Tech Lead (AI + Full Stack/ Python) - Hands-On Builder

Cairo , Egypt

TLDR

Lead the architecture and execution of AI-native systems in a hybrid role, driving engineering excellence while building innovative tech solutions.

About InVitro Capital

InVitro Capital is a U.S.-based venture studio and fund. We build and fund companies from idea to exit, focusing on technology-driven businesses that solve real-world problems. Our portfolio spans healthcare, home services, and sales technology.

Our engineering philosophy is simple: small senior teams, extreme ownership, hands-on builders, and AI-native products. We do not bolt AI onto products — we design AI-native systems from day one.

We operate with a builder culture where engineers have end-to-end responsibility for launching and scaling AI-powered products across the studio.

Role Overview

We are looking for an exceptionally strong Tech Lead (AI + Full Stack) who codes every day and leads through architecture, execution, and example. This role is designed for elite senior builders who thrive in zero-to-one environments, enjoy solving complex problems, and can ship production-grade systems quickly.

This is a full-stack tech lead role first: you will architect and ship end-to-end product systems (backend + frontend collaboration), and you must also be strong enough in AI/ML to build and productionize AI capabilities inside those systems.

You will:

  • Architect core systems
  • Build them with your own hands
  • Integrate AI tooling & agents
  • Mentor engineers through technical leadership
  • Drive engineering excellence across multiple ventures

This is not a people-management role — it is a high-impact IC leadership role.

What You’ll Do

Build & Lead With Technical Depth (70–90% hands-on)

  • Architect, build, and ship backend and full-stack systems end to end.
  • Lead engineers through code reviews, architecture reviews, and solid technical decision-making.
  • Own engineering execution across multiple ventures.

Design Scalable, AI-Native Architectures

  • Build modular APIs, distributed systems. 
  • Embed AI capabilities into product systems (LLMs and/or domain AI like NLP/CV) in a way that is secure, observable, reliable, and scalable.
  • Design and implement retrieval workflows (RAG), evaluation/guardrails, and agent/tool orchestration where they add real product value.
  • Work with Python, OpenAI, Anthropic, LangGraph, LangChain, LlamaIndex, vector databases, and agent toolchains. 

Engineer With Excellence

  • Write high-performance, production-grade code in Python (primary) for backend services and AI/ML systems.
  • Build and productionize ML/AI components (training/inference pipelines, model serving, and integrations) with strong engineering discipline.
  • Build systems optimized for reliability, performance, and observability.

Full-Stack Ownership

  • Collaborate with frontend engineers to deliver seamless end-to-end experiences.
  • Design clean APIs, interfaces, and developer workflows.

DevOps + Cloud Execution

  • Manage CI/CD pipelines and cloud deployments on AWS.
  • Kubernetes is a strong plus; AWS + Docker + CI/CD and production deployment ownership are required.
  • Ensure systems are scalable, fault-tolerant, secure, and well-instrumented.
  • Own production deployments of AI/ML components (model serving, monitoring, and lifecycle workflows) alongside the core application stack.

Technical Leadership & Mentorship

  • Mentor engineers and uplift technical standards across the stack.
  • Provide architectural direction and guide complex technical initiatives.
  • Contribute to hiring and shaping engineering culture.

Requirements

Qualifications

Required:

  • Professional Engineering Experience — 12+ years building and shipping production-grade systems.
  • Python Expertise (FastAPI or similar, production) — async services, Pydantic models, you write Python daily.
  • Backend/System Architecture Ownership — you’ve owned system design decisions, led code reviews, mentored engineers, and shipped end-to-end systems as a senior IC or tech lead.
  • Core ML / Deep Learning (hands-on) — built ML/DL systems using PyTorch or TensorFlow; understand training, evaluation, optimization.
  • Production ML Deployment / MLOps — deployed ML systems to production; owned monitoring, versioning, rollback strategies, lifecycle management.
  • Applied AI Systems Experience — shipped AI-powered features using LLMs and/or applied NLP/CV in real products (not experimentation only).
  • PostgreSQL — schema design, query optimization, migrations.
  • Cloud + Delivery — AWS + Docker + CI/CD; production deployments and operational ownership.
  • REST API Design — clean interfaces serving multiple clients (web, mobile, service-to-service).
  • Startup Execution — experience in fast-paced, high-ownership environments.

Strong Plus:

  • Ruby on Rails (production) — built and maintained real Rails APIs with background jobs (e.g., Sidekiq), webhooks, and complex domain logic.
  • Kubernetes (production) — EKS (or equivalent), Kubernetes-based deployments, operational ownership.
  • GenAI Depth — experience designing RAG systems, prompt strategies, fine-tuning workflows, and evaluation/guardrails.
  • Retrieval & Vector Systems — vector databases (Pinecone, Weaviate, or similar), embedding strategies, namespace/tenancy design, reranking.
  • Agent Orchestration — multi-agent patterns, tool use, chain composition (CrewAI, LangGraph, or similar).
  • AI Tooling Ecosystem — LangChain, LlamaIndex, Hugging Face, or similar; LLM observability/tracing (LangSmith or equivalent).
  • Full-Stack Fluency — strong collaboration with frontend teams to ship end-to-end product experiences; clean API contracts.
  • React 19 (JavaScript) — Redux Toolkit, RTK Query, Vite, shadcn/ui.
  • Flutter/Dart — mobile app development, BLoC pattern, Clean Architecture.
  • Firebase/Firestore — real-time sync, Cloud Functions.
  • Stripe — payment processing, webhook-driven architecture, Connect.
  • MongoDB — document modeling; async drivers (Motor) is a plus.
  • Multimodal AI — vision models; real-time audio/video AI (LiveKit, OpenAI Realtime API).
  • Redis + Sidekiq — background job processing, caching.
  • 0→1 / Venture Studio Experience — building products from scratch in multi-product, high-velocity environments.

Benefits

What We Offer

  • Compensation: $4,000–$5,000 USD/month base + bonus
  • Health insurance
  • Social insurance
  • Paid Time Off (PTO)
  • High ownership and autonomy
  • Opportunity to build multiple AI-powered products from scratch
  • A culture optimized for speed, impact, and technical excellence

Schedule & Work Setup

  • Cairo-based candidates preferred
  • Hybrid: expected at the Cairo office at least once per week
  • Monday–Friday, aligned with U.S. Pacific Time
  • High-autonomy, high-velocity engineering environment

Benefits

Health Insurance

Opportunity to build AI products

Opportunity to build multiple AI-powered products from scratch

Paid Time Off

Paid Time Off (PTO)

Yalent is a venture studio that creates and scales innovative businesses across healthcare, B2B SaaS, and operational services. By leveraging advanced technology and industry expertise, we empower startups to transform traditional service models and deliver exceptional value to their customers.

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Salary
$4,000 – $5,000 per month
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