05 Nov Software With AI Capabilities
The Essence of Developing Software with AI Capabilities
Development of software with AI capabilities implies building new software or evolving existing software to output AI analytics results to users (e.g., demand prediction) and/or trigger specific actions based on them (e.g., blocking fraudulent transactions).
Supported by AI, an application can automate business processes, personalize service delivery and drive business-specific insights. According to Deloitte, 90% of seasoned AI adopters say that “AI is very or critically important to their business success today”.
Use Cases for Software with AI Capabilities
Business process automation
- Chatbots
- Search engines
- Automated document generation
- Optical character recognition engine for data extraction from paper documents
- Job candidates screening and shortlisting
Production management
- Predictive maintenance
- Demand and throughput forecasting
- Process quality prediction
- Production loss root cause analysis
Customer analytics
- Sentiment analysis
- Customer behavior prediction
- Sales forecasting
Risk management
- Counterparty risk analytics
- Potential damage prediction
- Fraud detection
Supply chain management
- Demand forecasting
- Lead time forecasting
- Inventory optimization
Personalized service delivery
- Customer segmentation
- Recommendation engines
Roadmap: Developing Software with AI Capabilities
The duration and sequence of the development stages will depend on the scale and the specifics of both basic software functionality and artificial intelligence you want to enrich it with.
1
Feasibility study
Duration: 1 month
- Outlining high-level software requirements (in case of new software).
- Creating a proof of concept (PoC) for AI to check the technical and economic feasibility of enriching software with it, estimate the scope of work, timeline, budget, and risks.
- Calculating ballpark ROI of AI implementation.
Note: ROI of AI can be influenced by AI-related roadblocks uncovered during PoC, such as low-quality data, data silos, data scarcity, which will require additional time and budget resources to handle.
2
Business analysis to elicit AI requirements
Duration: 1-6 weeks
Defining detailed functional and non-functional requirements to AI, such as the required level of AI accuracy (in some cases, the value can be driven already with 65-80% of accuracy), explainability, fairness, privacy, and the required response time.
Note: The trade-offs between requirements to AI influence the choice of a machine learning model AI will leverage (as, for example, some models can be less accurate but more explainable and fair).
3
Solution architecture design
Duration depends on the overall complexity of software functionality
Selecting integration patterns and procedures. Designing the architecture of the solution with integration points between its modules, including integration with an AI module.
4
Business processes preparation (in case of software development for internal use)
Duration: 1-3 months
Launching an initiative of integrating AI in business-critical software may require organizational changes to increase the chances for its successful implementation and adoption:
- Shifts in data policies to break down data silos across the departments to enable easy access to data and avoid duplicated or contradicting data that decreases AI accuracy.
- Determining a plan on adapting employees’ workflows to the use of updated (or new) software (e.g., user training and refreshed user guides and policies).
- Promoting continuous collaboration between business and tech stakeholders.
5
Software development (non-AI part)
Duration: 3-36 months
Developing the front end and the back end of software (the server side and APIs, including necessary APIs for AI module integration). Running QA procedures throughout the development process to validate software quality.
6
AI module development
1. Data preparation
Duration: 1-2 weeks (this process can be reiterated to increase the quality of AI deliverables)
- Consolidating data from relevant data sources (internal and external, which can be acquired via one-time purchase or a subscription).
- Performing exploratory analysis on data to discover useful patterns in it, detect obvious errors, outliers, anomalies, etc.
- Cleansing data: standardizing, replacing missing or deviating variables, removing duplicates, and anonymizing sensitive data.
- The resulting data is split into training, validation and test sets.
Note: Automation tools can significantly facilitate this time-consuming stage (e.g., Trifacta, OpenRefine, DataMatch Enterprise, as well tools within leading AI cloud platforms – Amazon SageMaker, Azure Machine Learning, Google AI Platform).
2. ML model training
Duration: 1-4 weeks (depending on the model’s complexity)
Selecting fitting machine learning algorithms and building ML models. The models are trained with training data and tested against a validation dataset, then their performance is increased by fine-tuning hyperparameters. The most high-performing models can be combined into a single model to decrease the error rate of separate models. The final ML model is validated against a test dataset in the pre-production environment.
7
AI deployment
Duration: 2-4 weeks
The configuration of the AI deployment infrastructure and approach to integrating AI into software depends on how AI should output results:
- In batches: AI outputs are cached according to pre-scheduled time intervals. Targeted software retrieves AI outputs from the data storage it is connected with. Higher latency is acceptable.
- As a web service: near-real-time outputs triggered by a user or a system request via API. Low latency is required.
Pilot deployment to a limited number of software users is recommended to verify the smoothness of AI integration with target software and compatibility with the infrastructure (latency, CPU and RAM usage) and run user acceptance tests to handle possible issues before a full-scale rollout.
Note: AI deployment can be facilitated by leveraging leading AI cloud platforms – Amazon SageMaker, Azure Machine Learning, Google AI Platform.
8
Maintenance and evolution of AI-powered software
Duration: 2-4 weeks
Tracking and fixing software bugs and issues of integration with AI, optimizing software performance and enhancing UI based on user feedback, developing new features or extending AI-enabled functionality drawing on evolving business or user needs.
Maintenance of AI is a separately controlled process. It includes monitoring of ML model performance to detect a ‘drift’ (decreasing accuracy and increasing bias when the data that AI processes grows and starts deviating from the initial training data).
In case of the drift, models should be retrained with new hyperparameters or newly engineered features reflecting shifts in data patterns. They can also be replaced by challenger models with higher performance (identified during A/B testing).
