As data professionals, navigating the vast sea of Big Data often leaves us searching for the right tools to harness its potential. Whether we're defining intricate problems, identifying emerging trends, or crafting innovative solutions, the challenge is undeniable. Too often, this quest has us wandering aimlessly through the web, seeking elusive answers.
Here at the DataPro Newsletter team, we understand this all too well. That's why, in celebration of our 100th edition, we're thrilled to present a special gift to our valued readers—a thorough reference module brimming with resources. This carefully curated collection features over 100 of the most popular tools and GitHub repositories. Each one is not only widely used and trusted but is also consistently updated with the latest breakthroughs to enhance your data processing capabilities.
Think of this module as your treasure chest, designed to streamline your workflow and inspire innovative solutions. Bookmark this page for quick access whenever you encounter challenges in any area of data science and machine learning, from DataOps to Recommender Systems to Quantitative Finance—we've got it all covered!
So, dive into this one-stop reference module, explore its depths, and let the spirit of data kinship propel you forward. Here's to more empowering tools and transformative insights from your DataPro team—cheers!
kestra-io/kestra: Kestra is an open-source orchestrator for scheduled and event-driven workflows, leveraging Infrastructure as Code for reliable management.
open-metadata/OpenMetadata: OpenMetadata is a unified platform for data discovery, observability, and governance, featuring a central repository, column lineage, and team collaboration.
dolthub/dolt: Dolt is a SQL database with Git-like version control features, accessible via MySQL or a command line interface.
iterative/dvc: DVC is a tool for reproducible machine learning, enabling data and model versioning, lightweight pipelines, experiment tracking, and easy sharing.
quiltdata/quilt: Quilt allows creating versioned datasets with Python and an S3 bucket. It supports data-driven teams, aiding rapid experimentation and collaboration.
allinurl/goaccess: GoAccess is a real-time web log analyzer for *nix systems and browsers, offering fast HTTP statistics. More details: goaccess.io.
feathersjs/feathers: Feathers is a TypeScript/JavaScript framework for building APIs and real-time apps, compatible with various backends and frontends.
apache/age: Apache AGE extends PostgreSQL with graph database capabilities, supporting both relational SQL and openCypher graph queries seamlessly.
zephyrproject-rtos/zephyr: Real-time OS for diverse hardware, from IoT sensors to smart watches, emphasizing scalability, security, and resource efficiency.
hazelcast/hazelcast: Hazelcast integrates stream processing and fast data storage for real-time insights, enabling immediate action on data-in-motion within unified platform.
WeBankFinTech/Qualitis: Qualitis manages data quality through verification, notification, and management across various data sources, solving data processing-related quality issues.
raystack/optimus: Optimus is a robust workflow orchestrator for data transformation, modeling, pipelines, and quality management, emphasizing ease of use and reliability.
Toloka/crowd-kit: Crowd-Kit is a Python library for crowdsourced annotation, featuring aggregation methods, metrics, and datasets to simplify working with crowd data.
ydataai/ydata-profiling: ydata-profiling offers a streamlined, fast EDA solution akin to pandas' df.describe(), providing detailed DataFrame analysis exportable in formats like HTML and JSON.
cleanlab/cleanlab: cleanlab automates data and label cleaning by detecting issues in ML datasets, enhancing model training with real-world data.
spring-cloud/spring-cloud-dataflow: Spring Cloud Data Flow enables microservices-driven data processing pipelines on Cloud Foundry and Kubernetes, supporting diverse use cases like streaming and batch processing.
ScottfreeLLC/AlphaPy: AlphaPy, a Python ML framework, caters to speculators and data scientists with scikit-learn, pandas, and additional tools for feature engineering and visualization.
retentioneering/retentioneering-tools: Retentioneering simplifies analyzing clickstreams and user paths, offering deeper insights than funnel analysis, benefiting data and marketing analysts.
genular/pandora: PANDORA offers advanced analytics for biomedical research, employing machine learning tools like clustering, PCA, UMAP, and interpretable models for discovery.
nabeel-oz/qlik-py-tools: Qlik's SSE integrates modern data science into Qlik Sense, enabling business users to leverage advanced analytics through Python-based functions.
