Cole Stark, Head of Growth
As the field of data science gets increasingly complex, selecting the best data science tools gets more and more important. The categories discussed here—spanning dashboards, notebooks, spreadsheets, databases, warehouses, programming languages, workflow orchestration tools, and large language models—gives some insight into how rapidly the ecosystem continues to evolve each year.
Making the right choice ultimately depends on your team’s needs, goals, and existing skill sets. For some, the priority may be simplifying data workflows with intuitive dashboards, while for others, the focus might be on notebooks that enhance reproducibility and collaboration. Cloud-based data warehouses can handle big data volumes and complex analytics at scale, while modern spreadsheets and LLMs are reshaping how we think about human-machine interaction in data analysis.
Just as data science and visualization tools have come a long way from their earliest iterations, the coming years will likely bring even more specialization, integration, and innovation. By staying informed and continually reassessing your toolset, you’ll be positioned to leverage new technologies, drive actionable insights, and maintain a competitive advantage. We hope this article helps you discover, evaluate, and adopt the best data science tools in 2024 and beyond.
Last updated: December 18, 2024
Table of contents:
- Dashboards
- Notebooks
- Spreadsheets
- Databases
- Data warehouses, data lakes, data lakehouses, etc.
- Programming languages
- Workflow orchestration
- Large language models (LLMs)
Dashboards
Dashboarding tools are extremely popular across various industries at the moment for how easy it is to create and share interactive data science visualizations and reports. They allow you to create interactive charts, graphs, and reports, often integrating seamlessly with underlying data sources for real-time insights. Dashboards are differentiated on performance, ease of charting, sharing, and integrations. Also included in this list are dashboards built with code rather than just drag and drop.
- Metabase: Metabase in 2024 primarily focuses on business intelligence and data visualization through interactive dashboards, offering limited data science capabilities but maintaining relevance through its user-friendly interface for data exploration and self-service analytics.
- Tableau: Tableau in 2024 combines AI-powered analytics (Einstein Discovery, Ask Data) with Python/R integration for data science, while offering natural language querying and automated insights through Tableau Pulse for enhanced dashboard capabilities.
- Power BI: Power BI in 2024 features AI-powered capabilities including Smart Narratives, Key Influencers, and AutoML for predictive modeling, while its integration with Azure and natural language processing enables advanced analytics through interactive dashboards.
- Streamlit: Streamlit's Python-based dashboard framework enables rapid development of data science applications in 2024, featuring enhanced LLM integration, interactive visualizations, and improved data source connections for efficient analytics deployment.
- Panel: Panel and dashboard technologies in 2024 enable sophisticated data visualization and analytics, with features like interactive displays, real-time data integration, and AI-powered insights making them essential tools for modern data science applications.
- Looker: Looker offers advanced data visualization and business intelligence through customizable dashboards, leveraging Google Cloud's smart analytics platform to provide enterprise-grade data science capabilities for modern business transformation in 2024.
- Sigma: Sigma Computing's 2024 platform features AI-powered analytics with natural language processing for data exploration and dashboard creation, enabling business users to perform advanced data analysis without coding through its cloud-based interface.
- Plotly Dash: Plotly Dash enables rapid development of interactive data science applications through its low-code platform, offering features like Python-based dashboard creation, AI/ML model deployment, and browser-based Data App Workspaces for seamless development and collaboration in 2024.
- Superset: Apache Superset offers modern data exploration and visualization capabilities through its interactive dashboard platform, featuring advanced analytics tools and SQL Lab for data scientists, with continued relevance in 2024 due to its robust open-source community and integration with modern data stacks.
- Redash: Redash offers modern data visualization and SQL querying capabilities through its cloud-based platform, enabling teams to create interactive dashboards and share insights across organizations, though it has limitations with very large datasets.
- Domo: Domo's 2024 platform combines advanced data visualization dashboards with robust data science capabilities, enabling AI-powered predictive analytics and machine learning applications for business intelligence. Its end-to-end tools support model building, production monitoring, and AutoML integration for accelerated development and deployment.
- Kibana: Kibana offers powerful data visualization and analytics capabilities through its interactive dashboards, enabling real-time data exploration and monitoring with advanced search functionality and machine learning features for anomaly detection and forecasting in 2024.
- Mode: Mode's data science capabilities in 2024 feature advanced dashboarding and analytics tools powered by generative AI, enabling collaborative data exploration and self-service analytics through their modern data stack platform that bridges technical and business users.
