Smart Automations for Smart Companies

Supercharge your organization with customized, cutting-edged AI solutions tailored to your workflow, edge-case, and knowledge base.

Explore pre-built use-cases

Sales automation

From personalization to lead generation, scoring, CRM automation & forecast predictions, we offer end-to-end solutions using various AI models to scale your sales endeavors effortlessly.   

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Marketing Growth

Omniloop marketing stack automates various aspects of marketing: research, marketing segmentation, content creation, optimization, and
more.

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Customer Journey

Enhance a more personalized, efficient, and satisfying experience that drives better customer experience through high-end personalization, trained chatbots, sentiment analysis.

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Build your AI-powered automation in minutes

The power of Smart Automation, at your fingertips.

1. Define

Set your goals, and feed data for your workflow context

2. Design

Automatically get a visual representation of your workflow

3. Approve

Fine-tune your workflow & set specific instructions to better suit your needs

4. Deploy

Test & deploy your AI that will self-adapt according to your business goals

Fine tune with your own data & objectives

Connect with relevant data sources, helping you collect, buy or create datasets compatible with your AI models.

Improved Model Security
Fast & Intuitive
Secure & Scalable
Customizable Learning

Current stats about Omniloop's aggregator  

20+

Use-cases Implemented

120k+

AI models integrated

20k+

Data-sets available

10+

Partners in crime

Interoperable with all the apps you need

Save time and avoid excessive switching between apps with Omniloop's integrations. New app integrations may require additional costs.

FAQ

Expertise; Our diverse team of AI experts, data scientists, and business consultants have a deep understanding of this landscape and are committed to helping your agency unlock the full potential of AI.

Customizable Solutions: We offer tailored AI solutions that can seamlessly integrate with your existing tools and processes, ensuring maximum impact and minimal disruption.

Proven Success: We have a track record of delivering AI-driven solutions that already drive results for our clients, with demonstrable improvements in efficiency, engagement, and ROI.

Dedicated Support: Our partnership goes beyond project delivery. We provide ongoing support, training, and maintenance to ensure the long-term success of your AI initiatives.

Define the objective: Clearly outline the specific problem that the AI model aims to solve or the question it seeks to answer. This helps determine the type of AI model required, such as classification, regression, or clustering.

Collect and prepare the data: Gather relevant data from various sources, such as databases, APIs, or external data providers. Ensure that the data is clean, well-structured, and diverse enough to represent the problem space. Data preparation may involve handling missing values, removing duplicates, and transforming data into a suitable format for the AI model.

Split the data: Divide the dataset into separate subsets for training, validation, and testing. The training set is used to build the AI model, the validation set helps optimize the model and select the best hyperparameters, and the test set evaluates the model's performance on unseen data.

Feed the training data into the chosen AI model, allowing it to learn patterns and relationships within the data. The model iteratively updates its internal parameters to minimize the difference between its predictions and actual outcomes, using techniques such as gradient descent or backpropagation.

Validate and tune the model: Evaluate the model's performance on the validation set and adjust its hyperparameters to optimize its accuracy, precision, recall, or other relevant metrics. This process may involve techniques like cross-validation or grid search to find the best hyperparameter values.

Evaluate the AI model: Test the model's performance on the previously unseen test set to get an unbiased estimate of its generalization capabilities. Compare the model's results to a baseline or industry benchmarks to determine its effectiveness.

Deploy the AI model: Once the model's performance is satisfactory, deploy it into production, either on-premises or in the cloud. Integrate the model with existing systems, applications, or APIs to enable it to make predictions or decisions in real-time.

Monitor and maintain the AI model: Continuously monitor the AI model's performance and make updates as needed to account for changes in data patterns or business requirements. Regularly retrain the model with new data to ensure its ongoing relevance and accuracy.

At Omniloop, we place paramount importance on the security of AI systems, ensuring the protection of sensitive data and safeguarding against potential threats or vulnerabilities. We implement rigorous security measures at every stage of the AI development process, from data collection and storage to model training and deployment. Our approach includes robust data encryption, secure access control, continuous monitoring, and regular security audits.

Not sure how to start?

Book a free consultation to figure out what and how can AI systems
optimize your workflows.