BENGALURU · FULLTIME
AI Architect

Unisys
Bengaluru · onsite · Posted 8d ago
Your match
Sign in to see your match score, skill gaps & tailored resume.
Section · 01
About this role
What success looks like in this role:
The key responsibilities of an Architect position can vary depending on the specific industry, organization, and project requirements. However, some common responsibilities typically associated with an Architect role include:
- Architecting Data Solutions : Designing and architecting end-to-end data science solutions that meet business objectives. This involves understanding the business requirements, data infrastructure, and available technologies to create scalable and efficient data architectures. Agentic AI, AI Agent, Azure Foundry, AWS, Cloud
- Data Modeling and Analysis : Developing data models and algorithms to analyze complex datasets, extract insights, and make data-driven decisions. This may involve machine learning, statistical analysis, and data mining techniques. 3. Technical Leadership : Providing technical leadership to the data science team, guiding them in best practices, methodologies, and tools for data analysis and modeling. Mentoring junior team members and fostering a culture of collaboration and innovation.
- Infrastructure Design and Optimization : Designing and optimizing data infrastructure, including databases, data warehouses, and data lakes, to support large-scale data processing and analytics. This may involve selecting appropriate technologies, optimizing data pipelines, and ensuring scalability and reliability. 5. Integration and Deployment : Integrating data science solutions with existing systems and applications, and overseeing the deployment and implementation process. This may involve working closely with software engineers, IT professionals, and other stakeholders to ensure smooth integration and deployment. 6. Data Governance and Compliance : Establishing data governance policies, standards, and procedures to ensure data quality, privacy, and security. Ensuring compliance with regulatory requirements such as GDPR, HIPAA, or industry-specific regulations. 7. Performance Monitoring and Optimization : Monitoring the performance of data science solutions and infrastructure, identifying bottlenecks and areas for optimization, and implementing improvements to enhance efficiency and reliability. 8. Stakeholder Engagement and Communication : Collaborating with business stakeholders, executives, and other teams to understand their needs, communicate technical concepts effectively, and align data science initiatives with business goals. 9. Research and Innovation : Staying updated on the latest advancements in data science, machine learning, and related fields, and exploring innovative solutions to address business challenges and opportunities.
- Project Management : Overseeing data science projects from inception to completion, including project planning, resource allocation, risk management, and tracking project milestones and deliverables. These responsibilities encompass a wide range of tasks and skills, requiring architects to possess a blend of creative vision, technical expertise, project management capabilities, and effective communication skills. #LI-SS1
You will be successful in this role if you have: BA/BS degree and 13+ years’ relevant experience OR equivalent combination of education and experience
Master’s degree preferred
The qualifications required for a Data Science(AI) Architect position typically span a combination of technical skills, domain expertise, and soft skills. Here are the key qualifications: Advanced Data Science Skills : Proficiency in data science concepts, methodologies, and tools, including machine learning, statistical analysis, data mining, and predictive modeling. Strong programming skills in languages such as Python, R, or Scala are often essential.
Data Engineering Expertise : Deep understanding of data engineering principles, including data integration, data pipelines, ETL processes, and data warehousing. Experience with big data technologies such as Hadoop, Spark, and Kafka is valuable.
Data Architecture and Design : Experience in designing scalable and efficient data architectures to support data science initiatives. Knowledge of database technologies, data modeling techniques, and cloud platforms such as AWS, Azure, or Google Cloud is essential.
Software Development Skills : Proficiency in software development practices, including version control, testing, and debugging. Experience with software engineering tools and frameworks such as Git, Docker, and Kubernetes is beneficial.
Domain Knowledge : Understanding of the industry or domain in which the organization operates, including relevant business processes, data sources, and regulatory requirements. Domain expertise helps in identifying relevant use cases and designing effective data solutions.
Unisys is proud to be an equal opportunity employer that considers all qualified applicants without regard to age, blood type, caste, citizenship, color, disability, family medical history, family status, ethnicity, gender, gender expression, gender identity, genetic information, marital status, national origin, parental status, pregnancy, race, religion, sex, sexual orientation, transgender status, veteran status or any other category protected by law.
Local employment practices and rights may vary by jurisdiction and are subject to applicable local laws. This commitment includes our efforts to provide for all those who seek to express interest in employment the opportunity to participate without barriers. If you are a US job seeker unable to review the job opportunities herein, or cannot otherwise complete your expression of interest, without additional assistance and would like to discuss a request for reasonable accommodation, please contact our Global Recruiting organization at GlobalRecruiting@unisys.com . US job seekers can find more information about Unisys’ EEO commitment here .
Sourced from workday · view original
Let the agent run this one for you.
Tailored resume, auto-apply, and referral lookup — in under 2 minutes.
Section · 02
Skills
Section · Company
About Unisys

Unisys
About
Unisys India was established in 2004 in Bangalore. We have strengthened tremendously in terms of headcount and infrastructure, as well as capabilities to become an integral part of the Unisys global delivery organization. Today, we have three state-of-the-art facilities - two in Bangalore and one in Hyderabad.
At Unisys India you will see a representation from most functions of Unisys. Be it product development for Systems & Technology, application design and migration for Global Industries, service desk / enterprise computing / ITIL processes / field operations back office for GOIS or extensions of various Unisys corporate functions. We are here today because of our relentless efforts towards timely, quality and cost efficient deliveries, all meant to drive a high level of customer satisfaction at a compelling cost.
A unique blend of mature processes, high focus on tools and, above all a team of highly talented and motivated employees play a critical role in making this possible. We are poised to play an increasingly important role in Unisys journey towards predictable and profitable growth. You could be a part of this change. Imagine It. Done.
For more information, visit http://www.unisys.com