Product And Ai Platform Engineering Director
Posted on Jan. 21, 2025 by Freemind solutions
- Pleasanton, United States of America
- $100000.0 - $110000.0
- Full Time

Overview:
We are seeking a highly experienced Product and AI Platform Engineering Leader
with deep expertise in MLOps, DataOps, and AI product development. This role will
be pivotal in leading the engineering teams to develop scalable, AI-driven products
and the infrastructure to support them. The ideal candidate will combine strong
leadership, technical expertise in AI platforms, and hands-on experience in deploying
MLOps and DataOps best practices to ensure the seamless integration of AI
solutions into the business.
Key Responsibilities:
Leadership & Strategy:
o Lead and manage cross-functional engineering teams to develop AI-
powered products and the underlying AI platform infrastructure.
o Define and drive the technical strategy for MLOps and DataOps,
ensuring efficient development, deployment, and scaling of AI models
and data pipelines.
o Align platform capabilities with product requirements, business
objectives, and future growth needs.
MLOps & DataOps Excellence:
o Establish and scale MLOps practices to streamline the AI model
lifecycle, from data collection and model development to deployment,
monitoring, and continuous integration/continuous delivery (CI/CD).
o Lead the design and implementation of robust DataOps pipelines,
ensuring smooth data ingestion, processing, and integration for AI
models.
o Implement automation for model training, validation, deployment, and
monitoring to improve scalability and operational efficiency.
o Ensure that MLOps workflows support version control, model
governance, reproducibility, and auditability.
AI Platform Development:
o Oversee the development and optimization of a scalable AI platform
that supports real-time data processing, model training, deployment,
and monitoring across products.
o Architect and build highly available, distributed systems that handle
large-scale data processing and AI model execution.
o Drive innovation in platform capabilities, ensuring it can support various
AI products and services while optimizing for performance, security,
and reliability.
Product Engineering:
o Collaborate with product managers, UX/UI designers, and business
stakeholders to define and prioritize product requirements and
technical roadmaps.
o Lead the end-to-end development of AI-driven products, ensuring
timely delivery, high quality, and scalability.
o Manage the integration of AI models into the product ecosystem,
ensuring seamless collaboration between platform, engineering, and
data science teams.
Cross-Functional Collaboration:
o Work closely with data scientists, machine learning engineers, and
DevOps teams to ensure smooth integration of AI models into the
production environment.
o Collaborate with business stakeholders and executive leadership to
ensure AI solutions meet business needs and deliver tangible value.
o Foster a collaborative and innovative culture across the teams,
encouraging knowledge sharing and continuous learning.
Technology & Innovation:
o Stay ahead of the latest trends in AI, MLOps, DataOps, and cloud
computing to ensure the platform remains at the cutting edge of
innovation.
o Evaluate new tools, frameworks, and methodologies to continuously
improve the AI product development and deployment processes.
o Lead efforts to optimize platform performance, data pipeline efficiency,
and the scalability of AI models.
Operational Efficiency:
o Establish metrics for measuring the success and performance of AI
products and platforms, ensuring continuous monitoring, optimization,
and improvement.
o Address technical challenges, bottlenecks, and risks in the platform
and product development process.
o Ensure compliance with data privacy regulations, security standards,
and ethical AI guidelines in all AI deployments.
Required Qualifications:
Experience:
o Experience in AI platform and
product development roles.
o Proven experience leading MLOps and DataOps initiatives at scale,
including the automation of AI model lifecycle management.
Technical Expertise:
o Strong experience in AI/ML frameworks (e.g., TensorFlow, PyTorch),
cloud platforms (AWS, Azure, Google Cloud), and MLOps tools
(Kubeflow, MLflow).
o Deep understanding of CI/CD pipelines for AI models, automation of
model training, validation, and deployment.
o Proficiency in DataOps, including experience with large-scale data
processing technologies (Spark, Kafka, Hadoop) and data pipeline
orchestration tools (Apache Airflow, Prefect).
o Strong knowledge of programming languages such as Python, Java, or
Scala.
Leadership:
o Proven ability to lead and mentor high-performing engineering teams,
with a focus on collaboration and innovation.
o Ability to align platform development with business strategy and
manage cross-functional teams in a fast-paced environment.
Communication:
o Strong ability to translate complex technical concepts into clear
communication for stakeholders at all levels, from engineers to
executives.
Education:
o Bachelor’s or master’s degree in computer science, Engineering, or
related field.
o Advanced degree or certifications in AI, MLOps, or DataOps preferred.
Preferred Qualifications:
Experience in AI product deployment within industries such as finance,
healthcare, or manufacturing.
Familiarity with AI governance, model explainability, and ethical AI principles.
Experience with containerization and orchestration technologies (e.g.,
Kubernetes, Docker) for AI model deployment.
Job Type: Full-time
Pay: $100,000.00 - $110,000.00 per year
Work Location: On the road
Advertised until:
Feb. 20, 2025
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