Full-Time

AI Tech Lead

Bay Area

Posted on 12/13/2024

Acryl Data

Acryl Data

51-200 employees

Provides metadata platform for data observability

No salary listed

Palo Alto, CA, USA

Hybrid

Hybrid role with travel to Palo Alto office a few times per week during first months; then regular on-site in Palo Alto.

Category
Software Engineering (2)
,
Required Skills
LLM
MLOps
Python
Tensorflow
Pytorch
Requirements
  • 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
  • Deep understanding of enterprise AI infrastructure components (Model serving platforms, Vector databases, Training infrastructure, Feature stores, Model monitoring systems, AI governance tools)
  • Cost optimization strategies
  • Security requirements
  • Compliance considerations
  • Performance monitoring
  • Resource management
  • Model versioning and rollback strategies
  • Model cards, lineage tracking, and deployment metadata
Responsibilities
  • 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
  • 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
  • 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
Desired 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

Acryl Data offers Acryl Cloud, a metadata platform for data management that combines a data catalog with data observability. It helps data producers and consumers organize, understand, and derive fast value from data using Shift Left practices that embed testing early in development. The platform continuously detects data quality incidents in real time, automates anomaly detection, and provides time-based data lineage to trace root causes, with both push and pull metadata ingestion. Pricing is subscription or usage-based, serving teams from technical to non-technical to monitor the health of datasets and pipelines and accelerate issue resolution.

Company Size

51-200

Company Stage

Series A

Total Funding

$21M

Headquarters

Santa Clara, California

Founded

2021

Simplify Jobs

Simplify's Take

What believers are saying

  • Raised $35M Series B from Bessemer to expand AI data management.
  • Launched Acryl Observe for automated anomaly detection yesterday.
  • 50+ integrations reduce switching costs in modern data stacks.

What critics are saying

  • Collibra captures Fortune 500 share with AI governance in 12-24 months.
  • OpenMetadata free tier slashes Acryl ARR by 30% in 3-9 months.
  • EU AI Act v2 mandates immutable lineage, causing churn in 18-24 months.

What makes Acryl Data unique

  • Acryl Cloud combines metadata cataloging with real-time data observability.
  • Built on LinkedIn's battle-tested DataHub and Apache Gobblin.
  • Streaming-first architecture enables real-time metadata updates.

Help us improve and share your feedback! Did you find this helpful?

Benefits

Health Insurance

Dental Insurance

Vision Insurance

Company Equity

Family Planning Benefits

Fertility Treatment Support

Remote Work Options

Home Office Stipend

Phone/Internet Stipend

Company News

TSecurity.de
May 21st, 2025
Acryl Data raises $35M Series B

DataHub, by Acryl Data, has secured $35 million in Series B funding led by Bessemer Venture Partners. This funding aims to enhance their open source metadata platform, enabling AI to safely manage and utilize data.

I Programmer
Jun 26th, 2023
Acryl Adds Advanced Data Observability

Vercel has announced AI Accelerator, a program for AI builders and early stage startups, along with AI Playground, an environment in which developers can experiment with AI technologies.

The New Stack
Jun 23rd, 2023
Acryl Data Unveils Data Observability Capabilities, Adds Funding

Yesterday, Acryl Data announced the launch of Acryl Observe, a data observability module for its flagship Acryl Cloud offering.

Google
Jun 23rd, 2023
Acryl Data unveils Data Observability capabilities, adds funding

Acryl Data unveils Data Observability capabilities, adds funding.

PT. Cahaya Naga Mediatama
Jun 22nd, 2023
Acryl Data raises $21M to grow its enterprise data catalog platform

With the explosion of different kinds of data, companies are struggling to realize meaningful value from their stored data. Data teams are overworked, meanwhile — forced to cater to the needs of disparate departments within an organization while trying...

INACTIVE