Job Closed
This listing is no longer active.
Senior QA Lead (Automation & Manual)
Location
Canada
Posted
13 days ago
Salary
0
Seniority
Lead
No structured requirement data.
Job Description
Senior QA Lead (Automation & Manual)
RELQ Technologies
Role Description The Senior QA Lead will oversee multiple QA teams across various projects, driving the overall testing strategy, automation frameworks, quality governance, and on-time delivery. This role requires strong leadership, deep hands-on expertise in test automation, and the ability to collaborate with cross-functional engineering and product teams to ensure high-quality product releases. Key Responsibilities - QA Leadership & Team Management - Lead, mentor, and manage multiple QA teams (manual, automation, performance). - Define roles, set performance goals, and conduct periodic performance evaluations. - Develop resource plans, allocate workload, and ensure optimal team productivity. - Build a high-performance QA culture focusing on ownership, accountability, and continuous improvement. - Test Strategy & Quality Governance - Define and implement end-to-end test strategies across projects. - Ensure consistent QA processes, standards, and best practices across all teams. - Establish quality metrics, dashboards, and reporting mechanisms for leadership. - Drive root-cause analysis and continuous quality improvement initiatives. - Automation Leadership - Architect, implement, and scale automation frameworks (UI, API, CI/CD integrated). - Evaluate emerging tools, technologies, and practices to enhance automation maturity. - Ensure the automation suite is robust, stable, and provides rapid feedback in CI/CD pipelines. - Set automation coverage targets and ensure continuous improvement of automation ROI. - Delivery & Release Management - Provide QA delivery ownership for all releases, ensuring zero-defect production rollouts. - Work with engineering, DevOps, and product management to align test execution with release timelines. - Track and communicate risks, blockers, and mitigation plans during delivery cycles. - Participate in release Go/No-Go decisions with clear quality insights. - Cross-Functional Collaboration - Work closely with development, DevOps, product, and business teams to ensure quality across SDLC. - Champion shift-left testing practices to detect defects early. - Align QA activities with Agile/Scrum processes across squads. - Documentation & Compliance - Ensure detailed documentation for test plans, test cases, automation scripts, and QA processes. - Ensure compliance with security, regulatory, and audit standards (as applicable). Company Description
Related Guides
Related Categories
Related Job Pages
More QA Automation Engineer Jobs
Lead AI Engineer, AI Systems – Automation
BJAKBjak is a technology company focused on making financial services easy, fun and more rewarding for everyone
• Lead the design and development of production AI systems powering insurance workflow automation. • Architect AI orchestration layers connecting LLMs, backend services, and business workflows. • Own end-to-end AI system design, including inference pipelines, routing, caching, and fallback strategies. • Drive engineering decisions around latency, reliability, cost, and scalability of AI services. • Lead implementation of observability systems (logging, monitoring, tracing, alerting). • Review and guide backend AI implementation across engineering teams. • Collaborate with product, backend, DevOps, and operations teams to ship end-to-end AI features. • Debug complex production issues across distributed AI systems and lead root-cause analysis. • Define engineering standards and best practices for AI system development. • Mentor engineers and elevate technical execution quality across teams.
Lead AI Engineer – AI Systems, Automation
BJAKBjak is a technology company focused on making financial services easy, fun and more rewarding for everyone
• Lead the design and development of production AI systems powering insurance workflow automation. • Architect AI orchestration layers connecting LLMs, backend services, and business workflows. • Own end-to-end AI system design, including inference pipelines, routing, caching, and fallback strategies. • Drive engineering decisions around latency, reliability, cost, and scalability of AI services. • Lead implementation of observability systems (logging, monitoring, tracing, alerting). • Review and guide backend AI implementation across engineering teams. • Collaborate with product, backend, DevOps, and operations teams to ship end-to-end AI features. • Debug complex production issues across distributed AI systems and lead root-cause analysis. • Define engineering standards and best practices for AI system development. • Mentor engineers and elevate technical execution quality across teams.
Lead AI Engineer, AI Systems – Automation
BJAKBjak is a technology company focused on making financial services easy, fun and more rewarding for everyone
• Lead the design and development of production AI systems powering insurance workflow automation. • Architect AI orchestration layers connecting LLMs, backend services, and business workflows. • Own end-to-end AI system design, including inference pipelines, routing, caching, and fallback strategies. • Drive engineering decisions around latency, reliability, cost, and scalability of AI services. • Lead implementation of observability systems (logging, monitoring, tracing, alerting). • Review and guide backend AI implementation across engineering teams. • Collaborate with product, backend, DevOps, and operations teams to ship end-to-end AI features. • Debug complex production issues across distributed AI systems and lead root-cause analysis. • Define engineering standards and best practices for AI system development. • Mentor engineers and elevate technical execution quality across teams.
Lead AI Engineer – AI Systems, Automation
BJAKBjak is a technology company focused on making financial services easy, fun and more rewarding for everyone
• Lead the design and development of production AI systems powering insurance workflow automation. • Architect AI orchestration layers connecting LLMs, backend services, and business workflows. • Own end-to-end AI system design, including inference pipelines, routing, caching, and fallback strategies. • Drive engineering decisions around latency, reliability, cost, and scalability of AI services. • Lead implementation of observability systems (logging, monitoring, tracing, alerting). • Review and guide backend AI implementation across engineering teams. • Collaborate with product, backend, DevOps, and operations teams to ship end-to-end AI features. • Debug complex production issues across distributed AI systems and lead root-cause analysis. • Define engineering standards and best practices for AI system development. • Mentor engineers and elevate technical execution quality across teams.
