AI Software Development Services
100+
Satisfied and Happy Clients we have Served all over the World.
What We Do
Evolve Your Business While Evolving Your Data Landscape as you Hire AI Software Development Consultants
The increasing volume of data & its complexity can be simplified with Tableau – a BI and visual data analytics suite, to help Businesses & people make informed decisions. AI Software Development with us for data management, insightful analysis, & effective visual presentation that are fast, convenient, & result-oriented to establish a Data Culture & spur change. With our Tableau developers, turn your data insights into value-based actions.
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AI Software Development Services by devstudio360
AI software consulting
We can conceptualize your AI software, help select fitting ML models, and propose a scalable, high-performing solution architecture. Our experts advise on tech stack selection, development planning, TCO reduction, model training, regulatory compliance, and much more.
End-to-end AI-powered software development
Our experts can build AI-powered software of any complexity, from simple tools running on open-source AI models to innovative systems powered by proprietary ML engines. To verify solution feasibility and avoid unnecessary risks, we can start with a proof of concept or an MVP.
Adding AI to existing software
We will analyze your current software and IT infrastructure and suggest a cost-efficient and secure way to introduce AI. We can provide advice on ML model choice, training, testing, and integration or handle the entire process of evolving your software with AI functionality.
Designing and training AI/ML models
Our data scientists can design and train proprietary AI models, including deep learning networks (CNN, RNN, GAN), for diverse tasks from content generation to natural language processing and image recognition. Our ML models steadily achieve a >95% accuracy.
AI Solutions and Capabilities We Build
An AI software development company with hands-on experience in 30+ industries, we tailor AI solutions to the unique needs of each domain, including healthcare, BFSI, manufacturing, retail & ecommerce, advertising, professional services, and more.
Customer service
- Virtual customer support agents and chatbots providing field-specific assistance (e.g., in doctor appointment scheduling, insurance claim filing, loan application submission).
- Converting speech to text and text to speech.
- AI-based recommendations on optimal actions for human agents.
Industry-centric AI assistants
Specialized assistants based on generative AI models like GPT-4 can excel in various sectors, including:
- Healthcare (virtual physical therapy guides, AI scribes).
- Education (personalized study planners, virtual tutors).
- Digital advertising and marketing (ad content generators, social media managers).
- BFSI (virtual mortgage advisors, AI traders).
- Gaming (life-like NPCs, adaptive virtual opponents).
Diagnosing, treatment, and medical imaging
- AI assistance for EHR management (e.g., speech recognition, appointment summaries, smart data entry suggestions).
- Medical image analysis for MRI, CT, PET, SPECT, X-ray scans, ultrasound images.
- AI-powered diagnostic assistance and treatment recommendations.
- Identification of hidden factors that influence health outcomes (e.g., past diagnoses, medication side effects, lifestyle, demographics).
- 3D body mapping.
Financial management
- Financial modeling and cash flow forecasting.
- Financial fraud detection and prevention.
- Financial risk management.
- Expense management to identify cost reduction opportunities and optimize spending.
- Tax optimization to minimize tax liabilities.
- Financial reporting and compliance monitoring.
- Asset and investment portfolio optimization.
Supply chain management
- Real-time delivery route optimization and fleet monitoring.
- AI-assisted supplier selection and supplier performance assessment.
- Predictive maintenance of warehouse equipment, trucks, and other assets.
- Computer vision for automated product inspection.
- Warehouse operations automation with robots and drones.
- Supplier communication automation (e.g., payment reminders, invoice sharing)
Inventory management
- Computer vision for inventory counting.
- Inventory demand forecasting based on data from all supply chain touchpoints, including customers, suppliers, manufacturers, and distributors.
- Real-time inventory optimization tools that dynamically adjust safety stock levels, reorder points, etc.
- Dynamic price optimization to reduce inventory levels by applying discounts.
Machine Learning Models and Technologies We Work With
- Neural networks, including deep learning
- Non-neural-network machine learning
Neural networks, including deep learning
- Transformer models, large language models (LLMs).
- Convolutional and recurrent neural networks (including LSTM and GRU).
- Autoencoders (VAE, DAE, SAE, etc.).
- Generative adversarial networks (GANs).
- Deep Q-Networks (DQNs).
- Feed-forward neural networks, including Bayesian deep learning.
- Modular neural networks.
Non-neural-network machine learning
- Supervised learning algorithms, such as decision trees, linear regression, logistic regression, and support vector machines.
- Unsupervised learning algorithms: K-means clustering, hierarchical clustering, etc.
- Reinforcement learning methods, including Q-learning, SARSA, and temporal differences method.