Lightning-AI/pytorch-lightning: Lightning 2.0 simplifies PyTorch workflows with a stable API, enabling scalable training and deployment of AI models efficiently.
ultralytics/yolov5: YOLOv5 by Ultralytics is a leading vision AI model, built on extensive open-source research and development for advanced performance.
hpcaitech/ColossalAI: Colossal-AI simplifies distributed deep learning with user-friendly tools, enabling easy parallel training and inference similar to local model development.
naptha/tesseract.js: Tesseract.js simplifies OCR with a webassembly-based Tesseract engine, supporting both browser and Node.js environments with easy integration and setup.
microsoft/DeepSpeed: DeepSpeed enables efficient training of models like ChatGPT with significant speed improvements and cost reductions across all scales.
ray-project/ray: Ray is a unified framework that scales AI and Python applications with a distributed runtime and specialized AI libraries.
d2l-ai/d2l-en: An open-source book using Jupyter notebooks to make deep learning accessible, blending concepts, context, and interactive code examples.
Unity-Technologies/ml-agents: Unity ML-Agents enables games and simulations for training intelligent agents with deep reinforcement learning and imitation learning, fostering innovation in AI.
google/trax: Trax is a Google Brain-endorsed deep learning library known for clear code and speed, demonstrated in a Colab notebook.
wandb/wandb: The repository includes a CLI and Python API for visualizing and tracking machine learning experiments effectively.
VowpalWabbit/vowpal_wabbit: Vowpal Wabbit advances machine learning with online, hashing, allreduce, and active learning techniques, pushing the frontier of ML capabilities.
taosdata/TDengine: TDengine is a high-performance, open-source time-series database designed for IoT, connected cars, industrial IoT, and DevOps environments.
timescale/timescaledb: An open-source SQL database for time-series data, optimized for rapid data ingestion and complex querying, available as a PostgreSQL extension.
influxdata/telegraf: Telegraf is an agent for gathering and processing metrics, logs, and data, featuring 300+ plugins and community-driven development for flexibility.
questdb/questdb: QuestDB is an open-source time-series database known for high throughput ingestion, fast SQL queries, and operational simplicity, ideal for various high-cardinality datasets.
ccfos/nightingale: Nightingale is an all-in-one, open-source, cloud-native monitoring system combining data collection, visualization, and alerting capabilities seamlessly.
PrefectHQ/prefect: Prefect simplifies Python data pipeline orchestration, transforming scripts into dynamic workflows that react to changes and ensure resilience.
airbytehq/airbyte: Airbyte, an open-source data integration platform, offers 300+ connectors for seamless ELT pipelines between diverse data sources and destinations.
argoproj/argo-workflows: Argo Workflows orchestrates parallel jobs on Kubernetes via container-native workflows, supporting DAGs and accelerating compute-intensive tasks like ML and data processing.
dagster-io/dagster: Dagster is a cloud-native data pipeline orchestrator with integrated lineage, observability, declarative programming, and robust testability across the lifecycle.
Avaiga/taipy: Taipy simplifies web app development for data scientists & ML engineers using Python, focusing on AI algorithms with no extra languages.
ankane/blazer: SQL-based tool for data exploration, chart creation, dashboard sharing. Supports various data sources, variables, checks, audits, and security integrations.
evidence-dev/evidence: Open-source BI tool uses Markdown with SQL queries for data sourcing, rendering charts, and generating templated, dynamic web pages.
lightdash/lightdash: Empower teams with self-service data insights using dbt: define metrics, visualize data, and share dashboards seamlessly across your organization.
TuiQiao/CBoard: User-friendly open BI platform for self-service reporting and dashboards, simplifying data insights and sharing across teams effortlessly.
quarylabs/quary: BI platform for engineers to connect databases, write SQL for table transformations, create charts, dashboards, and reports with collaboration and deployment capabilities.
netdata/netdata: Real-time metrics collection and visualization for servers, cloud, Kubernetes, and edge/IoT devices, scaling effortlessly across diverse environments.
directus/directus: Open-source API and dashboard for managing SQL database content with REST & GraphQL interfaces, supporting various databases, and customizable for on-premises or cloud deployment.
airbnb/visx: Reusable low-level visualization components combining d3's power with React's DOM updating capabilities for dynamic data visualization.
uber/react-vis: React component library for diverse data visualizations: line, bar, scatter, heatmaps, pie charts, sunbursts, radar charts, and more.
bokeh/bokeh: Interactive visualization library for web browsers, offering versatile graphics creation and high-performance interactivity for large datasets and dashboards.
apache/echarts: Free JavaScript library for intuitive, interactive, and customizable charts, ideal for enhancing commercial products with powerful visualizations.
