AI Goes In-House: Why It’s Happening Now
In a major shift reported by Bloomberg, large companies like financial institutions, retailers, and healthcare providers are abandoning third-party AI platforms in favour of building in-house foundation models. This transformation is being driven by:
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A desire for greater control over data
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The need for customised model performance
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Avoiding the long-term costs of third-party APIs
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Ensuring regulatory compliance in sectors like healthcare and finance
This move is igniting a hiring frenzy for those skilled in data, AI infrastructure, and secure model deployment.
What This Means for Career Starters and Switchers
If you’ve been considering a move into AI, now is the time. Companies aren’t only recruiting PhDs or seasoned veterans — they’re urgently looking for talent that can hit the ground running. That includes:
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AI Engineers who can work with platforms like Microsoft Azure AI
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Data Scientists who can prep, clean, and model enterprise-scale datasets (Azure Data Scientist Associate)
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MLOps professionals to manage versioning, performance, and monitoring
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Python developers who can script model workflows or data pipelines — like those taught in our Introduction to Python course
Even entry-level learners are now being fast-tracked into roles if they show a solid grasp of key tools and cloud platforms.
The Push for Privacy and Customisation
One of the biggest reasons for the shift? Data privacy.
When companies use third-party models like OpenAI or Anthropic, they must often share sensitive data externally. But with in-house AI models trained on internal datasets, companies can:
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Keep customer and employee data fully secure
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Train models on domain-specific knowledge
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Comply with GDPR and local regulations
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Optimise model inference and cost control internally
This growing need means that knowledge of cloud environments like Azure, AWS, and Google Cloud is more valuable than ever — which is why we offer a full Artificial Intelligence and Machine Learning Package to get you career-ready.
How to Break into These Roles
We’ve created learning paths that align directly with the most in-demand AI career opportunities. If you’re not sure where to start, explore our:
These are designed for learners with no prior experience and include hands-on labs, support tutors, and weekly webinars.
Want to see the full journey mapped out? Browse our Learning Paths or check out how we support learners like you on our About Us page.
Real Support, Real Outcomes
We’re proud of our learners. Many of them started with zero background in tech and now work in AI, cybersecurity, or data analytics roles thanks to our training.
Read their stories on our Testimonials page, or reach out to us via the Contact page to talk with a course advisor about which AI career path might be right for you.
Conclusion
As companies race to develop their own AI models, they’re investing heavily in the talent to make it happen. Whether you’re aiming to become an AI engineer, work in MLOps, or transition from another tech role, there’s never been more opportunity to build a secure, future-proof career in artificial intelligence.
Next Steps
Join our free weekly AI webinar every Wednesday at 6:15 PM and ask questions directly to tutors, advisors, and former students.
Or jump straight into the AI & Machine Learning Package and start your journey today.