Title: Engineering Manager, Data Science and Machine Learning
Location: Vashi, Navi Mumbai
The Company
Morningstar is a leading provider of independent investment research in North America, Europe, Australia, and Asia.
We offer a wide variety of products and solutions that serve market participants of all kinds, including individual and institutional investors in public and private capital markets, financial advisors, asset managers, retirement plan providers and sponsors, and issuers of securities.
Morningstar India has been a Great Place to Work-certified company for the past eight consecutive years.
The Role
As an Engineering Manager, AI & ML (Data Collection), you will play a vital role in executing the company's AI and machine learning initiatives with a strong focus on data collection technologies.
This position will require deep technical expertise in unstructured data processing, data collection pipeline engineering, and a hands-on approach to managing and mentoring engineers.
Your leadership will ensure that AI & ML data collection systems are developed and operationalized at the highest standards of performance, reliability, and security.
You will work closely with individual contributors, ensuring that projects align with broader business goals and AI/ML strategies.
This role requires deep engagement in the design, development, and maintenance of AI & ML models, solutions, architecture, and services.
You will need to provide strong technical direction, problem-solve complex technical challenges, and ensure that the team consistently delivers high-quality, scalable solutions.
You will leverage your deep knowledge in areas such as advanced natural language processing (NLP), generative AI (GenAI), large language models (LLMs), ML Operations (MLOps), data architecture, data pipelines, and cloud-managed services.
Team Overview
You will lead a multidisciplinary team of engineers and data scientists responsible for building AI & ML solutions and services as part of robust data collection pipelines handling large volumes of unstructured data.
Your team will focus on building scalable and reliable systems to process and categorize data that is essential for downstream data collection processing.
Responsibilities
AI & ML Data Collection Leadership : Drive the execution of AI & ML initiatives related to data collection, ensuring that the team's efforts are aligned with overall business goals and strategies.
Technical Oversight : Provide hands-on technical leadership in the engineering of ML models and services, focusing on unstructured data, NLP, and classifiers.
Oversee and contribute to the implementation of scalable solutions that meet high standards of reliability and efficiency.
Team Leadership & Development : Lead, mentor, and develop a high-performing team of engineers and data scientists, fostering a culture of innovation and continuous improvement.
Ensure effective communication and coordination within your team and across geographically dispersed teams.
NLP Technologies : Contribute to the development and application of NLP techniques, including classifiers, transformers, LLMs, and other methodologies, to efficiently process and categorize unstructured data.
Ensure these models are integrated seamlessly into the broader AI/ML infrastructure.
Data Pipeline Engineering : Design, develop, and maintain advanced data collection pipelines, utilizing orchestration, messaging, database, and data platform technologies.
Ensure pipelines are optimized for scalability, performance, and reliability.
Cross-functional Collaboration : Work closely with other AI/ML teams, data collection engineering teams, product management, and others to ensure data collection efforts support broader AI/ML goals and product objectives.
Innovation & Continuous Improvement : Continuously explore and implement new technologies and methodologies to enhance the efficiency and accuracy of data collection and processing systems.
Stay at the forefront of advancements in NLP and data processing.
System Integrity & Security : Ensure that all data collection systems meet the highest standards of integrity, security, and compliance.
Implement best practices for data governance and model transparency.
Talent Acquisition & Retention : Play an active role in recruiting, training, and retaining top engineering talent.
Foster an environment where team members are encouraged to innovate, feel valued, and achieve their full potential.
Process Improvement : Apply Agile, Lean, and Fast-Flow principles to improve team efficiency and the delivery of high-quality data collection solutions.
Support Company Vision and Values : Model and promote behaviors that align with the company's vision and values.
Participate actively in company-wide initiatives and projects as required.
Requirements
Bachelor's, Master's, or PhD in Computer Science, Mathematics, Data Science, or a related field.
6+ years of experience in software engineering, with a focus on AI & ML technologies, particularly in data collection and unstructured data processing.
3+ years of experience in a leadership role managing individual contributors.
Strong expertise in NLP and machine learning, with hands-on experience in classifiers, large language models (LLMs), and other NLP techniques.
Extensive experience with data pipeline and messaging technologies such as Apache Kafka, Airflow, and cloud data platforms (e.g., Snowflake).
Expert-level proficiency in Java, Python, SQL, and other relevant programming languages and tools.
Strong understanding of cloud-native technologies and containerization (e.g., Kubernetes, Docker) with experience in managing these systems globally.
Demonstrated ability to solve complex technical challenges and deliver scalable solutions.
Excellent communication skills with a collaborative approach to working with global teams and stakeholders.
Experience working in fast-paced environments, particularly in industries that rely on data-intensive technologies (experience in fintech is highly desirable).
Working Conditions
The job conditions for this position are in a standard office setting.
Employees in this position use PC and phones on an ongoing basis throughout the day.
Limited corporate travel may be required to remote offices or other business meetings and events.
Morningstar is an equal opportunity employer.
Morningstar's hybrid work environment gives you the opportunity to work remotely and collaborate in-person each week.
We've found that we're at our best when we're purposely together on a regular basis, at least three days each week.
A range of other benefits are also available to enhance flexibility as needs change.
No matter where you are, you'll have tools and resources to engage meaningfully with your global colleagues.
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