Are you ready to land a high-paying role in one of the fastest-growing tech fields? The demand for skilled professionals in AI development has skyrocketed, with companies offering competitive salaries and flexible work options. Whether you’re just starting or looking to advance, this guide highlights the best opportunities available right now.
From entry-level positions to senior roles, we’ve compiled real-time listings from top employers. Discover openings in tech hubs like Chicago and New York, along with remote options. Learn which skills—like Python or TensorFlow—can boost your chances of getting hired.
Key Takeaways
- Explore up-to-date job listings from leading companies
- Find salary ranges from $85K to $330K+ based on experience
- Discover in-demand skills like NLP and generative AI
- Compare opportunities in major cities and remote roles
- Get direct links to apply for open positions
What Does an Artificial Intelligence Engineer Do?
AI professionals tackle complex problems using data-driven approaches daily. Their work spans industries, from improving medical diagnoses to optimizing financial transactions. The role blends creativity with technical precision to build scalable solutions.
Core Responsibilities and Daily Tasks
Tasks vary but often include designing algorithms and deploying models. Engineers collaborate with data scientists to refine machine learning workflows. Tools like Jira and GitHub streamline project management.
In healthcare, experts analyze genomic data to personalize treatments. Financial sectors integrate AI into banking systems for fraud detection. For example, Capital One processes 1.2M transactions daily using AI.
Industries Hiring AI Engineers
Demand is high in healthcare (32% of openings) and fintech (28%). Aerospace firms like Blue Origin apply AI to spacecraft design. Startups and Fortune 500 companies compete for top talent.
Key sectors also include automotive and enterprise software. Roles often require compliance with industry regulations, especially in finance and pharma.
Latest Artificial Intelligence Engineer Job Openings
Top companies are actively hiring for specialized AI roles—here’s where to apply. These listings feature competitive salaries, hybrid options, and projects shaping industries like aerospace and finance.
Blue Origin: AI Systems Engineer (Hybrid)
Salary: $114K–192K. This hybrid role focuses on spacecraft AI systems, with preference for candidates experienced in aerospace tech. Python and TensorFlow skills are essential.
Capco: Generative AI Engineer (New York, NY)
Salary: $215K–275K. Develop chat platforms using LangChain and OpenAI API. Requires expertise in Python or Java and cloud certifications (AWS/Azure).
Capital One: Senior AI Engineer (Machine Learning)
Salary: $193K–241K. Build credit risk models with PyTorch. Ideal candidates have 5+ years in fintech and NLP applications.
Other notable openings:
- MongoDB: Forward Deployed AI Engineer ($168K–330K) for enterprise software solutions.
- Hebbia AI: NLP specialists ($215K–275K) for legal tech products.
- UL Solutions: Director of AI ($150K–220K) leading cybersecurity projects.
Top Companies Hiring AI Engineers in 2024
Leading firms across industries are expanding their AI teams in 2024. Whether you prefer the stability of a tech giant or the agility of a startup, opportunities abound. Salaries and projects vary, so choosing the right fit depends on your career goals.
Tech Giants vs. Startups: Where to Apply?
Enterprise roles, like those at Amazon, offer stability and resources. Their AI hiring grew 40% year-over-year for Alexa improvements. Startups like Hebbia AI provide equity potential, with packages reaching $275K plus stock options.
Government contractors require security clearances but offer niche projects. Meanwhile, GenAI startups raised $4.2B in Q1 2024, signaling strong growth.
Featured Employers: UL Solutions, Tempus AI, JPMorgan Chase
UL Solutions leads AI-driven cybersecurity projects, with directors managing $5M+ budgets. Their focus on scalable solutions makes them a top choice for risk-averse professionals.
Tempus AI offers $150K–220K for healthcare roles. Their MSL Managers oversee clinical AI implementation teams, blending tech and patient care.
JPMorgan Chase integrates AI into financial architectures. Their Center of Excellence prioritizes blockchain integration, appealing to fintech specialists.
Salary Expectations for AI Engineers
Compensation in AI roles varies widely based on experience, location, and industry demand. Entry-level positions often start at $85K–118K nationally, while senior architects at hedge funds can earn $300K+ with bonuses. Mastery of technologies like NLP or TensorFlow significantly impacts earning potential.
Entry-Level vs. Senior-Level Pay Gaps
New graduates in machine learning average $85K–118K, focusing on foundational skills. In contrast, senior roles at firms like Capital One offer $193K–241K, requiring expertise in fintech applications. PhD holders see an 18% premium over master’s degrees.
Equity packages at startups add 30–50% to base pay. Performance bonuses (10–25%) are common in business-critical roles. Chicago’s UL Solutions stands out with 10% 401K matching.
