Tworzenie rozwiązań w zakresie uczenia maszynowego

While others sell the promise of AI, we implement it, ready for battle. Innowise digs into data, teaches machines to think, see, and catch anomalies, and tames LLMs inside your corporate systems. You capitalize on smoother processes and lower expenses.

300+

AI & big data experts

100+

machine learning projects completed

85%+

specjalistów na poziomie senior i mid

While others sell the promise of AI, we implement it, ready for battle. Innowise digs into data, teaches machines to think, see, and catch anomalies, and tames LLMs inside your corporate systems. You capitalize on smoother processes and lower expenses.

300+

AI & big data experts

100+

machine learning projects completed

85%+

specjalistów na poziomie senior i mid

Wartość
Usługi
Rozwiązania
Branże
Zgodność z przepisami
Podejście
Stack technologiczny

Odmień swoją firmę dzięki profesjonalnym usługom ML development

Machine learning injects intelligence into your key processes, and that’s where business impact begins.

25%

improvement in logistics efficiency

ML-based analytics help forecast demand and consumption more precisely.

10x

szybsze przetwarzanie dokumentów

LLM ensures automated classification, data extraction, and contract summation.

35%

reduction in QA costs

Computer vision tools level up production visual control and sorting.

60%

fewer fraud and failure-related losses

ML models drive instant anomaly detection in transactions and equipment operations.

20%

increase in client LTV

Predictive models help identify churn risk early and deliver personalized offers.

up to 80%

optimization of routine tasks

Your employees no longer have to handle manual data entry, ticket classification, and other routine tasks.

Hays logo.Spar logo. Tietoevry logo. BS2 logo. Digital science logo. CBQK.QA logo. Topcon logo.NTT Data logo. Familux Resorts logo. LAPRAAC logo.
Hays logo.Spar logo. Tietoevry logo. BS2 logo. Digital science logo. CBQK.QA logo. Topcon logo.NTT Data logo. Familux Resorts logo. LAPRAAC logo.
Hays logo.Spar logo. Tietoevry logo. BS2 logo. Digital science logo. CBQK.QA logo.
Hays logo.Spar logo. Tietoevry logo. BS2 logo. Digital science logo. CBQK.QA logo.
Topcon logo.NTT Data logo. Familux Resorts logo. LAPRAAC logo.
Topcon logo.NTT Data logo. Familux Resorts logo. LAPRAAC logo.

ML solutions we build

Gain smart assistants capable of multi-step reasoning and automatic task execution to reduce manual work and compress decision cycles.

Predictive analytics and forecasting

See what’s coming ahead with Innowise-built models for demand prediction, risk modeling, trend analysis, and scenario planning, which means fewer cost surprises.

We train machines to see and understand the world, far beyond face recognition. Our models are used in quality control, security, medical image analysis, and more.

Przetwarzanie języka naturalnego (NLP)

For text-intensive workflows, our NLP solutions classify text, detect sentiment, analyze documents, and power chatbots to extract insights quickly.

Systemy rekomendacji

Our solutions learn user behavior and offer relevant, ranked content or products. Users may not even notice, but they keep coming back, building long-term loyalty.

Fraud and anomaly detection

Finding the “needle in a haystack” in real time is possible with ML. Innowise systems monitor transaction and IoT data 24/7, triggering alerts on anomalies.

Dynamiczne silniki cenowe

Capture more revenue with real-time pricing. Our price optimization engines use live demand, competition, and behavior to improve margins and decision-making.

Intelligent document processing

Compress weeks of manual work into hours. Backed by ML, contracts, invoices, and other documents are processed much faster with no errors.

Decision intelligence platforms

We combine all essentials for data-backed solutions: ML models, dashboards, automated recommendations, and more to support executive-level decisions.

Toniesz w rozproszonych danych?

ISO-27001. ISO-9001 AICPA SOC. RODO EU ACT HIPAA Compliant. nist ai rmf. data protection act.
ISO-27001. ISO-9001 AICPA SOC. RODO EU ACT HIPAA Compliant. nist ai rmf. data protection act.
ISO-27001. ISO-9001 AICPA SOC. RODO
ISO-27001. ISO-9001 AICPA SOC. RODO
EU ACT HIPAA Compliant. nist ai rmf. data protection act.
EU ACT HIPAA Compliant. nist ai rmf. data protection act.

