You will spearhead the
upgrade and modernization of our existing Azure Data Factory
pipelines to next-generation orchestration tools, implement
efficient data ingress and egress patterns, establish AI/LLM-native
data capabilities through advanced vector indexing and streaming
architectures, and build a strong data engineering organization
from the ground up. You will collaborate closely with cloud
engineering, network engineering, and data products teams to
architect a unified data lake and comprehensive data governance
framework that supports diverse analytical and operational needs
across our portfolio. Key Responsibilities Organization Building &
Team Leadership Build and scale the data engineering organization
from inception , defining team structure, roles, and
responsibilities across the function Establish engineering culture
emphasizing technical excellence, collaboration, ownership, and
continuous learning Recruit, mentor, and develop high-performing
data engineers with expertise in modern data platforms, ETL/ELT,
orchestration, streaming, and vector databases Partner with Human
Resources on recruitment strategy, hiring processes, and
organizational scaling as the firm grows Strategic Vision & Roadmap
Establish a comprehensive, multi-year data engineering strategy
aligned with firm objectives Define technical roadmaps for data
infrastructure, platform capabilities, and technology adoption
Establish governance frameworks for data engineering decisions,
standards, and best practices Lead technology evaluation and vendor
selection processes with clear ROI and strategic fit Platform
Architecture & Modernization Design and architect a modern,
scalable data platform leveraging Databricks on Azure that supports
both structured and unstructured data at petabyte scale Lead the
modernization of legacy Azure Data Factory (ADF) pipelines to
production-grade orchestration platforms such as Prefect, or Apache
Airflow Develop a comprehensive upgrade and migration roadmap for
ETL/ELT pipelines, ensuring zero data loss, minimal downtime, and
improved observability Lead the implementation of serverless and
Zero ETL patterns to eliminate infrastructure management overhead
and reduce time-to-insight Own cost optimization initiatives across
the data platform, balancing performance, reliability, and
operational efficiency ETL/ELT & Orchestration Excellence Build
deep expertise in Directed Acyclic Graph (DAG) principles and
modern workflow orchestration patterns for reliable, scalable
pipeline management Evaluate, select, and implement best-in-class
orchestration tools (Prefect, Airflow) that provide superior
visibility, error handling, and data lineage tracking Establish
patterns for dynamic DAG generation, conditional execution, and
advanced error recovery strategies Design and enforce data quality
frameworks within orchestration tools to catch issues at the
pipeline level Create monitoring, alerting, and observability
solutions for 100% visibility into pipeline health and data
freshness Data Movement & Integration Patterns Architect efficient
data ingress patterns supporting high-volume, real-time, and batch
data inflows from diverse sources (APIs, databases, cloud services,
SaaS platforms) Design sophisticated data egress patterns enabling
secure, efficient data distribution to downstream systems,
analytics tools, and external stakeholders Implement change data
capture (CDC) patterns and incremental processing strategies to
optimize resource usage and reduce latency Establish governance
frameworks for data movement including encryption, authentication,
and audit trails Streaming & Real-Time Data Capabilities Evaluate
and implement streaming platforms (Kafka, Event Hubs, Kinesis) to
support real-time analytics and operational use cases Design
event-driven architectures that enable low-latency decision-making
and automated workflows Build streaming ingestion pipelines that
efficiently funnel data into the lakehouse while maintaining data
quality and lineage AI & LLM-Native Data Infrastructure Design and
build vector database infrastructure to support LLM applications,
including efficient indexing, similarity search, and
retrieval-augmented generation (RAG) workflows Establish patterns
for embedding generation, vector storage optimization, and
integration with vector databases Build data pipelines that prepare
unstructured data (documents, images, audio) for embedding and LLM
consumption Create governance and provenance tracking for
embeddings and vector data to ensure transparency and compliance
Data Lake & Catalog Implementation Lead the development and
governance of a unified data lake, establishing data quality
standards, lineage tracking, and compliance frameworks Support
implementation of a modern data catalog solution that enables data
discovery, governance, and self-service analytics across the
enterprise Establish data engineering best practices, testing
frameworks, production deployment pipelines, and operational
