- AI Development
- AI App Development
- AI Consulting
- AI Software Development
- ChatBot Development
- Enterprise AI ChatBot
- AI Chatbot Development
- LLM Development
- Machine Learning Development
- AI Copilot Development
- MLOps Consulting Services
- AI Agent Development
- Deep Learning Development
- AI Deployment Services
- Deep Learning Consulting
- AI Token Development
- AI Development Company
- AI Development Company in Saudi Arabia
- AI Integration Services
About the Project
The client is a FinTech startup developing an AI-powered financial
analysis and recommendation system for the stock market and wealth
management domain. The product is used by tier 1 banks and asset
management companies.
The system processes various data feeds such as CRM data, news,
documentation archives, client portfolios, and transactions and
stock market data and recommends news and documents relevant to the
client and his portfolio and helps prioritize the clients according
to the stock market events.
DevOps Solution Highlights
Due to the enterprise nature of the project, its complexity, 5+ years duration, security requirements, cloud independence during its course we had to cope with a very wide range of DevOps tasks on all major cloud platforms.
Industry
FinTech
Engagement model
Time & Materials
Solution
Machine Learning, NLP, Enterprise
Effort and Duration
5+ years
Tech stack / Platforms
Process Automation
The complexity of the system, the necessity to support and update multiple versions for different clients required full automation of the development and deployment processes with strict version control and release management. During the development process our team successfully completed the following DevOps tasks:
- Setup Continuous Integration and Continuous Delivery (CI/CD) pipeline for Python applications with Jenkins supplemented with automated Unit and Service level tests
- Setup automated code quality analysis check as part of the CI process using Veracode
- Moved all infrastructure to Docker containers
- Setup Database cluster manager
- Setup site-to-site VPN access for the distributed development team
- Implement an automated monitoring system based on Sentry. The development team received automated alerts of any issues (peak memory/cpu usage, data processing delays, errors, service unavailability etc) happening with the production instance.
- Codified the Infrastructure with Terraform (Infrastructure as a code approach)
As a result of the automation, the team could release new software versions much faster, of much better quality, without errors caused by human factors and could significantly reduce the time and money spent on integration/deployment and testing activities.
Migrations Between Cloud Providers
Major cloud providers have startup support programs providing their
cloud infrastructure for free for the first 1 or 2 years. Our client
could obtain such credits from AWS, Google Cloud, IBM Cloud and
Microsoft Azure and he didn’t have to pay a dime for his development
infrastructure for 5 years. However this required the development team
to keep the system cloud-agnostic and once in 1-2 years migrate up to 30
servers and data (Dev, QA and Production environments) from AWS to
Google Cloud, from Google Cloud to IBM Cloud and from IBM Cloud to
Microsoft Azure.
We used Docker, Ansible, Cloud Formation to perform this migration.
On-Premises Installation for Enterprise Clients
Enterprise clients required that the system is installed in their own cloud and installation and support is handed over to their own DevOps team. Access to the production environment for our team was restricted. We created an Installation guide, Ansible Playbook, and Cloud Formation Template allowing the clients to automatically create all infrastructure and install the system and subsequent updates without involving our engineers. We also conducted a few training sessions with screen sharing to train the customer’s DevOps team to use the installation scripts.
All highlights of the project and the development process are described here.