- Qlik Sense: Qlik Sense combines AI-powered analytics with AutoML capabilities and 170K+ models in 2024, featuring augmented analytics, automated data preparation, and natural language interaction for comprehensive data science applications through its interactive dashboards.
- Chartio: Chartio's dashboard platform integrates advanced data visualization capabilities with modern analytics tools, enabling businesses to create interactive, AI-powered dashboards for data exploration and insights generation.
- Klipfolio: Klipfolio offers robust data visualization and dashboard capabilities, enabling businesses to create interactive analytics dashboards that integrate multiple data sources. In 2024, their platform continues to provide essential business intelligence tools with real-time data monitoring and customizable metrics tracking.
- Yellowfin: Yellowfin's 2024 data science capabilities include Guided Natural Language Query (NLQ) and AI-powered dashboards, enabling data exploration without coding and automated analysis features for actionable insights.
- Zoho Analytics: Zoho Analytics offers AI-powered BI capabilities including natural language querying, predictive analytics, and automated insights, with its 2024 relevance driven by seamless data integration and self-service analytics tools that enable efficient data-driven decision making.
- Cluvio: Cluvio offers interactive dashboards with SQL and R scripting capabilities for data analysis, featuring real-time monitoring, automated visualization suggestions, and SQL editor with code completion to enhance modern data science workflows.
- Periscope Data: Periscope Data, now part of Sisense, offers advanced business intelligence and data visualization capabilities through its dashboard platform, enabling real-time analytics and interactive data exploration for data-driven decision making in 2024.
Notebooks
Notebooks are popular tools for data teams to collaborate on code and run a wide range of experiments and analytics tasks. Notebooks are structured as a series of cells, each of which can contain code, text, and visualizations. Notebooks are differentiated on performance, stability, and features like support for different programming languages, charting, and integrations.
- Jupyter & Jupyter lab: Jupyter Notebooks and JupyterLab remain essential data science tools in 2024, offering interactive computing environments with AI integration, real-time collaboration features, and support for multiple programming languages for data analysis and visualization.
- Colab: Google Colab offers free access to powerful computing resources (GPUs and TPUs) for data science tasks in 2024, featuring automated plot generation, smart data pasting, and seamless integration with machine learning frameworks like TensorFlow and PyTorch.
- Observable: Observable offers a collaborative notebook platform for data science, featuring interactive data visualizations and JavaScript-based analysis tools. In 2024, its relevance stems from its strong community integration and ability to streamline data workflows through features like interactive data tables and database clients.
- Hex: Hex provides a modern collaborative data science platform that combines SQL and Python notebooks with Databricks integration, enabling teams to build interactive data apps and perform advanced analytics with flexible workspace capabilities in 2024.
- Deepnote: Deepnote is an AI-powered collaborative notebook platform enhancing data science workflows through features like real-time collaboration, integrated data analysis tools, and AI-assisted coding capabilities in 2024.
- Zeppelin: Apache Zeppelin provides an integrated notebook environment for data analysis and visualization, offering collaborative features and support for multiple interpreters including Python, SQL, and Scala, making it a relevant tool for data science workflows in 2024.
- Polynote: Polynote is a modern notebook environment that integrates seamlessly with data science workflows, offering real-time code execution and visualization capabilities for Python, Scala, and SQL in 2024.
- nteract: nteract is an open-source notebook platform that enables interactive data science and scientific computing, offering features for code execution, data visualization, and collaborative analysis in a modern interface.
- SageMaker Studio Lab: SageMaker Studio Lab and Notebook provide a comprehensive data science environment in 2024, offering free browser-based Jupyter notebooks, integrated MLOps tools, and enhanced features like real-time collaboration and automated model deployment for efficient ML development.
- RStudio: Posit (formerly RStudio) offers enterprise-grade tools for data science in 2024, featuring integrated notebook environments that support both R and Python, with advanced capabilities for deploying and sharing data science work through platforms like RStudio Connect and cloud infrastructure.
- Wolfram Notebooks: In 2024, Wolfram Notebooks provide a comprehensive data science platform featuring integrated machine learning, interactive visualization, and LLM capabilities, enabling diverse computational workflows through its unified Wolfram Language environment.
- Papermill: Papermill enables automated notebook execution and parameterization for data science workflows, making it a valuable tool for reproducible analysis and pipeline automation in 2024. Its integration with various notebook platforms enhances scalability and efficiency in modern data science applications.
