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求人Honeywell

Software Engr II

Honeywell

Software Engr II

Honeywell

Bengaluru, Karnataka, India, IN

·

On-site

·

Full-time

·

2w ago

As a Full Stack AI Platform Engineer here at Honeywell, you will design, build, and scale AI systems end-to-end — from high-throughput IoT streaming pipelines and knowledge graph infrastructure, through LLM orchestration and RAG services, to the React-based interfaces that surface autonomous insights to plant engineers, facility managers, and OT security analysts.

We are seeking a Full Stack AI Platform Engineer to join our Data Engineering, AI & ML Platform team. This role is central to designing, building, and scaling the enterprise AI/ML platform that powers intelligent automation across a global portfolio.

You will work at the intersection of data engineering, machine learning operations, and edge AI — building production-grade infrastructure that processes billions of IoT events from building management systems, deploys models to edge devices, and enables AI-driven applications including predictive diagnostics, energy monitoring, and RAG-based knowledge systems.

This is a high-impact individual contributor role for someone who thrives in ambiguity, ships production systems, and can operate across the full stack from cloud-native platforms to edge GPU hardware.

YOU MUST HAVE:

  • Bachelor's degree from an accredited institution in a technical discipline such as science, technology, engineering, mathematics.

  • 3 plus years of experience in software engineering, data engineering, or ML platform engineering.

  • Strong proficiency in Python and at least one systems language (Python, Go, Rust, C++).

  • Deep hands-on experience with cloud-native data platforms (Databricks, BigQuery, Azure Data Lake, Kubernetes).

  • Production experience building and deploying ML/AI pipelines including model serving, feature engineering, and experiment tracking.

  • Experience with LLM application frameworks such as Lang Chain, Lang Graph, and Langsmith or equivalent agentic AI orchestration tools.

  • Experience with edge AI deployment on NVIDIA Jetson or similar embedded GPU platforms.

  • Experience with knowledge graphs, ontology engineering, or semantic web technologies.

WE VALUE

  • Advanced degree in Computer Science, Artificial Intelligence, or related field.

  • Background in building management systems, HVAC, energy management, or industrial IoT domains.

  • Strong leadership and management skills.

  • Experience working in an agile development environment.

  • Proven ability to drive successful cloud development projects and initiatives.

  • Ability to work in a fast-paced and dynamic environment.

  • Attention to detail and excellent problem-solving capability.

AI/ML Platform Engineering

  • Develop high-performance, production-ready Python APIs using FastAPI to serve as the primary interface for on-device model inference

  • Design, build, and maintain enterprise AI/ML platform services on multi-cloud infrastructure including model deployment, serving and experiment tracking.

  • Build robust CI/CD stacks to automate the testing of inference logic and the deployment of API services to edge devices.

  • Implement ML orchestration workflows using Lang Graph, MLflow, and custom orchestration layers for multi-agent AI systems.

  • Develop and integrate AI workloads using ML-Ops and tracing tools like Lang Smith.

  • Design and implement automated data processing pipelines within FastAPI to handle real-time sensor or image inputs for the model.

  • Bridge the gap between research and deployment by converting code from experimental into modular, maintainable Python packages.

Edge AI & Inference:

  • Ability to integrate and run pre-built AI models on local hardware using standard industry runtimes.

  • Skilled at building the software logic required to process data inputs and handle model outputs efficiently.

  • Expert at developing Python-based services and automating their deployment to devices via standardized pipelines.

  • Capable of monitoring and optimizing software to run reliably within strict memory and hardware limitations.

  • Experience deploying containerized models from Azure to edge devices using Azure IoT Edge or managed online endpoints

Data & Knowledge Engineering:

  • Experience building pipelines to structure, clean, and store data for model training or real-time retrieval (RAG) on edge devices

  • Ability to convert experimental data processing logic from notebooks into production-ready Python modules.

  • Design automated workflows to collect, label, and manage datasets, ensuring high-quality data is available for continuous model improvement.

Production Operations & Reliability:

  • Own platform reliability for AI services serving multiple business units.

  • Implement observability, monitoring, and alerting for ML pipelines and inference services.

  • Drive cost optimization across data platform workloads, cloud compute, and storage infrastructure.

  • Proficient in using Azure Machine Learning Studio to manage the full lifecycle of models, including registration, versioning, and monitoring.

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Honeywellについて

Honeywell

Honeywell

Public

Honeywell International Inc. is an American publicly traded, multinational conglomerate corporation headquartered in Charlotte, North Carolina. It primarily operates in four areas of business: aerospace, building automation, industrial automation, and energy and sustainability solutions (ESS).

10,001+

従業員数

Charlotte

本社所在地

$130B

企業価値

レビュー

2.3

2件のレビュー

ワークライフバランス

2.5

報酬

3.5

企業文化

2.0

キャリア

2.0

経営陣

1.5

15%

友人に勧める

良い点

Good compensation potential

Competitive pay scale

改善点

Poor communication from recruiters

Inadequate safety training

Poor management response to incidents

給与レンジ

901件のデータ

Mid/L4

Senior/L5

Mid/L4 · Data Analyst II

2件のレポート

$136,600

年収総額

基本給

$105,077

ストック

-

ボーナス

-

$136,600

$136,600

面接体験

3件の面接

難易度

3.0

/ 5

期間

14-28週間

内定率

33%

体験

ポジティブ 0%

普通 33%

ネガティブ 67%

面接プロセス

1

Application Review

2

Recruiter Screen

3

Technical Interview

4

Assessment/Testing

5

Final Interview

6

Offer

よくある質問

Technical Knowledge

Behavioral/STAR

Past Experience

Problem Solving

Culture Fit