Product Manager
Dataction is seeking a Product Manager to lead strategy, roadmap planning, and execution for international clients within an IT consulting context. The role involves managing the end-to-end product lifecycle, prioritizing backlogs, and collaborating with cross-functional engineering and design teams. Candidates are expected to have strong experience with Agile methodologies and stakeholder management. The position is a hybrid role based in Pune, focused on driving data-driven, impactful product solutions.
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Experience
5-7 years
Function
Product Management
Work mode
Hybrid, India
Company
Tier 2
What you will work on
Dataction is seeking a Product Manager to lead strategy, roadmap planning, and execution for international clients within an IT consulting context. The role involves managing the end-to-end product lifecycle, prioritizing backlogs, and collaborating with cross-functional engineering and design teams. Candidates are expected to have strong experience with Agile methodologies and stakeholder management. The position is a hybrid role based in Pune, focused on driving data-driven, impactful product solutions.
TAL's take
Solid mid-tier consultancy role with clear responsibilities and defined seniority expectations.
Well-defined product management role with clear responsibilities and methodology requirements despite a broad industry focus.
Must haves
- 5-7 years experience in product management
- Experience in IT or consulting environment
- Strong experience creating product roadmaps and strategy
- Strong understanding of Agile methodologies
- Experience working with international clients
Tools and skills
Nice to have: fitness industry tools, health-tech industry knowledge.
About the company
Dataction is an established mid-stage services firm and IT consulting company.
Posts mentioning Dataction Analytics Private Limited
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