- Voilà: Voilà transforms Jupyter notebooks into standalone web applications, offering interactive widgets and secure data visualization capabilities. In 2024, it remains a vital tool for data scientists to share reproducible analyses and interactive dashboards without exposing underlying code.
Spreadsheets
While traditional spreadsheets have long been a cornerstone of analytics, modern data science spreadsheets now integrate AI capabilities, SQL queries, and Python scripting. These enhancements position today’s spreadsheets among the best data science tools, offering intuitive interfaces, powerful computations, and seamless spreadsheet integrations. Whether you’re exploring best free data science tools or seeking enterprise-grade solutions, updated spreadsheet platforms can serve as a key component in your data science toolkit.
- Quadratic: Quadratic combines modern spreadsheet functionality with advanced data science capabilities, featuring built-in Python, SQL, and JavaScript support alongside AI-powered analytics for efficient data processing and analysis, making it one of the best data science tools available.
- Google Sheets: Google Sheets integrates AI-powered features like Simple ML for machine learning tasks and Connected Sheets for BigQuery integration, enabling users to perform data analysis, predictions, and anomaly detection directly within spreadsheets without coding expertise.
- Microsoft Excel: Microsoft Excel in 2024 features AI-powered Copilot for enhanced data analysis and visualization, while integrating Python capabilities for advanced data science applications, making it relevant for both basic analytics and more complex data manipulation tasks.
- Apple Numbers: Apple Numbers offers data analysis features like pivot tables, XLOOKUP, and 250+ built-in functions for basic data manipulation, though its 2024 relevance is primarily for everyday data management and visualization within the Apple ecosystem rather than advanced data science applications.
- LibreOffice Calc: LibreOffice Calc offers basic data analysis capabilities through its spreadsheet functions, statistical tools, and visualization features, with recent additions like sparklines and neural network extensions through Neuronica. While not a dedicated data science platform, it remains relevant in 2024 as a free, open-source tool for fundamental data analysis tasks.
- Equals: Equals offers modern spreadsheet functionality enhanced with AI-powered data analysis capabilities, enabling users to perform advanced data science tasks through an intuitive interface. The platform combines traditional spreadsheet features with machine learning capabilities, making data analysis more accessible and efficient in 2024.
- Rows: Rows offers a modern spreadsheet platform with integrated AI capabilities, enabling automated data analysis and machine learning model deployment through a user-friendly interface. Their platform supports collaborative data science workflows with features like automated insights generation and real-time data processing in 2024.
Databases
Databases are the backbone of any data infrastructure. They are responsible for storing, retrieving, and managing data in a structured format. Databases are differentiated on use-cases, spanning everything from simple key-value stores to complex graph databases for real-time analytics, structured data, unstructured data, and everything in-between.
- Postgres: PostgreSQL offers advanced data science capabilities through extensions like PostgresML and pgvector, enabling direct ML model training and deployment within the database, while its scalability and integration with modern analytics tools make it highly relevant for 2024's data-driven applications.
- MySQL: MySQL HeatWave offers integrated in-database machine learning (AutoML) capabilities in 2024, allowing users to build models using SQL commands with 25x faster performance than competitors. Its features include automated ML lifecycle management, real-time analytics, and support for large datasets up to 400TB through its LakeHouse functionality.
- MongoDB: MongoDB's Atlas platform features advanced data science capabilities including Vector Search and real-time analytics, while its AI Application Program (MAAP) and partnerships with companies like Databricks enable seamless integration for AI/ML applications and app-driven analytics in 2024.
- Redis: Redis Enterprise combines real-time AI model serving capabilities through RedisAI with ultra-fast data processing, enabling sub-millisecond performance for ML operations including fraud detection, recommendations, and anomaly detection while supporting major AI backends like TensorFlow and PyTorch.
- SQL Server: Microsoft SQL Server offers advanced data science capabilities through Azure Synapse Link for real-time analytics and built-in machine learning services, enabling in-database Python and R code execution for seamless data analysis and AI model deployment in 2024.
- SQLite: MindsDB enables in-database machine learning directly within SQLite databases, offering features like low-latency predictions via SQL joins and integration with BI tools, making it a powerful solution for database-centric data science in 2024.
- DuckDB: DuckDB is an open-source analytical database system offering high-performance data processing through its columnar-vectorized engine, with seamless integration for Python and R, making it a powerful tool for data science applications in 2024.
