Top Machine Learning Companies in Poland


2 Companies

Plavno is a premier software development house with over 15 years of experience and a highly qualified team of experts in your industry. Fully-fledged teams of specialists cover each stage of product creation, from product management and analysis to design, development, testing, and ongoing support. We have a unique advantage, our pre-formed full teams work exclusively on products in their specific domains, such as Healthcare, E-Learning, FinTech, Travel & Hospitality, Fleet management and more. Stop struggling with bloated budgets and slow time-to-market. At Plavno, our fully-fledged team provides cost-effective and streamlined solutions that minimize technical debt and maximize your product's potential. With end-to-end support and a proven track record in the SAFe Scaled Agile FramewRead More

  • dollar

    $25-49/hr

  • user

    50 to 99

  • calender

    2007

  • location

    Poland

SCAND Ltd. is a software development company in Warsaw, Poland. The company is focused on custom software development outsourcing across multiple technologies including .NET, Java, PHP, JavaScript, and C++. With more than 20+ years in IT and 700 successful projects for dozens of customers globally and over 250 highly experienced engineers on board, we are rated as one of the top software outsourcing companies in Eastern Europe.

  • dollar

    N/A

  • user

    50 to 249

  • calender

    2001

  • location

    Poland

Frequently Asked Questions

Machine Learning is a subset of Artificial Intelligence that focuses on creating algorithms and statistical models that enable computer systems to improve their performance on a specific task through experience, without being explicitly programmed. It's a key component of AI that allows systems to learn from data and make predictions or decisions.

Machine Learning can provide more adaptive and intelligent solutions compared to traditional software. It can analyze large amounts of data to identify patterns and make predictions, automate complex tasks, personalize user experiences, and continuously improve its performance over time. This can lead to increased efficiency, better decision-making, and new insights for your business.

The main types of Machine Learning are supervised learning, unsupervised learning, and reinforcement learning. Supervised learning uses labeled data to train models, unsupervised learning finds patterns in unlabeled data, and reinforcement learning trains models through a reward-based system. Each type is suited for different kinds of problems and datasets.

Machine Learning has diverse applications across industries. In healthcare, it's used for disease prediction and medical image analysis. In finance, it's applied for fraud detection and algorithmic trading. In retail, it enables personalized recommendations and demand forecasting. Other applications include autonomous vehicles, natural language processing, and predictive maintenance in manufacturing.

Some challenges include the need for large amounts of quality data, potential bias in algorithms, the "black box" nature of some models making decisions difficult to interpret, high computational requirements, and the need for skilled professionals. Additionally, there may be privacy concerns when dealing with sensitive data.

Machine Learning is a broader field that includes various algorithms and statistical methods. Deep Learning is a subset of Machine Learning that uses artificial neural networks with multiple layers (deep neural networks) to model and process complex patterns in data. Deep Learning is particularly effective for tasks like image and speech recognition but often requires more data and computational resources than other Machine Learning methods.

Implementing Machine Learning solutions typically requires a mix of skills including programming (often in languages like Python or R), statistics and mathematics, data analysis, and domain-specific knowledge. Familiarity with Machine Learning algorithms, data preprocessing techniques, and tools like TensorFlow or scikit-learn is also important. Additionally, skills in data visualization and communication are valuable for presenting results to non-technical stakeholders.

Companies new to Machine Learning can start by identifying specific business problems that could benefit from data-driven solutions. They can then explore available datasets, consider hiring or training staff in Machine Learning, or partnering with specialized consultants or service providers. Starting with small, well-defined projects can help build experience and demonstrate value before scaling to larger initiatives.

Ethical considerations in Machine Learning include ensuring data privacy and security, addressing potential biases in training data or algorithms, maintaining transparency in decision-making processes, and considering the societal impact of automated systems. It's important to have clear governance structures and to regularly audit Machine Learning systems for fairness and accuracy.

The cost of Machine Learning solutions can vary widely depending on the complexity of the problem, the amount of data involved, and the required infrastructure. While initial costs may be higher due to the need for specialized skills and potentially more powerful hardware, Machine Learning solutions can often provide long-term cost savings through increased efficiency and automation. However, ongoing costs for data management, model updating, and maintenance should also be considered.