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- 4+ years of software development experience with production systems
- Strong proficiency in Python and/or TypeScript/Node.js
- Deep experience with REST APIs, GraphQL, and various integration patterns
- Understanding of JSON-RPC, WebSocket, or similar RPC protocols
- Expertise in async/await patterns and concurrent programming
- Experience with authentication mechanisms (OAuth 2.0, JWT, API keys)
- Strong grasp of error handling, logging, and observability practices
- Experience building SDKs, libraries, or developer tools
- Knowledge of security best practices for API integrations and data handling
- Familiarity with Git, CI/CD pipelines, and deployment automation
Preferred Qualifications
- Hands-on experience with Model Context Protocol (MCP) specification and implementations
- Experience integrating with LLM APIs (OpenAI, Anthropic, Azure OpenAI, Google Vertex AI)
- Understanding of AI agent frameworks (FastMCP)
- Knowledge of prompt engineering and LLM tool calling mechanisms
- Experience with function calling and structured output from LLMs
- Familiarity with enterprise platforms (Splunk, Databricks, Zendesk, Salesforce, Jira)
- Understanding of token optimization and context window management
- Experience with schema validation (JSON Schema, Pydantic, Zod)
- Knowledge of containerization (Docker) and orchestration (Kubernetes)
- Background in observability tools (Prometheus, Grafana, Datadog)
- Contributions to open-source AI/LLM projects
Technical Skills
- Languages: Python 3.10+, JavaScript (Node.js 18+)
- Protocols: JSON-RPC 2.0, REST, GraphQL, Server-Sent Events (SSE), WebSockets
- LLM Integration: OpenAI API, Anthropic Claude API, Azure OpenAI, function calling, tool use
- Frameworks: FastAPI, Express.js, async/await patterns, Agent SDK integration
- Data: JSON Schema, Pydantic models, data validation and serialization
- Tools: Git, Docker, pytest, Jest, VS Code, Postman/Insomnia
- Security: OAuth 2.0, JWT, encryption (AES, RSA), secure secret management
- Concepts: API design, rate limiting, retry logic, circuit breakers, idempotency
Domain Knowledge
- Understanding of AI agent architectures and multi-agent systems
- Knowledge of LLM capabilities, limitations, and token economics
- Familiarity with prompt engineering and context optimization techniques
- Understanding of streaming responses and real-time data handling
- Experience with callback mechanisms and event-driven architectures
- Knowledge of data encryption and PII handling in AI contexts
Soft Skills
- Strong problem-solving ability with complex integration challenges
- Excellent written communication for documentation and tool descriptions
- Ability to design intuitive tool interfaces that LLMs can effectively use
- Collaborative mindset for working with AI engineers and product teams
- Attention to detail for schema design and error handling
- Proactive approach to monitoring and improving connector reliability
- Adaptability to rapidly evolving LLM and AI agent ecosystems
Day-to-Day Activities
- Develop new MCP connectors for enterprise system integrations
- Debug tool calling issues and optimize parameter handling for LLM consumption
- Review and improve tool descriptions for better LLM understanding
- Implement rate limiting and error handling for production robustness
- Write unit tests and integration tests for connector reliability
- Monitor connector performance and troubleshoot agent workflow failures
- Collaborate with teams on new integration requirements
- Update connectors as upstream APIs change or LLM capabilities expand
What You'll Build
- MCP servers exposing enterprise data and capabilities to AI agents
- Tool schemas and validation logic for safe LLM interactions
- Authentication and authorization layers for secure integrations
- Retry mechanisms and error recovery for resilient agent workflows
- Documentation and examples for connector usage
- Testing frameworks ensuring reliability across LLM interactions
- Monitoring and observability instrumentation for production systems
– 4+ years of software development experience with production systems – Strong proficiency in Python and/or TypeScript/Node.js – Deep experience with REST APIs, GraphQL, and various ...
Job description-
As a Salesforce Senior Technical Lead, you will play a pivotal role in leading Salesforce development initiatives for our client, ensuring seamless integrations, and optimizing configurations across Sales Cloud, custom development, bespoke integrations and Agentforce. You will collaborate with cross-functional teams to deliver innovative solutions that enhance business processes and drive client success.
Key Responsibilities:
Qualifications:
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