standards Cross-Functional Collaboration & Stakeholder Management
Partner with cloud engineering, and infrastructure teams to define
overall data and technology strategy Work closely with cloud
engineering teams to optimize Azure cloud utilization , cost
efficiency, security, and operational resilience Collaborate with
network engineering to design network architecture supporting
high-throughput data flows, low-latency access patterns, and hybrid
connectivity Partner with data products leadership to translate
business requirements into technical implementations for analytics,
AI/ML, and real-time intelligence Communicate data engineering
strategy and priorities to executive leadership and the broader
organization Required Qualifications Technical Expertise Advanced
proficiency with Databricks, including Delta Lake, Unity Catalog,
and Apache Spark optimization Deep expertise in Microsoft Azure,
including Azure Data Factory, Synapse Analytics, Azure Storage
(Data Lake Storage Gen2), Azure Event Hubs, and Azure compute
services Production experience migrating and modernizing Azure Data
Factory pipelines to modern orchestration platforms Expert-level
understanding of Directed Acyclic Graphs (DAGs), workflow
orchestration concepts, and production DAG-based platforms Deep
hands-on experience with Prefect, Apache Airflow, or similar
orchestration tools in enterprise environments Strong experience
designing data ingress and egress patterns for diverse data sources
and consumers Demonstrated expertise in streaming architectures
(Kafka, Event Hubs, Kinesis) and event-driven data processing
Experience building and optimizing vector databases and similarity
search solutions for LLM/AI applications Strong understanding of
embedding generation, vector indexing strategies, and RAG
(Retrieval-Augmented Generation) pipelines Proficiency with data
engineering technologies: Python, SQL, Scala, and hands-on
experience with modern data transformation tools Experience with
data governance, metadata management, and data catalog solutions
Leadership & Organization Building 10 years of data engineering
experience, with at least 5 years in senior leadership or principal
technical roles Proven track record building and scaling data
engineering organizations from the ground up, developing talent and
establishing technical culture Experience successfully leading
enterprise platform migrations and large-scale modernization
initiatives Demonstrated ability to define strategic vision,
communicate priorities to executive stakeholders, and execute on
multi-year roadmaps Strong track record designing and implementing
enterprise-scale data platforms supporting 100 users and
petabyte-scale datasets Demonstrated ability to partner effectively
across infrastructure, security, networking, product, and executive
teams Excellent communication skills; ability to explain complex
technical concepts to both engineers and non-technical executives
Preferred Qualifications Hands-on experience building and operating
AI/ML platforms and the data engineering to support machine
learning workflows Expertise in change data capture (CDC) patterns
and incremental processing strategies Experience with cost
optimization strategies for cloud data platforms Background in data
quality frameworks, testing strategies, and observability for data
pipelines Experience with unstructured data processing, computer
vision, or natural language processing pipelines Reporting
Relationships Head of Data and Analytics Compensation The
anticipated base salary range for this position is listed below.
Total compensation may also include a discretionary
performance-based bonus. Note, the range takes into account a broad
spectrum of qualifications, including, but not limited to, years of
relevant work experience, education, and other relevant
qualifications specific to the role. $300,000 - $350,000 The firm
also offers robust Benefits offerings. Ares U.S. Core Benefits
include Comprehensive Medical/Rx, Dental and Vision plans; 401(k)
program with company match; Flexible Savings Accounts (FSA);
Healthcare Savings Accounts (HSA) with company contribution; Basic
and Voluntary Life Insurance; Long-Term Disability (LTD) and
Short-Term Disability (STD) insurance; Employee Assistance Program
(EAP), and Commuter Benefits plan for parking and transit. Ares
offers a number of additional benefits including access to a
world-class medical advisory team, a mental health app that
includes coaching, therapy and psychiatry, a mindfulness and
wellbeing app, financial wellness benefit that includes access to a
financial advisor, new parent leave, reproductive and adoption
assistance, emergency backup care, matching gift program, education
sponsorship program, and much more. There is no set deadline to
apply for this job opportunity. Applications will be accepted on an
ongoing basis until the search is no longer active.
Keywords: Ares Operations, East Brunswick , Head of Data Engineering, IT / Software / Systems , New York City, New Jersey