Overview
Remote
USD 137,000.00 - 148,000.00 per year
Full Time
Skills
Higher Education
Product Strategy
Data Science
Streaming
Extract
Transform
Load
Use Cases
Apache Parquet
Evaluation
DS
DirectShow
Continuous Improvement
Regulatory Compliance
Management
Access Control
Automated Testing
SAFE
Mentorship
Design Review
Data Engineering
Python
Apache Spark
Shipping
Training
Version Control
Machine Learning Operations (ML Ops)
Orchestration
Docker
Continuous Integration
Continuous Delivery
SQL
Data Modeling
Warehouse
Performance Tuning
Data Quality
Meta-data Management
Cloud Computing
Amazon Web Services
Amazon S3
API
Amazon DynamoDB
Amazon SageMaker
Step-Functions
Amazon Redshift
Business Intelligence
Tableau
Analytics
Dashboard
Privacy
Articulate
Collaboration
Documentation
k-nearest neighbors
Real-time
Amazon Kinesis
Apache Kafka
Testing
Machine Learning (ML)
Authorization
Emerging Technologies
Artificial Intelligence
Communication
Benchmarking
Video
Leadership
AIM
Market Analysis
Recruiting
Affinity Propagation
Job Details
AI/ML Data Engineer
College Board - Technology
Location: This is a fully remote role that requires working EST hours. Candidates who live near CB offices have the option of being fully remote or hybrid (Tuesday and Wednesday in office).
Type: This is a full-time position
About the Team
Aquifer is a small, highly collaborative team that implements data and analytics services powering higher?education recruitment and student engagement for College Boards' BigFuture Division. We experiment thoughtfully and ship durable, secure data products that personalize outreach and help partners execute strategic enrollment plans.
Our team has a mix of engineers and architects that blends expertise in data engineering, analytics, and product strategy to deliver scalable solutions that transform how students connect with colleges. We value curiosity, reliability, and clear communication, and we work closely across disciplines to ensure every product is impactful, maintainable, and user-focused.
About the Opportunity
As an AI/ML Data Engineer, you'll design, build, and operate the data and ML plumbing that powers personalized student experiences at scale. You'll create batch and streaming pipelines, ML?ready datasets, feature/embedding stores, and the services that move models into production safely and compliantly. You'll collaborate with Product, Data Science, and Analytics to turn raw events into reliable, privacy?preserving features that drive real impact for students and higher?ed partners.
In this role, you will:
ML Data Platform & Pipelines (40%)
You have:
At College Board, we offer more than just a paycheck-we provide a meaningful career, a supportive team, and a comprehensive package designed to help you thrive. We're a self-sustaining nonprofit that believes in fair and competitive compensation, grounded in your qualifications, experience, impact, and the market.
A Thoughtful Approach to Compensation
#LI-REMOTE
#LI-AP1
College Board - Technology
Location: This is a fully remote role that requires working EST hours. Candidates who live near CB offices have the option of being fully remote or hybrid (Tuesday and Wednesday in office).
Type: This is a full-time position
About the Team
Aquifer is a small, highly collaborative team that implements data and analytics services powering higher?education recruitment and student engagement for College Boards' BigFuture Division. We experiment thoughtfully and ship durable, secure data products that personalize outreach and help partners execute strategic enrollment plans.
Our team has a mix of engineers and architects that blends expertise in data engineering, analytics, and product strategy to deliver scalable solutions that transform how students connect with colleges. We value curiosity, reliability, and clear communication, and we work closely across disciplines to ensure every product is impactful, maintainable, and user-focused.
About the Opportunity
As an AI/ML Data Engineer, you'll design, build, and operate the data and ML plumbing that powers personalized student experiences at scale. You'll create batch and streaming pipelines, ML?ready datasets, feature/embedding stores, and the services that move models into production safely and compliantly. You'll collaborate with Product, Data Science, and Analytics to turn raw events into reliable, privacy?preserving features that drive real impact for students and higher?ed partners.
In this role, you will:
ML Data Platform & Pipelines (40%)
- Design, build, and own batch and streaming ETL (e.g., Kinesis/Kafka ? Spark/Glue ? Step Functions/Airflow) for training, evaluation, and inference use cases.
- Stand up and maintain offline/online feature stores and embedding pipelines (e.g., S3/Parquet/Iceberg + vector index) with reproducible backfills.
