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Co-creating Solutions for a Better Future
Senior Tech Lead – Software Engineering
Location
Brazil
Posted
77 days ago
Salary
0
Seniority
Senior
Job Description
Senior Tech Lead – Software Engineering
Stefanini Brasil
• Define technical solutions, technology stacks, and frameworks aligned with product requirements. • Ensure that technical decisions consider performance, security, scalability, and architectural sustainability. • Assess technical feasibility of requests before development begins. • Ensure current decisions do not generate excessive technical debt in the long term. • Establish and oversee development standards (Clean Code, SOLID, and engineering best practices). • Actively participate in code reviews and pull requests, ensuring adherence to the defined architecture. • Identify technical risks and propose mitigation strategies. • Contribute to continuous improvement of processes and delivery quality. • Act as the technical mentor for the development team. • Support junior, mid-level, and senior developers in resolving technical challenges. • Promote best practices and the technical growth of the team. • Foster team autonomy and professional growth. • Translate business needs into clear technical requirements for the engineering team. • Serve as the technical interlocutor in meetings with stakeholders and product teams. • Facilitate communication between technology and the business, removing impediments for the team.
Job Requirements
- Bachelor's degree (completed or in progress).
- Proven experience as a Tech Lead, Technical Lead, or Senior Developer with technical leadership responsibilities.
- Strong experience in software architecture and technical decision-making.
- Experience with code reviews, defining development standards, and engineering best practices.
- Experience leading development teams technically.
- Ability to communicate with both technical and non-technical stakeholders.
- Experience in requirements analysis and translating them into technical solutions.
- Experience working in agile development environments.
Benefits
- Meal allowance or meal voucher
- Discounts on courses, universities, and language schools
- Stefanini Academy — online platform with free, up-to-date courses and certificates
- Mentoring
- Perks club for medical consultations and exams
- Medical assistance (healthcare)
- Dental assistance (dental care)
- Perks and discounts club at top establishments
- Travel club
- Pet care benefits (pet partnership)
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