Senior Software Engineer Productivity Engineering

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profile Job Location:

Bengaluru - India

profile Monthly Salary: Not Disclosed
Posted on: 4 hours ago
Vacancies: 1 Vacancy

Department:

Engineering

Job Summary

At LinkedIn our approach to flexible work is centered on trust and optimized for culture connection clarity and the evolving needs of our business. The work location of this role is hybrid meaning it will be performed both from home and from a LinkedIn office on select days as determined by the business needs of the team.

We are looking for a Senior Software Engineer to join the Productivity Engineering team in Bangalore where our mission is to transform how employees work by replacing manual fragmented support experiences with intelligent AI-native automation. You will lead the design and delivery of end-to-end agentic systems that put AI at the center of the employee productivity loop and raise the technical bar for how the team builds evaluates and operates these systems at scale.

This is a high-ownership high-scope role. Beyond shipping systems you will own the problem space: independently investigating employee pain points deriving solution contexts and translating ambiguous signals into engineering initiatives with clear technical direction and measurable outcomes. You will set standards for how the team approaches AI-native development and mentor others to build with the same rigor.

Responsibilities:

Own problem statements end-to-end proactively investigate employee productivity pain points synthesize signals from data stakeholders and operations and derive the solution context that frames what we build and why.

Drive solution architecture translate well-understood problem contexts into technical designs for agentic systems making principled tradeoffs across reliability latency safety and maintainability.

Architect and deliver AI agentic systems lead the end-to-end design and delivery of Python-based services that orchestrate LLM-powered agents across complex multi-step employee support workflows.

Set the technical direction for AI-native engineering define how the team approaches eval-driven development agent observability prompt lifecycle management and safe autonomous action at scale.

Drive system reliability and quality own the standards for testing tracing and monitoring agentic pipelines so production systems are debuggable auditable and continuously improvable.

Expand the agent capability surface design the tool ecosystem that agents use to interact with internal platforms (ticketing identity knowledge SaaS) balancing expressiveness with guardrails.

Mentor and grow the team provide technical guidance through code reviews design reviews and pair programming; raise the floor for how IC2s approach AI systems work.

Influence cross-functional roadmap partner with product operations and platform teams to identify the highest-leverage automation opportunities and shape the engineering roadmap around them.


Qualifications :

Basic Qualifications

 Bachelors degree in Computer Science Engineering or a related technical field or equivalent practical experience.

 58 years of software engineering experience building architecting and operating large-scale production backend systems.

 Language & Stack Mastery: Deep expertise in either Python/Java with a command of modern ecosystems:

  • If Python: Proficiency in FastAPI / Asyncio type hinting (Pydantic) and managing high-concurrency event loops.

  • If Java: Proficiency in Spring Boot / Quarkus Reactive programming (Project Reactor/Vert.x) and JVM performance tuning.

 API & Distributed Systems: Proven experience designing and implementing high-performance REST and gRPC APIs with understanding of distributed system patterns (e.g. circuit breakers service discovery and eventual consistency).

 Full Ownership: A track record of owning and delivering complex systems end-to-endfrom initial scoping and architectural design to implementation automated testing and production operations (SRE mindset).

 Strategic Problem Solving: Demonstrated ability to independently identify and frame engineering problems. You should be able to navigate ambiguous or incomplete signals to define technical roadmaps rather than just executing against a pre-defined ticket.

 AI Implementation: Hands-on experience integrating LLM APIs (OpenAI Anthropic or open-source models) into production workflows including prompt engineering and managing the non-deterministic nature of AI outputs.


Preferred Qualifications:

Experience designing or leading the development of AI agent systems tool use multi-agent coordination memory and autonomous task execution.

Command of AI-native SDLC practices: eval-driven development prompt versioning and regression testing agent observability/tracing.

Experience with workflow orchestration and durable execution frameworks (e.g. Temporal Airflow) for reliable multi-step agentic pipelines.

Track record of establishing engineering standards testing patterns observability practices deployment conventions that a team adopts and builds on.

Experience integrating deeply with enterprise SaaS platforms (Slack Jira Confluence ServiceNow etc.) and designing resilient integration layers.


Technologies Youll Work With:

Proficiency in Python or Java (Open to either with a willingness to work across the stack).

 Experience with LLM APIs (OpenAI Anthropic etc.) Vector Databases (Pinecone Weaviate Milvus) and Orchestration Patterns (Chains Agents Tool-calling).

 Building high-performance services using FastAPI/Flask (Python) or Spring Boot/Quarkus (Java); experience with gRPC and RESTful API design.

 Distributed systems experience using Message Queues (Kafka SQS or RabbitMQ) to handle long-running agentic tasks.

 Relational databases (PostgreSQL/MySQL) Object Storage (S3) and understanding of data modeling for RAG (Retrieval-Augmented Generation).


Additional Information :

India Disability Policy 

LinkedIn is an equal employment opportunity employer offering opportunities to all job seekers including individuals with disabilities. For more information on our equal opportunity policy please visit Data Privacy Notice for Job Candidates

Please follow this link to access the document that provides transparency around the way in which LinkedIn handles personal data of employees and job applicants: Disability Policy 

LinkedIn is an equal employment opportunity employer offering opportunities to all job seekers including individuals with disabilities. For more information on our equal opportunity policy please visit Data Privacy Notice for Job Candidates

Please follow this link to access the document that provides transparency around the way in which LinkedIn handles personal data of employees and job applicants: Work :

No


Employment Type :

Full-time

At LinkedIn our approach to flexible work is centered on trust and optimized for culture connection clarity and the evolving needs of our business. The work location of this role is hybrid meaning it will be performed both from home and from a LinkedIn office on select days as determined by the busi...
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