Geographic Salary Differences
NYC salaries are 22% higher than Chicago’s ($111K–330K vs. $85K–250K). Remote roles, like Gusto’s $181K–262K offers, trade 8% lower pay for $18K annual savings on commuting. FAANG companies lead with 15% higher bonuses than startups.
Cost of living adjusts real wages, but tech hubs provide unmatched networking. For example, NYC’s premium reflects its density of high-growth AI solutions firms.
Essential Skills for AI Engineering Roles
Mastering the right combination of technical and soft skills unlocks high-demand roles in machine learning. Employers seek candidates who can design scalable solutions while collaborating across teams. Below, we break down the must-haves for 2024.
Technical Skills: Python, NLP, TensorFlow
Python dominates 92% of job listings, with v3.11+ and PyTorch 2.0 as staples. Cloud platforms like AWS SageMaker streamline data pipelines, while TensorFlow Extended powers production-grade models.
NLP specialists use SpaCy for language processing and fine-tune BERT architectures. MLOps tools like Docker and Kubernetes ensure seamless deployment.
Soft Skills: Collaboration and Problem-Solving
Cross-functional teams rely on clear roadmap presentations. Case studies show Git workflows improve efficiency in 50+ member groups.
A/B testing frameworks and CI/CD pipelines for ML models highlight analytical problem-solving. Quantum ML basics (Qiskit) are emerging requirements.
Remote vs. Hybrid AI Engineer Jobs
Flexible work options are transforming how professionals build AI solutions. Over 63% of job listings now offer hybrid arrangements, blending office collaboration with remote efficiency. Companies like Samsara and MongoDB lead with fully distributed roles, while others prioritize lab access for hands-on work.
Pros and Cons of Remote Work in AI
Remote roles boost productivity—engineers deliver 15% more code commits. However, managing GPU clusters across time zones slows teams. Security protocols add layers for HIPAA-compliant applications.
Hybrid setups, like Capital One’s 3-day office policy, balance face-to-face brainstorming with focused coding days. Tempus AI’s genomic data pipeline thrives with this model.
Companies Offering Flexible Arrangements
Gusto pays $181K–262K for fully remote payroll AI roles. MongoDB offers $168K–330K for cloud-based technologies. Hybrid leaders like Blue Origin require lab days for spacecraft testing.
Key tools include VPNs, JupyterHub, and local testing rigs. Global teams often sync via Slack or GitHub for seamless workflows.
How to Tailor Your Resume for AI Jobs
Crafting a standout resume requires strategic keyword placement and project highlights. Recruiters spend just 6-8 seconds scanning applications, so every detail must showcase your skills effectively. Focus on aligning your experience with the specific role requirements.
Optimize for Applicant Tracking Systems
92% of companies use ATS software that prioritizes terms like TensorFlow and PyTorch. Include variations like “NLP applications” or “ML model development” based on job descriptions. Tools like Teal HQ analyze postings for keyword matches.
Showcase Technical Projects and Credentials
Quantify achievements with metrics like “Boosted prediction accuracy by 23% using optimized models.” For certifications, highlight ROI—AWS ML specialists earn 18% more than uncertified peers. Include:
– Kaggle competition rankings (top 10% showcases skills)
– GitHub repos with clean documentation
– Research papers on arXiv about novel solutions
Use the STAR method for project descriptions. Example: “Led a team implementing CI/CD pipelines (Situation-Task-Action-Result).” Open-source contributions to Hugging Face demonstrate practical expertise.
Educational Requirements for AI Engineers
Breaking into AI development requires the right mix of formal education and hands-on training. Employers prioritize candidates with proven skills, whether from degrees or accelerated programs. Here’s how to align your education with industry demands.
Degrees vs. Bootcamps: What Employers Prefer
68% of senior roles require advanced degrees (MS/PhD), while bootcamp grads fill 12% of entry-level positions. MIT’s Applied Machine Learning certificate boosts resumes, but Georgia Tech’s OMSCS offers better ROI for mid-career professionals.
Bootcamps like Springboard focus on practical technologies, whereas Flatiron School emphasizes portfolio projects. PhDs with dissertations on NLP or reinforcement learning attract recruiters faster.
Top Universities for AI Specializations
Stanford and CMU lead with research-driven programs. Their graduates design solutions for Fortune 500 companies. Udacity’s nano-degrees bridge gaps for non-traditional learners.
Employer tuition programs (e.g., Google’s 50% reimbursement) make continuing education accessible. Physics PhDs transitioning to ML roles often leverage Fast.ai courses to showcase engineering adaptability.
Interview Tips for AI Engineering Positions
Acing technical interviews requires sharp problem-solving and clear communication of your expertise. Employers assess both your coding prowess and ability to explain complex solutions. Prepare for live challenges, portfolio reviews, and behavioral questions.
