diff --git a/pgml-cms/blog/announcing-gptq-and-ggml-quantized-llm-support-for-huggingface-transformers.md b/pgml-cms/blog/announcing-gptq-and-ggml-quantized-llm-support-for-huggingface-transformers.md index 12f94aa5a..6242776db 100644 --- a/pgml-cms/blog/announcing-gptq-and-ggml-quantized-llm-support-for-huggingface-transformers.md +++ b/pgml-cms/blog/announcing-gptq-and-ggml-quantized-llm-support-for-huggingface-transformers.md @@ -3,6 +3,9 @@ description: >- GPTQ & GGML allow PostgresML to fit larger models in less RAM. These algorithms perform inference significantly faster on NVIDIA, Apple and Intel hardware. +featured: false +tags: [engineering] +image: ".gitbook/assets/image (14).png" --- # Announcing GPTQ & GGML Quantized LLM support for Huggingface Transformers diff --git a/pgml-cms/blog/announcing-support-for-aws-us-east-1-region.md b/pgml-cms/blog/announcing-support-for-aws-us-east-1-region.md index 8eab64ac6..2486bbcdc 100644 --- a/pgml-cms/blog/announcing-support-for-aws-us-east-1-region.md +++ b/pgml-cms/blog/announcing-support-for-aws-us-east-1-region.md @@ -1,3 +1,10 @@ +--- +description: >- + We added aws us east 1 to our list of support aws regions. +featured: false +tags: [product] +--- + # Announcing Support for AWS us-east-1 Region
diff --git a/pgml-cms/blog/data-is-living-and-relational.md b/pgml-cms/blog/data-is-living-and-relational.md index ff94a661f..806e14fc2 100644 --- a/pgml-cms/blog/data-is-living-and-relational.md +++ b/pgml-cms/blog/data-is-living-and-relational.md @@ -3,6 +3,8 @@ description: >- A common problem with data science and machine learning tutorials is the published and studied datasets are often nothing like what you’ll find in industry. +featured: false +tags: [engineering] --- # Data is Living and Relational diff --git a/pgml-cms/blog/generating-llm-embeddings-with-open-source-models-in-postgresml.md b/pgml-cms/blog/generating-llm-embeddings-with-open-source-models-in-postgresml.md index 2eda9bfac..f35e0081e 100644 --- a/pgml-cms/blog/generating-llm-embeddings-with-open-source-models-in-postgresml.md +++ b/pgml-cms/blog/generating-llm-embeddings-with-open-source-models-in-postgresml.md @@ -2,6 +2,8 @@ description: >- How to use the pgml.embed(...) function to generate embeddings with free and open source models in your own database. +image: ".gitbook/assets/blog_image_generating_llm_embeddings.png" +features: true --- # Generating LLM embeddings with open source models in PostgresML diff --git a/pgml-cms/blog/how-to-improve-search-results-with-machine-learning.md b/pgml-cms/blog/how-to-improve-search-results-with-machine-learning.md index 7b5a0be15..5ee950918 100644 --- a/pgml-cms/blog/how-to-improve-search-results-with-machine-learning.md +++ b/pgml-cms/blog/how-to-improve-search-results-with-machine-learning.md @@ -3,6 +3,9 @@ description: >- PostgresML makes it easy to use machine learning on your data and scale workloads horizontally in our cloud. One of the most common use cases is to improve search results. +featured: true +image: ".gitbook/assets/image (2) (2).png" +tags: ["Engineering"] --- # How-to Improve Search Results with Machine Learning diff --git a/pgml-cms/blog/introducing-the-openai-switch-kit-move-from-closed-to-open-source-ai-in-minutes.md b/pgml-cms/blog/introducing-the-openai-switch-kit-move-from-closed-to-open-source-ai-in-minutes.md index 75e01ca85..0b97fd29c 100644 --- a/pgml-cms/blog/introducing-the-openai-switch-kit-move-from-closed-to-open-source-ai-in-minutes.md +++ b/pgml-cms/blog/introducing-the-openai-switch-kit-move-from-closed-to-open-source-ai-in-minutes.md @@ -1,8 +1,11 @@ --- +featured: true +tags: [engineering, product] image: https://postgresml.org/dashboard/static/images/open_source_ai_social_share.png description: >- Quickly and easily transition from the confines of the OpenAI APIs to higher