- Cassandra: DataStax's Apache Cassandra-based platform offers scalable database solutions with real-time processing capabilities, particularly relevant in 2024 for vector database applications and RAG (Retrieval Augmented Generation) implementations.
- MariaDB: MariaDB integrates with MindsDB to offer in-database machine learning capabilities, enabling direct AI model building and deployment through SQL, while its columnar storage and MPP architecture support real-time analytics on massive datasets for modern data science applications.
- Elasticsearch: Elasticsearch combines advanced machine learning capabilities with vector search and NLP features, offering AI-powered analytics and search solutions in 2024. Its database platform integrates with LLMs and supports semantic search, anomaly detection, and forecasting for diverse data science applications.
- Neo4j: Neo4j's Graph Data Science platform features 65+ pre-tuned algorithms and ML models, with AuraDS offering fully managed, scalable instances for enterprise-grade graph analytics and seamless data science operations in 2024.
- Couchbase: Couchbase offers a distributed NoSQL database with built-in analytics capabilities, enabling real-time data processing and AI-driven insights. Their platform integrates machine learning features for intelligent data management and automated optimization in 2024.
- InfluxDB: InfluxDB excels in time-series data management and analysis, offering robust features for high-speed data ingestion, real-time analytics, and integration with data science tools like Python and TensorFlow for applications including anomaly detection and forecasting.
- Cockroach DB: CockroachDB offers a distributed SQL database with advanced features for scalable data management and processing in 2024, including Change Data Capture (CDC) transformations and multi-cloud capabilities that support data-intensive applications requiring high availability and performance.
- Firebird: Firebird, as an open-source relational database management system, offers robust performance and scalability for both OLTP and OLAP applications in 2024, featuring comprehensive SQL support and stored procedures, though it lacks explicit data science-specific features.
- RavenDB: RavenDB offers advanced NoSQL database capabilities with time series querying, spatial indexing, and full-text search features in 2024. Its data science applications include efficient data manipulation through compare-exchange indexing and flexible management tools, though its primary strength lies in operational database management rather than specialized data science functionality.
- ArangoDB: ArangoDB offers advanced graph analytics and machine learning capabilities through ArangoGraphML and ArangoML, featuring built-in NLP support, GPU-accelerated processing, and specialized tools for tasks like fraud detection and recommendation systems in 2024.
- TimescaleDB: TimescaleDB is a PostgreSQL-based time-series database offering high-performance data science capabilities with 10-100x faster queries and advanced compression (80-95% storage savings). Its 2024 relevance stems from robust support for large-scale time-series analysis, machine learning applications, and real-time analytics across IoT, finance, and observability domains.
- Dgraph: Dgraph offers native GraphQL support and distributed graph database capabilities, with recent integration of Retrieval Augmented Generation (RAG) making it particularly relevant for AI-powered data science applications in 2024. Its scalability and efficient handling of complex graph data structures support modern data science workflows.
- Fauna: Fauna offers a distributed database with limited documented data science capabilities as of 2024. While it provides database functionality, there is insufficient public information about specific data science features or applications in their current product offering.
- CrateDB: CrateDB is a distributed SQL database offering real-time data processing and analysis capabilities, with features including support for diverse data types, fast aggregations, and built-in search functionality, making it particularly relevant for IoT, time series analysis, and large-scale data science applications in 2024.
- TiDB: TiDB, developed by PingCAP, offers real-time HTAP (Hybrid Transactional/Analytical Processing) capabilities and distributed SQL database features, enabling efficient data science applications through scalable analytics and AI workflow support in 2024.
- Druid: Apache Druid, powered by Imply, remains a leading real-time analytics database in 2024, offering sub-second query response times on petabytes of data with features like high-concurrency support and advanced analytics capabilities through Apache Arrow and Flight SQL integration.
Data warehouses, data lakes, data lakehouses, etc.
This category is rapidly evolving and receiving new entrants all the time. It is worth noting the difference between the 3 categories, as it can get a little blurry. Data warehouses: optimized for structured data, frequently used for reporting and analytics workflows. Data lakes: optimized for unstructured data, frequently used for storing large amounts of data that is not yet structured. Data lakehouses: attempt to combine the best of both worlds, seeking to offer data lake flexibility with warehouse capabilities.
- Snowflake: In 2024, Snowflake excels in data science through Snowpark's Python integration and ML tools, enabling seamless development and deployment of AI/ML models across its unified data warehouse, lake, and lakehouse platform.
