We Engineer
GenAI to Differentiate,
Not Just Function

Success with GenAI starts with accuracy—and accuracy doesn’t come prepackaged. It comes from carefully finetuned models, grounded in your domain, embedded in AI-centric architecture, and deployed with precision.

At Talentica, our AI-native engineers build full-stack GenAI systems where everything—architecture, data flows, DevOps, and UX—is engineered for AI from day one.

Because anyone can implement a model, but only a few know how to make it work in production with accuracy, uptime, and speed.

what we offer

We make GenAI work for you

Text Generation

Text Generation

Your data has its own dialect. We build LLM-based systems that speak your domain’s language—relevant, refined, and ready for action.

  • ChatGPT like Chatbots
  • Retrieval System (RAG)
  • NLIDB
  • Text-to-Code
Multi-modal Intelligence

Multi-modal Intelligence

Not just cross-modal, but cross-intent. We design systems that fluidly reason across text, image, and structure—to mirror real-world complexity.

  • GPT- 4
  • Multi-sensory Inputs
Autonomous Intelligence

Autonomous Intelligence

Autonomous, accountable, and always learning. We build intelligent agents that collaborate, adapt, and execute—at scale and in sync with your business goals.

  • Agentic AI
  • Model Context Protocol (MCP)
Image Generation

Image Generation

Where creativity meets context. We build GenAI systems that generate and edit images with precision—understanding structure, detail, and intent.

  • Image Editing
  • Text-to-Image
  • Image-to-Image
Video Generation

Video Generation

Motion with meaning. We engineer video-generation models that understand transitions, context, and visual storytelling — not just frames, but flow.

  • Text-to-Video
  • Image-to-Video
  • Video-to-Video
Audio/Music Generation

Audio/Music Generation

Engineered to echo emotion. We engineer models that generate, remix, and clone audio with precision—balancing fidelity, intent, and creative flow.

  • Music Generation & Mixing
  • Voice Cloning

what we offer

We make GenAI work for you

Text Generation
Text Generation

Your data has its own dialect. We build LLM-based systems that speak your domain’s language—relevant, refined, and ready for action.

  • ChatGPT like Chatbots
  • Retrieval System (RAG)
  • NLIDB
  • Text-to-Code
Multi-modal Intelligence
Multi-modal Intelligence

Not just cross-modal, but cross-intent. We design systems that fluidly reason across text, image, and structure—to mirror real-world complexity.

  • GPT- 4
  • Multi-sensory Inputs
Autonomous Intelligence
Autonomous Intelligence

Autonomous, accountable, and always learning. We build intelligent agents that collaborate, adapt, and execute—at scale and in sync with your business goals.

  • Agentic AI
  • Model Context Protocol (MCP)
Image Generation
Image Generation

Where creativity meets context. We build GenAI systems that generate and edit images with precision—understanding structure, detail, and intent.

  • Image Editing
  • Text-to-Image
  • Image-to-Image
Video Generation
Video Generation

Motion with meaning. We engineer video-generation models that understand transitions, context, and visual storytelling — not just frames, but flow.

  • Text-to-Video
  • Image-to-Video
  • Video-to-Video
Audio/Music Generation
Audio/Music Generation

Engineered to echo emotion. We engineer models that generate, remix, and clone audio with precision—balancing fidelity, intent, and creative flow.

  • Music Generation & Mixing
  • Voice Cloning

Customers who grew with us

Emtech Grayscale live
Wideorbit
Mist Grayscale live
Layer 6 live
Layer 5 live
Amplify Updated
Roostify Grayscale live
Emtech Grayscale live
Wideorbit
Mist Grayscale live
Layer 6 live
Layer 5 live
Amplify Updated
Roostify Grayscale live

OUR WORK IN ACTION

Helping businesses differentiate with GenAI

Multi-Modal  Increasing Email Engagement

Increasing Email Engagement

An email marketing platform wanted to boost email engagement using AI-generated images and AI subject line helpers.

VIEW
Video  Pose and Expression Transfer in Videos

Pose and Expression Transfer in Videos

A platform for video correspondence wanted to use generative technology to map faces and body movement from celebrity clips for immersive visuals.

VIEW
Text  Creating Support Assistant

Creating Support Assistant

The company providing project flow management software wanted to replace videos and PDFs with an AI chatbot for guiding users through complex Gantt flows.

VIEW
Voice Cloning Artist’s Voice

Cloning Artist’s Voice

An animation company wanted us to use GenAI to create audio software that could mimic artists’ voices.

VIEW
NL2SQL Agentic AI-powered NL2SQL for marketing solutions

Agentic AI-powered NL2SQL for marketing solutions

A B2B partner marketing platform needed a natural language chat interface to simplify campaign execution for both technical and non-technical users.

VIEW
AI Agents  Multi-agent System for an Autonomous Marketing Campaign

Multi-agent System for an Autonomous Marketing Campaign

The customer wanted to automate the entire campaign lifecycle to maximize the return on investment.

VIEW

Our Partners

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Google ML

Customer Speak

Sudhir Menon
testimonial-icon

“What I like most about Talentica is their ability to solve tough, cutting-edge problems with skilled engineers who are proactive and committed. They’ve consistently delivered high-quality products on tight timelines, making them a reliable partner for building innovative solutions from the ground up.”

