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Fourkites - Senior Engineering Manager - Artificial Intelligence

Posted on: 24/11/2025

Job Description

Description :

At FourKites we have the opportunity to tackle complex challenges with real-world impacts.

Whether its medical supplies from Cardinal Health or groceries for Walmart, the FourKites platform helps customers operate global supply chains that are efficient, agile and sustainable.

Join a team of curious problem solvers that celebrates differences, leads with empathy and values inclusivity.

We are seeking an experienced Senior Engineering Manager to lead our AI/ML engineering teams in building cutting-edge artificial intelligence solutions.

This role requires a unique blend of technical expertise in AI/ML, proven engineering leadership, and strategic thinking to drive innovation at scale.

Key Responsibilities :


Technical Leadership :


- Define and execute the technical strategy for AI/ML initiatives across multiple product areas



- Oversee the design and architecture of scalable ML systems, from data pipelines to model deployment


- Drive decisions on technology stack, frameworks, and infrastructure for AI/ML workloads


- Ensure engineering excellence through code reviews, design reviews, and technical

mentorship


- Stay current with AI/ML research and industry trends to inform strategic decisions

People Management :


- Lead, mentor, and grow a team of 15+ AI engineers, data scientists, and software engineers


- Build high-performing teams through hiring, performance management, and career

development


- Foster a culture of innovation, collaboration, and continuous learning


- Conduct regular 1 : 1s, performance reviews, and career development conversations


- Champion diversity, equity, and inclusion initiatives within the engineering organization

Strategic Planning & Execution :


- Partner with Product Management to define AI product roadmap and priorities


- Translate business objectives into technical initiatives and measurable outcomes


- Manage multiple concurrent AI/ML projects from conception to production deployment


- Establish and track KPIs for team performance, model quality, and system reliability


- Balance innovation with pragmatic delivery to meet business deadlines

Cross-functional Collaboration :


- Work closely with Data Science, Product, Design, and other engineering teams


- Communicate technical concepts and trade-offs to non-technical stakeholders

- Represent engineering in executive discussions and strategic planning sessions



- Build relationships with external partners, vendors, and research institutions


- Drive alignment across teams on AI ethics, responsible AI practices, and governance

Operational Excellence :


- Establish best practices for ML model development, testing, and deployment


- Implement MLOps practices for continuous integration and deployment of ML models


- Ensure compliance with data privacy regulations and AI governance policies


- Drive improvements in model monitoring, A/B testing, and experimentation frameworks


- Manage engineering budget and resource allocation

Required Qualifications :


Experience :


- 13+ years of software engineering experience, with 5+ years focused on ML/AI systems



- 5+ years of engineering management experience, including managing managers


- Proven track record of shipping ML products at scale in production environments


- Experience with full ML lifecycle : data collection, feature engineering, model training,

deployment, and monitoring

Technical Skills :


- Deep understanding of machine learning algorithms, deep learning, and statistical methods



- Proficiency in ML frameworks (TensorFlow, PyTorch, JAX) and programming languages

(Python, Scala, Java)


- Experience with distributed computing frameworks (Spark, Ray) and cloud platforms (AWS,

GCP, Azure)


- Knowledge of MLOps tools and practices (Kubeflow, MLflow, Airflow, Docker, Kubernetes)


- Understanding of data engineering, ETL pipelines, and big data technologies

Leadership Competencies :


- Demonstrated ability to build and scale engineering teams



- Strong communication skills with ability to influence at all levels of the organization


- Experience driving technical strategy and making architectural decisions


- Track record of successful cross-functional collaboration and stakeholder management


- Ability to balance technical depth with business acumen

Preferred Qualifications :


- Advanced degree (MS/PhD) in Computer Science, Machine Learning, or related field


- Deep experience with Large Language Models (LLMs), Small Language Models (SLMs), and

generative AI applications


- Expertise in building production AI agent systems :


- Multi-agent architectures and swarm intelligence


- Memory systems : short-term, long-term, episodic, and semantic memory


- Planning algorithms : hierarchical planning, goal decomposition, and backtracking


- Tool use and function calling optimization


- Agent communication protocols and coordination strategies


- Experience with advanced agent frameworks : DSPy, Guidance, LMQL, Outlines for constrained generation


- Knowledge of prompt engineering techniques : few-shot, chain-of-thought, self-consistency, constitutional AI


- Experience with RAG architectures : vector stores, hybrid search, re-ranking, and query

optimization


- Expertise in training techniques : supervised fine-tuning, RLHF, DPO, PPO, constitutional AI, and synthetic data generation


- Experience with parameter-efficient fine-tuning methods : LoRA, QLoRA, prefix tuning, and

adapter layers


- Knowledge of model optimization techniques : quantization (INT8, INT4), distillation, pruning,

and flash attention


- Extensive experience in dataset curation for LLM training :


- Web-scale data processing (Common Crawl, C4, RefinedWeb methodologies)


- Creating instruction-tuning datasets (Alpaca, Dolly, FLAN-style formats)


- Building preference datasets for RLHF/DPO training


- Domain adaptation and specialized corpus creation


- Multi-lingual and code dataset preparation


- Knowledge of data mixing strategies, replay buffers, and curriculum learning for optimal

training


- Experience with data augmentation techniques : paraphrasing, back-translation, and synthetic data generation using LLMs



- Expertise in data decontamination and benchmark pollution prevention


- Experience with workflow automation platforms : n8n, Zapier, Make for business process automation



- Knowledge of enterprise integration patterns : event-driven architectures, saga patterns, and CQRS


- Strong background in data science : statistical analysis, A/B testing, experimentation design, and causal inference


- Experience with data mesh architectures and building self-serve data platforms


- Expertise in data quality frameworks, data contracts, and SLA management for data pipelines


- Experience with vector databases (Pinecone, Weaviate, Qdrant, Milvus, ChromaDB, FAISS) and

embedding systems


- Knowledge of privacy-preserving ML techniques : differential privacy, federated learning,

secure multi-party computation



- Background in specific AI domains : NLP, Computer Vision, Recommendation Systems, or

Reinforcement Learning



- Experience with LLM evaluation frameworks and benchmarking (HELM, EleutherAI eval harness, BigBench)


- Hands-on experience with popular LLM frameworks : Hugging Face Transformers, vLLM, TGI, Ollama, LiteLLM


- Experience with dataset processing tools : Datasets library, Apache Beam, Spark NLP


- Publications or contributions to open-source ML projects


- Experience in high-growth technology companies or AI-first organizations


- Knowledge of AI safety, ethics, and responsible AI practices


- Experience with multi-modal models and vision-language models


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