- BigQuery: Google BigQuery combines advanced data warehousing with built-in ML capabilities, offering seamless integration with Vertex AI and support for diverse data types. In 2024, it's recognized as a leader in data lakehouses by Forrester Wave™, featuring enhanced Lakehouse Foundation and optimized data workflows for AI/ML applications.
- Athena: Athena Intelligence offers an AI-native analytics platform that seamlessly integrates with data warehouses, data lakes, and lakehouses, providing automated analytics and insights generation through natural language processing and machine learning capabilities in 2024.
- Redshift: AWS Redshift enhances data science capabilities in 2024 with AI-powered optimizations for improved scaling and cost management across data warehouses and lakes, featuring automated sharding and advanced analytical workload support.
- Databricks: Databricks' Data Intelligence Platform unifies data warehouses, lakes, and lakehouses, enabling efficient AI/ML model deployment with a 1018% year-over-year increase in production models and 377% growth in LLM customization via vector databases in 2024.
- Delta Lake: Databricks' Delta Lake technology combines data warehouse performance with data lake flexibility, offering ACID transactions and unified data management. In 2024, it remains highly relevant for data science applications through features like MLflow integration, real-time processing, and support for diverse data workloads.
- Dremio: Dremio's cloud-based data lakehouse platform offers unified access to data across warehouses, lakes, and lakehouses, with SQL query engine capabilities and metadata management services, enabling efficient data analysis and machine learning applications in 2024.
- Starburst: In 2024, Starburst enhances data science capabilities through AI-powered features including text-to-SQL and SQL-to-text transformations, while enabling unified analytics across data warehouses, lakes, and lakehouses with near real-time streaming analytics and automated governance.
- Clickhouse: ClickHouse excels in real-time analytics and machine learning data processing, offering features like vector search, in-database AI inference through UDFs, and petabyte-scale model training capabilities, making it a powerful platform for data science applications in 2024.
- Cloudera: In 2024, Cloudera enhances its data platform with three new AI assistants for SQL, data visualization, and ML model deployment, while offering comprehensive data lakehouse capabilities that combine data lake and warehouse functionalities for efficient, scalable, and secure data management.
- Hive: Hive AI offers a comprehensive data science platform with advanced data labeling, pre-trained models, and media analytics capabilities, enabling efficient processing across data warehouses and lakes while supporting diverse applications from autonomous driving to retail analytics in 2024.
Programming languages
In surveying career listings from the top employers of data roles, SQL and Python remain the most common programming languages. Technologies like Spark and dbt are also pushing opinionated frameworks on top of existing technologies.
- SQL: SQL remains a fundamental data science tool for structured query execution, enabling efficient data manipulation, aggregation, and analysis. In 2024, its integration with modern data platforms and ML frameworks ensures it continues to be vital for managing large datasets and powering analytics workflows.
- Python: Python stands out as one of the best Python tools for data science, offering a rich ecosystem of libraries (like Pandas, NumPy, and scikit-learn) that support everything from data cleaning to machine learning. Its flexibility, readability, and vast community make it indispensable for both beginners and experts in data science.
Others, more niche:
- R: R provides a wide range of statistical and visualization packages tailored for data science tasks, making it highly appealing for exploratory data analysis and advanced modeling. In 2024, it remains a top choice in academia and specialized industries, where its deep analytical capabilities and robust packages like ggplot2 and dplyr shine.
- Scala: Scala offers a powerful, type-safe environment often used with Apache Spark for distributed computing, enabling large-scale data processing and advanced analytics. Its functional and object-oriented paradigms help data science teams write concise, scalable code suited for complex ETL and machine learning pipelines.
- Julia: Julia excels in numeric and scientific computing, offering near C-level performance with dynamic typing. Its growing ecosystem and native support for parallelism make it an emerging favorite for performance-critical data science workflows and advanced research projects in 2024.
- SAS: SAS remains a staple in many enterprise environments, offering a mature platform for statistical analysis, forecasting, and reporting. Although it faces competition from open-source tools, SAS continues to be trusted for mission-critical applications, regulatory compliance, and controlled production analytics.
Workflow orchestration
Workflow orchestration platforms are key AI tools for data science, ensuring that each component in your analytics pipeline runs efficiently and reliably. By automating tasks and managing complex dependencies, these tools help you integrate the best data science tools—dashboards, notebooks, warehouses—into a coherent, scalable ecosystem. The result is smoother operations, reduced errors, and faster insights delivery.