quality embeddings and unrestricted text generation models. +image: ".gitbook/assets/blog_image_switch_kit.png" --- # Introducing the OpenAI Switch Kit: Move from closed to open-source AI in minutes diff --git a/pgml-cms/blog/postgres-full-text-search-is-awesome.md b/pgml-cms/blog/postgres-full-text-search-is-awesome.md index 9b2044b2d..8cc8a8205 100644 --- a/pgml-cms/blog/postgres-full-text-search-is-awesome.md +++ b/pgml-cms/blog/postgres-full-text-search-is-awesome.md @@ -2,6 +2,7 @@ description: >- If you want to improve your search results, don't rely on expensive O(n*m) word frequency statistics. Get new sources of data instead. +image: ".gitbook/assets/image (53).png" --- # Postgres Full Text Search is Awesome! diff --git a/pgml-cms/blog/postgresml-is-going-multicloud.md b/pgml-cms/blog/postgresml-is-going-multicloud.md index 361c522ce..0100a2162 100644 --- a/pgml-cms/blog/postgresml-is-going-multicloud.md +++ b/pgml-cms/blog/postgresml-is-going-multicloud.md @@ -1,5 +1,16 @@ # PostgresML is going multicloud +
+ +
Author
+ +
+ +Lev Kokotov + +Jan 18, 2024 + + We started PostgresML two years ago with the goal of making machine learning and AI accessible and easy for everyone. To make this a reality, we needed to deploy PostgresML as closely as possible to our end users. With that goal mind, today we're proud to announce support for a new cloud provider: Azure. ### How we got here diff --git a/pgml-cms/blog/speeding-up-vector-recall-5x-with-hnsw.md b/pgml-cms/blog/speeding-up-vector-recall-5x-with-hnsw.md index 8a3bf7967..621bc99ea 100644 --- a/pgml-cms/blog/speeding-up-vector-recall-5x-with-hnsw.md +++ b/pgml-cms/blog/speeding-up-vector-recall-5x-with-hnsw.md @@ -3,6 +3,9 @@ description: >- HNSW indexing is the latest upgrade in vector recall performance. In this post we announce our updated SDK that utilizes HNSW indexing to give world class performance in vector search. +tags: [engineering] +featured: true +image: ".gitbook/assets/blog_image_hnsw.png" --- # Speeding up vector recall 5x with HNSW diff --git a/pgml-cms/blog/using-postgresml-with-django-and-embedding-search.md b/pgml-cms/blog/using-postgresml-with-django-and-embedding-search.md index b3bfbcb2e..330d63a32 100644 --- a/pgml-cms/blog/using-postgresml-with-django-and-embedding-search.md +++ b/pgml-cms/blog/using-postgresml-with-django-and-embedding-search.md @@ -1,5 +1,21 @@ +--- +description: >- + An example application using PostgresML and Django to build embedding based search. +tags: [engineering] +--- + # Using PostgresML with Django and embedding search +
+ +
Author
+ +
+ +Lev Kokotov + +Feb 15, 2024 + Building web apps on top of PostgresML allows anyone to integrate advanced machine learning and AI features into their products without much work or needing to understand how it really works. In this blog post, we'll talk about building a classic to-do Django app, with the spicy addition of semantic search powered by embedding models running inside your PostgreSQL database. ### Getting the code @@ -51,13 +67,14 @@ And that's it! In just a few lines of code, we're generating and storing high qu Djago Rest Framework provides the bulk of the implementation. We just added a `ModelViewSet` for the `TodoItem` model, with just one addition: a search endpoint. The search endpoint required us to write a bit of SQL to embed the search query and accept a few filters, but the core of it can be summarized in a single annotation on the query set: -
results = TodoItem.objects.annotate(
-    similarity=RawSQL(
+```python
+results = TodoItem.objects.annotate(
+    similarity=RawSQL(
         "pgml.embed('intfloat/e5-small', %s)::vector(384) <=> embedding",
         [query],
     )
 ).order_by("similarity")
-
+``` This single line of SQL does quite a bit: pFad - Phonifier reborn

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