NicolasHug/Surprise: Python scikit for building recommender systems with explicit rating data, emphasizing experiment control, dataset handling, and diverse prediction algorithms.
gorse-io/gorse: Open-source recommendation system in Go, designed for universal integration into online services, automating model training based on user interaction data.
recommenders-team/recommenders: Recommenders, a Linux Foundation project, offers Jupyter notebooks for building classic and cutting-edge recommendation systems, covering data prep, modeling, evaluation, optimization, and production deployment on Azure.
alibaba/Alink: Alink, developed by Alibaba's PAI team, integrates Flink for ML algorithms. PyAlink supports various Flink versions, maintaining compatibility up to Flink 1.13.
RUCAIBox/RecBole: RecBole, built on Python and PyTorch, facilitates research with 91 recommendation algorithms across general, sequential, context-aware, and knowledge-based categories.
AI4Finance-Foundation/FinGPT: FinGPT is a cost-effective, adaptable financial large language model for quick updates and fine-tuning, enhancing accessibility compared to BloombergGPT.
google/tf-quant-finance: This library leverages TensorFlow's hardware acceleration and automatic differentiation for high-performance mathematical methods, mid-level functions, and pricing models support.
goldmansachs/gs-quant: GS Quant, a Python toolkit by Goldman Sachs, aids in developing quantitative trading strategies and risk management solutions with robust market experience.
domokane/FinancePy: A Python finance library specializing in pricing and managing financial derivatives across fixed-income, equity, FX, and credit markets.
romanmichaelpaolucci/Q-Fin: QFin is evolving with enhanced object-oriented principles, deprecating old modules like PDEs/SDEs, introducing 'stochastics' for model calibration and option pricing.
avhz/RustQuant: This Rust library for quantitative finance covers diverse modules from autodiff and data handling to instruments pricing and stochastic processes.
microsoft/responsible-ai-toolbox: Responsible AI Toolbox offers interfaces and libraries for model and data exploration, enabling developers to monitor and improve AI responsibly.
Giskard-AI/giskard: Giskard, an open-source Python library, detects performance, bias, and security issues in AI applications, spanning LLMs to traditional ML models.
fairlearn/fairlearn: Fairlearn, a Python package, helps developers assess and mitigate fairness issues in AI systems with algorithms and assessment metrics provided.
Azure/PyRIT: PyRIT is an open-access Python tool for generative AI, aiding security professionals and ML engineers in identifying system risks.
ModelOriented/DALEX: DALEX enhances model transparency to prevent failure through its explainability tools, supporting understanding and trust in complex AI systems.
JohnSnowLabs/langtest: LangTest simplifies testing of AI models with over 60 tests in one line, covering robustness, bias, fairness, and accuracy across various NLP frameworks.
SeldonIO/alibi: Alibi is a Python library focused on machine learning model inspection, offering diverse explanation methods for classification and regression models.
Trusted-AI/AIX360: AI Explainability 360 offers an open-source Python toolkit for detailed model interpretability across various data types, supporting diverse explanation methods.
dssg/aequitas: Aequitas is an open-source toolkit for bias auditing and Fair ML, aiding data scientists and researchers in assessing and correcting model biases.
albermax/innvestigate: iNNvestigate is a Python library providing a unified interface for various methods to analyze neural networks' predictions and understand their internal workings.
mindsdb/lightwood: Lightwood is an AutoML framework simplifying machine learning pipelines with JSON-AI syntax, allowing customization and automation across diverse data types.
SeldonIO/alibi-detect: Alibi Detect is a Python library for detecting outliers, adversarial attacks, and drift in tabular, text, image, and time series data.
datamllab/tods: TODS automates outlier detection in multivariate time-series data with modules for data processing, feature analysis, and diverse detection algorithms.
pygod-team/pygod: PyGOD is a Python library using PyTorch Geometric for graph outlier detection, offering 10+ algorithms and easy integration with PyOD.