Talents Required for Developing Software with AI Capabilities
The roles required in a software development project with an AI part vary according to the project’s goals and scope. The key roles include:
Project Manager
To outline a project roadmap, manage the software & AI development life cycle, and foster collaboration between business and tech stakeholders.
Business Analyst
To analyze business and user needs and translate them into technical requirements for software, AI, and integration between them.
Data scientists
To cleanse data for AI and engineer features; to build, train, test, and validate ML models. Domain experience is preferred.
Data engineer
To deploy AI and monitor it in production.
UX and UI designers
To design wireframes, create user stories and UI prototypes for AI-driven software, following the principles of user-centricity.
Software developers
To build the software back end and front end and build and implement APIs necessary for integration with AI, and further evolve software.
QA specialists
To design and implement a test strategy to validate software quality.
Sourcing Models of Developing Software with AI capabilities
All resources are in-house
Do you need to build BI from scratch or introduce changes into the existing BI solution? We render BI consulting services to help you nail any of these challenges.
All resources are in-house, except for data scientists
High control over the project and access to competencies unavailable in-house. If you’re looking to grow an end-to-end in-house team in the future, look for a resource vendor who provides knowledge sharing.
Non-AI part is developed in-house, while the AI part is outsourced
Optimal resource usage and access to competencies unavailable in-house. However, establishing smooth team collaboration may pose a challenge.
PM and BA are in-house, all technical resources are external
Sufficient control over the project and better process transparency, no problems with resource utilization after the project. There should be properly qualified PM and BA in-house.
Complete outsourcing
Access to rare talent and the latest technologies, which results in faster development and lower costs but higher vendor risks. Thus, we suggest requesting PoC from a chosen vendor.
Cloud Services to Speed Up Development of Software with AI Features
AI platforms help quickly set up, automate and manage each stage of the AI module development with pre-configured infrastructure and workflows. HLT Global recommends considering platforms by major cloud providers: Amazon, Microsoft, and Google. All of them are leaders in Gartner’s Magic Quadrant for Cloud AI Developer Services and offer integrated development environments (IDEs) with the following capabilities:
- Custom modeling with R/Python and supported frameworks (TensorFlow, PyTorch, scikit-learn, and others).
- AI workflow orchestration and management.
- Bias detection, explainability features, etc.
- Automated model tuning.
- Model performance monitoring.
- Autoscaling of compute resources.
- Advanced security.
Some of the platforms’ distinctive features are outlined below:
Amazon SageMaker
DESCRIPTION
- Powerful, enterprise-ready infrastructure offered by AWS (e.g., Amazon EC2 and Amazon S3-based) to support AI-related projects.
- Pre-configured data labeling workflows, access to pre-screened vendors offering data labeling services.
- One-click data import, 300 pre-configured data transformations, data visualization capabilities.
- A unified repository to store, organize and reuse ML features.
- Marketplace with pre-built ML algorithms and models.
BEST FOR
Enterprise-scale AI integration initiatives.
Pricing
Payment for compute and storage resources consumed. Pricing depends on the region, the services used within the platform, their configuration and hours of usage.
Azure Machine Learning Services
DESCRIPTION
- Drag-and-drop UI for low-code model development.
- Data labeling service to manage and monitor labeling projects and automate iterative tasks.
- Flexible deployment options offered by Azure, including the hybrid cloud.
- Cost management with workspace and resource level quota limits.
BEST FOR
Flexible AI deployment (on-premises/hybrid cloud).
Pricing
Payment for compute and storage resources consumed. Pricing depends on the region, the services used within the platform, their configuration and hours of usage.
Google AI Platform
DESCRIPTION
- Accelerated AI performance due to integrated proprietary Tensor Processing Unit (TPU).
- Advanced support of Kubernetes orchestration.
- Integration with BigQuery (Google’s hyperscale data warehouse) datasets.
- Data labeling service that connects companies with human labelers.
- Support of TensorFlow Enterprise.
- Pre-configured virtual machines and optimized containers for AI based on deep learning.
BEST FOR
Integration of resource-intensive deep learning AI into software; startup-friendly.
Pricing
Pricing depends on the region, the services used within the platform, their configuration (type and number of instances) and hours of usage.
Cost Factors of Developing Software with AI Capabilities
Major cost factors:
Consider Professional Services for Development of AI-Powered Software
HLT Global applies 32-year experience in software development and data science to create solid software with AI capabilities.
Consulting: software development with AI capabilities
Our consultants help:
- Conduct a feasibility study on integrating AI into your software (potential benefits, risks, and costs).
- Outline a risk management strategy to mitigate AI-related risks.
- Outline a development, deployment and integration plan for building software with AI capabilities.
- Choose an optimal sourcing model.
- Select a fitting technology stack for software and its AI part prioritizing open-source frameworks to optimize development time and costs.
Outsourced development of software with AI capabilities
We cover all the stages of development:
- Feasibility study (including PoC).
- Business analysis: eliciting requirements for software and AI.
- Software development: UX and design, front-end and back-end development, QA.
- AI development: data preparation, ML model building, training and tuning.
- AI integration with software, deployment (MVP and full-scale rollout) and testing.
- User training.
- Software maintenance and evolution.
Analytics Consulting Services We Render
About HLT Global
HLT Global is an international IT consulting and software development company headquartered in McKinney, TX. Relying on 32-year practice in software development and data science for 30 industries, including manufacturing, healthcare, financial services and retail, we develop software enhanced with AI to optimize workflows and reduce operating costs, improve decision-making, and increase customer engagement.