AI Tech Lead, San Francisco Bay Area
Palo Alto, California, United States
Full Time Senior-level / Expert USD 235K - 300K
About Us
Acryl Data is the company behind DataHub, the leading open-source metadata platform. Originally developed at LinkedIn, DataHub has grown into the largest open-source metadata community with over 12,000 data practitioners and deployments across 3,000+ organizations worldwide.
Through our flagship product DataHub Cloud, we provide enterprise-grade data catalog and observability solutions that enable seamless data discovery, robust data observability, and federated governance across organizations' entire data ecosystem. Our customers range from innovative startups to Fortune 10 companies, all benefiting from our expertise in bringing clarity and control to complex data environments.
Founded by the original creators of LinkedIn DataHub and Airbnb Dataportal, and backed by top-tier venture capital firms, Acryl Data combines deep technical expertise with a proven track record in building industry-leading data platforms.
Role Overview
We're seeking an experienced AI Technical Lead to spearhead our AI initiatives within DataHub, focusing on intelligent metadata management and shaping our AI infrastructure strategy. This role combines hands-on technical leadership in implementing AI-powered features with strategic thinking about how enterprises deploy and manage AI systems at scale. You'll work at the intersection of data catalog systems and modern AI infrastructure, helping organizations navigate the complexities of enterprise AI deployment while ensuring robust governance and efficiency.
Key Responsibilities
AI Features & Implementation
- Lead the technical implementation of AI-powered features in DataHub, including automated data classification, PII detection, and sensitive data identification
- Architect and implement scalable ML pipelines for continuous learning and model updates
- Design and implement systems for model monitoring, validation, and performance tracking
- Guide the team in implementing privacy-preserving ML techniques and ensuring compliance with data protection standards
AI Infrastructure Strategy
- Shape the metadata framework needed to support enterprise AI systems, including model cards, lineage tracking, and deployment metadata
- Define standards for capturing and managing AI-related metadata, including training data versioning, model provenance, and deployment configurations
- Design systems to track and manage AI assets across the development lifecycle
- Develop best practices for AI observability and governance in enterprise settings
Technical Leadership
- Lead architectural decisions for AI systems integration within DataHub
- Mentor team members on ML engineering best practices and AI system design
- Collaborate with product management to define AI feature roadmap
- Work with customers to understand their AI infrastructure needs and challenges
Required Qualifications
- 8+ years of software engineering experience, with at least 4 years focused on ML/AI systems
- Strong experience with modern ML frameworks (PyTorch, TensorFlow) and MLOps tools
- Deep understanding of LLM deployment, fine-tuning, and operational considerations
- Experience with AI governance, including model monitoring, bias detection, and fairness metrics
- Strong background in data privacy and security, particularly in AI contexts
- Experience with enterprise AI deployment and infrastructure management
- Proficiency in Python and modern AI development tools
- Understanding of vector databases, embedding systems, and semantic search
- Experience with distributed systems and scalable architecture
Preferred Qualifications
- Experience working with DataHub is a huge plus!
- Experience building AI-powered features in enterprise SaaS products
- Background in data catalog or metadata management systems
- Familiarity with AI governance frameworks and standards
- Experience with AI infrastructure cost optimization
- Knowledge of regulatory requirements around AI systems
- Track record of building production ML systems
Essential Knowledge Areas
Deep understanding of enterprise AI infrastructure components
- Model serving platforms
- Vector databases
- Training infrastructure
- Feature stores
- Model monitoring systems
- AI governance tools
Familiarity with key considerations for enterprise AI deployment
- Cost optimization strategies
- Security requirements
- Compliance considerations
- Performance monitoring
- Resource management
- Model versioning and rollback strategies
If you're passionate about technology, enjoy working with customers, and want to be part of a fast-growing company changing the industry, we want to hear from you!
How we work
Remote first. We're a fully-distributed company, and our interaction culture is deliberately mixed between meeting culture and written. We're writing heavily because it forces clarity of thought; we have plenty of synchronous time to give space for collaborative ideation.
At Acryl Data, representation matters – for us to build the best, most inclusive, accessible product for our community members, our work and team must reflect the lived experiences, unique perspectives, and communities around us. We are proud to be an equal opportunity workplace.
Benefits
- Salary Range: $235,000 to $300,000
- Equity
- 99% coverage of medical, dental and vision insurance for US Employees
- Carrot Fertility and Family Planning
- Remote friendly
- Monthly co-working salary
- One-time home office budget
This is a hybrid role with the expectation the employee will travel to the office a few times a week during the first few months of employment, and will continue to come to the office in Palo Alto on a regular basis.
Tags: AI governance Architecture Classification Distributed Systems Engineering LLMs Machine Learning ML infrastructure MLOps Open Source Pipelines Privacy Python PyTorch Security TensorFlow
Perks/benefits: Career development Equity / stock options Fertility benefits Health care Startup environment Travel
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