
Tkxel
Core Responsibilities
Multi-Agent System Architecture
-
Architect and implement multi-agent workflows using LangChain, LangGraph, AutoGen, CrewAI, Google ADK, CAMEL, Swarm, and OpenAI Agents SDK to orchestrate task decomposition, memory, tool use, and agent coordination.
Model Context Protocol (MCP) Integration
-
Engineer workflows that use MCP for context-sharing and standardized communication among agents and with external systems (SQL, file systems, tools).
Agent Framework Development
-
Design abstracted agent frameworks supporting planning, reasoning, retries, orchestration, and observability.
Data Processing & Pipelines
-
Develop ETL pipelines for ingestion, transformation, storage, and embedding generation using Airflow, Prefect, Spark, Hadoop, and vector databases (FAISS, Pinecone, Weaviate).
LLM Fine‑Tuning & RAG Architecture
-
Fine‑tune GPT, LLaMA, Claude, Mistral models with efficient methods; build retrieval‑augmented systems using vector DBs and knowledge graphs.
Multimodal AI & API Integration
-
Integrate text, image, audio, OCR, and structured data (via CLIP, Whisper, TTS/STT); expose capabilities through REST/GraphQL APIs and microservices.
Production MLOps & Engineering
-
Follow core Python engineering practices—OOP, async, unit testing, packaging. Containerize with Docker and deploy on Kubernetes or serverless infra.
Ethics, Security & Performance Optimization
-
Integrate bias detection, explainability, privacy safeguards (prompt injection mitigation), and optimize performance and cost.
Requirements
Education:
-
BSc or MSc in Computer Science, Engineering, Data Science, or equivalent.
Technical Skills:
-
Python: Advanced proficiency in OOP, async programming, packaging, testing.
-
LLM Frameworks: Hugging Face Transformers, PyTorch, TensorFlow.
-
Agent Frameworks: Experience with LangChain, LangGraph, AutoGen, CrewAI, ADK.
-
Protocols: Deep understanding of MCP, A2A, and agent interoperability.
-
Data Engineering: Airflow, Prefect, Spark/Hadoop, SQL/NoSQL, vector databases.
-
Cloud & Containerization: Experience with AWS, GCP, Azure, Docker, Kubernetes.
-
API & Microservices: FastAPI, Flask, GraphQL, event-driven systems.
-
RAG Systems: Expertise in FAISS, Pinecone, ChromaDB, Weaviate, and knowledge graphs.
-
Software Quality & Architecture: Strong foundations in system design, scalability, security, and CI/CD best practices.
-
Proven track record in full-stack AI agent deployment.
-
Deep familiarity with prompt engineering, decision chaining, and tool integrations.
-
Background in reinforcement learning, planning, or control-loop architectures.
Soft Skills:
-
Excellent communication and collaboration across multidisciplinary teams.
-
Analytical mindset with strong debugging and iterative development approach.
-
Agile-oriented: rapid experimentation, evaluation, and adaptation.
Apply now
To help us track our recruitment effort, please indicate in your cover/motivation letter where (itjobvacancies.com) you saw this job posting.