Common Technical Interview Questions
89% of interviews include live coding, like LeetCode’s hard-level frequency analysis. Capital One uses case studies to test fintech applications. For system design, practice building recommendation engines from scratch.
Whiteboarding sessions often focus on attention mechanisms in NLP. Use tools like Interviewing.io for mock sessions. Time management is critical—allocate 15 minutes per problem.
How to Demonstrate Your Portfolio Effectively
Highlight projects with measurable impact, like “Improved models’ accuracy by 23%.” Use the STAR method to describe team collaborations. For take-home tasks, document fraud detection design choices.
Error analysis deep dives showcase debugging skills. GitHub repos should include clean documentation. Salary negotiations improve with data—research averages for your experience level.
Emerging Trends in AI Engineering
The landscape of AI development is evolving faster than ever, with new breakthroughs reshaping industries. From generative systems to ethical frameworks, professionals must stay ahead of these shifts to build effective solutions. Over 73% of new roles now require expertise in these cutting-edge areas.
The Rise of Generative AI and LLMs
Generative technologies dominate current projects, with architectures like Llama 3 competing against GPT-5. Multimodal systems face unique challenges in processing images, text, and audio simultaneously. Deployment hurdles include computational costs—training large language models consumes energy equivalent to 300 homes annually.
Quantum machine learning prototypes show promise for solving complex optimization problems. In healthcare, FDA-approved diagnostic products demonstrate real-world impact. The Defense Department now integrates ethical guidelines into all AI procurement contracts.
Ethical AI and Regulatory Considerations
Compliance requirements like the EU AI Act demand transparent development practices. NIST’s Risk Management Framework helps organizations assess algorithmic bias. Copyright disputes over training data have led to new licensing models for dataset usage.
Anthropic’s Constitutional AI approach sets benchmarks for alignment with human values. Certification programs through the AI Safety Institute validate responsible business implementations. These standards are becoming essential for professionals working with sensitive applications.
How to Stay Updated in the AI Job Market
Professionals who master industry trends gain a significant advantage in job searches. With new technologies emerging weekly, strategic networking and smart alert systems separate top candidates from the crowd. We’ve analyzed data from NeurIPS career fairs and Built In’s job boards to identify the most effective tactics.
Networking Groups and Conferences
Active communities like the AI Engineers Guild Discord server offer real-time job leads. Members share unpublished roles and referral opportunities—33% faster than public postings.
Conference attendance delivers measurable ROI. CVPR attendees land roles 40% faster than ICML participants, according to 2024 surveys. Prioritize events with dedicated career fairs like NeurIPS.
GitHub’s trending repositories reveal companies investing in new solutions. Monitoring repos with 100+ stars can uncover teams expanding their tech stacks. Alumni networks, especially CMU’s portal, connect graduates with hidden opportunities.
Subscribing to Job Alerts
Custom Boolean searches on LinkedIn yield 28% more relevant postings than basic filters. Combine terms like “NLP” with “remote” and salary ranges for precision.
The ML Jobs Weekly newsletter surfaces niche roles at growing startups. Top podcasts like The TWIML AI Show often feature sponsors hiring for specialized applications.
Case studies show Kaggle competitors receive 3x more recruiter messages. Time management is key—dedicate 2 hours weekly to learning new frameworks through structured courses.
Conclusion
The demand for skilled professionals in this field keeps growing, with a 32% year-over-year increase in roles. Now is the time to leverage your experience and target high-impact opportunities.
Focus on building adaptable skills, especially in emerging areas like generative systems. Geographic flexibility and certifications can significantly boost your earning potential.
Stay proactive by networking and monitoring industry trends. Whether you prefer startups or established firms, the right strategy will help you land roles that match your goals.
Continuous learning is key. Invest in mastering new solutions to stay competitive in this fast-evolving market.
FAQ
What industries hire AI engineers?
Tech, finance, healthcare, and aerospace firms actively recruit these professionals. Companies like Blue Origin, Capital One, and Tempus AI lead in hiring.
What skills are essential for AI roles?
Python, TensorFlow, and NLP expertise are critical. Soft skills like problem-solving and teamwork also boost job prospects.
Do AI engineers need advanced degrees?
While many employers prefer master’s degrees, bootcamps and certifications can also qualify candidates for entry-level positions.
How much do AI engineers earn?
Salaries range from ,000 for entry-level to 0,000+ for senior roles. Location impacts pay—NYC offers higher wages than Chicago.
Are remote AI jobs available?
Yes. Firms like Capco and UL Solutions offer hybrid or fully remote roles, balancing flexibility with collaboration needs.
What trends are shaping AI engineering?
Generative AI, ethical frameworks, and regulatory changes dominate the field. Staying updated via conferences is key.
How can I improve my AI job application?
Tailor your resume with keywords like “machine learning” and highlight projects. Certifications from Coursera or Udacity add value.