Strong technical expertise in data lifecycle management, including ETL pipelines and data enablement., Experience with data governance, modeling, quality, security, and privacy best practices., Proficiency in data architecture, infrastructure, and analytics platforms., Excellent communication skills in English and experience working with international clients..
Key responsibilities:
Oversee the entire data product lifecycle from ideation to deployment.
Lead cross-functional teams to develop and deliver high-quality data products.
Collaborate with stakeholders to understand and prioritize data needs and requirements.
Support the integration of AI into data workflows to enhance performance.
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Ci&T
5001 - 10000
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About Ci&T
We are your tech transformation specialists, combining human expertise with AI to create scalable solutions that help you Navigate Change.
With over 6,500 CI&Ters and partnerships with more than 1,000 clients, we have a 30-year history of transformation.
We are tech transformation specialists, uniting human expertise with AI to create scalable tech solutions.
With over 7,400 CI&Ters around the world, we’ve built partnerships with more than 1,000 clients during our 30 years of history. Artificial Intelligence is our reality.
The Data & Analytics Manager will oversee the entire lifecycle of data products, from ideation and development to deployment and optimization. This role requires technical expertise, strategic thinking, and leadership skills to drive the successful execution of datadriven initiatives
During career evolution, ideally, this person has acquired experience with different clients which would help to develop expertise in at least two areas (Data Engineering, Data Analytics, Data Science, AI).
Moreover, this person is contributing to the contract and sharing experience across teams and the data community (data community, AI, ESG Groups). Moreover, start identifying opportunities to expand the data operation inside the client and work closely with senior leadership to convert it.
Responsibilities:
Managing the complete Data Lifecycle, from where data is generated to ETL pipelines and data enablement.
Data Best Practices: Understand the data best practices such as Governance, Modeling, Quality, Security & Privacy, Integration, Accessibility, Analytics, Backup & Recovery
Data Architecture & Infrastructure: understanding the technical architectureinfrastructure that supports the organizations data needs, including storage, integrations, and analytics platforms.
Task Prioritization: working with technical and business teams to understand their data needs and priorities and effectively communicate the value of data initiatives. Prioritizing tasks and defining the roadmap, balancing competing demands from different stakeholders.
Data Profiling: understanding the data types, relationships, patterns, and trends to understand the data better.
Requirements Definition: collaborate with internal and external stakeholders to understand and document data requirements, ensuring they are clear, specific, and achievable, as well as how the data should be presented to consumption.
Business Process: understand the business workflows so appropriate assumptions can be made regarding sources, entities, and attributes to answer business questions.
Validation: validating the product with users to ensure it meets their needs and expectations, using data and metrics to inform decisions.
Performance Analysis: monitoring and analyzing product performance, using metrics and KPIs to assess success and metrics to track the effectiveness of data initiatives and investments, and using datadriven insights to drive continuous improvement.
Powered by AI: support incorporating AI in the team workflow to speed up performance.
Team Leadership: leading crossfunctional teams, including data scientists, engineers, and analytics specialists, to develop and deliver highquality data products. Attracting, retaining, and developing top data talents. Mentoring, training, and pursuing growth opportunities to build motivated teams.
Requirements:
Excellent level of English communication (reading, writing and speaking)
Experience working with international clients
Previous experience in Data Platform and Data Visualization
Previous experience in project management
Strategic Thinking, Product Mindset
Experience with valuebased Prioritization and Risk Management
Experience with Team Leadership
Nice to have:
Experience with Azure cloud platform and Databricks
Experience with MS Purview
Experience with project management tools
Experience with NLP
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CI&T is an equalopportunity employer. We celebrate and appreciate the diversity of our CI&Ters’ identities and lived experiences. We are committed to building, promoting, and retaining a diverse, inclusive, and equitable company and culture focused on creating a better tomorrow. At CI&T, we recognize that innovation and transformation only happen in diverse, inclusive, and safe work environments. Our teams are most impactful when people from all backgrounds and experiences collaborate to share, create, and hear ideas. Before applying for our opportunities take a look at Conflict of Interest Policy on website. We strongly encourage candidates from diverse and underrepresented communities to apply for our vacancies.
CI&T is an equalopportunity employer. We celebrate and appreciate the diversity of our CI&Ters’ identities and lived experiences. We are committed to building, promoting, and retaining a diverse, inclusive, and equitable company and culture focused on creating a better tomorrow.
At CI&T, we recognize that innovation and transformation only happen in diverse, inclusive, and safe work environments. Our teams are most impactful when people from all backgrounds and experiences collaborate to share, create, and hear ideas.