- Airflow: Apache Airflow remains a leading workflow orchestration platform in 2024, featuring Python-based pipeline definition and extensive integration with AI/ML tools. Its dynamic task mapping and data-dependent scheduling capabilities make it essential for modern data science workflows, particularly in orchestrating ML model deployment and complex data pipelines.
- Luigi: Luigi is a Python-based workflow orchestration tool that remains relevant in 2024 for managing complex data science pipelines, offering reliable task execution and dependency management for batch jobs, though its development has slowed compared to newer alternatives.
- Prefect: Prefect remains a leading workflow orchestration platform in 2024, offering robust Python-based data pipeline automation and seamless cloud integration capabilities that enhance data science workflows through efficient pipeline management and scalability.
- Dagster: Dagster is a modern workflow orchestration platform featuring software-defined assets and integrated data quality monitoring, enabling efficient development and deployment of data science pipelines in 2024. Its asset-centric approach and declarative scheduling capabilities make it particularly relevant for managing complex data environments and ML workflows.
- Celery: Celery specializes in workflow orchestration with robust data science integration capabilities, enabling automated task scheduling and pipeline management for data science workflows in 2024.
- Metaflow: Metaflow, originally developed at Netflix, remains a powerful workflow orchestration framework in 2024, enabling data scientists to efficiently build and deploy ML applications with features for seamless data handling, computation management, and production deployment using AWS services.
- Kubeflow: Kubeflow provides robust workflow orchestration for ML operations in 2024, offering advanced features like pipeline caching, unified training operators, and seamless model deployment capabilities that enable scalable end-to-end machine learning workflows in production environments.
- Flyte: In 2024, Flyte stands as a powerful Kubernetes-native workflow orchestration platform, enabling scalable ML and data pipelines with features like strongly-typed interfaces, multi-language support, and automated resource management for efficient data science operations.
Large language models (LLMs)
Large Language Models are the backbone for the best AI tools for data science, enabling advanced natural language processing and automated insights generation. These models can integrate with other tools—such as notebooks, spreadsheets, and visualization tools—to rapidly accelerate analytics, enhance interpretability, and reduce time-to-value. As data science continues to evolve, LLMs are reshaping how analysts and data scientists interact with information.
With the rise of LLMs, it's now not uncommon to see experience with LLMs tacked onto the "nice to haves" in job listings.
- Llama: Llama is a family of large language models developed by Meta, offering robust natural language understanding and generation capabilities. In 2024, Llama models can be fine-tuned on custom datasets, integrated into data science workflows for automated analysis, and used to enhance business applications through advanced conversational AI and reasoning.
- OpenAI ChatGPT: OpenAI's ChatGPT, powered by advanced LLMs, showcases cutting-edge natural language processing capabilities in 2024 through features like GPT-4, multimodal processing (voice and vision), and enterprise-grade integrations, demonstrating significant relevance across diverse data science applications including automated analysis, code generation, and conversational AI.
- Anthropic Claude: Anthropic's Claude 2.1 features a 200,000-token context window and advanced reasoning capabilities, with improved accuracy and reduced hallucination rates for data science applications. Its integration capabilities and spreadsheet features make it a powerful tool for complex analysis and prompt engineering in 2024.
- X Groq: Groq specializes in accelerating LLM processing through their LPU™ Inference Engine, offering high-speed AI model deployment via GroqCloud. Their platform supports various Meta Llama models and focuses on optimizing AI inference for rapid, low-latency applications in 2024.
- Mistral: Mistral AI leads in LLM development with their Mistral Large model featuring 32K token context window and multilingual capabilities, while offering both open-source and proprietary models that rival GPT-3.5 in performance, making them a significant player in the 2024 AI landscape.
- Google Gemini: Google's Gemini, a multimodal LLM, showcases advanced capabilities in data analysis, code generation, and reasoning across three versions (Ultra, Pro, Nano), powering diverse applications through integration with Google Cloud's AI tools and products in 2024.
Conclusion
The data science toolkit continues to grow in depth and breadth. As we’ve seen, today’s best data science tools span a wide range of functionalities—from intuitive dashboards and collaborative notebooks to powerful warehouses and specialized programming languages. Selecting the right combination depends on your goals, skill sets, and data volume. By staying informed and open to new technologies, you can maintain an adaptable, competitive edge and drive meaningful insights in an ever-evolving field.