Skorzystaj z profesjonalnej konserwacji algorytmów uczenia maszynowego

Innowise Centrum danych i AI, unites 300+ top minds in machine intelligence who forge production-ready AI, whatever the challenge. Backed by 200+ AI-enabled projects, our ML software development company builds smart systems tailored to your use cases and infrastructure, so you see real returns.

Nasze podejście do machine learning developmentu

Innowise, a machine learning software development firm, takes a structured approach to building ML systems by combining expertise in data science, MLOps, and model architecture to deliver solutions that are accurate, scalable, explainable, and resilient.

Analiza wymagań

We translate your business problems into ML objectives and break them down into structured tasks to build a roadmap for models that deliver value.

Przygotowanie danych

Before any model sees the light of day, we prepare the data: cleaning, structuring, and organizing it into a format that a machine can learn from.

Inżynieria funkcji

After the data has been cleaned and unified, we define the features for the model training and validation to make it accurate and robust.

Tworzenie modeli

We select the appropriate ML algorithms, then train the model, tune its parameters, and validate its performance to ensure it meets real-world requirements.

Wdrożenie modeli

Once the ML model is developed, we deploy it into your infrastructure. This involves building APIs or batch processes that integrate your systems with the model.

Konfiguracja modeli

Since models don’t reach optimal performance after a single tuning cycle, we continue to monitor, refine, and retrain them to retain accuracy over time.

OUR TEAM
Cohesive ML. Zero disruption

We align ML with compliance, governance, and infrastructure so it fits naturally.

Opinie naszych klientów

Wszystkie referencje (54)

"Współpraca z Innowise była dokładnie tym, czego potrzebowaliśmy, aby ożywić naszą agentową platformę internetową. Połączyli silną wiedzę z zakresu blockchain i sztucznej inteligencji z doskonałymi możliwościami integracji i wnieśli cenne powiązania, co czyni ich niezawodnym partnerem".
Sergei Gorovenko
Założyciel, HAIA
5.0
Zobacz szczegóły projektu
Innowise zapewnił, że platforma była nie tylko funkcjonalna, ale także zoptymalizowana pod kątem wydajności i skalowalności. Stworzyli wysokiej jakości kod, który był czysty, wydajny i dobrze udokumentowany. Wyróżnia ich proaktywne rozwiązywanie problemów i wyjątkowa biegłość techniczna.
Sormy Curpen
CPO i współzałożyciel, Cohora
5.0
Przeczytaj całą recenzję
Zobacz szczegóły projektu
Zespół Innowise szybko zintegrował się z naszymi procesami i stał się niezawodnym rozszerzeniem naszego wewnętrznego zespołu. Ich specjaliści wykazali się dużym profesjonalizmem, odpowiedzialnością i jasnym zrozumieniem naszych celów biznesowych.
Ohad Israeli
Wiceprezes ds. badań i rozwoju, Sweetch Health Ltd.
5.0
Przeczytaj całą recenzję
Zobacz szczegóły projektu

Our machine learning tech stack

  • Języki programowania
  • Frameworki uczenia maszynowego
  • Frameworki uczenia głębokiego
  • LLM & generative AI tools
  • Data engineering platforms
  • MLOps
  • AWS
  • Microsoft Azure
  • Google Cloud

Języki programowania

Frameworki uczenia maszynowego

iconScikit-learn
iconXGBoost
iconLightGBM
iconCatBoost

Frameworki uczenia głębokiego

iconPyTorch
iconTensorFlow
iconKeras

LLM & generative AI tools

iconHugging Face Transformers
iconLangChain
iconLlamaIndex
iconOpenAI APIs
iconLlama
iconFalcon
iconMistral

Data engineering platforms

iconApache Spark
iconHadoop
iconDatabricks
icon Snowflake
iconApache Airflow

MLOps

iconMLflow
iconKubeflow
iconWeights & Biases
iconDocker
iconKubernetes
iconGitHub Actions
iconGitLab CI
iconJenkins

AWS

iconVertex AI
iconAmazon Transcribe
iconAmazon Polly
iconGoogle AI for documents
iconGoogle AI for industries

