CrawlJobs Logo

Filters

Location
Salary

AI Engineering Manager India, Bangalore Jobs

4 Job Offers

Software Engineering Manager, Open Source AI Software Solutions
Save Icon
Lead our open-source AI software team in Bangalore, developing next-generation GPU solutions for global supercomputers. You will manage the full software lifecycle, from architecture to delivery, for cutting-edge ML frameworks and libraries. This role demands strong leadership, project management...
Location Icon
Location
India , Bangalore
Salary Icon
Salary
Not provided
amd.com Logo
AMD
Expiration Date
Until further notice
Engineering Manager - Enterprise AI
Save Icon
Location Icon
Location
India , Bangalore
Salary Icon
Salary
Not provided
cloudera.com Logo
Cloudera
Expiration Date
Until further notice
Engineering Manager (Data Science & AI)
Save Icon
Lead a talented Data Science & AI engineering team in Bangalore, developing cutting-edge, scalable systems. We seek a manager with 12+ years' experience, deep Java/AI knowledge, and a proven track record in high-scale software delivery. Join JFrog to shape the future of DevOps and "liquid softwar...
Location Icon
Location
India , Bangalore
Salary Icon
Salary
Not provided
jfrog.com Logo
JFrog
Expiration Date
Until further notice
Engineering Manager, Enterprise AI Platform
Save Icon
Lead the development of Cloudera's next-gen Enterprise AI Platform in Bangalore. Manage a team building scalable systems with Kubernetes, Generative AI, and RAG. We seek a technical manager with 8+ years in enterprise software and 2+ years leading teams. Enjoy a flexible WFH policy, wellness prog...
Location Icon
Location
India , Bangalore
Salary Icon
Salary
Not provided
cloudera.com Logo
Cloudera
Expiration Date
Until further notice

About the AI Engineering Manager role

AI Engineering Manager jobs represent a critical leadership nexus at the intersection of artificial intelligence, software engineering, and product strategy. Professionals in this role are responsible for guiding teams that build, deploy, and maintain AI-powered systems and products. They translate cutting-edge AI research and capabilities into reliable, scalable, and valuable applications that serve users and business objectives. As the demand for intelligent systems grows across all industries, these managers are pivotal in bridging the gap between theoretical AI models and real-world, production-ready solutions.

Typically, an AI Engineering Manager oversees a cross-functional team of machine learning engineers, data scientists, software engineers, and sometimes applied researchers. Their core responsibility is to foster a culture of technical excellence, innovation, and end-to-end ownership. This involves setting the technical vision and roadmap for AI initiatives, making key architectural decisions, and ensuring projects move efficiently from prototype to production. A significant part of the role is people leadership: hiring top talent, mentoring engineers in both technical and product domains, and creating an environment where teams can thrive and innovate.

Common responsibilities include defining system architecture for AI solutions, which may encompass data pipelines, machine learning model training and deployment frameworks, retrieval-augmented generation (RAG) systems, and LLM orchestration. They champion software engineering best practices, ensuring code quality, scalability, robustness, and comprehensive monitoring of AI systems in production. Furthermore, they are key stakeholders in responsible AI, implementing practices for fairness, transparency, data privacy, and security, while navigating relevant regulatory landscapes. Collaboration is essential; they partner closely with product managers, designers, and business leaders to align AI capabilities with user needs and strategic goals.

The typical skill set for these leadership roles is multifaceted. A strong foundation in computer science, machine learning, and software engineering is paramount, often backed by an advanced degree. Hands-on experience with modern AI stacks—including cloud platforms, MLOps tools, vector databases, and orchestration frameworks—is highly valued. Beyond technical depth, successful AI Engineering Managers possess exceptional product intuition, strategic thinking, and communication skills to articulate complex concepts to diverse audiences. They demonstrate a proven ability to manage complex projects, solve ambiguous problems, and lead teams in fast-paced environments. For those seeking to lead the future of technology, AI Engineering Manager jobs offer a unique opportunity to shape how intelligent systems are built and integrated into the fabric of our digital world.