- Implement data contracts & validation (e.g., Great Expectations/Deequ), schema evolution, and metadata/lineage capture (e.g., OpenLineage/DataHub/Amundsen).
- Optimize lakehouse/warehouse layouts and partitioning (e.g., Redshift/Athena/Iceberg) for scalable ML and analytics.
- Productionize training and evaluation datasets with versioning (e.g., DVC/LakeFS) and experiment tracking (e.g., MLflow).
- Build RAG foundations: document ingestion, chunking, embeddings, retrieval indexing, and quality evaluation (precision@k, faithfulness, latency, and cost).
- Collaborate with DS to ship models to serving (e.g., SageMaker/EKS/ECS), automate feature backfills, and capture inference data for continuous improvement.
- Define SLOs and instrument observability across data and model services (freshness, drift/skew, lineage, cost, and performance).
- Embed security & privacy by design (PII minimization/redaction, secrets management, access controls), aligning with College Board standards and FERPA.
- Build CI/CD for data and models with automated testing, quality gates, and safe rollouts (shadow/canary).
- Maintain docs?as?code for pipelines, contracts, and runbooks; create internal guides and tech talks.
- Mentor peers through design reviews, pair/mob sessions, and post?incident learning.
You have:
- 4+ years in data engineering (or 3+ with substantial ML productionization), with strong Python and distributed compute (Spark/Glue/Dask) skills.
- Proven experience shipping ML data systems (training/eval datasets, feature or embedding pipelines, artifact/version management, experiment tracking).
- MLOps/LLMOps: orchestration (Airflow/Step Functions), containerization (Docker), and deployment (SageMaker/EKS/ECS); CI/CD for data & models.
- Expert SQL and data modeling for lakehouse/warehouse (Redshift/Athena/Iceberg), with performance tuning for large datasets.
- Data quality & contracts (Great Expectations/Deequ), lineage/metadata (OpenLineage/DataHub/Amundsen), and drift/skew monitoring.
- Cloud experience preferably with AWS services such as S3, Glue, Lambda, Athena, Bedrock, OpenSearch, API Gateway, DynamoDB, SageMaker, Step Functions, Redshift and Kinesis BI tools like Tableau, Quicksight, or Looker for real-time analytics and dashboards
- Security and privacy mindset; ability to design compliant pipelines handling sensitive student data.
- An ability to judiciously evaluate the feasibility, fairness, and effectiveness of AI solutions and articulate considerations and concerns around implementing models in the context of specific business applications
- Excellent communication, collaboration, and documentation habits.
- RAG & vector search experience (OpenSearch KNN/pgvector/FAISS) and prompt/eval frameworks.
- Real?time feature engineering (Kinesis/Kafka) and low?latency stores for online inference.
- Testing strategies for ML systems (unit/contract tests, data fuzzing, offline/online parity checks).
- Experience in higher?ed/assessments data domains.
- A passion for expanding educational and career opportunities and mission-driven work
- Authorization to work in the United States for any employer
- Curiosity and enthusiasm for emerging technologies, with a willingness to experiment with and adopt new AI-driven solutions and a comfort learning and applying new digital tools independently and proactively.
- Clear and concise communication skills, written and verbal
- A learner's mindset and a commitment to growth: welcoming diverse perspectives, giving and receiving timely, respectful feedback, and continuously improving through iterative learning and user input.
- A drive for impact and excellence: solving complex problems, making data-informed decisions, prioritizing what matters most, and continuously improving through learning, user input, and external benchmarking.
- A collaborative and empathetic approach: working across differences, fostering trust, and contributing to a culture of shared success.
- Application review will begin immediately and will continue until the position is filled. This role is expected to accept applications for a minimum of 5 business days.
- While the hiring process may vary, it generally includes: resume and application submission, recruiter phone/video screen, hiring manager interview, performance exercise such as live coding, a panel interview, a conversation with leadership and reference checks.
At College Board, we offer more than just a paycheck-we provide a meaningful career, a supportive team, and a comprehensive package designed to help you thrive. We're a self-sustaining nonprofit that believes in fair and competitive compensation, grounded in your qualifications, experience, impact, and the market.
A Thoughtful Approach to Compensation
- The hiring range for this role is $137K-$148K.
- Your exact salary will depend on your location, experience, and how your background compares to others in similar roles at the College Board.
- We aim to make our best offer upfront-rooted in fairness, transparency, and market data.
- We adjust salaries by location to ensure fairness, no matter where you live.
#LI-REMOTE
#LI-AP1
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