Microsoft Azure

iconAzure Machine Learning
iconAzure Cognitive Services
iconAzure AI Bot Service
iconMicrosoft Foundry

Google Cloud

iconAmazon SageMaker
iconAmazon Transcribe & Polly
iconGoogle Document AI
iconGoogle AI for Industries

Języki programowania

Frameworki uczenia maszynowego

iconScikit-learn
iconXGBoost
iconLightGBM
iconCatBoost

Frameworki uczenia głębokiego

iconPyTorch
iconTensorFlow
iconKeras

LLM & generative AI tools

iconHugging Face Transformers
iconLangChain
iconLlamaIndex
iconOpenAI APIs
iconLlama
iconFalcon
iconMistral

Data engineering platforms

iconApache Spark
iconHadoop
iconDatabricks
icon Snowflake
iconApache Airflow

MLOps

iconMLflow
iconKubeflow
iconWeights & Biases
iconDocker
iconKubernetes
iconGitHub Actions
iconGitLab CI
iconJenkins

AWS

iconVertex AI
iconAmazon Transcribe
iconAmazon Polly
iconGoogle AI for documents
iconGoogle AI for industries

Microsoft Azure

iconAzure Machine Learning
iconAzure Cognitive Services
iconAzure AI Bot Service
iconMicrosoft Foundry

Google Cloud

iconAmazon SageMaker
iconAmazon Transcribe & Polly
iconGoogle Document AI
iconGoogle AI for Industries
Artsiom Kozak

According to the PluralSight AI Skills Report, 97% of companies using AI technology reported an increase in productivity, service quality and accuracy. Machine learning went from being a nice-to-have to a critical component of business operations. The focus is now less on creating models that “look good” when built in a lab, but on building systems that are living organisms that can learn and react to deliver real-world performance in the environments they operate, helping achieve measurable outcomes.

Kierownik Działu Big Data

FAQ

Pricing for machine learning app development typically ranges from $40,000 to $200,000. Costs vary based on data preprocessing methods used; model architecture being used (regression, CNN, transformer models, etc.); infrastructure choices (cloud or on-prem); and complexity of integrating machine learning with existing systems.

The time varies, but in general, simple models with clean data can be built in a matter of weeks compared to real-world projects, which can take half a year or more. Much of the time is spent wrangling messy data, creating meaningful features, fine-tuning hyperparameters, and putting the ML model through multiple testing scenarios.

As an experienced machine learning development company, we first analyze the data, looking for imbalances or biases that could affect model performance. We fine-tune them by adjusting the data weights or applying adversarial debiasing to enable the machine learning model to treat different data groups equally. In addition, we utilize explainability tools such as SHAP to evaluate and understand model predictions, and keep monitoring the model to detect new forms of bias.

ML is a subset of AI, and it focuses on learning through experience (via data) by identifying trends and patterns to predict the future. AI is a more extensive set of algorithms including rule-based logic, NLP, and robotics. Today, most businesses that refer to "AI" are indeed referring to ML.

If you produce data, then you can employ machine learning. It powers predictive maintenance in manufacturing, risk scoring in financial institutions, and personalization in e-commerce. These are just a few examples of how you can use it to reduce costs and improve customer experience.

For traditional or supervised machine learning, you need structured, labelled data; for natural language processing (NLP), text data; for images, unstructured data; and for audio, either unstructured or labelled data. Your data should reflect real-world conditions so your models don’t create bias or unreliable results.

Both. We typically start with pre-trained models and fine-tune them on your data, reserving custom machine learning development services for specialized domains where off-the-shelf models fall short.

Models are packaged as APIs, containerized, and deployed in a way that eliminates potential failure. Integration aligns with your existing CI/CD, security, and monitoring infrastructure.

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    Co dalej?
    1

    Po otrzymaniu i przetworzeniu zgłoszenia skontaktujemy się z Tobą, aby szczegółowo opisać projekt i podpisać umowę NDA w celu zapewnienia poufności.

    2

    Po zapoznaniu się z Twoimi potrzebami i oczekiwaniami, nasz zespół opracuje projekt wraz z zakresem prac, wielkością zespołu, wymaganym czasem i szacunkowymi kosztami.

    3

    Zorganizujemy spotkanie w celu omówienia oferty i ustalenia szczegółów.

    4

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