Large Manufacturer Scales AI Development from 6 to 40+ Developers

Bridging the gap between scientists and software engineers while scaling Python development from 6 to 40+ developers across 8 teams

COMPANY SIZE
50,000+
INDUSTRY
Life Sciences
LOCATION
North America
FOUNDED
Time savings equivalent to 2 full-time employees
0 %
The Challenge

Manual Python package management created security risks, dependency conflicts, and collaboration barriers that prevented scaling AI development beyond a small team.

The Outcome

Anaconda’s unified platform provided secure, curated packages and streamlined workflows, enabling expansion from 6 to 40+ developers while automating complex instrument processes.

A Fortune 2000 scientific instruments manufacturer faced a critical challenge in their materials science division: how to leverage the power of open source Python for advanced analytics and AI development while maintaining the security and governance standards required in enterprise environments.

The company develops software for laboratory and research equipment used across semiconductor, materials science, and life science applications. Their teams primarily coded in C++, but scientists and engineers wanted to harness Python’s innovation and flexibility to break down technical barriers and accelerate AI-driven instrument automation.

The Challenge: Manual Processes Limiting Innovation

Initially, the company’s approach to Python development was entirely manual and fragmented. A small team of three software developers and three scientists working part-time were manually installing Python packages, managing dependencies, and sharing them across their network.

“It was very time-consuming and error-prone,” recalls the senior software engineer leading the initiative. “We were adding pip packages into environments and had to manually assess whether a package would work and if it had any security issues.”

This manual approach created multiple bottlenecks that limited their ability to scale AI development:

  • Security Vulnerabilities: No systematic way to screen packages for security risks or malicious content
  • Dependency Conflicts: Manual package management led to frequent environment conflicts
  • Limited Scalability: Manual processes couldn’t support expansion beyond the initial small team
  • Collaboration Barriers: Different tools and languages created friction between scientists, system engineers, and software developers
  • Innovation Constraints: Time spent on package management reduced focus on developing AI solutions

The IT security team was particularly concerned about the risks of unrestricted access to open source repositories, where individual contributors might not prioritize enterprise security standards.

The Solution: Unified AI Development with Anaconda

After evaluating various options, the company chose the Anaconda AI Platform specifically for its ability to provide secure, centralized access to Python packages while enabling the unified development workflows their teams needed.

Addressing Security and Governance

The Anaconda AI Platform’s trusted distribution solved their primary security concern. “Anaconda provides a very good, reliable package manager, so I can tell developers to use those packages, and we know the Anaconda team is looking after them carefully. No one can accidentally download a malicious package,” the senior software engineer explains.

Anaconda provides a very good, reliable package manager, so I can tell developers to use those packages, and we know the Anaconda team is looking after them carefully. No one can accidentally download a malicious package”

By implementing Anaconda’s professional licensing with enterprise-grade security features, they gained:

  • Curated Package Repository: Access to thousands of verified, tested packages with built-in security screening
  • Professional Support: Established vendor relationship for audit compliance and security escalation
  • Signature Verification: Certified integrity and authenticity of all packages
  • Vulnerability Management: Automated screening and alerts for security issues

 

Enabling Unified Development Workflows

The platform’s unified approach was crucial to their success. “We want to be able to build pipelines starting from the data to machine learning to dashboards. We want an environment where we can have all that in one place. We don’t want to be doing different things in different tools,” the senior software engineer explains.

The unified platform enabled:

  • Seamless Collaboration: Scientists could prototype directly in Python using infrastructure that software developers could extend into production software
  • Automated Processes: Elimination of manual package management and dependency resolution
  • Environment Consistency: Standardized development environments across all teams
  • Integrated Tooling: JupyterLab integration for microscope control and data extraction
The Results: Scaling Innovation Across the Organization

The impact was immediate and measurable, enabling the company to transform both their development processes and organizational capabilities.

Dramatic Efficiency Gains

The most significant impact was on human resources and productivity. “Using Anaconda’s solution saves us the manual efforts of roughly two full-time engineers,” the senior software engineer notes. This efficiency gain freed up critical technical talent to focus on innovation rather than infrastructure management.

Using Anaconda’s solution saves us the manual efforts of roughly two full-time engineers

the senior software engineer notes. This efficiency gain freed up critical technical talent to focus on innovation rather than infrastructure management.

Unprecedented Scalability

What started as a team of 6 people has expanded to 8 main teams with approximately 5 members each, growing from 6 to more than 40 developers. The platform’s centralized approach enabled this dramatic scaling without proportional increases in administrative overhead.

Enhanced AI Capabilities

The teams now routinely automate alignment and calibration processes that previously required manual expert intervention. Using Python packages from Anaconda’s trusted distribution, they can:

  • Control Instruments Remotely: Scientists can operate instruments and extract data from their laptops
  • Automate Complex Procedures: Essential calibration routines now run automatically, enabling detailed scientific experiments
  • Accelerate Prototyping: Rapid development of experimental software that can be refined into production features

Enterprise-Grade Governance

The unified platform approach provided comprehensive governance capabilities:

  • Audit Compliance: Complete package tracking and provenance for regulatory requirements
  • Security Assurance: Automated vulnerability detection and mitigation
  • Access Control: Role-based permissions ensuring appropriate access across teams
The Platform Advantage: Confidence at Scale

What distinguished the Anaconda AI Platform was its comprehensive approach to the entire AI development lifecycle. Rather than managing multiple disparate tools, the company gained a single platform addressing their needs from development through deployment.

“We have enough other complexity to manage. The software we produce must work on current and previous equipment versions across multiple hardware configurations. It makes sense to use Anaconda to manage the complexities of the Python ecosystem,” the senior software engineer explains.

We have enough other complexity to manage. The software we produce must work on current and previous equipment versions across multiple hardware configurations. It makes sense to use Anaconda to manage the complexities of the Python ecosystem

This unified approach delivered exactly what the organization needed: the confidence to innovate with open source at enterprise scale, backed by the security and governance their business requires.

Looking Forward

Today, all Python development across the company’s software development group operates through the centralized environment built with Anaconda. Scientists, system engineers, and software developers have secure, streamlined access to the Python ecosystem, supporting the company’s mission to provide innovative solutions that advance scientific discovery.

The success has sparked broader adoption across other divisions, with management recognizing the strategic value of unified AI development capabilities powered by trusted open source.

 


 

Ready to scale your AI development with the confidence of enterprise-grade security and governance? Contact us to learn how the Anaconda AI Platform can transform your organization’s approach to AI with open source.

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