Sudhir Menon

Co-founder & CPO

Bob Friday
testimonial-icon

“Talentica has been part of the family at Mist, and they have been a key part of our engineering team. They bring us startup spirit and a wide range of required skills like Data Science, AI, Cloud, DevOps, UI, and Embedded.”

Bob Friday

Co-founder & CTO

Carmelle Cadet
testimonial-icon

“For an early-stage startup like ours, Talentica understood what we thought about user needs and the problems we were trying to solve. They imbibed our vision and helped us design and build a product that will sell and get to the market successfully. They brought expertise in emerging technologies like artificial intelligence and blockchain to enable innovation for us.”

Carmelle Cadet

Founder & CEO

Luke Jubb
testimonial-icon

“With Talentica, you get your engineering solution in one place. You can depend on them as you would depend on a family member. It allows you to be confident that all your engineering team needs will be met and grow in one space as opposed to trying to find them (solutions) with individual services or individual skill sets of people from the outside.”

Luke Jubb

President & COO

Meet Our GenAI Expert

Suman Saurav

Senior Software Engineer, Data Science
Alumnus of NIT Agartala

A data scientist with 16+ years of experience, including 5+ years building GenAI solutions—from recommendation engines and agentic RAG systems to production-grade generative AI products. He’s passionate about applying LLMs to solve real-world business challenges across industries.

Meet Our GenAI Expert

DIG DEEPER

Insights from our GenAI ecosystem

ARTICLE
system-image

GenAI Meets SLMs: A New Era for Edge Computing

Pankaj Mendki,
Head of Emerging Technology
WEBINAR
Play Icon Watch Video

Beyond LLMs- The Power and Pitfalls of Multi-Agent AI

Abhishek Gupta,
Principal Data Scientist
ARTICLE
system-image

Why multi-agent AI tackles complexities LLMs can’t

Abhishek Gupta,
Principal Data Scientist
ARTICLE
system-image

GenAI Meets SLMs: A New Era for Edge Computing

Pankaj Mendki,
Head of Emerging Technology
WEBINAR
Play Icon Watch Video

Beyond LLMs- The Power and Pitfalls of Multi-Agent AI

Abhishek Gupta,
Principal Data Scientist
ARTICLE
system-image

Why multi-agent AI tackles complexities LLMs can’t

Abhishek Gupta,
Principal Data Scientist

Technologies

FRAMEWORKS

image 5 1
Mindsdb
Electron
Langchain
TypeScript
PyTorch
Vs Code
LIamaIndex
trino
Hugging Face
TensorFlow
neo4j
Vue.js
Sql

PLATFORMS

Synthesia
Azure
OpenAI
Vertex AI
Amazon Bedrock

LANGUAGE

GO
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FAQs

Our approach is mostly requirement-driven. However, some questions fit most GenAI development processes and help decide the approach. Here they are-

  • How crucial is data privacy? 
  • What is the breakeven point for Open AI services and open-source models?
  • If OpenAI is the platform, then at what rate requests come?
  • What is the cloud environment we are using?
  • Are we okay with not having real-time responses?
  • Can we have open-source models with their own GPUs?
  • Do we have to generate pure images?
  • Do we have to use Llama models or Anthropic?

For effective generative AI implementation, always onboard product engineers with experience in Large Language Models (LLM), Prompt engineering, Agents, and Data Science.

We have deployed more than 15 AI models across industries. The list includes 

  • Image processing models for a marketing platform
  • Audio generation models for entertainment and animation companies
  • Video generation models for a marketing platform
  • Chatbots (RAG-enabled, assistants, and others) for industries like recruitment, IT, and security companies
  • Info extraction models for analytics, retail, and e-commerce companies
  • Automated workflow management for a marketing company

Generative AI has proven its capabilities in terms of improving productivity, managing workflow, and optimizing resource utilization. However, its proper impact depends on four major factors.

  1. ROI—GenAI pilots should establish clear success criteria before launch, focusing on measurable outcomes in two key areas: enhancing customer experience and reducing unit costs. This will help close the gap between their promise and reality.
  2. Data privacy—Security is still a big concern for many companies, particularly tech giants, as they want to prevent data breaches at all costs.
  3. Performance quality and response time- Sometimes, these two factors can adversely affect each other. For instance, while GPT-4o delivers results faster than GPT-4, the quality may be inferior. Prioritizing requirements based on the use case is absolutely necessary.
  4. Human supervision is required to ensure accuracy, ethical compliance, and quality control.

The ideal team composition for a generative AI project includes 

  • Project Manager to oversee timelines and coordinate efforts 
  • Data Scientists to manage data acquisition and preprocessing. 
  • Machine Learning Engineers implement and optimize the models
  • DevOps Engineers handle deployment and maintenance
  • UX/UI Designers focus on user-friendly interfaces
  • QA Engineers validate the software’s performance and reliability
  • Ethics and Compliance Officers ensure adherence to ethical standards, 

This comprehensive team structure can ensure the successful development, deployment, and maintenance of generative AI projects.