Frequently Asked Questions
Privacy breaches have been making headlines. Say we use AI to process customer data — how do we build privacy protections into the app?
At devstudio360, we start artificial intelligence development by creating a 100% secure environment for data processing and storage during AI development, applying our ISO 27001-certified security management system and DevSecOps best practices throughout the SDLC. If we use sensitive data to train an AI model, we anonymize it to avoid the risk of data breaches.
To make sure the AI solution itself doesn’t pose unnecessary risks, we implement data encryption at rest and in transit and robust role-based access control mechanisms. Additionally, we employ data masking, enforce strict logging and monitoring practices, and utilize advanced threat detection mechanisms such as ML-based intrusion detection.
Our compliance experts make sure the AI solution aligns with regional and industry-specific regulations and standards, including HIPAA, GDPR, KYC/AML, and more. We also guarantee transparency for users: they get clear explanations of what personal data is being collected and what for and are asked for consent to data collection and processing.
We’re planning an AI initiative but doubt its feasibility. How do we know AI will work out for our case?
In such cases, we recommend starting with a proof of concept to check the idea’s feasibility in the shortest possible timeframe. Designing a proof of concept (PoC) is a good way to showcase how the solution will work, estimate the potential value, address major concerns, and draw up a risk mitigation strategy. PoC is also the best choice for a startup company to get a demo version of the future app and use it to attract investments. PoC is highly recommended for innovative AI solutions, where there may be several technology choices that haven’t been tested before.
We’re currently shortlisting vendors and planning our AI budget. Do you have a price list for your services?
To provide exact cost estimates for an AI initiative, we first need to complete a project discovery, but we understand that our clients often require a quote much earlier than that. To satisfy these needs, we offer ballpark quotes (use our online calculator to get one) and give preliminary estimates at early project planning stages (e.g., using T-shirt sizing or PERT methods). When it comes to the final quote, we provide a detailed cost breakdown and draw up a contingency budget to make sure our clients know exactly what they are paying for. Feel free to explore our cost estimation practices in the dedicated guide.
We've heard that data quality is one of the most critical factors for AI success. We don't know if our data is of sufficient quality.
Indeed, data quality largely determines AI output accuracy. However, quality is not an inherent or objective attribute of any data set. Each project has different requirements, so even if the quality of your data is lower than expected, our data engineers can improve it to achieve the desired level. Our professionals use automated tools to assess, cleanse, and deduplicate the data to avoid human error and save time. In case your data is insufficient, we can also enrich it by using external sources (e.g., financial data marketplaces, social media, GIS).
How reliable is AI output? Will we need human staff to check and control it?
The need for human involvement depends on the case. High-risk tasks like medical image analysis may require constant human presence to verify the AI output, while lower risk tasks (e.g., data entry) will require zero or close to zero human participation. Here are some of the key factors that affect AI output quality, depending on the use case:
Data quality and quantity. Training data should be clean, relevant to the use case, and representative of the future input that AI will process. Since larger datasets often lead to a higher quality of output, we strive to collect as much data as necessary and can augment the data sets provided by our clients. For example, we can get additional data from relevant online sources with the help of web scraping tools or use generative adversarial networks (GANs) to generate synthetic data for the training set.
Model selection and training. Depending on the project specifics, we select ML models that will ensure adequate output accuracy and an acceptable cost-to-performance ratio. For highly innovative cases, we develop custom ML models.
Model validation and testing. We implement robust ML validation and testing mechanisms, including cross-validation.
Evaluation metrics. We define and apply clear evaluation metrics that align with the AI solution’s goal. Common metrics include precision, recall, F1-score, and mean squared error. We monitor and evaluate model performance using these metrics.
Human-in-the-Loop (HITL). Depending on the use case and criticality of the output, it may be necessary to implement the Human-in-the-Loop (HITL) system. This involves human reviewers who can validate or adjust the AI output when necessary. It may be recommended for cases like content moderation, medical diagnosing, and legal document review.
Feedback loop. After every iteration, the AI output is submitted for an expert review. The feedback is then incorporated into the next version of the model to improve its accuracy.
Monitoring and alerting. We can implement monitoring and alerting systems to detect anomalies or drops in model performance. This allows for proactive intervention when AI accuracy degrades.
AI is known to be prone to biases and may violate human rights. How do we avoid it?
Currently, the best way to avoid harmful biases in AI output is to build your software in alignment with UNESCO’s Human Rights Approach to AI. To do this, we recommend starting artificial intelligence software development with Human Rights Impact Assessments (HRIA) to identify potential cases where the technology may affect individuals’ rights. When conducting the research, it’s essential to combine domain expertise with feedback from multiple stakeholders, including potential end users and representatives of affected communities.