Jingkang50/OpenOOD: This repository replicates methods from the Generalized Out-of-Distribution Detection Framework for fair comparison across anomaly, novelty, and out-of-distribution detection methods.
yzhao062/pyod: PyOD is a Python library for detecting anomalies in multivariate data, offering diverse algorithms for various project scales and datasets.
chaos-genius/chaos_genius: Chaos Genius is an open-source ML-powered analytics engine for outlier detection and root cause analysis at scale.
guacsec/guac: GUAC creates a high fidelity graph database for software security, facilitating organizational outcomes like audit, policy, and risk management.
owasp-dep-scan/blint: BLint is a Binary Linter using lief to verify executable security and capabilities, now supporting SBOM generation for compatible binaries.
samirsaci/picking-route: This repository focuses on improving warehouse productivity through Python-based tools and methodologies, particularly addressing order batching and optimizing picking routes using the Single Picker Routing Problem (SPRP).
ragamarkely/scanalytics: Scanalytics automates Supply Chain Analytics & Design tasks in Python, streamlining analyses and reducing manual spreadsheet work for assignments.
aitechtools/SunFlow: SunFlow optimizes supply chain design with comprehensive modeling of materials, components, suppliers, manufacturers, and customers, integrating costs, capacities, and constraints.
CIOL-SUST/SupplyGraph: This repository introduces a benchmark dataset for applying Graph Neural Networks (GNNs) to supply chain networks, enabling research in optimization and prediction.
ray-project/ray: Ray is a scalable framework with a distributed runtime and AI libraries designed to accelerate AI and Python applications.
svg/svgo: SVGO optimizes SVG files by removing redundant metadata, comments, and hidden elements to improve file efficiency and rendering performance.
zeux/meshoptimizer: meshoptimizer is a C/C++ library optimizing GPU rendering by reducing mesh complexity and storage overhead, compatible with Rust via meshopt crate.
cvxpy/cvxpy: CVXPY is a Python-based modeling language designed for convex optimization problems, providing a natural expression format aligned with mathematical conventions.
guofei9987/scikit-opt: The repository provides Python implementations of various swarm intelligence algorithms such as Genetic Algorithm, Particle Swarm Optimization, and others for optimization tasks.
espnet/espnet: ESPnet is a detailed speech processing toolkit using PyTorch, covering recognition, synthesis, translation, enhancement, diarization, and understanding tasks.
mozilla/DeepSpeech: DeepSpeech is an open-source Speech-To-Text engine based on Baidu's research, implemented using TensorFlow for accessibility and performance.
microsoft/SpeechT5: The repository proposes SpeechT5, adapting T5's text-to-text approach for self-supervised speech and text representation learning using shared encoders and modality-specific nets.
sloria/TextBlob: Python library simplifying NLP tasks like POS tagging, sentiment analysis, and classification with a straightforward API for textual data.
pytorch/audio: Torchaudio integrates PyTorch with audio processing, emphasizing GPU acceleration, trainable features via autograd, and maintaining a consistent tensor-based style.
neo4j/graph-data-science: The Neo4j Graph Data Science (GDS) library offers graph algorithms, transformations, and ML pipelines, accessible via Cypher within Neo4j.
cncf/landscape-graph: This repository explores open source project dynamics, evolution, and collaboration using a Graph Data Model for insightful community analysis.
BlueBrain/nexus: Blue Brain Nexus organizes and enhances data with a Knowledge Graph ecosystem, featuring various products, libraries, and tools for comprehensive use.
lynxkite/lynxkite: LynxKite is a robust graph data science platform with a user-friendly interface and powerful Python API for large datasets.
dgraph-io/dgraph: Dgraph is a scalable GraphQL database optimized for performance, offering ACID transactions and distributed architecture for real-time queries.
arangodb/arangodb: ArangoDB is a versatile multi-model database supporting documents, graphs, and key-values, empowering high-performance applications with SQL-like queries and JavaScript extensions.
redpanda-data/connect: Redpanda Connect is a robust stream processor for seamless data integration, featuring a powerful mapping language and easy deployment options.
turbot/steampipe: Steampipe simplifies data access from APIs with CLI, Postgres FDWs, SQLite extensions, export tools, and cloud-based Turbot Pipes.
risingwavelabs/risingwave: RisingWave is a cost-efficient streaming database compatible with Postgres, designed for real-time event streaming data processing and analysis.
apache/dolphinscheduler: Apache DolphinScheduler is a modern data orchestration platform with low-code workflow creation, robust task management, and cloud-native capabilities.
rudderlabs/rudder-server: RudderStack is a privacy-focused, Segment-alternative platform in Golang and React. It simplifies data collection and integrates with warehouses and tools for enriched customer data pipelines.
We hope this extensive collection of tools and techniques proves to be a valuable asset in your daily data practice. May it help you achieve smoother workflows and better outcomes!